Muhammad Atif Quereshi is a post doctoral researcher based with the ADAPT Centre in Trinity College Dublin.
Before joining ADAPT, he has worked as a senior postdoctoral researcher in CeADAR, UCD, and contributed to the project defined under by market-led research. Before CeADAR, Atif was a postdoctoral researcher based at Insight Centre for Data Analytics, UCD and made contributions in the fundamental research along with a project related to news analytics. He has authored over 40 research publications, and his areas of interests are text mining, knowledge graphs, information retrieval, machine learning, and predictive maintenance. Among his noticeable contributions, EVE is the first-ever explainable embedding technique which has a mention on the Wikipedia article of Word Embedding. Atif holds a joint PhD from National University of Ireland Galway (Ireland) and University of Milano-Bicocca (Italy) in Computer Science, an MS degree in Computer Science from Korea Advanced Institute of Science and Technology, South Korea and BS in Computer Science from the University of Karachi (Pakistan).
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