| """ |
| Time-RCD Model for HuggingFace Integration |
| |
| This file contains a simplified Time_RCD model that: |
| 1. Inherits directly from PreTrainedModel (no extra layers) |
| 2. Matches your original Time_RCD implementation exactly |
| 3. Can load from your local checkpoint |
| 4. Provides HuggingFace compatibility |
| |
| The structure is: |
| Time_RCD -> PreTrainedModel (single inheritance, clean & simple) |
| """ |
|
|
| import torch |
| import torch.nn as nn |
| import torch.nn.functional as F |
| import numpy as np |
| import os |
| import math |
| from typing import Optional, Tuple, Union, Dict, Any |
| from dataclasses import dataclass |
|
|
| |
| try: |
| from einops import rearrange |
| HAS_EINOPS = True |
| except ImportError: |
| HAS_EINOPS = False |
| def rearrange(tensor, pattern): |
| |
| if pattern == "two num_heads -> two num_heads 1 1": |
| return tensor.unsqueeze(-1).unsqueeze(-1) |
| else: |
| raise NotImplementedError(f"Pattern {pattern} not implemented in fallback") |
|
|
| from transformers import PreTrainedModel |
| from transformers.modeling_outputs import ModelOutput |
| from transformers.utils import logging |
|
|
| from .configuration_time_rcd import TimeRCDConfig |
|
|
| logger = logging.get_logger(__name__) |
|
|
|
|
| @dataclass |
| class TimeRCDOutput(ModelOutput): |
| """ |
| Output for Time_RCD model. |
| |
| Args: |
| anomaly_scores (`torch.FloatTensor` of shape `(batch_size, sequence_length)`): |
| Anomaly scores for each time step. |
| anomaly_logits (`torch.FloatTensor` of shape `(batch_size, sequence_length, 2)`): |
| Raw logits for anomaly classification. |
| reconstruction (`torch.FloatTensor` of shape `(batch_size, sequence_length, num_features)`): |
| Reconstructed time series. |
| embeddings (`torch.FloatTensor` of shape `(batch_size, sequence_length, num_features, d_proj)`): |
| Time series embeddings from the encoder. |
| """ |
| anomaly_scores: Optional[torch.FloatTensor] = None |
| anomaly_logits: Optional[torch.FloatTensor] = None |
| reconstruction: Optional[torch.FloatTensor] = None |
| embeddings: Optional[torch.FloatTensor] = None |
|
|
| class Time_RCD(PreTrainedModel): |
| """ |
| Time-RCD Model for Time Series Anomaly Detection |
| |
| This is the main model class that directly inherits from PreTrainedModel. |
| It matches your original Time_RCD implementation structure exactly: |
| - TimeSeriesEncoder for encoding |
| - reconstruction_head for reconstruction |
| - anomaly_head for anomaly detection |
| |
| No extra inheritance layers - clean and simple! |
| """ |
| |
| config_class = TimeRCDConfig |
| base_model_prefix = "time_rcd" |
| supports_gradient_checkpointing = True |
|
|
| def __init__(self, config: TimeRCDConfig): |
| super().__init__(config) |
| self.config = config |
|
|
| |
| self.ts_encoder = TimeSeriesEncoder( |
| d_model=config.d_model, |
| d_proj=config.d_proj, |
| patch_size=config.patch_size, |
| num_layers=config.num_layers, |
| num_heads=config.num_heads, |
| d_ff_dropout=config.d_ff_dropout, |
| use_rope=config.use_rope, |
| num_features=config.num_features, |
| activation=config.activation |
| ) |
|
|
| |
| self.reconstruction_head = nn.Sequential( |
| nn.Linear(config.d_proj, config.d_proj * 4), |
| nn.GELU(), |
| nn.Dropout(config.dropout), |
| nn.Linear(config.d_proj * 4, config.d_proj * 4), |
| nn.GELU(), |
| nn.Dropout(config.dropout), |
