信用卡数据流的PCI DSS合规性自动发现

Jennia Hizver, T. Chiueh
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引用次数: 11

摘要

信用卡是个人金融交易的重要工具。在这些交易中使用并由商家操作的信用卡支付系统经常成为黑客窃取信用卡数据的目标。为了解决这一威胁,支付卡行业为处理信用卡的业务建立了强制性的安全遵从性标准。此遵从性过程的一个中心先决条件是识别信用卡数据流,特别是识别信用卡事务处理的各个阶段,以及在信用卡数据在组织中传输时接触信用卡数据的服务器节点。在实践中,这一先决条件给商家带来了挑战。随着支付基础设施的实现和后期维护,它经常偏离最初的文档设计。如果没有对变更进行一致的跟踪和审计,在许多情况下,这样的偏差仍然没有记录。因此,为给定的支付卡处理基础设施构建信用卡数据流被认为是一项艰巨的任务,此时需要大量的手工工作。本文描述了一个工具,该工具旨在自动识别在私有云环境中托管的虚拟化服务器上运行的商业支付系统中的信用卡数据流。该工具利用虚拟机自省技术实时跟踪多台机器之间的信用卡数据流,而不需要对虚拟机、虚拟机、中间件或应用程序源代码进行侵入性检测。该工具的有效性通过其成功发现几个开放和封闭源支付应用程序的信用卡数据流来证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Discovery of Credit Card Data Flow for PCI DSS Compliance
Credit cards are key instruments in personal financial transactions. Credit card payment systems used in these transactions and operated by merchants are often targeted by hackers to steal the card data. To address this threat, the payment card industry establishes a mandatory security compliance standard for businesses that process credit cards. A central pre-requisite for this compliance procedure is to identify the credit card data flow, specifically, the stages of the card transaction processing and the server nodes that touch credit card data as they travel through the organization. In practice, this pre-requisite poses a challenge to merchants. As the payment infrastructure is implemented and later maintained, it often deviates from the original documented design. Without consistent tracking and auditing of changes, such deviations in many cases remain undocumented. Therefore building the credit card data flow for a given payment card processing infrastructure is considered a daunting task that at this point requires significant manual efforts. This paper describes a tool that is designed to automate the task of identifying the credit card data flow in commercial payment systems running on virtualized servers hosted in private cloud environments. This tool leverages virtual machine introspection technology to keep track of credit card data flows across multiple machines in real time without requiring intrusive instrumentation of the hyper visor, virtual machines, middleware or application source code. Effectiveness of this tool is demonstrated through its successful discovery of the credit card data flow of several open and closed source payment applications.
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