Commit Graph

876 Commits (db6721084a2b3f41216e9cc7e0ea9263c33f196e)

Author SHA1 Message Date
Vivek Khandelwal c681c3497a [MLIR][TORCH} Fix empty dim cases for the .dim ops
This commit fixes the shape calculation for:
1.) aten.mean.dim
2.) aten.var.dim
3.) aten.sum.dim_IntList op

Also, it fixes the lowering of `aten.mean.dim` and
`aten.sum.dim_IntList` for handling the cases of empty dim list.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com
2022-07-29 11:08:57 +05:30
Vivek Khandelwal d386b8f9e5 [MLIR][TORCH] Add decomposition for aten.var.correction op
This commit adds the decomposition for `aten.var.correction` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com
2022-07-29 11:08:57 +05:30
Quinn Dawkins 11a8901078
[MLIR][TORCH] Add support for multiple indexing tensors for aten.index.Tensor (#1097)
- Includes a canonicalizer for `aten.add.t`needed for successfully lowering the shape function
 - Only offers support for statically sized index tensors when there is more than one
 - Dynamic shape support remains for single indexing tensors
2022-07-28 19:00:02 -04:00
Quinn Dawkins 3c9addf19c Add e2e support for aten.expm1 2022-07-27 12:31:35 +05:30
Kevin Kiningham e8f327cc00 Add lowering to linalg for softplus and log1p
Follows existing conventions for unary operators.
2022-07-25 21:25:57 +05:30
Ramiro Leal-Cavazos f271e6a88c
Add verifiers for ToBuiltinTensorOp and FromBuiltinTensorOp (#1089)
This commit adds verifiers to the ops `ToBuiltinTensorOp` and
`FromBuiltinTensorOp` that make sure that the input and output have
the same shape and data type.
2022-07-21 21:41:45 +00:00
Sean Silva c0ef192865
Improve error message
The unknown dtype case can come from RefineTypes.
2022-07-21 13:52:24 -07:00
Ziheng Jiang c61c99e887
[MHLO] Init MHLO integration. (#1083)
Co-authored-by: Bairen Yi <yibairen.byron@bytedance.com>
Co-authored-by: Jiawei Wu <xremold@gmail.com>
Co-authored-by: Tianyou Guo <tianyou.gty@alibaba-inc.com>
Co-authored-by: Xu Yan <yancey.yx@alibaba-inc.com>
Co-authored-by: Ziheng Jiang <ziheng.jiang@bytedance.com>
2022-07-20 16:18:16 -07:00
Ashay Rane e06ee08506
torch: [nfc] use `WalkResult::isInterrupted()` instead of booleans (#1081)
An upstream MLIR bug (that was recently fixed) caused the result to be
ignored for Region- and Block-visitor functions.  Now that the bug is
fixed, we don't need an auxiliary boolean to track whether the visitor
function has succeeded.
2022-07-19 10:17:57 -07:00
Vivek Khandelwal 4c25878e64 [MLIR][TORCH] Add canonicalization pattern for prim.ListUnpack op
This commit adds the canonicalization pattern for the `prim.ListUnpack` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-07-18 13:51:25 +05:30
Sean Silva 85858d2743 Bump LLVM to 889c6f3996769a991a24da957f597e7500d158e7
The biggest change here is to upgrade RefineTypes to the new sparse
dataflow framework.

Smaller changes:
- minor changes to type parsing
- suppress warnings in e2e tests
2022-07-15 13:36:04 -07:00
Vivek Khandelwal 3589134d31 [MLIR][TORCH] Add decomposition for aten.var.dim op
This commit adds the decomposition for `aten.var.dim` op.
This commit also make changes in the decomposition for `aten.var` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-07-15 09:53:42 +05:30
Ashay Rane 29bc48aedb
torch: add pass to catch non-value tensors (#1052)
This patch adds a new pass `torch-verify-conversion-to-value-semantics`,
which looks for non-value semantics tensors to catch such tensors early
during compilation.

This pass requires `torch-refine-public-return` pass to ensure that
return operations are updated to use value tensors, followed by the
canonicalize pass to remove any dead ops that may use or produce
non-value tensors.
2022-07-13 17:11:15 -07:00
Ashay Rane ac4d7d10e0
canonicalizer: propagate type information across copy and cast ops (#1030)
Prior to this patch, the canonicalizers for `AtenSizeOp` and
`AtenSizeIntOp` succeeded only if the tensor operand's type information
included the size of the requested dimension(s).  We can extend the set
of optimizable cases by propagating types across operations whose result
type matches the input tensor type.

Specifically, this patch enables the canonicalizers for `AtenSizeOp` and
`AtenSizeIntOp` to see past `tensor_static_info_cast`,
`copy.to_vtensor`, and `copy.to_tensor` ops until it reaches the first
op whose result type contains size information for the requested
dimensions, with a maximum bound of 6 parent lookups to avoid indefinite
compilation times.  All other encountered ops cause the canonicalizer to
give up.
2022-07-12 12:38:37 -07:00
Sean Silva e5e11e214b GlobalizeObjectGraph: Clean up handling of unused slots
The way we did it previously still created the slot and copied the
initializer even if unused.
2022-07-12 10:47:28 -07:00
Ashay Rane 9017be9e9e
torch: copy uses to prevent iterator invalidation (#1033)
Prior to this patch, the code in the `torch-simplify-shape-calculations`
pass iterated on the uses of an op's result while also modifying the
value.  This caused the iterator to get invalidated, thus terminating
the loop early and producing incorrect IR.  This patch makes use of
`llvm::make_early_inc_range()` to ensure that the iterator is not
invalidated while executing the loop body.
2022-07-11 18:47:04 -07:00
Ramiro Leal-Cavazos 11148e60d6
Undo shape lib changes + update function signature of sum + zero (#1035)
This commit does three things:
  1. Reverts some of the shape lib changes merged in
  https://github.com/llvm/torch-mlir/pull/844
  2. Updates the signature of `aten.sum_dim_IntList` that was recently
  updated in
  23bdb570cf
  3. Replaces `aten.zero.functional` with `aten.zero`, updated in 960758b0b7
2022-07-11 10:56:12 -07:00
Prateek Gupta 2d75654b2c [TORCH][MLIR] Add lowering of `aten.slice_scatter` and
`aten.select_scatter` op.

This commit adds:
1.  Lowering of `aten.slice_scatter` op into `tensor.insert_slice`
op.
2. Decomposes the `aten.select_scatter` op into `aten.slice_scater`
op.

Signed-Off-By: Prateek Gupta <gprateek93@gmail.com>
2022-07-11 14:07:21 +05:30
George Petterson a08ff0d7f2 Add lowering for _convolution 2022-07-11 11:03:03 +05:30
Ashay Rane 340d8af28a
torch: handle `torch.prim.dtype` ops during type refinement (#1013)
The canonicalizer converts `torch.prim.dtype` ops into integer constants
for valid types, but the type may not be known until type refinement is
complete.  However, type refinement cannot make progress until
`torch.prim.dtype` ops have been resolved to their corresponding integer
constants, thus creating a circular dependency.

This patch creates a tight coupling between type refinement and the
lowering of `torch.prim.dtype` ops by handling such ops as they are
encountered during type refinement.  The unit test in this patch aims to
check whether the type refinement pass can now handle chains of
operations that alternate between type construction and type refinement.
2022-07-08 16:38:51 -07:00
Ramiro Leal-Cavazos 6a72ab4502
Add basic support for list of optional tensors in reduce-op-variants (#971)
This commit adds support for lists of type `list<optional<tensor>>`
where each element in the list is either a `!torch.tensor` or a
`!torch.none`.
2022-07-08 11:12:15 -07:00
Ashay Rane 6491c69539
torch: use ScalarType enum instead of raw constants (#1020)
This patch replaces the use of raw integers like 6, 4, etc. (that
represent PyTorch's scalar types) with named values from the ScalarType
enum (e.g. `ScalarType::Float`, `ScalarType::Long`, etc.) in code for
folding `prim.dtype` ops into numeric constants.

This patch isn't strictly a non-functional change, since its use of
`Torch::getScalarTypeForType()` implies that the input type has to be
one among the supported types, otherwise compilation will abort, whereas
previously, compilation proceeded without folding the unsupported data
type into a numeric constant.
2022-07-07 14:21:05 -07:00
Quinn Dawkins f0c3b5a7ed
Add E2E support for aten.len.str (#969) 2022-07-07 10:41:55 -07:00
Ashay Rane 88316b3b4e
torch: fold prim.dtype(bf16) to integer constant 15 (#1012)
A prior patch (63538de2) that added support for bfloat16 type did not
add the canonicalization pattern to fold `torch.prim.dtype` operations
on bfloat16 tensors into the integer constant 15.  This patch fixes the
problem.
2022-07-06 18:21:43 -07:00
Ramiro Leal-Cavazos bbb648410e
Fix compilation warning Wsign-compare (#1003) 2022-07-06 09:06:10 -07:00
Tanyo Kwok d4f1f41435
[MLIR][TORCH] Add decomposition of aten.repeat (#932)
* [MLIR][TORCH] Add decomposition of aten.repeat

* refine & rebase

* refine static shapes

* add e2e test

* Rebase and Refine naming style
2022-07-01 13:02:31 +08:00
Sean Silva 227dea7b2e Add support for ScalarType::QUInt8
I ran into this while poking around at
https://github.com/llvm/torch-mlir/issues/959
2022-06-29 15:33:28 -07:00
JakopinA 5888c4f7dc Added E2E support for torch::aten.__contains__int_list 2022-06-27 19:30:00 +05:30
Ashay Rane 163fa57cde
torch: allow torch dialect ops after running drop-shape pass (#979)
In the `pyhpc_turbulent_kinetic_energy` TorchBench benchmark, the shape
calculation occurs inside loops, but because `DropShapeCalculationsPass`
does not explicitly mark the Torch dialect as legal, the pass execution
fails.

This patch adds Torch to the list of legal dialects, and adds a test to
validate the translation.
2022-06-25 07:27:47 -07:00
Ramiro Leal-Cavazos 400fecc1e5
[LINALG] Fix shape function of index.Tensor + support N-rank inputs (#972)
This commit fixes the shape function for `index.Tensor`, adding
support for multiple index tensors and `None`s in the indices
list. This commit also adds support for input tensors of rank greater
than 1. The lowering for `index.Tensor` still has the the limitation
that only a single index tensor along the first dimension of the input
tensor is supported.
2022-06-24 09:45:44 -07:00
Ashay Rane 234fc7fe0c
linalg: lower `aten.triu` op to `linalg.generic` (#965)
Prior to this patch, the torch dialect included `AtenTriuOp` for
computing the upper triangular part of the input matrix, but there was
no code for lowering the op to the linalg dialect.

This patch adds code to generate a `linalg.generic` operation that
compares indices (computed using `linalg.index`) to choose between zero
or the original value (using `arith.select`).  The lowering fails if the
number of dimensions are less than two.  This patch also adds a few
end-to-end tests.
2022-06-23 22:45:48 -07:00
Tanyo Kwok 143a7bcb76
[MLIR][TORCH] Add folder for torch_c.from_i64 & torch_c.to_i64 (#933)
* [MLIR][TORCH] Add folder for torch_c.from_i64 & torch_c.to_i64

* add unit tests for each individual fold

* fix failure of NumelZeroRankModule & TestMultipleTensorAndPrimitiveTypesReturn
2022-06-24 09:34:39 +08:00
Ramiro Leal-Cavazos 189afa82c5
Update shape library with LLVM bump changes (#973) 2022-06-23 18:13:03 -07:00
erman-gurses 5cff40c88a Add canonicalization for aten.add.tensor op 2022-06-23 17:24:59 -04:00
Maksim Levental 829717c96e
Bump LLVM (#958) 2022-06-22 22:23:46 -05:00
Vivek Khandelwal 77ab31641f [MLIR][TORCH] Add decomposition of aten.numpy_T op
This commit adds the decomposition of `aten.numpy_T` op into
`aten.t` or `aten.permute` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-06-16 00:01:22 +05:30
Bob Adolf b90837ee24
Temporarily revert support for custom op extensions. (#944)
The MacOS builders are having linking trouble with the extension library.
Until it's fixed, all support for op extensions is disabled. It should be
easy to restore once the issue is resolved.
2022-06-14 18:24:40 -07:00
Vivek Khandelwal 33fa8e7761 [MLIR][TORCH] Add decomposition of aten.floor_divide op
This commit adds the decomposition of `aten.floor_divide` op into
`aten.div.Tensor_mode` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-06-14 08:56:25 +05:30
Bob Adolf 0a7ba62438
Allow torch-mlir to support PyTorch extensions. (#895)
PyTorch allows new operators to be registered dynamically in modules.
Torch-mlir already makes it fairly straightforward to add support for
new operators, and this commit just extends that support to allow new
PyTorch ops to come from a external module.

This does *not* allow ops to be dynamically loaded into torch-mlir.
Torch-mlir must still be compiled with support built-in.

Add a `_torch_mlir_custom_op_example` subpackage to `torch_mlir` which
registers an demonstration op. It will not be imported by default when
importing torch_mlir. It's strictly for testing and documentation.

Adds an end-to-end test for the `torch_mlir_custom_op_example::identity` op.

With all these changes, we should now be actively testing PyTorch extension
support with all future patches.
2022-06-13 14:51:30 -07:00
Sean Silva e1b38e74dd Use upstream shape functions directly.
Now that upstream exposes them nicely, we can use them.

I noticed that we had added stuff into the upstream_shape_helpers.py
file (which was supposed to stay pristine), so some more shape functions
need to be upstreamed.

Going forward, all shape functions should be upstreamed similar to
https://github.com/pytorch/pytorch/pull/76889 instead of added in this
file.
2022-06-07 11:15:03 -07:00
Vivek Khandelwal b95b3d844d [MLIR][TORCH] Add E2E support for aten.div.Tensor_mode op
This commit adds lowering of `aten.div.Tensor_mode` op.
This commit also fixes formatting for the test file elementwise.py.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-06-07 22:26:44 +05:30
Vivek Khandelwal a11ef674a7 [MLIR][TORCH] Add E2E support for aten.baddbmm op
This commit decomposes `aten.baddbmm` op into `aten.bmm`,
`aten.mul.Scalar`, and `aten.add.Tensor` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-06-07 22:26:28 +05:30
Vivek Khandelwal 2718b4d838 [MLIR][TORCH] Add E2E support for aten.clamp_[min|max] op
This commit decomposes `aten.clamp_min` and `aten.clamp_max` op
into `aten.clamp` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-06-06 11:52:29 +05:30
Vidush Singhal fc419b1e7d
Add E2E support for AtenLogicalOrOp. (#883) 2022-06-03 16:21:03 -07:00
Henry Tu abf5c94a1b
Replace valsem.aten.zero with aten.zero.functional (#893) 2022-06-03 16:27:31 -04:00
Ashay Rane 7fdc1cff02
build: remove manual changes to ShapeLibrary.cpp (#894)
The patch bumped up the LLVM tag made manual fixes to the code in
`ShapeLibrary.cpp`.  However, since that file is generated by the
`update_shape_lib.sh` script, its contents were reverted each time the
script was run.  This patch fixes the problem by removing the manual
changes to that file.
2022-06-01 14:11:29 -07:00
Vivek Khandelwal 6f548fc3ad [MLIR][TORCH] Add decomposition of aten.adaptive_avg_pool2d op
This commit adds the decomposition of `aten.adaptive_avg_pool2d` op into
`aten.avg_pool2d` op. The current decomposition only supports cases where
input size is equal to the output size.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-05-27 07:56:37 +05:30
Ashay Rane 029cd54327
build: fix code so that the compiler does not emit warnings (#871)
When compiling without assertions (i.e. in `NDEBUG` mode), a handful of
statements turn to NOPs, which results in warnings such as missing
return statement or unused variables and function. This patch replaces
such statements with `llvm_unreachable()`, which informs the compiler
about program termination regardless of the `NDEBUG` mode. This also
enables torch-mlir to be compiled using the flags `-Wall`, `-Wextra`,
`-Wpedantic`, and `-Werror`.
2022-05-25 14:04:59 -07:00
Vivek Khandelwal 56e77d4213 [MLIR][TORCH] Add E2E support for aten.Bool.[float|int] op
This commit adds lowering of `aten.Bool.float` and `aten.Bool.int` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-05-24 21:18:34 +05:30
Vivek Khandelwal bc9b2156e3 [MLIR][TORCH] Add E2E support for aten.sqrt.int op
This commit adds lowering of `aten.sqrt.int` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-05-24 16:50:39 +05:30
Ashay Rane f18b2be911
torch,linalg: add support for translating aten.linalg.vector_norm (#839)
This patch adds support for the torch.linalg.vector_norm op to the torch
dialect, including the necessary shape function.  It also extends the
conversion of reduction operators to support lowering of
AtenLinalgVectorNormOp, in addition to adding a handful of end-to-end
tests to validate the lowering.

There exist several opportunities to make this lowering optimal and
robust.  For instance, in its current form, the translation does not
support ord = 0, +inf, or -inf.  For L1 norms, we don't need to raise
each element to the power 1.0.  Similarly, L2 norms could benefit from
strength reduction.  Since the canonicalization pass is not able to
apply these optimizations, we should consider applying them during the
linalg lowering itself.
2022-05-19 15:48:15 -07:00
Sean Silva 3fb54cba4c torch.prim.TupleIndex: Adjust tensor types when folding.
In cases where a refinement/derefinement was needed, we didn't fold.

Fixes https://github.com/llvm/torch-mlir/issues/863
2022-05-19 09:36:27 -07:00
Ashay Rane bb52a460cb
mlir: bump llvm tag to 5380e3 (#856)
In addition to updating the llvm-project submodule, this patch also:

1. updates shape functions and tests so that `func` and `call`
   operations refer to the `func` dialect
2. avoid duplicate registration of dialects
2022-05-16 12:54:35 -07:00
Ramiro Leal-Cavazos 96f90efd16
Add shape info to `rand_like` + support for `dtype` flag (#851)
The op `aten.rand_like` was missing a shape function, unit tests, and
the `dtype` argument was being ignored in its decomposition. This
commit fixes all three things.
2022-05-12 16:00:59 -07:00
Vivek Khandelwal c69a1e5688 [MLIR][TORCH] Add E2E support for ScalarImplicit, Int.Scalar op
This commit adds lowering of `aten.ScalarImplicit` and `aten.Int.Scalar` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-05-10 22:40:49 +05:30
Prashant Kumar 12b3af70d3 [TORCH] Add folding of aten.detach op.
`aten.detach` op is folded and returns the first operand since it's an
identity function(kind of identity just remove the has_grad attribute).
2022-05-10 21:54:45 +05:30
Yi Zhang 28be6511d2 Fix type promotion code for scalar only operations
Fix the type promotion code for scalar only operation to return
TorchType which is the type tracked in ValueKnowledge.scalarType.

- Fix `getPromotedResultScalarType` to return Torch type.
- Add `getBuiltInTypeForTorchScalar` helper to convert scalar type
to builtin type before passing to the next level type promotion
helper `updateResultTypeState`.
- Add `setScalarType` helper to make setting ValueKnowledge.scalarType
  easier.
2022-05-07 10:37:21 -04:00
Vivek Khandelwal 96fabc0036 [MLIR][TORCH] E2E support for [ge|ceil].float, [ge|ne|gt].float_int op
This commit adds lowering of `aten.ge.float`, `aten.ge.float_int`,
`aten.ne.float_int`, `aten.gt.float_int` and `aten.ceil.float` op.
This commit also fixes formatting for the file scalar.py and scalar_comparison.py.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-05-05 21:48:35 +05:30
Kristof Denolf e682b1d0f3 changed name option to decompose-complex-ops 2022-05-05 00:38:51 -07:00
Kristof Denolf 5243638e33 add no decompose option 2022-05-05 00:38:51 -07:00
Yi Zhang 9f7264a7a4 Add support for scalar type propagation
The main changes are:
- Added `ValueKnowledge.scalarType` to track scalar type information.
- Added `ValueKnowledge.kind` to indicate the value kind.
- Modified the meet and join helper functions. The ValueKnowledge has
slightly more complicated state now so the meet and join function need
to look at the `kind` field in addition to just the type field.
2022-05-04 16:57:56 -04:00
Gaurav Shukla 4b911ada40 [LINALG] Add E2E support for `aten.mean.dim` op
- This commit adds support for `aten.mean.dim` op.
- It also adds a new test script `stats.py` for statistics related ops.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2022-05-04 20:11:42 +05:30
Sean Silva 32159c4e54 Fix TupleIndex canonicalizer.
It would change the result type.
2022-05-03 09:08:49 -07:00
Vivek Khandelwal c0634bc996 [MLIR][TORCH] Add E2E support for aten.to.dtype_layout op
This commit decomposes `aten.to.dtype_layout` op into `aten.to.dtype` op.
This commit also fixes the formatting for the file type_conversion.py.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-05-03 12:48:58 +05:30
gpetters94 c4dcdd1e34
Add aten.flip (#817) 2022-05-02 16:01:15 -04:00
Vivek Khandelwal 8a06419980 [MLIR][TORCH] Add E2E support for aten.masked_fill.Scalar op
This commit adds lowering of `aten.masked_fill.Scalar` op.
This commit also fixes the formatting of the file constant_alloc.py.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-05-02 22:27:33 +05:30
Vivek Khandelwal 4b11284440 [MLIR][TORCH] Add E2E support for aten.avg_pool2d op
This commit adds lowering of `aten.avg_pool2d` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-05-02 12:31:44 +05:30
Prateek Gupta 81ee5bb58c [TORCH][MLIR] Fix ConstantPad2dStaticModule test.
This commit fixes the `ConstantPad2dStaticModule` test case by adding
the lowering of `aten.pad` operation. Previously the test case
mapped to `aten.constant_pad_nd` operation.
The `aten.pad` now decomposes into `aten.constant_pad_nd` operation.

