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@@ -36,11 +36,6 @@ tokenizer = AutoTokenizer.from_pretrained("new5558/HoogBERTa")
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  model = AutoModel.from_pretrained("new5558/HoogBERTa")
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  ```
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- To annotate POS, NE, and clause boundary, use the following commands
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- ```
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-
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- ```
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-
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  To extract token features, based on the RoBERTa architecture, use the following commands
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  ```python
@@ -87,6 +82,14 @@ with torch.no_grad():
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  features = model(token_ids, output_hidden_states = True).hidden_states[-1] # where token_ids is a tensor with type "long".
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  ```
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  ## Conversion Code
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  If you are interested in how to convert Fairseq and subword-nmt Roberta into Huggingface hub here is my code used to do the conversion and test for parity match:
 
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  model = AutoModel.from_pretrained("new5558/HoogBERTa")
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  ```
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  To extract token features, based on the RoBERTa architecture, use the following commands
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  ```python
 
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  features = model(token_ids, output_hidden_states = True).hidden_states[-1] # where token_ids is a tensor with type "long".
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  ```
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+ # Huggingface Models
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+ 1. `HoogBERTaEncoder`
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+ - [HoogBERTa](https://huggingface.co/new5558/HoogBERTa): `Feature Extraction` and `Mask Language Modeling`
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+ 2. `HoogBERTaMuliTaskTagger`:
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+ - [HoogBERTa-NER-lst20](https://huggingface.co/new5558/HoogBERTa-NER-lst20): `Named-entity recognition (NER)` based on LST20
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+ - [HoogBERTa-POS-lst20](https://huggingface.co/new5558/HoogBERTa-POS-lst20): `Part-of-speech tagging (POS)` based on LST20
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+ - [HoogBERTa-SENTENCE-lst20](https://huggingface.co/new5558/HoogBERTa-SENTENCE-lst20): `Clause Boundary Classification` based on LST20
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+
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  ## Conversion Code
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  If you are interested in how to convert Fairseq and subword-nmt Roberta into Huggingface hub here is my code used to do the conversion and test for parity match: