| |
| |
| |
| import pandas as pd |
| import pytest |
|
|
| from haystack import Document |
| from haystack.dataclasses.byte_stream import ByteStream |
| from haystack.dataclasses.sparse_embedding import SparseEmbedding |
|
|
|
|
| @pytest.mark.parametrize( |
| "doc,doc_str", |
| [ |
| (Document(content="test text"), "content: 'test text'"), |
| ( |
| Document(dataframe=pd.DataFrame([["John", 25], ["Martha", 34]], columns=["name", "age"])), |
| "dataframe: (2, 2)", |
| ), |
| (Document(blob=ByteStream(b"hello, test string")), "blob: 18 bytes"), |
| ( |
| Document( |
| content="test text", |
| dataframe=pd.DataFrame([["John", 25], ["Martha", 34]], columns=["name", "age"]), |
| blob=ByteStream(b"hello, test string"), |
| ), |
| "content: 'test text', dataframe: (2, 2), blob: 18 bytes", |
| ), |
| ], |
| ) |
| def test_document_str(doc, doc_str): |
| assert f"Document(id={doc.id}, {doc_str})" == str(doc) |
|
|
|
|
| def test_init(): |
| doc = Document() |
| assert doc.id == "d4675c57fcfe114db0b95f1da46eea3c5d6f5729c17d01fb5251ae19830a3455" |
| assert doc.content == None |
| assert doc.dataframe == None |
| assert doc.blob == None |
| assert doc.meta == {} |
| assert doc.score == None |
| assert doc.embedding == None |
| assert doc.sparse_embedding == None |
|
|
|
|
| def test_init_with_wrong_parameters(): |
| with pytest.raises(TypeError): |
| Document(text="") |
|
|
|
|
| def test_init_with_parameters(): |
| blob_data = b"some bytes" |
| sparse_embedding = SparseEmbedding(indices=[0, 2, 4], values=[0.1, 0.2, 0.3]) |
| doc = Document( |
| content="test text", |
| dataframe=pd.DataFrame([0]), |
| blob=ByteStream(data=blob_data, mime_type="text/markdown"), |
| meta={"text": "test text"}, |
| score=0.812, |
| embedding=[0.1, 0.2, 0.3], |
| sparse_embedding=sparse_embedding, |
| ) |
| assert doc.id == "967b7bd4a21861ad9e863f638cefcbdd6bf6306bebdd30aa3fedf0c26bc636ed" |
| assert doc.content == "test text" |
| assert doc.dataframe is not None |
| assert doc.dataframe.equals(pd.DataFrame([0])) |
| assert doc.blob.data == blob_data |
| assert doc.blob.mime_type == "text/markdown" |
| assert doc.meta == {"text": "test text"} |
| assert doc.score == 0.812 |
| assert doc.embedding == [0.1, 0.2, 0.3] |
| assert doc.sparse_embedding == sparse_embedding |
|
|
|
|
| def test_init_with_legacy_fields(): |
| doc = Document( |
| content="test text", |
| content_type="text", |
| id_hash_keys=["content"], |
| score=0.812, |
| embedding=[0.1, 0.2, 0.3], |
| ) |
| assert doc.id == "18fc2c114825872321cf5009827ca162f54d3be50ab9e9ffa027824b6ec223af" |
| assert doc.content == "test text" |
| assert doc.dataframe == None |
| assert doc.blob == None |
| assert doc.meta == {} |
| assert doc.score == 0.812 |
| assert doc.embedding == [0.1, 0.2, 0.3] |
| assert doc.sparse_embedding == None |
|
|
|
|
| def test_init_with_legacy_field(): |
| doc = Document( |
| content="test text", |
| content_type="text", |
| id_hash_keys=["content"], |
| score=0.812, |
| embedding=[0.1, 0.2, 0.3], |
| meta={"date": "10-10-2023", "type": "article"}, |
