- Clean architecture (domain/application/infrastructure) - DSPy-based evolution engine with scoring - CLI via pyproject.toml entry point - Unit + integration tests (~300 tests) - Configs for glm-5.1 and glm-4.5-air models - Z.AI endpoint integration
75 lines
2.8 KiB
Python
75 lines
2.8 KiB
Python
"""End-to-end pipeline test with mocked LLM calls."""
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from __future__ import annotations
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from unittest.mock import MagicMock
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from prometheus.application.bootstrap import SyntheticBootstrap
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from prometheus.application.dto import OptimizationConfig
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from prometheus.application.evaluator import PromptEvaluator
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from prometheus.application.use_cases import OptimizePromptUseCase
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from prometheus.domain.entities import EvalResult, Prompt, SyntheticExample, Trajectory
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from prometheus.domain.ports import JudgePort, LLMPort, ProposerPort
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def _make_eval(scores: list[float]) -> EvalResult:
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return EvalResult(
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scores=scores,
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feedbacks=["feedback"] * len(scores),
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trajectories=[
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Trajectory(f"in{i}", f"out{i}", s, "feedback", "prompt")
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for i, s in enumerate(scores)
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],
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)
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class TestFullPipeline:
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def test_pipeline_produces_result(self) -> None:
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"""Full pipeline with mocked ports produces an OptimizationResult."""
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mock_llm = MagicMock(spec=LLMPort)
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mock_llm.execute.return_value = "mock response"
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mock_judge = MagicMock(spec=JudgePort)
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# Initial eval (low), then alternating current/new evals per iteration
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eval_sequence = [
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_make_eval([0.3, 0.3, 0.3, 0.3, 0.3]), # initial seed eval
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]
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for _ in range(5): # 5 iterations
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eval_sequence.append(_make_eval([0.4, 0.4, 0.4, 0.4, 0.4])) # current eval
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eval_sequence.append(_make_eval([0.6, 0.6, 0.6, 0.6, 0.6])) # new eval (accepted)
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mock_judge.judge_batch.return_value = [(0.5, "ok")] * 5
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mock_proposer = MagicMock(spec=ProposerPort)
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mock_proposer.propose.return_value = Prompt(text="Improved prompt")
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evaluator = PromptEvaluator(mock_llm, mock_judge)
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evaluator.evaluate = MagicMock(side_effect=eval_sequence)
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mock_gen = MagicMock()
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mock_gen.generate_inputs.return_value = [
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SyntheticExample(input_text=f"synth input {i}", id=i) for i in range(20)
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]
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bootstrap = SyntheticBootstrap(generator=mock_gen, seed=42)
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use_case = OptimizePromptUseCase(
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evaluator=evaluator,
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proposer=mock_proposer,
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bootstrap=bootstrap,
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)
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config = OptimizationConfig(
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seed_prompt="Answer questions.",
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task_description="Answer questions accurately.",
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max_iterations=5,
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n_synthetic_inputs=20,
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minibatch_size=5,
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seed=42,
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)
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result = use_case.execute(config)
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assert result.initial_prompt == "Answer questions."
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assert result.optimized_prompt == "Improved prompt"
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assert result.iterations_used == 5
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assert result.total_llm_calls > 0
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assert result.final_score > result.initial_score
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