# Copyright (c) Meta Platforms, Inc. and affiliates. # # This source code is licensed under the Apache License, Version 2.0 # found in the LICENSE file in the root directory of this source tree. # References: # https://github.com/facebookresearch/dino/blob/master/vision_transformer.py # https://github.com/rwightman/pytorch-image-models/tree/master/timm/layers/patch_embed.py import logging import os from typing import Callable, List, Any, Tuple, Dict import warnings import torch from torch import nn, Tensor from .attention import Attention, MemEffAttention from .drop_path import DropPath from .layer_scale import LayerScale from .mlp import Mlp logger = logging.getLogger("dinov2") XFORMERS_ENABLED = os.environ.get("XFORMERS_DISABLED") is None try: if XFORMERS_ENABLED: from xformers.ops import fmha, scaled_index_add, index_select_cat XFORMERS_AVAILABLE = True # warnings.warn("xFormers is available (Block)") else: # warnings.warn("xFormers is disabled (Block)") raise ImportError except ImportError: XFORMERS_AVAILABLE = False # warnings.warn("xFormers is not available (Block)") class Block(nn.Module): def __init__( self, dim: int, num_heads: int, mlp_ratio: float = 4.0, qkv_bias: bool = False, proj_bias: bool = True, ffn_bias: bool = True, drop: float = 0.0, attn_drop: float = 0.0, init_values=None, drop_path: float = 0.0, act_layer: Callable[..., nn.Module] = nn.GELU, norm_layer: Callable[..., nn.Module] = nn.LayerNorm, attn_class: Callable[..., nn.Module] = Attention, ffn_layer: Callable[..., nn.Module] = Mlp, ) -> None: super().__init__() # print(f"biases: qkv: {qkv_bias}, proj: {proj_bias}, ffn: {ffn_bias}") self.norm1 = norm_layer(dim) self.attn = attn_class( dim, num_heads=num_heads, qkv_bias=qkv_bias, proj_bias=proj_bias, attn_drop=attn_drop, proj_drop=drop, ) self.ls1 = LayerScale(dim, init_values=init_values) if init_values else nn.Identity() self.drop_path1 = DropPath(drop_path) if drop_path > 0.0 else nn.Identity() self.norm2 = norm_layer(dim) mlp_hidden_dim = int(dim * mlp_ratio) self.mlp = ffn_layer( in_features=dim, hidden_features=mlp_hidden_dim, act_layer=act_layer, drop=drop, bias=ffn_bias, ) self.ls2 = LayerScale(dim, init_values=init_values) if init_values else nn.Identity() self.drop_path2 = DropPath(drop_path) if drop_path > 0.0 else nn.Identity() self.sample_drop_ratio = drop_path def forward(self, x: Tensor) -> Tensor: def attn_residual_func(x: Tensor) -> Tensor: return self.ls1(self.attn(self.norm1(x))) def ffn_residual_func(x: Tensor) -> Tensor: return self.ls2(self.mlp(self.norm2(x))) if self.training and self.sample_drop_ratio > 0.1: # the overhead is compensated only for a drop path rate larger than 0.1 x = drop_add_residual_stochastic_depth( x, residual_func=attn_residual_func, sample_drop_ratio=self.sample_drop_ratio, ) x = drop_add_residual_stochastic_depth( x, residual_func=ffn_residual_func, sample_drop_ratio=self.sample_drop_ratio, ) elif self.training and self.sample_drop_ratio > 0.0: x = x + self.drop_path1(attn_residual_func(x)) x = x + self.drop_path1(ffn_residual_func(x)) # FIXME: drop_path2 else: x = x + attn_residual_func(x) x = x + ffn_residual_func(x) return x def drop_add_residual_stochastic_depth( x: Tensor, residual_func: Callable[[Tensor], Tensor], sample_drop_ratio: float = 0.0, ) -> Tensor: # 1) extract subset using permutation b, n, d = x.shape sample_subset_size = max(int(b * (1 - sample_drop_ratio)), 1) brange = (torch.randperm(b, device=x.device))[:sample_subset_size] x_subset = x[brange] # 2) apply residual_func to get residual residual = residual_func(x_subset) x_flat = x.flatten(1) residual = residual.flatten(1) residual_scale_factor = b / sample_subset_size # 3) add the residual x_plus_residual = torch.index_add(x_flat, 0, brange, residual.to(dtype=x.dtype), alpha=residual_scale_factor) return x_plus_residual.view_as(x) def get_branges_scales(x, sample_drop_ratio=0.0): b, n, d = x.shape sample_subset_size = max(int(b * (1 - sample_drop_ratio)), 1) brange = (torch.randperm(b, device=x.device))[:sample_subset_size] residual_scale_factor = b / sample_subset_size return brange, residual_scale_factor def add_residual(x, brange, residual, residual_scale_factor, scaling_vector=None): if scaling_vector is None: x_flat = x.flatten(1) residual = residual.flatten(1) x_plus_residual = torch.index_add(x_flat, 0, brange, residual.to(dtype=x.dtype), alpha=residual_scale_factor) else: x_plus_residual = scaled_index_add( x, brange, residual.to(dtype=x.dtype), scaling=scaling_vector, alpha=residual_scale_factor ) return x_plus_residual attn_bias_cache: Dict[Tuple, Any] = {} def get_attn_bias_and_cat(x_list, branges=None): """ this will perform the index select, cat the tensors, and provide the attn_bias from cache """ batch_sizes = [b.shape[0] for b in branges] if branges is not None else [x.shape[0] for x in x_list] all_shapes = tuple((b, x.shape[1]) for b, x in zip(batch_sizes, x_list)) if all_shapes not in attn_bias_cache.keys(): seqlens = [] for b, x in zip(batch_sizes, x_list): for _ in range(b): seqlens.append(x.shape[1]) attn_bias = fmha.BlockDiagonalMask.from_seqlens(seqlens) attn_bias._batch_sizes = batch_sizes attn_bias_cache[all_shapes] = attn_bias if branges is not None: cat_tensors = index_select_cat([x.flatten(1) for x in x_list], branges).view(1, -1, x_list[0].shape[-1]) else: tensors_bs1 = tuple(x.reshape([1, -1, *x.shape[2:]]) for x in x_list) cat_tensors = torch.cat(tensors_bs1, dim=1) return attn_bias_cache[all_shapes], cat_tensors def drop_add_residual_stochastic_depth_list( x_list: List[Tensor], residual_func: Callable[[Tensor, Any], Tensor], sample_drop_ratio: float = 0.0, scaling_vector=None, ) -> Tensor: # 1) generate random set of indices for dropping samples in the batch branges_scales = [get_branges_scales(x, sample_drop_ratio=sample_drop_ratio) for x in x_list] branges = [s[0] for s in branges_scales] residual_scale_factors = [s[1] for s in branges_scales] # 2) get attention bias and index+concat the tensors attn_bias, x_cat = get_attn_bias_and_cat(x_list, branges) # 3) apply residual_func to get residual, and split the result residual_list = attn_bias.split(residual_func(x_cat, attn_bias=attn_bias)) # type: ignore outputs = [] for x, brange, residual, residual_scale_factor in zip(x_list, branges, residual_list, residual_scale_factors): outputs.append(add_residual(x, brange, residual, residual_scale_factor, scaling_vector).view_as(x)) return outputs class NestedTensorBlock(Block): def forward_nested(self, x_list: List[Tensor]) -> List[Tensor]: """ x_list contains a list of tensors to nest together and run """ assert isinstance(self.attn, MemEffAttention) if self.training and self.sample_drop_ratio > 0.0: def attn_residual_func(x: Tensor, attn_bias=None) -> Tensor: return self.attn(self.norm1(x), attn_bias=attn_bias) def ffn_residual_func(x: Tensor, attn_bias=None) -> Tensor: return self.mlp(self.norm2(x)) x_list = drop_add_residual_stochastic_depth_list( x_list, residual_func=attn_residual_func, sample_drop_ratio=self.sample_drop_ratio, scaling_vector=self.ls1.gamma if isinstance(self.ls1, LayerScale) else None, ) x_list = drop_add_residual_stochastic_depth_list( x_list, residual_func=ffn_residual_func, sample_drop_ratio=self.sample_drop_ratio, scaling_vector=self.ls2.gamma if isinstance(self.ls1, LayerScale) else None, ) return x_list else: def attn_residual_func(x: Tensor, attn_bias=None) -> Tensor: return self.ls1(self.attn(self.norm1(x), attn_bias=attn_bias)) def ffn_residual_func(x: Tensor, attn_bias=None) -> Tensor: return self.ls2(self.mlp(self.norm2(x))) attn_bias, x = get_attn_bias_and_cat(x_list) x = x + attn_residual_func(x, attn_bias=attn_bias) x = x + ffn_residual_func(x) return attn_bias.split(x) def forward(self, x_or_x_list): if isinstance(x_or_x_list, Tensor): return super().forward(x_or_x_list) elif isinstance(x_or_x_list, list): if not XFORMERS_AVAILABLE: raise AssertionError("xFormers is required for using nested tensors") return self.forward_nested(x_or_x_list) else: raise AssertionError