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In this paper,adaptive linear quadratic regulator(LQR)is proposed for continuous-time systems with uncertain dynamics.The dynamic state-feedback controller uses input-output data along the system trajectory to continuously adapt and converge to the optimal controller.The result differs from previous results in that the adaptive optimal controller is designed without the knowledge of the system dynamics and an initial stabilizing policy.Further,the controller is updated continu-ously using input-output data,as opposed to the commonly used switched/intermittent updates which can potentially lead to stability issues.An online state derivative estimator facilitates the design of a model-free controller.Gradient-based update laws are developed for online estimation of the optimal gain.Uniform exponential stability of the closed-loop system is established using the Lyapunov-based analysis,and a simulation example is provided to validate the theoretical contribution.