import logging from typing import List, Optional import torch from astrai.inference.core.cache import KVCache from astrai.inference.core.task import Task from astrai.inference.sample import sample from astrai.model.automodel import AutoModel from astrai.tokenize.tokenizer import AutoTokenizer logger = logging.getLogger(__name__) class Executor: """Model forward passes for prefill and decode phases.""" def __init__( self, model: AutoModel, tokenizer: AutoTokenizer, kv_cache: KVCache, device: Optional[str] = None, dtype: Optional[torch.dtype] = None, ): self.model = model self.tokenizer = tokenizer self.kv_cache = kv_cache self.device = device or next(model.parameters()).device self.dtype = dtype or next(model.parameters()).dtype def execute_prefill(self, tasks: List[Task], prompt_len: int, start_pos: int = 0): if start_pos >= prompt_len: return tasks = sorted(tasks, key=lambda t: t.task_id) batch_sz = len(tasks) input_ids = torch.tensor( [t.prompt_ids[start_pos:prompt_len] for t in tasks], dtype=torch.long, device=self.device, ) task_ids = [t.task_id for t in tasks] with torch.inference_mode(): self.model( input_ids, position_ids=torch.arange( start_pos, prompt_len, dtype=torch.long, device=self.device ) .unsqueeze(0) .expand(batch_sz, -1), paged_cache=self.kv_cache.bind_tasks(task_ids, prompt_len, self.device), ) def execute_decode(self, tasks: List[Task]) -> List[int]: if not tasks: return [] input_ids = torch.tensor( [t.output_ids[-1] if t.output_ids else t.prompt_ids[-1] for t in tasks], dtype=torch.long, device=self.device, ) position_ids = torch.tensor( [t.next_pos for t in tasks], dtype=torch.long, device=self.device ) total_len = position_ids.max().item() + 1 task_ids = [t.task_id for t in tasks] temperatures = torch.tensor([t.temperature for t in tasks], device=self.device) top_ks = torch.tensor([t.top_k for t in tasks], device=self.device) top_ps = torch.tensor([t.top_p for t in tasks], device=self.device) freq_penalties = torch.tensor( [t.frequency_penalty for t in tasks], device=self.device ) history_lists = [] mask_lists = [] for t in tasks: window = t.rep_window prompt_part = t.prompt_ids[-window:] ids = prompt_part + t.output_ids history_lists.append(ids) mask_lists.append([True] * len(ids)) max_len = max(len(h) for h in history_lists) padded_ids = torch.zeros( len(tasks), max_len, dtype=torch.long, device=self.device ) padded_mask = torch.zeros( len(tasks), max_len, dtype=torch.bool, device=self.device ) for i, (h, m) in enumerate(zip(history_lists, mask_lists)): padded_ids[i, : len(h)] = torch.tensor( h, dtype=torch.long, device=self.device ) padded_mask[i, : len(m)] = torch.tensor( m, dtype=torch.bool, device=self.device ) with torch.inference_mode(): outputs = self.model( input_ids.unsqueeze(1), paged_cache=self.kv_cache.bind_tasks(task_ids, total_len, self.device), position_ids=position_ids.unsqueeze(1), ) logits = outputs["logits"][:, -1, :] return sample( logits, temperature=temperatures, top_k=top_ks, top_p=top_ps, frequency_penalty=freq_penalties, input_ids=padded_ids, input_mask=padded_mask, ).tolist()