This is an exciting opportunity for an ambitious graduate in Artificial Intelligence/ Computer Vision (AI/CV), or a strongly related field, to fast- track their career development as a Knowledge Transfer Partnership (KTP) Associate. KTP is the UK's oldest knowledge transfer programme, supporting partnerships between business and universities or research organisations, placing talented graduates (KTP Associates) to work on innovative, high- profile projects. KTPs are part grant-funded by Innovate UK, the United Kingdom's innovation agency, which provides money and support to organisations to make new products and services on behalf of the UK Government.
The KTP Associate will undertake a 2-year collaborative project between Energy Services International (Eserv) and Robert Gordon University's (RGU) School of Computing. The post will be based at the company premises (70 Queens Road, Aberdeen) and will also have access to RGU's research facilities. You will develop novel capabilities for Eserv's state-of-the-art Digital Twin platform, AS-TEG™. These will help to automate traditionally manual, expensive, timely and emission-creating tasks using AI/CV. These include:
You will receive extensive practical and formal training, gain marketable skills, broaden your knowledge and expertise within an industrially relevant project, and gain valuable experience from industrial and academic mentors. You will benefit from a Personal Development Budget of £4,000.
Candidates must ideally possess an Honours Degree in Computer Science with a focus on AI/CV. However, those with a 1st Class Honours Degree in related disciplines should also apply for this post. You will be expected to relocate to Aberdeen, Scotland, and should be self-motivated, being able to work independently and to tight deadlines within a dynamic team environment. It is desired, but not essential, to be experienced or familiar with the Energy sector.
Excellent communication and interpersonal skills are required, as the ideal candidate must be able to communicate effectively with various individuals, i.e., technical, academic, business and customers. Team working and flexibility will be essential requirements.
Salary Range: Up to £35,000 with a review after one year, plus £4,000 training budget
Informal enquires may be sent to: Dr Carlos Moreno-García, School of Computing at RGU - [email protected] or Steven Simpson - Energy Services International (Eserv) - [email protected]
This post is subject to a Disclosure Scotland check. For more information visit: https: // www. mygov.scot/basic-disclosure/
About the company
Eserv works within the Energy sector and has developed an industry-leading software-as-a-service (SaaS) solution that revolutionises how customers design, build, operate and maintain complex industrial assets through its digital twin technology AS-TEG™. AS-TEG™ provides a contextualised digital twin that gives owners / operators and service providers the ability to quickly search and locate as-built, design and integrity data right from the desktop – from anywhere in the world.
Job DescriptionRESPONSIBLE TO : Dr Carlos Moreno-García, School of Computing at RGU and Steven Simpson - Energy Services International (Eserv)
RESPONSIBLE FOR : No supervisory responsibilities
PURPOSE OF POST :
PRINCIPAL DUTIES :
ESSENTIAL REQUIREMENTS
Qualifications
First-class Honours degree in computing, data science or a strongly related discipline
Knowledge and skills
Strong knowledge of machine learning, computer vision and the underlying theories (pattern recognition, feature extraction and mapping, graph representations, deep learning, deep sequence models, time series analysis, etc.).
Self-motivated with an ability to work independently and to tight deadlines within a dynamic and team environment.
Ability to undertake research and development analysis.
Willingness and ability to learn quickly.
Problem-solving skills.
Excellent communication, report-writing and interpersonal skills: must be able to communicate effectively with various individuals from different backgrounds i.e. technical, academic, business and customers.
Ability to make informed decisions in a changing environment.
Experience
Able to present in both written & verbal form, with experience in delivering presentations to wider audiences.
Strong programming skills (e.g., Python, R, Matlab, Go, etc.) and scripting skills
DESIRABLE REQUIREMENTS
Qualifications
Masters or PhD degrees in related topics.
Knowledge
Knowledge of PHP and SQL.
Knowledge of packages used for machine learning (e.g., Scikit-learn, OpenCV, Keras, TensorFlow, PyTorch, etc.)
Interest in and commitment to supporting business growth opportunities in Aberdeen.
Understanding of remote inspection or Oil & Gas related practice.
Experience
Track record of scientific publications in related journals and conferences (e.g., IEEE, CVPR, others).
Experience in managing projects covering multiple aspects is desirable.
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