A regression model to predict calories burnt using values from multiple sensors.
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Updated
Apr 9, 2021 - Jupyter Notebook
A regression model to predict calories burnt using values from multiple sensors.
Analysis and prediction of the sales data during Black Friday sale using some Machine Learning Algorithms.
Doing Analysis of the sales of video games across the globe and predicting the sales using various Machine Learning Algorithms
In this project, a regression-based performance prediction model was developed to estimate building energy consumption based on simplified façade attribute information and weather conditions.
Prediciting the Prices of House using the Boston House Price Dataset by applying the XGBoost Regressor Model
Worked on AFLW2000-3D dataset which is a dataset of 2000 images. The regression model of predicting the 3 angles (pitch - yaw - roll) of head pose estimation was XGboost Regressor.
Quick cheatsheet about XGBoost, a Gradient Boosted regularized technique published in 2014
2022-01 데이터마이닝이론및응용 프로젝트 <장애인 이동권 제고를 위한 콜택시 이용편의 증진 방안 : 서울특별시를 중심으로>
A person’s creditworthiness is often associated (conversely) with the likelihood they may default on loans.
Machine Learning
Build a Machine Learning model to predict the total count of cabs booked in each hour by the new data. Research on Cyclic features
Bike Sharing Demand Prediction By Supervised Machine Learning Algorithms Implementation On Seoul Bike Sharing Dataset
Predicting house prices using advanced regression algorithms
Sales Data Analysis and Forecasting Using Ensemble Methods
The project aims to predict house prices in California based on various features using machine learning techniques. It uses the California housing dataset, comprising 20640 data entries and 8 attributes, with the target being the house price.
House price estimation from visual and textual features using both machine learning and deep learning models
This repo hosts an end-to-end machine learning project designed to cover the full lifecycle of a data science initiative. The project encompasses a comprehensive approach including data Ingestion, preprocessing, exploratory data analysis (EDA), feature engineering, model training and evaluation, hyperparameter tuning, and cloud deployment.
This Project deals with determining the product prices based on the historical retail store sales data. After generating the predictions, our model will help the retail store to decide the price of the products to earn more profits.
Predicting house prices in Boston using the XGBoost regressor model.
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