mirror of https://github.com/hpcaitech/ColossalAI
479 lines
21 KiB
Python
479 lines
21 KiB
Python
from typing import Any, Callable, List, Optional, Union
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import torch
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import torch.nn as nn
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from transformers import BloomForCausalLM, LlamaForCausalLM
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from transformers.generation import GenerationConfig
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from transformers.generation.stopping_criteria import StoppingCriteriaList
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from transformers.tokenization_utils_base import BatchEncoding
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from colossalai.shardformer import ShardConfig, ShardFormer
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from colossalai.shardformer.policies.auto_policy import get_autopolicy
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from .batch_infer_state import BatchInferState
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from .kvcache_manager import MemoryManager
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# from dynamic_batching.infer_batch import InferBatch
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DP_AXIS, PP_AXIS, TP_AXIS = 0, 1, 2
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_supported_models = [
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"LlamaForCausalLM",
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"LlamaModel",
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"BloomForCausalLM",
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"ChatGLMModel",
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"ChatGLMForConditionalGeneration",
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"LlamaGPTQForCausalLM",
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"BloomGPTQForCausalLM",
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]
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class TPInferEngine:
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"""Engine class for tensor parallel inference.
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Args:
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model (Module): original model, e.g. huggingface CausalLM
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shard_config (ShardConfig): The config for sharding original model
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max_batch_size (int): maximum batch size
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max_input_len (int): maximum input length of sequence
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max_output_len (int): maximum output length of output tokens
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dtype (torch.dtype): datatype used to init KV cache space
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device (str): device the KV cache of engine to be initialized on
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Examples:
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>>> # define model and shard config for your inference
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>>> model = ...
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>>> generate_kwargs = ...
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>>> shard_config = ShardConfig(enable_tensor_parallelism=True, extra_kwargs={"inference_only": True})
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>>> infer_engine = TPInferEngine(model, shard_config, MAX_BATCH_SIZE, MAX_INPUT_LEN, MAX_OUTPUT_LEN)
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>>> outputs = infer_engine.generate(input_ids, **generate_kwargs)
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"""
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def __init__(
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self,
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model: nn.Module,
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shard_config: ShardConfig,
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max_batch_size: int,
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max_input_len: int,
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max_output_len: int,
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dtype: torch.dtype = torch.float16,
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device: str = "cuda",
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) -> None:
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self.max_batch_size = max_batch_size
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self.max_input_len = max_input_len
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self.max_output_len = max_output_len
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self.max_total_token_num = self.max_batch_size * (self.max_input_len + self.max_output_len)
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# Constraints relatable with specs of devices and model
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# This may change into an optional arg in the future
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assert self.max_batch_size <= 64, "Max batch size exceeds the constraint"
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assert self.max_input_len + self.max_output_len <= 4096, "Max length exceeds the constraint"
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self.dtype = dtype
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self.head_dim = model.config.hidden_size // model.config.num_attention_heads
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self.head_num = model.config.num_attention_heads
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num_hidden_layers = (
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model.config.num_hidden_layers if hasattr(model.config, "num_hidden_layers") else model.config.num_layers
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)
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self.layer_num = num_hidden_layers
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self.multi_query_group_num = model.config.num_attention_heads
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# default to attention_heads
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if hasattr(model.config, "multi_query_attention"):
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self.multi_query_attention = getattr(model.config, "multi_query_attention")
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if hasattr(model.config, "multi_query_group_num"):
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self.multi_query_group_num = getattr(model.config, "multi_query_group_num")
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if hasattr(model.config, "num_key_value_heads"):
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self.multi_query_group_num = getattr(model.config, "num_key_value_heads")
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self.tp_size = -1 # to be set with given shard config in self.prepare_shard_config
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self.cache_manager = None
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self.max_dq_buffer_size = 1
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self.max_inner_outer_dim = 1
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self.gptq_temp_state_buffer = None
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self.gptq_temp_dq_buffer = None
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self.bits = -1
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self.use_act_order = False
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self.shard_config = shard_config
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self.model = None
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self.cache = {}
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# optimize the original model by sharding with ShardFormer
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self._optimize_model(model=model.to(device))
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def _init_manager(self) -> None:
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assert self.tp_size >= 1, "TP size not initialized without providing a valid ShardConfig"
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assert self.head_num % self.tp_size == 0, f"Cannot shard {self.head_num} heads with tp size {self.tp_size}"
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self.head_num //= self.tp_size # update sharded number of heads
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if hasattr(self, "multi_query_attention"):
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# NOTE the logic of MQA tensor parallelism should be specified.
