New LM scaling paper from DeepMind (abs, pdf).
Abstract (my emphasis):
We investigate the optimal model size and number of tokens for training a transformer language model under a given compute budget. We find that current large language models are significantly undertrained, a consequence of the recent focus on scaling language models whilst keeping the amount of training data constant. By training over 400 language models ranging from 70 million to over 16 billion parameters on 5 to 500 billion tokens, we find that for compute-optimal training, the model size and the number of training tokens should be scaled equally: for every doubling of model size the number of training tokens should also be doubled. We test this hypothesis by training a predicted compute-optimal model, Chinchilla, that uses the same compute budget as Gopher but with 70B parameters and 4× more more data. Chinchilla uniformly and significantly outperforms Gopher (280B), GPT-3 (175B), Jurassic-1 (178B), and Megatron-Turing NLG (530B) on a large range of downstream evaluation tasks. This also means that Chinchilla uses substantially less compute for fine-tuning and inference, greatly facilitating downstream usage. As a highlight, Chinchilla reaches a state-of-the-art average accuracy of 67.5% on the MMLU benchmark, greater than a 7% improvement over Gopher.
Brief comments on my blog here.
Presumably has implications for Bio Anchors?
I don't see why the conclusion follows from your argument. I assume you are right about how they'd need to keep training Gopher for 17.2X more training steps in order to reach optimal level for 280b-parameter models. Instead they could train 3 different optimal 175b-parameter models. But... maybe they would rather have the former than the latter? If I were in charge, I'd rather have 1 'finished' 280b than 3 finished 175b models.