Scikit-learn style model finetuning for NLP
Finetune
ships with pre-trained language models
from "Improving Language Understanding by Generative Pre-Training" (GPT)
and "Language Models are Unsupervised Multitask Learners" (GPT-2). Base model code has been adapated from the GPT and GPT-2 github repos.
Huge thanks to Alec Radford and Jeff Wu for their hard work and quality research.
Finetuning the base language model is as easy as calling Classifier.fit
:
model = Classifier() # Load base model
model.fit(trainX, trainY) # Finetune base model on custom data
predictions = model.predict(testX) # [{'class_1': 0.23, 'class_2': 0.54, ..}, ..]
model.save(path) # Serialize the model to disk
Reload saved models from disk by using LanguageModelClassifier.load
:
model = Classifier.load(path)
predictions = model.predict(testX)
If you have large amounts of unlabeled training data and only a small amount of labeled training data, you can finetune in two steps for best performance.
model = Classifier() # Load base model
model.fit(unlabeledX) # Finetune base model on unlabeled training data
model.fit(trainX, trainY) # Continue finetuning with a smaller amount of labeled data
predictions = model.predict(testX) # [{'class_1': 0.23, 'class_2': 0.54, ..}, ..]
model.save(path) # Serialize the model to disk
Full documentation and an API Reference for finetune
is available at finetune.indico.io.
Finetune can be installed directly from PyPI by using pip
pip3 install finetune
or installed directly from source:
git clone -b master https://github.com/IndicoDataSolutions/finetune && cd finetune
python3 setup.py develop # symlinks the git directory to your python path
pip3 install tensorflow-gpu --upgrade # or tensorflow-cpu
python3 -m spacy download en # download spacy tokenizer
In order to run finetune
on your host, you'll need a working copy of CUDA >= 8.0, libcudnn >= 6, tensorflow-gpu >= 1.6 and up to date nvidia-driver versions.
You can optionally run the provided test suite to ensure installation completed successfully.
pip3 install pytest
pytest
If you'd prefer you can also run finetune
in a docker container. The bash scripts provided assume you have a functional install of docker and nvidia-docker.
git clone https://github.com/IndicoDataSolutions/finetune && cd finetune
# For usage with NVIDIA GPUs
./docker/build_gpu_docker.sh # builds a docker image
./docker/start_gpu_docker.sh # starts a docker container in the background, forwards $PWD to /finetune
docker exec -it finetune bash # starts a bash session in the docker container
For CPU-only usage:
./docker/build_cpu_docker.sh
./docker/start_cpu_docker.sh
finetune
ships with a half dozen different classes for finetuning the base language model on different task types.
Classifier
Regressor
SequenceLabeler
MultiFieldClassifier
MultiFieldRegressor
MultiLabelClassifier
Comparison
OrdinalRegressor
ComparisonOrdinalRegressor
MultiTask
For example usage of each of these model types, see the finetune/datasets directory. For purposes of simplicity and runtime these examples use smaller versions of the published datasets.