NEURAL NETWORKS

Neural Networks are at the core of the Deep Learning

Several important types of ANN (Articial Neural Nets) that form the basis for most pre-trained models in Deep Learning:

  • Multilayer Perceptrons (MLP)
  • Feed-Forward Neural Nets (FFNN)
  • Convolution Neural Nets (CNN)
  • Recurrent Neural Nets (RNN)
  • Residual Neural Nets (RESNET)
  • Hybrid Net Models
  • Restricted Boltzmann machine (RBM)
  • Deep Belief (DBN)
  • and Others …

Training & Learning Phase

All the ANN need to be trained to become efficient.

  • Select the data: Split data into three groups as training, validation and test data.
  • Model the data: use the training data to build the model using relevant features
  • Validate the data: Assess the model with your validation data
  • Tune Model: Improve the model with more data different features and adjustments of parameters
  • Use the Model: make predictions on the model with new data
  • Test the Model: check performances of the validated model with test data.

Deep Learning Frameworks

The use of open tools & workflows to enhance automation and reuse

The open standard for machine learning interoperability

Open Neural Network Exchange (ONNX) format files to exchange between differents platforms. A common file format to enable AI developers to use models with a variety of frameworks, tools, runtimes, and compilers.

The best-known programming languages


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