Reward Design Without the Expert: Testing LLM Assistance for Multi-Agent RL in Electricity Markets
- Forschungsthema/Bereich
- Reinforcement Learning · Large Language Models · Empirical IS Research
- Typ der Abschlussarbeit
- Master
- Startzeitpunkt
- -
- Bewerbungsschluss
- 31.08.2026
- Dauer der Arbeit
- 6 Monate, ab sofort
Beschreibung
Reward Design Without the Expert: Testing LLM Assistance for Multi-Agent RL in Electricity MarketsBackgroundReinforcement learning is increasingly used to simulate strategic bidding in electricity markets, to test market designs before deployment or to study actors under new regulation. The bottleneck is reward design: it requires both deep market knowledge and RL experience, a rare combination that limits who can use Multi-Agent Reinforcement Learning (MARL) for market analysis today.LLMs can generate reward functions from natural-language descriptions (Kwon 2023; Eureka; Text2Reward; REvolve 2024). But existing evaluations cover only robotics and game environments with technical metrics. Whether LLM support can substitute for or complement domain expertise, and whether it works in electricity-market MARL, has not been empirically tested.What You Will DoYou will work directly with ASSUME, an open-source MARL framework for agent-based electricity-market simulation, and build a reward specification system that translates natural-language inputs into executable reward functions for heterogeneous market agents. The prototype is then evaluated in a user study comparing experts and non-experts in reward design tasks.Expected ContributionsMethodological: First systematic test of whether LLM support reduces the expertise requirement in MARL reward design.Technical: A working prototype for stakeholder-specifiable reward design on ASSUME.Empirical: Quantitative and qualitative evidence on democratization effects in human–LLM collaboration for complex design tasks.Voraussetzung
- Voraussetzungen an Studierende
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- Solid knowledge of Python and machine learning; ideally prior experience with reinforcement learning
- Willingness to get up to speed on electricity market fundamentals
- Interest in empirical user research
- Initiative in recruiting study participants
- Studiengangsbereiche
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- Wirtschafts- und Rechtswissenschaften
Wirtschaftsinformatik
- Wirtschafts- und Rechtswissenschaften
Betreuung
- Titel, Vorname, Name
- Julius Vincent Grams
- Organisationseinheit
- KIT WIN - ESIS
- E-Mail Adresse
- julius.grams@kit.edu
- Link zur eigenen Homepage/Personenseite
- Website
Bewerbung per E-Mail
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Senden Sie die oben genannten Bewerbungsunterlagen bitte per Mail an julius.grams@kit.edu
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