University of Strathclyde
nearmejobs.eu
This project explores the development of cutting-edge thought-to-text systems within the realm of brain-computer interface (BCI) technology. The primary objective is to enable the real-time decoding of neural signals into coherent textual outputs by integrating advanced hardware, software, and neuroscience insights. The research focuses on non-invasive neural recording technologies, such as electroencephalography (EEG), to ensure the system is accessible and safe for broad applications. By employing sophisticated signal processing techniques and machine learning models, the project aims to identify and interpret neural patterns associated with thought formation and translate these into meaningful text with high accuracy and speed.
Additionally, this project addresses challenges in noise reduction, individual variability in brain signal patterns, and user adaptability to enhance system robustness. It also investigates personalized calibration methods and adaptive algorithms to improve performance across diverse user populations. The expected outcomes include an innovative framework for thought-to-text conversion, validated through rigorous testing with real-world use cases, particularly for individuals with severe speech or motor impairments.
This work contributes to the broader field of neurotechnology by not only advancing assistive communication tools but also establishing foundational methods for future brain-to-digital interface applications, such as hands-free control systems, cognitive monitoring, and immersive human-computer interaction.
Key Words: thought-to-text, brain-computer interface (BCI), neural decoding, real-time processing, non-invasive neurotechnology, neural signal analysis, assistive communication, machine learning in BCI, electroencephalography (EEG), personalized neural interfaces.
Requirements:
Essential:
- Bachelor’s or Master’s degree (2:1 or above) in a relevant field such as Computer Science, Neuroscience, Brain Computer Interfaces, or related disciplines.
- Proficiency in programming languages such as Python and experience with frameworks like TensorFlow or PyTorch.
- Familiarity with Machine Learning and Deep Learning techniques, particularly as applied to time-series or neural signal analysis.
- Knowledge of neural recording technologies, such as EEG, and their applications in brain-computer interface research.
- Understanding of research methodologies and experimental design.
- Strong communication skills.
Desirable:
- Prior experience in brain-computer interface research, neural signal processing, or related fields.
- Familiarity with neuroscience concepts, particularly those related to brain signal decoding.
- Ability to work independently and collaboratively in an interdisciplinary environment.
How to Apply:
Interested candidates should email Dr. Yashar Moshfeghi ([email protected]) and include the following attachments:
- Cover letter detailing contact information, motivation, background, and proposed research direction (max 3 pages).
- Up-to-date CV.
- Transcripts and certificates of all degrees.
- Two references, one academic.
Contact Dr. Yashar Moshfeghi to express interest. Applications will be processed on a ‘first come, first served’ basis, and the hiring process will conclude as soon as a suitable candidate is identified.
We are committed to inclusion across race, gender, age, religion, identity, and experience, and we believe that diversity makes us stronger by bringing in new ideas and perspectives. The University of Strathclyde was established in 1796 as “the place of useful learning”. This remains at the forefront of our vision today for Strathclyde to be a leading international technological university that makes a positive difference in the lives of its students, society and the world. Strathclyde was the first institute to win the coveted Times Higher Education “University of the Year” award twice, in 2012 and 2019, and has since been voted the Scottish University of the Year in 2020.
To help us track our recruitment effort, please indicate in your email – cover/motivation letter where (nearmejobs.eu) you saw this posting.