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--- |
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library_name: transformers |
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tags: |
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- chunking |
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- RAG |
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license: mit |
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datasets: |
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- bookcorpus/bookcorpus |
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language: |
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- en |
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base_model: |
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- answerdotai/ModernBERT-base |
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--- |
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# Chonky modernbert base v1 |
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__Chonky__ is a transformer model that intelligently segments text into meaningful semantic chunks. This model can be used in the RAG systems. |
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## Model Description |
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The model processes text and divides it into semantically coherent segments. These chunks can then be fed into embedding-based retrieval systems or language models as part of a RAG pipeline. |
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⚠️This model was fine-tuned on sequence of length 1024 (by default ModernBERT supports sequence length up to 8192). |
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## How to use |
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I've made a small python library for this model: [chonky](https://github.com/mirth/chonky) |
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Here is the usage: |
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``` |
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from chonky import ParagraphSplitter |
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# on the first run it will download the transformer model |
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splitter = ParagraphSplitter( |
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model_id="mirth/chonky_modernbert_base_1", |
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device="cpu" |
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) |
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text = """Before college the two main things I worked on, outside of school, were writing and programming. I didn't write essays. I wrote what beginning writers were supposed to write then, and probably still are: short stories. My stories were awful. They had hardly any plot, just characters with strong feelings, which I imagined made them deep. The first programs I tried writing were on the IBM 1401 that our school district used for what was then called "data processing." This was in 9th grade, so I was 13 or 14. The school district's 1401 happened to be in the basement of our junior high school, and my friend Rich Draves and I got permission to use it. It was like a mini Bond villain's lair down there, with all these alien-looking machines — CPU, disk drives, printer, card reader — sitting up on a raised floor under bright fluorescent lights.""" |
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for chunk in splitter(text): |
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print(chunk) |
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print("--") |
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# Output |
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Before college the two main things I worked on, outside of school, were writing and programming. I didn't write essays. I wrote what beginning writers were supposed to write then, and probably still are: short stories. |
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-- |
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My stories were awful. They had hardly any plot, just characters with strong feelings, which I imagined made them deep. The first programs I tried writing were on the IBM 1401 that our school district used for what was then called "data processing." |
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-- |
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This was in 9th grade, so I was 13 or 14. The school district's 1401 happened to be in the basement of our junior high school, and my friend Rich Draves and I got permission to use it. |
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-- |
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It was like a mini Bond villain's lair down there, with all these alien-looking machines — CPU, disk drives, printer, card reader — sitting up on a raised floor under bright fluorescent lights. |
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-- |
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``` |
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But you can use this model using standart NER pipeline: |
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``` |
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from transformers import AutoTokenizer, AutoModelForTokenClassification, pipeline |
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model_name = "mirth/chonky_modernbert_base_1" |
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tokenizer = AutoTokenizer.from_pretrained(model_name, model_max_length=1024) |
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id2label = { |
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0: "O", |
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1: "separator", |
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} |
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label2id = { |
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"O": 0, |
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"separator": 1, |
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} |
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model = AutoModelForTokenClassification.from_pretrained( |
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model_name, |
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num_labels=2, |
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id2label=id2label, |
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label2id=label2id, |
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) |
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pipe = pipeline("ner", model=model, tokenizer=tokenizer, aggregation_strategy="simple") |
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text = """Before college the two main things I worked on, outside of school, were writing and programming. I didn't write essays. I wrote what beginning writers were supposed to write then, and probably still are: short stories. My stories were awful. They had hardly any plot, just characters with strong feelings, which I imagined made them deep. The first programs I tried writing were on the IBM 1401 that our school district used for what was then called "data processing." This was in 9th grade, so I was 13 or 14. The school district's 1401 happened to be in the basement of our junior high school, and my friend Rich Draves and I got permission to use it. It was like a mini Bond villain's lair down there, with all these alien-looking machines — CPU, disk drives, printer, card reader — sitting up on a raised floor under bright fluorescent lights.""" |
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pipe(text) |
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# Output |
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[ |
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{'entity_group': 'separator', 'score': np.float32(0.91590524), 'word': ' stories.', 'start': 209, 'end': 218}, |
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{'entity_group': 'separator', 'score': np.float32(0.6210419), 'word': ' processing."', 'start': 455, 'end': 468}, |
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{'entity_group': 'separator', 'score': np.float32(0.7071036), 'word': '.', 'start': 652, 'end': 653} |
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] |
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``` |
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## Training Data |
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The model was trained to split paragraphs from the bookcorpus dataset. |
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## Metrics |
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Token based metrics: |
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| Metric | Value | |
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| -------- | ------| |
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| F1 | 0.79 | |
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| Precision| 0.83 | |
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| Recall | 0.75 | |
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| Accuracy | 0.99 | |
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## Hardware |
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Model was fine-tuned on single H100 for a several hours |