ACFun免费破解版:触碰边界的诱惑与未知的风险

核心内容摘要

指尖与灵魂的深情博弈:触碰未知,绽放新生
阧阴:探索虚拟世界的无限可能与现实的深度连接

17.c.13.nom—17.c起草视角

Pytorch实现Vision Transformerimporttorchimporttorch.nnasnnclassPatchEmbedding(nn.Module):def__init__(self,img_size224,patch_size16,in_channels3,embed_dim

:super().__init__()self.img_sizeimg_size self.patch_sizepatch_size self.n_patches(img_size//patch_size)**2# 使用卷积层实现patch分割和嵌入self.projnn.Conv2d(in_channelsin_channels,out_channelsembed_dim,kernel_sizepatch_size,stridepatch_size)defforward(self,x):# 输入x形状: [batch_size, in_channels, img_size, img_size]# 输出形状: [batch_size, n_patches, embed_dim]xself.proj(x)# [batch_size, embed_dim, n_patches^

5, n_patches^

5]xx.flatten(

# [batch_size, embed_dim, n_patches]xx.transpose(1,

# [batch_size, n_patches, embed_dim]returnxclassPositionEmbedding(nn.Module):def__init__(self,n_patches,embed_dim,dropout

0.

:super().__init__()self.pos_embednn.Parameter(torch.zeros(1,n_patches1,embed_dim))# 1 for class tokenself.dropoutnn.Dropout(dropout)defforward(self,x):# x形状: [batch_size, n_patches1, embed_dim]xxself.pos_embed# 添加位置编码xself.dropout(x)returnxclassMultiHeadAttention(nn.Module):def__init__(self,embed_dim,num_heads,dropout

0.

:super().__init__()self.embed_dimembed_dim self.num_headsnum_heads self.head_dimembed_dim//num_headsassertself.head_dim*num_headsembed_dim,Embedding dimension must be divisible by number of headsself.qkvnn.Linear(embed_dim,embed_dim*

# 同时计算Q,K,Vself.attn_dropoutnn.Dropout(dropout)self.projnn.Linear(embed_dim,embed_dim)self.proj_dropoutnn.Dropout(dropout)self.scaleself.head_dim**-

5defforward(self,x):batch_size,n_patches,embed_dimx.shape# 计算Q,K,V [batch_size, n_patches, num_heads, head_dim]qkvself.qkv(x).reshape(batch_size,n_patches,3,self.num_heads,self.head_dim).permute(2,0,3,1,

q,k,vqkv[0],qkv[1],qkv[2]# 计算注意力分数 [batch_size, num_heads, n_patches, n_patches]attn(q k.transpose(-2,-

)*self.scale attnattn.softmax(dim-

attnself.attn_dropout(attn)# 应用注意力权重到V上 [batch_size, num_heads, n_patches, head_dim]outattn v outout.transpose(1,

.reshape(batch_size,n_patches,embed_dim)# 线性投影和dropoutoutself.proj(out)outself.proj_dropout(out)returnoutclassMLP(nn.Module):def__init__(self,in_features,hidden_features,out_features,dropout

0.

:super().__init__()self.fc1nn.Linear(in_features,hidden_features)self.actnn.GELU()self.fc2nn.Linear(hidden_features,out_features)self.dropoutnn.Dropout(dropout)defforward(self,x):xself.fc1(x)xself.act(x)xself.dropout(x)xself.fc2(x)xself.dropout(x)returnxclassTransformerBlock(nn.Module):def__init__(self,embed_dim,num_heads,mlp_ratio4,dropout

0.

:super().__init__()self.norm1nn.LayerNorm(embed_dim)self.attnMultiHeadAttention(embed_dim,num_heads,dropout)self.norm2nn.LayerNorm(embed_dim)self.mlpMLP(in_featuresembed_dim,hidden_featuresembed_dim*mlp_ratio,out_featuresembed_dim,dropoutdropout)defforward(self,x):# 残差连接和层归一化xxself.attn(self.norm1(x))xxself.mlp(self.norm2(x))returnxclassVisionTransformer(nn.Module):def__init__(self,img_size224,patch_size16,in_channels3,n_classes1000,embed_dim768,depth12,num_heads12,mlp_ratio4,dropout

0.

:super().__init__()self.patch_embedPatchEmbedding(img_size,patch_size,in_channels,embed_dim)n_patchesself.patch_embed.n_patches# 分类token和位置编码self.cls_tokennn.Parameter(torch.zeros(1,1,embed_dim))self.pos_embedPositionEmbedding(n_patches,embed_dim,dropout)# Transformer编码器self.blocksnn.Sequential(*[TransformerBlock(embed_dim,num_heads,mlp_ratio,dropout)for_inrange(depth)])# 分类头self.normnn.LayerNorm(embed_dim)self.headnn.Linear(embed_dim,n_classes)# 初始化权重nn.init.trunc_normal_(self.cls_token,std

0.

defforward(self,x):batch_sizex.shape[0]# 生成patch嵌入xself.patch_embed(x)# [batch_size, n_patches, embed_dim]# 添加class tokencls_tokenself.cls_token.expand(batch_size,-1,-

xtorch.cat([cls_token,x],dim

# [batch_size, n_patches1, embed_dim]# 添加位置编码xself.pos_embed(x)# 通过Transformer编码器xself.blocks(x)# 分类xself.norm(x)cls_token_finalx[:,0]# 只取class token对应的输出xself.head(cls_token_final)returnxif__name____main__:xtorch.rand(1,3,224,

modelVisionTransformer(img_size224,patch_size16,)ymodel(x)print(y.shape ,y.shape)print(y)参考资料博客B站教程

天美mv星空大象mv免费高清蘑菇-天美mv星空大象mv免费高清蘑菇应用

百度百家号客服电话人工服务

123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123 123