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vertex-agent-builder

Build and deploy production-ready generative AI agents using Vertex AI, Gemini models, and Google Cloud infrastructure with RAG, function calling, and multi-modal capabilities. Use when appropriate context detected. Trigger with relevant phrases based on skill purpose.

allowed_tools: Read, Write, Edit, Grep, Bash(cmd:*)

$ 安裝

git clone https://github.com/jeremylongshore/claude-code-plugins-plus-skills /tmp/claude-code-plugins-plus-skills && cp -r /tmp/claude-code-plugins-plus-skills/plugins/jeremy-vertex-ai/skills/vertex-agent-builder ~/.claude/skills/claude-code-plugins-plus-skills

// tip: Run this command in your terminal to install the skill


name: vertex-agent-builder description: | Build and deploy production-ready generative AI agents using Vertex AI, Gemini models, and Google Cloud infrastructure with RAG, function calling, and multi-modal capabilities. Use when appropriate context detected. Trigger with relevant phrases based on skill purpose. allowed-tools: Read, Write, Edit, Grep, Bash(cmd:*) version: 1.0.0 author: Jeremy Longshore [email protected] license: MIT

Vertex AI Agent Builder

Build and deploy production-ready agents on Vertex AI with Gemini models, retrieval (RAG), function calling, and operational guardrails (validation, monitoring, cost controls).

Overview

  • Produces an agent scaffold aligned with Vertex AI Agent Engine deployment patterns.
  • Helps choose models/regions, design tool/function interfaces, and wire up retrieval.
  • Includes an evaluation + smoke-test checklist so deployments don’t regress.

Prerequisites

  • Google Cloud project with Vertex AI API enabled
  • Permissions to deploy/operate Agent Engine runtimes (or a local-only build target)
  • If using RAG: a document source (GCS/BigQuery/Firestore/etc) and an embeddings/index strategy
  • Secrets handled via env vars or Secret Manager (never committed)

Instructions

  1. Clarify the agent’s job (user intents, inputs/outputs, latency and cost constraints).
  2. Choose model + region and define tool/function interfaces (schemas, error contracts).
  3. Implement retrieval (if needed): chunking, embeddings, index, and a “citation-first” response format.
  4. Add evaluation: golden prompts, offline checks, and a minimal online smoke test.
  5. Deploy (optional): provide the exact deployment command/config and verify endpoints + permissions.
  6. Add ops: logs/metrics, alerting, quota/cost guardrails, and rollback steps.

Output

  • A Vertex AI agent scaffold (code/config) with clear extension points
  • A retrieval plan (when applicable) and a validation/evaluation checklist
  • Optional: deployment commands and post-deploy health checks

Error Handling

  • Quota/region issues: detect the failing service/quota and propose a scoped fix.
  • Auth failures: identify the principal and missing role; prefer least-privilege remediation.
  • Retrieval failures: validate indexing/embedding dimensions and add fallback behavior.
  • Tool/function errors: enforce structured error responses and add regression tests.

Examples

Example: RAG support agent

  • Request: “Deploy a support bot that answers from our docs with citations.”
  • Result: ingestion plan, retrieval wiring, evaluation prompts, and a smoke test that verifies citations.

Example: Multimodal intake agent

  • Request: “Build an agent that extracts structured fields from PDFs/images and routes tasks.”
  • Result: schema-first extraction prompts, tool interface contracts, and validation examples.

Resources

Repository

jeremylongshore
jeremylongshore
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jeremylongshore/claude-code-plugins-plus-skills/plugins/jeremy-vertex-ai/skills/vertex-agent-builder
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