Commit Graph

1720 Commits (5f74de5ba0cd9fcb8d5af75a38de5899d3875de6)

Author SHA1 Message Date
pkapris-syrmia 10fe5d08d1
Implement lowering for torch.aten.rad2deg (#3586) 2024-08-14 16:37:28 +05:30
Vivek Khandelwal 4a0bed0ce0
[ONNX] Add training mode support for BatchNormalization op (#3597)
This commit extends the OnnxToTorch lowering for BatchNormalization op
for supporting the case when training=True.

Signed-Off By: Vivek Khandelwal <vivekkhandelwal1424@gmail.com>
2024-08-14 10:46:38 +05:30
Rob Suderman 2511cf46b4
[onnx] Fix `onnx.RNN` for layout attribute (#3620)
The `layout` attribute was not considered for the `onnx.RNN` operation.
Added support for the attribute to transpose the inputs / outputs of the
RNN when valid.
2024-08-13 14:34:25 -07:00
Rob Suderman af67f9efb0
[onnx] Support integer types for `onnx.Pow` (#3626)
Pow is not support for the `torch` operator. Add casting for integer
types.
2024-08-13 09:39:04 -07:00
Rob Suderman 39307f0462
[onnx] Fix `onnx.Gather` for bad expansion (#3625)
A case where unsqueeze was require was missed causing compilation
failures.
2024-08-13 09:38:55 -07:00
Rob Suderman 9ab93436c4
[torch] Support diagonal `einsum.Diagonal` (#3618)
The einsum lowering was missing the behavior for duplicate indices in
the equation. This amounts to a diagonalization along duplicate pairs of
indices in the equation.
2024-08-13 09:38:43 -07:00
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
Yuanqiang Liu c5b3cf299a
[Torch] emit upsample_nearest1d/2d/vec, and add shape/dtype functions (#3629) 2024-08-13 19:14:24 +08:00
aldesilv a4ba02eef5
[ONNX] add support for tfidfvectorizer (#3553)
1-d/2-d input and output
implemented based on the description and example test cases in
https://github.com/onnx/onnx/blob/main/docs/Operators.md#TfIdfVectorizer
and some notes from

https://github.com/onnx/onnx/blob/main/onnx/reference/ops/op_tfidf_vectorizer.py#L128

---------

Co-authored-by: zjgarvey <zjgarvey@gmail.com>
2024-08-12 18:10:11 -05:00
Rob Suderman d3695a97a0
[onnx] Fix `onnx.Hardmax` lowering to torch (#3624)
The lowering to torch makes assumption about the dimensions / types of
reduce max and onehot. We need to correct for expected torch behavior.
2024-08-12 11:19:02 -07:00
Phaneesh Barwaria 026dfade64
onnx.MelWeightMatrix TorchOnnxToTorch (#3503)
Just uploading what I have till now

[Gist](https://gist.github.com/PhaneeshB/761f75f5522d9f4a40ef949a328e93fe)
of pytorch impl that I'm following to implement the OnnxToTorch lowering

Additional Details - (also pasted as comment in gist)
[Op
Description](https://github.com/onnx/onnx/blob/main/docs/Operators.md#melweightmatrix)
in Onnx Documentation

[Example](https://github.com/onnx/onnx/blob/main/docs/Operators.md#examples-93)
Used the same example in this file.
the Expected output is shown in the example

