awesome-repositories.com
博客
awesome-repositories.com

通过 AI 驱动的搜索,发现最优秀的开源仓库。

探索精选搜索开源替代品自托管软件博客网站地图
项目关于排名机制媒体报道MCP 服务器
法律隐私政策服务条款
© 2026 Bringes Technology SRL·VAT RO45896025·hello@awesome-repositories.com
·

3 个仓库

Awesome GitHub RepositoriesKernel Scheduling

Tools for extending and optimizing the Linux scheduler.

Explore 3 awesome GitHub repositories matching part of an awesome list · Kernel Scheduling. Refine with filters or upvote what's useful.

Awesome Kernel Scheduling GitHub Repositories

用 AI 发现最棒的仓库。我们将通过 AI 为您搜索最匹配的仓库。
  • iovisor/bcciovisor 的头像

    iovisor/bcc

    22,459在 GitHub 上查看↗

    BCC is an eBPF development toolkit and tracing framework used for monitoring and analyzing the Linux kernel. It functions as a performance analysis tool and debugging utility to capture system events, measure kernel latency, and provide network observability. The project distinguishes itself by providing a build system that integrates with LLVM to compile C-like code into BPF bytecode at runtime. It utilizes BPF Type Format data for relocations to maintain cross-kernel compatibility and extracts kernel headers to ensure the generated programs match the specific kernel version. The toolkit co

    Provides tools to sample kernel run queues and generate occupancy histograms to identify CPU scheduling bottlenecks.

    C
    在 GitHub 上查看↗22,459
  • sched-ext/scxsched-ext 的头像

    sched-ext/scx

    1,840在 GitHub 上查看↗

    Framework for custom Linux scheduler extensions.

    C
    在 GitHub 上查看↗1,840
  • gthulhu/gthulhuGthulhu 的头像

    Gthulhu/Gthulhu

    387在 GitHub 上查看↗

    eBPF-based workload orchestration platform, built for Cloud Native ecosystem.

    Scheduler extension for cloud-native workload optimization.

    Go
    在 GitHub 上查看↗387
  1. Home
  2. Part of an Awesome List
  3. DevOps & Infrastructure
  4. Kernel Scheduling

探索子标签

  • Run Queue AnalysisTools for sampling and analyzing the occupancy of kernel run queues to detect scheduling bottlenecks. **Distinct from Kernel Scheduling:** Focuses specifically on run queue occupancy metrics rather than general scheduler extensions or optimizations.