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Glossary > Privacy Enhancing Technologies PETs

What is Privacy Enhancing Technologies PETs?

Understanding Privacy Enhancing Technologies PETs

Privacy Enhancing Technologies (PETs) provide technical mechanisms for extracting value from data while minimizing privacy risks. They include techniques like differential privacy (adding statistical noise), federated learning (training models across distributed datasets without centralizing), homomorphic encryption (performing computations on encrypted data), secure multi-party computation (collaborative computation without revealing individual inputs), and trusted execution environments (isolating data in secure hardware enclaves). Each approach addresses different privacy challenges—some reduce re-identification risk, others prevent unauthorized data access, while still enabling collaborative analysis or machine learning. Implementation hurdles vary: performance overhead in cryptographic protocols, specialized expertise needed for protocol design, and integration complexities with existing data pipelines. As privacy regulations expand and consumer trust becomes paramount, PETs offer a way to innovate without violating privacy. Early adopters see them as competitive advantages, enabling data collaboration across organizational boundaries while respecting legal and ethical requirements. However, broad uptake requires standards, accessible tooling, and alignment with real-world business needs.

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