| nn.Linear(config.d_proj * 4, 1) |
| ) |
|
|
| |
| self.anomaly_head = nn.Sequential( |
| nn.Linear(config.d_proj, config.d_proj // 2), |
| nn.GELU(), |
| nn.Dropout(config.dropout), |
| nn.Linear(config.d_proj // 2, 2) |
| ) |
|
|
| |
| self.post_init() |
|
|
| def _init_weights(self, module): |
| """Initialize the weights (standard HuggingFace pattern)""" |
| if isinstance(module, nn.Linear): |
| module.weight.data.normal_(mean=0.0, std=self.config.initializer_range if hasattr(self.config, 'initializer_range') else 0.02) |
| if module.bias is not None: |
| module.bias.data.zero_() |
| elif isinstance(module, nn.LayerNorm): |
| module.bias.data.zero_() |
| module.weight.data.fill_(1.0) |
|
|
| def forward( |
| self, |
| time_series: torch.Tensor, |
| attention_mask: Optional[torch.Tensor] = None, |
| return_dict: Optional[bool] = None, |
| ) -> Union[Tuple, TimeRCDOutput]: |
| """ |
| Forward pass through Time_RCD model |
| |
| Args: |
| time_series (`torch.FloatTensor` of shape `(batch_size, sequence_length, num_features)`): |
| Input time series data. |
| attention_mask (`torch.Tensor` of shape `(batch_size, sequence_length)`, *optional*): |
| Mask to avoid performing attention on padding token indices. |
| return_dict (`bool`, *optional*): |
| Whether to return a ModelOutput instead of a plain tuple. |
| """ |
| return_dict = return_dict if return_dict is not None else self.config.use_return_dict |
|
|
| batch_size, seq_len, num_features = time_series.shape |
|
|
| |
| time_series = (time_series - time_series.mean(dim=1, keepdim=True)) / (time_series.std(dim=1, keepdim=True) + 1e-8) |
|
|
| |
| embeddings = self.ts_encoder(time_series, attention_mask) |
|
|
| |
| reconstruction = self.reconstruction_head(embeddings) |
| reconstruction = reconstruction.squeeze(-1) |
|
|
| |
| anomaly_logits = self.anomaly_head(embeddings) |
| anomaly_logits = torch.mean(anomaly_logits, dim=-2) |
| anomaly_scores = F.softmax(anomaly_logits, dim=-1)[..., 1] |
|
|
| if not return_dict: |
| return (anomaly_scores, anomaly_logits, reconstruction, embeddings) |
|
|
| return TimeRCDOutput( |
| anomaly_scores=anomaly_scores, |
| anomaly_logits=anomaly_logits, |
| reconstruction=reconstruction, |
| embeddings=embeddings |
| ) |
|
|
| def zero_shot(self, data: np.ndarray, batch_size: int = 64, win_size: int = 5000) -> tuple: |
| """ |
| Zero-shot inference method matching AnomalyCLIP structure. |
| |
| The model handles normalization internally, so no external processor needed! |
| This method only handles windowing for long sequences. |
| |
| Args: |
| data: Input time series data of shape (n_samples, n_features) or (n_samples,) |
| batch_size: Batch size for processing |
| win_size: Window size for processing (only used if data > win_size) |
| |
| Returns: |
| tuple: (scores, logits) where: |
| - scores: list of anomaly score arrays per batch |
| - logits: list of anomaly logit arrays per batch |
| """ |
| import tqdm |
| from torch.utils.data import DataLoader, TensorDataset |
| |
| self.eval() |
| device = next(self.parameters()).device |
| |
| |
| data = np.asarray(data) |
| if data.ndim == 1: |
| data = data.reshape(-1, 1) |
| |
| |
| if len(data) <= win_size: |
| win_size = len(data) |
| |
| |
| windows = [] |
| masks = [] |
| |
| if len(data) > win_size: |
| |
| for i in range(0, len(data), win_size): |
| window = data[i:i + win_size] |
