Sedai Launches Autonomous GPU Optimization to Cut AI Costs
Sedai's breakthrough GPU utilization model sees what other tools miss — and autonomously acts to cut costs across Kubernetes environments without sacrificing performance
The AI boom has made GPU spend one of the fastest-growing and least-controlled line items in enterprise cloud budgets. According to IDC, AI infrastructure spending grew 166% year-over-year in 2025, yet studies show that one-third of all GPUs run at less than 15% utilization. The result is a compounding problem: high costs, hidden waste, and capacity shortages are slowing down AI teams.
"Engineering leaders know that AI infrastructure is expensive, but until now, they didn't have a way to lower the bill without risking performance," said
A Smarter Signal: How Sedai Measures True GPU Utilization
At the core of Sedai GPU Optimization is a proprietary GPU utilization model. It works by inferring a resource's true GPU usage from multiple telemetry signals — beyond the surface-level metrics that most tools rely on. Standard utilization metrics, such as those reported by NVIDIA System Management Interface (nvidia-smi), measure only whether a GPU is active, not whether it is doing productive work. Sedai's approach models real utilization at the workload level, enabling accurate identification of waste that would otherwise go undetected.
What Sedai GPU Optimization Does
Sedai GPU Optimization delivers three core capabilities:
- Idle GPU Deallocation: Detects Kubernetes workloads with GPU resources allocated but not actively used, and automatically removes those requests, with clear before-and-after cost projections surfaced directly in the UI.
- MIG Enablement and Packing: Identifies NVIDIA GPU instances where MIG is not enabled, enables it, and assigns workloads to appropriately sized slices — maximizing the number of workloads that can run efficiently on each physical GPU. MIG optimization is executed via Dynamic Resource Allocation (DRA) integration, providing a standardized, Kubernetes-native approach to GPU resource sharing.
- GPU Node Pool Optimization: Analyzes how workloads are distributed across GPU devices and recommends repacking them to consolidate onto fewer nodes, freeing entire GPU devices and reducing node spend. Recommendations are surfaced via Datapilot, with clear before-and-after cost projections at the node pool level.
Autonomous Execution, From
Unlike tools that stop at recommendations, Sedai GPU Optimization is built to act. Every optimization is executed with safety checks and guardrails enforced at every step — so teams can move from insight to action without the risk of disrupting production AI workloads. Teams can start with guided recommendations and progress toward full autonomy at their own pace, all within the same trusted Sedai decision engine.
Availability
Sedai GPU Optimization is generally available today for Kubernetes environments, with support for any Kubernetes platform and distribution. Optimization for GPU-based VMs is on the roadmap. Existing Sedai customers can enable the capability within their current environment. New customers can learn more and request a demo at sedai.io.
About Sedai
Sedai is the world's first self-driving cloud.™ Our platform optimizes your cloud resources to reduce costs, boost performance, & improve availability. All on autopilot. Under the hood, Sedai uses patented ML models to learn how your apps actually behave — from traffic patterns to dependencies to golden signals. This application intelligence lets Sedai make safe changes to achieve your SLOs. With zero IaC drift. Zero toil. And 100% confidence.
Ready to build a cloud that's fast, reliable, & doesn't burn your entire budget? See how at sedai.io.
Media Contact
Sr. Director of Brand
[email protected]
View original content to download multimedia:https://www.prnewswire.com/news-releases/sedai-launches-autonomous-gpu-optimization-to-cut-ai-costs-302715591.html
SOURCE Sedai
Serious News for Serious Traders! Try StreetInsider.com Premium Free!
You May Also Be Interested In
- BEAR NutriEase Baby Food Maker Stands Out With a Stainless Steel Design in a Plastic-Dominated Category
- New Jersey Digital Agency Synaryverse Integrates AI Into Marketing, Development, and Creative Services
- MixTwix.io Introduces a Privacy-Focused Digital Asset Information Platform for Users Seeking Better Transaction Awareness and Security
Create E-mail Alert Related Categories
PRNewswire, Press ReleasesSign up for StreetInsider Free!
Receive full access to all new and archived articles, unlimited portfolio tracking, e-mail alerts, custom newswires and RSS feeds - and more!



Tweet
Share