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fatimasood/README.md

Hi there, I'm Fatima Masood 👋

LinkedIn Kaggle Email

🚀 AI Researcher & Software Engineer

Engineering Explainable AI Systems Where Accuracy Alone Is Not Enough.

I am a Master’s student in Artificial Intelligence, specializing in Explainable AI (XAI) and Quantum Machine Learning. My core passion lies in breaking down the "black box" of complex deep learning models—specifically for critical healthcare systems and diagnostic transparency. Parallelly, I am an experienced Flutter Developer with a production-first mindset for building scalable mobile systems.


🧠 Research Focus & Core Areas

  • Beyond the Black Box (XAI): Utilizing feature attribution methods (SHAP, LIME, Integrated Gradients, Grad-CAM) to make medical diagnostics interpretable for clinicians.
  • Quantum Machine Learning: Developing hybrid quantum-classical neural networks to optimize high-stakes predictive systems.
  • Trustworthy Decision Frameworks: Combining advanced deep learning (GNNs, Transformers) with interpretable algorithms like Fuzzy Logic.

🛠️ Technical Ecosystem

Domain Tools & Frameworks
Explainable AI (XAI) SHAP • LIME • Integrated Gradients • Grad-CAM • Fuzzy Logic
Deep & Machine Learning PyTorch • TensorFlow • Keras • Scikit-Learn • GNNs • LSTMs
Quantum Computing PennyLane • Hybrid QCNNs
Data Science & Analytics Python • Pandas • NumPy • Matplotlib • Seaborn
Mobile Engineering Flutter • Dart • Firebase • Supabase • Bloc/Provider • REST APIs

🔬 Featured Projects

🏥 Explainable & Quantum AI (Healthcare)

  • XAI Hybrid Quantum Liver Disease Detection: An explainable hybrid quantum-classical neural network built using PennyLane and TensorFlow, interpreting results via SHAP and Integrated Gradients.
  • CNN-Based Early Autism Detection: Utilizing facial image analysis with advanced CNN architectures (Xception, VGG16) integrated into a reproducible ML pipeline for early ASD biomarkers.
  • XAI Diabetes Prediction Engine: A Stacking Ensemble classifier mapped with LIME to provide transparent, feature-level insights into patient data.

🛡️ Trustworthy NLP & Computer Vision

  • NeuroVerify Engine: A multimodal fake news detection pipeline combining LSTMs, Graph Neural Networks (GNNs), and Transformers with a novel rule-based Fuzzy Logic system for interpretable trust scoring.
  • High-Resolution Face Restoration: A deep learning pipeline featuring U-Net Autoencoders, GANs, and Hybrid Context Encoders for restoring damaged portraits.

📱 Smart Mobile Ecosystems (Flutter)

  • Smart Helmet Mobile App: A real-time IoT-integrated Flutter application engineered for instant accident detection and emergency aid deployment.
  • InfoKlub App: A secure personal data ecosystem featuring drag-and-drop file uploads, AI-powered CV generation, and end-to-end data encryption.

📊 GitHub Analytics

🛠️ Most Used Languages & Tech Stack

My Tech Stack

📈 Contribution Graph

Fatima's Activity Graph


💬 Let's Collaborate!

  • 🔭 Currently refining: Quantum AI frameworks and human-interpretable validation models.
  • 💡 Ask me about: Why your model acts like a black box and how we can add transparency layers to it.
  • 🤝 Open to: Academic research collaboration, XAI integrations, and architectural consulting.

"I believe AI systems used in healthcare, security, and public decision-making must prioritize interpretability, accountability, and human trust—not just predictive accuracy."

Pinned Loading

  1. XAI-Hybrid-Quantum-Liver-Disease-Detection XAI-Hybrid-Quantum-Liver-Disease-Detection Public

    Explainable Hybrid Quantum–Classical Neural Network for Liver Disease Detection using PennyLane, TensorFlow, and XAI techniques (SHAP, Integrated Gradients).

    HTML 1

  2. CNN-Based-Early-Autism-Detection-Using-Facial-Image-Analysis CNN-Based-Early-Autism-Detection-Using-Facial-Image-Analysis Public

    A deep learning project for early detection of Autism Spectrum Disorder (ASD) using facial image analysis. Built with CNN architectures (Xception, VGG16) and a clean, reproducible ML pipeline.

    Jupyter Notebook

  3. High-Resolution-Face-Restoration-with-Hybrid-Context-Encoder High-Resolution-Face-Restoration-with-Hybrid-Context-Encoder Public

    Deep learning pipeline for restoring damaged celebrity portraits using U-Net Autoencoder, GAN, and Hybrid Context Encoder. Includes masking pipeline, custom losses, and evaluation metrics.

    Jupyter Notebook

  4. XAI-Diabetes-Prediction XAI-Diabetes-Prediction Public

    Predicting diabetes with transparency: A Stacking Ensemble combined with LIME for explainable insights into patient data

    Jupyter Notebook

  5. Smart_helmet_flutter_mobileapp Smart_helmet_flutter_mobileapp Public

    Revolutionize road safety with our Smart Helmet: instant accident detection and emergency aid for riders, ensuring timely assistance.

    Dart 1

  6. InfoKlub-App InfoKlub-App Public archive

    InfoKlub is a smart app to manage personal, educational, medical, and career information securely. It features drag-and-drop file uploads, AI-powered CV generation, real-time updates, and data encr…

    Dart 2