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Chris Achard

Being able to create visualizations is a powerful skill that you can learn.  This course teaches you how to analyze your dataset and requirements, and how to adjust your visualization to create the most impactful visualization possible.

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Being able to create visualizations is a powerful skill that you can learn.  This course teaches you how to analyze your dataset and requirements, and how to adjust your visualization to create the most impactful visualization possible.

At the core of creating meaningful data visualizations is a thorough knowledge of understanding your data and your visualization requirements. In this course, Analyzing Data Visualization Requirements, you’ll learn how to prepare to build data visualizations. First, you’ll learn how to distinguish different types of data. Next, you’ll discover how to use visualizations to explore a dataset, or explain a point. Finally, you’ll examine how to adapt a visualization for a specific audience and medium. When you’re finished with this course, you’ll have a foundational knowledge of data visualizations that will help you as you move forward to create visualizations for your own datasets.

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What's inside

Syllabus

Course Overview
Visualizing Quantities or Qualities
Visualizing Numerical Data and Categories
Visualizing to Explain or Explore
Read more
Selecting Data to Explain or Explore
Displaying the Appropriate Level of Detail
Providing an Appropriate Visualization for Your Audience
Applying Data Visualization Requirement Analysis

Good to know

Know what's good
, what to watch for
, and possible dealbreakers
Helps learners build a foundational knowledge of data visualizations for creating visualizations for their own datasets
Taught by Chris Achard, who is recognized for their work in data visualization
Covers the fundamentals, such as understanding different data types and visualization techniques, as well as more advanced topics, such as adapting visualizations for a specific audience and medium
Provides hands-on practice with real-world datasets, helping learners develop their skills in data visualization
May be too introductory for experienced data visualization professionals

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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 Analyzing Data Visualization Requirements with these activities:
Practice distinguishing different types of data
Build a strong foundation in understanding the different types of data, which is crucial for creating meaningful data visualizations.
Browse courses on Data Types
Show steps
  • Review the course materials on data types.
  • Complete the practice exercises on distinguishing data types.
Review basic principles of data visualization
Ensure your understanding of the foundational principles of data visualization before starting the course
Show steps
  • Identify and define the main types of data visualization formats, e.g., bar charts, line graphs, pie charts, scatter plots, and histograms
  • Review the purpose and use of each type of visualization
  • Practice creating basic data visualizations using a visualization tool like Tableau or Google Data Studio
Review statistical concepts relevant to data visualization
Brush up on statistical concepts to enhance your understanding of data visualization applications
Show steps
  • Review basic statistical measures such as mean, median, mode, and standard deviation
  • Understand the concept of sampling and its implications for data visualization
  • Explore statistical tests and their role in data visualization
Nine other activities
Expand to see all activities and additional details
Show all 12 activities
Tutorial on using visualizations to explore a dataset
Develop proficiency in using visualizations to gain insights from datasets, enhancing your ability to create impactful visualizations.
Show steps
  • Follow the step-by-step tutorial on using a specific visualization tool to explore a dataset.
  • Apply the techniques learned in the tutorial to your own datasets.
Explore data visualization best practices
Supplement the course content by exploring best practices in data visualization to enhance your learning
Show steps
  • Research and read articles and blog posts on effective data visualization techniques
  • Follow online tutorials or workshops on data visualization best practices
  • Identify common pitfalls in data visualization and learn how to avoid them
Read 'Data Visualization: A Practical Introduction' by Andy Kirk
Supplement your learning with a comprehensive guide that covers key concepts and techniques in data visualization
Show steps
  • Read the book's chapters on data types, visual encodings, and design principles
  • Review the case studies and examples to understand real-world applications of data visualization
  • Apply the concepts and techniques in your own data visualization projects
Create a visualization to explain a point
Hone your skills in creating visualizations that effectively communicate insights and tell compelling stories.
Browse courses on Data Storytelling
Show steps
  • Choose a topic and gather relevant data.
  • Select and customize an appropriate visualization type.
  • Design the visualization for clarity and impact.
Analyze and interpret data visualizations
Gain hands-on experience in analyzing and interpreting data visualizations to improve your understanding
Show steps
  • Collect a dataset and create visualizations using different types of charts and graphs
  • Analyze the visualizations and identify patterns, trends, and insights
  • Write a report or presentation explaining the findings and insights derived from the visualizations
Lead a peer review session on data visualization
Enhance your understanding by providing and receiving feedback on data visualizations, fostering a collaborative learning environment.
Browse courses on Peer Feedback
Show steps
  • Gather a group of peers and select visualizations for review.
  • Facilitate a discussion, providing constructive feedback and suggestions.
  • Reflect on the feedback received and make improvements to your own visualizations.
Create your own data visualizations
Apply your learning by creating your own data visualizations to demonstrate your understanding
Show steps
  • Choose a dataset and identify the key insights you want to convey
  • Select appropriate visualization types based on the data and insights
  • Design and create the visualizations using a visualization tool
  • Share your visualizations with others and gather feedback
Contribute to open-source data visualization projects
Enhance your practical skills and gain real-world experience by contributing to open-source data visualization projects
Show steps
  • Identify open-source data visualization projects that align with your skills and interests
  • Review the project documentation and identify areas where you can contribute
  • Submit pull requests or create issues to share your contributions
  • Collaborate with other contributors and learn from their expertise
Develop a data visualization dashboard
Challenge yourself by developing a comprehensive data visualization dashboard to showcase your skills
Show steps
  • Determine the purpose and goals of the dashboard
  • Collect and prepare the required data
  • Design the dashboard layout and select appropriate visualizations
  • Implement the dashboard using a suitable tool or framework
  • Test and refine the dashboard based on user feedback

