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New short course: Open Source Models with Hugging Face 🤗, taught by Maria Khalusova, Marc Sun, and Younes Belkada! Hugging Face has been a game changer by letting you quickly grab any of hundreds of thousands of already-trained open source models to assemble into new applications. This course teaches...

224,538 Aufrufe • vor 2 Jahren •via X (Twitter)

10 Kommentare

Profilbild von Leandro von Werra
Leandro von Werravor 2 Jahren

@mariaKhalusova @_marcsun @huggingface The one and only @younesbelkada!

Profilbild von Thomas Wolf
Thomas Wolfvor 2 Jahren

@mariaKhalusova @_marcsun @huggingface dream team 🤩

Profilbild von race
racevor 2 Jahren

@mariaKhalusova @_marcsun @huggingface Where do I get one of those shirts

Profilbild von Dankoyy
Dankoyyvor 2 Jahren

I really liked the course, but I believe it could be multilingual. When we talk about AI, courses on the themes could easily be translated into almost any language with extreme quality. This includes teaching the AI specific words that don't need translation. Advancing AI is also about reaching the most vulnerable and transforming their lives through the enhancement of productive capacity.

Profilbild von Suzana Ilić
Suzana Ilićvor 2 Jahren

@mariaKhalusova @_marcsun @huggingface Younes! amazing go go go!! 🔥 @younesbelkada

Profilbild von Nova Lead
Nova Leadvor 2 Jahren

@mariaKhalusova @_marcsun @huggingface Thrilled to see @huggingface leading the charge with their new course on Open Source Models! The power of collaboration and open-source innovation is truly transforming AI. Can't wait to explore the synergies between these models and our initiatives. The future of AI is bright

Profilbild von Arvind Nagaraj
Arvind Nagarajvor 2 Jahren

@mariaKhalusova @_marcsun @huggingface This is such a wonderful 🤗 course - nice to see multimodality get coverage! And so cool to see @younesbelkada code live! If you wish to understand multimodality in depth, please see my blog posts: 1. 2.

Profilbild von Matteo Troìa
Matteo Troìavor 2 Jahren

@mariaKhalusova @_marcsun @huggingface @Alessio_Zoccoli 😉😎

Profilbild von Wambugu Muchemi 🔬
Wambugu Muchemi 🔬vor 2 Jahren

@mariaKhalusova @_marcsun @huggingface I love the course. Well taught and insightful. Asante!

Profilbild von Toronto Consulting Group
Toronto Consulting Groupvor 2 Jahren

@mariaKhalusova @_marcsun @huggingface Wawawiwa!

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