Metadata-Version: 2.4
Name: toolbox-langchain
Version: 0.5.1
Summary: Python SDK for interacting with the Toolbox service with LangChain
Author-email: Google LLC <googleapis-packages@google.com>
Project-URL: Homepage, https://github.com/googleapis/mcp-toolbox-sdk-python/blob/main/packages/toolbox-langchain
Project-URL: Repository, https://github.com/googleapis/mcp-toolbox-sdk-python.git
Project-URL: Bug Tracker, https://github.com/googleapis/mcp-toolbox-sdk-python/issues
Project-URL: Changelog, https://github.com/googleapis/mcp-toolbox-sdk-python/blob/main/packages/toolbox-langchain/CHANGELOG.md
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: Apache Software License
Classifier: Programming Language :: Python
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.9
Classifier: Programming Language :: Python :: 3.10
Classifier: Programming Language :: Python :: 3.11
Classifier: Programming Language :: Python :: 3.12
Classifier: Programming Language :: Python :: 3.13
Requires-Python: >=3.9
Description-Content-Type: text/markdown
Requires-Dist: toolbox-core==0.5.1
Requires-Dist: langchain-core<1.0.0,>=0.2.23
Requires-Dist: PyYAML<7.0.0,>=6.0.1
Requires-Dist: pydantic<3.0.0,>=2.7.0
Requires-Dist: aiohttp<4.0.0,>=3.8.6
Requires-Dist: deprecated<2.0.0,>=1.1.0
Provides-Extra: test
Requires-Dist: black[jupyter]==25.1.0; extra == "test"
Requires-Dist: isort==6.0.1; extra == "test"
Requires-Dist: mypy==1.18.1; extra == "test"
Requires-Dist: pytest-asyncio==1.2.0; extra == "test"
Requires-Dist: pytest==8.4.2; extra == "test"
Requires-Dist: pytest-cov==7.0.0; extra == "test"
Requires-Dist: Pillow==11.3.0; extra == "test"
Requires-Dist: google-cloud-secret-manager==2.24.0; extra == "test"
Requires-Dist: google-cloud-storage==3.4.0; extra == "test"

![MCP Toolbox Logo](https://raw.githubusercontent.com/googleapis/genai-toolbox/main/logo.png)
# MCP Toolbox LangChain SDK

This SDK allows you to seamlessly integrate the functionalities of
[Toolbox](https://github.com/googleapis/genai-toolbox) into your LangChain LLM
applications, enabling advanced orchestration and interaction with GenAI models.

<!-- TOC ignore:true -->
## Table of Contents
<!-- TOC -->

- [Installation](#installation)
- [Quickstart](#quickstart)
- [Usage](#usage)
- [Loading Tools](#loading-tools)
    - [Load a toolset](#load-a-toolset)
    - [Load a single tool](#load-a-single-tool)
- [Use with LangChain](#use-with-langchain)
- [Use with LangGraph](#use-with-langgraph)
    - [Represent Tools as Nodes](#represent-tools-as-nodes)
    - [Connect Tools with LLM](#connect-tools-with-llm)
- [Manual usage](#manual-usage)
- [Client to Server Authentication](#client-to-server-authentication)
    - [When is Client-to-Server Authentication Needed?](#when-is-client-to-server-authentication-needed)
    - [How it works](#how-it-works)
    - [Configuration](#configuration)
    - [Authenticating with Google Cloud Servers](#authenticating-with-google-cloud-servers)
    - [Step by Step Guide for Cloud Run](#step-by-step-guide-for-cloud-run)
- [Authenticating Tools](#authenticating-tools)
    - [Supported Authentication Mechanisms](#supported-authentication-mechanisms)
    - [Configure Tools](#configure-tools)
    - [Configure SDK](#configure-sdk)
        - [Add Authentication to a Tool](#add-authentication-to-a-tool)
        - [Add Authentication While Loading](#add-authentication-while-loading)
    - [Complete Example](#complete-example)
- [Binding Parameter Values](#binding-parameter-values)
    - [Binding Parameters to a Tool](#binding-parameters-to-a-tool)
    - [Binding Parameters While Loading](#binding-parameters-while-loading)
    - [Binding Dynamic Values](#binding-dynamic-values)
- [Asynchronous Usage](#asynchronous-usage)

