Research Assistant/Associate (Fixed Term)
Research Associate/Assistant in Machine Learning for Health Audio AI
Department of Computer Science and Technology, University of Cambridge
Fixed-term: The funds for this post are available for up to 12 months with an ideal start date of June/July 2026.
We are seeking a Postdoctoral Research Associate in Machine Learning for Audio to join the AURORA project (AUdio models for RespiratOry and cArdiac diagnostics and clinical tRAining), funded by the ERC Proof of Concept programme.
The project aims to develop machine learning models and software tools for analysing human health sounds, such as respiratory and cardiac audio, to support clinical diagnostics and medical training. Building on results from the ERC Advanced Grant EAR, the project will advance foundation models for health audio, integrate large language models for clinician interaction, and explore the use of synthetic audio generation for clinical education and evaluation.
The successful candidate will contribute to the development of robust machine learning models for cardio-respiratory sound analysis, as well as to the creation of tools that can be evaluated with clinicians and medical students.
Key Responsibilities
The Research Associate will:
- Develop and improve machine learning models for cardiac and respiratory audio analysis
- Work on audio foundation models and multimodal AI systems
- Investigate model robustness and generalisation across diverse clinical audio datasets
- Contribute to the generation of synthetic cardio-respiratory audio data
- Assist in integrating models into user-facing tools and mobile applications
- Collaborate with clinicians to evaluate models in diagnostic and training contexts
- Contribute to open-source software releases and research publications
Requirements
Applicants should have:
- A PhD (or be close to completion) in machine learning, signal processing, computer science, or a related field OR relevant experience
- Strong experience in machine learning for audio, speech, or acoustic signal processing
- Excellent programming skills (e.g., Python, PyTorch/TensorFlow)
- Experience working with deep learning models
- A strong publication record in relevant venues
Desirable experience includes:
- Machine learning for healthcare or biomedical signals
- Audio foundation models or generative models
- Multimodal AI or LLM integration
- Working with large datasets or open-source ML frameworks
Research Environment
The position will be based in the Department of Computer Science and Technology at the University of Cambridge, a leading centre for research in machine learning, digital health, and mobile sensing. The project is led by Professor Cecilia Mascolo, whose group works on machine learning for health and wearable/mobile sensing technologies.
The successful candidate will collaborate with an interdisciplinary team including machine learning researchers, software engineers, and clinical partners, contributing to the development of tools that could transform audio-based diagnostics and medical training.
Application
Informal enquiries are welcomed and should be directed to Prof Cecilia Mascolo: https://www.cl.cam.ac.uk/~cm542/
Interim Pay Award: You are eligible for a non-consolidated pensionable payment, equivalent to 2.5% of your basic pay. This supplement will be paid until the conclusion of the Cambridge Pay Review Project.
Click the 'Apply' button below to register an account with our recruitment system (if you have not already) and apply online.
Questions about the post and the recruitment process may be addressed to the HR Team at hr-admin@cst.cam.ac.uk
Please quote reference NR49181 on your application and in any correspondence about this vacancy.
The University actively supports equality, diversity and inclusion and encourages applications from all sections of society.
The University has a responsibility to ensure that all employees are eligible to live and work in the UK.
Key information
Department/location
Department of Computer Science and Technology
Salary
£33,002-£46,049
Reference
NR49181
Category
Research
Date published
23 March 2026
Closing date
23 April 2026
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