Agent skill

deploy-agentcore

Deploy Python agents to AWS Bedrock AgentCore. Use when deploying agents to AWS, setting up serverless agent hosting, configuring AgentCore components (Runtime, Gateway, Memory, Identity, Policy), or troubleshooting deployment errors.

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Forks 31

Install this agent skill to your Project

npx add-skill https://github.com/majiayu000/claude-skill-registry/tree/main/skills/productivity/deploy-agentcore

SKILL.md

<essential_principles> AWS Bedrock AgentCore is a serverless platform for AI agents at scale.

Architecture

AgentCore has 6 modular components:

  • Runtime - Serverless hosting (direct_code_deploy or container)
  • Gateway - Tool access via MCP (Lambda, OpenAPI, Smithy targets)
  • Memory - STM (session) and LTM (persistent) storage
  • Identity - Auth via IAM, Cognito, AWS JWT, external OAuth
  • Observability - CloudWatch + OpenTelemetry tracing
  • Policy - Cedar-based governance and authorization

Entry Point Pattern

All agents use BedrockAgentCoreApp with @app.entrypoint decorator:

python
from bedrock_agentcore import BedrockAgentCoreApp

app = BedrockAgentCoreApp()

@app.entrypoint
def invoke(payload: dict) -> dict:
    prompt = payload.get("prompt", "")
    result = your_agent_logic(prompt)
    return {"result": result}

if __name__ == "__main__":
    app.run()

Key CLI Commands

All commands: uv run agentcore [command]

Runtime: configure, deploy, invoke, status, destroy, stop-session Gateway: gateway create-mcp-gateway, gateway create-mcp-gateway-target Memory: memory create, memory list, memory status Identity: identity setup-cognito, identity setup-aws-jwt Policy: policy create-policy-engine, policy create-policy

See references/cli-reference.md for full command list.

Rules

  • Agent names: underscores only (my_agent not my-agent)
  • Never hardcode API keys - use Secrets Manager
  • Windows: prefix with PYTHONIOENCODING=utf-8
  • Memory mode order: STM_AND_LTM (not LTM_AND_STM) </essential_principles>
  1. Deploy a new agent
  2. Update existing deployment
  3. Add Google OAuth
  4. Create chat UI
  5. Set up Gateway (MCP tools)
  6. Configure Memory
  7. Set up Identity/Auth
  8. View logs/observability
  9. Troubleshoot errors
  10. Something else

Wait for response before proceeding.

After reading the workflow, follow it exactly.

<reference_index> All domain knowledge in references/:

  • architecture.md - All AgentCore components explained
  • cli-reference.md - Complete CLI command reference
  • prerequisites.md - AWS setup, Python, uv requirements
  • memory-modes.md - Memory configuration details
  • common-errors.md - Error messages and fixes
  • iam-policies.md - IAM role configuration </reference_index>

<workflows_index>

Workflow Purpose
deploy-agent.md Deploy Python agent to AgentCore
update-deployment.md Redeploy with code changes
add-oauth.md Add Google OAuth for cloud environment
create-chat-ui.md Create Streamlit chat interface
setup-gateway.md Create MCP gateway with targets
setup-memory.md Configure memory modes
setup-identity.md Set up auth (Cognito, JWT, OAuth)
view-logs.md Access CloudWatch logs and metrics
troubleshoot.md Fix common deployment errors
</workflows_index>

<templates_index>

Template Purpose
entry_claude_sdk.py Entry point for Claude SDK agents
entry_langchain.py Entry point for LangChain agents
entry_custom.py Entry point for custom Python agents
entry_minimal.py Bare minimum entry point
policy_minimal.json IAM policy for Secrets Manager only
policy_oauth.json IAM policy for OAuth (Secrets + S3)
policy_full.json IAM policy with all common permissions
chat_ui.py Streamlit chat interface
</templates_index>

<success_criteria> Deployment successful when:

  • uv run agentcore deploy completes without errors
  • uv run agentcore invoke returns expected response
  • Agent handles sessions correctly
  • External API keys work via Secrets Manager </success_criteria>

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