The department is seeking to appoint a Data Scientist/Statistician to a Senior Research Assistant A Predictive Modelling for Stroke role, on a fixed term (6 months) specified purpose basis.
The role will include applying machine learning, statistical analyses and other analytics to clinical data of stroke patients in order to build machine learning models predicting rehabilitation outcomes, utilising python and other software packages.
The post holder will be required to carry out the research including analysing/preprocessing large clinical datasets, training, running and validating predictive models, recording, and writing up the results.
Principal Accountabilities Report to Principal Investigator, PhD researcher and research team Contribute to the research design in relation to the Manage time effectively to meet the deliverables of the Ensure quality of results through the use of validation techniques.
Record, interpret and write up the results of the research Prepare and present findings of research activity to colleagues for review Contribute to the overall activities of the research team and department as Be responsible for following GDPR policies with respect to patient clinical data.
Engage in appropriate training and professional development opportunities as required by the School or University, and where applicable the PI.
Carry out any other duties within the scope, spirit and purpose of the job as requested by the Actively comply with all TU Dublin policies and regulations, including those in relation to Research Ethics and Health and Safety Person Specification The ideal candidate will demonstrate the appropriate mix of knowledge, experience, skills, talent and abilities as outlined below: Knowledge An undergraduate B.Sc.
(Hons) (NFQ level
8) in Computer Science or a related discipline or equivalent award by an approved degree-awarding authority (essential) A Master's degree in relevant disciple (NFQ level
9) with research experience (at least two years) OR five years post-graduation research experience in the public or private sectors ( essential ) Extensive knowledge of research techniques and methodologies of machine learning model development (e.g., neural networks, logistic regression, etc.) ( essential ) Ability to work with a range of ML libraries and resources, (e.g., scikit, Tensorflow/Pytorch, R, etc..) (essential) Evidence of research publication record and national/international recognition of achievement within the area of AI for Health ( essential ) Experience in EXplainable Artificial Intelligence (XAI) ( desirable ) Experience utilizing techniques of unsupervised machine learning for model development (e.g., clustering methods, GANs, PCA, etc.) ( desirable ) Experience in longitudinal data analysis ( desirable ) Experience Previous experience of data wrangling and curating large clinical datasets following GDPR policies ( essential ) Experience in developing machine learning models (e.g., neural networks, logistic regression, etc.) and experience in validating models ( essential ) Experience in writing up research results and preparing manuscripts for publication ( essential ) Skills, talents