A simple Python package that wraps existing model fine-tuning and generation scripts for OpenAI's GPT-2 text generation model (specifically the "small" 124M and "medium" 355M hyperparameter versions). Additionally, this package allows easier generation of text, generating to a file for easy curation, allowing for prefixes to force the text to start with a given phrase.
This package incorporates and makes minimal low-level changes to:
- Model management from OpenAI's official GPT-2 repo (MIT License)
- Model finetuning from Neil Shepperd's fork of GPT-2 (MIT License)
- Text generation output management from textgenrnn (MIT License / also created by me)
For finetuning, it is strongly recommended to use a GPU, although you can generate using a CPU (albeit much more slowly). If you are training in the cloud, using a Colaboratory notebook or a Google Compute Engine VM w/ the TensorFlow Deep Learning image is strongly recommended. (as the GPT-2 model is hosted on GCP)
You can use gpt-2-simple to retrain a model using a GPU for free in this Colaboratory notebook, which also demos additional features of the package.
python setup.py install
You will also need to install the corresponding TensorFlow for your system (e.g. tensorflow
or tensorflow-gpu
). TensorFlow 2.0 is currently not supported and the package will throw an assertion if loaded, so TensorFlow 1.14/1.15 is recommended.
An example for downloading the model to the local system, finetuning it on a dataset. and generating some text.
Warning: the pretrained 124M model, and thus any finetuned model, is 500 MB! (the pretrained 355M model is 1.5 GB)
import gpt_2_simple as gpt2
import os
import requests
model_name = "124M"
if not os.path.isdir(os.path.join("models", model_name)):
print(f"Downloading {model_name} model...")
gpt2.download_gpt2(model_name=model_name) # model is saved into current directory under /models/124M/
file_name = "shakespeare.txt"
if not os.path.isfile(file_name):
url = "https://raw.githubusercontent.com/karpathy/char-rnn/master/data/tinyshakespeare/input.txt"
data = requests.get(url)
with open(file_name, 'w') as f:
f.write(data.text)
sess = gpt2.start_tf_sess()
gpt2.finetune(sess,
file_name,
model_name=model_name,
steps=1000) # steps is max number of training steps
gpt2.generate(sess)
The generated model checkpoints are by default in /checkpoint/run1
. If you want to load a model from that folder and generate text from it:
import gpt_2_simple as gpt2
sess = gpt2.start_tf_sess()
gpt2.load_gpt2(sess)
gpt2.generate(sess)
As with textgenrnn, you can generate and save text for later use (e.g. an API or a bot) by using the return_as_list
parameter.
single_text = gpt2.generate(sess, return_as_list=True)[0]
print(single_text)
You can pass a run_name
parameter to finetune
and load_gpt2
if you want to store/load multiple models in a checkpoint
folder.
There is also a command-line interface for both finetuning and generation with strong defaults for just running on a Cloud VM w/ GPU. For finetuning (which will also download the model if not present):
gpt_2_simple finetune shakespeare.txt
And for generation, which generates texts to files in a gen
folder:
gpt_2_simple generate
Most of the same parameters available in the functions are available as CLI arguments, e.g.:
gpt_2_simple generate --temperature 1.0 --nsamples 20 --batch_size 20 --length 50 --prefix "<|startoftext|>" --truncate "<|endoftext|>" --include_prefix False --nfiles 5
See below to see what some of the CLI arguments do.
NB: Restart the Python session first if you want to finetune on another dataset or load another model.
The method GPT-2 uses to generate text is slightly different than those like other packages like textgenrnn (specifically, generating the full text sequence purely in the GPU and decoding it later), which cannot easily be fixed without hacking the underlying model code. As a result:
- In general, GPT-2 is better at maintaining context over its entire generation length, making it good for generating conversational text. The text is also generally gramatically correct, with proper capitalization and few typoes.
- The original GPT-2 model was trained on a very large variety of sources, allowing the model to incorporate idioms not seen in the input text.
- GPT-2 can only generate a maximum of 1024 tokens per request (about 3-4 paragraphs of English text).
- GPT-2 cannot stop early upon reaching a specific end token. (workaround: pass the
truncate
parameter to agenerate
function to only collect text until a specified end token. You may want to reducelength
appropriately.) - Higher temperatures work better (e.g. 0.7 - 1.0) to generate more interesting text, while other frameworks work better between 0.2 - 0.5.
- When finetuning GPT-2, it has no sense of the beginning or end of a document within a larger text. You'll need to use a bespoke character sequence to indicate the beginning and end of a document. Then while generating, you can specify a
prefix
targeting the beginning token sequences, and atruncate
targeting the end token sequence. You can also setinclude_prefix=False
to discard the prefix token while generating (e.g. if it's something unwanted like<|startoftext|>
). - If you pass a single-column
.csv
file tofinetune()
, it will automatically parse the CSV into a format ideal for training with GPT-2 (including prepending<|startoftext|>
and suffixing<|endoftext|>
to every text document, so thetruncate
tricks above are helpful when generating output). This is necessary to handle both quotes and newlines in each text document correctly. - GPT-2 allows you to generate texts in parallel by setting a
batch_size
that is divisible intonsamples
, resulting in much faster generation. Works very well with a GPU (can setbatch_size
up to 20 on Colaboratory's K80)! - Due to GPT-2's architecture, it scales up nicely with more powerful GPUs. For the 124M model, if you want to train for longer periods of time, GCP's P100 GPU is about 3x faster than a K80/T4 for only 3x the price, making it price-comparable (the V100 is about 1.5x faster than the P100 but about 2x the price). The P100 uses 100% of the GPU even with
batch_size=1
, and about 88% of the V100 GPU. - If you have a partially-trained GPT-2 model and want to continue finetuning it, you can set
overwrite=True
to finetune, which will continue training and remove the previous iteration of the model without creating a duplicate copy. This can be especially useful for transfer learning (e.g. heavily finetune GPT-2 on one dataset, then finetune on other dataset to get a "merging" of both datasets). - If your input text dataset is massive (>100 MB), you may want to preencode and compress the dataset using
gpt2.encode_dataset(file_path)
. THe output is a compressed.npz
file which will load much faster into the GPU for finetuning. - The 774M "large" model may support finetuning because it will cause modern GPUs to go out-of-memory (you may get lucky if you use a P100 GPU on Colaboratory). However, you can still generate from the default pretrained model using
gpt2.load_gpt2(sess, model_name='774M')
andgpt2.generate(sess, model_name='774M')
. - The 1558M "extra large", true model, may not work out-of-the-box with the GPU included with the Colaboratory Notebook. More testing is needed to identify optimial configurations for it.
- gpt2-small — App using the default GPT-2 124M pretrained model
- gpt2-reddit — App to generate Reddit titles based on a specified subreddit and/or keyword(s)
- gpt2-mtg — App to generate Magic: The Gathering cards
- ResetEra — Generated video game forum discussions (GitHub w/ dumps)
- /r/legaladvice — Title generation (GitHub w/ dumps)
- Hacker News — Tens of thousands of generated Hacker News submission titles
Max Woolf (@minimaxir)
Max's open-source projects are supported by his Patreon. If you found this project helpful, any monetary contributions to the Patreon are appreciated and will be put to good creative use.
MIT
This repo has no affiliation or relationship with OpenAI.