Differential Privacy is highly relevant in the fields of machine learning and artificial intelligence (AI) due to its ability to protect individual data privacy during model training and data analysis. As machine learning models, especially deep learning networks, often require large amounts of data, ensuring the privacy of this data becomes crucial. Differential Privacy enables models to be trained on sensitive data without risking the exposure of individual data points. It does so by integrating privacy-preserving mechanisms, like adding noise to the training process, ensuring that the influence of any single data point is minimised. This is particularly important in AI applications where data sensitivity is high, like healthcare or finance, enabling the use of advanced AI techniques while respecting user privacy.
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