Commit Graph

266 Commits (bb69014a960e67d07a98faa2faa5bdbb350264b8)

Author SHA1 Message Date
Branko Trifkovic 1c4b9d6a0e
Implement lowering of torch.aten.hstack (#3563) 2024-09-11 16:41:47 +05:30
penguin_wwy 04740824ae
[ci] enable fx_importer2stablehlo ci test (#3698) 2024-09-11 09:53:23 +08:00
rohan-tan-bhowmik e86f56bc76
[Torch] [TMTensor] Added mask and is_causal support for torch.aten.scaled_dot_product_attention (#3690)
Enabled mask and is_causal parameters for torch.aten.scaled_dot_product
attention + relevant comments + tests.

The tests added highlight the new capabilities introduced in this PR,
including:

Attention with F16 mask
Attention with Boolean mask
Causal attention with same Q K V shapes
Causal attention without Q K V shapes

Made sure that one cannot input both mask and is_causal.
2024-09-09 15:51:41 -07:00
Srinath Avadhanula 0a788e0467
Decompose aten.fmod into aten.mul,sub,div etc. (#3689)
As titled, create a new decomposition for `aten.fmod.Tensor` to
`aten.div`, `aten.trunc`, `aten.mul` and `aten.sub`. Note that we only
use `aten.trunc` for floating point operations. This further gets
decomposed to `aten.where` etc. by other existing decompositions.

This decomposition now makes TOSA pass for a simple model with
`aten.fmod` while it makes `stablehlo` fail. For now, we disallow this
decomposition for `stablehlo`

---------

Co-authored-by: Srinath Avadhanula <srinath.avadhanula@getcruise.com>
2024-09-09 09:00:11 -07:00
Branko Trifkovic 70d5730c87
[LINALG] Implement lowering of torch.aten.rot90 (#3551) 2024-09-06 10:36:17 +05:30
justin-ngo-arm d4b5e05ac1
[TOSA] Add Torch to Tosa Legalization for torch.tril (#3678)
Change-Id: Ie5ba31a27394c3adcea00266a9d562862dbd8b08

Signed-off-by: Justin Ngo <justin.ngo@arm.com>
2024-09-05 11:27:29 -07:00
Ze Zhang b3942ff984
Add canonicalize pattern for aten.mul.int and aten.floordiv.int (#3680)
This PR add `floordiv` to the `PY_BUILTIN_TO_TORCH_OP`. For
`aten.mul.int` and `aten.floordiv.int` ops, we add new Canonicalization
Patterns as follow:

```
%1 = torch.aten.mul.int %input, %const-5
%2 = torch.aten.mul.int %1, %const-6
```

Will be replaced by

`torch.aten.mul.int %input, %const-30`


And 

```
%1 = torch.aten.mul.int %input, %const-5
%2 = torch.aten.floordiv.int %1, %const-5
```
Will directly return `%input`


This PR also relaxes the `float` type constraint in TorchToTosa for the
`AtenRsubScalarOp` conversion.



To test:

`cmake --build build --target check-torch-mlir-all`
2024-09-03 09:13:59 -07:00
Vivek Khandelwal 567ed44fd0
[MLIR][TORCH] Add E2E support for aten.polar op (#3671)
Signed-Off By: Vivek Khandelwal <vivekkhandelwal1424@gmail.com>
2024-09-03 10:51:03 +05:30
lingzhiz1998 5bc59ce1fa
[TorchToLinalg] Support lowering MaxPool3dWithIndices (#3652)
Support torch.MaxPool3dWithIndices lowering to linalg backend.
2024-08-27 14:14:25 -05:00
Vivek Khandelwal b92e61832f
build: manually update PyTorch version (#3666)
Set PyTorch and TorchVision version to nightly release 2024-08-25.

Signed-Off By: Vivek Khandelwal <vivekkhandelwal1424@gmail.com>
2024-08-27 09:28:30 -07:00
Xida Ren (Cedar) 4358aaccd6
Add per-test timeouts to catch infinite loops (#3650)
Previously we only had full suite timeouts, making it impossible to
identify
which specific tests were hanging. This patch adds:

1. Per-test timeout support in the test framework
2. A default 600s timeout for all tests
3. A deliberately slow test to verify the timeout mechanism works

The timeout is implemented using Python's signal module. Tests that
exceed
their timeout are marked as failures with an appropriate error message.

