cicero-gpt2
GroNLP/gpt2-small-italian version fine-tuned with italian civil judgments.
Model Details
Model Description
- Developed by: Marco Calamo, Francesca De Luzi, Mattia Macrì, Tommaso Mencattini, Massimo Mecella
- Model type: gpt2-small-italian
- Language(s) (NLP): italian
- License: openrail
- Finetuned from model: GroNLP/gpt-2-small
Model Sources
- Repository: Github
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Uses
Direct Use
Used to generate part of sentences based upon user input. All sensible data are hidden by design.
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Training Details
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