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Janani Ravi

Matplotlib is one of the most popular visualization libraries used by data analysts and data scientists working in Python, but can often be intimidating to use. This course serves to make working with Matplotlib easy and simple.

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Matplotlib is one of the most popular visualization libraries used by data analysts and data scientists working in Python, but can often be intimidating to use. This course serves to make working with Matplotlib easy and simple.

This course will focus on making Matplotlib accessible and easily understandable to a Data Scientist or Business Analyst who needs to quickly and visually come to grips with relationships in a large dataset. In this course, Building Data Visualizations Using Matplotlib, you'll discover the basic components which make up a plot and see how you can tweak parameters and attributes to have the visualizations customized to exactly how you want it. First, you’ll grow to understand the basic APIs available in Matplotlib and where they are used and learn how to customize the display, colors, and other attributes of these plots which will have multiple axes. Next, you’ll build intermediate and advanced plots, drawing shapes and Bezier curves, using text and annotations to highlight plot elements, and normalizing the scales that are used on the x and y-axis. Lastly, you’ll use some real-world data to visualize statistical data such as mean, median mode, and outliers, cover box plots, violin plots, histograms, pie charts, stem and stack plots and autocorrelations graphs. By the end of this course you’ll not only have explored all the nitty gritty that Matplotlib has to offer; but you’ll also be capable of building production-ready visuals to embed with your UI or to display within reports and presentations.

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What's inside

Syllabus

Course Overview
Working with the Matplotlib and Pyplot APIs
Building Basic, Intermediate, and Advanced Plots with Matplotlib
Visualizing Statistical Data with Matplotlib
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Good to know

Know what's good
, what to watch for
, and possible dealbreakers
Teaches tools and techniques for creating visualizations with Matplotlib, which is a valuable skill for both data analysis and data science
Covers essential components of Matplotlib, including basic APIs, customization options, and advanced plot types
Provides a clear understanding of statistical data visualization using Matplotlib
Introduces real-world examples to demonstrate the practical applications of Matplotlib

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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 Building Data Visualizations Using Matplotlib with these activities:
Review NumPy basics
Review NumPy basics to ensure you have a solid foundation for working with Matplotlib.
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  • Go over NumPy documentation or tutorials to refresh your memory.
  • Practice using NumPy functions for data manipulation and array operations.
Follow Matplotlib tutorials
Follow guided tutorials to gain a deeper understanding of specific Matplotlib features and techniques.
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Show steps
  • Identify specific areas of Matplotlib you want to improve upon.
  • Search for and select reputable Matplotlib tutorials that cover those areas.
  • Follow the tutorials step-by-step, taking notes and practicing the techniques.
Plot multiple graphs with different axes
Practice creating plots with different axes to gain proficiency in customizing Matplotlib visualizations.
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  • Create a figure and multiple subplots
  • Set the x and y axes labels
  • Plot data on the subplots
  • Adjust the layout and spacing
  • Save the figure
Eight other activities
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Work through Matplotlib exercises
Practice working with Matplotlib exercises to improve your understanding of its capabilities and reinforce your knowledge.
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  • Find a set of Matplotlib exercises online or in a textbook.
  • Work through the exercises, experimenting with different options and parameters.
  • Refer to the Matplotlib documentation or online resources for guidance as needed.
Join a Matplotlib study group
Join a study group to discuss Matplotlib concepts, share knowledge, and collaborate on projects.
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  • Find or create a Matplotlib study group online or in your local area.
  • Attend regular study sessions and participate in discussions.
  • Share your knowledge and experience with others in the group.
Attend a Matplotlib workshop
Attend a Matplotlib workshop to learn from experts, connect with others, and enhance your skills.
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  • Research and identify reputable Matplotlib workshops.
  • Register for a workshop that aligns with your learning goals.
  • Attend the workshop, take notes, and actively participate in discussions.
  • Follow up after the workshop by practicing what you learned and connecting with other attendees.
Create a visualization dashboard
Build a data visualization dashboard using Matplotlib to solidify your understanding of the library.
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  • Gather data for your dashboard
  • Design the layout of your dashboard
  • Implement the visualizations using Matplotlib
  • Integrate the visualizations into your dashboard
  • Test and refine your dashboard
Participate in data visualization challenges
Participate in data visualization challenges to test your skills, learn from others, and push your limits.
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  • Identify data visualization challenges that align with your interests and skill level.
  • Gather the necessary data and tools.
  • Develop and submit your visualizations.
  • Analyze the feedback and learn from your experience.
Write a blog post about Matplotlib tricks
Share your knowledge and reinforce your understanding by writing a blog post about some lesser-known Matplotlib tricks.
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  • Identify useful but lesser-known Matplotlib techniques
  • Write a clear and concise blog post explaining the techniques
  • Illustrate the techniques with code examples
  • Proofread and edit your blog post
  • Publish your blog post on a relevant platform
Create a Matplotlib workbook
Create a workbook that compiles your Matplotlib knowledge, including code snippets, examples, and explanations.
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  • Organize your Matplotlib knowledge into logical sections.
  • Write clear and concise explanations for each section.
  • Include code snippets and examples to illustrate the concepts.
  • Review and edit your workbook to ensure clarity and accuracy.
Contribute to Matplotlib
Contribute to the Matplotlib open-source project to deepen your understanding, gain practical experience, and support the community.
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  • Explore the Matplotlib GitHub repository and identify areas where you can contribute.
  • Fork the repository and create a branch for your changes.
  • Implement your changes and write clear documentation.
  • Submit a pull request and work with the maintainers to get your changes merged.

