BDP
Home
Help
News and Updates
Login
EN
English
Hrvatski
Deutsch
Suomi
Machine Learning School
COURSE DETAILS
PLANNING
ANALYSIS
EXPORT
Go to
M1-INTRO: Introduction to Artificial Intelligence and Machine Learning
M2-DATA-ANALYSIS: The Data Analysis Process
M3-SIMPLE-ML: Introduction to Simple Machine Learning Methods
M4-CLUST: Cluster Analysis
M5-CONVEX-OPTI: Convex Optimization
M6-OPTI-LEARN: Optimization-based Machine Learning
M7-EVAL: Evaluating Model Performance
M8-INTERPRET-TABULAR: Interpretability of Models on Tabular Data
M9-AUTODIFF-ANN: Introduction to Neural Networks and Automatic Differentiation
M10-DEEP-LEARN: Deep Learning
M11-DEEP-LEARN-ADVANCED: Advanced Approaches in Deep Learning
M12-INTERPRET-DEEP: Interpretability Methods for Deep Learning
M13-DEEP-LEARN-SEQ: Deep Learning for Sequential Data
M14-ENSEMBLE: Ensemble Methods
M15-DIMRED: Dimensionality Reduction
M16-EMBED: Embeddings
M17-GP-HYPEROPT: Gaussian Processes and Hyperparameter Optimization
M18-RL: Reinforcement Learning
M19-DEEP-RL: Deep Reinforcement Learning
M20-SVM: Support Vector Machines
M21-SEARCH: Search Methods
M22-ADVERSARIAL-SEARCH: Search Methods in Adversarial Contexts
M23-METAHEURISTICS: Metaheuristic Optimization
M24-STATE-SPACE: State-space Approaches in Control
M25-BAYES-NET: Bayesian Networks
M26-GAMING: AI and Gaming
M27-FAIRNESS: Fairness in Machine Learning
Team Project
Team Project
46h 0min
The module covers the work on the team project done throughout the entire duration of the course.
Team Project Activities
Investigation
1
Literature review, identification of tools, existing code, etc.
15h 0min
Production
2
Preparation of a written report presenting the results
10h 0min
Production
3
Principal work on the project
Principal work on the project, including data preparation, writing code, training, evaluation, ...
21h 0min
Unit templates