[Reference Onnx
Impl](4c3ed5e08b/onnx/reference/ops/op_mel_weight_matrix.py (L13))
- This is the base for the above code.
2024-08-12 21:18:29 +05:30
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
Rob Suderman 44266ab0c4
[onnx] Support `fp8` for `onnx.QuantizeLinear` (#3619)
We need to directly decompose quantize linear for `fp8` types as the
equivalent torch operations do not support the operation.
2024-08-09 12:32:46 -07:00
Rob Suderman 8358e8c255
[onnx] Add support for `fp8` `onnx.DequantizeLinear` (#3617)
Fp8 needs a slightly different path for dequantization as the `torch`
dequantize operation does not support `fp8` types.
2024-08-08 16:20:53 -07:00
Rob Suderman 880e64bbbb
[onnx] `onnx.Split` may not have `num_outputs` which can be inferred (#3608)
The attribute does not exist in all variants of the operation. It can be
inferred from the number of results so we should just do that.
2024-08-08 16:17:38 -07:00
Rob Suderman fd98476f77
[torch] Unpacking sometimes misses shape inference (#3609)
It is possible that the unpacked tensor does not match the same inferred
shapes. This is pretty common when ingesting form the `onnx` frontend.
2024-08-08 16:17:31 -07:00
Rob Suderman 4350672685
[torch] Add integer support for pooling operations (#3610)
If we pass an integer type to the pooling operation we incorrectly pad
with an integer value with causes downstream compilation failures.
2024-08-07 21:42:10 -07:00
zjgarvey 7f2a17e757
[ONNX] fix padding for `onnx.MaxPool` (#3611)
The saga of aligning onnx and torch padding conventions continues. 

```python
onnx_pads = [low_x, low_y, low_z, high_x, high_y, high_z]
torch_pads = [low_z, high_z, low_y, high_y, low_x, high_x]
```

So not only is the lexicographical ordering hierarchy swapped (low/high
x spatial-dim -> spatial-dim x low/high) but the ordering in the the
spatial-dim specification is also reversed.

This patch properly reverses the pad ordering (and actually uses the
`shuffledPadding` to pad).
2024-08-07 20:34:00 -07:00
Rob Suderman 6c33ab024e
[onnx] `onnx.CenterCropPad` used an incorrect type for toScalar (#3605)
To scalar should have a rank-0 tensor type not rank-1 with length 1.
Changing allows proper compilation.
2024-08-07 20:33:33 -07:00
Rob Suderman 59a4c6fda4
[onnx] Fix transposition code for `onnx.OneHot` (#3606)
The post onehot transposition code was unexercised. Fixed the test and
transformation to check use.
2024-08-07 18:20:26 -07:00
Marius Brehler 341f415b1e
[onnx] Fix lowering `onnx.Shrink` to Torch (#3603)
This fixes the result type of the `torch.aten.lt.Scalar` and
`torch.aten.ge.Scalar` ops created during the lowering of `onnx.Shrink`
to Torch.
2024-08-07 21:25:14 +02:00
Rob Suderman 18139994e8
[onnx] Fix edge condition for `onnx.ReduceMax` (#3598)
For length-0 on `onnx.ReduceMax` the length 0 case was incorrect due to
a copy paste error.
2024-08-07 10:32:28 -07:00
zjgarvey 8d95fe9eeb
[TorchToArith] Add a lowering for `torch.add.float_int` (#3594) 2024-08-07 11:55:27 -05:00
Chi_Liu a51b4e014a
[Torch] Disable 1-d quantized convolution (#3601)
To fix https://github.com/nod-ai/SHARK-Turbine/issues/253#issuecomment-2271815640
Prevent fusion for 1d convolution ops and just do it as an f32 conv
since there isn't a linalg named op for quantized 1-d convolution yet.  
Get 24 onnx eca* models passed in iree-comiple.
2024-08-07 09:01:16 -07:00
Branko Trifkovic 2d6bfb2dec
[LINALG] Added support for conversion from float to complex. (#3595) 2024-08-07 12:36:48 +05:30
Rob Suderman b48e55c2f7
[onnx] Handle negative indices for `onnx.GatherElements` (#3599)
Add a check for negative indices and offset appropriately for
`onnx.GatherElements`.
2024-08-06 18:54:01 -07:00
Rob Suderman b1a232222f
[onnx] Fix `onnx.Shape` to include `start` and `end` processing (#3580)
`onnx.Shape` can select only a subset of indices using attributes. Add
support for these attributes.

---------

Co-authored-by: zjgarvey <47986913+zjgarvey@users.noreply.github.com>
2024-08-05 13:56:07 -07:00
Gaurav Shukla 839fe90f86
[MLIR][ONNX] Add support for onnx.scan op (#3516)
This commit lowers onnx.scan op to torch.prim.Loop op and adds the
lowering in the onnx pipeline.