This should help catch and isolate problematic tests that enter infinite
loops, without needing to re-run the entire suite multiple times.
2024-08-21 11:37:31 -07:00
lingzhiz1998 7f886cc270
[TorchToLinalg] Support torch.isclose lower to linalg (#3631) 2024-08-21 11:55:54 +08:00
zjgarvey f66908f190
[TorchToLinalg] address a dtype mismatch in `aten.multinomial` lowering (#3630)
Resolves <https://github.com/llvm/torch-mlir/issues/3628>
Unblocks a compile failure for one of the MiGraphx models
(`AgentModel`).
2024-08-20 15:14:48 -05:00
Vivek Khandelwal 0a86deb59a
build: manually update PyTorch version (#3627)
Set PyTorch and TorchVision version to nightly release 2024-08-18.
This commit also updates the `scaled_dot_product_attention` op. 
A new attribute `enable_gqa` has been added. As of now, only the
default value for the same is supported.

Signed-Off By: Vivek Khandelwal <vivekkhandelwal1424@gmail.com>
2024-08-19 12:03:56 +05:30
yyp0 43e3118eb9
[Stablehlo] use stablehlo specs lowering AtenSliceScatterOp (#3592) 2024-08-15 20:06:29 +08:00
pkapris-syrmia 23ec5399e5
Implement lowering of aten.atleast_2d (#3546)
This operator is needed to implement aten.vstack, which will be
submitted in a subsequent PR
2024-08-14 18:52:31 +05:30
Branko Trifkovic da877a781e
Added support for integer to complex conversion (#3604) 2024-08-14 18:13:00 +05:30
pkapris-syrmia 10fe5d08d1
Implement lowering for torch.aten.rad2deg (#3586) 2024-08-14 16:37:28 +05:30
pkapris-syrmia d11d6f6fea
[TorchToLinalg] Fix torch.aten.remainder for negative operands (#3581)
Closes #3575

The PyTorch remainder operator is meant to compute the Python modulus
operator entrywise:

https://pytorch.org/docs/stable/generated/torch.remainder.html#torch.remainder

In python the modulus operator is meant to always return a result with
the same sign as the divisor:

https://docs.python.org/3/reference/expressions.html#binary-arithmetic-operations

In other words, torch.aten.remainder should return a Python-style
modulus instead of a C-style modulus. However the remainder operator was
simply translated into arith.ModSI or arith.ModF, which both effectively
compute the C-style modulus. Now the lowering has been modified so that
the modulus operator works properly with negative numbers, both in the
dividend, and the divisor.
2024-08-13 21:17:21 +05:30
Matthias Gehre 334633b738
e2e: Enable generate-runtime-verification pass (#3615)
This adds the `generate-runtime-verification` pass into the linalg
refbackend, and moves all tests that now abort at runtime into the crash
set, sorted by their respective errors.

I have fixed on set of errors found that way, which are mismatches
between the static dimensions we cast to and the actual dynamic
dimensions. This was caused by wrong annotations on the test cases, like
in
https://github.com/llvm/torch-mlir/pull/3615/files#diff-48bfbf41fcad5fa01b49197d251114f84a2b8de4f1d87ab938a061aedd1419b1R1931
2024-08-12 14:15:12 +02:00
Felix Schneider 0314188dbe
[torch] Basic support for per-channel quantized graphs (#3623)
This patch adds basic support for lowering graphs with per-channel
quantization. Per-channel quantized ops have to be excluded from
`FuseQuantizedOps` for now but can be used in QDQ quantized form.

Using this patch, we're able to import and execute (on the linalg
backend) graphs with per-channel quantization applied using the "new"
PyTorch 2.0 Export Quantization.
2024-08-10 15:51:09 +02:00
Vivek Khandelwal f91f816336
Bump llvm to 585523750e2bbe374d1cb3bf4ff9d53de29b9593 (#3613)
Signed-Off By: Vivek Khandelwal <vivekkhandelwal1424@gmail.com>
2024-08-09 00:36:10 +08:00
zjgarvey 8d95fe9eeb
[TorchToArith] Add a lowering for `torch.add.float_int` (#3594) 2024-08-07 11:55:27 -05:00
Branko Trifkovic 2d6bfb2dec
[LINALG] Added support for conversion from float to complex. (#3595) 2024-08-07 12:36:48 +05:30
yyp0 22cd4441e7
[Torch] Add support for static uneven divisible AdaptiveAvgPool2d (#3566)
The static uneven divisible AdaptiveAvgPool2d means that although the
input size is not an integer multiple of ouput size, but the kernel and
stride size can also be fixed (not dynamic). The derivation logic of
kernel and stride size is consistent with
torch/_decomp/decomposations.py:adaptive_avg_pool2d as described in the
following:

1. Stride Size
Firstly , derive the start index in each reduce operation according to
the output size (`n`), `start_index = ([0, 1, ..., n - 1] * input_size)
// output_size`. For each index `k`, if `k * (input_size % output_size)
< output_size`, then the current and previous stride keeps the same as
`input_size // output_size`. So suppose `(n-1) * (input_size %
output_size) < output_size`, the stride in the whole AdaptiveAvgPool2d
process keeps static, as `input_size // output_size`.

