Instructions to use monsoon-nlp/dna-blockdiff-2 with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- Transformers
How to use monsoon-nlp/dna-blockdiff-2 with Transformers:
# Use a pipeline as a high-level helper from transformers import pipeline pipe = pipeline("fill-mask", model="monsoon-nlp/dna-blockdiff-2", trust_remote_code=True)# Load model directly from transformers import AutoModelForMaskedLM model = AutoModelForMaskedLM.from_pretrained("monsoon-nlp/dna-blockdiff-2", trust_remote_code=True, dtype="auto") - Notebooks
- Google Colab
- Kaggle
| """BD3LM model for Hugging Face. | |
| """ | |
| import math | |
| import typing | |
| import einops | |
| from functools import partial | |
| import torch | |
| import torch.nn as nn | |
| import torch.nn.functional as F | |
| import transformers | |
| from transformers import modeling_outputs | |
| try: | |
| from torch.nn.attention.flex_attention import flex_attention, create_block_mask | |
| FLEX_ATTN_AVAILABLE = True | |
| except: | |
| FLEX_ATTN_AVAILABLE = False | |
| from .configuration_bd3lm import BD3LMConfig | |
| # Flags required to enable jit fusion kernels | |
| torch._C._jit_set_profiling_mode(False) | |
| torch._C._jit_set_profiling_executor(False) | |
| torch._C._jit_override_can_fuse_on_cpu(True) | |
| torch._C._jit_override_can_fuse_on_gpu(True) | |
| def block_diff_mask(b, h, q_idx, kv_idx, block_size=None, n=None): | |
| """ | |
| Constructs the specialized block diffusion attention mask for training | |
| composed of three masks: | |
| - **Block Diagonal Mask (M_BD)**: Self-attention within noised blocks | |
| - **Offset Block Causal Mask (M_OBC)**: Cross-attention for conditional context | |
| - **Block Causal Mask (M_BC)**: Attention to update x0 | |
| Args: | |
| b, h: Batch and head indices (ignored for mask logic). | |
| q_idx, kv_idx: Query and Key indices. | |
| seq_len: Total sequence length. | |
| block_size: Defines the block structure. | |
| Returns: | |
| A boolean attention mask. | |
| """ | |
| # Indicate whether token belongs to xt or x0 | |
| x0_flag_q = (q_idx >= n) | |
| x0_flag_kv = (kv_idx >= n) | |
| # Compute block indices | |
| block_q = torch.where(x0_flag_q == 1, | |
| (q_idx - n) // block_size, | |
| q_idx // block_size) | |
| block_kv = torch.where(x0_flag_kv == 1, | |
| (kv_idx - n) // block_size, | |
| kv_idx // block_size) | |
| # **1. Block Diagonal Mask (M_BD) ** | |
| block_diagonal = (block_q == block_kv) & (x0_flag_q == x0_flag_kv) | |
| # **2. Offset Block-Causal Mask (M_OBC) ** | |
| offset_block_causal = ( | |
| (block_q > block_kv) | |
| & (x0_flag_kv == 1) | |
| & (x0_flag_q == 0) | |
| ) | |
| # **3. Block-Causal Mask (M_BC) ** | |
| block_causal = (block_q >= block_kv) & (x0_flag_kv == 1) & (x0_flag_q == 1) | |
| # **4. Combine Masks ** | |
| return block_diagonal | offset_block_causal | block_causal | |
| def fused_flex_attention(q, k, v, mask=None): | |
| return flex_attention(q, k, v, block_mask=mask) | |
| def bias_dropout_add_scale( | |
| x: torch.Tensor, | |
| bias: typing.Optional[torch.Tensor], | |
| scale: torch.Tensor, | |
| residual: typing.Optional[torch.Tensor], | |
| prob: float, | |
| training: bool) -> torch.Tensor: | |
| if bias is not None: | |
| out = scale * F.dropout(x + bias, p=prob, training=training) | |
| else: | |
| out = scale * F.dropout(x, p=prob, training=training) | |
| if residual is not None: | |
| out = residual + out | |
| return out | |
| def get_bias_dropout_add_scale(training): | |
| def _bias_dropout_add(x, bias, scale, residual, prob): | |
