290 lines
9.2 KiB
Python
290 lines
9.2 KiB
Python
# mypy: ignore-errors
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import dataclasses
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import functools
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from importlib import import_module
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from typing import Any, List, Optional
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from functorch.compile import min_cut_rematerialization_partition
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import torch
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from torch import _guards
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from torch._functorch.compilers import ts_compile
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from .common import aot_autograd
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from .registry import register_debug_backend as register_backend
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"""
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This file contains TorchDynamo backends intended for debugging uses.
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"""
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@register_backend
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def eager(gm, fake_tensor_inputs):
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return gm
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@register_backend
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def pre_dispatch_eager(gm, fake_tensor_inputs):
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from torch.fx.experimental.proxy_tensor import make_fx
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def runnable_gm(*args):
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return torch.fx.Interpreter(gm).run(*args)
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pre_dispatch_gm = make_fx(runnable_gm, pre_dispatch=True)(*fake_tensor_inputs)
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pre_dispatch_gm.print_readable()
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return pre_dispatch_gm
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@register_backend
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def eager_debug(gm, fake_tensor_inputs):
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from torch._subclasses.schema_check_mode import SchemaCheckMode
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# We could add more debugging bits here.
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# Right now, this backend can be used to check for and error on
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# custom dispatcher ops that have incorrect schemas.
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def inner(*args):
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with SchemaCheckMode():
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return torch.fx.Interpreter(gm).run(*args)
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return inner
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@register_backend(name="ts")
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def torchscript(gm, fake_tensor_inputs):
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return torch.jit.script(gm)
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# used boxed call to discard inputs when they are no longer needed
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def boxed_nop(fx_g, example_inputs):
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def run(args):
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return torch.fx.Interpreter(fx_g).boxed_run(args)
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run._boxed_call = True
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return run
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# Useful for debugging purpose
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# aot_eager uses AOT Autograd backend with nop compiler. It is helpful in debugging.
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aot_eager = aot_autograd(
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fw_compiler=boxed_nop, partition_fn=min_cut_rematerialization_partition
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)
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register_backend(name="aot_eager", compiler_fn=aot_eager)
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aot_eager_default_partitioner = aot_autograd(fw_compiler=boxed_nop)
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register_backend(
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name="aot_eager_default_partitioner", compiler_fn=aot_eager_default_partitioner
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)
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# Uses TorchInductor AOT Autograd decomps and partitioner to isolate aot vs
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# inductor problems.
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# aot_eager_decomp_partition just replaces the inductor compiler with nop to help
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# isolate inductor vs aot_eager errors
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aot_eager_decomp_partition = aot_autograd(
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# these are taken from memory_efficient_fusion()
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fw_compiler=boxed_nop,
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bw_compiler=boxed_nop,
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# NB: lambda here is to delay import of inductor
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decompositions=lambda: import_module(
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"torch._inductor.compile_fx"
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).select_decomp_table(),
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partition_fn=functools.partial(
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min_cut_rematerialization_partition, compiler="inductor"
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),
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)
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register_backend(
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name="aot_eager_decomp_partition", compiler_fn=aot_eager_decomp_partition
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)
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# AOT Autograd with torchscript backend. Default partitioner.
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# aot_ts uses torchscript backend. We can use this with both nnc and nvfuser
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# by using the relevant fuser with torch.jit.fuser(...)
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aot_ts = aot_autograd(fw_compiler=ts_compile)
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register_backend(name="aot_ts", compiler_fn=aot_ts)
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# These buggy backends are used for inducing bugs so that we can test
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# our repro extraction / minifier scripts
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class ReluCompileError(Exception):
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pass
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class TestingOnlyCompileError(Exception):
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pass
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@register_backend
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def relu_compile_error_TESTING_ONLY(gm: torch.fx.GraphModule, example_inputs):
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for node in gm.graph.nodes:
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if node.target == torch.relu:
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raise ReluCompileError()
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return gm
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@register_backend
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def relu_runtime_error_TESTING_ONLY(gm: torch.fx.GraphModule, example_inputs):
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for node in gm.graph.nodes:
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if node.target == torch.relu:
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node.target = torch._assert
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node.args = (False, "ReluRuntimeError")
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gm.recompile()
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return gm
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@register_backend
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def relu_accuracy_error_TESTING_ONLY(gm: torch.fx.GraphModule, example_inputs):
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for node in gm.graph.nodes:
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if node.target == torch.relu:
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node.target = torch.add
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node.args = (node.args[0], 1)
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gm.recompile()
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return gm
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@register_backend
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def non_leaf_compile_error_TESTING_ONLY(gm: torch.fx.GraphModule, example_inputs):
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# Require at least one non-trivial thing in the graph,
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# see https://github.com/pytorch/pytorch/issues/102898
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for node in gm.graph.nodes:
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if node.op == "call_function":
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break
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else:
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return gm
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for t in example_inputs:
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if not t.is_leaf:
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raise TestingOnlyCompileError()
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return gm
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@dataclasses.dataclass
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class ExplainOutput:
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"""
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This is the output of :func:`torch._dynamo.explain()`
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There is no reason to create this class directly.
