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| # data_registry.py | |
| import pandas as pd | |
| import numpy as np | |
| from typing import Dict, Any, List, Optional, Union | |
| import os | |
| import json | |
| class DataRegistry: | |
| def __init__(self): | |
| self.data = {} | |
| self.metadata = {} | |
| self.healthcare_metadata = {} | |
| self.derived_columns = {} # Track derived columns per file | |
| def add_path(self, path: str) -> bool: | |
| """Add a data file to the registry with dynamic processing.""" | |
| try: | |
| file_name = os.path.basename(path) | |
| file_ext = os.path.splitext(file_name)[1].lower() | |
| # Read file based on extension | |
| if file_ext == '.csv': | |
| df = pd.read_csv(path) | |
| elif file_ext in ['.xlsx', '.xls']: | |
| df = pd.read_excel(path) | |
| elif file_ext == '.json': | |
| with open(path, 'r') as f: | |
| data = json.load(f) | |
| df = pd.json_normalize(data) | |
| elif file_ext in ['.parquet']: | |
| df = pd.read_parquet(path) | |
| else: | |
| print(f"Unsupported file type: {file_ext}") | |
| return False | |
| # Standardize column names | |
| df.columns = [col.strip().lower().replace(' ', '_').replace('-', '_').replace('.', '_') for col in df.columns] | |
| # Store original dataframe | |
| self.data[file_name] = df.copy() | |
| # Initialize derived columns tracking | |
| self.derived_columns[file_name] = set() | |
| # Process healthcare data dynamically | |
| self._process_healthcare_data(file_name, df) | |
| # Basic metadata | |
| self.metadata[file_name] = { | |
| 'type': file_ext, | |
| 'columns': list(df.columns), | |
| 'shape': df.shape, | |
| 'sample': df.head(3).to_dict('records') | |
| } | |
| # Healthcare-specific metadata extraction | |
| self._extract_healthcare_metadata(file_name, df) | |
| return True | |
| except Exception as e: | |
| print(f"Error adding {path}: {e}") | |
| return False | |
| def _process_healthcare_data(self, file_name: str, df: pd.DataFrame): | |
| """Dynamically process healthcare data based on available columns.""" | |
| # Dynamic column pattern matching | |
| column_patterns = { | |
| 'facility_name': ['facility', 'name', 'hospital', 'site', 'location'], | |
| 'facility_type': ['type', 'category', 'class', 'facility_type', 'odhf_facility_type'], | |
| 'beds_current': ['current', '2023', '2024', 'beds_current', 'staffed_beds', 'capacity'], | |
| 'beds_prev': ['prev', 'previous', '2022', 'beds_prev', 'previous_beds'], | |
| 'zone': ['zone', 'region', 'area', 'district'], | |
| 'province': ['province', 'state', 'territory'], | |
| 'city': ['city', 'municipality', 'town'], | |
| 'teaching_status': ['teaching', 'status', 'type', 'hospital_type'] | |
| } | |
| # Map actual columns to standard names | |
| column_map = {} | |
| for standard_col, patterns in column_patterns.items(): | |
| for col in df.columns: | |
| if any(pattern in col for pattern in patterns): | |
| column_map[standard_col] = col | |
| break | |
| # Create derived columns if we have the necessary base columns | |
| if 'beds_current' in column_map and 'beds_prev' in column_map: | |
| current_col = column_map['beds_current'] | |
| prev_col = column_map['beds_prev'] | |
| # Calculate bed change | |
| df['bed_change'] = df[current_col] - df[prev_col] | |
| self.derived_columns[file_name].add('bed_change') | |
| # Calculate percentage change (avoid division by zero) | |
| df['percent_change'] = df.apply( | |
| lambda row: (row['bed_change'] / row[prev_col] * 100) if row[prev_col] != 0 else 0, | |
| axis=1 | |
| ) | |
| self.derived_columns[file_name].add('percent_change') | |