| return bias_dropout_add_scale( | |
| x, bias, scale, residual, prob, training) | |
| return _bias_dropout_add | |
| # function overload | |
| def modulate(x: torch.Tensor, | |
| shift: torch.Tensor, | |
| scale: torch.Tensor) -> torch.Tensor: | |
| return x * (1 + scale) + shift | |
| def bias_dropout_add_scale_fused_train( | |
| x: torch.Tensor, | |
| bias: typing.Optional[torch.Tensor], | |
| scale: torch.Tensor, | |
| residual: typing.Optional[torch.Tensor], | |
| prob: float) -> torch.Tensor: | |
| return bias_dropout_add_scale( | |
| x, bias, scale, residual, prob, True) | |
| def bias_dropout_add_scale_fused_inference( | |
| x: torch.Tensor, | |
| bias: typing.Optional[torch.Tensor], | |
| scale: torch.Tensor, | |
| residual: typing.Optional[torch.Tensor], | |
| prob: float) -> torch.Tensor: | |
| return bias_dropout_add_scale( | |
| x, bias, scale, residual, prob, False) | |
| def modulate_fused(x: torch.Tensor, | |
| shift: torch.Tensor, | |
| scale: torch.Tensor) -> torch.Tensor: | |
| return modulate(x, shift, scale) | |
| class Rotary(torch.nn.Module): | |
| def __init__(self, dim, base=10_000): | |
| super().__init__() | |
| inv_freq = 1.0 / (base ** (torch.arange(0, dim, 2).float() / dim)) | |
| self.register_buffer('inv_freq', inv_freq) | |
| self.seq_len_cached = None | |
| self.cos_cached = None | |
| self.sin_cached = None | |
| def forward(self, x, seq_dim=1): | |
| seq_len = x.shape[seq_dim] | |
| if seq_len != self.seq_len_cached: | |
| self.seq_len_cached = seq_len | |
| t = torch.arange(x.shape[seq_dim], device=x.device).type_as(self.inv_freq) | |
| freqs = torch.einsum("i,j->ij", t, self.inv_freq.clone()) | |
| emb = torch.cat((freqs, freqs), dim=-1).to(x.device) | |
| # dims are: batch, seq_len, qkv, head, dim | |
| self.cos_cached = emb.cos()[None, :, None, None, :].repeat(1,1,3,1,1) | |
| self.sin_cached = emb.sin()[None, :, None, None, :].repeat(1,1,3,1,1) | |
| # This makes the transformation on v an identity. | |
| self.cos_cached[:,:,2,:,:].fill_(1.) | |
| self.sin_cached[:,:,2,:,:].fill_(0.) | |
| return self.cos_cached, self.sin_cached | |
| def rotate_half(x): | |
| x1, x2 = x[..., : x.shape[-1] // 2], x[..., x.shape[-1] // 2 :] | |
| return torch.cat((-x2, x1), dim=-1) | |
| def apply_rotary_pos_emb_torchscript(qkv, cos, sin): | |
| return (qkv * cos) + (rotate_half(qkv) * sin) | |
| # function overload | |
| def modulate(x, shift, scale): | |
| return x * (1 + scale.unsqueeze(1)) + shift.unsqueeze(1) | |
| ################################################################################# | |
| # Layers # | |
| ################################################################################# | |
| class LayerNorm(nn.Module): | |
| def __init__(self, dim): | |
| super().__init__() | |
| self.weight = nn.Parameter(torch.ones([dim])) | |
| self.dim = dim | |
| def forward(self, x): | |
| with torch.cuda.amp.autocast(enabled=False): | |
| x = F.layer_norm(x.float(), [self.dim]) | |
| return x * self.weight[None,None,:] | |
| def residual_linear(x, W, x_skip, residual_scale): | |
| """x_skip + residual_scale * W @ x""" | |
| dim_out, dim_in = W.shape[0], W.shape[1] | |
| return torch.addmm( | |
| x_skip.view(-1, dim_out), | |
| x.view(-1, dim_in), | |
| W.T, | |
| alpha=residual_scale).view(*x.shape[:-1], dim_out) | |
| ################################################################################# | |
| # Embedding Layers for Timesteps and Class Labels # | |
| ################################################################################# | |
