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🧭 About Me

I'm an AI Director operating at the intersection of research, engineering, and leadership — turning complex machine learning problems into scalable, production-grade systems. I lead cross-functional teams across the full AI lifecycle: from data pipelines and model development to deployment and continuous monitoring.

  • 🔭 Currently directing AI strategy and MLOps infrastructure at Pishro Net Energy
  • 🧠 Deep background in machine learning, statistical modeling, and systems design
  • 🚀 Passionate about bridging the gap between research prototypes and reliable production systems
  • 👥 Experienced in building and scaling high-performance AI engineering teams
  • 📍 Based in Tehran, Iran

⚙️ Tech Stack & Skills

💻 Programming Languages

Python C++

🤖 AI / ML

PyTorch TensorFlow scikit-learn Hugging Face

🔁 MLOps & Serving

MLflow Prefect Ray FastAPI

🐳 Infrastructure & DevOps

Docker GitLab CI/CD GitHub Actions Ansible Grafana Prometheus MinIO


📊 GitHub Stats

  

🚀 Featured Projects

Project Description Stack
🔍 ISLE (arXiv:2512.12760) Hybrid information retrieval architecture for scientific discovery Python · Ray · Docker · GitLab
🏭 Matna Nexus Production-deployed industrial diagnosis platform for advanced behavioral insights Python · Ansible · Docker · GitLab CI
fuzzy-c-optimized High-performance fast fuzzy logic systems with native bindings C++ · Python · Makefiles
🌡️ Thermodynamic Diagnostics Physics-informed modeling and time-series anomaly detection for chiller devices Python · Ray · Docker

🧠 Leadership Philosophy

"The best AI systems aren't just technically sound — they're built by teams that communicate well, iterate fast, and never lose sight of the problem they're solving."

I believe great AI leadership means:

  • Fostering psychological safety so engineers take bold technical risks
  • Prioritizing reproducibility and observability from day one — not as an afterthought
  • Building bridges between research and production so good ideas actually ship
  • Measuring success not just in model accuracy, but in business impact

Open to collaborations, advisory roles, and conversations about AI at scale.

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