MCP Toolbox

平台与服务编辑精选

by googleapis

MCP Toolbox 是 Google 开源的数据库连接 MCP 服务器,让 AI 助手直接读写你的数据库。

这个工具解决了 AI 代理与数据库交互的复杂性,适合需要让 Claude 或 Gemini 查询生产数据的团队。它来自 Google,代码质量和文档都很可靠,但还在 beta 阶段,API 可能有变动,建议先用于非关键任务。

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什么是 MCP Toolbox

MCP Toolbox 是 Google 开源的数据库连接 MCP 服务器,让 AI 助手直接读写你的数据库。

README

<div align="center">

logo

MCP Toolbox for Databases

<a href="https://trendshift.io/repositories/13019" target="_blank"><img src="https://trendshift.io/api/badge/repositories/13019" alt="googleapis%2Fmcp-toolbox | Trendshift" style="width: 250px; height: 55px;" width="250" height="55"/></a>

Go Report Card License: Apache
2.0 Docs Discord Medium

Python SDK JS/TS SDK Go SDK Java SDK

</div>

MCP Toolbox for Databases is an open source Model Context Protocol (MCP) server that connects your AI agents, IDEs, and applications directly to your enterprise databases.

<p align="center"> <img src="docs/en/documentation/introduction/architecture.png" alt="architecture" width="50%"/> </p>

It serves a dual purpose:

  1. Ready-to-use MCP Server (Build-Time): Instantly connect Gemini CLI, Google Antigravity, Claude Code, Codex, or other MCP clients to your databases using our prebuilt generic tools. Talk to your data, explore schemas, and generate code without writing boilerplate.
  2. Custom Tools Framework (Run-Time): A robust framework to build specialized, highly secure AI tools for your production agents. Define structured queries, semantic search, and NL2SQL capabilities safely and easily.

This README provides a brief overview. For comprehensive details, see the full documentation.

[!IMPORTANT]
Repository Name Update: The genai-toolbox repository has been officially renamed to mcp-toolbox. To ensure your local environment reflects the new name, you may update your remote: git remote set-url origin https://github.com/googleapis/mcp-toolbox.git

[!NOTE] This solution was originally named “Gen AI Toolbox for Databases” (github.com/googleapis/mcp-toolbox) as its initial development predated MCP, but was renamed to align with the MCP compatibility.

<!-- TOC ignore:true -->

Table of Contents


Why MCP Toolbox?

  • Out-of-the-Box Database Access: Prebuilt generic tools for instant data exploration (e.g., list_tables, execute_sql) directly from your IDE or CLI.
  • Custom Tools Framework: Build production-ready tools with your own predefined logic, ensuring safety through Restricted Access, Structured Queries, and Semantic Search.
  • Simplified Development: Integrate tools into your Agent Development Kit (ADK), LangChain, LlamaIndex, or custom agents in less than 10 lines of code.
  • Better Performance: Handles connection pooling, integrated auth (IAM), and end-to-end observability (OpenTelemetry) out of the box.
  • Enhanced Security: Integrated authentication for more secure access to your data.
  • End-to-end Observability: Out of the box metrics and tracing with built-in support for OpenTelemetry.

Quick Start: Prebuilt Tools

Stop context-switching and let your AI assistant become a true co-developer. By connecting your IDE to your databases with MCP Toolbox, you can query your data in plain English, automate schema discovery and management, and generate database-aware code.

You can use the Toolbox in any MCP-compatible IDE or client (e.g., Gemini CLI, Google Antigravity, Claude Code, Codex, etc.) by configuring the MCP server.

Prebuilt tools are also conveniently available via the Google Antigravity MCP Store with a simple click-to-install experience.

  1. Add the following to your client's MCP configuration file (usually mcp.json or claude_desktop_config.json):

    json
    {
      "mcpServers": {
        "toolbox-postgres": {
          "command": "npx",
          "args": [
            "-y",
            "@toolbox-sdk/server",
            "--prebuilt=postgres"
          ]
        }
      }
    }
    
  2. Set the appropriate environment variables to connect, see the Prebuilt Tools Reference.

When you run Toolbox with a --prebuilt=<database> flag, you instantly get access to standard tools to interact with that database.