Signed-Off-By: Prateek Gupta <prateek@nod-labs.com>
2022-04-29 21:57:01 +05:30
Ashay Rane 809f240f01
importer: add initial support for loading BFloat16 tensors (#761)
This patch updates the `torch_mlir::convertTensorToMlirElementsAttr()`
method to enable the creation of tensors whose base type is BFloat16.
This patch also adds a test to validate the IR generation, and it
updates the test for importing tensors of various types.
2022-04-29 09:01:49 -07:00
Prateek Gupta e1db318a3c [TORCH][MLIR]Add lowering for control flow operations.
1. This commit adds lowering of "while-like" prim loop to scf.while
operation.
2. Adds lowering of "for-like" prim loops to scf.for operation.

Signed-Off-By: Prateek Gupta <prateek@nod-labs.com>
2022-04-29 16:25:58 +05:30
Sean Silva 44c7b181d3 Revert "[MLIR][TORCH] Add E2E support for aten.ge.float op"
This reverts commit 564734b2d7.
2022-04-28 07:49:58 -07:00
Sean Silva 5ef9f501fa Revert "[MLIR][TORCH] Add E2E support for aten.ceil.float op"
This reverts commit 78f5747568.
2022-04-28 07:49:58 -07:00
Vivek Khandelwal e57e1968bc [MLIR][TORCH] Add E2E support for aten.index_put.hacked_twin op
This commit decomposes `aten.index_put.hacked_twin` op into
`valsem.aten.index_put_impl` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-04-28 13:41:47 +05:30
Vivek Khandelwal 78f5747568 [MLIR][TORCH] Add E2E support for aten.ceil.float op
This commit adds lowering of `aten.ceil.float` op.
This commit also fixes formatting for the file scalar.py.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-04-28 11:49:35 +05:30
Vivek Khandelwal 564734b2d7 [MLIR][TORCH] Add E2E support for aten.ge.float op
This commit adds lowering of `aten.ge.float` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-04-27 21:16:48 +05:30
Vivek Khandelwal f5b6c4b601 [MLIR][TORCH] Add E2E support for aten.div.float op
This commit adds lowering of `aten.div.float` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-04-27 21:16:48 +05:30
Ashay Rane 9208bf0eb6
llvm: bump tag to e1318078 (#781)
The updated LLVM code includes a patch to create bfloat16 array
attributes, thus enabling a different patch to torch-mlir to flesh out
support for the bfloat16 type.
2022-04-26 12:27:51 -07:00
Ashay Rane 9ec4712516
types: allow bf16 as result type for various tensor ops (#798)
Prior to this patch, the result type for several tensor operations could
only be float32, float64, or null.  This patch adds bf16 to the list of
allowed result types.
2022-04-26 11:55:58 -07:00
Vivek Khandelwal 769f3a8870 [MLIR][TORCH] Add E2E support for max_pool2d_with_indices op
This commit adds lowering of `max_pool2d_with_indices` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-04-18 21:05:19 +05:30
Ashay Rane a893c7d5cf
Add shape transfer function and lowering to linalg for aten.neg (#759)
* shape: add shape transfer function for aten.neg

Prior to this patch, the list of shape transfer functions did not
include `aten.neg`, which resulted in errors like below.

```
error: unsupported by backend lowering: tensor with unknown rank or dtype
note: see current operation: %0 = "torch.aten.neg"(%arg0) :
  (!torch.vtensor<[256,256],f32>) -> !torch.vtensor<*,f32>
note: this is likely due to a missing shape transfer function in shape_lib_gen.py
```

This patch fixes the problem by adding a shape transfer function to
reflect the point-wise nature of this operation.

* linalg: add translation of aten.neg operation

This patch adds a translation rule to lower `aten.neg` operations on
tensors to an `arith.negf` operation wrapped inside a `linalg.generic`
operation.  This patch also adds a rudimentary test.
2022-04-15 11:11:22 -07:00
Vivek Khandelwal 1bccb4fc8a [MLIR][TORCH] Add E2E support for aten::max_pool2d_with_indices_backward op
This commit adds lowering of `aten::max_pool2d_with_indices_backward` op.

This commit also fixes formatting issues in basic.py.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-04-14 21:46:47 +05:30
Maksim Levental 24f9de7120
Fixes https://github.com/llvm/torch-mlir/issues/751 where `torch.bool` is parsed as signless `i1`. (#752) 2022-04-13 12:28:27 -05:00
gpetters94 9ec0683e92
Add 2D case for convolution (#693) 2022-04-08 00:47:57 -04:00
Sean Silva e7721fb784 Fix error message.
RefineTypes doesn't handle shape refinement anymore.
2022-04-07 14:46:44 -07:00
Prashant Kumar fb8cb0c5f3 [LINALG] Add the lowering of `aten.ne.Scalar` op
The lowering of `aten.ne.Scalar` op has been added to
the linalg backend.
2022-04-05 21:07:28 +05:30
Ramiro Leal-Cavazos 51d4d55f8a
Add support for multi-dim input to `index_put_impl` (#722)
This commit adds support for multi-dimensional tensors as input to the
`_index_put_impl_` op. The support was to some degree already there,
since `ScatterOp` already supports multi-dimensional tensors. This
commit also adds a bit more error checking to `index_put` and
refactors the code for creating `ScatterOp`s to mimic the way one
would make a `Linalg::GenericOp`.
2022-03-31 09:27:21 -07:00
Sean Silva c17c0a6ba2 Fix for 0-size dim inferred incorrectly.
The issue was in the canonicalizer for torch.aten.ge.int -- in cases
where the operands were swapped, it would miscompile. This issue is
fixed and folding support generalized to `torch.aten.size.int < 0` as
well.

Fixes #716
2022-03-30 16:36:15 -07:00
Gaurav Shukla 969785d1b6 [LINALG] Add E2E support for `aten.where.[Scalar|ScalarSelf|ScalarOther]` ops
This commit decomposes different variants of `aten.where.*` op into
`aten.where.Self` op. It covers `aten.where.Scalar`,
`aten.where.ScalarSelf` and `aten.where.ScalarOther` ops.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2022-03-30 20:36:48 +05:30
Vivek Khandelwal 2597c481f6 [MLIR][TORCH] Add E2E support for aten.new_empty op
This commit decomposes `aten.new_empty` op into `aten.empty.memory_format` op.

This commit also made a dtype fix to the constant tensor allocation like ops.
Earlier the dtype for the result was inferred from the result type; now, it's
being evaluated as per the original definition of the op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-03-30 13:21:01 +05:30
Sean Silva 140babd952 Add minimal support for Union types.
A recent PyTorch commit made ConstantPad2d call a helper function with a
`Union[int, float]` type annotated. This commit adds minimal support for
representing and dealing with that.
https://github.com/pytorch/pytorch/pull/73287

Changes:
- Adding support for `!torch.union<T1, T2, T3>`/`Torch::UnionType`,
  along with the importer and CAPI code.
- Add support in isValidSubtype for union types.
- Adding a canonicalizer for `torch.derefine` to help simplify some code
  that derefines to a UnionType (this also fixes #664).

There is still more work to do for really supporting UnionType well,
such as canonicalizing UnionType's so that they can be compared with
pointer equality.
2022-03-29 17:45:48 -07:00
Liam Fitzpatrick f2269ced80
Improve list index normalization SimplifyShapeCalculations. (#710)
The reified code to compute the shape of torch.aten.constant_pad_nd
uses negative indices when setting list elements. This was not
converted to a positive offset in one place in SimplifyShapeCalculations
which prevented computation of the static shape.
2022-03-29 22:21:47 +02:00
Maksim Levental 25ba51b2af
This commit decomposes aten._reshape_alias op into aten.view op. (#690) 2022-03-28 23:54:28 -05:00
Sean Silva 776426ea4e [SimplifyShapeCalculations] Fix AbstractlyInterpretListOpsWithinABlock
The logic in the rewriting phase had a bug in case of a read-only op
coming before mutation ops. The logic would use the op itself as the
"latest literal", but that is not correct, because later on we replace
the op itself with the *final* "latest literal", assuming that all uses
of the op have been rewritten -- that was working in general, except for
any read-only ops at the beginning.

Big thanks to @ljfitz for the tiny reproducer!

Fixes #704
2022-03-28 13:18:35 -07:00
Gaurav Shukla 02b6d04eb4 [LINALG] Add E2E support for `aten.zero_` op
This commit adds decomposition of `aten.zero_` op.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2022-03-25 12:46:50 +05:30
Qiang Fu f7c7bb800c
Add non-default dtype support for a few elementwise math ops. (#687)
* fix type inference
* fix Torch2Linalg conversion
* add test cases
2022-03-23 13:35:43 -07:00
Ahmed Taei f9d34596e8 [NFC] Split BackendTypeConversion -> (BackendTypeConversion, BackendTypeConversionPasses) 2022-03-22 13:56:18 -07:00
Gaurav Shukla 7c3ba25238 [LINALG] Add decomposition of `aten.dropout` op
- This commit adds decomposition of `aten.dropout` op. It also covers the
  training mode of the same op.
- It also adds lowering of `aten.sub.float` op.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2022-03-22 13:14:49 +05:30
Sean Silva 729402c3f4 Reduce compilation time for TorchOps.cpp.inc
The `assemblyFormat` stuff (which generates unrolled, per-op C++ code)
was taking up a lot of compile time, and all the ops are essentially
printed with the same logic. So this PR makes them all call the same
helper function. This is done by using
`let hasCustomAssemblyFormat = 1` and then implementing `FooOp::parse`
and `FooOp::print`.

Additionally, the `Generated*Ops.td` files are all collapsed into just
`GeneratedTorchOps.td` (there is no reason to have the files separate,
since the files are very large anyway so one is always having to search
within them -- editors don't care that the file to search is now a bit
bigger :) ).

This reduces TorchOpsODSGenerated.cpp compile time (which is now
GeneratedTorchOps.cpp) from 39 to 31 seconds on my machine. This is
actually less than I expected, but this PR is an overall cleanup to the
code anyway. The next step will be to introduce (better) functionality
upstream for sharding the TorchOps.cpp.inc file, so that we can truly
parallelize the O(#ops) costs. This is also necessary, because after
this PR, TorchDialect.cpp is now the slowest file to compile, due to the
`addOperations<... all the ops ...>` call, which needs to be shareded
too.
2022-03-21 14:42:26 -07:00
Vivek Khandelwal 5b9bdfaf3f [MLIR][TORCH] Add E2E support for aten._to_copy op
This commit decomposes `aten._to_copy` op into
`valsem.aten.copy` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-03-21 19:12:37 +05:30
Vivek Khandelwal 13383b03b8 [MLIR][TORCH] Add value tensor variant to aten::copy_ op
This commit adds the op `ValsemVariantAtenCopyOp` that represents
`AtenCopy_Op` without the underscore. This is needed to make sure
that the `ReduceOpVariants` pass turns the in-place op into an op
that takes value tensors as inputs, otherwise the
`MaximizeValueSemantics` pass will not be able to add value
semantics correctly.

This commit also adds the lowering of `ValsemVariantAtenCopyOp`.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-03-21 19:12:37 +05:30
Vivek Khandelwal 4c0cd5c23d [MLIR][TORCH] Add E2E support for aten.expand_as op
This commit decomposes `aten.expand_as` op into `aten.broadcast_to` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-03-21 12:47:39 +05:30
Vigilans 63fb1e5aad Bump LLVM at 8361c5da30588d3d4a48eae648f53be1feb5cfad 2022-03-18 13:16:14 -04:00
Ramiro Leal-Cavazos 218b4875d5
Make conditions for type refinement of static cast less strict (#680)
This commit adds support for type refinement when
`torch.tensor_static_info_cast`s are involved, even when there are
users of the casted tensor that don't allow type refinements.

Originally the canonicalization pattern for
`torch.tensor_static_info_cast` would check if all the users of the
casted tensor allowed type refinements before making any changes. This
means that if at least one of the users did not allow type
refinements, the pattern would fail. This becomes an issue when doing
shape calculations because the calculations need the shape information
of each input tensor to be available before the calculation can be
simplified.
2022-03-18 09:10:12 -07:00
Prateek Gupta 7256c9e395 [TORCH][MLIR] Fix the return types of `aten.native_layer_norm`.
This commit fixes the 2nd and 3rd return types of the `aten.native_layer_norm`.
Previously the mean and rSTD were returned with reduction dims removed.
This commit fixes this and keeps the reduction dims of the results.

Signed-Off-By: Prateek Gupta <prateek@nord-labs.com>
2022-03-17 12:08:32 +05:30
Sean Silva 3b66b4925a Make TorchOps.cpp faster to iterate on.
The ODS-generated code included via the `TorchOps.cpp.inc` file takes a
very long time to compile. This PR isolates it into its own file so that
the build system can cache it.

This PR creates a new file `TorchOpsODSGenerated.cpp` just to include
the `TorchOps.cpp.inc` file. Doing so required moving to the "new" way
to define verifiers, since the static `verify` free functions in
TorchOps.cpp weren't accessible from the .inc file after it was moved to
`TorchOpsODSGenerated.cpp`.

On my machine, this drops the build time of TorchOps.cpp (such as when
iterating on a canonicalizer) from >40 seconds to <10 seconds.
10 seconds still isn't great though, but at least it isn't "go get a
coffee" type of waiting.
2022-03-16 09:33:12 -07:00
Vivek Khandelwal 8da7d90611 [MLIR][TORCH] Add E2E support for aten.index_put op
This commit decomposes `aten.index_put` op into
`valsem.aten.index_put_impl` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-03-16 22:02:02 +05:30
Vivek Khandelwal 3d95c3d6c9 [MLIR][TORCH] Add value tensor variant to aten::_index_put_impl_
This commit adds the op `ValsemVariantAtenIndexPutImplOp` that represents
`Aten_IndexPutImpl_Op` without the underscore. This is needed to
make sure that the `ReduceOpVariants` pass turns the in-place op
into an op that takes value tensors as inputs, otherwise the
`MaximizeValueSemantics` pass will not be able to add value
semantics correctly.

This commit also adds the lowering of `ValsemVariantAtenIndexPutImplOp` op.

This commit also updates the `torch.bincount` op test cases.
2022-03-16 22:02:02 +05:30
Ramiro Leal-Cavazos 0bcc6d1075
Add maximize-value-semantics support for multiple non-value tensor inputs (#659)
This commit adds value semantics support for ops such as
`aten.view_as` and `aten.expand_as` that take two non-value 
tensors as input.
2022-03-15 18:13:45 -07:00
Sean Silva 92da4988f0 Improve "pseudo" op terminology.
The term "pseudo" is very vague and was getting confusing (I felt I had
to explain it in every comment referencing it). Instead, rework the
"pseudo" ops to instead be named:

- MLIR Syntax: `torch.valsem.*`
- C++ / ODS: `ValsemVariant*Op`

This makes it clear what the concept is, and avoids confusion with other
things that might be called "pseudo", since these are very specific and
should be 100% consistently named w.r.t. the non-valsem-variant ops that
they correspond to.
2022-03-15 17:57:52 -07:00
Sean Silva 7ea50a537a Avoid `using` the `torch_upstream` namespace.
This is code that we always want to treat as "foreign" and not get too
comfortable using in many functions. One way to accomplish that is to
make it a bit clunkier to use.

Also, fix Utils.cpp to match the LLVM/MLIR coding conventions (don't
define functions inside namespaces -- prefer `using` and explicit
qualification).
2022-03-15 17:24:17 -07:00
Sean Silva 84a9693006 Elide `!torch.` prefix in nested dialect types.
This leads to much more succinct types in many cases:

```
!torch.list<!torch.int>
!torch.list<int>

!torch.tuple<!torch.list<!torch.int>, !torch.list<!torch.int>>
!torch.tuple<list<int>, list<int>>

!torch.optional<!torch.list<!torch.int>>
!torch.optional<list<int>>

!torch.list<list<list<tensor>>>
!torch.list<!torch.list<!torch.list<!torch.tensor>>>
```

I would like to take this further and allow omitting the `!torch.`
prefix in all cases, but that's harder -- for example, we currently use
`FuncOp` for functions, and so I don't think we can customize the
printing there. It seems like it will be a longer road to getting that
level of customization.
2022-03-15 17:24:08 -07:00
Sean Silva a5fe0cf063 Introduce new shape library design.
See the documentation in `docs/shape_lib.md` and
`docs/adding_a_shape_function.md` for an overview of the system.

This completely overhauls how we represent shape functions. In
particular, RefineTypes does not infer shapes anymore (only dtypes).
Shape functions are now written in (TorchScript'able) Python.

Recommended review order:

1. Read `docs/shape_lib.md` and `docs/adding_a_shape_function.md`.
1. Code and tests for ReifyShapeCalculations, DropShapeCalculations.
1. Code and tests for SimplifyShapeCalculations.
1. shape_lib_gen.py
1. Code and tests for new RefineTypes pass.
1. Random folders/canonicalizers in TorchOps.cpp and associated test in
   `canonicalize.mlir`.
1. New ReadOnly trait inferred from the registry.
1. Any miscellaneous remaining stuff.

Example `-print-ir-after-all` for ElementwiseUnaryModule:
[IR lowering dump](https://gist.github.com/silvasean/e4dc8cbc8d00aac7819602e3cbd8e212).

Example `-print-ir-after-all` for ElementwiseBinaryModule:
[IR lowering dump](https://gist.github.com/silvasean/daf6860ecced732af3568af6b1899113).
2022-03-15 12:41:58 -07:00
Ramiro Leal-Cavazos 51e267aa37
Combine maximize-value-semantics rewrite patterns into one pattern (#642)
This commit replaces the two rewrite patterns of
maximize-value-semantics with a single pattern that captures the
behavior of both as well as other edge cases previously not
supported. The new pattern works by first performing alias analysis on
a subgraph to see if pattern is applicable, then rewriting all
non-value tensors to value tensors in a single go.
2022-03-10 09:36:52 -08:00
Prateek Gupta 3d9ba5e525 [MLIR][TORCH] Add E2E support for aten.erf op.
Signed-Off-By: Prateek Gupta <prateek@nod-labs.com>
2022-03-09 22:22:03 +05:30
Vivek Khandelwal 1a2a9e066f [MLIR][TORCH] Add TorchToTMTensor pass
This pass is added to lower ops, which can not be lowered
via the TorchToLinalg pass, such as `torch.bincount` op.
This pass also uses torch-mlir's TMTensor Dialect to lower the
complex ops.

Also add torch.bincount op lowering with the help of TMTensor dialect

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-03-08 22:52:34 +05:30
Gaurav Shukla e57d3f9774 [LINALG] Fix `aten.bernoulli` op lowering
- This commit adds E2E support for `aten.rand_like` and
  `aten.bernoulli_.Tensor` ops.
- The `aten.bernoulli(x)` was implemented as:
  `aten.bernoulli(x) = rand_like(x) < 0.5`, assuming 0.5 as default
  probability, whereas according to the pytorch documentation:
  https://pytorch.org/docs/stable/generated/torch.bernoulli.html#torch.bernoulli
  the input x in `aten.bernoulli(x)` is itself a tensor containing
  probabilities to be used for drawing the binary random number.
- So this commit fixes the `aten.bernoulli(x)` implementation as:
  `aten.bernoulli(x) = rand_like(x) < x`.
- It also fixes the case where the input to `aten.bernoulli_.float` is
  an integer tensor. In this case the input must be casted to float type
  before passing it as operand to `aten.rand_like` op.
  `aten.bernoulli_.float(x, p) = rand_like(float(x)) < p`.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2022-03-05 09:38:22 +05:30
Vivek Khandelwal af551bd9cd [MLIR][TORCH] Add E2E support for aten.full_like op
This commit decomposes `aten.full_like` op into `aten.empty_like`
and `aten.fill` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-03-04 21:58:23 +05:30
Vivek Khandelwal d61ae92eee [MLIR][TORCH] Add E2E support for aten.full op
This commit decomposes `aten.full` op into `aten.empty` and
`aten.fill` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-03-04 21:58:23 +05:30
Ramiro Leal-Cavazos 9ce62473f9
Add static type information support to `aten.bmm` (#636)
This commit adds static type information support to `aten.bmm`. This
is needed for the forward pass of Bert training.
2022-03-03 13:01:17 -08:00
Yi Zhang 1d285f0153 Add aten.hardtanh e2e support. 2022-03-02 12:28:06 -05:00
Prashant Kumar 819f29316f Decompose aten.silu op
Decomposition of aten.silu.op is added as silu(x) = x * sigmoid(x).
2022-03-01 23:24:19 +05:30
Vivek Khandelwal ddd45d6068 [MLIR][TORCH] Add E2E support for aten.new_zeros, aten.new_ones op
This commit adds lowering of `aten.new_zeros` and `aten.new_ones` op

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-03-01 22:09:47 +05:30
Prashant Kumar 7c637eebc3 [LINALG] Decompose aten_hardswish op.
`aten.hardswish` op is decomposed into (x/6) * Relu6(x+3).
2022-02-25 21:59:27 +05:30
Gaurav Shukla 056cd2078d Revert "[LINALG] Decompose `aten.batch_norm` into `aten.native_batch_norm`"
This reverts commit 442ff4605c.
2022-02-25 15:46:55 +05:30
Ramiro Leal-Cavazos ba29d4f250
Add operand type invariant to `torch.overwrite.tensor.contents` (#606)
This commit adds the invariant to the op `torch.overwrite.tensor.contents` that
both of its operands have the same shape and size. In order to
maintain the invariant, special handling of this op is added to the
`RefineTypes` pass.
2022-02-22 11:41:46 -08:00
Ramiro Leal-Cavazos ea371a9bf2
Fix handling of view-like ops in `maximize-value-semantics` (#611)
This commit adds handling to the `maximize-value-semantics` pass for
the case where a view-like op depends on a tensor that has been
overwritten by a value tensor. The approach for removing the
dependency is to change the input to the view-like op to be a copy of
the value tensor that is being used to overwrite.