Career center

Learners who complete Building Data Visualizations Using Matplotlib will develop knowledge and skills that may be useful to these careers:
Data Scientist
A Data Scientist is a professional who uses their skills in data analysis, machine learning, and statistics to solve business problems. Data Scientists are in high demand, and this course can help you build the skills you need to launch a successful career in this field. By taking this course, you'll learn how to use Matplotlib to create visualizations that can help you identify trends, patterns, and outliers in your data.
Data Analyst
A Data Analyst plays a vital role in any organization that collects data. They use their skills in data analysis, data mining, and data visualization to help businesses make informed decisions. This course, Building Data Visualizations using Matplotlib, can help you build a strong foundation in data visualization, which is a key skill for any Data Analyst. By taking this course, you'll learn how to create clear and concise visualizations that can help you communicate your findings to stakeholders.
Business Analyst
A Business Analyst is responsible for understanding the business needs of an organization and translating those needs into technical requirements. Business Analysts often work with Data Analysts and Data Scientists to help them understand the business context of their work. This course can help you build the skills you need to be a successful Business Analyst by teaching you how to use Matplotlib to create visualizations that can communicate complex business concepts in a clear and concise way.
Market Researcher
A Market Researcher is responsible for collecting, analyzing, and interpreting data about markets and customers. They use this information to help businesses make informed decisions about product development, marketing, and sales. This course can help you build the skills you need to be a successful Market Researcher by teaching you how to use Matplotlib to create visualizations that can help you communicate your findings to stakeholders.
Financial Analyst
A Financial Analyst uses their skills in data analysis and financial modeling to help businesses make informed investment decisions. This course can help you build the skills you need to be a successful Financial Analyst by teaching you how to use Matplotlib to create visualizations that can help you analyze financial data and identify trends.
Quantitative Analyst
A Quantitative Analyst is a financial professional who uses their skills in mathematics, statistics, and computer programming to develop and implement trading strategies. This course can help you build the skills you need to be a successful Quantitative Analyst by teaching you how to use Matplotlib to create visualizations that can help you analyze financial data and identify trends.
Biostatistician
A Biostatistician is a statistician who specializes in the application of statistical methods to biological and medical data. This course can help you build the skills you need to be a successful Biostatistician by teaching you how to use Matplotlib to create visualizations that can help you analyze medical data and identify trends.
Epidemiologist
An Epidemiologist is a public health professional who studies the distribution and determinants of disease in populations. This course can help you build the skills you need to be a successful Epidemiologist by teaching you how to use Matplotlib to create visualizations that can help you analyze public health data and identify trends.
Software Engineer
A Software Engineer is responsible for designing, developing, and maintaining software applications. This course may be useful for Software Engineers who want to learn how to use Matplotlib to create visualizations that can help them debug their code and identify performance bottlenecks.
Data Engineer
A Data Engineer is responsible for designing, building, and maintaining the infrastructure that supports data analysis and data science. This course can help you build the skills you need to be a successful Data Engineer by teaching you how to use Matplotlib to create visualizations that can help you monitor the performance of your data pipelines.
Sales Manager
A Sales Manager is responsible for managing a sales team and achieving sales goals. This course may be useful for Sales Managers who want to learn how to use Matplotlib to create visualizations that can help them track the performance of their team and identify areas for improvement.
Product Manager
A Product Manager is responsible for managing the development and launch of new products. This course may be useful for Product Managers who want to learn how to use Matplotlib to create visualizations that can help them track the progress of their projects and communicate their findings to stakeholders.
Marketing Manager
A Marketing Manager is responsible for developing and executing marketing campaigns. This course may be useful for Marketing Managers who want to learn how to use Matplotlib to create visualizations that can help them track the performance of their campaigns and identify areas for improvement.
Project Manager
A Project Manager is responsible for planning, executing, and closing projects. This course may be useful for Project Managers who want to learn how to use Matplotlib to create visualizations that can help them track the progress of their projects and identify areas for improvement.
Operations Manager
An Operations Manager is responsible for managing the day-to-day operations of a business. This course may be useful for Operations Managers who want to learn how to use Matplotlib to create visualizations that can help them track the performance of their operations and identify areas for improvement.

