Security (2027)
: Reconstructing sensitive training data from a model's predictions to compromise privacy. Deep Learning for Defense
: Subtly altering input data to trick a model into making incorrect predictions. security
The intersection of security and deep learning covers two primary areas: using deep learning to security (e.g., intrusion detection) and protecting deep learning models from vulnerabilities (e.g., adversarial attacks) . Key Security Threats to Deep Learning : Reconstructing sensitive training data from a model's
: Injecting malicious data into training sets to corrupt the learning process. security