| if len(window) < win_size: |
| |
| padded = np.zeros((win_size, data.shape[1])) |
| padded[:len(window)] = window |
| window = padded |
| mask = np.zeros(win_size, dtype=bool) |
| mask[:len(window)] = True |
| else: |
| mask = np.ones(win_size, dtype=bool) |
| windows.append(window) |
| masks.append(mask) |
| else: |
| |
| windows.append(data) |
| masks.append(np.ones(len(data), dtype=bool)) |
| |
| |
| time_series_windows = torch.tensor(np.array(windows), dtype=torch.float32) |
| attention_masks = torch.tensor(np.array(masks), dtype=torch.bool) |
| |
| |
| dataset = TensorDataset(time_series_windows, attention_masks) |
| dataloader = DataLoader(dataset, batch_size=batch_size, shuffle=False) |
| |
| loop = tqdm.tqdm(enumerate(dataloader), total=len(dataloader), leave=True) |
| scores = [] |
| logits = [] |
| |
| with torch.no_grad(): |
| for i, (batch_ts, batch_mask) in loop: |
| batch_ts = batch_ts.to(device) |
| batch_mask = batch_mask.to(device) |
| |
| |
| outputs = self( |
| time_series=batch_ts, |
| attention_mask=batch_mask, |
| return_dict=True |
| ) |
| |
| |
| anomaly_probs = outputs.anomaly_scores.cpu().numpy() |
| anomaly_logits = outputs.anomaly_logits |
| logit_diff = anomaly_logits[..., 1] - anomaly_logits[..., 0] |
| |
| scores.append(anomaly_probs) |
| logits.append(logit_diff.cpu().numpy()) |
| |
| return scores, logits |
|
|
| @classmethod |
| def from_original_checkpoint(cls, checkpoint_path: str, config: Optional[TimeRCDConfig] = None): |
| """ |
| Load model from your original checkpoint format |
| |
| Args: |
| checkpoint_path: Path to your .pth checkpoint file |
| config: Model configuration (optional - will auto-detect from checkpoint if not provided) |
| |
| Returns: |
| Loaded Time_RCD model |
| """ |
| print(f"Loading Time_RCD from checkpoint: {checkpoint_path}") |
| |
| |
| if not os.path.exists(checkpoint_path): |
| raise FileNotFoundError(f"Checkpoint not found: {checkpoint_path}") |
| |
| checkpoint = torch.load(checkpoint_path, map_location='cpu') |
| print(f"Checkpoint keys: {list(checkpoint.keys())}") |
| |
| |
| if config is None: |
| print("📋 Auto-detecting config from checkpoint...") |
| if 'config' in checkpoint: |
| ckpt_config = checkpoint['config'] |
| ts_config = ckpt_config.get('ts_config', {}) |
| |
| config = TimeRCDConfig( |
| d_model=ts_config.get('d_model', 512), |
| d_proj=ts_config.get('d_proj', 256), |
| patch_size=ts_config.get('patch_size', 4), |
| num_layers=ts_config.get('num_layers', 8), |
| num_heads=ts_config.get('num_heads', 8), |
| d_ff_dropout=ts_config.get('d_ff_dropout', 0.1), |
| use_rope=ts_config.get('use_rope', True), |
| activation=ts_config.get('activation', 'gelu'), |
| num_features=ts_config.get('num_features', 1), |
| max_seq_len=ckpt_config.get('max_seq_len', 512), |
| win_size=ckpt_config.get('win_size', 5000), |
| batch_size=ckpt_config.get('batch_size', 64), |
| dropout=0.1 |
| ) |
| print(f"✅ Auto-detected config: patch_size={config.patch_size}, d_model={config.d_model}, d_proj={config.d_proj}") |
| else: |
| print("⚠️ No config found in checkpoint, using defaults") |
| config = TimeRCDConfig() |
| |
| |
| model = cls(config) |
| |
| checkpoint = torch.load(checkpoint_path, map_location='cpu') |
| print(f"Checkpoint keys: {list(checkpoint.keys())}") |
| |
| |
| if 'model_state_dict' in checkpoint: |
| state_dict = checkpoint['model_state_dict'] |
