Skillshub Google Cloud Agent SDK Master
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skills/jeremylongshore/claude-code-plugins-plus-skills/agent-sdk-master/SKILL.mdGoogle Cloud Agent SDK Master - Production-Ready Agent Systems
This Agent Skill provides comprehensive mastery of Google's Agent Development Kit (ADK) and Agent Starter Pack for building and deploying production-grade containerized agents.
Core Capabilities
🤖 Agent Development Kit (ADK)
Framework Overview:
- Open-source Python framework from Google
- Same framework powering Google Agentspace and CES
- Build production agents in <100 lines of code
- Model-agnostic (optimized for Gemini)
- Deployment-agnostic (local, Cloud Run, GKE, Agent Engine)
Supported Agent Types:
- LLM Agents: Dynamic routing with intelligence
- Workflow Agents:
- Sequential: Linear execution
- Loop: Iterative processing
- Parallel: Concurrent execution
- Custom Agents: User-defined implementations
- Multi-agent Systems: Hierarchical coordination
Key Features:
- Flexible orchestration (workflow & LLM-driven)
- Tool ecosystem (search, code execution, custom functions)
- Third-party integrations (LangChain, CrewAI)
- Agents-as-tools capability
- Built-in evaluation framework
- Cloud Trace integration
📦 Agent Starter Pack
Production Templates:
- adk_base - ReAct agent using ADK
- agentic_rag - Document retrieval + Q&A with search
- langgraph_base_react - LangGraph ReAct implementation
- crewai_coding_crew - Multi-agent coding system
- adk_live - Multimodal RAG (audio/video/text)
Infrastructure Automation:
- CI/CD setup with single command
- GitHub Actions or Cloud Build pipelines
- Multi-environment support (dev, staging, prod)
- Automated testing and evaluation
- Deployment rollback mechanisms
🚀 Deployment Targets
1. Vertex AI Agent Engine
- Fully managed runtime
- Auto-scaling and load balancing
- Built-in observability
- Serverless architecture
- Best for: Production-scale agents
2. Cloud Run
- Containerized serverless
- Pay-per-use pricing
- Custom domain support
- Traffic splitting
- Best for: Web-facing agents
3. Google Kubernetes Engine (GKE)
- Full container orchestration
- Advanced networking
- Resource management
- Multi-cluster support
- Best for: Complex multi-agent systems
4. Local/Docker
- Development and testing
- Custom infrastructure
- On-premises deployment
- Best for: POC and debugging
🔧 Technical Implementation
Installation:
# Agent Starter Pack (recommended) pip install agent-starter-pack # or direct from GitHub uvx agent-starter-pack create my-agent # ADK only pip install google-cloud-aiplatform[adk,agent_engines]>=1.111
Create Agent (ADK):
from google.cloud.aiplatform import agent from vertexai.preview.agents import ADKAgent # Simple ReAct agent @agent.adk_agent class MyAgent(ADKAgent): def __init__(self): super().__init__( model="gemini-2.5-pro", tools=[search_tool, code_exec_tool] ) def run(self, query: str): return self.generate(query) # Multi-agent orchestration class OrchestratorAgent(ADKAgent): def __init__(self): self.research_agent = ResearchAgent() self.analysis_agent = AnalysisAgent() self.writer_agent = WriterAgent() def run(self, task: str): research = self.research_agent.run(task) analysis = self.analysis_agent.run(research) output = self.writer_agent.run(analysis) return output
Using Agent Starter Pack:
# Create project with template uvx agent-starter-pack create my-rag-agent \ --template agentic_rag \ --deployment cloud_run # Generates complete structure: my-rag-agent/ ├── src/ │ ├── agent.py # Agent implementation │ ├── tools/ # Custom tools │ └── config.py # Configuration ├── deployment/ │ ├── Dockerfile │ ├── cloudbuild.yaml │ └── terraform/ ├── tests/ │ ├── unit_tests.py │ └── integration_tests.py └── .github/workflows/ # CI/CD pipelines
Deploy to Cloud Run:
