Applied Data Science Specialization

Course Cover
compare button icon

Course Features

icon

Duration

6 months

icon

Delivery Method

Online

icon

Available on

Limited Access

icon

Accessibility

Desktop, Laptop

icon

Language

English

icon

Subtitles

English

icon

Level

Beginner

icon

Effort

3 hours per week

icon

Teaching Type

Self Paced

Course Description

This Specialization is designed for data scientists who are interested in gaining practical skills to solve real-world data problems. This program is ideal for those who are interested in a career as a data scientist and have already completed the Introduction to Data Science Specialization. This 4-course Specialization will equip you with the skills you need to analyze data, make data-driven business decisions using statistical analysis and computer science. No programming experience is required. You will also learn Python and the methods of data visualization. Use tools like Numpy or Pandas to practice predictive modeling and selection. You will also learn how to create compelling stories with data to support decision-making. You'll gain hands-on experience solving interesting data problems through guided lectures, labs and projects in IBM Cloud. This Specialization will help you to improve your Python and data science skills, before you dive deeper into deep learning, AI, big data, and deep learning. You will receive a Coursera Specialization completion certificate and a digital badge from IBM that recognizes you as an expert in applied data science. This Specialization can be used to earn the IBM Data Science Professional Certificate.

Course Overview

projects-img

International Faculty

projects-img

Post Course Interactions

projects-img

Instructor-Moderated Discussions

Skills You Will Gain

What You Will Learn

Communicate data insights effectively through data visualizations

Create a project demonstrating your understanding of applied data science techniques and tools

Gain practical Python skills and apply them to data analysis

Develop an understanding of Python fundamentals

Course Cover