Commit Graph

2952 Commits (09c988046cd5ff0c683874bfcc70aa9e90b74735)
 

Author SHA1 Message Date
zjgarvey a8ba865fca
[torch] Adds Quantization Support for `aten.relu` (#3177)
A choice was made to quantize the return type of Relu with a scale and
zero point copied from the input's quantization scheme. With this
choice, the torch-to-linalg conversion of quantized Relu essentially
computes max(input, zeroPoint) in the elementwise payload.
2024-04-23 11:01:36 -07:00
jinchen 09d42044b4
Support select_last_index attribute of onnx argmin op (#3212)
The tests listed in https://github.com/nod-ai/SHARK-Turbine/issues/648
all compiled, and the values of results match, but having runtime issue
of dtype mismatch of i/si.
2024-04-23 10:43:38 -07:00
jinchen 61e6312c87
Support select_last_index attribute of onnx argmax op (#3192)
The tests listed in https://github.com/nod-ai/SHARK-Turbine/issues/635
all compiled, but having run issue of dtype mismatch of i/si.
2024-04-23 10:16:08 -07:00
jinchen ddb29c2c02
[onnx] Add OnnxToTorch support for `onnx.ConvInteger` (#3179)
All e2e iree tests compiled, but they have the run issue of mismatch of
dtype like the following
```
expected:
1x1x2x2xsi32=[[[12 16][24 28]]]
actual:
1x1x2x2xi32=[[[12 16][24 28]]]
```
2024-04-23 09:42:02 -07:00
Yuanqiang Liu db3842f2e8
[Stablehlo] support lowering sinh & cosh to stablehlo (#3213) 2024-04-23 19:54:58 +08:00
Xinyu Yang c1967b607f
[Stablehlo] add AtenLog10Op, AtenLog2Op lowering to stablehlo (#3208) 2024-04-23 19:06:55 +08:00
Yuanqiang Liu 1f8123b5f0
[Stablehlo] support unary ops which promote to floating point (#3209)
* promote input to output element-type when lowering to stablehlo, so
that it could satisfy stablehlo's type constraints.
* split promote-to-fp unary ops from fp-only unary ops.
2024-04-23 17:57:12 +08:00
Yuanqiang Liu 797e4cd395
[Stablehlo] lowering asin, acos, atan (#3207)
* lowering asin, acos and atan to chlo ops.
2024-04-23 16:24:53 +08:00
Vinayak Dev cff2f084d4
[torch] Add OnnxToTorch lowering for `onnx.ReduceL2` (#3175)
Adds OnnxToTorch lowering for the ReduceL2 op.
2024-04-23 02:03:05 -04:00
Vivek Khandelwal 3c252cdd44
[onnx] Add `onnx-to-torch` lowering for random ops (#3193)
This commit adds the OnnxToTorch lowering for Onnx's RandomNormal, RandomNormalLike, RandomUniform, and RandomUniformLike op.
2024-04-22 22:28:07 +05:30
Vivek Khandelwal 6abc7371c8
[MLIR][TORCH] Fix OnnxToLinalg lowering issue for Squeeze and Unsqueeze op (#2991)
This commit also cleans up the OnnxToTorch lowering for the Squeeze and
Unsqueeze op and adds the support for handling edge cases.

Signed-Off By: Vivek Khandelwal <vivekkhandelwal1424@gmail.com>
2024-04-22 08:52:42 +00:00
penguin_wwy e5bdd71baf
[Torch] Emit and decompose prims.iota op (#3132) 2024-04-21 19:45:01 -07:00
penguin_wwy a60e84e5ee
[stablehlo] add aten.expm1 op conversion support (#3199) 2024-04-21 19:20:49 -07:00
Rob Suderman 8222637159
[onnx] Extend op version number of `onnx.ScatterElements` (#3195)
Version number was set too high. Lowered to support more cases allows
more tests to pass.

