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krassiaa/README.md

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AI Research & CV/ML Engineer

Hello! I am an ML Engineer specializing in Computer Vision, Deep Learning, and AI Safety (Adversarial ML & Deepfake Detection). I build end-to-end pipelines — from robust data engineering to training and optimizing SOTA models for production.

  • 🧠 Core Focus: Deepfake Detection, Adversarial Robustness & Video Analytics
  • 🛠️ Engineering: Building automated preprocessing pipelines & production-grade evaluation code
  • 📱 Optimization: Adapting heavy architectures for edge devices (MobileNetV4, ONNX Runtime)
  • 📬 How to reach me: deepranse@gmail.com

Tech Stack

  • Languages: Python (Advanced), Bash
  • Frameworks & Deep Learning: PyTorch, PyTorch Lightning, ONNX Runtime
  • Computer Vision: OpenCV, MediaPipe, InsightFace, Vision Transformers (ViT)
  • AI Safety & Adversarial ML: Adversarial Robustness Toolbox (ART)
  • DevOps & MLOps: Docker, Git, Linux (Ubuntu/Debian)

💼 Commercial Experience

deepfake-detection — R&D project for industrial deepfake detection on edge devices.

  • Developed and evaluated two pipelines: heavy DINOv2 (22.1M params) and lightweight MobileNetV4 (9.2M params).
  • Achieved 0.9988 ROC-AUC (98.30% Accuracy) with DINOv2 and 0.9932 ROC-AUC (96.64% Accuracy) with MobileNetV4.
  • Proven that MobileNetV4 (64 MB) maintains competitive quality, making it ideal for edge inference.
  • Built a custom dataset (43.7k+ videos) combining 7 benchmarks and custom AuthorDeepFake-6600 dataset generated via InSwapper & SDXL.
  • Deployed on NVIDIA RTX 3090 for training and optimization.

🎓 Academic Research

adversarial_pipeline — Master's thesis on real-time adversarial attacks against face recognition.

  • Adapted NI-FGSM and MI-FGSM optimization for live video streams (33.6 FPS on Apple M1 Pro via MediaPipe).
  • Achieved 99.75% Attack Success Rate (ASR) against SOTA face recognition models with imperceptible perturbations (PSNR > 36 dB).

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