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555 lines
18 KiB
Python
555 lines
18 KiB
Python
"""Inference for FastChat models."""
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import abc
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import gc
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import json
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import math
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import os
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import sys
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import time
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from typing import Iterable, Optional, Dict
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import warnings
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import psutil
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import torch
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from transformers import (
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AutoTokenizer,
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AutoModelForCausalLM,
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LlamaTokenizer,
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LlamaForCausalLM,
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AutoModel,
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AutoModelForSeq2SeqLM,
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T5Tokenizer,
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AutoConfig,
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)
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from transformers.generation.logits_process import (
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LogitsProcessorList,
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RepetitionPenaltyLogitsProcessor,
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TemperatureLogitsWarper,
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TopKLogitsWarper,
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TopPLogitsWarper,
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)
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from fastchat.conversation import get_conv_template, SeparatorStyle
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from fastchat.model.model_adapter import (
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load_model,
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get_conversation_template,
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get_generate_stream_function,
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)
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from fastchat.modules.awq import AWQConfig
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from fastchat.modules.gptq import GptqConfig
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from fastchat.modules.exllama import ExllamaConfig
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from fastchat.modules.xfastertransformer import XftConfig
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from fastchat.utils import is_partial_stop, is_sentence_complete, get_context_length
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def prepare_logits_processor(
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temperature: float, repetition_penalty: float, top_p: float, top_k: int
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) -> LogitsProcessorList:
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processor_list = LogitsProcessorList()
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# TemperatureLogitsWarper doesn't accept 0.0, 1.0 makes it a no-op so we skip two cases.
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if temperature >= 1e-5 and temperature != 1.0:
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processor_list.append(TemperatureLogitsWarper(temperature))
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if repetition_penalty > 1.0:
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processor_list.append(RepetitionPenaltyLogitsProcessor(repetition_penalty))
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if 1e-8 <= top_p < 1.0:
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processor_list.append(TopPLogitsWarper(top_p))
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if top_k > 0:
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processor_list.append(TopKLogitsWarper(top_k))
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return processor_list
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@torch.inference_mode()
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def generate_stream(
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model,
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tokenizer,
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params: Dict,
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device: str,
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context_len: int,
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stream_interval: int = 2,
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judge_sent_end: bool = False,
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):
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if hasattr(model, "device"):
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device = model.device
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# Read parameters
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prompt = params["prompt"]
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len_prompt = len(prompt)
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temperature = float(params.get("temperature", 1.0))
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repetition_penalty = float(params.get("repetition_penalty", 1.0))
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top_p = float(params.get("top_p", 1.0))
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top_k = int(params.get("top_k", -1)) # -1 means disable
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max_new_tokens = int(params.get("max_new_tokens", 256))
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logprobs = params.get("logprobs", None) # FIXME: Support logprobs>1.
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echo = bool(params.get("echo", True))
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stop_str = params.get("stop", None)
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stop_token_ids = params.get("stop_token_ids", None) or []
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if tokenizer.eos_token_id not in stop_token_ids:
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stop_token_ids.append(tokenizer.eos_token_id)
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logits_processor = prepare_logits_processor(
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temperature, repetition_penalty, top_p, top_k
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)
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input_ids = tokenizer(prompt).input_ids
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if model.config.is_encoder_decoder:
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max_src_len = context_len
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else: # truncate
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max_src_len = context_len - max_new_tokens - 1
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input_ids = input_ids[-max_src_len:]
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output_ids = list(input_ids)
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input_echo_len = len(input_ids)
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if model.config.is_encoder_decoder:
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if logprobs is not None: # FIXME: Support logprobs for encoder-decoder models.
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raise NotImplementedError
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encoder_output = model.encoder(
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input_ids=torch.as_tensor([input_ids], device=device)
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)[0]
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start_ids = torch.as_tensor(
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[[model.generation_config.decoder_start_token_id]],
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dtype=torch.int64,
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device=device,
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)
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else:
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start_ids = torch.as_tensor([input_ids], device=device)
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past_key_values = out = None
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token_logprobs = [None] # The first token has no logprobs.