<!-- /TOC -->

## Installation

```bash
pip install toolbox-langchain
```

## Quickstart

Here's a minimal example to get you started using
[LangGraph](https://langchain-ai.github.io/langgraph/reference/prebuilt/#langgraph.prebuilt.chat_agent_executor.create_react_agent):

```py
from toolbox_langchain import ToolboxClient
from langchain_google_vertexai import ChatVertexAI
from langgraph.prebuilt import create_react_agent

async with ToolboxClient("http://127.0.0.1:5000") as toolbox:
    tools = toolbox.load_toolset()

    model = ChatVertexAI(model="gemini-2.0-flash-001")
    agent = create_react_agent(model, tools)

    prompt = "How's the weather today?"

    for s in agent.stream({"messages": [("user", prompt)]}, stream_mode="values"):
        message = s["messages"][-1]
        if isinstance(message, tuple):
            print(message)
        else:
            message.pretty_print()
```

> [!TIP]
> For a complete, end-to-end example including setting up the service and using
> an SDK, see the full tutorial: [**Toolbox Quickstart
> Tutorial**](https://googleapis.github.io/genai-toolbox/getting-started/local_quickstart)

## Usage

Import and initialize the toolbox client.

```py
from toolbox_langchain import ToolboxClient

# Replace with your Toolbox service's URL
async with ToolboxClient("http://127.0.0.1:5000") as toolbox:
```

## Loading Tools

### Load a toolset

A toolset is a collection of related tools. You can load all tools in a toolset
or a specific one:

```py
# Load all tools
tools = toolbox.load_toolset()

# Load a specific toolset
tools = toolbox.load_toolset("my-toolset")
```

### Load a single tool

```py
tool = toolbox.load_tool("my-tool")
```

Loading individual tools gives you finer-grained control over which tools are
available to your LLM agent.

## Use with LangChain

LangChain's agents can dynamically choose and execute tools based on the user
input. Include tools loaded from the Toolbox SDK in the agent's toolkit:

```py
from langchain_google_vertexai import ChatVertexAI

model = ChatVertexAI(model="gemini-2.0-flash-001")

# Initialize agent with tools
agent = model.bind_tools(tools)

# Run the agent
result = agent.invoke("Do something with the tools")
```

## Use with LangGraph

Integrate the Toolbox SDK with LangGraph to use Toolbox service tools within a
graph-based workflow. Follow the [official
guide](https://langchain-ai.github.io/langgraph/) with minimal changes.

### Represent Tools as Nodes

Represent each tool as a LangGraph node, encapsulating the tool's execution within the node's functionality:

```py
from toolbox_langchain import ToolboxClient
from langgraph.graph import StateGraph, MessagesState
from langgraph.prebuilt import ToolNode

# Define the function that calls the model
def call_model(state: MessagesState):
    messages = state['messages']
    response = model.invoke(messages)
    return {"messages": [response]}  # Return a list to add to existing messages

model = ChatVertexAI(model="gemini-2.0-flash-001")
builder = StateGraph(MessagesState)
tool_node = ToolNode(tools)

builder.add_node("agent", call_model)
builder.add_node("tools", tool_node)
```

### Connect Tools with LLM

Connect tool nodes with LLM nodes. The LLM decides which tool to use based on
input or context. Tool output can be fed back into the LLM:

```py
from typing import Literal
from langgraph.graph import END, START
from langchain_core.messages import HumanMessage

# Define the function that determines whether to continue or not
def should_continue(state: MessagesState) -> Literal["tools", END]:
    messages = state['messages']
    last_message = messages[-1]
    if last_message.tool_calls:
        return "tools"  # Route to "tools" node if LLM makes a tool call
    return END  # Otherwise, stop

builder.add_edge(START, "agent")
builder.add_conditional_edges("agent", should_continue)
builder.add_edge("tools", 'agent')

graph = builder.compile()

graph.invoke({"messages": [HumanMessage(content="Do something with the tools")]})
```

## Manual usage

Execute a tool manually using the `invoke` method:

```py
result = tools[0].invoke({"name": "Alice", "age": 30})
```

This is useful for testing tools or when you need precise control over tool
execution outside of an agent framework.

