National AI Awards 2025Discover AI's trailblazers! Join us to celebrate innovation and nominate industry leaders.

Nominate & Attend

AI Governance Lead

Sky
Shadwell
8 months ago
Applications closed

Related Jobs

View all jobs

Associate Director of AI

Data Science Manager

Senior Data Specialist

AI Engineering Researcher

Data Engineering Lead

AI Implementation Manager

We believe in better. And we make it happen. Better content. Better products. And better careers. Working in Tech, Product or Data at Sky is about building the next and the new. From broadband to broadcast, streaming to mobile, SkyQ to Sky Glass, we never stand still. We optimise and innovate. We turn big ideas into the products, content and services millions of people love. And we do it all right here at Sky. What you'll do Champion of Responsible AI & Data Ethics : Lead initiatives to establish and promote a culture of ethical & responsible AI use across the organisation . Develop strategies to embed ethical considerations in AI applications from design to deployment . Design and Governance of AI Ethics Framework: Create and implement a robust framework that guides AI systems' ethical development, deployment, and continuous monitoring . Ensure AI practices comply with international standards and reflect the organisation's commitment to ethical operations. AI Model Ethics Review and Audit: Establish protocols for regular ethics reviews and audits of AI models to ensure compliance with ethical standards throughout their lifecycle. Legal Liaison and Compliance Assurance: Direct collaboration with legal departments to align with the letter and spirit of the law surrounding data use, storage, and movement. This includes designing and implementing solutions that ensure compliance visibility. Training and Capacity Building: Develop and deliver training programs focused on Responsible AI principles to raise awareness and embed these practices across the organisation . Facilitate workshops and seminars to ensure ongoing learning and engagement with AI ethics. Stakeholder Engagement and Policy Advocacy: Actively engage with industry groups, regulatory bodies, and technology partners to advocate for ethical AI practices. Represent the organisation in external forums to share insights and learn from global best practices. Responsible AI Impact Assessments: Implement impact assessments for all AI projects to evaluate their ethical, social, and legal implications. Integrate these assessments into the project development process to ensure responsible implementation. Innovation in Ethical AI Practices: Sponsor research and innovation projects focused on enhancing ethical AI practices. Collaborate with academic institutions and research centres to explore new methodologies for fairness, accountability, and transparency in AI. What you'll bring 7 years of experience in Responsible AI, Data Ethics, strategy development, and execution with an u nderstanding of ethical considerations in AI and data practices. Expertise in AI Ethics and Governance: Demonstrable knowledge of the ethical issues associated with AI, such as bias, fairness, and transparency, with experience in developing or managing AI systems. Strategic Leadership and Policy Development: Proven ability to lead organizational strategy around Responsible AI, influence internal policies, and contribute to industry-wide standards. Advanced Technical Skills: Strong technical background to understand and critique complex AI and machine learning technologies, ensuring they align with ethical guidelines. Effective Communication and Advocacy: Excellent communication skills can articulate complex AI and ethical concepts to diverse audiences, from technical teams to executive boards. Collaborative and Influential Leadership: Skilled in working within matrix organisations and leading cross-functional teams. Ability to influence culture and implement change across traditional and non-traditional reporting lines. Project Management and Implementation: Strong project management skills, with experience leading large-scale projects that combine practical and cultural elements to embed Responsible AI practices in business operations. Relationship Management: Exceptional ability to manage relationships across all levels of the organisation and with external stakeholders, ensuring effective collaboration and discretion on sensitive matters. Group Data Hub Want to unlock the power of data? Our Group Data Hub works with millions of data transformations every day to deliver value, improve customer experience and enable new product launches. From architecture to analytics and engineering to science: it's how we bring customers more of what they love. The rewards There's one thing people can't stop talking about when it comes to LifeAtSky : the perks . Here's a taster: Sky Q, for the TV you love all in one place

National AI Awards 2025

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

By subscribing, you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Part-Time Study Routes That Lead to Machine Learning Jobs: Evening Courses, Bootcamps & Online Masters

Machine learning—a subset of artificial intelligence—enables computers to learn from data and improve over time without explicit programming. From predictive maintenance in manufacturing to recommendation engines in e-commerce and diagnostic tools in healthcare, machine learning (ML) underpins many of today’s most innovative applications. In the UK, demand for ML professionals—engineers, data scientists, research scientists and ML operations specialists—is growing rapidly, with roles projected to increase by over 50% in the next five years. However, many aspiring ML practitioners cannot step away from work or personal commitments for full-time study. Thankfully, a rich ecosystem of part-time learning pathways—Evening Courses, Intensive Bootcamps and Flexible Online Master’s Programmes—empowers you to learn machine learning while working. This comprehensive guide examines each route: foundational CPD units, immersive bootcamps, accredited online MSc programmes, funding options, planning strategies and a real-world case study. Whether you’re a software developer branching into ML, a statistician aiming to upskill, or a professional exploring AI-driven innovation, you’ll discover how to build in-demand ML expertise on your own schedule.

The Ultimate Assessment-Centre Survival Guide for Machine Learning Jobs in the UK

Assessment centres for machine learning positions in the UK are designed to reflect the complexity and collaboration required in real-world ML projects. From psychometric assessments and live model-building tasks to group data science challenges and behavioural interviews, recruiters evaluate your statistical understanding, coding skills, communication and teamwork. Whether you specialise in deep learning, reinforcement learning or NLP, this guide offers a step-by-step approach to excel at every stage and secure your next ML role.

Top 10 Mistakes Candidates Make When Applying for Machine-Learning Jobs—And How to Avoid Them

Landing a machine-learning job in the UK is competitive. Learn the 10 biggest mistakes applicants make—plus tested fixes, expert resources and live links that will help you secure your next ML role. Introduction From fintechs in London’s Square Mile to advanced-research hubs in Cambridge, demand for machine-learning talent is exploding. Job boards such as MachineLearningJobs.co.uk list new vacancies daily, and LinkedIn shows more than 10,000 open ML roles across the UK right now. Yet hiring managers still reject most CVs long before interview—often for avoidable errors. Below are the ten most common mistakes we see, each paired with a practical fix and a live resource link so you can dive deeper.