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hamidrezaesh/README.md

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🚀 About Me

I'm Hamidreza. A developer based in Iran, focused on building practical solutions through code. The work centers on clean implementation, problem-solving, and continuous learning.

Current areas of interest include web development, machine learning, Python, backend systems, and Linux. The goal is to create reliable tools and applications that serve real purposes — without unnecessary complexity.

  • ⚡ Fun fact: No ig and twitter. Just code.
  • 💻 I'm currently learning Go.

🛠️ Tech Stack

Python C TypeScript JavaScript HTML5 CSS3 TailwindCSS
React Node.js Flask SQL Scikit Learn Jupyter Git Linux

📈 Github Stats

hamidrezaesh's Stats hamidrezaesh's Streak

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  1. Coffee-Shop-Revenue-Regression Coffee-Shop-Revenue-Regression Public

    This project builds a regression model to predict the daily revenue of a coffee shop based on various operational features such as customer count, average order value, marketing spend, and foot tra…

    Jupyter Notebook 1

  2. Mall-Customers-Clustering Mall-Customers-Clustering Public

    Mall Customer Segmentation using clustering algorithms (K-Means, DBSCAN, Hierarchical). This project explores and compares different methods to group customers based on demographics and spending, h…

    Jupyter Notebook 1

  3. bedding-store-flask bedding-store-flask Public

    A bedding store website built with flask.

    CSS

  4. Drug200-Classification Drug200-Classification Public

    Used KNN, Decision Tree, and Random Forest to classify patients in the Drug200 dataset based on age, sex, BP, cholesterol, and Na-to-K ratio. The goal was to predict the most suitable drug from fiv…

    Jupyter Notebook 1