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Armin-Abdollahi/README.md

EEG

🧠 Neuro-AI & BCI Researcher | M.Sc. in Artificial Intelligence

Welcome to my academic space! I am Armin Abdollahi, a researcher dedicated to bridging the gap between Computational Neuroscience and Deep Learning. My work focuses on making Brain-Computer Interfaces (BCIs) more reliable and interpretable using Explainable AI (XAI).

🌐 Academic Website | 💼 LinkedIn | 🎓 Google Scholar


🔭 Current Research & Focus

  • Thesis (20/20 Score): Developing Transformer-based models for EEG signal decoding.
  • Explainable AI (XAI): Uncovering the "Clever Hans" effect in BCI models using Grad-CAM and RSA.
  • Robust Architectures: Engineering Convolutional Transformers (CvT) for artifact-resistant neural decoding.
  • Open Science: Translating Alexander Guger’s BCI textbook into Persian to support the local scientific community.

🛠️ Technical Stack

Neuro-specific tools: MNE-Python | EEGLAB | Optuna | Hugging Face


🧪 Research Interests

  • BCI & HCI: Motor Imagery, ERP, and SSVEP decoding.
  • Explainability: Interpretable Deep Learning for Bio-signals.
  • Multimodal Data: Integrating EEG with fNIRS for hybrid interfaces.
  • Optimization: Hyperparameter Tuning & Automated ML (AutoML).

🤝 Connect with me:


📊 GitHub Stats

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  1. Bone-Age-Estimation Bone-Age-Estimation Public

    Bone age estimation using hand X-Ray images

    Jupyter Notebook 14

  2. Signal-Processing Signal-Processing Public

    It features tutorials on using the EEGLAB toolbox and MNE-Python, guiding users through the basics of EEG data handling, pre-processing, and artifact removal.

    Jupyter Notebook 6