151 lines
5.4 KiB
Python
151 lines
5.4 KiB
Python
# SPDX-License-Identifier: Apache-2.0
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# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
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"""Unit tests for tool_calls Iterable → list materialisation.
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Regression tests for https://github.com/vllm-project/vllm/issues/34792.
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Setting VLLM_LOGGING_LEVEL=debug caused tool calling to break for Mistral
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models because:
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1. The OpenAI Python SDK types tool_calls as Iterable[...] in
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ChatCompletionAssistantMessageParam.
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2. Pydantic v2, when validating from Python objects (not from raw JSON),
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wraps Iterable fields in a one-shot lazy iterator.
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3. Debug logging called model_dump_json() which consumed that iterator.
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4. The Mistral tokenizer then saw empty tool_calls and raised
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"ValueError: Unexpected tool call id ...".
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"""
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import pytest
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from vllm.entrypoints.openai.chat_completion.protocol import ChatCompletionRequest
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def _make_tool_call(tc_id: str, name: str, args: str) -> dict:
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return {
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"id": tc_id,
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"type": "function",
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"function": {"name": name, "arguments": args},
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}
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def _make_request(messages: list) -> ChatCompletionRequest:
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return ChatCompletionRequest(
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model="test-model",
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messages=messages,
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)
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def test_tool_calls_list_preserved_after_model_dump():
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"""tool_calls in assistant messages must be readable after model_dump_json.
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When the request is built from Python dicts (as in the Anthropic → OpenAI
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conversion path), Pydantic v2 previously wrapped the Iterable tool_calls
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in a one-shot iterator. model_dump_json() consumed it, leaving subsequent
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readers (e.g. the Mistral tokenizer) with an empty sequence.
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"""
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tool_call = _make_tool_call("call_abc123", "get_weather", '{"city": "Paris"}')
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messages = [
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{"role": "user", "content": "What is the weather in Paris?"},
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{"role": "assistant", "content": None, "tool_calls": [tool_call]},
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{
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"role": "tool",
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"tool_call_id": "call_abc123",
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"content": '{"temperature": 20}',
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},
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]
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req = _make_request(messages)
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# Simulate debug logging: serialize the model (this was the trigger)
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_ = req.model_dump_json()
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# The assistant message must still have accessible tool_calls afterwards
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assistant_msg = req.messages[1]
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assert isinstance(assistant_msg, dict)
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tool_calls = assistant_msg.get("tool_calls")
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assert tool_calls is not None, "tool_calls must not be None after model_dump_json"
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assert isinstance(tool_calls, list), "tool_calls must be a list"
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assert len(tool_calls) > 0, "tool_calls must not be empty after model_dump_json"
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def test_tool_calls_from_generator_are_materialised():
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"""tool_calls passed as a generator must be converted to list on validation."""
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tool_call = _make_tool_call("call_gen1", "search", '{"query": "vllm"}')
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def tool_calls_gen():
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yield tool_call
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messages = [
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{"role": "user", "content": "Search for vllm"},
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{
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"role": "assistant",
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"content": None,
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"tool_calls": tool_calls_gen(), # one-shot generator
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},
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]
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req = _make_request(messages)
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assistant_msg = req.messages[1]
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assert isinstance(assistant_msg, dict)
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# Iterate twice — must not raise or return empty on second pass
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tool_calls_first = list(assistant_msg.get("tool_calls", []))
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tool_calls_second = list(assistant_msg.get("tool_calls", []))
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assert len(tool_calls_first) == 1, "First read must return the tool call"
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assert len(tool_calls_second) == 1, "Second read must also return the tool call"
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def test_tool_calls_list_passthrough():
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"""tool_calls already provided as a list must remain a list."""
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tool_call = _make_tool_call("call_list1", "calculate", '{"expr": "2+2"}')
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messages = [
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{"role": "user", "content": "Calculate 2+2"},
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{"role": "assistant", "content": None, "tool_calls": [tool_call]},
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]
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req = _make_request(messages)
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assistant_msg = req.messages[1]
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assert isinstance(assistant_msg, dict)
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assert isinstance(assistant_msg.get("tool_calls"), list)
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def test_messages_without_tool_calls_unaffected():
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"""Messages without tool_calls must be handled correctly."""
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messages = [
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{"role": "system", "content": "You are a helpful assistant."},
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{"role": "user", "content": "Hello!"},
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{"role": "assistant", "content": "Hi there!"},
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]
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req = _make_request(messages)
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# None of the messages should have tool_calls injected
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for msg in req.messages:
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assert isinstance(msg, dict)
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assert msg.get("tool_calls") is None or msg.get("tool_calls") == []
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@pytest.mark.parametrize("num_tool_calls", [1, 3])
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def test_multiple_tool_calls_materialised(num_tool_calls: int):
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"""Multiple tool calls in a single message are all preserved."""
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tool_calls = [
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_make_tool_call(f"call_{i}", f"func_{i}", f'{{"arg": {i}}}')
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for i in range(num_tool_calls)
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]
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messages = [
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{"role": "user", "content": "Do things"},
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{"role": "assistant", "content": None, "tool_calls": iter(tool_calls)},
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]
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req = _make_request(messages)
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assistant_msg = req.messages[1]
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assert isinstance(assistant_msg, dict)
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result_tool_calls = assistant_msg.get("tool_calls")
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assert isinstance(result_tool_calls, list)
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assert len(result_tool_calls) == num_tool_calls
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# Verify after model_dump_json too
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_ = req.model_dump_json()
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assert len(assistant_msg.get("tool_calls", [])) == num_tool_calls
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