Naval Intelligence Professionals (NIP). Awarded for the highest level of achievement in the Honors Program at the United States Naval Academy; Rear Admiral Donald M.
Programs - Machine Learning, Reasoning and Intelligence Program. The Office of Naval Research (ONR) Machine Learning, Reasoning and Intelligence program is concerned with building intelligent agents that can function in the environments in which warfighters operate, that is, environments that are unstructured, open, complex and dynamically changing. Agents (cyber or physical) do not yet have the level of intelligence needed to operate in such open, uncertain and unpredictable environments either independently or alongside warfighters.
Directory of United States Navy Commissioning Program requirements for each officer designator based on the current BUPERS program authorization. Intelligence Officer Candidate Program Indoctrination The two-week Direct Commission Officer Indoctrination Course Naval Intelligence Officer Basic Course (20 weeks) Intelligence Officer Qualification Program (48-60 months). In Part One, I laid the groundwork for the fact that Operation Paper Clip. Before going any further, I want to thank Steve Quayle and three readers for validating yesterday’s presentation of facts. Steve publicly noted that. The official site of the Office of Naval Intelligence.
The program's main objectives are to develop principles of machine intelligence, efficient computational methods, algorithms and tools for building versatile smart agents that can perform missions autonomously with minimal human supervision and collaborate seamlessly with teams of warfighters and other agents. Program focus areas include the following thrusts.
The following are of particular interest. Some suggested topics of interest are: (a) Methods for building knowledge bases from diverse sources; (b) Learning complex concepts and tasks from examples, instructions, and demonstrations; (c) Reasoning with uncertain and qualitative information, as well as methods for meta- reasoning for self- assessment; (d) Planning in large domains in partially known environments and incompletely modeled goals and domains; (e) Intelligent architectures that seamlessly integrate knowledge- bases, learning, reasoning, and planning, for decision- making. Some suggested topics of interest are: (a) Computational methods for building decentralized collaborating teams of autonomous agents, in particular agents that are fairly capable in terms of sensing, communication and computational resources; (b) Mathematical theories of swarm control, particularly engineered swarms with desired behaviors. Some suggested topics of interest are: (a) Multi- modal, multi- participant, human- agent dialogue systems for seamless interactions that are natural to humans; (b) Computational models of human behavior and decision- making for use by autonomous agents.
The main focus is on reconstructing 3. D scenes, recognizing object classes and specific objects, recognizing activities and events, inferring intentions, as well as succinct natural language descriptions of images and video. Of particular interest is developing visual representations, methods for building visual knowledge bases optimized for inference, and methods for integrating reasoning with high- level knowledge and image data. Note: Proposers are encouraged to contact the program officer to discuss their research interest prior to the submission of formal proposals.