
ControlFlow is a Python framework for building agentic AI workflows.
ControlFlow provides a structured, developer-focused framework for defining workflows and delegating work to LLMs, without sacrificing control or transparency:
The simplest ControlFlow workflow has one task, a default agent, and automatic thread management:
import controlflow as cf
result = cf.run("Write a short poem about artificial intelligence")
print(result)Result:
In circuits and code, a mind does bloom,
With algorithms weaving through the gloom.
A spark of thought in silicon's embrace,
Artificial intelligence finds its place.
ControlFlow addresses the challenges of building AI-powered applications that are both powerful and predictable:
Install ControlFlow with pip:
pip install controlflowNext, configure your LLM provider. ControlFlow's default provider is OpenAI, which requires the OPENAI_API_KEY environment variable:
export OPENAI_API_KEY=your-api-key
To use a different LLM provider, see the LLM configuration docs.
Here's a more involved example that showcases user interaction, a multi-step workflow, and structured outputs:
import controlflow as cf
from pydantic import BaseModel
class ResearchProposal(BaseModel):
title: str
abstract: str
key_points: list[str]
@cf.flow
def research_proposal_flow():
# Task 1: Get the research topic from the user
user_input = cf.Task(
"Work with the user to choose a research topic",
interactive=True,
)
# Task 2: Generate a structured research proposal
proposal = cf.run(
"Generate a structured research proposal",
result_type=ResearchProposal,
depends_on=[user_input]
)
return proposal
result = research_proposal_flow()
print(result.model_dump_json(indent=2))Conversation:
Agent: Hello! I'm here to help you choose a research topic. Do you have any particular area of interest or field you would like to explore? If you have any specific ideas or requirements, please share them as well. User: Yes, I'm interested in LLM agentic workflowsProposal:
{ "title": "AI Agentic Workflows: Enhancing Efficiency and Automation", "abstract": "This research proposal aims to explore the development and implementation of AI agentic workflows to enhance efficiency and automation in various domains. AI agents, equipped with advanced capabilities, can perform complex tasks, make decisions, and interact with other agents or humans to achieve specific goals. This research will investigate the underlying technologies, methodologies, and applications of AI agentic workflows, evaluate their effectiveness, and propose improvements to optimize their performance.", "key_points": [ "Introduction: Definition and significance of AI agentic workflows, Historical context and evolution of AI in workflows", "Technological Foundations: AI technologies enabling agentic workflows (e.g., machine learning, natural language processing), Software and hardware requirements for implementing AI workflows", "Methodologies: Design principles for creating effective AI agents, Workflow orchestration and management techniques, Interaction protocols between AI agents and human operators", "Applications: Case studies of AI agentic workflows in various industries (e.g., healthcare, finance, manufacturing), Benefits and challenges observed in real-world implementations", "Evaluation and Metrics: Criteria for assessing the performance of AI agentic workflows, Metrics for measuring efficiency, accuracy, and user satisfaction", "Proposed Improvements: Innovations to enhance the capabilities of AI agents, Strategies for addressing limitations and overcoming challenges", "Conclusion: Summary of key findings, Future research directions and potential impact on industry and society" ] }
In this example, ControlFlow is automatically managing a flow, or a shared context for a series of tasks. You can switch between standard Python functions and agentic tasks at any time, making it easy to incrementally build out complex workflows.
To dive deeper into ControlFlow: