Queen Mary University of London invites applications for a full PhD Scholarship starting in January 2022 (or as soon as possible thereafter) to undertake research in the area of Resource Management for Edge/Serverless Computing.

Recent technological developments and paradigms such as Serverless computing, Internet of Things (IoT), and processing at the network edge, bring new opportunities for Cloud computing. However, they also pose several new challenges and create the need for new approaches and research strategies, as well to revisit the models that were developed to address issues such as scalability, elasticity, reliability, latency, sustainability. Emerging technologies such as Edge and Serverless Computing and the IoT present new challenges which cannot be easily met by current resource provisioning and scheduling techniques, frameworks and mechanisms. Our future research aims to develop systems using the latest Artificial Intelligence (AI) and Machine Learning (ML) techniques which will be capable of supporting these technologies to meet the requirements of modern IoT applications.

About this Studentship

This studentship will explore the intersection of Edge/Serverless and ML/AI for modern IoT applications. The scope of the project is quite broad. Applicants are encouraged to suggest their own interest and refine the research direction accordingly.

The PhD will be supervised by Dr Sukhpal Singh Gill and will be based in theĀ Networks Research Group, an interdisciplinary group with strong publication record and high international impact, which is part of theĀ School of Electronic Engineering and Computer Science,Ā Queen Mary University of London, UK.

All nationalities are eligible to apply for this studentship. We offer a 3-year fully funded PhD studentship supported by Queen Mary University of London including student fees and a tax-free stipend starting at Ā£17,609Ā per annum.Ā  In addition to the studentship, we also welcome applications from self-funded students with relevant backgrounds.

Qualifications

All applicants should have a first-class honour degree or equivalent, or a MSc degree, in Computer Science or Electronic Engineering (or a related discipline). Applicants should have a good knowledge of English and ability to express themselves clearly in both written and spoken form. The successful candidate must be strongly motivated to undertake doctoral studies, as well as must have demonstrated the ability to work independently and perform critical analysis. A record of publishing research in international conferences and/or journals is highly desirable, as well as a strong track record of working in international teams.

The essential selection criteria will include:

  • Experience in Cloud, Edge, Serverless Computing.
  • Good coding skills in Python, Matlab and/or Java.
  • Good knowledge of data science methods.
  • Understanding of Machine Learning and IoT.
  • Ability to work independently or as part of a team.

The desirable selection criteria will include:

  • Experience and knowledge of machine learning techniques.
  • Experience in action and activity recognition.

Making an application

To apply, please follow the online instructions specified by the college website for research degrees:Ā http://www.eecs.qmul.ac.uk/phd/how-to-apply/. Steps 2 onwards are applicable in this case. Please note that we request a ā€˜Statement of Research Interestsā€™. Your statement (no more than 500 words) should answer two questions:

(i)Ā Ā Why are you interested in the topic described above?

(ii) What relevant experience do you have?

In addition to this, we would also like you to submit a sample of your written work. This might be a chapter of your final year or masters dissertation, or a published conference or journal paper.

In order to submit your online application you will need to visit the following webpage:Ā https://www.qmul.ac.uk/postgraduate/research/subjects/computer-science.html. Please scroll down the page and click on ā€œPhD Full-time Computer Science – Semester 2 (January Start)ā€. The successful PhD candidate will be a member of the Networks Research group. You should mention this in your application.

Further information

Applicants interested in the post, seeking further information or feedback on their suitability are encouraged to contact Dr. Sukhpal Singh Gill atĀ s.s.gill@qmul.ac.ukĀ with the subject ā€œResource Management for Edge/Serverless Computingā€. All applications must be made via the website mentioned above.

The closing date for applications is 15 September 2021.

Interviews are expected to take place in October 2021.

Starting date: January 2022.

 

For more information please open this link

http://eecs.qmul.ac.uk/phd/phd-studentships/phd-studentship-in-resource-management-for-edgeserverless-computing/

 

Join Us On Telegram @rubyskynews

Apply any time of year for Internships/ Scholarships