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This repository is a related to all about Natural Langauge Processing - an A-Z guide to the world of Data Science. This supplement contains the implementation of algorithms, statistical methods and techniques (in Python)

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Welcome to Natural-Language Processing 👋🛒

Welcome to the ultimate destination for Natural Language Processing enthusiasts - an exhaustive A-Z guide packed with implementations of algorithms, statistical methods, and cutting-edge techniques, all meticulously crafted in Python.

Embark on a journey through the intricate world of NLP as we delve into the realms of sentiment analysis, machine translation, named entity recognition, and much more. Whether you're a seasoned practitioner or just beginning your NLP exploration, our repository is your one-stop-shop for deepening your understanding and honing your skills.

From classic algorithms to state-of-the-art models, we've got you covered with clear, concise implementations that demystify even the most complex concepts. Explore, experiment, and elevate your NLP prowess with our carefully curated collection.

Star this repository if you find it as invaluable to your NLP endeavors as we do. Together, let's push the boundaries of Natural Language Processing and unleash its full potential. ⭐"

Also please subscribe to my youtube channel!

📬Contact

If you want to contact me, you can reach me through social handles.

📕Course 01 -Classification and Vector Spaces

Week 0-📚Chapter 1:Introduction

Topic Name/Tutorial Video Code
🌐1-What is Natural Language Processing (NLP)⭐️ 1 ---
🌐2- Natural Language Processing Tasks and Applications⭐️ 1 Content 3
🌐3- Best Free Resources to Learn NLP-Tutorial⭐️ Content 5 Content 6

Week 1-📚Chapter 2:Sentiment Analysis (logistic Regression)

Topic Name/Tutorial Video Code
🌐1- Preprocessing_Aassignment_1 Content 2 Colab icon
🌐2- Supervised ML & Sentiment Analysis⭐️ 1 Colab icon
🌐3-Vocabulary & Feature Extraction⭐️ 1 Colab icon
🌐4-Negative and Positive Frequencies⭐️ 1 Colab icon
🌐5-Text pre-processing⭐️ 1-2 Colab icon
🌐6-Putting it All Together --- Colab icon
🌐7-Logistic Regression Overview --- Colab icon
🌐8-Logistic Regression: Training --- Colab icon
🌐9-Logistic Regression: Testing --- Colab icon
🌐10-Logistic Regression: Cost Function --- Colab icon
Lab#1:Visualizing word frequencies --- Colab icon
🌐Lab 2:Visualizing tweets and the Logistic Regression model --- Colab icon
🌐Assignmen:Sentiment analysis with logistic Regression --- Colab icon

Week 2-📚Chapter3:Sentiment Analysis using Naive Bayes

Topic Name/Tutorial Video Code
🌐1-Probability and Bayes’ Rule 1 Colab icon
🌐2-Bayes’ Rule 1 Colab icon
🌐3-Naïve Bayes Introduction 1 Colab icon
🌐4-Laplacian Smoothing 1 Colab icon
🌐5-Log Likelihood, Part 1 1 Colab icon
🌐6-Log Likelihood, Part 2 1 Colab icon
🌐7-Training Naïve Bayes 1 Colab icon
🌐Lab1-Visualizing Naive Bayes Content 5 Colab icon
🌐Assignment_2_Naive_Bayes --- Colab icon
🌐8-Testing Naïve Bayes 1 Colab icon
🌐9-Applications of Naïve Bayes 1 Colab icon
🌐10-Naïve Bayes Assumptions 1 Colab icon
🌐11-Error Analysis 1 Colab icon
Topic Name/Tutorial Video Code
🌐1-Vector Space Models 1 Colab icon
🌐2-Word by Word and Word by Doc 1 Colab icon
🌐3-Euclidean Distance 1-2 Colab icon
🌐4-Cosine Similarity: Intuition 1-2 Colab icon
🌐5-Cosine Similarity 1 Colab icon
🌐6-Manipulating Words in Vector Spaces 1 Colab icon
🌐7-Visualization and PCA 1 Colab icon
🌐8-Lab1_Linear_algebra_in_Python_with_Numpy.ipynb
🌐8-PCA Algorithm 1-2 Colab icon
🌐9-Lab:2_Manipulating word embeddings
Topic Name/Tutorial Video Code
🌐1-Transforming word vectors 1 Colab icon
🌐2-Lab1 Rotation matrices R2 -- Colab icon
🌐3-K-nearest neighbors 1 Colab icon
🌐4-Hash tables and hash functions 1 Colab icon
🌐5-Locality sensitive hashing 1 Colab icon
🌐6-Multiple Planes-r 1 Colab icon
🌐7-Approximate nearest neighbors 1 Colab icon
🌐7-Lab2:Hash tables 1 Colab icon
🌐8-Searching documents 1 Colab icon

