Senior Research Associate in Machine Learning for Speech Processing
The Senior Research Associate in Machine Learning for Speech Processing will develop and validate interpretable ML approaches to understand the mapping between vocal tract movements and speech signals using MRI data. This role involves creating hybrid ML architectures, applying explainable AI, and contributing to publications at the intersection of speech science and machine learning.
This Royal Society-funded project seeks to delve into the 'black box' of modern machine learning models that predict vocal tract shapes from audio recordings. The goal is to understand the intricate mapping between vocal tract movements and the acoustic speech signal. Utilizing state-of-the-art MRI recordings of the vocal tract during speech, the project aims to develop machine learning approaches that not only predict acoustic output but also reveal the underlying mechanisms. This requires hybrid machine learning (ML) approaches that integrate phonetic and physical domain knowledge with data-driven learning, alongside explainable AI (xAI) techniques to ensure model transparency and scientific validity. These approaches will be applied to a large database of real-time MRI and acoustic recordings. The outcomes will drive fundamental progress in critical applications like articulatory biofeedback for language learning and speech therapy.
Working alongside Dr. Sam Kirkham (Lancaster, Speech Science), Dr. Anton Ragni (Sheffield, Computer Science), and Professor Aneta Stefanovska (Lancaster, Physics), you will be responsible for developing and validating interpretable Machine Learning approaches to model acoustic-articulatory relationships using MRI vocal tract data. This full-time position is available for 18 months, starting from July 1, 2026 (start date negotiable).
This role offers significant methodological creativity and intellectual ownership, providing access to rich MRI datasets and Lancaster's high-performance computing facilities.
Posted May 28, 2026