cadenshokat/aws-rag-embeddings
Fine-tuned ModernBERT on chunked AWS documentation with Matryoshka embeddings (768→64d) to power RAG retrieval, delivering +40–65% gains on nDCG/MRR/MAP and a +63.6% boost to the 64d seq_score.
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Python
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Aug 16, 2025
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