DEMO: Integrating MPC in Big Data Workflows

Nikolaj Volgushev, Malte Schwarzkopf, A. Lapets, Mayank Varia, Azer Bestavros
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引用次数: 7

Abstract

Secure multi-party computation (MPC) allows multiple parties to perform a joint computation without disclosing their private inputs. Many real-world joint computation use cases, however, involve data analyses on very large data sets, and are implemented by software engineers who lack MPC knowledge. Moreover, the collaborating parties -- e.g., several companies -- often deploy different data analytics stacks internally. These restrictions hamper the real-world usability of MPC. To address these challenges, we combine existing MPC frameworks with data-parallel analytics frameworks by extending the Musketeer big data workflow manager [4]. Musketeer automatically generates code for both the sensitive parts of a workflow, which are executed in MPC, and the remainder of the computation, which runs on scalable, widely-deployed analytics systems. In a prototype use case, we compute the Herfindahl-Hirschman Index (HHI), an index of market concentration used in antitrust regulation, on an aggregate 156GB of taxi trip data over five transportation companies. Our implementation computes the HHI in about 20 minutes using a combination of Hadoop and VIFF [1], while even "mixed mode" MPC with VIFF alone would have taken many hours. Finally, we discuss future research questions that we seek to address using our approach.
演示:在大数据工作流中集成MPC
安全多方计算(MPC)允许多方在不泄露其私有输入的情况下执行联合计算。然而,许多现实世界的联合计算用例涉及对非常大的数据集进行数据分析,并且由缺乏MPC知识的软件工程师实现。此外,合作方——例如,几家公司——经常在内部部署不同的数据分析堆栈。这些限制阻碍了MPC在现实世界中的可用性。为了应对这些挑战,我们通过扩展Musketeer大数据工作流管理器[4],将现有的MPC框架与数据并行分析框架结合起来。Musketeer自动为工作流程的敏感部分(在MPC中执行)和计算的其余部分(在可扩展的、广泛部署的分析系统上运行)生成代码。在一个原型用例中,我们对五家运输公司总计156GB的出租车旅行数据计算了Herfindahl-Hirschman指数(HHI),这是反垄断监管中使用的市场集中度指数。我们的实现使用Hadoop和VIFF b[1]的组合在大约20分钟内计算出HHI,而即使单独使用VIFF的“混合模式”MPC也需要花费许多小时。最后,我们讨论了我们试图用我们的方法解决的未来研究问题。
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