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ritik8801/README.md

Hi 👋, I'm Ritik Mishra

ritik8801

  • 🌱 I’m currently learning Python, Dart, Statistics

  • 💬 Ask me about Machine Learning, Artificial Intelligence, Tableau, Power BI

  • 📫 How to reach me [email protected]

Connect with me:

ritikmishra220

Languages and Tools:

android aws c cplusplus dart docker dotnet firebase flutter gcp git java linux matlab mongodb mssql mysql opencv pandas postgresql python pytorch scikit_learn seaborn tensorflow

Pinned Loading

  1. Data-Analysis-of-Bicycle-Manufacturing-Company-Using-Python-SQL-and-Power-BI Data-Analysis-of-Bicycle-Manufacturing-Company-Using-Python-SQL-and-Power-BI Public

    Data Analysis of Bicycle Manufacturing Company Using Python, SQL and Power BI

    Python 4 1

  2. Data-Analysis-of-Housing-Rental-Prices-in-Berlin-Using-Python-and-Tableau Data-Analysis-of-Housing-Rental-Prices-in-Berlin-Using-Python-and-Tableau Public

    Data Analysis of Housing Rental Prices in Berlin Using Python and Tableau

    HTML

  3. Time-Series-Decomposition-of-German-Climate-Data-using-Python Time-Series-Decomposition-of-German-Climate-Data-using-Python Public

    This project performs time series decomposition of daily and yearly climate data of Germany based on 1990-2021 data.

    Jupyter Notebook

  4. Time-Series-Forecasting-for-Solar-Energy-Generation-in-Germany-using-Python Time-Series-Forecasting-for-Solar-Energy-Generation-in-Germany-using-Python Public

    The project predicts weekly solar energy generation in Germany using seasonal ARIMA model with accuracy of 82% and Time Series Analysis from statsmodels.

    Jupyter Notebook

  5. VisualGPT VisualGPT Public