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A leading tech recruitment firm in Germany is seeking an experienced Computer Vision Data Scientist to analyze large-scale receipt data for fraud detection. The role involves developing statistical methods, designing feature engineering strategies, and building ML models. Candidates should have strong experience in fraud detection, hypothesis testing, and deep learning. This part-time position offers flexible work hours and the opportunity to work with cutting-edge technology.
At TechBiz Global, we are providing recruitment service to our TOP clients from our portfolio. We are currently seeking an Computer Vision Data Scientist specialist to join one of our clients ' teams. If you're looking for an exciting opportunity to grow in a innovative environment, this could be the perfect fit for you.
Job Description :
1. Analyze large-scale receipt data for fraud patterns and anomalies.
2. Develop statistical methods to detect subtle inconsistencies in receipt data.
3. Design feature engineering strategies combining OCR, visual embeddings, and
behavioral signals.
4. Build and optimize ML models for fraud detection using collected data points.
5. Develop fraud scoring algorithms that combine multiple detection signals and model
outputs.
6. Implement threshold optimization strategies balancing precision and recall for different
risk levels.
7. Design comprehensive fraud scoring systems.
8. Develop weighted scoring mechanisms adaptive to fraud types and retailer patterns.
9. Create interpretable scoring frameworks for manual review teams.
4+ years as a data scientist with experience in fraud detection.
Strong expertise in hypothesis testing, time series, and anomaly detection.
Hands-on experience with classification, ensemble methods, and deep learning (scikit-learn, XGBoost, PyTorch / TensorFlow).
Computer Vision - Strong experience with image processing and embedding, specifically EfficientNet and FAISS, is a plus.
Experience with high-volume transaction processing and real-time decision systems.
Knowledge of retail / e-commerce fraud patterns preferred.
Familiarity with document fraud techniques and anti-fraud methodologies.
Part-time commitment with flexible hours
Why us?