2. Kernel Size
torch/_decomp/decomposations.py:adaptive_avg_pool2d calculates a static
kernel size when the input/output sizes satisfy either of the two
conditions, `input_size % output_size == 0` or `output_size %
(input_size % output_size) == 0`. Here if `input_size % output_size ==
0`, then the kernel size equals `input_size // output_size`, otherwise
`input_size // output_size + 1.`
2024-08-01 11:37:53 +08:00
yyp0 f49b9c14f1
[Torch] Add support for Aten__Or__BoolOp (#3574) 2024-07-31 17:23:53 +08:00
Suraj Sudhir d3efab984b
[TOSA] Fix Tensor.hacked_twin to support diff size indexes (#3547)
- Broadcasts index list tensors
- Adds torch.nn.Unfold test

Signed-off-by: Suraj Sudhir <suraj.sudhir@arm.com>
2024-07-30 14:32:05 -07:00
Ivan Butygin 8bd1b9751f
`max_unpool3d` linalg lowering (#3536)
An attempt of  `aten.max_unpool3d` to linalg lowering.
There are known issues with this implementation (see comment in code).
2024-07-30 20:59:17 +03:00
zjgarvey f1c74e1431
[TorchToLinalg] add support for depthwise qconv (#3564)
- Adds support for lowering depthwise + quantized convolution ops to
linalg::DepthwiseConv2DNhwcHwcQOp
- Changed the variable name for groupSize (which is really C/G) to the
more appropriate numGroups (G).
- Discovered in e2e testing that linalg does not accept (Cin = groups &&
Cout = K*groups for K>1) as a "depthwise" conv, so this also updates the
case-checking to reflect this issue.
2024-07-29 12:25:07 -07:00
yyp0 ea60d72489
[Torch] Add AtenMaskedFillTensorOp support (#3561) 2024-07-26 15:32:13 +08:00
Vivek Khandelwal 22c9008bb9
build: Update Roll PyTorch version (#3548)
This commit also updates the PyTorch and Torchvision nightly links since
they are now moved to a different location.

PyTorch Nightly: https://download.pytorch.org/whl/nightly/cpu/torch/
Torchvision Nightly:
https://download.pytorch.org/whl/nightly/cpu/torchvision/

Disables dtype checks for some ops, tracked by https://github.com/llvm/torch-mlir/issues/3552

Signed-Off By: Vivek Khandelwal <vivekkhandelwal1424@gmail.com>
2024-07-19 21:38:57 +05:30
bosko-syrmia 2cdf3deae3
implement lowering of torch.aten._linalg_slogdet (#3524) 2024-07-19 11:24:43 +05:30
Branko Trifkovic c7d972ed58
Implement lowering of torch.aten.tril_indices (#3517) 2024-07-18 18:38:12 +05:30
pkapris-syrmia fde286f491
Implement lowering for torch.aten.hann_window.periodic (#3502) 2024-07-17 18:21:23 +05:30
pkapris-syrmia b59efc75f3
Implement lowering of torch.aten.atleast_1d (#3498)
This operator is necessary in order to implement torch.aten.vstack.
Which will be added in a future PR.
2024-07-17 18:20:30 +05:30
Arham Khan 574143448b
[E2E][ONNX] torch.multinomial (#3404)
This PR adds a conversion in the TorchOnnxToTorch pass for the ONNX
Multinomial operation. It also adds a TorchToLinalg lowering for the
`aten.Multinomial` op and does a light refactor of some repeated code
that generates random floating point numbers in
`TorchToLinalg/Random.cpp`.
2024-07-16 23:09:39 +05:30
rohan-tan-bhowmik 0791a8860c
[Torch] Implements TorchToLinalg lowering of torch.ops.aten._weight_norm_interface (#3538)
Resolves https://github.com/nod-ai/SHARK-Turbine/issues/757.

Adds TorchToLinalg lowering for `Aten_WeightNormInterfaceOp`.

