Building things, breaking things, and occasionally understanding them from Kerala, India.
I'm a developer who thrives on turning random ideas into scalable, working projects. I'm deeply interested in the intersection of AI, backend infrastructure, and modern web development.
- π€ Exploring: AI-powered applications and advanced prompt engineering
- π Building: Efficient web apps, robust backend systems, and developer tools
- π§ Learning: System design, scalability, and something new every day
- β‘ Focus: Practical, high-utility projects that solve actual problems
Focused on building efficient, developer-first tools with real-world utility.
A self-hosted, browser-based workspace designed to centralize developer tools and workflows into a single, accessible interface. Built for simplicity, speed, and extensibility.
Highlights:
- π Fully browser-accessible developer environment
- β‘ Lightweight architecture with minimal overhead
- π§© Designed for extensibility and modular tool integration
Tech Stack: TypeScript Node.js HTML CSS
A minimal yet powerful framework for building interactive terminal applications. Klix focuses on clean abstractions, session-driven architecture, and developer ergonomics.
Highlights:
- π₯οΈ Rich terminal UI with structured session handling
- π Lifecycle hooks and state management built-in
- π§± Modular command system for scalable CLI apps
Tech Stack: Python prompt_toolkit Rich
A streamlined Python framework for building Telegram bots with modern async capabilities and efficient networking.
Highlights:
- π€ Simple and clean bot development workflow
- β‘ Async-first design for performance
- π HTTP/2 support for faster API communication
Tech Stack: Python httpx
Production-ready spam detection with intelligent 6-category classification. Trained on 158.6K multilingual messages with ONNX-powered inference.
Highlights:
- π‘οΈ Binary spam detection + 6-category classification (Phishing, Job Scams, Crypto, Adult, Giveaway, Marketing)
- π 8 languages supported (English, Spanish, Chinese, Arabic, Hindi, German, Russian, French)
- β‘ Ultra-lightweight inference (<15MB RAM, <5ms latency)
- π― 93%+ accuracy with ONNX-powered models
- π Trained on 158.6K curated + synthetic messages
- π Production-deployed in numerous moderation systems
Resources:
- π€ Model on Hugging Face
- π Datasets on Hugging Face
- π Full Documentation
Tech Stack: Python Scikit-learn ONNX Runtime TF-IDF Logistic Regression