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assert (
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self.multi_query_group_num % self.tp_size == 0
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), f"Cannot shard {self.multi_query_group_num} query groups with tp size {self.tp_size}"
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self.cache_manager = MemoryManager(
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self.max_total_token_num,
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self.dtype,
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self.multi_query_group_num // self.tp_size,
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self.head_dim,
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self.layer_num,
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)
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else:
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self.cache_manager = MemoryManager(
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self.max_total_token_num, self.dtype, self.head_num, self.head_dim, self.layer_num
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)
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def _post_init_gptq_buffer(self, model: nn.Module) -> None:
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from colossalai.inference.quant.gptq.cai_gptq import CaiQuantLinear
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HAS_GPTQ_CUDA = False
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try:
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from colossalai.kernel.op_builder.gptq import GPTQBuilder
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gptq_cuda = GPTQBuilder().load()
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HAS_GPTQ_CUDA = True
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except ImportError:
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warnings.warn("CUDA gptq is not installed")
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HAS_GPTQ_CUDA = False
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for name, submodule in model.named_modules():
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if isinstance(submodule, CaiQuantLinear):
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self.max_dq_buffer_size = max(self.max_dq_buffer_size, submodule.qweight.numel() * 8)
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if self.use_act_order:
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self.max_inner_outer_dim = max(
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self.max_inner_outer_dim, submodule.infeatures, submodule.outfeatures
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)
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self.bits = submodule.bits
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if not (HAS_GPTQ_CUDA and self.bits == 4):
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return
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max_input_len = 1
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if self.use_act_order:
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max_input_len = self.max_input_len
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# The temp_state buffer is required to reorder X in the act-order case.
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# The temp_dq buffer is required to dequantize weights when using cuBLAS, typically for the prefill.
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self.gptq_temp_state_buffer = torch.zeros(
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(max_input_len, self.max_inner_outer_dim), dtype=torch.float16, device=torch.cuda.current_device()
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)
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self.gptq_temp_dq_buffer = torch.zeros(
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(1, self.max_dq_buffer_size), dtype=torch.float16, device=torch.cuda.current_device()
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)
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gptq_cuda.prepare_buffers(
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torch.device(torch.cuda.current_device()), self.gptq_temp_state_buffer, self.gptq_temp_dq_buffer
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)
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# Using the default from exllama repo here.
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matmul_recons_thd = 8
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matmul_fused_remap = False
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matmul_no_half2 = False
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gptq_cuda.set_tuning_params(matmul_recons_thd, matmul_fused_remap, matmul_no_half2)
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torch.cuda.empty_cache()
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def _optimize_model(self, model: nn.Module) -> None:
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"""
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Optimize the original model by sharding with ShardFormer.
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In further generation, use the sharded model instead of original model.
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"""
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# NOTE we will change to use an inference config later with additional attrs we want
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assert self.shard_config.extra_kwargs["inference_only"] is True
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shardformer = ShardFormer(shard_config=self.shard_config)
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self._prepare_with_shard_config(shard_config=self.shard_config)
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self._shard_model_by(shardformer, model)
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def _prepare_with_shard_config(self, shard_config: Optional[ShardConfig] = None) -> ShardConfig:
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"""Prepare the engine with a given ShardConfig.
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Args:
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shard_config (ShardConfig): shard config given to specify settings of the engine.
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If not provided, a default ShardConfig with tp size 1 will be created.
