The Torch-MLIR project aims to provide first class support from the PyTorch ecosystem to the MLIR ecosystem.
 
 
 
 
 
 
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Sambhav Jain d0a818a03e
Representing Symbolic Shape Expressions in Torch Dialect (#3372)
Torch Dialect with symbolic shape expressions:
```ll
module {                                                                                                                                                                                                     
  func.func @main(%arg0: !torch.vtensor<[?,?,3],f32>, %arg1: !torch.vtensor<[?,?,3],f32>) -> !torch.vtensor<[?,?,3],f32> {                                                                                   
    %0 = torch.symbolic_int "s0" {min_val = 5, max_val = 10} : !torch.int                                                                                                                                    
    %1 = torch.symbolic_int "s1" {min_val = 0, max_val = 100} : !torch.int                                                                                                                                   
    %2 = torch.symbolic_int "s3" {min_val = 0, max_val = 50} : !torch.int                                                                                                                                    
    
    torch.bind_symbolic_shape %arg0, [%0, %1], #affine_map<()[s0, s1] -> (s0, s1, 3)> : !torch.vtensor<[?,?,3],f32>                                                                                          
    torch.bind_symbolic_shape %arg1, [%0, %2], #affine_map<()[s0, s1] -> (s0, s1, 3)> : !torch.vtensor<[?,?,3],f32>                                                                                          
    
    %3 = torch.aten.tanh %arg0 : !torch.vtensor<[?,?,3],f32> -> !torch.vtensor<[?,?,3],f32>                                                                                                                  
    torch.bind_symbolic_shape %3, [%0, %1], #affine_map<()[s0, s1] -> (s0, s1, 3)> : !torch.vtensor<[?,?,3],f32>                                                                                             
    
    %4 = torch.aten.sigmoid %arg1 : !torch.vtensor<[?,?,3],f32> -> !torch.vtensor<[?,?,3],f32>                                                                                                               
    torch.bind_symbolic_shape %4, [%0, %2], #affine_map<()[s0, s1] -> (s0, s1, 3)> : !torch.vtensor<[?,?,3],f32>                                                                                             
    
    %5 = torch.prim.ListConstruct %3, %3, %4 : (!torch.vtensor<[?,?,3],f32>, !torch.vtensor<[?,?,3],f32>, !torch.vtensor<[?,?,3],f32>) -> !torch.list<vtensor>                                               
    %int1 = torch.constant.int 1                                                                                                                                                                             
    %6 = torch.aten.cat %5, %int1 : !torch.list<vtensor>, !torch.int -> !torch.vtensor<[?,?,3],f32>                                                                                                          
    torch.bind_symbolic_shape %6, [%0, %1, %2], #affine_map<()[s0, s1, s2] -> (s0, s1 * 2 + s2, 3)> : !torch.vtensor<[?,?,3],f32>                                                                            
    
    return %6 : !torch.vtensor<[?,?,3],f32>                                                                                                                                                                  
  }                                                                                                                                                                                                          
}              
```

For reference, this is the TorchDynamo exported program with symbolic
shape expressions that the above Torch dialect program is imported from:
```py
ExportedProgram:                                                                                                                                                                                             
    class GraphModule(torch.nn.Module):                                                                                                                                                                      
        def forward(self, x: "f32[s0, s1, 3]", y: "f32[s0, s3, 3]"):                                                                                                                                         
            # File: /home/sambhav.jain/workspaces/cruise/src/3p/torch-mlir/test/python/fx_importer/symbolic_shape_expr_test.py:31 in forward, code: a = torch.tanh(x)                                        
            tanh: "f32[s0, s1, 3]" = torch.ops.aten.tanh.default(x);  x = None                                                                                                                               
                                                                                                                                                                                                             
            # File: /home/sambhav.jain/workspaces/cruise/src/3p/torch-mlir/test/python/fx_importer/symbolic_shape_expr_test.py:32 in forward, code: b = torch.sigmoid(y)                                     
            sigmoid: "f32[s0, s3, 3]" = torch.ops.aten.sigmoid.default(y);  y = None                                                                                                                         
                                                                                                                                                                                                             
            # File: /home/sambhav.jain/workspaces/cruise/src/3p/torch-mlir/test/python/fx_importer/symbolic_shape_expr_test.py:33 in forward, code: return torch.cat((a, a, b), dim=1)                       
            cat: "f32[s0, 2*s1 + s3, 3]" = torch.ops.aten.cat.default([tanh, tanh, sigmoid], 1);  tanh = sigmoid = None                                                                                      
            return (cat,)                                                                                                                                                                                    
                                                                                                                                                                                                             
Graph signature: ExportGraphSignature(input_specs=[InputSpec(kind=<InputKind.USER_INPUT: 1>, arg=TensorArgument(name='x'), target=None, persistent=None), InputSpec(kind=<InputKind.USER_INPUT: 1>, arg=TensorArgument(name='y'), target=None, persistent=None)], output_specs=[OutputSpec(kind=<OutputKind.USER_OUTPUT: 1>, arg=TensorArgument(name='cat'), target=None)])                                               
Range constraints: {s0: ValueRanges(lower=5, upper=10, is_bool=False), s1: ValueRanges(lower=0, upper=100, is_bool=False), s3: ValueRanges(lower=0, upper=50, is_bool=False)} 
```

Huge credit to @stellaraccident for the inputs that helped evaluate the
various design options and arrive at the representation of choice.


