library_name, tags, license, datasets
library_name tags license datasets
transformers
convergent-evolution
fourier-features
number-embeddings
mit
HuggingFaceFW/fineweb-edu

convergent-llama-300M-muon-bigram

A 300M-parameter language model trained from scratch on FineWeb-Edu 10BT (~9.4B tokens, 1 epoch) as part of the Convergent Evolution project, which investigates how Fourier features emerge in LLM number embeddings.

Model details

Architecture LLaMA-style Transformer (12 layers, 1024 hidden, 16 heads, GQA)
Parameters ~300M
Optimizer Muon (for 2D weights) + AdamW (for embeddings/bias/norm)
Data perturbation bigram-sampled text (bigram statistics preserved)
Training data FineWeb-Edu sample-10BT (~9.4B tokens)
Context length 1024
Tokenizer Llama 3 (128K vocab)
Batch size 512 sequences

Training dynamics

Intermediate checkpoints are saved as branches: tokens-200M, tokens-400M, ..., tokens-9.6B.

from transformers import AutoModelForCausalLM

# Load final checkpoint
model = AutoModelForCausalLM.from_pretrained("deqing/convergent-llama-300M-muon-bigram")

# Load intermediate checkpoint (e.g., at 1B tokens)
model = AutoModelForCausalLM.from_pretrained("deqing/convergent-llama-300M-muon-bigram", revision="tokens-1B")

Citation

Paper forthcoming.

Description
Model synced from source: deqing/convergent-llama-300M-muon-bigram
Readme 16 MiB