A repository contains Text Classification notebooks using Machine Learning, Deep Learning, Word Embeddings
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Updated
Jul 31, 2019 - Jupyter Notebook
A repository contains Text Classification notebooks using Machine Learning, Deep Learning, Word Embeddings
This jupyter notebook has various ML classification models to detected a mail as spam or not
This is a very brief notebook on NLP, it contains a "Disaster Analysis" project in which all the possible architectures were shown and described briefly.
This is a collection of markdown, notebooks and/or other types of files. The images used inside are mostly from Andrew Ng and his courses. This is useful for topic vise study, and preparations. It might contain some images from the ML course offered at Innopolis University. A student from IU can use this to get good score in that course, it cove…
This notebook is trying to build a model which will recommend the movie based on given movie and genre. In this we use Popularity Based Recommendation, Content Based Recommendation and Collaborative Filtering based Recommendation.
A collection of notebooks on vectorization and graphs in python.
Some notebook using Inside Airbnb data (Bologna, Italy)
Jupyter Notebook illustrates and compares different approaches to sentence similarity scoring.
Exploring Python-based projects
Github repo for ML Specialization course on Coursera. Contains notes and practice python notebooks.
Natural LangWiz is a repository for exploring Natural Language Processing (NLP) techniques through Jupyter notebooks. It covers everything from text preprocessing and sentiment analysis to advanced transformer models. Dive in to see how we turn raw text into actionable insights with a touch of NLP wizardry!
Machine Learning Notebooks for various ML models like CNNs, RF, SVM, Log-reg, etc.
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