Supported databases currently include:

  • Google Cloud: AlloyDB, BigQuery, Cloud SQL (PostgreSQL, MySQL, SQL Server), Spanner, Firestore, Dataplex
  • Other Databases: PostgreSQL, MySQL, SQL Server, Oracle, MongoDB, Redis, Elasticsearch, CockroachDB, ClickHouse, Couchbase, Neo4j, Snowflake, Trino, and more.

For a full list of available tools and their capabilities across all supported databases, see the Prebuilt Tools Reference.

See the Install & Run the Toolbox server section for different execution methods like Docker or binaries.

[!TIP] For users looking for a managed solution, Google Cloud MCP Servers provide a managed MCP experience with prebuilt tools; you can learn more about the differences here.


Quick Start: Custom Tools

Toolbox can also be used as a framework for customized tools. The primary way to configure Toolbox is through the tools.yaml file. If you have multiple files, you can tell Toolbox which to load with the --config tools.yaml flag.

You can find more detailed reference documentation to all resource types in the Resources.

Sources

The sources section of your tools.yaml defines what data sources your Toolbox should have access to. Most tools will have at least one source to execute against.

yaml
kind: source
name: my-pg-source
type: postgres
host: 127.0.0.1
port: 5432
database: toolbox_db
user: toolbox_user
password: my-password

For more details on configuring different types of sources, see the Sources.

Tools

The tools section of a tools.yaml define the actions an agent can take: what type of tool it is, which source(s) it affects, what parameters it uses, etc.

yaml
kind: tool
name: search-hotels-by-name
type: postgres-sql
source: my-pg-source
description: Search for hotels based on name.
parameters:
  - name: name
    type: string
    description: The name of the hotel.
statement: SELECT * FROM hotels WHERE name ILIKE '%' || $1 || '%';

For more details on configuring different types of tools, see the Tools.

Toolsets

The toolsets section of your tools.yaml allows you to define groups of tools that you want to be able to load together. This can be useful for defining different groups based on agent or application.

yaml
kind: toolset
name: my_first_toolset
tools:
    - my_first_tool
    - my_second_tool
---
kind: toolset
name: my_second_toolset
tools:
    - my_second_tool
    - my_third_tool

Prompts

The prompts section of a tools.yaml defines prompts that can be used for interactions with LLMs.

yaml
kind: prompt
name: code_review
description: "Asks the LLM to analyze code quality and suggest improvements."
messages:
  - content: >
         Please review the following code for quality, correctness,
         and potential improvements: \n\n{{.code}}
arguments:
  - name: "code"
    description: "The code to review"

For more details on configuring prompts, see the Prompts.


Install & Run the Toolbox server

You can run Toolbox directly with a configuration file:

sh
npx @toolbox-sdk/server --config tools.yaml

This runs the latest version of the Toolbox server with your configuration file.

[!NOTE] This method is optimized for convenience rather than performance. For a more standard and reliable installation, please use the binary or container image as described in Install & Run the Toolbox server.

Install Toolbox

For the latest version, check the releases page and use the following instructions for your OS and CPU architecture.

<details open> <summary>Binary</summary>

To install Toolbox as a binary:

<!-- {x-release-please-start-version} -->
<details> <summary>Linux (AMD64)</summary>

To install Toolbox as a binary on Linux (AMD64):

sh
# see releases page for other versions
export VERSION=0.32.0
curl -L -o toolbox https://storage.googleapis.com/mcp-toolbox-for-databases/v$VERSION/linux/amd64/toolbox
chmod +x toolbox
</details> <details> <summary>macOS (Apple Silicon)</summary>

To install Toolbox as a binary on macOS (Apple Silicon):

sh
# see releases page for other versions
export VERSION=0.32.0
curl -L -o toolbox https://storage.googleapis.com/mcp-toolbox-for-databases/v$VERSION/darwin/arm64/toolbox
chmod +x toolbox
</details> <details> <summary>macOS (Intel)</summary>

To install Toolbox as a binary on macOS (Intel):

sh
# see releases page for other versions
export VERSION=0.32.0
curl -L -o toolbox https://storage.googleapis.com/mcp-toolbox-for-databases/v$VERSION/darwin/amd64/toolbox
chmod +x toolbox
</details> <details> <summary>Windows (Command Prompt)</summary>

