Senior Product Manager - AI, ML & Data Science

Data Careers
London
6 days ago
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Senior Product Manager - AI, ML & Data ScienceRemote (UK-based) | Competitive Salary (up to £70k) & BenefitsAre you passionate about harnessing data, analytics, and AI to drive innovation? Do you thrive in a product leadership role within a fast-paced, technology-driven environment? If so, we have an exciting opportunity for you!About the RoleOur client, a global leader in education technology, is seeking a Senior Product Manager to shape the future of their data-driven AI and Machine Learning products. This role is central to their mission of transforming digital assessment solutions, ensuring authenticity, inclusivity, and academic integrity for learners worldwide.You'll be responsible for:Driving product strategy - defining and executing the roadmap for data analytics, reporting, and integrations.Leveraging AI & data science - using advanced analytics and machine learning to enhance user experiences and decision-making.Leading cross-functional collaboration - working closely with engineering, data science, marketing, and sales teams to bring innovative solutions to life.Engaging with customers - gathering insights and feedback to ensure the product remains cutting-edge and competitive.Optimizing product performance - defining key success metrics and continuously improving the platform based on user data.What We're Looking ForProven experience as a Product Manager in a SaaS, software, or ideally EdTech environment.Strong analytical mindset - a background in data science, AI, or machine learning is essential. Degree educated in a STEM discipline such as Mathematics, Statistics, Computer science etc.Excellent problem-solving skills - with a strategic approach to product development.Outstanding communication and leadership - the ability to influence stakeholders and drive innovation.A passion for education technology - and a desire to shape the future of digital assessments.Why Join?Work with cutting-edge technology in an industry-leading company.Fully remote role - flexibility to work from anywhere in the UK.Opportunity to make a real impact on the future of learning and assessment.If you're ready to take on this exciting challenge, apply today and be part of a team that's redefining digital assessment!TPBN1_UKTJ

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