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from llmlingua import PromptCompressor |
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import bisect |
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from collections import defaultdict |
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from typing import List |
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|
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import numpy as np |
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import torch |
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|
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import nltk |
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import tiktoken |
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import re |
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from transformers import AutoConfig, AutoModelForCausalLM, AutoTokenizer |
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from abs_compressor import AbstractCompressor |
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|
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encoding = tiktoken.encoding_for_model("gpt-3.5-turbo") |
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|
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class LLMLinguaCompressor(AbstractCompressor): |
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def __init__( |
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self, |
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model_name: str = "meta-llama/Llama-2-7b-chat-hf", |
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device_map: str = "cuda", |
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use_auth_token: bool = False, |
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open_api_config: dict = {}, |
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token: str = '' |
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): |
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self.model_name = model_name |
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self.token = token |
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self.load_model(model_name, device_map, use_auth_token) |
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self.retrieval_model = None |
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self.retrieval_model_name = None |
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self.open_api_config = open_api_config |
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self.cache_bos_num = 10 |
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|
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def load_model( |
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self, model_name: str, device_map: str = "cuda", use_auth_token: bool = False |
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): |
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config = AutoConfig.from_pretrained(self.model_name) |
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tokenizer = AutoTokenizer.from_pretrained(self.model_name) |
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tokenizer.padding_side = "left" |
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tokenizer.pad_token_id = ( |
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config.pad_token_id if config.pad_token_id else tokenizer.eos_token_id |
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) |
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self.device = ( |
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device_map if any(key in device_map for key in ["cuda", "cpu"]) else "cuda" |
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) |
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if "cuda" in device_map or "cpu" in device_map: |
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model = AutoModelForCausalLM.from_pretrained( |
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model_name, |
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torch_dtype="auto" if device_map == "cuda" else torch.float32, |
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config=config, |
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ignore_mismatched_sizes=True, |
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trust_remote_code=True, |
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token=self.token |
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).to(device_map) |
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else: |
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model = AutoModelForCausalLM.from_pretrained( |
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model_name, |
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device_map=device_map, |
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torch_dtype="auto", |
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pad_token_id=tokenizer.pad_token_id, |
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offload_folder="/tmp/offload", |
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offload_state_dict=True, |
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cache_dir="/tmp/cache", |
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use_auth_token=use_auth_token, |
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trust_remote_code=True, |
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token=self.token |
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) |
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self.tokenizer = tokenizer |
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self.model = model |
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self.context_idxs = [] |
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self.max_position_embeddings = config.max_position_embeddings |
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|
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def get_ppl( |
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self, |
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text: str, |
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granularity: str = "sentence", |
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input_ids=None, |
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attention_mask=None, |
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past_key_values=None, |
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return_kv=False, |
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end=None, |
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condition_mode: str = "none", |
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condition_pos_id: int = 0, |
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): |
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if input_ids is None: |
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tokenized_text = self.tokenizer(text, return_tensors="pt") |
