1900-2016 Olympic Data Analysis in Python by plotting different graphs

Overview

Website Domain Language Deploed in Library Library Library Library

🔥 Olympics Data Analysis 🔥

In Data Science field, there is a big topic before creating a model for future prediction is Data Analysis. We can find out the hidden stories of the data when we visualize it. Also sometimes it helps that which type of algorithm will be great for that data. So I build a website using StreamLit python library to visualize the 120 Years of Olympics history.


🏄 Info of this project:

These 4 step analysis are done in this project:

  • Medal tally (No. of total medals, No. of Gold Medals, No. of Silver Medals and No. of Bronze Medals) over the years of different countries.
  • Overall analysis like how many sports are played, how many countries are participated, how many cities hosted and so on. And there is a graph on participating nations over the years, graph on events over the years, graph on number of athletes participated over the years, heatmap on number of events and top 15 successful athletes on different sports.
  • Then did country wise analysis like graph many medals won through the years, heatmap on how many medals won through out the years in different sports and top 15 athletes of the countries.
  • And last, athletes wise analysis like distribution of winning Gold, Silver and Bronze Medals on the basis of athletes' age, distribution of age with respect to sports of Gold Medalist as well as height vs weight graph of different sports.

💡 Data Source & Deployment

Dataset Source: For this data analysis, I used this kaggle dataset -> https://www.kaggle.com/heesoo37/120-years-of-olympic-history-athletes-and-results

Website Demo: This website build using StreamLit is deployed in Streamlit Share medium. The link of the website -> https://share.streamlit.io/sayan-roy-729/olympic-history-analysis/main/app.py


🔓 Install

First download this github repository to your local machine. Then create a python virtual environment using the following command and activate it.

virtualenv venv

Install required libraries by following the below command.

pip install -r requirements.txt

To run the website on your local machine, execute the below command

streamlit run app.py

📪 Connect with me

If you like my work then please give a from your side. And you can connect with with on

A Simple Flask-Plotly Example for NTU 110-1 DSSI Class

A Simple Flask-Plotly Example for NTU 110-1 DSSI Class Live Demo Prerequisites We will use Flask and Ploty to build a Flask application. If you haven'

Ting Ni Wu 1 Dec 11, 2021
Data aggregated from the reports found at the MCPS COVID Dashboard into a set of visualizations.

Montgomery County Public Schools COVID-19 Visualizer Contents About this project Data Support this project About this project Data All data we use can

James 3 Jan 19, 2022
Simple python implementation with matplotlib to manually fit MIST isochrones to Gaia DR2 color-magnitude diagrams

Simple python implementation with matplotlib to manually fit MIST isochrones to Gaia DR2 color-magnitude diagrams

Karl Jaehnig 7 Oct 22, 2022
Data Visualization Guide for Presentations, Reports, and Dashboards

This is a highly practical and example-based guide on visually representing data in reports and dashboards.

Anton Zhiyanov 395 Dec 29, 2022
Tweets your monthly GitHub Contributions as Wordle grid

Tweets your monthly GitHub Contributions as Wordle grid

Venu Vardhan Reddy Tekula 5 Feb 16, 2022
An intuitive library to add plotting functionality to scikit-learn objects.

Welcome to Scikit-plot Single line functions for detailed visualizations The quickest and easiest way to go from analysis... ...to this. Scikit-plot i

Reiichiro Nakano 2.3k Dec 31, 2022
Displaying plot of death rates from past years in Poland. Data source from these years is in readme

Average-Death-Rate Displaying plot of death rates from past years in Poland The goal collect the data from a CSV file count the ADR (Average Death Rat

Oliwier Szymański 0 Sep 12, 2021
Complex heatmaps are efficient to visualize associations between different sources of data sets and reveal potential patterns.

Make Complex Heatmaps Complex heatmaps are efficient to visualize associations between different sources of data sets and reveal potential patterns. H

Zuguang Gu 973 Jan 09, 2023
WebApp served by OAK PoE device to visualize various streams, metadata and AI results

DepthAI PoE WebApp | Bootstrap 4 & Vue.js SPA Dashboard Based on dashmin (https:

Luxonis 6 Apr 09, 2022
A customized interface for single cell track visualisation based on pcnaDeep and napari.

pcnaDeep-napari A customized interface for single cell track visualisation based on pcnaDeep and napari. 👀 Under construction You can get test image

ChanLab 2 Nov 07, 2021
EPViz is a tool to aid researchers in developing, validating, and reporting their predictive modeling outputs.

EPViz (EEG Prediction Visualizer) EPViz is a tool to aid researchers in developing, validating, and reporting their predictive modeling outputs. A lig

Jeff 2 Oct 19, 2022
Small U-Net for vehicle detection

Small U-Net for vehicle detection Vivek Yadav, PhD Overview In this repository , we will go over using U-net for detecting vehicles in a video stream

Vivek Yadav 91 Nov 03, 2022
China and India Population and GDP Visualization

China and India Population and GDP Visualization Historical Population Comparison between India and China This graph shows the population data of Indi

Nicolas De Mello 10 Oct 27, 2021
CPG represent!

CoolPandasGroup CPG represent! Arianna Brandon Enne Luan Tracie Project requirements: use Pandas to clean and format datasets use Jupyter Notebook to

Enne 3 Feb 07, 2022
Shaded 😎 quantile plots

shadyquant 😎 This python package allows you to quantile and plot lines where you have multiple samples, typically for visualizing uncertainty. Your d

Mehrad Ansari 13 Sep 29, 2022
Visualization of numerical optimization algorithms

Visualization of numerical optimization algorithms

Zhengxia Zou 46 Dec 01, 2022
Gaphas is the diagramming widget library for Python.

Gaphas Gaphas is the diagramming widget library for Python. Gaphas is a library that provides the user interface component (widget) for drawing diagra

Gaphor 144 Dec 14, 2022
Visualization Website by using Dash and Heroku

Visualization Website by using Dash and Heroku You can visit the website https://payroll-expense-analysis.herokuapp.com/ In this project, I am interes

YF Liu 1 Jan 14, 2022
Flame Graphs visualize profiled code

Flame Graphs visualize profiled code

Brendan Gregg 14.1k Jan 03, 2023
The windML framework provides an easy-to-use access to wind data sources within the Python world, building upon numpy, scipy, sklearn, and matplotlib. Renewable Wind Energy, Forecasting, Prediction

windml Build status : The importance of wind in smart grids with a large number of renewable energy resources is increasing. With the growing infrastr

Computational Intelligence Group 125 Dec 24, 2022