# SPDX-FileCopyrightText: 2022-present deepset GmbH # # SPDX-License-Identifier: Apache-2.0 from unittest.mock import AsyncMock, Mock import pytest from haystack import Pipeline from haystack.components.evaluators import LLMEvaluator from haystack.components.generators.chat.openai import OpenAIChatGenerator from haystack.dataclasses.chat_message import ChatMessage class TestLLMEvaluator: def test_init_default(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") component = LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) assert component.instructions == "test-instruction" assert component.inputs == [("predicted_answers", list[str])] assert component.outputs == ["score"] assert component.examples == [ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ] assert isinstance(component._chat_generator, OpenAIChatGenerator) assert component._chat_generator.generation_kwargs == {"response_format": {"type": "json_object"}, "seed": 42} def test_key_resolved_at_warm_up_not_init(self, monkeypatch): monkeypatch.delenv("OPENAI_API_KEY", raising=False) component = LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) with pytest.raises(ValueError, match="None of the .* environment variables are set"): component.warm_up() def test_init_with_chat_generator(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") chat_generator = OpenAIChatGenerator(generation_kwargs={"custom_key": "custom_value"}) component = LLMEvaluator( instructions="test-instruction", chat_generator=chat_generator, inputs=[("predicted_answers", list[str])], outputs=["custom_score"], examples=[ {"inputs": {"predicted_answers": "answer 1"}, "outputs": {"custom_score": 1}}, {"inputs": {"predicted_answers": "answer 2"}, "outputs": {"custom_score": 0}}, ], ) assert component._chat_generator is chat_generator def test_init_with_invalid_parameters(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") # Invalid inputs with pytest.raises(ValueError): LLMEvaluator( instructions="test-instruction", inputs={("predicted_answers", list[str])}, outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) with pytest.raises(ValueError): LLMEvaluator( instructions="test-instruction", inputs=[(list[str], "predicted_answers")], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) with pytest.raises(ValueError): LLMEvaluator( instructions="test-instruction", inputs=[list[str]], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) with pytest.raises(ValueError): LLMEvaluator( instructions="test-instruction", inputs={("predicted_answers", str)}, outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) # Invalid outputs with pytest.raises(ValueError): LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs="score", examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) with pytest.raises(ValueError): LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=[["score"]], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) # Invalid examples with pytest.raises(ValueError): LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples={ "inputs": {"predicted_answers": "Damn, this is straight outta hell!!!"}, "outputs": {"custom_score": 1}, }, ) with pytest.raises(ValueError): LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples=[ [ { "inputs": {"predicted_answers": "Damn, this is straight outta hell!!!"}, "outputs": {"custom_score": 1}, } ] ], ) with pytest.raises(ValueError): LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples=[ { "wrong_key": {"predicted_answers": "Damn, this is straight outta hell!!!"}, "outputs": {"custom_score": 1}, } ], ) with pytest.raises(ValueError): LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples=[ { "inputs": [{"predicted_answers": "Damn, this is straight outta hell!!!"}], "outputs": [{"custom_score": 1}], } ], ) with pytest.raises(ValueError): LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples=[{"inputs": {1: "Damn, this is straight outta hell!!!"