import asyncio import os import sys import json import httpx import google.generativeai as genai sys.path.append(os.path.abspath(".")) import json import httpx import google.generativeai as genai # We bypass the full local microservice setup to directly test the LLM verification logic from services.verification_service.app import MultiAgentReasoner, generate_divergence_matrix async def test_real_agent(): # User provided Gemini key earlier in the conversation api_key = os.environ.get("GEMINI_API_KEY", "AIzaSyDFSVZa9rSCb_2XcftaKsaRT5n3Qcj8Z_w") os.environ["GEMINI_API_KEY"] = api_key # Configure so that all agents use Gemini for this test since we only have the Gemini key agents_config = [ {"name": "Gemini Solver 1", "type": "solver", "provider": "gemini"}, {"name": "Gemini Critic", "type": "critic", "provider": "gemini"}, {"name": "Gemini Solver 2", "type": "solver", "provider": "gemini"} ] reasoner = MultiAgentReasoner(agents_config) # The MultiAgentReasoner uses os.getenv internally, let's just make sure it picks it up reasoner.gemini_key = api_key problem = "John has 5 apples. He buys 3 more and gives 2 away. How many does he have?" steps = ["John starts with 5.", "He buys 3, so 5 + 3 = 8.", "He gives 2 away, so 8 - 2 = 6."] print(f"Testing problem: {problem}") print("Calling Gemini API...") results = await reasoner.verify(problem, steps) print("\n--- AGENT RESULTS ---") print(json.dumps(results, indent=2)) agent_steps_map = {res["agent_name"]: res.get("steps", []) for res in results if res.get("steps")} matrix = generate_divergence_matrix(agent_steps_map) print("\n--- DIVERGENCE MATRIX ---") print(json.dumps(matrix, indent=2)) if __name__ == "__main__": asyncio.run(test_real_agent())