Business Software for Amazon EKS

  • 1
    Nutanix Enterprise AI Reviews
    Nutanix Enterprise AI makes it simple to deploy, operate, and develop enterprise AI applications through secure AI endpoints that utilize large language models and generative AI APIs. By streamlining the process of integrating GenAI, Nutanix enables organizations to unlock extraordinary productivity boosts, enhance revenue streams, and realize the full potential of generative AI. With user-friendly workflows, you can effectively monitor and manage AI endpoints, allowing you to tap into your organization's AI capabilities. The platform's point-and-click interface facilitates the effortless deployment of AI models and secure APIs, giving you the flexibility to select from Hugging Face, NVIDIA NIM, or your customized private models. You have the option to run enterprise AI securely, whether on-premises or in public cloud environments, all while utilizing your existing AI tools. The system also allows for straightforward management of access to your language models through role-based access controls and secure API tokens designed for developers and GenAI application owners. Additionally, with just a single click, you can generate URL-ready JSON code, making API testing quick and efficient. This comprehensive approach ensures that enterprises can fully leverage their AI investments and adapt to evolving technological landscapes seamlessly.
  • 2
    Amazon Elastic File System (EFS) Reviews
    Amazon Elastic File System (Amazon EFS) effortlessly expands and contracts as files are added or deleted, eliminating the need for manual management or provisioning. It allows for the secure and organized sharing of code and other files, enhancing DevOps efficiency and enabling quicker responses to customer input. With Amazon EFS, you can persist and share data from your AWS containers and serverless applications without any management overhead. Its user-friendly scalability provides the performance and reliability essential for machine learning and big data analytics tasks. Additionally, it streamlines persistent storage for contemporary content management system workloads. By utilizing Amazon EFS, you can accelerate the delivery of your products and services to market, ensuring they are reliable and secure while also reducing costs. Notably, you can easily create and configure shared file systems for AWS compute services without the need for provisioning, deployment, patching, or ongoing maintenance. Moreover, it allows you to scale your workloads on-demand, accommodating up to petabytes of storage and gigabytes per second of throughput right from the start, making it an ideal solution for businesses looking to optimize their cloud storage capabilities.
  • 3
    Amazon EC2 G4 Instances Reviews
    Amazon EC2 G4 instances are specifically designed to enhance the performance of machine learning inference and applications that require high graphics capabilities. Users can select between NVIDIA T4 GPUs (G4dn) and AMD Radeon Pro V520 GPUs (G4ad) according to their requirements. The G4dn instances combine NVIDIA T4 GPUs with bespoke Intel Cascade Lake CPUs, ensuring an optimal mix of computational power, memory, and networking bandwidth. These instances are well-suited for tasks such as deploying machine learning models, video transcoding, game streaming, and rendering graphics. On the other hand, G4ad instances, equipped with AMD Radeon Pro V520 GPUs and 2nd-generation AMD EPYC processors, offer a budget-friendly option for handling graphics-intensive workloads. Both instance types utilize Amazon Elastic Inference, which permits users to add economical GPU-powered inference acceleration to Amazon EC2, thereby lowering costs associated with deep learning inference. They come in a range of sizes tailored to meet diverse performance demands and seamlessly integrate with various AWS services, including Amazon SageMaker, Amazon ECS, and Amazon EKS. Additionally, this versatility makes G4 instances an attractive choice for organizations looking to leverage cloud-based machine learning and graphics processing capabilities.
  • 4
    AWS EC2 Trn3 Instances Reviews
    The latest Amazon EC2 Trn3 UltraServers represent AWS's state-of-the-art accelerated computing instances, featuring proprietary Trainium3 AI chips designed specifically for optimal performance in deep-learning training and inference tasks. These UltraServers come in two variants: the "Gen1," which is equipped with 64 Trainium3 chips, and the "Gen2," offering up to 144 Trainium3 chips per server. The Gen2 variant boasts an impressive capability of delivering 362 petaFLOPS of dense MXFP8 compute, along with 20 TB of HBM memory and an astonishing 706 TB/s of total memory bandwidth, positioning it among the most powerful AI computing platforms available. To facilitate seamless interconnectivity, a cutting-edge "NeuronSwitch-v1" fabric is employed, enabling all-to-all communication patterns that are crucial for large model training, mixture-of-experts frameworks, and extensive distributed training setups. This technological advancement in the architecture underscores AWS's commitment to pushing the boundaries of AI performance and efficiency.
