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97 lines
4.1 KiB
Python
97 lines
4.1 KiB
Python
import pandas as pd
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import faiss
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import numpy as np
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from sentence_transformers import SentenceTransformer
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import argparse
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import os
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def create_index(
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model,
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dataset_path,
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index_path,
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column_name,
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recreate):
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# Load Dataset
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dataset = pd.read_csv(dataset_path)
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# Clean Dataset
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dataset = dataset.dropna()
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dataset[column_name] = dataset[column_name].str.strip()
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# Create Index or Load it if it already exists
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if os.path.exists(index_path) and not recreate:
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index = faiss.read_index(index_path)
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else:
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# Create Embedding Vectors of Documents
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embeddings = model.encode(dataset[column_name].to_list(), show_progress_bar=True)
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embeddings = np.array([embedding for embedding in embeddings]).astype("float32")
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index = faiss.IndexIDMap(
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faiss.IndexFlatL2(
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embeddings.shape[1]))
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index.add_with_ids(embeddings, dataset.index.values)
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faiss.write_index(index, index_path)
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return index, dataset
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def resolve_column(dataset, Id, column):
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return [list(dataset[dataset.index == idx][column]) for idx in Id[0]]
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def vector_search(query, index, dataset, column_name, num_results=10):
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query_vector = np.array(query).astype("float32")
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D, Id = index.search(query_vector, k=num_results)
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return zip(D[0], Id[0], resolve_column(dataset, Id, column_name))
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if __name__ == '__main__':
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parser = argparse.ArgumentParser(description="Find most suitable match based on users exclude, include preferences")
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parser.add_argument('positives', type=str, help="Terms to find closest match to")
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parser.add_argument('--negatives', '-n', type=str, help="Terms to find farthest match from")
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parser.add_argument('--recreate', action='store_true', default=False, help="Recreate index at index_path from dataset at dataset path")
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parser.add_argument('--index', type=str, default="./.faiss_index", help="Path to index for storing vector embeddings")
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parser.add_argument('--dataset', type=str, default="./.dataset", help="Path to dataset to generate index from")
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parser.add_argument('--column', type=str, default="DATA", help="Name of dataset column to index")
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parser.add_argument('--num_results', type=int, default=10, help="Number of most suitable matches to show")
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parser.add_argument('--model_name', type=str, default='paraphrase-distilroberta-base-v1', help="Specify name of the SentenceTransformer model to use for encoding")
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args = parser.parse_args()
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model = SentenceTransformer(args.model_name)
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if args.positives and not args.negatives:
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# Get index, create it from dataset if doesn't exist
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index, dataset = create_index(model, args.dataset, args.index, args.column, args.recreate)
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# Create vector to represent user's stated positive preference
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preference_vector = model.encode([args.positives])
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# Find and display most suitable matches for users preferences in the dataset
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results = vector_search(preference_vector, index, dataset, args.column, args.num_results)
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print("Most Suitable Matches:")
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for similarity, id_, data in results:
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print(f"Id: {id_}\nSimilarity: {similarity}\n{args.column}: {data[0]}")
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elif args.positives and args.negatives:
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# Get index, create it from dataset if doesn't exist
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index, dataset = create_index(model, args.dataset, args.index, args.column, args.recreate)
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# Create vector to represent user's stated preference
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positives_vector = np.array(model.encode([args.positives])).astype("float32")
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negatives_vector = np.array(model.encode([args.negatives])).astype("float32")
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# preference_vector = np.mean([positives_vector, -1 * negatives_vector], axis=0)
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preference_vector = np.add(positives_vector, -1 * negatives_vector)
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# Find and display most suitable matches for users preferences in the dataset
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results = vector_search(preference_vector, index, dataset, args.column, args.num_results)
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print("Most Suitable Matches:")
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for similarity, id_, data in results:
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print(f"Id: {id_}\nSimilarity: {similarity}\n{args.column}: {data[0]}")
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