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全球容量编排器
🔌
MCP工具

全球容量编排器

基于 Python · 让 AI 助手直接操作你的系统与工具
英文名:global-capacity-orchestrator-on-aws
⭐ 30 Stars 🍴 3 Forks 💻 Python 📄 MIT-0 🏷 AI 7.5分
7.5AI 综合评分
AWSEKS容量编排
⚙️ 配置说明
✦ AI Skill Hub 推荐

全球容量编排器 是 AI Skill Hub 本期精选MCP工具之一。综合评分 7.5 分,整体质量较高。我们推荐使用将其纳入你的 AI 工具库,帮助提升工作效率。

📚 深度解析

全球容量编排器 是一款基于 MCP(Model Context Protocol)标准协议的 AI 工具扩展。MCP 协议由 Anthropic 开发并开源,旨在建立 AI 模型与外部工具之间的标准化通信接口,目前已被 Claude Desktop、Claude Code、Cursor 等主流 AI 工具采纳。

通过安装 全球容量编排器,你的 AI 助手将获得额外的工具调用能力,可以用自然语言直接操控该工具的功能,无需学习复杂的命令行语法。MCP 工具的核心价值在于"一次配置,永久增强"——配置完成后,每次与 AI 对话时都可以无缝调用这些工具。

在技术实现上,MCP 工具通过标准的 JSON-RPC 协议与 AI 客户端通信,工具的功能以"工具列表"的形式暴露给 AI 模型,AI 可以按需调用。全球容量编排器 提供了结构化的工具调用接口,使 AI 模型能够精确地理解和使用每个功能点,显著降低 AI 在工具使用上的错误率。

与传统的 API 集成相比,MCP 工具的优势在于无需编写代码——用户只需在配置文件中添加几行 JSON,即可让 AI 获得全新能力。AI Skill Hub 将 全球容量编排器 评为 AI 评分 7.5 分,属于同类工具中的优质选择。

📋 工具概览

全球容量编排器 是一款遵循 MCP(Model Context Protocol)标准协议的 AI 工具扩展。通过 MCP 协议,它可以让 Claude、Cursor 等主流 AI 客户端直接访问和操作外部工具、数据源和服务,实现 AI 能力的无缝扩展。无论是文件操作、数据库查询还是 API 调用,都可以通过自然语言在 AI 对话中直接触发,极大提升生产效率。

GitHub Stars
⭐ 30
开发语言
Python
支持平台
Windows / macOS / Linux
维护状态
轻量级项目,按需更新
开源协议
MIT-0
AI 综合评分
7.5 分
工具类型
MCP工具
Forks
3

📖 中文文档

以下内容由 AI Skill Hub 根据项目信息自动整理,如需查看完整原始文档请访问底部「原始来源」。

全球容量编排器 是一款遵循 MCP(Model Context Protocol)标准协议的 AI 工具扩展。通过 MCP 协议,它可以让 Claude、Cursor 等主流 AI 客户端直接访问和操作外部工具、数据源和服务,实现 AI 能力的无缝扩展。无论是文件操作、数据库查询还是 API 调用,都可以通过自然语言在 AI 对话中直接触发,极大提升生产效率。

📌 核心特色
  • 通过标准 MCP 协议与 Claude、Cursor 等主流 AI 客户端深度集成
  • 提供结构化工具调用接口,显著降低 AI 集成复杂度
  • 支持 Claude Desktop 和 Claude Code 无缝接入,开箱即用
  • 可与其他 MCP 工具组合叠加,构建完整 AI 工作站
  • 轻量无侵入设计,不影响现有系统架构
🎯 主要使用场景
  • 在 Claude Desktop 对话中直接调用本地工具,实现 AI 与系统的深度联动
  • 通过自然语言驱动复杂的多步骤自动化任务,代替繁琐手动操作
  • 将多个 MCP 工具组合使用,构建个人专属 AI 工作站
以下安装命令基于项目开发语言和类型自动生成,实际以官方 README 为准。
安装命令
# 方式一:通过 Claude Code CLI 一键安装
claude skill install https://github.com/awslabs/global-capacity-orchestrator-on-aws

# 方式二:手动配置 claude_desktop_config.json
{
  "mcpServers": {
    "-------": {
      "command": "npx",
      "args": ["-y", "global-capacity-orchestrator-on-aws"]
    }
  }
}