}, "outputs": {2: 1}}], ) def test_to_dict_default(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") chat_generator = OpenAIChatGenerator(generation_kwargs={"response_format": {"type": "json_object"}, "seed": 42}) component = LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) data = component.to_dict() assert data == { "type": "haystack.components.evaluators.llm_evaluator.LLMEvaluator", "init_parameters": { "chat_generator": chat_generator.to_dict(), "instructions": "test-instruction", "inputs": [["predicted_answers", "list[str]"]], "outputs": ["score"], "raise_on_failure": True, "progress_bar": True, "examples": [ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], }, } def test_to_dict_with_parameters(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") chat_generator = OpenAIChatGenerator(generation_kwargs={"response_format": {"type": "json_object"}, "seed": 42}) component = LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["custom_score"], raise_on_failure=False, examples=[ { "inputs": {"predicted_answers": "Damn, this is straight outta hell!!!"}, "outputs": {"custom_score": 1}, }, { "inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"custom_score": 0}, }, ], ) data = component.to_dict() assert data == { "type": "haystack.components.evaluators.llm_evaluator.LLMEvaluator", "init_parameters": { "chat_generator": chat_generator.to_dict(), "instructions": "test-instruction", "inputs": [["predicted_answers", "list[str]"]], "outputs": ["custom_score"], "raise_on_failure": False, "progress_bar": True, "examples": [ { "inputs": {"predicted_answers": "Damn, this is straight outta hell!!!"}, "outputs": {"custom_score": 1}, }, { "inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"custom_score": 0}, }, ], }, } def test_from_dict(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") chat_generator = OpenAIChatGenerator(generation_kwargs={"response_format": {"type": "json_object"}, "seed": 42}) data = { "type": "haystack.components.evaluators.llm_evaluator.LLMEvaluator", "init_parameters": { "chat_generator": chat_generator.to_dict(), "instructions": "test-instruction", "inputs": [["predicted_answers", "list[str]"]], "outputs": ["score"], "examples": [ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], }, } component = LLMEvaluator.from_dict(data) assert isinstance(component._chat_generator, OpenAIChatGenerator) assert component._chat_generator.generation_kwargs == {"response_format": {"type": "json_object"}, "seed": 42} assert component.instructions == "test-instruction" assert component.inputs == [("predicted_answers", list[str])] assert component.outputs == ["score"] assert component.examples == [ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ] def test_pipeline_serde(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") pipeline = Pipeline() component = LLMEvaluator( instructions="test-instruction", inputs=[("questions", list[str]), ("predicted_answers", list[list[str]])], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) pipeline.add_component("evaluator", component) serialized_pipeline = pipeline.dumps() deserialized_pipeline = Pipeline.loads(serialized_pipeline) assert deserialized_pipeline == pipeline def test_run_with_different_lengths(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") component = LLMEvaluator( instructions="test-instruction", inputs=[("questions", list[str]), ("predicted_answers", list[list[str]])], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) def chat_generator_run(self, *args, **kwargs): return {"replies": [ChatMessage.from_assistant('{"score": 0.5}')]} monkeypatch.setattr("haystack.components.evaluators.llm_evaluator.OpenAIChatGenerator.run", chat_generator_run) with pytest.raises(ValueError): component.run(questions=["What is the capital of Germany?"], predicted_answers=[["Berlin"], ["Paris"]]) with pytest.raises(ValueError): component.run( questions=["What is the capital of Germany?", "What is the capital of France?"], predicted_answers=[["Berlin"]], ) def test_run_returns_parsed_result(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") component = LLMEvaluator( instructions="test-instruction", inputs=[("questions", list[str]), ("predicted_answers", list[list[str]])], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) def chat_generator_run(self, *args, **kwargs): return {"replies": [ChatMessage.from_assistant('{"score": 0.5}')]} monkeypatch.setattr("haystack.components.evaluators.llm_evaluator.OpenAIChatGenerator.run", chat_generator_run) results = component.run(questions=["What is the capital of Germany?"], predicted_answers=["Berlin"]) assert results == {"results": [{"score": 0.5}], "meta": None} def test_prepare_template(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") component = LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Damn, this is straight outta hell!!!"