PhD Studentship: Developing techniques to deal with large environmental data sets

Updated: about 2 months ago
Location: Plymouth, ENGLAND
Job Type: FullTime
Deadline: 26 Apr 2024

DoS:  Dr Craig McNeile (Email: [email protected] )

2nd Supervisor: Dr. Luciana Dalla Valle (Email: [email protected] )

Applications are invited for a 3.5 years PhD studentship within the Environmental Intelligence doctoral training programme at the University of Plymouth.

The studentship will start on 01 October 2024.

Project Description

Scientific background:

There are now much larger and varied data sets about the environment from, for example: satellite images, results from the internet of things, and even social media posts. In order to monitor the environment and to develop strategies that lead to Net Zero requires that the relevant data is combined together to form big data sets that can be used in machine learning. Large data sets are stored in a variety of different databases, including traditional relational databases and more modern Noqsl databases.  To organize the data, the FAIR (Findable, Accessible, Interoperable, Reusable) principles will be used. To process large data sets  requires High Performance Clusters (HPC). The University of Plymouth is installing a new HPC system in 2024 that the student will be able to use this system  for machine learning with large environmental datasets.

Research methodology:

The student will investigate data engineering techniques, such as ETL, to combine and clean large data sets on environmental data into a datalake at the University of Plymouth. The datalake will be available to researchers at the University of Plymouth and the PhD student will use the extracted data for machine learning using the High Performance Computing cluster at the University of Plymouth. The performance of handling large data sets will be studied.

Training:

Training on environmental science will be provided by the student attending relevant MSc modules. The PhD will learn how to use the High Performance Cluster by working with a member of the HPC team and attending training courses provided by the national computer centres and vendors such as Intel. TheUniversity of Plymouth is a member of the Turing network, so the student will attend training events from them

Person specification:

The candidate should have some experience with working with databases and an interest in applying machine learning to analyse large environmental datasets. Ideally the candidate should have a MSc in data science, or computing, or other STEM discipline. 

If you wish to discuss this project further informally, please contact Dr Craig McNeile, [email protected] .

For further information on Eligibility and Funding , please click on the links below:

To apply for this position please click the 'Apply' button, above.

Please clearly state the name of the DoS and the studentship project that you are applying for on the top of your personal statement.

Please see here for a list of supporting documents to upload with your application.

For more information on the admissions process generally, please visit our How to Apply for a Research Degree webpage or contact the Doctoral College .

The closing date for applications on 26 April 2024. Shortlisted candidates will be invited for interview after the deadline. We regret that we may not be able to respond to all applications.  Applicants who have not received a response within six weeks of the closing date should consider their application has been unsuccessful on this occasion.