  • 5
    Splunk Infrastructure Monitoring Reviews
    Introducing the ultimate multicloud monitoring solution that offers real-time analytics for diverse environments, previously known as SignalFx. This platform enables monitoring across any environment using a highly scalable streaming architecture. It features open, adaptable data collection and delivers rapid visualizations of services in mere seconds. Designed specifically for dynamic and ephemeral cloud-native environments, it supports various scales including Kubernetes, containers, and serverless architectures. Users can promptly detect, visualize, and address issues as they emerge. It empowers real-time infrastructure performance monitoring at cloud scale through innovative predictive streaming analytics. With over 200 pre-built integrations for various cloud services and ready-to-use dashboards, it facilitates swift visualization of your entire operational stack. Additionally, the system can autodiscover, break down, group, and explore various clouds, services, and systems effortlessly. This comprehensive solution provides a clear understanding of how your infrastructure interacts across multiple services, availability zones, and Kubernetes clusters, enhancing operational efficiency and response times.
  • 6
    StackState Reviews
    StackState's Topology & Relationship-Based Observability platform allows you to manage your dynamic IT environment more effectively. It unifies performance data from existing monitoring tools and creates a single topology. This platform allows you to: 1. 80% Reduced MTTR by identifying the root cause of the problem and alerting the appropriate teams with the correct information. 2. 65% Less Outages: Through real-time unified observation and more planned planning. 3. 3.3.2. 3x faster releases: Developers are given more time to implement the software. Get started today with our free guided demo: https://www.stackstate.com/schedule-a-demo
  • 7
    Cloudify Reviews

    Cloudify

    Cloudify Platform

    All public and private environments can be managed from one platform with a single CI/CD plug-in that connects to ALL automation toolchains. This plugin supports Jenkins, Kubernetes and Terraform as well as Cloud Formation, Azure ARm, Cloud Formation, Cloud Formation, and many other automation toolchains. No installation, no downloading... and free on us for the first thirty days. Integration with infrastructure orchestration domains such as AWS Cloud formation and Azure ARM, Ansible, Terraform, and Terraform. Service Composition Domain-Specific Language - This simplifies the relationship between services and handles cascading workflows. Shared resources, distributed life-cycle management, and more. Orchestration of cloud native Kubernetes service across multiple clusters using OpenShift and KubeSpray. A blueprint is available to automate the configuration and setup of clusters. Integration with Jenkins and other CI/CD platforms. This integration provides a 'one stop-shop' for all orchestration domains that can be integrated to your CI/CD pipeline.
  • 8
    Ondat Reviews
    You can accelerate your development by using a storage platform that integrates with Kubernetes. While you focus on running your application we ensure that you have the persistent volumes you need to give you the stability and scale you require. Integrating stateful storage into Kubernetes will simplify your app modernization process and increase efficiency. You can run your database or any other persistent workload in a Kubernetes-based environment without worrying about managing the storage layer. Ondat allows you to provide a consistent storage layer across all platforms. We provide persistent volumes that allow you to run your own databases, without having to pay for expensive hosted options. Kubernetes data layer management is yours to take back. Kubernetes-native storage that supports dynamic provisioning. It works exactly as it should. API-driven, tight integration to your containerized applications.
  • 9
    ThreatStryker Reviews
    Runtime threat assessment, runtime attack analysis, and targeted protection of your infrastructure and applications. Zero-day attacks can be stopped by staying ahead of attackers. Observe attack behavior. ThreatStryker monitors, correlates, learns, and acts to protect your applications. Deepfence ThreatStryker displays a live, interactive, color-coded view on the topology and all processes and containers running. It inspects hosts and containers to find vulnerable components. It also interrogates configuration to identify file system, processes, and network-related misconfigurations. ThreatStryker uses industry and community standards to assess compliance. ThreatStryker conducts a deep inspection of network traffic, system behavior, and application behavior and accumulates suspicious events over time. The events are classified and correlated with known vulnerabilities and suspicious patterns.
