--- language: - multilingual tags: - ethiobbpe - bpe - tokenizer - byte-level license: apache-2.0 datasets: - user-provided --- # EthioBBPE Tokenizer This is a production-ready Byte-Level BPE tokenizer with advanced features for deployment. ## Features - **Byte-Level**: Handles any Unicode character without . - **Multi-format Compression**: Supports gzip, bz2, and lzma compression. - **Checkpointing**: Built-in safety checkpoints with metadata tracking. - **Quantization**: Optional 8-bit/4-bit quantization for efficient deployment. - **Training Metrics**: Comprehensive metrics tracking and logging. - **Automatic Backup**: Checkpoint rotation to manage disk space. ## Usage ### Transformers ```python from transformers import AutoTokenizer tokenizer = AutoTokenizer.from_pretrained("EthioBBPE_AmharicBible") ``` ### Tokenizers Library ```python from tokenizers import Tokenizer tokenizer = Tokenizer.from_file("tokenizer.json") ``` ### Loading Compressed Vocab ```python import gzip import json # Load compressed vocabulary with gzip.open("vocab.json.gz", 'rt', encoding='utf-8') as f: vocab = json.load(f) ``` ## Training Configuration ```json { "vocab_size": 16000, "min_frequency": 2, "show_progress": true, "special_tokens": [ "", "", "", "", "" ], "lowercase": false, "dropout": null, "data_dir": "./data", "model_save_dir": "models", "model_name": "EthioBBPE_AmharicBible", "use_checkpoint": true, "checkpoint_dir": "./models/checkpoints", "save_compressed": true, "compression_format": "gzip", "compression_level": 9, "checkpoint_steps": null, "num_threads": -1, "enable_backup": true, "max_checkpoints": 5, "enable_quantization": true, "quantization_bits": 8 } ``` ## Model Files - `tokenizer.json`: Standard tokenizer file (required) - `vocab.json.gz`: Compressed vocabulary (optional, smaller size) - `config.json`: Training configuration - `training_metrics.json`: Training statistics - `special_tokens_map.json`: Special tokens mapping - `README.md`: This file ## Checkpoints Checkpoints are saved in the `models/checkpoints` directory with metadata including: - Checkpoint ID and timestamp - Vocabulary size - SHA256 checksum for integrity verification - Training metrics at checkpoint time