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from collections import OrderedDict | |
from typing import Tuple, Union | |
import torch | |
import torch.nn.functional as F | |
from torch import nn | |
from mixture_of_experts import MoE | |
class Bottleneck(nn.Module): | |
expansion = 4 | |
def __init__(self, inplanes, planes, stride=1): | |
super().__init__() | |
# all conv layers have stride 1. an avgpool is performed after the second convolution when stride > 1 | |
self.conv1 = nn.Conv2d(inplanes, planes, 1, bias=False) | |
self.bn1 = nn.BatchNorm2d(planes) | |
self.conv2 = nn.Conv2d(planes, planes, 3, padding=1, bias=False) | |
self.bn2 = nn.BatchNorm2d(planes) | |
self.avgpool = nn.AvgPool2d(stride) if stride > 1 else nn.Identity() | |
self.conv3 = nn.Conv2d(planes, planes * self.expansion, 1, bias=False) | |
self.bn3 = nn.BatchNorm2d(planes * self.expansion) | |
self.relu = nn.ReLU(inplace=True) | |
self.downsample = None | |
self.stride = stride | |
if stride > 1 or inplanes != planes * Bottleneck.expansion: | |
# downsampling layer is prepended with an avgpool, and the subsequent convolution has stride 1 | |
self.downsample = nn.Sequential(OrderedDict([ | |
("-1", nn.AvgPool2d(stride)), | |
("0", nn.Conv2d(inplanes, planes * self.expansion, 1, stride=1, bias=False)), | |
("1", nn.BatchNorm2d(planes * self.expansion)) | |
])) | |
def forward(self, x: torch.Tensor): | |
identity = x | |
out = self.relu(self.bn1(self.conv1(x))) | |
out = self.relu(self.bn2(self.conv2(out))) | |
out = self.avgpool(out) | |
out = self.bn3(self.conv3(out)) | |
if self.downsample is not None: | |
identity = self.downsample(x) | |
out += identity | |
out = self.relu(out) | |
return out | |
class AttentionPool2d(nn.Module): | |
def __init__(self, spacial_dim: int, embed_dim: int, num_heads: int, output_dim: int = None): | |
super().__init__() | |
self.positional_embedding = nn.Parameter(torch.randn(spacial_dim ** 2 + 1, embed_dim) / embed_dim ** 0.5) | |
self.k_proj = nn.Linear(embed_dim, embed_dim) | |
self.q_proj = nn.Linear(embed_dim, embed_dim) | |
self.v_proj = nn.Linear(embed_dim, embed_dim) | |
self.c_proj = nn.Linear(embed_dim, output_dim or embed_dim) | |
self.num_heads = num_heads | |
def forward(self, x): | |
x = x.reshape(x.shape[0], x.shape[1], x.shape[2] * x.shape[3]).permute(2, 0, 1) # NCHW -> (HW)NC | |
x = torch.cat([x.mean(dim=0, keepdim=True), x], dim=0) # (HW+1)NC | |
x = x + self.positional_embedding[:, None, :].to(x.dtype) # (HW+1)NC | |
x, _ = F.multi_head_attention_forward( | |
query=x, key=x, value=x, | |
embed_dim_to_check=x.shape[-1], | |
num_heads=self.num_heads, | |
q_proj_weight=self.q_proj.weight, | |
k_proj_weight=self.k_proj.weight, | |
v_proj_weight=self.v_proj.weight, | |
in_proj_weight=None, | |
in_proj_bias=torch.cat([self.q_proj.bias, self.k_proj.bias, self.v_proj.bias]), | |
bias_k=None, | |
bias_v=None, | |
add_zero_attn=False, | |
dropout_p=0, | |
out_proj_weight=self.c_proj.weight, | |
out_proj_bias=self.c_proj.bias, | |
use_separate_proj_weight=True, | |
training=self.training, | |
need_weights=False | |
) | |
return x[0] | |
class ModifiedResNet(nn.Module): | |
""" | |
A ResNet class that is similar to torchvision's but contains the following changes: | |
- There are now 3 "stem" convolutions as opposed to 1, with an average pool instead of a max pool. | |
- Performs anti-aliasing strided convolutions, where an avgpool is prepended to convolutions with stride > 1 | |
- The final pooling layer is a QKV attention instead of an average pool | |
""" | |
