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# ============================================
# CLASS 9: DATA SPLITTING
# ============================================
from datetime import datetime
from typing import Dict, Optional, Tuple
from venv import logger
import pandas as pd
from config.config import Config
import numpy as np
import matplotlib.pyplot as plt


class DataSplitter:
    """Class for splitting data into train, validation and test sets"""
    
    def __init__(self, config: Config):
        """
        Initialise data splitter
        
        Parameters:
        -----------
        config : Config
            Experiment configuration
        """
        self.config = config
        self.split_info = {}
        self.split_indices = {}
        self.split_strategy = None
    
    def split(
        self, 
        data: pd.DataFrame,
        test_size: Optional[float] = None,
        validation_size: Optional[float] = None,
        method: str = None,
        random_state: int = 42,
        **kwargs
    ) -> Tuple[pd.DataFrame, pd.DataFrame, pd.DataFrame]:
        """
        Split data into train, validation and test sets
        
        Parameters:
        -----------
        data : pd.DataFrame
            Input data
        test_size : float, optional
            Test set size. If None, uses configuration value.
        validation_size : float, optional
            Validation set size. If None, uses configuration value.
        method : str, optional
            Splitting method: 'time', 'random', 'expanding_window', 'sliding_window'
        random_state : int
            Seed for reproducibility
        **kwargs : dict
            Additional parameters for method
        
        Returns:
        --------
        Tuple[pd.DataFrame, pd.DataFrame, pd.DataFrame]
            Train, validation and test data
        """
        logger.info("\n" + "="*80)
        logger.info("DATA SPLITTING")
        logger.info("="*80)
        
        test_size = test_size or self.config.test_size
        validation_size = validation_size or self.config.validation_size
        method = method or self.config.split_method
        
        n = len(data)
        
        logger.info(f"Total data: {n} records")
        logger.info(f"Splitting method: {method}")
        logger.info(f"Sizes: train={1-test_size-validation_size:.1%}, val={validation_size:.1%}, test={test_size:.1%}")
        
        if method == 'time':
            train_data, val_data, test_data = self._time_based_split(
                data, test_size, validation_size
            )
        elif method == 'random':
            train_data, val_data, test_data = self._random_split(
                data, test_size, validation_size, random_state
            )
        elif method == 'expanding_window':
            train_data, val_data, test_data = self._expanding_window_split(
                data, test_size, validation_size, **kwargs
            )
        elif method == 'sliding_window':
            train_data, val_data, test_data = self._sliding_window_split(
                data, **kwargs
            )
        else:
            logger.warning(f"Method {method} not supported, using time-based split")
            train_data, val_data, test_data = self._time_based_split(
                data, test_size, validation_size
            )
        
        # Save splitting information
        self._save_split_info(data, train_data, val_data, test_data, method)
        
        # Output information
        self._log_split_summary(train_data, val_data, test_data)
        
        # Visualisation of split
        if self.config.save_plots:
            self._plot_data_split(data, train_data, val_data, test_data)
        
        return train_data, val_data, test_data
    
    def _time_based_split(
        self, 
        data: pd.DataFrame,
        test_size: float,
        validation_size: float
    ) -> Tuple[pd.DataFrame, pd.DataFrame, pd.DataFrame]:
        """Time-based splitting preserving temporal order"""
        n = len(data)
        
        # Calculate set sizes
        test_size_int = int(n * test_size)
        val_size_int = int(n * validation_size)
        train_size_int = n - test_size_int - val_size_int
        
        # Split data
        train_data = data.iloc[:train_size_int].copy()
        val_data = data.iloc[train_size_int:train_size_int + val_size_int].copy()
        test_data = data.iloc[train_size_int + val_size_int:].copy()
        
        self.split_strategy = 'time_based'
        
        return train_data, val_data, test_data
    
    def _random_split(
        self, 
        data: pd.DataFrame,
        test_size: float,
        validation_size: float,
        random_state: int
    ) -> Tuple[pd.DataFrame, pd.DataFrame, pd.DataFrame]:
        """Random data splitting"""
        from sklearn.model_selection import train_test_split
        
        # First split into train+val and test
        train_val_data, test_data = train_test_split(
            data,
            test_size=test_size,
            random_state=random_state,
            shuffle=True
        )
        
        # Then split train+val into train and val
        val_relative_size = validation_size / (1 - test_size)
        train_data, val_data = train_test_split(
            train_val_data,
            test_size=val_relative_size,
            random_state=random_state,
            shuffle=True
        )
        
        self.split_strategy = 'random'
        
        return train_data, val_data, test_data
    
    def _expanding_window_split(
        self, 
        data: pd.DataFrame,
        test_size: float,
        validation_size: float,
        **kwargs
    ) -> Tuple[pd.DataFrame, pd.DataFrame, pd.DataFrame]:
        """Expanding window split"""
        n = len(data)
        
