We’re joyful to announce the primary releases of hfhub and tok at the moment are on CRAN.
hfhub is an R interface to Hugging Face Hub, permitting customers to obtain and cache information
from Hugging Face Hub whereas tok implements R bindings for the Hugging Face tokenizers
library.
Hugging Face quickly grew to become the platform to construct, share and collaborate on
deep studying functions and we hope these integrations will assist R customers to
get began utilizing Hugging Face instruments in addition to constructing novel functions.
We even have beforehand introduced the safetensors
bundle permitting to learn and write information within the safetensors format.
hfhub
hfhub is an R interface to the Hugging Face Hub. hfhub at present implements a single
performance: downloading information from Hub repositories. Mannequin Hub repositories are
primarily used to retailer pre-trained mannequin weights along with every other metadata
essential to load the mannequin, such because the hyperparameters configurations and the
tokenizer vocabulary.
Downloaded information are ached utilizing the identical structure because the Python library, thus cached
information will be shared between the R and Python implementation, for simpler and faster
switching between languages.
We already use hfhub within the minhub bundle and
within the ‘GPT-2 from scratch with torch’ weblog put up to
obtain pre-trained weights from Hugging Face Hub.
You should utilize hub_download()
to obtain any file from a Hugging Face Hub repository
by specifying the repository id and the trail to file that you just need to obtain.
If the file is already within the cache, then the perform returns the file path imediately,
in any other case the file is downloaded, cached after which the entry path is returned.
<- hfhub::hub_download("gpt2", "mannequin.safetensors")
path
path#> /Customers/dfalbel/.cache/huggingface/hub/models--gpt2/snapshots/11c5a3d5811f50298f278a704980280950aedb10/mannequin.safetensors
tok
Tokenizers are chargeable for changing uncooked textual content into the sequence of integers that
is commonly used because the enter for NLP fashions, making them an vital element of the
NLP pipelines. If you’d like a better stage overview of NLP pipelines, you would possibly need to learn
our earlier weblog put up ‘What are Giant Language Fashions? What are they not?’.
When utilizing a pre-trained mannequin (each for inference or for nice tuning) it’s very
necessary that you just use the very same tokenization course of that has been used throughout
coaching, and the Hugging Face workforce has executed an incredible job ensuring that its algorithms
match the tokenization methods used most LLM’s.
tok gives R bindings to the 🤗 tokenizers library. The tokenizers library is itself
applied in Rust for efficiency and our bindings use the extendr mission
to assist interfacing with R. Utilizing tok we are able to tokenize textual content the very same means most
NLP fashions do, making it simpler to load pre-trained fashions in R in addition to sharing
our fashions with the broader NLP neighborhood.
tok will be put in from CRAN, and at present it’s utilization is restricted to loading
tokenizers vocabularies from information. For instance, you’ll be able to load the tokenizer for the GPT2
mannequin with:
<- tok::tokenizer$from_pretrained("gpt2")
tokenizer <- tokenizer$encode("Good day world! You should utilize tokenizers from R")$ids
ids
ids#> [1] 15496 995 0 921 460 779 11241 11341 422 371
$decode(ids)
tokenizer#> [1] "Good day world! You should utilize tokenizers from R"
Areas
Bear in mind which you could already host
Shiny (for R and Python) on Hugging Face Areas. For instance, we’ve constructed a Shiny
app that makes use of:
- torch to implement GPT-NeoX (the neural community structure of StableLM – the mannequin used for chatting)
- hfhub to obtain and cache pre-trained weights from the StableLM repository
- tok to tokenize and pre-process textual content as enter for the torch mannequin. tok additionally makes use of hfhub to obtain the tokenizer’s vocabulary.
The app is hosted at on this House.
It at present runs on CPU, however you’ll be able to simply change the the Docker picture if you would like
to run it on a GPU for sooner inference.
The app supply code can also be open-source and will be discovered within the Areas file tab.
Wanting ahead
It’s the very early days of hfhub and tok and there’s nonetheless a variety of work to do
and performance to implement. We hope to get neighborhood assist to prioritize work,
thus, if there’s a characteristic that you’re lacking, please open a problem within the
GitHub repositories.
Reuse
Textual content and figures are licensed underneath Artistic Commons Attribution CC BY 4.0. The figures which were reused from different sources do not fall underneath this license and will be acknowledged by a observe of their caption: “Determine from …”.
Quotation
For attribution, please cite this work as
Falbel (2023, July 12). Posit AI Weblog: Hugging Face Integrations. Retrieved from https://blogs.rstudio.com/tensorflow/posts/2023-07-12-hugging-face-integrations/
BibTeX quotation
@misc{hugging-face-integrations, creator = {Falbel, Daniel}, title = {Posit AI Weblog: Hugging Face Integrations}, url = {https://blogs.rstudio.com/tensorflow/posts/2023-07-12-hugging-face-integrations/}, 12 months = {2023} }