
A Competitive Time-Trial AI for Need for Speed: Most Wanted Using Deep Reinforcement Learning (38c3)
Chaos Computer Club - archive feed · Sebastian Schwarz
December 27, 202444m 0s
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Show Notes
All challenges and achievements in creating a competitive time-trial AI in NFS:MW.
15 years ago, at the height of my eSports career, I uploaded an (unofficial) ESL record at Need for Speed: Most Wanted (2005) (NFS:MW) to Youtube. In the meantime Deep Reinforcement Learning became popular and ever since I have dreamt of creating a competitive AI for my favorite racing game of all time: NFS:MW. Now finally the time was right: The hardware is fast enough, good software is available, and Sony's AI research has proven the task is actually doable. Hence I thought: "How hard can it possibly be?".
This talk will present in detail all challenges and achievements in creating a competitive time-trial AI in NFS:MW from scratch - including but not limited to - hacking of the game to create a custom API, building a custom (real-time) OpenAI gym environment, steering the game using a virtual controller, and finally successfully training an AI using the Soft-Actor-Critic algorithm. All code including the API is written in Python and is open source.
Licensed to the public under http://creativecommons.org/licenses/by/4.0
about this event: https://events.ccc.de/congress/2024/hub/event/a-competitive-time-trial-ai-for-need-for-speed-most-wanted-using-deep-reinforcement-learning/
Topics
38c3422024Hardware & MakingSaal ZIGZAG