}, "outputs": {"score": 1}}, {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}}, ], ) template = component.prepare_template() assert ( template == "Instructions:\ntest-instruction\n\nGenerate the response in JSON format with the following keys:" '\n["score"]\nConsider the instructions and the examples below to determine those values.\n\n' 'Examples:\nInputs:\n{"predicted_answers": "Damn, this is straight outta hell!!!"}\nOutputs:' '\n{"score": 1}\nInputs:\n{"predicted_answers": "Football is the most popular sport."}\nOutputs:' '\n{"score": 0}\n\nInputs:\n{"predicted_answers": {{ predicted_answers }}}\nOutputs:\n' ) def test_invalid_input_parameters(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") component = LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) # None of the expected parameters are received with pytest.raises(ValueError): component.validate_input_parameters( expected={"predicted_answers": list[str]}, received={"questions": list[str]} ) # Only one but not all the expected parameters are received with pytest.raises(ValueError): component.validate_input_parameters( expected={"predicted_answers": list[str], "questions": list[str]}, received={"questions": list[str]} ) # Received inputs are not lists with pytest.raises(ValueError): component.validate_input_parameters(expected={"questions": list[str]}, received={"questions": str}) def test_invalid_outputs(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") component = LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], ) def chat_generator_run(self, *args, **kwargs): return {"replies": [ChatMessage.from_assistant('{"score": 1.0}')]} monkeypatch.setattr("haystack.components.evaluators.llm_evaluator.OpenAIChatGenerator.run", chat_generator_run) # Test missing key "another_expected_output" component.outputs = ["score", "another_expected_output"] with pytest.raises(ValueError, match="Missing expected keys"): component.run(predicted_answers=["answer"]) # Test wrong key def chat_generator_run_wrong_key(self, *args, **kwargs): return {"replies": [ChatMessage.from_assistant('{"wrong_name": 1.0}')]} monkeypatch.setattr( "haystack.components.evaluators.llm_evaluator.OpenAIChatGenerator.run", chat_generator_run_wrong_key ) component.outputs = ["score"] with pytest.raises(ValueError, match="Missing expected keys"): component.run(predicted_answers=["answer"]) def test_output_invalid_json_raise_on_failure_false(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") component = LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], raise_on_failure=False, ) def chat_generator_run(self, *args, **kwargs): return {"replies": [ChatMessage.from_assistant("some_invalid_json_output")]} monkeypatch.setattr("haystack.components.evaluators.llm_evaluator.OpenAIChatGenerator.run", chat_generator_run) result = component.run(predicted_answers=["answer"]) assert result["results"] == [None] def test_output_invalid_json_raise_on_failure_true(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") component = LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], raise_on_failure=True, ) def chat_generator_run(self, *args, **kwargs): return {"replies": [ChatMessage.from_assistant("some_invalid_json_output")]} monkeypatch.setattr("haystack.components.evaluators.llm_evaluator.OpenAIChatGenerator.run", chat_generator_run) with pytest.raises( ValueError ): # json_utils/LLMEvaluator might raise JSONDecodeError which inherits from ValueError or wrapped component.run(predicted_answers=["answer"]) class TestLLMEvaluatorAsync: @pytest.mark.asyncio async def test_run_async_returns_parsed_result(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") component = LLMEvaluator( instructions="test-instruction", inputs=[("questions", list[str]), ("predicted_answers", list[str])], outputs=["score"], examples=[ { "inputs": { "questions": "What is the value of any non-zero number raised to the power of zero?", "predicted_answers": "Zero", }, "outputs": {"score": 0}, } ], ) async def chat_generator_run_async(self, *args, **kwargs): return {"replies": [ChatMessage.from_assistant('{"score": 1}')]} monkeypatch.setattr( "haystack.components.evaluators.llm_evaluator.OpenAIChatGenerator.run_async", chat_generator_run_async ) results = await component.run_async( questions=["What is the perimeter of a circle called?"], predicted_answers=["Circumference"] ) assert results == {"results": [{"score": 