chore: import upstream snapshot with attribution
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from pathlib import Path
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from rdagent.app.data_science.conf import DS_RD_SETTING
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from rdagent.components.coder.CoSTEER.evaluators import (
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CoSTEERMultiEvaluator,
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CoSTEERSingleFeedback,
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)
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from rdagent.components.coder.CoSTEER.evolving_strategy import (
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MultiProcessEvolvingStrategy,
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)
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from rdagent.components.coder.CoSTEER.knowledge_management import (
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CoSTEERQueriedKnowledge,
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)
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from rdagent.components.coder.data_science.conf import DSCoderCoSTEERSettings
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from rdagent.components.coder.data_science.model.eval import (
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ModelGeneralCaseSpecEvaluator,
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)
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from rdagent.components.coder.data_science.model.exp import ModelTask
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from rdagent.components.coder.data_science.share.ds_costeer import DSCoSTEER
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from rdagent.core.exception import CoderError
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from rdagent.core.experiment import FBWorkspace
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from rdagent.core.scenario import Scenario
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from rdagent.oai.llm_utils import APIBackend
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from rdagent.utils.agent.ret import PythonBatchEditOut
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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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class ModelMultiProcessEvolvingStrategy(MultiProcessEvolvingStrategy):
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def implement_one_task(
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self,
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target_task: ModelTask,
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queried_knowledge: CoSTEERQueriedKnowledge | None = None,
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workspace: FBWorkspace | None = None,
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prev_task_feedback: CoSTEERSingleFeedback | None = None,
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) -> dict[str, str]:
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model_information_str = target_task.get_task_information()
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# 1. query
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queried_similar_successful_knowledge = (
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queried_knowledge.task_to_similar_task_successful_knowledge[model_information_str]
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if queried_knowledge is not None
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else []
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)
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queried_former_failed_knowledge = (
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queried_knowledge.task_to_former_failed_traces[model_information_str]
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if queried_knowledge is not None
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else []
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)
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queried_former_failed_knowledge = (
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[
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knowledge
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for knowledge in queried_former_failed_knowledge[0]
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if knowledge.implementation.file_dict.get(f"{target_task.name}.py")
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!= workspace.file_dict.get(f"{target_task.name}.py")
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],
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queried_former_failed_knowledge[1],
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)
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# 2. code
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system_prompt = T(".prompts:model_coder.system").r(
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task_desc=model_information_str,
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competition_info=self.scen.get_scenario_all_desc(eda_output=workspace.file_dict.get("EDA.md", None)),
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data_loader_code=workspace.file_dict.get("load_data.py"),
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feature_code=workspace.file_dict["feature.py"],
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queried_similar_successful_knowledge=queried_similar_successful_knowledge,
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queried_former_failed_knowledge=queried_former_failed_knowledge[0],
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out_spec=PythonBatchEditOut.get_spec(),
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)
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# user_prompt = T(".prompts:model_coder.user").r(
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# model_spec=workspace.file_dict["spec/model.md"],
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# feature_code=workspace.file_dict["feature.py"],
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# latest_code=workspace.file_dict.get(f"{target_task.name}.py", None),
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# )
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# We want to use a simpler way to
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code_spec = (
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workspace.file_dict["spec/model.md"]
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if DS_RD_SETTING.spec_enabled
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else T("scenarios.data_science.share:component_spec.general").r(
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spec=T("scenarios.data_science.share:component_spec.Model").r(),
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test_code=(DIRNAME / "eval_tests" / "model_test.txt").read_text().replace("model01", target_task.name),
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)
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)
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user_prompt = T(".prompts:model_coder.user_general").r(
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code_spec=code_spec,
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latest_model_code=workspace.get_codes(
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r"^model_(?!test)\w+\.py$"
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), # TODO: If we have high failure rate here, we should clean this step with less information.
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latest_code_feedback=prev_task_feedback,
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)
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for _ in range(5):
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batch_edit = PythonBatchEditOut.extract_output(
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APIBackend().build_messages_and_create_chat_completion(
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user_prompt=user_prompt,
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system_prompt=system_prompt,
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)
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)
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if not all(i.startswith("model_") for i in batch_edit.keys()):
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user_prompt += "\nYou should only update model codes!"
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continue
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# 3. post process to align file name to the task name
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# we assumpt batch_edit only contains one model file update.
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batch_edit = {
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(f"{target_task.name}.py" if value != "__DEL__" and key != f"{target_task.name}.py" else key): value
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for key, value in batch_edit.items()
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}
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user_prompt = user_prompt + "\nPlease avoid generating same code to former code!"
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# TODO: besides same code problem, we should also consider other problems lead to retry.
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if f"{target_task.name}.py" not in batch_edit:
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continue
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if batch_edit and max(len(i.encode("utf-8")) for i in batch_edit.keys()) > 255:
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continue
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if batch_edit[f"{target_task.name}.py"] != "__DEL__" and batch_edit[
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f"{target_task.name}.py"
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] != workspace.file_dict.get(f"{target_task.name}.py"):
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break
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# If the task involves model removal, assume it can only process one model at a time.
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if len(batch_edit) == 1 and batch_edit[f"{target_task.name}.py"] == "__DEL__":
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break
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else:
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raise CoderError("Failed to generate a new model code.")
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return batch_edit
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def assign_code_list_to_evo(self, code_list: list[dict[str, str]], evo):
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"""
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Assign the code list to the evolving item.
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The code list is aligned with the evolving item's sub-tasks.
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If a task is not implemented, put a None in the list.
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"""
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for index in range(len(evo.sub_tasks)):
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if code_list[index] is None:
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continue
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if evo.sub_workspace_list[index] is None:
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# evo.sub_workspace_list[index] = FBWorkspace(target_task=evo.sub_tasks[index])
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evo.sub_workspace_list[index] = evo.experiment_workspace
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evo.sub_workspace_list[index].inject_files(**code_list[index])
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return evo
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class ModelCoSTEER(DSCoSTEER):
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def __init__(
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self,
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scen: Scenario,
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*args,
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**kwargs,
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) -> None:
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settings = DSCoderCoSTEERSettings()
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eva = CoSTEERMultiEvaluator(
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ModelGeneralCaseSpecEvaluator(scen=scen), scen=scen
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) # Please specify whether you agree running your eva in parallel or not
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# eva = ModelGeneralCaseSpecEvaluator(scen=scen)
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es = ModelMultiProcessEvolvingStrategy(scen=scen, settings=settings)
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super().__init__(
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*args,
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settings=settings,
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eva=eva,
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es=es,
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evolving_version=2,
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scen=scen,
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max_loop=DS_RD_SETTING.coder_max_loop,
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**kwargs,
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)
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