6dddb4d4fe
1. Added a simplified version of torch.aten.batch_norm which only handles inference and assumes the weight, bias, running_mean, running_var are not None. 2. Removed the primitive types check in verifyLinalgCompatibleTypes check since now we have proper type converter to handle torch types conversion. The checks for RankedTensorType is kept because the type converter doesn't guarantee the converted builtin tensor type is ranked. A separate verification pass to verify the invariant expected by later passes will need to be added before those can be removed as well. |
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csrc | ||
docs | ||
e2e_testing/torchscript | ||
examples | ||
python | ||
test | ||
utils | ||
CMakeLists.txt | ||
LICENSE | ||
README.md |
README.md
NPComp - PyTorch frontend integration
This directory contains optional components for interfacing PyTorch to NPComp. Integration is targeted at multiple levels:
- Via program capture with a ATen pseudo-device.
- Via IR-level integration with PyTorch (via tracing or scripting interfaces).
- Interfaces to facilitate checking against reference implementations and verification.
In all situations, the target dialects are maintained in the outer project, along with their lowerings to common intermediate dialects and backends. This directory should be purely about interfacing with the PyTorch/LibTorch components for extracting and executing programs.
The code in this directory is intended to integrate tightly with pytorch, and follows the code style for pytorch. See the overall documentation for frontends for further details about code layout and integration philosophy. In particular, this directory exists to provide a working frontend to an MLIR based pytorch compilation flow and is not intended to be contributed to the LLVM monorepo. If the project is successful, it makes more sense to either break it out as an independent project that depends on LLVM/MLIR/npcomp or contribute it upstream to PyTorch. However, as it will be quite some time before the components are in a state to support such a dependency, it is being carried in-tree in the interim.
Program capture with a ATen dispatch capture.
Integration with a pseudo-device is typified by code like the following:
import torch
import torch_mlir
lhs = torch.rand(2, 3)
rhs = torch.rand(3, 4)
mb = torch_mlir.ModuleBuilder()
with mb.capture_function("mm", [lhs, rhs]) as f:
result = torch.mm(lhs, rhs)
f.returns([result])
mb.module.operation.print()
All operations that happen under the mb.capture_function
context manager are
intercepted via PyTorch's
dispatcher,
and an IR graph is constructed into the module held by the ModuleBuilder.
This technique has several advantages and disadvantages. For training use
cases, this technique generates a backward path automatically using the same
method that pytorch natively uses. The resulting graph also tends to be
simpler, since it will not reflect conditionals in the original python
code. Lastly, it is natural if MLIR is being used as a frontend target for an
actual device of some sort. In this case, the MLIR could go through a
device-specific lowering path and the resulting code run on a device.
The implementation of this technique is largely modeled after pytorch/xla
.