polish-dynaword / src /eval_bpb.py
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#!/usr/bin/env python3
"""Convert modded-nanogpt's validation loss into paper-ready, tokenizer-agnostic
metrics: perplexity and bits-per-byte (bpb).
Perplexity depends on the tokenizer, so it is NOT comparable across models with
different vocabularies. Bits-per-byte normalises by raw UTF-8 bytes and IS
comparable (this is what to report against Bielik / Llama-based models).
bpb = val_loss[nats/token] / ln(2) * (tokens / bytes)
Usage:
python3 src/eval_bpb.py --val-loss 3.21 # val loss from the training log
"""
import argparse, struct
import numpy as np
from tokenizers import Tokenizer
VAL = "/home/ubuntu/dynaword/shards/polish_val_000000.bin"
TOK = "/home/ubuntu/dynaword/polish_bpe_32k.json"
def load_shard(path):
with open(path, "rb") as f:
header = np.frombuffer(f.read(256 * 4), dtype=np.int32)
assert header[0] == 20240520 and header[1] == 1, "bad shard header"
ntok = int(header[2])
toks = np.frombuffer(f.read(ntok * 2), dtype=np.uint16)
return toks
def main():
ap = argparse.ArgumentParser()
ap.add_argument("--val-loss", type=float, required=True, help="nats/token from training log")
ap.add_argument("--vocab", type=int, default=32768)
args = ap.parse_args()
toks = load_shard(VAL)
tok = Tokenizer.from_file(TOK)
# decode in chunks -> UTF-8 bytes (held-out reconstructs to the original text)
nbytes = 0
step = 1_000_000
for i in range(0, len(toks), step):
nbytes += len(tok.decode(toks[i:i+step].tolist()).encode("utf-8"))
ntok = len(toks)
ln2 = np.log(2)
ppl = float(np.exp(args.val_loss))
bpb = args.val_loss / ln2 * (ntok / nbytes)
bpt = nbytes / ntok
rand_bpb = np.log(args.vocab) / ln2 * (ntok / nbytes) # uniform baseline
print(f"held-out val: {ntok:,} tokens | {nbytes:,} bytes | {bpt:.3f} bytes/token")
print(f"val loss : {args.val_loss:.4f} nats/token")
print(f"perplexity : {ppl:.2f} (tokenizer-specific; NOT cross-model comparable)")
print(f"bits-per-byte: {bpb:.4f} (tokenizer-AGNOSTIC; report this)")
print(f" (uniform-{args.vocab} baseline bpb = {rand_bpb:.3f})")
if __name__ == "__main__":
main()