This work describes quasi real time flaw(s) characterization in conductive plate(s) through the inversion of eddy current testing (ECT) signals using learning by examples (LBE) paradigm. Within the framework of LBE, a fast and accurate learning model is fitted on an optimal training set based on simulated eddy current testing data and the corresponding set of parameters during a preliminary offline phase. More specially, the optimal training set has been generated in the offline phase by adopting an adaptive sampling strategy through exploiting Partial Least Squares (PLS) feature extraction and output space filling (OSF). Subsequently, a non linear model is fitted on the training set and used to predict the set of parameters associated to an unknown (possibly large) test set during the so-called online phase. Different models, i.e., learning algorithms, such as Support Vector Regression (SVR), Kernel Ridge Regression (KRR), Relevance Vector Regression (RVR) and Augmented Radial Basis Function (A-RBF) have been adopted in order to build different accurate predictors. Afterwards, quasi real-time inversion has been performed on unknown test set by utilizing the corresponding trained models. Comparative results are reported through numerical and experimental data sets to assess the inversion performance of different learning algorithms based on the PLS-OSF sampling strategy.