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A Python package for a BearingPoint internal LLM course

Project description

LLM101

Nybegynnerkurs i enkel bruk av språkmodeller.

Kom i gang

For å delta i kurset, åpne notebook-en ved å klikke på knappen under:

Open In Colab

💡 Tips: Bruk CTRL + klikk (eller CMD + klikk på Mac) for å åpne notebook-en i en ny fane.

Får du gammel versjon?

  • Prøv å oppdatere siden (F5 eller CTRL+R)
  • Tøm nettleser-cache (CTRL+Shift+R)
  • Eller åpne dette alternativet: Direkte GitHub-link og klikk "Open in Colab" øverst i filen

Ser du ikke "Open in Colab" på GitHub?

  • Gå til colab.research.google.com
  • Klikk "GitHub" fanen
  • Søk etter: bearingpoint-no/LLM101
  • Velg branch: main
  • Klikk på LLM101_FINAL_2_EF_30mai.ipynb

Notebook-en inneholder alt kursmateriale og interaktive øvelser.


Gamle notater

  • Et mer relevant dataset, liknende et faktisk usecase
  • Ressoneringsmodell for laging av kategorier
  • Først gi noen kategorier ("hva bedriften tror") + other, be de kategorisere inn i de
  • Deretter be de finne kategoriene selv
  • Fortell om data engineering
  • SU: Begynn så enkelt som mulig, ikke overkompliser det. Utvid heller om det ikke funger, reiterer, burk feedbacken fra modellen til å gjøre dine prompts tydeligere
  • Et poeng som er kult å få inn: Noe nesting av structured outputs
  • Spør Arne om dato for mini-modellen

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