I am a Data Scientist | AI Architect & Engineer | Robotics & Mechatronics Engineer focused on designing intelligent systems using whatever technology the problem demands.
I specialize in the integration of AI, data-driven intelligence, and robotic systems, combining software architecture, machine learning, and engineering disciplines to build end-to-end intelligent solutions—from perception and decision-making to control and real-world deployment.
I have strong expertise in architecting AI-driven systems using modern architectural practices, including C4 Model–based system design, ADR-driven decision making, and architecture verification (ATAM). My work focuses on building scalable, secure, and cost-efficient AI platforms, particularly for GenAI, RAG-based systems, and multi-agent architectures, while maintaining high standards of quality, observability, and governance.
With a background in Robotics & Mechatronics Engineering, I bridge AI software architecture with physical systems, control logic, sensors, actuators, and hardware-aware constraints—enabling intelligent systems that operate reliably in real-world, dynamic environments.
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Programming Languages: Python, C/C++
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Frameworks & Tools: ROS, MATLAB, HTML/CSS/JavaScript, Flutter/Dart
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AI / Machine Learning: NLP, Computer Vision, Speech Processing, Tabular Data
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System & Software Architecture:
- AI system design
- Distributed systems
- C4 Model (Context, Container, Component, Code)
- API & backend architecture
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Design & Engineering: CAD, Mechanical & Hardware Design, Electrical & Computer Engineering
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Control Systems: Control Systems Engineering for Robotics
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AI & Software Architecture
- C4 Model (Context, Container, Component)
- High-Level & Low-Level Design (HLD / LLD)
- Architecture Decision Records (ADR)
- Architecture Tradeoff Analysis (ATAM)
- API design (OpenAPI), integration patterns (REST, async messaging, AI protocols such as MCP)
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GenAI & Intelligent Systems
- Retrieval-Augmented Generation (RAG, CAG, hybrid RAG, re-ranking)
- AI Agents & Multi-Agent Systems (ReAct, Plan-and-Execute)
- GenAI evaluation (faithfulness, relevance, latency)
- Security for AI systems (OWASP Top 10 for LLM, guardrails)
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Data & MLOps Architecture
- End-to-end data pipelines (ETL/ELT, Data Lake, Data Warehouse (DWH), Feature Store, Vector DB)
- MLOps pipelines (training, deployment, monitoring, drift)
- CI/CD, Infrastructure as Code (Terraform)
- Model lifecycle management
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Infrastructure & Scalability
- Kubernetes vs Serverless tradeoffs for AI workloads
- High-availability (HA) and disaster recovery (DR)
- Resource sizing (CPU, GPU, RAM, VRAM), inference optimization
- Hybrid and multi-cloud AI architectures
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Governance, Cost & Leadership
- FinOps-driven architectural decisions
- Ethical & Responsible AI by Design
- Observability (metrics, logs, traces)
- Technical debt management and architectural governance
I design intelligent, production-grade systems that combine AI, robotics, and software architecture—balancing performance, scalability, safety, cost, and long-term evolution. My focus is on systems that think, decide, and act in real-world conditions, whether purely digital or cyber-physical.
If you’re looking for someone who can architect and engineer intelligent systems end to end—from requirements and risk analysis to AI + robotics production deployment—I’d be happy to connect:
- LinkedIn: View my LinkedIn profile