AI DevOps | Engineering & DevOps (original) (raw)

Manage More Models Reliably

Streamline Your Workflow, Deploy More Models into Production, and
Easily Manage Them with Datatron

The Problem

MLOps Engineers, AI/ML DevOps Engineers, and ML Engineers unite. Model development and model deployment is not the same for AI/ML as it is for application development. Leveraging Datatron, a team of one can operationalize hundreds of models with ease, despite the traditional myriad of challenges.

Models from Different Development Stacks

Models Not Operating in Production as They Do in the Lab

Lack of Explainability and Drift, Bias, or Anomalies in Models

The Solution

Enterprise at Scale

Now one Engineer can support multiple LOBs or BUs with ease. Scaling up your AI/ML program doesn’t mean scaling up your HR overhead.

Manage More Models in Production

AI Monitoring & AI Governance

Need to explain what is occurring in production? Are you monitoring for drift, bias, and performance? With Datatron’s Dashboard and “Health Score,” you can monitor model behavior and catch anomalies before they become issues.

Know What Your Models Are Doing

Model Operationalization (ModelOps)

If you are tasked with getting AI/ML Models into production, you know that it can take six months or up to a year. But with Datatron, you can get your models into production in less than one week.

Learn More about MLOps

Datatron Learning

Enhance Your ML Ops Expertise
whitepaper

Datatron 3.0 Product Release – Enterprise Feature Enhancements

Streamlined features that improve operational workflows, enforce enterprise-grade security, and simplify troubleshooting.

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Datatron 3.0 Product Release – Simplified Kubernetes Management

Eliminate the complexities of Kubernetes management and deploy new virtual private cloud environments in just a few clicks.

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Datatron 3.0 Product Release – JupyterHub Integration

Datatron continues to lead the way with simplifying data scientist workflows and delivering value from AI/ML with the new JupyterHub integration as part of the “Datatron 3.0” product release.

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whitepaper

Success Story: Global Bank Monitors 1,000’s of Models On Datatron

A top global bank was looking for an AI Governance platform and discovered so much more. With Datatron, executives can now easily monitor the “Health” of thousands of models, data scientists decreased the time required to identify issues with models and uncover the root cause by 65%, and each BU decreased their audit reporting time by 65%.

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Success Story: Domino’s 10x Model Deployment Velocity

Domino’s was looking for an AI Governance platform and discovered so much more. With Datatron, Domino’s accelerated model deployment 10x, and achieved 80% more risk-free model deployments, all while giving executives a global view of models and helping them to understand the KPI metrics achieved to increase ROI.

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whitepaper

5 Reasons Your AI/ML Models are Stuck in the Lab

AI/ML Executive need more ROI from AI/ML? Data Scientist want to get more models into production? ML DevOps Engineer/IT want an easier way to manage multiple models. Learn how enterprises with mature AI/ML programs overcome obstacles to operationalize more models with greater ease and less manpower.

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