Chief Data Scientist

First Achieve
London
1 week ago
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Chief Data Scientist £120k - £150k – London


Would you like to join an organisation where data is at the core of the business?


Do you want to join a company where you will be backed by the founder to innovate?


This company uses models that predict consumer behaviour for B2B consumption.


Their success is built on data that isn’t available anywhere else. They use their own sources of data to produce highly accurate predictions that nobody else in their sector can achieve.


They want you to bring new ideas and use your experience to make their product even better.


You will work closely with the senior management team to deliver the overall strategy and roadmap of the company, with the goal of adding value to the data.


You will lead a team of data scientists and work with them to manage the full data science lifecycle.


If this sounds like the start of something you would like to be part of, please apply.

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