Co-authored-by: Robert Suderman <rsuderman@Roberts-MacBook-Pro.local>
2024-04-21 12:32:18 -04:00
Rob Suderman 733cace1df
[onnx] Fix `onnx.split` by directly handling slicing (#3194)
Previous implementation erroneously mixed up num_outputs with
slice_size. New version correctly computs the slice size and directly
performs slicing rather than leveraging `aten.split.tensor`. This is due
to `onnx` supporting a fixed number of splits making the size
computation more easily computeable when lowering to `aten` rather than
deferring to `aten.split.tensor`.

---------

Co-authored-by: Robert Suderman <rsuderman@Roberts-MacBook-Pro.local>
2024-04-21 12:31:56 -04:00
penguin_wwy b6b01602d3
[stablehlo] add aten.fmod.Tensor op conversion support (#3198) 2024-04-21 08:39:36 +08:00
penguin_wwy ea0ecb67be
[stablehlo] add aten.remainder.Tensor op conversion support (#3197) 2024-04-21 00:03:37 +08:00
Rob Suderman b01245c0e8
[onnx] Fix `onnx.Not` for non-bool inputs (#3187)
Need to perform a bool cast to support `onnx.Not` on non-bool inputs.
2024-04-19 11:32:24 -07:00
Xinyu Yang 790a697245
[Torch] Add folder for AtenIntOp, AtenFloatOp (#3189)
See unit test below:
```
// CHECK-LABEL:   func.func @torch.aten.tensor.float(
// CHECK-NEXT: torch.vtensor.literal(dense<1.000000e+01> : tensor<f32>) : !torch.vtensor<[],f32>
func.func @torch.aten.tensor.float() -> !torch.vtensor<[],f32> {
  %none = torch.constant.none
  %false = torch.constant.bool false
  %float1.000000e01 = torch.constant.float 1.000000e+01
  %67 = torch.aten.tensor.float %float1.000000e01, %none, %none, %false : !torch.float, !torch.none, !torch.none, !torch.bool -> !torch.vtensor<[],f32>
  return %67 : !torch.vtensor<[],f32>
}

// CHECK-LABEL:   func.func @torch.aten.tensor.int(
// CHECK-NEXT: torch.vtensor.literal(dense<45> : tensor<si32>) : !torch.vtensor<[],si32>
func.func @torch.aten.tensor.int() -> !torch.vtensor<[],si32> {
  %none = torch.constant.none
  %false = torch.constant.bool false 
  %int45 = torch.constant.int 45
  %67 = torch.aten.tensor.int %int45, %none, %none, %false : !torch.int, !torch.none, !torch.none, !torch.bool -> !torch.vtensor<[],si32>
  return %67 : !torch.vtensor<[],si32>
}

```
2024-04-19 22:17:06 +08:00
penguin_wwy 5a98c72c7f
[StableHLO] Fix aten.clamp.Tensor in FxImporter2StableHLO (#3190)
The FX importer will pass static shapes to the Torch dialect, so it
needs to generate a StableHLO that satisfies shape inference.
2024-04-19 17:08:29 +08:00
penguin_wwy 0a6073414d
[FxImporter] Add fx importer to stablehlo e2e test config (#3183) 2024-04-18 21:29:17 -07:00
penguin_wwy 6c4f7deebb
[stablehlo] add aten.clamp.Tensor op conversion support (#3185) 2024-04-19 10:55:27 +08:00
Rob Suderman be742a937d
[onnx] Update the failure triage for onnx (#3186)
Reclassifying what the source of failures are for various bugs so we can
reprioritize what failures are common.
2024-04-18 14:58:13 -07:00
Rob Suderman 0e77de996a
[torch] Add support for `torch.view` with dynamic shapes (#3164)
We can map to `tensor.reshape` for handling multiple output dynamic
shapes. Later we can perform a more complex analysis for indentifying
expand/collapse cases from the tensor.reshape.