## Client to Server Authentication

This section describes how to authenticate the ToolboxClient itself when
connecting to a Toolbox server instance that requires authentication. This is
crucial for securing your Toolbox server endpoint, especially when deployed on
platforms like Cloud Run, GKE,  or any environment where unauthenticated access
is restricted.

This client-to-server authentication ensures that the Toolbox server can verify
the identity of the client making the request before any tool is loaded or
called. It is different from [Authenticating Tools](#authenticating-tools),
which deals with providing credentials for specific tools within an already
connected Toolbox session.

### When is Client-to-Server Authentication Needed?

You'll need this type of authentication if your Toolbox server is configured to
deny unauthenticated requests. For example:

- Your Toolbox server is deployed on Cloud Run and configured to "Require authentication."
- Your server is behind an Identity-Aware Proxy (IAP) or a similar
  authentication layer.
- You have custom authentication middleware on your self-hosted Toolbox server.

Without proper client authentication in these scenarios, attempts to connect or
make calls (like `load_tool`) will likely fail with `Unauthorized` errors.

### How it works

The `ToolboxClient` allows you to specify functions (or coroutines for the async
client) that dynamically generate HTTP headers for every request sent to the
Toolbox server. The most common use case is to add an Authorization header with
a bearer token (e.g., a Google ID token).

These header-generating functions are called just before each request, ensuring
that fresh credentials or header values can be used.

### Configuration

You can configure these dynamic headers as follows:

```python
from toolbox_langchain import ToolboxClient

async with ToolboxClient(
    "toolbox-url", 
    client_headers={"header1": header1_getter, "header2": header2_getter, ...}
) as client:
```

### Authenticating with Google Cloud Servers

For Toolbox servers hosted on Google Cloud (e.g., Cloud Run) and requiring
`Google ID token` authentication, the helper module
[auth_methods](src/toolbox_core/auth_methods.py) provides utility functions.

### Step by Step Guide for Cloud Run

1. **Configure Permissions**:
   [Grant](https://cloud.google.com/run/docs/securing/managing-access#service-add-principals)
   the `roles/run.invoker` IAM role on the Cloud
   Run service to the principal. This could be your `user account email` or a
   `service account`.
2. **Configure Credentials**
    - Local Development: Set up
   [ADC](https://cloud.google.com/docs/authentication/set-up-adc-local-dev-environment).
    - Google Cloud Environments: When running within Google Cloud (e.g., Compute
      Engine, GKE, another Cloud Run service, Cloud Functions), ADC is typically
      configured automatically, using the environment's default service account.
3. **Connect to the Toolbox Server**

    ```python
    from toolbox_langchain import ToolboxClient
    from toolbox_core import auth_methods

    auth_token_provider = auth_methods.aget_google_id_token(URL) # can also use sync method
    async with ToolboxClient(
        URL,
        client_headers={"Authorization": auth_token_provider},
    ) as client:
        tools = client.load_toolset()

        # Now, you can use the client as usual.
    ```


## Authenticating Tools

> [!WARNING]
> Always use HTTPS to connect your application with the Toolbox service,
> especially when using tools with authentication configured. Using HTTP exposes
> your application to serious security risks.

Some tools require user authentication to access sensitive data.

### Supported Authentication Mechanisms
Toolbox currently supports authentication using the [OIDC
protocol](https://openid.net/specs/openid-connect-core-1_0.html) with [ID
tokens](https://openid.net/specs/openid-connect-core-1_0.html#IDToken) (not
access tokens) for [Google OAuth
2.0](https://cloud.google.com/apigee/docs/api-platform/security/oauth/oauth-home).

### Configure Tools

Refer to [these
instructions](https://googleapis.github.io/genai-toolbox/resources/tools/#authenticated-parameters) on
configuring tools for authenticated parameters.

