Deep Learning 2 Manuscripts - Deep Learning With Keras And Convolutional Neural Networks In Python

Category: Uncategorized

Tag: Database/SQL


Posted on 2019-01-15, by nokia241186.

Description




Deep Learning: 2 Manuscripts - Deep Learning With Keras And Convolutional Neural Networks In Python by Frank Millstein
English | March 20, 2018 | ASIN: B07BLX93F2 | 260 pages | AZW3 | 0.43 MB



This book will introduce you to various supervised and unsupervised deep learning algorithms like the multilayer perceptron, linear regression and other more advanced deep convolutional and recurrent neural networks. You will also learn about image processing, handwritten recognition, object recognition and much more.
Furthermore, you will get familiar with recurrent neural networks like LSTM and GAN as you explore processing sequence data like time series, text, and audio.
The book will definitely be your best companion on this great deep learning journey with Keras introducing you to the basics you need to know in order to take next steps and learn more advanced deep neural networks.
Here Is a Preview of What You'll Learn Here...
The difference between deep learning and machine learningDeep neural networksConvolutional neural networksBuilding deep learning models with KerasMulti-layer perceptron network modelsActivation functionsHandwritten recognition using MNISTSolving multi-class classification problemsRecurrent neural networks and sequence classificationAnd much more...
Convolutional Neural Networks in Python
This book covers the basics behind Convolutional Neural Networks by introducing you to this complex world of deep learning and artificial neural networks in a simple and easy to understand way. It is perfect for any beginner out there looking forward to learning more about this machine learning field.
This book is all about how to use convolutional neural networks for various image, object and other common classification problems in Python. Here, we also take a deeper look into various Keras layer used for building CNNs we take a look at different activation functions and much more, which will eventually lead you to creating highly accurate models able of performing great task results on various image classification, object classification and other problems.
Therefore, at the end of the book, you will have a better insight into this world, thus you will be more than prepared to deal with more complex and challenging tasks on your own.
Here Is a Preview of What You'll Learn In This Book...
Convolutional neural networks structureHow convolutional neural networks actually workConvolutional neural networks applicationsThe importance of convolution operatorDifferent convolutional neural networks layers and their importanceArrangement of spatial parametersHow and when to use stride and zero-paddingMethod of parameter sharingMatrix multiplication and its importancePooling and dense layersIntroducing non-linearity relu activation functionHow to train your convolutional neural network models using backpropagationHow and why to apply dropoutCNN model training processHow to build a convolutional neural networkGenerating predictions and calculating loss functionshow to train and evaluate your MNIST classifierHow to build a simple image classification CNNAnd much, much more!






DOWNLOAD
(Buy premium account for maximum speed and resuming ability)







Sponsored High Speed Downloads
8957 dl's @ 2134 KB/s
Download Now [Full Version]
6183 dl's @ 2178 KB/s
Download Link 1 - Fast Download
9501 dl's @ 2549 KB/s
Download Mirror - Direct Download



Search More...
Deep Learning 2 Manuscripts - Deep Learning With Keras And Convolutional Neural Networks In Python

Search free ebooks in ebookee.com!


Related Archive Books

Archive Books related to "Deep Learning 2 Manuscripts - Deep Learning With Keras And Convolutional Neural Networks In Python":



Links
Download this book

No active download links here?
Please check the description for download links if any or do a search to find alternative books.


Related Books

  1. Ebooks list page : 38693
  2. 2019-01-07Deep Learning 2 Manuscripts - Deep Learning With Keras And Convolutional Neural Networks In Python
  3. 2021-06-24Packt Sentiment Analysis through Deep Learning with Keras and Python-ZH
  4. 2020-05-30Deep Learning With Keras And Tensorflow In Python And R
  5. 2020-04-01Deep Learning with Keras and Tensorflow in Python and R
  6. 2020-03-31Deep Learning with Keras and Tensorflow in Python and R
  7. 2020-03-01Next-Generation Machine Learning with Spark: Covers XGBoost, LightGBM, Spark NLP, Distributed Deep Learning with Keras, and More
  8. 2020-01-28Packt Sentiment Analysis through Deep Learning with Keras and Python-ZH
  9. 2019-11-22Beginning Anomaly Detection Using Python-Based Deep Learning: With Keras and PyTorch
  10. 2019-11-07Beginning Anomaly Detection Using Python Based Deep Learning With Keras and PyTorch
  11. 2019-10-29Sentiment Analysis through Deep Learning with Keras and Python
  12. 2019-10-17Beginning Anomaly Detection Using Python-Based Deep Learning: With Keras and PyTorch
  13. 2019-01-26PACKT- Practical Deep Learning with Keras and Pyt hon RiDWARE
  14. 2019-01-02Practical Deep Learning with Keras and Python
  15. 2018-12-31Practical Deep Learning with Keras and Python
  16. 2018-12-31Packt Practical Deep Learning with Keras and Python-RiDWARE
  17. 2017-10-27[PDF] Convolutional Neural Networks in Python: Master Data Science and Machine Learning with Modern Deep Learning in Python, Theano, and TensorFlow (Machine Learning in Python)
  18. 2021-08-08Deep Learning Convolutional Neural Networks In Python
  19. 2020-10-09Deep Learning Convolutional Neural Networks In Python (updated 8 2020)
  20. 2019-11-24Deep Learning and Convolutional Neural Networks for Medical Imaging and Clinical Informatics (Advances in Computer Vision and Pattern Recognition)

Comments

No comments for "Deep Learning 2 Manuscripts - Deep Learning With Keras And Convolutional Neural Networks In Python".


    Add Your Comments
    1. Download links and password may be in the description section, read description carefully!
    2. Do a search to find mirrors if no download links or dead links.
    Back to Top