common_hypothesis_features = [ '1-2 sentences', 'surprising finding', 'includes numeric concepts', 'includes categorical concepts', 'includes binary concepts', ] hypothesis_features = [ ['requires within-cluster analysis'], ['requires across-cluster analysis'], ['corresponds to a polynomial relationship of some columns'], ['corresponds to a ratio between some columns'], ['requires temporal analysis'], ['relationship is based on descriptive statistics of some columns'], ['requires concepts based on percentage or percentiles'], ['relationship is only applicable to one cluster in the data and not the others'], ] column_features = [ [ 'must have one target column', 'must have quantifiable columns', 'must have a few categorical columns', 'make sure the categorical column values do not contain special characters', 'include a few distractor columns', ] ] common_pandas_features = [ 'must be executable using python `eval` to create the target column in variable `df` (pandas dataframe)', "for e.g., df['A']**2 + 3*df['B'] + 9, np.where(df['A'] > 3, 'Yes', 'No'), etc.", 'variables in pandas_expression must be from the existing columns listed above', 'variables in pandas_expression must NOT contain the target column itself', ] pandas_features = [ ['expression is a quadratic polynomial'], ['expression is a cubic polynomial'], ['expression is a ratio of existing columns'], ['expression is derived through logical combination of existing columns'], # workflow ] pandas_features = [common_pandas_features + p for p in pandas_features] common_derived_features = [ '1-2 sentences', 'includes numeric concepts', 'includes categorical concepts', 'includes binary concepts', ] derived_features = [common_derived_features + h for h in hypothesis_features] hypothesis_features = [common_hypothesis_features + h for h in hypothesis_features] PROMPT_HYP = """\ Given a dataset topic and description, generate an interesting hypothesis based on \ the provided instructions. Be creative and come up with an unusual finding. ```json { "topic": "%s", "description": "%s", "hypothesis_features": %s, "hypothesis": "..." }``` Give your answer as a new JSON with the following format: ```json { "hypothesis": "..." } ```""" PROMPT_COL = """\ Given a dataset topic, its description, and a true hypothesis that can be determined from it, \ generate a list of valid columns based on the provided instructions. ```json { "topic": "%s", "description": "%s", "hypothesis": "%s", "column_instructions": %s, "columns": [ { "col_name": "...", # should be an "_"-separated string "description": "...", "data_type": "...", # should be executable using python's `eval` function. E.g., str, float, int, bool "data_range": {...}, # should be either {"min": ..., "max": ...} or {"values": [...]} "is_distractor": true/false, # boolean indicating whether this is a distractor that could cause confusion during data analysis "is_target": true/false # boolean indicating whether this is the target variable for the hypothesis; at least one column should be the target }, ... ], "pandas_instructions": %s, "pandas_equation_for_hypothesis": { "target_col": "...", "target_col_type": "...", "target_col_range": {...}, "independent_cols_in_pandas_expression": [], # list of column names that will be used to derive the target column "pandas_expression": "..." # expression to derive df[target_col] using df[ind_col1], df[ind_col2], etc. } }``` Give your answer as a new JSON with the "columns" and "pandas_equation_for_hypothesis" keys filled using the following format: ```json { "columns": [...], "pandas_equation_for_hypothesis": {...} } ```""" PROMPT_DER = """\ Given a dataset topic, description, a true hypothesis that can be determined from the data, \ and a target column from the dataset, generate a hypothesis for the target column using new independent columns not present in the existing columns. ```json { "topic": "%s", "description": "%s", "hypothesis": "%s", "existing_columns": %s, "target_column": "%s", "new_to_target_instructions": %s, "new_to_target_hypothesis": "...", # describe a relationship between new columns that explains the target column "new_columns_for_target": [ # do not repeat any of the existing columns in the dataset { "col_name": "...", # should be an "_"-separated string "description": "...", "data_type": "...", # should be executable using python's `eval` function. E.g., str, float, int, bool "data_range": {...}, # should be either {"min": ..., "max": ...} or {"values": [...]} }, ... ], "pandas_instructions": %s, "pandas_equation_for_new_to_target_hypothesis": { "target_col": "...", "target_col_type": "...", "target_col_range": {...}, "independent_cols_in_pandas_expression": [], # list of column names from new_columns_for_target that will be used to derive target_col "pandas_expression": "..." # expression to derive df[target_col] using df[ind_col1], df[ind_col2], etc. } }``` Give your answer as a new JSON with the "new_to_target_hypothesis", "new_columns_for_target", and \ "pandas_equation_for_new_to_target_hypothesis" keys filled using the following format: ```json { "new_to_target_hypothesis": "...", "new_columns_for_target": [...], "pandas_equation_for_new_to_target_hypothesis": {...} } ```"""