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Connecting data science teams seamlessly to cloud infrastructure.


⭐️ Show Your Support

If you find ZenML helpful or interesting, please consider giving us a star on GitHub. Your support helps promote the project and lets others know that it's worth checking out.

Thank you for your support! 🌟

Star this project

🀸 Quickstart

Open In Colab

Install ZenML via PyPI. Python 3.9 - 3.12 is required:

pip install "zenml[server]" notebook

Take a tour with the guided quickstart by running:

zenml go

πŸͺ„ Simple, integrated, End-to-end MLOps

Create machine learning pipelines with minimal code changes

ZenML is a MLOps framework intended for data scientists or ML engineers looking to standardize machine learning practices. Just add @step and @pipeline to your existing Python functions to get going. Here is a toy example:

from zenml import pipeline, step

@step  # Just add this decorator
def load_data() -> dict:
    training_data = [[1, 2], [3, 4], [5, 6]]
    labels = [0, 1, 0]
    return {'features': training_data, 'labels': labels}

@step
def train_model(data: dict) -> None:
    total_features = sum(map(sum, data['features']))
    total_labels = sum(data['labels'])
    
    print(f"Trained model using {len(data['features'])} data points. "
          f"Feature sum is {total_features}, label sum is {total_labels}")

@pipeline  # This function combines steps together 
def simple_ml_pipeline():
    dataset = load_data()
    train_model(dataset)

if __name__ == "__main__":
    run = simple_ml_pipeline()  # call this to run the pipeline
   

Running a ZenML pipeline

Easily provision an MLOps stack or reuse your existing infrastructure

The framework is a gentle entry point for practitioners to build complex ML pipelines with little knowledge required of the underlying infrastructure complexity. ZenML pipelines can be run on AWS, GCP, Azure, Airflow, Kubeflow and even on Kubernetes without having to change any code or know underlying internals.

ZenML provides different features to aid people to get started quickly on a remote setting as well. If you want to deploy a remote stack from scratch on your selected cloud provider, you can use the 1-click deployment feature either through the dashboard:

Running a ZenML pipeline

Or, through our CLI command:

zenml stack deploy --provider aws

Alternatively, if the necessary pieces of infrastructure is already deployed, you can register a cloud stack seamlessly through the stack wizard:

zenml stack register <STACK_NAME> --provider aws

Read more about ZenML stacks.

Run workloads easily on your production infrastructure

Once you have your MLOps stack configured, you can easily run workloads on it:

zenml stack set <STACK_NAME>
python run.py
from zenml.config import ResourceSettings, DockerSettings

@step(
  settings={
    "resources": ResourceSettings(memory="16GB", gpu_count="1", cpu_count="8"),
    "docker": DockerSettings(parent_image="pytorch/pytorch:1.12.1-cuda11.3-cudnn8-runtime")
  }
)
def training(...):
	...

Workloads with ZenML

Track models, pipeline, and artifacts

Create a complete lineage of who, where, and what data and models are produced.

You’ll be able to find out who produced which model, at what time, with which data, and on which version of the code. This guarantees full reproducibility and auditability.

from zenml import Model

@step(model=Model(name="classification"))
def trainer(training_df: pd.DataFrame) -> Annotated["model", torch.nn.Module]:
	...

Exploring ZenML Models

Purpose built for machine learning with integration to you favorite tools

While ZenML brings a lot of value of the box, it also integrates into your existing tooling and infrastructure without you having to be locked in.

from bentoml._internal.bento import bento

@step(on_failure=alert_slack, experiment_tracker="mlflow")
def train_and_deploy(training_df: pd.DataFrame) -> bento.Bento
	mlflow.autolog()
	...
	return bento

Exploring ZenML Integrations

πŸ–ΌοΈ Learning

The best way to learn about ZenML is the docs. We recommend beginning with the Starter Guide to get up and running quickly.

If you are a visual learner, this 11-minute video tutorial is also a great start:

Introductory Youtube Video

And finally, here are some other examples and use cases for inspiration:

  1. E2E Batch Inference: Feature engineering, training, and inference pipelines for tabular machine learning.
  2. Basic NLP with BERT: Feature engineering, training, and inference focused on NLP.
  3. LLM RAG Pipeline with Langchain and OpenAI: Using Langchain to create a simple RAG pipeline.
  4. Huggingface Model to Sagemaker Endpoint: Automated MLOps on Amazon Sagemaker and HuggingFace
  5. LLMops: Complete guide to do LLM with ZenML

πŸ“š Learn from Books

LLM Engineer's Handbook Cover Β Β Β Β  Machine Learning Engineering with Python Cover

ZenML is featured in these comprehensive guides to modern MLOps and LLM engineering. Learn how to build production-ready machine learning systems with real-world examples and best practices.

πŸ”‹ Deploy ZenML

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

Read more about various deployment options here.

Or, sign up for ZenML Pro to get a fully managed server on a free trial.

Use ZenML with VS Code

ZenML has a VS Code extension that allows you to inspect your stacks and pipeline runs directly from your editor. The extension also allows you to switch your stacks without needing to type any CLI commands.

πŸ–₯️ VS Code Extension in Action!
ZenML Extension

πŸ—Ί 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:

πŸ™Œ Contributing and Community

We would love to develop ZenML together with our community! The best way to get started is to select any issue from the [good-first-issue label](https://github.com/issues?q=is%3Aopen+is%3Aissue+archived%3Afalse+user%3Azenml-io+label%3A%22good+first+issue%22) and open up a Pull Request!

If you would like to contribute, please review our Contributing Guide for all relevant details.

πŸ†˜ 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.

⭐️ Show Your Support

If you find ZenML helpful or interesting, please consider giving us a star on GitHub. Your support helps promote the project and lets others know that it's worth checking out.

Thank you for your support! 🌟

Star this project

πŸ“œ 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.

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

Features Β· Roadmap Β· Report Bug Β· Sign up for ZenML Pro Β· Read Blog Β· Contribute to Open Source Β· Projects Showcase

πŸŽ‰ Version 0.70.0 is out. Check out the release notes here.
πŸ–₯️ Download our VS Code Extension here.