About
Software Engineer with a Master of Science in Computer Science from Stevens Institute of Technology (December 2025), focused on building reliable, production-ready systems at scale.
I specialize in distributed systems, cloud infrastructure, and applied machine learning - designing systems that operate under real-world constraints where performance, observability, and fault tolerance matter as much as functionality.
I work at the intersection of backend systems, Machine Learning, Computer Vision, and MLOps - designing infrastructure to train, deploy, and operate models in production. Beyond model development, I care deeply about latency, availability, versioning, monitoring, and deployment safety, ensuring ML systems remain dependable at scale.
I approach engineering with discipline, structure, and first-principles thinking. I believe strong intuition is built through strong applied knowledge - earned by understanding how systems behave under load, how they fail, and how they can be improved.
What I'm Currently Up To
- ๐ญ Working on: Building scalable ML inference pipelines and distributed backend services
- ๐ฑ Learning: Advanced system design patterns, Rust for systems programming, and large-scale data processing
- ๐ฌ Ask me about: Distributed systems, ML infrastructure, cloud architecture, and backend engineering
- ๐ฏ Goal: Contributing to high-impact engineering teams at top tech companies
Core Competencies
Tech Stack
Certifications
Cloud, AI & Machine Learning
Multi-Cloud AI Engineering
Programming & CS Foundations
GitHub Activity
GitHub Contributions
What I'm Looking For
I'm actively seeking Software Engineer, Backend Engineer, ML Infrastructure, and Platform Engineer roles where I can contribute to building systems that operate reliably at scale. I'm particularly interested in teams working on distributed systems, ML infrastructure, cloud-native platforms, and high-throughput data pipelines.
Open to: Full-time roles ยท U.S.-based ยท Remote or On-site