Edit model card

GPT-Neo 125M finetuned with beer recipes

Model Description

GPT-Neo 125M is a transformer model based on EleutherAI's replication of the GPT-3 architecture https://huggingface.co/EleutherAI/gpt-neo-125M. It generates recipes for brewing beer in a YAML-like format which can be easily used for different purposes.

Training data

This model was trained on a custom dataset of ~ 76,800 beer recipes from the internet. It includes recipes for the following styles of beer:

  • Strong American Ale
  • Pale American Ale
  • India Pale Ale (IPA)
  • Standard American Beer
  • Stout
  • English Pale Ale
  • IPA
  • American Porter and Stout
  • Sour Ale
  • Irish Beer
  • Strong British Ale
  • Belgian and French Ale
  • German Wheat and Rye Beer
  • Czech Lager
  • Spice/Herb/Vegetable Beer
  • Specialty Beer
  • American Ale
  • Pilsner
  • Belgian Ale
  • Strong Belgian Ale
  • Bock
  • Brown British Beer
  • German Wheat Beer
  • Fruit Beer
  • Amber Malty European Lager
  • Pale Malty European Lager
  • British Bitter
  • Amber and Brown American Beer
  • Light Hybrid Beer
  • Pale Commonwealth Beer
  • American Wild Ale
  • European Amber Lager
  • Belgian Strong Ale
  • International Lager
  • Amber Bitter European Lager
  • Light Lager
  • Scottish and Irish Ale
  • European Sour Ale
  • Trappist Ale
  • Strong European Beer
  • Porter
  • Historical Beer
  • Pale Bitter European Beer
  • Amber Hybrid Beer
  • Smoke Flavored/Wood-Aged Beer
  • Spiced Beer
  • Dark European Lager
  • Alternative Fermentables Beer
  • Mead
  • Strong Ale
  • Dark British Beer
  • Scottish Ale
  • Smoked Beer
  • English Brown Ale
  • Dark Lager
  • Cider or Perry
  • Wood Beer

How to use

You can use this model directly with a pipeline for text generation. This example generates a different recipe each time it's run:

>>> from transformers import pipeline
>>> generator = pipeline('text-generation', model='b3ck1/gpt-neo-125M-finetuned-beer-recipes')
>>> generator("style: Pilsner\nbatch_size: 20\nefficiency: 75\nboil_size:", do_sample=True, min_length=50, max_length=500)
>>> print(output[0]['generated_text'])

style: Pilsner
batch_size: 20
efficiency: 70
boil_size: 24
boil_time: 60
fermentables:
- name: Pale Ale
  type: Grain
  amount: 6.5
hops:
- name: Saaz
  alpha: 3.5
  use: Boil
  time: 60
  amount: 0.06
- name: Saaz
  alpha: 3.5
  use: Boil
  time: 30
  amount: 0.06
- name: Saaz
  alpha: 3.5
  use: Boil
  time: 10
  amount: 0.06
- name: Saaz
  alpha: 3.5
  use: Boil
  time: 0
  amount: 0.06
yeasts:
- name: Safale - American Ale Yeast US-05
  amount: 0.11
  min_temperature: 12
  max_temperature: 25
primary_temp: null
mash_steps:
- step_temp: 65
  step_time: 60
miscs: []

See this model in action

This model was used to build https://beerai.net.

Downloads last month
87
Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.