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sent_interrupt = False
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finish_reason = None
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stopped = False
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for i in range(max_new_tokens):
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if i == 0: # prefill
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if model.config.is_encoder_decoder:
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out = model.decoder(
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input_ids=start_ids,
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encoder_hidden_states=encoder_output,
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use_cache=True,
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)
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logits = model.lm_head(out[0])
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else:
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out = model(input_ids=start_ids, use_cache=True)
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logits = out.logits
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past_key_values = out.past_key_values
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if logprobs is not None:
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# Prefull logprobs for the prompt.
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shift_input_ids = start_ids[..., 1:].contiguous()
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shift_logits = logits[..., :-1, :].contiguous()
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shift_logits = torch.log_softmax(shift_logits, dim=-1).tolist()
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for label_id, logit in zip(
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shift_input_ids[0].tolist(), shift_logits[0]
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):
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token_logprobs.append(logit[label_id])
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else: # decoding
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if model.config.is_encoder_decoder:
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out = model.decoder(
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input_ids=torch.as_tensor(
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[[token] if not sent_interrupt else output_ids],
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device=device,
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),
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encoder_hidden_states=encoder_output,
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use_cache=True,
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past_key_values=past_key_values if not sent_interrupt else None,
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)
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sent_interrupt = False
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logits = model.lm_head(out[0])
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else:
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out = model(
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input_ids=torch.as_tensor(
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[[token] if not sent_interrupt else output_ids],
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device=device,
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),
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use_cache=True,
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past_key_values=past_key_values if not sent_interrupt else None,
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)
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sent_interrupt = False
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logits = out.logits
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past_key_values = out.past_key_values
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if logits_processor:
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if repetition_penalty > 1.0:
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tmp_output_ids = torch.as_tensor([output_ids], device=logits.device)
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else:
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tmp_output_ids = None
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last_token_logits = logits_processor(tmp_output_ids, logits[:, -1, :])[0]
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else:
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last_token_logits = logits[0, -1, :]
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if device == "mps":
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# Switch to CPU by avoiding some bugs in mps backend.
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last_token_logits = last_token_logits.float().to("cpu")
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if temperature < 1e-5 or top_p < 1e-8: # greedy
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_, indices = torch.topk(last_token_logits, 2)
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tokens = [int(index) for index in indices.tolist()]
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else:
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probs = torch.softmax(last_token_logits, dim=-1)
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indices = torch.multinomial(probs, num_samples=2)
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tokens = [int(token) for token in indices.tolist()]
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token = tokens[0]
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output_ids.append(token)
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if logprobs is not None:
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# Cannot use last_token_logits because logprobs is based on raw logits.
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token_logprobs.append(
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torch.log_softmax(logits[0, -1, :], dim=-1)[token].tolist()
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)
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if token in stop_token_ids:
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stopped = True
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else:
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stopped = False
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# Yield the output tokens
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if i % stream_interval == 0 or i == max_new_tokens - 1 or stopped:
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if echo:
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tmp_output_ids = output_ids
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rfind_start = len_prompt
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else:
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tmp_output_ids = output_ids[input_echo_len:]
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rfind_start = 0
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output = tokenizer.decode(
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tmp_output_ids,
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skip_special_tokens=True,
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spaces_between_special_tokens=False,
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clean_up_tokenization_spaces=True,
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)
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ret_logprobs = None
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if logprobs is not None:
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ret_logprobs = {
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"text_offset": [],
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"tokens": [
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tokenizer.decode(token)
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for token in (
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output_ids if echo else output_ids[input_echo_len:]
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)
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],
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"token_logprobs": token_logprobs
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if echo
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else token_logprobs[input_echo_len:],
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"top_logprobs": [{}]
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* len(token_logprobs if echo else token_logprobs[input_echo_len:]),
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}
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# Compute text_offset
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curr_pos = 0
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for text in ret_logprobs["tokens"]:
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ret_logprobs["text_offset"].append(curr_pos)
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curr_pos += len(text)
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# TODO: For the issue of incomplete sentences interrupting output, apply a patch and others can also modify it to a more elegant way
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if judge_sent_end and stopped and not is_sentence_complete(output):
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if len(tokens) > 1:
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token = tokens[1]
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output_ids[-1] = token
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else:
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output_ids.pop()
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stopped = False
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sent_interrupt = True
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partially_stopped = False
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if stop_str:
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if isinstance(stop_str, str):
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pos = output.rfind(stop_str, rfind_start)
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if pos != -1:
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output = output[:pos]
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stopped = True
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else:
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partially_stopped = is_partial_stop(output, stop_str)
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elif isinstance(stop_str, Iterable):
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for each_stop in stop_str:
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pos = output.rfind(each_stop, rfind_start)
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if pos != -1:
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output = output[:pos]
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stopped = True
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break
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else:
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partially_stopped = is_partial_stop(output, each_stop)
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if partially_stopped:
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break
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else:
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raise ValueError("Invalid stop field type.")