This commit also removes `AtenFill_ScalarOp` and
`AtenBernoulli_FloatOp` from the list of view-like ops, since these
ops now have a corresponding op with value semantics into which they
get converted in the `reduce-op-variants` pass.
2022-02-18 10:19:07 -08:00
Ramiro Leal-Cavazos 2823277f7c
Add static type information support to `aten.mm` (#602)
This commit adds static type information support to `aten.mm`. This is
needed for the forward pass of Bert training.
2022-02-18 09:56:48 -08:00
Prashant Kumar ed9bd556b3 Fix bug for aten_nll_loss op in the refine types pass
The check for `self.hasSizes` was missing before performing `.size()`
operation.
2022-02-17 19:02:12 +05:30
Nirvedh f8cb32faf0 LLVM bump
Major changes: opTrait changed to Trait, selectOp moved to arith dialect
assertOp moved to cf dialect
2022-02-16 15:28:13 -05:00
Gaurav Shukla 442ff4605c [LINALG] Decompose `aten.batch_norm` into `aten.native_batch_norm`
- This commit decomposes the `aten.batch_norm` op into the
  `aten.native_batch_norm` op, instead of lowering it to the
  `linalg.generic` op.
- It also adds run-time asserts in the `aten.native_batch_norm` lowering
  to make sure that the shape of the weight, bias, running_mean, and
  running_var must match the num of features.
- Since the `aten.native_batch_norm` op is not supported at TOSA backend,
  all the modules that are dependent on the `aten.native_batch_norm` op
  will fail and therefore they should be removed from the TOSA `passing`
  set.
- It also moves `checkNotNone` to utility.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2022-02-16 23:41:38 +05:30
Prashant Kumar 8b79b5f48f Modify aten._log_softmax op decomposition for numerical stability.
`aten.log_softmax` is decomposed to be more numerically stable.
2022-02-16 12:26:17 +05:30
Gaurav Shukla cd21dda867 [LINALG] Add E2E support for `aten.Hardsigmoid` op
This commit adds lowering of `aten.Hardsigmoid` op.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2022-02-16 02:35:18 +05:30
Ramiro Leal-Cavazos 00a6e9c1bb
[LINALG] Add value tensor variant to `fill_.Scalar` (#600)
This commit adds the op `PseudoAtenFillScalarOp` that represents
`AtenFill_ScalarOp` without the underscore. The approach is the same
as in commit dd998fa4d4.

Adding this op allows for a simpler and more consistent version of the
`empty` and `empty_like` op e2e tests.
2022-02-15 11:58:03 -08:00
Gaurav Shukla 41acde599b [LINALG] Add E2E support for `aten.[le|ge].Scalar` ops
- This commit adds lowering of `aten.le.Scalar` and `aten.ge.Scalar` ops
  as a part of `convert-torch-to-linalg` pass.
- It also creates a new test script `elementwise_comparison.py` for all
  element-wise comparison ops.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2022-02-15 12:21:09 +05:30
Ramiro Leal-Cavazos 413e6000d2
[LINALG] Add value tensor variant to `bernoulli_.float` (#597)
This commit adds the op `PseudoAtenBernoulliFloatOp` that represents
`AtenBernoulli_FloatOp` without the underscore. This is needed to make
sure that the `ReduceOpVariants` pass turns the in-place op into an op
that takes value tensors as inputs, otherwise the
`MaximizeValueSemantics` pass will not be able to add value semantics
correctly.
2022-02-14 18:58:48 -08:00
Gaurav Shukla f00d1686c8 [LINALG] Add E2E support for `aten.[Bool.Tensor|Float.Tensor]` op
- This commit adds lowering of `aten.Bool.Tensor` and
  `aten.Float.Tensor` op as a part of `convert-torch-to-linalg` pass.
- It also adds support for returning bool types.
- It also fixes lowering of the `aten.Int.Tensor` op for non-zero rank
  input tensors.
- If a scalar number is converted to a 0-d tensor and passed on to the
  `aten.Float.Tensor` op, it folds to the scalar number.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2022-02-14 23:09:20 +05:30
Yi Zhang 9e7b6cab08 Add folder for aten.gt/lt.float 2022-02-14 12:34:01 -05:00
Yi Zhang ce4d6d1f83 Remove hacky aten.select.int lowering code 2022-02-11 18:14:58 -05:00
Ramiro Leal-Cavazos c1167853db
Fix error in RefineTypes for constant alloc ops (#579)
This commit fixes an error in the refine types pass of constant
allocation ops. The function used to set the dtype,
`fillInDtypeGivenDtypeAndDataType`, takes two torch types as arguments,
but a torch type and a standard MLIR type were being passed into it.

This commit also fixes the way the dtype was calculated in
`visitAtenToDtypeOp`. This op was also passing a standard MLIR type as
an argument to the `fillInDtypeGivenDtypeAndDataType`
function. Moreover, since the op `aten.to.dtype` has the dtype
argument as not optional, all that is needed is to match
against the int value to extract the dtype.
2022-02-10 18:02:18 -08:00
Prashant Kumar 258660deb6 Add aten.bernoulli decomposition.
aten.bernoulli is decomposed to aten.gtTensor(aten.uniform(x), x).
2022-02-11 00:35:33 +05:30
Prashant Kumar 102c497c4c Add decomposition of _log_softmax op.
Decompose _log_softmax into log(softmax(x)).
2022-02-10 23:17:26 +05:30
Prateek Gupta 318946a650 [TORCH][MLIR] Add E2E support for `aten._unsafe_view` op.
This commit adds decomposition of `aten._unsafe_view` op into
`aten.view` op.

Signed-Off-By: Prateek Gupta<prateek@nod-labs.com>
2022-02-10 22:28:58 +05:30
Ramiro Leal-Cavazos 9b89f8eb3f
[TORCH][MLIR] Add E2E support for aten.clone (#571)
This commit adds support for the aten.clone op.
2022-02-09 19:31:03 -08:00
Gaurav Shukla 2fefe68ffd [TORCH][MLIR] Add E2E support for `aten.native_batch_norm` op
- This commit adds support for `aten.native_batch_norm` operation.
- The current implementation only supports inference mode of
  `aten.native_batch_norm` op.

Signed-Off-By: Gaurav Shukla <gaurav@nod-labs.com>
2022-02-08 02:54:03 +05:30
Prashant Kumar ccf546f14c Add aten::nll_loss_backward op
The lowering of aten::nll_loss_backward op has been added
from torch to linalg dialect. The changes has been made as
a part of -torch-convert-to-linalg pass.

Signed-off-by: Prashant Kumar prashant@nod-labs.com
2022-02-04 21:57:53 +05:30
Prashant Kumar 68acc8696e Modify softmax decomposition to be more numerically stable.
The softmax decomposition is modified according to https://github.com/pytorch/functorch/blob/main/functorch/_src/decompositions.pytorch
to account for numerical stability. Also, modified aten.argmax lowering
to handle negative dimension.
2022-02-03 21:20:36 +05:30
Gaurav Shukla 0079901039 [TORCH][MLIR] Add E2E support for `aten.reshape` op
This commit decomposes `aten.reshape` into `aten.view` op in the case of
value tensor type operand.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2022-02-02 20:41:47 +05:30
Suraj Sudhir 1b505cbac5
RefineTypes fixes for TOSA backend (#557)
Handles Linear, Adaptive_AvgPool2D and FlattenUsintInts
Adds ResNet18 static model for TOSA

Signed-off-by: Suraj Sudhir <suraj.sudhir@arm.com>
2022-02-01 14:08:54 -08:00
Yi Zhang 0cb216a1ad [Torch][Linalg] Add basic support for RNG
This PR include the following pieces:
- Add torch `Generator` type. `Generator` type is converted to i64 in
refbackend type converter.
- Add seed managment support for the default global generator.
`torch_c.getNextSeed` op is used to get the seed. On refbackend, the
`torch_c.getNextSeed` is lowered to load/store from [0] of global
variable `default_generator` memref<i64> in `InsertRngGlobals` pass.
- Add `aten.uniform_` and testing as an example op for RNG ops. Add
`torch.pseudo.aten.uniform` op. It has the same operands and return as
the `aten.uniform_` from the op registry except for value semantics.
2022-01-31 18:56:42 -05:00
Yi Zhang 5d9a15263a [TORCH] Add aten.std e2e support 2022-01-31 15:17:49 -05:00
Prashant Kumar e58b66bc3b Add lowering of `aten.max.dim` op.
Lowering of `aten.max.dim` op has been added.
2022-01-31 21:41:22 +05:30
Liam Fitzpatrick 8bc028af05 Fold __is__ and unchecked_cast of derefine
The added e2e maxpool testcase from #545 was not getting a static shape
due to an unfolded prim.If when RefineTypes was called. This was because
of unfolded torch.iaten.__is__ and torch.prim.unchecked_cast operators
with torch.derefine operands.
2022-01-28 17:54:40 -05:00
stephenneuendorffer 52ed3313b4
Bump LLVM to 84fe34a0b7fdd7bbf179981d1583693d5d5ec68b (#544)
* external/llvm-project 881ff4e4ebe8...84fe34a0b7fd (466):
  > [MLIR] Workaround for python detection problems.
2022-01-27 17:21:09 -08:00
stephenneuendorffer 3fd9b7789e
Bump LLVM to 881ff4e4ebe8cc0cc045c7c167cffb01f94f27f8 (#539) 2022-01-25 22:16:30 -08:00
Yi Zhang ad4b9e0369 Minor fixes 2022-01-24 19:21:15 -05:00
Vivek Khandelwal 6fe70c7794 [MLIR][TORCH] Add E2E support for aten.index.Tensor op
This commit adds lowering of `aten.index.Tensor` op

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-01-19 13:37:56 +05:30
dan 3745f54489 Update external/llvm-project
- Add `qualified` to ods because of
https://reviews.llvm.org/D113873 and https://reviews.llvm.org/D116905
- Needed to revert https://github.com/llvm/torch-mlir/pull/520 as it
was based on an old torch version.
https://github.com/llvm/torch-mlir/pull/527 will bring this back with
a better design.
- Change ConvertAtenCatOp to use more accurate tensor shape info and
as much static info as possible to pass `tensor.insert_slice`
verification code added by https://reviews.llvm.org/D114715
- Other minor fixes
2022-01-18 13:25:42 -05:00
Anup Gangwar abd61b4974 * Workaround for Issue 521, remove createTosaToStandard from Passes.cpp and
disable ElementwisePowModule_basic
* Update nll_loss_forward to align to the change in PyTorch

Signed-off-by: Anup Gangwar <anup.gangwar@arm.com>
2022-01-12 14:30:58 -06:00
Anup Gangwar d69d29b7a6 * [tosa] Support for AtenPowTensorScalarOp with constant Scalar as input
Signed-off-by: Anup Gangwar <anup.gangwar@arm.com>
2022-01-11 22:55:54 -05:00
Liam Fitzpatrick 077e55d756 Add support for constant_pad_nd
Note that to enable folding of the code coming from an example
like the ConstantPad2dStaticModule e2e test, support for other
operations had to be added/improved:
- aten::neg.int
- aten::eq.float
- aten::eq.str
- prim::Uninitialized
2022-01-11 10:25:25 -05:00
Vivek Khandelwal ca662dc9cc [MLIR][TORCH] Add E2E support for aten.threshold, aten.threshold_backward op
This commit adds lowering of `aten.threshold` op
This commit adds lowering of `aten.threshold_backward` op

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-01-10 11:56:56 +05:30
Yi Zhang 7cf7b91664 [MLIR][TORCH] Fix tensor literal int elem type to be signless
The element type of tensor literal should be signless when converted to
builtin tensor types.
2022-01-07 16:34:24 -05:00
Yi Zhang 732a76f45c Make broadcasting result shape more static
This involes the following 2 parts:
- Change refine type to propagate more static shape info.
- Get as much static shape info as possible when creating the result
tensor when converting to linalg.
2022-01-06 18:39:27 -05:00
Gaurav Shukla 3c40539b34 [TORCH][MLIR] Add E2E support for `aten.[ones_like|zeros_like]`
- This commit adds E2E support for `aten.ones_like` and
  `aten.zeros_like` ops.
- Adds support for non-None `dtype` argument of `aten.empty_like` op.
- All the unit test cases related to constant tensor allocation like ops
  are moved to a different file named `constant_alloc.py`.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2022-01-06 20:24:40 +05:30
Liam Fitzpatrick ccfdfd1b80 Refine static shapes for conv2d and maxpool2d 2022-01-03 11:09:23 -06:00
Vivek Khandelwal 4486de5ef3 [MLIR][TORCH] Add E2E support for torch.arange op
This commit adds lowering of `aten.arange.start_step` op.
This commit decomposes `aten.arange` and `aten.arange.start` into
`aten.arange.start_step` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2021-12-27 22:45:48 +05:30
Gaurav Shukla a83004c806 [TORCH][MLIR] Fold trivial cases of `aten.to.dtype` and `aten.view` op
- It folds `aten.to.dtype` when the input tensor type and result type
  are exactly same.
- It folds `aten.view` when the rank of both the input tensor type and
  result type is unity.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2021-12-24 13:32:34 +05:30
Nirvedh 3cb46cecef Added aten::t() Op 2021-12-22 10:57:10 -05:00
xndcn 5eed562e19 add aten.sub.int/aten.mul.int lowering in TorchToStd 2021-12-17 10:35:15 -08:00
Gaurav Shukla bc9abbc1c9 [TORCH][MLIR] Add E2E support for `aten.empty_like` op
This commit adds decomposition of `aten.empty_like` into `aten.empty`
op.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2021-12-16 20:17:39 +05:30
Gaurav Shukla eddc09aa55 [TORCH][MLIR] Add E2E support for `aten.eq` and `aten.lt` ops
- Added E2E support for `aten.eq.Tensor` and `aten.lt.Tensor` ops. Both
  the operands are expected to be of the same type, i.e., type promotion
  is not addressed as a part of this commit.
- Added E2E support for `aten.eq.Scalar` and `aten.lt.Scalar` ops.
  Tensor operand type to Scalar operand type promotion has not been
  handled in this commit.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2021-12-16 18:47:22 +05:30
Suraj Sudhir 829cf8afc3
[tosa] Implement Argmax support (#485)
Signed-off-by: Suraj Sudhir <suraj.sudhir@arm.com>
2021-12-15 11:01:01 -08:00
Prashant Kumar ab81f871e4 Add aten.tensor.int and aten.tensor.float op lowerings.
Add the required lowerings and correct test cases.
These op produce zero-d tensors and it was incorrectly mentioned in
refine types to produce 1d tensor of size 1.
2021-12-15 17:21:34 +05:30
Prashant Kumar 528354de84 Add `aten.gt.Tensor` op
`aten.gt.Tensor` op has been added in torch dialect and the
lowering of the op has been done to the linalg dialect.

Signed-off-by: Prashant Kumar <prashant@nod-labs.com>
2021-12-13 00:08:52 +05:30
Gaurav Shukla a778f990e9 [TORCH][MLIR] Add E2E support for `aten.ceil` op
This commit adds lowering of `aten.ceil` op as a part of element-wise
ops lowering.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2021-12-12 01:15:47 +05:30
Prateek Gupta cfc8de36f8
[MLIR][TORCH] Add E2E support for `aten.native_layer_norm`. (#470)
This commit adds support for aten.native_layer_norm operation. Here
the previous code for aten.layer_norm is tweaked a little bit to
accomodate both mean and variance values alongwith the layer norm
value. This commit also adds decomposition of aten.layer_norm into
aten.native_layer_norm, which was previously getting lowered directly
to linalg.

Signed-Off-By: Prateek Gupta<prateek@nod-labs.com>
2021-12-10 19:06:19 +05:30
Gaurav Shukla 5a47f92390 [TORCH][MLIR] Add E2E support for `aten.squeeze.dim` op
This commit adds lowering of `aten.squeeze.dim` op into
`linalg.TensorCollapseShape` op. Here, the dim(th) dimension of the
input tensor is not supposed to be dynamic.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2021-12-10 17:01:20 +05:30
Gaurav Shukla f34eb66124 [TORCH][MLIR] Add E2E support for [`aten.gt.Scalar`|`aten.where.self`]
This commit adds lowering of `aten.gt.Scalar` and `aten.where.self` as a
part of element-wise ops lowering.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2021-12-09 12:47:10 +05:30
Vivek Khandelwal 9958cf08b6 [MLIR][TORCH] Add E2E support for aten.zeros op
This commit adds lowering of `aten.zeros` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2021-12-08 22:42:33 +05:30
Prashant Kumar 977b1b03ea Add aten::nll_loss_forward op lowering.
The op lowering has been added as a part of `torch-lower-to-linalg`
pass. This takes care of ignore_index but the weight and reduction
operand is still to be accounted for.

Signed-off-by: Prashant Kumar <prashant@nod-labs.com>
2021-12-07 17:11:08 +05:30
Prashant Kumar 5c7ce45c4e Update external llvm to 966b72098363d44adf2882b9c34
The external llvm is updated to point to
https://reviews.llvm.org/rG966b72098363d44adf2882b9c34fcdbe344ff913.
Some of the changes wrt. NamedAttr has been addressed.

Signed-off-by: Prashant Kumar <prashant@nod-labs.com>
2021-12-06 23:33:58 +05:30
Suraj Sudhir c9c9b68d1f [tosa] Add Torch reduction operators
- Supports variants with multiple dims, one dim, all dime
- Leverages legalize_common and legalize_utils code from
TensorFlow-TOSA work

Signed-off-by: Suraj Sudhir <suraj.sudhir@arm.com>
2021-12-03 09:01:48 -08:00
Prashant Kumar ab6211184f Bug fixes that pops up when updating generatedAten ops td
There is an op name change that requires trivial changes.
Also, some of the warning has been fixed.

Signed-off-by: Prashant Kumar <prashant@nod-labs.com>
2021-12-03 22:18:18 +05:30
Yi Zhang 24bc06fc8d Fix compilation warnings. 2021-12-03 11:44:32 -05:00
Daniel Garvey a52aded0b9
Add lowering for slice and selectInt (#398) 2021-12-02 22:09:21 -06:00
Vivek Khandelwal 46a2189a41 [MLIR][TORCH] Add E2E support for aten.bitwise_and.tensor op
This commit adds lowering of `aten.bitwise_and.tensor` op.

Signed-Off By: Vivek Khandelwal vivek@nod-labs.com
2021-12-02 21:06:15 +05:30
Vivek Khandelwal 46a0668b3b [MLIR][TORCH] Add E2E support for aten.mean and aten.numel op.
This commit adds lowering of `aten.mean` and `aten.numel` op.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2021-12-02 11:51:13 +05:30
Suraj Sudhir 1251c186b5 [tosa] Add TosaMakeBroadcastable pass to torch-to-tosa pipeline.
Fixes broken e2e test ElementwiseAddModule_basic

Signed-off-by: Suraj Sudhir <suraj.sudhir@arm.com>
2021-11-30 13:26:57 -08:00
Ramiro Leal-Cavazos e6675a50d3 Add support for dtype argument in reduction ops
Many reduction ops take as an argument an optional output dtype that
can change the type of the input tensor before the reduction is
performed. This commit adds support for the optional dtype flag that
had been previously ignored.

Test:
/tools/torchscript_e2e_test.sh -f 'ReduceSumDtype'
/tools/torchscript_e2e_test.sh -f 'ReduceSumDImIntListDtype'
2021-11-30 12:53:59 -05:00
Gaurav Shukla 73b27b32dc [MLIR][TORCH] Add E2E support for `aten.squeeze` op
This commit adds lowering of `aten.Squeeze` op into
`linalg.TensorCollapseShape` op. The size 1 dynamic dimensions are not
handled as a part of this commit.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2021-11-30 23:00:28 +05:30
ds1231h 9ad5954e41 aten.abs and aten.reciprocal to linalg 2021-11-30 11:31:55 -05:00
Yi Zhang 5d28549c2c Add folder for torch.aten.Int.Tensor
This is to fold the common pattern from Bert inference like:
```
%111 = torch.prim.NumToTensor.Scalar %110 : !torch.int ->
    !torch.vtensor<[],si64>
%112 = torch.aten.Int.Tensor %111 : !torch.vtensor<[],si64> ->
    !torch.int
```
2021-11-30 21:55:48 +05:30
Prashant Kumar 36afa4a4d3 Add aten.fill.Scalar op lowering
The lowering of aten.fill.Scalar has been added.
The changes have been made as a part of -torch-convert-to-linalg pass.

Signed-off-by: Prashant Kumar <prashant@nod-labs.com>
2021-11-30 21:12:15 +05:30
Daniel Garvey 539511c19b
Add dropout op (#436)
Co-authored-by: dan <dan@nod-labs.com>
2021-11-29 12:30:03 -06:00
dan 03fdf56f21 add aten.add.int lowering in TorchToStd 2021-11-29 13:22:50 -05:00
Liam Fitzpatrick 7616d28ce1 Add leakyrelu support 2021-11-27 23:04:46 +05:30
Prateek Gupta f461a7ebce
[TORCH][MLIR] Add E2E support for aten._softmax operation. (#431)
Signed-Off-By: Prateek Gupta <prateek@nod-labs.com>
2021-11-25 11:19:02 +05:30
nodlabs 67ce816fca lowered addcmul and addcdiv to linalg 2021-11-24 17:26:47 -05:00
Ramiro Leal-Cavazos 56c6e3676b Fix bug in NumToTensor handling of float values
This commit fixes a type promotion bug when NumToTensor was given a
float as an argument. In particular, the rules for type promotion of a
scalar vary depending on if the scalar is part of a tensor op or
not. NumToTensor falls under the second category, but it was being
treated as part of the first category.
2021-11-23 11:47:44 -05:00
Prashant Kumar 1dc374014b Refactor to share code in DecomposeComplexOps pass
Share code in `log_softmax_backward` and `softmax_backward` ops.
2021-11-20 00:39:34 +05:30
Prashant Kumar ea7a30f9b9 Add e2e test for aten.log_softmax_back_data op
aten.log_softmax_back_data op lowering and required
tests has been added. Some NFC have also been added.