To install Toolbox as a binary on Windows (Command Prompt):

cmd
:: see releases page for other versions
set VERSION=0.32.0
curl -o toolbox.exe "https://storage.googleapis.com/mcp-toolbox-for-databases/v%VERSION%/windows/amd64/toolbox.exe"
</details> <details> <summary>Windows (PowerShell)</summary>

To install Toolbox as a binary on Windows (PowerShell):

powershell
# see releases page for other versions
$VERSION = "0.32.0"
curl.exe -o toolbox.exe "https://storage.googleapis.com/mcp-toolbox-for-databases/v$VERSION/windows/amd64/toolbox.exe"
</details>
</details> <details> <summary>Container image</summary> You can also install Toolbox as a container:
sh
# see releases page for other versions
export VERSION=0.32.0
docker pull us-central1-docker.pkg.dev/database-toolbox/toolbox/toolbox:$VERSION
</details> <details> <summary>Homebrew</summary>

To install Toolbox using Homebrew on macOS or Linux:

sh
brew install mcp-toolbox
</details> <details> <summary>Compile from source</summary>

To install from source, ensure you have the latest version of Go installed, and then run the following command:

sh
go install github.com/googleapis/mcp-toolbox@v0.32.0
<!-- {x-release-please-end} --> </details> <details> <summary>Gemini CLI</summary> Check out the [Gemini CLI extensions](https://geminicli.com/extensions/) to install prebuilt tools for specific databases like AlloyDB, BigQuery, and Cloud SQL directly into Gemini CLI.
sh
# Install Gemini CLI
npm install -g @google/gemini-cli
# Install the extension
gemini extensions install https://github.com/gemini-cli-extensions/cloud-sql-postgres
# Run Gemini CLI
gemini

Interact with your custom tools using natural language through the Gemini CLI.

sh
# Install the extension
gemini extensions install https://github.com/gemini-cli-extensions/mcp-toolbox
</details>

Run Toolbox

Configure a tools.yaml to define your tools, and then execute toolbox to start the server:

<details open> <summary>Binary</summary>

To run Toolbox from binary:

sh
./toolbox --config "tools.yaml"

ⓘ Note
Toolbox enables dynamic reloading by default. To disable, use the --disable-reload flag.

</details> <details> <summary>Container image</summary>

To run the server after pulling the container image:

sh
export VERSION=0.24.0 # Use the version you pulled
docker run -p 5000:5000 \
-v $(pwd)/tools.yaml:/app/tools.yaml \
us-central1-docker.pkg.dev/database-toolbox/toolbox/toolbox:$VERSION \
--config "/app/tools.yaml"

ⓘ Note
The -v flag mounts your local tools.yaml into the container, and -p maps the container's port 5000 to your host's port 5000.

</details> <details> <summary>Source</summary>

To run the server directly from source, navigate to the project root directory and run:

sh
go run .

ⓘ Note
This command runs the project from source, and is more suitable for development and testing. It does not compile a binary into your $GOPATH. If you want to compile a binary instead, refer the Developer Documentation.

</details> <details> <summary>Homebrew</summary>

If you installed Toolbox using Homebrew, the toolbox binary is available in your system path. You can start the server with the same command:

sh
toolbox --config "tools.yaml"
</details> <details> <summary>NPM</summary>

To run Toolbox directly without manually downloading the binary (requires Node.js):

sh
npx @toolbox-sdk/server --config tools.yaml
</details> <details> <summary>Gemini CLI</summary> After installing a [Gemini CLI extensions](https://geminicli.com/extensions/), the prebuilt tools will be available during use.
sh
# Run Gemini CLI
gemini

# List extensions
/exttensions list
# List MCP servers
/mcp list
</details>

You can use toolbox help for a full list of flags! To stop the server, send a terminate signal (ctrl+c on most platforms).

For more detailed documentation on deploying to different environments, check out the resources in the Deploy Toolbox section


Connect to Toolbox

Once your Toolbox server is up and running, you can load tools into your MCP-compatible client or application.

