Skip to content
View vaibhavshiroorkar's full-sized avatar

Highlights

  • Pro

Organizations

@Who-Let-Us-Cook

Block or report vaibhavshiroorkar

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Maximum 250 characters. Please don't include any personal information such as legal names or email addresses. Markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
vaibhavshiroorkar/README.md

🚀 Vaibhav Shiroorkar

• Backend Software Engineer •

Architecting intelligent systems from hardware constraints to cloud-scale applications.

Website


💡 About Me

I'm a Electronics & Computer Engineering student at K.J Somaiya College of Engineering, specializing in Machine Learning.

I build scalable backend systems, develop data-driven solutions, and explore emerging technologies.

My passion lies in bridging the gap between theoretical models and practical applications.


🛠️ Technology Stack

Languages

Python

AI & Machine Learning

Scikit-Learn Pandas NumPy LangChain

Backend

Node.js FastAPI Flask PostgreSQL MongoDB Redis

Frontend

HTML5 CSS3 JavaScript React

DevOps & Tools

Docker Git VS Code


📂 Engineering Work

🛡️ PaySentry

Real-Time Payment Intelligence Platform.
Architecting a high-throughput engine for financial security. Implements Fraud Detection via XGBoost and Compliance AI using RAG pipelines to ensure sub-100ms latency for transaction scoring.

🕵️ Deepfake Detection

Media Forensics & Authenticity System.
Building a computer vision pipeline to identify manipulated media. Utilizes OpenCV for frame-by-frame analysis and deep learning models served via FastAPI to detect facial anomalies and synthetic artifacts in real-time.

🏥 Disease Prevention

🏆 1st Prize Winner (Final Year Project).
An environmental-to-health predictive platform. Leverages Linear Regression to forecast regional disease outbreaks by analyzing meteorological patterns and historical health data.

📲 SilverGuard

On-Device Fraud Detection.
A cross-platform mobile security application. Detects scams via real-time on-screen and on-call analysis. Orchestrates automation via n8n workflows and a Python backend, integrated into a responsive Flutter interface.


📊 Algorithmic Consistency

Pinned Loading

  1. disease-prediction-system disease-prediction-system Public

    A web-based machine learning application that predicts potential diseases based on user-reported symptoms using supervised classification models, deployed with an interactive frontend and a RESTful…

    JavaScript

  2. silverguard silverguard Public

    SMLRA N8N Hackathon Project

    Dart 2

  3. pc-ease pc-ease Public

    PCEase is a PC building website made to simplify the lives of fellow enthusiasts.

    Python

  4. fintrack fintrack Public

    VP Hackathon

    HTML