Senior Scientist - Cyber AI/ML Research

Newport
1 month ago
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Senior Scientist - Cyber AI / ML Research (Contract)

Location: Newport (minimum 3 days on site)
Contract Duration: 12 months, with strong potential for extension
Pay Rate: £50 per hour Umbrella / £37.38 per hour PAYE
Hours: 35 hours per week, flexible between 7am-7pm
Clearance: BPSS+
IR35: Inside IR35

About the Role

A leading organisation within the defence and secure technology sector is seeking a Senior Scientist specialising in Cyber Security of AI/ML. This position sits within an advanced research and innovation function, working on high‑impact cyber security challenges where no existing solutions currently exist. The successful applicant will contribute to research, innovation, knowledge transfer, and prototype development in the field of Cyber‑AI/ML security.

Key Responsibilities

Innovation & Research

Lead and deliver AI/ML‑focused cyber security research projects.
Conduct research into emerging digital security threats and opportunities.
Produce technical reports, white papers, prototypes and research outputs.
Contribute to patent applications and academic or industry publications.

Collaboration & Consultancy

Work closely with internal R&D, engineering and security teams.
Support academic partnerships, innovation programmes, and external collaborations.
Provide consultancy on specialist cyber security topics across the organisation.

Coordination & Knowledge Transfer

Build strong internal networks across technical and security domains.
Represent the innovation function in internal and external engagements.
Support integration of research outcomes into operational security practices.

Essential Skills & Qualifications

Bachelor's degree in Artificial Intelligence, Machine Learning, Computer Science or related discipline.
Recent PhD or Master's degree focusing on Cyber Security of AI/ML.
Deep understanding of AI/ML algorithms, vulnerabilities, and applications.
Strong Python programming and software development experience.
Experience in research, innovation, or solution development within relevant domains.

Desirable Skills

Industry experience applying AI/ML to cyber security.
Academic publication track record.
Experience with NDAs, IPR, IP management or patent processes.
Experience in data analytics or AI/ML techniques applied to security problems.

How to Apply

If you have strong expertise in AI/ML and a passion for advancing cyber security research, please submit your CV for immediate consideration.

Guidant, Carbon60, Lorien & SRG - The Impellam Group Portfolio are acting as an Employment Business in relation to this vacancy

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