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Home » Research » Artificial Intelligence

Artificial Intelligence

SIFT has gathered extensive experience in multiple areas in the field of artificial intelligence, including transfer/reinforcement/deep learning, automated planning, intent recognition and natural language processing. Many of our projects can be characterized as employing both AI techniques and other, more domain specific approaches.

Research Evolution

  • SCORE

    Systematizing Confidence in Open Research and Evidence
  • ASIST

    Artificial Social Intelligence for Successful Teams (ASIST)
  • A-Team

    Army Advanced Teaming
  • ACUMEN

    Analyzing Cultural Motif Effects in Networks
  • M-PRIMUS

    Mission Planning for Resources in Integrated Mixed Undersea Systems
  • CPS

    Creative Problem Solver
  • SD2

    Synergistic Discovery and Design
  • REPAIR

    Resilient Emergent Properties for Autonomous Agent InteRactions
  • DistrO

    Distributed Operations
  • FuzzBomb

    FuzzBomb
  • CLiC

    Communicating in Language-Integrated Context
  • Marshal

    Marshal
  • R3

    Reading, Reasoning, and Reporting
  • STRIDER

    Semantic Targeting of Relevant Individuals, Dispositions, Events, and Relations
  • FuzzBuster

    FuzzBuster
  • HAMMER

    Highly Autonomous Mission Manager for Event Response
  • SAFE-P

    System for Assurance of Flight Executable Procedures
  • Kulit

    A Workflow for High Resolution Communication
  • Deep Green

    Deep Green
  • YAPPR

    Yet Another Probabilistic Plan Recognizer
  • IL

    Integrated Learning

Researchers

  • Michael Pelican
  • Jeffrey Rye
  • Sonja Schmer-Galunder
  • Dan Thomsen
  • Mark Valovage
  • Phillip Walker

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Publications

  • Solving POMDPs online through HTN Planning and Monte Carlo Tree Search
  • Discovering Meaningful Labelings for RTS Game Replays via Replay Embeddings
  • Combinatory Categorial Grammar Learning for Plan Recognition in Domains with Type Trees
  • Extending Biology Models with Deep NLP over Scientific Articles
  • Embedding planning technology into satellite systems

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