- [x] Op definitions for symbolic_int and bind_symbolic_shape ops
- [x] fx_importer updates to import range constraints + create
symbolic_int ops
- [x] fx_importer changes for AffineMapAttr building + adding
bind_symbolic_shape ops
- [x] custom printer/parser for inlined AffineMap expressions in mlir
assembly
- [x] Dialect lit test
- [x] fx_importer python lit tests
- [ ] Cleanup pass to remove these ops (can add in a follow-on)
2024-06-07 04:04:03 -07:00
.github Enable post commit run of pre-commit hooks over all files. (#3245) 2024-04-27 14:24:52 -07:00
build_tools [Release Builds] Use `-no-build-isolation` to decouple from `pyproject.toml` (#3266) 2024-04-30 00:55:25 -07:00
docs Update development.md to use ld.lld (#3412) 2024-06-03 14:10:48 -04:00
externals [Stablehlo] support uint8 (#3367) 2024-06-04 09:04:59 +08:00
include Representing Symbolic Shape Expressions in Torch Dialect (#3372) 2024-06-07 04:04:03 -07:00
lib Representing Symbolic Shape Expressions in Torch Dialect (#3372) 2024-06-07 04:04:03 -07:00
projects Representing Symbolic Shape Expressions in Torch Dialect (#3372) 2024-06-07 04:04:03 -07:00
python Representing Symbolic Shape Expressions in Torch Dialect (#3372) 2024-06-07 04:04:03 -07:00
test Representing Symbolic Shape Expressions in Torch Dialect (#3372) 2024-06-07 04:04:03 -07:00
tools Link necessary op interface implementations (#3364) 2024-06-03 19:43:28 -05:00
utils/bazel [Bazel] Fix bazel deps (#3414) 2024-06-04 15:50:29 +08:00
.clang-format Add stub numpy dialect. 2020-04-26 17:20:58 -07:00
.git-blame-ignore-revs Add .git-blame-ignore-revs to allow ignoring sweeping formatting changes (#2823) 2024-01-29 10:29:51 -08:00
.gitignore [Pipeline] Use dedicated simplification pipeline for TorchDynamo frontend (#3376) 2024-05-22 05:23:18 -07:00
.gitmodules Revert accidental change to submodule origin. (#2477) 2023-09-20 14:05:52 +08:00
.pre-commit-config.yaml [NFC] Update black version (#3256) 2024-04-29 11:06:01 +08:00
.yamllint.yml Add `.yamllint` and disable some annoying recurring warnings on every pr (#3224) 2024-04-30 21:48:01 +00:00
CITATION.cff Add CITATION file (#2371) 2023-08-02 14:36:15 -07:00
CMakeLists.txt [NFC] Change to *cast instead of .*cast variants (#3405) 2024-05-30 23:45:13 -07:00
LICENSE Dual license the torch-mlir project. 2021-10-01 10:46:08 -07:00
README.md [FxImporter] Add an e2e test example for FxImporter (#3331) 2024-05-14 00:45:19 +08:00
build-requirements.txt [arm64] Fix release builds for ARM64 (#2157) 2023-05-24 13:52:13 -07:00
pyproject.toml Switch to pre-commit for lint checks. (#3200) 2024-04-27 13:29:51 -07:00
pytorch-hash.txt build: manually update PyTorch version (#3340) 2024-06-06 22:23:40 +05:30
pytorch-requirements.txt build: manually update PyTorch version (#3340) 2024-06-06 22:23:40 +05:30
requirements.txt python: separate build- and test-related pip dependencies (#1874) 2023-02-13 21:22:09 -06:00
setup.py [NFC reformat] Applies pre-commit formatting to Python files. (#3244) 2024-04-27 14:16:31 -07:00
test-requirements.txt [ci] Fix mpmath 1.4.0 error by forcing 1.3.0 (#2946) 2024-02-23 13:13:54 -08:00
torchvision-requirements.txt build: manually update PyTorch version (#3340) 2024-06-06 22:23:40 +05:30
whl-requirements.txt Add ARM64 release builds (#2159) 2023-05-25 20:39:19 -07:00

README.md

The Torch-MLIR Project

The Torch-MLIR project aims to provide first class compiler support from the PyTorch ecosystem to the MLIR ecosystem.

