""" Finite Scalar Quantization: VQ-VAE Made Simple - https://arxiv.org/abs/2309.15505 Code adapted from Jax version in Appendix A.1 """ from typing import List import torch import torch.nn as nn from torch import Tensor, int32 def round_ste(z: Tensor) -> Tensor: """Round with straight through gradients.""" zhat = z.round() return z + (zhat - z).detach() class FSQ(nn.Module): def __init__(self, levels: List[int]): super().__init__() _levels = torch.tensor(levels, dtype=int32) self.register_buffer("_levels", _levels) _basis = torch.cumprod(torch.tensor([1] + levels[:-1]), dim=0, dtype=int32) self.register_buffer("_basis", _basis) self.dim = len(levels) self.n_codes = self._levels.prod().item() implicit_codebook = self.indices_to_codes(torch.arange(self.n_codes)) self.register_buffer("implicit_codebook", implicit_codebook) def forward(self, z: Tensor) -> Tensor: zhat = self.quantize(z) indices = self.codes_to_indices(zhat) return zhat, indices def bound(self, z: Tensor, eps: float = 1e-3) -> Tensor: """Bound `z`, an array of shape (..., d).""" half_l = (self._levels - 1) * (1 - eps) / 2 offset = torch.where(self._levels % 2 == 0, 0.5, 0.0) shift = (offset / half_l).tan() return (z + shift).tanh() * half_l - offset def quantize(self, z: Tensor) -> Tensor: """Quantizes z, returns quantized zhat, same shape as z.""" quantized = round_ste(self.bound(z)) half_width = self._levels // 2 # Renormalize to [-1, 1]. return quantized / half_width def _scale_and_shift(self, zhat_normalized: Tensor) -> Tensor: half_width = self._levels // 2 return (zhat_normalized * half_width) + half_width def _scale_and_shift_inverse(self, zhat: Tensor) -> Tensor: half_width = self._levels // 2 return (zhat - half_width) / half_width def codes_to_indices(self, zhat: Tensor) -> Tensor: """Converts a `code` to an index in the codebook.""" assert zhat.shape[-1] == self.dim zhat = self._scale_and_shift(zhat) return (zhat * self._basis).sum(dim=-1).to(int32) def indices_to_codes(self, indices: Tensor) -> Tensor: """Inverse of `codes_to_indices`.""" indices = indices.unsqueeze(-1) codes_non_centered = (indices // self._basis) % self._levels return self._scale_and_shift_inverse(codes_non_centered) def get_codebook_entry(self, encoding_indices): return self.indices_to_codes(encoding_indices)