scholarly journals Operations (Management) warp speed: Rapid deployment of hospital‐focused predictive/prescriptive analytics for the COVID‐19 pandemic

Author(s):  
Pengyi Shi ◽  
Jonathan E. Helm ◽  
Christopher Chen ◽  
Jeff Lim ◽  
Rodney P. Parker ◽  
...  
2016 ◽  
Vol 64 (S 01) ◽  
Author(s):  
R. Malik ◽  
M. Roosta-Azad ◽  
H. Bigdeli ◽  
A. Zandi ◽  
H. Holst ◽  
...  

Author(s):  
B. Aparna ◽  
S. Madhavi ◽  
G. Mounika ◽  
P. Avinash ◽  
S. Chakravarthi

We propose a new design for large-scale multimedia content protection systems. Our design leverages cloud infrastructures to provide cost efficiency, rapid deployment, scalability, and elasticity to accommodate varying workloads. The proposed system can be used to protect different multimedia content types, including videos, images, audio clips, songs, and music clips. The system can be deployed on private and/or public clouds. Our system has two novel components: (i) method to create signatures of videos, and (ii) distributed matching engine for multimedia objects. The signature method creates robust and representative signatures of videos that capture the depth signals in these videos and it is computationally efficient to compute and compare as well as it requires small storage. The distributed matching engine achieves high scalability and it is designed to support different multimedia objects. We implemented the proposed system and deployed it on two clouds: Amazon cloud and our private cloud. Our experiments with more than 11,000 videos and 1 million images show the high accuracy and scalability of the proposed system. In addition, we compared our system to the protection system used by YouTube and our results show that the YouTube protection system fails to detect most copies of videos, while our system detects more than 98% of them.


MECOSAN ◽  
2014 ◽  
pp. 55-69
Author(s):  
Alessandro Agnetis ◽  
Alberto Coppi ◽  
Matteo Corsini ◽  
Gabriella Dellino ◽  
Carlo Meloni ◽  
...  

Sign in / Sign up

Export Citation Format

Share Document