University of Jyväskylä, Finland
Bridging the gap between AI Research and Production Engineering.
I am an AI Systems Architect specializing in building production-grade Generative AI platforms. With a background in High-Performance Computing (HPC) and Simulation, I don't just wrap APIs - I build secure, cost-optimized, and observable AI infrastructure.
I focus on "Day 2" Operations: Governance, FinOps (Cost Modeling), Latency Optimization, and Role-Based Security.
My repositories are Reference Architectures, not just demos. Each includes C4 Models, ADRs (Decision Records), and Cost Analysis.
-
DocuMind-Enterprise | Agentic RAG Platform
- Architecture: Asynchronous FastAPI + LangGraph State Machine.
- Key Pattern: Identity-Aware Retrieval. Implements "Citation-First" governance to eliminate hallucinations in regulated industries.
-
Meridian | Context Orchestration Engine
-
Architecture: 4-Layer Cognitive Chain (Identity
$\to$ Intent$\to$ Knowledge$\to$ Generation). - Key Pattern: Row-Level Security (RLS) for RAG. Filters vector retrieval based on user roles (CEO vs. CTO) to prevent data leaks.
-
Architecture: 4-Layer Cognitive Chain (Identity
-
Swarm-Factory | Cloud-Native IIoT Platform
- Architecture: Event-Driven Architecture (EDA) on Azure (Event Hubs + Serverless Functions).
- Key Pattern: Spec-Driven Development. Uses OpenAPI/AsyncAPI contracts to decouple high-velocity telemetry from dashboard visualization.
-
Poseidon-Link | Polyglot Marine Control System
- Architecture: C++ (Physics) + Go (Telemetry) + React (UI).
- Key Pattern: Safety-Critical AI. Uses a Go broker to sanitize AI voice commands before they reach the C++ physics engine.
-
Hyperion | Physics-Guided Sales AI
- Architecture: Hybrid Intelligence (Vectorized Pandas + GPT-4o).
- Key Pattern: Zero-Hallucination. Anchors Generative AI sales pitches to a deterministic physics simulation engine.
-
Pipeline-X | Hybrid Cloud Data Platform
- Architecture: Apache Spark (Big Data) + Airflow + Qdrant (Vector Search).
- Key Pattern: Unified Pipeline. Orchestrates dual-stream processing to keep SQL Analytics and Vector Embeddings in sync.
I believe in Architecture over Implementation details. My work is guided by:
- The "Zero-Legacy" Mindset: Every project includes
ADR(Decision Records) so future teams understand why choices were made. - FinOps First: AI is expensive. I implement token caching, routing, and quantization strategies to minimize OpEx.
- Visual Communication: I use C4 Models to translate code complexity for C-Level stakeholders.
- AI & Orchestration: Python, LangChain, LangGraph, Semantic Kernel, OpenAI, Ollama.
- Vector Infrastructure: Qdrant, Supabase (pgvector), Milvus.
- Backend & Systems: FastAPI (Python), Go (Golang), C++17, Apache Spark.
- Cloud & DevOps: Azure (Entra ID, Container Apps), Docker, Terraform (IaC), GitHub Actions.
- Frontend: React, TypeScript, TailwindCSS, Streamlit.
- LinkedIn: linkedin.com/in/nibir-1
- Email: nahasat.nibir@gmail.com




