import evoagentx.workflow.operators as operator import examples.aflow.pubmedqa.optimized.round_13.prompt as prompt_custom from evoagentx.models.model_configs import LLMConfig from evoagentx.benchmark.benchmark import Benchmark from evoagentx.models.model_utils import create_llm_instance class Workflow: def __init__( self, name: str, llm_config: LLMConfig, benchmark: Benchmark ): self.name = name self.llm = create_llm_instance(llm_config) self.benchmark = benchmark self.custom = operator.Custom(self.llm) self.answer_generate = operator.AnswerGenerate(self.llm) self.qas_ensemble = operator.QAScEnsemble(self.llm) self.summary = operator.Custom(self.llm) # Added summary operator for better context async def __call__(self, problem: str): """ Implementation of the workflow """ # Generate initial answer solution = await self.answer_generate(input=problem) solutions = [solution['answer']] # Generate additional answers for _ in range(2): additional_solution = await self.answer_generate(input=problem) solutions.append(additional_solution['answer']) # Generate a summary of the answers for better context summary_response = await self.summary(input=" ".join(solutions), instruction="Summarize these answers.") # Use QAScEnsemble to select the best solution ensemble_result = await self.qas_ensemble(solutions=solutions + [summary_response['response']]) return ensemble_result['response'] # Return the best selected answer