Create machine learning pipelines without the infrastructure hassle
Stop wrestling with tool integrations, infrastructure mayhem, and manual scripts.
Start developing MLOps workflows that actually work.
Enhance your MLOps

Trusted by 1,000s of members of top companies

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The Problem

Everybody wants their own ChatGPT but...

it's still hard to create a standardized and simple MLOps platform that can serve the need of disparate infrastructure, tooling, and persona requirements.

90%

companies want to run ML internally themselves

The new GenAI hype has accelerated how much of a competitive advantage applied machine learning brings to a business.

91%

companies don't have in place their entire ML stack

Most companies struggle to go through month-long PoCs of specific tools, while being locked into expensive e2e cloud platforms.

92%

companies want to use a MLOps platform but struggle to integrate tools

But more than half of them struggle to connect different tools together in a seamless, unified experience
Features

A Simplified ML Workflow for Everyone on the Team

ZenML is available open-source as a simple pip package that starts your MLOps journey locally.
Write standard Python code to connect your steps into pipelines and execute them.
ZenML doesn’t require any special infrastructure or software to run, so there is no need to wait for environments to spin up.
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Bridge the Gap between Data Science and Ops

Engineering connects the infrastructure, data science runs the pipelines
Easily on the cloud only when needed and save cloud costs
Estabilish lineage and provenance across the entire pipeline, regardless of which tools and cloud providers are being used.

Accelerate Your Workflow with Reusable Components

ZenML is a framework that can be easily extended by creating custom flavors.
Avoid tangling up code with tooling libraries that make it hard to transition
50+ Integrations with the most popular cloud and open-source tools
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Product

How ZenML Works?

pip install zenml is all you need
Python script that shows what a ZenML step looks like

Start Local With Python

Give your python functions superpowers by adding a simple decorator.
Run everything locally - no complex infrastructure setup until its needed.
No restrictions - Use the existing ML tools you know and love.
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Connect Your MLOps Stack

Architect your own MLOps stack - with pre-made integrations or by creating your own.
Switch between local, staging, dev, and production easily.
Data scientists write data science code, engineers set up their MLOps infrastructure.
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Run in Production

Run the same code on any stack.
Organize data, model, code across your tooling stack all in one place.
Estabilish one source of truth for all ML activities.
Support

Frequently asked questions

Everything you need to know about the product.
Why do I need yet another MLOps tool?
Yes, the MLOps landscape is complex and hard to navigate. If the wrong decisions are made while creating your technology stack early on, it leads to complexity and technical debt as you progress through the stages of MLOps maturity.

ZenML does not seek to replace any of your existing tools. It allows you to define your ML workflows in a vendor- and tool- agnostic manner, so that you can write your code knowing that you can switch out ML components easily as and when it is needed. Read more our our blog.
Is ZenML a pipeline tool, experiment tracker, or model deployer?
It is none of the above.  ZenML is a not an individual tooling provider to solve a specific problem for MLOps, but is rather a framwork that brings all these individual pieces together in a unified way. Sure, ZenML natively does some things like some metadata  tracking and caching, but mostly ZenML is designed to be used with other tools.

For a more detailed comparisons, take a look at the comparison pages.
How can I quickly deploy the infrastructure required to run ZenML?
There are two sides to this question. ZenML itself can be deployed as a service, which centrally tracks everything related to pipelines and stacks. However, ZenML also often requires additional infrastructure for various stacks. The ZenML MLStacks repository contains Terraform scripts to quickly get you started with these stacks. These recipes can also be called directly with ZenML with zenml stack recipe deploy . Read more here.
Who is ZenML built for?
ZenML is built for data scientists, ML engineers, and MLOps platform engineers. It gives data scientists the freedom to fully focus on modeling and experimentation while writing code that is production-ready from the beginning. ZenML allows developers to develop ML models in any environment using their favorite tools and easily switch to a production environment once they are satisfied with the results.
What is the difference between the open-source and cloud product?
ZenML is and always will be open-source at its heart. The core framework is freely available on Github and you can run and manage it in-house without using the cloud product. On the other hand, the cloud product offers one of the best experiences to use ZenML, and includes a managed version of the OSS product, and some features that create the best collaborative experience for many companies that are scaling their ML efforts.

You can see a more detailed comparison here.
Still not clear?
Ask us on Slack
HashiCorp
ZenML offers the capability to build end-to-end ML workflows that seamlessly integrate with various components of the ML stack, such as different providers, data stores, and orchestrators. This enables teams to accelerate their time to market by bridging the gap between data scientists and engineers, while ensuring consistent implementation regardless of the underlying technology.
Harold Giménez
Harold Giménez
SVP R&D at HashiCorp
Stanford University
"Many, many teams still struggle with managing models, datasets, code, and monitoring as they deploy ML models into production. ZenML provides a solid toolkit for making that easy in the Python ML world"
Chris Manning
Chris Manning
Professor of Linguistics and CS at Stanford
MadeWithML
"ZenML allows you to quickly and responsibly go from POC to production ML systems while enabling reproducibility, flexibitiliy, and above all, sanity."
Goku Mohandas
Goku Mohandas
Founder of MadeWithML
Salesforce
"ZenML allows orchestrating ML pipelines independent of any infrastructure or tooling choices. ML teams can free their minds of tooling FOMO from the fast-moving MLOps space, with the simple and extensible ZenML interface. No more vendor lock-in, or massive switching costs!"
Richard Socher
Richard Socher
Former Chief Scientist Salesforce and Founder of You.com
Wisetech Global
Thanks to ZenML we've set up a pipeline where before we had only jupyter notebooks. It helped us tremendously with data and model versioning and we really look forward to any future improvements!
Francesco Pudda
Francesco Pudda
Machine Learning Engineer at WiseTech Global

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