Description

Machine learning is used to discover trends, uncover patterns, peel back layers and detect relationships over large volumes of data. Once put to work, predictive models will identify insights and predict where projects or opportunities will lead. We have incorporated machine learning algorithms into Vertica, enabling in-database prediction-based machine learning over very large data sets and at high speed. During this course, you will learn: How to prepare your data for model development How to create and evaluate regression, classification, and regression algorithms How to manage existing database models

Audience Summary

This course is intended for Novice data analysts and Experienced data scientists.

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Details

Course
VT160-91 1.0
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Course outline

Course Outline

Predictive Analytics Using Machine Learning (Digital Learning)

Audience summary:

This course is intended for Novice data analysts and Experienced data scientists.

Delivery Type:

eLearning

Duration of the course:

4 hour(s)

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release-rel-2024-12-3-sha256-6304 | Sun Dec 15 20:16:44 PST 2024