# 配置文件位置
# macOS: ~/Library/Application Support/Claude/claude_desktop_config.json
# Windows: %APPDATA%/Claude/claude_desktop_config.json
📋 安装步骤说明
  1. 确认已安装 Node.js(v18 或以上版本)
  2. 打开 Claude Desktop 或 Claude Code 的 MCP 配置文件
  3. 按「交给 Agent 安装 → Claude Desktop」标签中的 JSON 配置填入 mcpServers 字段
  4. 保存配置文件并重启 Claude 客户端
  5. 重启后,在对话中即可使用本工具
以下用法示例由 AI Skill Hub 整理,涵盖最常见的使用场景。
常用命令 / 代码示例
# 安装后在 Claude 对话中直接使用
# 示例:
用户: 请帮我用 全球容量编排器 执行以下任务...
Claude: [自动调用 全球容量编排器 MCP 工具处理请求]

# 查看可用工具列表
# 在 Claude 中输入:"列出所有可用的 MCP 工具"
以下配置示例基于典型使用场景生成,具体参数请参照官方文档调整。
配置示例
// claude_desktop_config.json 配置示例
{
  "mcpServers": {
    "_______": {
      "command": "npx",
      "args": ["-y", "global-capacity-orchestrator-on-aws"],
      "env": {
        // "API_KEY": "your-api-key-here"
      }
    }
  }
}

// 保存后重启 Claude Desktop 生效
📑 README 深度解析 真实文档 完整度 62/100 查看 GitHub 原文 →
以下内容由系统直接从 GitHub README 解析整理,保留代码块、表格与列表结构。

简介

Global Capacity Orchestrator (GCO)

<p><b><i>One API. Every Accelerator. Any Region.</i></b></p>

<p>Multi-region accelerated-compute orchestration for AWS — NVIDIA GPUs, AWS Trainium, AWS Inferentia, and CPU (amd64 + arm64 / Graviton) — with capacity-aware scheduling, spot fallback, and multi-region autoscaling inference endpoints with automatic failover and latency-aware routing, all from a single REST API and CLI.</p>

<p> <a href="https://github.com/awslabs/global-capacity-orchestrator-on-aws/actions/workflows/unit-tests.yml"><img src="https://github.com/awslabs/global-capacity-orchestrator-on-aws/actions/workflows/unit-tests.yml/badge.svg?branch=main" alt="Unit Tests"></a> <a href="https://github.com/awslabs/global-capacity-orchestrator-on-aws/actions/workflows/integration-tests.yml"><img src="https://github.com/awslabs/global-capacity-orchestrator-on-aws/actions/workflows/integration-tests.yml/badge.svg?branch=main" alt="Integration Tests"></a> <a href="https://github.com/awslabs/global-capacity-orchestrator-on-aws/actions/workflows/security.yml"><img src="https://github.com/awslabs/global-capacity-orchestrator-on-aws/actions/workflows/security.yml/badge.svg?branch=main" alt="Security"></a> <a href="https://github.com/awslabs/global-capacity-orchestrator-on-aws/actions/workflows/lint.yml"><img src="https://github.com/awslabs/global-capacity-orchestrator-on-aws/actions/workflows/lint.yml/badge.svg?branch=main" alt="Linting"></a> <a href="https://awslabs.github.io/global-capacity-orchestrator-on-aws/"><img src="https://img.shields.io/endpoint?url=https%3A%2F%2Fawslabs.github.io%2Fglobal-capacity-orchestrator-on-aws%2Fcoverage-badge.json" alt="Coverage"></a> </p>

<details> <summary>🎬 Live demo recording</summary>

GCO Live Demo

gco CLI demo: capacity discovery, cost visibility, 5 schedulers (Volcano, Kueue, YuniKorn, Slurm, KEDA), FSx, Valkey, live LLM inference, and EFS — all against one already-deployed cluster. (source · re-record)

</details>

<details> <summary>📦 Deploy recording</summary>

GCO Deploy

Fresh gco stacks deploy-all -y from a clean account (re-record)

</details>

<details> <summary>🗑️ Destroy recording</summary>

GCO Destroy

Full teardown with gco stacks destroy-all -y (re-record)

</details>

</div>

What it does. Spins up EKS Auto Mode clusters across AWS regions, wired together with Global Accelerator for latency-aware anycast routing and automatic failover. Submit Kubernetes manifests via a single REST API or CLI — GCO handles capacity-aware scheduling, spot fallback, multi-region autoscaling inference endpoints, and output persistence.

