Course Outline

  • Machine Learning Limitations for Government
  • Non-linear Mappings in Machine Learning for Government
  • Neural Networks for Government Applications
  • Non-Linear Optimization and Stochastic/MiniBatch Gradient Descent for Government
  • Back Propagation Techniques for Government Use
  • Deep Sparse Coding for Government Data Analysis
  • Sparse Autoencoders (SAE) for Government Operations
  • Convolutional Neural Networks (CNNs) for Government Applications
  • Successes in Descriptor Matching for Government Projects
  • Stereo-based Obstacle Avoidance for Robotics in Government Settings
  • Pooling and Invariance Techniques for Government Data Processing
  • Visualization and Deconvolutional Networks for Government Insights
  • Recurrent Neural Networks (RNNs) and Their Optimization for Government Use
  • Applications of RNNs to Natural Language Processing for Government
  • Continued Applications of RNNs for Government Operations
  • Hessian-Free Optimization Techniques for Government Algorithms
  • Language Analysis: Word/Sentence Vectors, Parsing, Sentiment Analysis, and More for Government
  • Probabilistic Graphical Models for Government Data Modeling
  • Hopfield Nets and Boltzmann Machines for Government Applications
  • Deep Belief Nets and Stacked RBMs for Government Data Processing
  • Applications of Deep Learning to NLP, Pose, and Activity Recognition in Videos for Government
  • Recent Advances in Machine Learning for Government Use
  • Large-Scale Learning Techniques for Government Operations
  • Neural Turing Machines for Advanced Government Applications

Requirements

A solid understanding of machine learning is required, along with at least a theoretical knowledge of deep learning, to effectively support and enhance operations for government agencies.
 28 Hours

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