Artificial intelligence in the intelligence cycle
Intelligence flows through experts, analysts, and management throughout the IC through a five-step "cycle": planning and direction; collection; processing; analysis and production; and dissemination (see figure below).
The value of the output throughout the cycle, including the finished intelligence
that analysts deliver to decision makers, is largely determined by the technologies
and processes used, including those that leverage artificial intelligence.
Technologies
such as unmanned aerial systems, remote sensors, advanced surveillance aircraft, the
Internet, computers and other systems have hypernormalized the collection process to
the point that analysts often have more data than they can process.
Getting
more data should be a good thing. But without the ability to fuse and process data,
data can overwhelm analysts with mountains of disconnected information. The director
of the National Geospatial-Intelligence Agency said that if trends hold,
intelligence organizations may soon need more than 8 million imagery analysts, more
than five times the total number of top-secret clearances across the entire
government. In the modern digital age, success in warfare depends on a nation's
ability to analyze information faster and more accurately than its adversary, and
data must be analyzed.
Artificial intelligence can provide much-needed
support. Intelligence agencies are already harnessing the power of artificial
intelligence to sort through vast amounts of data to extract key "knowns" for
further analysis. For example, agencies have used artificial intelligence to
automatically identify and tag patterns in vehicles to identify SA-21 surface-to-air
missile batteries, or to sift through millions of financial transactions for
patterns consistent with illicit arms smuggling. Likewise, the Joint Artificial
Intelligence Center is already working to develop products covering "combat
intelligence fusion, joint all-domain command and control, accelerated
sensor-to-shooter timelines, autonomous and swarm systems, targeting development,
and operations center workflows."
When analyzed, artificial intelligence
operating with these capabilities can save analysts time and increase output. While
the exact time savings depend on the type of work performed, an all-source analyst
backed by an artificial intelligence system can save as much as 364 hours or more
than 45 workdays per year. These time savings can free up analysts to spend on
higher priority tasks, or build skills through additional training, among other
activities.