Passionate about technology, with a strong interest in Artificial Intelligence and Backend development. Curious about building innovative, real-world solutions through continuous learning and hands-on projects.
- π€ Artificial Intelligence
- π Backend Development
- π± Mobile App Development (Flutter)
- π§© Data Structures and Algorithms
- π Gen AI and Agentic AI
- π₯οΈ Backend Development
- π Cloud Technologies (Azure)
π§ AI Intern @ Siemens DISW (June 2025 β Present)
Currently at Siemens DISW, working on cutting-edge AI solutions and cloud-based deployments using Azure and advanced AI frameworks like LangChain and RAGAS.
π₯οΈ Backend & Mobile App Developer @ Infinity Toy Tronics Pvt. Ltd. (Dec 2024 β March 2025)
Developed and deployed cross-platform mobile apps using Flutter on both Play Store and App Store, while also building scalable backend solutions with Next.js and Firebase at Infinity Toy Tronics.
May 2024
Developed a machine learning-based system with a MERN stack interface to recommend GitHub repositories for open-source contributions.
Technologies: Python, TF-IDF, LDA, BERT, Cosine Similarity, GitHub API, MongoDB, Express.js, React, Node.js
- Automated metadata retrieval with Python scripts.
- Applied NLP techniques, including TF-IDF, LDA, and BERT, for text preprocessing and keyword extraction.
- Enhanced recommendation accuracy using Cosine Similarity, clustering, and BERT-based embeddings.
Outcome: Provided personalized repository suggestions, improved user experience, and encouraged open-source contributions.
Dec 2023
Developed a Flutter application integrated with a machine learning model to detect 120 unique dog breeds from images.
Technologies: Python, TensorFlow, Flutter, Firebase
- Trained a CNN with transfer learning using TensorFlow Hub, classifying 120 dog breeds from 10,000+ images.
- Created a real-time breed detection app in Flutter with TensorFlow Lite for efficient on-device predictions.
- Integrated Firebase for data management and authentication, allowing seamless image uploads and breed predictions.
Outcome: Created an interactive mobile app that accurately identifies dog breeds, enhancing user engagement with a responsive UI.
Dec 2023
Created a model to predict flood-affected areas using neural networks and geospatial data.
Technologies: Python, Scikit-learn, NetCDF4, Cartopy, Folium
- Utilized historical geospatial data (aspect, elevation, slope, TWI, etc.) to identify vulnerable areas.
- Applied machine learning algorithms for analyzing susceptibility, enhancing prediction accuracy.
- Developed interactive visualizations with Cartopy and Folium, highlighting flood-prone regions.
Outcome: Enhanced accuracy in flood prediction and provided actionable insights through visualizations.
- βοΈ Iβm looking to collaborate on innovative AI, ML, and web development and app development projects that push the boundaries of technology.
- π€ If you are working on a project that could benefit from my expertise or if you have an exciting idea for collaboration, let's connect!
- π LinkedIn
- π§ Email: [email protected]
Together, let's learn and contribute!

