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The U.S. Navy uses machine learning (ML) models for underwater target threat detection by unmanned underwater vehicles (UUV). However, without a way to monitor and improve ML model performance at scale, models were slow to adapt to changing underwater conditions or enemy tactics - unable to “learn” based on recent field activity. The Navy partnered with the Defense Innovation Unit (DIU) as part of Project Automatic Target Recognition using Machine Learning Operations (MLOps) for Maritime Operations (AMMO).
The AMMO MLOps pipeline decreased the time needed for ML model updates from six months to a few days, enabling the Navy to quickly retrain and deploy automatic target recognition (ATR) models at the speed of operational relevance. Domino Data Lab’s modular, open, and extensible AI platform serves as the factory for integrating commercial technologies from Weights and Biases and Fiddler.ai - providing the governance and flexibility for distributed teams to deploy models faster with built-in observability and reduced time-to-impact.
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Created in 2009, the Oregon Health Authority (OHA) is charged with increasing access to affordable, high-quality healthcare to all Oregonians. The multitude of initiatives and programs coordinated by the Oregon Health Authority, including Behavioral Health Services, requires processing a constant stream of complex contracts—covering everything from provider agreements with individual clinicians to massive contracts with statewide coordinated care organizations. Approving and filing these agreements involves a network of processes that reach beyond OHA’s boundaries and into other state agencies.
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