Signed-off-by: Gaurav Shukla <gaurav.shukla@amd.com>
2024-08-05 15:37:26 +05:30
Rob Suderman 7e7af67080
Avoid warnings-as-errors build failure (#3588)
Lambda needs a return value to avoid a build failure.
2024-08-02 12:27:31 -07:00
zjgarvey d0933b0eb6
[TorchToLinalg] Fix possible OOB access in Interpolate lowering (#3570)
Following up from the discussion in
<https://github.com/llvm/torch-mlir/pull/3550>, I've edited the lowering
to prevent OOB extracts in a more direct fashion (i.e., just clamping
directly).

I don't think this affects the lit tests at all, but I've tested the
changes in our external test suite at
<https://github.com/nod-ai/SHARK-TestSuite/tree/main/>. I found the
issue when I was unexpectedly getting `nan`'s along the output image
border for a resize test there.
2024-08-02 13:55:37 -05:00
zjgarvey 79ae0afc2f
[TorchToLinalg] Simplify QuantizePerTensor lowering (#3576)
Uses arith::MaximumFOp and arith::MinimumFOp instead of comparison and
select ops to improve readability of IR.
2024-08-02 13:40:52 -05:00
Rob Suderman f7b5c13870
Change linalg.matmul_unsigned to linalg.matmul with unsigned type_fn (#3587)
Change linalg.matmul_unsigned to linalg.matmul with unsigned type_fn

Signed-off-by: Max Dawkins <max.dawkins@gmail.com>
Co-authored-by: Max Dawkins <max.dawkins@gmail.com>
2024-08-02 11:32:24 -07:00
Rob Suderman d273bdfabf
[onnx] Fix default `alpha` for `onnx.Elu` (#3583)
We were defaulting to `0.0` for `onnx.Elu` when it is supposed to be
`1.0`.
2024-08-02 09:29:17 -07:00
Rob Suderman 3d33c5a206
[onnx] Fix `onnx.ScatterElements` for negative indices (#3582)
We need to adjust for negative scatter indice values. Added
materializing out the inbounds adjustment.
2024-08-02 09:01:10 -07:00
Rob Suderman 306ed62edd
[onnx][torch] Fix `onnx.SoftmaxCrossEntropyLoss` for ignore index (#3585)
There were two issues related to `ignore_index` being set

(1) the onnx-to-linalg pass as not reading the value correctly (2) the
mean pass was not considering the `ignore_index` value

For (2) when taking the mean we need to know how many of the values were
considered in the sum and therefore we cannot divide by the total number
of elements. Adding a summation across the total number should correct
this issue.
2024-08-02 09:00:56 -07:00
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
Jiawei Wu edc87fc577
[stablehlo] support dynamic-shaped index in stablehlo conversion for aten.index-like ops (#3322)
For now, at most one dynamic dim of index tensors in
aten.index/aten.index_put-like op is supported.
2024-08-01 10:41:09 +08:00
Rob Suderman 7f475e174e
Add extf-trunc f32-f64-f32 ellision (#3579)
Torch has all scalars represented as i64 and f64 types which results in
extraneous trunc-extf commands. We can rework this by elliding
widen-narrow cases away.
2024-07-31 16:50:00 -07:00
Jiawei Wu 7b2902f6e2
[stablehlo]: fix aten.index_put_hacked_twin lowering to StableHlo (#3572)
Current StableHlo lowering strategy works well when `src` tensor's rank
is no bigger than `dst` tensor's. The new patch make it succeed in other
cases. The following is an example.
```
%190 = torch.prim.ListConstruct %arg4 : (!torch.vtensor<[1,1024],si64>) -> !torch.list<vtensor>
%191 = torch.aten.index_put.hacked_twin %189, %190, %186, %true : !torch.vtensor<[1024,768],f32>, !torch.list<vtensor>, !torch.vtensor<[1,1024,768],f32>, !torch.bool -> !torch.vtensor<[1024,768],f32>
```
2024-07-31 22:33:57 +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
zjgarvey 50d6ce225f
Align Quantization Rounding Scheme with ONNX/Pytorch (#3569)
Pytorch and ONNX apparently round to nearest, ties go to nearest even,
but we were using `math::round` for the torch-to-linalg conversion of
`quantize_per_tensor`, which rounds away from zero on ties.
2024-07-29 12:24:46 -07:00
Vinayak Dev 30c4d2f2b8
[torch] Add OnnxToTorch lowering for Onnx.Unique op (#3523)
Adds OnnxToTorch Lowering for the `Onnx.Unique` op.
2024-07-29 17:32:44 +05:30
pdhirajkumarprasad a211ccbcff
Implementation of SplitToSequence ops lowering (#3509)
Added support for splitToSequence ops lowering
Added test case with filecheck
2024-07-29 15:44:22 +05:30
Vivek Khandelwal b6e4725259
[ONNX] Add OnnxToTorch lowering for NonMaxSuppression op (#3501)
Signed-Off By: Vivek Khandelwal <vivekkhandelwal1424@gmail.com>
2024-07-26 21:01:27 +05:30
yyp0 ea60d72489
[Torch] Add AtenMaskedFillTensorOp support (#3561) 2024-07-26 15:32:13 +08:00
Vivek Khandelwal 15cf7106c4
[ONNX] Reduce Onnx.Flatten op version (#3560)
Signed-Off By: Vivek Khandelwal <vivekkhandelwal1424@gmail.com>
2024-07-24 21:27:20 +05:30
Yuanqiang Liu 003b06dfa1
[Torch] enhance naryFolderHelper to support mixed dtypes (#3559)
* so that it could support like `i64 + f64 => f64`.
* also unify `aten.log`'s folder code to use `naryFolderHelper`.
2024-07-24 17:54:59 +08:00
Yuanqiang Liu aad1604046
[Torch] enhance fold of aten.squeeze.dim (#3558) 2024-07-24 14:13:48 +08:00
Ze Zhang d1e172f418
Register fake_quantize_cachemask ops and add their decompose patterns (#3556)
Test:

