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How can you solve complex tasks using a Large Language Model? Here is a 2-minute introduction to everything you need to know to 10x the quality of your results. Let's talk about three techniques, in order of complexity, starting with the easiest one: • In-Context Learning • Indexing +...

384,482 Aufrufe • vor 3 Jahren •via X (Twitter)

10 Kommentare

Profilbild von Santiago
Santiagovor 3 Jahren

How should I talk about these topics going forward?

Profilbild von Andres Segura-Tinoco
Andres Segura-Tinocovor 3 Jahren

What a great video! In fact, you answered a question I had been asking myself last week. Congratulations, Santiago, on such quality content.

Profilbild von Santiago
Santiagovor 3 Jahren

Thank you man! I'm glad it was helpful.

Profilbild von Emre YILMAZ
Emre YILMAZvor 3 Jahren

Great explanation as always. Although I already know some of the topics you cover, your take on the narration comes with a great taste. Helps me rethink the way I teach/explain the same concepts. Thank you. By the way, I loved that this time it's a video explainer.

Profilbild von Santiago
Santiagovor 3 Jahren

Thanks, Emre! Yeah, trying to simplify these concepts for people that aren't too deep into this helps me a lot as well.

Profilbild von ghosthabanero.eth (👻,🌶)
ghosthabanero.eth (👻,🌶)vor 3 Jahren

Love the text and video format together. You can pick up different info in each format.

Profilbild von AleAR
AleARvor 3 Jahren

When making chunks of a large corp of text, a Pinecone representative told me to use a couple of lines or an entire paragraph as an overlap text that connects one chunk to another, in order to deal with the limit of tokens the models has and make them able to flow along the text.

Profilbild von Santiago
Santiagovor 3 Jahren

I have to think about this, but I think it makes sense.

Profilbild von Pau Labarta Bajo
Pau Labarta Bajovor 3 Jahren

Love the video @svpino !

Profilbild von Santiago
Santiagovor 3 Jahren

Thanks, Pau!

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