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input_ids = tokenized_text["input_ids"].to(self.device) |
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attention_mask = tokenized_text["attention_mask"].to(self.device) |
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if past_key_values is not None: |
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past_length = past_key_values[0][0].shape[2] |
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else: |
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past_length = 0 |
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if end is None: |
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end = input_ids.shape[1] |
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end = min(end, past_length + self.max_position_embeddings) |
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with torch.no_grad(): |
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response = self.model( |
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input_ids[:, past_length:end], |
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attention_mask=attention_mask[:, :end], |
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past_key_values=past_key_values, |
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use_cache=True, |
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) |
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past_key_values = response.past_key_values |
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|
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loss_fct = torch.nn.CrossEntropyLoss(reduction="none") |
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shift_logits = response.logits[..., :-1, :].contiguous() |
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shift_labels = input_ids[..., past_length + 1 : end].contiguous() |
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|
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active = (attention_mask[:, past_length:end] == 1)[..., :-1].view(-1) |
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active_logits = shift_logits.view(-1, shift_logits.size(-1))[active] |
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active_labels = shift_labels.view(-1)[active] |
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loss_fct = torch.nn.CrossEntropyLoss(reduction="none") |
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loss = loss_fct(active_logits, active_labels) |
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if condition_mode == "before": |
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loss = loss[:condition_pos_id] |
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elif condition_mode == "after": |
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loss = loss[condition_pos_id:] |
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res = loss.mean() if granularity == "sentence" else loss |
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return (res, past_key_values) if return_kv else res |
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|
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def __call__(self, *args, **kwargs): |
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return self.compress(*args, **kwargs) |
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|
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def compress( |
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self, |
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context: List[str], |
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instruction: str = "", |
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question: str = "", |
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ratio: float = 0.5, |
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target_token: float = -1, |
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iterative_size: int = 200, |
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force_context_ids: List[int] = None, |
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force_context_number: int = None, |
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use_sentence_level_filter: bool = False, |
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use_context_level_filter: bool = True, |
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use_token_level_filter: bool = True, |
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keep_split: bool = False, |
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keep_first_sentence: int = 0, |
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keep_last_sentence: int = 0, |
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keep_sentence_number: int = 0, |
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high_priority_bonus: int = 100, |
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context_budget: str = "+100", |
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token_budget_ratio: float = 1.4, |
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condition_in_question: str = "none", |
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reorder_context: str = "original", |
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dynamic_context_compression_ratio: float = 0.0, |
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condition_compare: bool = False, |
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add_instruction: bool = False, |
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rank_method: str = "llmlingua", |
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concate_question: bool = True, |
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): |
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if isinstance(context, str): |
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context = [context] |
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assert not ( |
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rank_method == "longllmlingua" and not question |
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), "In the LongLLMLingua, it is necessary to set a question." |
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if condition_compare and "_condition" not in condition_in_question: |
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condition_in_question += "_condition" |
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if rank_method == "longllmlingua": |
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if condition_in_question == "none": |
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condition_in_question = "after" |
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elif rank_method == "llmlingua": |
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condition_in_question = ( |
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"none" |
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if "_condition" not in condition_in_question |
