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There are 4 modules in this course
Do you want to know why data science has been labeled the sexiest profession of the 21st century? After taking this course, you will be able to answer this question, understand what data science is and what data scientists do, and learn about career paths in the field.
The art of uncovering insights and trends in data has been around since ancient times. The ancient Egyptians used census data to increase efficiency in tax collection and accurately predicted the Nile River's flooding every year. Since then, people have continued to use data to derive insights and predict outcomes. Recently, they have carved out a unique and distinct field for the work they do. This field is data science.
In today's world, we use Data Science to find patterns in data and make meaningful, data-driven conclusions and predictions.
This course is for everyone and teaches concepts like how data scientists use machine learning and deep learning and how companies apply data science in business.
You will meet several data scientists, who will share their insights and experiences in data science. By taking this introductory course, you will begin your journey into this thriving field.
In Module 1, you delve into some fundamentals of Data Science. In lesson 1, you listen to how other professionals in the field define what data science is to them and the paths they took to consider data science as a career for themselves. You explore different roles data scientists fulfill, how data analysis is used in data science, and how data scientists follow certain processes to answer questions with that data.
Moving on to Lesson 2, the focus shifts to the daily activities of data scientists. This encompasses learning about various real-world data science problems that professionals solve, the skills and qualities needed to be a successful data scientist, and opinions on how “big data” relates to those skills. You also learn a little about various data formats data scientists work with and algorithms used in the field to process data.
What's included
11 videos11 readings5 assignments
Show info about module content
11 videos•Total 41 minutes
Course Introduction•4 minutes
What is Data Science?•2 minutes
Fundamentals of Data Science•3 minutes
The Many Paths to Data Science•4 minutes
Advice for New Data Scientists•3 minutes
Lesson Summary: Defining Data Science•3 minutes
A Day in the Life of a Data Scientist•4 minutes
Data Science Skills & Big Data•5 minutes
Understanding Different Types of File Formats•5 minutes
Data Science Topics and Algorithms•4 minutes
Lesson Summary: What Do Data Scientists Do?•4 minutes
11 readings•Total 70 minutes
A Quick Note for the Best Learning Experience•2 minutes
Course Syllabus•5 minutes
Professional Certificate Career Support•10 minutes
Helpful Tips for Course Completion•2 minutes
Lesson Overview: Defining Data Science•10 minutes
Data Science: The Sexiest Job in the 21st Century•15 minutes
Glossary: Defining Data Science•5 minutes
Lesson Overview: What Do Data Scientists Do?•3 minutes
What Makes Someone a Data Scientist?•10 minutes
Glossary: What do Data Scientists Do?•5 minutes
Summary: What Do Data Scientists Do?•3 minutes
5 assignments•Total 40 minutes
Practice Quiz: Data Science: The Sexiest Job in the 21st Century•6 minutes
Practice Quiz: Defining Data Science•10 minutes
Practice Quiz: What makes Someone a Data Scientist? •6 minutes
Graded Quiz: Defining Data Science •9 minutes
Graded Quiz: What Data Scientists Do•9 minutes
Data Science Topics
Module 2•4 hours to complete
Module details
In the first lesson in this module, you gain insight into the impact of big data on various aspects of society, from business operations to sports, and develop an understanding of key attributes and challenges associated with big data. You will learn about the big data fundamentals, how data scientists use the cloud to handle big data, and the data mining process. Lesson two delves into machine learning and deep learning and the relationship of artificial intelligence to data science.
What's included
13 videos8 readings6 assignments
Show info about module content
13 videos•Total 63 minutes
How Big Data is Driving Digital Transformation•4 minutes
Introduction to Cloud•7 minutes
Cloud for Data Science•3 minutes
Foundations of Big Data•5 minutes
Data Science and Big Data•4 minutes
What is Hadoop?•7 minutes
Big Data Processing Tools: Hadoop, HDFS, Hive, and Spark•7 minutes
Lesson Summary: Big Data and Data Mining•6 minutes
Artificial Intelligence and Data Science•4 minutes
Generative AI and Data Science•4 minutes
Neural Networks and Deep Learning•7 minutes
Applications of Machine Learning•3 minutes
Lesson Summary: Deep Learning and Machine Learning•3 minutes
8 readings•Total 108 minutes
Lesson Overview: Big Data and Data Mining•7 minutes
Data Mining•15 minutes
Glossary: Big Data and Data Mining•10 minutes
Lesson Overview: Deep Learning and Machine Learning•3 minutes
Regression•15 minutes
Lab: Exploring Data using IBM Cloud Gallery•45 minutes
Glossary: Deep Learning and Machine Learning•10 minutes
Summary: Deep Learning and Machine Learning•3 minutes
6 assignments•Total 54 minutes
Practice Quiz: Data Mining•6 minutes
Practice Quiz: Big Data and Data Mining•6 minutes
Practice Quiz: Regression •6 minutes
Practice Quiz: Deep Learning and Machine Learning•6 minutes
Graded Quiz: Big Data and Data Mining•15 minutes
Graded Quiz: Deep Learning and Machine Learning•15 minutes
Applications and Careers in Data Science
Module 3•3 hours to complete
Module details
In the first lesson, you learn about the power of data science applications and how organizations leverage this power to drive business goals, improve efficiency, make predictions, and even save lives. You also reviewed the process you will follow as a data scientist to help your organization accomplish these ends. In the second lesson, you investigate what companies seek in a competent, experienced data scientist. You will learn how to position yourself to get hired as a data scientist. Amidst the diverse backgrounds from which data scientists emerge, you identify the qualities they share and skills that consistently set them apart from other data-related roles. You will complete a peer-reviewed final project by looking at a job posting for data scientist and identifying commonalities between the job and what you learned in this course. You will also walk through a case study, where you learn about Sarah and her data science journey.
