Using Claude's "Tool Use" Feature with Exa Search Integration
This guide will show you how to properly set up and use Anthropic's and Exa's API client, and utilise Claude's function calling or "tool use" feature to perform Exa search integration.
What this guide covers
- Installing the prerequisite packages
- Setting up API keys as environment variables
- Explaining how Claude's "tool use" feature works
- Explaining how to use Exa within the tool use feature
Guide
1. Prerequisites and installation
Before you can use this guide you will need to have python3 and pip installed on your machine.
For the purpose of this guide we will need to install:
anthropic
library to perform Claude API calls and completionsexa_py
library to perform Exa searchrich
library to make the output more readable
Install the libraries.
pip install anthropic exa_py rich
To successfully use the Exa search client and Anthropic client you will need to have your ANTHROPIC_API_KEY
and EXA_API_KEY
set as environment variables.
To get an Anthropic API key, you will first need an Anthropic account, visit the Anthropic console to generate your API key.
Similarly, to get the Exa API key, you will first need an Exa account, visit the Exa dashboard to generate your API key.
Be safe with your API keys. Make sure they are not hardcoded in your code or added to a git repository to prevent leaking them to the public.
You can create an .env
file in the root of your project and add the following to it:
ANTHROPIC_API_KEY=insert your Anthropic API key here, without the quotes
EXA_API_KEY=insert your Exa API key here, without the quotes
Make sure to add your .env
file to your .gitignore
file if you have one.
Claude LLMs can call a function you have defined in your code; this is called tool use. To do this, you first need to describe the function you want to call to Claude's LLM. You can do this by defining a description object of the format:
{
"name": "my_function_name", # The name of the function
"description": "The description of my function", # Describe the function so Claude knows when and how to use it.
"input_schema": { # input schema describes the format and the type of parameters Claude needs to generate to use the function
"type": "object", # format of the generated Claude response
"properties": { # properties defines the input parameters of the function
"query": { # the function expects a query parameter
"description": "The search query to perform.", # describes the parameter to Claude
},
},
},
"required": ["query"], # define which parameters are required
},
}
When this description is sent to Claude's LLM, it returns an object with a string, which is the function name defined in your code, and the arguments that the function takes. This does not execute or call functions on Anthropic's side; it only returns the function name and arguments which you will have to parse and call yourself in your code.
{
"type": "tool_use",
"id": "toolu_01A09q90qw90lq917835123",
"name": "my_function_name",
"input": {"query": "Latest developments in quantum computing"}
}
We will use the object of this format to call the exa_search
function we define.
3. Use Exa Search as Claude tool
First, we import and initialise the Anthropic and Exa libraries and load the stored API keys.
import anthropic
from dotenv import load_dotenv
from exa_py import Exa
load_dotenv()
claude = anthropic.Anthropic(api_key=os.getenv("ANTHROPIC_API_KEY"))
exa = Exa(api_key=os.getenv("EXA_API_KEY"))
Next, we define the function and the function schema so that Claude knows how to use it and what arguments our local function takes:
TOOLS = [
{
"name": "exa_search",
"description": "Perform a search query on the web, and retrieve the most relevant URLs/web data.",
"input_schema": {
"type": "object",
"properties": {
"query": {
"type": "string",
"description": "The search query to perform.",
},
},
"required": ["query"],
},
}
]
Finally, we'll define the primer SYSTEM_MESSAGE
, which explains to Claude what it is supposed to do:
SYSTEM_MESSAGE = "You are an agent that has access to an advanced search engine. Please provide the user with the information they are looking for by using the search tool provided."
We can now start writing the code needed to perform the LLM calls and the search. We'll create the exa_search
function that will call Exa's search_and_contents
function with the query:
def exa_search(query: str) -> Dict[str, Any]:
return exa.search_and_contents(query=query, type='auto', highlights=True)
Next, we create a function to process the tool use:
def process_tool_calls(tool_calls):
search_results = []
for tool_call in tool_calls:
function_name = tool_call.name
function_args = tool_call.input
if function_name == "exa_search":
results = exa_search(**function_args)
search_results.append(results)
console.print(
f"[bold cyan]Context updated[/bold cyan] [i]with[/i] "
f"[bold green]exa_search[/bold green]: ",
function_args.get("query"),
)
return search_results
Lastly, we'll create a main
function to bring it all together, and handle the user input and interaction with Claude:
def main():
messages = []
while True:
try:
user_query = Prompt.ask(
"[bold yellow]What do you want to search for?[/bold yellow]",
)
messages.append({"role": "user", "content": user_query})
completion = claude.messages.create(
model="claude-3-sonnet-20240229",
max_tokens=1024,
system=SYSTEM_MESSAGE,
messages=messages,
tools=TOOLS,
)
message = completion.content[0]
tool_calls = [content for content in completion.content if content.type == "tool_use"]
if tool_calls:
search_results = process_tool_calls(tool_calls)
messages.append({"role": "assistant", "content": f"I've performed a search and found the following results: {search_results}"})
messages.append({"role": "user", "content": "Please summarise this information and answer my previous query based on these results."})
completion = claude.messages.create(
model="claude-3-sonnet-20240229",
max_tokens=1024,
system=SYSTEM_MESSAGE,
messages=messages,
)
response = completion.content[0].text
console.print(Markdown(response))
messages.append({"role": "assistant", "content": response})
else:
console.print(Markdown(message.text))
messages.append({"role": "assistant", "content": message.text})
except Exception as e:
console.print(f"[bold red]An error occurred:[/bold red] {str(e)}")
if __name__ == "__main__":
main()
The implementation creates a loop that continually prompts the user for search queries, uses Claude's tool use feature to determine when to perform a search, and then uses the Exa search results to provide an informed response to the user's query.