        # Minimum initial window size
        initial_window = kwargs.get('initial_window', max(100, int(n * 0.1)))
        
        # Final set sizes
        test_size_int = int(n * test_size)
        val_size_int = int(n * validation_size)
        
        # Determine boundaries
        test_start = n - test_size_int
        val_start = test_start - val_size_int
        
        # For expanding window, use all data up to val_start for training
        train_data = data.iloc[:val_start].copy()
        val_data = data.iloc[val_start:test_start].copy()
        test_data = data.iloc[test_start:].copy()
        
        self.split_strategy = 'expanding_window'
        
        return train_data, val_data, test_data
    
    def _sliding_window_split(
        self, 
        data: pd.DataFrame,
        **kwargs
    ) -> Tuple[pd.DataFrame, pd.DataFrame, pd.DataFrame]:
        """Sliding window split (for multiple train-val-test pairs)"""
        window_size = kwargs.get('window_size', len(data) // 3)
        step = kwargs.get('step', window_size // 2)
        
        # For simplicity return single split
        # In real scenarios can return list of splits
        n = len(data)
        
        train_end = n - window_size
        val_end = train_end + window_size // 3
        test_end = n
        
        train_data = data.iloc[:train_end].copy()
        val_data = data.iloc[train_end:val_end].copy()
        test_data = data.iloc[val_end:].copy()
        
        self.split_strategy = 'sliding_window'
        
        return train_data, val_data, test_data
    
    def _save_split_info(
        self, 
        full_data: pd.DataFrame,
        train_data: pd.DataFrame,
        val_data: pd.DataFrame,
        test_data: pd.DataFrame,
        method: str
    ) -> None:
        """Save splitting information"""
        n = len(full_data)
        
        self.split_info = {
            'method': method,
            'strategy': self.split_strategy,
            'train_size': len(train_data),
            'val_size': len(val_data),
            'test_size': len(test_data),
            'train_percent': len(train_data) / n * 100,
            'val_percent': len(val_data) / n * 100,
            'test_percent': len(test_data) / n * 100,
            'total_samples': n,
            'features_count': len(full_data.columns),
            'split_date': datetime.now().strftime('%Y-%m-%d %H:%M:%S')
        }
        
        # Add temporal period information if available
        if isinstance(full_data.index, pd.DatetimeIndex):
            self.split_info.update({
                'train_period': {
                    'start': train_data.index.min().strftime('%Y-%m-%d'),
                    'end': train_data.index.max().strftime('%Y-%m-%d')
                },
                'val_period': {
                    'start': val_data.index.min().strftime('%Y-%m-%d'),
                    'end': val_data.index.max().strftime('%Y-%m-%d')
                },
                'test_period': {
                    'start': test_data.index.min().strftime('%Y-%m-%d'),
                    'end': test_data.index.max().strftime('%Y-%m-%d')
                }
            })
        
        # Save split indices
        self.split_indices = {
            'train': train_data.index.tolist(),
            'val': val_data.index.tolist(),
            'test': test_data.index.tolist()
        }
    
    def _log_split_summary(
        self, 
        train_data: pd.DataFrame,
        val_data: pd.DataFrame,
        test_data: pd.DataFrame
    ) -> None:
        """Log splitting summary"""
        logger.info("✓ Data split completed:")
        logger.info(f"  Train: {len(train_data)} records ({self.split_info['train_percent']:.1f}%)")
        logger.info(f"  Validation: {len(val_data)} records ({self.split_info['val_percent']:.1f}%)")
        logger.info(f"  Test: {len(test_data)} records ({self.split_info['test_percent']:.1f}%)")
        
        if 'train_period' in self.split_info:
            logger.info(f"\nPeriods:")
            logger.info(f"  Train: {self.split_info['train_period']['start']} - {self.split_info['train_period']['end']}")
            logger.info(f"  Validation: {self.split_info['val_period']['start']} - {self.split_info['val_period']['end']}")
            logger.info(f"  Test: {self.split_info['test_period']['start']} - {self.split_info['test_period']['end']}")
        
