Be at the heart of actionFly remote-controlled drones into enemy territory to gather vital information.

Apply Now

Engineer Machine Learning

SAMSUNG
Cambridge
1 year ago
Applications closed

Related Jobs

View all jobs

Cheminformatics Software Developer

Workshop Engineer, Biomedical Equipment

Workshop Engineer, Biomedical Equipment

DataOps Engineer

Maintenance Engineer - Operations Group - Estates and Facilities

Biomedical Engineer

Position Summary

The Distributed AI group in SAIC Cambridge is looking for a Machine Learning Engineer to join the team and work directly with research scientists and ML engineers of diverse skill sets, supporting research efforts in the areas of embedded/distributed ML, communications and robotics. The person will be responsible for contributing to internal research tools, helping implementing/extending research ideas and/or realising research prototypes into demos and minimum viable products (MVPs).

Role and Responsibilities

As part of the group, you will contribute to technical and system aspects of deploying embedded/distributed/mobile ML systems for cutting-edge research and real-world applications in vision and language, with the possibility of partaking in publishing academic papers and patents. Moreover, there is the potential for cross-group collaborations and the ability to learn and grow inside the team. 


To this direction, they are searching for a candidate with deep knowledge in system design and architecture. The candidate should have exposure to different layers in the system stack and spherical knowledge about how ML systems operate. Lastly, the candidate should have an analytical and rigorous approach and make design choices based on quantitative data. In summary, we are searching for a “jack of all trades” in MLSys.

Skills and Qualifications

MS or PhD in CS/EE or equivalent experience in the industry, with key skills:

Experience with ML frameworks (PyTorch, TensorFlow, JAX) and efficient ML (incl. quantisation, pruning, sparsification, etc.)

Experience with deployment on embedded and mobile devices (ML inference and/or training)

Experience with distributed and multi-GPU training at scale

Fluency in Python, C/C++ and GNU Linux

Experience in working as member of a team

Any of the following skills will also be positively considered:

Experience in real-world (distributed) system deployment and maintenance

Hands-on experience and understanding of networking stack and communication protocols (e.g. distributed inference/training over PAN/LAN/WLAN, software defined radio, etc.)

Experience with practical aspects of deploying computer vision in real-world settings such as AR/VR, smart homes and robotics (e.g. camera calibration, RGB-D and/or motion-tracking sensors, multi-camera ecosystems, etc.)

Experience with large-scale NLP research, including discriminative or generative tasks. This includes all steps of the pipeline, from data collection and preprocessing to large model adaptation, fine-tuning and optimisation.

Android Operating System and Android app development

Robot Operating System (ROS)

Contract Type: Permanent

Job Location: Cambridge, UK

Hybrid Working:Standard working week will be 3 days onsite and 2 days working from home if preferred

Employee Benefits:Competitive Salary, Annual Performance Bonus up to10%, Pension Scheme with company contribution up to 8.5%, Income Protection, Stocks & Shares ISA, Life Assurance, 25 days holiday (increasing to 30 with length of service). We also have a wide range of Flexible Benefits to choose from with Samsung providing an allowance of £600 per year to spend on them.

*

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

By subscribing, you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Biotechnology Recruitment Trends 2025 (UK): What Job Seekers Must Know About Today’s Hiring Process

Summary: UK biotechnology hiring has shifted from title-led CV screens to capability-driven assessments that emphasise validated lab results, documentation, GxP/QA/RA awareness, data literacy, digital biology tools & measurable impact from bench to bedside. This guide explains what’s changed, what to expect in interviews & how to prepare—especially for wet-lab scientists, bioprocess/CMC engineers, QC/QA specialists, RA/clinical professionals, bioinformatics/data scientists & platform engineers. Who this is for: Biologists, biochemists, biotechnologists, cell & gene therapy scientists, upstream/downstream processing engineers, QA/QC analysts, validation engineers, regulatory affairs specialists, clinical trial professionals, bioinformaticians, data scientists & biotech product/operations managers targeting roles in the UK.

Why Biotechnology Careers in the UK Are Becoming More Multidisciplinary

Biotechnology once meant pipettes, lab benches & research reports. But in today’s UK job market, biotech careers are no longer confined to wet labs or sequencing centres. As the sector expands into gene therapies, synthetic biology, personalised medicine, agricultural biotech, and bioinformatics, professionals are expected to integrate not just biology & chemistry, but also law, ethics, psychology, linguistics & design. This change reflects a broader truth: biotechnology doesn’t happen in isolation. It impacts people’s health, the environment, food supply & society at large. That means careers in biotech now require more than scientific knowledge — they demand legal awareness, ethical reasoning, patient empathy, clear communication, and user-centred design. In this article, we’ll explore why biotech careers in the UK are becoming multidisciplinary, how law, ethics, psychology, linguistics & design are shaping job descriptions, and what job-seekers & employers need to do to succeed in this transformed landscape.

Biotechnology Team Structures Explained: Who Does What in a Modern Biotechnology Department

Biotechnology is a fast-moving, highly interdisciplinary sector that spans research, development, clinical trials, manufacturing, regulatory affairs, and commercialisation. In the UK, biotech firms, pharmaceutical companies, academic spin-outs, and contract research organisations (CROs) are collaborating more than ever, leading to the creation of complex teams with specialised roles. To deliver safe, effective, and compliant biotech products — whether diagnostics, biologics, gene therapies, environmental biotech, or agricultural innovations — it's vital to know who does what. This article will map out the structure of a modern biotech department. We’ll define the key roles, how they interact across the product lifecycle, what skills are required in the UK, typical career paths, salary expectations, and examples of how startups versus large firms organise themselves. Whether you are a hiring manager or a job seeker, this will help you understand the landscape of biotechnology jobs in the UK.