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JFrog Introduces Native Integration for Hugging Face, Delivering Robust Support for ML Models to Harmonize DevOps, Security and AI
DevOps teams, ML Engineers and Data Scientists can now store, secure, govern and manage AI components with confidence, including industry-first platform for

About this update from Jfrog Ltd.
[{"type":"text","content":"\nDevOps teams, ML Engineers and Data Scientists can now store, secure, govern and manage AI components with confidence, including industry-first platform for detecting malicious ML models\n\n\n SAN JOSE, Calif.--(BUSINESS WIRE)--\nswampUP — JFrog Ltd. (“JFrog”) (Nasdaq: FROG), the Liquid Software company and creators of the JFrog Software Supply Chain Platform, today introduced ML Model Management capabilities, an industry-first set of functionality designed to streamline the management and security of Machine Learning [ML] models. The new ML Model Management capabilities in the JFrog Platform bring AI deliveries in line with an organization’s existing DevOps and DevSecOps practices to accelerate, secure and govern the release of ML components.\n\nThis press release features multimedia. View the full release here: https://www.businesswire.com/news/home/20230913068121/en/JFrog introduces the first solution to bridge AI/ML development and DevSecOps (Graphic: Business Wire)\n“Today, Data Scientists, ML Engineers, and DevOps teams do not have a common process for delivering software. This can often introduce friction between teams, difficulty in scale, and a lack of standards in management and compliance across a portfolio,” said Yoav Landman, Co-founder and CTO, JFrog. \"Machine learning model artifacts are incomplete without Python and other packages they depend on and are often served using Docker containers. Our customers already trust JFrog as the gold standard for artifact management and DevSecOps processes. Data scientists and software engineers are the creators of modern AI capabilities, and already JFrog-native users. Therefore, we look at this release as the next logical step for us as we bring machine learning model management, as well as model security and compliance, into a unified software supply chain platform to help them deliver trusted software at scale in the era of AI.”\n\n\nAI and ML usage continues to grow rapidly. IDC Research indicates the worldwide AI/ML market, including software, hardware, and services, is forecast to grow 19.6 percent to over $500B in 2023. However, as more ML models are being moved to production, the end users often face challenges including cost, lack of automation, lack of expertise, and ability to scale.1\n\n\n\"It can take significant time and effort to deploy ML models into product...