Developing methods and tools to enable a secure and privacy-friendly processing of data thus constitutes a core challenge to all data-driven ecosystems and applications. In particular, the success of digitalization heavily depends on whether companies are able to gain their users' trust regarding the protection of their privacy. This research area strives to develop disruptive new frameworks for reasoning about and improving security and privacy in information processing in various settings, efficiently and at scale. In the last years, this area has had a particular focus on the following topics: novel methods and tools for the algorithmic sanitization of privacy-sensitive data, in particular for genomic and medical research, new techniques for quantitatively assessing end user privacy, as well as efficient techniques for secure, verifiable computation.
IEEE Computer Security Foundations Symposium34th IEEE Computer Security Foundations Symposium
Neural Information Processing Systems (NeurIPS)NeurIPS 2020
ACM SIGSAC Conference on Computer and Communications Security (CCS)CCS 2020