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Vertex Ai Mcp Server
What is Vertex Ai Mcp Server
The vertex-ai-mcp-server is a Model Context Protocol (MCP) server that facilitates interaction with Google Cloud’s Vertex AI Gemini models, primarily focusing on coding assistance and general query answering.
Use cases
Use cases include answering coding-related queries, finding official documentation for specific topics, and providing general knowledge answers using the capabilities of the Vertex AI models.
How to use
To use the vertex-ai-mcp-server, clone the project repository, install the necessary dependencies using ‘bun install’, and configure your environment variables for model settings and Google Cloud authentication.
Key features
Key features include access to Vertex AI Gemini models through various MCP tools, support for web search grounding and direct knowledge answering, configurable model parameters, streaming API for improved responsiveness, and basic retry logic for transient errors.
Where to use
The vertex-ai-mcp-server can be used in fields such as software development for coding assistance, customer support for query answering, and any domain requiring intelligent interaction with AI models.
Clients Supporting MCP
The following are the main client software that supports the Model Context Protocol. Click the link to visit the official website for more information.
Overview
What is Vertex Ai Mcp Server
The vertex-ai-mcp-server is a Model Context Protocol (MCP) server that facilitates interaction with Google Cloud’s Vertex AI Gemini models, primarily focusing on coding assistance and general query answering.
Use cases
Use cases include answering coding-related queries, finding official documentation for specific topics, and providing general knowledge answers using the capabilities of the Vertex AI models.
How to use
To use the vertex-ai-mcp-server, clone the project repository, install the necessary dependencies using ‘bun install’, and configure your environment variables for model settings and Google Cloud authentication.
Key features
Key features include access to Vertex AI Gemini models through various MCP tools, support for web search grounding and direct knowledge answering, configurable model parameters, streaming API for improved responsiveness, and basic retry logic for transient errors.
Where to use
The vertex-ai-mcp-server can be used in fields such as software development for coding assistance, customer support for query answering, and any domain requiring intelligent interaction with AI models.
Clients Supporting MCP
The following are the main client software that supports the Model Context Protocol. Click the link to visit the official website for more information.
Content
Vertex AI MCP Server
This project implements a Model Context Protocol (MCP) server that provides a comprehensive suite of tools for interacting with Google Cloud’s Vertex AI Gemini models, focusing on coding assistance and general query answering.
Features
- Provides access to Vertex AI Gemini models via numerous MCP tools.
- Supports web search grounding (
answer_query_websearch) and direct knowledge answering (answer_query_direct). - Configurable model ID, temperature, streaming behavior, max output tokens, and retry settings via environment variables.
- Uses streaming API by default for potentially better responsiveness.
- Includes basic retry logic for transient API errors.
- Minimal safety filters applied (
BLOCK_NONE) to reduce potential blocking (use with caution).
Tools Provided
Query & Generation (AI Focused)
answer_query_websearch: Answers a natural language query using the configured Vertex AI model enhanced with Google Search results.answer_query_direct: Answers a natural language query using only the internal knowledge of the configured Vertex AI model.explain_topic_with_docs: Provides a detailed explanation for a query about a specific software topic by synthesizing information primarily from official documentation found via web search.get_doc_snippets: Provides precise, authoritative code snippets or concise answers for technical queries by searching official documentation.generate_project_guidelines: Generates a structured project guidelines document (Markdown) based on a specified list of technologies (optionally with versions), using web search for best practices.
Research & Analysis Tools
code_analysis_with_docs: Analyzes code snippets by comparing them with best practices from official documentation, identifying potential bugs, performance issues, and security vulnerabilities.technical_comparison: Compares multiple technologies, frameworks, or libraries based on specific criteria, providing detailed comparison tables with pros/cons and use cases.architecture_pattern_recommendation: Suggests architecture patterns for specific use cases based on industry best practices, with implementation examples and considerations.dependency_vulnerability_scan: Analyzes project dependencies for known security vulnerabilities, providing detailed information and mitigation strategies.database_schema_analyzer: Reviews database schemas for normalization, indexing, and performance issues, suggesting improvements based on database-specific best practices.security_best_practices_advisor: Provides security recommendations for specific technologies or scenarios, with code examples for implementing secure practices.testing_strategy_generator: Creates comprehensive testing strategies for applications or features, suggesting appropriate testing types with coverage goals.regulatory_compliance_advisor: Provides guidance on regulatory requirements for specific industries (GDPR, HIPAA, etc.), with implementation approaches for compliance.microservice_design_assistant: Helps design microservice architectures for specific domains, with service boundary recommendations and communication patterns.documentation_generator: Creates comprehensive documentation for code, APIs, or systems, following industry best practices for technical documentation.
