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redback-fit-sports-performance

This repository contains information related to sports performance analysis project.


Redback Operations - Sports Performance Analysis

Overview

Welcome to the Sports Performance Analysis project by Redback Operations! Our platform is designed to provide insightful analysis in football, cricket, and cycling.

Features

Football Analysis:

  1. EPL Data Analysis:

    • Explore EPL data to gain insights into team and player performance.
    • Visualize team standings, goal differentials, and scoring patterns.
  2. Cleaned EPL Results Data:

    • Utilize cleaned EPL results data for accurate trend analysis.
    • Showcase historical match outcomes and key performance indicators.

Cricket Analysis:

  1. 2023 World Cup Data:

    • Analyze player and team statistics from the 2023 Cricket World Cup.
    • Identify standout performances and key trends during the tournament.
  2. IPL Data Analysis:

    • Explore IPL data for valuable insights into player and team dynamics.
    • Visualize team strategies, player contributions, and match outcomes.
  3. Predictive Analysis of Player Performance:

    • Develop models to forecast player performances based on historical data.
    • Evaluate model accuracy and provide recommendations for player selection.
  4. Toss Decision Analysis on T20 2022 World Cup:

    • Investigate the impact of toss decisions on match outcomes.
    • Provide statistical evidence on the correlation between toss decisions and winning teams.
  5. Historical Data of T20 World Cup Venues (2022):

    • Explore historical data of venues where the T20 World Cup 2022 matches occurred.
    • Provide insights into pitch conditions, team performances, and winning trends at each venue.

Cycling Analysis:

  1. Data Exploration Programs:

    • Develop Python code for exploring cycling performance datasets.
    • Create basic predictive models to assess data reliability.
  2. Strava Export Programs:

    • Implement programs to extract data from Strava using the Strava API and web scraping.
    • Compare different methods for data extraction and evaluate their reliability.
  3. Cyclist Data (2023 T2 Redback Operations Project):

    • Analyze cyclist data from the 2023 T2 Redback Operations project.
    • Address issues in the dataset, such as invalid data in duration fields.
  4. Strava Data Dump and Cleaning:

    • Explain the process of downloading a Strava data dump and cleaning the data.
    • Highlight challenges faced and solutions implemented during the data cleaning process.
  5. Data Format:

    • Store cycling data in .csv and .xlsx formats for convenient analysis.
  6. Documentation:

    • Include links to detailed documentation describing cycling data and its issues.
    • Refer users to resources on downloading Strava files and bulk export options.

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