| class TimestepEmbedder(nn.Module): | |
| """ | |
| Embeds scalar timesteps into vector representations. | |
| """ | |
| def __init__(self, hidden_size, frequency_embedding_size=256): | |
| super().__init__() | |
| self.mlp = nn.Sequential( | |
| nn.Linear(frequency_embedding_size, hidden_size, bias=True), | |
| nn.SiLU(), | |
| nn.Linear(hidden_size, hidden_size, bias=True)) | |
| self.frequency_embedding_size = frequency_embedding_size | |
| def timestep_embedding(t, dim, max_period=10000): | |
| """ | |
| Create sinusoidal timestep embeddings. | |
| :param t: a 1-D Tensor of N indices, one per batch element. | |
| These may be fractional. | |
| :param dim: the dimension of the output. | |
| :param max_period: controls the minimum frequency of the embeddings. | |
| :return: an (N, D) Tensor of positional embeddings. | |
| """ | |
| # https://github.com/openai/glide-text2im/blob/main/glide_text2im/nn.py | |
| half = dim // 2 | |
| freqs = torch.exp( | |
| - math.log(max_period) | |
| * torch.arange(start=0, end=half, dtype=torch.float32) | |
| / half).to(device=t.device) | |
| args = t[:, None].float() * freqs[None] | |
| embedding = torch.cat([torch.cos(args), torch.sin(args)], dim=-1) | |
| if dim % 2: | |
| embedding = torch.cat( | |
| [embedding, | |
| torch.zeros_like(embedding[:, :1])], dim=-1) | |
| return embedding | |
| def forward(self, t): | |
| t_freq = self.timestep_embedding(t, self.frequency_embedding_size) | |
| t_emb = self.mlp(t_freq) | |
| return t_emb | |
| class LabelEmbedder(nn.Module): | |
| """Embeds class labels into vector representations. | |
| Also handles label dropout for classifier-free guidance. | |
| """ | |
| def __init__(self, num_classes, cond_size): | |
| super().__init__() | |
| self.embedding_table = nn.Embedding(num_classes + 1, cond_size) | |
| self.num_classes = num_classes | |
| # TODO think of initializing with 0.02 std deviation like in original DiT paper | |
| def forward(self, labels): | |
| embeddings = self.embedding_table(labels) | |
| return embeddings | |
| ################################################################################# | |
| # Core Model # | |
| ################################################################################# | |
| def regular_attention_multi_headed(qkv): | |
| # Assuming qkv is a tensor with shape [batch, seq_len, 3, num_heads, head_dim] | |
| # where the 3 represents Q, K, V packed in that order | |
| batch_size, seq_len, _, num_heads, head_dim = qkv.shape | |
| # Separate Q, K, V from the packed qkv tensor | |
| # [batch_size, seq_len, num_heads, head_dim] | |
| q = qkv[:, :, 0, :, :] | |
| k = qkv[:, :, 1, :, :] | |
| v = qkv[:, :, 2, :, :] | |
| # Transpose and reshape Q and K for batched matrix multiplication: | |
| # [batch_size, num_heads, seq_len, head_dim] | |
| q = q.transpose(1, 2) | |
| k = k.transpose(1, 2) | |
| v = v.transpose(1, 2) | |
| # Compute scaled dot-product attention | |
| # [batch_size, num_heads, seq_len, seq_len] | |
| attention_scores = torch.matmul( | |
| q, k.transpose(-2, -1)) / math.sqrt(head_dim) | |
| # Apply softmax to calculate the attention weights | |
| attention_probs = F.softmax(attention_scores, dim=-1) | |
| # [batch_size, num_heads, seq_len, head_dim] | |
| attention_output = torch.matmul(attention_probs, v) | |
| # [batch_size, seq_len, num_heads, head_dim] | |
| attention_output = attention_output.transpose(1, 2) | |
| return einops.rearrange(attention_output, | |
| 'b s h d -> b s (h d)') | |
| class DDiTBlock(nn.Module): | |
| def __init__(self, n, block_size, dim, n_heads, cond_dim, causal=False, | |
