Time Series Forecasting with Machine Learning
Read the first lesson free — in full No account, no card · plus the interactive platform demo and the AI Professor Start nowA premium, complete and hands-on course on modern time series forecasting, updated for 2026. You will start from what makes temporal data different, decompose series into trend, seasonality and noise, test for stationarity, and run a disciplined exploratory analysis and preprocessing pipeline. You will learn to evaluate forecasts honestly with MAE, RMSE, MAPE, sMAPE and MASE, and to validate with temporal cross-validation instead of leaking the future. From strong classical baselines and seasonal-naive benchmarks you move to ARIMA, SARIMA and exponential smoothing (ETS, Holt-Winters), then reframe forecasting as supervised learning with lag, rolling and calendar features to train gradient-boosting models with XGBoost and LightGBM. You will build deep learning forecasters (LSTM, TCN, N-BEATS, N-HiTS), understand Transformers for time series (Informer, PatchTST) and the 2026 wave of foundation models (TimesFM, Chronos, Moirai) for zero-shot forecasting, produce calibrated prediction intervals, handle multivariate and hierarchical problems with reconciliation, and master the production toolkit (statsmodels, Prophet, sktime, statsforecast, Darts) plus deployment, monitoring and retraining. Every concept is paired with real, correct Python code, and the course keeps a strong focus on uncertainty, data privacy and the responsible use of forecasts. Includes a comprehensive final assessment.
What you will learn
Practical skills you gain by completing this course
Who it is for
Recommended level
Assumes hands-on experience with AI and complex scenarios.
Updates
Regular
Content updated regularly with the latest practices from the industry.
Category
IT & Engineering
A technical course for IT professionals — available with individual course access or the IT Pro / All Access bundle.
Advanced level
Hands-on experience required
Assumes practical experience with AI. Covers complex scenarios and advanced strategies.
Always up to date
Up-to-date content
The course is updated regularly with the latest information, tools and practices from the industry.
Practical and applied
25 lessons with real examples
Each lesson includes practical scenarios, actionable checklists and quizzes to check your understanding.
Curriculum
11 modules, 25 lessons — structured to learn step by step.
Foundations of Time Series Forecasting
3 lessonsExploratory Analysis and Preprocessing
2 lessonsEvaluating Forecasts Honestly
2 lessonsClassical Baselines and Statistical Models
3 lessonsFeature Engineering for Time Series
2 lessonsMachine Learning for Forecasting
3 lessonsDeep Learning for Time Series
2 lessonsTransformers and Foundation Models
2 lessonsProbabilistic, Multivariate and Hierarchical Forecasting
2 lessonsTooling, Deployment and Applications
3 lessonsFinal Quiz — Time Series Forecasting with Machine Learning
1 lessonReady to start learning?
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