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  • Capgemini
  • Noida
  • 15:26 (UTC +05:30)

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  1. PowerBI_capstone PowerBI_capstone Public

    Data Preparation: Imported and cleaned large datasets (Customer, Transaction, Product, and Sales) using DAX queries for column creation and Power Query for transformation. Visualization: Designed t…

  2. COVID-19_Analysis COVID-19_Analysis Public

    COVID-19 analysis using Python: Data cleaning, visualizations (bar charts, pie charts, trends), and automations for insights on global cases, deaths, and recovery.

    Jupyter Notebook

  3. Text-Data-Analsis-Youtube-Case-Study- Text-Data-Analsis-Youtube-Case-Study- Public

    This repository provides a comprehensive analysis of YouTube comments and related data, leveraging sentiment analysis, emoji usage, word cloud generation, and various graphical visualizations. Key …

    Jupyter Notebook

  4. Hotel-Booking-Analysis Hotel-Booking-Analysis Public

    Hotel booking analysis project involving data cleaning, market segment analysis, guest arrival patterns, spatial analysis, and visualizations using Plotly and other libraries.

    Jupyter Notebook

  5. IPL-Data-Analysis-Sports-Case-Study- IPL-Data-Analysis-Sports-Case-Study- Public

    This repository analyzes IPL data (2008-2020) focusing on match statistics, team performance, and player contributions, especially Virat Kohli's batting. It includes toss decision trends, tournamen…

    Jupyter Notebook

  6. Uber-Data-Analysis Uber-Data-Analysis Public

    This repository analyzes Uber pickup data from New York City (January-June 2015). It includes data cleaning, monthly, hourly, and location-based trend analysis, and visualizations using **Pandas**,…