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else "none_condition" |
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) |
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origin_tokens = len( |
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encoding.encode("\n\n".join([instruction] + context + [question]).strip()) |
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) |
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context_tokens_length = [self.get_token_length(c) for c in context] |
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instruction_tokens_length, question_tokens_length = self.get_token_length( |
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instruction |
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), self.get_token_length(question) |
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if target_token == -1: |
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target_token = ( |
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( |
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instruction_tokens_length |
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+ question_tokens_length |
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+ sum(context_tokens_length) |
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) |
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* (1 - ratio) |
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- instruction_tokens_length |
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- (question_tokens_length if concate_question else 0) |
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) |
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condition_flag = "_condition" in condition_in_question |
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condition_in_question = condition_in_question.replace("_condition", "") |
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|
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if len(context) > 1 and use_context_level_filter: |
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context, dynamic_ratio = self.control_context_budget( |
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context, |
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context_tokens_length, |
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target_token, |
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force_context_ids, |
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force_context_number, |
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question, |
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condition_in_question, |
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reorder_context=reorder_context, |
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dynamic_context_compression_ratio=dynamic_context_compression_ratio, |
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rank_method=rank_method, |
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context_budget=context_budget, |
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) |
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else: |
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dynamic_ratio = [0.0] * len(context) |
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|
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if use_sentence_level_filter: |
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context = self.control_sentence_budget( |
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context, |
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target_token, |
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keep_first_sentence=keep_first_sentence, |
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keep_last_sentence=keep_last_sentence, |
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keep_sentence_number=keep_sentence_number, |
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high_priority_bonus=high_priority_bonus, |
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token_budget_ratio=token_budget_ratio, |
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question=question, |
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condition_in_question=condition_in_question, |
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rank_method=rank_method, |
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) |
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|
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if condition_flag: |
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if add_instruction: |
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context = [question + "\n\n" + instruction] + context |
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start = self.get_token_length(question + "\n\n" + instruction) + 2 |
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else: |
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context = [question] + context |
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start = self.get_token_length(question) + 2 |
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else: |
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start = 0 |
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|
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if use_token_level_filter: |
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context = self.iterative_compress_prompt( |
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context, |
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target_token, |
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iterative_size=iterative_size, |
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keep_split=keep_split, |
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start=start, |
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dynamic_ratio=dynamic_ratio, |
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condition_compare=condition_compare, |
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) |
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compressed_prompt = ( |
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self.tokenizer.batch_decode(context[0])[0] |
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.replace("<s> ", "") |
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.replace("<s>", "") |
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) |
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else: |
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compressed_prompt = "\n\n".join(context) |
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|
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if instruction: |
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compressed_prompt = instruction + "\n\n" + compressed_prompt |
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if question and concate_question: |
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compressed_prompt = compressed_prompt + "\n\n" + question |
