aws-solutions-library-samples / machine-learning-for-telecommunications
A base solution that helps to generate insights from their data. The solution provides a framework for an end-to-end machine learning process including ad-hoc data exploration, data processing and feature engineering, and modeling training and evaluation. This baseline will provide the foundation for industry specific data to be applied and mode…
☆32Updated last year
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