When predicting values in a multiclass classification problem, I would like to get the probability of the predicted value.

I tried to solve this by using H2O's apply function:

```
predicted_df = modelo_assessor.predict(to_predict_h2o_frame)
predicted_df.apply((lambda x: x.max()), axis=1)
```

But it does not work:

'ValueError: unimpl bytecode instr: CALL_METHOD'

Maybe it doesn't work because h2o.max does not have axis parameter as h2o.mean does??? I couldn't find the documentation of which operations are supported on apply function.

I would like to solve the problem using h2o data manipulation similarly to this pandas code:

```
predicted_df = modelo_assessor.predict(to_predict_h2o_frame).as_data_frame()
predicted_df['PROB_PREDICTED']=predicted_df.iloc[:,1:].max(axis=1)
```