Machine Learning 103: Advanced Time Series & Forecasting

Description

This advanced course explores powerful forecasting techniques, including SARIMAX, tree-based models, and deep learning for time series. Participants will gain hands-on experience in preprocessing, modeling, and evaluating complex temporal data using modern ML tools.

Indicative Duration: 8 training hours
*Duration is adjusted based on the final scope and the target audience.


Scope

1. SARIMAX
  • The sarimax model
2. Tree-based models
  • Preprocessing of time series
  • Applying tree based models to preprocessed time series
3. Deep learning for time series
  • Introduction to deep learning models for time series

Learning Objectives

Upon completion of the course participants will be able to:

  1. Understand and apply the SARIMAX model for time series forecasting.
  2. Preprocess time series data for compatibility with tree-based models.
  3. Implement tree-based forecasting models on structured temporal data.
  4. Explore deep learning approaches for time series forecasting and understand their advantages.
  5. Evaluate and compare advanced forecasting techniques for different types of time series problems.

Target Audience

  • Roles: Senior Data Scientists, ML Engineers, Forecasting Analysts, AI Researchers
  • Seniority Levels: Advanced professionals with prior experience in time series modeling and machine learning

Prerequisite Knowledge

  • Strong understanding of time series fundamentals
  • Experience with Python and ML libraries (e.g., scikit-learn, pandas)
  • Familiarity with basic forecasting models and evaluation metrics
  • Completion of Machine Learning 102 or equivalent experience

Delivery Method

Sessions can be delivered via the following formats:

  • Live Online โ€“ Interactive virtual sessions via video conferencing
  • On-Site โ€“ At your organizationโ€™s premises
  • In-Person โ€“ At Code.Hubโ€™s training center
  • Hybrid โ€“ A combination of online and in-person sessions

 

The training methodology combines presentations, live demonstrations, hands-on exercises and interactive discussions to ensure participants actively practice AI in realistic work scenarios.

Date

On Demand

Organizer

Code.Hub
Email
[email protected]