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README.md
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---
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license: mit
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datasets:
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- Equall/legalbench_instruct
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language:
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- en
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---
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### Model Card for SaulLM-54B-Instruct
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**This model is a research artefact and should be considered as it!**
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#### Model Details
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**Model Description**:
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SaulLM-54B-Instruct is a state-of-the-art language model specifically designed for legal professionals. Developed through a collaboration between Legal Equall.ai and MICS at CentraleSupélec (Université Paris-Saclay), SaulLM-141B aims to revolutionize how legal data is processed and analyzed, enhancing the efficiency and accuracy of legal professionals worldwide.
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**Developed by**: Legal Equall.ai, MICS of CentraleSupélec (Université Paris-Saclay)
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**Model type**: A 54 billion parameter model fine-tuned specifically for legal tasks, leveraging data from European legal databases.
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**Language(s) (NLP)**: English
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**License**: MIT-Liscence
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**Finetuned from model**: Base model developed by Equall.ai
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#### Intended Uses & Limitations
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**Intended Uses**:
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SaulLM-54B is intended for use in various legal contexts.
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**Limitations**:
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While SaulLM-54B is designed to be robust across multiple European legal systems, it may not perform as well on legal systems outside of its training scope, particularly non-European jurisdictions.
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#### Bias, Risks, and Ethical Considerations
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**Bias and Risks**:
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Despite efforts to mitigate bias, SaulLM-141B may still exhibit biases inherent in its training data. Users should be cautious and critically evaluate the model's outputs, especially in sensitive legal cases.
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**Ethical Considerations**:
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Users are encouraged to use SaulLM-141B responsibly, ensuring that its application does not infringe on privacy rights or propagate unfair decisions.
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#### Technical Details
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**Training Data**:
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SaulLM-141B was trained on a rich dataset comprising European legal texts, court rulings, and legislative documents, ensuring a deep understanding of the legal landscape within the EU.
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#### Citation
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To reference SaulLM-54B in your work, please cite this model card.
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```
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@misc{saul_llm_2024,
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title={SaulLM-141B: A Specialized Large Language Model for European Legal Tasks},
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author={Legal Equall.ai and MICS CentraleSupélec},
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year={2024},
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eprint={2404.12345},
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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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---
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