MCP Client

Add the following configuration to your MCP client configuration:

json
{
  "mcpServers": {
    "toolbox": {
      "type": "http",
      "url": "http://127.0.0.1:5000/mcp",
    }
  }
}

If you would like to connect to a specific toolset, replace url with "http://127.0.0.1:5000/mcp/{toolset_name}".

Toolbox SDKs: Integrate with your Application

Toolbox Client SDKs provide the easy-to-use building blocks and advanced features for connecting your custom applications to the MCP Toolbox server. See below the list of Client SDKs for using various frameworks:

<details open> <summary>Python (<a href="https://github.com/googleapis/mcp-toolbox-sdk-python">Github</a>)</summary> <br> <blockquote> <details open> <summary>Core</summary>
  1. Install Toolbox Core SDK:

    bash
    pip install toolbox-core
    
  2. Load tools:

    python
    from toolbox_core import ToolboxClient
    
    # update the url to point to your server
    async with ToolboxClient("http://127.0.0.1:5000") as client:
    
        # these tools can be passed to your application!
        tools = await client.load_toolset("toolset_name")
    

For more detailed instructions on using the Toolbox Core SDK, see the project's README.

</details> <details> <summary>LangChain / LangGraph</summary>
  1. Install Toolbox LangChain SDK:

    bash
    pip install toolbox-langchain
    
  2. Load tools:

    python
    from toolbox_langchain import ToolboxClient
    
    # update the url to point to your server
    async with ToolboxClient("http://127.0.0.1:5000") as client:
    
        # these tools can be passed to your application!
        tools = client.load_toolset()
    

    For more detailed instructions on using the Toolbox LangChain SDK, see the project's README.

</details> <details> <summary>LlamaIndex</summary>
  1. Install Toolbox Llamaindex SDK:

    bash
    pip install toolbox-llamaindex
    
  2. Load tools:

    python
    from toolbox_llamaindex import ToolboxClient
    
    # update the url to point to your server
    async with ToolboxClient("http://127.0.0.1:5000") as client:
    
        # these tools can be passed to your application!
        tools = client.load_toolset()
    

    For more detailed instructions on using the Toolbox Llamaindex SDK, see the project's README.

</details> </details> </blockquote> <details> <summary>Javascript/Typescript (<a href="https://github.com/googleapis/mcp-toolbox-sdk-js">Github</a>)</summary> <br> <blockquote> <details open> <summary>Core</summary>
  1. Install Toolbox Core SDK:

    bash
    npm install @toolbox-sdk/core
    
  2. Load tools:

    javascript
    import { ToolboxClient } from '@toolbox-sdk/core';
    
    // update the url to point to your server
    const URL = 'http://127.0.0.1:5000';
    let client = new ToolboxClient(URL);
    
    // these tools can be passed to your application!
    const tools = await client.loadToolset('toolsetName');
    

    For more detailed instructions on using the Toolbox Core SDK, see the project's README.

</details> <details> <summary>LangChain / LangGraph</summary>
  1. Install Toolbox Core SDK:

    bash
    npm install @toolbox-sdk/core
    
  2. Load tools:

    javascript
    import { ToolboxClient } from '@toolbox-sdk/core';
    
    // update the url to point to your server
    const URL = 'http://127.0.0.1:5000';
    let client = new ToolboxClient(URL);
    
    // these tools can be passed to your application!
    const toolboxTools = await client.loadToolset('toolsetName');
    
    // Define the basics of the tool: name, description, schema and core logic
    const getTool = (toolboxTool) => tool(currTool, {
        name: toolboxTool.getName(),
        description: toolboxTool.getDescription(),
        schema: toolboxTool.getParamSchema()
    });
    
    // Use these tools in your Langchain/Langraph applications
    const tools = toolboxTools.map(getTool);
    
</details> <details> <summary>Genkit</summary>
  1. Install Toolbox Core SDK:

    bash
    npm install @toolbox-sdk/core
    
  2. Load tools:

    javascript
    import { ToolboxClient } from '@toolbox-sdk/core';
    import { genkit } from 'genkit';
    
