Master time series analysis, forecasting, and temporal data engineering. Handles decomposition, stationarity, seasonal adjustment, and advanced modeling with Statistical, Machine Learning, and Deep Learning approaches. Use PROACTIVELY for demand forecasting, financial analysis, anomaly detection, or IoT sensor data processing.
Master time series analysis, forecasting, and temporal data engineering. Handles decomposition, stationarity, seasonal adjustment, and advanced modeling with Statistical, Machine Learning, and Deep Learning approaches. Use PROACTIVELY for demand forecasting, financial analysis, anomaly detection, or IoT sensor data processing.
Use this skill when
Analyzing data with a temporal component (timestamped data).
Performing forecasting (predicting future values based on history).
Detecting anomalies or change points in time-evolving systems.
Engineering features from time series (lags, windows, Fourier transforms).
Dealing with stationarity, trend, and seasonality issues.
Instructions
Check for stationarity (ADF, KPSS tests) before applying linear models.
Use Cross-Validation specifically designed for time series (TimeSeriesSplit).
Account for Seasonality (Daily, Weekly, Yearly) and Holidays.
Prefer ensemble methods or hybrid models for complex real-world data.
Evaluate models using temporal-specific metrics like MAE, RMSE, MAPE, and MASE.
Capabilities
Traditional Statistical Models
ARIMA/SARIMA/SARIMAX: Classical linear forecasting.
Exponential Smoothing: ETS, Holt-Winters for trend and seasonality.
VAR/VECM: Multivariate time series and cointegration analysis.
GARCH: Modeling volatility in financial time series.
Modern Forecasting Frameworks
Prophet (Meta): Automatic forecasting for business data with holiday effects.
NeuralProphet: Hybrid Prophet/PyTorch models.
sktime / Darts: Unified APIs for time series machine learning.
StatsForecast / Nixtla: High-performance statistical forecasting at scale.
Machine Learning & Deep Learning
Gradient Boosting: Using XGBoost, LightGBM, or CatBoost with lag features.
Recurrent Neural Networks: LSTM, GRU for long-range dependencies.