Senior Marketing Analyst
London / £75000 - £85000 annum
INFO
£75000 - £85000
LOCATION
London
Permanent
Senior Marketing Analyst
London - hybrid 3x a week
Up to £85,000 + equity
This is a high impact Senior Marketing Analyst role sitting at the centre of growth and commercial decision making within a fast paced, product led fintech. You will take ownership of marketing analytics across a complex, multi-product environment, with a particular focus on attribution, experimentation, and driving efficient growth in a key international market.
The Company
They are a highly data driven fintech operating a consumer app across lending and financial products. Known for strong analytical standards and commercial focus, they have been profitable for several years and continue to scale at pace, including significant expansion into the US. Data is deeply embedded across product and growth teams, with analytics playing a critical role in shaping strategy.
The Role
- Partner closely with growth and marketing teams to support performance analysis and commercial decision making
- Analyse marketing spend across digital channels including paid social and search, assessing efficiency and ROI
- Own attribution analysis to understand where customer applications originate, including multi touch attribution models
- Optimise end to end customer funnels, identifying drop offs and conversion opportunities
- Analyse complex customer journeys across financial products and recommend alternative pathways for rejected users
- Build models to answer commercial questions such as incrementality, uplift and new channel effectiveness
- Apply statistical techniques to support experimentation, testing and investment decisions
- Work closely with senior stakeholders including the Head of Growth and CMO to translate insight into action
- Strong commercial marketing analytics experience within consumer technology or digital products
- Advanced SQL and Python skills, with Python central to analytical work
- Proven experience with attribution modelling and complex channel analysis
- Hands on experience with experimentation, AB testing and statistical analysis
- Ability to structure ambiguous problems and deliver clear, actionable insight
- Confident communicator with experience influencing non technical stakeholders
- Salary up to £85,000
- Equity participation
- Hybrid working with three fixed days per week in the London office
- High visibility role with clear ownership and impact
- Opportunity to work on international growth within a mature, data led organisation
To apply, please send your CV to Izzi, including your contact details and salary expectations.
CONTACT
Izabella Hage
Senior Recruitment Consultant
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- Ability to break down ambiguous problems and operate with a high degree of ownership
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