Initially we planned to handle this identification at the `torch` level
however it will be easier to handle once converted to core
mlir-dialects.
2024-04-18 11:47:19 -07:00
Rob Suderman 4c21e20caa
[torch] Support rank-0 index for torch index select (#3182)
Need to perform an expand in the case where the indices is rank-0.
2024-04-18 11:32:31 -07:00
Vivek Khandelwal 6e5630d696
build: manually update PyTorch version (#3170)
Set PyTorch and TorchVision version to nightly release 2024-04-16.

Signed-Off By: Vivek Khandelwal <vivekkhandelwal1424@gmail.com>
2024-04-18 12:55:10 +05:30
Xinyu Yang d4313eed4a
[Torch] Add decomposition of RepeatInterleaveSelfInt Op (#3075)
Decomposition RepeatInterleaveSelfInt with following ops:
```python

def my_repeat_interleave(input, repeats, dim=None):
    if dim is None:
        # Flatten the input and then repeat
        return input.flatten().unsqueeze(-1).tile((1, repeats)).flatten()
    else:
        # Calculate the shape after repeat
        expanded_shape = list(input.shape)
        expanded_shape[dim] *= repeats
        # Repeat the tensor along the specified dimension
        repeat_shape = [1] * (input.dim() + 1)
        repeat_shape[dim + 1] = repeats
        input = input.unsqueeze(-1)

        # Tile and then reshape
        tiled = torch.tile(input, repeat_shape)
        # Rearrange and reshape
        repeated = tiled.reshape(*expanded_shape)
    return repeated

```

I passed the tests of stablehlo and linalg. When testing onnx, strange
things happened.
In torch-mlir's CI **torch_nightly** and my own
environment(torch==2.4.0.dev20240318+cpu), it can **pass the pass**.
In torch-mlir's CI  **torch_stable**, it **failed**.
The test case is `RepeatInterleaveSelfIntNoDimModule_basic`, the result
shape should be [120].
```python
class RepeatInterleaveSelfIntNoDimModule(torch.nn.Module):

    def __init__(self):
        super().__init__()

    @export
    @annotate_args([
        None,
        ([3, 4, 5], torch.float32, True),
    ])
    def forward(self, x):
        return x.repeat_interleave(2)


@register_test_case(module_factory=lambda: RepeatInterleaveSelfIntNoDimModule())
def RepeatInterleaveSelfIntNoDimModule_basic(module, tu: TestUtils):
    module.forward(tu.rand(3, 4, 5))
```
The error log is as follows:
```
  Unexpected outcome summary: (onnx)
  
  ****** Failed tests - 1 tests
      FAIL - "RepeatInterleaveSelfIntNoDimModule_basic"
          @ trace item #0 - call to "forward"
          @ output of call to "forward"
          ERROR: shape (torch.Size([6, 4, 5])) is not equal to golden shape (torch.Size([120]))
```

@rsuderman 
Would you please help me check what's wrong with my PR? Thanks a lot.
2024-04-18 06:27:51 +08:00
Aart Bik 491f4820f5
[torch-mlir][sparse] pre-pend named buffers to parameter list (#3178)
weights and biases and other model parameters appear as a separate data
structure to the traced graph, but are needed when running the MLIR
compiled code; this PR implements that extended functionality
2024-04-17 14:44:05 -07:00
Andreas Falkenberg b66eabd492
[onnx][torch][linalg] Implementing align-corner modes for gridsampler (#3171)
Align corner modes which select what the corners mean. 
Either the center of the corner points or the edges of the edge points.

---------

Co-authored-by: Rob Suderman <rob.suderman@gmail.com>
2024-04-17 13:38:19 -07:00
penguin_wwy 3aa81f78d8
[FxImporter] Replace local_scalar_dense in fx_importer (#3180) 2024-04-17 22:45:47 +08:00
Xinyu Yang d2ba956e69
[Torch] Support Aten_CastLongOp. (#3160)
By canonicalize Aten_CastLongOp into AtenToDtypeOp
2024-04-17 21:58:32 +08:00
penguin_wwy e4b11a0ab4
[FxImporter] Fix fx importer test config and clean xfail set (#3176) 2024-04-16 22:36:07 -07:00
penguin_wwy 398aeeec87
[FxImporter] Fix kwarg operands in fx importer (#3166)
Remove the `kwarg_only` limitation, for example
```
torch.add(x, 3.0, alpha=2)
```
compiled to
```
%0 = torch.aten.add.Scalar %arg0, %float3.000000e00, %int1
```
fix to
```
%0 = torch.aten.add.Scalar %arg0, %float3.000000e00, %int2
```
2024-04-16 13:17:05 -07:00
zjgarvey 7a1ad0d7c0
[TorchToLinalg] Adds Support for Remaining Quantized Matmul Cases (#3167)
The new cases added for quantized matmuls are:

