Senior Data Scientist

Higher - AI recruitment
London
2 months ago
Applications closed

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Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Job Description

We are working with Fyxer AI, the UK's fastest-growing tech company in the UK, to hire a Senior Data Scientist.


Fyxer are building the Cursor for email. Since launching in May 2024, they have gone from $0 to $20m in ARR and raised a $30m Series B from top investors. Hiring small numbers of exceptional people, Fyxer’s next vital hire is a Senior Data Scientist who will take on ownership of key predictive modelling.


Job Description

As Fyxer’s Senior Data Scientist, you will not only own the company’s data science and analytics capabilities - you’ll set the roadmap for high-impact business areas like marketing and retention, implement scalable solutions, and ensure stakeholders use data to make confident commercial decisions.


You’ll join a team of 2 Analytics Engineers and a Data Engineer, and will collaborate with the wider engineering team composed of Growth Engineering, Product Engineering, and Product Reliability Engineering.


One example of an immediate priority for the Senior Data Scientist is developing a Churn Prediction Model. There is a huge base of self-serve users generating rich product usage data, and the goal is to identify key churn signals and build a predictive model to surface actionable insights for Sales and Customer Success teams, through a production-ready model or AP...

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