paper
referenced-only
2024
paper:arxiv-2407-21783The llama 3 herd of models
ByLlama-Team
Related work— refs + corpus + external arXiv
Cited / in-corpus / arXiv badges show which signals surfaced each row. Multi-source rows weighted higher.
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