# SPDX-License-Identifier: AGPL-3.0-only # Copyright 2026-present the Unsloth AI Inc. team. All rights reserved. See /studio/LICENSE.AGPL-3.0 import time from pathlib import Path from typing import Optional import typer from unsloth_cli._inference import ensure_studio_backend_path from unsloth_cli.config import Config, load_config from unsloth_cli.options import add_options_from_config def _should_use_mlx_backend_for_cli() -> bool: ensure_studio_backend_path() from studio.backend.core.training.training import should_use_mlx_training_backend return should_use_mlx_training_backend() def _activate_mlx_transformers(model_name: str, hf_token: Optional[str]) -> None: # Activate before any transformers import: adapter model-type detection imports utils.models. ensure_studio_backend_path() from utils.transformers_version import activate_transformers_for_subprocess try: activate_transformers_for_subprocess(model_name, hf_token) except Exception as exc: typer.echo(f"Warning: failed to activate Transformers sidecar: {exc}", err = True) def _create_cli_trainer(model_name: str, hf_token: Optional[str]): if _should_use_mlx_backend_for_cli(): _activate_mlx_transformers(model_name, hf_token) # MLX is torch-free: use the lightweight adapter, not trainer.py (imports torch/unsloth/trl at load). ensure_studio_backend_path() from studio.backend.core.training.training import create_mlx_trainer_adapter return create_mlx_trainer_adapter() ensure_studio_backend_path() from studio.backend.core.training.trainer import UnslothTrainer return UnslothTrainer() @add_options_from_config(Config) def train( config: Optional[Path] = typer.Option( None, "--config", "-c", help = "Path to YAML/JSON config file. CLI flags override config values.", ), hf_token: Optional[str] = typer.Option( None, "--hf-token", envvar = "HF_TOKEN", help = "Hugging Face token if needed." ), wandb_token: Optional[str] = typer.Option( None, "--wandb-token", envvar = "WANDB_API_KEY", help = "Weights & Biases API key." ), dry_run: bool = typer.Option( False, "--dry-run", help = "Show resolved config and exit without training.", ), config_overrides: dict = None, ): """Launch training using the existing Unsloth training backend.""" try: cfg = load_config(config) except FileNotFoundError as e: typer.echo(f"Error: {e}", err = True) raise typer.Exit(code = 2) config_overrides = config_overrides or {} cfg.apply_overrides(**config_overrides) # CLI/env tokens take precedence; guard against unresolved typer.Option # (decorator interaction) from typer.models import OptionInfo if isinstance(hf_token, OptionInfo): hf_token = None if isinstance(wandb_token, OptionInfo): wandb_token = None hf_token = hf_token or cfg.logging.hf_token wandb_token = wandb_token or cfg.logging.wandb_token if dry_run: import yaml data = cfg.model_dump() data["training"]["output_dir"] = str(data["training"]["output_dir"]) typer.echo(yaml.dump(data, default_flow_style = False, sort_keys = False)) raise typer.Exit(code = 0) if not cfg.model: typer.echo("Error: provide --model or set model in --config", err = True) raise typer.Exit(code = 2) if not cfg.data.dataset and not cfg.data.local_dataset: typer.echo("Error: provide --dataset or --local-dataset (or via --config)", err = True) raise typer.Exit(code = 2) # A LoRA adapter dir has adapter_config.json model_path = Path(cfg.model) if cfg.model else None model_is_lora = ( model_path and model_path.is_dir() and (model_path / "adapter_config.json").exists() ) use_lora = cfg.training.training_type.lower() == "lora" if model_is_lora and not use_lora: typer.echo( "Error: Cannot do full finetuning on a LoRA adapter. " "Use --training-type lora or provide a base model.", err = True, ) raise typer.Exit(code = 2) trainer = _create_cli_trainer(cfg.model, hf_token) # Load model (trainer.is_vlm is set after this) if not trainer.load_model( model_name = cfg.model, max_seq_length = cfg.training.max_seq_length, load_in_4bit = cfg.training.load_in_4bit if use_lora else False, hf_token = hf_token, ): typer.echo("Model load failed", err = True) raise typer.Exit(code = 1) is_vision = trainer.is_vlm if not trainer.prepare_model_for_training(**cfg.model_kwargs(use_lora, is_vision)): typer.echo("Model preparation failed", err = True) raise typer.Exit(code = 1) result = trainer.load_and_format_dataset( dataset_source = cfg.data.dataset or "", format_type = cfg.data.format_type, local_datasets = cfg.data.local_dataset, ) if result is None: typer.echo("Dataset load failed", err = True) raise typer.Exit(code = 1) ds, eval_ds = result training_kwargs = cfg.training_kwargs() training_kwargs["wandb_token"] = wandb_token # CLI/env takes precedence started = trainer.start_training(dataset = ds, eval_dataset = eval_ds, **training_kwargs) if not started: typer.echo("Training failed to start", err = True) raise typer.Exit(code = 1) try: while trainer.training_thread and trainer.training_thread.is_alive(): progress = trainer.get_training_progress() if getattr(progress, "error", None): break time.sleep(1) except KeyboardInterrupt: typer.echo("Stopping training (Ctrl+C detected)...") trainer.stop_training() finally: if trainer.training_thread: progress = trainer.get_training_progress() if getattr(progress, "error", None): trainer.training_thread.join(timeout = 5) else: trainer.training_thread.join() final = trainer.get_training_progress() if getattr(final, "error", None): typer.echo(f"Training error: {final.error}", err = True) raise typer.Exit(code = 1)