Predictive Analytics: Basic Modeling Techniques

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Course Features

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Duration

4 weeks

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Delivery Method

Online

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Available on

Limited Access

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Accessibility

Mobile, Desktop, Laptop

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Language

English

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Subtitles

English

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Level

Intermediate

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Effort

7 hours per week

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Teaching Type

Self Paced

Course Description

What is Predictive Analytics? These methods lie behind the most transformative technologies of the last decade, that go under the more general name Artificial Intelligence or AI. In this course, the focus is on the skills that will allow you to fit a model to data, and measure how well it performs.

These skills also go under the names "machine learning" and "data science," the latter being a broader term than machine learning or predictive analytics but narrower than AI. This course is part of the Machine Learning Operations (MLOps) Program. We will be doing enough data science so that you get hands-on familiarity with understanding a dataset, fitting a model to it, and generating predictions. As you get further into the program, you will learn how to fit that model into a machine learning pipeline.

You will get hands-on experience with the top techniques in supervised learning: linear and logistic regression modeling, decision trees, neural networks, ensembles, and much more.

But most importantly, by the end of this course, you will know

  • What a predictive model can (and cannot) do, and how its data is structured
  • How to predict a numerical output, or a class (category)
  • How to measure the out-of-sample (future)performance of a model

Course Overview

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International Faculty

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Post Course Interactions

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Instructor-Moderated Discussions

Skills You Will Gain

Prerequisites/Requirements

Python

Statistics

What You Will Learn

Develop a variety of machine learning algorithms for both classification and regression, including linear and logistic regression, decisions trees and neural networks

Evaluate machine learning model performance with appropriate metrics

Combine multiple models into ensembles to improve performance

Explain the special contribution that deep learning has made to machine learning task

Course Instructors

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Peter Bruce

Chief Learning Officer at Elder Research and Founder of The Institute for Statistics Education at Statistics.com

Peter founded the Institute for Statistics Education at Statistics.com which was acquired by Elder Research, Inc. in 2019, The Institute specializes in introductory and graduate level online educatio...
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Veronica Carlan

Data Scientist at Elder Research

Veronica has been working with the intelligence community since 2009, previously as an intelligence analyst and currently as a data scientist. She focuses on insider threat, text analytics, and app development and maintenance.
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Kuber Deokar

Lead - Data Science at UpThink Experts; Faculty and Instructional Operations Supervisor at The Institute for Statistics Education at Statistics.com/ An Elder Research Company

Kuber is responsible for the coordination of online courses and ensures seamless interactions between the management teams, course creators, course instructors, teaching assistants, and students. Kub...
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Jericho McLeod

Data Scientist at Elder Research

Jericho has a passion for solving business problems using advanced analytics, and guiding clients from initial challenge definition through successful deployment and maintenance of predictive models....
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