JAXenstein: Accelerated Benchmarking for First-Person Environments
Researchers have developed JAXenstein, an open-source benchmarking tool for reinforcement learning agents, utilizing the Wolfenstein 3D rendering engine. This new benchmark is designed to accelerate algorithm development by providing fast and scalable environments for visual first-person tasks, addressing a gap in the current JAX reinforcement learning ecosystem. JAXenstein is noted to be significantly faster than existing vision-based benchmarks and is built for extensibility. AI
IMPACT Accelerates reinforcement learning research by providing a faster, extensible benchmark for visual first-person tasks.