Skip to content

MYethishwar/DataScienceLearning

Repository files navigation

📊 Data Science Learning

This repository is a structured collection of my Data Science learning journey, covering fundamentals, hands-on practice, and projects across multiple tools and technologies.
It is intended for learning, practice, and reference purposes.


📌 Repository Overview

This repository includes learning materials and practical implementations related to:

  • Excel-based data analysis
  • Python programming for data science
  • SQL for data querying and analysis
  • Machine Learning algorithms and models
  • End-to-end projects
  • Datasets and learning resources used

The content reflects progressive learning, starting from basics and moving toward applied projects.


📁 Repository Structure

1. Excel Works

  • Data cleaning and preprocessing
  • Basic to advanced Excel functions
  • Pivot tables and analytical summaries
  • Exploratory analysis using spreadsheets

2. Python Learnings

  • Core Python concepts
  • Data structures and control flow
  • Practice programs for logic building
  • Python for data analysis basics

Libraries commonly used:

  • NumPy
  • Pandas
  • Matplotlib / Seaborn

3. SQL Learnings

  • Basic SQL queries
  • Filtering, sorting, and aggregation
  • Joins and subqueries
  • Real-world analytical queries
  • SQL applied to data analysis use cases

4. Machine Learning Models

  • Supervised learning models
    • Linear Regression
    • Logistic Regression
    • Naive Bayes
    • KNN
    • Decision Trees
    • Support Vector Machines
    • HyperParameter Tuning
  • Unsupervised learning basics
  • Model evaluation metrics
  • Data preprocessing and feature scaling
  • Train-test split and cross-validation

4. Deep Learning

  • ANN
  • CNN
  • RNN

5. Major Projects

  • End-to-end projects including problem statement & datasets used
    • Python Finder (Python)
    • Blogging Website (SQL)
    • Placement Prediction

6. Datasets

  • Publicly available datasets
  • Practice datasets for ML and SQL
  • Cleaned and raw versions

7. Resources

  • Learning notes
  • Reference materials(Textbooks)
  • Useful links and documentation

🎯 Purpose of This Repository

  • To document my data science learning journey
  • To practice and revise concepts regularly
  • To build a strong foundation in analytics and machine learning
  • To serve as a reference repository for future projects and interviews

🛠 Tools & Technologies Used

  • Excel
  • Python
  • SQL
  • Jupyter Notebook
  • Machine Learning libraries (scikit-learn, pandas, numpy)
  • Deep Learning (Tensorflow with Keras)

🚀 Future Scope

  • Add advanced machine learning projects
  • Include deep learning implementations
  • Integrate real-time data analysis projects
  • Improve documentation and explanations

📬 Contact

For suggestions, improvements, or collaboration, feel free to connect via GitHub.


About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Languages