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|
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compressed_tokens = len(encoding.encode(compressed_prompt)) |
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saving = (origin_tokens - compressed_tokens) * 0.06 / 1000 |
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return { |
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"compressed_prompt": compressed_prompt, |
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"origin_tokens": origin_tokens, |
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"compressed_tokens": compressed_tokens, |
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|
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"ratio": compressed_tokens / origin_tokens, |
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|
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} |
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|
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def get_token_length(self, text: str, add_special_tokens: bool = True): |
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return len( |
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self.tokenizer(text, add_special_tokens=add_special_tokens).input_ids |
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) |
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|
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def get_condition_ppl( |
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self, |
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text: str, |
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question: str, |
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condition_in_question: str = "none", |
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granularity: str = "sentence", |
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): |
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if condition_in_question == "none": |
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return self.get_ppl(text, granularity=granularity) |
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elif condition_in_question == "before": |
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return self.get_ppl( |
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question + text, |
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granularity=granularity, |
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condition_mode="after", |
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condition_pos_id=self.get_token_length(question) - 1, |
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) |
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elif condition_in_question == "after": |
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return self.get_ppl( |
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text + question, |
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granularity=granularity, |
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condition_mode="after", |
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condition_pos_id=self.get_token_length(text) - 1, |
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) |
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|
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def get_dynamic_compression_ratio( |
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self, |
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context: list, |
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target_token: float, |
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iterative_size: int, |
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dynamic_ratio: list, |
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start: int, |
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): |
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def get_ratio(base: float, delta: float): |
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return max(min(1, base + delta), 0) |
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|
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context_length = [self.get_token_length(ii, False) + 2 for ii in context] |
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if start: |
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context_length = context_length[1:] |
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tau = target_token / (sum(context_length) + 1) |
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res, idx, last, last_target = [], 0, 1, [] |
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while idx < len(context_length): |
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if last + context_length[idx] >= iterative_size: |
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last_target.append( |
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(iterative_size - last, get_ratio(tau, dynamic_ratio[idx])) |
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) |
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res.append(last_target) |
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last = last + context_length[idx] - iterative_size |
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if last > iterative_size: |
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k = last // iterative_size |
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res.extend( |
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[[(iterative_size, get_ratio(tau, dynamic_ratio[idx]))]] * k |
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) |
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last -= k * iterative_size |
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|
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last_target = ( |
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[(last, get_ratio(tau, dynamic_ratio[idx]))] if last else [] |
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) |
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else: |
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last += context_length[idx] |
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last_target.append( |
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(context_length[idx], get_ratio(tau, dynamic_ratio[idx])) |
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) |
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idx += 1 |
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if last_target: |
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res.append(last_target) |
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return res |
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|
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def control_context_budget( |
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self, |
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context: List[str], |
