metadata
license: mit
datasets:
- DarwinAnim8or/greentext
language:
- en
tags:
- fun
- greentext
widget:
- text: '>be me'
example_title: be me
co2_eq_emissions:
emissions: 60
source: https://mlco2.github.io/impact/#compute
training_type: fine-tuning
geographical_location: Oregon, USA
hardware_used: 1 T4, Google Colab
GPT-Greentext-125m
A finetuned version of GPT2-Medium on the 'greentext' dataset. (Linked above) A demo is available here The demo playground is recommended over the inference box on the right.
Training Procedure
This was trained on the 'greentext' dataset, using the "HappyTransformers" library on Google Colab. This model was trained for 8 epochs with learning rate 1e-2.
Biases & Limitations
This likely contains the same biases and limitations as the original GPT2 that it is based on, and additionally heavy biases from the greentext dataset. It likely will generate offensive output.
Intended Use
This model is meant for fun, nothing else.
Sample Use
#Import model:
from happytransformer import HappyGeneration
happy_gen = HappyGeneration("GPT2", "DarwinAnim8or/GPT-Greentext-355m")
#Set generation settings:
from happytransformer import GENSettings
args_top_k = GENSettingsGENSettings(no_repeat_ngram_size=3, do_sample=True, top_k=80, temperature=0.8, max_length=150, early_stopping=False)
#Generate a response:
result = happy_gen.generate_text(""">be me
>""", args=args_top_k)
print(result)
print(result.text)