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PRODIGAL

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Proactive discovery of insider threats using graph analysis and learning
Establishment2011
SponsorDARPA
Value$9 million
GoalRapidly data mine large sets to discover anomalies

PRODIGAL (proactive discovery of insider threats using graph analysis and learning) is a computer system for predicting anomalous behavior among humans, by data mining network traffic such as emails, text messages and server log entries.[1] It is part of DARPA's Anomaly Detection at Multiple Scales (ADAMS) project.[2] The initial schedule is for two years and the budget $9 million.[3]

It uses graph theory, machine learning, statistical anomaly detection, and high-performance computing to scan larger sets of data more quickly than in past systems. The amount of data analyzed is in the range of terabytes per day.[3] The targets of the analysis are employees within the government or defense contracting organizations; specific examples of behavior the system is intended to detect include the actions of Nidal Malik Hasan and WikiLeaks source Chelsea Manning.[1] Commercial applications may include finance.[1] The results of the analysis, the five most serious threats per day, go to agents, analysts, and operators working in counterintelligence.[1][3][4]

Primary participants

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See also

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References

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  1. ^ a b c d "Video Interview: DARPA's ADAMS Project Taps Big Data to Find the Breaking Bad". Inside HPC. November 29, 2011. Retrieved December 5, 2011.
  2. ^ Brandon, John (December 3, 2011). "Could the U.S. Government Start Reading Your Emails?". Fox News. Archived from the original on December 3, 2011. Retrieved December 6, 2011.
  3. ^ a b c "Georgia Tech Helps to Develop System That Will Detect Insider Threats from Massive Data Sets". Georgia Institute of Technology. November 10, 2011. Retrieved December 6, 2011.
  4. ^ Storm, Darlene (December 6, 2011). "Sifting through petabytes: PRODIGAL monitoring for lone wolf insider threats". Computer World. Archived from the original on January 12, 2012. Retrieved December 6, 2011.