Cluster Lifecycle Management

Centralize Kubernetes Fleet Mgmt for Private Clouds

Turnkey Kubernetes cluster lifecycle automation for day-0 & day-2
cases in private data centers

Hybrid K8s Deployments

with Unified Management

Manage Kubernetes clusters seamlessly across on-premises and cloud environments with consistent configurations and security policies.



Rafay provides a unified control plane to manage Kubernetes clusters across hybrid cloud environments, enabling consistent security, governance, and resource management.

Operational Consistency

Unified management across environments reduces complexity.

Cost
Savings

Centralized management helps optimize resource usage across both cloud and on-prem environments.

Operate K8s Clusters with 100s or 1,000s

of Nodes On Premises

Optimize performance for large-footprint apps (e.g. high-performance computing (HPC) workloads) on Kubernetes with scalable, automated infrastructure.



Rafay provides specialized tools to manage large-scale Kubernetes clusters designed for large-footprint workloads used by researchers and academics. These tools optimize compute, storage, and networking for compute-intensive applications, ensuring performance and compliance.

Increased Performance

Optimized clusters ensure that research applications run with minimal latency and maximum efficiency.

Regulatory Compliance

Automated compliance checks ensure that clusters meet industry regulations for data security and performance.

Why companies use Rafay’s managed Kubernetes service in private clouds

Before

After

Before Build a highly available and scalable Kubernetes solution
After Rafay managed upstream K8s for bare metal and virtual (vSphere)
Before Maintain critical K8s components (CNI, CRI, Etcd, etc..)
After Rafay manages critical K8s components
Before Integration with core Infrastructure providers (Storage, Network and LB)
After -500 integrations available out of the box
Before K8s cluster upgrades, node OS patches & Cluster add-on updates
After Automated fleet-wide workflows for in-place upgrades
Before K8s lifecycle operations automation (provision, scale, update, etc..)
After Out-of-box TF, CLI, API, GitOps

Customer Results

52%
Less licensing and personnel costs
0
Management overhead
10x
Faster cluster and add-on upgrades and patches

Free Yourself from Old Technology

Leverage turnkey Kubernetes lifecycle management for data centers and the edge,
using our easy-to-use, fully CNCF-compliant Kubernetes distro.

Latest Blogs from the Kubernetes Current

Image for GPU PaaS Unleashed: Empowering Platform Teams to Drive Innovation

GPU PaaS Unleashed: Empowering Platform Teams to Drive Innovation

December 18, 2024 / by Mohan Atreya

GPUs underpin cutting-edge AI, machine learning, and big data workloads. They also provide critical acceleration for simulation, video rendering, and streaming tasks. With modern enterprises likely to be investing in some or all of these fields, easy access… Read More

Image for Optimizing AI Workloads for Multi-Cloud Environments with Rafay and GPU PaaS

Optimizing AI Workloads for Multi-Cloud Environments with Rafay and GPU PaaS

November 27, 2024 / by Mohan Atreya

Rafay’s platform enables you build a GPU PaaS for AI workloads so you can confidently operate machine learning models, generative AI, and neural networks at scale. It orchestrates your hybrid and multi-cloud computing resources, improves operational flexibility, and… Read More

Image for Operationalizing AI: Solutions to Machine Learning Workflow Automation Challenges

Operationalizing AI: Solutions to Machine Learning Workflow Automation Challenges

November 15, 2024 / by Mohan Atreya

Machine learning (ML) has emerged as a transformative force, enabling organizations to derive critical insights, enhance customer experiences, and make data-driven predictions. However, operationalizing machine learning workflows presents significant challenges, especially for enterprises with complex, cloud-based infrastructures. Machine… Read More