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The MLOps platform

prokube is an integrated MLOps platform

Based on Kubernetes, Kubeflow, Gitlab and many more best-of-breed open-source solutions, running anywhere you need it to.

On-premises, in the cloud, or in a corporate data center, prokube supports all environments you need to run your ML workloads in.

Flexible

Flexible

Flexible

State-of-the-Art MLOps Tools; No Lock-In

Choosing prokube delivers a range of advantages to your business. Built exclusively on open-source software for maximum flexibility and transparency, prokube combines carefully selected, powerful open-source solutions tailored for optimal usability and efficiency. It seamlessly integrates with your existing systems to streamline workflows and enhance productivity. Plus, with its ability to operate anywhere—on-premises, in the cloud, or in hybrid environments—prokube equips your business to excel in the evolving MLOps landscape.

Flexible

SERVICES

Deployment

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Deploying prokube is fully automated, yet custom solutions may be needed for your specific environment. We tailor our platform to suit your application, whether on-premises, in the cloud, or hybrid.

Customization

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Maintenance

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Maintaining a large suite of MLOps tools, such as Kubeflow and MLflow, can be challenging at times. At prokube, we gladly take on this task for you, allowing your data scientists to focus on what they do best.

Support

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MLOps

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We built prokube because we’ve personally experienced the challenges of developing and maintaining ML models. We are happy to leverage our experience to assist you in implementing MLOps or ML use cases.

Consulting

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Production

reliable

fast

Get Your ML Models in Production: Fast and Reliable!

Even in 2025, deploying ML models into production is still challenging.
MLOps, or Machine Learning Operations, unites data science and operations to tackle this challenge.

By adopting MLOps practices, you give your projects a competitive edge: it enhances collaboration, ensures consistent results, and smooths the transition of ML models from experimental stages to fully operational solutions.

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