| mlp_ratio=4, dropout=0.1, adaln=True, attn_backend='sdpa'): | |
| super().__init__() | |
| self.n = n | |
| self.block_size = block_size | |
| self.n_heads = n_heads | |
| self.attn_backend = attn_backend | |
| self.kv_cache = None | |
| self.causal = causal | |
| self.norm1 = LayerNorm(dim) | |
| self.attn_qkv = nn.Linear(dim, 3 * dim, bias=False) | |
| self.attn_out = nn.Linear(dim, dim, bias=False) | |
| self.dropout1 = nn.Dropout(dropout) | |
| self.norm2 = LayerNorm(dim) | |
| self.mlp = nn.Sequential( | |
| nn.Linear(dim, mlp_ratio * dim, bias=True), | |
| nn.GELU(approximate='tanh'), | |
| nn.Linear(mlp_ratio * dim, dim, bias=True)) | |
| self.dropout2 = nn.Dropout(dropout) | |
| self.dropout = dropout | |
| self.adaln = adaln | |
| if self.adaln: | |
| self.adaLN_modulation = nn.Linear(cond_dim, 6 * dim, bias=True) | |
| self.adaLN_modulation.weight.data.zero_() | |
| self.adaLN_modulation.bias.data.zero_() | |
| def _get_bias_dropout_scale(self): | |
| if self.training: | |
| return bias_dropout_add_scale_fused_train | |
| else: | |
| return bias_dropout_add_scale_fused_inference | |
| def get_qkv(self, x, rotary_cos_sin, store_kv=False): | |
| # compute qkv (potentially use cache) | |
| if self.kv_cache is not None: | |
| new_qkv = self.attn_qkv(x[:, -self.block_size:]) | |
| qkv = torch.cat((self.kv_cache, new_qkv), dim=1) | |
| else: | |
| qkv = self.attn_qkv(x) | |
| # store kv cache in a sliding window (can't exceed context len) | |
| if store_kv: | |
| self.kv_cache = qkv[:, -(self.n-self.block_size):] | |
| qkv = einops.rearrange( | |
| qkv, | |
| 'b s (three h d) -> b s three h d', | |
| three=3, | |
| h=self.n_heads) | |
| with torch.cuda.amp.autocast(enabled=False): | |
| cos, sin = rotary_cos_sin | |
| qkv = apply_rotary_pos_emb_torchscript( | |
| qkv, cos.to(qkv.dtype), sin.to(qkv.dtype)) | |
| return qkv | |
| def cross_attn(self, x, qkv, mask=None): | |
| scale = qkv.shape[-1] | |
| qkv = qkv.transpose(1, 3) | |
| mask = mask.bool() if mask is not None else None | |
| x = F.scaled_dot_product_attention( | |
| query=qkv[:, :, 0], | |
| key=qkv[:, :, 1], | |
| value=qkv[:, :, 2], | |
| attn_mask=mask, | |
| is_causal=self.causal, | |
| scale=1 / math.sqrt(scale)) | |
| x = x.transpose(1, 2) | |
| x = einops.rearrange(x, 'b s h d -> b s (h d)') | |
| return x | |
| def cross_attn_flex(self, qkv, mask=None): | |
| qkv = einops.rearrange(qkv, 'b s three h d -> b h three s d', h=self.n_heads) | |
| x = fused_flex_attention( | |
| qkv[:, :, 0], qkv[:, :, 1], qkv[:, :, 2], mask=mask) | |
| x = einops.rearrange(x, 'b h s d -> b s (h d)') | |
| return x | |
| def forward(self, x, rotary_cos_sin, c, mask=None, | |
| sample_mode=False, store_kv=False): | |
| bias_dropout_scale_fn = self._get_bias_dropout_scale() | |
| if self.adaln: | |
| (shift_msa, scale_msa, gate_msa, shift_mlp, | |
| scale_mlp, gate_mlp) = self.adaLN_modulation(c)[:, None].chunk(6, dim=2) | |
| # attention operation | |
| x_skip = x | |
| if self.adaln: | |
| x = modulate_fused(self.norm1(x), shift_msa, scale_msa) | |
| else: | |
| x = self.norm1(x) | |
| # get qkvs | |
| if mask is not None and not sample_mode: | |
| n = mask.shape[-1] // 2 | |
| qkv_x = self.get_qkv(x[:,:n], rotary_cos_sin) | |
| qkv_x0 = self.get_qkv(x[:,n:], rotary_cos_sin) | |
| qkv = torch.cat((qkv_x, qkv_x0), dim=1) | |
| else: | |
| qkv = self.get_qkv(x, rotary_cos_sin, store_kv=store_kv) | |
| if self.attn_backend == 'flex' and FLEX_ATTN_AVAILABLE: | |
| x = self.cross_attn_flex(qkv, mask=mask) | |
