Natural Language Processing - Basic to Advance using Python

Course Provided by:
Course Taken on: coursary
starstarstarstar_border star_border 3.3

Description

As practitioner of NLP, I am trying to bring many relevant topics  under one umbrella in following topics. The NLP has been most talked about for last few years and the knowledge has been spread across multiple places. 1. The content (80% hands on and 20% theory) will prepare you to work independently on NLP projects 2. Learn - Basic, Intermediate and Advance concepts 3. NLTK, regex, Stanford NLP, TextBlob, Cleaning 4. Entity resolution 5. Text to Features 6. Word embedding 7. Word2vec and GloVe 8. Word Sense Disambiguation 9. Speech Recognition 10. Similarity between two strings 11. Language Translation 12. Computational Linguistics 13. Classifications using Random Forest, Naive Bayes and XgBoost 14. Classifications using DL with Tensorflow (tf.keras) 15. Sentiment analysis 16. K-means clustering 17. Topic modeling 18. How to know models are good enough Bias vs Variance

Requrirements

Requirements Awareness of Machine Learning and Deep Learning concepts using Python

Course Includes