Course Outline

  • Backpropagation and modular models for government
  • Logsum module for government
  • RBF Network for government
  • MAP/MLE loss functions for government
  • Parameter space transformations for government
  • Convolutional modules for government
  • Gradient-based learning techniques for government
  • Energy methods for inference in government applications
  • Objectives for learning in government systems
  • Principal Component Analysis (PCA) and Negative Log-Likelihood (NLL) for government
  • Latent variable models for government data analysis
  • Probabilistic latent variable models for government use
  • Loss functions tailored for government applications
  • Handwriting recognition technologies for government operations

Requirements

A solid foundation in basic machine learning is essential. Proficiency in programming, preferably in languages such as Python or R, is required for government applications and projects.
 21 Hours

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