Lead Data Scientist - Ai Fintech - Hybrid In London - Hands On - Up To £100k + Equity

Opus Recruitment Solutions
1 year ago
Applications closed

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I am exclusively supporting an AI Fintech who are looking for a HANDS ON Lead Data Scientist to join their team!They are an ambitious, forward thinking and innovative start-up who have built an AI driven mortgage advisory tool for their customers.They are looking for someone who is passionate about technology and widely experienced in the world of Data Science! You'd lead a team of Data Scientists and work closely alongside the Lead Frontend Engineer & Lead Backend Engineer.The key requirements are:PythonSQLAzure OR AWSData VisualisationNLPThey have an office in Central London and come into the office a few times a weekThe salary on offer is up to £100k + equity in the company

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