The Complete Recurrent Neural Network with Python Course

latent Dirichlet allocation, out-of-core learning, LSTM, and so much more

Ratings 5.00 / 5.00
The Complete Recurrent Neural Network with Python Course

What You Will Learn!

  • Text analysis
  • Image analysis
  • Embedding layers
  • Word embedding
  • Long short-term memory models
  • Sequence-to-vector models
  • Vector-to-sequence models
  • Bi-directional LSTM
  • Sequence-to-sequence models
  • Transforming words into feature vectors
  • frequency-inverse document frequency
  • Cleaning text data
  • Processing documents into tokens
  • Topic modeling with latent Dirichlet allocation
  • Decomposing text documents with LDA
  • Autoencoder
  • Numpy
  • Pandas
  • Tensorflow
  • Sentiment Analysis
  • Matplotlib
  • out-of-core learning

Description

Interested in the field of Machine Learning, Deep Learning, and Artificial Intelligence? Then this course is for you!

This course has been designed by a software engineer. I hope with the experience and knowledge I did gain throughout the years, I can share my knowledge and help you learn complex theories, algorithms, and coding libraries in a simple way.

I will walk you step-by-step into Deep Learning. With every tutorial, you will develop new skills and improve your understanding of this challenging yet lucrative sub-field of Data Science.

This course is fun and exciting, but at the same time, we dive deep into Recurrent Neural Network. Throughout the brand new version of the course, we cover tons of tools and technologies including:

  • Deep Learning.

  • Google Colab

  • Keras.

  • Matplotlib.

  • Splitting Data into Training Set and Test Set.

  • Training Neural Network.

  • Model building.

  • Analyzing Results.

  • Model compilation.

  • Make a Prediction.

  • Testing Accuracy.

  • Confusion Matrix.

  • ROC Curve.

  • Text analysis.

  • Image analysis.

  • Embedding layers.

  • Word embedding.

  • Long short-term memory (LSTM) models.

  • Sequence-to-vector models.

  • Vector-to-sequence models.

  • Bi-directional LSTM.

  • Sequence-to-sequence models.

  • Transforming words into feature vectors.

  • frequency-inverse document frequency.

  • Cleaning text data.

  • Processing documents into tokens.

  • Topic modelling with latent Dirichlet allocation

  • Decomposing text documents with LDA.

  • Autoencoder.

  • Numpy.

  • Pandas.

  • Tensorflow.

  • Sentiment Analysis.

  • Matplotlib.

  • out-of-core learning.

  • Bi-directional LSTM.


Moreover, the course is packed with practical exercises that are based on real-life examples. So not only will you learn the theory, but you will also get some hands-on practice building your own models. There are several projects for you to practice and build up your knowledge. These projects are listed below:

  • Bitcoin Prediction

  • Stock Price Prediction

  • Movie Review sentiment

  • IMDB Project.

  • MNIST Project.


Who Should Attend!

  • Anyone interested in Deep Learning, Machine Learning and Artificial Intelligence
  • Students who have at least high school knowledge in math and who want to start learning Machine Learning, Deep Learning, and Artificial Intelligence
  • Any data analysts who want to level up in Machine Learning, Deep Learning and Artificial Intelligence.
  • Anyone passionate about Artificial Intelligence
  • Data Scientists who want to take their AI Skills to the next level

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Tags

  • Deep Learning

Subscribers

110

Lectures

39

TAKE THIS COURSE



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