| # If we have facility_type but not in standard form, map it | |
| if 'facility_type' in column_map and column_map['facility_type'] != 'facility_type': | |
| df['facility_type'] = df[column_map['facility_type']] | |
| self.derived_columns[file_name].add('facility_type') | |
| def _extract_healthcare_metadata(self, file_name: str, df: pd.DataFrame): | |
| """Extract healthcare-specific metadata dynamically.""" | |
| healthcare_meta = {} | |
| # Detect data type based on columns | |
| facility_cols = [col for col in df.columns if any(pattern in col for pattern in ['facility', 'name', 'site'])] | |
| bed_cols = [col for col in df.columns if any(pattern in col for pattern in ['bed', 'capacity'])] | |
| if facility_cols: | |
| healthcare_meta['data_type'] = 'facility_data' | |
| if 'facility_type' in df.columns: | |
| healthcare_meta['facility_types'] = df['facility_type'].value_counts().to_dict() | |
| if 'city' in df.columns: | |
| healthcare_meta['cities'] = df['city'].value_counts().head(10).to_dict() | |
| if bed_cols: | |
| healthcare_meta['data_type'] = 'bed_data' | |
| if 'zone' in df.columns: | |
| healthcare_meta['zones'] = df['zone'].unique().tolist() | |
| if 'teaching_status' in df.columns: | |
| healthcare_meta['teaching_status_counts'] = df['teaching_status'].value_counts().to_dict() | |
| # Check for derived metrics | |
| if 'bed_change' in df.columns: | |
| healthcare_meta['has_derived_metrics'] = True | |
| if healthcare_meta: | |
| self.healthcare_metadata[file_name] = healthcare_meta | |
| def get_derived_columns(self, file_name: str) -> set: | |
| """Get derived columns for a file.""" | |
| return self.derived_columns.get(file_name, set()) | |
| def find_column(self, file_name: str, patterns: List[str]) -> Optional[str]: | |
| """Find a column matching any of the given patterns.""" | |
| df = self.get(file_name) | |
| if df is None: | |
| return None | |
| for col in df.columns: | |
| if any(pattern.lower() in col.lower() for pattern in patterns): | |
| return col | |
| return None | |
| def get_data_by_type(self, data_type: str) -> List[str]: | |
| """Get all files of a specific data type.""" | |
| return [ | |
| file_name for file_name, meta in self.healthcare_metadata.items() | |
| if meta.get('data_type') == data_type | |
| ] | |
| def names(self): | |
| return list(self.data.keys()) | |
| def get(self, name): | |
| return self.data.get(name) | |
| def summarize_for_prompt(self) -> str: | |
| """Generate a summary of all data for prompt inclusion.""" | |
| if not self.data: | |
| return "No data files registered." | |
| summary_parts = [] | |
| for file_name in self.names(): | |
| meta = self.metadata.get(file_name, {}) | |
| health_meta = self.get_healthcare_metadata(file_name) | |
| summary_parts.append(f"File: {file_name}") | |
| summary_parts.append(f"Type: {meta.get('type', 'unknown')}") | |
| summary_parts.append(f"Columns: {', '.join(meta.get('columns', []))}") | |
| summary_parts.append(f"Shape: {meta.get('shape', 'unknown')}") | |
| if health_meta: | |
| summary_parts.append("Healthcare Context:") | |
| for key, value in health_meta.items(): | |
| if key != 'privacy_warning': | |
| summary_parts.append(f" {key}: {value}") | |
| summary_parts.append("") | |
| return "\n".join(summary_parts) | |
| def get_healthcare_metadata(self, name: str) -> Dict[str, Any]: | |
| """Get healthcare-specific metadata for a file.""" | |
| return self.healthcare_metadata.get(name, {}) | |
| def clear(self): | |
| self.data.clear() | |
| self.metadata.clear() | |
| self.healthcare_metadata.clear() | |
| self.derived_columns.clear() |