1}], "meta": None} @pytest.mark.asyncio async def test_run_async_fallback_to_thread_with_sync_generator(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") class SyncOnlyGenerator: def run(self, messages): return {"replies": [ChatMessage.from_assistant('{"score": 0}')]} component = LLMEvaluator( instructions="test-instruction", inputs=[("questions", list[str]), ("predicted_answers", list[str])], outputs=["score"], examples=[ { "inputs": { "questions": "What is the top sport?", "predicted_answers": "Football is the most popular sport.", }, "outputs": {"score": 1}, } ], chat_generator=SyncOnlyGenerator(), ) results = await component.run_async(questions=["question"], predicted_answers=["answer"]) assert results == {"results": [{"score": 0}], "meta": None} @pytest.mark.asyncio async def test_run_async_raise_on_failure_false(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") component = LLMEvaluator( instructions="test-instruction", inputs=[("questions", list[str]), ("predicted_answers", list[str])], outputs=["score"], examples=[ { "inputs": { "questions": "What is the value of any non-zero number raised to the power of zero?", "predicted_answers": "One", }, "outputs": {"score": 1}, } ], raise_on_failure=False, ) async def chat_generator_run_async(self, *args, **kwargs): raise Exception("API error") monkeypatch.setattr( "haystack.components.evaluators.llm_evaluator.OpenAIChatGenerator.run_async", chat_generator_run_async ) result = await component.run_async(questions=["question"], predicted_answers=["answer"]) assert result["results"] == [None] @pytest.mark.asyncio async def test_run_async_raise_on_failure_true(self, monkeypatch): monkeypatch.setenv("OPENAI_API_KEY", "test-api-key") component = LLMEvaluator( instructions="test-instruction", inputs=[("questions", list[str]), ("predicted_answers", list[str])], outputs=["score"], examples=[ { "inputs": { "questions": "What is the smallest unit of data in a computer?", "predicted_answers": "Bit", }, "outputs": {"score": 1}, } ], ) async def chat_generator_run_async(self, *args, **kwargs): raise Exception("API error") monkeypatch.setattr( "haystack.components.evaluators.llm_evaluator.OpenAIChatGenerator.run_async", chat_generator_run_async ) with pytest.raises(ValueError): await component.run_async(questions=["question"], predicted_answers=["answer"]) class TestComponentLifecycle: @staticmethod def _make_evaluator(chat_generator): return LLMEvaluator( instructions="test-instruction", inputs=[("predicted_answers", list[str])], outputs=["score"], examples=[ {"inputs": {"predicted_answers": "Football is the most popular sport."}, "outputs": {"score": 0}} ], chat_generator=chat_generator, ) def test_warm_up_delegates_to_chat_generator(self): chat_generator = Mock(spec=["run", "warm_up"]) evaluator = self._make_evaluator(chat_generator) evaluator.warm_up() chat_generator.warm_up.assert_called_once() async def test_warm_up_async_delegates_to_chat_generator(self): chat_generator = Mock(spec=["run", "warm_up_async"]) chat_generator.warm_up_async = AsyncMock() evaluator = self._make_evaluator(chat_generator) await evaluator.warm_up_async() chat_generator.warm_up_async.assert_awaited_once() async def test_warm_up_async_falls_back_to_sync_warm_up(self): chat_generator = Mock(spec=["run", "warm_up"]) evaluator = self._make_evaluator(chat_generator) await evaluator.warm_up_async() chat_generator.warm_up.assert_called_once() def test_close_delegates_to_chat_generator(self): chat_generator = Mock(spec=["run", "close"]) evaluator = self._make_evaluator(chat_generator) evaluator.close() chat_generator.close.assert_called_once() async def test_close_async_delegates_to_chat_generator(self): chat_generator = Mock(spec=["run", "close_async"]) chat_generator.close_async = AsyncMock() evaluator = self._make_evaluator(chat_generator) await evaluator.close_async() chat_generator.close_async.assert_awaited_once() async def test_close_async_falls_back_to_sync_close(self): chat_generator = Mock(spec=["run", "close"]) evaluator = self._make_evaluator(chat_generator) await evaluator.close_async() chat_generator.close.assert_called_once() async def test_lifecycle_is_safe_when_chat_generator_lacks_methods(self): chat_generator = Mock(spec=["run"]) evaluator = self._make_evaluator(chat_generator) evaluator.warm_up() await evaluator.warm_up_async() evaluator.close() await evaluator.close_async()