A data analysis project exploring consumer behavior and sales trends through EDA using Python. Includes visualizations and insights derived from retail shopping data.
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Updated
Jul 17, 2025 - Jupyter Notebook
A data analysis project exploring consumer behavior and sales trends through EDA using Python. Includes visualizations and insights derived from retail shopping data.
Upload a CSV → get a full EDA report with LLM-generated executive summary, charts, and downloadable PDF/Word exports. Built with Streamlit, Pandas, and OpenAI GPT-4. Handles 50K+ row datasets, cuts manual EDA time by 60%. Includes a sample output report.
[BETA — v2 rebuild] MCP server for data analytics — Shopify, Stripe, CSV, forecasting, ML. Works in Claude, Cursor, and any MCP client. Expect rough edges while the rewrite lands.
Enterprise-grade CSV data quality analyzer powered by Machine Learning. Automatic anomaly detection, statistical profiling, PII scanning, and actionable insights. Secure user authentication, custom data pipelines, and interactive dashboards. Production-ready SaaS application.
FPV Blackbox CSV analyzer for feel-based PID tuning. Demo site online; full large-log analysis runs locally.
This project aims to analyze e-commerce data to derive meaningful insights about customer behavior, sales trends, and product performance. We utilize Python, MySQL, and various data visualization libraries to perform the analysis.
An AI-powered trade prediction system using machine learning, technical analysis, and time series models. Built with FastAPI, React, and Tailwind CSS.
InsightData is an intelligent data analysis tool that turns natural language queries into Python code. Built using Streamlit, LangChain, and Google Gemini (Flash 2.5), it allows users to upload datasets (CSV/Excel) or connect Google Sheets to perform EDA, clean data, and generate matplotlib visualizations instantly. Supports English & Indonesian.
A menu-driven Student Result Analysis system built with Streamlit and Pandas. Perform automated grading, topper identification, and subject-wise performance analysis from CSV data.
🧠 A 100% local, privacy-focused RAG system that lets you chat with PDFs, CSVs, and NoSQL data offline using Ollama & ChromaDB.
An interactive web app to analyze tweet sentiments using TextBlob or VADER. Supports real-time predictions and CSV uploads for bulk analysis. Features automatic tweet cleaning, model selection, and sentiment visualizations with Seaborn/Matplotlib.
This project uncovers audience behavior patterns by analyzing YouTube video engagement metrics using Python. From 360° EDA to interactive dashboards, it breaks down how views, likes, dislikes, and comments reveal user sentiment and content performance, built with NumPy, Pandas, Seaborn, Dash, and hypothesis testing to produce real time analytics.
A High-Performance RAG Engine using Streamlit, LangChain, & Gemini 2.5 Flash. Built on ConversationalRetrievalChain for instant, precise document analysis (PDF, CSV, MD, TXT) without agentic overhead.
AI-powered financial analysis platform built with Django and AWS Bedrock, designed for accountants to gain insights from CSV data with multi-agent support (MCP).
🔍 Titanic EDA: odkrywanie wzorców przeżywalności przez analizę danych. Profesjonalny projekt z wizualizacjami i insights
AI-powered data analysis dashboard built with Streamlit for CSV exploration, visualization, and insights.
CHEM•VIZ — Chemical Equipment Parameter Visualizer | Hybrid Web + Desktop app for CSV-based scientific data analysis with interactive charts & PDF reports. Built for FOSSEE
Chat with your CSV data in plain English — AI agent that writes & runs Python code, generates interactive charts, and explains insights using DeepSeek V3 + LangChain + Streamlit
Implementa un asistente de voz local para análisis conversacional de negocio sobre archivos CSV, con preparación tabular de datos, transcripción de voz, síntesis de voz e inferencia con un modelo de lenguaje ejecutado en entorno local.
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