Elite Football Data Analyst – Academy Analytics

Complementary Training
Nottingham
3 days ago
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Be part of our journey...Location: Staplewood Training Ground, Southampton
Criminal Record Check: Enhanced with Child’s Barred List
Hours: Full Time
Contract Type: Work Placement (1 year)


What is the role?
Southampton Football Club is offering …


Lead Recruitment Analyst

Newcastle United Women
Permanent
Newcastle Upon Tyne
Competitive Salary
Closing date:-14/03/2026
We are the heartbeat of the city. Come and be a part of a long and proud history where we strive to be the best …


About The Role

To develop players to an elite level, with the overall view of producing players for the first team. The coach/analyst is responsible for providing analysis to an excellent level to all academy …


In order to be considered for this role, after clicking Apply Now above and being redirected, you must fully complete the application process on the follow-up screen.
Position title : First Team Video Analyst


U.S. Soccer Overview

The U.S. Soccer Federation exists in service to soccer. Our aim is to ignite a national passion for the game. Because we believe that soccer is more than a sport; it is a force for …


Engagement

Undergraduate Work Placement
Location: The Nigel Doughty Academy, Nottingham, NG2 7SR
Working Arrangements: On site
Reporting to: Head of Academy Analysis
Placement Term: 26/27 Season


Role Overview

An exciting opportunity has arisen for x2 undergraduate students to join the Nottingham …


Commitment: 25 hours a week, August 2026 to May 2027
Location: The Nigel Doughty Academy, Nottingham, NG2 7SR
Department: First Team Coaching
Role Overview: The Club is seeking a strong, dedicated, and driven MSc student. The successful candidate will engage in …


Kickstart your career

Leicester City Football Club as Academy Performance Analyst (U21)!
Contract Type: Permanent
Hours Per Week: 37.5 Hours
Do you have the drive and passion to make a real impact at Leicester City Football Club? About The Role & …


The United Soccer League (USL)

The United Soccer League (USL) is shaping the future of soccer in America. We are the nation's largest and fastest-growing professional soccer organization, bringing the world's game to more and more communities across the United States and Canada. Based in …


Club Overview

Hartford Athletic is Connecticut's professional soccer club competing in the United Soccer League. The club is committed to delivering a high-level professional soccer experience while strengthening community connection through the game. Hartford Athletic represents the city, …


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