Signed-off-by: Prashant Kumar prashant@nod-labs.com
2021-11-19 00:08:28 +05:30
Gaurav Shukla 663fc1ef51 [MLIR][TORCH] Add E2E support for [`aten.mul.Scalar`|`aten.addmm`]
This commit adds lowering of `aten.mul.Scalar` and also adds
decomposition of `aten.addmm` to `aten.mul.Scalar`, `aten.add.Tensor`
and `aten.mm` ops.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2021-11-18 22:26:41 +05:30
Prateek Gupta ecf78b9849
[TORCH][MLIR] Add E2E support for `aten.gelu_backward` operation. (#418)
This commit adds new operation `aten.gelu_backward` in the aten
dialect and adds lowering of this operation from aten to linalg.

Signed-Off-By: Prateek Gupta <prateek@nod-labs.com>
2021-11-17 14:59:38 +05:30
Yi Zhang 0fe70994e5 Add support for multiple return values
This change is to unblock the work of some backprop ops returning more
than one tensors. We will need to think of a more scalable approach
in the future if more flexible return types combinations are needed.
2021-11-16 21:07:45 -05:00
Yi Zhang 53733933a4 Update llvm upstream to 0b17336f793108a7b10c3fa913039144ef1d0f61
Update AsmPrinter/Parser and MatchAndRewrite
2021-11-16 13:04:51 -05:00
Prashant Kumar 909f7d7171 Add e2e testing for aten_tanh_backward op.
The e2e testing for aten_tanh_backward op has been added.
The testing is done for ref_backend.
2021-11-09 11:28:49 -05:00
George Petterson 2764e86f02 Add Rsqrt 2021-11-09 11:08:28 -05:00
Yi Zhang 3bd9d2a4c7 Add e2e support for aten._softmax_backward_data.
Decompose aten._softmax_backward_data into aten math ops. Also decompose
`aten.size` to facilitate decomposing _softmax_backward_data.
2021-11-09 13:09:30 +05:30
Yi Zhang 05c4dd8e39 Add convertScalarToDtype helper.
This is to facilitate scalar type conversion in the TorchToLinalg. As
part of adding the helper, this PR also:
- Updated `AtenAddTensorOp`, `AtenSubTensorOp` to use the helpers to
support more type variants.
- Added e2e type promotion testing.
- Added i32 memref return/arg type to support e2e testing.
2021-11-08 17:50:52 -05:00
George Petterson e23cabf3a9 Add log2 2021-11-08 16:19:59 -05:00
George Petterson f41958037a Add NumToTensor 2021-11-08 15:56:52 -05:00
Prateek Gupta 18e8806b14 [TORCH][MLIR] Add E2E support for aten::to.dtype.
This commit adds end to end support for AtenToDtypeOp from aten
to linalg.

Signed-Off-By: Prateek Gupta <prateek@nod-labs.com>
2021-11-08 12:56:03 -05:00
Wang Kangyu 4bb9b44775 Add lowering of "aten.pow.Tensor_Scalar" op
Add e2e support for torch.pow(Tensor, Float)
2021-11-08 09:19:50 -08:00
Wang Kangyu b33543af85 Add lowering of aten.floor op 2021-11-06 17:31:44 -04:00
nodlabs 5ff823ace9 lowerd Sqrt to linalg
reused clang-format, as changes got deleted
2021-11-06 11:29:46 -04:00
Gaurav Shukla 2ce47dc8e4 [TORCH][MLIR] Add E2E support for aten.expand
This commit adds decomposition of `aten.Expand` to `aten.BroadcastTo`
op.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2021-11-03 23:58:59 +05:30
Prashant Kumar ef897dbb19 Add lowering of `aten.log_softmax` op.
The `aten.log_softmax` is decomposed into `aten.softmax` and
`aten.log` op.
2021-11-03 22:10:05 +05:30
Prashant Kumar 127c7d8e27 Add lowering of `torch.log` op
The lowering of `torch.log` op has been added.

Signed-off-by: Prashant Kumar <prashant@nod-labs.com>
2021-11-02 21:18:00 +05:30
George Petterson 6dde5b347e Add rsub 2021-11-02 09:56:48 -04:00
Gaurav Shukla 69eaf9a154 [MLIR][TORCH] Add E2E support for `torch.aten.view`
- This commit adds lowering of `aten.View` to `linalg.TensorExpandShape`.
- This lowering will be successful only when one or more static
  dimensions are expanded.
- It also fixes a typo in `ConvertAtenFlattenUsingIntsOp` conversion
  pattern.

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>
2021-10-29 22:33:10 +05:30
Yi Zhang 752abc8d01 Add type promotion code to refine types.
The types have different levels of categories: where
complex > floating > integral > boolean (> means left hand
side has higher category).

The operands have different levels of priorities where:
dimensioned tensor > 0-dim tensor > scalar == wrapped 0-dim tensor.
This is represented by the `ResultTypeState.dimResult`,
`ResultTypeState.zeroResult` and `ResultTypeState..wrappedResult` in
the source code.

For operands of the same priorities, the result type should be the
highest categories with sufficient width to hold all operands.

By default, only the highest priority operands participate in the type
promotion logic. Lower priority operands participate if they are in
a higher category than any higher priority operands.

For example, <[],f32> (lower priority) and <[1], si64> tensor would
result in <[?],f32> tensor because floating > integeral. Another example
<[],f64> (lower priority) and <[1], f32> tensor would result in
<[?], f32> tensor because f32 and f64 are the same category.

The ScalarType enum definition, type promotion table, ResultTypeState
struct definition and some helpers are copied from
aten/src/ATen/native/TypeProperties.*
Other references:
- https://pytorch.org/docs/stable/tensor_attributes.html#type-promotion-doc
- https://github.com/pytorch/pytorch/issues/9515

Other minor changes:
1. Fix `visitExpandLikeOp` to consider cases where the given sizes list
size is larger than the input rank.
2. Add back the somehow deleted `torch.aten.softmax.int` tests in
decompose-complex-ops.mlir.
2021-10-29 11:17:39 -04:00
George Petterson 2ea2ab518b Add contiguous 2021-10-29 11:11:50 -04:00
Prateek Gupta c33a2ca952 [TORCH][MLIR] Add E2E support for aten.permute.
This commit adds lowering of aten.permute to linalg.generic operation.

Signed-Off-By: Prateek Gupta <prateek@nod-labs.com>
2021-10-28 10:25:26 -04:00
Sean Silva 30df2ec71b Add min/max/clamp support.
Part of #380

Also
- BoolType is not considered as Scalar
- e2e framework fixes for nan handling
- `tu.rand(..., low=, high=)` support
- delete unused variable (fix warning)
- Add IouOfModule from #380 to e2e test suite (this is a common
  calculation in vision models)

 Your branch is ahead of 'origin/main' by 1 commit.
2021-10-27 13:29:21 -07:00
Prashant Kumar 5009cbf55c Add lowering of aten.matmul op.
Lowering of `aten.matmul` op is added from torch to linalg dialect.
The different cases correspond to
https://pytorch.org/docs/stable/generated/torch.matmul.html.
TODO: Broadcasting in case of batch-matmul is yet to be taken care of.

Signed-off-by: Prashant Kumar <prashant@nod-labs.com>
2021-10-26 12:45:09 -04:00
Boian Petkantchin e276dbbaa6
Add aten::gelu lowering (#374)
* Print more exception info on error during test execution

* Fix formatting

* Add aten::gelu lowering

Co-authored-by: Boian Petkantchin <boian@nod-labs.com>
2021-10-25 16:16:01 -07:00
Yi Zhang abfaf8c577 Add aten.ne.bool to make CI pass 2021-10-21 14:45:41 -04:00
George Petterson 7c47b9a0c8 Formatting fix 2021-10-19 13:33:31 -04:00
George Petterson 8853dfbc74 Add broadcast 2021-10-19 13:33:31 -04:00
Yi Zhang a459e09ab7 E2e support for aten.softmax.int and aten.embedding
- Added a DecomposeComplexOps pass to decompose complex torchOps.
- Refactored `visitAtenArgmaxOp` and `visitAtenAnyDimOp` to
`visitReductionAlongDimIntOp`.
- Moved some helper functions into
torch-mlir/Dialect/Torch/Utils/Utils.h to be shared by multiple files.
- Added support for f64 tensor as argument and return types.
2021-10-18 17:57:45 -04:00
Yi Zhang 0902438882 Update llvm-project to a54f4eae0e1d0ef5adccdcf9f6c2b518dc1101aa
This brings in https://reviews.llvm.org/D110797. PRs that are in
progress will need to use scripts provided by
https://llvm.discourse.group/t/psa-removed-arithmetic-ops-from-standard/4455.
2021-10-18 13:36:42 -04:00
dan 7750d2173a add argmax lowering
Add argmax lowering from torch to linalg
2021-10-13 14:31:16 -04:00
Sean Silva 0c5c84d63d Add a basic TOSA E2E backend.
We lower through linalg-on-tensors and use RefBackend to run it.
This adds enough support for a "tanh" op. Adding more ops should be
fairly mechanical now that things are wired up. Run with:
```
./tools/torchscript_e2e_test.sh -c tosa
```

The backend structure is very similar to linalg-on-tensors based E2E
backends and is a nice parallel (see `tosa_backend.py`). Actually, this
forced a nice refactoring to the layering here. We removed
`torchscript-module-to-linalg-on-tensors-backend-pipeline` and instead
require separately running
```
torchscript-function-to-torch-backend-pipeline,torch-backend-to-linalg-on-tensors-backend-pipeline
```
This highlights the step that lowers to the "torch backend contract"
of cleaned up `torch` dialect ops is a critical step in the lowering.
Going forward, that is the key load-bearing contract of the torch-mlir
project, not the linalg-on-tensors backend contract.

Recommended review order:
- `TorchToTosa.cpp` / `TorchToTosa/basic.mlir`
- `python/torch_mlir_e2e_test/torchscript/configs/tosa_backend.py` and
  the new `utils.py` file there.
- `python/torch_mlir_e2e_test/tosa_backends/linalg_on_tensors.py` and
  `abc.py` in that directory for the TOSA backend e2e interface.
- other misc mechanical changes
2021-10-08 09:59:45 -07:00
Yi Zhang 98ba255288 E2e support for layernorm. 2021-10-04 14:15:13 -04:00
Sean Silva 5b6902e31c Dual license the torch-mlir project.
This commit (with approval from all contributors) dual licenses
the torch-mlir project under both the standard LLVM license and the
standard PyTorch license. This will facilitate moving code between
torch-mlir and the two upstream projects.

The standard file comment is now:

```
// This file is licensed under the Apache License v2.0 with LLVM Exceptions.
// See https://llvm.org/LICENSE.txt for license information.
// SPDX-License-Identifier: Apache-2.0 WITH LLVM-exception
// Also available under a BSD-style license. See LICENSE.
```

See `LICENSE` in the project root for the terms of both licenses.
2021-10-01 10:46:08 -07:00
Yi Zhang 89225b0cd8 Add BertSequenceClassification model to e2e
Use torch tracing to get the module because the original model is not
TorchScriptable out of box.
2021-09-30 13:30:29 -04:00
Ramiro Leal-Cavazos b59f2cb673
Implement the lazytensor package (#331)
Implement the `lazytensor` python package for converting
lazy computations captured by the Lazy Tensor Core into MLIR.
This PR also fixes a few things with `torchfx` and its example
2021-09-28 17:25:06 -07:00
Sean Silva 4fad753073 Move external/torch-mlir to the root of the repo. 2021-09-27 17:11:08 -07:00
Sean Silva a99cbeeb7e Move TorchConversion dialect and TorchTo* into torch-mlir 2021-09-23 21:39:31 -07:00
Sean Silva 2213584c4f VerifyBackendContract -> VerifyLinalgOnTensorsBackendContract
This moves it into TorchConversion since it is only needed there.

This removes the Backend/ directory.
2021-09-23 21:39:31 -07:00
Yi Zhang 603e068e45 E2e implementation for `aten.cat`,`aten.gather`, `aten.bmm`
Also contains the following changes:
- Remove derefineOp canonicalizer because it's not safe.
- Support for optional tensor and list tensors in reduceOpVariant. This
only works for some special detected and easy to handle cases. For list,
it covers the case list is got from a `ListConstruct`. For optional, it
covers the case optional is constructed from a `DerefineOp`.
- Remove the `inferReturnTypes` for `FromBuiltinTensorOp` because it's
not safe to deduce types from the input. For example, a built-in tensor
of i8 could be converted to si8 or ui8. It's better to let the user
specify the return type explicitly.
2021-09-22 19:15:01 -04:00
Sean Silva 1a0b953ea7 Eliminate almost all mentions of IREE.
A few remain in examples/docs that will be naturally be updated in due
time.

This regresses the list support and the general direction of more widely
supported control flow, lists/dicts/globals that we were going for with
the TorchScript path. The idea is that we are deferring that work to
make torch-mlir a very clean standalone thing. We will reboot it,
probably using some of the tools of iree_pydm to make it simpler, and in
a more natural place (such as an iree-torch repo that depends on IREE and
torch-mlir to build a working PyTorch frontend solution for IREE -- it
was really weird that npcomp depended on IREE).
2021-09-22 16:06:38 -07:00
Sean Silva a25163fbfa Remove old RefBackend
It is superceded by the new one.
2021-09-22 15:33:28 -07:00
Sean Silva f9c48d0b89 Bring up new RefBackend.
`tools/torchscript_e2e_test.sh` is all green.

This needs a few passes I put into torch-mlir/lib/RefBackend (not to be
confused with `npcomp/lib/RefBackend`, which will soon be deleted).

For the sake of review, since this brings together a lot of things, I
split this into its own commit. I temporarily commented out some "list"
stuff that we are going to remove as part of the torch-mlir refocus.
2021-09-22 14:20:22 -07:00
Sean Silva b6be96d722 [torch-mlir earthmoving (2/N)] Python code movement.
This moves the bulk of the Python code (including the Torch interop)
from `frontends/pytorch` into `torch-mlir/TorchPlugin`. This also
required reconciling a bunch of other Python-related stuff, like the
`torch` dialects.

As I did this, it was simpler to just remove all the old numpy/basicpy
stuff because we were going to delete it anyway and it was faster than
debugging an intermediate state that would only last O(days) anyway.

torch-mlir has two top-level python packages (built into the
`python_packages` directory):

- `torch_mlir_dialects`: `torch` dialect Python bindings (does not
  depend on PyTorch). This also involves building the aggregate CAPI for
  `torch-mlir`.
- `torch_mlir`: bindings to the part of the code that links against
  PyTorch (or C++ code that transitively does).

Additionally, there remain two more Python packages in npcomp (but
outside `torch-mlir`):

- `npcomp_torch`: Contains the e2e test framework and testing configs
  that plug into RefBackend and IREE.
- `npcomp_core`: Contains the low-level interfaces to RefBackend and
  IREE that `npcomp_torch` uses, along with its own
  `MLIR_PYTHON_PACKAGE_PREFIX=npcomp.` aggregation of the core MLIR
  python bindings. (all other functionality has been stripped out)

After all the basicpy/numpy deletions, the `npcomp` C++ code is now very
tiny. It basically just contains RefBackend and the `TorchConversion`
dialect/passes (e.g. `TorchToLinalg.cpp`).

Correspondingly, there are now 4 main testing targets paralleling the
Python layering (which is reflective of the deeper underlying dependency
structure)

- `check-torch-mlir`: checks the `torch-mlir` pure MLIR C++ code.
- `check-torch-mlir-plugin`: checks the code in `TorchPlugin` (e.g.
  TorchScript import)
- `check-frontends-pytorch`: Checks the little code we have in
  `frontends/pytorch` -- mainly things related to the e2e framework
  itself.
- `check-npcomp`: Checks the pure MLIR C++ code inside npcomp.

There is a target `check-npcomp-all` that runs all of them.
The `torch-mlir/build_standalone.sh` script does a standalone build of
`torch-mlir`.

The e2e tests (`tools/torchscript_e2e_test.sh`) are working too.

The update_torch_ods script now lives in
`torch-mlir/build_tools/update_torch_ods.sh` and expects a standalone
build.

This change also required a fix upstream related to cross-shlib Python
dependencies, so we also update llvm-project to
8dca953dd39c0cd8c80decbeb38753f58a4de580 to get
https://reviews.llvm.org/D109776 (no other fixes were needed for the
integrate, thankfully).

This completes most of the large source code changes. Next will be
bringing the CI/packaging/examples back to life.
2021-09-15 13:40:30 -07:00
Sean Silva 28a7738189 [torch-mlir earthmoving (1/N)] C/C++ code movement.
This creates the `external/torch-mlir` directory as an
LLVM_EXTERNAL_PROJECTS-compatible project (analogous to
`iree-dialects`) and completes movement/rename of all pure MLIR C/C++
compiler code into there. The next step will be to move all the Python
code / code that links/includes PyTorch C++ code (which currently lives
in `frontends/pytorch`) into a subdirectory here.

I call this "earthmoving" because it is mostly mechanical changes and
renames. As a quick summary (we can change this down the road easily)
- C++ `mlir::NPCOMP::Torch -> mlir::torch::Torch`
- CAPI `npcompTorchListTypeGet -> torchMlirTorchListTypeGet`
- preprocessor `#ifndef NPCOMP_ -> #ifndef TORCHMLIR_`
- CMake `NPCOMPFoo -> TorchMLIRFoo`

The goal of this is to create a standalone project creating a center of
mass for entry into the MLIR ecosystem from PyTorch, suitable in scope
for eventual inclusion/ownership in PyTorch. The idea is that
`external/torch-mlir` will some day be pulled out into its own
repository, and then npcomp will simply pull it in as a submodule.

Layering-wise, what lives in `torch-mlir` lowers code from PyTorch
(currently TorchScript, but TorchFX or pytorch/xla-style tracing are
possible extensions) down to what we have been calling the "Torch
backend contract" which is cleaned up IR (inlining, simplifcation,
conversion to value tensors, ...) entirely in the `torch` dialect. This
is the branching off point for further lowering, of which npcomp takes
one opinion (outside `torch-mlir` of course!), namely the
`TorchConversion` dialect/transforms which lower to IR suitable for IREE
and other linalg-on-tensors based lower-level compilers.

Summary of changes:
- move `{include,lib,test}/Dialect/Torch` into `torch-mlir`
- move relevant parts of CAPI into `torch-mlir`.
- leave a few things related to the `torch-mlir` Python build commented
  out, which should be resolved in a subsequent change.
2021-09-10 21:44:37 -07:00
Sean Silva a7252f9a06 Add basic support for lists.
This plumbs through a vertical slice of support for lists.

The main chunk of new code here is AnnotateABIPass which captures the
program signature at the Torch backend contract layer, right before we
start `TorchConversion`. The `TorchConversion` lowering process is lossy
w.r.t. types, so it's necessary to do this for all targets in general.
Like using `!iree.list` directly, we use IREE's ABI annotation
representation for this, although there is nothing very IREE-specific
about it (see
https://github.com/google/iree/blob/main/docs/developers/design_docs/function_abi.md)

We change `ListLiteralModule_basic` to use `!torch.int` because IREE
doesn't support f64 yet (and we don't yet have a way for users to say
that they want `!torch.float` to lower as f32).