| elif self.attn_backend == 'sdpa' or not FLEX_ATTN_AVAILABLE: | |
| x = self.cross_attn(x, qkv, mask=mask) | |
| else: | |
| raise ValueError('Unknown attention backend') | |
| # mlp operation | |
| if self.adaln: | |
| x = bias_dropout_scale_fn(self.attn_out(x), | |
| None, | |
| gate_msa, | |
| x_skip, | |
| self.dropout) | |
| x = bias_dropout_scale_fn( | |
| self.mlp(modulate_fused( | |
| self.norm2(x), shift_mlp, scale_mlp)), | |
| None, gate_mlp, x, self.dropout) | |
| else: | |
| x = bias_dropout_scale_fn(self.attn_out(x), | |
| None, torch.ones_like(x), x_skip, self.dropout) | |
| x = bias_dropout_scale_fn( | |
| self.mlp(self.norm2(x)), | |
| None, torch.ones_like(x), x, self.dropout) | |
| return x | |
| class EmbeddingLayer(nn.Module): | |
| def __init__(self, dim, vocab_dim): | |
| super().__init__() | |
| self.embedding = nn.Parameter(torch.empty((vocab_dim, dim))) | |
| torch.nn.init.kaiming_uniform_(self.embedding, a=math.sqrt(5)) | |
| def forward(self, x): | |
| return self.embedding[x] | |
| class DDitFinalLayer(nn.Module): | |
| def __init__(self, hidden_size, out_channels, cond_dim, adaln=True): | |
| super().__init__() | |
| self.norm_final = LayerNorm(hidden_size) | |
| self.linear = nn.Linear(hidden_size, out_channels) | |
| self.linear.weight.data.zero_() | |
| self.linear.bias.data.zero_() | |
| self.adaln = adaln | |
| if self.adaln: | |
| self.adaLN_modulation = nn.Linear(cond_dim, | |
| 2 * hidden_size, | |
| bias=True) | |
| self.adaLN_modulation.weight.data.zero_() | |
| self.adaLN_modulation.bias.data.zero_() | |
| def forward(self, x, c): | |
| if self.adaln: | |
| shift, scale = self.adaLN_modulation(c)[:, None].chunk(2, dim=2) | |
| x = modulate_fused(self.norm_final(x), shift, scale) | |
| else: | |
| x = self.norm_final(x) | |
| x = self.linear(x) | |
| return x | |
| class DITBackbone(nn.Module): | |
| def __init__( | |
| self, | |
| config: BD3LMConfig): | |
| super().__init__() | |
| self.config = config | |
| self.cross_attn = config.cross_attn | |
| self.block_size = config.block_size | |
| self.vocab_size = config.vocab_size | |
| self.n = config.model_length | |
| self.vocab_embed = EmbeddingLayer( | |
| config.hidden_dim, | |
| config.vocab_size) | |
| self.adaln = config.adaln | |
| if self.adaln: | |
| self.sigma_map = TimestepEmbedder( | |
| config.cond_dim) | |
| self.rotary_emb = Rotary( | |
| config.hidden_dim // config.n_heads) | |
| blocks = [] | |
| for _ in range(config.n_blocks): | |
| blocks.append(DDiTBlock(self.n, | |
| self.block_size, | |
| config.hidden_dim, | |
| config.n_heads, | |
| config.cond_dim, | |
| causal=config.causal, | |
| dropout=config.dropout, | |
| adaln=config.adaln, | |
| attn_backend=config.attn_backend,)) | |
| self.blocks = nn.ModuleList(blocks) | |
| self.output_layer = DDitFinalLayer( | |
| config.hidden_dim, | |
| config.vocab_size, | |
| config.cond_dim, | |
| adaln=config.adaln) | |
| if self.cross_attn: | |
| self.gen_mask(config.model_length, self.block_size, attn_backend=config.attn_backend) | |
| self.precision = torch.float32 | |
| def _get_bias_dropout_scale(self): | |
| if self.training: | |
| return bias_dropout_add_scale_fused_train | |
| else: | |
| return bias_dropout_add_scale_fused_inference | |
| def gen_mask(self, seqlen, block_size, attn_backend='sdpa'): | |
| """Genererates attention mask""" | |
| if attn_backend == 'flex' and FLEX_ATTN_AVAILABLE: | |
| self.mask = create_block_mask( | |
| partial(block_diff_mask, block_size=block_size, n=seqlen), | |
| B=None, H=None, Q_LEN=seqlen*2, KV_LEN=seqlen*2) | |
