At a Glance
- Tasks: Lead the transformation of AI in higher education, creating impactful solutions for students and staff.
- Company: Join Global University Systems, a pioneer in modernising education through AI.
- Benefits: Competitive salary, flexible work options, and opportunities for professional growth.
- Why this job: Shape the future of AI in education and make a real difference.
- Qualifications: 6+ years in IT delivery with strong AI/ML experience and leadership skills.
- Other info: Collaborative environment with a focus on responsible AI practices.
The predicted salary is between 72000 - 108000 £ per year.
Global University Systems is building a modern AI platform to power how our universities recruit, teach, support, and serve students. The Director of AI will lead this transformation, turning promising ideas into production-grade AI solutions that create real value for students and staff. This role owns the AI roadmap end-to-end: from identifying high-impact use cases, to running rapid experiments, to scaling successful solutions across multiple Higher Education Institutions.
What you’ll do:
- Set vision and strategy
- Own and continually refine the AI initiatives portfolio and roadmap for the group.
- Run a structured intake process for new ideas, assessing value, feasibility, data readiness, ethical risk, and compliance.
- Define clear success measures for every proof of concept (PoC) and MVP, including KPIs, leading indicators, and decision gates to continue, pivot, or stop.
- Lead PoCs and MVPs
- Run time-boxed PoCs (2–8 weeks) and MVPs (8–16 weeks) using Agile methods (Scrum or Kanban) with regular demos and retrospectives.
- Build and lead cross-functional squads including Product Owner, Data Scientists, ML Engineers, Integration Engineers, Solution Architect, and domain experts from Admissions, Registry and Student Services.
- Design experiments, test hypotheses, and iterate quickly, ensuring human-in-the-loop for critical decisions such as admissions triage or student risk flagging.
- Embed Responsible AI practices from the start, including bias assessment, explainability, accessibility, documentation, and impact assessments tailored to higher education.
- Scale platforms and solutions
- Take validated MVPs into production with robust architecture, integration patterns, security controls, SLAs, and operational runbooks.
- Establish MLOps across the university environment, including model registry, CI/CD for ML, feature stores, monitoring for drift, and retraining policies.
- Build reusable AI platform capabilities (e.g., orchestration, RAG services, prompt safety, connectors) that support multiple domains such as:
- Recruitment & Admissions: enquiry triage, lead scoring, document extraction, and decision support.
- Student Records & Registry: data quality checks, anomaly detection, and predictive alerts for progression and retention.
- Timetabling & Operations: demand forecasting, optimization support, and conflict detection.
- Teaching & Learning: content summarization, tutoring assistants, accessibility tools, and feedback synthesis respecting academic integrity.
- Student Support & Wellbeing: intelligent case routing, early warning signals, and proactive nudges designed with strong ethics and safeguarding.
- Research Administration: grant discovery, compliance support, and metadata enrichment.
- Coordinate integrations with core systems including SIS (e.g., Banner, Workday Student), LMS/VLE (Moodle, Canvas), CRM (Salesforce), library systems, HR/Finance (ERP), and identity platforms (e.g., Azure AD).
- Implement a practical AI governance framework that includes a use case register, risk scoring, impact assessments, model documentation, and audit trails.
- Ensure compliance with GDPR, accessibility standards (e.g., WCAG), information security policies, and emerging AI regulations.
- Define and enforce guardrails for data and GenAI use: data access controls, PII handling, prompt/data leakage prevention, and content moderation.
- Partner with Deans, Registry, Admissions, Student Services, IT, Legal and other stakeholders to align on priorities and rollout plans.
- Communicate progress through clear dashboards and storytelling, highlighting wins and lessons learned to build momentum.
- Prepare teams and students for AI adoption with training, standard operating procedures, ethical use guidelines, and tailored communications.
- Lead RFPs and SOWs for AI vendors, data providers, and implementation partners, including evaluation of cost, performance, and scalability.
- Track and optimize cloud and AI platform spend, balancing cost with value; negotiate campus-wide licensing where beneficial.
What you bring:
- Education
- Bachelor’s or Master’s degree in Data Science, Computer Science, Business Analytics, or a related discipline.
- Knowledge and skills
- Product and outcome mindset: frames problems as hypotheses, focuses on measurable impact, and is willing to stop or pivot when evidence is weak.
- Delivery excellence: strong Agile practices, risk-based planning, and disciplined stage-gates from idea to production.
- Technical fluency: able to bridge data science, engineering, security, and business stakeholders, and make informed technical decisions.
- Responsible AI and data literacy: understands and embeds ethics, privacy, and accessibility by design.