| ) |
| assert doc.id == "a2c0321b34430cc675294611e55529fceb56140ca3202f1c59a43a8cecac1f43" |
| assert doc.content == "test text" |
| assert doc.dataframe == None |
| assert doc.meta == {"date": "10-10-2023", "type": "article"} |
| assert doc.score == 0.812 |
| assert doc.embedding == [0.1, 0.2, 0.3] |
| assert doc.sparse_embedding == None |
|
|
|
|
| def test_basic_equality_type_mismatch(): |
| doc = Document(content="test text") |
| assert doc != "test text" |
|
|
|
|
| def test_basic_equality_id(): |
| doc1 = Document(content="test text") |
| doc2 = Document(content="test text") |
|
|
| assert doc1 == doc2 |
|
|
| doc1.id = "1234" |
| doc2.id = "5678" |
|
|
| assert doc1 != doc2 |
|
|
|
|
| def test_to_dict(): |
| doc = Document() |
| assert doc.to_dict() == { |
| "id": doc._create_id(), |
| "content": None, |
| "dataframe": None, |
| "blob": None, |
| "score": None, |
| "embedding": None, |
| "sparse_embedding": None, |
| } |
|
|
|
|
| def test_to_dict_without_flattening(): |
| doc = Document() |
| assert doc.to_dict(flatten=False) == { |
| "id": doc._create_id(), |
| "content": None, |
| "dataframe": None, |
| "blob": None, |
| "meta": {}, |
| "score": None, |
| "embedding": None, |
| "sparse_embedding": None, |
| } |
|
|
|
|
| def test_to_dict_with_custom_parameters(): |
| doc = Document( |
| content="test text", |
| dataframe=pd.DataFrame([10, 20, 30]), |
| blob=ByteStream(b"some bytes", mime_type="application/pdf"), |
| meta={"some": "values", "test": 10}, |
| score=0.99, |
| embedding=[10.0, 10.0], |
| sparse_embedding=SparseEmbedding(indices=[0, 2, 4], values=[0.1, 0.2, 0.3]), |
| ) |
|
|
| assert doc.to_dict() == { |
| "id": doc.id, |
| "content": "test text", |
| "dataframe": pd.DataFrame([10, 20, 30]).to_json(), |
| "blob": {"data": list(b"some bytes"), "mime_type": "application/pdf"}, |
| "some": "values", |
| "test": 10, |
| "score": 0.99, |
| "embedding": [10.0, 10.0], |
| "sparse_embedding": {"indices": [0, 2, 4], "values": [0.1, 0.2, 0.3]}, |
| } |
|
|
|
|
| def test_to_dict_with_custom_parameters_without_flattening(): |
| doc = Document( |
| content="test text", |
| dataframe=pd.DataFrame([10, 20, 30]), |
| blob=ByteStream(b"some bytes", mime_type="application/pdf"), |
| meta={"some": "values", "test": 10}, |
| score=0.99, |
| embedding=[10.0, 10.0], |
| sparse_embedding=SparseEmbedding(indices=[0, 2, 4], values=[0.1, 0.2, 0.3]), |
| ) |
|
|
| assert doc.to_dict(flatten=False) == { |
| "id": doc.id, |
| "content": "test text", |
| "dataframe": pd.DataFrame([10, 20, 30]).to_json(), |
| "blob": {"data": list(b"some bytes"), "mime_type": "application/pdf"}, |
| "meta": {"some": "values", "test": 10}, |
| "score": 0.99, |
| "embedding": [10, 10], |
| "sparse_embedding": {"indices": [0, 2, 4], "values": [0.1, 0.2, 0.3]}, |
| } |
|
|
|
|
| def test_from_dict(): |
| assert Document.from_dict({}) == Document() |
|
|
|
|
| def from_from_dict_with_parameters(): |
| blob_data = b"some bytes" |
| assert Document.from_dict( |
| { |
| "content": "test text", |
| "dataframe": pd.DataFrame([0]).to_json(), |
