Instructions to use Continuous-Rivals-Discrete/langflow-lm1b with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- Transformers
How to use Continuous-Rivals-Discrete/langflow-lm1b with Transformers:
# Use a pipeline as a high-level helper from transformers import pipeline pipe = pipeline("text-generation", model="Continuous-Rivals-Discrete/langflow-lm1b", trust_remote_code=True)# Load model directly from transformers import AutoModelForMaskedLM model = AutoModelForMaskedLM.from_pretrained("Continuous-Rivals-Discrete/langflow-lm1b", trust_remote_code=True, dtype="auto") - Notebooks
- Google Colab
- Kaggle
- Local Apps
- vLLM
How to use Continuous-Rivals-Discrete/langflow-lm1b with vLLM:
Install from pip and serve model
# Install vLLM from pip: pip install vllm # Start the vLLM server: vllm serve "Continuous-Rivals-Discrete/langflow-lm1b" # Call the server using curl (OpenAI-compatible API): curl -X POST "http://localhost:8000/v1/completions" \ -H "Content-Type: application/json" \ --data '{ "model": "Continuous-Rivals-Discrete/langflow-lm1b", "prompt": "Once upon a time,", "max_tokens": 512, "temperature": 0.5 }'Use Docker
docker model run hf.co/Continuous-Rivals-Discrete/langflow-lm1b
- SGLang
How to use Continuous-Rivals-Discrete/langflow-lm1b with SGLang:
Install from pip and serve model
# Install SGLang from pip: pip install sglang # Start the SGLang server: python3 -m sglang.launch_server \ --model-path "Continuous-Rivals-Discrete/langflow-lm1b" \ --host 0.0.0.0 \ --port 30000 # Call the server using curl (OpenAI-compatible API): curl -X POST "http://localhost:30000/v1/completions" \ -H "Content-Type: application/json" \ --data '{ "model": "Continuous-Rivals-Discrete/langflow-lm1b", "prompt": "Once upon a time,", "max_tokens": 512, "temperature": 0.5 }'Use Docker images
docker run --gpus all \ --shm-size 32g \ -p 30000:30000 \ -v ~/.cache/huggingface:/root/.cache/huggingface \ --env "HF_TOKEN=<secret>" \ --ipc=host \ lmsysorg/sglang:latest \ python3 -m sglang.launch_server \ --model-path "Continuous-Rivals-Discrete/langflow-lm1b" \ --host 0.0.0.0 \ --port 30000 # Call the server using curl (OpenAI-compatible API): curl -X POST "http://localhost:30000/v1/completions" \ -H "Content-Type: application/json" \ --data '{ "model": "Continuous-Rivals-Discrete/langflow-lm1b", "prompt": "Once upon a time,", "max_tokens": 512, "temperature": 0.5 }' - Docker Model Runner
How to use Continuous-Rivals-Discrete/langflow-lm1b with Docker Model Runner:
docker model run hf.co/Continuous-Rivals-Discrete/langflow-lm1b
| """HuggingFace model implementation for LangFlow. | |
| LangFlow is a continuous diffusion language model that operates in embedding space. | |
| """ | |
| import math | |
| import typing | |
| import einops | |
| import torch | |
| import torch.nn as nn | |
| import torch.nn.functional as F | |
| import transformers | |
| from .config import LangFlowConfig | |
| # 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 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 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 x * (1 + scale) + shift | |
| class Rotary(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) | |
| 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) | |
| self.cos_cached[:, :, 2, :, :].fill_(1.) | |
| self.sin_cached[:, :, 2, :, :].fill_(0.) | |
| return self.cos_cached, self.sin_cached | |
| def _apply_rotary_emb(x, cos, sin): | |
| # x: [batch, seqlen, nheads, headdim] | |
| # cos, sin: [seqlen, headdim//2] | |
| ro_dim = cos.shape[-1] * 2 | |
| # Expand to [1, seqlen, 1, ro_dim] for broadcasting | |
