Artificial Intelligence & Data Science
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Data Science with R - Capstone Project

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Course Report - Data Science with R - Capstone Project

Course Report

Find detailed report of this course which helps you make an informed decision on its relevance to your learning needs. Find out the course's popularity among Careervira users and the job roles that would find the course relevant for their upskilling here. You can also find how this course compares against similar courses and much more in the course report.

Course Features

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Duration

14 hours

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Delivery Method

Online

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Available on

Limited Access

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Accessibility

Desktop, Laptop

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Language

English

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Subtitles

English

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Level

Intermediate

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Teaching Type

Self Paced

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Video Content

14 hours

Course Description

This capstone course will allow you to apply the data science skills and techniques you have acquired in previous courses such as the IBM Data Science and R Specialization or IBM Data Analytics and Excel Professional Certificate.

This project will require you to assume the role a Data Scientist, who recently joined an organization. You will be faced with a challenge that requires data analysis, visualization, basic hypothesis testing, modeling, and data collection. Data will be collected and understood from multiple sources. You will also prepare data using Tidyverse. Your data analysis report will be presented to the company with an executive summary.

Course Overview

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Virtual Labs

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International Faculty

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Case Based Learning

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Post Course Interactions

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Case Studies,Instructor-Moderated Discussions

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Case Studies, Captstone Projects

Skills You Will Gain

What You Will Learn

Conduct exploratory data analysis using descriptive statistics, data grouping, data analysis and correlation statistics

Prepare data for modelling by handling missing values, formatting and normalizing data, binning, and turning categorical values into numeric values

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