from langchain.agents import tool from torch import tensor as torch_tensor from datasets import load_dataset from sentence_transformers import SentenceTransformer, CrossEncoder, util """# import models""" bi_encoder = SentenceTransformer( 'sentence-transformers/multi-qa-MiniLM-L6-cos-v1') bi_encoder.max_seq_length = 256 # Truncate long passages to 256 tokens # The bi-encoder will retrieve top_k documents. We use a cross-encoder, to re-rank the results list to improve the quality cross_encoder = CrossEncoder('cross-encoder/ms-marco-MiniLM-L-6-v2') """# import datasets""" dataset = load_dataset("gfhayworth/wiki_mini", split='train') mypassages = list(dataset.to_pandas()['psg']) dataset_embed = load_dataset("gfhayworth/wiki_mini_embed", split='train') dataset_embed_pd = dataset_embed.to_pandas() mycorpus_embeddings = torch_tensor(dataset_embed_pd.values) def search(query, top_k=20, top_n=1): question_embedding = bi_encoder.encode(query, convert_to_tensor=True) hits = util.semantic_search( question_embedding, mycorpus_embeddings, top_k=top_k) hits = hits[0] # Get the hits for the first query ##### Re-Ranking ##### cross_inp = [[query, mypassages[hit['corpus_id']]] for hit in hits] cross_scores = cross_encoder.predict(cross_inp) # Sort results by the cross-encoder scores for idx in range(len(cross_scores)): hits[idx]['cross-score'] = cross_scores[idx] hits = sorted(hits, key=lambda x: x['cross-score'], reverse=True) predictions = hits[:top_n] return predictions # for hit in hits[0:3]: # print("\t{:.3f}\t{}".format(hit['cross-score'], mypassages[hit['corpus_id']].replace("\n", " "))) def get_text(qry): # predictions = greg_search(qry) predictions = search(qry) prediction_text = [] for hit in predictions: prediction_text.append("{}".format(mypassages[hit['corpus_id']])) return prediction_text @tool def mysearch(query: str) -> str: """Query our own datasets. """ rslt = get_text(query) return '\n'.join(rslt) @tool def mygreetings(greeting: str) -> str: """Let us do our greetings """ return "how are you?"