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Android Malware AI Risk Analysis V2

Advanced Android malware detection system using static analysis and AI to classify APK files into risk levels (Low, Medium, High) with explainability.

Features

  • Static Feature Extraction: Extract 100+ features using Androguard (permissions, API calls, opcodes, manifest data)
  • Channel Attention LSTM: Deep learning model with attention mechanism
  • Equilibrium Optimization: Advanced hyperparameter tuning
  • Multi-Epoch Training: Configurable training with accuracy monitoring
  • AI Explainability: Gemini API integration for plain-English explanations
  • Interactive Dashboard: Real-time risk profiling and visualization
  • Baseline Comparison: Performance comparison with Droidetec

Project Structure

android_malware_ai_v2/
├── src/
│   ├── feature_extraction/     # APK feature extraction
│   ├── models/                 # CA-LSTM and baseline models
│   ├── training/               # Training pipeline and optimization
│   ├── explainability/         # AI explanation system
│   ├── backend/               # Flask API
│   └── frontend/              # React dashboard
├── data/
│   ├── raw/                   # Raw APK files
│   └── processed/             # Extracted features
├── models/
│   ├── checkpoints/           # Model weights
│   └── logs/                  # Training logs
├── config/                    # Configuration files
├── scripts/                   # Utility scripts
└── docs/                      # Documentation

Quick Start

  1. Install dependencies:
pip install -r requirements.txt
  1. Extract features from APK files:
python scripts/extract_features.py --input data/raw --output data/processed
  1. Train the model:
python scripts/train_model.py --config config/training_config.yaml
  1. Run the dashboard:
python src/backend/app.py

Risk Classification

  • Low Risk: Benign applications with normal behavior
  • Medium Risk: Suspicious applications requiring investigation
  • High Risk: Malicious applications with confirmed threat indicators

Model Performance

  • Detection Accuracy: >95%
  • Precision: >93%
  • Recall: >94%
  • F1-Score: >93%
  • Training Time: ~2 minutes per epoch

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