Summaries - Office of Research & Innovation
Research Summaries
Back A Big Data and Deep Learning Model for the CSAAC RDK Cloud
Fiscal Year | 2016 |
Division | Graduate School of Operational & Information Sciences |
Department | Information Sciences |
Investigator(s) | Zhao, Ying |
Sponsor | Marine Corps Forces Cyberspace Command (Marine Corps) |
Summary | DISA has the needs to improve the Cyber Situational Awareness Analytic Capabilities (CSAAC) and speed of defensive response to the high rate of threats and exploitation for the network. The current technologies are dominated in Big Data and Deep Learning (BDDL) by systems that provide 1) safe storage, 2) parallel/operational processing, and 3) deep analytics including deep learning for pattern recognition, anomaly detection and data fusion. Deep learning and associated technologies are the trends of the commercial applications of Big Data. It is also the cornerstone for transforming big data into smart data for both commercial and military applications. It is important for CSAAC investing in BDDL now. In this study, we propose to explore how a BDDL framework to automatically monitor and recognize the signatures, patterns and anomalies. We will first identify data sources, design a BDDL ad build a use case to apply the BDDL framework for data fusion, pattern recognition, and anomaly detection. |
Keywords | Big Data Deep Learning cyber situation awareness logistics cyber security |
Publications | Publications, theses (not shown) and data repositories will be added to the portal record when information is available in FAIRS and brought back to the portal |
Data | Publications, theses (not shown) and data repositories will be added to the portal record when information is available in FAIRS and brought back to the portal |