---------

Co-authored-by: Ubuntu <rbhowmik@RohanBhowmikVM.judsoscro3wupi0qm4bjlj5m3b.bx.internal.cloudapp.net>
2024-07-16 23:09:12 +05:30
Xinyu Yang e5d1677894
[Torch] Eliminate getWithLeastStaticInformation in DecomposeAtenLinspaceOp and DecomposeAtenFakeQuantizePerTensorAffineOp (#3539)
as title
2024-07-15 10:02:36 +08:00
Yuanqiang Liu 5e4f00acb1
[Torch] add support for aten.scatter_add (#3534) 2024-07-12 09:15:42 +08:00
Yuanqiang Liu b38585e077
[Torch Dialect] fix aten.nan_to_num's decomposition when inf=None (#3530)
also add shape infer in decomposition, see
https://github.com/llvm/torch-mlir/issues/3312
2024-07-11 08:46:40 +08:00
Gaurav Shukla 0b46d1110a
[MLIR][ONNX] Add support for onnx.ScatterND (#3479)
This commit adds support for onnx.ScatterND op in the onnx pipeline.

Signed-off-by: Gaurav Shukla <gaurav.shukla@amd.com>
2024-07-08 13:27:14 +05:30
Sagar Kulkarni 0fe74845da
[ONNX] Fix bug in ONNXToTorch PadOp's pads tensor rearrangement (#3485)
Fix the pad tensor rearrangement such that we change the representation
from [x1_begin, x2_begin, ..., x1_end, x2_end,...] to [xn_begin, xn_end,
...., x2_begin, x2_end, x1_begin, x1_end] where x1, x2 .. xn are the
dimensions of the pads tensor argument.

---------

Co-authored-by: zjgarvey <zjgarvey@gmail.com>
Co-authored-by: zjgarvey <47986913+zjgarvey@users.noreply.github.com>
2024-07-03 15:02:49 -05:00
Yuanqiang Liu e2fbded49c
[Torch Dialect] improve argmax/argmin's decomposition to support keep… (#3514)
…dim=True when dim=None
2024-07-02 09:08:57 +08:00
Vivek Khandelwal 2f231f394e
Bump Onnx Version to 1.16.1 (#3515)
This commit adds the support for new data types: uint4, and int4 and
uint8 tensor protos. Also, it moves some tests from failing to crashing.

Fixes https://github.com/llvm/torch-mlir/issues/3507

Signed-Off By: Vivek Khandelwal <vivekkhandelwal1424@gmail.com>
2024-07-01 22:15:45 +05:30
Yuanqiang Liu 0e71a192d8
[Torch] support decomposition of aten.aminmax (#3513)
* unify decompisition of `aten.amax` and `aten.amin`
* support `aten.amax` with `dim=()`
2024-06-29 21:44:05 +08:00
Yuanqiang Liu f9fc741eef
[Stablehlo] support aten.any.dim, aten.min.dim (#3500)
* refactor `TorchToStablehlo/Reduction.cpp`
* add `ConvertAtenReduceWithIndicesOp` patterns
2024-06-29 16:53:33 +08:00
zjgarvey af236dab66
Add support for multiple dynamic reassociation dims for unflatten.int (#3504)
Addresses an issue with onnx.Gather lowering to linalg:
<https://github.com/nod-ai/SHARK-Turbine/issues/242>

The builder for tensor.expand_shape, without an explicitly provided
output shape, fails to infer an output shape in the case of multiple
dynamic reassociation dims. I tried adding the output shape explicitly
for tensor.expand_shape, but ran into compilation issues later on (see
<https://github.com/iree-org/iree/issues/17760>).

This PR adds support by lowering this op to tensor.reshape when multiple
dynamic reassociation dims are provided.
2024-06-28 09:59:51 -07:00
Jiawei Wu f75cbb4df9
[torch dialect] emit aten.fmax/fmin and add decomposition patterns (#3510) 2024-06-29 00:07:55 +08:00
Aart Bik 1f73895f93
[torch-mlir] bump to llvm/llvm-project@9b78ddf3b2 (#3491)
This bump triggered an upstream assert. Includes a WAR for #3506.

Also includes several things I needed to do to repro:

* When TORCH_MLIR_TEST_CONCURRENCY=1, test runs will be printed.
* Added TORCH_MLIR_TEST_VERBOSE=1 handling to enable verbose mode
(useful on CI).

---------

Co-authored-by: Stella Laurenzo <stellaraccident@gmail.com>
2024-06-27 19:28:02 -07:00
Ramiro Leal-Cavazos e29191bd08
[LINALG] Broadcast `values` to shape of slize in `index_put` (#3487)
The `index_put` operation, `input[indices] = values`, allows for the
values to be any shape that is broadcastable to the slice
`input[indices]`. This commit adds broadcasting support to the Linalg
lowering of `IndexPutHackedTwinOp`.

Fixes: #3465
2024-06-26 08:59:49 +00:00