At a Glance
- Tasks: Lead the governance of ML models ensuring accuracy, fairness, and compliance.
- Company: Dynamic financial services firm with a focus on innovative AI solutions.
- Benefits: Competitive salary, hybrid working, and direct exposure to regulatory committees.
- Other info: Join a senior role with board-level visibility and excellent career growth opportunities.
- Why this job: Make a real impact in AI governance and shape the future of model risk management.
- Qualifications: 7+ years in model risk management or ML engineering with strong Python skills.
The predicted salary is between 95000 - 130000 £ per year.
The ML Model Governance Lead owns the framework, processes and tooling that ensure machine learning models deployed in production are accurate, fair, compliant and monitored — a role that is rapidly becoming mandatory in regulated industries and is emerging in all large enterprises as AI model risk becomes a board-level concern.
In financial services, the SR 11-7 guidance has defined model risk management for decades. In 2026, that framework is being extended — sometimes under regulatory pressure, sometimes proactively — to cover the new generation of ML and LLM models that are increasingly making or influencing decisions that affect customers and markets.
Role & Responsibilities:
- Design and operate the model governance framework: model inventory, risk tiering, validation requirements, approval processes and ongoing monitoring standards
- Lead model validation activities for production ML models: independent validation of model methodology, data quality, performance metrics, bias assessment and documentation completeness
- Define and implement model monitoring standards: performance drift detection, data distribution shift, fairness metric tracking and automated alerting for model degradation
- Own the model risk management policy and ensure alignment with regulatory requirements: SR 11-7, EBA ML guidelines, SS1/23 (UK PRA), EU AI Act model obligations
- Build and maintain the model registry and documentation standards: model cards, model risk ratings, validation reports, approval records and change management documentation
- Work with MLOps teams to embed governance into the model deployment pipeline: automated validation checks, staging environment requirements and production deployment gates
- Manage the model governance committee: chairing review meetings, escalating high-risk models and producing governance metrics for risk committees and regulators
- Build model governance tooling: integrating MLflow, Azure ML or Databricks with governance workflows, automated testing and regulatory reporting
Required Skills & Experience:
- 7+ years of model risk management, quantitative risk or ML engineering experience
- Deep understanding of SR 11-7 or equivalent model risk management frameworks applied to ML models
- Hands-on Python skills: you can read model code, run validation analyses and build monitoring scripts — not just review documentation
- MLflow, Azure ML or Databricks experience for model lifecycle management
- Regulatory knowledge in at least one sector: financial services (preferred), healthcare, insurance or utilities
- Strong statistical knowledge: model validation methodology, bias metrics, performance measures and statistical testing
- FRM, CFA, PRM or equivalent quantitative qualification is advantageous
- FCA/PRA or ECB regulatory engagement experience is a strong advantage
What We Offer:
- Senior governance role with regulatory significance and board-level visibility
- Salary £95,000–£130,000 based on experience
- Hybrid working — London office with flexible remote
- Direct exposure to model risk committee and regulatory engagement
The ML Model Governance Lead is the professional who ensures models that make decisions about people are accurate, fair and understood. In a world where AI model failures make headlines and regulatory fines, this role matters enormously. If you have built model governance frameworks that survived regulatory scrutiny, this role is yours.
ML Model Governance Lead employer: CVFine by Instrovate Technologies
As a leading player in the financial services sector, our company offers an exceptional work environment for the ML Model Governance Lead, characterised by a strong commitment to regulatory compliance and ethical AI practices. With a competitive salary range of £95,000–£130,000, hybrid working options, and direct engagement with model risk committees, employees benefit from significant professional visibility and growth opportunities. Our culture fosters innovation and collaboration, ensuring that you are at the forefront of shaping responsible AI governance in a rapidly evolving industry.
Contact Details:
CVFine by Instrovate Technologies Recruitment Team
StudySmarter Expert Advice🤫
We think this is how you could land ML Model Governance Lead
✨Network Like a Pro
Get out there and connect with folks in the industry! Attend meetups, webinars, or even just grab a coffee with someone who’s already in the field. We all know that sometimes it’s not just what you know, but who you know that can help you land that dream job.
✨Show Off Your Skills
Don’t just talk about your experience; show it! Create a portfolio or GitHub repository showcasing your projects, especially those related to ML model governance. We want to see your hands-on Python skills and how you’ve tackled real-world problems.
✨Ace the Interview
Prepare for those tricky interview questions by practising your responses. Think about how you’d explain complex concepts like model validation or performance metrics to someone without a technical background. We want to see your ability to communicate effectively!
✨Apply Through Our Website
When you find a role that excites you, apply through our website! It’s the best way to ensure your application gets the attention it deserves. Plus, we love seeing candidates who are proactive and eager to join our team.
We think you need these skills to ace ML Model Governance Lead
Some tips for your application 🫡
Tailor Your CV:Make sure your CV speaks directly to the role of ML Model Governance Lead. Highlight your experience with model risk management and any relevant frameworks like SR 11-7. We want to see how your skills align with what we're looking for!
Craft a Compelling Cover Letter:Your cover letter is your chance to shine! Use it to explain why you're passionate about model governance and how your background makes you the perfect fit for our team. Don’t forget to mention any hands-on Python experience you have!
Showcase Relevant Projects:If you've worked on projects involving ML model validation or governance, make sure to include them in your application. We love seeing real-world examples of your work and how you've tackled challenges in the past.
Apply Through Our Website:We encourage you to apply through our website for the best chance of getting noticed. It helps us keep track of applications and ensures you’re considered for this exciting opportunity at StudySmarter!
How to prepare for a job interview at CVFine by Instrovate Technologies
✨Know Your Frameworks
Make sure you’re well-versed in model risk management frameworks like SR 11-7. Brush up on how these apply to ML models, as you'll likely be asked about your experience with regulatory compliance and how you've navigated these frameworks in past roles.
✨Showcase Your Technical Skills
Be prepared to discuss your hands-on Python skills. You might be asked to explain how you've used Python for model validation or monitoring. Bring examples of scripts or analyses you've conducted to demonstrate your technical prowess.
✨Understand the Business Impact
Articulate how effective model governance can influence business decisions and customer outcomes. Be ready to discuss specific instances where your governance work has led to improved model performance or compliance, showcasing your understanding of the financial services landscape.
✨Prepare for Scenario Questions
Expect scenario-based questions that test your problem-solving skills in model governance. Think through potential challenges you might face in this role, such as handling a model that shows performance drift, and prepare to discuss how you would address these issues effectively.