  • 10
    ThreatMapper Reviews
    Open source, multi-cloud platform to scan, map, and rank vulnerabilities in containers, images hosts, repositories, and running containers. ThreatMapper detects threats to your applications in production across clouds, Kubernetes and serverless. You cannot secure what you can't see. ThreatMapper automatically discovers your production infrastructure. It can identify and interrogate cloud instances, Kubernetes nodes and serverless resources. This allows you to discover the applications and containers, and map their topology in real time. ThreatMapper allows you to visualize and discover the external and internal attack surfaces for your applications and infrastructure. Bad actors can gain access to your infrastructure by exploiting vulnerabilities in common dependencies. ThreatMapper scans hosts and containers for known vulnerable dependencies. It also takes threat feeds from more than 50 sources.
  • 11
    Kubestack Reviews
    The need to choose between the ease of a graphical user interface and the robustness of infrastructure as code is now a thing of the past. With Kubestack, you can effortlessly create your Kubernetes platform using an intuitive graphical user interface and subsequently export your tailored stack into Terraform code, ensuring dependable provisioning and ongoing operational sustainability. Platforms built with Kubestack Cloud are transitioned into a Terraform root module grounded in the Kubestack framework. All components of this framework are open-source, significantly reducing long-term maintenance burdens while facilitating continuous enhancements. You can implement a proven pull-request and peer-review workflow to streamline change management within your team. By minimizing the amount of custom infrastructure code required, you can effectively lessen the long-term maintenance workload, allowing your team to focus on innovation and growth. This approach ultimately leads to increased efficiency and collaboration among team members, fostering a more productive development environment.
  • 12
    AWS Deep Learning Containers Reviews
    Deep Learning Containers consist of Docker images that come preloaded and verified with the latest editions of well-known deep learning frameworks. They enable the rapid deployment of tailored machine learning environments, eliminating the need to create and refine these setups from the beginning. You can establish deep learning environments in just a few minutes by utilizing these ready-to-use and thoroughly tested Docker images. Furthermore, you can develop personalized machine learning workflows for tasks such as training, validation, and deployment through seamless integration with services like Amazon SageMaker, Amazon EKS, and Amazon ECS, enhancing efficiency in your projects. This capability streamlines the process, allowing data scientists and developers to focus more on their models rather than environment configuration.
  • 13
    Clutch Reviews
    Clutch is tackling the increasingly vital issue of securing non-human identities in today’s enterprises. As digital frameworks grow and evolve, the oversight and safeguarding of non-human identities—including API keys, secrets, tokens, and service accounts—has become a crucial yet frequently overlooked element of cybersecurity. Acknowledging this oversight, Clutch is creating a specialized platform aimed at the thorough protection and management of these identities. Our innovative solution is intended to strengthen the digital infrastructure of organizations, promoting a secure, resilient, and reliable environment for their operations. The proliferation of non-human identities is staggering, outpacing human ones at a ratio of 45 to 1, and these identities hold significant privileges and extensive access that are indispensable for vital automated processes. Moreover, they often lack essential security measures like multi-factor authentication and conditional access policies, which makes their protection even more crucial. Addressing these vulnerabilities is key to ensuring the integrity of automated systems within enterprises.
  • 14
    AWS DevOps Agent Reviews
    The AWS DevOps Agent is a solution provided by Amazon Web Services (AWS) that functions as a self-sufficient, continuously operating operations engineer, tasked with identifying and preventing issues within your infrastructure, applications, and deployment processes. This tool autonomously analyzes your application assets and their interconnections, encompassing infrastructure, code repositories, deployment workflows, monitoring tools, and telemetry data, to synthesize information from logs, metrics, traces, deployment activities, and recent code modifications. In the event of an alert, unexpected error surge, or a help request, the DevOps Agent promptly initiates an automated analysis; it conducts incident triage around the clock, performs root-cause examinations, and offers detailed remediation strategies that can seamlessly integrate into team workflows (for instance, through Slack, ServiceNow, or PagerDuty) or directly generate support tickets with AWS. Moreover, this proactive approach ensures that potential issues are addressed before they escalate, enhancing the overall reliability of your systems.
MongoDB Logo MongoDB