pFad - Phone/Frame/Anonymizer/Declutterfier! Saves Data!


--- a PPN by Garber Painting Akron. With Image Size Reduction included!

URL: http://github.com/DongjunLee/DeepLearning-Notebooks

/> GitHub - DongjunLee/DeepLearning-Notebooks: Deep Learning Notebooks Implements by TensorFlow, Python + numpy · GitHub
Skip to content

DongjunLee/DeepLearning-Notebooks

Repository files navigation

DeepLearning Notebooks

These are deep learning examples implemented by TensorFlow, Python with Numpy.

Prerequisites

All python code are base on python3 and use jupyter notebook.

  • TensorFlow 1.0
  • Scikit Learn
  • matplotlib, Seaborn
  • Numpy
  • Pandas

DataSet

  1. Boston Housing DataSet
  2. Mnist
  3. CIFAR-10
  4. iris
  5. polarity dataset v2.0i (Movie Review)

Contents

Python, TensorFlow is minimal version.
Exercise is used model that mimicking scikit-learn's interface (fit, predict, etc...) and extended version from minimal.

  1. Linear Regression
    Python | TensorFlow | Exercise - Boston Housing(TensorFlow)
  2. Logistic Regression
    TensorFlow | Exercies - Iris(Python)
  3. Neural Network
  4. Convolutional Neural Network
    TensorFlow(AlexNet)
  5. Recurrent Neural Network
    TensorFlow
  6. Word2Vec
    TensorFlow
  7. CNN for Sentence Classification
    PDF | TensorFlow
  8. Char-RNN (a character-level language model to generate character sequences)
    TensorFlow(Obama-RNN)
  9. Seq2Seq
    TensorFlow
  10. Adversarial Neural Cryptography
    TensorFlow

Reference

About

Deep Learning Notebooks Implements by TensorFlow, Python + numpy

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Contributors

Languages

pFad - Phonifier reborn

Pfad - The Proxy pFad © 2024 Your Company Name. All rights reserved.





Check this box to remove all script contents from the fetched content.



Check this box to remove all images from the fetched content.


Check this box to remove all CSS styles from the fetched content.


Check this box to keep images inefficiently compressed and original size.

Note: This service is not intended for secure transactions such as banking, social media, email, or purchasing. Use at your own risk. We assume no liability whatsoever for broken pages.


Alternative Proxies:

Alternative Proxy

pFad Proxy

pFad v3 Proxy

pFad v4 Proxy