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"""
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self.tp_size = 1
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if shard_config is None:
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shard_config = ShardConfig(
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tensor_parallel_process_group=None,
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pipeline_stage_manager=None,
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enable_tensor_parallelism=False,
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enable_fused_normalization=False,
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enable_all_optimization=False,
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enable_flash_attention=False,
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enable_jit_fused=False,
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extra_kwargs={"inference_only": True},
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)
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else:
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shard_config.extra_kwargs = {"inference_only": True}
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shard_config.pipeline_stage_manager = None
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if shard_config.enable_tensor_parallelism:
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self.tp_size = shard_config.tensor_parallel_size
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self._init_manager()
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return shard_config
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def _shard_model_by(self, shardformer: ShardFormer, model: nn.Module) -> None:
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"""Shard original model by the given ShardFormer and store the sharded model."""
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assert (
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self.tp_size == shardformer.shard_config.tensor_parallel_size
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), "Discrepancy between the tp size of TPInferEngine and the tp size of shard config"
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model_name = model.__class__.__name__
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assert model_name in self.supported_models, f"Unsupported model cls {model_name} for TP inference."
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if self.shard_config.extra_kwargs.get("inference_gptq", False):
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model = model.model
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policy = get_autopolicy(model, shard_config=self.shard_config)
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self.model, _ = shardformer.optimize(model, policy)
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if self.shard_config.extra_kwargs.get("inference_gptq", False):
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self._post_init_gptq_buffer(self.model)
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self.model = self.model.cuda()
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@property
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def supported_models(self) -> List[str]:
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return _supported_models
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def generate(self, input_tokens: Union[BatchEncoding, dict, list, torch.Tensor], **generate_kwargs) -> torch.Tensor:
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"""Generate token sequence.
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Args:
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input_tokens: could be one of the following types
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1. BatchEncoding or dict (e.g. tokenizer batch_encode)
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2. list of input token ids (e.g. appended result of tokenizer encode)
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3. torch.Tensor (e.g. tokenizer encode with return_tensors='pt')
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Returns:
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torch.Tensor: The returned sequence is given inputs + generated_tokens.
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"""
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if isinstance(input_tokens, torch.Tensor):
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input_tokens = dict(input_ids=input_tokens, attention_mask=torch.ones_like(input_tokens, dtype=torch.bool))
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for t in input_tokens:
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if torch.is_tensor(input_tokens[t]):
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input_tokens[t] = input_tokens[t].cuda()
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if "max_new_tokens" not in generate_kwargs:
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generate_kwargs.update(max_new_tokens=self.max_output_len)
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return self._generate_by_set_infer_state(input_tokens, **generate_kwargs)
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def prepare_batch_state(self, inputs) -> BatchInferState:
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"""
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Create and prepare BatchInferState used for inference during model forwrad,
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by processing each sequence of the given inputs.
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Args:
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inputs: should be one of the following types
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1. BatchEncoding or dict (e.g. tokenizer batch_encode)
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2. list of input token ids (e.g. appended result of tokenizer encode)
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3. torch.Tensor (e.g. tokenizer encode with return_tensors='pt')
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NOTE For torch.Tensor inputs representing a batch of inputs, we are unable to retrieve
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the actual length (e.g. number of tokens) of each input without attention mask
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Hence, for torch.Tensor with shape [bs, l] where bs > 1, we will assume
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all the inputs in the batch has the maximum length l
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Returns:
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BatchInferState: the states for the current batch during inference
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"""
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if not isinstance(inputs, (BatchEncoding, dict, list, torch.Tensor)):
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raise TypeError(f"inputs type {type(inputs)} is not supported in prepare_batch_state")
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input_ids_list = None
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attention_mask = None
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if isinstance(inputs, (BatchEncoding, dict)):
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input_ids_list = inputs["input_ids"]
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attention_mask = inputs["attention_mask"]
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else:
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input_ids_list = inputs
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if isinstance(input_ids_list[0], int): # for a single input