Career center

Learners who complete Analyzing Data Visualization Requirements will develop knowledge and skills that may be useful to these careers:
Data Analyst
Data Analysts are professionals who are responsible for **analyzing data**, identifying trends, and providing insights that can help businesses make informed decisions. This course, Analyzing Data Visualization Requirements, can help Data Analysts build the skills they need to create impactful data visualizations that communicate their findings effectively.
Data Scientist
Data Scientists are responsible for **analyzing data** and developing models that can help businesses make informed decisions. This course can help Data Scientists build the skills they need to create data visualizations that can communicate their findings clearly and effectively.
Statistician
Statisticians are responsible for **analyzing data** and providing insights that can help businesses make informed decisions. This course can help Statisticians develop the skills they need to create data visualizations that can communicate their findings clearly and effectively.
Business Intelligence Analyst
Business Intelligence Analysts are responsible for **analyzing data** and providing insights that can help businesses improve their performance. This course can help Business Intelligence Analysts develop the skills they need to create data visualizations that can communicate their findings clearly and effectively.
Market Research Analyst
Market Research Analysts are responsible for **analyzing data** and providing insights that can help businesses make informed decisions about their products and marketing strategies. This course can help Market Research Analysts develop the skills they need to create data visualizations that can communicate their findings effectively.
Quantitative Analyst
Quantitative Analysts are responsible for **analyzing data** and developing models that can help businesses make informed investment decisions. This course can help Quantitative Analysts develop the skills they need to create data visualizations that can effectively communicate their findings to stakeholders.
Information Architect
Information Architects are responsible for designing and organizing websites and other digital products. This course can help Information Architects develop the skills they need to create data visualizations that can effectively communicate information to users.
Sales Manager
Sales Managers are responsible for leading and motivating sales teams. This course can help Sales Managers develop the skills they need to create data visualizations that can effectively communicate the performance of their teams to stakeholders.
Operations Research Analyst
Operations Research Analysts are responsible for **analyzing data** and developing models that can help businesses improve their operations. This course can help Operations Research Analysts develop the skills they need to create data visualizations that can effectively communicate their findings to stakeholders.
Financial Analyst
Financial Analysts are responsible for **analyzing data** and providing insights that can help businesses make informed financial decisions. This course can help Financial Analysts develop the skills they need to create data visualizations that can effectively communicate their findings to stakeholders.
Product Manager
Product Managers are responsible for overseeing the development and launch of new products. This course can help Product Managers develop the skills they need to create data visualizations that can effectively communicate the value of their products to customers and stakeholders.
User Experience Designer
User Experience Designers are responsible for designing and testing websites and other digital products to ensure that they are easy to use and enjoyable. This course can help User Experience Designers develop the skills they need to create data visualizations that are visually appealing and easy to understand.
Marketing Manager
Marketing Managers are responsible for developing and executing marketing campaigns. This course can help Marketing Managers develop the skills they need to create data visualizations that can effectively communicate the results of their campaigns to stakeholders.
Data Engineer
Data Engineers are responsible for designing and building the infrastructure that stores and processes data. This course can help Data Engineers develop the skills they need to create data visualizations that can effectively communicate the performance of their systems to stakeholders.
Software Engineer
Software Engineers are responsible for designing, developing, and testing software. This course may be helpful for Software Engineers who are interested in developing data visualization applications.

Reading list

We've selected 14 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 Analyzing Data Visualization Requirements.
Classic in the field of data visualization. It must-read for anyone who wants to learn more about the principles of effective data visualization.
By Stephen Few classic in the field of data visualization and provides a strong foundation for understanding the principles discussed in the course.
Provides a comprehensive overview of the field of data visualization. It covers the history of data visualization, the different types of data visualizations, and the principles of effective data visualization.
Beautiful and inspiring exploration of the art of data visualization. It is packed with stunning data visualizations, and provides a unique perspective on the field.
By Alberto Cairo will expand on the course's information about presenting data in an impactful way.
By Andy Kirk is more theoretically inclined than some of the other books on this list, but provides good background and context for the theory and practice of data visualization.
Practical guide to creating compelling data visualizations. It is written in a clear and concise style, and is packed with helpful tips and advice.
Collection of essays on data visualization. It is written in a clear and engaging style, and is packed with insights and advice.
Practical guide to creating data visualizations that are both effective and visually appealing. It is written in a clear and concise style, and is packed with helpful tips and advice.
By Cole Nussbaumer Knaflic goes into more depth on the narrative side of data visualization that is touched on in the course.
Practical guide to creating data visualizations in Tableau. It is written in a clear and concise style, and is packed with helpful tips and advice.
Practical guide to creating data visualizations in Microsoft Excel. It is written in a clear and concise style, and is packed with helpful tips and advice.
Practical guide to creating data visualizations in R. It is written in a clear and concise style, and is packed with helpful tips and advice.

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