| cos = torch.cat([cos, cos], dim=-1)[None, :, None, :] | |
| sin = torch.cat([sin, sin], dim=-1)[None, :, None, :] | |
| x_rot = x[..., :ro_dim] | |
| x1, x2 = x_rot.chunk(2, dim=-1) | |
| x_rotated = torch.cat([-x2, x1], dim=-1) | |
| return torch.cat([x_rot * cos + x_rotated * sin, x[..., ro_dim:]], dim=-1) | |
| def split_and_apply_rotary_pos_emb(qkv, rotary_cos_sin): | |
| with torch.autocast(device_type='cuda', enabled=False): | |
| cos, sin = rotary_cos_sin | |
| cos = cos.to(qkv.dtype) | |
| sin = sin.to(qkv.dtype) | |
| cos = cos[0, :, 0, 0, :cos.shape[-1]//2] | |
| sin = sin[0, :, 0, 0, :sin.shape[-1]//2] | |
| q, k, v = qkv.chunk(3, dim=2) | |
| q = _apply_rotary_emb(q.squeeze(dim=2), cos, sin) | |
| k = _apply_rotary_emb(k.squeeze(dim=2), cos, sin) | |
| v = v.squeeze(dim=2) | |
| return q, k, v | |
| def regular_attention_multi_headed(q, k, v): | |
| attention_output = F.scaled_dot_product_attention( | |
| query=q.transpose(1, 2), | |
| key=k.transpose(1, 2), | |
| value=v.transpose(1, 2), | |
| attn_mask=None, | |
| dropout_p=0.0, | |
| is_causal=False) | |
| attention_output = attention_output.transpose(1, 2) | |
| return einops.rearrange(attention_output, 'b s h d -> b s (h d)') | |
| 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.autocast(device_type='cuda', enabled=False): | |
| x = F.layer_norm(x.float(), [self.dim]) | |
| return x * self.weight[None, None, :] | |
| 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): | |
| half = dim // 2 | |
| freqs = torch.exp( | |
| -math.log(max_period) | |
| * torch.arange(start=0, end=half, dtype=torch.float32, device=t.device) | |
| / half) | |
| 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 DDiTBlock(nn.Module): | |
| def __init__(self, dim, n_heads, cond_dim, mlp_ratio=4, dropout=0.1): | |
| super().__init__() | |
| self.n_heads = n_heads | |
| self.norm1 = LayerNorm(dim) | |
| self.attn_qkv = nn.Linear(dim, 3 * dim, bias=False) | |
| self.attn_out = nn.Linear(dim, dim, bias=False) | |
| 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.dropout = dropout | |
| self.adaLN_modulation = nn.Linear(cond_dim, 6 * dim) | |
| 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 forward(self, x, rotary_cos_sin, c): | |
| bias_dropout_scale_fn = self._get_bias_dropout_scale() | |
| x_skip = x | |
| x = self.norm1(x) | |
| (shift_msa, scale_msa, gate_msa, shift_mlp, | |
| scale_mlp, gate_mlp) = self.adaLN_modulation(c)[:, None].chunk(6, dim=2) | |
| x = modulate_fused(x, shift_msa, scale_msa) | |
| qkv = einops.rearrange( | |
| self.attn_qkv(x), | |
| 'b s (three h d) -> b s three h d', | |
| three=3, | |
| h=self.n_heads) | |
| q, k, v = split_and_apply_rotary_pos_emb(qkv, rotary_cos_sin) | |
| x = regular_attention_multi_headed(q, k, v) | |
| 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) | |
| return x | |
| def _normalize_embedding_layernorm(weight: torch.Tensor) -> torch.Tensor: | |
| """Normalize embedding weights to unit norm per row, then scale by sqrt(dim).""" | |
| normalized = F.normalize(weight.float(), dim=-1) | |
| return (normalized * math.sqrt(weight.shape[-1])).to(weight.dtype) | |
| class EmbeddingLayer(nn.Module): | |
| """Embedding layer with optional layernorm normalization.""" | |
| def __init__(self, dim, vocab_dim, use_normalized_embedding=True): | |
| super().__init__() | |
| self.dim = dim | |
| self.vocab_dim = vocab_dim | |
| self.use_normalized_embedding = use_normalized_embedding | |
| self.embedding = nn.Parameter(torch.empty((vocab_dim, dim))) | |
| nn.init.kaiming_uniform_(self.embedding, a=math.sqrt(5)) | |