# Using ADK CLI adk deploy \ --target cloud_run \ --region us-central1 \ --service-account sa@project.iam.gserviceaccount.com # Manual with Docker docker build -t gcr.io/PROJECT/agent:latest . docker push gcr.io/PROJECT/agent:latest gcloud run deploy agent \ --image gcr.io/PROJECT/agent:latest \ --region us-central1 \ --allow-unauthenticated
Deploy to Agent Engine:
# Using Agent Starter Pack asp deploy \ --env production \ --target agent_engine # Manual deployment from google.cloud.aiplatform import agent_engines agent_engines.deploy_agent( agent_id="my-agent", project="PROJECT_ID", location="us-central1" )
📊 RAG Agent Implementation
Vector Search Integration:
from vertexai.preview.rag import VectorSearchTool from google.cloud import aiplatform # Set up vector search vector_search = VectorSearchTool( index_endpoint="projects/PROJECT/locations/LOCATION/indexEndpoints/INDEX_ID", deployed_index_id="deployed_index" ) # RAG agent with ADK class RAGAgent(ADKAgent): def __init__(self): super().__init__( model="gemini-2.5-pro", tools=[vector_search, web_search_tool] ) def run(self, query: str): # Retrieves relevant docs automatically response = self.generate( f"Answer this using retrieved context: {query}" ) return response
Vertex AI Search Integration:
from vertexai.preview.search import VertexAISearchTool # Enterprise search integration vertex_search = VertexAISearchTool( data_store_id="DATA_STORE_ID", project="PROJECT_ID" ) agent = ADKAgent( model="gemini-2.5-pro", tools=[vertex_search] )
🔄 CI/CD Automation
GitHub Actions (auto-generated):
name: Deploy Agent on: push: branches: [main] jobs: deploy: runs-on: ubuntu-latest steps: - uses: actions/checkout@v3 - name: Test Agent run: pytest tests/ - name: Deploy to Cloud Run run: | gcloud run deploy agent \ --source . \ --region us-central1
Cloud Build Pipeline:
steps: # Build container - name: 'gcr.io/cloud-builders/docker' args: ['build', '-t', 'gcr.io/$PROJECT_ID/agent', '.'] # Run tests - name: 'gcr.io/$PROJECT_ID/agent' args: ['pytest', 'tests/'] # Deploy to Cloud Run - name: 'gcr.io/cloud-builders/gcloud' args: - 'run' - 'deploy' - 'agent' - '--image=gcr.io/$PROJECT_ID/agent' - '--region=us-central1'
🎯 Multi-Agent Orchestration
Hierarchical Agents:
# Coordinator agent with specialized sub-agents class ProjectManagerAgent(ADKAgent): def __init__(self): self.researcher = ResearchAgent() self.analyst = AnalysisAgent() self.writer = WriterAgent() self.reviewer = ReviewAgent() def run(self, project_brief: str): # Coordinate multiple agents research = self.researcher.run(project_brief) analysis = self.analyst.run(research) draft = self.writer.run(analysis) final = self.reviewer.run(draft) return final
Parallel Agent Execution:
import asyncio class ParallelResearchAgent(ADKAgent): async def research_topic(self, topics: list[str]): # Run multiple agents concurrently tasks = [ self.specialized_agent(topic) for topic in topics ] results = await asyncio.gather(*tasks) return self.synthesize(results)
📈 Evaluation & Monitoring
Built-in Evaluation:
from google.cloud.aiplatform import agent_evaluation # Define evaluation metrics eval_config = agent_evaluation.EvaluationConfig( metrics=["accuracy", "relevance", "safety"], test_dataset="gs://bucket/eval_data.jsonl" ) # Run evaluation results = agent.evaluate(eval_config) print(f"Accuracy: {results.accuracy}") print(f"Relevance: {results.relevance}")
Cloud Trace Integration:
from google.cloud import trace_v1 # Automatic tracing @traced_agent class MonitoredAgent(ADKAgent): def run(self, query: str): # All calls automatically traced with self.trace_span("retrieval"): docs = self.retrieve(query) with self.trace_span("generation"): response = self.generate(query, docs) return response