Who it's for. Teams running accelerated workloads — LLM training and inference, batch ML, HPC, and general CPU jobs — that need multi-region redundancy, automatic capacity discovery, and IAM-based access without per-cluster kubeconfig distribution. Pre-wired nodepools for NVIDIA GPUs (g4dn, g5, and ARM64 g5g), AWS Trainium, AWS Inferentia, and general-purpose CPU on both amd64 and arm64 / Graviton.

Why it's different. Capacity-aware routing across regions out of the box, full-stack observability (CloudWatch dashboards, alarms, SNS), and a CDK app validated across 20+ config matrix combinations in CI.

---

Deploy everything and tear it all down with one command each:

gco stacks deploy-all -y      # stand up every region defined in cdk.json
gco stacks destroy-all -y     # destroy every stack across every region — no orphaned resources

Recommended: run everything from the dev container. GCO pins exact versions of a lot of Python packages (CDK, AWS SDKs, FastAPI, mypy, Ruff, etc.), and installing them on top of an existing Python environment is the most common source of "it doesn't install" reports. The dev container ships a fully resolved environment (Python 3.14, Node.js 24, CDK, kubectl, AWS CLI, all Python deps) so you skip the whole problem.

git clone git@github.com:awslabs/global-capacity-orchestrator-on-aws.git
cd global-capacity-orchestrator-on-aws

docker build -f Dockerfile.dev -t gco-dev .
docker run -it --rm \
  -v ~/.aws:/root/.aws:ro \
  -v $(pwd):/workspace \
  -v /var/run/docker.sock:/var/run/docker.sock \
  -w /workspace \
  gco-dev

The docker.sock mount lets gco stacks deploy-all bundle Lambda assets through your host Docker daemon. See Prerequisites for Colima/Finch socket paths and the security note about host-socket pass-through.

<details> <summary>Prefer to install on your host? (advanced — the dev container is recommended)</summary>

Host installs are the advanced, non-recommended path. GCO pins exact versions of many Python packages, so installing on top of an existing Python environment frequently fails with dependency-resolver errors (ResolutionImpossible). The dev container shown above is the recommended path — it ships every dependency at the pinned versions — and the Quick Start Guide walks through it end to end. If you still want a host install, use a clean virtual environment or pipx.

git clone git@github.com:awslabs/global-capacity-orchestrator-on-aws.git
cd global-capacity-orchestrator-on-aws && pipx install -e .

</details>

See the Quick Start for the full install + first-job walkthrough, or docs/CLI.md for every CLI command.

💡 New to the codebase? GCO ships with the GCO MCP server — an MCP server exposing 95 tools by default (up to 127 with feature flags) that index the whole project: docs, examples, source code, K8s manifests, and scripts. Connect it to an AI-powered IDE with MCP support (like Kiro) and explore GCO conversationally — ask questions about the codebase instead of reading repository files directly: "How does region recommendation work?", "Walk me through the inference deployment flow". See mcp/README.md.

<details> <summary><b>Table of contents</b></summary>

</details>

Architecture Overview

<details> <summary>📊 Full Architecture Diagram (click to expand)</summary>

Full Architecture

</details>

Regenerate this diagram and every per-stack view on demand with python diagrams/infra_diagrams/generate.py — it synthesises the current CDK app through AWS PDK cdk-graph so the diagrams never drift from the source. See diagrams/infra_diagrams/README.md for per-stack flags (--stack global|api-gateway|regional|regional-api|monitoring|analytics|all). Flowcharts of the code itself (Lambda handlers, CLI commands) live alongside them under diagrams/code_diagrams/.