`cmake --build build --target check-torch-mlir-all`
2024-07-23 11:33:12 -07:00
Yuanqiang Liu 21ad890009
[Torch] enhance fold of aten.slice.Tensor (#3557)
so that it could support folding slice with any static shape.
2024-07-23 22:53:03 +08:00
Yuanqiang Liu 78846425e2
[Torch] add constriants when decompose aten.split_with_sizes (#3555) 2024-07-23 10:34:29 +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
jinchen f0ce1e94ce
[ONNX] Add OnnxToTorch support for SequenceMap (#3535) 2024-07-17 14:25:09 -07:00
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
Yuanqiang Liu 714270a922
[Stablehlo] legalize deprecated ops to stablehlo ops (#3543) 2024-07-17 00:05:11 +08:00
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
zjgarvey 0fb8b017d8
Adds misc fixes for some padding related issues (#3528)
This patch adds a few misc pad op related changes:

1. Addresses issue <https://github.com/llvm/torch-mlir/issues/3457>
2. Addresses issue <https://github.com/llvm/torch-mlir/issues/3442>
3. Fixes the padding order for asymmetrically padded onnx.Conv ops
4. Enables passing quantization through those onnx.Conv op pre-paddings
5. Modifies the torch-to-linalg lowering of AtenReplicationPad2d op to
enable support for input rank != 4

Unfortunately, even with all of these changes, the e2e tests for the
ReplicationPad2d still fail the onnx config, since the torch export
procedure for rearranging the pad order is complicated enough that the
padding ints end up not being able to fold back to constants.
2024-07-11 20:01:45 -05:00
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
Xida Ren (Cedar) 5342aa70cf
Support onnx.GRU and onnx.RNN (#3447) 2024-07-10 14:04:17 -04:00
Yuanqiang Liu 5bee9aac63
[Stablehlo] simplify promoteType (#3525)
only provide `outElementType` when promoteType
2024-07-10 10:52:19 +08:00
zjgarvey dcb48dd46c
[ONNX] Fix LpNormalization Lowering (#3521)
The LpNormalization lowering was previously just computing the norm,
which is incorrect. This computes the norm then divides the input tensor
by it's norm.

I've tested this against some simple onnx models locally. I'll look into
adding a test case for this in an external test suite.
2024-07-09 15:42:26 -05:00
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
Matthias Gehre 6ea6a6c2fe
TorchOnnxToTorch: Fix stack-use-after-free (#3480)
We used to move the SmallVector into an ArrayRef and then the
SmallVector left the scope.

