Commercial Analytics Manager | Health & Fitness

Formula Recruitment
Greater London
1 month ago
Applications closed

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This range is provided by Formula Recruitment. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.

Base pay range

Salary: up to £65,000 (plus 10% bonus and benefits)

Location: London | Hybrid

I am currently looking for an experienced Commercial Analytics Manager to join a rapidly scaling Health and Fitness business, that has recently undertaken some huge digital projects and is gearing up for its next wave of growth.

Reporting directly to the Senior Revenue Manager, you will play a critical role in data-driven commercial decision-making within the business. It will be your responsibility to analyse commercial performance, identify expansion opportunities, and provide data and insights that will help shape their commercial strategy.

As Commercial Analytics Manager you will need:

  1. 5+ years’ experience in an analytics role (data or commercial)
  2. A background in Economics, Maths, Statistics or Finance
  3. To be able to effectively analyse data and translate it into actionable insights
  4. Recent experience in revenue forecasting and/or revenue budgeting models
  5. Sharp attention to detail and accuracy
  6. Stella numerical and analytical skills

The Tech:

  1. Modelling skills (SQL or Python or similar)

Benefits:

  1. Complimentary gym membership
  2. 10% bonus (business & personal performance)
  3. 25 days annual leave
  4. Learning and development pathways
  5. Season ticket loans
  6. Enhanced maternity pay

This is an exciting opportunity for an experienced Commercial Analytics Manager to join a growing team and play an important role in the company’s future success.

*Unfortunately, due to the high volume of applications, not all submissions will receive feedback.

Seniority level

Associate

Employment type

Full-time

Job function

Analyst

Industries

Wellness and Fitness Services

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