def __init__(self, layers, output_dim, heads, input_resolution=224, width=64): | |
super().__init__() | |
self.output_dim = output_dim | |
self.input_resolution = input_resolution | |
# the 3-layer stem | |
self.conv1 = nn.Conv2d(3, width // 2, kernel_size=3, stride=2, padding=1, bias=False) | |
self.bn1 = nn.BatchNorm2d(width // 2) | |
self.conv2 = nn.Conv2d(width // 2, width // 2, kernel_size=3, padding=1, bias=False) | |
self.bn2 = nn.BatchNorm2d(width // 2) | |
self.conv3 = nn.Conv2d(width // 2, width, kernel_size=3, padding=1, bias=False) | |
self.bn3 = nn.BatchNorm2d(width) | |
self.avgpool = nn.AvgPool2d(2) | |
self.relu = nn.ReLU(inplace=True) | |
# residual layers | |
self._inplanes = width # this is a *mutable* variable used during construction | |
self.layer1 = self._make_layer(width, layers[0]) | |
self.layer2 = self._make_layer(width * 2, layers[1], stride=2) | |
self.layer3 = self._make_layer(width * 4, layers[2], stride=2) | |
self.layer4 = self._make_layer(width * 8, layers[3], stride=2) | |
embed_dim = width * 32 # the ResNet feature dimension | |
self.attnpool = AttentionPool2d(input_resolution // 32, embed_dim, heads, output_dim) | |
def _make_layer(self, planes, blocks, stride=1): | |
layers = [Bottleneck(self._inplanes, planes, stride)] | |
self._inplanes = planes * Bottleneck.expansion | |
for _ in range(1, blocks): | |
layers.append(Bottleneck(self._inplanes, planes)) | |
return nn.Sequential(*layers) | |
def forward(self, x): | |
def stem(x): | |
for conv, bn in [(self.conv1, self.bn1), (self.conv2, self.bn2), (self.conv3, self.bn3)]: | |
x = self.relu(bn(conv(x))) | |
x = self.avgpool(x) | |
return x | |
x = x.type(self.conv1.weight.dtype) | |
x = stem(x) | |
x = self.layer1(x) | |
x = self.layer2(x) | |
x = self.layer3(x) | |
#x = self.layer4(x) | |
#print(x.shape) | |
#x = self.attnpool(x) | |
return x | |
class LayerNorm(nn.LayerNorm): | |
"""Subclass torch's LayerNorm to handle fp16.""" | |
def forward(self, x: torch.Tensor): | |
orig_type = x.dtype | |
ret = super().forward(x.type(torch.float32)) | |
return ret.type(orig_type) | |
class QuickGELU(nn.Module): | |
def forward(self, x: torch.Tensor): | |
return x * torch.sigmoid(1.702 * x) | |
class ResidualAttentionBlock(nn.Module): | |
def __init__(self, d_model: int, n_head: int, attn_mask: torch.Tensor = None): | |
super().__init__() | |
self.attn = nn.MultiheadAttention(d_model, n_head) | |
self.ln_1 = LayerNorm(d_model) | |
self.mlp = nn.Sequential(OrderedDict([ | |
("c_fc", nn.Linear(d_model, d_model * 4)), | |
("gelu", QuickGELU()), | |
("c_proj", nn.Linear(d_model * 4, d_model)) | |
])) | |
self.ln_2 = LayerNorm(d_model) | |
self.attn_mask = attn_mask | |
def attention(self, x: torch.Tensor): | |
self.attn_mask = self.attn_mask.to(dtype=x.dtype, device=x.device) if self.attn_mask is not None else None | |
return self.attn(x, x, x, need_weights=True, attn_mask=self.attn_mask) | |
def forward(self, x: torch.Tensor): | |
attention_res = self.attention(self.ln_1(x)) | |
x, weight = x+attention_res[0], attention_res[1] | |
x = x + self.mlp(self.ln_2(x)) | |
return x, weight | |
class ResidualAttentionBlock_MOE(nn.Module): | |
def __init__(self, d_model: int, n_head: int, attn_mask: torch.Tensor = None): | |
super().__init__() | |
self.attn = nn.MultiheadAttention(d_model, n_head) | |
self.ln_1 = LayerNorm(d_model) | |
self.mlp = moe = MoE( | |
dim = 512, | |
num_experts = 16, # increase the experts (# parameters) of your model without increasing computation | |
hidden_dim = 512 * 4, # size of hidden dimension in each expert, defaults to 4 * dimension | |
