259 lines
9.8 KiB
Python
259 lines
9.8 KiB
Python
from typing import Dict, List, Tuple, Optional
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import torch
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from cacheflow.models import get_model
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from cacheflow.models import InputMetadata
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from cacheflow.sampling_params import SamplingParams
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from cacheflow.sequence import SequenceGroupInputs
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from cacheflow.sequence import SequenceOutputs
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from cacheflow.worker.cache_engine import CacheEngine
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from cacheflow.parallel_utils.parallel_state import (
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initialize_model_parallel,
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initialize_all_reduce_launcher,
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get_tensor_model_parallel_world_size)
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from cacheflow.utils import set_random_seed
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class Worker:
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def __init__(
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self,
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model_name: str,
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block_size: int,
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num_gpu_blocks: int,
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num_cpu_blocks: int,
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dtype: str,
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seed: int,
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distributed_init_method: str,
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rank: int,
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world_size: int,
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cache_dir: Optional[str],
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use_dummy_weights: bool,
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use_np_cache: bool,
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max_num_batched_tokens: int,
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tensor_parallel_size: int = 1,
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pipeline_parallel_size: int = 1,
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) -> None:
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self.init_distributed_environment(distributed_init_method,
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rank,
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world_size,
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tensor_parallel_size,
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pipeline_parallel_size)
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self.worker_id = rank
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self.block_size = block_size
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set_random_seed(seed)
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# Initialize the model.
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self.model, self.dtype = get_model(
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model_name, dtype=dtype, cache_dir=cache_dir,
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use_dummy_weights=use_dummy_weights, use_np_cache=use_np_cache)
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tensor_model_parallel_world_size = (
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get_tensor_model_parallel_world_size())
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initialize_all_reduce_launcher(
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max_num_batched_tokens, self.model.config.hidden_size, self.dtype)
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self.num_layers = self.model.config.num_hidden_layers
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assert self.model.config.num_attention_heads % tensor_model_parallel_world_size == 0
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self.num_heads = self.model.config.num_attention_heads // tensor_model_parallel_world_size
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self.head_size = self.model.config.hidden_size // (self.num_heads * tensor_model_parallel_world_size)
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# We reset the seed after initializing the model to ensure that
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# the random state is not affected by the model initialization.
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set_random_seed(seed)
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self.cache_engine = CacheEngine(
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worker_id=self.worker_id,
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num_layers=self.num_layers,
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num_heads=self.num_heads,
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head_size=self.head_size,
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block_size=block_size,
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num_gpu_blocks=num_gpu_blocks,
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num_cpu_blocks=num_cpu_blocks,
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dtype=self.dtype,
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)
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self.cache_events = self.cache_engine.events
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self.gpu_cache = self.cache_engine.gpu_cache
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def init_distributed_environment(self,
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distributed_init_method: str,
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rank: int,
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world_size: int,
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tensor_parallel_size: int = 1,
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pipeline_parallel_size: int = 1) -> None:
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"""Initialize the distributed environment."""
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torch.distributed.init_process_group(
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backend='nccl',
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init_method=distributed_init_method,
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world_size=world_size,
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rank=rank,
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)
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# A small all_reduce for warmup.
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torch.distributed.all_reduce(torch.zeros(1).cuda())
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initialize_model_parallel(tensor_parallel_size,
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pipeline_parallel_size)
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def prepare_inputs(
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self,
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input_seq_groups: List[SequenceGroupInputs],
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) -> Tuple[torch.LongTensor, torch.LongTensor, InputMetadata]:
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seq_groups: List[Tuple[List[int], SamplingParams]] = []
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seq_logprobs: Dict[int, float] = {}
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sampling_params: Dict[int, SamplingParams] = {}
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input_tokens: List[int] = []
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input_positions: List[int] = []
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slot_mapping: List[int] = []
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# Add prompt tokens.
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prompt_lens: List[int] = []
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for input_seq_group in input_seq_groups:
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if not input_seq_group.is_prompt:
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continue
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seq_ids = list(input_seq_group.input_tokens.keys())
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sampling_params = input_seq_group.sampling_params
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seq_groups.append((seq_ids, sampling_params))
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seq_logprobs.update(input_seq_group.seq_logprobs)
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# Use any sequence in the group.
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seq_id = seq_ids[0]
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prompt_tokens = input_seq_group.input_tokens[seq_id]
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prompt_len = len(prompt_tokens)
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prompt_lens.append(prompt_len)
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input_tokens.extend(prompt_tokens)
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# NOTE(woosuk): Here we assume that the first token in the prompt
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# is always the first token in the sequence.
