Neural networks made easy (Part 23): Building a tool for Transfer Learning
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, 10-19-2022 at 10:07 PM (384 Views)
more...We continue our immersion in the world of artificial intelligence. What is Transfer Learning and why do we need it? Transfer Learning is a machine learning method in which the knowledge of a model trained to solve one problem is reused as a basis for solving new problems. Of course, to solve new problems, the model is preliminarily additionally trained on new data. In the general case, with a properly selected donor model, additional training runs much faster and with better results than training a similar model from scratch.
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- Neural networks made easy
- Neural networks made easy (Part 2): Network training and testing
- Neural networks made easy (Part 3): Convolutional networks
- Neural networks made easy (Part 4): Recurrent networks
- Neural networks made easy (Part 5): Multithreaded calculations in OpenCL
- Neural networks made easy (Part 6): Experimenting with the neural network learning rate
- Neural networks made easy (Part 7): Adaptive optimization methods
- Neural networks made easy (Part 8): Attention mechanisms
- Neural networks made easy (Part 9): Documenting the work
- Neural networks made easy (Part 10): Multi-Head Attention
- Neural networks made easy (Part 11): A take on GPT
- Neural networks made easy (Part 12): Dropout
- Neural networks made easy (Part 13): Batch Normalization
- Neural networks made easy (Part 14): Data clustering
- Neural networks made easy (Part 15): Data clustering using MQL5
- Neural networks made easy (Part 16): Practical use of clustering
- Neural networks made easy (Part 17): Dimensionality reduction
- Neural networks made easy (Part 18): Association rules
- Neural networks made easy (Part 19): Association rules using MQL5
- Neural networks made easy (Part 20): Autoencoders
- Neural networks made easy (Part 21): Variational autoencoders (VAE)
- Neural networks made easy (Part 22): Unsupervised learning of recurrent models .....
- Neural networks made easy (Part 23): Building a tool for Transfer Learning