Natural Language Processing

Natural Language Processing

Machine Learning University via YouTube Direct link

Accelerated Natural Language Processing 1.9 - Machine Learning and Text

9 of 27

9 of 27

Accelerated Natural Language Processing 1.9 - Machine Learning and Text

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Natural Language Processing

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Accelerated Natural Language Processing 1.1 - Course Introduction
  2. 2 Accelerated Natural Language Processing 1.2 - Introduction to Machine Learning
  3. 3 Accelerated Natural Language Processing 1.3 - ML Applications
  4. 4 Accelerated Natural Language Processing 1.4 - Supervised and Unsupervised Learning
  5. 5 Accelerated Natural Language Processing 1.5 - Class Imbalance
  6. 6 Accelerated Natural Language Processing 1.6 - Missing Values
  7. 7 Accelerated Natural Language Processing 1.7 - Model Evaluation
  8. 8 Accelerated Natural Language Processing 1.8 - Introduction to NLP
  9. 9 Accelerated Natural Language Processing 1.9 - Machine Learning and Text
  10. 10 Accelerated Natural Language Processing 1.10 - Text Preprocessing
  11. 11 Accelerated Natural Language Processing 1.11 - Text Vectorization
  12. 12 Accelerated Natural Language Processing 1.12 - K Nearest Neighbors
  13. 13 Using Jupyter Notebooks on Sagemaker
  14. 14 Accelerated Natural Language Processing 2.1 - Tree-based Models
  15. 15 Accelerated Natural Language Processing 2.2 - Regression Models
  16. 16 Accelerated Natural Language Processing 2.3 - Optimization
  17. 17 Accelerated Natural Language Processing 2.4 - Regularization
  18. 18 Accelerated Natural Language Processing 2.5 - Hyperparameter Tuning
  19. 19 Accelerated Natural Language Processing 3.1 - Neural Networks
  20. 20 Accelerated Natural Language Processing 3.2 - Word Vectors
  21. 21 Accelerated Natural Language Processing 3.3 - Recurrent Neural Networks
  22. 22 Accelerated Natural Language Processing 3.4 - Gated Recurrent Units (GRUs)
  23. 23 Accelerated Natural Language Processing 3.5 - Long Short Term Memory (LSTM) Networks
  24. 24 Accelerated Natural Language Processing 3.6 - Transformers
  25. 25 Accelerated Natural Language Processing 3.7 - Single Headed Attention
  26. 26 Accelerated Natural Language Processing 3.8 - Multi Headed Attention
  27. 27 MLU Channel Introduction

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.