mirror of
https://github.com/Anjok07/ultimatevocalremovergui.git
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81 lines
3.0 KiB
Python
81 lines
3.0 KiB
Python
# Copyright (c) Facebook, Inc. and its affiliates.
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# All rights reserved.
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#
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# This source code is licensed under the license found in the
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# LICENSE file in the root directory of this source tree.
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"""Bit packing in pure PyTorch.
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Slower than bitpack.pyx but compatible with torchscript.
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"""
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import math
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import typing as tp
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import torch
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from torch.nn import functional as F
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def as_rectangle(p: torch.Tensor, side: int):
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"""Reshape as rectangle, using padding when necessary so that out shape is [*, side]"""
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p_flat = p.view(-1)
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ideal_length = int(math.ceil(len(p_flat) / side) * side)
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p_flat_pad = F.pad(p_flat, (0, ideal_length - len(p_flat)))
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return p_flat_pad.view(side, -1)
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def _storage_size(dtype: torch.dtype):
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if dtype == torch.int64:
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return 64
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elif dtype == torch.int32:
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return 32
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elif dtype == torch.int16:
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return 16
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elif dtype == torch.uint8:
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return 8
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else:
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raise ValueError("Invalid bitpacking storage type")
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def pack(indexes, nbits: int = 0, storage_dtype: torch.dtype = torch.int16):
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"""You can think of indexes as a "Tensor" of bits of shape [L, nbits].
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Instead of concatenating naively as [L * nbits], we instead look at it transposed as
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[nbits, L]. For L = 16 * G, we get [nbits, G, 16] which is trivial to store
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efficiently on int16 integers.
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There will be overhead if L is far from a multiple of 16 (e.g. 1) but for large
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model layers this is acceptable. Storage type can be changed.
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`nbits` should be the number of bits on which the indexes are coded, and will
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actually be determined automatically if set to 0.
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"""
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assert not indexes.dtype.is_floating_point
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if indexes.numel() > 0:
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assert indexes.max().item() < 2 ** 15
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assert indexes.min().item() >= 0
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if nbits == 0:
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nbits = int(math.ceil(math.log2(1 + (indexes.max()))))
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else:
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assert indexes.max().item() < 2 ** nbits
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indexes = indexes.reshape(-1)
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storage_size = _storage_size(storage_dtype)
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rect = as_rectangle(indexes, storage_size)
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out = torch.zeros(nbits, rect.shape[1], dtype=storage_dtype, device=indexes.device)
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for in_bit in range(nbits):
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for out_bit in range(storage_size):
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d = ((rect[out_bit] >> in_bit) & 1).to(out.dtype) << out_bit
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out[in_bit, :] |= d
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return out
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def unpack(packed: torch.Tensor, length: tp.Optional[int] = None):
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"""Opposite of `pack`. You might need to specify the original length."""
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storage_size = _storage_size(packed.dtype)
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nbits, groups = packed.shape
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out = torch.zeros(storage_size, groups, dtype=torch.int16, device=packed.device)
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for in_bit in range(storage_size):
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for out_bit in range(nbits):
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bit_value = (packed[out_bit, :] >> in_bit) & 1
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out[in_bit, :] = out[in_bit, :] | (bit_value.to(out) << out_bit)
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out = out.view(-1)
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if length is not None:
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out = out[:length]
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return out
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