name: "CodeCriticWrongAttempt_Flow" description: "ToDO: add description" model_name: "gpt-4" generation_parameters: n: 1 max_tokens: 3000 temperature: 0.3 model_kwargs: top_p: 0.2 frequency_penalty: 0 presence_penalty: 0 system_message_prompt_template: _target_: langchain.PromptTemplate template: |2- Your goal is to identify the issues with an incorrect competitive programming solution attempt. The user will specify the problem by providing you with: - the problem statement - input description - output description - example test cases - (optional) explanation of the test cases - an incorrect Python solution attempt and a description of its issue Crucially, your goal is to consider all aspects of the problem and pinpoint the issues with the solution attempt, and not to provide the code implementation yourself. Some aspects to consider: Is the input correctly parsed? Is the output correctly formatted? Are the corner cases correctly handled? Is there a logical mistake with the algorithm itself? Use the code execution results provided in the issue description to guide your reasoning/debugging. input_variables: [] template_format: jinja2 human_message_prompt_template: _target_: langchain.PromptTemplate template: "{{query}}" input_variables: - "query" template_format: jinja2 query_message_prompt_template: _target_: langchain.PromptTemplate template: |2- # Problem statement {{problem_description}} # Input description {{input_description}} # Output description {{output_description}} {{io_examples_and_explanation}} # Solution attempt to be fixed ```python {{code}} ``` {{testing_results_summary}} Consider the problem statement, the solution attempt and the issue. Why is the solution attempt incorrect? How should it be fixed? Explain your reasoning very concisely, and do not provide code. input_variables: - "problem_description" - "input_description" - "output_description" - "io_examples_and_explanation" - "code" - "testing_results_summary" template_format: jinja2 input_data_transformations: [] input_keys: - "problem_description" - "input_description" - "output_description" - "io_examples_and_explanation" - "testing_results_summary" - "code" output_data_transformations: - _target_: flows.data_transformations.KeyRename old_key2new_key: raw_response: "code_feedback" output_keys: - "code_feedback"