Seminar/Proseminar: Multi-Agent Reinforcement Learning W23/24
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Description

This advanced seminar course offers a focused exploration into the specialized field of multi-agent reinforcement learning (MARL). Reinforcement learning is a type of machine learning where an agent learns to make decisions by interacting with its environment. In the multi-agent scenario, multiple agents concurrently interact with the environment and each other, which significantly complicates the learning problem and opens up a multitude of interesting research questions. 

 

Students will gain a deep understanding of MARL by examining and discussing seminal and recent papers that address fundamental concepts, algorithms, challenges, and applications of MARL. Each student will be responsible for selecting a paper from a provided list, thoroughly understanding its content, and delivering an in-depth presentation and leading a discussion on its key contributions, methodologies, and implications.

Papers covered will span a range of topics including, but not limited to, cooperative and competitive MARL, exploration strategies in MARL, communication and negotiation among agents, fairness and stability in multi-agent systems, and deep multi-agent reinforcement learning. We will also touch upon real-world applications of MARL in areas such as robotics, traffic control, and game theory.

The course emphasizes critical thinking and effective communication skills. Students are expected to actively engage in discussions, critique the methodologies and conclusions of papers, and consider the broader implications of the research.

Prerequisites: An understanding of basic reinforcement learning principles and algorithms, as well as a general familiarity with machine learning concepts. Proficiency in reading and understanding machine learning research papers is strongly recommended.

Learn more in our central Google document

Mattermost Invite Link

Link to Mattermost for Team Communication

 

 

 

Basic Course Info

Course No Course Type Hours
19334617 Seminar/Proseminar 2

Time Span 18.10.2023 - 14.02.2024
Instructors
Tim Landgraf

Study Regulation

0086c_k150 2014, BSc Informatik (Mono), 150 LPs
0086d_k135 2014, BSc Informatik (Mono), 135 LPs
0087d_k90 2015, BSc Informatik (Kombi), 90 LPs
0088d_m60 2015, MSc Informatik (Kombi), 60 LPs
0089c_MA120 2014, MSc Informatik (Mono), 120 LPs
0207b_m37 2015, MSc Informatik (Lehramt), 37 LPs
0208b_m42 2015, MSc Informatik (Lehramt), 42 LPs
0458a_m37 2015, MSc Informatik (Lehramt), 37 LPs
0471a_m42 2015, MSc Informatik (Lehramt), 42 LPs
0556a_m37 2018, M-Ed Fach 1 Informatik (Lehramt an Integrierten Sekundarschulen und Gymnasien), 37 LPs
0556b_m37 2023, M-Ed Informatik Fach 1 (Lehramt an Integrierten Sekundarschulen und Gymnasien), 37 LP
0557a_m42 2018, M-Ed Fach 2 Informatik (Lehramt an Integrierten Sekundarschulen und Gymnasien), 42 LPs
0557b_m42 2023, M-Ed Informatik Fach 2 Informatik (Lehramt an Integrierten Sekundarschulen und Gymnasien), 42 LPs
0590b_MA120 2021, MSc Data Science, 120 LP

Seminar/Proseminar: Multi-Agent Reinforcement Learning W23/24
to Whiteboard Site

Main Events

Day Time Location Details
Wednesday 10-12 A7/SR 031 2023-10-18 - 2024-02-14

Seminar/Proseminar: Multi-Agent Reinforcement Learning W23/24
to Whiteboard Site

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to Whiteboard Site

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