Reading list

We've selected 13 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 Building Data Visualizations Using Matplotlib.
A comprehensive guide to data visualization using Matplotlib. Covers the basics of Matplotlib and Pyplot, intermediate and advanced plot types, and visualizing statistical data. Provides readers with a solid foundation in Matplotlib.
Provides an overview of data visualization concepts and techniques. Covers building interactive visualizations using JavaScript libraries such as D3.js and Vega-Lite. Useful for learners who want to extend their Matplotlib skills to web development.
Focuses on the principles of effective data visualization. Helps learners choose the right chart type for their data and audience. Provides practical guidance on designing clear and concise visualizations.
An introduction to Tableau, a powerful data visualization and analytics platform. Covers the basics of Tableau, how to create different types of visualizations, and how to use Tableau for data analysis. Useful for learners who want to explore alternative data visualization tools.
A classic work on data visualization. Provides a comprehensive overview of the principles and practices of effective data visualization. Useful for learners who want to gain a deeper understanding of the theoretical foundations of data visualization.
A comprehensive guide to ggplot2, a popular data visualization library for R. Covers the basics of ggplot2, how to create different types of visualizations, and how to customize visualizations using the ggplot2 grammar. Useful for learners who want to explore alternative data visualization tools.
A collection of recipes for creating various types of visualizations using R. Provides step-by-step instructions and code examples for creating a wide range of visualizations. Useful for learners who want to quickly find solutions for specific visualization tasks.
A beginner-friendly introduction to data visualization. Covers the basics of data visualization, how to choose the right chart type, and how to create visualizations using common tools like Excel and Google Charts. Useful for learners who are new to data visualization.
A discussion on the ethical and responsible practices of data visualization. Explores how data visualizations can be used to communicate effectively and avoid misinterpretation. Useful for learners who want to consider the broader implications of data visualization.
An academic textbook that provides a comprehensive overview of the field of information visualization. Covers the cognitive and perceptual aspects of data visualization, as well as design and evaluation techniques.
A practical guide to creating effective data visualizations for both scientific and business applications. Covers the principles of data visualization, how to choose the right chart type, and how to design visualizations that are clear and informative.
An accessible introduction to data visualization for beginners. Covers the basics of data visualization, how to choose the right chart type, and how to create visualizations using common tools like Excel and Google Charts.
A collection of articles and essays on data visualization, design, and statistics. Provides insights and practical advice from a leading data visualization expert. Useful for learners who want to stay up-to-date with the latest trends and best practices in data visualization.

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