    // Initialise genkit
    const ai = genkit({
        plugins: [
            googleAI({
                apiKey: process.env.GEMINI_API_KEY || process.env.GOOGLE_API_KEY
            })
        ],
        model: googleAI.model('gemini-2.0-flash'),
    });
    
    // update the url to point to your server
    const URL = 'http://127.0.0.1:5000';
    let client = new ToolboxClient(URL);
    
    // these tools can be passed to your application!
    const toolboxTools = await client.loadToolset('toolsetName');
    
    // Define the basics of the tool: name, description, schema and core logic
    const getTool = (toolboxTool) => ai.defineTool({
        name: toolboxTool.getName(),
        description: toolboxTool.getDescription(),
        schema: toolboxTool.getParamSchema()
    }, toolboxTool)
    
    // Use these tools in your Genkit applications
    const tools = toolboxTools.map(getTool);
    
</details> <details> <summary>ADK</summary>
  1. Install Toolbox ADK SDK:

    bash
    npm install @toolbox-sdk/adk
    
  2. Load tools:

    javascript
    import { ToolboxClient } from '@toolbox-sdk/adk';
    
    // update the url to point to your server
    const URL = 'http://127.0.0.1:5000';
    let client = new ToolboxClient(URL);
    
    // these tools can be passed to your application!
    const tools = await client.loadToolset('toolsetName');
    

    For more detailed instructions on using the Toolbox ADK SDK, see the project's README.

</details> </details> </blockquote> <details> <summary>Go (<a href="https://github.com/googleapis/mcp-toolbox-sdk-go">Github</a>)</summary> <br> <blockquote> <details> <summary>Core</summary>
  1. Install Toolbox Go SDK:

    bash
    go get github.com/googleapis/mcp-toolbox-sdk-go
    
  2. Load tools:

    go
    package main
    
    import (
      "github.com/googleapis/mcp-toolbox-sdk-go/core"
      "context"
    )
    
    func main() {
      // Make sure to add the error checks
      // update the url to point to your server
      URL := "http://127.0.0.1:5000";
      ctx := context.Background()
    
      client, err := core.NewToolboxClient(URL)
    
      // Framework agnostic tools
      tools, err := client.LoadToolset("toolsetName", ctx)
    }
    

    For more detailed instructions on using the Toolbox Go SDK, see the project's README.

</details> <details> <summary>LangChain Go</summary>
  1. Install Toolbox Go SDK:

    bash
    go get github.com/googleapis/mcp-toolbox-sdk-go
    
  2. Load tools:

    go
    package main
    
    import (
      "context"
      "encoding/json"
    
      "github.com/googleapis/mcp-toolbox-sdk-go/core"
      "github.com/tmc/langchaingo/llms"
    )
    
    func main() {
      // Make sure to add the error checks
      // update the url to point to your server
      URL := "http://127.0.0.1:5000"
      ctx := context.Background()
    
      client, err := core.NewToolboxClient(URL)
    
      // Framework agnostic tool
      tool, err := client.LoadTool("toolName", ctx)
    
      // Fetch the tool's input schema
      inputschema, err := tool.InputSchema()
    
      var paramsSchema map[string]any
      _ = json.Unmarshal(inputschema, &paramsSchema)
    
      // Use this tool with LangChainGo
      langChainTool := llms.Tool{
        Type: "function",
        Function: &llms.FunctionDefinition{
          Name:        tool.Name(),
          Description: tool.Description(),
          Parameters:  paramsSchema,
        },
      }
    }
    
    
</details> <details> <summary>Genkit</summary>
  1. Install Toolbox Go SDK:

    bash
    go get github.com/googleapis/mcp-toolbox-sdk-go
    
  2. Load tools:

    go
    package main
    import (
      "context"
      "log"
    
      "github.com/firebase/genkit/go/genkit"
      "github.com/googleapis/mcp-toolbox-sdk-go/core"
      "github.com/googleapis/mcp-toolbox-sdk-go/tbgenkit"
    )
    
    func main() {
      // Make sure to add the error checks
      // Update the url to point to your server
      URL := "http://127.0.0.1:5000"
      ctx := context.Background()
      g := genkit.Init(ctx)
    
      client, err := core.NewToolboxClient(URL)
    
