import os current_dir = os.path.dirname(os.path.realpath(__file__)) os.chdir(current_dir) from tqdm import tqdm import json class KmerPairTokenizer: def __init__(self): self.k_mers = 4 self.vocab = {} self.merges = {} self.vocab_size = 0 self.init_vocab = {"\n": 1, "A": 2, "T": 3, "G": 4, "C": 5, "P": 6, "M": 7, "U": 8, " ": 9} def _tokenize_seq(self, sequence): kmers = [sequence[i:i+self.k_mers] for i in tqdm(range(0, len(sequence), self.k_mers), desc="tokenizing k-mers")] return kmers def _get_stats(self, ids, counts=None): """ takes list of integers and returns dictionary of counts of pairs(consecutive ones) eg: [1, 2, 3, 1, 2] -> {(1, 2): 2, (2, 3): 1, (3, 1): 1} allows to update an existing dictionary of counts """ counts = {} if counts is None else counts for pair in zip(ids, ids[1:]): counts[pair] = counts.get(pair, 0) + 1 return counts def _merge(self, ids, pair, idx): """ in the list of integers, replaces all consecutive pair with the new integer token idx eg: ids=[1, 2, 3, 1, 2], pair=(1, 2), idx=4 -> [4, 3, 4] """ new_ids = [] i = 0 while i < len(ids): if i+1 < len(ids) and ids[i] == pair[0] and ids[i+1] == pair[1]: new_ids.append(idx) i += 2 else: new_ids.append(ids[i]) i += 1 return new_ids def get_ids(self, data): all_kmers = [] seq_to_no = {} ass_no = [] i = 1 for seq in data: all_kmers.extend(self._tokenize_seq(seq)) for seq in all_kmers: if seq not in seq_to_no: seq_to_no[seq] = i i += 1 ass_no.append(seq_to_no[seq]) del all_kmers, i return ass_no, seq_to_no def train_tokenizer(self, data: str, max_vocab: int): n_merges = max_vocab text_pairs, init_vocab = self.get_ids([data]) ids = list(text_pairs) del text_pairs, max_vocab merges = {} ids_len = len(init_vocab) for i in tqdm(range(n_merges), desc="training the tokenizer"): stats = self._get_stats(ids) pair = max(stats, key=stats.get) idx = ids_len + i + 1 ids = self._merge(ids, pair, idx) merges[pair] = idx vocab = {value: key for key, value in init_vocab.items()} for (p0, p1), idx in merges.items(): vocab[idx] = vocab[p0] + vocab[p1] self.vocab = vocab self.merges = merges self.vocab_size = len(self.vocab) del vocab, merges, ids, stats, pair, idx def encode(self, text): text_pairs, _ = self.get_ids([text]) ids = list(text_pairs) total_pairs = len(ids) - 1 with tqdm(total=total_pairs, desc="Encoding text") as pbar: while len(ids) >= 2: stats = self._get_stats(ids) pair = min(stats, key=lambda p: self.merges.get(p, float('inf'))) if pair not in self.merges: break idx = self.merges[pair] ids = self._merge(ids, pair, idx) pbar.update(1) return ids def decode(self, ids): tokens = [self.vocab[idx] for idx in ids] sequence = ''.join(tokens) return sequence def save_model(self, file_path): model_file = file_path + f"/base_mer.model" vocab_file = file_path + f"/base_kmer.json" with open(model_file, 'w', encoding='utf-8') as f: for ids1, ids2 in self.merges: f.write(f"{ids1} {ids2}\n") with open(vocab_file, 'w') as f: json.dump(self.vocab, f) print('model file saved successfully!') def load(self, model_path, vocab_path): assert model_path.endswith('.model') assert vocab_path.endswith('.json') with open(vocab_path, 'r') as f: vocab_data = json.load(f) self.vocab = vocab_data self.vocab_size = len(vocab_data) merges = {} idx = 256 + 1 with open(model_path, 'r', encoding='utf-8') as fread: for line in fread: idx1, idx2 = map(int, line.split()) merges[(idx1, idx2)] = idx idx += 1 self.merges = merges