Academic Jobs Logo
Post My Job Jobs

Knowledge Exchange Fellow in Predictive Analytics

Applications Close:

Post My Job

Glasgow

5 Star Employer Ranking

Knowledge Exchange Fellow in Predictive Analytics

The Position

This will involve experimental design, software development and data science, carrying out research and development of models to predict and diagnose asset health condition. Candidates will be expected to have expertise and track record in all of the areas listed below. Please do apply even if you only meet some of the criteria:

  • Condition monitoring and asset management of engineering systems, and subsystems, particularly rotating machines.
  • Requirements capture and experimental design.
  • Data Science – handling and processing large data sets (experience across multiple domains welcome).
  • Artificial Intelligence – including predictive modelling, pattern analysis and recognition.
  • Software development and testing experience – ideally in rotational plant, but experience in other areas will also be considered.

You will have a good honours degree and PhD / higher degree (or equivalent professional experience) in appropriate discipline. Have a track record in carrying out knowledge exchange projects and a demonstrable record in developing high quality knowledge exchange proposals and leading role in attracting knowledge exchange funding. The successful candidate will have knowledge exchange interests which are consistent with the strategic direction of the Department/School. The ability to plan and organise knowledge exchange programmes, and to pull together teams of academic professional staff and others as appropriate.

The project

The project has three main aims, namely:

  • Completion of a detailed review and assessment of the data and experience associated with existing rotating plant equipment, including current approaches to maintenance (run to failure, time-based, and predictive), existing models and processes used to inform current asset health, data captured (both online through condition monitoring, as well as operational parameters, and offline during routine inspection and maintenance activities), platforms or technologies employed to manage and analyse the data.
  • Development of a proof-of-concept tool, which will provide a single point of access for historic data and records, analyses tools and a RAG-type indicator showing the current estimate of each rotating asset’s condition.
  • Development of a suite of demonstration analytics, accessible through the visualisation tool, and providing support for typical through life asset management activities. This will include:
    • Population-based predictive analytics. Typically used for smaller value, non-critical pumps to support time-based maintenance strategies.
    • Operations-based population predictive analytics. An extension of population-based analytics, but including the impact of operational environment and duty cycle into the analysis.
    • Predictive models of performance degradation.
    • Operational anomaly detection and normal behaviour benchmarking.

Department of Electronic and Electrical Engineering (EEE)

The position will be hosted in the Department of Electronic and Electrical Engineering is internationally recognised for its research excellence, industrial engagement and first-class teaching programmes. Further information on the Department can be found at www.strath.ac.uk/engineering/electronicelectricalengineering. The successful candidate will join the Intelligent Systems Team in the Advanced Electrical Systems group in the Institute for Energy and Environment in the Department. While the primary focus will be the delivery of the project successful candidates will join a vibrant team delivering a wider range of projects across a range of industry partners, with opportunities for career development through and potentially beyond the fix-term of the post.

Security Clearance

Possession and maintenance of security clearance (SC) is an essential requirement for this post. Further details can be found here: www.gov.uk/government/publications/united-kingdom-security-vetting-clearance-levels/sc-guidance-pack-for-applicants

10

Unlock this job opportunity


View more options below

View full job details

See the complete job description, requirements, and application process

542 Jobs Found

Post My Job

London, Hybrid
Academic / Faculty
Closes: May 4, 2026
View More