Optimize Live

Autonomous Rightsizing for Kubernetes Workloads

Horizontal Autoscaling PERFORMANCE with Vertical Autoscaling EFFICIENCY.

Start a TrialEnter SandboxWatch an Install

Free trial includes full version on 1 cluster for 30 days

actionable recommendations UI screenshot

Maximize efficiency and ensure performance with bi-directional autoscaling

Unlike basic vertical autoscaling approaches (such as VPA) that conflict with Kubernetes’ built-in Horizontal Pod Autoscaler (HPA), Optimize Live uses machine learning to continuously harmonize requests and limits with standard HPA utilization targets, giving you the best of both worlds:

HORIZONTAL pod autoscaling replicates pods in seconds, ensuring performance when faced with a sharp spike in demand.

VERTICAL pod autoscaling continuously aligns resources to application demand as utilization ebbs and flows over hours, days and weeks.

Learn more in the Blog

Rightsize Accurately

Machine learning analyzes resource utilization every 15 seconds, building a fine-grained understanding of each new workload’s demand patterns in just a few days, for efficient sizing that maintains or improves application performance and resilience.

Preview Impact to Gain Trust

Seeing is believing. Compare how Optimize Live’s recommendations would perform against your current settings, including resource consumption, utilization, and estimated cost savings.

Simplify at Scale

Intelligent enough to plug-and-play

Begin optimizing clusters in minutes with automatic discovery, machine learning analysis, and reliable recommendations ready to deploy in a week.

No human configuration or tuning required.

Autonomous at Enterprise Scale

Put estate-wide rightsizing on autopilot with hands-free lifecycle automation. Optimize Live automatically discovers each new pod, captures its metrics, learns its patterns, calculates optimum settings, and applies them.

After investing 2 minutes in onboarding a cluster, no further manual steps are required.


Tuning optional

Tailor optimization for specific business-critical or outlier workloads:

  • Select an optimization goal for extra reliability or savings
  • Specify resizing frequency
  • Set min/max requests
  • Include or exclude resource settings such as limits
  • And other guardrails as needed

Apply your way

Apply recommended settings directly to pods through an agent in each cluster or export them to HELM or raw YAML and integrate with your CI/CD tool of choice.

Unify visibility and control

See all your workloads in one place. Track resource savings and opportunities across clusters, namespaces, and workloads.

Seeing is Believing

Start getting resizing recommendations minutes from now

Start a TrialEnter SandboxWatch an Install (2 minutes)

Free trial includes full version on 1 cluster for 30 days