The document provides an overview of anomaly detection using deep auto-encoders, explaining key concepts such as outliers vs anomalies and various detection modeling techniques. It highlights real-world applications across multiple domains including healthcare and internet security, and discusses the challenges in feature selection for effective anomaly detection. The document concludes with details on semi-supervised approaches and advanced modeling techniques in deep learning for better anomaly detection.