Redacting PII before LLM queries requires layered detection
Teams sending user data to LLMs must redact personally identifiable information at the application layer. Named entity recognition tools like Presidio offer a starting point, but production systems require multiple detec
Engineering teams building AI agents that accept user queries containing personally identifiable information face a hard requirement: redact sensitive data before it reaches the LLM. The question is not whether to filter, but how to do it reliably without breaking the query's utility.
A common appr...
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