123 lines
3.9 KiB
Python
123 lines
3.9 KiB
Python
from agent_core.orchestrator import run_agent
|
||
from agent_core.rag.ingest import ingest_document
|
||
from agent_core.rag.retriever import retrieve
|
||
|
||
|
||
def test_run_agent_returns_structured_mock_result():
|
||
scenario = {
|
||
"id": "knowledge_qa",
|
||
"name": "知识库问答助手",
|
||
"rag": {"enabled": True, "collection": "knowledge_qa", "top_k": 3},
|
||
"tools": ["generate_action_items"],
|
||
"output": {"type": "general_answer"},
|
||
}
|
||
|
||
result = run_agent(scenario, "如何处理异常?")
|
||
|
||
assert result.status == "success"
|
||
assert result.answer
|
||
assert result.structured_output["output_type"] == "general_answer"
|
||
assert isinstance(result.references, list)
|
||
assert result.tool_calls[0]["tool_name"] == "generate_action_items"
|
||
|
||
|
||
def test_rag_ingest_and_retrieve_filters_by_scenario_and_query(tmp_path):
|
||
store_path = tmp_path / "rag_store.json"
|
||
text = "设备点检需要先断电挂牌。质量异常需要记录批次、工位和缺陷现象。"
|
||
|
||
result = ingest_document(
|
||
scenario_id="quality_analysis",
|
||
source_file="quality.md",
|
||
text=text,
|
||
collection="quality_analysis",
|
||
store_path=store_path,
|
||
)
|
||
ingest_document(
|
||
scenario_id="risk_audit",
|
||
source_file="risk.md",
|
||
text="报销审核需要检查发票、金额和审批链。",
|
||
collection="risk_audit",
|
||
store_path=store_path,
|
||
)
|
||
|
||
chunks = retrieve(
|
||
scenario_id="quality_analysis",
|
||
query="质量异常批次",
|
||
collection="quality_analysis",
|
||
top_k=3,
|
||
store_path=store_path,
|
||
)
|
||
|
||
assert result.success is True
|
||
assert result.chunks_count >= 1
|
||
assert chunks
|
||
assert chunks[0]["source"] == "quality.md"
|
||
assert "质量异常" in chunks[0]["content"]
|
||
assert all(chunk["scenario_id"] == "quality_analysis" for chunk in chunks)
|
||
|
||
|
||
def test_rag_reingest_replaces_same_document_and_retrieve_filters_document_ids(tmp_path):
|
||
store_path = tmp_path / "rag_store.json"
|
||
|
||
ingest_document(
|
||
document_id=1,
|
||
scenario_id="knowledge_qa",
|
||
source_file="old.md",
|
||
text="旧制度要求人工登记。",
|
||
collection="knowledge_qa",
|
||
store_path=store_path,
|
||
)
|
||
ingest_document(
|
||
document_id=1,
|
||
scenario_id="knowledge_qa",
|
||
source_file="new.md",
|
||
text="新制度要求系统自动登记。",
|
||
collection="knowledge_qa",
|
||
store_path=store_path,
|
||
)
|
||
ingest_document(
|
||
document_id=2,
|
||
scenario_id="knowledge_qa",
|
||
source_file="other.md",
|
||
text="系统自动登记后需要生成审计记录。",
|
||
collection="knowledge_qa",
|
||
store_path=store_path,
|
||
)
|
||
|
||
chunks = retrieve(
|
||
scenario_id="knowledge_qa",
|
||
query="系统自动登记",
|
||
collection="knowledge_qa",
|
||
top_k=5,
|
||
document_ids=[1],
|
||
store_path=store_path,
|
||
)
|
||
|
||
assert chunks
|
||
assert {chunk["document_id"] for chunk in chunks} == {1}
|
||
assert all(chunk["source"] == "new.md" for chunk in chunks)
|
||
assert all("旧制度" not in chunk["content"] for chunk in chunks)
|
||
|
||
|
||
def test_run_agent_uses_retrieved_document_chunks(tmp_path):
|
||
store_path = tmp_path / "rag_store.json"
|
||
ingest_document(
|
||
scenario_id="knowledge_qa",
|
||
source_file="sop.md",
|
||
text="异常处理 SOP:先隔离现场,再通知负责人。",
|
||
collection="knowledge_qa",
|
||
store_path=store_path,
|
||
)
|
||
scenario = {
|
||
"id": "knowledge_qa",
|
||
"name": "知识库问答助手",
|
||
"rag": {"enabled": True, "collection": "knowledge_qa", "top_k": 3},
|
||
"tools": [],
|
||
"output": {"type": "general_answer"},
|
||
}
|
||
|
||
result = run_agent(scenario, "异常处理怎么做?", options={"rag_store_path": store_path})
|
||
|
||
assert result.references[0]["source"] == "sop.md"
|
||
assert "隔离现场" in result.references[0]["content"]
|