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<div class="csl-entry">Lemmel, J., Resch, F., Farsang, M., Hasani, R., Rus, D., & Grosu, R. (2026). Online Fine-Tuning of Pretrained Controllers for Autonomous Driving via Real-Time Recurrent RL. In <i>Catch, Adapt, and Operate: Monitoring ML Models Under Drift Workshop</i>. Catch, Adapt, and Operate: Monitoring ML Models Under Drift Workshop, Rio de Janeiro, Brazil.</div>
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Deploying pretrained policies in real-world applications presents substantial challenges that fundamentally limit the practical applicability of learning-based control systems. When autonomous systems encounter environmental changes in system dynamics, sensor drift, or task objectives, fixed policies rapidly degrade in performance. We show that employing Real-Time Recurrent Reinforcement Learning (RTRRL), a biologically plausible algorithm for online adaptation, can effectively fine-tune a pretrained policy to improve autonomous agents' performance on driving tasks. We further show that RTRRL synergizes with a recent biologically inspired recurrent network model, the Liquid-Resistance Liquid-Capacitance RNN. We demonstrate the effectiveness of this closed-loop approach in a simulated CarRacing environment and in a real-world line-following task with a RoboRacer car equipped with an event camera.