List of NVIDIA Magnum IO Integrations

This is a list of platforms and tools that integrate with NVIDIA Magnum IO. This list is updated as of September 2025.

  • 1
    NVIDIA NetQ Reviews & Ratings

    NVIDIA NetQ

    NVIDIA Networking

    Transform your network management with real-time insights today!
    NVIDIA NetQ™ is an innovative and scalable solution designed for contemporary network management, offering real-time insights, troubleshooting capabilities, and validation for Cumulus and SONiC network fabrics. It employs telemetry to deliver critical information regarding the health of data center networks and integrates seamlessly into the DevOps framework. The tool features native integration with NVIDIA® What Just Happened® (WJH) via the Spectrum® ASIC, which enables hardware-accelerated detection and reporting of network anomalies and transient issues. Furthermore, NetQ is available as a secure cloud service, streamlining the processes of installation, deployment, and scalability for your network infrastructure. By utilizing the cloud-hosted version of NetQ, users benefit from prompt updates, eliminating the need for maintenance and reducing appliance management tasks. This allows users to link configurations with operational performance, facilitating swift identification and monitoring of state changes throughout the entire data center. Such a holistic strategy not only boosts operational efficiency but also fosters a proactive approach to network management, ultimately ensuring optimal performance and reliability.
  • 2
    CUDA Reviews & Ratings

    CUDA

    NVIDIA

    Unlock unparalleled performance through advanced GPU acceleration today!
    CUDA® is an advanced parallel computing platform and programming framework developed by NVIDIA that facilitates the execution of general computing tasks on graphics processing units (GPUs). By harnessing the power of CUDA, developers can greatly improve the performance of their applications by taking advantage of the robust capabilities offered by GPUs. In GPU-accelerated applications, the CPU manages the sequential aspects of the workload, where it performs optimally on single-threaded tasks, while the more intensive compute tasks are executed in parallel across numerous GPU cores. When utilizing CUDA, programmers can write code in familiar programming languages, including C, C++, Fortran, Python, and MATLAB, allowing for the integration of parallelism through a straightforward set of specialized keywords. The NVIDIA CUDA Toolkit provides developers with all necessary resources to build applications that leverage GPU acceleration. This all-encompassing toolkit includes GPU-accelerated libraries, a streamlined compiler, various development tools, and the CUDA runtime, simplifying the process of optimizing and deploying high-performance computing solutions. Furthermore, the toolkit's flexibility supports a diverse array of applications, from scientific research to graphics rendering, demonstrating its capability to adapt to various domains and challenges in computing. With the continual evolution of the toolkit, developers can expect ongoing enhancements to support even more innovative uses of GPU technology.
  • 3
    NVIDIA virtual GPU Reviews & Ratings

    NVIDIA virtual GPU

    NVIDIA

    Unleash powerful virtual GPU performance for seamless productivity.
    NVIDIA's virtual GPU (vGPU) software provides exceptional GPU performance critical for tasks such as graphics-heavy virtual workstations and sophisticated data science projects, enabling IT departments to leverage virtualization while benefiting from the powerful capabilities of NVIDIA GPUs for modern workloads. Installed on a physical GPU in a cloud or enterprise data center server, this software creates virtual GPUs that can be allocated across multiple virtual machines, allowing users to connect from any device, regardless of location. The performance delivered mirrors that of a traditional bare metal setup, ensuring a smooth user experience akin to working directly on dedicated hardware. Moreover, it integrates with standard data center management tools, supporting features such as live migration and the flexible allocation of GPU resources through fractional or multi-GPU virtual machine instances. This adaptability is especially advantageous for meeting shifting business demands and enabling remote workforce collaboration, ultimately driving enhanced productivity and operational efficiency. Furthermore, the ability to scale resources on-demand allows organizations to respond swiftly to changing workloads, making NVIDIA's vGPU a valuable asset in today's fast-paced digital landscape.
  • 4
    Apache Spark Reviews & Ratings

    Apache Spark

    Apache Software Foundation

    Transform your data processing with powerful, versatile analytics.
    Apache Spark™ is a powerful analytics platform crafted for large-scale data processing endeavors. It excels in both batch and streaming tasks by employing an advanced Directed Acyclic Graph (DAG) scheduler, a highly effective query optimizer, and a streamlined physical execution engine. With more than 80 high-level operators at its disposal, Spark greatly facilitates the creation of parallel applications. Users can engage with the framework through a variety of shells, including Scala, Python, R, and SQL. Spark also boasts a rich ecosystem of libraries—such as SQL and DataFrames, MLlib for machine learning, GraphX for graph analysis, and Spark Streaming for processing real-time data—which can be effortlessly woven together in a single application. This platform's versatility allows it to operate across different environments, including Hadoop, Apache Mesos, Kubernetes, standalone systems, or cloud platforms. Additionally, it can interface with numerous data sources, granting access to information stored in HDFS, Alluxio, Apache Cassandra, Apache HBase, Apache Hive, and many other systems, thereby offering the flexibility to accommodate a wide range of data processing requirements. Such a comprehensive array of functionalities makes Spark a vital resource for both data engineers and analysts, who rely on it for efficient data management and analysis. The combination of its capabilities ensures that users can tackle complex data challenges with greater ease and speed.
  • Previous
  • You're on page 1
  • Next