We're 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 expertsĀ in a range of disciplines, you'll help users defend against Defence & National Security threats and directly contribute to safer, more resilient systems in the real world.Ā
MindĀ Foundry works on some of the most complexĀ and urgentĀ challenges in Defence and National Security.Ā Ā We specialise in supporting customers across the community to make sense at the speed of relevanceĀ from theĀ ever-increasingĀ volumes of data collected by sensorsĀ and systems.Ā We often find ourselves working at the edge in complex environments where power, compute, and bandwidth are in short supply. The work is challenging, the customerĀ needs products and applications they can trust,Ā and the sense of achievementĀ is thereforeĀ substantial.Ā
This roleĀ providesĀ an excellent opportunity to develop your technical skills,Ā apply academic knowledge in a real-world commercial environmentĀ andĀ gain exposure to client-facingĀ work.Ā Ā
This role can be office-based or hybrid, with you expected to work from our Summertown, Oxford office at least one day per week. You will be required to travel to client sites and work at partner locations as needed.
You should be willing and eligible to apply for and obtain UK security clearance if you do not hold an existing clearance.Ā
Areas of ImpactĀ
- Work closely with colleagues acrossĀ ScienceĀ and Engineering, and ProductĀ teams to help develop,Ā testĀ and implementĀ ML algorithms that solve complex, real-world problems efficiently and at scaleĀ
- Apply established machine learning techniques and libraries to real-world datasets, with support and mentorship from senior team membersĀ
- Follow best practices in scientific experimentation, validation, and documentationĀ
- Contribute to technical documentation, internal notes, and project reportsĀ
- Attend client meetings to understand customer needs and how solutions are deliveredĀ
- Take part in knowledge sharing, training, and professional development activities, including attending relevant events or conferences whereĀ appropriateĀ toĀ stay current with emerging ML technologies and techniques andĀ support innovation within the teamĀ
Core Skills & ExperienceĀ
- A degree (or expected degree) in Computer Science, Applied Mathematics, Statistics, Physics, or a relatedĀ STEMĀ fieldĀ
- Familiarity with modern machine learning libraries (e.g.Ā PyTorchĀ or TensorFlow) through coursework, projects,Ā internshipsĀ or extra-curricular activityĀ
- Experience programming in Python in an academic or project-based contextĀ
- An interest in building practical systems that help users understand and benefit from machine learning modelsĀ
- A strong foundationĀ in scientific thinking, with an appreciation for experimental rigour and validationĀ
- A willingness to learn, ask questions, and work collaboratively as part of a teamĀ
- An interest inĀ working alongsideĀ our clients toĀ understandĀ and solveĀ theirĀ complexĀ problemsĀ
Desirable:Ā
- Exposure to working with larger datasets and basic data engineering conceptsĀ
- Awareness of Agile or iterative development approachesĀ
- Experience withĀ additionalĀ programming languages (e.g. Java, JavaScript/TypeScript)Ā
- The ability to explain technical ideas clearly, with guidance, to both technical and non-technical audiencesĀ
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What do 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.
Youāll enjoy a competitive compensation package and great benefits such as:
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Hybrid working (some roles may require full time onsite attendance)
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Flexible hoursĀ
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Professional and personal development
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25 days of annual leave (plus Bank Holidays and a company-wide break over Christmas)
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Salary Sacrifice Pension scheme with a 5% employer contribution (minimum 5% employee contribution)
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Private Healthcare (including dental and optical cover)
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Group Life Cover at three times your annual salary once you pass your probation period
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Enhanced Parental and Sickness Leave
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Home Office Setup Allowance
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Workplace Nursery Scheme
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Pet friendly office - A lot of our team bring their dogs to work!
For more information, please visit our website www.mindfoundry.ai or email recruitment@mindfoundry.ai
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While we think the above experience is important,Ā weāreĀ keen to hear from people that believe they have valuableĀ skills, ideas, or perspectives that will make an impact in this role. IfĀ ourĀ team and missionĀ resonate with you, butĀ you do not necessarily meetĀ all ofĀ our requirements,Ā we still encourage you to apply.Ā Ā