Sarcouncil Journal of Engineering and Computer Sciences

Sarcouncil Journal of Engineering and Computer Sciences

An Open access peer reviewed international Journal
Publication Frequency- Monthly
Publisher Name-SARC Publisher

ISSN Online- 2945-3585
Country of origin-PHILIPPINES
Impact Factor- 3.7
Language- English

Keywords

Editors

Privacy by Design in Data Engineering: A Technical Framework

Keywords: Privacy by Design, differential privacy, homomorphic encryption, federated learning, GDPR compliance, privacy-preserving analytics.

Abstract: Privacy by Design represents a transformative evolution in data engineering practice, fundamentally shifting from reactive compliance measures to proactive privacy integration throughout organizational data lifecycles. Modern data protection strategies encompass anonymization techniques including k-anonymity and l-diversity, pseudonymization processes, and differential privacy mechanisms that deliver mathematically sound privacy assurances. Contemporary cryptographic implementations leverage homomorphic encryption and secure multi-party computation to enable collaborative analytics while preserving data confidentiality. Privacy-preserving computing frameworks facilitate federated learning and distributed machine learning across organizational boundaries without centralizing sensitive information. Real-world applications demonstrate successful implementations across healthcare systems utilizing privacy-preserving record linkage, financial institutions employing collaborative fraud detection, and retail companies deploying privacy-aware recommendation systems. Global regulatory frameworks, particularly GDPR's explicit mandate for "data protection by design and by default," have transformed Privacy by Design from voluntary best practice to legal requirement. Privacy impact assessments have become standard organizational procedures, influencing architectural decisions that embed privacy safeguards throughout data lifecycles. Advanced privacy-preserving technologies enable novel forms of data collaboration previously impossible without compromising privacy guarantees. Quantum-resistant privacy methods and artificial intelligence-specific privacy challenges represent emerging frontiers requiring specialized defense mechanisms. Comprehensive technology selection frameworks guide organizations in matching specific requirements with appropriate privacy-preserving technologies while understanding performance trade-offs and implementation challenges.

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