AI & Computer Vision Associate (KTP Associate, Marwell Wildlife)

University of Surrey
Guildford
2 days ago
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Overview

Based at Marwell Zoo (near Winchester, Hampshire), you will lead the design and delivery of an end-to-end, 24/7 animal welfare monitoring system. Your work will advance welfare science and support innovative, data-driven revenue streams that support Marwell's long-term sustainability. You will work at the intersection of Artificial Intelligence & Computer Vision; Animal Behaviour & Welfare Science; Data Analytics, Visualisation & Business Insight. You will be embedded within Marwell's Animal Science team and supported by University of Surrey academics.

Responsibilities
  • Lead the design and delivery of an end-to-end, 24/7 animal welfare monitoring system.
  • Advance welfare science and support data-driven revenue streams to support Marwell's long-term sustainability.
  • Operate at the intersection of AI & Computer Vision, Animal Behaviour & Welfare Science, and Data Analytics, Visualisation & Business Insight.
  • Be embedded within Marwell's Animal Science team and supported by University of Surrey academics (Professor Kevin Wells and Dr Marco Volino).
  • Participate in a Knowledge Transfer Partnership (KTP) project to lead a transformative AI project in a live conservation-focused setting, working with animal science experts.
  • Receive mentorship from leading academics, industry experts, and a dedicated KTP support team.
  • Access a generous personal development budget and dedicated time for training and development.
  • Potential for a permanent role at Marwell Wildlife upon successful completion of the KTP (subject to performance and business needs).
  • Contribute to building a cutting-edge technology solution from the ground up that supports animal welfare and the resilience of conservation-focused organisations.
Qualifications
  • You will hold a postgraduate degree in AI, Data Science, Computer Vision or a closely related discipline with a strong technical component, or equivalent industrial experience.
  • Computer vision and machine learning: developing, training, evaluating, and deploying computer vision models.
  • Data visualisation and analytics: turning complex data into actionable insights.
  • Programming: strong skills in languages such as Python and C#.
  • Applied data science: solving real-world challenges using Machine Learning and Artificial Intelligence techniques.
  • Business Intelligence and Data Visualisation: using tools like Power BI, SQL (ideally PostGIS), and cloud-based databases.
  • Documentation and communication: clearly documenting processes, data models, and reporting structures.
  • Project management and business acumen: mapping business processes, presenting insights, and translating technical concepts for diverse audiences.

You thrive in collaborative environments, are keen to learn new technologies, and are motivated by driving innovation through AI and data-driven solutions. This opportunity describes a forward-looking KTP project between the University of Surrey and Marwell Wildlife to leverage AI and computer vision to monitor nocturnal animal behaviour for earlier health and welfare detection and proactive prevention.


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