The regional stack can be deployed to any AWS region. Add or remove regions by editing the deployment_regions.regional array in cdk.json.
┌───────────────────────────────────────────────────┐
│              User Request                         │
│        (AWS SigV4 Authentication)                 │
└────────────────────┬──────────────────────────────┘
                     │
                     ▼
┌───────────────────────────────────────────────────┐
│      API Gateway (Edge-Optimized, Global)         │
│      ✓ IAM Authentication Required                │
│      ✓ CloudFront Edge Caching                    │
└────────────────────┬──────────────────────────────┘
                     │
                     ▼
┌───────────────────────────────────────────────────┐
│              AWS Global Accelerator               │
│         Routes to nearest healthy region          │
└────────────────────┬──────────────────────────────┘
                     │
        ┌────────────┼────────────┬────────────┐
        │            │            │            │
   ┌────▼────┐  ┌────▼────┐  ┌────▼────┐  ┌────▼────┐
   │us-east-1│  │us-west-2│  │eu-west-1│  │  More   │
   │   ALB   │  │   ALB   │  │   ALB   │  │ Regions │
   │(GA IPs  │  │(GA IPs  │  │(GA IPs  │  |(GA IPs  │
   │  only)  │  │  only)  │  │  only)  │  |  only)  │
   └────┬────┘  └────┬────┘  └────┬────┘  └────┬────┘
        │            │            │            │
   ┌────▼────────────▼────────────▼────────────▼────┐
   │    EKS Auto Mode Cluster (per region)          │
   │  ┌─────────────────────────────────────────┐   │
   │  │  Nodepools: System, General, GPU (x86   │   │
   │  │  + ARM), Inference                      │   │
   │  ├─────────────────────────────────────────┤   │
   │  │  Services: Health Monitor, Manifest     │   │
   │  │  Processor, Inference Monitor           │   │
   │  ├─────────────────────────────────────────┤   │
   │  │  Storage: EFS (shared) + FSx (optional) │   │
   │  └─────────────────────────────────────────┘   │
   └────────────────────────────────────────────────┘

Key Features

Prerequisites

Recommended path — dev container only:

  • AWS CLI configured with appropriate credentials (or ~/.aws to mount in)
  • Docker (or Finch / Colima) — that's it. The container ships Python 3.14, Node.js 24, CDK, kubectl, and AWS CLI at pinned versions.
docker build -f Dockerfile.dev -t gco-dev .
docker run -it --rm -v ~/.aws:/root/.aws:ro -v $(pwd):/workspace -w /workspace gco-dev

For gco stacks deploy-all, cdk deploy needs to run Docker to bundle Lambda assets. Mount the host Docker socket so the container's CLI talks to your host daemon (works with Docker Desktop on macOS/Windows, with Docker on Linux, and with Colima on macOS — see Dockerfile.dev for Colima-specific socket paths):

docker run --rm -it \
  -v ~/.aws:/root/.aws:ro \
  -v $(pwd):/workspace \
  -v /var/run/docker.sock:/var/run/docker.sock \
  -w /workspace \
  gco-dev gco stacks deploy-all -y

This is host-socket pass-through, not true Docker-in-Docker. Anyone with access to the container has root-equivalent access to the host Docker daemon, so keep the container on a trusted host.

Host install path (advanced):

  • AWS CLI configured with appropriate credentials
  • Python 3.14+ and Node.js LTS (v24)
  • AWS CDK CLI (npm install -g aws-cdk)
  • Docker or Finch (for building container images)
  • A clean Python virtual environment or pipx — GCO pins exact versions of many packages, so installing it into an existing environment will commonly fail with dependency-resolver errors. If you hit ResolutionImpossible, switch to the dev container instead of debugging your local env.

Install and Deploy

The fastest, most reliable path is the dev container — it sidesteps the dependency-conflict issues that come with installing GCO's pinned Python packages on top of your existing Python environment.

Build the dev container (Python, Node.js, CDK, kubectl, and the AWS CLI are all pinned and pre-installed), then drop into a shell with the gco CLI already on the path:

docker build -f Dockerfile.dev -t gco-dev .
docker run -it --rm \
  -v ~/.aws:/root/.aws:ro \
  -v $(pwd):/workspace \
  -v /var/run/docker.sock:/var/run/docker.sock \
  -w /workspace \
  gco-dev

From inside the container, deploy everything — CDK bootstrap runs automatically for every region defined in cdk.json:

gco stacks deploy-all -y

If you'd rather install on your host, use a clean virtual environment or pipx — see the Prerequisites and QUICKSTART.md for the details and known caveats.

Optional: configure kubectl access (requires PUBLIC_AND_PRIVATE endpoint mode). The default endpoint mode is PRIVATE — see docs/CUSTOMIZATION.md for details. Most users don't need this; submit jobs via SQS or API Gateway instead.

Deploy an Inference Endpoint

gco inference deploy my-llm -i vllm/vllm-openai:v0.20.1 --gpu-count 1
gco inference status my-llm
gco inference scale my-llm --replicas 3

See the Quick Start Guide for the full step-by-step walkthrough, or the CLI Reference for all available commands.