🔒 Security & Best Practices
1. Service Account Management:
# Create minimal-permission service account gcloud iam service-accounts create agent-sa \ --display-name "Agent Service Account" # Grant only required permissions gcloud projects add-iam-policy-binding PROJECT_ID \ --member="serviceAccount:agent-sa@PROJECT.iam.gserviceaccount.com" \ --role="roles/aiplatform.user"
2. Secret Management:
from google.cloud import secretmanager def get_api_key(): client = secretmanager.SecretManagerServiceClient() name = "projects/PROJECT/secrets/api-key/versions/latest" response = client.access_secret_version(name=name) return response.payload.data.decode('UTF-8')
3. VPC Service Controls:
# Enable VPC SC for data security gcloud access-context-manager perimeters create agent-perimeter \ --resources=projects/PROJECT_ID \ --restricted-services=aiplatform.googleapis.com
💰 Cost Optimization
Strategies:
- Use Gemini 2.5 Flash for most operations
- Cache embeddings for RAG systems
- Implement request batching
- Use preemptible GKE nodes
- Monitor token usage in Cloud Monitoring
Pricing Examples:
- Cloud Run: $0.00024/GB-second
- Agent Engine: Pay-per-request pricing
- GKE: Standard cluster costs
- Gemini API: $3.50/1M tokens (Pro)
📚 Reference Architecture
Production Agent System:
┌─────────────────┐ │ Load Balancer │ └────────┬────────┘ │ ┌────▼────┐ │Cloud Run│ (Agent containers) └────┬────┘ │ ┌────▼──────────┐ │ Agent Engine │ (Orchestration) └────┬──────────┘ │ ┌────▼────────────────┐ │ Vertex AI Search │ (RAG) │ Vector Search │ │ Gemini 2.5 Pro │ └─────────────────────┘
🎯 Best Practices for Jeremy
1. Start with Templates:
# Use Agent Starter Pack templates uvx agent-starter-pack create my-agent --template agentic_rag
2. Local Development:
# Test locally first adk serve --port 8080 curl http://localhost:8080/query -d '{"question": "test"}'
3. Gradual Deployment:
# Deploy to dev → staging → prod asp deploy --env dev # Test thoroughly asp deploy --env staging # Final production push asp deploy --env production
4. Monitor Everything:
- Enable Cloud Trace
- Set up error reporting
- Track token usage
- Monitor response times
- Set up alerting
📖 Official Documentation
Core Resources:
- ADK Docs: https://google.github.io/adk-docs/
- Agent Starter Pack: https://github.com/GoogleCloudPlatform/agent-starter-pack
- Agent Engine: https://cloud.google.com/vertex-ai/generative-ai/docs/agent-engine/overview
- Agent Builder: https://cloud.google.com/products/agent-builder
Tutorials:
- Building AI Agents: https://codelabs.developers.google.com/devsite/codelabs/building-ai-agents-vertexai
- Multi-agent Systems: https://cloud.google.com/blog/products/ai-machine-learning/build-and-manage-multi-system-agents-with-vertex-ai
When This Skill Activates
This skill automatically activates when you mention:
- Agent development, ADK, or Agent Starter Pack
- Multi-agent systems or orchestration
- Containerized agent deployment
- Cloud Run, GKE, or Agent Engine deployment
- RAG agents or ReAct agents
- Agent templates or scaffolding
- CI/CD for agents
- Production agent systems
Integration with Other Services
Google Cloud:
- Vertex AI (Gemini, Search, Vector Search)
- Cloud Storage (data storage)
- Cloud Functions (triggers)
- Cloud Scheduler (automation)
- Cloud Logging & Monitoring
Third-party:
- LangChain integration
- CrewAI orchestration
- Custom tool frameworks
Success Metrics
Track:
- Agent response time (target: <2s)
- Evaluation scores (target: >85% accuracy)
- Deployment frequency (target: daily)
- System uptime (target: 99.9%)
- Cost per query (target: <$0.01)
This skill makes Jeremy a Google Cloud agent architecture expert with instant access to ADK, Agent Starter Pack, and production deployment patterns.