| def _get_embedding(self): | |
| if self.use_normalized_embedding: | |
| return _normalize_embedding_layernorm(self.embedding) | |
| return self.embedding | |
| def forward(self, x): | |
| embedding = self._get_embedding() | |
| if x.ndim == 2: | |
| return embedding[x] | |
| assert x.ndim == 3 # probabilities | |
| return torch.einsum("blv,ve->ble", x.float(), embedding.float()).to(x.dtype) | |
| class DDiTFinalLayer(nn.Module): | |
| def __init__(self, hidden_size, out_channels, cond_dim): | |
| 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_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): | |
| x = self.norm_final(x) | |
| shift, scale = self.adaLN_modulation(c)[:, None].chunk(2, dim=2) | |
| x = modulate_fused(x, shift, scale) | |
| x = self.linear(x) | |
| return x | |
| class GumbelProposal(nn.Module): | |
| """Learnable Gumbel distribution proposal for sampling gamma (log-SNR).""" | |
| def __init__(self, loc: float = 4.723, scale: float = 0.852, | |
| cutoff: float = 1e-5, entropy: float = 7.02): | |
| super().__init__() | |
| self.loc = nn.Parameter(torch.tensor(loc)) | |
| self.scale = nn.Parameter(torch.tensor(scale)) | |
| self.cutoff = cutoff | |
| self.entropy = nn.Parameter(torch.tensor(entropy)) | |
| def _get_distribution(self) -> torch.distributions.Gumbel: | |
| return torch.distributions.Gumbel(self.loc, self.scale) | |
| def gamma_min(self) -> float: | |
| return float(self.loc - math.log(-math.log(self.cutoff)) * self.scale) | |
| def gamma_max(self) -> float: | |
| return float(self.loc - math.log(self.cutoff) * self.scale) | |
| def forward(self, q: torch.Tensor) -> torch.Tensor: | |
| """Convert uniform samples to gamma values via inverse CDF.""" | |
| gamma = self._get_distribution().icdf(q) | |
| return gamma.clamp(min=self.gamma_min, max=self.gamma_max) | |
| def log_pdf(self, gamma: torch.Tensor) -> torch.Tensor: | |
| """Compute log probability density at gamma.""" | |
| return self._get_distribution().log_prob(gamma) | |
| class LangFlowBackbone(nn.Module): | |
| """DiT backbone for LangFlow.""" | |
| def __init__(self, config: LangFlowConfig): | |
| super().__init__() | |
| self.config = config | |
| dim = config.hidden_size | |
| cond_dim = config.cond_dim | |
| self.vocab_embed = EmbeddingLayer( | |
| dim, config.vocab_size, | |
| use_normalized_embedding=config.use_normalized_embedding) | |
| self.sigma_map = TimestepEmbedder(cond_dim) | |
| self.rotary_emb = Rotary(dim // config.n_heads) | |
| self.blocks = nn.ModuleList([ | |
| DDiTBlock(dim=dim, n_heads=config.n_heads, cond_dim=cond_dim, dropout=config.dropout) | |
| for _ in range(config.n_blocks) | |
| ]) | |
| self.output_layer = DDiTFinalLayer( | |
| hidden_size=dim, out_channels=config.vocab_size, cond_dim=cond_dim) | |
| # Self-conditioning projection | |
| if config.self_conditioning: | |
| self.self_cond_proj = nn.Linear(dim * 2, dim, bias=False) | |
| nn.init.zeros_(self.self_cond_proj.weight) | |
| def forward(self, x_embed, sigma, x_self_cond=None, output_hidden_states=False): | |
| """Forward pass from embeddings. | |
| Args: | |
| x_embed: [B, L, D] - Input embeddings (possibly noisy) | |
| sigma: [B] - Gamma values (log-SNR) | |
| x_self_cond: [B, L, D] - Self-conditioning embeddings (optional) | |
| output_hidden_states: Whether to return all hidden states | |
| Returns: | |
| logits: [B, L, vocab_size] | |
| hidden_states: List of hidden states if output_hidden_states=True | |
| """ | |
| all_hidden_states = [] | |
| x = x_embed | |
| if output_hidden_states: | |
| all_hidden_states.append(x) | |
