Project Lead - Data Science & MMM

MBN Solutions
Glasgow
4 months ago
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Project Lead – Data Science & Modelling

London, United Kingdom | Hybrid


£60,000-£69,000


Join a leading global media & analytics company at the cutting edge of marketing science. We’re looking for a Project Lead (Modelling) to help global brands unlock growth through advanced analytics and marketing mix modelling.


Why this role?


Be at the forefront of innovation – Shape how media and marketing decisions are driven by data and cutting-edge econometrics.




Grow with a supportive team – Work with 60+ data experts who collaborate, share knowledge, and back each other every step of the way.




Learn and lead every day – No two projects are the same, giving you constant opportunities to expand your skills.


What you’ll do


Lead end-to-end marketing mix modelling projects – from scoping requirements to delivering statistically robust, actionable insights.




Mentor and guide junior team members while ensuring modelling best practice.




Translate complex modelling outputs into clear, business-ready recommendations for senior stakeholders.




Build trusted client relationships and identify opportunities for growth.


What we’re looking for


Proven expertise in Marketing Mix Modelling and time-series econometrics.




Strong background in a quantitative field (e.g. Maths, Statistics, Economics, Engineering).




Experience leading teams and delivering impactful data science projects in marketing or media.




Excellent communication skills to turn technical analysis into clear business action.




Hands-on skills with R, Python, Excel, and PowerPoint (or similar).


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