I’m an AI Systems Engineer focused on building real-time, production-grade AI systems — especially around LLM workflows, structured intelligence, and stateful applications.
My core interest lies in systems where intelligence is not just generated, but controlled, structured, and made reliable under real-world constraints.
I also document how I think about systems and how I build stable, safe, and production-ready AI infrastructure — including architecture decisions, failure modes, and design tradeoffs.
I work across the full stack of modern AI systems:
- 🧾 Stateful AI applications with structured lifecycle management and conversational interfaces
- 🧠 LLM-based systems for reasoning, structuring, and controllable information extraction
- ⚙️ Low-latency AI workflows designed for reliability and real-world usage constraints
My focus is not just building AI features — but building systems that remain predictable, debuggable, and controllable even when inputs are ambiguous.
A local-first AI-ready job application tracking system with structured state management and conversational CRUD support.
It turns job searching into a stateful, queryable system instead of scattered manual tracking.
Focus areas:
- State machines for application lifecycle
- Natural language → structured CRUD operations
- Workflow tracking and observability
A system that represents my resume in a structured, modular format, allowing fine-grained control over what gets highlighted based on a given job description.
Instead of rewriting resumes blindly, it enables intent-driven selection of relevant projects and experiences from a structured internal representation.
Focus areas:
- Structured resume modeling
- JD-based matching and ranking
- Controllable information selection using LLMs
- Explainable filtering of projects/skills
👉 https://ai-engineer-portfolio-sigma-brown.vercel.app/
I’ll be expanding this portfolio with breakdowns of how I think about systems and how I design stable, safe, and production-ready AI systems over time.
I like building systems that are:
- 🧩 Stateful — every interaction has memory and lifecycle awareness
- ⚡ Reliable — designed to behave predictably under real-world conditions
- 🤖 AI-native — LLMs are embedded into system design, not bolted on
- 🔁 Composable — systems that can evolve into workflows and agents
- 🛡️ Controlled — outputs are structured, observable, and debuggable
I’m especially interested in how these systems behave when:
- inputs are ambiguous
- context is incomplete
- decisions must be explainable
- and failures are expected, not rare
- Memory-driven AI systems
- Structured LLM reasoning pipelines
- Multi-step agent orchestration
- Separation of generation, control, and execution in AI systems
- 🌐 Portfolio: https://ai-engineer-portfolio-sigma-brown.vercel.app/
- 💼 LinkedIn: https://www.linkedin.com/in/adityamore2k/
- 🐙 GitHub: http://github.com/adityadmore2000
“The future of AI systems is not just generation — it is structured control over intelligence itself.”