| # Self-conditioning | |
| if self.config.self_conditioning: | |
| if x_self_cond is None: | |
| x_self_cond = torch.zeros_like(x) | |
| x = x + self.self_cond_proj(torch.cat([x, x_self_cond], dim=-1)) | |
| t_cond = F.silu(self.sigma_map(sigma)) | |
| rotary_cos_sin = self.rotary_emb(x) | |
| with torch.autocast(device_type='cuda', dtype=torch.bfloat16): | |
| for block in self.blocks: | |
| x = block(x, rotary_cos_sin, c=t_cond) | |
| if output_hidden_states: | |
| all_hidden_states.append(x) | |
| x = self.output_layer(x, c=t_cond) | |
| return x, all_hidden_states | |
| class LangFlow(transformers.PreTrainedModel): | |
| """HuggingFace-compatible LangFlow model. | |
| LangFlow is a continuous diffusion language model that operates in embedding space. | |
| It uses a DiT (Diffusion Transformer) backbone with: | |
| - Self-conditioning: uses previous predictions as additional input | |
| - Bias (preconditioning): skip connection for improved generation | |
| - Normalized embeddings: layernorm on embedding vectors | |
| - Learnable Gumbel proposal for gamma (log-SNR) sampling | |
| """ | |
| config_class = LangFlowConfig | |
| base_model_prefix = "langflow" | |
| def __init__(self, config: LangFlowConfig): | |
| super().__init__(config) | |
| self.config = config | |
| self.backbone = LangFlowBackbone(config) | |
| self.proposal = GumbelProposal( | |
| loc=config.gumbel_loc, | |
| scale=config.gumbel_scale, | |
| cutoff=config.gumbel_cutoff, | |
| entropy=config.gumbel_entropy) | |
| def _get_embedding_matrix(self) -> torch.Tensor: | |
| """Get the embedding matrix for bias skip connection.""" | |
| return self.backbone.vocab_embed._get_embedding() | |
| def _embed_tokens(self, x: torch.Tensor) -> torch.Tensor: | |
| """Embed tokens or probabilities to continuous embeddings.""" | |
| return self.backbone.vocab_embed(x) | |
| def _forward_diffusion(self, x_embed: torch.Tensor, | |
| gamma: torch.Tensor) -> torch.Tensor: | |
| """Add noise to embeddings (forward diffusion process).""" | |
| gamma = gamma.float() | |
| alpha = torch.sigmoid(-gamma).sqrt()[:, None, None] | |
| sigma = torch.sigmoid(gamma).sqrt()[:, None, None] | |
| noise = torch.randn_like(x_embed) | |
| return (x_embed * alpha + noise * sigma).to(x_embed.dtype) | |
| def _euler_edm_step(self, z: torch.Tensor, x_pred: torch.Tensor, | |
| t: torch.Tensor, s: torch.Tensor) -> torch.Tensor: | |
| """Single Euler step for EDM sampling.""" | |
| t_ = t.double() | |
| s_ = s.double() | |
| cur = z.double() * ((F.softplus(t_) - F.softplus(s_)) / 2).exp() | |
| end = torch.sigmoid(-s_).sqrt() * x_pred.double() | |
| z = end.lerp(cur, ((s_ - t_) / 2).exp()).to(z.dtype) | |
| return z | |
| def forward( | |
| self, | |
| input_ids: typing.Optional[torch.LongTensor] = None, | |
| noisy_embeds: typing.Optional[torch.FloatTensor] = None, | |
| timesteps: typing.Optional[torch.FloatTensor] = None, | |
| x_self_cond: typing.Optional[torch.FloatTensor] = None, | |
| output_hidden_states: typing.Optional[bool] = None, | |
| return_dict: typing.Optional[bool] = None, | |
| ) -> typing.Union[torch.Tensor, typing.Tuple, transformers.modeling_outputs.MaskedLMOutput]: | |
| """Forward pass for LangFlow. | |
| Args: | |
| input_ids: [B, L] - Token IDs (will be embedded and noised if timesteps provided) | |
| noisy_embeds: [B, L, D] - Pre-noised embeddings (alternative to input_ids) | |
| timesteps: [B] - Gamma values (log-SNR) for conditioning | |
| x_self_cond: [B, L, D] - Self-conditioning embeddings | |
| output_hidden_states: Whether to return hidden states | |
