Objective of the repository is to learn and build machine learning models using Pytorch. 30DaysofML Using Pytorch
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Updated
Dec 15, 2021 - Python
Objective of the repository is to learn and build machine learning models using Pytorch. 30DaysofML Using Pytorch
Weighted Class TFIDF technique to deal with imbalanced datasets
Conversational AI designed specifically for the Marathi language using Rasa.
Authorship Attribution with Machine Learning
Scikit-learn tutorial for beginniers. How to perform classification, regression. How to measure machine learning model performacne acuuracy, presiccion, recall, ROC.
Recommendation system built using multiple ML models that aim to predict users' interests based on their past behavior and preferences.
Performed text preprocessing, clustering and analyzed the data from different books using K-means, EM, Hierarchical clustering algorithms and calculated Kappa, Consistency, Cohesion or Silhouette for the same.
Given a document, identifying the closest documents within the list of documents using tf-idf matrix and cosine similarity
All NLP related courses on DataCamp
A python package for creating content-based text recommender systems on pandas dataframes and SQLAlchemy tables
This is final project of Information Retrieval course which is implementation of a search engine
The project utilizes the TF-IDF (Term Frequency-Inverse Document Frequency) algorithm. The main objective of this project is to measure the similarity between text documents using the TF-IDF algorithm.
A Python package for automatically training, evaluation, inference of Text Classification task with Low code/No Code
Repositorio com códigos relacionados a pesquisa de TCC sobre desempenho dos algoritmos Naive Bayes, RL e SVM para classificação de revisões.
In the above 3 tasks we will study and investigate the proximity between 3 different groups of texts taken from different press sections. With reference to text mining, data cleaning, vector representation of rituals using various methods and performing various NLP tasks.
MailGuard is an intelligent spam detection tool that classifies emails as spam or ham using a Multinomial Naive Bayes model. Built with Streamlit, it leverages natural language processing techniques for text cleaning and feature extraction.
Train model using your own dataset and use it to predict the label for a given text. Additionally, it identify if the text is likely to be spam or irrelevant.
Repository aimed at building a simple recommender system for a content based dataset. The textual information is analysed so as to utilised as a more concrete piece of information!
Movie Counsel helps you to get tailored Movie/Series recommendation with an inbuilt Sentiment Analyzer Tool for Movie Reviews
SPAM/HAM Classifier using Naive Bayes
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