NSF's MRI programme serves to increase access to multi-user scientific and engineering instrumentation for research and research training in institutions of higher education and not-for-profit scientific/engineering research organisations in the United States. Hosted at the university, FAU's AIDL laboratory will be shared across multiple campuses and research disciplines and will significantly advance FAU's role in artificial intelligence and deep learning-based intelligent information analysis.
"This important National Science Foundation grant will enable us to create an infrastructure for a deep learning platform for health, web services, biomedicine and ocean research as well as other related domains at Florida Atlantic University", stated Stella Batalama, Ph.D., dean of FAU's College of Engineering and Computer Science. "This laboratory will provide a training hub for our university and industry partners to work closely on advancing artificial intelligence applications to stimulate South Florida's technical innovations and task force development, which will ultimately benefit economic growth in this region."
Artificial intelligence and deep learning are fast evolving and making significant strides to transform heavily regulated industries such as financial services, health care, and the life science industry as it relates to tissue engineering, cancer detection, and pervasive sensing. The cores of these applications are intensive computing and learning units, which feed data to repetitive training process and output reliable statistical/predictive models. In many cases, training is computationally demanding and takes days or months to have a well-trained deep learning model if carried out on traditional CPU-based systems. On the other hand, researchers in health, biomedical science, and various engineering fields often do not receive sufficient training in using the most powerful artificial intelligence and deep learning approaches. This is because these hardware and software platforms rarely are part of the information technology resources available for researchers outside the field of computer science.
"Our laboratory aims to close this gap and support computational intensive tasks in numerous domains and provide a great opportunity for investigators to address some of the most difficult challenges in their domains and significantly advance research in their fields", stated Xingquan (Hill) Zhu, Ph.D., principal investigator (PI) of the grant and a professor in FAU's Department of Computer and Electrical Engineering and Computer Science.
FAU's AIDL laboratory infrastructure features a graphics processing unit (GPU) cluster - a computer cluster that enables the performance of very fast calculations - and includes 18 GPU servers and 72 Nvidia Tesla V-100 GPU cards and a 38.4 Terabyte flash memory server. The GPU cards are among the world's best technology for artificial intelligence and deep learning. This project will nearly quadruple the number of GPU cards at FAU from 31 to 103 cards and will increase the onboard GPU memory six times from 381GB to 2,304 GB.
The platform will be shared across FAU's campuses, resulting in a centralized cross-campus interdisciplinary platform and augmented deep learning and related artificial intelligence tools for interdisciplinary research. The AIDL laboratory also will serve as the training and research platform to support graduate student teaching and research activities across multiple campuses, colleges, and disciplines as well as FAU's research pillars - FAU Brain Institute, FAU Biomedical Research Institute, I-Heal, FAU Institute for Sensing and Embedded Network Systems Engineering, I-SENSE, and FAU's Harbor Branch.
Spearheaded by Xingquan (Hill) Zhu, the project includes 12 investigators - co-PIs and senior personnel. Co-PI's of the project from FAU's Department of Computer and Electrical Engineering and Computer Science are Taghi Khoshgoftaar, Ph.D., Motorola professor; Dimitris Pados, Ph.D., professor, I-SENSE Fellow and Charles E. Schmidt Eminent Scholar in Engineering; and Hanqi Zhuang, Ph.D., associate chair and professor; and Laurent Cherubin, Ph.D., associate research professor in FAU's Harbor Branch.
Senior personnel for the project from FAU's Department of Computer and Electrical Engineering and Computer Science are Elias Bou-Harb, Ph.D., assistant professor and director of FAU's Cyber Threat Intelligence Laboratory and FloridaSOAR; Hari Kalva, Ph.D., associate chair and professor; Mehrdad Nojoumian, Ph.D., assistant professor; Yufei Tang, Ph.D., assistant professor and I-SENSE Fellow; and Dingding Wang, Ph.D., assistant professor. Representing FAU's Schmidt College of Medicine are Zhongwei Lei, Ph.D., director of faculty development and ombudsman, and Jang-yen (John) Wu, Ph.D., distinguished professor.