      // Framework agnostic tool
      tool, err := client.LoadTool("toolName", ctx)
    
      // Convert the tool using the tbgenkit package
      // Use this tool with Genkit Go
      genkitTool, err := tbgenkit.ToGenkitTool(tool, g)
      if err != nil {
        log.Fatalf("Failed to convert tool: %v\n", err)
      }
      log.Printf("Successfully converted tool: %s", genkitTool.Name())
    }
    
</details> <details> <summary>Go GenAI</summary>
  1. Install Toolbox Go SDK:

    bash
    go get github.com/googleapis/mcp-toolbox-sdk-go
    
  2. Load tools:

    go
    package main
    
    import (
      "context"
      "encoding/json"
    
      "github.com/googleapis/mcp-toolbox-sdk-go/core"
      "google.golang.org/genai"
    )
    
    func main() {
      // Make sure to add the error checks
      // Update the url to point to your server
      URL := "http://127.0.0.1:5000"
      ctx := context.Background()
    
      client, err := core.NewToolboxClient(URL)
    
      // Framework agnostic tool
      tool, err := client.LoadTool("toolName", ctx)
    
      // Fetch the tool's input schema
      inputschema, err := tool.InputSchema()
    
      var schema *genai.Schema
      _ = json.Unmarshal(inputschema, &schema)
    
      funcDeclaration := &genai.FunctionDeclaration{
        Name:        tool.Name(),
        Description: tool.Description(),
        Parameters:  schema,
      }
    
      // Use this tool with Go GenAI
      genAITool := &genai.Tool{
        FunctionDeclarations: []*genai.FunctionDeclaration{funcDeclaration},
      }
    }
    
</details> <details> <summary>OpenAI Go</summary>
  1. Install Toolbox Go SDK:

    bash
    go get github.com/googleapis/mcp-toolbox-sdk-go
    
  2. Load tools:

    go
    package main
    
    import (
      "context"
      "encoding/json"
    
      "github.com/googleapis/mcp-toolbox-sdk-go/core"
      openai "github.com/openai/openai-go"
    )
    
    func main() {
      // Make sure to add the error checks
      // Update the url to point to your server
      URL := "http://127.0.0.1:5000"
      ctx := context.Background()
    
      client, err := core.NewToolboxClient(URL)
    
      // Framework agnostic tool
      tool, err := client.LoadTool("toolName", ctx)
    
      // Fetch the tool's input schema
      inputschema, err := tool.InputSchema()
    
      var paramsSchema openai.FunctionParameters
      _ = json.Unmarshal(inputschema, &paramsSchema)
    
      // Use this tool with OpenAI Go
      openAITool := openai.ChatCompletionToolParam{
        Function: openai.FunctionDefinitionParam{
          Name:        tool.Name(),
          Description: openai.String(tool.Description()),
          Parameters:  paramsSchema,
        },
      }
    
    }
    
</details> <details open> <summary>ADK Go</summary>
  1. Install Toolbox Go SDK:

    bash
    go get github.com/googleapis/mcp-toolbox-sdk-go
    
  2. Load tools:

    go
    package main
    
    import (
      "github.com/googleapis/mcp-toolbox-sdk-go/tbadk"
      "context"
    )
    
    func main() {
      // Make sure to add the error checks
      // Update the url to point to your server
      URL := "http://127.0.0.1:5000"
      ctx := context.Background()
      client, err := tbadk.NewToolboxClient(URL)
      if err != nil {
        return fmt.Sprintln("Could not start Toolbox Client", err)
      }
    
      // Use this tool with ADK Go
      tool, err := client.LoadTool("toolName", ctx)
      if err != nil {
        return fmt.Sprintln("Could not load Toolbox Tool", err)
      }
    }
    

    For more detailed instructions on using the Toolbox Go SDK, see the project's README.

</details> </details> </blockquote> </details>

Additional Features

Test tools with the Toolbox UI

To launch Toolbox's interactive UI, use the --ui flag. This allows you to test tools and toolsets with features such as authorized parameters. To learn more, visit Toolbox UI.

sh
./toolbox --ui

Telemetry

Toolbox emits traces and metrics via OpenTelemetry. Use --telemetry-otlp=<endpoint> to export to any OTLP-compatible backend like Google Cloud Monitoring, Agnost AI, or others. See the telemetry docs for details.

