# nanoGPT The cleanest, fastest repository for training/finetuning medium-sized GPTs. This repo currently requires reading the code, but it's not that bad. work ongoing... Getting started: We need a few dependencies: - [pytorch](https://pytorch.org), of course - numpy - `pip install datasets` for huggingface datasets - `pip install tiktoken` for OpenAI's fast bpe code - `pip install wandb` for optional logging Then we want to render the detaset: ``` $ cd data/openwebtext $ python prepare.py ``` To download and tokenize the [openwebtext](https://huggingface.co/datasets/openwebtext) dataset. It will create a `train.bin` and `val.bin` which holds the GPT2 BPE token ids in a massive sequence. Then we're ready to kick off training. The training script currently tries to reproduce the smallest GPT-2 released by OpenAI, i.e. the 124M version of GPT-2. We can run it like so: ``` $ python train.py ``` Once some checkpoints are written to the output directory `out`, we're ready to sample from the model: ``` $ python sample.py ``` Training on 1 GPU overnight currently gets loss ~3.74. Random chance at init is -ln(1/50257) = 10.82. Which brings us to baselines. ## baselines OpenAI GPT-2 checkpoints allow us to get some baselines in place for openwebtext. We can get the numbers as follows: ``` $ python train.py eval_gpt2 $ python train.py eval_gpt2_medium $ python train.py eval_gpt2_large $ python train.py eval_gpt2_xl ``` and observe the following losses on train and val: | model | params | train loss | val loss | | ------| ------ | ---------- | -------- | | gpt2 | 124M | 3.11 | 3.12 | | gpt2-medium | 350M | 2.85 | 2.84 | | gpt2-large | 774M | 2.66 | 2.67 | | gpt2-xl | 1558M | 2.56 | 2.54 | I briefly tried finetuning gpt2 a bit more on our OWT and didn't notice dramatic improvements, suggesting that OWT is not much much different from WT in terms of the data distribution, but this needs a bit more thorough attempt once the code is in a better place.