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A van Schaik

Prof at Department of Computer Science

The University of Manchester

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United Kingdom

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Research Interests

Aerospace Engineering

10%

Control System

20%

Electrical Engineering

20%

Robotics

20%

Embedded System

20%

Computer Science

20%

Machine Learning

20%

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Positions2

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source

A van Schaik

University Name
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The University of Manchester

PhD in Neuromorphic Systems for Space Missions

Outer space presents unique challenges for sensing and computing systems, including limited bandwidth, high communication latency, heat dissipation issues, cosmic ray exposure, and strict size and weight constraints due to launch costs. Despite these obstacles, space systems must process visual scenes with extreme dynamic ranges, low light, and high-velocity objects. This PhD project at The University of Manchester aims to investigate neuromorphic systems—especially event cameras—as innovative solutions to these problems. Neuromorphic systems offer high dynamic range, low latency, and low data rates, enabling event-driven computation that can outperform conventional cameras and GPUs in space environments. The research will focus on the design, implementation, and evaluation of neuromorphic hardware and algorithms tailored to real-world space applications. The successful candidate will join the International Centre for Neuromorphic Systems (ICNS) , a leading hub for brain-inspired hardware, algorithms, and applications. Access to state-of-the-art neuromorphic cameras, processors, and data from past space missions will be provided, along with a vibrant research community specializing in embedded systems, neuromorphic hardware, and space applications. Eligibility: Applicants should hold (or expect to achieve) at least a 2.1 honours degree or a master’s (or international equivalent) in Computer Science, Engineering (Electrical, Mechatronics, or Robotics), Physics, or a related discipline. Strong programming skills (Python, Rust, C, C++), embedded systems experience, and excellent problem-solving abilities are required. Experience in machine learning, computer vision, or neuromorphic hardware is desirable but not essential. English language certification may be required for non-native speakers. Funding: Excellent candidates will be nominated for competence-based faculty funding, which covers tuition fees and provides a tax-free stipend at the UKRI rate (£20,780 for 2025/26), with expected annual increases. Self-funded students are also welcome to apply. Flexible study arrangements, including part-time options, may be available depending on the project and funding. Application Process: Applications are accepted year-round, but early application is recommended as the advert may be removed before the deadline. Contact the supervisors before applying and include details of your academic background, experience, and motivation. Apply online via the university website . Required documents include transcripts, CV, supporting statement, referee contact details, and English certificate (if applicable). Incomplete applications will not be considered. Equality, Diversity, and Inclusion: The University of Manchester is committed to fostering a diverse and inclusive research community. Applications are encouraged from all backgrounds, including those returning from career breaks or seeking flexible study arrangements. For further information, visit the FindAPhD project page or contact the admissions team at [email protected] .

NaN years ago

Publisher
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G Detorakis

University Name
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The University of Manchester

PhD Position: Sensorimotor Integration in Neuromorphic Systems

This PhD project at The University of Manchester, hosted by the Department of Computer Science and the International Centre for Neuromorphic Systems (ICNS), explores the computational principles underlying sensorimotor integration in neuromorphic systems. The research aims to unravel how the human brain transforms egocentric (self-centred) spatial information into allocentric (environment-centred) representations, a process fundamental to natural navigation and interaction with complex environments. The project is structured around two main pillars: theoretical investigation and practical application. The theoretical component focuses on modelling egocentric-to-allocentric visuomotor transformations using neuromorphic cameras, integrating tactile information and motor control. This involves deep learning, mathematical modelling, and neuromorphic computing—a brain-inspired approach that designs hardware and software mimicking biological neural processes. Neuromorphic devices provide power-efficient, embedded, and low-latency event-based platforms ideal for real-time sensory processing. The practical aspect involves developing applications that leverage neuromorphic systems, such as event-based cameras and tactile sensors. These applications target challenges in robotic navigation, brain-machine interfaces, and supernumerary robotic limbs, requiring robust and adaptive systems capable of integrating visual and tactile data with motor control. The project offers access to state-of-the-art neuromorphic devices, GPUs, and a vibrant research community with expertise in embedded systems, neuromorphic hardware, and advanced algorithms. Applicants should possess a strong academic background in Computational Neuroscience, Computer Science, Electrical Engineering, Physics, or related disciplines. Essential skills include programming (Python, C/C++), machine learning, and deep learning. Experience in brain-machine interfaces and neuroscience is highly desirable. Candidates must demonstrate excellent analytical and problem-solving abilities. Eligibility requires at least a 2.1 honours degree or a master’s (or international equivalent) in a relevant field. English language certification may be required for non-native speakers. Funding is available for excellent candidates through competence-based faculty funding, covering tuition fees and providing a tax-free stipend at the UKRI rate (£20,780 for 2025/26), with annual increases expected. Self-funded students are also welcome to apply. The anticipated start date is October 2026, and applications are accepted year-round. Early application is recommended as the advert may be removed before the deadline. To apply, candidates should submit an online application via the university portal, specifying the project title, supervisor, funding status, previous study details, and referee contacts. Required documents include transcripts, CV, a supporting statement outlining motivation and relevant experience, and an English language certificate if applicable. Contacting the supervisors prior to application is strongly encouraged to discuss suitability and motivation for the project. The University of Manchester is committed to equality, diversity, and inclusion, welcoming applicants from all backgrounds and supporting flexible study arrangements. For further information, visit the project page or contact the admissions team at [email protected].

NaN years ago