Nautilus: From One Prompt to Plug-and-Play Robot Learning
Yufeng Jin, Jianfei Guo, Xiaogang Jia, Yu Deng, Zechu Li, Han Liu, Weiran Liao, Vignesh Prasad, Mathias Franzius, Gerhard Neumann, Georgia Chalvatzaki

TL;DR
NAUTILUS is an open-source framework that simplifies robot learning workflows by transforming a single prompt into comprehensive, plug-and-play evaluation, fine-tuning, and deployment pipelines, reducing engineering complexity.
Contribution
It introduces a scalable, unified system that automates adapter generation and onboarding of policies, simulators, and robots for robot learning research workflows.
Findings
Automates adapter and container generation for existing implementations.
Supports onboarding of new policies, simulators, and robots with a unified interface.
Reduces engineering effort in cross-family robot learning evaluations.
Abstract
Robot learning research is fragmented across policy families, benchmark suites, and real robots; each implementation is entangled with the others in a complex combination matrix, making it an engineering nightmare to port any single element. General-purpose coding agents may occasionally bridge specific setups, but cannot close this gap at scale because they lack the procedural priors and validation practices that characterize robotics research workflows. We propose NAUTILUS, an open-source harness that turns a single user prompt -- for example, "Evaluate policy A with benchmark B" -- into ready-to-use reproduction, evaluation, fine-tuning, and deployment workflows. NAUTILUS provides: plug-and-play agent skill sets with distilled priors from robotics research; typed contracts among policies, simulators/benchmarks, and real-world robots; unified interfaces and execution environments; and…
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