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Training Guide / 训练指南

This document describes the reproducible training workflow for AniFileBERT.

本文档记录 AniFileBERT 的可复现训练流程。

1. Environment / 环境

Use uv for all dependency and command execution.

所有依赖和命令优先使用 uv

uv sync
uv run python -c "import torch; print(torch.__version__, torch.cuda.is_available())"

Recommended GPU configuration:

推荐 GPU 配置:

  • RTX 3080 class GPU or better
  • batch size 192 to 256 for full char training
  • fp16 enabled automatically when CUDA is available
  • --num-workers 4 or 8 when the local disk can keep up

2. Dataset / 数据集

The authoritative dataset lives in the nested submodule:

权威数据集位于嵌套子模块:

datasets/AnimeName/dmhy_weak.jsonl
datasets/AnimeName/dmhy_weak_char.jsonl
datasets/AnimeName/vocab.json
datasets/AnimeName/vocab.char.json

Current expected properties:

当前期望属性:

  • rows / 行数: 632002
  • strict BIO violations / 严格 BIO 违规: 0
  • character vocab / 字符词表: 6199
  • character coverage / 字符覆盖率: 100%

3. Relabel Full Dataset / 全量重标注

Use this when weak-label rules changed in dmhy_dataset.py or label_repairs.py.

dmhy_dataset.pylabel_repairs.py 的弱标注规则改变时,使用此流程。

uv run python relabel_dataset_from_filenames.py `
  --input datasets/AnimeName/dmhy_weak.jsonl `
  --output datasets/AnimeName/dmhy_weak.relabel.jsonl `
  --manifest-output datasets/AnimeName/dmhy_weak.relabel.manifest.json `
  --vocab-output datasets/AnimeName/vocab.relabel.json `
  --base-vocab datasets/AnimeName/vocab.json `
  --max-vocab-size 8000 `
  --progress 50000

After checking the manifest and sample labels, replace the authoritative files:

检查 manifest 和样本标注后,再替换权威文件:

Move-Item datasets/AnimeName/dmhy_weak.relabel.jsonl datasets/AnimeName/dmhy_weak.jsonl -Force
Move-Item datasets/AnimeName/vocab.relabel.json datasets/AnimeName/vocab.json -Force
Move-Item datasets/AnimeName/dmhy_weak.relabel.manifest.json datasets/AnimeName/dmhy_weak.manifest.json -Force

4. Convert to Character Dataset / 转换为字符数据集

The published checkpoint uses the character tokenizer.

当前发布模型使用字符级 tokenizer。

uv run python convert_to_char_dataset.py `
  --input datasets/AnimeName/dmhy_weak.jsonl `
  --output datasets/AnimeName/dmhy_weak_char.jsonl `
  --vocab-output datasets/AnimeName/vocab.char.json `
  --manifest-output datasets/AnimeName/dmhy_weak_char.manifest.json `
  --progress 50000

5. Full Training / 全量训练

Recommended RTX 3080 run:

推荐 RTX 3080 训练命令:

uv run python train.py --tokenizer char `
  --data-file datasets/AnimeName/dmhy_weak_char.jsonl `
  --vocab-file datasets/AnimeName/vocab.char.json `
  --save-dir checkpoints/dmhy-char-full `
  --init-model-dir . `
  --epochs 2 `
  --batch-size 256 `
  --learning-rate 0.00008 `
  --warmup-steps 300 `
  --max-seq-length 128 `
  --train-split 0.98 `
  --num-workers 4 `
  --checkpoint-steps 1000 `
  --save-total-limit 3 `
  --parse-eval-limit 2048 `
  --case-eval-file data/parser_regression_cases.json `
  --seed 52 `
  --experiment-name dmhy-char-full

Training outputs:

训练输出:

  • checkpoints/<run>/checkpoint-*: resumable checkpoints / 可恢复 checkpoint
  • checkpoints/<run>/final: final Hugging Face checkpoint / 最终 checkpoint
  • final/run_metadata.json: run configuration / 训练配置
  • final/trainer_eval_metrics.json: seqeval metrics / token/entity 指标
  • final/parse_eval_metrics.json: held-out parser exact-match / held-out 解析准确率
  • final/case_metrics.json: fixed real-world case regression / 固定真实 case 回归
  • TensorBoard logs unless --no-tensorboard is set / 默认写 TensorBoard

6. Thin Hard-Case Fine-Tuning / 薄层困难样本微调

Use hard-case fine-tuning only after a specific real-world failure pattern has been confirmed, fixed in the weak labels, and added to data/parser_regression_cases.json.

