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			cal_heatmap: Yearly Calendar Heatmaps
This project generates interactive yearly activity heatmaps using calendar data from a specified URL. It utilizes Streamlit for the web interface, Plotly for creating heatmaps, and other supporting libraries for data handling and visualization.
Features
- Load calendar data from a given URL.
- Save and load different configurations for calendar URL and number of years to display.
- Generate interactive yearly heatmaps of events.
- Customize the number of years to visualize.
Prerequisites
- Python 3.9+
- Required Python packages (listed in requirements.txt)!
Installation
- Clone the repository:
git clone https://github.com/yourusername/yearly-activity-heatmaps.git
cd yearly-activity-heatmaps
- Install the required packages:
pip install -r requirements.txt
- Run the Streamlit app:
streamlit run app.py
Usage
- 
Configure Settings: - Enter the calendar export link.
- Set the number of years to visualize.
- Save your configuration.
 
- 
Generate Heatmaps: - The app will download the calendar data.
- It will parse the data and count events for each day.
- Interactive heatmaps will be generated for the specified years.
 
File Structure
- app.py: Main script for running the Streamlit app.
- settings.json: JSON file to store user configurations.
- requirements.txt: List of required Python packages.
Project Dependencies
Make sure you have the following Python libraries installed:
- pandas
- vobject
- requests
- datetime
- matplotlib
- calmap
- streamlit
- plotly
You can install all dependencies using the following command:
pip install -r requirements.txt
Docker Deployment
- Build Docker Image:
docker build -t yearly-activity-heatmaps .
- Run Docker Container:
docker run -p 8501:8501 yearly-activity-heatmaps
This will build and run your Streamlit app inside a Docker container, exposing it on port 8501.
Example Code
Below is a snippet of the core functionality in app.py:
import pandas as pd 
import vobject
import requests
from datetime import datetime, date
import matplotlib.pyplot as plt
import calmap
import streamlit as st 
import plotly.express as px
import plotly.graph_objects as go
import json
import os
# Functions to load and save data, create heatmaps, and update session state...
# Set webpage title
st.title("Yearly Activity Heatmaps")
# Main logic for loading configurations, downloading calendar data, and generating heatmaps...
# Plot each year's data
for year in years_to_plot:
    fig = create_calendar_heatmap(event_series, year)
    st.plotly_chart(fig)
License
This project is licensed under the MIT License - see the LICENSE file for details.
Acknowledgments
- Streamlit for providing a fantastic framework for building web apps.
- Plotly for interactive data visualization capabilities.
- All contributors and users for their support.
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