Recommended review order:
- AnnotateABIPass and tests
- Arg marshaling in npcomp_backend.py and `iree.py`
- Updates to `list_programs.py` / `xfail_sets.py`
- Moving DeleteDeadIREEListsPass to Backend/Common, so that backends
  that don't support lists can use it. RefBackend uses that pass, for
  example.
2021-09-09 20:48:55 -07:00
Yi Zhang 73d553e168 MT model compilation minor changes
This contains the following changes:
 - Fix optional knowledge propagation. The initial knowledge should
 always be NotNone for the operations we implemented.
 - Add Folder for `prim.dtype`
2021-09-09 19:02:48 -04:00
Ramiro Leal-Cavazos 6724de7692 Added sum lowering
Added lowering to torch.sum into linalg
2021-09-03 17:37:06 -07:00
Sean Silva 1dec561cfd Update llvm-project to 830c0b9023cd0cf91955900e0d96283e7a8c3711
- builder.getSymbolRefAttr is gone.
- OpAsmOpInterface's getAsmResultNames method needs explicit override
- a bunch of churn for builtin.func needing to be made explicit (and
  sometimes implicit?)
- operation printers no longer need to print the operation name
  themselves.
- snuck in beneficial trivial addition to TmpDeleteDeadIREEListsPass to
  test a particular upstream change e2e with my local patchset.
2021-09-03 14:16:38 -07:00
Yi Zhang 3b0e5910a8 Refine types continue.
This should cover all the ops that are left in MT.
2021-09-02 14:39:28 -04:00
dan d9df4bfc95 Add sigmoid lowering
Follows existing conventions for activation functions
2021-08-30 17:32:23 -04:00
Yi Zhang d6b9709fa5 Changes to refine types
- Add `!torch.optional` knowledge tracking
- Changes to improve type propagation for branches and terminators. See
examples in `refine-types-branch.mlir`
- Refator to separate handling of different ops from `visitOperation`
- Add refine types for a few new ops
2021-08-27 11:42:00 -04:00
Yi Zhang bc5eae41ca Add more folders to fold away branches
Added folders to a few binary computing ops, `TupleUnpack`,
`__contains__.str` and `__getitem__.Dict_str`.
2021-08-26 17:37:49 -04:00
Stella Laurenzo 80ff744c56 Add a few missing deps exposed by stricter linking with BFD. 2021-08-22 11:56:48 -07:00
Sean Silva cab8d922ec Add TorchToIREE and factor out TorchConversion dialect.
This converts a basic list op (torch.prim.ListConstruct) to the IREE
dialect.

```
    def forward(self, x: float):
            return [x, x]
```

turns into:

```
builtin.func @forward(%arg0: !torch.float) -> !torch.list<!torch.float> {
  %0 = torch.prim.ListConstruct %arg0, %arg0 : (!torch.float, !torch.float) -> !torch.list<!torch.float>
  return %0 : !torch.list<!torch.float>
}
```

which turns into:

```
builtin.func @forward(%arg0: f64) -> !iree.list<f64> {
  %c1 = constant 1 : index
  %c0 = constant 0 : index
  %c2 = constant 2 : index
  %0 = iree.list.create %c2 : !iree.list<f64>
  iree.list.set %0[%c0], %arg0 : !iree.list<f64>, f64
  iree.list.set %0[%c1], %arg0 : !iree.list<f64>, f64
  return %0 : !iree.list<f64>
}
```

As part of doing this, I realized that it was time to formalize the IR
form that we reach right before running TorchTo{Linalg,Std,...}. We now
call it the "Torch backend contract". We then lower the "Torch backend
contract" to the "npcomp backend contract", which involves the new
TorchConversion (`torch_c`) dialect, which holds ops that need to
operate on both the npcomp backend types (e.g. builtin tensors, i1, IREE
list, etc.) and the `!torch` types.

This made more sense, as I realized that if I didn't factor out
`torch_c` then the Torch dialect would have a dependency on IREE
dialect (we previously didn't notice this was an issue because we only
depended on `builtin` types), which seemed wrong to me.

Recommended review order:
- TorchToIREE.cpp / `TorchToIREE/basic.mlir`
- Look at the new structure of createTorchScriptToNpcompBackendPipeline.
  It now lives in TorchConversion/Transforms/Passes.cpp and cleanly
  calls into `Torch::createTorchScriptToTorchBackendPipeline` for the
  frontend lowering to the Torch backend contract.
- Mechanical change extracting
  `torch_c.{to,from}_{i1,i64,f64,builtin_tensor,iree_list}` into a new
  TorchConversion dialect, and a few passes specific to the lowering
  from the Torch backend contract to the npcomp backend contract.
- Minor fixes to TorchToLinalg.cpp to use unconverted operands (now that
  we convert lists as part of operand materialization, we need to use
  the original operands). Also added test for AtenMaxPool2dOp and fixed
  m_TorchConstantIntList.
- TmpDeleteDeadIREELists pass. Temporary pass for deleting dead IREE lists that
  are created as part of operand materialization for conv/max pool/avg pool ops
  in TorchToLinalg.
2021-08-16 15:01:58 -07:00
Yi Zhang 85ff8b692b Fix compilation errors from MT model
With the following changes the compilation can continue until
RefineTypes pass:

- Add operators without ODS into `torch_ods_gen.py`
- Add some new optional and list types in `TorchTypes.td`
- Add some folders for aten int type comparator ops
- Modify GlobalizeObjectGraph.cpp. For global slots that's not used,
dont check if an aliased value is stored in more than one of global
slots. This can work around a failure where the same tensor is stored
in multiple "version" slots which are not used.
2021-08-16 16:37:23 -04:00
Yi Zhang bfc3ee35c6 Import Machine Translation model to MLIR.
This includes the following changes to import MT model into MLIR. There
are still a lot of work to for actual compilation.
- Add `torch.dict<>`, `torch.any`, `torch.number` types
- Add `torch.prim.DictConstruct` op
- Fix `torch.prim.TupleConstruct` op assembly format to include resulting types
2021-08-10 15:22:06 -04:00
Yi Zhang 0342b73bf1 Add torch.aten.flatten.using_ints and aten.MaxPool2d linalg lowering
- torch.aten.flatten.using_ints to linalg lowering
- torch.aten.max_pool2d to linalg lowering
- Support torch.aten.conv2d for more flexible dilation and strides values
2021-08-04 12:00:43 -04:00
Sean Silva f168cacd6d Remove TCF and TCP.
These were legacy concepts that are now superceded by direct Torch to
linalg-on-tensors lowering. These were based on some very early thinking
related to the layering of frontends vs codegen, which is now obsolete
because:
- We expected a lot more centralization at the frontend (TCF) level. It
  turns out that frontend needs really vary a lot, and there is no grand
  unifying TCF dialect plausible. The additional layer isn't worth it.
- Linalg-on-tensors obsoletes the primary need for TCP. There are still
  a few things not representable with linalg-on-tensors, but the support
  is growing and the whole "not included in linalg-on-tensors" direction
  needs to be rethought. Our TCP dialect didn't cover any of the
  actually important things in this space (such as sort, FFT, top-k,
  etc.).

See historical [slides](https://drive.google.com/file/d/1iljcpTQ5NPaMfGpoPDFml1XkYxjK_6A4/view) / [recording](https://drive.google.com/file/d/1jSPa8TwPKUt0WuLquGc8OgSUVYJHMvWZ/view)
for more details on the origin story here.

Their presence was confusing users too
[bug](https://github.com/llvm/mlir-npcomp/issues/248).

Also,
- Trim down npcomp-run-mlir testing. It was testing TCF to TCP
  lowering for the most part. The essential stuff is retained and
  rephrased with linalg-on-tensors. (we should probably rename it
  "refback-run" or something, as it is just a way to invoke RefBackend)
- test/Python/Backend/RefJIT/simple_invoke_numpy.py is XFAIL'ed. Our
  "anti-framework" direction seems to be the likely future path.
2021-08-02 12:08:39 -07:00
Yi Zhang 89d4931324 Linalg lowering for aten.conv2d and aten.AdaptiveAvgPool2d
1. Add m_TorchConstantIntList
2. Lowering for aten.conv2d
3. Lowering aten.AdaptiveAvgPool2d
2021-07-09 15:04:29 -07:00
Sean Silva 83b5b5456d Bump llvm-project to da289a174fc6617c7be37be2947480510fd4f02a
- Build adjustments for `.cpp.inc` dialect files.
- Renaming of `memref.dim` to `tensor.dim` for tensor case.

Minor changes:
- Renaming of `mlir::linalg::ReassociationIndices` to
  `mlir::ReassociationIndices`.
- Adjust command line option parsing in npcomp-run-mlir.
2021-07-07 13:57:29 -07:00
Sean Silva 79928cd2dd Generalize support for elementwise ops.
We plumb through e2e a fair number of interesting cases:
- unary, binary, ternary elementwise ops
- ops like `torch.aten.add.Tensor` that also take a scalar parameter
- static size-1 broadcasting

We allow the static size-1 broadcasting case, but emit a runtime error
in the case of dynamic size-1 broadcasting. This seems like a sweet spot
subset of things that can be lowered directly to linalg, while not being
overly constraining to users. This is consistent with what IREE is doing
for CHLO->Linalg lowering as well
([code](50bf7a87e4/iree/compiler/InputConversion/MHLO/BroadcastingToLinalgPatterns.cpp (L1))).

To test the static size-1 case, we added support for the
`torch.aten.unsqueeze` op and lowering for it through
`linalg.tensor_expand_shape`. This involved a generalization of
`MaximizeValueSemantics` able to handle it (the solution there also
works for `torch.aten.flatten.using_ints` which we need for ResNet
anyway)

Also, a few minor additional changes:
- Add `VerifyInvariantsBeforeBackendLowering` pass, which catches a
  large class of errors before we get to backend lowering (now that we
  are doing dialect conversion, the errors are way nicer if we just emit
  them up front rather than in the guts of a random pattern).
- Minor change to RefBackend to allow `linalg.tensor_expand_shape`.

Recommended review order:
- e2e tests in elementwise.py
- `ConvertElementwiseOp` in TorchToLinalg.cpp + elementwise.mlir test
- `ConvertAtenUnsqueezeOp` in TorchToLinalg.cpp + unsqueeze.mlir test
- RefineTypes.cpp + tests
- MaximizeValueSemantics changes + test
- VerifyInvariantsBeforeBackendLowering pass + test
2021-06-28 13:28:38 -07:00
Sean Silva 145d4ae23c Bump llvm-project to a37cf17834d39411ed1d669098b428f8374c5b45
Changes:
- Change to operand ordering of `linalg.fill`.
2021-06-23 10:03:29 -07:00
Sean Silva 90c6c64fd6 Make torch.constant.float print a little nicer.
This printing is chosen to be similar to how MLIR prints the values by
default.
2021-06-23 08:07:45 -07:00
Sean Silva 60a947b4a7 Add CastOpInterface to torch.prim.unchecked_cast.
This allows it to fold away in trivial cases.
2021-06-23 08:07:45 -07:00
Yi Zhang 45f2edfc7a Add TorchToSCF pass.
1. Add TorchToSCF pass.
2. Convert prim.If and prim.If.yield.
2021-06-23 08:06:43 -07:00
Yi Zhang 5ad144c4fe More folding for aten.gt.int, aten.ne.int and Aten__Getitem__TOp.
- Fold more for aten.gt.int, aten.ne.int and Aten__Getitem__TOp
- Some format cleaning up
2021-06-23 08:06:37 -07:00
Sean Silva 79aade33da Make MaximizeValueSemantics a bit smarter.
This adds a pattern to MaximizeValueSemantics which does a simple
abstract interpretation within a block, which handles simple cases of
`torch.overwrite_tensor`, enough to remove all the unnecessary uses of
non-value tensors in ResNet right now.

Before/after IR:
[gist](https://gist.github.com/silvasean/a3e1ef625b19dfc63579f73cd3b543b6)

Also,
- Split `torch.copy.tensor` into `torch.copy.to_tensor` and
  `torch.copy.to_vtensor` which convert between value and non-value
  semantic tensors. This is a much cleaner factorization as they have
  very separate use cases and properties (e.g. different side effects)
- Remove the various canonicalization patterns they had, which were
  confusing because they resulted in limited forms of maximizing value
  semantics throughout the pipeline. We should structure our compilation
  pipeline such that only MaximizeValueSemantics should be maximizing
  value semantics.
- Adjust pass pipeline to only run MaximizeValueSemantics once.
- Make OverwriteTensorOp `$value` always be a value tensor and
  `$overwritten` be a non-value tensor.
2021-06-22 16:48:57 -07:00
Sean Silva 78d2cc0818 Make `torch.copy.tensor` canonicalization a bit smarter.
This removes most of the trivial cases that MaximizeValueSemantics needs
to handle, making it easier to see the nontrivial cases.
2021-06-17 18:11:58 -07:00
Sean Silva 40369c54dc Adjust pass pipeline for changes to `dim` canonicalization.
This results in cleaner IR. In particular, Mlp2LayerModule e2e test has
a dim op that is eliminated by this change:
https://gist.github.com/silvasean/734f11a291ae6236c955f65cffae285f
2021-06-17 16:59:55 -07:00
Sean Silva 333e07a74e Add `torch.vtensor.literal` op.
This op is much better behaved than the `torch.tensor.literal` op
(which is the new name of the `torch.tensor` op). In particular
`torch.tensor.literal`:
- always has a maximally refined type.
- always has value semantics.
- can be constant folded / CSE'd.

ReduceOpVariants is changed to perform the transformation from
`torch.tensor.literal` to `torch.vtensor.literal` (which in general
involves static information casts and copies.

This new op also allowed tightening up `torch.tensor.literal` to only
accept NonValueTensorType (instead of any tensor type).

This new ".literal" name is more descriptive. It was getting too
confusing seeing an op called just `torch.tensor` (we originally called
it that because that's the name of the similar function in the Torch
Python API, but it just doesn't fit here).
2021-06-17 14:37:04 -07:00
Sean Silva 4a0eb44d17 Add a !torch.float type.
This removes the dependence of the `torch` dialect on the low-level
builtin types.
Now the `torch` dialect is a standalone layer, suitable for targeting
from higher-level Python abstractions without any premature lowering to
primitive types.
2021-06-17 09:24:18 -07:00
Sean Silva f49ebf1690 Add `!torch.int` type.
This replaces the ad-hoc use of `i64` throughout the Torch layer, and
helps to keep it crystal clear the distinction between `!torch.int`
(which is modeling the Python `int` type) and the various types that
serve as dtypes of tensors, which are a totally different type universe.

Changes:
- `!torch.int` type and C bindings.
- Change `torch.constant.int` parser to not need the `: i64` at the end.
- `m_TorchConstantInt` matcher to aid with matching constants.
- BackendTypeConversion changes for `!torch.int` -> `i64` type
  conversion.
- Refactor finalizing patterns in FinalizingBackendTypeConversionPass
  (they were getting very repetitive).
- Mechanical rewriting of `!torch.int` to `i64` in all the tests, and
  `AnyTorchIntType` to `Torch_IntType` in the `.td` files.
2021-06-17 07:28:23 -07:00
Sean Silva 224afb186e Add folders for torch.aten.gt.int / torch.aten.ne.int
This fixes a "regression" on ResNet where we weren't folding away all
the control flow. For now, our policy is to "optimize hard enough" to
make that control flow go away, because we don't yet have a way to lower
to the backend the stuff guarded by the control flow (RaiseException,
string operations, etc.).

It remains to be seen how much optimization we decide to do at this
level in the fullness of time -- the torch op set is not particularly
well-designed (at least not idiomatically for MLIR) for general
optimization. Ideally, with really good backend support for various
features, all the heavy optimization will happen at that layer on `std`
ops and `scf` control flow. But I have a suspicion we might end up
needing more optimization earlier in the pipeline.
2021-06-16 14:04:31 -07:00
Sean Silva 8860b5c55d Add `torch.prim.If`
This removes the use of `scf.if`, which required laundering back and
forth between `i1` and `!torch.bool` in the frontend. We will eventually
lower this op to `scf.if`, but this results in a cleaner IR and layering
at the frontend.
2021-06-16 14:04:31 -07:00
Sean Silva 784156a998 Add `!torch.bool` type.
This finishes removing the dependence on the basicpy dialect!

Changes:
- Add `!torch.bool` type and replace use of `!basicpy.BoolType` in
  Torch-related code.
- Rename BuiltinTensorize to BackendTypeConversion since now it handles
  bool conversions (and, when we add !torch.int and !torch.float, it
  will handle those as well), and generalize the related utilities (I
  also moved them to Torch/Transforms since they aren't really part of
  Torch/IR).
  - Add `torch.to_i1` and `torch.from_i1` ops for materializations
- [cleanup] Reorganize `torch.constant.*` ops in TorchOps.td
- Remove dependency of `torch` dialect on `basicpy` dialect and also
  `std` dialect. For `std`, we use some call related ops, but the
  `torch` dialect itself never produces them (we have passes that do
  though).

This is fairly mechanical. Recommended review order:
- New stuff in Torch/IR
- New BuiltinTypeConversion files.
- Mechnical fixups elsewhere.
2021-06-16 13:22:00 -07:00
Sean Silva 3ccf6002af Add `torch.constant.int` and `torch.constant.float`.
- This removes reliance on basicpy.numeric_constant.
- Also, add OpAsmOpInterface to the `torch.constant.none` and
  `torch.constant.str` ops.
2021-06-15 15:29:42 -07:00
Sean Silva 2e850ecb72 Add !torch.str type.
- Remove dependence on `!basicpy.BytesType`.
- Add `torch.constant.str "s"` analogous to `torch.constant.none`.
2021-06-15 10:10:59 -07:00
Sean Silva 92ee0fa98f Add `!torch.tuple<T1, T2>` type.
This further eliminates the need for the `basicpy` dependency.

This required adding `torch.prim.TupleConstruct` to replace
`basicpy.build_tuple`.
2021-06-15 08:15:22 -07:00
Sean Silva db282fd1b4 Introduce native `!torch.none` type.
- Add `torch.constant.none` op to construct it (naming is chosen to be
  analogous to Torch's representation of a prim::Constant with
  NoneType, rather than using the "singleton" terminology of Basicpy).
2021-06-14 13:30:58 -07:00
Sean Silva 81bcd7fb12 Move Torch type implementation code into TorchTypes.cpp 2021-06-10 16:46:47 -07:00
Yi Zhang e0ff5248fb Add TorchList type and prim::ListConstruct #218 2021-06-10 14:31:35 -07:00
Sean Silva 370e3270ab Introduce `!torch.tensor` / `!torch.vtensor` types.
This removes our reliance on the numpy dialect and avoids our off-label
use of the builtin tnesor type for modeling unknown dtypes.  The
`!torch.vtensor` (`ValueTensorType`) type is a value-semantic tensor.
The `!torch.tensor` (`NonValueTensorType`) type is a non-value-semantic
tensor. The new types look as follows syntactically:

```
// Least-static-information, non-value-semantic tensor.
!torch.tensor
// Explicit form of least-static-information variant.
!torch.tensor<*,unk>
// Least-static-information, value-semantic tensor.
!torch.vtensor
// Explicit form of least-static-information variant.
!torch.vtensor<*,unk>
// Fixed-set of allowable element types, with first-class support for
// Torch's frontend signedness semantics.
!torch.tensor<*,si32>
// First-class support for unknown dtypes.
!torch.tensor<[?,?,?],unk>
// Standard MLIR representation of `?` for unknown dimensions.
!torch.tensor<[?,2,?,4],unk>
// Statically shaped / dtyped example.
!torch.vtensor<[1,2,3,4],f32>
```

This required fairly significant changes throughout the compiler, but
overall it is a big cleanup. We now have a much clearer layering of "the
Torch frontend lowering" vs "lowering to std + linalg + etc.".

At the C++ level, there is `ValueTensorType`, `NonValueTensorType`.
We also have a helper `BaseTensorType` (kind of like ShapedType) which
interoperates with those two.

Included changes:
- New `torch.tensor(dense<0.0> : tensor<5xf32>) : !torch.tensor` op for
  creating torch tensor literals in the frontend.
- Consistently use signedness for the types (except i1 which I didn't
  touch -- we need to sort out the situation with !basicpy.BoolType
  there anyway so will be attending to that soon)
- Frontend can annotate whether an argument to the function has value
  semantics. We currently require this, as our backend contract does not
  currently allow us to even model the non-value-semantic case. Before,
  the value-semantic assumption was randomly injected in the middle of
  the pass pipeline.
- Move ArrayToTensor (now called MaximizeValueSemantics) and
  RefinePublicReturn passes to torch dialect.
- The TorchToStd and TorchToLinalg passes are now type conversions from
  `!torch.vtensor` to `tensor` and use the dialect conversion infra.
  The overall conversion pipeline is set up following the best practices
  of the "Type Conversions the Not-So-Hard Way" talk. This required
  introducing `torch-func-builtin-tensorize` and
  `torch-finalizing-builtin-tensorize` passes analogous to the upstream
  bufferization passes with the corresponding names (mostly just
  copypasta from there).
- Misc Torch-level canonicalizations -- we now cleanly layer the
  lowering to std later in the pipeline, so we are gradually lessening
  our reliance on random std constant folding before we get to that
  point.

Recommended review order:
- New types in TorchTypes.td/TorchTypes.h/TorchDialect.cpp
- New ops in TorchOps.td / TorchOps.cpp
- Less important / more mechanical stuff
  - Frontend changes.
  - Pass changes/additions in `Torch/Transforms` and `Conversion/`
2021-06-10 10:56:48 -07:00
Sean Silva 2efda323ff Significantly restructure torch/aten import design.
This is a really major and invasive restructuring of the way we get
torch operators (`torch::jit::Operator` / `c10::OperatorHandle`) into
MLIR. Please forgive the challenging review, but due to the sheer
invasiveness, it wasn't really practical do do it in sane smaller
pieces.

This fully replaces everything that was already working on the
TorchScript path (actually, more -- we added tanh support to
TorchToLinalg in order to delete the older code paths). Additionally,
I've kept the lights on for the acap path too, including what little e2e
stuff was working before (for expediency I made a few tiny compromises
along the way that will be easy to undo when we give that path proper
attention).

