Single layer tiny Co4 outpaces GPT-2 and GPT-BERT
Abstract
We show that a tiny Co4 machine(Adeel,2025) with a single layer, two heads, and 8M parameters, operating at an approximate cost of O(N) (where N is the number of input tokens), outpaces the BabyLM Challenge baselines GPT-2 (124M, 12 layers, O(N2)) and GPT-BERT (30M, 12 layers, O(N2)) in just two epochs, while both are trained for ten. Co4 achieves orders-of-magnitude greater training efficiency on 10M tokens, demonstrating highly sample efficient pretraining. Using the BabyLM challenge evaluation pipeline across complex benchmarks, Co4 exhibits strong zero-shot and fine-tuning performance on SuperGLUE tasks. Specifically, Co4 outperforms GPT-2 on 5 out of 7 zero-shot metrics and 6 out of 7 fine-tuning tasks, and GPT-BERT on 4 out of 7 metrics in both cases. These results suggest the need to rethink prevailing deep learning paradigms and associated scaling laws.
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