| from llm.llm import LLM |
| from input.problem import problem_input |
| from input.test_middle_result import problem_str, problem_analysis, selected_models, modeling_solution, modeling_solution, task_descriptions |
| from agent.problem_analysis import ProblemAnalysis |
| from agent.problem_modeling import ProblemModeling |
| from agent.task_decompse import TaskDecompose |
| from agent.task import Task |
| from utils.utils import read_json_file, write_json_file, write_markdown_file, json_to_markdown |
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| if __name__ == "__main__": |
| |
| llm = LLM('deepseek-reasoner') |
| |
| paper = {'tasks': []} |
| |
| problem_path = 'data/actor_data/input/problem/2024_C.json' |
| problem_str, problem = problem_input(problem_path, llm) |
| problem_type = problem_path.split('/')[-1].split('_')[-1].split('.')[0] |
| tasknum = 4 |
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| print(problem_str) |
| print('---') |
| paper['problem_background'] = problem['background'] |
| paper['problem_requirement'] = problem['problem_requirement'] |
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| task = Task(llm) |
| for task_description in task_descriptions[:1]: |
| task_analysis = task.analysis(task_description) |
| task_formulas = task.formulas(problem['data_description'], task_description, task_analysis) |
| task_modeling = task.modeling(problem['data_description'], task_description, task_analysis, task_formulas) |
| task_result = task.result(task_description, task_analysis, task_formulas, task_modeling) |
| task_answer = task.answer(task_description, task_analysis, task_formulas, task_modeling, task_result) |
| paper['tasks'].append({ |
| 'task_description': task_description, |
| 'task_analysis': task_analysis, |
| 'mathematical_formulas': task_formulas, |
| 'mathematical_modeling_process': task_modeling, |
| 'result': task_result, |
| 'answer': task_answer |
| }) |
| print(paper['tasks']) |
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| print(llm.get_total_usage()) |
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