Graduate Machine Learning Engineer
Graduate Machine Learning Engineer

Graduate Machine Learning Engineer

Entry level 28800 - 48000 Β£ / year (est.) Home office (partial)
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At a Glance

  • Tasks: Join a multidisciplinary team to develop and implement machine learning solutions for real-world challenges.
  • Company: Mind Foundry, a leader in AI and ML for Defence and National Security.
  • Benefits: Flexible hybrid working, competitive salary, 25 days leave, and private healthcare.
  • Why this job: Make a real impact on safety and resilience while developing your technical skills.
  • Qualifications: Degree in STEM, familiarity with ML libraries, and programming experience in Python.
  • Other info: Supportive environment with opportunities for professional growth and innovation.

The predicted salary is between 28800 - 48000 Β£ per year.

We are looking for a Graduate Machine Learning Engineer to join our supportive, multidisciplinary team and contribute to the development and application of machine learning solutions for our clients and products. You will help explore, prototype, and implement AI/ML approaches to problems both within and outside our core product offering. Working at the forefront of AI and ML alongside experts in a range of disciplines, you will help users defend against Defence & National Security threats and directly contribute to safer, more resilient systems in the real world.

Mind Foundry works on some of the most complex and urgent challenges in Defence and National Security. We specialise in supporting customers across the community to make sense at the speed of relevance from the ever-increasing volumes of data collected by sensors and systems. Work is challenging, customers need products and applications they can trust, and the sense of achievement is substantial. This role provides an excellent opportunity to develop your technical skills, apply academic knowledge in a real-world commercial environment and gain exposure to client-facing work. The role can be office-based or hybrid; you are expected to work from our Summertown, Oxford office at least one day per week and travel to client sites and partner locations as needed.

Areas of Impact

  • Work closely with colleagues across Science and Engineering, and Product teams to develop, test and implement ML algorithms that solve complex, real-world problems efficiently and at scale.
  • Apply established machine learning techniques and libraries to real-world datasets, with support and mentorship from senior team members.
  • Follow best practices in scientific experimentation, validation, and documentation.
  • Contribute to technical documentation, internal notes, and project reports.
  • Attend client meetings to understand customer needs and how solutions are delivered.
  • Take part in knowledge sharing, training, and professional development activities, including attending relevant events or conferences to stay current with emerging ML technologies and techniques and support innovation within the team.

Core Skills & Experience

  • A degree (or expected degree) in Computer Science, Applied Mathematics, Statistics, Physics, or a related STEM field.
  • Familiarity with modern machine learning libraries (e.g. PyTorch or TensorFlow) through coursework, projects, internships or extra-curricular activity.
  • Experience programming in Python in an academic or project-based context.
  • An interest in building practical systems that help users understand and benefit from machine learning models.
  • A strong foundation in scientific thinking, with an appreciation for experimental rigor and validation.
  • A willingness to learn, ask questions, and work collaboratively as part of a team.
  • An interest in working alongside our clients to understand and solve their complex problems.

Desirable

  • Exposure to working with larger datasets and basic data engineering concepts.
  • Awareness of Agile or iterative development approaches.
  • Experience with additional programming languages (e.g. Java, JavaScript/TypeScript).
  • The ability to explain technical ideas clearly, with guidance, to both technical and non-technical audiences.

What We Offer

We believe in investing in our people by encouraging career and personal development that aligns with your goals and ambitions. We make sure all staff have the tools, time and support they need to shape their own professional development. We want to help you excel at what you do and support your growth within the company. Competitive compensation package and benefits include:

  • Hybrid working (some roles may require full-time onsite attendance).
  • Flexible hours.
  • Professional and personal development.
  • 25 days of annual leave (plus Bank Holidays and a company-wide break over Christmas).
  • Salary Sacrifice Pension scheme with a 5% employer contribution (minimum 5% employee contribution).
  • Private Healthcare (including dental and optical cover).
  • Group Life Cover at three times your annual salary once you pass your probation period.
  • Enhanced Parental and Sickness Leave.
  • Home Office Setup Allowance.
  • Workplace Nursery Scheme.
  • Pet-friendly office.