### Configure SDK

You need a method to retrieve an ID token from your authentication service:

```py
async def get_auth_token():
    # ... Logic to retrieve ID token (e.g., from local storage, OAuth flow)
    # This example just returns a placeholder. Replace with your actual token retrieval.
    return "YOUR_ID_TOKEN" # Placeholder
```

#### Add Authentication to a Tool

```py
async with ToolboxClient("http://127.0.0.1:5000") as toolbox:
    tools = toolbox.load_toolset()

    auth_tool = tools[0].add_auth_token_getter("my_auth", get_auth_token) # Single token

    multi_auth_tool = tools[0].add_auth_token_getters({"auth_1": get_auth_1}, {"auth_2": get_auth_2}) # Multiple tokens

    # OR

    auth_tools = [tool.add_auth_token_getter("my_auth", get_auth_token) for tool in tools]
```

#### Add Authentication While Loading

```py
auth_tool = toolbox.load_tool(auth_token_getters={"my_auth": get_auth_token})

auth_tools = toolbox.load_toolset(auth_token_getters={"my_auth": get_auth_token})
```

> [!NOTE]
> Adding auth tokens during loading only affect the tools loaded within
> that call.

### Complete Example

```py
import asyncio
from toolbox_langchain import ToolboxClient

async def get_auth_token():
    # ... Logic to retrieve ID token (e.g., from local storage, OAuth flow)
    # This example just returns a placeholder. Replace with your actual token retrieval.
    return "YOUR_ID_TOKEN" # Placeholder

async with ToolboxClient("http://127.0.0.1:5000") as toolbox:
    tool = toolbox.load_tool("my-tool")

    auth_tool = tool.add_auth_token_getter("my_auth", get_auth_token)
    result = auth_tool.invoke({"input": "some input"})
    print(result)
```

## Binding Parameter Values

Predetermine values for tool parameters using the SDK. These values won't be
modified by the LLM. This is useful for:

* **Protecting sensitive information:**  API keys, secrets, etc.
* **Enforcing consistency:** Ensuring specific values for certain parameters.
* **Pre-filling known data:**  Providing defaults or context.

### Binding Parameters to a Tool

```py
async with ToolboxClient("http://127.0.0.1:5000") as toolbox:
    tools = toolbox.load_toolset()

    bound_tool = tool[0].bind_param("param", "value") # Single param

    multi_bound_tool = tools[0].bind_params({"param1": "value1", "param2": "value2"}) # Multiple params

    # OR

    bound_tools = [tool.bind_param("param", "value") for tool in tools]
```

### Binding Parameters While Loading

```py
bound_tool = toolbox.load_tool("my-tool", bound_params={"param": "value"})

bound_tools = toolbox.load_toolset(bound_params={"param": "value"})
```

> [!NOTE]
> Bound values during loading only affect the tools loaded in that call.

### Binding Dynamic Values

Use a function to bind dynamic values:

```py
def get_dynamic_value():
  # Logic to determine the value
  return "dynamic_value"

dynamic_bound_tool = tool.bind_param("param", get_dynamic_value)
```

> [!IMPORTANT]
> You don't need to modify tool configurations to bind parameter values.

## Asynchronous Usage

For better performance through [cooperative
multitasking](https://en.wikipedia.org/wiki/Cooperative_multitasking), you can
use the asynchronous interfaces of the `ToolboxClient`.

> [!Note]
> Asynchronous interfaces like `aload_tool` and `aload_toolset` require an
> asynchronous environment. For guidance on running asynchronous Python
> programs, see [asyncio
> documentation](https://docs.python.org/3/library/asyncio-runner.html#running-an-asyncio-program).

```py
import asyncio
from toolbox_langchain import ToolboxClient

async def main():
    async with ToolboxClient("http://127.0.0.1:5000") as toolbox:
        tool = await client.aload_tool("my-tool")
        tools = await client.aload_toolset()
        response = await tool.ainvoke()

if __name__ == "__main__":
    asyncio.run(main())
```
