非常抱歉,
你要访问的页面不存在,
非常抱歉,
你要访问的页面不存在,
非常抱歉,
你要访问的页面不存在,
验证码:
职称:Professor
所属学校:University of California-Santa Barbara
所属院系:Computer Science Department
所属专业:Computer Science
联系方式:(805) 893-4385
Dr. Divyakant Agrawal is a Professor of Computer Science and the Director of Engineering Computing Infrastructure at the University of California at Santa Barbara. His research expertise is in the areas of database systems, distributed computing, data warehousing, and large-scale information systems. During his professional career, Dr. Agrawal has served on numerous Program Committees of International Conferences, Symposia, and Workshops and served as an editor of the journal of Distributed and Parallel Databases (1993-2008), and the VLDB journal (2003-2008). He currently serves as the Editor-in-Chief of Distributed and Parallel Databases and is on the editorial boards of the ACM Transactions on Database Systems, ACM Transactions on Spatial Algorithms and Systems, ACM Books, and IEEE Transactions of Knowledge and Data Engineering. He has recently been elected to the Board of Trustees of the VLDB Endowment and elected to serve on the Executive Committee of ACM Special Interest Group SIGSPATIAL. Dr. Agrawal's research philosophy is to develop data management solutions that are theoretically sound and are relevant in practice. He has published more than 350 research manuscripts in prestigious forums (journals, conferences, symposia, and workshops) on wide range of topics related to data management and distributed systems and has advised more than 35 Doctoral students during his academic career. He received the 2011 Outstanding Graduate Mentor Award from the Academic Senate at UC Santa Barbara. Recently, Dr. Agrawal has been recognized as an Association of Computing Machinery (ACM) Distinguished Scientist in 2010 and was inducted as an ACM Fellow in 2012. He has also been inducted as a Fellow of IEEE in 2012. His current interests are in the area of scalable data management and data analysis in Cloud Computing environments, security and privacy of data in the cloud, and scalable analytics over social networks data and social media.