π Researcher and developer passionate about AI, Federated Learning, Quantum-Inspired Optimization, and Satellite Networking.
I explore how Artificial Intelligence + Quantum-Inspired Algorithms can transform spaceβairβground integrated networks (SAGINs) and future communication systems.
π Based in Da Nang, Vietnam
π Website: phuchaodo.coregenaihub.com
π¦ Twitter: @haodophuc
- Federated Learning in GEO/SAGIN Networks
- Quantum-Inspired Optimization (QIO) for resource management
- RIS-aided Communications
- Spatio-Temporal Graph Neural Networks (ST-GNNs)
- Latency minimization in large-scale networks
- πΉ Q-FedSatSim β Federated Learning simulation over satellite networks with latency modeling.
- πΉ Q-RISControl β Quantum-inspired AI control for Reconfigurable Intelligent Surfaces (RIS).
- πΉ Quantum-Scheduler β Scheduler using hybrid quantum-classical optimization for SAGINs.
- πΉ MultiModal-LatNet β Multi-modal data transmission with ST-GNN-based compression.
- πΉ learning-simulation β AI/ML sandbox for simulation experiments.
- πΉ learn-FL β Federated Learning fundamentals with clean Python implementations.
- π¦ Pull Shark (active open-source contributor)
- βοΈ Arctic Code Vault Contributor (part of GitHubβs archival project)
π‘ Iβm open to collaborations in AI, quantum-inspired optimization, and satellite networking research.
If youβd like to contribute:
- Fork a repository
- Create a feature branch
- Push changes and open a Pull Request
β¨ Thanks for visiting my profile! Feel free to explore the repositories, raise issues, or connect with me for research collaboration.