📕Course 02 -Natural Language Processing with Probabilistic Models

Topic Name/Tutorial Video Code
🌐1-Overview 1 Colab icon
🌐2-Autocorrect 1 Colab icon
🌐3-Build Model 1-2 Colab icon
🌐Lecture notebook building_the_vocabulary --- Colab icon
🌐Lecture notebook Candidates from edits --- Colab icon
🌐4-Minimum edit distance 1 Colab icon
🌐5-Minimum edit distance Alogrithem 1 1 Colab icon
🌐6-Minimum edit distance Alogrithem 2 1 Colab icon
🌐7-Minimum edit distance Alogrithem 3 1 Colab icon
Topic Name/Tutorial Video Code
🌐1-Part of Speech Tagging 1-2 Colab icon
🌐2-Markov Chains 1 Colab icon
🌐3-Markov Chains and POS Tags 1 Colab icon
🌐4-Hidden Markov Models 1 Colab icon
🌐5-Calculating Probabilities 1-2 Colab icon
🌐6-Populating the Emission Matrix 1 Colab icon
🌐Lecture Notebook - Working with tags and Numpy -- Colab icon
🌐7-The Viterbi Algorithm 1-2 Colab icon
🌐8-Viterbi: Initialization,Forward Pass,Backward Pass 1-2-3 Colab icon
🌐9-Lecture Notebook - Working with text file -- Colab icon
🌐10-Assignment: Part of Speech Tagging -- Colab icon
Topic Name/Tutorial Video Code
🌐1-N-Grams Overview 1 Colab icon
🌐2-N-grams and Probabilities 1-2 Colab icon
🌐3-Sequence Probabilities 1 Colab icon
🌐3-Understanding the Start and End of Sentences in N-Gram Language Models 1 Colab icon
🌐4-Lecture notebook: Corpus preprocessing for N-grams --- Colab icon
🌐5-Creating and Using N-gram Language Models for Text Prediction and Generation 1 Colab icon
🌐6-How to Evaluate Language Models Using Perplexity: A Step-by-Step Guide⭐️ 1 Colab icon
🌐7-Lecture notebook: Building the language model --- Colab icon
🌐8-Out of Vocabulary Words⭐️ 1 Colab icon
🌐9-Smoothing⭐️ 1 Colab icon
Topic Name/Tutorial Video Code
🌐1-Basic Word Representations⭐️ 1 Colab icon
🌐2-Word Embedding⭐️ 1-2-3-4 Colab icon
🌐3-How to Create Word Embeddings⭐️ 1 Colab icon
🌐4-Word Embedding Methods⭐️ 1 Colab icon
🌐5-Continuous Bag-of-Words Model⭐️ 1-2 Colab icon

Course 03 - 📚Building Chatbots in Python

💻 Workflow:

  • Fork the repository

  • Clone your forked repository using terminal or gitbash.

  • Make changes to the cloned repository

  • Add, Commit and Push

  • Then in Github, in your cloned repository find the option to make a pull request

print("Start contributing for Natural Language Processing")

⚙️ Things to Note

  • Make sure you do not copy codes from external sources because that work will not be considered. Plagiarism is strictly not allowed.
  • You can only work on issues that have been assigned to you.
  • If you want to contribute the algorithm, it's preferrable that you create a new issue before making a PR and link your PR to that issue.
  • If you have modified/added code work, make sure the code compiles before submitting.
  • Strictly use snake_case (underscore_separated) in your file_name and push it in correct folder.
  • Do not update the README.md.

🔍 Explore more

Explore cutting-edge tools and Python libraries, access insightful slides and source code, and tap into a wealth of free online courses from top universities and organizations. Connect with like-minded individuals on Reddit, Facebook, and beyond, and stay updated with our YouTube channel and GitHub repository. Don’t wait — enroll now and unleash your NLP potential!”

✨Top Contributors

We would love your help in making this repository even better! If you know of an amazing NLP course that isn't listed here, or if you have any suggestions for improvement in any course content, feel free to open an issue or submit a course contribution request.

                   Together, let's make this the best AI learning hub website! 🚀

Thanks goes to these Wonderful People. Contributions of any kind are welcome!🚀