Merge branch 'main' into fix/issue-2584-llama4-tool-calling

This commit is contained in:
Sumanth Kamenani 2025-07-15 09:12:15 -04:00 committed by GitHub
commit 5679d4dfd6
No known key found for this signature in database
GPG key ID: B5690EEEBB952194
26 changed files with 669 additions and 507 deletions

View file

@ -0,0 +1,191 @@
# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the terms described in the LICENSE file in
# the root directory of this source tree.
from unittest.mock import MagicMock, patch
import numpy as np
import pytest
import pytest_asyncio
from llama_stack.apis.vector_io import QueryChunksResponse
# Mock the entire pymilvus module
pymilvus_mock = MagicMock()
pymilvus_mock.DataType = MagicMock()
pymilvus_mock.MilvusClient = MagicMock
# Apply the mock before importing MilvusIndex
with patch.dict("sys.modules", {"pymilvus": pymilvus_mock}):
from llama_stack.providers.remote.vector_io.milvus.milvus import MilvusIndex
# This test is a unit test for the MilvusVectorIOAdapter class. This should only contain
# tests which are specific to this class. More general (API-level) tests should be placed in
# tests/integration/vector_io/
#
# How to run this test:
#
# pytest tests/unit/providers/vector_io/test_milvus.py \
# -v -s --tb=short --disable-warnings --asyncio-mode=auto
MILVUS_PROVIDER = "milvus"
@pytest_asyncio.fixture
async def mock_milvus_client() -> MagicMock:
"""Create a mock Milvus client with common method behaviors."""
client = MagicMock()
# Mock collection operations
client.has_collection.return_value = False # Initially no collection
client.create_collection.return_value = None
client.drop_collection.return_value = None
# Mock insert operation
client.insert.return_value = {"insert_count": 10}
# Mock search operation - return mock results (data should be dict, not JSON string)
client.search.return_value = [
[
{
"id": 0,
"distance": 0.1,
"entity": {"chunk_content": {"content": "mock chunk 1", "metadata": {"document_id": "doc1"}}},
},
{
"id": 1,
"distance": 0.2,
"entity": {"chunk_content": {"content": "mock chunk 2", "metadata": {"document_id": "doc2"}}},
},
]
]
# Mock query operation for keyword search (data should be dict, not JSON string)
client.query.return_value = [
{
"chunk_id": "chunk1",
"chunk_content": {"content": "mock chunk 1", "metadata": {"document_id": "doc1"}},
"score": 0.9,
},
{
"chunk_id": "chunk2",
"chunk_content": {"content": "mock chunk 2", "metadata": {"document_id": "doc2"}},
"score": 0.8,
},
{
"chunk_id": "chunk3",
"chunk_content": {"content": "mock chunk 3", "metadata": {"document_id": "doc3"}},
"score": 0.7,
},
]
return client
@pytest_asyncio.fixture
async def milvus_index(mock_milvus_client):
"""Create a MilvusIndex with mocked client."""
index = MilvusIndex(client=mock_milvus_client, collection_name="test_collection")
yield index
# No real cleanup needed since we're using mocks
@pytest.mark.asyncio
async def test_add_chunks(milvus_index, sample_chunks, sample_embeddings, mock_milvus_client):
# Setup: collection doesn't exist initially, then exists after creation
mock_milvus_client.has_collection.side_effect = [False, True]
await milvus_index.add_chunks(sample_chunks, sample_embeddings)
# Verify collection was created and data was inserted
mock_milvus_client.create_collection.assert_called_once()
mock_milvus_client.insert.assert_called_once()
# Verify the insert call had the right number of chunks
insert_call = mock_milvus_client.insert.call_args
assert len(insert_call[1]["data"]) == len(sample_chunks)
@pytest.mark.asyncio
async def test_query_chunks_vector(
milvus_index, sample_chunks, sample_embeddings, embedding_dimension, mock_milvus_client
):
# Setup: Add chunks first
mock_milvus_client.has_collection.return_value = True
await milvus_index.add_chunks(sample_chunks, sample_embeddings)
# Test vector search
query_embedding = np.random.rand(embedding_dimension).astype(np.float32)
response = await milvus_index.query_vector(query_embedding, k=2, score_threshold=0.0)
assert isinstance(response, QueryChunksResponse)
assert len(response.chunks) == 2
mock_milvus_client.search.assert_called_once()
@pytest.mark.asyncio
async def test_query_chunks_keyword_search(milvus_index, sample_chunks, sample_embeddings, mock_milvus_client):
mock_milvus_client.has_collection.return_value = True
await milvus_index.add_chunks(sample_chunks, sample_embeddings)
# Test keyword search
query_string = "Sentence 5"
response = await milvus_index.query_keyword(query_string=query_string, k=2, score_threshold=0.0)
assert isinstance(response, QueryChunksResponse)
assert len(response.chunks) == 2
@pytest.mark.asyncio
async def test_bm25_fallback_to_simple_search(milvus_index, sample_chunks, sample_embeddings, mock_milvus_client):
"""Test that when BM25 search fails, the system falls back to simple text search."""
mock_milvus_client.has_collection.return_value = True
await milvus_index.add_chunks(sample_chunks, sample_embeddings)
# Force BM25 search to fail
mock_milvus_client.search.side_effect = Exception("BM25 search not available")
# Mock simple text search results
mock_milvus_client.query.return_value = [
{
"chunk_id": "chunk1",
"chunk_content": {"content": "Python programming language", "metadata": {"document_id": "doc1"}},
},
{
"chunk_id": "chunk2",
"chunk_content": {"content": "Machine learning algorithms", "metadata": {"document_id": "doc2"}},
},
]
# Test keyword search that should fall back to simple text search
query_string = "Python"
response = await milvus_index.query_keyword(query_string=query_string, k=3, score_threshold=0.0)
# Verify response structure
assert isinstance(response, QueryChunksResponse)
assert len(response.chunks) > 0, "Fallback search should return results"
# Verify that simple text search was used (query method called instead of search)
mock_milvus_client.query.assert_called_once()
mock_milvus_client.search.assert_called_once() # Called once but failed
# Verify the query uses parameterized filter with filter_params
query_call_args = mock_milvus_client.query.call_args
assert "filter" in query_call_args[1], "Query should include filter for text search"
assert "filter_params" in query_call_args[1], "Query should use parameterized filter"
assert query_call_args[1]["filter_params"]["content"] == "Python", "Filter params should contain the search term"
# Verify all returned chunks have score 1.0 (simple binary scoring)
assert all(score == 1.0 for score in response.scores), "Simple text search should use binary scoring"
@pytest.mark.asyncio
async def test_delete_collection(milvus_index, mock_milvus_client):
# Test collection deletion
mock_milvus_client.has_collection.return_value = True
await milvus_index.delete()
mock_milvus_client.drop_collection.assert_called_once_with(collection_name=milvus_index.collection_name)