Found by asan.
2024-07-08 09:20:09 +02:00
Yuanqiang Liu 3225f20ab1
[Stablehlo] use index type as dim size, avoid to generate index_cast (#3526)
For example, the original IR is:
```
module attributes {torch.debug_module_name = "Matmul3D"} {
  func.func @forward(%arg0: tensor<?x?x?xf32>, %arg1: tensor<?x?x?xf32>) -> tensor<?x?x?xf32> {
    %c0 = arith.constant 0 : index
    %c1 = arith.constant 1 : index
    %c2 = arith.constant 2 : index
    %dim = tensor.dim %arg1, %c0 : tensor<?x?x?xf32>
    %0 = arith.index_cast %dim : index to i64
    %dim_0 = tensor.dim %arg1, %c1 : tensor<?x?x?xf32>
    %1 = arith.index_cast %dim_0 : index to i64
    %dim_1 = tensor.dim %arg1, %c2 : tensor<?x?x?xf32>
    %2 = arith.index_cast %dim_1 : index to i64
    %from_elements = tensor.from_elements %0, %1, %2 : tensor<3xi64>
    %3 = stablehlo.dynamic_broadcast_in_dim %arg1, %from_elements, dims = [0, 1, 2] : (tensor<?x?x?xf32>, tensor<3xi64>) -> tensor<?x?x?xf32>
    %4 = stablehlo.dot_general %arg0, %3, batching_dims = [0] x [0], contracting_dims = [2] x [1] : (tensor<?x?x?xf32>, tensor<?x?x?xf32>) -> tensor<?x?x?xf32>
    return %4 : tensor<?x?x?xf32>
  }
}
```
After using IndexType, the IR is:
```
module attributes {torch.debug_module_name = "Matmul3D"} {
  func.func @forward(%arg0: tensor<?x?x?xf32>, %arg1: tensor<?x?x?xf32>) -> tensor<?x?x?xf32> {
    %c0 = arith.constant 0 : index
    %c1 = arith.constant 1 : index
    %c2 = arith.constant 2 : index
    %dim = tensor.dim %arg1, %c0 : tensor<?x?x?xf32>
    %dim_0 = tensor.dim %arg1, %c1 : tensor<?x?x?xf32>
    %dim_1 = tensor.dim %arg1, %c2 : tensor<?x?x?xf32>
    %from_elements = tensor.from_elements %dim, %dim_0, %dim_1 : tensor<3xindex>
    %0 = stablehlo.dynamic_broadcast_in_dim %arg1, %from_elements, dims = [0, 1, 2] : (tensor<?x?x?xf32>, tensor<3xindex>) -> tensor<?x?x?xf32>
    %1 = stablehlo.dot_general %arg0, %0, batching_dims = [0] x [0], contracting_dims = [2] x [1] : (tensor<?x?x?xf32>, tensor<?x?x?xf32>) -> tensor<?x?x?xf32>
    return %1 : tensor<?x?x?xf32>
  }
}
```

The benefits of using IndexType on shape tensor:
* simplify the IR, avoid to generate `arith.index_cast`
* let backend compiler have a chance to decide the index width of shape
tensor
* let stablehlo backend have a chance to serialize dynamic shape IR by
[shape_legalize_to_stablehlo](https://github.com/openxla/stablehlo/blob/main/stablehlo/tests/shape_legalize_to_stablehlo.mlir)
2024-07-07 18:03:03 +08:00
Ze Zhang d466d5b809
Register fake_quantize related ops (#3522)
Register `aten.fake_quantize_per_channel_affine` and
`aten.fake_quantize_per_tensor_affine.tensor_qparams` ops

