"""Integration test for embedding-based redundant doc filtering.""" from langchain.document_transformers.embeddings_redundant_filter import ( EmbeddingsClusteringFilter, EmbeddingsRedundantFilter, _DocumentWithState, ) from langchain.embeddings import OpenAIEmbeddings from langchain.schema import Document def test_embeddings_redundant_filter() -> None: texts = [ "What happened to all of my cookies?", "Where did all of my cookies go?", "I wish there were better Italian restaurants in my neighborhood.", ] docs = [Document(page_content=t) for t in texts] embeddings = OpenAIEmbeddings() redundant_filter = EmbeddingsRedundantFilter(embeddings=embeddings) actual = redundant_filter.transform_documents(docs) assert len(actual) == 2 assert set(texts[:2]).intersection([d.page_content for d in actual]) def test_embeddings_redundant_filter_with_state() -> None: texts = ["What happened to all of my cookies?", "foo bar baz"] state = {"embedded_doc": [0.5] * 10} docs = [_DocumentWithState(page_content=t, state=state) for t in texts] embeddings = OpenAIEmbeddings() redundant_filter = EmbeddingsRedundantFilter(embeddings=embeddings) actual = redundant_filter.transform_documents(docs) assert len(actual) == 1 def test_embeddings_clustering_filter() -> None: texts = [ "What happened to all of my cookies?", "A cookie is a small, baked sweet treat and you can find it in the cookie", "monsters' jar.", "Cookies are good.", "I have nightmares about the cookie monster.", "The most popular pizza styles are: Neapolitan, New York-style and", "Chicago-style. You can find them on iconic restaurants in major cities.", "Neapolitan pizza: This is the original pizza style,hailing from Naples,", "Italy.", "I wish there were better Italian Pizza restaurants in my neighborhood.", "New York-style pizza: This is characterized by its large, thin crust, and", "generous toppings.", "The first movie to feature a robot was 'A Trip to the Moon' (1902).", "The first movie to feature a robot that could pass for a human was", "'Blade Runner' (1982)", "The first movie to feature a robot that could fall in love with a human", "was 'Her' (2013)", "A robot is a machine capable of carrying out complex actions automatically.", "There are certainly hundreds, if not thousands movies about robots like:", "'Blade Runner', 'Her' and 'A Trip to the Moon'", ] docs = [Document(page_content=t) for t in texts] embeddings = OpenAIEmbeddings() redundant_filter = EmbeddingsClusteringFilter( embeddings=embeddings, num_clusters=3, num_closest=1, sorted=True, ) actual = redundant_filter.transform_documents(docs) assert len(actual) == 3 assert texts[1] in [d.page_content for d in actual] assert texts[4] in [d.page_content for d in actual] assert texts[11] in [d.page_content for d in actual]