Chief Data Scientist

Develop
London
9 months ago
Applications closed

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Chief Data Scientist | London (Hybrid) | £120,000-£150,000 DOE Bonus & Benefits My client, a cutting-edge UK data science firm, is on the hunt for a visionary Chief Data Scientist to take the reins of their data strategy. Working with one of the richest household-level datasets in the UK, this is a rare opportunity to architect enterprise AI solutions, influence C-level strategy, and leave a legacy of data-driven transformation. Responsibilities: Own and evolve the end-to-end data science vision and innovation roadmap. Build and lead a multidisciplinary team of world-class data scientists and engineers. Spearhead AI/ML product development that solves real-world, high-value problems. Act as a thought leader - evangelise data science both internally and with key clients. Define and embed a data-first culture across the organisation. Collaborate closely with C-suite executives to shape business-wide priorities. Ensure data science delivers commercially viable and scalable outcomes. Key Requirements: Proven success in senior data leadership roles, ideally in fast-paced or high-growth environments. Deep hands-on knowledge of AI, ML, cloud data architecture, and production model delivery. Strong commercial acumen - you understand how to tie data science to business growth. Skilled at influencing board-level stakeholders and translating complex concepts clearly. Track record of building, inspiring, and retaining high-performing data teams. Fierce advocate for ethical AI, data governance, and responsible innovation. Experience working across product, engineering, and strategy functions. Sound like you? Apply now ADZN1_UKTJ

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