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context_tokens_length: List[int], |
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target_token: float, |
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force_context_ids: List[int] = None, |
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force_context_number: int = None, |
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question: str = "", |
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condition_in_question: str = "none", |
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reorder_context: str = "original", |
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dynamic_context_compression_ratio: float = 0.0, |
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rank_method: str = "longllmlingua", |
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context_budget: str = "+100", |
|
): |
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if force_context_ids is not None: |
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return [context[ii] for ii in force_context_ids] |
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demostrations_sort = self.get_rank_results( |
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context, |
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question, |
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rank_method, |
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condition_in_question, |
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context_tokens_length, |
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) |
|
|
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if target_token < 0: |
|
target_token = 100 |
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target_token = eval("target_token" + context_budget) |
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res = [] |
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used = force_context_ids if force_context_ids is not None else [] |
|
|
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self.context_idxs.append([x for idx, (x, _) in enumerate(demostrations_sort)]) |
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for idx, _ in demostrations_sort: |
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if idx >= len(context_tokens_length): |
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continue |
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target_token -= context_tokens_length[idx] |
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if idx not in used: |
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used.append(idx) |
|
if target_token < 0 or ( |
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force_context_number is not None and len(res) >= force_context_number |
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): |
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break |
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original_used = used |
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if reorder_context == "original": |
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used = sorted(used) |
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elif reorder_context == "two_stage": |
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l, r = [_ for idx, _ in enumerate(used) if idx % 2 == 0], [ |
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_ for idx, _ in enumerate(used) if idx % 2 == 1 |
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] |
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used = l + r[::-1] |
|
|
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if dynamic_context_compression_ratio > 0: |
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N = len(used) |
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if condition_in_question: |
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rank = [ |
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i |
|
for i, _ in self.get_rank_results( |
|
context, |
|
question, |
|
"longllmlingua", |
|
"after", |
|
context_tokens_length, |
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) |
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] |
|
used = sorted(used, key=lambda x: rank.index(x)) |
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dynamic_ratio = [ |
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i * (abs(dynamic_context_compression_ratio) / (N - 1)) if N > 1 else 0 |
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for i in range(-(N - 1), N, 2) |
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][::-1] |
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dynamic_ratio_map = {i: j for i, j in zip(original_used, dynamic_ratio)} |
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dynamic_ratio = [dynamic_ratio_map[i] for i in used] |
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else: |
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dynamic_ratio = [0.0] * len(used) |
|
|
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res = [context[idx] for idx in used if idx < len(context)] |
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return res, dynamic_ratio |
|
|
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def control_sentence_budget( |
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self, |
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context: List[str], |
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target_token: float, |
|
keep_first_sentence: int = 0, |
|
keep_last_sentence: int = 0, |
|
keep_sentence_number: int = 0, |
|
high_priority_bonus: int = 100, |
|
token_budget_ratio: float = 1.4, |
|
question: str = "", |
|
condition_in_question: str = "none", |
|
rank_method: str = "longllmlingua", |
|
): |
|
def keep_sentence(dem_idx: int, sent_keep: int): |
|
idxs = sorted(dem_g[dem_idx], key=lambda x: sentence_ppl[x])[:sent_keep] |
|
for idx in idxs: |
|
sentence_ppl[idx] += high_priority_bonus |
|
|
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sentences = [nltk.sent_tokenize(c) for c in context] |
|
dem_g, s2de, idx = defaultdict(set), defaultdict(int), 0 |
|
for idx_d, s in enumerate(sentences): |
|
for _ in s: |
|
dem_g[idx_d].add(idx) |
|
s2de[idx] = idx_d |
|
idx += 1 |
|
|
|
context_sentences = [s for ii in sentences for s in ii] |
|
sentence_tokens_length = [ |
|
self.get_token_length(sentence) for sentence in context_sentences |
|
] |
|
N = len(context_sentences) |
|
flags = list(range(len(context_sentences))) |
|
if len(sentence_tokens_length) == 1: |
|
return context |
|
if rank_method == "longllmlingua": |
|
sentence_ppl = [ |
|
self.get_condition_ppl(sentence, question, condition_in_question) |
|
.cpu() |
|
.numpy() |
|
.item() |
|
for sentence in context_sentences |
|
] |
|
if keep_first_sentence: |
|
sentence_ppl[:keep_first_sentence] = [ |
|
ii + high_priority_bonus |
|
for ii in sentence_ppl[:keep_first_sentence] |
|
] |
|
if keep_last_sentence: |
|
sentence_ppl[-keep_last_sentence:] = [ |
