We may earn an affiliate commission when you visit our partners.
Pratheerth Padman

In this course, Data Wrangling with Python 3, you'll learn about various functions and procedures that will help you get your data in order, providing a clean and well-constructed dataset for further data analysis and machine learning.

Read more

In this course, Data Wrangling with Python 3, you'll learn about various functions and procedures that will help you get your data in order, providing a clean and well-constructed dataset for further data analysis and machine learning.

Machine Learning and Data analytics in general follows the garbage-in/garbage-out principle. If you want to learn from or predict based on your data, you need to make sure that data is well constructed and cleaned. This course, Data Wrangling with Python 3, is aimed at helping you do exactly that. First, you’ll see how to merge data from different sources using the methods concat, append, and merge. Next, you’ll discover how to combine data into groups. The primary function used here is groupby. In the next two sections, you’ll explore how to transform and normalize data. You’ll learn why these processes are necessary, and then proceed to see how they work in practice. Finally, you’ll examine important processes such as One Hot Encoding, which enables further processing during data analysis. When you’re finished with this course, you’ll have thorough knowledge of data wrangling which will help you immensely during your data analysis and machine learning projects.

Enroll now

Here's a deal for you

We found an offer that may be relevant to this course.
Save money when you learn. All coupon codes, vouchers, and discounts are applied automatically unless otherwise noted.

What's inside

Syllabus

Course Overview
Concatenating and Merging Data from Different Sources
Combining Data into Groups
Normalizing Data with Pandas
Read more
Reshaping Data with Python
Data Encoding with Python

Good to know

Know what's good
, what to watch for
, and possible dealbreakers
Guides students in cleaning and structuring data for further analysis, a crucial step in machine learning and data analytics
Taught by Pratheerth Padman, an experienced instructor who specializes in data wrangling and related topics

Save this course

Save Data Wrangling with Python 3 to your list so you can find it easily later:
Save

Activities

Be better prepared before your course. Deepen your understanding during and after it. Supplement your coursework and achieve mastery of the topics covered in Data Wrangling with Python 3 with these activities:
Review SQL
Ensure a renewed familiarity with fundamental SQL syntax and concepts to enhance comprehension of data wrangling techniques and operations.
Show steps
  • Revisit basic SQL commands
  • Practice writing SQL queries
Review Python basics
Ensure you have a solid foundation in Python before starting the course.
Browse courses on Python
Show steps
  • Go over Python syntax and data types
  • Practice writing simple Python programs
Hands-on Data Wrangling Exercises
Reinforce data wrangling skills through practical exercises, solidifying techniques covered in the course.
Browse courses on Data Manipulation
Show steps
  • Load and explore real-world datasets
  • Apply data wrangling techniques to clean and normalize data
Eight other activities
Expand to see all activities and additional details
Show all 11 activities
Work through Pandas exercises
Sharpen your data wrangling skills by working through these exercises.
Browse courses on Data Wrangling
Show steps
  • Review the data you'll be working with
  • Perform basic data cleaning and manipulation tasks
Follow tutorials on advanced data manipulation techniques
Expand your knowledge of Python libraries and techniques for data wrangling.
Browse courses on Data Manipulation
Show steps
  • Identify areas where you need to improve your skills
  • Find tutorials that cover these topics
  • Follow the tutorials and practice the techniques
Solve LeetCode problems on data structures
Strengthen your data structures and algorithm skills, which are essential for data wrangling.
Browse courses on Data Structures
Show steps
  • Review common data structures and algorithms
  • Attempt LeetCode problems of varying difficulty
Explore Advanced Data Wrangling Techniques
Expand knowledge beyond the course by exploring additional data wrangling techniques and algorithms through guided tutorials.
Browse courses on Data Profiling
Show steps
  • Identify suitable tutorials
  • Follow tutorials and implement techniques
Connect with experts in the field
Gain valuable insights and guidance from professionals with experience in data wrangling and analysis.
Show steps
Write a blog post on data cleaning best practices
Share your knowledge and reinforce your understanding by creating a resource that benefits others.
Show steps
  • Research and gather information on data cleaning best practices
  • Organize your thoughts and outline the blog post
  • Write and edit the blog post
Data Cleaning Project
Apply data wrangling skills to a real-world dataset, improving its quality and preparing it for analysis or modeling.
Show steps
  • Acquire a suitable dataset
  • Apply data cleaning techniques
  • Evaluate data quality before and after cleaning
Build a data visualization dashboard
Showcase your data wrangling skills by creating an interactive dashboard that presents insights from your data.
Show steps
  • Gather and clean the data
  • Choose appropriate visualization techniques
  • Build the dashboard using a visualization library