We also use the rich library to provide a more visually appealing console interface, including coloured output and markdown rendering for the responses.
Full code
# import all required packages
import os
import anthropic
from dotenv import load_dotenv
from typing import Any, Dict
from exa_py import Exa
from rich.console import Console
from rich.markdown import Markdown
from rich.prompt import Prompt
# Load environment variables from .env file
load_dotenv()
# create the anthropic client
claude = anthropic.Anthropic(api_key=os.getenv("ANTHROPIC_API_KEY"))
# create the exa client
exa = Exa(api_key=os.getenv("EXA_API_KEY"))
# create the rich console
console = Console()
# define the system message (primer) of your agent
SYSTEM_MESSAGE = "You are an agent that has access to an advanced search engine. Please provide the user with the information they are looking for by using the search tool provided."
# define the tools available to the agent - we're defining a single tool, exa_search
TOOLS = [
{
"name": "exa_search",
"description": "Perform a search query on the web, and retrieve the most relevant URLs/web data.",
"input_schema": {
"type": "object",
"properties": {
"query": {
"type": "string",
"description": "The search query to perform.",
},
},
"required": ["query"],
},
}
]
# define the function that will be called when the tool is used and perform the search
# and the retrieval of the result highlights.
# https://docs.exa.ai/reference/python-sdk-specification#search_and_contents-method
def exa_search(query: str) -> Dict[str, Any]:
return exa.search_and_contents(query=query, type='auto', highlights=True)
# define the function that will process the tool use and perform the exa search
def process_tool_calls(tool_calls):
search_results = []
for tool_call in tool_calls:
function_name = tool_call.name
function_args = tool_call.input
if function_name == "exa_search":
results = exa_search(**function_args)
search_results.append(results)
console.print(
f"[bold cyan]Context updated[/bold cyan] [i]with[/i] "
f"[bold green]exa_search[/bold green]: ",
function_args.get("query"),
)
return search_results
def main():
messages = []
while True:
try:
# create the user input prompt using rich
user_query = Prompt.ask(
"[bold yellow]What do you want to search for?[/bold yellow]",
)
messages.append({"role": "user", "content": user_query})
# call claude llm by creating a completion which calls the defined exa tool
completion = claude.messages.create(
model="claude-3-sonnet-20240229",
max_tokens=1024,
system=SYSTEM_MESSAGE,
messages=messages,
tools=TOOLS,
)
# completion will contain the object needed to invoke your tool and perform the search
message = completion.content[0]
tool_calls = [content for content in completion.content if content.type == "tool_use"]
if tool_calls:
# process the tool object created by Calude llm and store the search results
search_results = process_tool_calls(tool_calls)
# create new message conating the search results and request the Claude llm to process the results
messages.append({"role": "assistant", "content": f"I've performed a search and found the following results: {search_results}"})
messages.append({"role": "user", "content": "Please summarize this information and answer my previous query based on these results."})
# call Claude llm again to process the search results and yield the final answer
completion = claude.messages.create(
model="claude-3-sonnet-20240229",
max_tokens=1024,
system=SYSTEM_MESSAGE,
messages=messages,
)
# parse the agents final answer and print it
response = completion.content[0].text
console.print(Markdown(response))
messages.append({"role": "assistant", "content": response})
else:
# in case tool hasn't been used, print the standard agent reponse
console.print(Markdown(message.text))
messages.append({"role": "assistant", "content": message.text})
except Exception as e:
console.print(f"[bold red]An error occurred:[/bold red] {str(e)}")
if __name__ == "__main__":
main()
We have now written an advanced search tool that combines the power of Claude's language models with Exa's semantic search capabilities, providing users with informative and context-aware responses to their queries.
4. Running the code
Save the code in a file, e.g. claude_search.py
, and make sure the .env
file containing the API keys we previously created is in the same directory as the script.
Then run the script using the following command from your terminal:
python claude_search.py
You should see a prompt:
What do you want to search for?
Let's test it out.
What do you want to search for?: Who is Steve Rogers?
Context updated with exa_search: Steve Rogers
Based on the search results, Steve Rogers is a fictional superhero character appearing in American comic books published by Marvel Comics. He is better known as Captain America.
The key points about Steve Rogers are:
• He was born in the 1920s to a poor family in New York City. As a frail young man, he was rejected from military service during World War II.
• He was recruited into a secret government program called Project Rebirth where he was transformed into a super-soldier through an experimental serum, gaining enhanced strength, agility and other abilities.
• After the serum treatment, he became Captain America and fought against the Nazis alongside other heroes like Bucky Barnes and the Invaders during WWII.
• He was frozen in ice towards the end of the war and remained that way for decades until being revived in modern times.
• As Captain America, he continued his heroic adventures, becoming a core member and leader of the superhero team the Avengers.
• Steve Rogers embodies the ideals of patriotism, freedom and serving one's country as a symbol of liberty and justice.
So in summary, Steve Rogers is the original and most well-known character to take on the superhero mantle of Captain America within the Marvel universe.
That's it, enjoy your search agent!