Introduction to Predictive Analytics in Python, Short Course | Part time online | Data Camp | United States
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Short Online

Introduction to Predictive Analytics in Python

1 days
Duration
Free
Free
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Tuition fee
Anytime
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About

In this Introduction to Predictive Analytics in Python course at Data Camp, you will learn how to build a logistic regression model with meaningful variables.

Overview

Context of the Introduction to Predictive Analytics in Python course at Data Camp

You will also learn how to use this model to make predictions and how to present it and its performance to business stakeholders.

Programme Structure

Chapters

  • Building Logistic Regression Models
  • Forward stepwise variable selection for logistic regression
  • Explaining model performance to business
  • Interpreting and explaining models

Key information

Duration

  • Part-time
    • 1 days

Start dates & application deadlines

You can apply for and start this programme anytime.

Language

English

Delivered

Online

Academic requirements

We are not aware of any specific GRE, GMAT or GPA grading score requirements for this programme.

English requirements

We are not aware of any English requirements for this programme.

Other requirements

General requirements

PREREQUISITES

  • Intermediate Python

Tuition Fee

To always see correct tuition fees
  • International

    Free
    Tuition Fee
    Based on the tuition of 0 USD for the full programme during 1 days.
  • National

    Free
    Tuition Fee
    Based on the tuition of 0 USD for the full programme during 1 days.

Basic Access: Free; Premium (for individuals): $12.42 per month billed annually; Teams: $25 per month billed annually; Enterprise: Contact sales for pricing

Funding

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