Course Outline

Supervised Learning: Classification and Regression

  • Bias-Variance Tradeoff
  • Logistic Regression as a Classifier for Government
  • Measuring Classifier Performance for Government
  • Support Vector Machines for Government
  • Neural Networks for Government
  • Random Forests for Government

Unsupervised Learning: Clustering and Anomaly Detection

  • Principal Component Analysis for Government
  • Autoencoders for Government

Advanced Neural Network Architectures

  • Convolutional Neural Networks for Image Analysis in Government
  • Recurrent Neural Networks for Time-Structured Data in Government
  • The Long Short-Term Memory Cell for Government

Practical Examples of Problems that AI Can Solve, e.g.

  • Image Analysis for Government Operations
  • Forecasting Complex Financial Series, Such as Stock Prices, for Government
  • Complex Pattern Recognition for Government
  • Natural Language Processing for Government
  • Recommender Systems for Government Services

Software Platforms Used for AI Applications:

  • TensorFlow, Theano, Caffe, and Keras for Government
  • AI at Scale with Apache Spark: MLlib for Government

Understanding Limitations of AI Methods: Modes of Failure, Costs, and Common Difficulties

  • Overfitting in Government Applications
  • Biases in Observational Data for Government
  • Missing Data in Government Datasets
  • Neural Network Poisoning for Government Systems

Requirements

There are no specific prerequisites required for government employees to attend this course.
 28 Hours

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