Classification overview
A common use case for machine learning is classifying new data by using a model trained on similar labeled data. For example, you might want to predict whether an email is spam, or whether a customer product review is positive, negative, or neutral.
You can use any of the following models in combination with the  ML.PREDICT 
function 
to perform classification:
-  Logistic regression models 
:
use logistic regression 
by setting the MODEL_TYPEoption toLOGISTIC_REG.
-  Boosted tree models 
:
use a gradient boosted decision tree 
by setting the MODEL_TYPEoption toBOOSTED_TREE_CLASSIFIER.
-  Random forest models 
:
use a random forest 
by setting the MODEL_TYPEoption toRANDOM_FOREST_CLASSIFIER.
-  Deep neural network (DNN) models 
:
use a neural network 
by setting the MODEL_TYPEoption toDNN_CLASSIFIER.
-  Wide & Deep models 
:
use wide & deep learning 
by setting the MODEL_TYPEoption toDNN_LINEAR_COMBINED_CLASSIFIER.
-  AutoML models 
:
use an AutoML classification model 
by setting the MODEL_TYPEoption toAUTOML_CLASSIFIER.
Recommended knowledge
By using the default settings in the CREATE MODEL 
statements and the ML.PREDICT 
function, you can create and use a classification model even
without much ML knowledge. However, having basic knowledge about
ML development helps you optimize both your data and your model to
deliver better results. We recommend using the following resources to develop
familiarity with ML techniques and processes:

