Skip to main content

Support for Unity Catalog functions as LlamaIndex tools

Project description

🦙 Using Unity Catalog AI with LlamaIndex

You can use functions defined within Unity Catalog (UC) directly as tools within LlamaIndex with this package.

Installation

Client Library

To install the Unity Catalog function client SDK and the LlamaIndex integration, simply install from PyPI:

pip install unitycatalog-llamaindex

If you are working with Databricks Unity Catalog, you can install the optional package:

pip install unitycatalog-llamaindex[databricks]

Getting started

Creating a Unity Catalog Client

To interact with your Unity Catalog server, initialize the UnitycatalogFunctionClient as shown below:

import asyncio
from unitycatalog.ai.core.client import UnitycatalogFunctionClient
from unitycatalog.client import ApiClient, Configuration

# Configure the Unity Catalog API client
config = Configuration(
    host="http://localhost:8080/api/2.1/unity-catalog"  # Replace with your UC server URL
)

# Initialize the asynchronous ApiClient
api_client = ApiClient(configuration=config)

# Instantiate the UnitycatalogFunctionClient
uc_client = UnitycatalogFunctionClient(api_client=api_client)

# Example catalog and schema names
CATALOG = "my_catalog"
SCHEMA = "my_schema"

Creating a Unity Catalog Function

You can create a UC function either by providing a Python callable or by submitting a FunctionInfo object. Below is an example (recommended) of using the create_python_function API that accepts a Python callable (function) as input.

To create a UC function from a Python function, define your function with appropriate type hints and a Google-style docstring:

def add_numbers(a: float, b: float) -> float:
    """
    Adds two numbers and returns the result.

    Args:
        a (float): First number.
        b (float): Second number.

    Returns:
        float: The sum of the two numbers.
    """
    return a + b

# Create the function within the Unity Catalog catalog and schema specified
function_info = uc_client.create_python_function(
    func=add_numbers,
    catalog=CATALOG,
    schema=SCHEMA,
    replace=False,  # Set to True to overwrite if the function already exists
)

print(function_info)

Databricks-managed Unity Catalog

To use Databricks-managed UC with this package, follow the instructions here to authenticate to your workspace and ensure that your access token has workspace-level privilege for managing UC functions.

Client setup

Initialize a client for managing UC functions in a Databricks workspace, and set it as the global client.

from unitycatalog.ai.core.base import set_uc_function_client
from unitycatalog.ai.core.databricks import DatabricksFunctionClient

client = DatabricksFunctionClient(
    warehouse_id="..." # replace with the warehouse_id
)

# sets the default uc function client
set_uc_function_client(client)

Create a UC function

To provide an executable function for your tool to use, you need to define and create the function within UC. To do this, create a Python function that is wrapped within the SQL body format for UC and then utilize the DatabricksFunctionClient to store this in UC:

# Replace with your own catalog and schema for where your function will be stored
CATALOG = "catalog"
SCHEMA = "schema"

func_name = f"{CATALOG}.{SCHEMA}.python_exec"
# define the function body in UC SQL functions format
sql_body = f"""CREATE OR REPLACE FUNCTION {func_name}(code STRING COMMENT 'Python code to execute. Remember to print the final result to stdout.')
RETURNS STRING
LANGUAGE PYTHON
COMMENT 'Executes Python code and returns its stdout.'
AS $$
    import sys
    from io import StringIO
    stdout = StringIO()
    sys.stdout = stdout
    exec(code)
    return stdout.getvalue()
$$
"""

client.create_function(sql_function_body=sql_body)

Now that the function exists within the Catalog and Schema that we defined, we can interface with it from llamaindex using the unitycatalog.ai.llama_index package.

Using the Function as a GenAI Tool

Create a UCFunctionToolkit instance

LlamaIndex Tools are callable external functions that GenAI applications (called by an LLM), which are exposed with a UC interface through the use of the unitycatalog.ai.llama_index package via the UCFunctionToolkit API.

from unitycatalog.ai.llama_index.toolkit import UCFunctionToolkit

# Pass the UC function name that we created to the constructor
toolkit = UCFunctionToolkit(function_names=[func_name])

# Get the LlamaIndex-compatible tools definitions
tools = toolkit.tools

If you would like to validate that your tool is functional prior to proceeding to integrate it with LlamaIndex, you can call the tool directly:

my_tool = tools[0]

my_tool.fn(**{"code": "print(1)"})

Utilize our function as a tool within a ReActAgent in LlamaIndex

With our interface to our UC function defined as a LlamaIndex tool collection, we can directly use it within a LlamaIndex agent application. Below, we are going to create a simple ReActAgent and verify that our agent properly calls our UC function.

from llama_index.llms.openai import OpenAI
from llama_index.core.agent import ReActAgent

llm = OpenAI()

agent = ReActAgent.from_tools(tools, llm=llm, verbose=True)

agent.chat("Please call a python execution tool to evaluate the result of 42 + 97.")

Configurations for Databricks managed UC functions execution

We provide configurations for databricks client to control the function execution behaviors, check function execution arguments section.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

unitycatalog_llamaindex-0.1.0rc1.tar.gz (6.2 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

unitycatalog_llamaindex-0.1.0rc1-py3-none-any.whl (6.7 kB view details)

Uploaded Python 3

File details

Details for the file unitycatalog_llamaindex-0.1.0rc1.tar.gz.

File metadata

File hashes

Hashes for unitycatalog_llamaindex-0.1.0rc1.tar.gz
Algorithm Hash digest
SHA256 708587a379c547ce0e02d90484b1f4b6f984ea86a148c48921bfc80bb9ee223f
MD5 7550618b7a0a285004ebba0979c1f54e
BLAKE2b-256 d540860cd8cb24aae772f221298ed6c9e9ae6a73930078c5910c17ed34ec2c23

See more details on using hashes here.

File details

Details for the file unitycatalog_llamaindex-0.1.0rc1-py3-none-any.whl.

File metadata

File hashes

Hashes for unitycatalog_llamaindex-0.1.0rc1-py3-none-any.whl
Algorithm Hash digest
SHA256 34d22971c61d75e00d113b191d31e56287b5646d26c348f26900a07189ec7cfa
MD5 423f0d6a2ef912dd5bce206575b3ea74
BLAKE2b-256 678e4847851a058587d16771fe8aca0557a3693fe71145c524b06487083ded90

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page