Post Title: AI and 3D Image Processing Engineer - KTP Associate SBU/Department: School of Physics, Engineering & Computer Science FTE: 1.0FTE (working 40 hours per week) Duration of Contract: Fixed term for 30 months Salary: KTP Between £35,000pa and £40,000pa depending on skills and experience Annual Leave: 28 days per year, including bank holidays Location: College Lane, Hatfield, and CrossTech, 11 Gough Square, London, EC4A 3DE About the programme: This position forms part of the Knowledge Transfer Partnership (KTP) programme funded by Innovate UK (IUK). A KTP is a 3-way collaboration between a graduate (or post-graduate), a business and a university or research institution. KTPs are designed to deliver an innovation project and bring about lasting, transformative change. As a KTP Associate, you will lead the project with full support from company and academic supervisors, while benefiting from expert coaching and mentoring with one of IUK’s highly experienced Advisers. The University of Hertfordshire wish to recruit a motivated, highly skilled & qualified graduate to lead and deliver a project with Cross Tech, pioneers in automated AI infrastructure inspection. This project will develop a real-time computer vision and edge AI system for intelligent rail monitoring, enabling early detection of hazards. The KTP includes access to management skills training delivered by Ashorne Hill, in addition to a £5000 training budget. About CrossTech: CrossTech develops cutting-edge software designed to help the world move better. Their expertise in AI, Automation, Analytics, and Image Processing is helping railway systems in the UK, improve operational performance, efficiency, and safety. Please visit: https://www.crosstech.co.uk/ for more information. Main duties and responsibilities The associate will develop an advanced real-time computer vision and edge AI system for intelligent rail monitoring and hazard detection. You will handle data collection and analysis and contribute to the design and organisation of the research project as well as contribute to academic peer reviewed papers and presentations. You will be expected to assist with the dissemination of results and outputs of the project and assist with collating and writing the final project reports and working papers. You will take an active part in the academic life of the school through participation in seminars and other events. Skills and experience required You will be proficient in Python (NumPy, PyTorch) and experienced with CNN/Transformer models and have experience working as part of a research team in a Higher Education Institution or in industry (e.g. final year project). You will have Strong foundations in AI/machine learning, particularly deep learning for video analytics and experience in managing real-world data capture and labelling from complex environments. You will have a methodical approach with attention to detail and problem-solving abilities, be able to plan and manage own activities effectively, as well as be the ability to deal with sensitive material with strict confidentiality. Exposure to intelligent transport systems (ITS), radar and AI for safety-critical applications is desirable as is an awareness of data governance, safety and security in operational environments. Qualifications required You will be educated with a minimum of a Degree or equivalent in Computer Science or a relevant discipline. Please view the job description and person specification for a full list of the duties and essential criteria. Please attach a personal statement showing clearly how your skills and experience match the Person Specification. Internal applicants – please ensure you apply via your employee self-service portal. An appointment to this role may require an Academic Technology Approval Scheme (ATAS) certificate. Due to the structure of KTP funding, appointees requiring a work visa will be able to commence employment only after confirmation of their having UK right to work that covers the entirety of the project. The visa position regarding sponsorship or support will be considered once the successful applicant has been determined. The successful applicant must also start in post by 19th December 2026 due to the KTP funding requirement. Contact Details/Informal Enquiries: Lucy Cooper – lc24aau@herts.ac.uk Closing Date: 14 June 2026 Interview Date: TBC Reference Number: REQ000612 Date advert placed: 15 May 2026 We reserve the right to close this vacancy early if we receive a high volume of suitable applications. Our vision is to transform lives and UH is committed to Equality, Diversity and Inclusion and building a diverse community. We welcome applications from suitably qualified and eligible candidates regardless of their protected characteristics and recognise there are different ways applicants may achieve the criteria in this document. We offer a range of employee benefits, discounted Sports Village memberships, and personal and professional development. GoHerts Proud member of the Disability Confident employer scheme Disability Confident About Disability Confident A Disability Confident employer will generally offer an interview to any applicant that declares they have a disability and meets the minimum criteria for the job as defined by the employer. It is important to note that in certain recruitment situations such as high-volume, seasonal and high-peak times, the employer may wish to limit the overall numbers of interviews offered to both disabled people and non-disabled people. For more details please go to Disability Confident .