Implementation of ML algorithms for FlipKart Product Category Classification based on the product's description and other features.
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Updated
May 12, 2021 - Jupyter Notebook
Implementation of ML algorithms for FlipKart Product Category Classification based on the product's description and other features.
Movie Revenue Prediction System predicts the revenue of a movie with 14 parameters: name, rating, genre, year, released, score, votes, director, writer, star, country, budget, company and runtime using gradient boosting______________________________ Training Accuracy: 91.58%____________ Testing Accuracy: 82.42%.
This is a portotype of GitHub recommender system.
Some dimensionality reduction and clustering examples using sklearn library
Real time face detection and recognition integrating with CCTV
DE and DA samples
Kaggle fun house
scikit-learn Library (sk-learn) / Biblioteca scikit-learn (sk-learn)
Analyzed a 23-feature dataset, targeting 'RainTomorrow' for weather insights. Conducted thorough data gathering, preprocessing, and feature selection. Evaluated diverse models (Logistic Regression, Random Forest, Decision Trees, K-means, K-nearest neighbors, Hierarchical clustering) and employed technical metrics for in-depth performance analysis.
This is a regression problem to predict california housing prices.
A Random Forest Approach to Estimate Rainfall
This project demonstrates various machine learning techniques for classifying handwritten digits from the MNIST dataset. It covers data preprocessing, model training, evaluation, and advanced classification strategies.
Spam Classifier using Naive Bayesian Method
Regression Analysis of oceanographic data to find the relationship between the temperature and the salinity of water.
Projet réalisé pour INSPIRE d'Article 1, mise en place d'algorithme de modération.
An interactive stock dashboard, enabling users to input stock codes, select dates, and visualize trends, indicators, and forecasts. Utilized yfinance for historical data and integrated SVR model for predictive analysis, showcasing interactive charts and forecasts.
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