Module 1: Understanding Data

Collection

Module 1: Understanding Data

Benjamin Klein

This module provides a foundational understanding of how to analyse and interpret data to make better decisions in sports science and analytics. Benjamin will emphasise the practical applications of data analysis in a sports science context.

Throughout the lessons, you will gain valuable insights into:

  • The importance of understanding data metrics and how they empower informed decision-making while avoiding common pitfalls in interpretation.
  • Differentiating between types of data (qualitative vs. quantitative) and understanding the significance of interval and ratio scales.
  • Effective methods for collecting and cleaning data, including identifying outliers, handling missing data, and ensuring dataset reliability.
  • Key statistical tools and principles such as measures of central tendency, dispersion, accuracy, validity, and reliability to assess data quality.
  • Advanced statistical concepts like Intraclass Correlation Coefficient (ICC), P-values, and confidence intervals to deepen your analytical skills.

Upon completing this course, you will have a general understanding of how to work with data, tailor analyses to key objectives, and apply these insights to drive performance and success in your practice.

Learn more

Select a membership:

No memberships found.


SFS Academy logo - white

Access our course on Agility for FREE!

Learn from a world-class coach how you can improve your athletes' agility. This course also includes a practical coaching guide to help you to design and deliver your own fun and engaging agility sessions.

Get Instant Access
Agility course devices