I have an H2O python application that I recently converted to containers for kubernetes. As part of the conversion I started saving MOJO files when training and using MOJO prediction in the python flask api running on the container. However, I have seen a massive performance drop when doing this. I've searched around a lot and haven't been able to find much on the issue. Part of me wonders if I am simply using the wrong pattern for mojo prediction. I wanted to predict without running H2O on the container, to keep the container simpler. So I use the mojo_predict_pandas method.
However, I don't really see anyone else use this method when I search the internet. Most people load the mojo into the H2O server and then call it for predictions. Is this the more correct way? Is the mojo_predict_pandas method not suited for fast performance? In a vain attempt at understanding performance I used the java_opts parameter to double the jvm memory from the default of 4 to 8 but it had no effect. Below I have included a snippet of the original code from my flask api.
gbmModelPredict = h2o.mojo_predict_pandas(predictionParams, gbmModel) ubModelPredict = h2o.mojo_predict_pandas(predictionParams, ubModel) lbModelPredict = h2o.mojo_predict_pandas(predictionParams, lbModel)