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* Modify __str__ and __repr__ for Document and Answer * Rename QueryClassifier in Tutorial11 * Improve the output of tutorial1 * Make the output of Tutorial8 a bit less dense * Add a print_questions util to print the output of question generating pipelines * Replace custom printing with the new utility in Tutorial13 * Ensure all output is printed with minimal details in Tutorial14 and add some titles * Minor change to print_answers * Make tutorial3's output the same as tutorial1 * Add __repr__ to Answer and fix to_dict() * Fix a bug in the Document and Answer's __str__ method * Improve print_answers, print_documents and print_questions * Using print_answers in Tutorial7 and fixing typo in the utils * Remove duplicate line in Tutorial12 * Use print_answers in Tutorial4 * Add explanation of what the documents in the output of the basic QA pipeline are * Move the fields constant into print_answers * Normalize all 'minimal' to 'minimum' (they were mixed up) * Improve the sample output to include all fields from Document and Answer Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
126 lines
4.4 KiB
Python
126 lines
4.4 KiB
Python
from typing import List
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import requests
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import pandas as pd
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from haystack import Document
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from haystack.document_stores import FAISSDocumentStore
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from haystack.nodes import RAGenerator, DensePassageRetriever
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from haystack.utils import print_answers
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def tutorial7_rag_generator():
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# Add documents from which you want generate answers
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# Download a csv containing some sample documents data
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# Here some sample documents data
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temp = requests.get("https://raw.githubusercontent.com/deepset-ai/haystack/master/tutorials/small_generator_dataset.csv")
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open('small_generator_dataset.csv', 'wb').write(temp.content)
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# Get dataframe with columns "title", and "text"
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df = pd.read_csv("small_generator_dataset.csv", sep=',')
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# Minimal cleaning
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df.fillna(value="", inplace=True)
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print(df.head())
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titles = list(df["title"].values)
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texts = list(df["text"].values)
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# Create to haystack document format
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documents: List[Document] = []
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for title, text in zip(titles, texts):
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documents.append(
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Document(
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content=text,
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meta={
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"name": title or ""
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}
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)
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)
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# Initialize FAISS document store to documents and corresponding index for embeddings
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# Set `return_embedding` to `True`, so generator doesn't have to perform re-embedding
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document_store = FAISSDocumentStore(
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faiss_index_factory_str="Flat",
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return_embedding=True
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)
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# Initialize DPR Retriever to encode documents, encode question and query documents
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retriever = DensePassageRetriever(
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document_store=document_store,
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query_embedding_model="facebook/dpr-question_encoder-single-nq-base",
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passage_embedding_model="facebook/dpr-ctx_encoder-single-nq-base",
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use_gpu=True,
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embed_title=True,
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)
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# Initialize RAG Generator
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generator = RAGenerator(
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model_name_or_path="facebook/rag-token-nq",
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use_gpu=True,
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top_k=1,
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max_length=200,
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min_length=2,
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embed_title=True,
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num_beams=2,
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)
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# Delete existing documents in documents store
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document_store.delete_documents()
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# Write documents to document store
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document_store.write_documents(documents)
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# Add documents embeddings to index
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document_store.update_embeddings(
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retriever=retriever
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)
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# Now ask your questions
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# We have some sample questions
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QUESTIONS = [
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"who got the first nobel prize in physics",
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"when is the next deadpool movie being released",
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"which mode is used for short wave broadcast service",
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"who is the owner of reading football club",
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"when is the next scandal episode coming out",
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"when is the last time the philadelphia won the superbowl",
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"what is the most current adobe flash player version",
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"how many episodes are there in dragon ball z",
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"what is the first step in the evolution of the eye",
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"where is gall bladder situated in human body",
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"what is the main mineral in lithium batteries",
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"who is the president of usa right now",
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"where do the greasers live in the outsiders",
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"panda is a national animal of which country",
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"what is the name of manchester united stadium",
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]
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# Now generate answer for question
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for question in QUESTIONS:
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# Retrieve related documents from retriever
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retriever_results = retriever.retrieve(
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query=question
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)
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# Now generate answer from question and retrieved documents
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predicted_result = generator.predict(
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query=question,
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documents=retriever_results,
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top_k=1
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)
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# Print you answer
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answers = predicted_result["answers"]
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print(f' -> Generated answer is \'{answers[0]["answer"]}\' for the question = \'{question}\'')
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# Or alternatively use the Pipeline class
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from haystack.pipelines import GenerativeQAPipeline
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pipe = GenerativeQAPipeline(generator=generator, retriever=retriever)
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for question in QUESTIONS:
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res = pipe.run(query=question, params={"Generator": {"top_k": 1}, "Retriever": {"top_k": 5}})
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print_answers(res, details="minimum")
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if __name__ == "__main__":
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tutorial7_rag_generator()
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# This Haystack script was made with love by deepset in Berlin, Germany
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# Haystack: https://github.com/deepset-ai/haystack
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# deepset: https://deepset.ai/
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