At a Glance
- Tasks: Lead and scale our Machine Learning Engineering capability while mentoring a talented team.
- Company: Join Hiscox, a forward-thinking company shaping the future of machine learning.
- Benefits: Competitive salary, career growth, and a collaborative work environment.
- Other info: Opportunity to influence strategic decisions and build a high-performing team.
- Why this job: Make a real impact in ML engineering and explore emerging technologies.
- Qualifications: Experience in ML engineering and strong leadership skills required.
The predicted salary is between 80000 - 100000 ÂŁ per year.
As a Lead Machine Learning Engineer (MLE) at Hiscox, you will shape and scale our Machine Learning Engineering capability and ensure the successful deployment and operation of ML in production. You will lead the MLE sub‑chapter, line manage Machine Learning Engineers, and partner closely with the Head of Data Science, the Data Science sub‑chapters and Platform/Group teams to enable scalable, reusable, and well‑governed ML solutions.
Job Type: Permanent
Key Responsibilities
- People Leadership
- Manage and grow talent: Set objectives, conduct performance reviews, and guide career progression for the MLE sub‑chapter.
- Foster a strong engineering culture: Promote collaboration, psychological safety, and high standards of quality and reliability.
- Provide coaching and mentorship: Support technical and professional development of Machine Learning Engineers.
- Strategic Capability Development
- Define and evolve chapter strategy: Align sub‑chapter goals with chapter and organisational objectives.
- Shape technical direction: Establish standards for ML engineering, deployment patterns, and MLOps.
- Drive upskilling and cross‑skilling: Build capability in production ML, platform usage, and software engineering best practices.
- Technical Enablement & Platform Ownership
- Own and evolve the MLOps platform: Ensure it is reliable, secure, and scalable, in partnership with Group and Platform teams.
- Enable scalable and reusable ML delivery: Ensure ML solutions for the business unit are deployable across value streams and efficient to operate.
- Lead technical spikes and proof‑of‑concepts: De‑risk architectural decisions and explore new tools and approaches.
- Governance & Standards
- Ensure compliance, security, architecture, and operational standards.
- Define guardrails for production ML systems: Covering deployment, monitoring, retraining, and decommissioning in collaboration with Data Science.
- Collaboration & Influence
- Partner closely with the Data Science sub‑chapters and delivery team to ensure effective handover from experimentation to production.
- Represent Machine Learning Engineering in strategic forums: Advocate for platforms, tooling, and scalable ML practices.
What You’ll Bring
- Bachelor’s/Master’s in Computer Science, Engineering, or a related quantitative field (or equivalent experience).
- Experience as a Senior/Lead Machine Learning Engineer delivering production ML systems at scale.
- Solid understanding of core data science concepts, including supervised and unsupervised learning, feature engineering, and model evaluation.
- Working knowledge of statistical concepts and model evaluation techniques sufficient to review, validate, and productionise data science work.
- Proven line management and/or technical mentorship of engineers; building capability and setting standards.
- Demonstrated ownership of MLOps platforms or critical ML services, including CI/CD, model serving, monitoring, and incident management.
- Proven ability to design, implement, and operate technical frameworks for evaluating the commercial impact of machine learning systems in production.
- Effective collaboration with Data Scientists across the end‑to‑end ML lifecycle.
- Experience working in Agile, cross‑functional squads.
- Insurance or financial services experience is a plus but not essential.
Technical Skills
- Strong Python in a machine learning engineering context, with solid software engineering fundamentals (OOP, testing, design patterns).
- Production ML systems: Experience deploying, monitoring, and maintaining ML models in live environments.
- Cloud & infrastructure: Hands‑on experience with a major cloud platform (GCP, AWS, or Azure), including containerised deployments.
- MLOps & CI/CD: Experience with CI/CD pipelines, Git‑based workflows, and Infrastructure as Code (e.g. Terraform).
- Operational excellence: Understanding of API operations, monitoring, logging, and reliability considerations for ML services.
- Data & integration: Working knowledge of SQL and integrating ML services into wider data and application ecosystems.
Why Join Us
This is an opportunity to shape the future of machine learning engineering at Hiscox, build a high‑performing sub‑chapter, and influence strategic decisions, while staying close to the craft you love. You’ll have the autonomy to set standards, mentor talent, and explore emerging technologies, all within a collaborative and forward‑thinking environment.
Lead ML Engineer employer: Hiscox
Contact Detail:
Hiscox Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Lead ML Engineer
✨Tip Number 1
Network like a pro! Reach out to folks in the industry, attend meetups, and connect with people on LinkedIn. You never know who might have the inside scoop on job openings or can refer you directly.
✨Tip Number 2
Show off your skills! Create a portfolio showcasing your ML projects, especially those that highlight your experience with production systems. This will give potential employers a taste of what you can bring to the table.
✨Tip Number 3
Prepare for interviews by brushing up on both technical and soft skills. Practice explaining complex concepts clearly and be ready to discuss your leadership style and how you foster collaboration within teams.
✨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, it shows you’re genuinely interested in joining our team at Hiscox.
We think you need these skills to ace Lead ML Engineer
Some tips for your application 🫡
Tailor Your CV: Make sure your CV reflects the skills and experiences that align with the Lead ML Engineer role. Highlight your leadership experience, technical skills, and any relevant projects you've worked on. We want to see how you can shape and scale our Machine Learning Engineering capability!
Craft a Compelling Cover Letter: Your cover letter is your chance to tell us why you're the perfect fit for this role. Share your passion for machine learning and how your background aligns with our goals at Hiscox. Don’t forget to mention your experience in managing teams and driving technical direction!
Showcase Your Technical Skills: In your application, be sure to highlight your technical expertise, especially in Python, MLOps, and cloud platforms. We’re looking for someone who can own and evolve our MLOps platform, so any specific examples of your work in this area will definitely catch our eye!
Apply Through Our Website: We encourage you to apply directly through our website. It’s the best way for us to receive your application and ensures you don’t miss out on any important updates. Plus, it shows us you’re keen to join our team at StudySmarter!
How to prepare for a job interview at Hiscox
✨Know Your Stuff
Make sure you brush up on your machine learning concepts, especially around supervised and unsupervised learning, feature engineering, and model evaluation. Be ready to discuss your experience with deploying and maintaining ML models in production, as this will be crucial for the role.
✨Show Your Leadership Skills
Since this role involves managing a team, be prepared to share examples of how you've successfully led and mentored others in the past. Highlight your experience in setting objectives and conducting performance reviews, as well as how you've fostered a strong engineering culture.
✨Demonstrate Technical Proficiency
Familiarise yourself with the MLOps platforms and CI/CD pipelines relevant to the role. Be ready to discuss your hands-on experience with cloud platforms like GCP, AWS, or Azure, and how you've integrated ML services into wider data ecosystems.
✨Collaborate and Communicate
This position requires close collaboration with Data Science teams, so be prepared to talk about your experience working in Agile, cross-functional squads. Share examples of how you've effectively communicated technical concepts to non-technical stakeholders and ensured smooth handovers from experimentation to production.