Overview of the new design:
- The torch operator `somens::someunqualname.someoverloadname` is
  imported as `torch.somens.someunqualname.someoverloadname` (skip the
  last dotted part if the overload name is empty), OR, if we don't have
  such an op registered, it is imported as
  `torch.operator "somens.someunqualname.someoverloadname" (...) : ...`.
  - The addition of the "overload name" is a critical element here, as
    the `(ns,unqual,overload)` triple is unique, which solves a lot of
    problems we were having.
  - This involves having separate MLIR ops for the `trailing_` and
    `.out` variants and all the different overloads. This seemed
    necessary, because the set of overloads is so wild and varied and
    unstructured. The previous design was leaning into some underlying
    structure that just isn't there -- the default situation is
    the "random overload that we want to manage on the MLIR side",
    rather than that being an exception. E.g.  `aten::ne` (not-equal)
    has 21 overloads, only 4 of which are c10 dispatcher ops see
    [gist](https://gist.github.com/silvasean/190ba918c550c956260e21254e1b8aa1),
    and the "out" variant is really called `.Tensor_out` instead of
    `.out` as it frequently is for other ops.
  - Rationale for all being in `torch` namespace: the set of operators
    are so varied and unstructured that "dialect per namespace"
    doesn't result in anything resembling the typical MLIR dialect
    boundary expectations. We could maybe draw the boundary at
    dispatcher ops vs non-dispatcher ops, but that doesn't seem to
    really result in very much useful structure at this point in time.
  - Note: within the torch operator registry, we effectively have a
    mini-basicpy subdialect (already type-resolved), which is reasonably
    structured.
  - The existing Torch op interfaces are also removed -- now that we
    track the overload name, we can losslessly find the original
    operator.
- Instead of `ATenRecognizeKernelsPass`, we now have a
  `ReduceOpVariantsPass` that keys off certain traits (and perhaps
  eventually interfaces) to reduce variants of ops to a smaller set,
  ideally operating on immutable tensors and using surrounding ops to
  model the mutability/aliasing aspects.
  - Note: `torch.ns.unqual.overload` ops allow both immutable and
    mutable tensors (unlike the previous hard distinction in the common
    case). This is a premonition for a future change that will introduce a
    bona fide `!torch.tensor` type that will clean up a bunch of stuff.
- `TorchToLinalg` / `TorchToStd` supercede the existing
  "ATen->TCF->TCP->Linalg" path.
- The new `torch_ods_gen.py` supercedes `torch_signature_ods_gen.py`.
  It should look somewhat familiar, but the benefit of hindsight has
  allowed a lot of simplifications.

The overall trend seems to be to make the `torch` dialect a nice layer
independent of anything else. It feels like as a natural result of
various future changes we will be removing the reliance on basicpy+numpy
dialects and have a nice self-contained type system too that properly
models the TorchScript type system (including proper subtyping,
mutable/immutable tensors, optional dtype, etc.).

Recommended review order:
- Start at some of the new import IR, e.g. in
  `frontends/pytorch/test/node_import/prim.py`,
  `frontends/pytorch/test/acap_export/test_export_add3.py`, and other
  tests.
- `frontends/pytorch/python/torch_mlir_utils/codegen/torch_ods_gen.py`
  and associated generated files:
  - `include/npcomp/Dialect/Torch/IR/GeneratedAtenOps.td`
  - `include/npcomp/Dialect/Torch/IR/GeneratedPrimOps.td`
- Inspect `ReduceOpVariants.cpp` / `reduce-op-variants.mlir` and the new
  traits in `include/npcomp/Dialect/Torch/IR/TorchTraits.h`
- Various code changes in the import path in
  `frontends/pytorch/csrc/builder`. Probably most interesting is the new
  code in `torch_to_mlir_utils.cpp` that has the logic to create the
  `torch.operator` ops or `torch.ns.unqual.overload` ops.

This is the [new ResNet IR](https://gist.github.com/silvasean/5407aafb710d07612b7b5b92eabecebe),
just to be able to look at a substantial sample of IR in the new style.
2021-05-19 13:37:39 -07:00
Sean Silva 133bdf4b31 [cleanup] Add materializer for basicpy.singleton
This allows the canonicalizer to coalesce it like other constants.
2021-05-03 09:54:44 -07:00
Sean Silva 3d08c83580 Add flatten op recognition + shape refinement.
This op has complex aliasing semantics, so it is kept mutable for now.

With this, we reduce ResNet18 to a single BB with all aten operators
having rank + dtype:
https://gist.github.com/silvasean/2fcb1c6e4d4ae27461204a43ae9c5031
2021-05-03 09:54:44 -07:00
Sean Silva 122cae2ee3 Add aten::len.t, aten::size, and aten::gt.int primitive ops
Also add some canonicalizations that finally reduce ResNet down to a
single block.
2021-04-30 10:57:02 -07:00
Sean Silva ec6d06aa86 Add some more ResNet ops.
- aten::relu_, aten::max_pool2d, aten::adaptive_avg_pool2d, aten::batch_norm, aten::conv2d

No aten-to-linalg conversion for the latter ones, as they are fairly
substantial. At this point, I'm trying to get shape inference and stuff
working for them and the IR cleaned up.
2021-04-30 10:57:02 -07:00
Sean Silva 9257457d8a Add AllowsTypeRefinement trait and use it to improve RefineTypes
This trait lets us model the semantics of various aten/torch/numpy ops
that are insensitive to type refinements. This replaces
hardcoded/inconsistent checks for this property.

To show usage of this new trait, we fix up some old uses, and improve
RefineTypes to be smarter about rewriting with this trait.
2021-04-30 10:57:02 -07:00
Sean Silva 1c832604d2 Remove old aten-to-std / ATenLowering pass.
It was confusing now that we have `convert-aten-to-std`.
2021-04-30 10:57:02 -07:00
Sean Silva 55c3cc6624 Add recognition/folder/lowering for aten::__is__, aten::ne.int, and aten::dim
Interestingly, TorchScript has its own op (`torch::jit::Operator`)
registry separate from the dispatcher (it is a superset of the
dispatcher).

This is where the "prim" ops and some "aten" ops (that should probably
be renamed to "prim") live. In particular, `aten::__is__` is in that
latter category of "aten but really prim". This registry is also the
source of truth for what the TorchScript interpreter calls into when it
executes.

The bulk of the "not part of the dispatcher" ops live in
09feb5f579/torch/csrc/jit/runtime/register_prim_ops.cpp (L82)

And the registry itself lives in:
09feb5f579/torch/csrc/jit/runtime/operator.cpp (L196)

This fold further reduces the IR of ResNet by folding away some
more not-taken branches. These not-taken branches in ResNet require
first-class handling of the list type which we don't yet have on any
backend.
2021-04-30 10:57:02 -07:00
Sean Silva 7eb36b4ae7 Constant fold through basicpy.bool_cast.
This is the start of a push to getting ResNet running.

This involves throwing in the towel on an O0 pipelinie for now. See note
in the code. We keep an options struct with `optimize` flag, but it
default to true for now.
2021-04-30 10:57:02 -07:00
Sean Silva fb5f149e04 Reformat Passes.cpp and remove torch-globalize-pipeline.
The pipeline is subsumed by our lowering pipelines.
2021-04-30 10:57:02 -07:00
River Riddle 4678a7fedd Refactor RefineTypes to use the upstream ForwardDataFlowAnalysis engine
This removes the need for defining all of the custom propagation logic,
and also adds support for propagating value knowledge across branches,
through regions, and across calls.
2021-04-27 13:17:56 -07:00
Sean Silva 179105ca3e Add basic MLP's to the e2e curriculum.
These tests pass on the reference backend.

- Add aten.linear op + shape xfer function + ATen->Linalg lowering.
 - Note: this needs to be more automated, and needs to cover more cases.
 - Current not implemented caveats:
  - size-1 broadcasting for bias vector (either static-size-1 or ? case)
  - higher-rank aten.linear ops (not produced by torch.nn.Linear though)
  - type promotion (still don't even know the exact rules here)
- Add folder for torch.derefine op. Now the inliner can clean it up as
  it inlines. (call boundaries are a main place we need to insert
  torch.derefine) This is brittle -- the other important case is control
  flow which will need to be handled via an extension to
  RefineTypes.cpp (as will more robust call handling). River has an
  in-flight patch to update it to the new dataflow framework so I didn't
  want to do anything intrusive here.
    - Also adjust torch.derefine syntax to use the keyword `to` instead of
      `->`, as most type-only, cast-like ops do.
2021-04-27 12:18:54 -07:00
Sean Silva 9ba77c6e13 Add InlineGlobalSlots pass.
This inlines global slots if possible. This allows them to participate
in folding, canonicalization, shape inference, etc.

Example use cases:
- inlining weights and biases that are readonly during inference
- inlining the "training" bool to allow stuff to fold away

For training use cases (especially internal training loop), we will need
something smarter to get good performance. That would look like an "SSA
formation" which promotes the global slots to tensors in the program,
flushing them back to the slots at the minimal number of necessary
places. We might want to let backends do that transformation though.
This also interacts with shape inference (type bounds on the slots to
even lower them to backends in the first place).
2021-04-27 12:18:54 -07:00
Sean Silva 3a890aa26c Miscellaneous changes while trying to work on ResNet18
- Move frontend lowering pipelines to c++ (this helps with reproducing
  failures in npcomp-opt)
- Add debugging printouts when compilation fails on RefBackendTestConfig

The experience now when a test fails during MLIR lowering is now like this:
```
NPCOMP TorchScript Object Graph IR -> NPCOMP Backend IR lowering failed with the following diagnostics:
failed to legalize operation 'torch.global_slot'
Module does not conform to npcomp's backend contract. See dialect conversion legality information above.

Error can be reproduced with:
$ npcomp-opt -torchscript-to-npcomp-backend-pipeline /tmp/ResNet18Module.mlir
```

And when TorchScript->MLIR import fails it looks like this:
```
PyTorch TorchScript module -> NPCOMP Object Graph IR import failed with the following diagnostics:
unhandled prim operation: %18 : int = prim::min(%17) # /usr/local/google/home/silvasean/.local/lib/python3.9/site-packages/torch/nn/functional.py:4532:4
```

Also,
- Add `--filter=<regex>` to e2e test harness to filter tests.
- Add a few prim ops that were needed to import ResNet18
- Fix torch.prim.Loop.condition assemblyFormat (it previously would not
  round-trip in the case of no loop-carried variables)
2021-04-27 11:51:11 -07:00
Sean Silva 544cb4ef54 Bump llvm-project to 484b6648fdd4b104eaf7a2504dd07b60af2c9f8d
- add_mlir_doc arg order
- fix some dependent dialects on passes that were now causing errors
- "encoding" attribute on mlirRankedTensorTypeGetChecked
2021-04-22 18:12:55 -07:00
Sean Silva fef1733e12 Fix issue with unused functions in torch::jit::CompilationUnit
As described in the code comment:

```
When we import TorchScript IR, we import their entire "compilation unit",
which can contain numerous functions unrelated to the current program,
which breaks torch-globalization-pipeline; for example, there can be
random functions referencing types that haven't been imported
as part of the root `torch.nn.Module` we imported. Those will
be unreferenced private functions which symbol-dce will clean up nicely.
```

This situation is really easy to hit in jupyter notebooks, where the
same cell is evaluated multiple times. That results in the same
class name (at the Python level, e.g. class `Foo` in the top-level
main module). Internally to PyTorch, it handles this situation by
mangling in a unique number to the names of ClassType's and such. When
we import the new ClassType's, we see not just the new
torch::jit::Function's in the CompilationUnit, but, also all the old
ones, which reference ClassType's that are not reachable from the
`torch.nn.Module` that we imported.

Note: there is no way to avoid importing the whole CompilationUnit
(including these old remnants) without doing a fairly complicated call
graph reachability analysis of which functions are reachable from the
methods of the ClassType's we imported. It turns out that once we are
inside MLIR, we model visibility correctly so that `symbol-dce`
"Just Works" for this use case. That is to say, this is not a quick
hack, but rather seems like a totally palatable long-term solution.
2021-04-20 12:00:35 -07:00
Sean Silva f5dfa02523 Add `aten.mm` to linalg lowering.
This is our first op with error semantics, and stresses the system.

There are a few design notes of special interest:
- RefineTypes.cpp's note about shape inference in the presence of code
  that dynamically produces and error, and it is provable statically.
- ATenToLinalg.cpp's notes about future automation of the ATen->linalg
  path.
- The notes in Passes.td about using low-tech `std.assert` ops instead
  of `shape.assuming`.

Note: Doesn't work on IREE yet due to the `std.assert` op (needs to be
lowered to `vm.fail` on the IREE side).
2021-04-16 12:03:31 -07:00
Sean Silva 927546b3c5 Add RefinePublicReturn pass.
This pass allows shape information to be propagated to return types,
which is nontrivial and cannot be cleanly put anywhere else as it
changes the public ABI, which is a concern that we want to keep
concentrated in one place.
2021-04-07 11:06:34 -07:00
Sean Silva 1e357ae680 Add simple type refinement pass.
Currently implemented as a simple intraprocedural dataflow analysis over
a standard ShapedType lattice (hasRank, sizes, and elementType).

It currently hardcodes a few key pieces of information:
- shape transfer functions
- whether it is legal to update the operand type of an op

This needs to be made pluggable obviously and the core propagation logic
moved somewhere agnostic.
2021-04-07 11:06:34 -07:00
Sean Silva 6431b0f11f Add primitive ArrayToTensor (numpy-array-to-tensor) pass.
The current implementation is just sufficient to do a unary aten.tanh
from the e2e spike, and just applies some local rewrite patterns.  I've
sketched out the more full explanation of where this pass eventually
need to go in the pass docs.

Adding this required adding `numpy.tensor_static_info_cast`, which is
the tensor analog of `numpy.static_info_cast`. This op encapsulates the
same numpy-specific "no runtime code" casting semantics, in particular
the interpretation of `!numpy.any_dtype`. The
`numpy.tensor_static_info_cast` I see in practice now are "information
erasing" and will be removed by a later pass that exploits the fact that
aten ops are agnostic to the static info in the operand types (so
substituting a type with more static info is fine).

Side note: we *need* to do dtype and rank inference before aten->tcf
(which will eventually mostly be aten->linalg+guards), because each aten
op is idiosyncratically overloaded based on dtype and rank. Without
copying that idiosyncratic overloading into lower layers (layering
violation), we cannot really lower it to anything until we do that.
2021-04-05 17:56:35 -07:00
Sean Silva 30356c41c8 Add torch-adjust-calling-conventions pass.
This pass incorporates torch.type_bound info and also removes NoneType
returns (eventually it will rewrite tuple types too, but can't yet
because !basicpy.TupleType doesn't track element types).

Recommend looking at adjust-calling-conventions.mlir first to see what
it is doing, and holding your nose for the implementation of the pass.
I decided to implement this with the conversion framework, because it
gives us *some* goodies for type conversion -- mainly avoiding large
amounts of tricky RAUW dances. Unfortunately, the conversion framework
isn't a perfect fit for a couple reasons:
- the incorporation of torch.type_bound is a context-sensitive rewrite
  (requires looking at the arg attr, not just the type).
- NoneType conversion is 1->0, which requires some special handling
- (not implemented yet) 1->N tuple type conversions require special
  handling.
It's a little bit scary, but on balance doing it the other way would
have its own downsides.
2021-04-05 17:56:35 -07:00
Sean Silva 464feacba9 Bump llvm-project to 223dcdcfbe23affdf17ada7f023ee1872fd76160
- ModuleOp no longer has a terminator.
2021-04-05 17:56:35 -07:00
Sean Silva e749074bae Basic infra for annotate shapes and dtypes on arguments.
These allow users to annotate a known "type bound" on the argument,
which can seed shape/dtype inference. We don't rewrite the function
types as part of the import process (it will happen in a
yet-to-be-written pass) because:

1. We would need to interprocedurally rewrite all calls to keep the IR
   consistent. Currently, we have a place after GlobalizeObjectGraph but
   before we convert to tensors where this is convenient to do. Ideally,
   we would do this on the object graph representation.

1. We don't necessarily know that adjusting the function type is a legal
   calling convention change. The pass will have blessed knowledge (by
   the pass pipeline author) that adjusting the argument type based on
   the type bound is safe (which it frequently is).

2. Note that in principle, a type bound could be a fairly general thing
   (such as maximum sizes of dimensions, unions of multiple concrete
   types, etc.). The pass will in principle have logic to interpret the
   type bounds and to determine a suitable "best" (and legal) argument
   type.
2021-04-01 18:40:03 -07:00
Sean Silva 99178a167d Bump llvm-project to 0524a09cc7e1a0797982feacf505825231efbee7
- renames of OwningRewritePatternList -> RewritePatternSet
  - also `insert` to `add`
- RewritePatternSet holds a context now
- memref dialect split from std
2021-03-23 14:29:05 -07:00
Bryce Arden 4591884d06 [refbackrt] Scalar arg support
* Adds f32 scalar argument support across the ABI boundary.
* Adds support for passing input type / shape information
  across the ABI boundary
* Adds support for parsing / creating input FloatAttr's in
  `npcomp-run-mlir`
2021-03-23 13:16:44 -07:00
Sean Silva 703428eff4 Add support for "trailing_" and "out" variants of various ops.
We already had the `promoteTrailingOutTensor` flag, but weren't using
it. A inplaceVariantKernelName flag needed to be added.

This change is a little dissatisfying, as the conversions done by the
RecognizeKernelsPass are currently non-orthogonal. In particular,
`kDropResultAndAliasArg0` probably won't work as intended if mixed with
these (we probably need to promote kDropResultAndAliasArg0 to not be an
arg-level thing anyway, as we have done with promoteTrailingOutTensor).

This involved adding a new op `numpy.overwrite_array`.

```
numpy.overwrite_array %arg2 overwrites %arg0 : tensor<2x3xf32>, !numpy.ndarray<[2,3]:f32>
```

This models the destructive update behavior. Note that in the above op,
we cannot simply RAUW %arg0 with a suitably conveted %arg2 (for example,
%arg0 might have uses that are not dominated by %arg2, or might have an
alias relation with some other array in the program). In general, we
need a pass analogous to "SSA-formation" which knows how to see through
these to uncover an underlying tensor program.

Also, add tanh_out_e2e.py/div_inplace_e2e.py and fix some bitrot in
refjit.py which is my running example I'm trying to get working.
2021-03-19 10:34:50 -07:00
Sean Silva 58c7030104 Support multiple instances of a class in GlobalizeObjectGraph.
This happens in practice with e.g. ResNet from torchvision (multiple
instances of the same BatchNorm class).

The key observation is that for this program, and the expected set of
programs, we can convert the program to the same globalized form with a
bit more static analysis and effort to suitably monomorphize the
program. Though what we are doing here is fairly annoying to implement,
it saves any nontrivial later pass from having to do similar analyses
(or worse). E.g. shape inference would need to be object-graph aware,
mutation/lifetime analyses would have to be aware, etc. Additionally, it
would make us front-load what it means to have a !torch.nn.Module type
on an ABI boundary, which we are just not ready to handle.

I'm really, really hoping that in practice we can get away with
this, otherwise it's going to be really rough designing a representation
(and implementing everything to back it) that is convenient to transform
and gracefully scales from full object graph (in the most dynamic case)
down to a fixed set of global slots like we have here (in the most
static case, which we presume a lot of practical programs fall into).

This also involved introducing a
`torch-prepare-for-globalize-object-graph` pass that does a minimal set of
lowerings to simplify the IR into a more orthogonal and analyzable form,
and a `torch-globalize-pipeline` helper.

Recommended review order:
- updated documentation in Passes.td
- new tests in `globalize-object-graph-multiple-instances*.mlir`
- implementation of GlobalizeObjectGraph.cpp
- PrepareForGlobalizeObjectGraph.cpp + prepare-for-globalize-object-graph.mlir
- misc stuff like torch-globalize-pipeline pipeline definition.

With this, we can import, globalize, and inline resnet18 from
torchvision:
https://gist.github.com/silvasean/821586afc19b67d9fb72030b2e0adeb8
2021-03-11 19:21:07 -08:00
Bairen Yi 5315598947 Update .getAttrs to ->getAttrs as it is deprecated.
Signed-off-by: Bairen Yi <yibairen.byron@bytedance.com>
2021-03-11 11:55:59 -08:00
Bairen Yi 53b01cb9ba Bump llvm-project to e31c77b1827fa4dd3511f21af11cfab18ecf6d38
Signed-off-by: Bairen Yi <yibairen.byron@bytedance.com>
2021-03-10 11:01:16 -08:00
Sean Silva 43dba03afd Properly model "derefinement".
In terms of IR structure, TorchScript allows types to vary in many
circumstances where MLIR requires pointer-identical types. In particular,
it is valid to pass any subtype in place of a type. For example, if an
`Optional[int]` is required somewhere in the IR, it is legal to pass a
value of just `int` (but not the other way around; see
`torch.prim.unchecked_cast`). In effect, every *use* can have a different
type.

We introduce a new op `torch.derefine` that models that impedance
mismatch. This op allows casting a value from one type to a type that it
is a subtype of to model this behavior.

Recommended review order:
- TorchOps.td for new torch.derefine (and updated docs for
  `torch.prim.unchecked_cast`)
- new test code in if.py, loop.py, function-derefine.py
- new code in node_importer.cpp for handling derefinement insertion
- function_importer.cpp and utils changes in torch_to_mlir_utils.cpp

Properly handling derefinement on function boundaries required
relayering the code so that graph_importer.cpp/.h is now
function_importer.cpp/.h because only the `torch::jit::Function`
(actually the `c10::FunctionSchema` it holds) knows the derefined types that are
actually needed at the boundary (see `function-derefine.py` for a test).

Annoyingly, this churns all the functions which are now prefixed with
`__torch__.` but that is more correct anyway (that is their linkage name
in the `torch::jit::CompilationUnit`; the previous `mb.import_function`
was actually buggy in the case of functions calling each other as it
would reference their unqualified name).

With this change, we can import `resnet18` from `torchvision` :)
IR: https://gist.github.com/silvasean/6426a5272d8a6c7caae533fce05ab704
2021-03-03 15:09:44 -08:00
Sean Silva 939d36906f Add support for prim::Loop op.
This is a funny one. It combines a `for` and `while` loop in one op. We
will need to write some conversions to `scf`.
2021-03-02 16:01:34 -08:00
Sean Silva c837dbb077 Properly import the entire torch::jit::CompilationUnit
This primarily unlocks proper handling of free functions (that is,
functions that are not methods of any torch.nn.Module).

Recommended review order:
- `ivalue_importer.cpp` + `ivalue_import/functions*.py`
- `GlobalizeObjectGraph.cpp` + test case
- misc other stuff

The `torch::jit::CompilationUnit` is basically a backing store or
"context" holding all the possible functions in the program. The
previous code was not explicitly accessing this data structure, since it
just imported the `torch::jit::Function`'s that it saw attached to
methods.

