Doctoral Degree Studentship in Networks and Data Science, Northeastern University London, United Kingdom

Expires on: 04/10/2024

Description

Embark on a transformative research journey with the Fully Funded PhD Scholarship offered by Northeastern University London. This interdisciplinary scholarship focuses on advancing healthcare analytics through networks and data science, specifically targeting social care settings. The project aims to model health outcomes in care homes using machine learning applications, providing valuable insights into quality of care and patient trajectories.

The Fully Funded PhD Scholarship at Northeastern University London aims to address critical research questions in healthcare analytics, particularly focusing on social care settings. The project seeks to develop a multidisciplinary framework using advanced computational techniques to model health outcomes in care homes. Through machine learning applications and data science methodologies, the project aims to predict patient discharges, assess nursing home performance, and analyze socio-economic factors influencing health outcomes.

Eligibility 

Candidates must hold a Bachelor’s degree in Data Science, Computational Social Science, Natural Language Models, Physics, Mathematics, Networks, Computer Science, or related subjects. Proficiency in programming languages (e.g., Python, R, SQL, Julia), software development tools, and fluency in English are required. Excellent communication skills, a collaborative spirit, and a passion for interdisciplinary applied research are essential.

How to Apply

To apply, submit a CV and a Covering Letter expressing your qualifications and interest in the research project. Click the ‘Apply’ button above and reference your application as “PHDHA0324”. Shortlisted candidates will undergo interviews by early May. For informal inquiries, contact the NU London supervisor at riccardo.diclemente@nulondon.ac.uk before the application deadline.

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