        # Target variable statistics
        target = self.config.target_column
        if target in train_data.columns:
            logger.info(f"\nTarget variable '{target}' statistics:")
            logger.info(f"  Train: mean={train_data[target].mean():.2f}, std={train_data[target].std():.2f}")
            logger.info(f"  Validation: mean={val_data[target].mean():.2f}, std={val_data[target].std():.2f}")
            logger.info(f"  Test: mean={test_data[target].mean():.2f}, std={test_data[target].std():.2f}")
    
    def _plot_data_split(
        self, 
        full_data: pd.DataFrame,
        train_data: pd.DataFrame,
        val_data: pd.DataFrame,
        test_data: pd.DataFrame
    ) -> None:
        """Visualise data splitting"""
        fig, axes = plt.subplots(2, 2, figsize=(14, 10))
        
        target = self.config.target_column
        
        # 1. Time series with set highlighting
        if target in full_data.columns and isinstance(full_data.index, pd.DatetimeIndex):
            axes[0, 0].plot(train_data.index, train_data[target], 
                          label='Train', colour='blue', alpha=0.7, linewidth=1)
            axes[0, 0].plot(val_data.index, val_data[target], 
                          label='Validation', colour='orange', alpha=0.7, linewidth=1)
            axes[0, 0].plot(test_data.index, test_data[target], 
                          label='Test', colour='red', alpha=0.7, linewidth=1)
            
            axes[0, 0].set_title(f'Data Split: {target}')
            axes[0, 0].set_xlabel('Date')
            axes[0, 0].set_ylabel(target)
            axes[0, 0].legend()
            axes[0, 0].grid(True, alpha=0.3)
        
        # 2. Yearly distribution
        if isinstance(full_data.index, pd.DatetimeIndex):
            full_data['year'] = full_data.index.year
            train_data['year'] = train_data.index.year
            val_data['year'] = val_data.index.year
            test_data['year'] = test_data.index.year
            
            years = sorted(full_data['year'].unique())
            train_counts = [len(train_data[train_data['year'] == year]) for year in years]
            val_counts = [len(val_data[val_data['year'] == year]) for year in years]
            test_counts = [len(test_data[test_data['year'] == year]) for year in years]
            
            x = np.arange(len(years))
            width = 0.25
            
            axes[0, 1].bar(x - width, train_counts, width, label='Train', colour='blue', alpha=0.7)
            axes[0, 1].bar(x, val_counts, width, label='Validation', colour='orange', alpha=0.7)
            axes[0, 1].bar(x + width, test_counts, width, label='Test', colour='red', alpha=0.7)
            
            axes[0, 1].set_title('Yearly Data Distribution')
            axes[0, 1].set_xlabel('Year')
            axes[0, 1].set_ylabel('Number of Records')
            axes[0, 1].set_xticks(x)
            axes[0, 1].set_xticklabels(years, rotation=45)
            axes[0, 1].legend()
            axes[0, 1].grid(True, alpha=0.3)
            
            # Remove added columns
            for df in [full_data, train_data, val_data, test_data]:
                if 'year' in df.columns:
                    df.drop('year', axis=1, inplace=True)
        
        # 3. Target variable distribution
        if target in full_data.columns:
            axes[1, 0].hist(train_data[target].dropna(), bins=30, alpha=0.5, label='Train', density=True)
            axes[1, 0].hist(val_data[target].dropna(), bins=30, alpha=0.5, label='Validation', density=True)
            axes[1, 0].hist(test_data[target].dropna(), bins=30, alpha=0.5, label='Test', density=True)
            
            axes[1, 0].set_title(f'{target} Distribution Across Sets')
            axes[1, 0].set_xlabel(target)
            axes[1, 0].set_ylabel('Density')
            axes[1, 0].legend()
            axes[1, 0].grid(True, alpha=0.3)
        
        # 4. Set statistics
        if target in full_data.columns:
            stats_data = []
            for name, df in [('Train', train_data), ('Validation', val_data), ('Test', test_data)]:
                if target in df.columns:
                    stats_data.append({
                        'Dataset': name,
                        'Mean': df[target].mean(),
                        'Std': df[target].std(),
                        'Min': df[target].min(),
                        'Max': df[target].max()
                    })
            
            if stats_data:
                stats_df = pd.DataFrame(stats_data)
                stats_table = axes[1, 1].table(
                    cellText=stats_df.round(2).values,
                    colLabels=stats_df.columns,
                    cellLoc='center',
                    loc='center'
                )
                stats_table.auto_set_font_size(False)
                stats_table.set_fontsize(9)
                stats_table.scale(1, 1.5)
                axes[1, 1].axis('off')
                axes[1, 1].set_title('Set Statistics')
        
        plt.suptitle(f'Data Splitting: {self.split_info["method"]} method', fontsize=14)
        plt.tight_layout()
        plt.savefig(
            f'{self.config.results_dir}/plots/data_split.png',
            dpi=300,
            bbox_inches='tight'
        )
        plt.show()
    
    def get_report(self) -> Dict:
        """Get data splitting report"""
        return self.split_info