Senior Data Scientist & Machine Learning Researcher

Raytheon
London
1 day ago
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Raytheon UK has a unique, perm opportunity for a Senior Data Scientist and Machine Learning Researcher to join our Strategic Research Group (SRG).

As a Senior Data Scientist and Machine Learning Researcher, you will be responsible for the technical development and leadership of AI/ML projects from initial idea scoping right through to final project delivery both in customer and internal domains. You will demonstrate novel thinking and propose new ideas for solving challenging problems while mentoring others on your project team to deliver towards your proposed solution.
Based in Gloucester, Manchester or London in a hybrid capacity (average of 3 days a week on-site). You must be eligible and willing to gain SC and eDV clearance.
Responsibilities
Develop complex, novel data science solutions, contributing significantly to machine learning projects with minimal guidance
Brings experience in scoping, designing, and delivering data-centric solutions while working collaboratively across disciplines
Undertake research and applied AI/ML tasks on both customer and internal research projects
Generate ideas for new research directions and provide technical leadership in small project groups
Mentor more junior team members within their project team and the wider SRG
Work with customers and internal stakeholders, with varied technical knowledge, to determine appropriate technical approaches and do the technical development required for delivery.
Required Skills & Experience
BSc in Machine Learning, Data Science, Computer Science, Mathematics or related field
Experience coding in Python and associated ML packages (HuggingFace, TensorFlow, PyTorch)
Proven experience of delivering ML solutions to customers and internal stakeholders
Demonstrate deep understanding of AI/ML algorithms for different data types and tasks including Generative AI, NLP and computer vision, sufficient to be able to undertake research and development beyond existing literature.
Experience of training and developing AI models including Large Language Models
Ability to produce high-quality scientific writing for internal & external stakeholders as well as academic publications
Experience of mentoring and undertaking technical leadership on small projects
Desirable Skills & Experience
PhD. or Masters degree
Experience using robust ML pipelines, appropriate version control and environment management (e.g. venvs or Docker)
Working knowledge of Linux systems, using basic commandline functionality (e.g. AWS CLI, Docker CLI, Linux commands)
Experience of deploying AI models in a scalable way for external users
Experience working in Cloud, preferably AWS but also GCP or Azure
Research publications in peer reviewed journals
Experience of writing technical project proposals
Benefits and Work Culture
37hr working week with early finish Fridays - start your weekend early!
An informal, flexible working culture that is output focused
25 days holiday + statutory public holidays, plus opportunity to buy and sell up to 5 days and up to 5 paid days volunteering
Contributory Pension Scheme (up to 10.5% company contribution)
Annual company bonus scheme (discretionary)
6 times salary Life Assurance with pension
Flexible Benefits scheme with extensive salary sacrifice schemes, including Health Cashplan, Dental, and Cycle to Work, amongst others
Enhanced sick pay
Enhanced family friendly policies including enhanced maternity, paternity & shared parental leave
Raytheon UK
This business area provides DevSecOps at scale, Artificial Intelligence, Machine Learning, cyber and geospatial intelligence capabilities to support the defence, intelligence and cyber sectors. Collaborating with customers and suppliers to deliver secure, mission critical systems using the latest technologies and innovations.
Joining our team means being part of an organisation that shapes the future of national security whilst investing in your growth and personal development. Together, we are not just advancing technology; we're building a community committed to safeguarding a safer and more connected world.
RTX
Raytheon UK is a landed company and part of the wider RTX organisation. Headquartered in Arlington, Virginia, USA, but with over 180,000 employees globally across every continent, RTX provides advanced systems and services for commercial, military and government customers worldwide and comprises three industry-leading businesses - Collins Aerospace Systems, Pratt & Whitney, and Raytheon.

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