Data Visualization Principles

By the end of this course, you'll have a portfolio of visualizations and a solid understanding of how to make data-driven decisions and communicate them effectively.
Duration: 1 Day
Hours: 2 Hours
Training Level: All Levels
Virtual Class Id: 52808
Recorded
Single Attendee
$199.00 $332.00
6 month Access for Recorded
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About the Course:

This course offers a deep dive into the principles of data visualization, exploring key concepts such as visual perception, the psychology of color, chart selection, and storytelling with data.

Participants will engage in hands-on exercises to apply these principles, using popular visualization tools to create impactful and insightful data representations. By the end of this course, you'll have a portfolio of visualizations and a solid understanding of how to make data-driven decisions and communicate them effectively.

Course Objective:

  • Understanding the principles of data visualization is crucial for anyone looking to communicate data-driven insights clearly and compellingly. This course will guide you through the process of choosing the right visualization techniques for various types of data, ensuring your visualizations are not only aesthetically appealing but also accurate and informative. Through interactive sessions, you'll learn to avoid common pitfalls and embrace best practices that enhance data comprehension for your audience.

Who is the Target Audience?

  • Data Analysts
  • Business Intelligence Professionals
  • Marketing Analysts
  • Academic Researchers
  • Anyone interested in data science or analytics

Basic Knowledge:

  • No prior knowledge is required

Curriculum
Total Duration: 2 Hours
Fundamentals of visual perception and the science behind data visualization
The psychology of color in data representation
Choosing the right chart types for your data
Techniques for enhancing clarity and impact in visual storytelling
Best practices for designing interactive visualizations
Case studies of effective and ineffective data visualizations