University of Oxford  Jobs

University of Oxford

Applications Close:

Oxford, UK

5 Star Employer Ranking

"PhD Studentship: Adaptive Human-Robot Teams for Mobile I&M Across Dynamic Environments"

Academic Connect
Applications Close

PhD Studentship: Adaptive Human-Robot Teams for Mobile I&M Across Dynamic Environments

University of Oxford

Qualification Type:PhD
Location:Oxford
Funding for:UK Students
Funding amount:Funding for this project is provided by the EPSRC and MTC
Hours:Full Time
Placed On:3rd February 2026
Closes:4th May 2026

PhD Studentship available on the RAINZ CDT programme at the University of Oxford.

Project Overview

Abstract: This project explores long-term collaboration between a fixed human-robot team performing repeated similar inspection and maintenance (I&M) tasks across varying environments. Unlike traditional approaches focused on static, single-site deployments, this project will investigate how an operator-mobile robot pair can adapt to new or revisited sites with differing layouts, constraints, and uncertainties, within the same task context (e.g. a specific I&M specification). Key challenges include dynamic task and action allocation between the human and robot; developing strategies for managing environmental uncertainty; and designing intuitive interfaces for instruction and feedback within the human-robot team. The goal is to enable scalable, contractor-style service delivery models powered by autonomous robotics.

About the RAINZ CDT

The EPSRC Centre for Doctoral Training in Robotics and Artificial Intelligence for Net Zero is a partnership between three of the UK’s leading universities (The University of Manchester, University of Glasgow and University of Oxford).

Robotics and Autonomous Systems (RAS) is an essential enabling technology for the Net Zero transition in the UK’s energy sector. However, significant technological and cultural barriers are limiting its effectiveness. Overcoming these barriers is a key target of this CDT. The CDT’s research projects will focus on how RAS can be used for the inspection, maintenance and repair of new infrastructure in renewables (wind, solar, geothermal, tidal, hydrogen) and nuclear (fission and fusion), and to support the decarbonization of existing maintenance and decommissioning of assets.

We are seeking motivated and curious graduate scientists and engineers who are interested in developing new skills and have a desire to help increase use of RAS to support the decarbonisation of the energy sector. RAINZ CDT students will play an important role in advancing this rapidly growing area of science and engineering.

Funding:

This 4-year studentship covers tuition fees at Home student rate, a tax-free stipend, and a Research Training and Support Grant. As part of TechExpert, successful Home applicants receive an additional £10,000 annual stipend enhancement.

Funding for this project is provided by the EPSRC and MTC.

Eligibility

Applicants should hold a First or strong Upper Second-class honours degree (2:1 with 65% average), or international equivalent, in Engineering, Computer Science, Physics, Mathematics, or a related discipline. Applicants should also demonstrate evidence of programming experience. applicants for this project are expected to have strong programming and discrete mathematics skills, together with experience or interest in developing computational models of autonomous systems (e.g., using Markov decision processes, logic, graphs, etc.). This project is only open to British citizens.

How to Apply

Applications should be submitted through the RAINZ CDT website via the above 'Apply' button by 13 February 2026, where further information about the CDT is also available. Informal enquiries can be made by emailing rainz@manchester.ac.uk.

10

Unlock this job opportunity


View more options below

View full job details

See the complete job description, requirements, and application process

Stay on their radar

Join the talent pool for University of Oxford

Join Talent Pool

Express interest in this position

Let University of Oxford know you're interested in PhD Studentship: Adaptive Human-Robot Teams for Mobile I&M Across Dynamic Environments

Add this Job Post to FavoritesExpress Interest

Get similar job alerts

Receive notifications when similar positions become available

Share this opportunity

Send this job to colleagues or friends who might be interested

333 Jobs Found
View More