Computer Engineering undergrad @ MHSSCE, Mumbai (May 2026)
Building and stress-testing AI systems end-to-end β from MCP server design to structured capability evaluations.
LinkedIn β’ adnanbardgujar@gmail.com β’ Google Developer β’ Google Cloud Skills Boost β Gold League
- BE Computer Engineering | CGPA: 8.30
- Interned at Aiolos Cloud Solutions (Jul 2025 β Apr 2026) β architected, evaluated, and documented MCP tools for production AI systems
- Focused on: LLM integration, MCP server architecture, prompt engineering, and AI evaluation methodology
- I don't just build AI systems β I break them first, find the failure modes, and document what production actually needs
- π Mumbai, India
LLM Integration β Claude, LLaMA 3.3 70B, prompt engineering, RAG pipelines
MCP Architecture β Server design, tool integration, access controls, safety boundaries
AI Evaluation β Pass/fail frameworks, adversarial testing, capability boundary reports
Backend / Fullstack β Python, Flask, React, Node.js, MySQL, MongoDB
Cloud β GCP (Certified), AWS, OCI (Certified)
Python Β· React Β· LLaMA 3.3 70B Β· MCP
Full-stack research engine integrating 4 AI tools (web search, scraping, PDF extraction, summarisation) on a custom MCP server. Cut manual research time by 60%. Built a capability evaluation framework with adversarial testing, achieving 82% accuracy across multi-domain queries.
Python Β· Flask Β· ML Classifiers
Phishing detection combining rule-based heuristics and ML, achieving 87.8% URL accuracy and 99.2% email classification accuracy. Red-teamed with obfuscated URLs and adversarial samples. Built a risk scoring framework for interpretable, human-in-the-loop review.
Python Β· scikit-learn
Fire risk model using feature engineering and cross-validation, achieving 87% accuracy on held-out test data. Stress-tested across edge-case environmental conditions to map reliability degradation zones.
Let's build something worth building β open to connect, research collaborations, and interesting problems worth breaking.