Subtly, any time a TorchScript module called into a free function, the
free function gets incorporated into the torch::jit::CompilationUnit,
but doesn't show up anywhere when dumping the module, except in the
curious pattern:

```
%5 : Function = prim::Constant[name="adaptive_avg_pool2d"]()
%6 : Tensor = prim::CallFunction(%5, %input.1, %4)
```

That is, calls are indirect calls, and are accessed via `prim::Constant`
materializing a function object. Even stranger, the `name` attribute here
doesn't really even tell the full story -- it doesn't correspond to
anything. It turns out that the c10::FunctionType itself actually holds
a pointer to the `torch::jit::Function` in the compilation unit
directly (so there is actually no indirection in prim::CallMethod,
because any two values of the same FunctionType call the same
function!). E.g. when converting the IR to bytecode, the "name" is
ignored [code link](1d6bd15790/torch/csrc/jit/runtime/interpreter.cpp (L937)).
We do import `prim::CallFunction` as a `std.call_indirect` though
because it's more braindead to do it that way (it gets canonicalized to
a direct call easily).
2021-03-01 12:08:01 -08:00
Sean Silva 79a3f639bf Give torch.global_slot an initializer region.
This is a much simpler representation than the ad-hoc initializer
function we had before. It is also less general, but given the rationale
in Passes.td it seems like the right tradeoff right now.

We can probably carry this representation for quite a while, and when we
can't, it likely means that TorchScript has fixed their object identity
bug and we probably need to just upgrade to a more general object graph
modeling (more general than GlobalizeObjectGraph).

In particular, we don't want to deal with defining and carrying around
this initializer function concept until we need it. For example, if we
want to constant-fold the global slots into uses, this is a much better
representation, and it plays better with symbol-dce (the initializer
function counts as a "use" of the symbol).

(the alternative would have been to write a pass that converts the
initializer function to this form when possible, but I realized that
lots of information had been lost which made that fairly annoying -- it
was all self-inflicted anyway, so best to just go to the source
(GlobalizeObjectGraph) before the information is lost)

Now symbol-dce works nicely (no more "training" bools)
```
pt_util ~/tmp/classifier.pt --import --exported-name forward \
| npcomp-opt -torch-globalize-object-graph -inline -symbol-dce
```
IR: https://gist.github.com/silvasean/8abe63d70d24e29d6db9170ccc8d512b
2021-02-26 16:24:19 -08:00
Sean Silva a375ccf9da Add ability to annotate TorchScript classes.
The first use case is to annotate certain program constructs as either
exported or private. In this commit we plumb it down to
GlobalizeObjectGraph which makes use of this information.

Recommended review order:
1. class_annotator.h/.cpp + `test/module_import/annotations/*`
    - New abstractions to communicate with Python code and annotate.
2. IR changes in TorchOps.td
    - Adding "private" attribute to various things.
3. ivalue_import.cpp changes
    - Module + ClassAnnotator = annotated IR
4. GlobalizeObjectGraph.cpp + tests
    - use new "private" attributes to create "private" IR.
    - also, tweak some of the op deleting mechanics, which was triggering
      some memory errors / assertions

With this, we can run the classifier through and inline it as follows:
```
frontends/pytorch/utils/pt_util.py --import --exported-name forward ~/tmp/classifier.pt \
| npcomp-opt -torch-globalize-object-graph -inline
```
IR: https://gist.github.com/silvasean/32dcad9f6270557f412094a77cecdd69
2021-02-25 11:28:34 -08:00
Sean Silva c424c24ed8 Bump llvm-project to c68d2895a1f4019b387c69d1e5eec31b0eb5e7b0
- dialect registration
- StringAttr::get: order of context arg
- math dialect
- LogicalResult nodiscard
- error message for invalid broadcast
2021-02-22 12:23:24 -08:00
Sean Silva 8486968925 Add trivial inliner interfaces.
With this + manually setting private visibility on everything, a simple
classifier can be reduced to this IR, which is looking pretty lean and
mean:
https://gist.github.com/silvasean/19e7e2e21a61ff197aeac0dd864d188f

Also, include a utility script for importing `.pt` models.

```
pt_util.py --import classifier.pt | npcomp-opt -torch-globalize-object-graph
```
2021-02-22 10:40:38 -08:00
Sean Silva 1b769f7841 Extend GlobalizeObjectGraph to handle torch.prim.GetAttr returning NnModuleType
This happens in practice. With this, we can globalize slots for the
non-trivial classifier layer obtained from
https://github.com/NVIDIA/NeMo/blob/main/tutorials/nlp/Joint_Intent_and_Slot_Classification.ipynb

This also adds support for tuple return types, which were needed by that
model.
2021-02-19 10:23:25 -08:00
Sean Silva 158c5c484d Implement GlobalizeObjectGraph transformation.
This required restructuring of how we model TorchScript on import. The
main difference is that now we split out a `torch.class_type` that holds
methods and declarations of the types of each slot. This is more
consistent with TorchScript (our previous representation was
"denormalized").

Recommended reading order:
1. check out the description of `torch.class_type` in `TorchOps.td` and
   look at `test/Dialect/Torch/ops.mlir` and
   `frontends/pytorch/test/module_import/` to familiarize with the new
   representation.
   - Just look at the new IR. The diff between the old names and new
     names is confusing.
2. check out `test/Dialect/Torch/globalize-object-graph*.mlir`
   and read along with the pass description in
   `include/npcomp/Dialect/Torch/Transforms/Passes.td`
3. Read the code in `GlobalizeObjectGraph.cpp` and miscellaneous changes
   in `ivalue_importer.cpp`, `TorchOps.cpp`, etc.
2021-02-18 18:18:47 -08:00
Aaron J Arthurs 484fe0d9bd Reformat code 2021-01-28 12:01:35 -08:00
Aaron J Arthurs c0e14da888 Fix TensorFromElementsOp reference 2021-01-28 12:01:35 -08:00
Aaron J Arthurs fc650c9447 Import TCP pad 2021-01-28 12:01:35 -08:00
Sean Silva 689b40c7a6 Add initial TorchScript module importer
It turns out that this was easiest to structure as a general IValue
importer, since torch module are just one of the possible IValue's.

We import the IValue object graph in a braindead fashion into basicpy
ops and a new `torch.nn_module` op that is used to model the
attributes/methods of a torch::jit::Module IValue. See `Torch/ops.mlir`
for an example, and also check out the .py import tests in
`frontends/pytorch/test/module_import`.

As part of this change, a few housekeeping tasks:
- extract some helpers from graph_importer.cpp
- more helpers around the C API
- misc touchups
2021-01-28 11:55:17 -08:00
Sean Silva 1965ac4d67 NFC: mark some methods as `override`
This silences some warnings I was seeing locally.
2021-01-21 11:48:41 -08:00
Sean Silva 97d6d04d41 Bump llvm-project to 16c6e9c58e9ae50a775945e6b407f1891f353d2f
Changes:
- linalg init tensor change (outs+init -> just outs)
- IntegerType::get and other builtin types now take the context as the
  first arg
- LLVMType::* is gone. Now LLVM Types are just regular Type's.
2021-01-05 16:12:11 -08:00
Sean Silva d818043986 Bump llvm-project to d50d7c37a159802c89454a6c53c0ec2e7949d84a
Fixes:
- use `op->(method on Operation)`
- update for MlirIdentifier in signature of mlirNamedAttributeGet
2020-12-14 14:30:51 -08:00
Sean Silva b2077738ca Bump llvm-project to 444822d77a7fea28aa49edf24533c987efa1b2ee
Fixes:
- renames StandardTypes -> BuiltinTypes
- std.extract_element -> tensor.extract
2020-12-11 14:43:38 -08:00
Sean Silva 46aa6d0a24 [RefBackend] Fix leaks related to ABI boundaries.
Best as I can tell (e.g. from LeakSanitizer), this fixes all the leaks
except for those due to buffers created internally to the codegenned
code itself (up next I'll add the buffer deallocation pass to fix
those).

The main change is that instead of attempting to pass `refbackrt::Tensor`
to the codegenned function directly, we make all the ABI types be
UnrankedMemRef which gets passed awkwardly (but workably) as a
`{size_t rank, void *ptrToDescriptor}` on the ABI. The reason why
refbackrt::Tensor wasn't workable is that is that MLIR doesn't really
have a way to deal with the lifetime of unranked memref descriptors that
happen inside the function, which is inevitably what would happen in the
old code that would emit runtime calls to
`refbackrt.to_memref/refbackrt.from_memref` to convert back and forth to
`refbackrt::Tensor` inside the codegenned code.

So, instead of the `refbackrt.to_memref/refbackrt.from_memref` with no
real sound basis for valid lifetime management, we now have a lovely
piece of code in `refbackrt::invoke` in `Runtime.cpp` that just barely
seems to be sound. We rely on the codegenned code having these
properties, which it seems to have:

- it won't free memref descriptors or their backing buffer for arguments
  of UnrankedMemRef type.

- it will allocate a separate memref descriptor for each result
  UnrankedMemRef (which is ensured by having a separate memref_cast for
  each)

- we can sniff the `allocatedPtr`'s (i.e. the backing buffer pointers)
  to avoid double-freeing in the case of aliasing of the backing buffer
  (including backing buffers for arguments feeding into results)

- to catch the case of statically allocated data (which we need to avoid
  passing to `free`) , check if the `allocatedPtr` is (no joke) equal to
  `0xDEADBEEF`, because there is otherwise no way to distinguish
  statically allocated from malloc'ed data...  (std.global_memref lowering
  to LLVM by happenstance sets the allocatedPtr equal to `0xDEADBEEF`,
  presumably mainly as a debugging thing)

Even with all this, we *still* need to (internally to refbackrt::invoke)
make copies of all inputs/outputs! And the details of how the LLVM-level
ABI gets laid out for e.g. function arguments/returns is still super
tricky.

This really highlights how deficient memref is as the general runtime
type for our use case. It's stewing in my mind how best to improve the
situation. My general gut feeling is that IREE's abstractions for this
are "right", but I need to think more how to distill those aspects of
IREE's design in a "reference" way for RefBackend.

Some implementation notes:

- In terms of how this is implemented, this did catch a bug in our ABI
  wrapper functions in LowerToLLVM.cpp, which I had to fix (it happened to
  work before through some combination of npcomprt::Tensor being passed as
  a single pointer + probably me infinite-monkey-ing it until it worked)

- This actually removes 2 out of the 3 compiler runtime functions (the
  only one left is "abort_if". (most of the memref descriptor code moved
  from CopmilerRuntime.cpp to Runtime.cpp)

  - this also means deleting `refbackrt.from_memref` and
  `refbackrt.to_memref`
2020-11-25 13:09:58 -08:00
Stella Laurenzo 3937dd14cb Add basicpy.numeric_constant op.
* Going through TODOs on the PyTorch side, this is a big cause of them (not being able to have constants for signed/unsigned).
* Added complex while in here since we're at the phase where it is better to just have things complete than partially done.
2020-11-24 16:44:40 -08:00
Stella Laurenzo bea0af419d NFC: Prefactor some basicpy ops in advance of more type work.
* Organizes the BasicPyOps.td file by function.
* Renamed `to_boolean` -> `as_predicate_value` (trying to consistently use "predicate" to refer to i1/low-level types and Bool/Boolean to refer to Python bool types).
2020-11-24 15:49:37 -08:00
Stella Laurenzo f03225b1f1 Bump llvm-project to f4f8a67aaf13bc66a2b7d55561b14a3724a5e0de.
* Incorporates source fixes.
* Uses upstream pybind11 detection logic.
* Patches CI.
* This may break the CI, which will need to be fixed manually in a followup.
2020-11-22 13:14:44 -08:00
Sean Silva 1dfcfa9cd1 Add aten.mm op and "test" it e2e.
Note that unlike aten.matmul which has dynamic behavior
depending on the argument ranks (can do matrix-matrix, matrix-vector,
batch matmul, etc.), aten.mm is just a vanilla matrix
multiply, which can be lowered precisely to tcf.matmul.

The "test" is really just an example that I stared at while getting my
feet wet with this. We probably want something that actually tests this
as part of `ninja check-npcomp`.
2020-11-20 17:21:24 -08:00
Sean Silva 32b2dc6ce7 Revert "Bump llvm-project to 369c51a74b5327464e27e0749ca7ac59ac1349ce"
This reverts commit c60d7b4aae.

It seems to have tickled some sort of pybind version issue:
https://github.com/llvm/mlir-npcomp/runs/1433414550?check_suite_focus=true
2020-11-20 15:09:18 -08:00
Sean Silva c60d7b4aae Bump llvm-project to 369c51a74b5327464e27e0749ca7ac59ac1349ce 2020-11-20 13:03:24 -08:00
Sean Silva 358159a6eb [RefBackend] Open-code shape.get_extent as extract_element
It was annoying that we were creating shape.get_extent in the middle of
the bufferization pipeline, as it required running convert-shape-to-std
at an awkward place. To make that cleaner, just open-code the
extract_element ops that shape.get_extent expands into.

This is a little gross, but it helps with the macroscopic pipeline
ordering issues. Anyway, the train is long-gone of trying to treat
shapes as some special data type that should only be operated on with
shape ops.

Also,
- reorder tensor constant bufferize (which is a module pass) to bracket
all the bufferization function passes, to make the parallelism
opportunities there clearer. Now we have a very clean little
bufferization segment of our pipeline construction.
2020-11-17 11:00:38 -08:00
Sean Silva 5227d52c26 [RefBackend] Use std.global_memref instead of homegrown thing
This vastly simplifies our code, allowing deleting multiple ops,
simplifying multiple passes, and removing a whole pass.

Now `refback` dialect is down to one op (refback.alloc_memref, which
simplifies allocations to just take a shape instead of individual
extents).
2020-11-13 18:43:50 -08:00
Sean Silva 1c7c362e29 [TCP] Replace tcp.matmul with linalg.matmul.
This involved adding a `tcp.splatted` op to splat a dynamically sized
init tensor. See rationale in TCPOps.td docs.

One interesting observation is that when lowering tcf.matmul to
linalg.matmul, we need to both 1) create the error checks and 2)
calculate a shape transfer function to create the init tensors.
Previously, 2) was deferred to bufferizing tcp.matmul later. I'm not
sure if this is a conflation of concerns or not. For now, it's not a big
burden.
2020-11-10 18:58:28 -08:00
Sean Silva 0427aacb0b [TCP] Replace elementwise ops with std elementwise ops. 2020-11-10 18:58:28 -08:00
Stella Laurenzo 6c702b149f Add a number of kernels and new patterns.
* convolution, convolution_backward, _log_softmax, _log_softmax_backward_data, nll_loss_forward, nll_loss_backward, nll_loss2d_forward, nll_loss2d_backward, copy_
* Extends the recognition logic and metadata for handling inplace transformations, optional tensors, ints, lists and dropped args.
* The kernel_calls generated by test_conv_nllloss_grads.py now convert to ATen.
* The result *almost* comes out as a pure tensor program with the exception of the copy_ op, which I will do some followup work to deal with.
* More progress on #97
2020-11-04 14:36:59 -08:00
Sean Silva 1874bf5eb1 NFC: Clean up some minor nits
- Remove GreedyPatternRewriteDriver.h from files that don't need it
- fix typo shouldBeCloned -> wouldBeCloned
2020-10-30 18:48:25 -07:00
Stella Laurenzo a3f4db9fe8 Bump llvm-project to c8c07b76b2cf2ada8e7ec132f7f57b97d76743cf.
* Several NFC changes to signatures/includes.
2020-10-29 15:25:55 -07:00
Stella Laurenzo c08935a418 Rewrite ATen ODS code generator to be based on new op registry and new signature recognition system.
* Deletes prior code generator from previous attempt (moved some of it into this one).
* Renames old generated tablegen source to "Legacy".
* Generates ODS and import rules for most binary and unary arithmetic ops.
* Removes old generated ops and integration tests that were testing details of the prior setup.
2020-10-28 10:37:37 -07:00
Aaron J Arthurs 94ea6f7c92 [RefBackend] Support element-wise multiply op
Register the following for the multiply op:
- tcf.mul
- tcp.mul
- TCP->TCP lowering
- Shape transfer, broadcasted multiplicands
- Lower to standard `MulFOp` op
2020-10-27 19:41:23 -07:00
Stella Laurenzo 510f226df2 Expose signature metadata to ops and implement ATenRecognizeKernelsPass pass.
* Two op interfaces, one for querying instance metadata and one for getting static data needed to construct an op from a generic form.
* For torch.generic_kernel ops, metadata is splatted in during capture from Torch (it comes from the op registry, which will work for either device capture or graph import).
* Moved the 'add' out of the generated set so I can experiment on it. It implements the TorchBuildableKernelOpInterface interface which provides its metadata.
* The ATenRecognizeKernelsPass pass generically lowers from a torch.generic_kernel to recognized ops that implement the TorchBuildableKernelOpInterface, handling the various types of transformations that we allow at this stage.
2020-10-26 20:31:45 -07:00
Stella Laurenzo 91fc83d2e7 NFC: Transition ATen passes to tablegen registration. 2020-10-22 17:12:44 -07:00
Stella Laurenzo 9618c2dbf7 NFC: Re-organize ATen directory structure and fix warnings.
* Still some more work to do on the Transforms tree to bring it in line with the others (will do that as I add things).
2020-10-22 14:13:26 -07:00
Stella Laurenzo 029815152e Add remaining pieces to capture full example models.
* Adds Basicpy List, Tuple, Dict types and plumbs through C API.
* Started debugging the issues around aten::conv2d capture, but a PyTorch bug is suspected.
* Was able to manually verify that the basic conv2d forward test captures correctly with a workaround.
* Need to resolve some printing issues upstream and move these tests to an integration test target (they take ~seconds to run).
2020-10-19 22:16:59 -07:00
Stella Laurenzo 9e52f6235b More progress on PyTorch acap device capture.
* Now gets far enough to capture batch_norm.
* Has some issues still with in-place ops.
* Can materialize constants.
* Includes an upgrade to PyTorch nightly, which has important bug fixes for fallback and boxed kernel dispatch.
* Fixes #78, #79, #80.
* Will do more testing in a follow-up once further bugs are fixed that facilitate getting at the other features.
2020-10-15 21:43:21 -07:00
Sean Silva 06a8ba6900 [RefBackend] Use more idiomatic bufferize pattern for TCP.
The time has come for BypassShapes/LowerShapedResultsToMemref to go away :(
For the reference backend, being consistent with upstream conventions is
the name of the game now.

This is a step down in a number of ways, e.g. test clarity and
separation of concerns. But it is fewer files and fewer tests, and
*does* address the "TODO: This is really fragile". It also eliminates two
more ops from the refback dialect (sadly, they are the
shaped_results/yield that we were getting kind of fond of, but alas).
2020-10-15 20:15:53 -07:00
Sean Silva b6bdc8cc4f [RefBackend] Use upstream BufferizeTypeConverter
Now that it has grown source/target materialization capabilities
(spelled with ops tensor_load/tensor_to_memref), we can use it. We can
also now delete refback.memref_to_tensor/refback.tensor_to_memref.

This is also a first step to reducing the downstream functionality
needed in the refback dialect.
2020-10-15 15:58:51 -07:00
Sean Silva f2d5c26c97 Bump llvm-project to 820e65f9e2369d2990fde4b3e7cfceb64f0df9c8
Date:   Mon Oct 12 11:26:50 2020 -0700
2020-10-12 13:30:22 -07:00
Stella Laurenzo af4edb63ae Start reworking towards a shared library build.
* Need to have a dag of shared library deps in order to interop across python extensions (as presented in ODM).
* Introduced add_npcomp_library and friends to mirror the MLIR setup.
* Adds a libNPCOMP.so shared library.
* Redirects tools and extensions to link against libNPCOMP.so (instead of static libs).
* Moves all libraries to lib/, all binaries to bin/ and all python extensions to python/. The invariant is that the rpaths are setup to have a one level directory structure.
* Reworks the _torch_mlir extension to build like the others (still need to come up with a consolidated rule to do this instead of open coded).
* Includes an upstream version bump to pick up needed changes.

Sizes with dynamic linking (stripped, release, asserts enabled):
  libNPCOMP.so: 43M (includes much of the underlying LLVM codegen deps)
  libMLIR.so: 31M
  _npcomp.so: 1.6M (python extension)
  _torch_mlir.so: 670K (python extension)
  npcomp-capi-ir-test: 6.3K
  npcomp-opt: 351K
  npcomp-run-mlir: 461K
  mnist-playground: 530K

Still more can be done to normalize and optimize but this gets us structurally to the starting point.
2020-10-09 16:02:58 -07:00
Sean Silva 7edb5f3641 [RefBackend] Rename RefBackend dialect to Refback
I now realize that VerboseCamelCase is not the best choice for dialect
directory/file names and C++ identifiers (take e.g. "Linalg", "Basicpy",
etc. as prior art here; not LinearAlgebra or BasicPython). If I had to
name the convention it seems to be "Shortword" (or of course just
acronym dialects like LLVM, SCF, etc.).

This rename also has the side benefit of differentiating RefBackend
directories, which now refer to the actual backend itself, from
Refback/Refbackrt, which are the dialects which happen to be used by
that backend.
2020-10-08 09:07:00 -07:00
Sean Silva bf99a82832 [RefBackend] Rename Npcomprt dialect to Refbackrt. 2020-10-08 09:07:00 -07:00
Sean Silva 03846ed8e7 Rename a couple CMake targets.
NPCOMPFoo to NPCOMPFooDialect for consistency with others.
2020-10-07 10:29:48 -07:00
Sean Silva 5017430dc7 [RefBackend] Split out RefBackend (refback) dialect from TCP.
This is the first in a patch series that is refactoring the
constellation of things variously called or associated with "E2E",
"RefE2E", "npcomprt", and "TCP" into a more cleanly layered result.