|
ii + high_priority_bonus |
|
for ii in sentence_ppl[-keep_last_sentence:] |
|
] |
|
if keep_sentence_number: |
|
for dem_idx in range(len(sentences)): |
|
keep_sentence(dem_idx, keep_sentence_number) |
|
sort_direct = -1 if condition_in_question == "none" else 1 |
|
sent_sort = sorted( |
|
enumerate(sentence_ppl), key=lambda x: sort_direct * x[1] |
|
) |
|
else: |
|
sent_sort = self.get_rank_results( |
|
context_sentences, |
|
question, |
|
rank_method, |
|
condition_in_question, |
|
[0] * len(context_sentences), |
|
) |
|
|
|
sentence_flags = [False] * N |
|
if target_token < 0: |
|
target_token = 100 |
|
target_token *= token_budget_ratio |
|
res = [] |
|
for idx, _ in sent_sort: |
|
idx = flags[idx] |
|
target_token -= sentence_tokens_length[idx] |
|
sentence_flags[idx] = True |
|
if target_token < 0: |
|
break |
|
idx = 0 |
|
res = [] |
|
for s in sentences: |
|
tmp = [jj for ii, jj in enumerate(s) if sentence_flags[idx + ii]] |
|
res.append("\n".join(tmp)) |
|
idx += len(s) |
|
return res |
|
|
|
def get_compressed_input( |
|
self, |
|
loss, |
|
input_ids, |
|
attention_mask, |
|
end=200, |
|
iterative_size=200, |
|
threshold=0.5, |
|
keep_flag=None, |
|
split_token_id: int = 13, |
|
start: int = 0, |
|
self_loss=None, |
|
self_input_ids=None, |
|
self_attention_mask=None, |
|
): |
|
if self_loss is not None: |
|
need_idx = torch.concat( |
|
[ |
|
loss[:start] > 0, |
|
self_loss[: loss[start:].shape[0]] - loss[start:] > threshold, |
|
loss[:1] > 0, |
|
] |
|
) |
|
else: |
|
need_idx = torch.concat([loss > threshold, loss[:1] > 0]) |
|
need_idx[end:] = 1 |
|
need_idx[: end - iterative_size] = 1 |
|
loss = loss[need_idx[:-1]] |
|
if self_loss is not None: |
|
if need_idx.shape[0] < self_loss.shape[0] + start + 1: |
|
need_idx = torch.cat( |
|
[ |
|
need_idx, |
|
torch.ones( |
|
self_loss.shape[0] - need_idx.shape[0] + start + 1, |
|
dtype=torch.bool, |
|
).to(need_idx.device), |
|
] |
|
) |
|
self_loss = self_loss[need_idx[start:-1]] |
|
|
|
if need_idx.shape[0] < input_ids.shape[1]: |
|
need_idx = torch.cat( |
|
[ |
|
need_idx, |
|
torch.ones( |
|
input_ids.shape[1] - need_idx.shape[0], dtype=torch.bool |
|
).to(need_idx.device), |
|
] |
|
) |
|
elif need_idx.shape[0] > input_ids.shape[1]: |
|
need_idx = need_idx[: input_ids.shape[1]] |
|
|
|
if keep_flag is not None: |
|
need_idx[keep_flag == 1] = 1 |
|
last = -1 |
|
if keep_flag is not None: |
|
for ii in range(end - iterative_size, end): |
|
if need_idx[ii] != 1: |
|
continue |
|
now = input_ids[0][ii].detach().cpu().item() |
|
if ( |
|
now == split_token_id |
|
and last == split_token_id |
|
and keep_flag[ii].detach().cpu().item() == 0 |
|
): |
|
need_idx[ii] = 0 |
|
else: |
|
last = now |
|
compressed_input_ids = input_ids[attention_mask == 1][need_idx].unsqueeze(0) |
|
compressed_attention_mask = attention_mask[attention_mask == 1][ |
|
need_idx |
|
].unsqueeze(0) |
|
|
|
if self_loss is not None: |
|
self_compressed_input_ids = self_input_ids[self_attention_mask == 1][ |
|
need_idx[start:] |
|
].unsqueeze(0) |
|
self_compressed_attention_mask = self_attention_mask[ |
|
self_attention_mask == 1 |
|
][need_idx[start:]].unsqueeze(0) |
|
else: |
|
self_compressed_input_ids, self_compressed_attention_mask = None, None |
|
if keep_flag is not None: |
|
if len(keep_flag) > len(need_idx): |
|
keep_flag = torch.cat( |
|
[ |
|
keep_flag[:start], |
|
keep_flag[start : len(need_idx) + start][need_idx], |
|
keep_flag[start + len(need_idx) :], |
|
] |
|
) |
|
else: |
|
keep_flag = keep_flag[need_idx] |
|
end -= (need_idx[:end] == 0).sum() |
|
return ( |
|
compressed_input_ids, |
|
compressed_attention_mask, |
|
keep_flag, |
|
end, |
|
loss, |
|
self_loss, |
|
self_compressed_input_ids, |
|
self_compressed_attention_mask, |
|
) |
|
|
|
def get_estimate_threshold_base_distribution( |
|
self, ppl, ratio: float, condition_flag: bool = False |
|
): |
|
ppl = ppl[ppl != 10000] |
|
target_token = max(0, min(len(ppl) - 1, int(len(ppl) * ratio) - 1)) |
|
return ( |
|
ppl.sort(descending=not condition_flag) |
|
.values[target_token] |
|
.detach() |
|
.cpu() |
|
.item() |
|
) |
|
|
|
def iterative_compress_prompt( |
|
self, |
|
context: List[str], |
|
target_token: float, |
|
iterative_size: int = 200, |
|
keep_split: bool = False, |
|
split_token_id: int = 13, |
|
start: int = 0, |
|
dynamic_ratio: list = None, |
|
condition_compare: bool = False, |
|
): |
|
iterative_ratios = self.get_dynamic_compression_ratio( |
|
context, target_token, iterative_size, dynamic_ratio, start |
|
) |
|
context = "\n\n".join(context) |
|
tokenized_text = self.tokenizer(context, return_tensors="pt") |
|
input_ids = tokenized_text["input_ids"].to(self.device) |
|
attention_mask = tokenized_text["attention_mask"].to(self.device) |
|
|
|
N = (attention_mask == 1).sum() |
|
compressed_input_ids, compressed_attention_mask = input_ids, attention_mask |
|
if condition_compare: |
|
self_input_ids, self_attention_mask = ( |
|
input_ids[:, start:], |
|
attention_mask[:, start:], |
|
) |
|
self_compressed_input_ids, self_compressed_attention_mask = ( |
|
self_input_ids, |
|
self_attention_mask, |
|
) |
|
|
|
end = min(iterative_size + start, compressed_input_ids.shape[1]) |
|
threshold, keep_flag = None, None |
|
if keep_split: |
|
input_ids_numpy = input_ids.cpu().detach().numpy()[0] |
|
N = len(input_ids_numpy) |
|
keep_flag = [ |
|
int( |
|
( |
|
ii > 0 |
|
and input_ids_numpy[ii] == split_token_id |
|
and input_ids_numpy[ii - 1] == split_token_id |
|
) |
|
or ( |
|
ii < N - 1 |
|
and input_ids_numpy[ii] == split_token_id |
|
and input_ids_numpy[ii + 1] == split_token_id |
|
) |
|
) |
|
for ii in range(N) |
|
] |
|
keep_flag = torch.tensor(keep_flag).to(self.device) |
|
past_key_values, past_loss, ready_end = None, None, 0 |
|
self_past_key_values, self_past_loss, self_ready_end = None, None, 0 |
|
pop_compressed_input_ids, pop_self_compressed_input_ids = None, None |
|
idx = 0 |
|
while end <= compressed_input_ids.shape[1]: |
|
if end > self.max_position_embeddings and past_key_values is not None: |
|
|
|
e, s = end - self.max_position_embeddings, self.cache_bos_num |
|
if pop_compressed_input_ids is None: |
|
pop_compressed_input_ids = compressed_input_ids[:, :e] |
|
else: |
|
pop_compressed_input_ids = torch.cat( |
|
[pop_compressed_input_ids, compressed_input_ids[:, :e]], dim=-1 |
|
) |
|
compressed_input_ids = compressed_input_ids[:, e:] |
|
compressed_attention_mask = compressed_attention_mask[:, e:] |
|
past_key_values = [ |
|
[ |
|
torch.cat([k[..., :s, :], k[..., s + e :, :]], dim=-2), |
|
torch.cat([v[..., :s, :], v[..., s + e :, :]], dim=-2), |
|
] |
|
for k, v in past_key_values |
|
] |
|
end, ready_end = end - e, ready_end - e |
|
if condition_compare: |
|
self_ready_end -= e |
|
if pop_self_compressed_input_ids is None: |
|
pop_self_compressed_input_ids = self_compressed_input_ids[:, :e] |
|
else: |
|
pop_self_compressed_input_ids = torch.cat( |
|
[ |
|
pop_self_compressed_input_ids, |
|