1. vec-vec
2. vec-mat
3. mat-vec

each of which are now lowered to expand(s), quantized_matmul, and
collapse.
2024-04-16 09:28:28 -07:00
Vinayak Dev a0232e9ebd
[MLIR][TORCH] Add OnnxToTorch lowering for ReduceL1 Op (#3146)
Adds OnnxToTorch Lowering for the ReduceL1 op.
2024-04-16 12:24:46 +05:30
penguin_wwy af5509c5d9
[FxImporter] Type conversion to resolve the mismatch between Py type and schema type (#3163) 2024-04-15 23:14:19 -07:00
penguin_wwy 10b6062d41
[CI] Enable the tests for fx_importer in the CI (#3168)
Replace the torchdynamo e2e with the fx_importer e2e
2024-04-15 21:20:23 -07:00
Xinyu Yang ae4724763a
[Stablehlo] Enhance broadcast pattern in matmul Ops (#3161)
To pass test "MatmulStaticBroadcast_basic" in stablehlo:
```python
class MatmulStaticBroadcast(torch.nn.Module):
    def __init__(self):
        super().__init__()

    @export
    @annotate_args([
        None,
        ([4, 1, 6, 7], torch.float32, True),
        ([8, 1, 5, 7, 6], torch.float32, True),
    ])
    def forward(self, lhs, rhs):
        return torch.matmul(lhs, rhs)


@register_test_case(module_factory=lambda: MatmulStaticBroadcast())
def MatmulStaticBroadcast_basic(module, tu: TestUtils):
    module.forward(tu.rand(4, 1, 6, 7), tu.rand(8, 1, 5, 7, 6))
```
2024-04-16 10:10:36 +08:00
zjgarvey 5e564b5864
Adds Some Quantization Support for AtenMatmulOp (#3147)
1. onnx.MatMulInteger now converts to aten.matmul instead of aten.mm
2. aten.matmul, for ranks >=2, now allows quantized inputs and will
lower to linalg::quantized_matmul or linalg::quantized_batch_matmul.
3. added AtenMatmulOp to the FuseQuantizeOps rewrite patters
QuantizeOperands, QuantizeTransposedOperands, and QuantizeAccumulator
4. added several tests, including some to test AtenMmOp with varying
quantization signed-ness.
5. a quantized matmul mat-vec test is added to verify the failure to
lower to linalg; cleaned of out-of-date code related to common
torch-mlir lowering xfails.
6. in debugging a real model with quantized matmuls, I found a bug on
the scalarize-shapes pass which resulted from the aten.full op folder
returning an incompatible result type. This is fixed by the small change
here to
[lib/Dialect/Torch/IR/TorchOps.cpp](https://github.com/llvm/torch-mlir/compare/main...zjgarvey:torch-mlir:MatMulIntegerFix?expand=1#diff-dc8ed165c207918e606490eee3984b1ad51d7034e6aac36fc046bf47f6f03f4f).
2024-04-15 16:06:47 -07:00
IanWood1 5708ee7ec9
Added 2 Ops: Floor divide scalar and Floor divide scalar mode (#3156)
- Added linalg lowering for `AtenFloorDivideScalarOp`
  - Needed `AtenDivScalarModeOp` for the decomp.
- Added linalg lowering for `AtenDivScalarModeOp`
- Moved linalg payload logic to `createDivModePayload()` since the logic
was nearly identical for both `AtenDivScalarModeOp` and
`AtenDivTensorModeOp`. Just a template function
 -  Added `AtenDivScalarModeOp` lowering for stablehlo
 