| elif 'state_dict' in checkpoint: |
| state_dict = checkpoint['state_dict'] |
| else: |
| state_dict = checkpoint |
| |
| |
| new_state_dict = {} |
| for key, value in state_dict.items(): |
| if key.startswith('module.'): |
| new_key = key[7:] |
| else: |
| new_key = key |
| new_state_dict[new_key] = value |
| |
| |
| try: |
| model.load_state_dict(new_state_dict, strict=False) |
| print("✅ Successfully loaded checkpoint with flexible matching") |
| except Exception as e: |
| print(f"⚠️ Error loading state dict: {e}") |
| print("Available checkpoint keys:", list(new_state_dict.keys())[:10]) |
| print("Model keys:", list(model.state_dict().keys())[:10]) |
| |
| return model |
|
|
| def save_pretrained(self, save_directory: str, **kwargs): |
| """ |
| Save the model in HuggingFace format |
| |
| This allows you to use .from_pretrained() later |
| """ |
| super().save_pretrained(save_directory, **kwargs) |
| print(f"✅ Model saved to {save_directory}") |
| print("You can now load it with:") |
| print(f"model = Time_RCD.from_pretrained('{save_directory}')") |
|
|
|
|
|
|
| class TimeSeriesEncoder(nn.Module): |
| """ |
| Time Series Encoder with PatchTST-like patching, RoPE. |
| |
| Args: |
| d_model (int): Model dimension |
| d_proj (int): Projection dimension |
| patch_size (int): Size of each patch |
| num_layers (int): Number of encoder layers |
| num_heads (int): Number of attention heads |
| d_ff_dropout (float): Dropout rate |
| max_total_tokens (int): Maximum sequence length |
| use_rope (bool): Use RoPE if True |
| num_features (int): Number of features in the time series |
| activation (str): "relu" or "gelu" |
| |
| Inputs: |
| time_series (Tensor): Shape (batch_size, seq_len, num_features) |
| mask (Tensor): Shape (batch_size, seq_len) |
| |
| Outputs: |
| local_embeddings (Tensor): Shape (batch_size, seq_len, num_features, d_proj) |
| """ |
|
|
| def __init__(self, d_model=2048, d_proj=512, patch_size=32, num_layers=6, num_heads=8, |
| d_ff_dropout=0.1, max_total_tokens=8192, use_rope=True, num_features=1, |
| activation="relu"): |
| super().__init__() |
| self.patch_size = patch_size |
| self.d_model = d_model |
| self.d_proj = d_proj |
| self.num_layers = num_layers |
| self.num_heads = num_heads |
| self.d_ff_dropout = d_ff_dropout |
| self.max_total_tokens = max_total_tokens |
| self.use_rope = use_rope |
| self.num_features = num_features |
| self.activation = activation |
|
|
| |
| self.embedding_layer = nn.Linear(patch_size, d_model) |
|
|
| if use_rope: |
| |
| self.rope_embedder = RotaryEmbedding(d_model) |
| self.transformer_encoder = CustomTransformerEncoder( |
| d_model=d_model, |
| nhead=num_heads, |
| dim_feedforward=d_model * 4, |
| dropout=d_ff_dropout, |
| activation=activation, |
| num_layers=num_layers, |
| num_features=num_features |
| ) |
| else: |
| |
| encoder_layer = nn.TransformerEncoderLayer( |
| d_model=d_model, |
| nhead=num_heads, |
| dim_feedforward=d_model * 4, |
| dropout=d_ff_dropout, |
| batch_first=True, |
| activation=activation |
| ) |
| self.transformer_encoder = nn.TransformerEncoder(encoder_layer, num_layers) |
|
|
| |
| self.projection_layer = nn.Linear(d_model, patch_size * d_proj) |
| self._init_parameters() |
|
|
| def _init_parameters(self): |
| for name, param in self.named_parameters(): |
| if 'weight' in name and 'linear' in name: |
| if self.activation == "relu": |
