智能网络客户端分析器

Diogo Teixeira, A. Arsénio
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引用次数: 1

摘要

摘要:对等网络流量已经在整个互联网流量中占据了很大的份额。未来的解决方案将需要管理所有可用的资源,以便根据用户的通信配置文件使用公平的规则向用户收费。因此,获取有关互联网流量行为的信息是管理、监控和运营活动的基础,例如识别客户使用的应用程序和协议。然而,这种识别的主要障碍是缺乏监控网络设备的可伸缩性。特别是,它们可以为此目的分析所有网络数据包。这项任务要求极高,在大型网络中几乎不可能快速完成(因为通常有数百或数千个客户)。此外,我们预计这样的网络将变得更大,因为在物联网上,所有设备(传感器、电器等)都将公开连接到互联网。因此,提出了流量采样策略来克服这个主要的规模问题。本文介绍了用于用户分析和安全目的的流量监控领域的不同工作。它还提出了一种解决方案,该解决方案使用选择性过滤技术结合引擎流量DPI来识别客户最常用的应用程序和协议。因此,有可能让isp以可扩展和智能的方式优化他们的网络,实施安全措施,以便根据客户端配置文件强制执行网络使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Network Client Profiler
Abstract — Peer2Peer traffic already accounts for a large share of the overall internet traffic. Future solutions will need to manage all the available resources in order to charge users using fair rules according to their communication profile. Obtaining information about the behavior of Internet traffic is therefore fundamental to the management, monitoring and operation activities, such as the identification of applications and protocols that customers use. However, the main obstacle to this identification is the lack of scalability for monitoring network devices. In particular, they can analyze all the network packets for this purpose. This task is extremely demanding and almost impossible to accomplish rapidly in large networks (because usually there is a number in the hundreds or thousands of customers). Furthermore, we expect such networks to become even larger, as on the internet of things all devices (sensors, appliances, etc) will be publicly connected to the internet. As such, traffic sampling strategies have been proposed to overcome this major problem of scale. This paper presents different works in the area of monitoring traffic for user profiling and security purposes. It proposes as well a solution that uses selective filtering techniques combined with an engine traffic DPI to identify applications and protocols that customers use most frequently. Thus it becomes possible to get ISPs to optimize their network in a scalable and intelligent manner, imposing security measures in order to enforce network usage according to client profiles.
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