This package provides spaCy components to use pretrained Hugging Face Transformers pipelines for inference only.
- Apply pretrained transformers models like
dslim/bert-base-NER
anddistilbert-base-uncased-finetuned-sst-2-english
.
Installing the package from pip will automatically install all dependencies, including PyTorch and spaCy.
pip install -U pip setuptools wheel
pip install spacy-huggingface-pipelines
For GPU installation, follow the spaCy installation quickstart with GPU, e.g.
pip install -U spacy[cuda12x]
If you are having trouble installing PyTorch, follow the instructions on the official website for your specific operating system and requirements.
This module provides spaCy wrappers for the inference-only transformers
TokenClassificationPipeline
and
TextClassificationPipeline
pipelines.
The models are downloaded on initialization from the Hugging Face Hub if they're not already in your local cache, or alternatively they can be loaded from a local path.
Note that the transformer model data is not saved with the pipeline when you
call nlp.to_disk
, so if you are loading pipelines in an environment with
limited internet access, make sure the model is available in your
transformers cache directory
and enable offline mode if needed.
Config settings for hf_token_pipe
:
[components.hf_token_pipe]
factory = "hf_token_pipe"
model = "dslim/bert-base-NER" # Model name or path
revision = "main" # Model revision
aggregation_strategy = "average" # "simple", "first", "average", "max"
stride = 16 # If stride >= 0, process long texts in
# overlapping windows of the model max
# length. The value is the length of the
# window overlap in transformer tokenizer
# tokens, NOT the length of the stride.
kwargs = {} # Any additional arguments for
# TokenClassificationPipeline
alignment_mode = "strict" # "strict", "contract", "expand"
annotate = "ents" # "ents", "pos", "spans", "tag"
annotate_spans_key = null # Doc.spans key for annotate = "spans"
scorer = null # Optional scorer
model
: The model name or path.revision
: The model revision. For production use, a specific git commit is recommended instead of the defaultmain
.stride
: Forstride >= 0
, the text is processed in overlapping windows where thestride
setting specifies the number of overlapping tokens between windows (NOT the stride length). Ifstride
isNone
, then the text may be truncated.stride
is only supported for fast tokenizers.aggregation_strategy
: The aggregation strategy determines the word-level tags for cases where subwords within one word do not receive the same predicted tag. See: https://huggingface.co/docs/transformers/main_classes/pipelines#transformers.TokenClassificationPipeline.aggregation_strategykwargs
: Any additional arguments toTokenClassificationPipeline
.
alignment_mode
determines how transformer predictions are aligned to spaCy token boundaries as described forDoc.char_span
.annotate
andannotate_spans_key
configure how the annotation is saved to the spaCy doc. You can save the output astoken.tag_
,token.pos_
(only for UPOS tags),doc.ents
ordoc.spans
.
- Save named entity annotation as
Doc.ents
:
import spacy
nlp = spacy.blank("en")
nlp.add_pipe("hf_token_pipe", config={"model": "dslim/bert-base-NER"})
doc = nlp("My name is Sarah and I live in London")
print(doc.ents)
# (Sarah, London)
- Save named entity annotation as
Doc.spans[spans_key]
and scores asDoc.spans[spans_key].attrs["scores"]
:
import spacy
nlp = spacy.blank("en")
nlp.add_pipe(
"hf_token_pipe",
config={
"model": "dslim/bert-base-NER",
"annotate": "spans",
"annotate_spans_key": "bert-base-ner",
},
)
doc = nlp("My name is Sarah and I live in London")
print(doc.spans["bert-base-ner"])
# [Sarah, London]
print(doc.spans["bert-base-ner"].attrs["scores"])
# [0.99854773, 0.9996215]
- Save fine-grained tags as
Token.tag
:
import spacy
nlp = spacy.blank("en")
nlp.add_pipe(
"hf_token_pipe",
config={
"model": "QCRI/bert-base-multilingual-cased-pos-english",
"annotate": "tag",
},
)
doc = nlp("My name is Sarah and I live in London")
print([t.tag_ for t in doc])
# ['PRP$', 'NN', 'VBZ', 'NNP', 'CC', 'PRP', 'VBP', 'IN', 'NNP']
- Save coarse-grained tags as
Token.pos
:
import spacy
nlp = spacy.blank("en")
nlp.add_pipe(
"hf_token_pipe",
config={"model": "vblagoje/bert-english-uncased-finetuned-pos", "annotate": "pos"},
)
doc = nlp("My name is Sarah and I live in London")
print([t.pos_ for t in doc])
# ['PRON', 'NOUN', 'AUX', 'PROPN', 'CCONJ', 'PRON', 'VERB', 'ADP', 'PROPN']
Config settings for hf_text_pipe
:
[components.hf_text_pipe]
factory = "hf_text_pipe"
model = "distilbert-base-uncased-finetuned-sst-2-english" # Model name or path
revision = "main" # Model revision
kwargs = {} # Any additional arguments for
# TextClassificationPipeline
scorer = null # Optional scorer
The input texts are truncated according to the transformers model max length.
model
: The model name or path.revision
: The model revision. For production use, a specific git commit is recommended instead of the defaultmain
.kwargs
: Any additional arguments toTextClassificationPipeline
.
import spacy
nlp = spacy.blank("en")
nlp.add_pipe(
"hf_text_pipe",
config={"model": "distilbert-base-uncased-finetuned-sst-2-english"},
)
doc = nlp("This is great!")
print(doc.cats)
# {'POSITIVE': 0.9998694658279419, 'NEGATIVE': 0.00013048505934420973}
Both token and text classification support batching with nlp.pipe
:
for doc in nlp.pipe(texts, batch_size=256):
do_something(doc)
If the component runs into an error processing a batch (e.g. on an empty text),
nlp.pipe
will back off to processing each text individually. If it runs into
an error on an individual text, a warning is shown and the doc is returned
without additional annotation.
Switch to GPU:
import spacy
spacy.require_gpu()
for doc in nlp.pipe(texts):
do_something(doc)
Please report bugs in the spaCy issue tracker or open a new thread on the discussion board for other issues.