187 lines
7.8 KiB
Python
187 lines
7.8 KiB
Python
import json
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from pathlib import Path
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from typing import Dict
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import pandas as pd
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from rdagent.core.experiment import Experiment
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from rdagent.core.proposal import Experiment2Feedback, HypothesisFeedback, Trace
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from rdagent.log import rdagent_logger as logger
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from rdagent.oai.llm_utils import APIBackend
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from rdagent.scenarios.qlib.experiment.quant_experiment import QlibQuantScenario
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from rdagent.utils import convert2bool
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from rdagent.utils.agent.tpl import T
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DIRNAME = Path(__file__).absolute().resolve().parent
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IMPORTANT_METRICS = [
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"IC",
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"1day.excess_return_with_cost.annualized_return",
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"1day.excess_return_with_cost.max_drawdown",
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]
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def process_results(current_result, sota_result):
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# Convert the results to dataframes
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current_df = pd.DataFrame(current_result)
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sota_df = pd.DataFrame(sota_result)
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# Set the metric as the index
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current_df.index.name = "metric"
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sota_df.index.name = "metric"
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# Rename the value column to reflect the result type
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current_df.rename(columns={"0": "Current Result"}, inplace=True)
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sota_df.rename(columns={"0": "SOTA Result"}, inplace=True)
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# Combine the dataframes on the Metric index
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combined_df = pd.concat([current_df, sota_df], axis=1)
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# Filter the combined DataFrame to retain only the important metrics
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filtered_combined_df = combined_df.loc[IMPORTANT_METRICS]
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def format_filtered_combined_df(filtered_combined_df: pd.DataFrame) -> str:
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results = []
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for metric, row in filtered_combined_df.iterrows():
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current = row["Current Result"]
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sota = row["SOTA Result"]
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results.append(f"{metric} of Current Result is {current:.6f}, of SOTA Result is {sota:.6f}")
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return "; ".join(results)
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return format_filtered_combined_df(filtered_combined_df)
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class QlibFactorExperiment2Feedback(Experiment2Feedback):
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def generate_feedback(self, exp: Experiment, trace: Trace) -> HypothesisFeedback:
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"""
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Generate feedback for the given experiment and hypothesis.
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Args:
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exp (QlibFactorExperiment): The experiment to generate feedback for.
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hypothesis (QlibFactorHypothesis): The hypothesis to generate feedback for.
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trace (Trace): The trace of the experiment.
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Returns:
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Any: The feedback generated for the given experiment and hypothesis.
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"""
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hypothesis = exp.hypothesis
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logger.info("Generating feedback...")
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hypothesis_text = hypothesis.hypothesis
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current_result = exp.result
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tasks_factors = [task.get_task_information_and_implementation_result() for task in exp.sub_tasks]
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sota_result = exp.based_experiments[-1].result
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# Process the results to filter important metrics
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combined_result = process_results(current_result, sota_result)
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# Generate the system prompt
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if isinstance(self.scen, QlibQuantScenario):
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sys_prompt = T("scenarios.qlib.prompts:factor_feedback_generation.system").r(
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scenario=self.scen.get_scenario_all_desc(action="factor")
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)
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else:
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sys_prompt = T("scenarios.qlib.prompts:factor_feedback_generation.system").r(
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scenario=self.scen.get_scenario_all_desc()
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)
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# Generate the user prompt
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usr_prompt = T("scenarios.qlib.prompts:factor_feedback_generation.user").r(
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hypothesis_text=hypothesis_text,
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task_details=tasks_factors,
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combined_result=combined_result,
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)
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# Call the APIBackend to generate the response for hypothesis feedback
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response = APIBackend().build_messages_and_create_chat_completion(
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user_prompt=usr_prompt,
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system_prompt=sys_prompt,
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json_mode=True,
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json_target_type=Dict[str, str | bool | int],
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)
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# Parse the JSON response to extract the feedback
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response_json = json.loads(response)
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# Extract fields from JSON response
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observations = response_json.get("Observations", "No observations provided")
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hypothesis_evaluation = response_json.get("Feedback for Hypothesis", "No feedback provided")
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new_hypothesis = response_json.get("New Hypothesis", "No new hypothesis provided")
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reason = response_json.get("Reasoning", "No reasoning provided")
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decision = convert2bool(response_json.get("Replace Best Result", "no"))
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return HypothesisFeedback(
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observations=observations,
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hypothesis_evaluation=hypothesis_evaluation,
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new_hypothesis=new_hypothesis,
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reason=reason,
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decision=decision,
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)
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class QlibModelExperiment2Feedback(Experiment2Feedback):
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def generate_feedback(self, exp: Experiment, trace: Trace) -> HypothesisFeedback:
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"""
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Generate feedback for the given experiment and hypothesis.
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Args:
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exp (QlibModelExperiment): The experiment to generate feedback for.
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hypothesis (QlibModelHypothesis): The hypothesis to generate feedback for.
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trace (Trace): The trace of the experiment.
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Returns:
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HypothesisFeedback: The feedback generated for the given experiment and hypothesis.
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"""
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hypothesis = exp.hypothesis
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logger.info("Generating feedback...")
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# Generate the system prompt
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if isinstance(self.scen, QlibQuantScenario):
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sys_prompt = T("scenarios.qlib.prompts:model_feedback_generation.system").r(
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scenario=self.scen.get_scenario_all_desc(action="model")
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)
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else:
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sys_prompt = T("scenarios.qlib.prompts:factor_feedback_generation.system").r(
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scenario=self.scen.get_scenario_all_desc()
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)
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# Generate the user prompt
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SOTA_hypothesis, SOTA_experiment = trace.get_sota_hypothesis_and_experiment()
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user_prompt = T("scenarios.qlib.prompts:model_feedback_generation.user").r(
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sota_hypothesis=SOTA_hypothesis,
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sota_task=SOTA_experiment.sub_tasks[0].get_task_information() if SOTA_hypothesis else None,
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sota_code=SOTA_experiment.sub_workspace_list[0].file_dict.get("model.py") if SOTA_hypothesis else None,
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sota_result=SOTA_experiment.result.loc[IMPORTANT_METRICS] if SOTA_hypothesis else None,
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hypothesis=hypothesis,
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exp=exp,
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exp_result=exp.result.loc[IMPORTANT_METRICS] if exp.result is not None else "execution failed",
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)
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# Call the APIBackend to generate the response for hypothesis feedback
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response = APIBackend().build_messages_and_create_chat_completion(
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user_prompt=user_prompt,
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system_prompt=sys_prompt,
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json_mode=True,
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json_target_type=Dict[str, str | bool | int],
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)
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# Parse the JSON response to extract the feedback
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response_json_hypothesis = json.loads(response)
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# Call the APIBackend to generate the response for hypothesis feedback
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response_hypothesis = APIBackend().build_messages_and_create_chat_completion(
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user_prompt=user_prompt,
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system_prompt=sys_prompt,
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json_mode=True,
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json_target_type=Dict[str, str | bool | int],
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)
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# Parse the JSON response to extract the feedback
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response_json_hypothesis = json.loads(response_hypothesis)
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return HypothesisFeedback(
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observations=response_json_hypothesis.get("Observations", "No observations provided"),
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hypothesis_evaluation=response_json_hypothesis.get("Feedback for Hypothesis", "No feedback provided"),
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new_hypothesis=response_json_hypothesis.get("New Hypothesis", "No new hypothesis provided"),
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reason=response_json_hypothesis.get("Reasoning", "No reasoning provided"),
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decision=convert2bool(response_json_hypothesis.get("Decision", "false")),
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)
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