Raghav-Singhal

Raghav-Singhal

smollm2-1.7b-100B-linear-merge-epe-no_bce-w0.9-normal-w0.1

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License: apache-2.0

Merge details

  • Method: element-wise linear interpolation of weights (computed in fp32, stored in bf16).
  • Architecture: LlamaForCausalLM, identical for both parents (hidden 2048, 24 layers, 32 heads, tied embeddings).
  • Vocabulary: 49280. The two parents share 49152 tokens (interpolated); the 128 extra EPE "charter" tokens are carried over from the EPE parent unchanged. The EPE tokenizer is bundled.

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Raghav-Singhal

Raghav-Singhal

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