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"""
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graphs: List[torch.fx.GraphModule]
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graph_count: int
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graph_break_count: int
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break_reasons: List[
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Any
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] # Type is GraphCompileReason but doesn't matter for this purpose
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op_count: int
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ops_per_graph: Optional[List[torch.fx.Node]] = None
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out_guards: Optional[List[_guards.Guard]] = None
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compile_times: Optional[str] = None
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def __str__(self):
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output = f"Graph Count: {self.graph_count}\n"
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output += f"Graph Break Count: {self.graph_break_count}\n"
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output += f"Op Count: {self.op_count}\n"
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output += "Break Reasons:\n"
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for idx, break_reason in enumerate(self.break_reasons):
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output += f" Break Reason {idx+1}:\n"
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output += f" Reason: {break_reason.reason}\n"
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output += " User Stack:\n"
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for frame_summary in break_reason.user_stack:
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output += f" {frame_summary}\n"
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if self.ops_per_graph is not None:
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output += "Ops per Graph:\n"
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for idx, ops in enumerate(self.ops_per_graph):
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output += f" Ops {idx+1}:\n"
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for op in ops:
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output += f" {op}\n"
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if self.out_guards is not None:
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output += "Out Guards:\n"
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for i, guard in enumerate(self.out_guards):
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output += f" Guard {i+1}:\n"
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output += f" {str(guard)}"
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if self.compile_times is not None:
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output += f"Compile Times: {self.compile_times}\n"
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return output
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def _explain_graph_detail(
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gm: torch.fx.GraphModule, graphs, op_count, ops_per_graph, break_reasons
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):
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"""
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This function is a utility which processes a torch.fx.GraphModule and
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accumulates information about its ops, graph breaks, and other details. It
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is intended to be used by the ExplainWithBackend class and
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`torch._dynamo.explain()` to provide details from Dynamo's graph capture.
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Parameters:
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gm (torch.fx.GraphModule): The GraphModule to be processed.
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graphs (list): A list that accumulates all the GraphModules processed.
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op_count (int): The total count of operations in all GraphModules processed so far.
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ops_per_graph (list): A list that accumulates the operations of each GraphModule.
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break_reasons (list): A list that accumulates the reasons for breaks in each GraphModule.
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Returns:
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tuple: A tuple containing the processed GraphModule, the updated lists of graphs,
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operations per graph, and break reasons, and the updated operation count.
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"""
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graphs.append(gm)
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ops = [node.target for node in gm.graph.nodes if node.op == "call_function"]
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op_count += len(ops)
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ops_per_graph.append(ops)
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if gm.compile_subgraph_reason.graph_break:
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break_reasons.append(gm.compile_subgraph_reason)
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return gm, graphs, op_count, ops_per_graph, break_reasons
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class ExplainWithBackend:
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"""
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This class is intended to be used as a backend for `torch.compile`. It is
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composable with other backends. When used in this way, it accumulates
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information about graph breaks, ops, and other info and provides a string
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representation summarizing this information.
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Attributes:
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backend (str): The name of the backend to use for optimization.
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graphs (list): A list of the graphs captured by TorchDynamo.
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op_count (int): The total number of operations in all optimized graphs.
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break_reasons (list): A list of graph break reasons with stack traces.
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Example Usage:
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def fn(x):
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x = torch.sigmoid(x)
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return x
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torch._dynamo.reset()
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eb = ExplainWithBackend("inductor")
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optimized_fn = torch.compile(fn, backend=eb)
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result = optimized_fn(torch.randn(5))
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print(eb.output())
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"""
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def __init__(self, backend):
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from .registry import lookup_backend
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self.backend = lookup_backend(backend)
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self.graphs = []
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self.op_count = 0
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self.break_reasons = []
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def __call__(self, gm: torch.fx.GraphModule, example_inputs):
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gm, self.graphs, self.op_count, _, self.break_reasons = _explain_graph_detail(
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gm, self.graphs, self.op_count, [], self.break_reasons
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)
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return self.backend(gm, example_inputs)
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def output(self) -> ExplainOutput:
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graph_count = len(self.graphs)
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output = ExplainOutput(
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self.graphs,
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graph_count,
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graph_count - 1,
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self.break_reasons,
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self.op_count,
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)
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return output
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