activation = nn.LeakyReLU, # use your preferred activation, will default to GELU | |
second_policy_train = 'random', # in top_2 gating, policy for whether to use a second-place expert | |
second_policy_eval = 'random', # all (always) | none (never) | threshold (if gate value > the given threshold) | random (if gate value > threshold * random_uniform(0, 1)) | |
second_threshold_train = 0.2, | |
second_threshold_eval = 0.2, | |
capacity_factor_train = 1.25, # experts have fixed capacity per batch. we need some extra capacity in case gating is not perfectly balanced. | |
capacity_factor_eval = 2., # capacity_factor_* should be set to a value >=1 | |
loss_coef = 1e-2 # multiplier on the auxiliary expert balancing auxiliary loss | |
) | |
self.ln_2 = LayerNorm(d_model) | |
self.attn_mask = attn_mask | |
def attention(self, x: torch.Tensor): | |
self.attn_mask = self.attn_mask.to(dtype=x.dtype, device=x.device) if self.attn_mask is not None else None | |
return self.attn(x, x, x, need_weights=True, attn_mask=self.attn_mask) | |
def forward(self, x: torch.Tensor): | |
attention_res = self.attention(self.ln_1(x)) | |
x, weight = x+attention_res[0], attention_res[1] | |
x = x + self.mlp(self.ln_2(x)) | |
return x, weight | |
class ResidualAttentionBlock_old(nn.Module): | |
def __init__(self, d_model: int, n_head: int, attn_mask: torch.Tensor = None): | |
super().__init__() | |
self.attn = nn.MultiheadAttention(d_model, n_head) | |
self.ln_1 = LayerNorm(d_model) | |
self.mlp = nn.Sequential(OrderedDict([ | |
("c_fc", nn.Linear(d_model, d_model * 4)), | |
("gelu", QuickGELU()), | |
("c_proj", nn.Linear(d_model * 4, d_model)) | |
])) | |
self.ln_2 = LayerNorm(d_model) | |
self.attn_mask = attn_mask | |
def attention(self, x: torch.Tensor): | |
self.attn_mask = self.attn_mask.to(dtype=x.dtype, device=x.device) if self.attn_mask is not None else None | |
return self.attn(x, x, x, need_weights=False, attn_mask=self.attn_mask)[0] | |
def forward(self, x: torch.Tensor): | |
x = x + self.attention(self.ln_1(x)) | |
x = x + self.mlp(self.ln_2(x)) | |
return x | |
class Transformer(nn.Module): | |
def __init__(self, width: int, layers: int, heads: int, attn_mask: torch.Tensor = None): | |
super().__init__() | |
self.width = width | |
self.layers = layers | |
self.resblocks = nn.Sequential(*[ResidualAttentionBlock(width, heads, attn_mask) for _ in range(layers)]) | |
def forward(self, x: torch.Tensor): | |
weights = [] | |
r=0 | |
for block in self.resblocks: | |
#if r<=10: | |
# for param in block.parameters(): | |
# param.requires_grad = False | |
#if r%2==0: | |
x, weight = block(x) | |
weights.append(weight) | |
#print("r=",r) | |
#if r==5: | |
# break | |
#r = r + 1 | |
return x, weights | |
### OLD transformer without attetion | |
class Transformer_Ecnoder_clip(nn.Module): | |
def __init__(self, width: int, layers: int, heads: int, attn_mask: torch.Tensor = None): | |
super().__init__() | |
self.width = width | |
self.layers = layers | |
self.resblocks = nn.Sequential(*[ResidualAttentionBlock(width, heads, attn_mask) for _ in range(layers)]) | |
def forward(self, x: torch.Tensor): | |
return self.resblocks(x) | |
class VisualTransformer(nn.Module): | |
def __init__(self, input_resolution: int, patch_size: int, width: int, layers: int, heads: int, output_dim: int): | |
super().__init__() | |
self.input_resolution = input_resolution | |
self.output_dim = output_dim | |
self.conv1 = nn.Conv2d(in_channels=3, out_channels=width, kernel_size=patch_size, stride=patch_size, bias=False) | |
scale = width ** -0.5 | |