| nn.init.kaiming_uniform_(param, nonlinearity='relu') |
| elif self.activation == "gelu": |
| nn.init.kaiming_uniform_(param, nonlinearity='gelu') |
| elif 'bias' in name: |
| nn.init.constant_(param, 0.0) |
|
|
| def forward(self, time_series, mask=None): |
| """Forward pass to generate local embeddings.""" |
| if time_series.dim() == 2: |
| time_series = time_series.unsqueeze(-1) |
| device = time_series.device |
| B, seq_len, num_features = time_series.size() |
| assert num_features == self.num_features, f"Number of features mismatch with data: {num_features} vs param: {self.num_features}" |
| |
| |
| if mask is None: |
| mask = torch.ones(B, seq_len, dtype=torch.bool, device=device) |
| |
| assert mask.size() == (B, seq_len), f"Mask shape mismatch: expected ({B}, {seq_len}), got {mask.size()}" |
|
|
| |
| padded_length = math.ceil(seq_len / self.patch_size) * self.patch_size |
| if padded_length > seq_len: |
| pad_amount = padded_length - seq_len |
| time_series = F.pad(time_series, (0, 0, 0, pad_amount), value=0) |
| mask = F.pad(mask, (0, pad_amount), value=0) |
|
|
| |
| num_patches = padded_length // self.patch_size |
| total_length = num_patches * num_features |
| patches = time_series.view(B, num_patches, self.patch_size, num_features) |
| patches = patches.permute(0, 3, 1, 2).contiguous() |
| patches = patches.view(B, num_features * num_patches, self.patch_size) |
| |
| feature_id = torch.arange(num_features, device=device).repeat_interleave( |
| num_patches) |
| feature_id = feature_id.unsqueeze(0).expand(B, -1) |
|
|
| |
| embedded_patches = self.embedding_layer(patches) |
|
|
| |
| mask = mask.view(B, num_patches, self.patch_size) |
| patch_mask = mask.sum(dim=-1) > 0 |
| full_mask = patch_mask.unsqueeze(1).expand(-1, num_features, -1) |
| full_mask = full_mask.reshape(B, num_features * num_patches) |
|
|
| |
| if self.use_rope: |
| freqs = self.rope_embedder(total_length).to(device) |
| else: |
| freqs = None |
|
|
| |
| if num_features > 1: |
| output = self.transformer_encoder( |
| embedded_patches, |
| freqs=freqs, |
| src_id=feature_id, |
| attn_mask=full_mask |
| ) |
| else: |
| output = self.transformer_encoder( |
| embedded_patches, |
| freqs=freqs, |
| attn_mask=full_mask |
| ) |
|
|
| |
| patch_embeddings = output |
| patch_proj = self.projection_layer(patch_embeddings) |
| local_embeddings = patch_proj.view(B, num_features, num_patches, self.patch_size, self.d_proj) |
| local_embeddings = local_embeddings.permute(0, 2, 3, 1, 4) |
| local_embeddings = local_embeddings.view(B, -1, num_features, self.d_proj)[:, :seq_len, :, |
| :] |
|
|
| return local_embeddings |
|
|
|
|
| class CustomTransformerEncoder(nn.Module): |
| """Stack of Transformer Encoder Layers.""" |
|
|
| def __init__(self, d_model, nhead, dim_feedforward, dropout, activation, num_layers, num_features): |
| super().__init__() |
| self.layers = nn.ModuleList([ |
| TransformerEncoderLayerWithRoPE( |
| d_model=d_model, |
| nhead=nhead, |
| dim_feedforward=dim_feedforward, |
| dropout=dropout, |
| activation=activation, |
| num_features=num_features |
| ) for _ in range(num_layers) |
| ]) |
|
|
| def forward(self, src, freqs, src_id=None, attn_mask=None): |
| output = src |
| for layer in self.layers: |
| output = layer(output, freqs, src_id, attn_mask=attn_mask) |
| return output |
|
|
|
|
| class TransformerEncoderLayerWithRoPE(nn.Module): |