Career center

Learners who complete Data Wrangling with Python 3 will develop knowledge and skills that may be useful to these careers:
Machine Learning Engineer
Machine Learning Engineers design, develop, and deploy machine learning models to solve real-world problems. The course Data Wrangling with Python 3 can help Machine Learning Engineers develop the skills they need to effectively prepare and clean data for machine learning, ensuring that their models are trained on high-quality data.
Data Engineer
Data Engineers design, develop, and maintain data pipelines and infrastructure to support data analysis and machine learning. The course Data Wrangling with Python 3 can help Data Engineers develop the skills they need to effectively clean, transform, and normalize data, ensuring that data is ready for analysis and modeling.
Data Analyst
Data Analysts collect and interpret data to help organizations make informed decisions. They use their skills in data wrangling, analysis, and visualization to identify trends, patterns, and insights in data. The course Data Wrangling with Python 3 can help Data Analysts develop the skills they need to effectively clean, transform, and analyze data, enabling them to make more accurate and reliable conclusions.
Data Scientist
Data Scientists use their expertise in data wrangling, analysis, and machine learning to solve business problems and gain insights from data. The course Data Wrangling with Python 3 can help Data Scientists build a strong foundation in data wrangling techniques, enabling them to prepare and clean data effectively for further analysis and modeling.
Data Visualization Analyst
Data Visualization Analysts use their skills in data wrangling, visualization, and communication to create visual representations of data that help stakeholders understand and make decisions. The course Data Wrangling with Python 3 can help Data Visualization Analysts develop the skills they need to effectively clean, transform, and prepare data for visualization, ensuring that their visualizations are accurate and informative.
Business Analyst
Business Analysts use data to help organizations make better decisions. They use their skills in data analysis, visualization, and communication to identify opportunities, solve problems, and improve performance. The course Data Wrangling with Python 3 can help Business Analysts develop the skills they need to effectively clean, transform, and analyze data, enabling them to make more informed and data-driven recommendations.
Statistician
Statisticians collect, analyze, interpret, and present data to help organizations make informed decisions. They use their skills in data wrangling, analysis, and visualization to identify trends, patterns, and insights in data. The course Data Wrangling with Python 3 can help Statisticians develop the skills they need to effectively clean, transform, and analyze data, enabling them to make more accurate and reliable conclusions.
Operations Research Analyst
Operations Research Analysts use their skills in data analysis, modeling, and optimization to improve the efficiency and effectiveness of business operations. The course Data Wrangling with Python 3 can help Operations Research Analysts develop the skills they need to effectively clean, transform, and analyze data, enabling them to make more informed and data-driven recommendations.
Market Researcher
Market Researchers use their skills in data collection, analysis, and interpretation to understand consumer behavior and market trends. The course Data Wrangling with Python 3 can help Market Researchers develop the skills they need to effectively clean, transform, and analyze market data, enabling them to make more informed and data-driven decisions.
Financial Analyst
Financial Analysts use their skills in data analysis and modeling to evaluate investments, make recommendations, and manage risk. The course Data Wrangling with Python 3 can help Financial Analysts develop the skills they need to effectively clean, transform, and analyze financial data, enabling them to make more informed and data-driven decisions.
Risk Analyst
Risk Analysts use their skills in data analysis and modeling to identify, assess, and mitigate risks. The course Data Wrangling with Python 3 can help Risk Analysts develop the skills they need to effectively clean, transform, and analyze risk data, enabling them to make more informed and data-driven decisions.
Software Engineer
Software Engineers design, develop, and maintain software applications. While not directly related to data wrangling, the course Data Wrangling with Python 3 may be useful for Software Engineers who work with data-intensive applications or who need to develop data processing pipelines.
Web Developer
Web Developers design, develop, and maintain websites and web applications. While not directly related to data wrangling, the course Data Wrangling with Python 3 may be useful for Web Developers who work with data-driven websites or who need to develop data processing pipelines.
Data Management Consultant
Data Management Consultants help organizations manage and use their data effectively. They use their skills in data wrangling, analysis, and governance to help organizations improve their data quality, data security, and data governance practices. The course Data Wrangling with Python 3 can help Data Management Consultants develop the skills they need to effectively clean, transform, and analyze data, enabling them to make more informed and data-driven recommendations.
Database Administrator
Database Administrators design, develop, and maintain databases. While not directly related to data wrangling, the course Data Wrangling with Python 3 may be useful for Database Administrators who need to develop data processing pipelines or who work with data-intensive databases.

Reading list

We've selected six books that we think will supplement your learning. Use these to develop background knowledge, enrich your coursework, and gain a deeper understanding of the topics covered in Data Wrangling with Python 3.
Covers a wide range of topics in data science, including data wrangling, machine learning, and data visualization. It is useful for those who want to learn more about data science in general.
Covers the basics of data manipulation with the Pandas library. It would be helpful for those who want to learn more about Pandas specifically.
Covers the basics of data cleaning in Python. It good resource for those who want to learn more about data cleaning specifically.
Covers the basics of machine learning in Python. It good resource for those who want to learn more about machine learning in general.
Covers the basics of deep learning in Python. It good resource for those who want to learn more about deep learning specifically.
Covers the basics of natural language processing in Python. It good resource for those who want to learn more about natural language processing specifically.

Share

Help others find this course page by sharing it with your friends and followers:
Our mission

OpenCourser helps millions of learners each year. People visit us to learn workspace skills, ace their exams, and nurture their curiosity.

Our extensive catalog contains over 50,000 courses and twice as many books. Browse by search, by topic, or even by career interests. We'll match you to the right resources quickly.

Find this site helpful? Tell a friend about us.

Affiliate disclosure

We're supported by our community of learners. When you purchase or subscribe to courses and programs or purchase books, we may earn a commission from our partners.

Your purchases help us maintain our catalog and keep our servers humming without ads.

Thank you for supporting OpenCourser.

© 2016 - 2024 OpenCourser