self.class_embedding = nn.Parameter(scale * torch.randn(width)) | |
self.positional_embedding = nn.Parameter(scale * torch.randn((input_resolution // patch_size) ** 2 + 1, width)) | |
self.ln_pre = LayerNorm(width) | |
self.transformer = Transformer(width, layers, heads) | |
self.ln_post = LayerNorm(width) | |
self.proj = nn.Parameter(scale * torch.randn(width, 512)) | |
def forward(self, x: torch.Tensor): | |
x = self.conv1(x) # shape = [*, width, grid, grid] | |
x = x.reshape(x.shape[0], x.shape[1], -1) # shape = [*, width, grid ** 2] | |
x = x.permute(0, 2, 1) # shape = [*, grid ** 2, width] | |
x = torch.cat([self.class_embedding.to(x.dtype) + torch.zeros(x.shape[0], 1, x.shape[-1], dtype=x.dtype, device=x.device), x], dim=1) # shape = [*, grid ** 2 + 1, width] | |
x = x + self.positional_embedding.to(x.dtype) | |
x = self.ln_pre(x) | |
x = x.permute(1, 0, 2) # NLD -> LND | |
x,weight = self.transformer(x) | |
x = x.permute(1, 0, 2) # LND -> NLD | |
#hide_feat=x | |
#x = self.ln_post(x[:, 0, :]) | |
#x=self.ln_post(x) | |
if self.proj is not None: | |
hide_feat=self.ln_post(x) @ self.proj | |
x = self.ln_post(x[:, 0, :]) @ self.proj | |
#print(hide_feat.shape) | |
return x,weight,hide_feat | |
class CLIP(nn.Module): | |
def __init__(self, | |
embed_dim: int, | |
# vision | |
image_resolution: int, | |
vision_layers: Union[Tuple[int, int, int, int], int], | |
vision_width: int, | |
vision_patch_size: int, | |
# text | |
context_length: int, | |
vocab_size: int, | |
transformer_width: int, | |
transformer_heads: int, | |
transformer_layers: int | |
): | |
super().__init__() | |
self.context_length = context_length | |
if isinstance(vision_layers, (tuple, list)): | |
vision_heads = vision_width * 32 // 64 | |
self.visual = ModifiedResNet( | |
layers=vision_layers, | |
output_dim=embed_dim, | |
heads=vision_heads, | |
input_resolution=image_resolution, | |
width=vision_width | |
) | |
else: | |
vision_heads = vision_width // 64 | |
self.visual = VisualTransformer( | |
input_resolution=image_resolution, | |
patch_size=vision_patch_size, | |
width=vision_width, | |
layers=vision_layers, | |
heads=vision_heads, | |
output_dim=embed_dim | |
) | |
self.transformer = Transformer( | |
width=transformer_width, | |
layers=transformer_layers, | |
heads=transformer_heads, | |
attn_mask=self.build_attention_mask() | |
) | |
self.vocab_size = vocab_size | |
self.token_embedding = nn.Embedding(vocab_size, transformer_width) | |
self.positional_embedding = nn.Parameter(torch.empty(self.context_length, transformer_width)) | |
self.ln_final = LayerNorm(transformer_width) | |
self.text_projection = nn.Parameter(torch.empty(transformer_width, embed_dim)) | |
self.logit_scale = nn.Parameter(torch.ones([])) | |
def build_attention_mask(self): | |
# lazily create causal attention mask, with full attention between the vision tokens | |
# pytorch uses additive attention mask; fill with -inf | |
mask = torch.empty(self.context_length, self.context_length) | |
mask.fill_(float("-inf")) | |
mask.triu_(1) # zero out the lower diagonal | |
return mask | |
def dtype(self): | |
return self.visual.conv1.weight.dtype | |
def encode_image(self, image): | |
return self.visual(image.type(self.dtype)) | |
def encode_text(self, text): | |
x = self.token_embedding(text).type(self.dtype) # [batch_size, n_ctx, d_model] | |
x = x + self.positional_embedding.type(self.dtype) | |
x = x.permute(1, 0, 2) # NLD -> LND | |
x,weight = self.transformer(x) | |
x = x.permute(1, 0, 2) # LND -> NLD | |
x = self.ln_final(x).type(self.dtype) | |
