使用 ML 技术识别 Docker Image 代码中的漏洞

Jayama Pinnamaneni, N. S, Prasad B. Honnavalli
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引用次数: 0

摘要

Docker 容器镜像可定义为一个轻量级、无附加、可执行的软件包,其中包括运行应用程序所需的代码、运行时、系统工具、系统库和设置等一切内容。由于使用量巨大,容器映像中出现的安全问题也有很大的空间。有许多开源项目,如 Anchore、Clair 等,都会使用 CVE、RedHat 等数据库对容器镜像的 docker 文件进行静态扫描,以查找漏洞。对容器镜像的主代码进行静态分析同样有必要,这样才能识别代码中的任何漏洞,而不是仅仅关注基于操作系统级别的漏洞,因为如果不扫描代码中的任何漏洞,可能会发生许多恶意活动。该项目的主要目的是创建一个静态代码分析机器学习模型,以识别容器镜像中存在漏洞的 python 库。
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Identifying Vulnerabilities in Docker Image Code using ML Techniques
A Docker container image can be defined as a lightweight, unattached, executable package of software that includes everything like code, runtime, system tools, system libraries and settings, needed to run an application, because of these features the container images are preferred over virtual machines. With this enormous usage, there is a lot of scope for the security issues arising in the container images. There are many open-source projects like Anchore, Clair that statically scan the container image’s docker file to find the vulnerabilities using databases like CVE, RedHat etc. Static analysis of container image main code is equally necessary to identify any vulnerabilities in the code and not only focus on the vulnerabilities based on OS level, as many malicious activities might take place if code is not scanned for any vulnerabilities. The main aim of the project is to create a static code analysing machine learning model to identify the vulnerable python libraries in container images.
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