Filesystem Operations
read_file_content: Read the complete contents of one or more files. Provide a single path string or an array of path strings.write_file_content: Create new files or completely overwrite existing files. The ‘writes’ argument accepts a single object ({path, content}) or an array of such objects.edit_file_content: Makes line-based edits to a text file, returning a diff preview or applying changes.list_directory_contents: Lists files and directories directly within a specified path (non-recursive).get_directory_tree: Gets a recursive tree view of files and directories as JSON.move_file_or_directory: Moves or renames files and directories.search_filesystem: Recursively searches for files/directories matching a name pattern, with optional exclusions.get_filesystem_info: Retrieves detailed metadata (size, dates, type, permissions) about a file or directory.execute_terminal_command: Execute a shell command, optionally specifyingcwdandtimeout. Returns stdout/stderr.
Combined AI + Filesystem Operations
save_generate_project_guidelines: Generates project guidelines based on a tech stack and saves the result to a specified file path.save_doc_snippet: Finds code snippets from documentation and saves the result to a specified file path.save_topic_explanation: Generates a detailed explanation of a topic based on documentation and saves the result to a specified file path.save_answer_query_direct: Answers a query using only internal knowledge and saves the answer to a specified file path.save_answer_query_websearch: Answers a query using web search results and saves the answer to a specified file path.
(Note: Input/output schemas for each tool are defined in their respective files within src/tools/ and exposed via the MCP server.)
Prerequisites
- Node.js (v18+)
- Bun (
npm install -g bun) - Google Cloud Project with Billing enabled.
- Vertex AI API enabled in the GCP project.
- Google Cloud Authentication configured in your environment (Application Default Credentials via
gcloud auth application-default loginis recommended, or a Service Account Key).
Setup & Installation
- Clone/Place Project: Ensure the project files are in your desired location.
- Install Dependencies:
bun install - Configure Environment:
- Create a
.envfile in the project root (copy.env.example). - Set the required and optional environment variables as described in
.env.example.- Set
AI_PROVIDERto either"vertex"or"gemini". - If
AI_PROVIDER="vertex",GOOGLE_CLOUD_PROJECTis required. - If
AI_PROVIDER="gemini",GEMINI_API_KEYis required.
- Set
- Create a
- Build the Server:
This compiles the TypeScript code tobun run buildbuild/index.js.
Usage (Standalone / NPX)
Once published to npm, you can run this server directly using npx:
# Ensure required environment variables are set (e.g., GOOGLE_CLOUD_PROJECT)
bunx vertex-ai-mcp-server
Alternatively, install it globally:
bun install -g vertex-ai-mcp-server
# Then run:
vertex-ai-mcp-server
Note: Running standalone requires setting necessary environment variables (like GOOGLE_CLOUD_PROJECT, GOOGLE_CLOUD_LOCATION, authentication credentials if not using ADC) in your shell environment before executing the command.
Installing via Smithery
To install Vertex AI Server for Claude Desktop automatically via Smithery:
bunx -y @smithery/cli install @shariqriazz/vertex-ai-mcp-server --client claude
Running with Cline
-
Configure MCP Settings: Add/update the configuration in your Cline MCP settings file (e.g.,
.roo/mcp.json). You have two primary ways to configure the command:Option A: Using Node (Direct Path - Recommended for Development)
This method uses
nodeto run the compiled script directly. It’s useful during development when you have the code cloned locally.- Important: Ensure the
argspath points correctly to thebuild/index.jsfile. Using an absolute path might be more reliable.
Option B: Using NPX (Requires Package Published to npm)
This method uses
npxto automatically download and run the server package from the npm registry. This is convenient if you don’t want to clone the repository.- Ensure the environment variables in the
envblock are correctly set, either matching.envor explicitly defined here. Remove comments from the actual JSON file.
- Important: Ensure the
-
Restart/Reload Cline: Cline should detect the configuration change and start the server.
-
Use Tools: You can now use the extensive list of tools via Cline.
Development
- Watch Mode:
bun run watch - Linting:
bun run lint - Formatting:
bun run format
License
This project is licensed under the MIT License - see the LICENSE file for details.
Dev Tools Supporting MCP
The following are the main code editors that support the Model Context Protocol. Click the link to visit the official website for more information.










