At a Glance
- Tasks: Lead the transition of ML models into production and ensure their reliability and scalability.
- Company: Join a forward-thinking tech company focused on AI innovation.
- Benefits: Hybrid work model, competitive salary, and opportunities for professional growth.
- Other info: Dynamic team environment with excellent career advancement potential.
- Why this job: Make a real impact in AI by building robust machine learning systems.
- Qualifications: Strong software engineering skills and experience with ML systems.
The predicted salary is between 70000 - 90000 £ per year.
We are looking for a Senior ML Engineer to take technical ownership of our machine learning production environment. You will lead the transition of experimental models into production-grade services that are reliable, scalable, and cost-effective. Your mission is to build the “highway” that allows our data science team to deploy models rapidly while ensuring those models are observable and fiscally responsible. You will own the entire ML lifecycle—from automated training pipelines to real-time inference clusters—and serve as a key software engineering contributor to our AI product stack. This is a hybrid role – three days per week in our Newcastle office.
Key Responsibilities
- Lifecycle & Pipeline Architecture: Design and own the automated “Continuous Training” (CT) and deployment pipelines. Architect reusable, modular infrastructure for model training and serving, ensuring the entire lifecycle is versioned and reproducible.
- Software Engineering Best Practices: Lead the team in adopting professional engineering standards. Own the strategy for unit/integration testing, peer code reviews, and apply SOLID principles to ML codebases to ensure they remain modular and maintainable.
- ML Observability: Establish and own the telemetry framework for the AI stack. Implement proactive monitoring for system health and model-specific metrics, such as data drift, concept drift, and prediction accuracy.
- FinOps & Cost Management: Own the strategy for AI cloud spend. Build monitoring and alerting frameworks to track compute costs (training and inference) and implement optimization strategies like auto‑scaling and spot‑instance usage.
- AI Systems Engineering: Act as a lead software engineer to integrate models into the product ecosystem. Develop high‑performance, secure APIs and microservices that wrap our ML capabilities for production consumption.
- Data & Model Governance: Own the versioning strategy for the “Holy Trinity” of ML: code, data, and model artifacts. Ensure clear documentation and audit trails for all production deployments.
Essential Skills (Entry Requirements)
- Demonstrating strong software engineering fundamentals, including production‑quality Python, testing, CI/CD practices, and version control.
- Designing and operating reliable, versioned REST APIs using an API‑first approach.
- Building, deploying, and operating backend services in cloud environments, with AWS as the primary platform (experience on other major clouds considered transferable).
- Using containerisation and modern deployment approaches, including Docker, automated pipelines, and basic observability.
- Working effectively with real‑world data and production systems in collaboration with product, data, and platform teams.
- Bringing either hands‑on experience delivering machine-learning systems in production or a very strong software‑engineering background with clear motivation to grow into ML and MLOps.
Additional Experience & Capabilities
- Using AWS SageMaker for training, deploying, and operating machine-learning workloads, or demonstrating equivalent experience on similar cloud ML platforms.
- Exposing machine-learning models via APIs (e.g. FastAPI‑based inference services) and operating them reliably at scale.
- Applying MLOps practices, including model and version management, monitoring, and handling model or data drift.
- Implementing advanced service patterns such as asynchronous processing, event‑driven architectures, or multi-version services.
- Serving LLM or GenAI-based capabilities in production, including model serving, RAG pipelines, and inference controls.
- Designing reusable, platform-level services and shared ML patterns rather than one‑off implementations.
- Managing cloud operational trade-offs, including cost efficiency, latency, scalability, and reliability.
Senior Machine Learning Engineer in Newcastle upon Tyne employer: CyberNorth
Join a forward-thinking company that values innovation and collaboration, where as a Senior Machine Learning Engineer, you will play a pivotal role in shaping our AI product stack. Our Newcastle office fosters a dynamic work culture that encourages professional growth through hands-on experience and mentorship, while offering a hybrid work model that promotes work-life balance. With a focus on cutting-edge technology and a commitment to fiscal responsibility, we provide an environment where your contributions directly impact the success of our machine learning initiatives.
StudySmarter Expert Advice🤫
We think this is how you could land Senior Machine Learning Engineer in Newcastle upon Tyne
✨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 can’t stress enough how valuable personal connections can be when it comes to landing that dream job.
✨Show Off Your Skills
Don’t just tell them what you can do—show them! Create a portfolio of your projects, especially those related to machine learning and software engineering. We recommend sharing your work on platforms like GitHub to give potential employers a taste of your coding chops.
✨Ace the Interview
Prepare for technical interviews by brushing up on your ML concepts and coding skills. Practice common interview questions and maybe even do some mock interviews with friends. We believe that confidence is key, so the more prepared you are, the better you’ll perform!
✨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 seen by the right people. Plus, we love seeing passionate candidates who are eager to join our team!
We think you need these skills to ace Senior Machine Learning Engineer in Newcastle upon Tyne
Some tips for your application 🫡
Tailor Your CV:Make sure your CV reflects the skills and experiences that match the Senior ML Engineer role. Highlight your software engineering fundamentals, cloud experience, and any hands-on ML projects you've worked on. We want to see how you can contribute to our team!
Craft a Compelling Cover Letter:Your cover letter is your chance to shine! Use it to explain why you're passionate about machine learning and how your background aligns with our mission at StudySmarter. Be genuine and let your personality come through – we love seeing the real you!
Showcase Your Projects:If you've got any relevant projects or contributions to open-source ML initiatives, make sure to mention them! We’re keen on seeing practical examples of your work, especially those that demonstrate your ability to build scalable and reliable systems.
Apply Through Our Website:We encourage you to apply directly through our website for the best chance of getting noticed. It’s super easy, and you’ll be able to keep track of your application status. Plus, we love seeing candidates who take the initiative to connect with us directly!
How to prepare for a job interview at CyberNorth
✨Know Your ML Lifecycle
Make sure you understand the entire machine learning lifecycle, from data collection to model deployment. Be ready to discuss how you would design and own automated training pipelines and ensure they are versioned and reproducible.
✨Showcase Your Software Engineering Skills
Highlight your strong software engineering fundamentals, especially in Python and CI/CD practices. Prepare examples of how you've applied SOLID principles in your previous projects to keep your code modular and maintainable.
✨Demonstrate Your Cost Management Strategies
Be prepared to talk about your experience with cloud cost management, particularly in AWS. Discuss any strategies you've implemented for monitoring compute costs and optimising resource usage, like auto-scaling or using spot instances.
✨Discuss ML Observability
Understand the importance of ML observability and be ready to explain how you would establish a telemetry framework for monitoring system health and model performance metrics. Share any past experiences where you successfully implemented monitoring solutions.