This project is participating in the LLVM Incubator process: as such, it is not part of any official LLVM release. While incubation status is not necessarily a reflection of the completeness or stability of the code, it does indicate that the project is not yet endorsed as a component of LLVM.

PyTorch PyTorch is an open source machine learning framework that facilitates the seamless transition from research and prototyping to production-level deployment.

MLIR The MLIR project offers a novel approach for building extensible and reusable compiler architectures, which address the issue of software fragmentation, reduce the cost of developing domain-specific compilers, improve compilation for heterogeneous hardware, and promote compatibility between existing compilers.

Torch-MLIR Several vendors have adopted MLIR as the middle layer in their systems, enabling them to map frameworks such as PyTorch, JAX, and TensorFlow into MLIR and subsequently lower them to their target hardware. We have observed half a dozen custom lowerings from PyTorch to MLIR, making it easier for hardware vendors to focus on their unique value, rather than needing to implement yet another PyTorch frontend for MLIR. The ultimate aim is to be similar to the current hardware vendors adding LLVM target support, rather than each one implementing Clang or a C++ frontend.

pre-commit

All the roads from PyTorch to Torch MLIR Dialect

We have few paths to lower down to the Torch MLIR Dialect.

Simplified Architecture Diagram for README

  • TorchScript This is the most tested path down to Torch MLIR Dialect.
  • LazyTensorCore Read more details here.
  • We also have basic TorchDynamo/PyTorch 2.0 support, see our long-term roadmap and Thoughts on PyTorch 2.0 for more details.

Project Communication

  • #torch-mlir channel on the LLVM Discord - this is the most active communication channel
  • Github issues here
  • torch-mlir section of LLVM Discourse

Meetings

Community Meeting / Developer Hour:

  • 1st and 3rd Monday of the month at 9 am PST
  • 2nd and 4th Monday of the month at 5 pm PST

Office Hours:

  • Every Thursday at 8:30 am PST

Meeting links can be found here.

Install torch-mlir snapshot

At the time of writing, we release pre-built snapshots of torch-mlir for Python 3.11 and Python 3.10.

If you have supported Python version, the following commands initialize a virtual environment.

python3.11 -m venv mlir_venv
source mlir_venv/bin/activate

Or, if you want to switch over multiple versions of Python using conda, you can create a conda environment with Python 3.11.

conda create -n torch-mlir python=3.11
conda activate torch-mlir
python -m pip install --upgrade pip

Then, we can install torch-mlir with the corresponding torch and torchvision nightlies.

pip install --pre torch-mlir torchvision \
  --extra-index-url https://download.pytorch.org/whl/nightly/cpu
pip install torch-mlir -f https://github.com/llvm/torch-mlir-release/releases/expanded_assets/dev-wheels

Demos

FxImporter ResNet18

# Get the latest example if you haven't checked out the code
wget https://raw.githubusercontent.com/llvm/torch-mlir/main/projects/pt1/examples/fximporter_resnet18.py

# Run ResNet18 as a standalone script.
python projects/pt1/examples/fximporter_resnet18.py

# Output
load image from https://upload.wikimedia.org/wikipedia/commons/2/26/YellowLabradorLooking_new.jpg
...
PyTorch prediction
[('Labrador retriever', 70.65674591064453), ('golden retriever', 4.988346099853516), ('Saluki, gazelle hound', 4.477451324462891)]
torch-mlir prediction
[('Labrador retriever', 70.6567153930664), ('golden retriever', 4.988325119018555), ('Saluki, gazelle hound', 4.477458477020264)]

TorchScript ResNet18

Standalone script to Convert a PyTorch ResNet18 model to MLIR and run it on the CPU Backend:

# Get the latest example if you haven't checked out the code
wget https://raw.githubusercontent.com/llvm/torch-mlir/main/projects/pt1/examples/torchscript_resnet18.py

# Run ResNet18 as a standalone script.
python projects/pt1/examples/torchscript_resnet18.py

load image from https://upload.wikimedia.org/wikipedia/commons/2/26/YellowLabradorLooking_new.jpg
Downloading: "https://download.pytorch.org/models/resnet18-f37072fd.pth" to /home/mlir/.cache/torch/hub/checkpoints/resnet18-f37072fd.pth
100.0%
PyTorch prediction
[('Labrador retriever', 70.66319274902344), ('golden retriever', 4.956596374511719), ('Chesapeake Bay retriever', 4.195662975311279)]
torch-mlir prediction
[('Labrador retriever', 70.66320037841797), ('golden retriever', 4.956601619720459), ('Chesapeake Bay retriever', 4.195651531219482)]

Lazy Tensor Core

View examples here.

Repository Layout

The project follows the conventions of typical MLIR-based projects:

  • include/torch-mlir, lib structure for C++ MLIR compiler dialects/passes.
  • test for holding test code.
  • tools for torch-mlir-opt and such.
  • python top level directory for Python code

Developers

If you would like to develop and build torch-mlir from source please look at Development Notes