Quick Start

ML & Analytics Environment

  • ML & Analytics Environment: Optional SageMaker Studio domain + EMR Serverless + Cognito user pool for interactive notebook analytics, with an always-on Cluster_Shared_Bucket that all cluster jobs can read and write. Off by default — enable with gco analytics enable. See Analytics Guide.
🎯 aiskill88 AI 点评 A 级 2026-05-30

高质量的自动化容量管理工具

📚 实用指南(长尾问题)
适合谁
  • 需要 global-capacity-orchestrator-on-aws 解决具体问题的开发者与运营人员
最佳实践
  • 先在测试环境跑通最小用例,再接入生产数据
常见错误
  • API key 直接提交到 git 仓库(请用 .env 并加入 .gitignore)
  • Python 依赖冲突:建议用 venv / uv 隔离环境
部署方案
  • 云端托管:可放在 Vercel / Railway / Fly.io 等 PaaS 平台
相关搜索
global-capacity-orchestrator-on-aws 中文教程global-capacity-orchestrator-on-aws 安装报错怎么办global-capacity-orchestrator-on-aws 与同类工具对比global-capacity-orchestrator-on-aws 最佳实践global-capacity-orchestrator-on-aws 适合谁用

⚡ 核心功能

👥 适合谁
  • 需要 global-capacity-orchestrator-on-aws 解决具体问题的开发者与运营人员
⭐ 最佳实践
  • 先在测试环境跑通最小用例,再接入生产数据
⚠️ 常见错误
  • API key 直接提交到 git 仓库(请用 .env 并加入 .gitignore)
  • Python 依赖冲突:建议用 venv / uv 隔离环境

👥 适合人群

Claude Desktop / Claude Code 用户AI 工具开发者需要扩展 AI 能力的专业人士自动化工程师

🎯 使用场景

  • 在 Claude Desktop 对话中直接调用本地工具,实现 AI 与系统的深度联动
  • 通过自然语言驱动复杂的多步骤自动化任务,代替繁琐手动操作
  • 将多个 MCP 工具组合使用,构建个人专属 AI 工作站

⚖️ 优点与不足

✅ 优点
  • +标准化 MCP 协议,生态互联性强
  • +与 Claude 官方生态无缝对接
  • +即插即用,配置简单快捷
⚠️ 不足
  • 依赖 Claude 客户端,非 Claude 用户无法使用
  • MCP 协议仍在持续演进,接口可能变更
  • 需要一定的配置步骤
⚠️ 使用须知

该工具使用 MIT-0 协议,商用场景请仔细阅读协议条款,必要时咨询法律意见。

AI Skill Hub 为第三方内容聚合平台,本页面信息基于公开数据整理,不对工具功能和质量作任何法律背书。

建议在沙箱或测试环境中充分验证后,再部署至生产环境,并做好必要的安全评估。

📄 License 说明

📄 MIT-0 — 请查阅原始协议条款了解具体使用限制。

🔗 相关工具推荐

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🍿 AI 圈相关吃瓜
🗺️ 相关解决方案
🧩 你可能还需要
基于当前 Skill 的能力图谱,自动补全的工具组合

❓ 常见问题 FAQ

global-capacity-orchestrator-on-aws 是一款Python开发的AI辅助工具。开源MCP工具:GCO is a platform that spins up EKS Auto Mode clusters across AWS regions, wired。⭐30 · Python 主要应用场景包括:自动化容量管理。
💡 AI Skill Hub 点评

经综合评估,全球容量编排器 在MCP工具赛道中表现稳健,质量良好。如果你已有明确的使用需求,可以直接上手体验;如果还在评估阶段,建议对比同类工具后再做决策。

⬇️ 获取与下载
📚 深入学习 全球容量编排器
查看分步骤安装教程和完整使用指南,快速上手这款工具
🌐 原始信息
原始名称 global-capacity-orchestrator-on-aws
原始描述 开源MCP工具:GCO is a platform that spins up EKS Auto Mode clusters across AWS regions, wired。⭐30 · Python
Topics AWSEKS容量编排
GitHub https://github.com/awslabs/global-capacity-orchestrator-on-aws
License MIT-0
语言 Python
🔗 原始来源
🐙 GitHub 仓库  https://github.com/awslabs/global-capacity-orchestrator-on-aws

收录时间:2026-05-30 · 更新时间:2026-05-31 · License:MIT-0 · AI Skill Hub 不对第三方内容的准确性作法律背书。