getml/getml-community
Fast, high-quality forecasts on relational and multivariate time-series data powered by new feature learning algorithms and automated ML.
This tool helps data scientists and analysts quickly create accurate predictive models. It takes your raw relational data and time series, automatically generating thousands of relevant features like historical averages, trends, and seasonal factors. The output is a highly optimized set of features and a trained machine learning model, allowing you to make high-quality forecasts without extensive manual data preparation.
234 stars.
Use this if you need to build predictive models on complex relational or time-series data and want to significantly accelerate the feature engineering process, saving time and potentially improving model accuracy.
Not ideal if your project is purely experimental, doesn't involve complex data relationships or time series, or if you require full control over every single feature created for regulatory or specific domain reasons.
Stars
234
Forks
20
Language
C++
License
—
Category
Last pushed
Oct 27, 2025
Commits (30d)
0
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