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New short course Multimodal RAG: Chat with Videos, developed with Intel and taught by vasudevlal! In this course, you’ll work with LLaVA (Large Language and Vision Assistant), a Large Vision Language Model (LVLM) that can process both images and text. For example, given an image of a person doing...

107,548 次观看 • 1 年前 •via X (Twitter)

10 条评论

Intel Business 的头像
Intel Business1 年前

We're thrilled that so many customers are learning how to save time and cost by a RAG approach for models. #StartsWithIntel

AIxBlock 的头像
AIxBlock1 年前

@intel @vasudev_lal Inspiring and insightful! Much appreciate your effort

JigyasaAI_ML 的头像
JigyasaAI_ML1 年前

@intel @vasudev_lal 👌👌

Brick Maier 的头像
Brick Maier1 年前

@intel @vasudev_lal Wow this course looks amazing!

Heshan Chandeepa 的头像
Heshan Chandeepa1 年前

@intel @vasudev_lal 👌

Jorge Toullier 的头像
Jorge Toullier1 年前

@intel @vasudev_lal 💯🙌 This course is what I was looking for!

Steven Song 的头像
Steven Song1 年前

@intel @vasudev_lal I think people will be eager to sign up as the course is taught by a professional who works at well known tech company. Mr. Lal

Eddie Austin 的头像
Eddie Austin1 年前

@intel @vasudev_lal @hbfreed relevant 👀

Greg Lavender 的头像
Greg Lavender1 年前

@intel @vasudev_lal In collaboration with @AndrewNg and @DeepLearningAI, we are excited to introduce a new course: Multimodal RAG: Chat with Video. Proud the course is powered by models hosted on Intel Gaudi2 cluster in Get started today:

Nxia 的头像
Nxia1 年前

@intel @vasudev_lal Thank you Vasudev. I am grateful for your phenomenal teaching skills. I was lost and you clear it up well. Dr Ng-🫡, thank you too.

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74,060 次观看 • 1 年前

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89,257 次观看 • 10 个月前

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AK

23,958 次观看 • 1 年前

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128,085 次观看 • 1 年前