Litcius/Paper detail

Chorus: a Programming Framework for Building Scalable Differential Privacy Mechanisms

Noah Johnson, Joseph P. Near, Joseph M. Hellerstein, Dawn Song

202026 citationsDOIOpen Access PDF

Abstract

Differential privacy is fast becoming the gold standard in enabling statistical analysis of data while protecting the privacy of individuals. However, practical use of differential privacy still lags behind research progress because research prototypes cannot satisfy the scalability requirements of production deployments. To address this challenge, we present Chorus, a framework for building scalable differential privacy mechanisms which is based on cooperation between the mechanism itself and a high-performance production database management system (DBMS). We demonstrate the use of Chorus to build the first highly scalable implementations of complex mechanisms like Weighted PINQ, MWEM, and the matrix mechanism. We report on our experience deploying Chorus at Uber, and evaluate its scalability on real-world queries.

Topics & Concepts

Differential privacyScalabilityComputer scienceImplementationChorusInformation privacyDifferential (mechanical device)Big dataProduction (economics)Scale (ratio)Computer securityData managementScheme (mathematics)Privacy softwareKey (lock)Information sensitivityDistributed computingMechanism (biology)SQLPrivacy-Preserving Technologies in DataMobile Crowdsensing and CrowdsourcingStochastic Gradient Optimization Techniques