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input_ids_list = [input_ids_list]
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attention_mask = [attention_mask] if attention_mask is not None else attention_mask
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batch_size = len(input_ids_list)
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seq_start_indexes = torch.zeros(batch_size, dtype=torch.int32, device="cuda")
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seq_lengths = torch.zeros(batch_size, dtype=torch.int32, device="cuda")
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start_index = 0
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max_len_in_batch = -1
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if isinstance(inputs, (BatchEncoding, dict)):
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for i, attn_mask in enumerate(attention_mask):
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curr_seq_len = len(attn_mask)
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# if isinstance(attn_mask, torch.Tensor):
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# curr_seq_len = int(torch.sum(attn_mask))
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# else:
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# curr_seq_len = int(sum(attn_mask))
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seq_lengths[i] = curr_seq_len
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seq_start_indexes[i] = start_index
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start_index += curr_seq_len
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max_len_in_batch = curr_seq_len if curr_seq_len > max_len_in_batch else max_len_in_batch
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else:
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length = max(len(input_id) for input_id in input_ids_list)
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for i, input_ids in enumerate(input_ids_list):
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curr_seq_len = length
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seq_lengths[i] = curr_seq_len
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seq_start_indexes[i] = start_index
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start_index += curr_seq_len
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max_len_in_batch = curr_seq_len if curr_seq_len > max_len_in_batch else max_len_in_batch
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block_loc = torch.empty((batch_size, self.max_input_len + self.max_output_len), dtype=torch.long, device="cuda")
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batch_infer_state = BatchInferState(batch_size, max_len_in_batch)
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batch_infer_state.seq_len = seq_lengths.to("cuda")
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batch_infer_state.start_loc = seq_start_indexes.to("cuda")
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batch_infer_state.block_loc = block_loc
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batch_infer_state.decode_layer_id = 0
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batch_infer_state.past_key_values_len = 0
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batch_infer_state.is_context_stage = True
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batch_infer_state.set_cache_manager(self.cache_manager)
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return batch_infer_state
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@torch.no_grad()
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def _generate_by_set_infer_state(self, input_tokens, **generate_kwargs) -> torch.Tensor:
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"""
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Generate output tokens by setting BatchInferState as an attribute to the model and calling model.generate
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Args:
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inputs: should be one of the following types
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1. BatchEncoding or dict (e.g. tokenizer batch_encode)
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2. list of input token ids (e.g. appended result of tokenizer encode)
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3. torch.Tensor (e.g. tokenizer encode with return_tensors='pt')
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"""
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# for testing, always use sharded model
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assert self.model is not None, "sharded model does not exist"
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batch_infer_state = self.prepare_batch_state(input_tokens)
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assert batch_infer_state.max_len_in_batch <= self.max_input_len, "max length in batch exceeds limit"
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# set BatchInferState for the current batch as attr to model
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# NOTE this is not a preferable way to pass BatchInferState during inference
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# we might want to rewrite generate function (e.g. _generate_by_pass_infer_state)
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# and pass BatchInferState via model forward
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model = self.model
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if isinstance(model, LlamaForCausalLM):
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model = self.model.model
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elif isinstance(model, BloomForCausalLM):
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model = self.model.transformer
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setattr(model, "infer_state", batch_infer_state)
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outputs = self.model.generate(**input_tokens, **generate_kwargs, early_stopping=False)
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# NOTE In future development, we're going to let the scheduler to handle the cache,
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# instead of freeing space explicitly at the end of generation
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self.cache_manager.free_all()
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return outputs
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# TODO might want to implement the func that generates output tokens by passing BatchInferState
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# as an arg into model.forward.
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# It requires rewriting model generate and replacing model forward.
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@torch.no_grad()
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def _generate_by_pass_infer_state(
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self,
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input_tokens,
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max_out_length: int,
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generation_config: Optional[GenerationConfig] = None,
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stopping_criteria: Optional[StoppingCriteriaList] = None,
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prepare_inputs_fn: Optional[Callable[[torch.Tensor, Any], dict]] = None,
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**model_kwargs,
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) -> torch.Tensor:
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raise NotImplementedError("generate by passing BatchInferState is not implemented.")
