Visualisation, annotation and powerful filtering tools for houses discovered on Hemnet.
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Updated
Nov 19, 2024 - PHP
Visualisation, annotation and powerful filtering tools for houses discovered on Hemnet.
Have you ever wanted to easily find the right house in the right place and that fits your budget? This real estate agency website is what you're looking for (if you live in Honduras); It was built in using JavaScript, Firebase, REST APIs, and other interesting technologies such as Cookies, Google Analytics and Intersection Observer
Interactive Map of Properties and Real Estate in Dhaka, Bangladesh, using data from BProperty.
A small approach to solving one of the many Kaggle problems
Ask a home buyer to describe their dream house, and they probably won't begin with the height of the basement ceiling or the proximity to an east-west railroad. With 79 explanatory variables describing (almost) every aspect of residential homes in Ames, Iowa, this competition challenges you to predict the final price of each home.
A from-scratch Linear Regression model optimized via Gradient Descent for house price prediction.
Ghana rental house price prediction using machine learning
An analysis of house prices in Beijing
Built a prediction model using both ridge and lasso advanced regression methods to predict house prices.
The missing guide to London properties
Scrape housing data from German housing portal Immowelt.de and retrieve as comma separted file.
This is an insight project to help in decision-making for buying and selling houses
Decision-ready house price regression: leakage-safe CV, RMSE tracking, and reproducible pipeline in scikit-learn.
Production-ready ML pipeline for regression tasks with modular architecture (0.94 R², Kaggle validated)
Project for UCL module CASA0006: Data Science for Spatial Systems. Exploring the Impact of Low Emission Zones on London House Prices
🏠 Built a House Price Predictor. 🔎 Preprocessed housing data (handled missing values, log-transformed, encoded ocean proximity). 📊 Used features like rooms, bedrooms, population, households, income & location. ✅ Trained Random Forest Regressor with optimized parameters. 🌐 Deployed a Streamlit web app for real-time house price prediction.
This repository contains code for an end-to-end web application that predicts house prices. The app is built using Python and Flask, and includes a machine learning model that has been trained on a dataset of house prices.
Repository for Kaggle Competition : House Prices : Advanced Regression Techniques
Create an excel report that contains all the meaningful information such as relevant charts, pivot tables, etc. Mention all the variable which are highly correlated. Used the linear regression model to train and forecast the houses sold in the year 2017 based on 2016 data. Interpret essential findings from the model.
Add a description, image, and links to the house-prices topic page so that developers can more easily learn about it.
To associate your repository with the house-prices topic, visit your repo's landing page and select "manage topics."