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145 lines
5.3 KiB
145 lines
5.3 KiB
import functools
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from contextlib import nullcontext
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from typing import Any, Callable, Dict, Optional, Sequence
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import torch
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import torch._decomp
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import torch._prims
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import torch._refs
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import torch._refs.nn
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import torch._refs.nn.functional
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import torch._refs.special
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import torch.overrides
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from torch._prims_common import torch_function_passthrough
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@functools.lru_cache(None)
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def torch_to_refs_map():
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"""
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Mapping of torch API functions to torch._refs functions.
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E.g. torch_to_refs_map()[torch.add] == torch._refs.add
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"""
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modules = [
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(torch, torch._refs),
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(torch.nn, torch._refs.nn),
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(torch.nn.functional, torch._refs.nn.functional),
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(torch.special, torch._refs.special),
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(torch.fft, torch._refs.fft),
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(torch.linalg, torch._refs.linalg),
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]
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r: Dict[Any, Any] = {
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torch.Tensor.__invert__: torch._refs.bitwise_not,
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torch.Tensor.__xor__: torch._refs.bitwise_xor,
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torch.Tensor.__and__: torch._refs.bitwise_and,
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torch.Tensor.__or__: torch._refs.bitwise_or,
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torch.Tensor.__eq__: torch._refs.eq,
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torch.Tensor.__rsub__: torch._refs.rsub,
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torch.Tensor.__rtruediv__: torch._refs.rtruediv,
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torch.Tensor.__floordiv__: torch._refs.floor_divide,
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torch.Tensor.__rfloordiv__: torch._refs.rfloordiv,
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torch.Tensor.__pow__: torch._refs.pow,
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torch.Tensor.__rpow__: torch._refs.rpow,
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torch.Tensor.new_empty: torch._refs.new_empty,
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torch.Tensor.new_full: torch._refs.new_full,
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torch.Tensor.new_zeros: torch._refs.new_zeros,
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torch.Tensor.new_ones: torch._refs.new_ones,
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torch.Tensor.fill_: torch._refs.fill_,
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torch.Tensor.zero_: torch._refs.zero_,
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torch.Tensor.to: torch._refs.to,
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torch.Tensor.sum_to_size: torch._refs.sum_to_size,
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# TODO: Should these methods be mapped some other way?
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torch.Tensor.copy_: torch._prims.copy_to,
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torch.Tensor.resize: torch._prims.resize,
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}
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for mod_torch, mod_refs in modules:
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for s in mod_refs.__all__: # type: ignore[attr-defined]
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r[mod_torch.__dict__.get(s)] = mod_refs.__dict__.get(s)
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# Support remapping torch.Tensor.foo to _refs.foo
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for s in dir(torch.Tensor):
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if s in torch._refs.__all__:
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r[getattr(torch.Tensor, s)] = torch._refs.__dict__.get(s)
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# Support conversions
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for s in torch._refs._conversions.__all__:
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tensor_attr = getattr(torch.Tensor, s, None) or getattr(torch, s)
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r[tensor_attr] = torch._refs._conversions.__dict__.get(s)
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return r
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@functools.lru_cache(None)
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def all_prims():
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"""
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Set of all prim functions, e.g., torch._prims.add in all_prims()
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"""
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return {torch._prims.__dict__.get(s) for s in torch._prims.__all__}
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class TorchRefsMode(torch.overrides.TorchFunctionMode):
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"""
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Switches the interpretation of torch.* functions and Tensor methods to
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use PrimTorch refs in torch._refs. (Direct calls to _refs are unaffected.)
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>>> # xdoctest: +SKIP
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>>> with TorchRefsMode():
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... torch.add(x, y) # calls torch._refs.add(x, y)
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By default, this context manager will fall back on the torch.* if the
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ref does not exist; set strict=True to error if this occurs.
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If the ref exists we still would like to fall back on the torch.* sometimes,
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this behavior can be customized by passing a function to should_fallback_fn.
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"""
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def __init__(
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self,
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strict=False,
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should_fallback_fn=lambda *_: False,
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prims_mode_cls=nullcontext,
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):
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self.strict = strict
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self.should_fallback_fn = should_fallback_fn
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self.prims_mode_cls = prims_mode_cls
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def __torch_function__(
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self,
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orig_func: Callable,
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types: Sequence,
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args: Sequence[Any] = (),
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kwargs: Optional[Dict] = None,
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):
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if kwargs is None:
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kwargs = {}
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# For primitive operations, run them as is without interception
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# Unless we are in prims_mode, in which case we want to use nvprims
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if orig_func in torch_function_passthrough or orig_func in all_prims():
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with self.prims_mode_cls():
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return orig_func(*args, **kwargs)
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mapping = torch_to_refs_map()
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func = mapping.get(orig_func, None)
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# For torch.ops.aten.*, use registered decompositions from torch._decomp
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# torch._decomp.decomposition_table provides a mapping from
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# torch.ops.aten.* to torch._refs or torch._decomp.decompositions
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# implementations.
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# There're other ways to implement this functionality,
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# see https://github.com/pytorch/pytorch/pull/82657#discussion_r939776417
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if func is None and isinstance(orig_func, torch._ops.OpOverload):
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func = torch._decomp.decomposition_table.get(orig_func, None)
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if func is not None:
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# If the ref exists query whether we should use it or not
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if self.should_fallback_fn(self, orig_func, func, args, kwargs):
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return orig_func(*args, **kwargs)
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# torch calls inside func should be interpreted as refs calls
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with self:
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return func(*args, **kwargs)
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if self.strict:
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raise RuntimeError(
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f"no _refs support for {torch.overrides.resolve_name(orig_func)}"
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)
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return orig_func(*args, **kwargs)
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