---------

Co-authored-by: Ze Zhang <ze.zhang@getcruise.com>
2024-07-05 11:02:03 -07:00
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
Scott Todd ca0e906675
Fix `uint64_t` type. (#3519)
`u_int64_t` is nonstandard and does not exist in MSVC.
2024-07-02 16:06:20 +00:00
Yuanqiang Liu f1e3701caf
[Stablehlo] fix compareOp with scalar's lowering (#3518)
* use lhs tensor's element type as compute type when rhs is scalar.
* previously `a != 1.0`(a is a fp32 tensor) will lowering to `%6 =
stablehlo.compare EQ, %4, %5, FLOAT : (tensor<2x5xf64>, tensor<2x5xf64>)
-> tensor<2x5xi1>`
* now it will lowering to `%6 = stablehlo.compare EQ, %4, %5, FLOAT :
(tensor<2x5xf32>, tensor<2x5xf32>) -> tensor<2x5xi1>`
2024-07-02 15:31:06 +08:00
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
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
jinchen 3915db0a86
[ONNX] Add OnnxToTorch support for CenterCropPad (#3496) 2024-06-28 12:47:29 -07:00
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
Max191 a1c4089e71
Fix unused variable warning from assertion variable (#3512)
Inlines a variable into an assertion that is not used elsewhere to fix
build warnings.
2024-06-28 12:20:29 -04:00
Jiawei Wu f75cbb4df9
[torch dialect] emit aten.fmax/fmin and add decomposition patterns (#3510) 2024-06-29 00:07:55 +08:00
Phaneesh Barwaria 5a627c46b7
onnx.DFT basic support (#3463)
- adds support for DFT v20 on the FFT and IFFT path
- adds required skeleton code for IFFT ops to be recognised in TMlir
2024-06-28 20:08:43 +05:30
Christopher McGirr 7e6d76e997
[Torch] Fix torch.constant.int operation parsing (#3476)
Due to the custom operation parser, the print and parser were expecting
two different forms.

One having the dictionary before the value and the other after.
Following the format of the other constants ops, the constant.int will
follow the `value attr-dict` format. Updated the parser accordingly.
2024-06-28 16:06:52 +02:00
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
jinchen 6d0ca499e6
[ONNX] Add OnnxToTorch support for ReverseSequence (#3495) 2024-06-27 14:33:41 -07:00
Phaneesh Barwaria 39d1332008
add onnx loop support (#3408)
- Adds limited support for lowering onnx.Loop to primLoopOp
- lower in the pipeline`torch-to-scf` there is a check to see if loop is
for like. A primLoopOp is for like when the input condition is a
`trueBoolConstant`. To adapt the onnx to torch lowering to take
advantage of it, the implementation checks for specific op patterns in
the loodBody region and decides if loop is for like and uses the right
input condition op.
- to adapt the onnxLoopBody to torchLoopBody, we need to adapt the input
block arguments and set the correct output condition variable in the
loop body.
- scanOutput variables are currently not supported.
2024-06-27 17:08:44 +05:30
Matthias Gehre 6678e1a256
TorchToLinalg: Try folding shape computations to keep static shapes when possible (#3475)
Before this PR, a statically shaped aten.convolution would generate
dynamically shaped linalg IR, and even `-canonicalize` would not be able
to fold it back into static shapes. This PR ensure that shape
calculations are folded on construction to directly generate statically
shaped linalg IR.

We achieve that by ensuring that `arith` ops involved in computing
shapes are created via `createOrFold`, so that later uses of
`getAsOpFoldResult` see constants instead of those ops.

