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							- import logging
 
- import time
 
- from typing import List
 
- import numpy as np
 
- from flask import current_app
 
- from langchain.embeddings.base import Embeddings
 
- from langchain.schema import Document
 
- from sklearn.manifold import TSNE
 
- from core.embedding.cached_embedding import CacheEmbedding
 
- from core.index.vector_index.vector_index import VectorIndex
 
- from core.model_providers.model_factory import ModelFactory
 
- from extensions.ext_database import db
 
- from models.account import Account
 
- from models.dataset import Dataset, DocumentSegment, DatasetQuery
 
- class HitTestingService:
 
-     @classmethod
 
-     def retrieve(cls, dataset: Dataset, query: str, account: Account, limit: int = 10) -> dict:
 
-         if dataset.available_document_count == 0 or dataset.available_segment_count == 0:
 
-             return {
 
-                 "query": {
 
-                     "content": query,
 
-                     "tsne_position": {'x': 0, 'y': 0},
 
-                 },
 
-                 "records": []
 
-             }
 
-         embedding_model = ModelFactory.get_embedding_model(
 
-             tenant_id=dataset.tenant_id,
 
-             model_provider_name=dataset.embedding_model_provider,
 
-             model_name=dataset.embedding_model
 
-         )
 
-         embeddings = CacheEmbedding(embedding_model)
 
-         vector_index = VectorIndex(
 
-             dataset=dataset,
 
-             config=current_app.config,
 
-             embeddings=embeddings
 
-         )
 
-         start = time.perf_counter()
 
-         documents = vector_index.search(
 
-             query,
 
-             search_type='similarity_score_threshold',
 
-             search_kwargs={
 
-                 'k': 10,
 
-                 'filter': {
 
-                     'group_id': [dataset.id]
 
-                 }
 
-             }
 
-         )
 
-         end = time.perf_counter()
 
-         logging.debug(f"Hit testing retrieve in {end - start:0.4f} seconds")
 
-         dataset_query = DatasetQuery(
 
-             dataset_id=dataset.id,
 
-             content=query,
 
-             source='hit_testing',
 
-             created_by_role='account',
 
-             created_by=account.id
 
-         )
 
-         db.session.add(dataset_query)
 
-         db.session.commit()
 
-         return cls.compact_retrieve_response(dataset, embeddings, query, documents)
 
-     @classmethod
 
-     def compact_retrieve_response(cls, dataset: Dataset, embeddings: Embeddings, query: str, documents: List[Document]):
 
-         text_embeddings = [
 
-             embeddings.embed_query(query)
 
-         ]
 
-         text_embeddings.extend(embeddings.embed_documents([document.page_content for document in documents]))
 
-         tsne_position_data = cls.get_tsne_positions_from_embeddings(text_embeddings)
 
-         query_position = tsne_position_data.pop(0)
 
-         i = 0
 
-         records = []
 
-         for document in documents:
 
-             index_node_id = document.metadata['doc_id']
 
-             segment = db.session.query(DocumentSegment).filter(
 
-                 DocumentSegment.dataset_id == dataset.id,
 
-                 DocumentSegment.enabled == True,
 
-                 DocumentSegment.status == 'completed',
 
-                 DocumentSegment.index_node_id == index_node_id
 
-             ).first()
 
-             if not segment:
 
-                 i += 1
 
-                 continue
 
-             record = {
 
-                 "segment": segment,
 
-                 "score": document.metadata['score'],
 
-                 "tsne_position": tsne_position_data[i]
 
-             }
 
-             records.append(record)
 
-             i += 1
 
-         return {
 
-             "query": {
 
-                 "content": query,
 
-                 "tsne_position": query_position,
 
-             },
 
-             "records": records
 
-         }
 
-     @classmethod
 
-     def get_tsne_positions_from_embeddings(cls, embeddings: list):
 
-         embedding_length = len(embeddings)
 
-         if embedding_length <= 1:
 
-             return [{'x': 0, 'y': 0}]
 
-         concatenate_data = np.array(embeddings).reshape(embedding_length, -1)
 
-         # concatenate_data = np.concatenate(embeddings)
 
-         perplexity = embedding_length / 2 + 1
 
-         if perplexity >= embedding_length:
 
-             perplexity = max(embedding_length - 1, 1)
 
-         tsne = TSNE(n_components=2, perplexity=perplexity, early_exaggeration=12.0)
 
-         data_tsne = tsne.fit_transform(concatenate_data)
 
-         tsne_position_data = []
 
-         for i in range(len(data_tsne)):
 
-             tsne_position_data.append({'x': float(data_tsne[i][0]), 'y': float(data_tsne[i][1])})
 
-         return tsne_position_data
 
 
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