Principal Machine Learning Engineer in Warrington

Principal Machine Learning Engineer in Warrington

Warrington Full-Time 100000 - 170000 £ / year (est.) Home office (partial)
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At a Glance

  • Tasks: Lead the development and deployment of machine learning systems in real-world applications.
  • Company: Fast-growing AI consultancy focused on delivering intelligent systems.
  • Benefits: Competitive salary, remote-first work, and opportunities for professional growth.
  • Other info: Dynamic role with end-to-end ownership and client interaction.
  • Why this job: Make a real impact by applying your skills to solve complex problems.
  • Qualifications: 6-8+ years in data science, strong ML and statistics background.

The predicted salary is between 100000 - 170000 £ per year.

If you’re a data scientist who actually enjoys getting things into production — not just building models — this is worth a look. Immersum are working with a fast-growing AI consultancy delivering intelligent systems into complex, regulated environments. They’re hiring Principal engineers who can own problems end-to-end: from shaping the approach, through modelling, to deploying something that genuinely works in the real world. This isn’t a research role. It’s applied, hands-on, and client-facing.

You’ll be working directly with stakeholders, building and deploying ML systems using Python and modern cloud environments (AWS / Azure), and helping organisations understand whether what they’ve built is actually performing — and why. The sweet spot is someone who’s data science-led but engineering-capable. You’ll spend your time applying statistical modelling and classical machine learning techniques, designing experiments that tie back to commercial outcomes, and ensuring what gets built can actually scale in production systems.

There’s an expectation you can take something from idea → prototype → production without handing it off. You’ll also be in front of clients. Not in a salesy way — more in a “this is what the data says, here’s what’s working, here’s what isn’t” kind of way. Being able to explain performance, handle challenge, and build trust matters. There is also increasing exposure to AI and LLM-driven use cases, but this isn’t an LLM-only role — strong fundamentals in ML and statistics are far more important than prompt engineering alone.

They look for:

  • ~6-8+ years in data science / machine learning
  • Strong grounding in statistics, experimentation, and evaluation methods
  • Experience deploying ML systems into production environments
  • Solid engineering capability (typically Python-based stacks)
  • Exposure to cloud platforms (AWS or Azure)

You’ll stand out if you’ve worked in more complex or regulated environments — particularly across pharma, biopharma, medtech, or manufacturing — and understand what “production-ready” really means in those settings.

Additional things that tend to separate strong candidates:

  • Experience working with ML in regulated environments (e.g. GAMP frameworks)
  • Familiarity with regulatory standards like ISO 27001, ISO 13485, or GxP (GDP / GMP)
  • Practical experience applying LLMs across real business use cases (not just experimentation)
  • Exposure to manufacturing or biopharma data science problems

Where people tend to do well here:

  • You’re pragmatic. You care more about impact than elegance.
  • You’re comfortable owning a problem properly, not just your slice of it.
  • And you don’t mind getting pulled into conversations with stakeholders when needed.

Where it’s probably not a fit:

  • If you prefer pure research, or you’ve never taken a model into production, or you want to stay completely removed from clients — this will feel uncomfortable.

In return, you get exposure to genuinely interesting problems, end-to-end ownership, and a team that values delivery over theory.

Principal Machine Learning Engineer in Warrington employer: Immersum

Immersum is an exceptional employer for Principal Machine Learning Engineers, offering a remote-first work culture that prioritises flexibility while maintaining client engagement. With a focus on hands-on, applied machine learning in complex environments, employees benefit from significant growth opportunities, exposure to cutting-edge AI technologies, and the chance to make a tangible impact on real-world projects. The collaborative atmosphere fosters innovation and encourages engineers to take ownership of their work, ensuring a rewarding and meaningful career path.

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Contact Details:

Immersum Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Principal Machine Learning Engineer in Warrington

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 put in a good word for you.

Tip Number 2

Show off your skills! Create a portfolio showcasing your projects, especially those that highlight your experience in deploying ML systems. This is your chance to demonstrate your hands-on capabilities and how you tackle real-world problems.

Tip Number 3

Prepare for client-facing scenarios! Brush up on your communication skills and be ready to explain complex concepts in simple terms. Remember, it’s all about building trust and showing stakeholders that you can deliver results.

Tip Number 4

Apply through our website! We’re actively looking for talented individuals like you. Don’t hesitate to submit your application and let us help you land that Principal ML Engineer role. Your next big opportunity could be just a click away!

We think you need these skills to ace Principal Machine Learning Engineer in Warrington

Python
Machine Learning
Statistical Modelling
AI
Production Systems
AWS
Azure

Some tips for your application 🫡

Tailor Your CV:Make sure your CV reflects the skills and experiences that align with the Principal ML Engineer role. Highlight your hands-on experience in deploying ML systems and working with cloud platforms like AWS or Azure. We want to see how you’ve taken projects from idea to production!

Craft a Compelling Cover Letter:Your cover letter is your chance to show us your personality and passion for the role. Explain why you’re excited about applying to StudySmarter and how your background in data science and machine learning makes you a great fit. Don’t forget to mention any client-facing experiences you've had!

Showcase Your Problem-Solving Skills:In your application, give examples of how you’ve tackled complex problems in regulated environments. We love candidates who can demonstrate their ability to own a problem end-to-end, so share specific instances where you’ve made an impact through your work.

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 attach all your documents in one go. Plus, it shows us you’re serious about joining the StudySmarter team!

How to prepare for a job interview at Immersum

Know Your Stuff

Make sure you brush up on your Python skills and understand the ins and outs of machine learning, statistical modelling, and production systems. Be ready to discuss specific projects where you've taken models from idea to production, especially in regulated environments.

Show Your Pragmatism

This role values impact over elegance, so be prepared to share examples of how you've tackled real-world problems. Highlight your ability to own a project end-to-end and how you've navigated challenges with stakeholders to deliver results.

Communicate Clearly

Since you'll be client-facing, practice explaining complex concepts in simple terms. Think about how you would present data findings to non-technical stakeholders and be ready to discuss how you've built trust in previous roles.

Familiarise with Regulations

If you've worked in regulated environments, make sure to mention it! Understanding standards like ISO 27001 or GxP can set you apart. Be ready to discuss how you've ensured compliance while deploying ML systems.