RangL: A Reinforcement Learning Competition Platform

  • Viktor Zobernig
  • , Richard A. Saldanha
  • , Jinke He
  • , Erica van der Sar
  • , Jasper van Doorn
  • , Jia-Chen Hua
  • , Lachlan R. Mason
  • , Aleksander Czechowski
  • , Drago Indjic
  • , Tomasz Kosmala
  • , Alessandro Zocca
  • , Sandjai Bhulai
  • , Jorge Montalvo Arvizu
  • , Claude Klöckl
  • , John Moriarty

Publikation: Beitrag in FachzeitschriftArtikel

Abstract

The RangL project hosted by The Alan Turing Institute aims to encourage the wider uptake of reinforcement learning by supporting competitions relating to real-world dynamic decision problems. This article describes the reusable code repository developed by the RangL team and deployed for the 2022 Pathways to Net Zero Challenge, supported by the UK Net Zero Technology Centre. The winning solutions to this particular Challenge seek to optimize the UK's energy transition policy to net zero carbon emissions by 2050. The RangL repository includes an OpenAI Gym reinforcement learning environment and code that supports both submission to, and evaluation in, a remote instance of the open source EvalAI platform as well as all winning learning agent strategies. The repository is an illustrative example of RangL's capability to provide a reusable structure for future challenges.
OriginalspracheEnglisch
Seiten (von - bis)10
FachzeitschriftCell Press
VolumePATTERNS-D-22-00130
PublikationsstatusVeröffentlicht - 7 Juli 2022

UN SDGs

Dieser Output leistet einen Beitrag zu folgendem(n) Ziel(en) für nachhaltige Entwicklung

  1. SDG 7 – Erschwingliche und saubere Energie
    SDG 7 – Erschwingliche und saubere Energie

Research Field

  • Energy Scenarios & System Planning

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