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Browse files- app.py +36 -4
- images/turna-logo.png +0 -0
app.py
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@@ -4,16 +4,44 @@ from transformers import pipeline
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import torch
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DESCRIPTION="""
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This is the space for the Language Modeling Group at TABILAB in Computer Engineering of Bogazici University.
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**Note:** First inference might take time as the models are downloaded on-the-go.
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"""
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@@ -109,9 +137,13 @@ def turna(input, max_new_tokens, length_penalty,
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with gr.Blocks(theme="abidlabs/Lime") as demo:
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gr.Markdown("# TURNA 🐦")
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gr.Markdown(DESCRIPTION)
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with gr.Tab("Sentiment Analysis"):
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gr.Markdown("TURNA fine-tuned on sentiment analysis. Enter text to analyse sentiment and pick the model (tweets or product reviews).")
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with gr.Column():
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import torch
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DESCRIPTION="""
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### a Turkish encoder-decoder language model
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Welcome to our Huggingface space, where you can explore the capabilities of TURNA.
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**Key Features of TURNA:**
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- **Powerful Architecture:** TURNA contains 1.1B parameters, and was pre-trained with an encoder-decoder architecture following the UL2 framework on 43B tokens from various domains.
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- **Diverse Training Data:** Our model is trained on a varied dataset of 43 billion tokens, covering a wide array of domains.
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- **Broad Applications:** TURNA is fine-tuned for a variety of generation and understanding tasks, including:
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- Summarization
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- Paraphrasing
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- News title generation
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- Sentiment classification
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- Text categorization
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- Named entity recognition
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- Part-of-speech tagging
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- Semantic textual similarity
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- Natural language inference
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Refer to our [paper](https://arxiv.org/abs/2401.14373) for more details.
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### Citation
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```bibtex
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@misc{uludoğan2024turna,
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title={TURNA: A Turkish Encoder-Decoder Language Model for Enhanced Understanding and Generation},
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author={Gökçe Uludoğan and Zeynep Yirmibeşoğlu Balal and Furkan Akkurt and Melikşah Türker and Onur Güngör and Susan Üsküdarlı},
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year={2024},
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eprint={2401.14373},
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archivePrefix={arXiv},
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primaryClass={cs.CL}
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}
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```
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**Note:** First inference might take time as the models are downloaded on-the-go.
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*TURNA can generate toxic content or provide erroneous information. Double-check before usage.*
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"""
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with gr.Blocks(theme="abidlabs/Lime") as demo:
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gr.Markdown("# TURNA 🐦")
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gr.Image("images/turna-logo.png", scale=1)
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gr.Markdown(DESCRIPTION)
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with gr.Tab("Sentiment Analysis"):
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gr.Markdown("TURNA fine-tuned on sentiment analysis. Enter text to analyse sentiment and pick the model (tweets or product reviews).")
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with gr.Column():
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images/turna-logo.png
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