Skip to content

coding-blocks-archives/Perceptron_Summer_2017

Folders and files

NameName
Last commit message
Last commit date
Jun 12, 2017
Jun 14, 2017
Jun 18, 2017
Jun 21, 2017
Jun 21, 2017
Jun 24, 2017
Jun 26, 2017
Jun 28, 2017
Jul 1, 2017
Jul 8, 2017
Jul 17, 2017
Jul 19, 2017
Jul 21, 2017
Jul 22, 2017
Jul 24, 2017
Jul 26, 2017
Jul 30, 2017
Jul 30, 2017
Aug 6, 2017
Aug 6, 2017
Jul 31, 2017
Aug 6, 2017
Aug 10, 2017

Repository files navigation

Perceptron Summer 2017 (Machine Learning Course)

Coding Blocks, Pitampura.

Contents

  1. Class_01: Introduction to Python and Machine Learning
  2. Class_02: K-Nearest Neighbours
  3. Class_03: Face Recognition with KNN
  4. Class_04: K-Means clustering and Most Dominant Color extraction
  5. Class_05: Decision Trees and Random Forests
  6. Class_06: Principal Component Analysis
  7. Class_07: Linear Regression
  8. Class_08: NeuralNets w/ Keras
  9. Class_09: Neural Nets (numpy), MNIST classification, AutoEncoder (stacked, simple)
  10. Class_11: ConvNets and Conv Auto Encoders
  11. Class_13: Transfer Learning, Differential Evolution, Genetic Algorithm
  12. Class_14: Markov chains, intro to RNN
  13. Class_15: RNN for Addition, LSTM for image generation
  14. Class_16: Deep Dream and Neural Art
  15. Class_17: Naive Bayes and SVM
  16. Class_18: Word2Vec and Scraping
  17. Class_19: Attention mechanism
  18. Class_20: Simple RL and Q-leanring
  19. Class_21: Deep Q-learning and Sentiment Analysis
  20. Class_22: Generative Adversarial Networks

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published