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aws-agentic-ai

@zxkane · 收录于 1 周前

AWS Bedrock AgentCore comprehensive expert for deploying and managing AI agents at scale. Use when working with any AgentCore service including Gateway, Runtime, Memory, Identity, Code Interpreter, Browser, Observability, Agent Registry, or Evaluations. Covers agent deployment, MCP tool integration, credential management, agent discovery, governance workflows, and automated quality assessment. Essential when user mentions AgentCore, agent runtime, agent registry, agent evaluation, MCP gateway, deploy agent, register MCP server, discover agents, evaluate agent quality, agent credentials, or wants to build, deploy, catalog, or monitor AI agents on AWS.

适合你,如果你需要在 AWS 上大规模部署和运维 AI 智能体。

/ 下载安装
aws-agentic-ai.skill双击,或拖进 Claude 桌面版 / Cowork,即完成安装↓ .skill↓ .zip
用别的 agent?下载 .zip 解压,把文件夹放进它的技能目录
Claude Code~/.claude/skills/(项目级 .claude/skills/)
Codex CLI~/.codex/skills/
Cursor自动读取上面两处目录
其他工具见其文档的「skills」目录;两个下载是同一份文件,只是名字不同
/ 通过 npx 安装 校验哈希
npx oh-my-skill add zxkane/aws-skills/aws-agentic-ai
/ 通过 bash 安装
curl -fsSL https://oh-my-skill.com/install.sh | bash -s -- zxkane/aws-skills/aws-agentic-ai
/ 已经装过?验证本机副本,不用重装
npx oh-my-skill verify zxkane/aws-skills/aws-agentic-ai
安装目标可用 --agent / --scope 或 --to 明确指定;省略时只会在唯一已存在的 agent 目录上自动选择,零命中或多命中会停止并提示。content_hash 缺失或不一致均拒装。
330GitHub stars
~1.9K最小装载
~57.9K含声明引用
~70.5K文本包总量
镜像托管

怎么用

技能原文 SKILL.md作者撰写 · MIT · 68530c6

AWS Bedrock AgentCore

AWS Bedrock AgentCore provides a complete platform for deploying and scaling AI agents with nine core services. This skill covers service selection, deployment patterns, and integration workflows using AWS CLI.

How to use this skill: Identify the service(s) the user needs from the table below, then read the corresponding service README before responding. For cross-service patterns (credentials, security, registry integration), check the Cross-Service Resources section. Verify AWS-specific details using the MCP documentation tools.

AWS Documentation Requirement

Always verify AWS facts using MCP tools before answering. Two documentation sources are available:

  • AgentCore-specific docs (mcp__acdocs__*) — bundled with this plugin, provides search_agentcore_docs and fetch_agentcore_doc for AgentCore documentation
  • General AWS docs (mcp__aws-mcp__* or mcp__*awsdocs*__*) — loaded via the aws-mcp-setup dependency for broader AWS documentation

Prefer the AgentCore docs MCP for AgentCore-specific questions. If MCP tools are unavailable, guide the user through the aws-mcp-setup skill's setup flow.

Available Services

| Service | Use For | Documentation | |---------|---------|---------------| | Gateway | Converting REST APIs to MCP tools | [services/gateway/README.md](services/gateway/README.md) | | Runtime | Deploying and scaling agents | [services/runtime/README.md](services/runtime/README.md) | | Memory | Managing conversation state | [services/memory/README.md](services/memory/README.md) | | Identity | Credential and access management | [services/identity/README.md](services/identity/README.md) | | Code Interpreter | Secure code execution in sandboxes | [services/code-interpreter/README.md](services/code-interpreter/README.md) | | Browser | Web automation and scraping | [services/browser/README.md](services/browser/README.md) | | Observability | Tracing and monitoring | [services/observability/README.md](services/observability/README.md) | | Agent Registry | Catalog, discover, and govern agents/tools (Preview) | [services/registry/README.md](services/registry/README.md) | | Evaluations | Automated agent quality assessment (LLM-as-a-Judge) | [services/evaluations/README.md](services/evaluations/README.md) |

Common Workflows
Deploying a Gateway Target

Read [services/gateway/README.md](services/gateway/README.md) before implementing — Gateway setup involves deployment strategies, IAM, and auth choices that vary significantly by use case.

  1. Upload OpenAPI schema to S3
  2. (API Key auth only) Create credential provider and store API key
  3. Create gateway target linking schema (and credentials if using API key)
  4. Verify target status and test connectivity
Credential provider is only needed for API key authentication. Lambda targets use IAM roles, and MCP servers use OAuth.
Managing Credentials

Read [cross-service/credential-management.md](cross-service/credential-management.md) first — credential patterns differ across services and getting them wrong causes hard-to-debug auth failures.

