List of Oblivus Integrations
This is a list of platforms and tools that integrate with Oblivus. This list is updated as of May 2026.
-
1
Shadeform
Shadeform
Deploy GPU infrastructure from 20+ vetted clouds under a single control planeShadeform functions as an all-encompassing GPU cloud marketplace that simplifies the tasks of discovering, comparing, launching, and managing on-demand GPU instances from multiple cloud providers through one cohesive platform, consolidated console, and API. This integration supports the development, training, and deployment of AI models while alleviating the complications associated with handling numerous accounts or maneuvering through different provider interfaces. Users benefit from the ability to access current pricing and availability for GPUs across various clouds, launch instances either within their own cloud accounts or via Shadeform's managed accounts, and efficiently manage a multi-cloud ecosystem from a single, centralized location using standardized tools such as curl, Python, or Terraform. By consolidating information on GPU capacity and pricing, teams can optimize their computing costs effectively, deploy containerized workloads with consistent interfaces, centralize billing and account management, and reduce vendor-specific challenges through a unified API that supports a range of providers. Furthermore, Shadeform improves the user experience with additional features such as scheduling and automated resource provisioning, which guarantee that users can obtain essential resources as they become available while ensuring operational flexibility. This approach not only streamlines processes but also enhances collaboration among teams working on AI projects, allowing them to focus more on innovation rather than logistical hurdles. -
2
NVIDIA DRIVE
NVIDIA
Empowering developers to innovate intelligent, autonomous transportation solutions.The integration of software transforms a vehicle into an intelligent machine, with the NVIDIA DRIVE™ Software stack acting as an open platform that empowers developers to design and deploy a diverse array of advanced applications for autonomous vehicles, including functions such as perception, localization and mapping, planning and control, driver monitoring, and natural language processing. Central to this software ecosystem is DRIVE OS, hailed as the inaugural operating system specifically engineered for secure accelerated computing. This robust system leverages NvMedia for sensor input processing, NVIDIA CUDA® libraries to enable effective parallel computing, and NVIDIA TensorRT™ for real-time AI inference, along with a variety of tools and modules that unlock hardware capabilities. Building on the foundation of DRIVE OS, the NVIDIA DriveWorks® SDK provides crucial middleware functionalities essential for the advancement of autonomous vehicles. Key features of this SDK include a sensor abstraction layer (SAL), multiple sensor plugins, a data recording system, vehicle I/O support, and a framework for deep neural networks (DNN), all of which are integral to improving the performance and dependability of autonomous systems. By harnessing these powerful resources, developers find themselves better prepared to explore innovative solutions and expand the horizons of automated transportation, fostering a future where smart vehicles can navigate complex environments with greater autonomy and safety.
- Previous
- You're on page 1
- Next