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* mock all translator tests and move one to e2e * typo * extract pipeline tests using translator * remove duplicate test * move generator test in e2e * Update e2e/pipelines/test_extractive_qa.py * pytest.mark.unit * black * remove model name as well * remove unused fixture * rename original and improve pipeline tests * fixes * pylint
63 lines
2.8 KiB
Python
63 lines
2.8 KiB
Python
import pytest
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from haystack.pipelines import TranslationWrapperPipeline, ExtractiveQAPipeline
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from haystack.schema import Answer
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@pytest.mark.integration
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@pytest.mark.parametrize("retriever_with_docs", ["tfidf"], indirect=True)
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def test_extractive_qa_answers(reader, retriever_with_docs, document_store_with_docs):
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pipeline = ExtractiveQAPipeline(reader=reader, retriever=retriever_with_docs)
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prediction = pipeline.run(query="Who lives in Berlin?", params={"Retriever": {"top_k": 10}, "Reader": {"top_k": 3}})
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assert prediction is not None
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assert type(prediction["answers"][0]) == Answer
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assert prediction["query"] == "Who lives in Berlin?"
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assert prediction["answers"][0].answer == "Carla"
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assert prediction["answers"][0].score <= 1
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assert prediction["answers"][0].score >= 0
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assert prediction["answers"][0].meta["meta_field"] == "test1"
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assert prediction["answers"][0].context == "My name is Carla and I live in Berlin"
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assert len(prediction["answers"]) == 3
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@pytest.mark.integration
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@pytest.mark.parametrize("retriever_with_docs", ["tfidf"], indirect=True)
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def test_extractive_qa_answers_without_normalized_scores(reader_without_normalized_scores, retriever_with_docs):
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pipeline = ExtractiveQAPipeline(reader=reader_without_normalized_scores, retriever=retriever_with_docs)
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prediction = pipeline.run(query="Who lives in Berlin?", params={"Reader": {"top_k": 3}})
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assert prediction is not None
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assert prediction["query"] == "Who lives in Berlin?"
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assert prediction["answers"][0].answer == "Carla"
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assert prediction["answers"][0].score <= 9
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assert prediction["answers"][0].score >= 8
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assert prediction["answers"][0].meta["meta_field"] == "test1"
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assert prediction["answers"][0].context == "My name is Carla and I live in Berlin"
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assert len(prediction["answers"]) == 3
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@pytest.mark.parametrize("retriever_with_docs", ["tfidf"], indirect=True)
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def test_extractive_qa_offsets(reader, retriever_with_docs):
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pipeline = ExtractiveQAPipeline(reader=reader, retriever=retriever_with_docs)
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prediction = pipeline.run(query="Who lives in Berlin?", params={"Retriever": {"top_k": 5}})
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start = prediction["answers"][0].offsets_in_context[0].start
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end = prediction["answers"][0].offsets_in_context[0].end
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assert start == 11
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assert end == 16
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assert prediction["answers"][0].context[start:end] == prediction["answers"][0].answer
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@pytest.mark.integration
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@pytest.mark.parametrize("retriever_with_docs", ["tfidf"], indirect=True)
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def test_extractive_qa_answers_single_result(reader, retriever_with_docs):
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pipeline = ExtractiveQAPipeline(reader=reader, retriever=retriever_with_docs)
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query = "testing finder"
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prediction = pipeline.run(query=query, params={"Retriever": {"top_k": 1}, "Reader": {"top_k": 1}})
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assert prediction is not None
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assert len(prediction["answers"]) == 1
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