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VedaRta-0.5B โ€” Linear Attention on ARM64

Trained on 3.4GB Android phone. 43 seconds. No GPU.

O(n) linear approximate attention for edge devices.

Methodology Notes:

  • Sphota trades cross-token interaction for compute efficiency
  • Urdhva baseline is naive triple-loop, not BLAS
  • Tri-Nadi tested on synthetic benchmark only
llama-cli -hf divinesouljoy/VedaRta-0.5B -p "Question" -n 100

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