self_compressed_input_ids[:, :e], |
|
], |
|
dim=-1, |
|
) |
|
self_compressed_input_ids = self_compressed_input_ids[:, e:] |
|
self_compressed_attention_mask = self_compressed_attention_mask[ |
|
:, e: |
|
] |
|
self_past_key_values = [ |
|
[ |
|
torch.cat([k[..., :s, :], k[..., s + e :, :]], dim=-2), |
|
torch.cat([v[..., :s, :], v[..., s + e :, :]], dim=-2), |
|
] |
|
for k, v in self_past_key_values |
|
] |
|
|
|
loss, past_key_values = self.get_ppl( |
|
"", |
|
"token", |
|
compressed_input_ids, |
|
compressed_attention_mask, |
|
past_key_values=past_key_values, |
|
return_kv=True, |
|
end=end if idx else None, |
|
) |
|
if past_loss is not None: |
|
if end - 1 > len(past_loss): |
|
past_loss = torch.cat( |
|
[past_loss, torch.zeros_like(loss)[: end - 1 - len(past_loss)]] |
|
) |
|
past_loss[ready_end : end - 1] = loss |
|
loss = past_loss |
|
else: |
|
past_loss = loss |
|
if idx: |
|
past_key_values = [ |
|
[k[:, :, : end - iterative_size], v[:, :, : end - iterative_size]] |
|
for k, v in past_key_values |
|
] |
|
else: |
|
past_key_values = None |
|
|
|
if condition_compare: |
|
self_loss, self_past_key_values = self.get_ppl( |
|
"", |
|
"token", |
|
self_compressed_input_ids, |
|
self_compressed_attention_mask, |
|
past_key_values=self_past_key_values, |
|
return_kv=True, |
|
end=end - start if idx else None, |
|
) |
|
if self_past_loss is not None: |
|
if end - start - 1 > len(self_past_loss): |
|
self_past_loss = torch.cat( |
|
[ |
|
self_past_loss, |
|
torch.zeros_like(self_loss)[ |
|
: end - 1 - start - len(self_past_loss) |
|
], |
|
] |
|
) |
|
self_past_loss[self_ready_end : end - start - 1] = self_loss |
|
self_loss = self_past_loss |
|
else: |
|
self_past_loss = self_loss |
|
if idx: |
|
self_past_key_values = [ |
|
[ |
|
k[:, :, : end - iterative_size - start], |
|
v[:, :, : end - iterative_size - start], |
|
] |
|
for k, v in self_past_key_values |
|
] |
|
else: |
|
self_past_key_values = None |
|
|
|
self_ready_end = ( |
|
end - start - iterative_size if not (start and idx == 0) else 0 |
|
) |
|
ready_end = end - iterative_size if not (start and idx == 0) else 0 |
|
|
|
for delta_end, ratio in iterative_ratios[idx]: |
|
loss = past_loss |
|
if condition_compare: |
|
self_loss = self_past_loss |
|
threshold = self.get_estimate_threshold_base_distribution( |
|
self_loss[: loss[start:].shape[0]] - loss[start:], ratio, False |
|
) |
|
else: |
|
threshold = self.get_estimate_threshold_base_distribution( |
|
loss, ratio, False |
|
) |
|
|
|
( |
|
compressed_input_ids, |
|
compressed_attention_mask, |
|
keep_flag, |
|
end, |
|
past_loss, |
|
self_past_loss, |
|
self_compressed_input_ids, |
|
self_compressed_attention_mask, |
|
) = self.get_compressed_input( |
|
loss, |
|
compressed_input_ids, |
|
compressed_attention_mask, |
|
end - iterative_size + delta_end, |
|
iterative_size=delta_end, |
|
threshold=threshold, |
|
keep_flag=keep_flag, |
|
split_token_id=split_token_id, |
|
start=start, |
|
self_loss=self_loss if condition_compare else None, |
|
self_input_ids=self_compressed_input_ids |
|
if condition_compare |
|
else None, |
|
self_attention_mask=self_compressed_attention_mask |
|
if condition_compare |
|
else None, |
|
) |
|
end += iterative_size |
|
idx += 1 |
|
if pop_compressed_input_ids is not None: |
|
compressed_input_ids = torch.cat( |
|
[pop_compressed_input_ids, compressed_input_ids], dim=-1 |
|
) |
|
return compressed_input_ids[:, start:], compressed_attention_mask[:, start:] |
|
|
|
def recover( |
|
self, |
|
original_prompt: str, |
|
compressed_prompt: str, |
|
response: str, |
|
): |
|
def match_from_compressed(response_word): |
|
response_input_ids = self.tokenizer( |
|
response_word, add_special_tokens=False |
|
)["input_ids"] |
|
response_set, response_c = set(response_input_ids), defaultdict(list) |
|
for idx in range(M): |
|
if original_input_ids[idx] in response_set: |
|
response_c[original_input_ids[idx]].append(idx) |
|
res, res_min, res_c = None, float("inf"), 1 |
|
n = len(response_input_ids) |
|
for l in response_c[response_input_ids[0]]: |
|
x, y, c = 0, l, 1 |
|
for x in range(1, n): |
|
idx = bisect.bisect_right(response_c[response_input_ids[x]], y) |
|
if ( |
|
idx >= len(response_c[response_input_ids[x]]) |
|
or response_c[response_input_ids[x]][idx] - y > 10 |
|
): |
|
continue |
|
c += 1 |
|
y = response_c[response_input_ids[x]][idx] |
|
if c > res_c: |
|
res_c = c |
|
res_min = y - l + 1 |
|
res = (l, y + 1) |
|
elif c == res_c and y - l + 1 < res_min: |
|
res_min = y - l + 1 |
|
res = (l, y + 1) |
|
|
|
if res is None: |
|
return response_word |
|
|
|
|
|
|
|
|
|
return self.tokenizer.decode(original_input_ids[res[0] : res[1]]) |
|
|
|
response_words = response.split(" ") |
|
|
|
original_input_ids = self.tokenizer(original_prompt, add_special_tokens=False)[ |
|
"input_ids" |
|
] |
|
N, M = len(response_words), len(original_input_ids) |
|
recovered_response_words = [] |
|
l = 0 |
|
while l < N: |
|
if response_words[l] not in compressed_prompt: |
|
recovered_response_words.append(response_words[l]) |
|
l += 1 |
|
continue |
|
r = l |
|
while ( |
|
r + 1 < N and " ".join(response_words[l : r + 2]) in compressed_prompt |
|
): |
|
r += 1 |
|
|
|
match_words = match_from_compressed(" ".join(response_words[l : r + 1])) |
|
recovered_response_words.append(match_words) |
|
l = r + 1 |
|
return " ".join(recovered_response_words) |
|
|
|
def get_rank_results( |
|
self, |
|
context: list, |
|
question: str, |
|
rank_method: str, |
|
condition_in_question: str, |
|
context_tokens_length: list, |
|
): |
|
def get_distance_bm25(corpus, query): |
|
from rank_bm25 import BM25Okapi |
|
|
|
tokenized_corpus = [doc.split(" ") for doc in corpus] |
|
bm25 = BM25Okapi(tokenized_corpus) |
|
tokenized_query = query.split(" ") |
|
doc_scores = bm25.get_scores(tokenized_query) |
|
idx = [(ii, 0) for ii in (-doc_scores).argsort()] |
|
return idx |
|
|
|
def get_distance_gzip(corpus, query): |
|
def get_score(x, y): |
|
cx, cy = len(gzip.compress(x.encode())), len(gzip.compress(y.encode())) |
|
cxy = len(gzip.compress(f"{x} {y}".encode())) |
|
return (cxy - min(cx, cy)) / max(cx, cy) |
|
|
|
import gzip |
|
|
|
doc_scores = [get_score(doc, query) for doc in corpus] |
|
idx = [(ii, 0) for ii in np.argsort(doc_scores)] |
|
return idx |
|
|
|
def get_distance_sentbert(corpus, query): |
|
from sentence_transformers import SentenceTransformer, util |
|
|
|
if self.retrieval_model is None or self.retrieval_model_name != rank_method: |
|
self.retrieval_model = SentenceTransformer("multi-qa-mpnet-base-dot-v1") |
|
self.retrieval_model_name = rank_method |
|
doc_embeds = self.retrieval_model.encode(corpus) |
|
query = self.retrieval_model.encode(query) |
|
doc_scores = -util.dot_score(doc_embeds, query).cpu().numpy().reshape(-1) |
|
idx = [(ii, 0) for ii in np.argsort(doc_scores)] |
|
return idx |
|
|
|
def get_distance_openai(corpus, query): |
|
import openai |
|
from sentence_transformers import util |
|
|
|
