So I've made a model with mixed data types and used the recommended example from the SK Learn Docs using the column transformer to build the classifer.
Since the input comes from a csv, and is converted to a Pandas Dataframe, it looks like the X_test, X_train, y_test, y_train are all dataframes too. Passing y_test to the clf.predict() function works fine, and I receive the predictions.
However I want to host this model Google cloud ML Engine which accepts a 2D array of instances in the predictions request API. How do I make my classifier adjust to and accept an array of inputs rather than a dataframe? I realize this may be fairly trivial, but struggling to find a solution.