Concretely, this first patch fixes the fact that TCP was basically
acting like a dumping ground needed by the reference backend. This
splits it out, which is fairly mechanical, but touches a lot of lines of
code (basically replacing `tcp` with `refback` and `TCP` with
`RefBackend).

Now, the RefBackend dialect is that dumping ground, which
is slighly better, as it starts allowing TCP to become a nice clean
middle layer that is not related per se to the reference backend.

The previous name RefE2E or "reference e2e flow" was super confusing.
Now that we are seeing more clearly where the "backend" distinction
lies, the [RefBackend] commit tag is born :)
2020-10-07 10:29:48 -07:00
Stella Laurenzo 3d74337be0 Add a torch.kernel_call op and associated predicates. 2020-09-29 15:10:38 -07:00
Stella Laurenzo 2c9ca79c89 Add boilerplate for Torch dialect. 2020-09-28 15:26:17 -07:00
Sean Silva 6ea37cfed6 Bump llvm-project to 9ed1e5873c19eb817fb9e36d0262c7effee5d35e
Date:   Fri Sep 18 13:55:52 2020 -0700

- Update to linalg syntax
- New generated builders are better. Custom builder for
tcp.shaped_results is now redundant.
2020-09-28 09:34:44 -07:00
Sean Silva 75f57b461e
Totally rework RefE2E tensor to memref flow. (#42)
This now gets the overall "RefE2E" compilation stack to a point that I'm
fairly happy with. We simplify it by mostly embracing the "descriptor"
view of the world.

The overall flow is best understood by reading through the
createE2ELoweringPipeline function in lib/E2E/E2E.cpp
That function creates a pass pipeline that lowers from "TCF" (which is
~numpy level of abstraction) down to LLVM IR.

A brief high-level summary of what happens there:

1. TCF to TCP conversion. This involves reifying error handling in the
form of shape constraints. See test/Conversion/TCFToTCP/basic.mlir

2. Lowering shape constraints. This converts shape constraints into
eager error-handling code. See test/E2E/lower-shape-constraints.mlir
This pass will soon go upstream.
Because this lowers to std.assert, some later passes like
LowerToNpcomprtABI and LowerToLLVM are updated to properly plumb this
through e2e.
See test/npcomp-run-mlir/invalid-broadcast.mlir for an execution test
that properly aborts in case of an error.

3. Lowering tensors to memrefs. This is done via a series of passes
rather than an single mega conversion. Unlike the previous code that
mixed in the npcomprt ABI stuff here, it's now a very clean "pure
memref" conversion.
See test/E2E/lower-*-to-memref.mlir and
lib/E2E/TensorToMemref/
Most of the changes are concentrated here.

4. As part of the above, we use the upstream ConvertShapeToStandard for
lowering shapes.

5. We lower linalg to loops and lower loops to CFG using upstream
passes.

6. Rewrite the "ABI" boundaries of the program to npcomprt data
structures (LowerToNpcomprtABI). This mainly affects ABI boundaries and
how global tensor constants are represented. One of the major
improvements in this commit is that now it's a very clean rewrite that
just replaces memrefs on ABI boundaries with !npcomprt.tensor (before
there was a get_extent function that is not needed).
See test/E2E/lower-to-npcomprt-abi.mlir

7. Lower to LLVM with upstream mlir patterns + some patterns for the
npcomprt lowerings.

One aspect here that is still a remnant of a non-descriptor-based tensor
to memref flow is the BypassShapes + LowerShapedResultsToMemref.
BypassShapes wraps the "tensor compute" ops in a tcp.shaped_results
(basically a "tie_shape" kind of op), and then
LowerShapedResultsToMemref uses those annotations to allocate output
buffers while lowering the "tensor compute ops". Note that there are
very few "tensor compute" ops currently supported (tcp.add +
tcp.broadcast_to), so we just hardcode them in both passes.
Realistically, I expect this to go away as we fully embrace the
descriptor-based approach for simplicity, so don't look too deep into
it.
2020-09-16 17:31:40 -07:00
Marius Brehler d62f8227c2
Bump LLVM to @7d1ed69 and fix namespace handling changed upstream.
* Bump LLVM to llvm/llvm-project@7d1ed69
* Bump MLIR-HLO to tensorflow/mlir-hlo@1880f87
* Adopt to MLIR's changed namespace handling
2020-09-16 15:52:15 -07:00
Marius Brehler 124bc65a70 Register dialects in ATen lowering pass 2020-09-09 21:55:17 -07:00
Stella Laurenzo 81dd571c23 Integrate upstream LLVM at 8d9c13f37d2081c11186718ae8b5aef8b507d152.
* mlir-hlo: 062a3ac4a0671d15b5199ed2cd3a9ce02a5bf077

Fixes:

* numInputs() just returns an int instead of requiring a call to .getLimitedValue()
2020-09-08 20:34:31 -07:00
Stella Laurenzo 97d83f786a Bump submodule versions.
* llvm-project: b5924a8e27536d19dd5c4d302db29fb6163d5faa
* mhlo: 848ca244d20f045b7921da55a98a04d95ef94f0e
* Multiple breakages that need to be fixed.

Fixes:
* Refactor dialect registration
* Remove all kindof methods (Casting functionality has been added upstream and is implicitly
available, see https://llvm.discourse.group/t/removing-kinds-from-attributes-and-types/1547.)
* Update dialect registration to comply with https://reviews.llvm.org/D85495.
* Remove type kinds and update some changed dialect signatures.
* Upgrade ATen dialect to match upstream needs.
  * Move dialect registration to tablegen.
  * Register the ListType in tablegen.
  * Change dialect initialization signature.
* Use TypeSwitch in MlirIr location printer.
* Remove global registry depends from npcomp-opt.
* Change LowerToLLVM to pass an MLIRContext vs an LLVMDialect for type creation.
* Remove dep on MLIREDSCInterface that is removed upstream.
* Thread through the DialectRegistry for opt and python-like tools.
* Modernize pass registration (This was forced because the GEN_PASS_REGISTRATION code now generates inline functions vs literal pass registration statements)

Co-authored-by: Marius Brehler <marius.brehler@iml.fraunhofer.de>
2020-09-08 13:26:42 -07:00
Stella Laurenzo fc4f374345 Format sources. 2020-08-27 14:47:49 -07:00
Stella Laurenzo 69cda404ef NFC: Fix extra namespace declaration.
* Was causing build break on GCC9.
2020-08-20 16:22:41 -07:00
stephenneuendorffer bb668e6e26
Add ATen Dialect (#16)
This patch adds a dialect intended to be used as a frontend dialect
to facilitate lowering from "A Tensor Library" in torch/pytorch.

This patch includes several passes that are useful in conjuction with the
dialect:

--aten-layer-name: Generates layer names for each operation, which are not
  present in the original pytorch.
--aten-to-std: Lower the ATen dialect into standard dialect function calls.
--return-elimination-pass: convert functions (primarily the toplevel function)
  to pass return values by reference.  This simplifies pytorch integration.
--aten-op-report: generate a textual report about the model
--liveness-report

Future patches will implement actual integration with the pytorch jit to
intercept and generates MLIR in this dialect, then lower the resulting MLIR
into function calls through aten-layer-name -> aten-to-std ->
return-elimination -> std-to-llvm. The result would then jitted using the LLVM
jit, linked against a runtime library which makes calls back into pytorch to
implement all the layers.

Co-authored-by: Jeff Fifield <jeff.fifield@xilinx.com>

Co-authored-by: Jeff Fifield <jeff.fifield@xilinx.com>
2020-08-12 19:28:04 -07:00
stephenneuendorffer 44af7a6d30
[cmake] Updates for basic shared library support (#7)
Mostly this is CMake cleanup.  Several library dependencies are missing, which
is often revealed with shared library builds.  Also, it's generally bad to
link directly against LLVM libraries because it fails when using
LLVM_LINK_LLVM_DYLIB.  MLIR will pull in libLLVM.so, and there will be
duplicate linkage with the the explicit libraries.  There may need to be more
refactoring here.
2020-08-05 14:49:18 -07:00
Stella Laurenzo 9d5d802cc8 Fix compilation issues due to llvm-project version bump.
* Redundant infer type implementations removed.
* Update to the linalg GenericOp build calls.
2020-08-01 15:23:57 -07:00
Stella Laurenzo 0356f65dcd Wire through codegen and runtime dependencies.
* Enables e2e test.
* With what I've learned in upstream about test directory layout, I can consolidate most of the separate directories we have for these things. Will do that in a followup.
* Not pleased with the LLVM global initialization depends but serviceable for now.
2020-07-10 22:57:26 -07:00
Stella Laurenzo 9e4a62fc71 Allow JITModule passes to be built separately.
* Re-introduces frontent/backend split.
* Adds a (very) trivial shape refinement pass.
2020-07-10 22:57:26 -07:00
Sean Silva e228aa4b11 npcomprt: add support for constants
- create tcp.global + tcp.get_global_memref
- create npcomprt.global + npcomprt.get_global
- LLVM lowering for new npcomprt ops
- Runtime:
 - GlobalDescriptor struct emitted by LLVM lowering
 - implement __npcomp_compiler_rt_get_global

Also,
- cleanly isolate all runtime data structure definitions shared by the
compiler and runtime into lib/runtime/CompilerDataStructures.h
2020-07-10 17:31:24 -07:00
Stella Laurenzo efbcf0aa44 Add NumpyPublicFunctionsToTensor pass.
* Rewrites public function signatures to operate on tensors (vs ndarray).
* Most of our backends presume immutable tensors at public function boundaries.
2020-07-08 22:51:54 -07:00
Sean Silva b4f0cea8fa Rework e2e flow to use new "npcomprt"
This ~totally reworks the existing "runtime" stuff to be more
principled and usable, such as from Python. It's still not fully
production-quality, mainly in the department of memory management (e.g.
it currently leaks memory; we need to figure out "who frees memrefs" +
the analysis and transformation needed to do that (maybe use upstream
buffer allocation pass?)).

The user API is in include/npcomp/runtime/UserAPI.h, though
include/npcomp/JITRuntime/JITModule.h is a friendlier wrapper.

The stuff under {include,lib}/runtime is totally firewalled from the
compiler and tiny (<6kB, though no attention has gone into optimizing
that size). For example, we don't link in libSupport into the runtime,
instead having our own bare bones replacements for basics like ArrayRef
(the JITRuntime helps with bridging that gap, since it *can* depend on
all common LLVM utilities).

The overall features of npcomprt is that it exposes a module that
with multiple function entry points. Each function has arguments and
results that are tensor-valued, and npcomprt::Tensor is the runtime type
that is used to interact with that (and a npcomprt::Ref<T>
reference-counting wrapper is provided to wrap npcomprt::Tensor in the
common case).

From an implementation perspective, an npcomprt module at the
LLVM/object/binary level exposes a single module descriptor struct that
has pointers to other metadata (currently just a list of function
metadata descriptors). All interactions with the npcomp runtime are
keyed off of that module descriptor, including function lookups and
dispatching. This is done to dodge platform ABI issues and also allow
enough reflection to e.g. verify provided arguments.

Most of the compiler-side work here was in LowerToNpcomprtABI and
LowerToLLVM.

Also,
- Rename npcomp_rt/NpcompRt to npcomprt/Npcomprt; it was getting
annoying to type the underscores/caps.
- misc improvements to bash_helpers.sh
2020-07-08 19:36:19 -07:00
Stella Laurenzo 5aa2f0f9f6 Add a trivial copy elision canonicalization on ndarray->tensor.
* This elides the very common code the compiler adds for chaining otherwise tensor-related numpy ops together.
* More aggressive canonicalizations would require more advanced analysis.
2020-07-05 18:09:43 -07:00
Stella Laurenzo 504e3c4946 Fixup local ndarray<->tensor transforms to preserve shape.
* Preserving shape across the copy ops makes more thing shaped by default.
* Inference of ndarray types will now preserve the shape when specializing the dtype.
2020-07-05 17:45:45 -07:00
Stella Laurenzo fae15ec5e7 Allow the ndarray type to carry a shape. 2020-07-05 17:34:03 -07:00
Stella Laurenzo 00c791f925 Make common utilities for converting TypeNode <-> IR types.
* Generalizes the conversions from ObjectValueType <-> tensor and ndarray.
* Creates a utility to construct the default type map hook.
2020-07-04 20:33:13 -07:00
Stella Laurenzo 97c92aa264 Remove the existing attached values/ops from CPA types.
This was ad-hoc and needs to be replaced by a more principled track back to the IR.
2020-07-04 17:47:19 -07:00
Stella Laurenzo 48a0b0ec7f NFC: Move CPATypeInference to Typing directory. 2020-07-04 16:56:09 -07:00
Stella Laurenzo 051d088161 NFC: Move CPA typing analysis down a directory. 2020-07-04 16:40:02 -07:00
Stella Laurenzo 6a50efd046 Extend the CPA type inference to work on numpy types/ops.
* Adds an op interface for adding CPA constraints.
* Adds a type conversion hook for handling built-in types (that we can't have adopt our interface).
* Converts tensor<> to object(!Tensor, [e:<type>]) just like NdArray.
* Implement a few numpy ops far enough to do dtype inference for simple sequences.
2020-07-03 18:16:34 -07:00
Stella Laurenzo 34861b18f4 Add NdArray type inference conversion. 2020-07-03 16:38:10 -07:00
Stella Laurenzo 4a2f7c0b5f Add constraint propagation and tracking of node members. 2020-07-03 13:29:52 -07:00
Stella Laurenzo 1a13c38033 More progress on CPA.
* Added transitivity propagation rules.
* Fixed up some copy-n-paste inversions from the old algorithm.
2020-07-02 18:56:05 -07:00
Stella Laurenzo 74b8bed7e3 Unique CPA type and constraints to enable comparison by pointer during propagation. 2020-07-02 17:07:02 -07:00
Stella Laurenzo a257da46e2 Introduce a type interface for mapping to CPA types.
* Currently just simplifies the logic for UnknownType -> TypeVar.
2020-07-02 13:56:27 -07:00
Stella Laurenzo b0604684ba NFC: Move CPA support down into it's own directory. 2020-07-02 11:31:23 -07:00
Stella Laurenzo 92190176fb Add skeleton of pass to do modified PCA type inference. 2020-06-30 20:57:09 -07:00
Stella Laurenzo 046751254f Refactor old tracing tests and remove deprecated ops.
* Old doctests to run under lit.
* Old custom filecheck tests -> pytest directory (under lit).
* Rename some old ufunc ops in the tracer.
2020-06-29 16:19:03 -07:00
Stella Laurenzo 7ca292ade5 Add partial evaluator for explicit numpy ufuncs.
* This enables emission of "numpy.add(a, b)" and several dozen others.
* Will deprecate original ufunc infra in a follow-on.
2020-06-29 15:27:39 -07:00
Stella Laurenzo efe8915901 Add NdArrayType. 2020-06-28 17:37:20 -07:00
Stella Laurenzo 7bd5733d38 Add "template function" ops and importer code.
* This starts to lay down the infra for reasoning about calls
* Adds the importer code to generate IR for function calls of compiler recognized static functions.
2020-06-26 18:36:36 -07:00
Stella Laurenzo 529873d13c Wire up IREE compilation and runtime in a new backend test.
* Adds python bindings for invoking flow, HAL, and VM lowering pipelines.
* Adds pythong bindings for translating to VM module flatbuffer.
* Adds a new backend_test/iree directory and configure lit to find the IREE python rt bindings.
* Open code a simple_invoke.py that exercises the whole pipeline (need real APIs for a lot of this).
* Fails when invoking the function because I never implemented argument marshaling for scalars :(
* Plenty of stuff to do tomorrow.
2020-06-19 00:30:34 -07:00
Stella Laurenzo b21b5322f6 Basicpy conversion to IREE+std skeleton and first conversions.
* Conversions to std for numeric binary expressions, numeric to_boolean, and numeric comparisons.
* Added folders to constant ops to comply with requirements of the pass system.
* Extended the frontend with parameter/result annotation processing for primitives (can specify types for function arguments).
* Added (empty) directory/sources for IREEVM conversions. These are only enabled if IREE is enabled.
2020-06-13 23:45:43 -07:00
Stella Laurenzo 2ba8296151 Add script tools/format_source.sh and run it on all python and c++ sources. 2020-06-13 14:53:54 -07:00
Stella Laurenzo 750541e9a9 Extend type inference so that it works across conditional boundaries.
* The implementation is still limited but gives something to build on.
2020-06-10 21:33:17 -07:00
Stella Laurenzo e3fd22a035 Add a (very) basic type inference pass for basicpy.
For simple programs, this gets us enough typing to lower to real backends.
2020-06-10 19:04:05 -07:00
Stella Laurenzo 3e58d8fe37 Add skeleton of type inference pass. 2020-06-10 14:48:22 -07:00
Stella Laurenzo 432e01fe8f Move Basicpy and Numpy dialect IR to IR/ folder. 2020-06-09 19:22:24 -07:00
Stella Laurenzo 340f109742 Add implicit return and expression statements where the value id discarded. 2020-06-09 18:34:07 -07:00
Stella Laurenzo 85b724e70c Adds ODS and import support for binary_expr and binary_compare ops.
* Currently only supports non-short-circuit comparisons.
2020-06-08 13:46:06 -07:00
Stella Laurenzo 72499e0319 Add bytes constants. 2020-06-07 16:00:29 -07:00
Stella Laurenzo f3829b1d4f Add string constants. 2020-06-07 15:46:28 -07:00
Stella Laurenzo 869228e316 Add bool constants. 2020-06-07 15:15:19 -07:00
Stella Laurenzo 0cc0a7165e Add basic AST -> basicpy dialect function extraction.
* Extends the bindings to support locations.
* Various other things necessary to extract a function with simple numeric expressions.
2020-06-06 21:24:28 -07:00
Sean Silva cd7258dbd4 Enable warnings by default.
The secret here is LLVM_ENABLE_WARNINGS=ON.

I also fixed a couple warnings, which gets us to be warning-clean.

I noticed also that npcomp-run-mlir/basic.mlir seems to be failing.
Maybe something since the latest integrate. My next commit (introduce
npcomp mini runtime) will largely rewrite it though, so it'll get fixed
then.
2020-06-03 20:39:34 -07:00
Sean Silva e8b1a07ef4 Initial NpcompRt (npcomp_rt) dialect boilerplate. 2020-06-01 19:07:53 -07:00
Sean Silva 3a09455540 Use upstream shape.from_extents
Replace our local `tcp.shape_from_extents` op with the upstream
`shape.from_extents` op.
2020-05-21 14:51:01 -07:00
Sean Silva 1fed1cb016 Update llvm-project to 753a21928413f8a7e76978cb1354e09150e114e0 2020-05-21 13:09:06 -07:00
Sean Silva 87aa561c69 Remove RtGetTensorExtentOp.
It is unused now, and will be superceded by a proper runtime dialect.
2020-05-21 10:17:49 -07:00
Sean Silva be1971c4fc Rename tcp.abort_if to tcp.shape_observe_error
This more clearly captures its semantics as a structural "observer" of
code that we currently mark as NoSideEffect but eventually lowers to
eager error handling code.

Also, update LowerRankedShapes to erase it, now that the layering here
is clear. That pass reifies the eager error handling code, so the need
for the dummy op to keep things alive isn't needed.

With this change, we are now ready to start lowering to LLVM!
This is the current print-ir-after-all from e2e-lowering-pipeline:
https://reviews.llvm.org/P8221
2020-05-18 13:38:47 -07:00
Sean Silva eaeb4011e6 Lower !shape.shape to SSA values.
This uses an approach inspired by what is done in IREE. See comments on
LowerRankedShapes.cpp for how it works.

The basic gist is that we have an op that creates a !shape.shape from a
set of SSA values representing the extents, and then iteratively replace
any op producing a !shape.shape with instances of that op.
2020-05-13 17:20:23 -07:00
Stella Laurenzo 950ba12426 Bump llvm-project to 3af85fa8f06220b43f03f26de216a67be4568fe7. 2020-05-08 20:42:40 -07:00
Sean Silva e29aef855b Initial TCF/TCP E2E seed.
Very much WIP.

This is enough to get tcf.add down to approximately the "linalg.generic
on buffers" level of abstraction. (but there are nuances)
2020-05-08 20:20:41 -07:00
Stella Laurenzo a91b0bfbe1 Add numpy.get_slice op and wire it up to the tracer. 2020-05-08 16:04:58 -07:00
Stella Laurenzo bc5ef81d68 Add basicpy.SlotObject type and ops to create/index into it.
* This is intended to provide low-level modeling for built-in objects.
* It is now possible to trace slice tuples (which are tuples of NoneType|EllipsisType|SlotObjectType<slice, ...>).
2020-05-05 18:16:01 -07:00
Stella Laurenzo 502ef8f195 Create skeleton for 'Basicpy' dialect.
* It is time to start adding more python mechanisms.
* Running into this for materializing slice() objects.
2020-05-04 17:48:02 -07:00
Stella Laurenzo d3632af675 Add !numpy.any_dtype dialect type. 2020-04-29 18:20:42 -07:00
Stella Laurenzo c4a192d5c9 Rename from npcomp::NUMPY to NPCOMP::numpy to follow IREE convention. 2020-04-29 17:10:10 -07:00
Stella Laurenzo e845db8a20 Add builtin_ufunc and generic_ufunc ops. 2020-04-28 23:51:54 -07:00
Stella Laurenzo 953ef89a30 Add npcomp-opt and lit runner. 2020-04-26 17:55:15 -07:00
Stella Laurenzo d3b6e1767a Add stub numpy dialect. 2020-04-26 17:20:58 -07:00