C3 AI Secures $13M Task Order to Enhance Predictive Maintenance for U.S. Air Force Fleet

Reuters
02 Jun
C3 AI Secures $13M Task Order to Enhance Predictive Maintenance for U.S. Air Force Fleet

C3 AI, the enterprise AI application software company, has announced the fulfillment of a $13 million task order from the United States Air Force $(USAF)$ Rapid Sustainment Office. This order is aimed at expanding the deployment of AI-enabled predictive maintenance systems across additional aircraft platforms. The task order marks the first under a recently awarded $450 million Production-Other Transaction Agreement. The initiative will enhance the USAF's predictive maintenance efforts through PANDA, a secure, integrated application developed in collaboration with C3 AI, designed for real-time analytics and data fusion to improve fleet readiness and availability.

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