With the meteoric growth of technology, individuals and organizations are widely adopting cloud services to mitigate the burdens of maintenance. Despite its scalability and ease of use, many users who own sensitive data refrain from fully utilizing cloud services due to confidentiality concerns. Maintaining data confidentiality for data at rest and in transit has been widely explored but data remains vulnerable in the cloud while it is in use. This vulnerability is further elevated once the scope of computing spans across the edge-to-cloud continuum. Accordingly, the goal of this dissertation is to enable data confidentiality by adopting confidential computing across the continuum. Towards this goal, one approach we explore is to separate the intelligence aspect of data processing from the pattern-matching aspect. We present our approach to make confidential data clustering on the cloud, and then develop confidential search service across edge-to-cloud for unstructured text data. Our proposed clustering solution named ClusPr, performs topic-based clustering for static and dynamic datasets that improves cluster coherency up to 30%-to-60% when compared with other encryption-based clustering techniques. Our trusted enterprise search service named SAED, provides context-aware and personalized semantic search over confidential data across the continuum. We realized that enabling confidential computing across edge-to-cloud requires major contribution from the edge tiers particularly to run multiple Deep Learning (DL) services concurrently. This raises memory contention on the edge tier. To resolve this, we develop Edge-MultiAI framework to manage Neural Network (NN) models of DL applications such that it can meet the latency constraints of the DL applications without compromising inference accuracy.
翻译:随着技术的流星式增长,个人和组织正在广泛采用云服务来减轻维护的负担。尽管其可缩放性和容易使用,许多拥有敏感数据的用户由于保密考虑而避免充分利用云服务。保持休息和中转数据的数据保密已经得到了广泛的探索,但在使用时数据仍然在云层中脆弱。一旦计算范围跨越边际至宽宽度的连续体,这种脆弱性就会进一步升高。因此,这种分解的目的是通过在整个连续体中采用保密计算来保证数据保密。为了实现这一目标,我们探索的一种方法是将数据处理的智能方面与模式匹配方面分开。我们介绍了我们在云端和中保持机密数据集群的方法,然后开发了在云端和中数据在云端之间的机密搜索服务。我们提议的集解方案名为ClusPr,对静电和动态数据集进行基于主题的集群组合,从而在与其他基于加密的组合技术相比,使集群的共度达到30-60%。我们所信任的企业搜索服务名为SAED, 使机密性数据分组的高级搜索模型能够超越个人内部的轨道。我们为此需要通过保密级的轨道进行多层次搜索。