Model Card for gpt2_noLN
This is a gpt2-small model with LayerNorm fine-tuned out.
The model was fine-tuned on OpenWebText for ~500M tokens (1000 iterations of batch size ~488 at 1024 context length) while gradually disableing LayerNorm layers.
There are 5 similar models available (v1 through v5) trained with different fine-tuning schedules. Please refer to the paper or blog post for details; the training code is available here. The best model (v4) is the default as of 6th September 2024 (previously v2 was the default).
The model is a GPT2LMHeadModel
(to avoid requiring trust_remote_code
) which technically contains LayerNorm blocks.
However, the epsilon values are all set to 1e12 so that the LayerNorm has no effect. The LN scale is set to 1e6 (to counter the 1e12 epsilon), and the bias to 0.
The final LayerNorm also has 1e12 as epsilon, but non-unity weights and biases. This is because the embed and unembed matrix are tried (and there is no unembed bias),
thus the LN parameters cannot be folded into that matrix. You can completely remove all LNs by simply replacing ln_1
and ln_2
modules with identities, and replacing
ln_f
with modifications to the unembed matrix and unembed bias.
You can load the model with transformers
, or one of the interpretability libraries listed below.
model = GPT2LMHeadModel.from_pretrained("apollo-research/gpt2_noLN").to("cpu")
TransformerLens loading code
import torch
from transformers import GPT2LMHeadModel
from transformer_lens import HookedTransformer
model = GPT2LMHeadModel.from_pretrained("apollo-research/gpt2_noLN").to("cpu")
hooked_model = HookedTransformer.from_pretrained("gpt2", hf_model=model, fold_ln=False, center_unembed=False).to("cpu")
# Kill the LayerNorms because TransformerLens overwrites eps
for block in hooked_model.blocks:
block.ln1.eps = 1e12
block.ln2.eps = 1e12
hooked_model.ln_final.eps = 1e12
Or with LNs properly replaced by identities:
import torch
from transformers import GPT2LMHeadModel
from transformer_lens import HookedTransformer
model = GPT2LMHeadModel.from_pretrained("apollo-research/gpt2_noLN").to("cpu")
# Undo my hacky LayerNorm removal
for block in model.transformer.h:
block.ln_1.weight.data = block.ln_1.weight.data / 1e6
block.ln_1.eps = 1e-5
block.ln_2.weight.data = block.ln_2.weight.data / 1e6
block.ln_2.eps = 1e-5
model.transformer.ln_f.weight.data = model.transformer.ln_f.weight.data / 1e6
model.transformer.ln_f.eps = 1e-5
# Properly replace LayerNorms by Identities
class HookedTransformerNoLN(HookedTransformer):
def removeLN(self):
for i in range(len(self.blocks)):
self.blocks[i].ln1 = torch.nn.Identity()
self.blocks[i].ln2 = torch.nn.Identity()
self.ln_final = torch.nn.Identity()
hooked_model = HookedTransformerNoLN.from_pretrained("gpt2", hf_model=model, fold_ln=True, center_unembed=False).to("cpu")
hooked_model.removeLN()
hooked_model.cfg.normalization_type = None
Edit: Added the last line updating hooked_model.cfg.normalization_type
so that ActivationCache.apply_ln_to_stack()
still works, thanks to Quiche Eater for pointing this out.
NNSight loading code
Copy-pasted from Logan Riggs' comment, based on code by Caden.
import torch
from transformers import GPT2LMHeadModel
from transformer_lens import HookedTransformer
from nnsight.models.UnifiedTransformer import UnifiedTransformer
model = GPT2LMHeadModel.from_pretrained("apollo-research/gpt2_noLN").to("cpu")
# Undo my hacky LayerNorm removal
for block in model.transformer.h:
block.ln_1.weight.data = block.ln_1.weight.data / 1e6
block.ln_1.eps = 1e-5
block.ln_2.weight.data = block.ln_2.weight.data / 1e6
block.ln_2.eps = 1e-5
model.transformer.ln_f.weight.data = model.transformer.ln_f.weight.data / 1e6
model.transformer.ln_f.eps = 1e-5
# Properly replace LayerNorms by Identities
def removeLN(transformer_lens_model):
for i in range(len(transformer_lens_model.blocks)):
transformer_lens_model.blocks[i].ln1 = torch.nn.Identity()
transformer_lens_model.blocks[i].ln2 = torch.nn.Identity()
transformer_lens_model.ln_final = torch.nn.Identity()
hooked_model = HookedTransformer.from_pretrained("gpt2", hf_model=model, fold_ln=True, center_unembed=False).to("cpu")
removeLN(hooked_model)
model_nnsight = UnifiedTransformer(model="gpt2", hf_model=model, fold_ln=True, center_unembed=False).to("cpu")
removeLN(model_nnsight)
- Downloads last month
- 66