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# Prevent yielding partial stop sequence
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if not partially_stopped:
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yield {
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"text": output,
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"logprobs": ret_logprobs,
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"usage": {
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"prompt_tokens": input_echo_len,
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"completion_tokens": i,
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"total_tokens": input_echo_len + i,
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},
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"finish_reason": None,
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}
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if stopped:
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break
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# Finish stream event, which contains finish reason
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else:
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finish_reason = "length"
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if stopped:
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finish_reason = "stop"
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yield {
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"text": output,
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"logprobs": ret_logprobs,
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"usage": {
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"prompt_tokens": input_echo_len,
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"completion_tokens": i,
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"total_tokens": input_echo_len + i,
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},
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"finish_reason": finish_reason,
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}
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# Clean
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del past_key_values, out
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gc.collect()
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torch.cuda.empty_cache()
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if device == "xpu":
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torch.xpu.empty_cache()
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if device == "npu":
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torch.npu.empty_cache()
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class ChatIO(abc.ABC):
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@abc.abstractmethod
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def prompt_for_input(self, role: str) -> str:
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"""Prompt for input from a role."""
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@abc.abstractmethod
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def prompt_for_output(self, role: str):
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"""Prompt for output from a role."""
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@abc.abstractmethod
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def stream_output(self, output_stream):
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"""Stream output."""
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@abc.abstractmethod
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def print_output(self, text: str):
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"""Print output."""
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def chat_loop(
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model_path: str,
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device: str,
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num_gpus: int,
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max_gpu_memory: str,
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dtype: Optional[torch.dtype],
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load_8bit: bool,
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cpu_offloading: bool,
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conv_template: Optional[str],
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conv_system_msg: Optional[str],
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temperature: float,
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repetition_penalty: float,
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max_new_tokens: int,
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chatio: ChatIO,
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gptq_config: Optional[GptqConfig] = None,
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awq_config: Optional[AWQConfig] = None,
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exllama_config: Optional[ExllamaConfig] = None,
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xft_config: Optional[XftConfig] = None,
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revision: str = "main",
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judge_sent_end: bool = True,
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debug: bool = True,
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history: bool = True,
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):
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# Model
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model, tokenizer = load_model(
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model_path,
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device=device,
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num_gpus=num_gpus,
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max_gpu_memory=max_gpu_memory,
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dtype=dtype,
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load_8bit=load_8bit,
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cpu_offloading=cpu_offloading,
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gptq_config=gptq_config,
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awq_config=awq_config,
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exllama_config=exllama_config,
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xft_config=xft_config,
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revision=revision,
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debug=debug,
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)
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generate_stream_func = get_generate_stream_function(model, model_path)
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model_type = str(type(model)).lower()
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is_t5 = "t5" in model_type
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is_codet5p = "codet5p" in model_type
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is_xft = "xft" in model_type
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# Hardcode T5's default repetition penalty to be 1.2
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if is_t5 and repetition_penalty == 1.0:
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repetition_penalty = 1.2
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# Set context length
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context_len = get_context_length(model.config)
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# Chat
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def new_chat():
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if conv_template:
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conv = get_conv_template(conv_template)
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else:
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conv = get_conversation_template(model_path)
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if conv_system_msg is not None:
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conv.set_system_message(conv_system_msg)
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return conv
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def reload_conv(conv):
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"""
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Reprints the conversation from the start.
