Electrochemical impedance spectroscopy (EIS) is a widespread characterization technique used to study elec-trochemical systems. However, several shortcomings still limit the application of this technique. First, EIS data, unless acquired in well-controlled experiments, is intrinsically noisy, hindering spectra regression and prediction. Second, many physicochemical properties, such as the charge-transfer resistance, are determined through non -unique equivalent circuits. Third, probed frequencies are usually log-spaced with a fixed number of points per decade, which is not necessarily optimal. Gaussian processes can be used to filter out noise in EIS data, determine the charge-transfer resistance as a stochastic variable, and optimize frequency placement. In this regard, a Gaussian-process-based, active-learning framework is developed to optimize EIS frequency selection for quick and accurate measurements. This work opens new avenues of research regarding the use of Gaussian processes for EIS experiment optimization.