Advancing AI and ML Techniques for Short-Term Energy Price Forecasting - Benchmarking Deep Learning, Ensemble Methods, and Generative Models for Enhanced Predictive Performance
Are you eager to apply cutting-edge artificial intelligence and machine learning methods to solve real-world challenges in the energy sector? ⚡We are seeking a motivated master's student to explore and benchmark innovative approaches for forecasting energy prices.
In this thesis, you will critically evaluate alternative ML and AI techniques—including, but not limited to, deep learning, ensemble models, and generative AI—against our current forecasting solution. Your goal will be to identify, implement, and validate methods that can improve forecast accuracy, robustness, or interpretability.
Starting Date: As soon as possible