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"""
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for message in conv.messages[conv.offset :]:
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chatio.prompt_for_output(message[0])
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chatio.print_output(message[1])
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conv = None
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while True:
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if not history or not conv:
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conv = new_chat()
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try:
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inp = chatio.prompt_for_input(conv.roles[0])
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except EOFError:
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inp = ""
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if inp == "!!exit" or not inp:
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print("exit...")
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break
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elif inp == "!!reset":
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print("resetting...")
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conv = new_chat()
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continue
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elif inp == "!!remove":
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print("removing last message...")
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if len(conv.messages) > conv.offset:
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# Assistant
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if conv.messages[-1][0] == conv.roles[1]:
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conv.messages.pop()
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# User
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if conv.messages[-1][0] == conv.roles[0]:
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conv.messages.pop()
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reload_conv(conv)
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else:
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print("No messages to remove.")
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continue
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elif inp == "!!regen":
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print("regenerating last message...")
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if len(conv.messages) > conv.offset:
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# Assistant
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if conv.messages[-1][0] == conv.roles[1]:
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conv.messages.pop()
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# User
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if conv.messages[-1][0] == conv.roles[0]:
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reload_conv(conv)
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# Set inp to previous message
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inp = conv.messages.pop()[1]
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else:
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# Shouldn't happen in normal circumstances
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print("No user message to regenerate from.")
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continue
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else:
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print("No messages to regenerate.")
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continue
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elif inp.startswith("!!save"):
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args = inp.split(" ", 1)
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if len(args) != 2:
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print("usage: !!save <filename>")
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continue
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else:
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filename = args[1]
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# Add .json if extension not present
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if not "." in filename:
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filename += ".json"
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print("saving...", filename)
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with open(filename, "w") as outfile:
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json.dump(conv.dict(), outfile)
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continue
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elif inp.startswith("!!load"):
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args = inp.split(" ", 1)
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if len(args) != 2:
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print("usage: !!load <filename>")
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continue
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else:
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filename = args[1]
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# Check if file exists and add .json if needed
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if not os.path.exists(filename):
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if (not filename.endswith(".json")) and os.path.exists(
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filename + ".json"
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):
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filename += ".json"
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else:
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print("file not found:", filename)
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continue
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print("loading...", filename)
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with open(filename, "r") as infile:
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new_conv = json.load(infile)
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conv = get_conv_template(new_conv["template_name"])
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conv.set_system_message(new_conv["system_message"])
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conv.messages = new_conv["messages"]
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reload_conv(conv)
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continue
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conv.append_message(conv.roles[0], inp)
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conv.append_message(conv.roles[1], None)
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prompt = conv.get_prompt()
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if is_codet5p: # codet5p is a code completion model.
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prompt = inp
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gen_params = {
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"model": model_path,
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"prompt": prompt,
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"temperature": temperature,
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"repetition_penalty": repetition_penalty,
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"max_new_tokens": max_new_tokens,
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"stop": conv.stop_str,
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"stop_token_ids": conv.stop_token_ids,
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"echo": False,
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}
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try:
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chatio.prompt_for_output(conv.roles[1])
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output_stream = generate_stream_func(
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model,
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tokenizer,
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gen_params,
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device,
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context_len=context_len,
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judge_sent_end=judge_sent_end,
|
|
)
|
|
t = time.time()
|
|
outputs = chatio.stream_output(output_stream)
|
|
duration = time.time() - t
|
|
conv.update_last_message(outputs.strip())
|
|
|
|
if debug:
|
|
num_tokens = len(tokenizer.encode(outputs))
|
|
msg = {
|
|
"conv_template": conv.name,
|
|
"prompt": prompt,
|
|
"outputs": outputs,
|
|
"speed (token/s)": round(num_tokens / duration, 2),
|
|
}
|
|
print(f"\n{msg}\n")
|
|
|
|
except KeyboardInterrupt:
|
|
print("stopped generation.")
|
|
# If generation didn't finish
|
|
if conv.messages[-1][1] is None:
|
|
conv.messages.pop()
|
|
# Remove last user message, so there isn't a double up
|
|
if conv.messages[-1][0] == conv.roles[0]:
|
|
conv.messages.pop()
|
|
|
|
reload_conv(conv)
|