For example
```
module {
  func.func @forward(%arg0: !torch.vtensor<[32,336,112,112],f32>,
                        %arg1: !torch.vtensor<[336,168,3,3],f32>, 
                        %arg2: !torch.vtensor<[336],f32>) 
                        -> !torch.vtensor<[32,336,56,56],f32> {
    %false = torch.constant.bool false
    %int2 = torch.constant.int 2
    %int1 = torch.constant.int 1
    %0 = torch.prim.ListConstruct %int1, %int1 : (!torch.int, !torch.int) -> !torch.list<int>
    %1 = torch.prim.ListConstruct %int2, %int2 : (!torch.int, !torch.int) -> !torch.list<int>
    %2 = torch.prim.ListConstruct  : () -> !torch.list<int>
    %3 = torch.aten.convolution %arg0, %arg1, %arg2, %1, %0, %0, %false, %2, %int2 
    : !torch.vtensor<[32,336,112,112],f32>, !torch.vtensor<[336,168,3,3],f32>, !torch.vtensor<[336],f32>, !torch.list<int>,
      !torch.list<int>, !torch.list<int>, !torch.bool, !torch.list<int>, !torch.int
   -> !torch.vtensor<[32,336,56,56],f32>
    return %3 : !torch.vtensor<[32,336,56,56],f32>
  }
}
```
would result in
```
[...]
  %padded = tensor.pad %2 low[%14, %15, %16, %17] high[%14, %15, %16, %17] {
    ^bb0(%arg3: index, %arg4: index, %arg5: index, %arg6: index):
      tensor.yield %cst : f32
    } : tensor<32x336x112x112xf32> to tensor<?x?x?x?xf32>
[...]
  %45 = linalg.conv_2d_ngchw_gfchw {dilations = dense<1> : vector<2xi64>, strides = dense<2> : vector<2xi64>}
    ins(%expanded, %expanded_37 : tensor<?x2x?x?x?xf32>, tensor<2x168x168x3x3xf32>)
    outs(%expanded_44 : tensor<32x2x168x?x?xf32>) -> tensor<32x2x168x?x?xf32>
[...]
```
and with this PR all shapes are static.
2024-06-27 08:43:10 +02:00
Suraj Sudhir 6eebe61bfe
[Tosa] Conversion from torch.__interpolate to tosa.resize() (#3488)
Signed-off-by: Suraj Sudhir <suraj.sudhir@arm.com>
2024-06-26 09:10:14 -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
zjgarvey d2bc70f188
[TorchToLinalg][ONNX] Add Basic Determinant Support (#3481)
This adds support for a few ops:

- torch.linalg_det
- torch._linalg_det (if the LU and pivot returns are unused)
- onnx.Det

An scf loop is used, since the row reduction algorithm applied here has
some loop-carried dependencies.
The current support being added here is very basic, and only works if no
permutations are required during row reduction, and assumes the matrices
are non-singular.
2024-06-25 13:34:19 -05:00
zjgarvey 368fabf0c1
[ONNX] Basic Support for DeformConv (#3469)
This adds a torchvision op to torch-mlir and a path from onnx.DeformConv
to torchvision.deform_conv2d.

I'm not implementing the torch->linalg lowering for the torchvision op
yet, but posting this PR to get feedback on some of the choices being
made here and to flesh out the onnx frontend a bit.
2024-06-25 12:16:51 -05:00
zjgarvey e346c911f7
[ONNX] Add basic support for RoiAlign (#3493)
This adds an onnx->torch conversion for onnx.RoiAlign into
torchvision.roi_align or torchvision.roi_pool, and adds those two
torchvision ops to torch-mlir.
2024-06-25 11:02:45 -05:00
Vinayak Dev 02340408b7
[torch] Add OnnxToTorch lowering for Onnx.STFT op (#3492)
Adds OnnxToTorch lowering for `Onnx.STFT` op.
2024-06-25 19:00:45 +05:30
Vivek Khandelwal 3c3fbe4680
[ONNX] Add OnnxToTorch lowering for Onnx.Upsample Op (#3371)
Signed-Off By: Vivek Khandelwal <vivekkhandelwal1424@gmail.com>
2024-06-25 12:58:31 +05:30
Chi_Liu fc19709daa
[ONNX] Add averagepool dilations support (#3490)
- To fix dilations issue: https://github.com/llvm/torch-mlir/issues/3428
- Test by: https://github.com/nod-ai/SHARK-TestSuite/pull/268
2024-06-21 17:24:57 -07:00
Branko Trifkovic 98c6971a01
Implement lowering of torch.aten.triu_indices (#3451)
Closes
[nod-ai/SHARK-Turbine/issues/709](https://github.com/nod-ai/SHARK-Turbine/issues/709)

---------

Co-authored-by: Branko Trifkovic <branko.trifkovic@syrmia.com>
2024-06-21 16:16:38 -07:00
Matthias Gehre acd57a3520
Support fake_quantize_per_tensor_affine_cachemask (#3477)
Add a new op with shape/dtypes and decompose into
`fake_quantize_per_tensor_affine` when the second result is unused.

The xfail_set change is on ONNX because torch cannot export this op to
ONNX.
2024-06-21 07:15:31 +00:00