Generate Agent Skills

The skills-generate command allows you to convert a toolset into an Agent Skill compatible with the Agent Skill specification. This is useful for distributing tools as portable skill packages.

bash
toolbox --config tools.yaml skills-generate \
  --name "my-skill" \
  --toolset "my_toolset" \
  --description "A skill containing multiple tools"

Once generated, you can install the skill into the Gemini CLI:

bash
gemini skills install ./skills/my-skill

For more details, see the Generate Agent Skills guide.


Versioning

MCP Toolbox for Databases follows Semantic Versioning.

The Public API includes the Toolbox Server (CLI, configuration manifests, and pre-built toolsets) and the Client SDKs.

  • Major versions are incremented for breaking changes, such as incompatible CLI or manifest changes.
  • Minor versions are incremented for new features, including modifications to pre-built toolsets or beta features.
  • Patch versions are incremented for backward-compatible bug fixes.

For more details, see our Full Versioning Policy.


Contributing

Contributions are welcome. Please, see the CONTRIBUTING guide to get started.

For technical details on setting up a environment for developing on Toolbox itself, see the DEVELOPER guide.

Please note that this project is released with a Contributor Code of Conduct. By participating in this project you agree to abide by its terms. See Contributor Code of Conduct for more information.


Community

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常见问题

MCP Toolbox 是什么?

MCP Toolbox for Databases enables your agent to connect to your database.

相关 Skills

MCP构建

by anthropics

Universal
热门

聚焦高质量 MCP Server 开发,覆盖协议研究、工具设计、错误处理与传输选型,适合用 FastMCP 或 MCP SDK 对接外部 API、封装服务能力。

想让 LLM 稳定调用外部 API,就用 MCP构建:从 Python 到 Node 都有成熟指引,帮你更快做出高质量 MCP 服务器。

平台与服务
未扫描111.8k

Slack动图

by anthropics

Universal
热门

面向Slack的动图制作Skill,内置emoji/消息GIF的尺寸、帧率和色彩约束、校验与优化流程,适合把创意或上传图片快速做成可直接发送的Slack动画。

帮你快速做出适配 Slack 的动图,内置约束规则和校验工具,少踩上传与播放坑,做表情包和演示都更省心。

平台与服务
未扫描111.8k

MCP服务构建器

by alirezarezvani

Universal
热门

从 OpenAPI 一键生成 Python/TypeScript MCP server 脚手架,并校验 tool schema、命名规范与版本兼容性,适合把现有 REST API 快速发布成可生产演进的 MCP 服务。

帮你快速搭建 MCP 服务与后端 API,脚手架完善、扩展顺手,尤其适合想高效验证服务能力的开发者。

平台与服务
未扫描9.8k

相关 MCP Server

Slack 消息

编辑精选

by Anthropic

热门

Slack 是让 AI 助手直接读写你的 Slack 频道和消息的 MCP 服务器。

这个服务器解决了团队协作中需要 AI 实时获取 Slack 信息的痛点,特别适合开发团队让 Claude 帮忙汇总频道讨论或发送通知。不过,它目前只是参考实现,文档有限,不建议在生产环境直接使用——更适合开发者学习 MCP 如何集成第三方服务。

平台与服务
83.1k

by netdata

热门

io.github.netdata/mcp-server 是让 AI 助手实时监控服务器指标和日志的 MCP 服务器。

这个工具解决了运维人员需要手动检查系统状态的痛点,最适合 DevOps 团队让 Claude 自动分析性能数据。不过,它依赖 NetData 的现有部署,如果你没用过这个监控平台,得先花时间配置。

平台与服务
78.3k

by d4vinci

热门

Scrapling MCP Server 是专为现代网页设计的智能爬虫工具,支持绕过 Cloudflare 等反爬机制。

这个工具解决了爬取动态网页和反爬网站时的头疼问题,特别适合需要批量采集电商价格或新闻数据的开发者。不过,它依赖外部浏览器引擎,资源消耗较大,不适合轻量级任务。

平台与服务
34.9k

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