Files
wehub-resource-sync c56bef871b
Sync docs with Docusaurus / sync (push) Waiting to run
Tests / Check if changed (push) Waiting to run
Tests / format (push) Blocked by required conditions
Tests / check-imports (push) Blocked by required conditions
Tests / Unit / macos-latest (push) Blocked by required conditions
Tests / Unit / ubuntu-latest (push) Blocked by required conditions
Tests / Unit / windows-latest (push) Blocked by required conditions
Tests / mypy (push) Blocked by required conditions
Tests / Integration / ubuntu-latest (push) Blocked by required conditions
Tests / Integration / macos-latest (push) Blocked by required conditions
Tests / Integration / windows-latest (push) Blocked by required conditions
Tests / notify-slack-on-failure (push) Blocked by required conditions
Tests / Mark tests as completed (push) Blocked by required conditions
Docker image release / Build base image (push) Waiting to run
CodeQL / Analyze (python) (push) Has been cancelled
Update Platform Components Table / update (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 13:22:28 +08:00

120 lines
5.4 KiB
Python

# SPDX-FileCopyrightText: 2022-present deepset GmbH <info@deepset.ai>
#
# SPDX-License-Identifier: Apache-2.0
import pytest
from haystack import Document, Pipeline
from haystack.components.embedders import MockDocumentEmbedder, MockTextEmbedder
def _ones(text: str) -> list[float]:
"""Module-level embedding function used to test `embedding_fn` and its serialization."""
return [1.0, 1.0, 1.0]
class TestMockDocumentEmbedder:
@pytest.mark.parametrize(
("args", "kwargs", "match"),
[
(([0.1],), {"embedding_fn": _ones}, "either 'embedding' or 'embedding_fn'"),
((), {"dimension": -1}, "must be a positive integer"),
],
)
def test_init_rejects_invalid_config(self, args, kwargs, match):
with pytest.raises(ValueError, match=match):
MockDocumentEmbedder(*args, **kwargs)
def test_embeds_documents(self):
embedder = MockDocumentEmbedder(dimension=16)
result = embedder.run([Document(content="first"), Document(content="second")])
embeddings = [doc.embedding for doc in result["documents"]]
assert all(len(embedding) == 16 for embedding in embeddings)
assert embeddings[0] != embeddings[1]
def test_consistent_with_text_embedder(self):
# the same prepared text yields the same embedding from both mock embedders (shared deterministic algorithm)
text_embedding = MockTextEmbedder(dimension=8).run("pizza")["embedding"]
doc_embedding = MockDocumentEmbedder(dimension=8).run([Document(content="pizza")])["documents"][0].embedding
assert text_embedding == doc_embedding
def test_fixed_embedding(self):
result = MockDocumentEmbedder([0.5, 0.5]).run([Document(content="a"), Document(content="b")])
assert all(doc.embedding == [0.5, 0.5] for doc in result["documents"])
def test_embedding_fn(self):
result = MockDocumentEmbedder(embedding_fn=_ones).run([Document(content="a")])
assert result["documents"][0].embedding == [1.0, 1.0, 1.0]
def test_meta_fields_to_embed_affect_embedding(self):
document = Document(content="hello", meta={"title": "Greetings"})
without_meta = MockDocumentEmbedder(dimension=8).run([document])["documents"][0].embedding
with_meta = (
MockDocumentEmbedder(dimension=8, meta_fields_to_embed=["title"]).run([document])["documents"][0].embedding
)
assert without_meta != with_meta
def test_preserves_document_fields(self):
document = Document(content="hello", meta={"title": "Greetings"})
embedded = MockDocumentEmbedder(dimension=8).run([document])["documents"][0]
assert embedded.id == document.id
assert embedded.content == "hello"
assert embedded.meta == {"title": "Greetings"}
assert embedded.embedding is not None
# the original document is not mutated
assert document.embedding is None
def test_empty_documents(self):
result = MockDocumentEmbedder().run([])
assert result["documents"] == []
assert result["meta"]["usage"] == {"prompt_tokens": 0, "total_tokens": 0}
def test_meta(self):
meta = MockDocumentEmbedder(dimension=4).run([Document(content="a b"), Document(content="c")])["meta"]
assert meta["model"] == "mock-model"
assert meta["usage"] == {"prompt_tokens": 3, "total_tokens": 3}
@pytest.mark.parametrize("documents", ["not a list", [1, 2, 3]])
def test_run_rejects_non_documents(self, documents):
with pytest.raises(TypeError, match="expects a list of Documents"):
MockDocumentEmbedder().run(documents)
async def test_run_async(self):
embedder = MockDocumentEmbedder(dimension=8)
documents = [Document(content="hello")]
async_embedding = (await embedder.run_async(documents))["documents"][0].embedding
assert async_embedding == embedder.run(documents)["documents"][0].embedding
def test_warm_up_sets_flag_and_run_auto_warms(self):
embedder = MockDocumentEmbedder(dimension=8)
assert embedder._is_warmed_up is False
embedder.warm_up()
assert embedder._is_warmed_up is True
# run auto-warms a fresh instance
fresh = MockDocumentEmbedder(dimension=8)
assert len(fresh.run([Document(content="hello")])["documents"][0].embedding) == 8
assert fresh._is_warmed_up is True
@pytest.mark.parametrize(
"embedder",
[
MockDocumentEmbedder(
dimension=8, model="m", meta={"k": "v"}, meta_fields_to_embed=["title"], embedding_separator=" | "
),
MockDocumentEmbedder(embedding_fn=_ones),
],
ids=["deterministic", "embedding_fn"],
)
def test_serialization_roundtrip(self, embedder):
restored = MockDocumentEmbedder.from_dict(embedder.to_dict())
assert isinstance(restored, MockDocumentEmbedder)
document = Document(content="hello", meta={"title": "t"})
assert restored.run([document])["documents"][0].embedding == embedder.run([document])["documents"][0].embedding
def test_in_pipeline(self):
pipeline = Pipeline()
pipeline.add_component("embedder", MockDocumentEmbedder(dimension=8))
restored = Pipeline.from_dict(pipeline.to_dict())
result = restored.run({"embedder": {"documents": [Document(content="hello")]}})
assert len(result["embedder"]["documents"][0].embedding) == 8