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    Deep Learning: Recurrent Neural Networks with Python

    Posted By: IrGens
    Deep Learning: Recurrent Neural Networks with Python

    Deep Learning: Recurrent Neural Networks with Python
    ISBN: 9781801079167 | .MKV, AVC, 1920x1080, 30 fps | English, AAC, 2 Ch | 11h 2m | 10.51 GB
    Created by AI Sciences OÜ

    One-stop shop for understanding and implementing recurrent neural networks with Python

    Key Features

    Understand and apply basics fundamentals of recurrent neural networks
    Implement RNNs and related architectures on real-world datasets
    Train RNNs for real-world applications—automatic book writer and stock price prediction

    What You Will Learn

    Gain an overview of deep neural networks
    Understand the fundamentals of RNN architectures
    Train real-world datasets using different RNN architectures
    Implement RNNs, LSTM, and GRUs through hands-on exercises
    Create and compile RNN models in TensorFlow
    Perform text classification using RNNs and TensorFlow

    About

    With the exponential growth of user-generated data, there is a strong need to move beyond standard neural networks in order to perform tasks such as classification and prediction. Here, architectures such as RNNs, Gated Recurrent Units (GRUs), and Long Short Term Memory (LSTM) are the go-to options. Hence, for any deep learning engineer, mastering RNNs is a top priority.

    This course begins with the basics and will gradually equip you with not only the theoretical know-how but also the practical skills required to successfully build, train, and implement RNNs. This course contains several exercises on topics such as gradient descents in RNNs, GRUs, LSTM, and so on. This course also introduces you to implementing RNNs using TensorFlow.

    The course culminates in creating two exciting and realistic projects: creating an automatic book writer and a stock price prediction application. By the end of this course, you will be equipped with all the skills required to confidently use and implement RNNs in your applications.

    The code bundle for this course is available at https://github.com/AISCIENCES/mastering_recurrent_neural_networks


    Deep Learning: Recurrent Neural Networks with Python