Skip to content

ZenML 🙏: Build portable, production-ready MLOps pipelines. https://zenml.io.

License

Notifications You must be signed in to change notification settings

bhatt-priyadutt/zenml

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

PyPi PyPi PyPi Contributors License


ZenML Logo

Build portable, production-ready MLOps pipelines.

A simple yet powerful open-source framework that integrates all your ML tools.
Explore the docs »

Join our Slack Slack Community and be part of the ZenML family.

Features · Roadmap · Report Bug · Vote New Features · Read Blog · Meet the Team
ZenML Cloud is now available in beta. Sign up to see it in action.
🎉 Version 0.44.2 is out. Check out the release notes here.
Logo Logo Logo

🏁 Table of Contents
  1. Introduction
  2. Quickstart
  3. Create your own MLOps Platform
  4. Roadmap
  5. Contributing and Community
  6. Getting Help
  7. License

🤖 Introduction

🤹 ZenML is an extensible, open-source MLOps framework for creating portable, production-ready machine learning pipelines. By decoupling infrastructure from code, ZenML enables developers across your organization to collaborate more effectively as they develop to production.

  • 💼 ZenML gives data scientists the freedom to fully focus on modeling and experimentation while writing code that is production-ready from the get-go.

  • 👨‍💻 ZenML empowers ML engineers to take ownership of the entire ML lifecycle end-to-end. Adopting ZenML means fewer handover points and more visibility on what is happening in your organization.

  • 🛫 ZenML enables MLOps infrastructure experts to define, deploy, and manage sophisticated production environments that are easy to use for colleagues.

The long journey from experimentation to production.

ZenML provides a user-friendly syntax designed for ML workflows, compatible with any cloud or tool. It enables centralized pipeline management, enabling developers to write code once and effortlessly deploy it to various infrastructures.

🤸 Quickstart

Install ZenML via PyPI. Python 3.8 - 3.11 is required:

pip install "zenml[server]"

Take a tour with the guided quickstart by running:

zenml go

🖼️ Create your own MLOps Platform

ZenML allows you to create and manage your own MLOps platform using best-in-class open-source and cloud-based technologies. Here is an example of how you could set this up for your team:

🔋 1. Deploy ZenML

For full functionality ZenML should be deployed on the cloud to enable collaborative features as the central MLOps interface for teams.

ZenML Architecture Diagram.

Currently, there are two main options to deploy ZenML:

  • ZenML Cloud: With ZenML Cloud, you can utilize a control plane to create ZenML servers, also known as tenants. These tenants are managed and maintained by ZenML's dedicated team, alleviating the burden of server management from your end.

  • Self-hosted deployment: Alternatively, you have the flexibility to deploy ZenML on your own self-hosted environment. This can be achieved through various methods, including using our CLI, Docker, Helm, or HuggingFace Spaces.

👨‍🍳 2. Deploy Stack Components

ZenML boasts a ton of integrations into popular MLOps tools. The ZenML Stack concept ensures that these tools work nicely together, therefore bringing structure and standardization into the MLOps workflow.

Deploying and configuring this is super easy with ZenML. For AWS, this might look a bit like this

# Deploy and register an orchestrator and an artifact store
zenml orchestrator deploy kubernetes_orchestrator --flavor kubernetes --cloud aws
zenml artifact-store deploy s3_artifact_store --flavor s3

# Register this combination of components as a stack
zenml stack register production_stack --orchestrator kubernetes_orchestrator --artifact-store s3_artifact_store --set # Register your production environment

When you run a pipeline with this stack set, it will be running on your deployed Kubernetes cluster.

You can also deploy your own tooling manually.

🏇 3. Create a Pipeline

Here's an example of a hello world ZenML pipeline in code:

# run.py
from zenml import pipeline, step


@step
def step_1() -> str:
    """Returns the `world` substring."""
    return "world"


@step
def step_2(input_one: str, input_two: str) -> None:
    """Combines the two strings at its input and prints them."""
    combined_str = input_one + ' ' + input_two
    print(combined_str)


@pipeline
def my_pipeline():
    output_step_one = step_1()
    step_2(input_one="hello", input_two=output_step_one)


if __name__ == "__main__":
    my_pipeline()
python run.py

👭 4. Start the Dashboard

Open up the ZenML dashboard using this command.

zenml show

ZenML Dashboard

🗺 Roadmap

ZenML is being built in public. The roadmap is a regularly updated source of truth for the ZenML community to understand where the product is going in the short, medium, and long term.

ZenML is managed by a core team of developers that are responsible for making key decisions and incorporating feedback from the community. The team oversees feedback via various channels, and you can directly influence the roadmap as follows:

🙌 Contributing and Community

We would love to develop ZenML together with our community! Best way to get started is to select any issue from the good-first-issue label. If you would like to contribute, please review our Contributing Guide for all relevant details.

🆘 Getting Help

The first point of call should be our Slack group. Ask your questions about bugs or specific use cases, and someone from the core team will respond. Or, if you prefer, open an issue on our GitHub repo.

📜 License

ZenML is distributed under the terms of the Apache License Version 2.0. A complete version of the license is available in the LICENSE file in this repository. Any contribution made to this project will be licensed under the Apache License Version 2.0.

About

ZenML 🙏: Build portable, production-ready MLOps pipelines. https://zenml.io.

Resources

License

Code of conduct

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 99.1%
  • HCL 0.6%
  • Shell 0.2%
  • Dockerfile 0.1%
  • HTML 0.0%
  • Smarty 0.0%