Research Scientist (Neurotech) | Real-Time ML on Biosignals (EEG/EMG/ECG)
Research scientist specializing in brain-computer interfaces, real-time machine learning on biosignals, and neural interface technology. Currently Research Associate at the University of Glasgow.
- π¬ Building BCI systems that enhance human capabilities
- π€ Developing time-series ML for EEG/EMG/ECG analysis
- β‘ Creating low-latency, closed-loop neural interfaces
- π Combining control engineering with computational neuroscience
AI-driven audio-neural interface that transforms speech into memorable formats using real-time EEG feedback. 40%+ memory improvement in clinical studies.
Establishing ethical timing thresholds for BCIs to preserve human sense of agency, autonomy, and legal responsibility in ultra-fast neurotechnology systems.
Closed-loop system integrating EEG, ECG, and EMG for sensorimotor decision-making with latency-optimized architecture.
Machine Learning & AI
- Time-series classification/regression, event detection, segmentation
- PyTorch, scikit-learn, TensorFlow
- Causal & streaming inference
Biosignal Processing
- EEG/EMG/ECG filtering & feature extraction
- Real-time signal processing (LSL integration)
- Artifact handling & source separation
Control Engineering
- Linear & nonlinear control systems
- System modeling & identification
- Hardware-in-the-loop (HIL/SIL) validation
Programming & Tools
- Python (NumPy, SciPy, pandas)
- MATLAB
- Git, Docker
- π¬ Research Associate - University of Glasgow (2024 - Present)
- π§ MSc, Brain and Cognition - Pompeu Fabra University (2022-2023)
- βοΈ PhD, Control Engineering - AUT, Iran (2009-2013)
- π Visiting Researcher - University of Groningen (2017-2018)
- π Website: hamedghanes.github.io
- π§ Email: [email protected]
- πΌ LinkedIn: linkedin.com/in/hamedghane
- π Academic Profile: University of Glasgow
