Metadata-Version: 2.1
Name: gr-nlp-toolkit
Version: 0.1.1
Summary: A Transformer-based Natural Language Processing Pipeline for Greek
Home-page: https://github.com/nlpaueb/gr-nlp-toolkit
Author: nlpaueb
Author-email: p3170148@aueb.gr, p3170039@aueb.gr, spirosbarbakos@gmail.com,  eleftheriosloukas@aueb.gr, ipavlopoulos@aueb.gr
Classifier: Programming Language :: Python :: 3
Classifier: License :: OSI Approved :: Apache Software License
Classifier: Operating System :: OS Independent
Classifier: Topic :: Text Processing :: Linguistic
Classifier: Natural Language :: Greek
Requires-Python: >=3.9
Description-Content-Type: text/markdown
License-File: LICENSE
Requires-Dist: torch>=2.1.2
Requires-Dist: transformers>=4.11.1
Requires-Dist: huggingface_hub

# gr-nlp-toolkit

A Transformer-based natural language processing toolkit for (modern) Greek. The toolkit has state-of-the-art performance in Greek and supports named entity recognition, part-of-speech tagging, morphological tagging, as well as dependency parsing. Additionally, the toolkit can convert Greeklish text (Greek written using Latin characters) into standard Greek

## Installation

You can install the toolkit from PyPi by executing the following in the command line:

```sh
pip install gr-nlp-toolkit
```
Alternatively, you can clone this repository and set up a virtual environment using the requirements.txt file. (Development was done using Python version 3.9)

## Usage

### Available Processors

To use the toolkit first initialize a Pipeline specifying which processors you need. Each processor
annotates the text with a specific task's annotations.

- To obtain Part-of-Speech and Morphological Tagging annotations, add the `pos` processor
- To obtain Named Entity Recognition annotations, add the `ner` processor
- To obtain Dependency Parsing annotations, add the `dp` processor
- To enable the transliteration from Greeklish to Greek, add the `g2g` processor or the `g2g_lite` processor for a lighter but less accurate model
  (Greeklish to Greek transliteration example : Thessalonikh -> Θεσσαλονίκη)

### Example Usage Scenarios

- Greeklish to Greek Conversion

  ```python
  from gr_nlp_toolkit import Pipeline
  nlp  = Pipeline("g2g")  # Instantiate the pipeline with the g2g processor

  doc = nlp("O Volos kai h Larisa einai sthn Thessalia") # Apply the pipeline to a sentence
  print(doc.text) # Access the transliterated text
  ```
- DP, POS, NER processors

  ```python
  nlp = Pipeline("pos,ner,dp")  # Instantiate the Pipeline with the DP, POS and NER processors
  doc = nlp("Η Ιταλία κέρδισε την Αγγλία στον τελικό του Euro 2020.") # Apply the pipeline to a sentence

  ```

  A `Document` object is created and is annotated. The original text is tokenized
  and split to tokens

  ```python
  # Iterate over the generated tokens
  for token in doc.tokens:
    print(token.text) # the text of the token

    print(token.ner) # the named entity label in IOBES encoding : str

    print(token.upos) # the UPOS tag of the token
    print(token.feats) # the morphological features for the token

    print(token.head) # the head of the token
    print(token.deprel) # the dependency relation between the current token and its head
  ```

  `token.ner` is set by the `ner` processor, `token.upos` and `token.feats` are set by the `pos` processor
  and `token.head` and `token.deprel` are set by the `dp` processor.

  A small detail is that to get the `Token` object that is the head of another token you need to access
  `doc.tokens[head-1]`. The reason for this is that the enumeration of the tokens starts from 1 and when the
  field `token.head` is set to 0, that means the token is the root of the word.
- Use all the processors together

  ```python
  nlp = Pipeline("pos,ner,dp,g2g")  # Instantiate the Pipeline with the G2G, DP, POS and NER processors

  doc = nlp("O Volos kai h Larisa einai sthn Thessalia") # Apply the pipeline to a sentence

  print(doc.text) # Print the transliterated text

  # Iterate over the generated tokens
  for token in doc.tokens:
    print(token.text) # the text of the token

    print(token.ner) # the named entity label in IOBES encoding : str

    print(token.upos) # the UPOS tag of the token
    print(token.feats) # the morphological features for the token

    print(token.head) # the head of the token
    print(token.deprel) # the dependency relation between the current token and its head
  ```

**Notes**:

- If the input text is already in greek, the G2G processor is skipped
- The first time you use a processor, the models are downloaded from Hugging Face and stored into the .cache folder. The NER, DP and POS processors are each about 500 MB, while the G2G processor is about 1.2 GB in size
- If your machine has an accelerator but you want to run the process on the CPU, you can pass the flag use_cpu=True to the Pipeline object. By default, this flag is set to False.

## Hugging Face repositories

- ByT5-g2g: https://huggingface.co/AUEB-NLP/ByT5_g2g
- gr-nlp-toolkit: https://huggingface.co/AUEB-NLP/ByT5_g2g

## References

C. Dikonimaki, "A Transformer-based natural language processing toolkit for Greek -- Part of speech tagging and dependency parsing", BSc thesis, Department of Informatics, Athens University of Economics and Business, 2021. http://nlp.cs.aueb.gr/theses/dikonimaki_bsc_thesis.pdf

N. Smyrnioudis, "A Transformer-based natural language processing toolkit for Greek -- Named entity recognition and multi-task learning", BSc thesis, Department of Informatics, Athens University of Economics and Business, 2021.  http://nlp.cs.aueb.gr/theses/smyrnioudis_bsc_thesis.pdf

Toumazatos, A., Pavlopoulos, J., Androutsopoulos, I., & Vassos, S. (2024). Still All Greeklish to Me: Greeklish to Greek Transliteration. In Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024) (pp. 15309–15319). ELRA and ICCL.

https://aclanthology.org/2024.lrec-main.1330/