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input_positions.extend(range(len(prompt_tokens)))
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# Compute the slot mapping.
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block_table = input_seq_group.block_tables[seq_id]
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for i in range(prompt_len):
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block_number = block_table[i // self.block_size]
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block_offset = i % self.block_size
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slot = block_number * self.block_size + block_offset
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slot_mapping.append(slot)
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# Add generation tokens.
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max_context_len = 0
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max_num_blocks_per_seq = 0
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context_lens: List[int] = []
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generation_block_tables: List[List[int]] = []
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for input_seq_group in input_seq_groups:
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if input_seq_group.is_prompt:
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continue
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seq_ids = list(input_seq_group.input_tokens.keys())
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sampling_params = input_seq_group.sampling_params
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seq_groups.append((seq_ids, sampling_params))
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seq_logprobs.update(input_seq_group.seq_logprobs)
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for seq_id in seq_ids:
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assert len(input_seq_group.input_tokens[seq_id]) == 1
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generation_token = input_seq_group.input_tokens[seq_id][0]
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input_tokens.append(generation_token)
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position = input_seq_group.context_len - 1
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input_positions.append(position)
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block_table = input_seq_group.block_tables[seq_id]
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generation_block_tables.append(block_table)
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max_context_len = max(
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max_context_len, input_seq_group.context_len)
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max_num_blocks_per_seq = max(
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max_num_blocks_per_seq, len(block_table))
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context_lens.append(input_seq_group.context_len)
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block_number = block_table[position // self.block_size]
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block_offset = position % self.block_size
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slot = block_number * self.block_size + block_offset
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slot_mapping.append(slot)
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# Optimization: Pad the input length to be a multiple of 8.
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# This is required for utilizing the Tensor Cores in NVIDIA GPUs.
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input_tokens = _pad_to_alignment(input_tokens, multiple_of=8)
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input_positions = _pad_to_alignment(input_positions, multiple_of=8)
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# Convert to tensors.
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tokens_tensor = torch.tensor(
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input_tokens, dtype=torch.long, device='cuda')
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positions_tensor = torch.tensor(
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input_positions, dtype=torch.long, device='cuda')
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slot_mapping_tensor = torch.tensor(
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slot_mapping, dtype=torch.int, device='cuda')
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context_lens_tensor = torch.tensor(
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context_lens, dtype=torch.int, device='cuda')
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padded_block_tables = [
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_pad_to_max(block_table, max_num_blocks_per_seq)
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for block_table in generation_block_tables]
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block_tables_tensor = torch.tensor(
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padded_block_tables, dtype=torch.int, device='cuda')
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input_metadata = InputMetadata(
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seq_groups=seq_groups,
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seq_logprobs=seq_logprobs,
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prompt_lens=prompt_lens,
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slot_mapping=slot_mapping_tensor,
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context_lens=context_lens_tensor,
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max_context_len=max_context_len,
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block_tables=block_tables_tensor,
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)
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return tokens_tensor, positions_tensor, input_metadata
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@torch.inference_mode()
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def execute_stage(
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self,
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input_seq_groups: List[SequenceGroupInputs],
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blocks_to_swap_in: Dict[int, int],
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blocks_to_swap_out: Dict[int, int],
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blocks_to_copy: Dict[int, List[int]],
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) -> Dict[int, SequenceOutputs]:
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# Issue cache operations.
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command_issued = False
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if blocks_to_swap_in:
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self.cache_engine.swap_in(blocks_to_swap_in)
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command_issued = True
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if blocks_to_swap_out:
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self.cache_engine.swap_out(blocks_to_swap_out)
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command_issued = True
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if blocks_to_copy:
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self.cache_engine.copy(blocks_to_copy)
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command_issued = True
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if command_issued:
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cache_events = self.cache_events
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else:
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cache_events = None
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# If there is no input, we don't need to execute the model.
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if not input_seq_groups:
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if cache_events is not None:
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for event in cache_events:
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event.wait()
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return {}
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# Prepare input tensors.
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input_tokens, input_positions, input_metadata = self.prepare_inputs(
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input_seq_groups)
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# Execute the model.
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output = self.model(
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input_ids=input_tokens,
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positions=input_positions,
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kv_caches=self.gpu_cache,
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input_metadata=input_metadata,
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cache_events=cache_events,
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)
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return output
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def _pad_to_alignment(x: List[int], multiple_of: int) -> List[int]:
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return x + [0] * ((-len(x)) % multiple_of)
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def _pad_to_max(x: List[int], max_len: int) -> List[int]:
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return x + [0] * (max_len - len(x))
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