We have developed a Deep Learning model to predict house rent in Dhaka, the capital of Bangladesh, based on features like the location of the house, the area of the house, the number of beds and the number of baths. We used Pandas for Exploratory Data Analysis (EDA) and PyTorch for building the model.
The dataset used in this project to train and test the model is webscrapped from bproperties.com
We have scrapped the location
, Area in sqft
, No of Bedrooms
, Number of Bathrooms
and Monthly Rent
from the following website: https://www.bproperty.com/en/dhaka/apartments-for-rent/?load_all_prop=1
Feature Variables:
- Location
- Area
- No of Bed
- No of Bath
Target Variable:
- Rent
There are 4,13,782 Apartments in Dhaka that are listed on the website, from which we have taken 28,800 apartments.
- Selenium
- Pandas
- Numpy
- Matplotlib
- Seaborn
- Scikit Learn
- PyTorch