Press ReleaseArtificial IntelligenceDevice & IoT

JFrog, NVIDIA Partner to Secure Accelerated Agentic AI Development

New Full-Stack, Validated Design Aims to Accelerate AI/ML Model Engineering, Security, Operations, and Delivery for the AI-powered Enterprise

JFrog Ltd, the Liquid Software company and creators of the award-winning JFrog Software Supply Chain Platform, recently announced the integration of its foundational DevSecOps tools with the NVIDIA Enterprise AI Factory validated design. JFrog will serve as the cornerstone software artifact repository and secure model registry for the landmark agentic AI (Artificial Intelligence) architecture.

Following a successful NVIDIA NIM integration with the JFrog Platform, this new collaboration delivers a full-spectrum MLOps solution, designed to ensure scalable, secure, and seamless deployment of AI-powered applications using the NVIDIA Blackwell platform.

“The future of AI depends not only on innovation, but on trust, control, and seamless execution,” said Shlomi Ben Haim, CEO and Co-Founder of JFrog. “To deliver AI at scale, enterprises need to adopt the same concepts applied to software: developer-friendly workflows, strong security, robust governance, and full lifecycle management. Machine Learning (ML) models are binaries, and they must be managed as first-class software artifacts. That’s why we’re excited to partner with NVIDIA to bring JFrog’s Software Supply Chain Platform as the single source of truth for all software and AI assets to the NVIDIA Enterprise AI Factory so organisations can build and scale trusted AI solutions with confidence.”

JFrog and NVIDIA Deliver Critical Infrastructure to Enable Future AI Innovation

The JFrog Platform provides customers with a “single source of truth” for software components within NVIDIA Enterprise AI Factory, which contains an integrated and validated suite of software technology solutions enterprises can use to develop, deploy, and manage agentic AI, physical AI, and HPC workloads on-premises. This validated design aims to allow organisations to have full control of their data and operate advanced AI agents in a secure environment.

Key capabilities include:

  • Secure and Governed Software Component Visibility: Enables all ML models, engines, and software artifacts to be scanned for security issues, versioned, governed, and traceable across the entire software development lifecycle.
  • End-to-End Software Artifact and ML Model Management: Enables the seamless pulling, uploading, and hosting of AI models and datasets, AI containers, Docker containers, and dependencies optimised for the NVIDIA Enterprise AI Factory validated design.
  • Rapid, Trusted AI/ML Application Provisioning in Runtime: Simplifies configuration of AI environments by eliminating the need for runtime environments to pull components from outside of the organisation, thanks to the universality, proven scalability and robustness of JFrog Artifactory.
  • Future-proofed for Evolving GenAI Applications: Quickly and easily manages ML model versioning and upgrades to new and approved model generations.

“Enterprises building AI factories need to manage the complexity of AI adoption while ensuring performance, governance and trust,” said Justin Boitano, Vice President, Enterprise AI Software Products, at NVIDIA. “JFrog’s unified software supply chain platform, paired with the NVIDIA Enterprise AI Factory validated design, enables rapid, responsible AI innovation at scale.”

The integration is designed to enable the JFrog Platform to run natively on NVIDIA Blackwell systems to help reduce latency and process tasks with unparalleled performance, efficiency, and scale. It supports a wide range of AI-enabled enterprise applications, agentic and physical AI workflows, autonomous decision-making, and real-time data analysis across various industries, including financial services, healthcare, telecommunications, retail, media, and manufacturing. Additionally, the system leverages NVIDIA’s engineering know-how and partner ecosystem to help enterprises accelerate time-to-value and mitigate the risks of AI deployment.

Those interested in learning more about JFrog and NVIDIA integrations or going hands-on with the NVIDIA NIM trial should visit https://jfrog.com/jfrog-and-nvidia/.

Martin Dale Bolima

Martin has been a Technology Journalist at Asia Online Publishing Group (AOPG) since July 2021, tasked primarily to handle the company’s Disruptive Tech Asia and Disruptive Tech News online portals. He also contributes to Cybersecurity ASEAN and Data&Storage ASEAN, with his main areas of interest being artificial intelligence and machine learning, cloud computing and cybersecurity. A seasoned writer and editor, Martin holds a degree in Journalism from the University of Santo Tomas in the Philippines. He began his professional career back in 2006 as a writer-editor for the University Press of First Asia, one of the premier academic publishers in the Philippines. He next dabbled in digital marketing as an SEO writer while also freelancing as a sports and features writer.

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