mirror of https://github.com/llvm/torch-mlir
95 lines
3.7 KiB
Python
95 lines
3.7 KiB
Python
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# Part of the LLVM Project, under the Apache License v2.0 with LLVM Exceptions.
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# See https://llvm.org/LICENSE.txt for license information.
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# SPDX-License-Identifier: Apache-2.0 WITH LLVM-exception
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# Also available under a BSD-style license. See LICENSE.
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from typing import List
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from enum import Enum
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import torch
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from torch_mlir.passmanager import PassManager
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from .compiler_utils import run_pipeline_with_repro_report
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from torch_mlir.dialects.torch.importer.jit_ir import ClassAnnotator, ModuleBuilder
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class OutputType(Enum):
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"""The kind of output that `torch_mlir.compile` can produce.
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In MLIR terminology, this describes the mix of dialects that will be
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produced by the conversion process.
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"""
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# This output type consists of `torch` dialect ops that have been converted
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# maximally to value semantics, decomposed, and shapes have been inferred.
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TORCH = 0
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# This output type consists of `tosa` dialect ops. It can be thought of
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# as taking the `TORCH` output type and lowering it to TOSA.
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TOSA = 1
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# The output type contains a mix of `linalg`-on-tensors ops, `scf`, and
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# `arith` ops (and also `math` and `tm_tensor`). It can be thought of
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# as taking the `TORCH` output type and lowering it so that tensor
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# computations are done with `linalg`-on-tensors ops.
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LINALG_ON_TENSORS = 2
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def compile(model: torch.nn.Module,
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example_args: List[torch.Tensor],
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output_type: OutputType = OutputType.TORCH):
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"""Convert a PyTorch model to MLIR.
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Args:
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model: The PyTorch model to convert.
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example_args: A list of example arguments to use when inferring the
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shapes of the arguments to `forward` method of the model.
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A single tensor is treated as a list of a single tensor.
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output_type: The kind of output to produce. See `OutputType` for more
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details.
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Returns:
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An MLIR module that contains the converted model in the specified
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output type.
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"""
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# TODO: Don't hardcode "forward". See `torch.onnx.export` and
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# `torch.jit.trace_module` for API inspiration.
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# TODO: Support dynamic dimension sizes. See `torch.onnx.export`'s
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# `dynamic_axes` for API inspiration, or do something more ergonomic
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# like a tensor wrapper possibly.
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# TODO: Support tracing the model instead of scripting it.
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scripted = torch.jit.script(model)
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if isinstance(example_args, torch.Tensor):
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example_args = [example_args]
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class_annotator = ClassAnnotator()
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forward_annotation = [None]
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for arg in example_args:
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# Assume that all tensors have value semantics for now.
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forward_annotation.append((list(arg.shape), arg.dtype, True))
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class_annotator.exportNone(scripted._c._type())
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class_annotator.exportPath(scripted._c._type(), ["forward"])
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class_annotator.annotateArgs(
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scripted._c._type(), ["forward"], forward_annotation)
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mb = ModuleBuilder()
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mb.import_module(scripted._c, class_annotator)
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run_pipeline_with_repro_report(mb.module,
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"torchscript-module-to-torch-backend-pipeline",
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"Lowering TorchScript IR -> Torch Backend IR")
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if output_type == OutputType.TORCH:
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pass
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elif output_type == OutputType.TOSA:
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run_pipeline_with_repro_report(
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mb.module,
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"torch-backend-to-tosa-backend-pipeline",
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"Lowering Torch Backend IR -> TOSA Backend IR")
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else:
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assert output_type == OutputType.LINALG_ON_TENSORS
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run_pipeline_with_repro_report(
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mb.module,
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"torch-backend-to-linalg-on-tensors-backend-pipeline",
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"Lowering Torch Backend IR -> Linalg-on-Tensors Backend IR")
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return mb.module
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