| """Transformer Encoder Layer with RoPE and RMSNorm.""" |
|
|
| def __init__(self, d_model, nhead, dim_feedforward=2048, dropout=0.1, activation="relu", num_features=1): |
| super().__init__() |
| self.self_attn = MultiheadAttentionWithRoPE(d_model, nhead, num_features) |
| self.dropout = nn.Dropout(dropout) |
| self.input_norm = RMSNorm(d_model) |
| self.output_norm = RMSNorm(d_model) |
| self.mlp = LlamaMLP(d_model, dim_feedforward) |
| self.dropout1 = nn.Dropout(dropout) |
| self.dropout2 = nn.Dropout(dropout) |
| self.activation = F.relu if activation == "relu" else F.gelu |
|
|
| def forward(self, src, freqs, src_id=None, attn_mask=None): |
| residual = src |
| src = self.input_norm(src) |
| src = self.self_attn(src, src, src, freqs, src_id, src_id, attn_mask=attn_mask) |
| src = src + residual |
| residual = src |
| src = self.output_norm(src) |
| src = self.mlp(src) |
| src = residual + self.dropout2(src) |
| return src |
|
|
|
|
| class RMSNorm(nn.Module): |
| """Root Mean Square Normalization layer.""" |
|
|
| def __init__(self, size: int, dim: int = -1, eps: float = 1e-5) -> None: |
| super().__init__() |
| self.scale = nn.Parameter(torch.ones(size)) |
| self.eps = eps |
| self.dim = dim |
|
|
| def forward(self, x: torch.Tensor) -> torch.Tensor: |
| norm_x = x.to(torch.float32).pow(2).mean(dim=self.dim, keepdim=True) |
| x_normed = x * torch.rsqrt(norm_x + self.eps) |
| return (self.scale * x_normed).type_as(x) |
|
|
|
|
| class RotaryEmbedding(nn.Module): |
| """Rotary Positional Embedding for injecting positional information.""" |
|
|
| def __init__(self, dim): |
| super().__init__() |
| inv_freq = 1.0 / (10000 ** (torch.arange(0, dim, 2).float() / dim)) |
| self.register_buffer("inv_freq", inv_freq) |
|
|
| def forward(self, seq_len): |
| t = torch.arange(seq_len, device=self.inv_freq.device).type_as(self.inv_freq) |
| freqs = torch.einsum("i,j->ij", t, self.inv_freq) |
| return freqs |
|
|
|
|
| class BinaryAttentionBias(nn.Module): |
| """Binary Variate Attention for time series data.""" |
|
|
| def __init__(self, |
| num_heads: int): |
| super().__init__() |
| self.num_heads = num_heads |
| self.emd = nn.Embedding(2, num_heads) |
|
|
| def forward(self, |
| query_id: torch.Tensor, |
| kv_id: torch.Tensor, |
| ) -> torch.Tensor: |
| ind = torch.eq(query_id.unsqueeze(-1), kv_id.unsqueeze(-2)) |
| ind = ind.unsqueeze(1) |
| weight = rearrange(self.emd.weight, "two num_heads -> two num_heads 1 1") |
| bias = ~ind * weight[:1] + ind * weight[1:] |
| return bias |
|
|
|
|
| class MultiheadAttentionWithRoPE(nn.Module): |
| """Multi-head Attention with Rotary Positional Encoding (RoPE), non-causal by default.""" |
| "========== NOtice that this applies BinaryAttentionBias ===========" |
|
|
| def __init__(self, embed_dim, num_heads, num_features): |
| super().__init__() |
| self.embed_dim = embed_dim |
| self.num_heads = num_heads |
| self.head_dim = embed_dim // num_heads |
| self.num_features = num_features |
| assert self.head_dim * num_heads == embed_dim, "embed_dim must be divisible by num_heads" |
|
|
| |
| self.q_proj = nn.Linear(embed_dim, embed_dim, bias=False) |
| self.k_proj = nn.Linear(embed_dim, embed_dim, bias=False) |
| self.v_proj = nn.Linear(embed_dim, embed_dim, bias=False) |
| self.out_proj = nn.Linear(embed_dim, embed_dim, bias=False) |
|
|
| |
| if num_features > 1: |
| self.binary_attention_bias = BinaryAttentionBias(num_heads) |
