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Course Outline

Current state of the technology

  • What is currently in use
  • What may be potentially adopted

Rules-based AI

  • Simplifying decision-making processes

Machine Learning

  • Classification
  • Clustering
  • Neural Networks
  • Types of Neural Networks
  • Presentation of working examples and discussion

Deep Learning

  • Basic vocabulary
  • When to use Deep Learning and when not to
  • Estimating computational resources and cost
  • A very brief theoretical background to Deep Neural Networks

Deep Learning in practice (mainly using TensorFlow)

  • Preparing data
  • Choosing a loss function
  • Selecting the appropriate type of neural network
  • Balancing accuracy, speed, and resources
  • Training the neural network
  • Measuring efficiency and error

Sample usage

  • Anomaly detection
  • Image recognition
  • ADAS

Requirements

Participants are expected to have programming experience in any language and an engineering background. However, no coding is required during the course.

 14 Hours

Number of participants


Price per participant

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