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* Make Tutorial10 use print instead of logs and fix a typo in Tutoria15 * Add a type check in 'print_answers' * Add same checks to print_documents and print_questions * Make RAGenerator return Answers instead of dictionaries * Fix RAGenerator tests Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
240 lines
7.8 KiB
Python
240 lines
7.8 KiB
Python
from haystack.utils import clean_wiki_text, print_answers, print_documents, fetch_archive_from_http, convert_files_to_dicts, launch_es
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from pprint import pprint
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from haystack import Pipeline
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from haystack.document_stores import ElasticsearchDocumentStore
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from haystack.nodes import ElasticsearchRetriever, DensePassageRetriever, FARMReader, RAGenerator, BaseComponent, JoinDocuments
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from haystack.pipelines import ExtractiveQAPipeline, DocumentSearchPipeline, GenerativeQAPipeline
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def tutorial11_pipelines():
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#Download and prepare data - 517 Wikipedia articles for Game of Thrones
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doc_dir = "data/article_txt_got"
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s3_url = "https://s3.eu-central-1.amazonaws.com/deepset.ai-farm-qa/datasets/documents/wiki_gameofthrones_txt.zip"
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fetch_archive_from_http(url=s3_url, output_dir=doc_dir)
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# convert files to dicts containing documents that can be indexed to our datastore
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got_dicts = convert_files_to_dicts(
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dir_path=doc_dir,
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clean_func=clean_wiki_text,
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split_paragraphs=True
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)
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# Initialize DocumentStore and index documents
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launch_es()
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document_store = ElasticsearchDocumentStore()
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document_store.delete_documents()
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document_store.write_documents(got_dicts)
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# Initialize Sparse retriever
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es_retriever = ElasticsearchRetriever(document_store=document_store)
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# Initialize dense retriever
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dpr_retriever = DensePassageRetriever(document_store)
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document_store.update_embeddings(dpr_retriever, update_existing_embeddings=False)
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reader = FARMReader(model_name_or_path="deepset/roberta-base-squad2")
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print()
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print("######################")
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print("# Prebuilt Pipelines #")
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print("######################")
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print()
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print("# Extractive QA Pipeline")
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print("########################")
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query="Who is the father of Arya Stark?"
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p_extractive_premade = ExtractiveQAPipeline(reader=reader, retriever=es_retriever)
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res = p_extractive_premade.run(
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query=query,
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params={"Retriever": {"top_k": 10}, "Reader": {"top_k": 5}},
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)
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print("\nQuery: ", query)
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print("Answers:")
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print_answers(res, details="minimum")
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print()
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print("# Document Search Pipeline")
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print("##########################")
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query="Who is the father of Arya Stark?"
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p_retrieval = DocumentSearchPipeline(es_retriever)
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res = p_retrieval.run(
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query=query,
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params={"Retriever": {"top_k": 10}},
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)
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print()
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print_documents(res, max_text_len=200)
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print()
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print("# Generator Pipeline")
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print("####################")
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# We set this to True so that the document store returns document embeddings
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# with each document, this is needed by the Generator
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document_store.return_embedding = True
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# Initialize generator
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rag_generator = RAGenerator()
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# Generative QA
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query="Who is the father of Arya Stark?"
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p_generator = GenerativeQAPipeline(generator=rag_generator, retriever=dpr_retriever)
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res = p_generator.run(
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query=query,
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params={"Retriever": {"top_k": 10}},
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)
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print()
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print_answers(res, details="minimum")
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# We are setting this to False so that in later pipelines,
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# we get a cleaner printout
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document_store.return_embedding = False
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##############################
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# Creating Pipeline Diagrams #
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##############################
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p_extractive_premade.draw("pipeline_extractive_premade.png")
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p_retrieval.draw("pipeline_retrieval.png")
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p_generator.draw("pipeline_generator.png")
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print()
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print("####################")
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print("# Custom Pipelines #")
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print("####################")
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print()
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print("# Extractive QA Pipeline")
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print("########################")
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# Custom built extractive QA pipeline
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p_extractive = Pipeline()
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p_extractive.add_node(component=es_retriever, name="Retriever", inputs=["Query"])
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p_extractive.add_node(component=reader, name="Reader", inputs=["Retriever"])
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# Now we can run it
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query="Who is the father of Arya Stark?"
