haystack/tutorials/Tutorial7_RAG_Generator.py
Sara Zan 91cafb49bb
Improve tutorials' output (#1694)
* 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>
2021-11-09 15:09:26 +01:00

126 lines
4.4 KiB
Python

from typing import List
import requests
import pandas as pd
from haystack import Document
from haystack.document_stores import FAISSDocumentStore
from haystack.nodes import RAGenerator, DensePassageRetriever
from haystack.utils import print_answers
def tutorial7_rag_generator():
# Add documents from which you want generate answers
# Download a csv containing some sample documents data
# Here some sample documents data
temp = requests.get("https://raw.githubusercontent.com/deepset-ai/haystack/master/tutorials/small_generator_dataset.csv")
open('small_generator_dataset.csv', 'wb').write(temp.content)
# Get dataframe with columns "title", and "text"
df = pd.read_csv("small_generator_dataset.csv", sep=',')
# Minimal cleaning
df.fillna(value="", inplace=True)
print(df.head())
titles = list(df["title"].values)
texts = list(df["text"].values)
# Create to haystack document format
documents: List[Document] = []
for title, text in zip(titles, texts):
documents.append(
Document(
content=text,
meta={
"name": title or ""
}
)
)
# Initialize FAISS document store to documents and corresponding index for embeddings
# Set `return_embedding` to `True`, so generator doesn't have to perform re-embedding
document_store = FAISSDocumentStore(
faiss_index_factory_str="Flat",
return_embedding=True
)
# Initialize DPR Retriever to encode documents, encode question and query documents
retriever = DensePassageRetriever(
document_store=document_store,
query_embedding_model="facebook/dpr-question_encoder-single-nq-base",
passage_embedding_model="facebook/dpr-ctx_encoder-single-nq-base",
use_gpu=True,
embed_title=True,
)
# Initialize RAG Generator
generator = RAGenerator(
model_name_or_path="facebook/rag-token-nq",
use_gpu=True,
top_k=1,
max_length=200,
min_length=2,
embed_title=True,
num_beams=2,
)
# Delete existing documents in documents store
document_store.delete_documents()
# Write documents to document store
document_store.write_documents(documents)
# Add documents embeddings to index
document_store.update_embeddings(
retriever=retriever
)
# Now ask your questions
# We have some sample questions
QUESTIONS = [
"who got the first nobel prize in physics",
"when is the next deadpool movie being released",
"which mode is used for short wave broadcast service",
"who is the owner of reading football club",
"when is the next scandal episode coming out",
"when is the last time the philadelphia won the superbowl",
"what is the most current adobe flash player version",
"how many episodes are there in dragon ball z",
"what is the first step in the evolution of the eye",
"where is gall bladder situated in human body",
"what is the main mineral in lithium batteries",
"who is the president of usa right now",
"where do the greasers live in the outsiders",
"panda is a national animal of which country",
"what is the name of manchester united stadium",
]
# Now generate answer for question
for question in QUESTIONS:
# Retrieve related documents from retriever
retriever_results = retriever.retrieve(
query=question
)
# Now generate answer from question and retrieved documents
predicted_result = generator.predict(
query=question,
documents=retriever_results,
top_k=1
)
# Print you answer
answers = predicted_result["answers"]
print(f' -> Generated answer is \'{answers[0]["answer"]}\' for the question = \'{question}\'')
# Or alternatively use the Pipeline class
from haystack.pipelines import GenerativeQAPipeline
pipe = GenerativeQAPipeline(generator=generator, retriever=retriever)
for question in QUESTIONS:
res = pipe.run(query=question, params={"Generator": {"top_k": 1}, "Retriever": {"top_k": 5}})
print_answers(res, details="minimum")
if __name__ == "__main__":
tutorial7_rag_generator()
# This Haystack script was made with love by deepset in Berlin, Germany
# Haystack: https://github.com/deepset-ai/haystack
# deepset: https://deepset.ai/