Nagato-AI is an intuitive AI Agent library that works across multiple LLMs.
Currently it supports OpenAI's GPT and Anthpropic's Claude LLMs. You can create agents from any of the aforementioned family of models and combine them together to build the most effective AI Agent system you desire.
The name Nagato is inspired from the popular anime Naruto. In Naruto, Nagato is a very powerful ninja who possesses special eyes (Rinnegan) that gives him immense powers. Nagato's powers enable him to control multiple bodies endowed with different abilities. Nagato is also able to see through the eyes of all the bodies which he controls, thereby minimising blindspots that opponents may want to exploit.
Therefore, you can think of Nagato as the linchpin that summons and coordinates AI Agents which have a specific mission to complete.
Note that from now on I will use the terms Nagato and Nagato-AI interchangibly to refer to this library.
First, ensure that you have poetry packaging/dependency management installed on your machine. Once poetry is installed, then simply run the following command in your termninal (from the root folder of nagato code base) to install all required dependencies:
poetry install
Assuming your program's entrypoint is defined in a file called main.py
, you can run it by typing the following command:
poetry run python main.py
Nagato currently supports the following LLMs
- Claude 3 (Anthropic)
- GPT-3 to GPT-4 (OpenAI)
- Groq (which gives you access to Llama 3) ๐ฅ
Nagato is built with flexibility at its core, so you could program it using your paradigm of choice. However these are some of the ways I've seen people use Nagato so far.
By default Nagato expects all LLM API keys to be set as environment variables. Nagato may load the keys from the following variables:
OPENAI_API_KEY=<api-key>
ANTHROPIC_API_KEY=<api-key>
READWISE_API_KEY=<api-key>
In this configuration we have the following:
- ๐ฏ Coordinator: breaks down a problem statement (from stdin) into an objective and suggests tasks
- ๐ Researcher: works on a task by performing research
- โ Critic: evaluates whether the task was completed
Example setup for this configuration could look like this:
coordinator_agent: Agent = create_agent(
anthropic_api_key,
"claude-3-opus-20240229",
"Coordinator",
COORDINATOR_SYSTEM_PROMPT,
"Coordinator Agent",
)
researcher_agent = create_agent(
anthropic_api_key,
"gpt-4-turbo-2024-04-09",
"Researcher",
RESEARCHER_SYSTEM_PROMPT,
"Researcher Agent",
)
critic_agent = create_agent(
anthropic_api_key,
"claude-3-haiku-20240307",
"Critic",
CRITIC_SYSTEM_PROMPT,
"Critic Agent",
)
...
The full blow example is available here
In this configuration we directly submit as input an objective and a set of tasks needed to complete the objective. Therefore we can skip the coordinator agent and have the worker agent(s) work on the tasks, while the critic agent evaluates whether the task carried out meets the requirements originally specified.
task_list: List[Task] = [
Task(
goal="Fetch last 100 user tweets",
description="Fetch the tweets from the user using the Twitter API. Limit the number of tweets fetched to 100 only."),
Task(
goal="Perform sentiment analysis on the tweets",
description="Feed the tweets to the AI Agent to analyze sentiment per overall sentiment acoss tweets. Range of values for sentiment can be: Positive, Negative, or Neutral"
)]
coordinator_agent: Agent = create_agent(
anthropic_api_key,
"claude-3-sonnet-20240229",
"Coordinator",
COORDINATOR_SYSTEM_PROMPT,
"Coordinator Agent",
)
critic_agent = create_agent(
anthropic_api_key,
"claude-3-haiku-20240307",
"Critic",
CRITIC_SYSTEM_PROMPT,
"Critic Agent",
)
for task in task_list:
# Insert the task into the prompt
worker_prompt = ...
worker_exchange = researcher_agent.chat(worker_prompt, task, 0.7, 2000)
# insert the response from the agent into prompt for the critic
critic_prompt = ...
critic_exchange = critic_agent(critic_prompt, task, 0.7, 2000)
# Evaluate whether the task was completed based on the answer from the critic agent
...
Check the full example here to see how tool calling works. We now support tool calling for GPT, Claude 3, and Llama 3 (via Groq) models.
Creating a tool is straightforward. You must create have these two elements in place for a tool to be usable:
- A config class that contains the parameters that your tool will be called with
- A tool class that inherits from
AbstractTool
, and contains the main logic for your tool.
For instance the below shows how we've created a tool to get the user to confirm yes/no in the terminal
from typing import Any, Type
from pydantic import BaseModel, Field
from rich.prompt import Confirm
from nagatoai_core.tool.abstract_tool import AbstractTool
class HumanConfirmInputConfig(BaseModel):
"""
HumanConfirmInputConfig represents the configuration for the HumanConfirmInputTool.
"""
message: str = Field(
...,
description="The message to display to the user to confirm whether to proceed or not",
)
class HumanConfirmInputTool(AbstractTool):
"""
HumanConfirmInputTool represents a tool that prompts the user to confirm whether to proceed or not.
"""
name: str = "human_confirm_input"
description: str = (
"""Prompts the user to confirm whether to proceed or not. Returns a boolean value indicating the user's choice."""
)
args_schema: Type[BaseModel] = HumanConfirmInputConfig
def _run(self, config: HumanConfirmInputConfig) -> Any:
"""
Prompts the user to confirm whether to proceed or not.
:param message: The message to display to the user to confirm whether to proceed or not.
:return: A boolean value indicating the user's choice.
"""
confirm = Confirm.ask("[bold yellow]" + config.message + "[/bold yellow]")
return confirm
Nagato is still in its very early development phase. This means that I am likely to introduce breaking changes over the next iterations of the library.
Moreover, there is a lot of functionality currently missing from Nagato. I will remedy this over time. There is no official roadmap per se but I plan to add the following capabilities to Nagato:
- โ implement function calling (complement to adding tools)
- โ introduce basic tools (e.g. surfing the web)
- โ Support for Llama 3 (via Groq)
- ๐ฏ cache results from function calling
- ๐ฏ implement short/long-term memory for agents (with RAG and memory synthesis)
- ๐ฏ implement self-reflection and re-planning for agents
- ๐ฏ implement additional modalities (e.g. image, sound, etc.)
- ๐ฏ Support for local LLMs (e.g. via Ollama)
- ๐ฏ LLMOps instrumentation
I'd be grateful if you could do some of the following to support this project:
- star this repository on Github
- follow me on X/Twitter
- raise Github issues if you've come across any bug using Nagato or would like a feature to be added to Nagato