A no-strings inference implementation framework Named Entity Recognition (NER) service of wrapped AI models powered by AREkit and the related text-processing pipelines.
The key benefits of this tiny framework are as follows:
- ☑️ Native support of batching;
- ☑️ Native long-input contexts handling.
pip install bulk-ner==0.24.1
This is an example for using DeepPavlov==1.3.0
as an adapter for NER models passed via --adapter
parameter:
python -m bulk_ner.annotate \
--src "test/data/test.tsv" \
--prompt "{text}" \
--batch-size 10 \
--adapter "dynamic:models/dp_130.py:DeepPavlovNER" \
--output "test-annotated.jsonl" \
%% \
--model "ner_ontonotes_bert_mult"
You can choose the other models via --model
parameter.
List of the supported models is available here: https://docs.deeppavlov.ai/en/master/features/models/NER.html
Quick example: Check out the default DeepPavlov wrapper implementation
All you have to do is to implement the BaseNER
class that has the following protected method:
_forward(sequences)
-- expected to return two lists of the same length:terms
-- related to the list of atomic elements of the text (usually words)labels
-- B-I-O labels for each term.
- AREkit [github]