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import sys | |
sys.path.append("..") | |
from preprocessing import boxplot,histogram | |
from predict import make_input,load_model,load_std_scaler,lamda_values | |
import streamlit as st | |
st.set_page_config( | |
page_title="California Housing", | |
page_icon="🏡", | |
) | |
st.title("California Housing Prediction🏘️") | |
st.markdown( | |
""" | |
California Housing Prediction is a supervised machine learning algorithm model built to predict the California Housing Values. | |
**👈 Select a option from the sidebar** to explore about different functions to inspect, visualize and analyze the dataset which was used to train this model and to make predictions based on your certain given values. | |
""" | |
) | |
st.write( | |
""" | |
## Project Overview | |
This project focuses on predicting housing values in California using a Random Forest regression model. Below are the key components of the project: | |
- **Dataset:** The model is trained on a dataset containing various features related to California housing, such as median income, housing median age, average rooms, etc. | |
- **Model Training:** The Random Forest regression model is utilized for predicting housing values. The model is trained on historical data to learn patterns and relationships. | |
- **Functionality:** | |
- **Dataframe:** Explore the dataset and its statistics. | |
- **Visualization:** Visualize data distribution through histograms and boxplots. | |
- **Predict:** Make predictions using the trained model based on user input. | |
Feel free to navigate through the different pages to get more insights! | |
## How to Use | |
1. **Dataframe Page:** Explore the dataset and view summary statistics. | |
2. **Visualization Page:** Visualize the distribution of key features using histograms and boxplots. | |
3. **Predict Page:** Input your values and let the model predict the housing value for you. | |
Enjoy exploring and understanding the California housing market! | |
""" | |
) |