Director - Quantitative Research - Tracking Focus

MrWeb Ltd.
City of London
1 month ago
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Director - Quantitative Research - Tracking Focus Central London / hybrid GBP 70-95,000 + Benefits - (posted Oct 20 2025)

Job Spec: Great organic growth, prestigious award winners, lovely offices in the West End, international expansion - there is plenty of excitement emanating from this highly reputed independent strategic insight consultancy. As a result, the quant team is expanding and they seek an Director with experience of working on tracking projects and leading teams.


You will play a pivotal leadership role across some major trackers whilst also working on ad hoc projects, UK and international, across a wide variety of clients - such diversity ensures no day here is ever mundane.


This senior quant role will offer you a huge amount of scope to make your mark with existing and new clients. You'll be working with an incredibly strong team, taking your thinking to the very highest ranks of well-known brands across a range of sectors ensuring your recommendations will be listened to and implemented.


In return for bringing your energy and enthusiasm you will enjoy the clear career path offered to seniors within the business - they genuinely understand that you do not wish to stand still and will work with you to help you achieve your future goals.


There is a solid commitment to providing a positive working environment, ensuring this company is a forward looking and exciting place to be.


Who to contact: Email your CV (in confidence) to , quoting the reference above, or contact Andrew Goobey, Andrew Mercer, Caroline Rock or Rebecca Meaton on


IMPORTANT - PLEASE INCLUDE YOUR NAME AND EITHER YOUR RETURN E-MAIL ADDRESS OR TELEPHONE NUMBER IN THE MESSAGE. Please say that you found the vacancy on MrWeb! Thanks for your interest.


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