D2iQ, provider of
enterprise-grade cloud platforms that power smarter Day 2 operations, introduced KUDO for Kubeflow to simplify and accelerate machine learning (ML)
deployments on Kubernetes. An enterprise-ready distribution of open source
Kubeflow, D2iQ KUDO for Kubeflow accelerates time-to-market for ML workflows by
reducing the complexity of provisioning and managing all of the moving pieces.
Bundled with other ML tools such as Spark and Horovod, KUDO for Kubeflow
delivers an end-to-end secure, scalable and portable ML platform that empowers
data scientists and ML engineers to more quickly and consistently build, deploy
and run workflows in Day 2 operations.
A recent Forrester Research study found that 76 percent of data scientists and IT
practitioners expect their ML use to increase in the next 18 to 24 months,
making machine learning an essential skill in almost every organization. This
increased demand is forcing data scientists to navigate a complex myriad of
toolkits, technologies and platforms to meet the evolving business needs of
their organization. However, each technology often requires varying skill sets,
slowing projects and leading to challenges when effectively deploying ML
workflows to run in production environments.
KUDO for Kubeflow empowers organizations with a platform that
provides standardized best practices and tools for running machine learning on
Kubernetes. By removing the complexity of setting up ML development and
production environments, KUDO for Kubeflow enables organizations to improve the
productivity of data science teams at a much lower cost. Data scientists can
leverage GPUs and MLOps to speed up the process of training, tuning and
deploying models, regardless of the underlying infrastructure, reducing the
costs and risks associated with manual setups. ML engineers can now deploy and
train ML models at scale, all on a single platform.
"Taking ML workflows from development to production is filled
with challenges, as discrepancies between the environments, monolithic
architectures, and lack of portability and scalability are common when trying
to deploy a model into production," said Chandler Hoisington, SVP
Engineering and Product, D2iQ. "D2iQ KUDO for Kubeflow enables
organizations to develop, deploy, and run entire ML workloads in production at
scale, while satisfying security and compliance requirements. This enables data
scientists and ML engineers to run their entire ML stack with much higher
velocity on Kubernetes infrastructure."
For more information on D2iQ's KUDO for Kubeflow, visit: https://d2iq.com/solutions/ksphere/kudo-kubeflow