Model Card for schaeff/gpt2-xl_vanilla800

Associated publication: Transformers Don’t Need LayerNorm at Inference Time: Scaling LayerNorm Removal to GPT-2 XL and the Implications for Mechanistic Interpretability (arXiv TBD)

Associated GitHub: removing-layer-norm

This model is based on openai-community/gpt2-xl and was finetuned on OpenWebText for 800 iterations with 0.5M tokens per iteration. This model has the same architecture as the corresponding gpt-2 model and is being made available for reproducibility of the results reported in the associated publication.

Usage

You can load the model with transformers:

model = GPT2LMHeadModel.from_pretrained("schaeff/gpt2-xl_vanilla800")

Model Collection

This model is part of a collection of LayerNorm-free models. The table below provides links and details.

Evaluation results of LN-free, vanilla fine-tuned, and original GPT-2 models

Reported values are mean cross-entropy losses for 10.2M tokens for The Pile and The Pile filtered and 4.5M tokens for the OpenWebText (WT) validation set. For each model size and dataset, the lowest loss is highlighted in bold, and the loss difference between the LN-free model and the best-performing model is shown in brackets.

Model FT steps OWT (val) The Pile The Pile-filtered
OpenAI GPT-2 Small original 0 3.1006 2.8450 2.7899
schaeff GPT-2 Small vanilla 300 3.0126 2.8511 2.8112
schaeff GPT-2 Small LN-free 300 3.0797 [+0.0671] 2.8852 [+0.0402] 2.8757 [+0.0858]
OpenAI GPT-2 Medium original 0 2.8145 2.5163 2.5390
schaeff GPT-2 Medium vanilla 500 2.7390 2.5752 2.5724
schaeff GPT-2 Medium LN-free 500 2.7642 [+0.0252] 2.6579 [+0.1416] 2.6352 [+0.0962]
OpenAI GPT-2 Large original 0 2.6623 2.5320 2.4347
schaeff GPT-2 Large vanilla 600 2.6240 2.6233 2.5074
schaeff GPT-2 Large LN-free 600 2.6384 [+0.0144] 2.7504 [+0.2184] 2.5159 [+0.0812]
OpenAI GPT-2 XL original 0 2.5567 2.4436¹ 2.3739
schaeff GPT-2 XL vanilla 800 2.4799 2.4673 2.3821
schaeff GPT-2 XL LN-free 800 2.5052 [+0.0253] 130.2197² 2.3992 [+0.0253]

Footnotes:

  1. GPT-2 XL original: Median: 1.0103, 95 Percentile Range: [0.0005, 10.6193], 99.9% Percentile Range [≈0.0000, 43.0064]
  2. GPT-2 XL LN-free: Median: 1.0937, 95 Percentile Range: [0.0004, 10.7548], 99.9% Percentile Range [≈0.0000, 48.6459]

Citation

If you have found our work useful please cite as:

@misc{gpt2layernorm2025,
  author = {Baroni, Luca and Khara, Galvin and Schaeffer, Joachim and Subkhankulov, Marat and Heimersheim, Stefan},
  title = {Transformers Don't Need LayerNorm at Inference Time: Scaling LayerNorm Removal to GPT-2 XL and the Implications for Mechanistic Interpretability},
  year = {2025},
  eprint = {2507.02559},
  archivePrefix = {arXiv},
  primaryClass = {cs.LG},
  url = {https://arxiv.org/abs/2507.02559v1}
}
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