Models & Versions
Model
In Aporia, a model
is any system that can make predictions and can be improved through the use of data.
We use this broad definition in order to support a large number of use cases. Some examples of a model include:
a simple Pytorch model
an ensemble of 15 XGBoost models, 37 LightGBM models, and a few deterministic algorithms
or even an evolutionary algorithm
Aporia models usually serve specific business use cases: Fraud Detection, Credit Risk, Patient Diagnosis, Churn Prediction, LTV, etc.
Model Version
Each model
in Aporia can have different version
. When you (re)train your model
or update a model's schema
you should create a new model version in Aporia (via the Versions page or SDK).
When creating a new model version in Aporia, you'll be able to specify the model version's schema
- a definition of the inputs and outputs of the model.
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