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# might want to use in rewritten generate method: use after model.forward
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# BatchInferState is created and kept during generation
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# after each iter of model forward, we should update BatchInferState
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def _update_batch_state(self, infer_state: Optional[BatchInferState]) -> None:
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batch_size = infer_state.batch_size
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device = infer_state.start_loc.device
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infer_state.start_loc = infer_state.start_loc + torch.arange(0, batch_size, dtype=torch.int32, device=device)
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infer_state.seq_len += 1
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@torch.no_grad()
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def forward(self, batch_id, is_prefill):
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"""
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Forward is used in Dynamic Batching Manager
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"""
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batch = self.cache.pop(batch_id)
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if is_prefill:
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input_ = torch.tensor(batch.all_input_ids).cuda()
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else:
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input_ = batch.input_ids.reshape(len(batch), 1)
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batch_args = {
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"batch_size": len(batch),
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"max_len_in_batch": batch.nopad_max_len_in_batch,
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"block_loc": batch.nopad_b_loc,
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"start_loc": batch.nopad_b_start_loc,
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"seq_len": batch.nopad_b_seq_len,
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"cache_manager": batch.cache_manager,
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"is_context_stage": is_prefill,
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}
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infer_state = BatchInferState(**batch_args)
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model = self.model
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if isinstance(model, LlamaForCausalLM):
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model = self.model.model
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elif isinstance(model, BloomForCausalLM):
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model = self.model.transformer
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setattr(model, "infer_state", infer_state)
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output = self.model.forward(input_ids=input_)
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logits = output.logits
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# bsz, seq_len, vocab_size
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prob_out = torch.softmax(
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logits[
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:,
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-1,
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],
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dim=-1,
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).squeeze(1)
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# prob_out: bsz, vocab_size
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predict_ids = torch.argmax(prob_out, dim=-1, keepdim=True)
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prob_out = torch.log(prob_out).detach().cpu().numpy()
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predict_ids = predict_ids.detach().cpu().numpy()
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|
# [ batch_size, 1 ]
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|
|
|
output_dict = {}
|
|
new_input_ids = []
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|
for i, (r, all_input_ids, next_token_id, next_token_logprob) in enumerate(
|
|
zip(batch.requests, batch.all_input_ids, predict_ids, prob_out)
|
|
):
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|
next_token_id = int(next_token_id)
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|
next_token_logprob = next_token_logprob[next_token_id]
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|
# all_input_ids_tensor = torch.tensor(all_input_ids, dtype=torch.long, device="cuda")
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|
all_input_ids.append(next_token_id)
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|
# all_input_ids_tensor = None
|
|
new_input_ids.append(next_token_id)
|
|
batch.all_input_ids[i] = all_input_ids
|
|
batch.input_lengths[i] += 1
|
|
batch.out_token_id_counts[i][next_token_id] += 1
|
|
metadata = {
|
|
"id": int(next_token_id),
|
|
"logprob": float(next_token_logprob),
|
|
}
|
|
output_dict[r["request_id"]] = (int(next_token_id), metadata)
|
|
|
|
batch.input_ids = torch.tensor(new_input_ids, dtype=torch.long).cuda()
|
|
batch.nopad_total_token_num += len(batch)
|
|
batch.nopad_max_len_in_batch += 1 # NOTE: we may repalce this
|
|
self.cache[batch.batch_id] = batch
|
|
return output_dict
|
|
|
|
@torch.no_grad()
|
|
def _prefill_batch(self, batch_id):
|
|
return self.forward(batch_id, is_prefill=True)
|
|
|
|
@torch.no_grad()
|
|
def _decode_batch(self, batch_id):
|
|
return self.forward(batch_id, is_prefill=False)
|
|
|
|
# might want to create a sequence pool
|
|
# add a single request/sequence/input text at a time and record its length
|
|
# In other words, store the actual length of input tokens representing a single input text
|
|
# E.g. "Introduce landmarks in Beijing"
|
|
# => add request
|
|
# => record token length and other necessary information to be used
|
|
# => engine hold all these necessary information until `generate` (or other name) is called,
|
|
# => put information already recorded in batchinferstate and pass it to model forward
|
|
# => clear records in engine
|
|
def add_request():
|
|
raise NotImplementedError()
|