openai.api_key = self.open_api_config.get("api_key", "") |
|
openai.api_base = self.open_api_config.get( |
|
"api_base", "https://api.openai.com/v1" |
|
) |
|
openai.api_type = self.open_api_config.get("api_type", "open_ai") |
|
openai.api_version = self.open_api_config.get("api_version", "2023-05-15") |
|
engine = self.open_api_config.get("engine", "text-embedding-ada-002") |
|
|
|
def get_embed(text): |
|
return openai.Embedding.create( |
|
input=[text.replace("\n", " ")], engine=engine |
|
)["LongBench"][0]["embedding"] |
|
|
|
doc_embeds = [get_embed(i) for i in corpus] |
|
query = get_embed(query) |
|
doc_scores = -util.dot_score(doc_embeds, query).cpu().numpy().reshape(-1) |
|
idx = [(ii, 0) for ii in np.argsort(doc_scores)] |
|
return idx |
|
|
|
def get_distance_sentbert_bge(corpus, query): |
|
from sentence_transformers import SentenceTransformer, util |
|
|
|
if self.retrieval_model is None or self.retrieval_model_name != rank_method: |
|
self.retrieval_model = SentenceTransformer("BAAI/bge-large-en-v1.5") |
|
self.retrieval_model_name = rank_method |
|
doc_embeds = self.retrieval_model.encode( |
|
[i for i in corpus], normalize_embeddings=True |
|
) |
|
query = self.retrieval_model.encode(query, normalize_embeddings=True) |
|
doc_scores = -util.dot_score(doc_embeds, query).cpu().numpy().reshape(-1) |
|
idx = [(ii, 0) for ii in np.argsort(doc_scores)] |
|
return idx |
|
|
|
def get_distance_bge_ranker(corpus, query): |
|
from transformers import AutoModelForSequenceClassification, AutoTokenizer |
|
|
|
pairs = [[i, query] for i in corpus] |
|
if self.retrieval_model is None or self.retrieval_model_name != rank_method: |
|
tokenizer = AutoTokenizer.from_pretrained("BAAI/bge-reranker-large") |
|
model = ( |
|
AutoModelForSequenceClassification.from_pretrained( |
|
"BAAI/bge-reranker-large" |
|
) |
|
.eval() |
|
.to(self.device) |
|
) |
|
self.retrieval_model = [tokenizer, model] |
|
self.retrieval_model_name = rank_method |
|
with torch.no_grad(): |
|
inputs = self.retrieval_model[0]( |
|
pairs, |
|
padding=True, |
|
truncation=True, |
|
return_tensors="pt", |
|
max_length=512, |
|
).to(self.device) |
|
scores = ( |
|
self.retrieval_model[1](**inputs, return_dict=True) |
|
.logits.view( |
|
-1, |
|
) |
|
.float() |
|
) |
|
idx = [(ii, 0) for ii in np.argsort(-scores.cpu())] |
|
return idx |
|
|
|
def get_distance_bge_llmembedder(corpus, query): |
|
from transformers import AutoModel, AutoTokenizer |
|
|
|
if self.retrieval_model is None or self.retrieval_model_name != rank_method: |
|
tokenizer = AutoTokenizer.from_pretrained("BAAI/llm-embedder") |
|
model = ( |
|
AutoModel.from_pretrained("BAAI/llm-embedder") |
|
.eval() |
|
.to(self.device) |
|
) |
|
self.retrieval_model = [tokenizer, model] |
|
self.retrieval_model_name = rank_method |
|
|
|
instruction_qa_query = ( |
|
"Represent this query for retrieving relevant documents: " |
|
) |
|
instruction_qa_key = "Represent this document for retrieval: " |
|
queries = [instruction_qa_query + query for _ in corpus] |
|
keys = [instruction_qa_key + key for key in corpus] |
|
with torch.no_grad(): |
|
query_inputs = self.retrieval_model[0]( |
|
queries, |
|
padding=True, |
|
truncation=True, |
|
return_tensors="pt", |
|
max_length=512, |
|
).to(self.device) |
|
key_inputs = self.retrieval_model[0]( |
|
keys, |
|
padding=True, |
|
truncation=True, |
|
return_tensors="pt", |
|
max_length=512, |
|
).to(self.device) |
|
query_outputs = self.retrieval_model[1](**query_inputs) |
|
key_outputs = self.retrieval_model[1](**key_inputs) |
|
|
|
query_embeddings = query_outputs.last_hidden_state[:, 0] |
|
key_embeddings = key_outputs.last_hidden_state[:, 0] |
|
|
|
query_embeddings = torch.nn.functional.normalize( |
|
query_embeddings, p=2, dim=1 |
|
) |
|
key_embeddings = torch.nn.functional.normalize( |
|
key_embeddings, p=2, dim=1 |
|
) |
|
similarity = query_embeddings @ key_embeddings.T |
|
idx = [(ii, 0) for ii in np.argsort(-similarity[0].cpu())] |
|
return idx |
|
|
|
def get_distance_jinza(corpus, query): |
|
from numpy.linalg import norm |
|
|
|
from transformers import AutoModel |
|
|
|
def cos_sim(a, b): |
|
return (a @ b.T) / (norm(a) * norm(b)) |
|
|
|
if self.retrieval_model is None or self.retrieval_model_name != rank_method: |
|
model = ( |
|
AutoModel.from_pretrained( |
|
"jinaai/jina-embeddings-v2-base-en", trust_remote_code=True |
|
) |
|
.eval() |
|
.to(self.device) |
|
) |
|
self.retrieval_model = model |
|
self.retrieval_model_name = rank_method |
|
|
|
doc_embeds = self.retrieval_model.encode(corpus) |
|
query = self.retrieval_model.encode(query) |
|
doc_scores = cos_sim(doc_embeds, query) |
|
idx = [(ii, 0) for ii in np.argsort(-doc_scores)] |
|
return idx |
|
|
|
def get_distance_voyageai(corpus, query): |
|
import voyageai |
|
from sentence_transformers import util |
|
|
|
voyageai.api_key = self.open_api_config.get("voyageai_api_key", "") |
|
|
|
def get_embed(text): |
|
return voyageai.get_embedding(text, model="voyage-01") |
|
|
|
doc_embeds = [get_embed(i) for i in corpus] |
|
query = get_embed(query) |
|
doc_scores = -util.dot_score(doc_embeds, query).cpu().numpy().reshape(-1) |
|
idx = [(ii, 0) for ii in np.argsort(doc_scores)] |
|
return idx |
|
|
|
def get_distance_cohere(corpus, query): |
|
import cohere |
|
|
|
api_key = self.open_api_config.get("cohere_api_key", "") |
|
co = cohere.Client(api_key) |
|
results = co.rerank( |
|
model="rerank-english-v2.0", query=query, documents=corpus, top_n=20 |
|
) |
|
c_map = {jj: ii for ii, jj in enumerate(corpus)} |
|
doc_rank = [c_map[ii.document["text"]] for ii in results] |
|
idx = [(ii, 0) for ii in doc_rank] |
|
return idx |
|
|
|
def get_distance_longllmlingua(corpus, query): |
|
context_ppl = [ |
|
self.get_condition_ppl( |
|
d, |
|
query |
|
+ " We can get the answer to this question in the given documents.", |
|
condition_in_question, |
|
) |
|
- dl * 2 / 250 * 0 |
|
for d, dl in zip(corpus, context_tokens_length) |
|
] |
|
sort_direct = -1 if condition_in_question == "none" else 1 |
|
ys = sorted(enumerate(context_ppl), key=lambda x: sort_direct * x[1]) |
|
return ys |
|
|
|
method = None |
|
if rank_method == "bm25": |
|
method = get_distance_bm25 |
|
elif rank_method == "gzip": |
|
method = get_distance_gzip |
|
elif rank_method == "sentbert": |
|
method = get_distance_sentbert |
|
elif rank_method == "openai": |
|
method = get_distance_openai |
|
elif rank_method in ["longllmlingua", "llmlingua"]: |
|
method = get_distance_longllmlingua |
|
elif rank_method == "bge": |
|
method = get_distance_sentbert_bge |
|
elif rank_method == "bge_reranker": |
|
method = get_distance_bge_ranker |
|
elif rank_method == "bge_llmembedder": |
|
method = get_distance_bge_llmembedder |
|
elif rank_method == "jinza": |
|
method = get_distance_jinza |
|
elif rank_method == "voyageai": |
|
method = get_distance_voyageai |
|
elif rank_method == "cohere": |
|
method = get_distance_cohere |
|
return method(context, question) |
|
|
|
|