Research directions in blockchain data management and analytics
Hoang Tam Vo, Ashish Kundu, et al.
EDBT 2018
Wildfires have been a significant concern for communities and fire response agencies in many countries. Hence, it is critical to be able to predict the fire risk in a timely and accurate manner and at granular level. However, this requires accessing and processing large amounts of spatial and temporal data from a number of sources in near real-time, while ensuring the immediate availability of risk measurement results. In this paper, we describe a large-scale data-driven system for personalized risk mitigation, fire response's resource optimization and dynamic evacuation planning. It leverages large spatial and temporal datasets to provide predictive analytics in near real-time and to deliver tailored insights to government agencies, communities and individuals.
Hoang Tam Vo, Ashish Kundu, et al.
EDBT 2018
Mahsa Salehi, Christopher Leckie, et al.
IEEE TKDE
Mahsa Salehi, Christopher Leckie, et al.
ICDE 2017
Ziyuan Wang, Dain Yap Liffman, et al.
CIKM 2018