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Learn how to build an optimized LLM inference system from the ground up in our new short course, Efficiently Serving LLMs, built in collaboration with Predibase by Rubrik and taught by Travis Addair. Whether you're serving your own LLM or using a model hosting service, this course will give...

104,727 Aufrufe • vor 2 Jahren •via X (Twitter)

8 Kommentare

Profilbild von AI Architect 🤖🔧
AI Architect 🤖🔧vor 2 Jahren

@predibase @TravisAddair Thanks. This course will help to make production-grade LLM applications. But, if someone wants to learn Generative AI as a whole in less time, then here’s the roadmap🔥:

Profilbild von SaaS Growth Strategies
SaaS Growth Strategiesvor 2 Jahren

@predibase @TravisAddair Thank you for this course and making this knowledge accessible for everyone.

Profilbild von mfreeman451
mfreeman451vor 2 Jahren

@predibase @TravisAddair batching is 🔥!!

Profilbild von Oliver
Olivervor 2 Jahren

@predibase @TravisAddair Seems interesting

Profilbild von GoPartnering
GoPartneringvor 2 Jahren

@predibase @TravisAddair Jump into optimizing LLMs with this course! Solo or with a hosting service, you'll learn to serve faster and smarter. Ready for some digital speed without the spill? Gear up for optimization! 🚀 Dive in!

Profilbild von Rerurue
Reruruevor 2 Jahren

@predibase @TravisAddair So sad that I can't find your original ML course, can we start having courses the way they used to be?

Profilbild von Rerurue
Reruruevor 2 Jahren

@predibase @TravisAddair Once again they found something I appreciate learning and destroyed it...

Profilbild von Bharat Aurangabadkar
Bharat Aurangabadkarvor 2 Jahren

have a different view as the prompt changes ownership from human to machines. The first level of fine-tuning involves checking parameters and understanding the data an LLM (Language Model) is trained on, especially in the case of open-source models. The type of data required for training will be managed by NLP-based foundational agents. Humans will then step in at the second level to provide further instructions for refactoring and training tweets, with confirmation. I understand; no need to worry about hallucinating.”

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