Academic Jobs - Home of Higher Ed Logo
University of Southampton Jobs

Quantum Machine Learning for Efficient Spike Sorting in Low-Cost Neural Recording Systems

Applications Close:

University of Southampton

University Rd, Southampton SO17 1BJ, UK

Academic Connect
5 Star Employer Ranking

Quantum Machine Learning for Efficient Spike Sorting in Low-Cost Neural Recording Systems

About the Project

Supervisory Team: Dr Majid Zamani

This project explores quantum machine learning, specifically quantum kernel methods, to enable efficient spike sorting for resource-constrained neural recording systems. The goal is to overcome computational limitations of current methods, facilitating real-time applications like brain-computer interfaces and portable neurotechnology.

This project will investigate whether quantum machine learning (QML) approaches, particularly quantum kernel methods, can enable efficient spike sorting for resource-constrained neural recording systems. Extracellular neural recording systems capture electrical activity from populations of neurons, producing mixed signals that must be computationally separated, a process known as spike sorting. As neural recording technologies advance, enabling simultaneous recording from increasingly large neuronal populations, the computational demands of spike sorting have grown substantially.

Current high-performing approaches (such as Kilosort and MountainSort) often require significant computational resources, limiting their suitability for low-cost, embedded, or real-time applications like brain-computer interfaces (BCIs), neural prosthetics, and portable neurotechnology. Quantum machine learning, particularly hybrid quantum-classical models, offers a novel framework for classification in low-dimensional feature spaces. Quantum kernel methods may provide an efficient way to represent complex decision boundaries while maintaining a tractable processing pipeline suitable for deployment in low-cost systems.

Entry requirements

You must have a UK 2:1 honours degree, or its international equivalent, in one of the following:

  • physics
  • computer science
  • electrical engineering
  • neuroscience
  • a related field

Essential skills:

  • strong background in at least two of the following: machine learning, quantum computing, signal processing, or neuroscience data analysis
  • programming experience (Python preferred) and familiarity with scientific computing libraries
  • excellent analytical and problem-solving skills

Desirable skills:

  • familiarity with quantum computing frameworks (e.g., Qiskit, Pennylane, Cirq)
  • knowledge of kernel methods or quantum machine learning

Fees and funding

We offer a range of funding opportunities for both UK and international students. Horizon Europe fee waivers automatically cover the difference between overseas and UK fees for qualifying students.

Competition-based Presidential Bursaries from the University cover the difference between overseas and UK fees for top-ranked applicants.

Competition-based studentships offered by our schools typically cover UK-level tuition fees and a stipend for living costs for top-ranked applicants.

Funding will be awarded on a rolling basis, so apply early for the best opportunity to be considered.

For more information, please visit our postgraduate research funding pages.

How to apply

Apply now

You need to:

  • choose programme type (Research), 2026/27, Faculty of Engineering and Physical Sciences
  • select Full time or Part time
  • search for programme PhD Electronic & Electrical Engineering (7092)
  • add name of the supervisor in section 2 of the application

Applications should include:

  • research proposal
  • your CV (resumé)
  • 2 academic references
  • degree transcripts and certificates to date
  • English language qualification (IELTS 6.5 overall, with at least 6.0 in each component).

Contact us

Faculty of Engineering and Physical Sciences

If you have a general question, feps-pgr-apply@soton.ac.uk.

Project leader

For an initial conversation, M.Zamani@soton.ac.uk.

10

Unlock this job opportunity


View more options below

View full job details

See the complete job description, requirements, and application process

52 Jobs Found
View More