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res = p_extractive.run(
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query=query,
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params={"Retriever": {"top_k": 10}, "Reader": {"top_k": 5}},
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)
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print("\nQuery: ", query)
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print("Answers:")
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print_answers(res, details="minimum")
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p_extractive.draw("pipeline_extractive.png")
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print()
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print("# Ensembled Retriever Pipeline")
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print("##############################")
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# Create ensembled pipeline
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p_ensemble = Pipeline()
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p_ensemble.add_node(component=es_retriever, name="ESRetriever", inputs=["Query"])
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p_ensemble.add_node(component=dpr_retriever, name="DPRRetriever", inputs=["Query"])
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p_ensemble.add_node(component=JoinDocuments(join_mode="concatenate"), name="JoinResults", inputs=["ESRetriever", "DPRRetriever"])
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p_ensemble.add_node(component=reader, name="Reader", inputs=["JoinResults"])
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p_ensemble.draw("pipeline_ensemble.png")
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# Run pipeline
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query="Who is the father of Arya Stark?"
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res = p_ensemble.run(
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query="Who is the father of Arya Stark?",
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params={"ESRetriever": {"top_k": 5}, "DPRRetriever": {"top_k": 5}},
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)
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print("\nQuery: ", query)
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print("Answers:")
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print_answers(res, details="minimum")
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print()
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print("# Query Classification Pipeline")
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print("###############################")
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# Decision Nodes help you route your data so that only certain branches of your `Pipeline` are run.
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# Though this looks very similar to the ensembled pipeline shown above,
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# the key difference is that only one of the retrievers is run for each request.
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# By contrast both retrievers are always run in the ensembled approach.
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class CustomQueryClassifier(BaseComponent):
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outgoing_edges = 2
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def run(self, query):
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if "?" in query:
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return {}, "output_2"
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else:
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return {}, "output_1"
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# Here we build the pipeline
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p_classifier = Pipeline()
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p_classifier.add_node(component=CustomQueryClassifier(), name="QueryClassifier", inputs=["Query"])
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p_classifier.add_node(component=es_retriever, name="ESRetriever", inputs=["QueryClassifier.output_1"])
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p_classifier.add_node(component=dpr_retriever, name="DPRRetriever", inputs=["QueryClassifier.output_2"])
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p_classifier.add_node(component=reader, name="QAReader", inputs=["ESRetriever", "DPRRetriever"])
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p_classifier.draw("pipeline_classifier.png")
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# Run only the dense retriever on the full sentence query
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query="Who is the father of Arya Stark?"
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res_1 = p_classifier.run(
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query=query,
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)
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print()
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print("\nQuery: ", query)
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print(" * DPR Answers:")
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print_answers(res_1, details="minimum")
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# Run only the sparse retriever on a keyword based query
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query="Arya Stark father"
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res_2 = p_classifier.run(
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query=query,
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)
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print()
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print("\nQuery: ", query)
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print(" * ES Answers:")
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print_answers(res_2, details="minimum")
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print("#######################")
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print("# Debugging Pipelines #")
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print("#######################")
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# You can print out debug information from nodes in your pipelines in a few different ways.
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# 1) You can set the `debug` attribute of a given node.
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es_retriever.debug = True
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# 2) You can provide `debug` as a parameter when running your pipeline
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result = p_classifier.run(
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query="Who is the father of Arya Stark?",
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params={
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"ESRetriever": {
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"debug": True
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}
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}
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)
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# 3) You can provide the `debug` paramter to all nodes in your pipeline
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result = p_classifier.run(
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query="Who is the father of Arya Stark?",
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params={
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"debug": True
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}
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)
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pprint(result["_debug"])
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if __name__ == "__main__":
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tutorial11_pipelines()
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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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