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meshvaapatel/README.md

👋 Hi, I'm Meshva Patel

📊 Data Analyst with a growing interest in AI and Machine Learning

📍 Surat, Gujrat, India


📝 About Me

I’m a data analyst who works with Python, SQL, Power BI, and Excel to turn raw data into clear insights. I focus on understanding the data, finding patterns, and presenting results in a way that supports good decision-making.

I’m currently learning more about AI and Machine Learning to strengthen my analytical approach and handle more advanced tasks. This includes understanding how models work, how to prepare data for them, and how they can support practical business questions.

Explore my Projects to see dashboards, detailed analytics, and practical experience in data-driven decision making.


🛠️ Skills Summary

Category Skills & Tools
Languages Python, SQL
Analytics Tools Power BI, MySQL, Excel
Frameworks Pandas, NumPy, Scikit-Learn, Matplotlib, Seaborn, Streamlit
Platforms Jupyter Notebook, Visual Studio Code, Google Colab Notebook
Soft Skills Rapport Building, People Management, Good Communication
Core Focus Areas AI, Machine Learning

📂 Featured Projects

Smartphone Price Prediction System

A practical machine-learning project where I built a regression model to predict smartphone prices using key features such as brand, specifications, and performance metrics. The workflow covers web scraping, data cleaning, feature extraction, model training, and algorithm comparison to identify the most accurate predictor. The project demonstrates how structured data and ML techniques can support smarter pricing decisions and market positioning.

📌 View Project

Café Sales Exploratory Data Analysis

An exploratory analysis of café sales data to track how revenue changes by day, month, and product category. I analyzed 15,000+ transactions using Python to identify peak months, high-selling items, and seasonal demand patterns. I also built a dashboard that highlights top-performing categories like Juice, Coffee, Cake and visualizes sales trends, payment behavior, and location insights to support smarter menu and operational decisions.

📌 View Project

Retail SQL Analysis

A SQL-driven retail analytics project where I analyzed linked tables such as demand, inventory, pricing, and product to extract actionable insights. Using joins, subqueries, and aggregation, I identified stock inefficiencies, pricing trends, and product-level performance. The analysis turns complex relational data into clear metrics and recommendations that support smarter inventory planning and pricing strategy.

📌 View Project


🤝 Let's Connect

Ready to tackle real problems with smart analytics?
Share your business challenge, and I’ll uncover the story hidden in the data.

🔗 Connect with me on LinkedIn

📩 meshvapatel.ds@gmail.com

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  1. smartphone-price-prediction-system smartphone-price-prediction-system Public

    This project predicts smartphone prices using a custom AI model. It scrapes live e-commerce data, trains on recent trends, and deploys a web app for instant price estimates based on phone features.

    Jupyter Notebook 1

  2. cafe-sales-exploratory-data-analysis cafe-sales-exploratory-data-analysis Public

    In-depth Exploratory Data Analysis on café sales using Python and Power BI to uncover insights on trends, customer behavior, and business performance.

    Jupyter Notebook 2

  3. saas-companies-2025-analysis saas-companies-2025-analysis Public

    Demonstrates practical data analysis using Python for exploration and Power BI for delivering business-ready, interactive insights.

    Jupyter Notebook 1

  4. retail-sql-analysis retail-sql-analysis Public

    An end-to-end SQL data analysis project using retail datasets to extract business insights.

    Jupyter Notebook 1 1