So kNN is an exception to general workflow for building/testing supervised machine learning models. In particular, the model created via kNN is just the available labeled data, placed in some metric space.
In other words, for kNN, there is no training because there is no model. Template matching is all that is going on in kNN.
Neiher is there a validation step. Validation measures model accuracy against the training data as a function of iterations (training time). Overfitting is evidenced by the upward movement of this empirical curve and indicates the point at which training should cease. In other words, because there is no training, there is no validation.
But you can still test--i.e., assess the quality of the predictions using data in which the targets (labels or scores) are concealed from the model.
But even testing is a little different for kNN versus other supervised machine learning techniques. In particular, for kNN, the quality of predictions is of course dependent upon amount of data--i.e., if you are going to predict unkown values by averaging the 2-3 points closest to it, then it helps if you have points close to the one you wish to predict. Therefore, keep the size of the test set small, or better yet use k-fold cross-validation or leave-one-out cross-validation, both of which give you more thorough model testing but not at the cost of reducing the size of your kNN neighbor population.