Skip to main content
我们经常发布文档更新,此页面的翻译可能仍在进行中。有关最新信息,请访问英文文档。如果此页面上的翻译有问题,请告诉我们

此版本的 GitHub Enterprise 已停止服务 2022-06-03. 即使针对重大安全问题,也不会发布补丁。 要获得更好的性能、改进的安全性和新功能,请升级到 GitHub Enterprise 的最新版本。 如需升级方面的帮助,请联系 GitHub Enterprise 支持

Recommended hardware resources for running CodeQL

Recommended specifications (RAM, CPU cores, and disk) for running CodeQL analysis on self-hosted machines, based on the size of your codebase.

代� �扫描 适用于启用了 GitHub Advanced Security 的组织拥有的仓库。 更多信息请参阅“关于 GitHub Advanced Security”。

You can set up CodeQL on GitHub Actions or on an external CI system. CodeQL is fully compatible with GitHub-hosted runners on GitHub Actions.

If you're using an external CI system, or self-hosted runners on GitHub Actions for private repositories, you're responsible for configuring your own hardware. The optimal hardware configuration for running CodeQL may vary based on the size and complexity of your codebase, the programming languages and build systems being used, and your CI workflow setup.

The table below provides recommended hardware specifications for running CodeQL analysis, based on the size of your codebase. Use these as a starting point for determining your choice of hardware or virtual machine. A machine with greater resources may improve analysis performance, but may also be more expensive to maintain.

Codebase sizeRAMCPU
Small (<100 K lines of code)8 GB or higher2 cores
Medium (100 K to 1 M lines of code)16 GB or higher4 or 8 cores
Large (>1 M lines of code)64 GB or higher8 cores

For all codebase sizes, we recommend using an SSD with 14 GB or more of disk space. There must be enough disk space to check out and build your code, plus additional space for data produced by CodeQL.