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manuiitj/README.md

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 What I'm up to

  • 🔭  Building AI-powered web security tools — an SQLi scanner & vulnerability detection
  • 🎓  M.Tech graduate from IIT Jodhpur
  • 🛡️  Exploring token-aware payload analysis & grey-box web scanning
  • ⚙️  Working with MLOps — CI/CD, Docker & model deployment
  • 💬  Ask me about Python, Flask & application security
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Tech Stack

🛡️ Security & Web Focus


Featured Project

🔐 AI-powered SQL Injection scanner with token-aware form submission, risk scoring,
dynamic AI conclusions, and a Flask web dashboard.


GitHub Stats


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  1. Token-Aware-Mini-SQLi-Scanner Token-Aware-Mini-SQLi-Scanner Public

    A token-aware, AI-assisted SQL Injection (SQLi) scanner built with Python and Flask. It crawls web forms, intelligently ranks and injects SQL payloads, analyzes server responses for vulnerability i…

    Python 1

  2. pujaniitj/mlops-group-project-iitj pujaniitj/mlops-group-project-iitj Public

    End-to-End MLOps Pipeline Docker · GitHub Actions · Kaggle · W&B

    Python

  3. Earthquake-Intensity-prediction-Challenge Earthquake-Intensity-prediction-Challenge Public

    Kaggle solution predicting earthquake magnitude with a stacked gradient-boosting + neural-net ensemble, meta-stacking, and pseudo-labeling (RMSE 0.53359)

    Python

  4. warehouse-pricing-analysis warehouse-pricing-analysis Public

    Pricing & yield analytics on a real warehouse portfolio using SQL and pandas — rate premium, +50% growth, and repricing recommendations.

    Python