只有在确认某类真实失败样式、修复弱标注并加入 data/parser_regression_cases.json 后,才使用困难样本微调。

uv run python build_repair_focus_dataset.py `
  --input datasets/AnimeName/dmhy_weak_char.jsonl `
  --output data/thin_hard_focus_char.jsonl `
  --context-samples 30000 `
  --repeat-focus 3 `
  --repeat-manual 240 `
  --seed 57

uv run python train.py --tokenizer char `
  --data-file data/thin_hard_focus_char.jsonl `
  --vocab-file datasets/AnimeName/vocab.char.json `
  --save-dir checkpoints/dmhy-char-thin-hardfocus `
  --init-model-dir . `
  --epochs 2 `
  --batch-size 256 `
  --learning-rate 0.00004 `
  --warmup-steps 80 `
  --max-seq-length 128 `
  --train-split 0.95 `
  --num-workers 4 `
  --checkpoint-steps 300 `
  --save-total-limit 2 `
  --parse-eval-limit 1024 `
  --case-eval-file data/parser_regression_cases.json `
  --seed 58 `
  --experiment-name dmhy-char-thin-hardfocus

The default quality gate is model-led parsing:

默认质量门槛以模型主导解析为准:

  • fixed regression model_only >= 85%

  • held-out parse model_only >= 75%

  • normalized_only is the default thin runtime metric

  • structural filename assists are not part of training or release metrics

  • 固定回归 model_only >= 85%

  • held-out 解析 model_only >= 75%

  • normalized_only 是默认薄层运行时指标

  • 结构化文件名辅助不属于训练或发布指标

7. Publish to Repository Root / 发布到仓库根目录

The repository root is the Hugging Face checkpoint surface.

仓库根目录就是 Hugging Face checkpoint 发布面。

$final = "checkpoints/dmhy-char-full/final"
Copy-Item "$final/config.json" . -Force
Copy-Item "$final/model.safetensors" . -Force
Copy-Item "$final/tokenizer_config.json" . -Force
Copy-Item "$final/training_args.bin" . -Force
Copy-Item "$final/vocab.json" . -Force
Copy-Item "$final/run_metadata.json" . -Force
Copy-Item "$final/trainer_eval_metrics.json" . -Force
Copy-Item "$final/parse_eval_metrics.json" . -Force
Copy-Item "$final/case_metrics.json" . -Force
Copy-Item datasets/AnimeName/vocab.char.json .\vocab.char.json -Force

Then export ONNX:

然后导出 ONNX:

uv run python export_onnx.py --model-dir . --output exports/anime_filename_parser.onnx --max-length 128

8. Validation Checklist / 验证清单

Run these before committing:

提交前执行:

uv run python -m py_compile tokenizer.py dataset.py dmhy_dataset.py label_repairs.py train.py inference.py export_onnx.py onnx_inference.py
uv run python evaluate_parser_cases.py --model-dir . --case-file data/parser_regression_cases.json --output case_metrics.json
uv run python inference.py --model-dir . "[GM-Team][国漫][神印王座][Throne of Seal][2022][200][AVC][GB][1080P].mp4"
uv run python onnx_inference.py "[YYDM&VCB-Studio] Shinsekai Yori [NCED02][Ma10p_1080p][x265_flac].mkv"
uv run python benchmark_inference.py --model-dir . --onnx exports/anime_filename_parser.onnx --case-file data/parser_regression_cases.json --repeat 20 --warmup 20 --torch-threads 1 --ort-threads 1 --output benchmark_results.json

9. Git and LFS Order / Git 与 LFS 顺序

If the dataset submodule changed:

如果数据集子模块有变动:

git -C datasets/AnimeName add dmhy_weak.jsonl dmhy_weak.manifest.json dmhy_weak_char.jsonl dmhy_weak_char.manifest.json vocab.json vocab.char.json
git -C datasets/AnimeName commit -m "Update anime filename labels"
git -C datasets/AnimeName lfs push origin main --all
git -C datasets/AnimeName push origin main

Then commit the model repo:

再提交模型仓库:

git add README.md MAINTENANCE.md ANDROID.md docs/training.md docs/onnx.md `
  config.json model.safetensors tokenizer_config.json training_args.bin vocab.json vocab.char.json `
  exports/anime_filename_parser.onnx exports/anime_filename_parser.metadata.json `
  train.py inference.py export_onnx.py onnx_inference.py data/parser_regression_cases.json datasets/AnimeName
git commit -m "Update AniFileBERT model and documentation"
git lfs push origin main --all
git push origin main