- Популярные видео
- Авто
- Видео-блоги
- ДТП, аварии
- Для маленьких
- Еда, напитки
- Животные
- Закон и право
- Знаменитости
- Игры
- Искусство
- Комедии
- Красота, мода
- Кулинария, рецепты
- Люди
- Мото
- Музыка
- Мультфильмы
- Наука, технологии
- Новости
- Образование
- Политика
- Праздники
- Приколы
- Природа
- Происшествия
- Путешествия
- Развлечения
- Ржач
- Семья
- Сериалы
- Спорт
- Стиль жизни
- ТВ передачи
- Танцы
- Технологии
- Товары
- Ужасы
- Фильмы
- Шоу-бизнес
- Юмор
Red Hat AI & CoreWeave: Distributed AI Inference for Hybrid Cloud
Live May 27 at 1:15 PM ET
Running AI inference across hybrid environments — on-prem, multiple clouds, mixed GPUs — is where most enterprise AI strategies start to break down. Join Robert Shaw, Director of Engineering for Inference at Red Hat, and Urvashi Chowdhary, VP of Product Management at CoreWeave, for a live conversation on how Red Hat AI Inference — deployed on CoreWeave Kubernetes Service (CKS) — gives platform teams a consistent way to serve models across hybrid cloud environments.
What we'll cover:
- llm-d — the open source, Kubernetes-native distributed inference framework Red Hat and CoreWeave are building in collaboration with additional AI leaders.
- Why a hardware and model agnostic inference engine is essential as inference demand grows and is multiplied by agentic AI.
- How organizations are serving internal teams and AI agents from shared models and GPU infrastructure — and running those AI initiatives profitably in production.
Whether you're standing up your first production inference platform or scaling to hundreds of models, you'll leave with a clearer picture of what hybrid cloud inference looks like done right.
Resources
🔗 Red Hat AI Inference: red.ht/ai-inference
🔗 Red Hat AI Inference 60-day trial: red.ht/ai-inference-trial
🔗 Deploy Red Hat AI Inference on CoreWeave CKS: docs.coreweave.com/products/cks/tutorials/redhat-inference
🔗 llm-d open source project: llm-d.ai
👍 Like and subscribe for more on enterprise AI infrastructure, open source inference, and Kubernetes at scale.
#HybridCloud #AIInference #llmd #RedHatAI #CoreWeave #Kubernetes #GPUInfrastructure
Видео Red Hat AI & CoreWeave: Distributed AI Inference for Hybrid Cloud канала Red Hat
Running AI inference across hybrid environments — on-prem, multiple clouds, mixed GPUs — is where most enterprise AI strategies start to break down. Join Robert Shaw, Director of Engineering for Inference at Red Hat, and Urvashi Chowdhary, VP of Product Management at CoreWeave, for a live conversation on how Red Hat AI Inference — deployed on CoreWeave Kubernetes Service (CKS) — gives platform teams a consistent way to serve models across hybrid cloud environments.
What we'll cover:
- llm-d — the open source, Kubernetes-native distributed inference framework Red Hat and CoreWeave are building in collaboration with additional AI leaders.
- Why a hardware and model agnostic inference engine is essential as inference demand grows and is multiplied by agentic AI.
- How organizations are serving internal teams and AI agents from shared models and GPU infrastructure — and running those AI initiatives profitably in production.
Whether you're standing up your first production inference platform or scaling to hundreds of models, you'll leave with a clearer picture of what hybrid cloud inference looks like done right.
Resources
🔗 Red Hat AI Inference: red.ht/ai-inference
🔗 Red Hat AI Inference 60-day trial: red.ht/ai-inference-trial
🔗 Deploy Red Hat AI Inference on CoreWeave CKS: docs.coreweave.com/products/cks/tutorials/redhat-inference
🔗 llm-d open source project: llm-d.ai
👍 Like and subscribe for more on enterprise AI infrastructure, open source inference, and Kubernetes at scale.
#HybridCloud #AIInference #llmd #RedHatAI #CoreWeave #Kubernetes #GPUInfrastructure
Видео Red Hat AI & CoreWeave: Distributed AI Inference for Hybrid Cloud канала Red Hat
Комментарии отсутствуют
Информация о видео
1 мая 2026 г. 23:46:36
00:00:00
Другие видео канала


![[vLLM Office Hours #49] Latest Trends in AI Agent Applications and vLLM - May 18, 2026](https://i.ytimg.com/vi/tdoZ5-xq2GE/default.jpg)


