What measures do you take to secure sensitive data during model training?
Answer / Vijay Agrawal
To secure sensitive data, several measures can be taken. These include anonymizing or pseudonymizing the training data; using differential privacy techniques to protect individual records while still allowing for useful learning; and ensuring that all training data is stored and transmitted securely.
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