What's included
10 videos14 readings8 assignments
Show info about module content
10 videos•Total 44 minutes
How Should Companies Get Started in Data Science?•3 minutes
Old Problems, New Data Science Solutions•4 minutes
Applications of Data Science•4 minutes
How Data Science is saving lives•5 minutes
Lesson Summary: Data Science Applications Domain•4 minutes
How Can Someone Become a Data Scientist?•5 minutes
Recruiting for Data Science•8 minutes
Careers in Data Science•3 minutes
Importance of Mathematics and Statistics for Data Science•5 minutes
Lesson Summary: Careers and Recruiting in Data Science•4 minutes
14 readings•Total 70 minutes
Lesson Overview: Data Science Application Domains•3 minutes
The Final Deliverable•5 minutes
Glossary: Data Science Application Domains•5 minutes
Lesson Overview: Careers and Recruiting in Data Science•3 minutes
The Report Structure•10 minutes
Glossary: Careers and Recruiting in Data Science•5 minutes
Summary: Careers and Recruiting in Data Science•4 minutes
A Roadmap to your Data Science Journey•3 minutes
Case Study: Final Assignment•15 minutes
Explore Data Science Job Listings•5 minutes
Course Summary•7 minutes
Congrats & Next Steps•1 minute
Course Team and Acknowledgements•2 minutes
IBM Digital Badge•2 minutes
8 assignments•Total 88 minutes
Practice Quiz: The Final Deliverable•6 minutes
Practice Quiz: Data Science Application Domains•6 minutes
Practice Quiz: The Report Structure •6 minutes
Practice Quiz: Careers and Recruiting in Data Science•6 minutes
Graded Quiz: Data Science Application Domains•9 minutes
Graded Quiz: Careers and Recruiting in Data Science•9 minutes
Quiz Based on Case Study•10 minutes
Final Exam•36 minutes
Data literacy for Data Science (Optional)
Module 4•2 hours to complete
Module details
This optional module focuses on understanding data and data literacy and is intended to supplement what you learned in the first three modules. As a data scientist, you will need to understand the ecosystem in which your data lives and how it gets manipulated to analyze it. This module introduces you to some of these fundamentals. In lesson one, you explore how data can be generated, stored, and accessed. In lesson two, you take a deeper dive into data repositories and processes for handling massive data sets.
What's included
11 videos6 readings4 assignments
Show info about module content
11 videos•Total 66 minutes
Understanding Data •4 minutes
Data Sources•8 minutes
Viewpoints: Working with Varied Data Sources and Types•7 minutes
Lesson Summary: Understanding Data•4 minutes
Data Collection and Organization•5 minutes
Relational Database Management System•8 minutes
NoSQL•8 minutes
Data Marts, Data Lakes, ETL, and Data Pipelines•7 minutes
Viewpoints: Considerations for Choice of Data Repository•6 minutes
Data Integration Platforms•5 minutes
Lesson Summary: Welcome to Data Literacy•5 minutes
6 readings•Total 39 minutes
Lesson Overview: Understanding Data•5 minutes
Reading: Metadata•15 minutes
Glossary: Understanding Data•5 minutes
Lesson Overview: Data Literacy•3 minutes
Glossary: Data Literacy for Data Science•10 minutes
Summary: Data Literacy for Data Science•1 minute
4 assignments•Total 30 minutes
Practice Quiz: Metadata•6 minutes
Practice Quiz - Understanding Data•6 minutes
Practice Quiz: Data integration Platforms•12 minutes
Practice Quiz: Data Literacy•6 minutes
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Learner reviews
4.7
77,677 reviews
5 stars
76.52%
4 stars
18.60%
3 stars
3.19%
2 stars
0.79%
1 star
0.88%
Showing 3 of 77677
J
JM
5·
Reviewed on Mar 6, 2024
I learned a lot but that might not be a good indicator as I didn't know much about Data Science in the first place. It just fueled my need to know more about the subject so on my side, it's a winner.
Y
YH
5·
Reviewed on Jul 18, 2023
Data science is to use new and old data combined with mathematics, statistics, database and other tools to discover hidden problems or insights to help us solve problems or make correct predictions
R
RM
4·
Reviewed on Jun 9, 2019
The course is a perfect introduction to data science, making a person comfortable and showing the participants of the course a daily work of data scientist and to simplify the meaning of data science.
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