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""" |
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Finite Scalar Quantization: VQ-VAE Made Simple - https://arxiv.org/abs/2309.15505 |
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Code adapted from Jax version in Appendix A.1 |
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""" |
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from __future__ import annotations |
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from functools import wraps, partial |
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from contextlib import nullcontext |
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from typing import List, Tuple |
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import torch |
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import torch.nn as nn |
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from torch.nn import Module |
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from torch import Tensor, int32 |
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from torch.amp import autocast |
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from einops import rearrange, pack, unpack |
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def exists(v): |
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return v is not None |
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def default(*args): |
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for arg in args: |
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if exists(arg): |
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return arg |
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return None |
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def maybe(fn): |
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@wraps(fn) |
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def inner(x, *args, **kwargs): |
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if not exists(x): |
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return x |
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return fn(x, *args, **kwargs) |
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return inner |
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def pack_one(t, pattern): |
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return pack([t], pattern) |
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def unpack_one(t, ps, pattern): |
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return unpack(t, ps, pattern)[0] |
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def round_ste(z: Tensor) -> Tensor: |
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"""Round with straight through gradients.""" |
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zhat = z.round() |
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return z + (zhat - z).detach() |
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class FSQ(Module): |
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def __init__( |
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self, |
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levels: List[int], |
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dim: int | None = None, |
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num_codebooks=1, |
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keep_num_codebooks_dim: bool | None = None, |
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scale: float | None = None, |
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allowed_dtypes: Tuple[torch.dtype, ...] = (torch.float32, torch.float64), |
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channel_first: bool = False, |
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projection_has_bias: bool = True, |
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return_indices=True, |
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force_quantization_f32=True, |
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): |
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super().__init__() |
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_levels = torch.tensor(levels, dtype=int32) |
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self.register_buffer("_levels", _levels, persistent=False) |
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_basis = torch.cumprod(torch.tensor([1] + levels[:-1]), dim=0, dtype=int32) |
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self.register_buffer("_basis", _basis, persistent=False) |
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self.scale = scale |
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codebook_dim = len(levels) |
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self.codebook_dim = codebook_dim |
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effective_codebook_dim = codebook_dim * num_codebooks |
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self.num_codebooks = num_codebooks |
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self.effective_codebook_dim = effective_codebook_dim |
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keep_num_codebooks_dim = default(keep_num_codebooks_dim, num_codebooks > 1) |
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assert not (num_codebooks > 1 and not keep_num_codebooks_dim) |
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self.keep_num_codebooks_dim = keep_num_codebooks_dim |
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self.dim = default(dim, len(_levels) * num_codebooks) |
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self.channel_first = channel_first |
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has_projections = self.dim != effective_codebook_dim |
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self.project_in = ( |
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nn.Linear(self.dim, effective_codebook_dim, bias=projection_has_bias) |
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if has_projections |
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else nn.Identity() |
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) |
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self.project_out = ( |
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nn.Linear(effective_codebook_dim, self.dim, bias=projection_has_bias) |
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if has_projections |
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else nn.Identity() |
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) |
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self.has_projections = has_projections |
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self.return_indices = return_indices |
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if return_indices: |
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self.codebook_size = self._levels.prod().item() |
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implicit_codebook = self._indices_to_codes(torch.arange(self.codebook_size)) |
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self.register_buffer( |
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"implicit_codebook", implicit_codebook, persistent=False |
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) |
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self.allowed_dtypes = allowed_dtypes |
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self.force_quantization_f32 = force_quantization_f32 |
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def bound(self, z, eps: float = 1e-3): |
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"""Bound `z`, an array of shape (..., d).""" |
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half_l = (self._levels - 1) * (1 + eps) / 2 |
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offset = torch.where(self._levels % 2 == 0, 0.5, 0.0) |
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shift = (offset / half_l).atanh() |
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return (z + shift).tanh() * half_l - offset |
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def quantize(self, z): |
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"""Quantizes z, returns quantized zhat, same shape as z.""" |
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quantized = round_ste(self.bound(z)) |
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half_width = self._levels // 2 |
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return quantized / half_width |
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def _scale_and_shift(self, zhat_normalized): |
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half_width = self._levels // 2 |
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return (zhat_normalized * half_width) + half_width |
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def _scale_and_shift_inverse(self, zhat): |
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half_width = self._levels // 2 |
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return (zhat - half_width) / half_width |
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def _indices_to_codes(self, indices): |
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level_indices = self.indices_to_level_indices(indices) |
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codes = self._scale_and_shift_inverse(level_indices) |
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return codes |
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def codes_to_indices(self, zhat): |
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"""Converts a `code` to an index in the codebook.""" |
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assert zhat.shape[-1] == self.codebook_dim |
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zhat = self._scale_and_shift(zhat) |
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return (zhat * self._basis).sum(dim=-1).to(int32) |
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def indices_to_level_indices(self, indices): |
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"""Converts indices to indices at each level, perhaps needed for a transformer with factorized embeddings""" |
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indices = rearrange(indices, "... -> ... 1") |
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codes_non_centered = (indices // self._basis) % self._levels |
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return codes_non_centered |
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def indices_to_codes(self, indices): |
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"""Inverse of `codes_to_indices`.""" |
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assert exists(indices) |
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is_img_or_video = indices.ndim >= (3 + int(self.keep_num_codebooks_dim)) |
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codes = self._indices_to_codes(indices) |
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if self.keep_num_codebooks_dim: |
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codes = rearrange(codes, "... c d -> ... (c d)") |
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codes = self.project_out(codes) |
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if is_img_or_video or self.channel_first: |
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codes = rearrange(codes, "b ... d -> b d ...") |
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return codes |
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def forward(self, z): |
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""" |
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einstein notation |
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b - batch |
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n - sequence (or flattened spatial dimensions) |
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d - feature dimension |
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c - number of codebook dim |
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""" |
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is_img_or_video = z.ndim >= 4 |
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need_move_channel_last = is_img_or_video or self.channel_first |
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if need_move_channel_last: |
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z = rearrange(z, "b d ... -> b ... d") |
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z, ps = pack_one(z, "b * d") |
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assert ( |
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z.shape[-1] == self.dim |
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), f"expected dimension of {self.dim} but found dimension of {z.shape[-1]}" |
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z = self.project_in(z) |
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z = rearrange(z, "b n (c d) -> b n c d", c=self.num_codebooks) |
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force_f32 = self.force_quantization_f32 |
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quantization_context = ( |
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partial(autocast, "cuda", enabled=False) if force_f32 else nullcontext |
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) |
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with quantization_context(): |
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orig_dtype = z.dtype |
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if force_f32 and orig_dtype not in self.allowed_dtypes: |
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z = z.float() |
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codes = self.quantize(z) |
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indices = None |
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if self.return_indices: |
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indices = self.codes_to_indices(codes) |
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codes = rearrange(codes, "b n c d -> b n (c d)") |
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codes = codes.type(orig_dtype) |
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out = self.project_out(codes) |
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if need_move_channel_last: |
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out = unpack_one(out, ps, "b * d") |
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out = rearrange(out, "b ... d -> b d ...") |
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indices = maybe(unpack_one)(indices, ps, "b * c") |
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if not self.keep_num_codebooks_dim and self.return_indices: |
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indices = maybe(rearrange)(indices, "... 1 -> ...") |
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return out, indices |
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