For more information, please visit our website www.mindfoundry.ai or email recruitment@mindfoundry.ai. While we think the above experience is important, we’re keen to hear from people that believe they have valuable skills, ideas, or perspectives that will make an impact in this role. If our team and mission resonate with you, but you do not necessarily meet all of our requirements, we still encourage you to apply.

Graduate Machine Learning Engineer employer: Mind Foundry Ltd

Mind Foundry is an exceptional employer that prioritises the growth and development of its employees, offering a supportive work culture where collaboration and innovation thrive. Located in Oxford, with hybrid working options, we provide competitive benefits including flexible hours, professional development opportunities, and a pet-friendly office environment, all while tackling meaningful challenges in Defence and National Security. Join us to enhance your technical skills and make a real-world impact alongside experts in the field.
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Contact Detail:

Mind Foundry Ltd Recruiting Team

StudySmarter Expert Advice 🀫

We think this is how you could land Graduate Machine Learning Engineer

✨Tip Number 1

Network like a pro! Reach out to professionals in the AI and ML space on LinkedIn or at events. A friendly chat can lead to opportunities you might not find on job boards.

✨Tip Number 2

Show off your skills! Create a portfolio showcasing your projects, especially those using PyTorch or TensorFlow. This gives potential employers a taste of what you can do.

✨Tip Number 3

Prepare for interviews by brushing up on common ML concepts and algorithms. Practice explaining your thought process clearly, as you'll need to communicate with both technical and non-technical folks.

✨Tip Number 4

Don’t forget to apply through our website! It’s the best way to ensure your application gets seen. Plus, we love hearing from passionate candidates who want to make an impact.

We think you need these skills to ace Graduate Machine Learning Engineer

Machine Learning
Python Programming
PyTorch
TensorFlow
Data Analysis
Scientific Thinking
Experimental Rigor
Technical Documentation
Client Engagement
Collaboration
Data Engineering Concepts
Agile Development
Communication Skills

Some tips for your application 🫑

Tailor Your CV: Make sure your CV reflects the skills and experiences that align with the Graduate Machine Learning Engineer role. Highlight any relevant projects or coursework that showcase your familiarity with machine learning libraries like PyTorch or TensorFlow.

Craft a Compelling Cover Letter: Use your cover letter to tell us why you're passionate about machine learning and how your background makes you a great fit for our team. Don’t forget to mention your interest in working on real-world problems, especially in Defence and National Security.

Showcase Your Projects: If you've worked on any machine learning projects, whether in academia or as personal endeavours, make sure to include them. We love seeing practical applications of your skills, so share what you’ve built and the impact it had!

Apply Through Our Website: We encourage you to apply directly through our website. It’s the best way to ensure your application gets into the right hands and shows us you’re serious about joining our team at Mind Foundry!

How to prepare for a job interview at Mind Foundry Ltd

✨Know Your ML Basics

Make sure you brush up on your machine learning fundamentals. Be ready to discuss key concepts, algorithms, and libraries like PyTorch or TensorFlow. This will show that you have a solid foundation and are eager to apply your knowledge in real-world scenarios.

✨Showcase Your Projects

Prepare to talk about any relevant projects or coursework you've done. Highlight how you applied machine learning techniques to solve problems. If you can, bring along examples of your code or results to demonstrate your hands-on experience.

✨Understand the Company’s Mission

Familiarise yourself with Mind Foundry's work in Defence and National Security. Understand the challenges they face and think about how your skills can contribute to their mission. This will help you tailor your answers and show genuine interest in the role.

✨Ask Insightful Questions

Prepare thoughtful questions to ask during the interview. Inquire about the team dynamics, ongoing projects, or how they approach problem-solving. This not only shows your enthusiasm but also helps you gauge if the company is the right fit for you.

Graduate Machine Learning Engineer
Mind Foundry Ltd

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