BitBop-125M-babylm
Latent-free ternary language model trained with BitBop (weights in {-1,0,+1}, no latent full-precision copy; only a bf16 flip momentum as optimiser state). Trained on a single RTX 3060 (6 GB).
- Data: BabyLM strict-small (~171M tokens)
- BLiMP macro-accuracy (own harness): 68.03
- Arch: d768, 16 layers, 8 full-attention layer(s) + sliding-window, NoPE, tied interface.
- Recipe: per-row RMS flip, tau=(2.0,2.75); see the code/report at github.com/ValerioDolci/bitbop.
Proof of concept; budget-scoped (not SOTA, no speed claim). Load with the bitbop package (config.json + model.pt + tokenizer.json).
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