  1. Use Identity service credential providers for all API keys
  2. Link providers to gateway targets via ARN references
  3. Rotate credentials quarterly through credential provider updates
  4. Monitor usage with CloudWatch metrics
Discovering Agents and Tools (Agent Registry)

Read [services/registry/README.md](services/registry/README.md) first — the registry has governance workflows, MCP endpoint options, and sync modes that affect how records become discoverable.

  1. Create a registry to catalog your organization's AI resources
  2. Register resources (MCP servers, agents, skills, custom) with descriptive metadata
  3. Submit records for approval (auto-approve for dev, manual for production)
  4. Search and discover approved resources via CLI or MCP endpoint
Agent Registry is in Preview. Available in us-east-1, us-west-2, eu-west-1, ap-northeast-1, ap-southeast-2.
Evaluating Agent Quality

Read [services/evaluations/README.md](services/evaluations/README.md) first — evaluators, scoring modes, and IAM setup vary between online monitoring and on-demand testing.

  1. Instrument the agent with OpenTelemetry (ADOT) for trace collection
  2. Create evaluators (use built-in like Builtin.Helpfulness or create custom)
  3. Set up online evaluation with sampling rate and data source
  4. Monitor scores in CloudWatch dashboards; investigate low-scoring sessions
Monitoring Agents

Read [services/observability/README.md](services/observability/README.md) for the full monitoring setup — observability configuration depends on your Runtime protocol and framework choice.

  1. Enable observability for agents
  2. Configure CloudWatch dashboards for metrics
  3. Set up alarms for error rates and latency
  4. Use X-Ray for distributed tracing
Deep-Dive References

Each service README (linked in the table above) contains sub-links to getting-started guides, troubleshooting, and advanced topics. Start with the service README and follow pointers from there.

Advanced Runtime & OAuth References

Deep-dive reference documentation for Runtime internals, deployment, OAuth integration, and communication protocols. Read these when building production Runtime deployments or configuring OAuth authentication:

  • OAuth Integration: [references/agentcore-oauth-integration.md](references/agentcore-oauth-integration.md) - Three-layer OAuth architecture (Inbound JWT, Outbound Credential Provider, Gateway OAuth), Cognito configuration, supported IdPs, end-to-end CDK examples
  • Runtime Core Mechanisms: [references/agentcore-runtime-core.md](references/agentcore-runtime-core.md) - Container contract, MicroVM Session model, Agent lifecycle (per-request vs per-session), tool integration (MCP/HTTP), startup flow
  • Runtime Deployment & Operations: [references/agentcore-runtime-deploy.md](references/agentcore-runtime-deploy.md) - CDK deployment (L1/L2 constructs), multi-Runtime architecture, security model, observability (OTel/CloudWatch), BedrockAgentCoreApp vs FastAPI comparison
  • Runtime Protocol Reference: [references/agentcore-runtime-protocols.md](references/agentcore-runtime-protocols.md) - HTTP, MCP, A2A, AG-UI protocol specifications with container contracts, endpoint specs, and selection guide
Runnable Script Templates

Production-ready templates in [scripts/](scripts/) for common deployment patterns:

| Script | Protocol | Description | |--------|----------|-------------| | [Dockerfile.runtime-template](scripts/Dockerfile.runtime-template) | — | ARM64 multi-stage Docker build for AgentCore Runtime | | [runtime-fastapi-template.py](scripts/runtime-fastapi-template.py) | HTTP | FastAPI Runtime with SSE streaming and MCPClient | | [mcp-server-template.py](scripts/mcp-server-template.py) | MCP | MCP Server with Streamable HTTP transport | | [a2a-server-template.py](scripts/a2a-server-template.py) | A2A | A2A Server with Agent Card discovery | | [agui-server-template.py](scripts/agui-server-template.py) | AG-UI | AG-UI Server with standard AG-UI event stream | | [gateway-custom-resource-lambda.py](scripts/gateway-custom-resource-lambda.py) | — | CDK Custom Resource Lambda for Gateway lifecycle |

Cross-Service Resources

For patterns and best practices that span multiple AgentCore services:

  • Credential Management: [cross-service/credential-management.md](cross-service/credential-management.md) - Unified credential patterns, security practices, rotation procedures
  • Registry Integration: [cross-service/registry-integration.md](cross-service/registry-integration.md) - Cross-service patterns with Gateway, Identity, Runtime
  • Security & Resource Policies: [cross-service/security-resource-policies.md](cross-service/security-resource-policies.md) - Resource-based policies, cross-account access, VPC/IP restrictions
  • Agent Deployment with S3 Files: [cross-service/agent-persistence-patterns.md](cross-service/agent-persistence-patterns.md) - Deploy Strands Agents, OpenClaw, Claude Agent SDK on AgentCore with S3 Files and Session Storage
Additional Resources
按 MIT 许可原样转载,未经改动 · 在 GitHub 查看 →

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