#!/usr/bin/env python3 """Run multiple trials of iterative refinement to get statistics.""" import json import os import shutil import sys from pathlib import Path # Run from the example directory os.chdir(Path(__file__).parent) from iterative_agent import run_iterative_refinement, load_config def run_trials(num_trials: int = 10, max_iterations: int = 100): """Run multiple trials and collect statistics.""" config = load_config("config.yaml") results = [] solutions_found = [] for trial in range(num_trials): print(f"\n{'#'*60}") print(f"# TRIAL {trial + 1}/{num_trials}") print('#'*60) # Clean output directory for each trial output_dir = f"iterative_output_trial_{trial}" if os.path.exists(output_dir): shutil.rmtree(output_dir) # Run trial result = run_iterative_refinement( initial_program="initial_program.py", evaluator_path="evaluator.py", config=config, max_iterations=max_iterations, output_dir=output_dir, ) results.append({ "trial": trial, "solution_found_at": result["solution_found_at"], "final_best_score": result["final_best_score"], "total_iterations": result["total_iterations"], }) if result["solution_found_at"] is not None: solutions_found.append(result["solution_found_at"]) # Calculate statistics success_rate = len(solutions_found) / num_trials avg_iterations = sum(solutions_found) / len(solutions_found) if solutions_found else float('inf') min_iterations = min(solutions_found) if solutions_found else None max_iterations_found = max(solutions_found) if solutions_found else None print(f"\n{'='*60}") print("ITERATIVE REFINEMENT TRIAL RESULTS") print('='*60) print(f"Trials: {num_trials}") print(f"Max iterations per trial: {max_iterations}") print(f"Success rate: {success_rate:.1%} ({len(solutions_found)}/{num_trials})") if solutions_found: print(f"Avg iterations to solution: {avg_iterations:.1f}") print(f"Min iterations: {min_iterations}") print(f"Max iterations: {max_iterations_found}") print('='*60) # Save summary summary = { "config": { "num_trials": num_trials, "max_iterations": max_iterations, }, "summary": { "success_rate": success_rate, "avg_iterations_to_solution": avg_iterations if solutions_found else None, "min_iterations": min_iterations, "max_iterations": max_iterations_found, "solutions_found": len(solutions_found), }, "trials": results, } with open("iterative_trials_results.json", "w") as f: json.dump(summary, f, indent=2) print(f"\nResults saved to: iterative_trials_results.json") return summary if __name__ == "__main__": import argparse parser = argparse.ArgumentParser() parser.add_argument("--trials", type=int, default=10, help="Number of trials") parser.add_argument("--iterations", type=int, default=100, help="Max iterations per trial") args = parser.parse_args() run_trials(num_trials=args.trials, max_iterations=args.iterations)