| "blob": {"data": list(blob_data), "mime_type": "text/markdown"}, |
| "meta": {"text": "test text"}, |
| "score": 0.812, |
| "embedding": [0.1, 0.2, 0.3], |
| "sparse_embedding": {"indices": [0, 2, 4], "values": [0.1, 0.2, 0.3]}, |
| } |
| ) == Document( |
| content="test text", |
| dataframe=pd.DataFrame([0]), |
| blob=ByteStream(blob_data, mime_type="text/markdown"), |
| meta={"text": "test text"}, |
| score=0.812, |
| embedding=[0.1, 0.2, 0.3], |
| sparse_embedding=SparseEmbedding(indices=[0, 2, 4], values=[0.1, 0.2, 0.3]), |
| ) |
|
|
|
|
| def test_from_dict_with_legacy_fields(): |
| assert Document.from_dict( |
| { |
| "content": "test text", |
| "content_type": "text", |
| "id_hash_keys": ["content"], |
| "score": 0.812, |
| "embedding": [0.1, 0.2, 0.3], |
| } |
| ) == Document( |
| content="test text", |
| content_type="text", |
| id_hash_keys=["content"], |
| score=0.812, |
| embedding=[0.1, 0.2, 0.3], |
| ) |
|
|
|
|
| def test_from_dict_with_legacy_field_and_flat_meta(): |
| assert Document.from_dict( |
| { |
| "content": "test text", |
| "content_type": "text", |
| "id_hash_keys": ["content"], |
| "score": 0.812, |
| "embedding": [0.1, 0.2, 0.3], |
| "date": "10-10-2023", |
| "type": "article", |
| } |
| ) == Document( |
| content="test text", |
| content_type="text", |
| id_hash_keys=["content"], |
| score=0.812, |
| embedding=[0.1, 0.2, 0.3], |
| meta={"date": "10-10-2023", "type": "article"}, |
| ) |
|
|
|
|
| def test_from_dict_with_flat_meta(): |
| blob_data = b"some bytes" |
| assert Document.from_dict( |
| { |
| "content": "test text", |
| "dataframe": pd.DataFrame([0]).to_json(), |
| "blob": {"data": list(blob_data), "mime_type": "text/markdown"}, |
| "score": 0.812, |
| "embedding": [0.1, 0.2, 0.3], |
| "sparse_embedding": {"indices": [0, 2, 4], "values": [0.1, 0.2, 0.3]}, |
| "date": "10-10-2023", |
| "type": "article", |
| } |
| ) == Document( |
| content="test text", |
| dataframe=pd.DataFrame([0]), |
| blob=ByteStream(blob_data, mime_type="text/markdown"), |
| score=0.812, |
| embedding=[0.1, 0.2, 0.3], |
| sparse_embedding=SparseEmbedding(indices=[0, 2, 4], values=[0.1, 0.2, 0.3]), |
| meta={"date": "10-10-2023", "type": "article"}, |
| ) |
|
|
|
|
| def test_from_dict_with_flat_and_non_flat_meta(): |
| with pytest.raises(ValueError, match="Pass either the 'meta' parameter or flattened metadata keys"): |
| Document.from_dict( |
| { |
| "content": "test text", |
| "dataframe": pd.DataFrame([0]).to_json(), |
| "blob": {"data": list(b"some bytes"), "mime_type": "text/markdown"}, |
| "score": 0.812, |
| "meta": {"test": 10}, |
| "embedding": [0.1, 0.2, 0.3], |
| "date": "10-10-2023", |
| "type": "article", |
| } |
| ) |
|
|
|
|
| def test_content_type(): |
| assert Document(content="text").content_type == "text" |
| assert Document(dataframe=pd.DataFrame([0])).content_type == "table" |
|
|
| with pytest.raises(ValueError): |
| _ = Document().content_type |
|
|
| with pytest.raises(ValueError): |
| _ = Document(content="text", dataframe=pd.DataFrame([0])).content_type |
|
|