# x.shape = [batch_size, n_ctx, transformer.width] | |
# take features from the eot embedding (eot_token is the highest number in each sequence) | |
hide_feat=x | |
x = x[torch.arange(x.shape[0]), text.argmax(dim=-1)] @ self.text_projection | |
return x,weight,hide_feat | |
def forward(self, image, text): | |
image_features,weight_image,hide_image = self.encode_image(image) | |
text_features,weight_text,hide_text = self.encode_text(text) | |
# normalized features | |
image_features = image_features / image_features.norm(dim=-1, keepdim=True) | |
text_features = text_features / text_features.norm(dim=-1, keepdim=True) | |
# cosine similarity as logits | |
logit_scale = self.logit_scale.exp() | |
logits_per_iamge = logit_scale * image_features @ text_features.t() | |
logits_per_text = logit_scale * text_features @ image_features.t() | |
# shape = [global_batch_size, global_batch_size] | |
#return image_features, text_features logits_per_iamge, logits_per_text,hide_image,hide_text | |
return image_features, text_features,hide_image,hide_text | |
def convert_weights(model: nn.Module): | |
"""Convert applicable model parameters to fp16""" | |
def _convert_weights_to_fp16(l): | |
if isinstance(l, (nn.Conv1d, nn.Conv2d, nn.Linear)): | |
l.weight.data = l.weight.data.half() | |
if l.bias is not None: | |
l.bias.data = l.bias.data.half() | |
if isinstance(l, nn.MultiheadAttention): | |
for attr in [*[f"{s}_proj_weight" for s in ["in", "q", "k", "v"]], "in_proj_bias", "bias_k", "bias_v"]: | |
tensor = getattr(l, attr) | |
if tensor is not None: | |
tensor.data = tensor.data.half() | |
for name in ["text_projection", "proj"]: | |
if hasattr(l, name): | |
attr = getattr(l, name) | |
if attr is not None: | |
attr.data = attr.data.half() | |
model.apply(_convert_weights_to_fp16) | |
def build_model(state_dict: dict): | |
vit = "visual.proj" in state_dict | |
if vit: | |
vision_width = state_dict["visual.conv1.weight"].shape[0] | |
vision_layers = len([k for k in state_dict.keys() if k.startswith("visual.") and k.endswith(".attn.in_proj_weight")]) | |
vision_patch_size = state_dict["visual.conv1.weight"].shape[-1] | |
grid_size = round((state_dict["visual.positional_embedding"].shape[0] - 1) ** 0.5) | |
image_resolution = vision_patch_size * grid_size | |
else: | |
counts: list = [len(set(k.split(".")[2] for k in state_dict if k.startswith(f"visual.layer{b}"))) for b in [1, 2, 3, 4]] | |
vision_layers = tuple(counts) | |
vision_width = state_dict["visual.layer1.0.conv1.weight"].shape[0] | |
output_width = round((state_dict["visual.attnpool.positional_embedding"].shape[0] - 1) ** 0.5) | |
vision_patch_size = None | |
assert output_width ** 2 + 1 == state_dict["visual.attnpool.positional_embedding"].shape[0] | |
image_resolution = output_width * 32 | |
embed_dim = state_dict["text_projection"].shape[1] | |
context_length = state_dict["positional_embedding"].shape[0] | |
vocab_size = state_dict["token_embedding.weight"].shape[0] | |
transformer_width = state_dict["ln_final.weight"].shape[0] | |
transformer_heads = transformer_width // 64 | |
transformer_layers = len(set(k.split(".")[2] for k in state_dict if k.startswith(f"transformer.resblocks"))) | |
model = CLIP( | |
embed_dim, | |
image_resolution, vision_layers, vision_width, vision_patch_size, | |
context_length, vocab_size, transformer_width, transformer_heads, transformer_layers | |
) | |
for key in ["input_resolution", "context_length", "vocab_size"]: | |
del state_dict[key] | |
convert_weights(model) | |
model.load_state_dict(state_dict) | |
return model.eval() | |