0.10.0
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Tutorials
Tutorials
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Consumer Expenditure
The Challenge
How To Use
Staging
Staging Data Directly
First steps
Loading the data
Staging EXPD
Staging MEMD
Staging POPULATION
Staging Data Using Pandas
Loading the data
Staging EXPD
Staging POPULATION
Loading the data into the getML engine
Separating the data
Staging Data Using sqlite3
Loading the data
Staging EXPD
Staging POPULATION
Loading the data into the engine
Separate data
Staging Data Using PostgreSQL/Greenplum/Redshift (Linux and macOS only)
Setting up PostgreSQL
Loading the data
Staging EXPD
Staging POPULATION
Loading the data into the engine
Separate data
Staging Data Using MySQL/MariaDB
Setting up MySQL or MariaDB
Loading the data
Staging EXPD
Staging POPULATION
Loading the data into the engine
Separate data
Training
Training a single
MultirelModel
Getting started
Building the data model
Building the model
Fitting the model
Evaluation
Retrieving data
Hyperparameter optimization for
MultirelModel
Getting started
Building the data model
Building the reference model
Building the hyperparameter space
Fitting
Training a single
RelboostModel
Getting started
Building the data model
Building the model
Fitting the model
Evaluation
Retrieving data
Hyperparameter optimization for
RelboostModel
Getting started
Building the data model
Building the reference model
Building the hyperparameter space
Fitting
Loan default prediction
Data preparation
Setting roles
Population table
Peripheral tables
Setting units
Data model
Training a Multirel Model
Hyperparameter optimization
Extracting Features
Results