- Change leadership: confident working across diverse academic and professional services communities to drive adoption.
- Experience with major cloud and AI stacks such as Azure OpenAI / OpenAI, Azure ML, Databricks, Kubernetes, and Docker.
- Familiarity with data platforms such as Azure Data Lake, Synapse/ADF, Delta Lake, and messaging platforms (e.g., event hubs, service bus).
- Exposure to MLOps and observability tools (e.g., MLflow/model registry, GitHub Actions, Prometheus/Grafana, Evidently AI).
- Knowledge of integrating with SIS (Banner/Workday Student), LMS (Moodle/Canvas), CRM (Salesforce), ERP (Oracle/Workday), and IdP (Azure AD).
- Comfort with collaboration and reporting tools such as Jira/Azure Boards, Confluence, and Power BI.
- Experience
- 6+ years in IT delivery, product, or program leadership roles, including at least 3 years leading AI/ML or advanced analytics initiatives end-to-end.
- Proven track record running Agile PoCs and MVPs and scaling them into production within complex organizations.
- Strong understanding of AI/ML techniques (e.g., classification, NLP, GenAI, RAG, prompt engineering), data pipelines, APIs, and microservices.
- Hands-on experience with cloud platforms (Azure preferred; AWS or GCP also valued) and MLOps tools (e.g., MLflow, Azure ML, Databricks, SageMaker or Vertex) plus observability practices.
- Familiarity with higher education processes and integrations across SIS, LMS, CRM, and ERP environments.
- Knowledge of data privacy, accessibility, security, and Responsible AI in academic or similarly regulated contexts.
- Excellent stakeholder communication skills with the ability to translate technical topics into clear outcomes for non-technical audiences.
- Experience designing or operating an AI platform or shared AI services used across multiple domains or business units.
- Hands-on work with vector databases and retrieval pipelines (e.g., Azure AI Search, Pinecone) and guardrails for GenAI.
- Background in enterprise architecture and integration patterns (event-driven, REST, GraphQL).
- Relevant certifications such as Agile/Scrum (PSM/CSM), Azure AI Engineer/DP-100, PMI-ACP/SAFe, or security/privacy certifications.
If you are excited by the opportunity to shape the future of AI in higher education and deliver impact at scale, we encourage you to apply and join us on this journey.
AI Director in Gloucester employer: Top End jobs
Contact Detail:
Top End jobs Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land AI Director in Gloucester
✨Tip Number 1
Network like a pro! Reach out to people in your field on LinkedIn or at industry events. A friendly chat can lead to opportunities that aren’t even advertised yet.
✨Tip Number 2
Show off your skills! Create a portfolio or a personal website showcasing your projects and achievements. This gives potential employers a taste of what you can bring to the table.
✨Tip Number 3
Prepare for interviews by practising common questions and scenarios related to AI and leadership. We all know that confidence is key, so rehearse until you feel ready to shine!
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, we love seeing candidates who are proactive!
We think you need these skills to ace AI Director in Gloucester
Some tips for your application 🫡
Tailor Your Application: Make sure to customise your CV and cover letter to highlight how your experience aligns with the AI Director role. We want to see how you can bring value to our mission in higher education!
Showcase Your Achievements: Don’t just list your responsibilities; share specific examples of your successes in previous roles. We love numbers, so if you can quantify your impact, even better!
Be Clear and Concise: Keep your application straightforward and to the point. We appreciate clarity, so avoid jargon and make it easy for us to see why you’re a great fit for the team.
Apply Through Our Website: We encourage you to submit your application directly through our website. It’s the best way to ensure we see your application and get you on our radar for this exciting opportunity!
How to prepare for a job interview at Top End jobs
✨Know Your AI Stuff
Make sure you brush up on the latest AI trends and technologies relevant to higher education. Be ready to discuss your experience with AI/ML techniques, cloud platforms, and MLOps tools. This will show that you're not just familiar with the concepts but can also apply them effectively.
✨Showcase Your Leadership Skills
As a Director of AI, you'll need to lead cross-functional teams. Prepare examples of how you've successfully managed teams in the past, especially in Agile environments. Highlight your ability to drive change and foster collaboration among diverse stakeholders.
✨Prepare for Ethical Discussions
Given the emphasis on Responsible AI, be ready to discuss how you would implement ethical practices in AI projects. Think about how you would address bias, privacy, and compliance issues, and be prepared to share your thoughts on creating a governance framework.
✨Have a Vision Ready
Articulate your vision for AI in higher education. Think about high-impact use cases and how you would prioritise them. Be prepared to discuss how you would measure success and iterate on projects based on feedback and data.