Pytorch's
[`torch.floor_divide()`](https://pytorch.org/docs/stable/generated/torch.floor_divide.html)
in a previous version (for a reason unknown to me) preformed a
truncation instead of "floor". The already implemented op
`AtenFloorDivideTensorOp` was done before this change. However, this
wasn't caught because our testcases only tested positive floor division.
I changed this to floor as well as adding a few test cases.
2024-04-15 13:45:10 -07:00
jinchen 83cba8c696
[onnx] Support for `onnx.EyeLike` via torch lowering (#2994) 2024-04-15 09:23:26 -07:00
penguin_wwy 9ac90ec7b2
Refactor the parameters and usage instructions of the setup script. (#3162)
As this
issuecomment(https://github.com/llvm/torch-mlir/pull/3021#issuecomment-2031248199)
suggests, `setup.py` should only be used for building Python packages,
so:
* disabled the develop command
* refactor the environment variable parameters
* add more doc for the usage and env var of setup.py
2024-04-14 10:40:25 -07:00
penguin_wwy 45eaeaaf36
[FxImporter] Add FxImporter config in e2e-test (#3151) 2024-04-12 16:07:56 -07:00
jinchen 859f5d280f
Generalize getting index for onnx compress op (#3150) 2024-04-12 15:18:22 -07:00
Xida Ren (Cedar) ed163f49e8
Delete .github/workflows/buildAndTest.yml to solve CI error messages … (#3155)
…on every push

fixes #3144
2024-04-12 12:11:48 -07:00
zjgarvey 197ef4224b
Avoid Type Mismatch in Slice Folder (#3154)
Fixes issue #3153
2024-04-12 11:43:45 -07:00
Aart Bik 307f49f566
[torch-mlir][sparse] support sparse tensor output (#3152)
Sparse inputs and outputs are now fully supported! They always consist
of their constituents buffers, passed as numpy arrays. Sparse on!
2024-04-12 09:56:32 -07:00
Aart Bik a7302a68a7
[torch-mlir] Bump LLVM to llvm/llvm-project@a952c12 (#3149) 2024-04-11 23:15:08 -07:00
Xinan Jiang(姜曦楠) 71d90788d3
[MLIR][TORCH] Support parallel dimemsions expand/collapse (#3051)
This PR support `aten.view` with unique unknown dimension both in input
shape and output shape while the pass convert-torch-to-linalg that
lowing `aten.view` to `tensor.collapse_shape` or `tensor.expand_shape`.

Below is an example
```
func.func @test_reshape(%arg0: !torch.vtensor<[1,?,50,16],f32>) -> !torch.vtensor<[1,?,16],f32> attributes {torch.assume_strict_symbolic_shapes, torch.onnx_meta.ir_version = 9 : si64, torch.onnx_meta.opset_version = 19 : si64, torch.onnx_meta.producer_name = "backend-test", torch.onnx_meta.producer_version = ""} {
  %int1 = torch.constant.int 1
  %int-1 = torch.constant.int -1
  %int16 = torch.constant.int 16
  %0 = torch.prim.ListConstruct %int1, %int-1, %int16 : (!torch.int, !torch.int, !torch.int) -> !torch.list<int>
  %1 = torch.aten.view %arg0, %0 : !torch.vtensor<[1,?,50,16],f32>, !torch.list<int> -> !torch.vtensor<[1,?,16],f32>
  return %1 : !torch.vtensor<[1,?,16],f32>
}
```
2024-04-11 10:43:03 -07:00
Rob Suderman a1fe307a76
[torch] Support implicit batch for index_put (#3128)
If there is only a single value scattered there can be an implicit batch
dimension. This includes a check for the implicit batch dimension when
reshaping the update tensor. It includes an e2e test to verify
correctness.
2024-04-11 10:18:03 -07:00