Experimentation Data Scientist
London / £75000 - £85000
£75000 - £85000
Experimentation Data Scientist
Fully Remote - UK
£75,000 - £85,000
This is an exciting new opportunity for a Data Scientist to join a growing tech start-up!
This tech-focused start-up have just received further financial backing and they are continuing to grow their data presence. Data Science is at the core of what the company do and they've recently set up a new Experimentation team - they are looking for this person to join and help grow the function. If you're an experienced Data Scientist with expertise in Experimentation & statistics this could be a great opportunity for career growth.
As the Data Scientist for the business you will:
- You will be implementing a new platform to facilitate experimentation
- You will focus on AB testing and experimentation using Python and SQL
- You will identify opportunities to utilise data science to make improvements to the business
- You will be liaising with the wider Product team working alongside the designer, and engineers for a specific product to help improve the product and suggest new products
- You will be responsible for experiment design and post-experiment analysis
SKILLS AND EXPERIENCE
- Masters/PhD in a numerical field is essential
- An excellent understanding and proven commercial experience of AB testing & experimentation
- Experience working in a start-up environment is beneficial
- Tech: Python
SALARY AND BENEFITS
- Basic salary £75,000 - £85,000
- Flexible working - remote first
HOW TO APPLY
Please register your interest for this role by sending your CV to Rosie O'Callaghan via the apply link on this page
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