List of Karpenter Integrations
This is a list of platforms and tools that integrate with Karpenter. This list is updated as of April 2025.
-
1
Kubernetes
Kubernetes
Effortlessly manage and scale applications in any environment.Kubernetes, often abbreviated as K8s, is an influential open-source framework aimed at automating the deployment, scaling, and management of containerized applications. By grouping containers into manageable units, it streamlines the tasks associated with application management and discovery. With over 15 years of expertise gained from managing production workloads at Google, Kubernetes integrates the best practices and innovative concepts from the broader community. It is built on the same core principles that allow Google to proficiently handle billions of containers on a weekly basis, facilitating scaling without a corresponding rise in the need for operational staff. Whether you're working on local development or running a large enterprise, Kubernetes is adaptable to various requirements, ensuring dependable and smooth application delivery no matter the complexity involved. Additionally, as an open-source solution, Kubernetes provides the freedom to utilize on-premises, hybrid, or public cloud environments, making it easier to migrate workloads to the most appropriate infrastructure. This level of adaptability not only boosts operational efficiency but also equips organizations to respond rapidly to evolving demands within their environments. As a result, Kubernetes stands out as a vital tool for modern application management, enabling businesses to thrive in a fast-paced digital landscape. -
2
StormForge
StormForge
Maximize efficiency, reduce costs, and boost performance effortlessly.StormForge delivers immediate advantages to organizations by optimizing Kubernetes workloads, resulting in cost reductions of 40-60% and enhancements in overall performance and reliability throughout the infrastructure. The Optimize Live solution, designed specifically for vertical rightsizing, operates autonomously and can be finely adjusted while integrating smoothly with the Horizontal Pod Autoscaler (HPA) at a large scale. Optimize Live effectively manages both over-provisioned and under-provisioned workloads by leveraging advanced machine learning algorithms to analyze usage data and recommend the most suitable resource requests and limits. These recommendations can be implemented automatically on a customizable schedule, which takes into account fluctuations in traffic and shifts in application resource needs, guaranteeing that workloads are consistently optimized and alleviating developers from the burdensome task of infrastructure sizing. Consequently, this allows teams to focus more on innovation rather than maintenance, ultimately enhancing productivity and operational efficiency. -
3
Sedai
Sedai
Automated resource management for seamless, efficient cloud operations.Sedai adeptly locates resources, assesses traffic trends, and understands metric performance, enabling continuous management of production environments without the need for manual thresholds or human involvement. Its Discovery engine adopts an agentless methodology to automatically recognize all components within your production settings while efficiently prioritizing monitoring data. Furthermore, all your cloud accounts are consolidated onto a single platform, allowing for a comprehensive view of your cloud resources in one centralized location. You can seamlessly integrate your APM tools, and Sedai will discern and highlight the most critical metrics for you. With the use of machine learning, it automatically establishes thresholds, providing insight into all modifications occurring within your environment. Users are empowered to monitor updates and alterations and dictate how the platform manages resources, while Sedai's Decision engine employs machine learning to analyze vast amounts of data, ultimately streamlining complexities and enhancing operational clarity. This innovative approach not only improves resource management but also fosters a more efficient response to changes in production environments.
- Previous
- You're on page 1
- Next