| |
| """Train a Polish byte-level BPE (32k) on a domain-balanced sample of the corpus, |
| then report fertility vs GPT-2 BPE. Runs where the parquet shards live (slayer).""" |
| import glob, sys, time |
| import pyarrow.parquet as pq |
| from tokenizers import Tokenizer, models, trainers, pre_tokenizers, decoders |
|
|
| DATA = "/home/ubuntu/dynaword/data" |
| OUT = "/home/ubuntu/dynaword/polish_bpe_32k.json" |
| CAP = 220 * 1024 * 1024 |
| VOCAB = 32768 |
|
|
| def files(): |
| return sorted(glob.glob(f"{DATA}/*/*.parquet")) |
|
|
| def balanced_texts(): |
| for f in files(): |
| src = f.split("/")[-2]; got = 0; done = False |
| for batch in pq.ParquetFile(f).iter_batches(columns=["text"], batch_size=1000): |
| for x in batch.column("text"): |
| s = x.as_py() |
| if not s: |
| continue |
| yield s |
| got += len(s) |
| if got >= CAP: |
| done = True; break |
| if done: |
| break |
| print(f" sampled {src}: ~{got/1e6:.0f} MB", file=sys.stderr, flush=True) |
|
|
| t0 = time.time() |
| tok = Tokenizer(models.BPE(unk_token=None)) |
| tok.pre_tokenizer = pre_tokenizers.ByteLevel(add_prefix_space=False) |
| tok.decoder = decoders.ByteLevel() |
| trainer = trainers.BpeTrainer( |
| vocab_size=VOCAB, min_frequency=2, |
| special_tokens=["<|endoftext|>"], |
| initial_alphabet=pre_tokenizers.ByteLevel.alphabet()) |
| print("training BPE...", file=sys.stderr, flush=True) |
| tok.train_from_iterator(balanced_texts(), trainer=trainer) |
| tok.save(OUT) |
| print(f"trained in {time.time()-t0:.0f}s | vocab={tok.get_vocab_size()} | saved {OUT}") |
|
|
| |
| import tiktoken |
| gpt2 = tiktoken.get_encoding("gpt2") |
| sample = [] |
| for b in pq.ParquetFile(f"{DATA}/wikipedia/wikipedia.parquet").iter_batches(columns=["text"], batch_size=1000): |
| for x in b.column("text"): |
| sample.append(x.as_py()) |
| if len(sample) >= 6000: |
| break |
| sample = sample[4000:6000] |
| words = sum(len(s.split()) for s in sample) |
| chars = sum(len(s) for s in sample) |
| ours = sum(len(e.ids) for e in tok.encode_batch(sample)) |
| g2 = sum(len(x) for x in gpt2.encode_ordinary_batch(sample)) |
| print(f"\nFertility on {len(sample)} held-out PL docs ({words:,} words):") |
| print(f" polish-32k : {ours/words:.3f} tok/word | {ours/chars:.3f} tok/char") |
| print(f" gpt2-50k : {g2/words:.3f} tok/word | {g2/chars:.3f} tok/char") |
| print(f" -> {g2/ours:.2f}x fewer tokens with the Polish BPE") |
|
|