| elif attn_backend == 'sdpa' or not FLEX_ATTN_AVAILABLE: | |
| self.mask = block_diff_mask( | |
| b=None, h=None, q_idx=torch.arange(seqlen*2)[:, None], | |
| kv_idx=torch.arange(seqlen*2)[None, :], block_size=block_size, n=seqlen) | |
| else: | |
| raise ValueError('Unknown attention backend') | |
| def forward(self, indices, sigma, sample_mode=False, | |
| store_kv=False, output_hidden_states=False): | |
| if not self.config.time_conditioning and self.adaln: | |
| sigma = torch.zeros_like(sigma) | |
| all_hidden_states = [] | |
| x = self.vocab_embed(indices) | |
| if output_hidden_states: | |
| all_hidden_states.append(x) | |
| c = None | |
| if self.adaln: | |
| c = F.silu(self.sigma_map(sigma)) | |
| if self.cross_attn: | |
| n = self.mask.shape[-1] // 2 | |
| rotary_cos_sin = self.rotary_emb(x[:, :n]) | |
| mask = self.mask.to(x.device) | |
| # use block-causal mask only during sampling | |
| if sample_mode: | |
| mask = mask[ | |
| n:n+x.shape[1], n:n+x.shape[1]] | |
| else: | |
| mask = None | |
| rotary_cos_sin = self.rotary_emb(x) | |
| with torch.cuda.amp.autocast(dtype=self.precision): | |
| for i in range(len(self.blocks)): | |
| x = self.blocks[i](x, | |
| rotary_cos_sin, | |
| c, | |
| mask=mask, | |
| sample_mode=sample_mode, | |
| store_kv=store_kv) | |
| if output_hidden_states: | |
| all_hidden_states.append(x) | |
| logits = self.output_layer(x, c) | |
| if self.cross_attn and not sample_mode: | |
| logits = logits[:, :n] | |
| all_hidden_states = [hidden_states[:, :n] for hidden_states in all_hidden_states] | |
| return logits, all_hidden_states | |
| class BD3LM(transformers.PreTrainedModel): | |
| """HF-compatible model.""" | |
| config_class = BD3LMConfig | |
| base_model_prefix = "bd3lm" | |
| def __init__( | |
| self, | |
| config: BD3LMConfig): | |
| super().__init__(config) | |
| self.config = config | |
| self.backbone = DITBackbone(config) | |
| if config.var_min: | |
| self.register_buffer( | |
| 'sampling_eps_min', | |
| torch.tensor(config.sampling_eps_min)) | |
| self.register_buffer( | |
| 'sampling_eps_max', | |
| torch.tensor(config.sampling_eps_max)) | |
| def reset_kv_cache(self): | |
| for block in self.backbone.blocks: | |
| block.kv_cache = None | |
| def forward( | |
| self, | |
| input_ids: torch.LongTensor = None, | |
| timesteps: torch.FloatTensor = None, | |
| sample_mode: typing.Optional[bool] = None, | |
| store_kv: typing.Optional[bool] = None, | |
| output_hidden_states: typing.Optional[bool] = None, | |
| return_dict: typing.Optional[bool] = None, | |
| ) -> typing.Union[ | |
| torch.Tensor, typing.Tuple, | |
| modeling_outputs.MaskedLMOutput]: | |
| """HF-compatible forward method.""" | |
| if sample_mode: | |
| assert self.config.attn_backend == 'sdpa', 'Sampling only supported with SDPA' | |
| output_hidden_states = ( | |
| output_hidden_states | |
| if output_hidden_states is not None | |
| else self.config.output_hidden_states | |
| ) | |
| return_dict = return_dict \ | |
| if return_dict is not None \ | |
| else self.config.use_return_dict | |
| logits, all_hidden_states = self.backbone( | |
| indices=input_ids, | |
| sigma=timesteps, | |
| sample_mode=sample_mode, | |
| store_kv=store_kv, | |
| output_hidden_states=output_hidden_states, | |
| ) | |
| if return_dict: | |
| return modeling_outputs.MaskedLMOutput( | |
| logits=logits, | |
| hidden_states=all_hidden_states if output_hidden_states else None, | |
| loss=None | |
| ) | |
| elif output_hidden_states: | |
| return logits, all_hidden_states | |
| else: | |
| return logits |