Dr Umair Ul Hassan

Lecturer of Business Analytics & Society; Programme Director MSc Information Systems Management

J.E. Cairnes School of Business and Economics, University of Galway

SDG logo
white clouds and blue skies
Dr Umair UI Hassan

Umair's work focuses on design, development and study of systems, using technologies such as artificial intelligence AI, collective intelligence, database and information systems, to solve interesting business problems and to address societal challenges. Umair has been a Fellow in LERO and Principal Investigator for the SHAREPAIR and ENEPORTS projects with Insight Centre for Data Analytics. He has also worked on research and innovation projects funded by the European Commission, Enterprise Ireland, and Science Foundation Ireland.

Umair's work contributes to these SDGs

SDG 6,7,8,9,11,12,17

Umair is Principal Investigator on the EU funded ENEPORTS - Decarbonization and Digitalization of Atlantic ports. ENEPORTS  examines how ports in the Atlantic Area are transforming towards digitalized green energy “laboratories”, preparing to supply clean electricity to ships and to their concessionaires (including blue/green energy manufacturers), and to facilitate testing and connection of renewable energy prototypes, taking advantage of local resources and proximity to the sea.  ENEPORTS will examine how digitalization and AI can contribute to manage energy flows and decarbonization.

Target 7.A - Promote access to research, technology and investments in clean energy

Target 12.5 - Substantially reduce waste generation

Umair was Principal Investigator on the EU funded SHAREPAIR Digital Support Infrastructure for Citizens in the Repair Economy project.

SDG 12

Teaching

Umair teaches mainly technical modules such as networks and communication and advanced programming for data analytics. He endeavors where possible to give students the opportunity to use these skills to examine sustainability oriented questions. Using publicly available datasets to explore topics including sustainable purchasing, and product lifecycles.

Supporting Target: 17.18 - Enhance availability of reliable data

Trust in AI reflecting his extensive project and publication experience of artificial intelligence Umair lectures on Trust and AI to Law students at the school each year.

Supporting Target 17.6 - Knowledge sharing and cooperation for access to science, technology and innovation

Engagement

Umair's work has always has a strong public engagement focus, especially the ShareRepair project. His work has also featured a federated learning approach, describing an emerging area of data research with applications for manufacturing and Industry 4.0 in particular. Federated learning draws data from a multitude of IoT devices using a crowdsourcing approach. Finding that the true potential of federated learning can only be realised if we have a dynamic and open ecosystem where devices, industrial units, machine manufacturers, non-governmental agencies and governmental entities can contribute toward learning for multiple tasks and objectives in a crowdsourced manner.

Direct impact SDG Targets

6.4 - Increase water-use efficiency and ensure freshwater supplies

6.5 - Implement integrated water resources management

7.3 - Double the improvement in energy efficiency

7.A - Promote access to research, technology and investments in clean energy

8.6 - Promote youth employment, education and training

9.5 - Enhance research and upgrade industrial technologies

9.C - Universal access to information and communications technology

11.2 - Affordable and sustainable transport systems

12.5 - Substantially reduce waste generation

17.6 - Knowledge sharing and cooperation for access to science, technology and innovation

17.18 - Enhance availability of reliable data

SDG wheel

Umair's research has included but is not limited to Big Data Value Ecosystem (BDVe), Transforming Transport (TT), ICT for Water Resource Management (Waternomics), and Big data roadmap and cross-disciplinary community for addressing society externalities (BYTE).

computer code in many colours

Photo by Markus Spiske on Unsplash

Photo by Markus Spiske on Unsplash

Research

a city square with flowers and a clock tower in the background

Photo by Daniel Zbroja on Unsplash

Photo by Daniel Zbroja on Unsplash

Featured Publications

Reference

SDG

ul Hassan, U., Curry, E. (2021). Stakeholder analysis of data ecosystems. The Elements of Big Data Value: Foundations of the Research and Innovation Ecosystem,21-39

SDG 16

Mansoor, H., Ali, S., Alam, S. and 3 more (...) (2022). Impact Of Missing Data Imputation On The Fairness And Accuracy Of Graph Node Classifiers. Proceedings - 2022 IEEE International Conference on Big Data, Big Data 2022,5988-5997

SDG 10

Ullah, I., Hassan, U.U., Ali, M.I. (2022). Multi-level Federated Learning for Industry 4.0 - A Crowdsourcing Approach. Procedia Computer Science,217423-435

SDG 9| SDG 12| SDG 13| SDG 17

Curry, E., Derguech, W., Hasan, S. and 2 more (...) (2019).A Real-time Linked Dataspace for the Internet of Things: Enabling “Pay-As-You-Go” Data Management in Smart Environments. Future Generation Computer Systems,90405-422

SDG 6| SDG 7

Curry, E., Hasan, S., Kouroupetroglou, C. and 3 more (...) (2018). Internet of Things Enhanced User Experience for Smart Water and Energy Management. IEEE Internet Computing,22(1) 18-28

SDG 6| SDG 7| SDG 11

Curry, E., Derguech, W., Hasan, S. and 3 more (...) (2019). Building Internet of Things-Enabled Digital Twins and Intelligent Applications Using a Real-time Linked Dataspace. Real-time Linked Dataspaces: Enabling Data Ecosystems for Intelligent Systems,255-270

SDG 6| SDG 7| SDG 11

Curry, E., Fabritius, W., Hasan, S. and 3 more (...) (2019). A Model for Internet of Things Enhanced User Experience in Smart Environments. Real-time Linked Dataspaces: Enabling Data Ecosystems for Intelligent Systems,271-294

SDG 6| SDG 7| SDG 11

Thanks for reading