MLPro Documentations
v1.4.4
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MLPro - Machine Learning Professional
Welcome to MLPro
1. Introduction
2. Getting Started
Basic Functions
3. MLPro-BF - Basic Functions
Machine Learning
4. MLPro-SL - Supervised Learning
5. MLPro-OA - Online Adaptivity
6. MLPro-RL - Reinforcement Learning
7. MLPro-GT - Game Theory
Extension Hub
8. General Information
9. Third-Party Extensions
Appendices
A1 - Example Pool
MLPro-BF - Basic Functions
MLPro-SL - Supervised Learning
MLPro-RL - Reinforcement Learning
MLPro-GT - Game Theory
Dynamic Games
Howto GT-DG-001: Run Multi-Player with Own Policy
Howto GT-DG-002: Train Multi-Player
Howto GT-DG-003: Train Multi-Player in Potential Games
Howto GT-DG-004: Train Multi-Player in Stackelberg Games
Native GT
Howto GT-Native-001: 2P Prisoners’ Dilemma
Howto GT-Native-002: 3P Prisoners’ Dilemma
Howto GT-Native-003: Rock, Paper, Scissors
Howto GT-Native-004: 3P Supply and Demand
Howto GT-Native-005: 3P Routing Problems
MLPro-OA - Online Adaptivity
A2 - API Reference
A3 - Project MLPro
MLPro Documentations
A1 - Example Pool
MLPro-GT - Game Theory
Dynamic Games
Edit on GitHub
Dynamic Games
Howto GT-DG-001: Run Multi-Player with Own Policy
Howto GT-DG-002: Train Multi-Player
Howto GT-DG-003: Train Multi-Player in Potential Games
Howto GT-DG-004: Train Multi-Player in Stackelberg Games
Native GT
Howto GT-Native-001: 2P Prisoners’ Dilemma
Howto GT-Native-002: 3P Prisoners’ Dilemma
Howto GT-Native-003: Rock, Paper, Scissors
Howto GT-Native-004: 3P Supply and Demand
Howto GT-Native-005: 3P Routing Problems