|
|
| def apply_rope(self, x, freqs): |
| """Apply Rotary Positional Encoding to the input tensor.""" |
| B, seq_len, embed_dim = x.shape |
| assert embed_dim == self.embed_dim, "Embedding dimension mismatch" |
| assert freqs.shape == (seq_len, embed_dim // 2), "freqs shape mismatch" |
|
|
| |
| x_ = x.view(B, seq_len, embed_dim // 2, 2) |
| cos = freqs.cos().unsqueeze(0) |
| sin = freqs.sin().unsqueeze(0) |
|
|
| |
| x_rot = torch.stack( |
| [ |
| x_[..., 0] * cos - x_[..., 1] * sin, |
| x_[..., 0] * sin + x_[..., 1] * cos, |
| ], |
| dim=-1 |
| ) |
| return x_rot.view(B, seq_len, embed_dim) |
|
|
| def forward(self, query, key, value, freqs, query_id=None, kv_id=None, attn_mask=None): |
| """ |
| Forward pass for multi-head attention with RoPE. |
| |
| Args: |
| query (Tensor): Shape (B, T, C) |
| key (Tensor): Shape (B, T, C) |
| value (Tensor): Shape (B, T, C) |
| freqs (Tensor): RoPE frequencies, shape (T, embed_dim // 2) |
| query_id (Tensor, optional): Shape (B, q_len), feature IDs for query |
| kv_id (Tensor, optional): Shape (B, kv_len), feature IDs for key/value |
| attn_mask (Tensor, optional): Shape (B, T), True for valid positions, False for padding. |
| |
| Returns: |
| Tensor: Attention output, shape (B, T, C) |
| """ |
| B, T, C = query.shape |
| assert key.shape == (B, T, C) and value.shape == (B, T, C), "query, key, value shapes must match" |
|
|
| |
| Q = self.q_proj(query) |
| K = self.k_proj(key) |
| V = self.v_proj(value) |
|
|
| |
| Q_rot = self.apply_rope(Q, freqs) |
| K_rot = self.apply_rope(K, freqs) |
|
|
| |
| Q_rot = Q_rot.view(B, T, self.num_heads, self.head_dim).transpose(1, 2) |
| K_rot = K_rot.view(B, T, self.num_heads, self.head_dim).transpose(1, 2) |
| V = V.view(B, T, self.num_heads, self.head_dim).transpose(1, 2) |
|
|
| |
| if attn_mask is not None: |
| attn_mask = attn_mask.unsqueeze(1).unsqueeze(2) |
| else: |
| attn_mask = None |
|
|
| if query_id is not None and kv_id is not None: |
| |
| attn_bias = self.binary_attention_bias(query_id, kv_id) |
| scores = torch.matmul(Q_rot, K_rot.transpose(-2, -1)) / math.sqrt( |
| self.head_dim) |
| scores += attn_bias |
| if attn_mask is not None: |
| scores = scores.masked_fill(~attn_mask, float('-inf')) |
| attn_weights = F.softmax(scores, dim=-1) |
| y = torch.matmul(attn_weights, V) |
|
|
| else: |
| |
| |
| |
| y = F.scaled_dot_product_attention( |
| Q_rot, K_rot, V, |
| attn_mask=attn_mask, |
| is_causal=False |
| ) |
|
|
| |
| y = y.transpose(1, 2).contiguous().view(B, T, C) |
| y = self.out_proj(y) |
| return y |
|
|
|
|
| class LlamaMLP(nn.Module): |
| def __init__(self, d_model, dim_feedforward=2048): |
| super().__init__() |
| self.hidden_size = d_model |
| self.intermediate_size = dim_feedforward |
| self.gate_proj = nn.Linear(self.hidden_size, self.intermediate_size, bias=True) |
| self.up_proj = nn.Linear(self.hidden_size, self.intermediate_size, bias=True) |
| self.down_proj = nn.Linear(self.intermediate_size, self.hidden_size, bias=True) |
| self.act_fn = F.gelu |
|
|
| def forward(self, x): |
| down_proj = self.down_proj(self.act_fn(self.gate_proj(x)) * self.up_proj(x)) |
| return down_proj |
|
|
|
|
|
|
| |
| TimeRCDModel = Time_RCD |
| AnomalyCLIPModel = Time_RCD |
|
|
| |
| try: |
| from transformers import AutoModel |
| AutoModel.register(TimeRCDConfig, Time_RCD) |
| except Exception: |
| pass |
|
|