Core classes for Genie Flow
Project description
Genieversum
Our Mission
Genie Flow (or simply Genie) is a modular AI platform designed to help you build intelligent, reusable agents that can automate tasks, process data, and interact with users or systems. Whether you're a seasoned developer or just starting out, Genie Flow offers a flexible and approachable way to create smart workflows.
Our vision is that a good agentic framework should be:
- Code First – We do not have a "low code" environment. We believe in the power of expression of well-written code.
- Deployable – A Genie agent is ready to deploy as an API. There is no magic engine or deployment formula. Your agent is built into a Docker container and comes with a well-documented API out of the box.
- Scalable – Work is queued to be picked up by workers. This makes your agent immediately scalable. From your laptop to large server clusters. One code base. Scalable out of the box.
- Community Driven – AI should be available for everyone, and everyone should be able to contribute.
We do consulting. We are not a software house. We are not a product company. We are not a service or hosting provider. We make our living by helping large organisations to make the best use of AI. We are the company where Next is Made Real.
What is Genie
Simply put: Genie is an agentic AI orchestrator. It manages the dialogue between an actor (human or machine) and a cascade of calls to external systems. Many of these external systems may be Large Language Models, but the dialogue flow typically combines that with other sources of information and operational systems that can be reached via an API.
Example Genie Agent
Imagine the following use case:
As a user, I want to have a dialogue with a Large Language Model.
Three steps:
- Create your data model
- Define how you want the dialogue to flow
- Specify the templates to use in each of the steps
Defining your data model
First, you define your GenieModel - a Pydantic data model of information that you want to
carry during the dialogue session.
class MyFirstModel(GenieModel):
# there are no specific data elements I need to carry
# link this model to the state machine
@classmethod
def get_state_machine_class(cls) -> type[GenieStateMachine]:
return GenieStateMachine
Define the flow of your dialogue
Next, you define how your dialogue needs to flow by creating your dialogue's state machine:
class MyFirstMachine(GenieStateMachine):
# STATES
into = State(initial=True, value=100)
ai_creates_response = State(value=200)
user_enters_query = State(value=300)
# EVENTS & TRANSITIONS
user_input = (
intro.to(ai_creates_response)
| user_enters_query.to(ai_creates_response)
)
ai_extraction = (
ai_creates_response.to(user_enters_query)
)
# TEMPLATES
templates = dict(
intro="response/intro.jinja2",
ai_creates_response="llm/ai_creates_response.jinja2",
user_enters_query="response/user_enters_query.jinja2",
)
This creates a dialogue that looks like:
stateDiagram-v2
direction LR
[*] --> intro
intro --> ai_creates_response: user_input
ai_creates_response --> user_enters_query: processing_done
user_enters_query --> ai_creates_response: user_input
intro: Intro
ai_creates_response: AI Creates Response
user_enters_query: User Enters Query
The most basic dialogue flow:
- The Agent introduces themselves and asks a question
- The user sends their input
- An LLM formulates a response
- The engine signals that processing is done
- The user views the response and sends new input
- Back to point 3
Creating the templates
We just need to define the templates. First template, the intro.jinja2 template:
Welcome to this simple Question and Answer dialogue Genie Flow example!
How can I help? Please go ahead and ask me anything.
We also need to define the prompt that will get sent to the LLM. This happens in the file
ai_creates_response.jinja2:
- role: system
content: |
You are a friendly chatbot, aiming to have a dialogue with a human user.
Your aim is to respond logically, taking the dialogue you had into account.
Be succinct, to the point, but friendly.
Stick to the language that the user start their conversation in.
{{ chat_history }}
- role: user
content: |
{{ actor_input|indent(width=4, first=True) }}
This template defines the system prompt, followed by the {chat_history}, followed by the
input from the previous actor. That will be the human user in our case.
And then, the final template, user_enters_query.jinja2:
{{ actor_input }}
Here, the user is presented with the response from the previous actor (the LLM in this case).
Switch on
That's it! This defines a fully fledged AI agent.
Deploying this would mean: create a main.py that tells Genie where your and data model class
live, run the worker, run the API and spin up a front-end that talks to your API. We have
provided a simple command-line interface that we use in anger during development, and a simple
React chat interface that you can get started with.
Where from here?
- Documentation for in-depth documentation of the framework.
- Getting Started for a step-by-step guide to run the above example.
- Under the Hood for a detailed description of the underlying architecture.
- Contribute
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