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--- |
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license: mit |
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language: |
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- sk |
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datasets: |
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- oscar-corpus/OSCAR-2109 |
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pipeline_tag: fill-mask |
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library_name: transformers |
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--- |
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# Slovak BPE Baby Language Model (SK_BPE_BLM) |
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**SK_BPE_BLM** is a pretrained small language model for the Slovak language, based on the RoBERTa architecture. The model utilizes standard Byte-Pair Encoding (BPE) tokenization and is case-insensitive, meaning it operates in lowercase. While the pretrained model can be used for masked language modeling, it is primarily intended for fine-tuning on downstream NLP tasks. |
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## How to Use the Model |
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To use the SK_BPE_BLM model, follow these steps: |
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```python |
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from transformers import pipeline, RobertaTokenizer, AutoModelForMaskedLM |
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# Load the custom tokenizer and model |
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tokenizer = RobertaTokenizer.from_pretrained("daviddrzik/SK_BPE_BLM") |
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model = AutoModelForMaskedLM.from_pretrained("daviddrzik/SK_BPE_BLM") |
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# Create a pipeline with the custom model and tokenizer |
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unmasker = pipeline('fill-mask', model=model, tokenizer=tokenizer) |
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# Use the pipeline |
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result = unmasker("včera večer sme <mask> nový film v kine, ktorý mal premiéru iba pred týždňom.") |
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print(result) |
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[{'score': 0.2665567100048065, |
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'token': 18599, |
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'token_str': ' pozreli', |
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'sequence': 'včera večer sme pozreli nový film v kine, ktorý mal premiéru iba pred týždňom.'}, |
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{'score': 0.23860174417495728, |
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'token': 1056, |
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'token_str': ' mali', |
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'sequence': 'včera večer sme mali nový film v kine, ktorý mal premiéru iba pred týždňom.'}, |
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{'score': 0.1962040513753891, |
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'token': 6915, |
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'token_str': ' videli', |
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'sequence': 'včera večer sme videli nový film v kine, ktorý mal premiéru iba pred týždňom.'}, |
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{'score': 0.03656836599111557, |
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'token': 26996, |
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'token_str': ' pozerali', |
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'sequence': 'včera večer sme pozerali nový film v kine, ktorý mal premiéru iba pred týždňom.'}, |
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{'score': 0.030735589563846588, |
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'token': 9058, |
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'token_str': ' objavili', |
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'sequence': 'včera večer sme objavili nový film v kine, ktorý mal premiéru iba pred týždňom.'}] |
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``` |
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## Training Data |
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The `SK_BPE_BLM` model was pretrained using a subset of the OSCAR 2019 corpus, specifically focusing on the Slovak language. The corpus underwent comprehensive preprocessing to ensure the quality and relevance of the data: |
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- **Language Filtering:** Non-Slovak text was removed to focus solely on the Slovak language. |
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- **Character Normalization:** Various types of spaces, quotes, dashes, and separators were standardized (e.g., replacing different types of spaces with a single space, or dashes with hyphens). Emoticons were replaced with spaces. |
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- **Symbol and Unwanted Text Removal:** Sentences containing mathematical symbols, pictograms, or characters from Asian and African languages were deleted. Duplicates of punctuation, special characters, and spaces were also removed. |
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- **URL and Text Normalization:** All web addresses were removed, and the text was converted to lowercase to simplify tokenization. |
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- **Content Cleanup:** Text that included irrelevant content from web crawling, such as keywords and HTML tags, was identified and removed. |
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Additionally, the preprocessing included further refinement steps to create the final dataset: |
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- **Parentheses Content Removal:** All content within parentheses was removed to reduce noise. |
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- **Selection of Text Segments:** Medium-length text paragraphs were selected to maintain consistency. |
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- **Similarity Filtering:** Paragraphs with at least 50% similarity to previous ones were removed to minimize redundancy. |
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- **Random Sampling:** Finally, 20% of the remaining paragraphs were randomly selected. |
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After preprocessing, the training corpus consisted of: |
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- **455 MB of text** |
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- **895,125 paragraphs** |
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- **64.6 million words** |
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- **1.13 million unique words** |
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- **119 unique characters** |
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## Pretraining |
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The `SK_BPE_BLM` model was trained with the following key parameters: |
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- **Architecture:** Based on RoBERTa, with 6 hidden layers and 12 attention heads. |
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- **Hidden size:** 576 |
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- **Vocabulary size:** 50,264 tokens |
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- **Sequence length:** 256 tokens |
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- **Dropout:** 0.1 |
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- **Number of parameters:** 58 million |
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- **Optimizer:** AdamW, learning rate 1×10^(-4), weight decay 0.01 |
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- **Training:** 30 epochs, divided into 3 phases: |
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- **Phase 1:** 10 epochs on CPU (4x AMD EPYC 7542), batch size 64, 50 hours per epoch, 139,870 steps total. |
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- **Phase 2:** 5 epochs on GPU (1x Nvidia A100 40GB), batch size 64, 100 minutes per epoch, 69,935 steps total. |
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- **Phase 3:** 15 epochs on GPU (2x Nvidia A100 40GB), batch size 128, 60 minutes per epoch, 104,910 steps total. |
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The model was trained using the Hugging Face library, but without using the `Trainer` class—native PyTorch was used instead. |
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## Fine-Tuned Versions of the SK_BPE_BLM Model |
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Here are the fine-tuned versions of the `SK_BPE_BLM` model based on the folders provided: |
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- [`SK_BPE_BLM-ner`](https://huggingface.co/daviddrzik/SK_BPE_BLM-ner): Fine-tuned for Named Entity Recognition (NER) tasks. |
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- [`SK_BPE_BLM-pos`](https://huggingface.co/daviddrzik/SK_BPE_BLM-pos): Fine-tuned for Part-of-Speech (POS) tagging. |
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- [`SK_BPE_BLM-qa`](https://huggingface.co/daviddrzik/SK_BPE_BLM-qa): Fine-tuned for Question Answering tasks. |
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- [`SK_BPE_BLM-sentiment-csfd`](https://huggingface.co/daviddrzik/SK_BPE_BLM-sentiment-csfd): Fine-tuned for sentiment analysis on the CSFD (movie review) dataset. |
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- [`SK_BPE_BLM-sentiment-multidomain`](https://huggingface.co/daviddrzik/SK_BPE_BLM-sentiment-multidomain): Fine-tuned for sentiment analysis across multiple domains. |
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- [`SK_BPE_BLM-sentiment-reviews`](https://huggingface.co/daviddrzik/SK_BPE_BLM-sentiment-reviews): Fine-tuned for sentiment analysis on general review datasets. |
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- [`SK_BPE_BLM-topic-news`](https://huggingface.co/daviddrzik/SK_BPE_BLM-topic-news): Fine-tuned for topic classification in news articles. |
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