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adk-infra-expert

jeremylongshore
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About

This Claude Skill provisions production Vertex AI ADK Agent Engine infrastructure using Terraform. It handles core components including Agent Engine runtime, Code Execution Sandbox, Memory Bank, VPC-SC, and IAM security. Use it when you need to deploy or manage secure multi-agent infrastructure for ADK production environments.

Quick Install

Claude Code

Recommended
Plugin CommandRecommended
/plugin add https://github.com/jeremylongshore/claude-code-plugins-plus
Git CloneAlternative
git clone https://github.com/jeremylongshore/claude-code-plugins-plus.git ~/.claude/skills/adk-infra-expert

Copy and paste this command in Claude Code to install this skill

Documentation

What This Skill Does

Expert in provisioning production Vertex AI ADK infrastructure with Agent Engine, Code Execution Sandbox (14-day state), Memory Bank, VPC Service Controls, and enterprise security.

When This Skill Activates

Triggers: "adk terraform deployment", "agent engine infrastructure", "provision adk agent", "vertex ai agent terraform", "code execution sandbox terraform"

Core Terraform Modules

Agent Engine Deployment

resource "google_vertex_ai_agent_runtime" "adk_agent" {
  project  = var.project_id
  location = var.region

  display_name = "adk-production-agent"

  agent_config {
    model         = "gemini-2.5-flash"

    code_execution {
      enabled           = true
      state_ttl_days    = 14
      sandbox_type      = "SECURE_ISOLATED"
    }

    memory_bank {
      enabled = true
    }

    tools = [
      {
        code_execution = {}
      },
      {
        memory_bank = {}
      }
    ]
  }

  vpc_config {
    vpc_network    = google_compute_network.agent_vpc.id
    private_service_connect {
      enabled = true
    }
  }
}

VPC Service Controls

resource "google_access_context_manager_service_perimeter" "adk_perimeter" {
  parent = "accessPolicies/${var.access_policy_id}"
  name   = "accessPolicies/${var.access_policy_id}/servicePerimeters/adk_perimeter"
  title  = "ADK Agent Engine Perimeter"

  status {
    restricted_services = [
      "aiplatform.googleapis.com",
      "run.googleapis.com"
    ]

    vpc_accessible_services {
      enable_restriction = true
      allowed_services   = [
        "aiplatform.googleapis.com"
      ]
    }
  }
}

IAM for Native Agent Identity

resource "google_project_iam_member" "agent_identity" {
  project = var.project_id
  role    = "roles/aiplatform.agentUser"
  member  = "serviceAccount:${google_service_account.adk_agent.email}"
}

resource "google_service_account" "adk_agent" {
  account_id   = "adk-agent-sa"
  display_name = "ADK Agent Service Account"
}

# Least privilege for Code Execution
resource "google_project_iam_member" "code_exec_permissions" {
  for_each = toset([
    "roles/compute.viewer",
    "roles/container.viewer",
    "roles/run.viewer"
  ])

  project = var.project_id
  role    = each.key
  member  = "serviceAccount:${google_service_account.adk_agent.email}"
}

Tool Permissions

Read, Write, Edit, Grep, Glob, Bash - Enterprise infrastructure provisioning

References

GitHub Repository

jeremylongshore/claude-code-plugins-plus
Path: backups/skills-batch-20251204-000554/plugins/devops/jeremy-adk-terraform/skills/adk-infra-expert
aiautomationclaude-codedevopsmarketplacemcp

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