"""Prepare and train a model on a dataset. Can also infer from a model or merge lora"""

import logging
import os
import signal
import sys
from dataclasses import dataclass
from pathlib import Path
from typing import Optional

import torch

# add src to the pythonpath so we don't need to pip install this
from datasets import Dataset
from optimum.bettertransformer import BetterTransformer

from axolotl.common.cli import TrainerCliArgs
from axolotl.logging_config import configure_logging
from axolotl.utils.dict import DictDefault
from axolotl.utils.models import load_model, load_tokenizer
from axolotl.utils.trainer import setup_trainer

project_root = os.path.abspath(os.path.join(os.path.dirname(__file__), ".."))
src_dir = os.path.join(project_root, "src")
sys.path.insert(0, src_dir)

configure_logging()
LOG = logging.getLogger("axolotl.train")


@dataclass
class TrainDatasetMeta:
    """
    dataclass to capture the dataset specific options for training
    """

    train_dataset: Dataset
    eval_dataset: Optional[Dataset] = None
    total_num_steps: Optional[int] = None


def train(
    *,
    cfg: DictDefault,
    cli_args: TrainerCliArgs,
    dataset_meta: TrainDatasetMeta,
):
    # load the tokenizer first
    LOG.info(f"loading tokenizer... {cfg.tokenizer_config or cfg.base_model_config}")
    tokenizer = load_tokenizer(cfg)

    train_dataset = dataset_meta.train_dataset
    eval_dataset = dataset_meta.eval_dataset
    total_num_steps = dataset_meta.total_num_steps

    # Load the model and tokenizer
    LOG.info("loading model and (optionally) peft_config...")
    model, peft_config = load_model(cfg, tokenizer, inference=cli_args.inference)

    safe_serialization = cfg.save_safetensors is True

    if cfg.resume_from_checkpoint is None and cfg.auto_resume_from_checkpoints:
        possible_checkpoints = [
            str(cp) for cp in Path(cfg.output_dir).glob("checkpoint-*")
        ]
        if len(possible_checkpoints) > 0:
            sorted_paths = sorted(
                possible_checkpoints,
                key=lambda path: int(path.split("-")[-1]),
            )
            cfg.resume_from_checkpoint = sorted_paths[-1]
            LOG.info(
                f"Using Auto-resume functionality to start with checkpoint at {cfg.resume_from_checkpoint}"
            )
    resume_from_checkpoint = cfg.resume_from_checkpoint

    trainer = setup_trainer(
        cfg, train_dataset, eval_dataset, model, tokenizer, total_num_steps
    )

    model.config.use_cache = False

    # go ahead and presave, so we have the adapter config available to inspect
    if peft_config:
        LOG.info(f"Pre-saving adapter config to {cfg.output_dir}")
        peft_config.save_pretrained(cfg.output_dir)
    # additionally presave the tokenizer and model configs
    if not Path(cfg.output_dir).is_dir():
        os.makedirs(cfg.output_dir, exist_ok=True)
    tokenizer.save_pretrained(str(Path(cfg.output_dir)))
    model.config.save_pretrained(str(Path(cfg.output_dir)))

    # In case we want to stop early with ctrl+c, this is a nice to have to save the pretrained model
    if cfg.local_rank == 0:

        def terminate_handler(_, __, model):
            if cfg.flash_optimum:
                model = BetterTransformer.reverse(model)
            model.save_pretrained(cfg.output_dir, safe_serialization=safe_serialization)
            sys.exit(0)

        signal.signal(
            signal.SIGINT, lambda signum, frame: terminate_handler(signum, frame, model)
        )

    LOG.info("Starting trainer...")
    if cfg.group_by_length:
        LOG.info("hang tight... sorting dataset for group_by_length")

    if cfg.flash_optimum:
        with torch.backends.cuda.sdp_kernel(
            enable_flash=True, enable_math=True, enable_mem_efficient=True
        ):
            trainer.train(resume_from_checkpoint=resume_from_checkpoint)
    else:
        trainer.train(resume_from_checkpoint=resume_from_checkpoint)

    LOG.info(f"Training Completed!!! Saving pre-trained model to {cfg.output_dir}")

    if cfg.relora_steps:
        if cfg.adapter == "lora" and not (cfg.load_in_4bit or cfg.load_in_8bit):
            model = model.merge_and_unload()
        else:
            # final model weights have already been saved by `ReLoRACallback.on_train_end`
            return model, tokenizer

    # TODO do we need this fix? https://huggingface.co/docs/accelerate/usage_guides/fsdp#saving-and-loading
    # only save on rank 0, otherwise it corrupts output on multi-GPU when multiple processes attempt to write the same file
    if cfg.fsdp:
        trainer.save_model(cfg.output_dir)
    elif cfg.local_rank == 0:
        if cfg.flash_optimum:
            model = BetterTransformer.reverse(model)

        model.save_pretrained(cfg.output_dir, safe_serialization=safe_serialization)

    return model, tokenizer