204 lines
6.2 KiB
Python
204 lines
6.2 KiB
Python
"""
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A module for sharing intermediates between contractions.
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Copyright (c) 2018 Uber Technologies
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"""
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import contextlib
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import functools
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import numbers
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import threading
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from collections import Counter, defaultdict
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from .parser import alpha_canonicalize, parse_einsum_input
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__all__ = [
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"currently_sharing", "get_sharing_cache", "shared_intermediates", "count_cached_ops", "transpose_cache_wrap",
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"einsum_cache_wrap", "to_backend_cache_wrap"
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]
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_SHARING_STACK = defaultdict(list)
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def currently_sharing():
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"""Check if we are currently sharing a cache -- thread specific.
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"""
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return threading.get_ident() in _SHARING_STACK
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def get_sharing_cache():
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"""Return the most recent sharing cache -- thread specific.
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"""
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return _SHARING_STACK[threading.get_ident()][-1]
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def _add_sharing_cache(cache):
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_SHARING_STACK[threading.get_ident()].append(cache)
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def _remove_sharing_cache():
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tid = threading.get_ident()
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_SHARING_STACK[tid].pop()
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if not _SHARING_STACK[tid]:
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del _SHARING_STACK[tid]
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@contextlib.contextmanager
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def shared_intermediates(cache=None):
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"""Context in which contract intermediate results are shared.
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Note that intermediate computations will not be garbage collected until
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1. this context exits, and
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2. the yielded cache is garbage collected (if it was captured).
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Parameters
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----------
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cache : dict
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If specified, a user-stored dict in which intermediate results will
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be stored. This can be used to interleave sharing contexts.
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Returns
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-------
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cache : dict
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A dictionary in which sharing results are stored. If ignored,
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sharing results will be garbage collected when this context is
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exited. This dict can be passed to another context to resume
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sharing.
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"""
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if cache is None:
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cache = {}
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_add_sharing_cache(cache)
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try:
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yield cache
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finally:
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_remove_sharing_cache()
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def count_cached_ops(cache):
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"""Returns a counter of the types of each op in the cache.
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This is useful for profiling to increase sharing.
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"""
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return Counter(key[0] for key in cache.keys())
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def _save_tensors(*tensors):
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"""Save tensors in the cache to prevent their ids from being recycled.
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This is needed to prevent false cache lookups.
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"""
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cache = get_sharing_cache()
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for tensor in tensors:
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cache['tensor', id(tensor)] = tensor
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def _memoize(key, fn, *args, **kwargs):
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"""Memoize ``fn(*args, **kwargs)`` using the given ``key``.
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Results will be stored in the innermost ``cache`` yielded by
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:func:`shared_intermediates`.
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"""
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cache = get_sharing_cache()
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if key in cache:
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return cache[key]
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result = fn(*args, **kwargs)
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cache[key] = result
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return result
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def transpose_cache_wrap(transpose):
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"""Decorates a ``transpose()`` implementation to be memoized inside a
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:func:`shared_intermediates` context.
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"""
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@functools.wraps(transpose)
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def cached_transpose(a, axes, backend='numpy'):
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if not currently_sharing():
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return transpose(a, axes, backend=backend)
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# hash by axes
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_save_tensors(a)
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axes = tuple(axes)
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key = 'transpose', backend, id(a), axes
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return _memoize(key, transpose, a, axes, backend=backend)
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return cached_transpose
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def tensordot_cache_wrap(tensordot):
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"""Decorates a ``tensordot()`` implementation to be memoized inside a
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:func:`shared_intermediates` context.
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"""
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@functools.wraps(tensordot)
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def cached_tensordot(x, y, axes=2, backend='numpy'):
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if not currently_sharing():
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return tensordot(x, y, axes, backend=backend)
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# hash based on the (axes_x,axes_y) form of axes
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_save_tensors(x, y)
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if isinstance(axes, numbers.Number):
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axes = list(range(len(x.shape)))[len(x.shape) - axes:], list(range(len(y.shape)))[:axes]
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axes = tuple(axes[0]), tuple(axes[1])
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key = 'tensordot', backend, id(x), id(y), axes
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return _memoize(key, tensordot, x, y, axes, backend=backend)
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return cached_tensordot
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def einsum_cache_wrap(einsum):
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"""Decorates an ``einsum()`` implementation to be memoized inside a
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:func:`shared_intermediates` context.
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"""
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@functools.wraps(einsum)
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def cached_einsum(*args, **kwargs):
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if not currently_sharing():
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return einsum(*args, **kwargs)
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# hash modulo commutativity by computing a canonical ordering and names
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backend = kwargs.pop('backend', 'numpy')
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equation = args[0]
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inputs, output, operands = parse_einsum_input(args)
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inputs = inputs.split(',')
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_save_tensors(*operands)
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# Build canonical key
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canonical = sorted(zip(inputs, map(id, operands)), key=lambda x: x[1])
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canonical_ids = tuple(id_ for _, id_ in canonical)
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canonical_inputs = ','.join(input_ for input_, _ in canonical)
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canonical_equation = alpha_canonicalize(canonical_inputs + "->" + output)
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key = 'einsum', backend, canonical_equation, canonical_ids
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return _memoize(key, einsum, equation, *operands, backend=backend)
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return cached_einsum
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def to_backend_cache_wrap(to_backend=None, constants=False):
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"""Decorates an ``to_backend()`` implementation to be memoized inside a
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:func:`shared_intermediates` context (e.g. ``to_cupy``, ``to_torch``).
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"""
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# manage the case that decorator is called with args
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if to_backend is None:
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return functools.partial(to_backend_cache_wrap, constants=constants)
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if constants:
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@functools.wraps(to_backend)
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def cached_to_backend(array, constant=False):
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if not currently_sharing():
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return to_backend(array, constant=constant)
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# hash by id
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key = to_backend.__name__, id(array), constant
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return _memoize(key, to_backend, array, constant=constant)
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else:
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@functools.wraps(to_backend)
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def cached_to_backend(array):
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if not currently_sharing():
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return to_backend(array)
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# hash by id
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key = to_backend.__name__, id(array)
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return _memoize(key, to_backend, array)
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return cached_to_backend
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