We covered a lot of different things in this chapter. We started by learning the basics of a neural network and then we gradually proceeded. We learned the two most powerful types of neural networks used today—CNNs and RNNs—and we also learned about them on a high level, but without skipping their foundational units. We learned that as the complexity in a neural network increases, it requires a lot of computational power, which standard computers may fail to cater for we saw how this problem can be overcome by configuring a deep learning development environment using two different providers—AWS and Crestle. We explored Jupyter Notebooks, a powerful tool for performing deep learning tasks. We learned about the usage of two very popular Python libraries—NumPy and pandas. Both of these libraries are extensively used when performing deep learning...
United States
Great Britain
India
Germany
France
Canada
Russia
Spain
Brazil
Australia
South Africa
Thailand
Ukraine
Switzerland
Slovakia
Luxembourg
Hungary
Romania
Denmark
Ireland
Estonia
Belgium
Italy
Finland
Cyprus
Lithuania
Latvia
Malta
Netherlands
Portugal
Slovenia
Sweden
Argentina
Colombia
Ecuador
Indonesia
Mexico
New Zealand
Norway
South Korea
Taiwan
Turkey
Czechia
Austria
Greece
Isle of Man
Bulgaria
Japan
Philippines
Poland
Singapore
Egypt
Chile
Malaysia