| return_dict: Whether to return MaskedLMOutput | |
| Returns: | |
| logits or MaskedLMOutput | |
| """ | |
| output_hidden_states = output_hidden_states if output_hidden_states is not None else False | |
| return_dict = return_dict if return_dict is not None else self.config.use_return_dict | |
| # Get embeddings | |
| if noisy_embeds is not None: | |
| z = noisy_embeds | |
| elif input_ids is not None: | |
| x_embed = self._embed_tokens(input_ids) | |
| if timesteps is not None: | |
| z = self._forward_diffusion(x_embed, timesteps) | |
| else: | |
| z = x_embed | |
| else: | |
| raise ValueError("Either input_ids or noisy_embeds must be provided") | |
| if timesteps is None: | |
| # Use minimum gamma for clean input | |
| timesteps = torch.full((z.shape[0],), self.proposal.gamma_min, device=z.device) | |
| # Process sigma | |
| sigma = timesteps | |
| if sigma.ndim == 2: | |
| sigma = sigma.mean(-1) | |
| # Get model output | |
| logits, all_hidden_states = self.backbone( | |
| z, sigma, x_self_cond=x_self_cond, output_hidden_states=output_hidden_states) | |
| # Add bias (preconditioning) skip connection | |
| if self.config.use_bias: | |
| c_skip = ((F.softplus(-sigma) - sigma) / 2).exp() | |
| embedding = self._get_embedding_matrix() | |
| skip_logits = torch.matmul(z.float(), embedding.t().float()) | |
| logits = logits + c_skip[:, None, None] * skip_logits.to(logits.dtype) | |
| if return_dict: | |
| return transformers.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 | |
| def generate_samples( | |
| self, | |
| num_samples: int = 1, | |
| seq_length: typing.Optional[int] = None, | |
| num_steps: int = 128, | |
| device: typing.Optional[torch.device] = None, | |
| ) -> torch.LongTensor: | |
| """Generate samples using Euler-EDM solver. | |
| Args: | |
| num_samples: Number of samples to generate | |
| seq_length: Sequence length (defaults to config.model_length) | |
| num_steps: Number of denoising steps | |
| device: Device to generate on | |
| Returns: | |
| samples: [num_samples, seq_length] - Generated token IDs | |
| """ | |
| if seq_length is None: | |
| seq_length = self.config.model_length | |
| if device is None: | |
| device = next(self.parameters()).device | |
| embed_dim = self.config.hidden_size | |
| eps = 1e-5 | |
| # Initialize with Gaussian noise | |
| z = torch.randn(num_samples, seq_length, embed_dim, device=device) | |
| # Create gamma schedule from t=1-eps to t=eps | |
| t = torch.linspace(1.0 - eps, eps, num_steps, device=device) | |
| gamma = self.proposal(t) | |
| # Self-conditioning state | |
| x_self_cond = None | |
| # Euler-EDM sampling loop | |
| for i in range(len(gamma) - 1): | |
| gamma_t = gamma[i] | |
| gamma_s = gamma[i + 1] | |
| # Get model prediction | |
| gamma_expanded = gamma_t.unsqueeze(0).expand(num_samples) | |
| logits = self.forward( | |
| noisy_embeds=z, | |
| timesteps=gamma_expanded, | |
| x_self_cond=x_self_cond, | |
| return_dict=False) | |
| # Convert logits to embedding prediction | |
| probs = F.softmax(logits.float(), dim=-1) | |
| x_pred = self._embed_tokens(probs) | |
| # Update self-conditioning | |
| if self.config.self_conditioning: | |
| x_self_cond = x_pred | |
| # Euler step | |
| z = self._euler_edm_step(z, x_pred, gamma_t, gamma_s) | |
| # Final step: get logits and take argmax | |
| gamma_final = gamma[-1] | |
| gamma_expanded = gamma_final.unsqueeze(0).expand(num_samples) | |
| logits = self.forward( | |
| noisy_embeds=z, | |
| timesteps=gamma_expanded, | |
| x_self_cond=x_self_cond, | |
| return_dict=False) | |
| samples = logits.argmax(dim=-1) | |
| return samples |