Best Cloud Management Software for Apache Spark

Find and compare the best Cloud Management software for Apache Spark in 2025

Use the comparison tool below to compare the top Cloud Management software for Apache Spark on the market. You can filter results by user reviews, pricing, features, platform, region, support options, integrations, and more.

  • 1
    Alluxio Reviews

    Alluxio

    Alluxio

    26¢ Per SW Instance Per Hour
    Alluxio stands out as the pioneering open-source technology for data orchestration tailored for analytics and AI within cloud environments. It effectively connects data-centric applications with various storage systems, allowing seamless data retrieval from the storage layer, thus enhancing accessibility and enabling a unified interface for multiple storage solutions. The innovative memory-first tiered architecture of Alluxio facilitates data access at unprecedented speeds, significantly surpassing traditional methods. Picture yourself as an IT leader with the power to select from a diverse range of services available in both public cloud and on-premises settings. Furthermore, envision having the capability to scale your storage for data lakes while maintaining control over data locality and ensuring robust protection for your organization. To support these aspirations, NetApp and Alluxio are collaborating to empower clients in navigating the evolving landscape of modernizing their data architecture, with an emphasis on minimizing operational complexity for analytics, machine learning, and AI-driven workflows. This partnership aims to unlock new possibilities for businesses striving to harness the full potential of their data assets.
  • 2
    Apache Mesos Reviews

    Apache Mesos

    Apache Software Foundation

    Mesos operates on principles similar to those of the Linux kernel, yet it functions at a different abstraction level. This Mesos kernel is deployed on each machine and offers APIs for managing resources and scheduling tasks for applications like Hadoop, Spark, Kafka, and Elasticsearch across entire cloud infrastructures and data centers. It includes native capabilities for launching containers using Docker and AppC images. Additionally, it allows both cloud-native and legacy applications to coexist within the same cluster through customizable scheduling policies. Developers can utilize HTTP APIs to create new distributed applications, manage the cluster, and carry out monitoring tasks. Furthermore, Mesos features an integrated Web UI that allows users to observe the cluster's status and navigate through container sandboxes efficiently. Overall, Mesos provides a versatile and powerful framework for managing diverse workloads in modern computing environments.
  • 3
    Sync Reviews

    Sync

    Sync Computing

    Sync Computing's Gradient is an advanced AI-driven optimization engine designed to streamline and enhance cloud-based data infrastructure. Utilizing cutting-edge machine learning technology developed at MIT, Gradient enables organizations to optimize the performance of their cloud workloads on CPUs and GPUs while significantly reducing costs. The platform offers up to 50% savings on Databricks compute expenses, ensuring workloads consistently meet runtime service level agreements (SLAs). With continuous monitoring and dynamic adjustments, Gradient adapts to changing data sizes and workload patterns, delivering peak efficiency across complex pipelines. Seamlessly integrating with existing tools and supporting various cloud providers, Sync Computing provides a robust solution for optimizing modern data infrastructure.
  • 4
    Privacera Reviews
    Multi-cloud data security with a single pane of glass Industry's first SaaS access governance solution. Cloud is fragmented and data is scattered across different systems. Sensitive data is difficult to access and control due to limited visibility. Complex data onboarding hinders data scientist productivity. Data governance across services can be manual and fragmented. It can be time-consuming to securely move data to the cloud. Maximize visibility and assess the risk of sensitive data distributed across multiple cloud service providers. One system that enables you to manage multiple cloud services' data policies in a single place. Support RTBF, GDPR and other compliance requests across multiple cloud service providers. Securely move data to the cloud and enable Apache Ranger compliance policies. It is easier and quicker to transform sensitive data across multiple cloud databases and analytical platforms using one integrated system.
  • 5
    Unravel Reviews
    Unravel empowers data functionality across various environments, whether it’s Azure, AWS, GCP, or your own data center, by enhancing performance, automating issue resolution, and managing expenses effectively. It enables users to oversee, control, and optimize their data pipelines both in the cloud and on-site, facilitating a more consistent performance in the applications that drive business success. With Unravel, you gain a holistic perspective of your complete data ecosystem. The platform aggregates performance metrics from all systems, applications, and platforms across any cloud, employing agentless solutions and machine learning to thoroughly model your data flows from start to finish. This allows for an in-depth exploration, correlation, and analysis of every component within your contemporary data and cloud infrastructure. Unravel's intelligent data model uncovers interdependencies, identifies challenges, and highlights potential improvements, providing insight into how applications and resources are utilized, as well as distinguishing between effective and ineffective elements. Instead of merely tracking performance, you can swiftly identify problems and implement solutions. Utilize AI-enhanced suggestions to automate enhancements, reduce expenses, and strategically prepare for future needs. Ultimately, Unravel not only optimizes your data management strategies but also supports a proactive approach to data-driven decision-making.
  • Previous
  • You're on page 1
  • Next