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๐Ÿ‘Ÿ Trainer

PyPI - License PyPI - Python Version PyPI - Version GithubActions GithubActions

An opinionated general purpose model trainer on PyTorch with a simple code base. Fork of the original, unmaintained repository. New PyPI package: coqui-tts-trainer

Installation

From PyPI:

pip install coqui-tts-trainer

From Github:

git clone https://github.com/idiap/coqui-ai-Trainer
cd coqui-ai-Trainer
pip install -e .

Implementing a model

Subclass and overload the functions in the TrainerModel()

Training a model with auto-optimization

See the MNIST example.

Training a model with advanced optimization

With ๐Ÿ‘Ÿ you can define the whole optimization cycle as you want as the in GAN example below. It enables more under-the-hood control and flexibility for more advanced training loops.

You just have to use the scaled_backward() function to handle mixed precision training.

...

def optimize(self, batch, trainer):
    imgs, _ = batch

    # sample noise
    z = torch.randn(imgs.shape[0], 100)
    z = z.type_as(imgs)

    # train discriminator
    imgs_gen = self.generator(z)
    logits = self.discriminator(imgs_gen.detach())
    fake = torch.zeros(imgs.size(0), 1)
    fake = fake.type_as(imgs)
    loss_fake = trainer.criterion(logits, fake)

    valid = torch.ones(imgs.size(0), 1)
    valid = valid.type_as(imgs)
    logits = self.discriminator(imgs)
    loss_real = trainer.criterion(logits, valid)
    loss_disc = (loss_real + loss_fake) / 2

    # step dicriminator
    _, _ = self.scaled_backward(loss_disc, None, trainer, trainer.optimizer[0])

    if trainer.total_steps_done % trainer.grad_accum_steps == 0:
        trainer.optimizer[0].step()
        trainer.optimizer[0].zero_grad()

    # train generator
    imgs_gen = self.generator(z)

    valid = torch.ones(imgs.size(0), 1)
    valid = valid.type_as(imgs)

    logits = self.discriminator(imgs_gen)
    loss_gen = trainer.criterion(logits, valid)

    # step generator
    _, _ = self.scaled_backward(loss_gen, None, trainer, trainer.optimizer[1])
    if trainer.total_steps_done % trainer.grad_accum_steps == 0:
        trainer.optimizer[1].step()
        trainer.optimizer[1].zero_grad()
    return {"model_outputs": logits}, {"loss_gen": loss_gen, "loss_disc": loss_disc}

...

See the GAN training example with Gradient Accumulation

Training with Batch Size Finder

see the test script here for training with batch size finder.

The batch size finder starts at a default BS(defaults to 2048 but can also be user defined) and searches for the largest batch size that can fit on your hardware. you should expect for it to run multiple trainings until it finds it. to use it instead of calling trainer.fit() youll call trainer.fit_with_largest_batch_size(starting_batch_size=2048) with starting_batch_size being the batch the size you want to start the search with. very useful if you are wanting to use as much gpu mem as possible.

Training with DDP

$ python -m trainer.distribute --script path/to/your/train.py --gpus "0,1"

We don't use .spawn() to initiate multi-gpu training since it causes certain limitations.

  • Everything must the pickable.
  • .spawn() trains the model in subprocesses and the model in the main process is not updated.
  • DataLoader with N processes gets really slow when the N is large.

Training with Accelerate

Setting use_accelerate in TrainingArgs to True will enable training with Accelerate.

You can also use it for multi-gpu or distributed training.

CUDA_VISIBLE_DEVICES="0,1,2" accelerate launch --multi_gpu --num_processes 3 train_recipe_autoregressive_prompt.py

See the Accelerate docs.

Adding a callback

๐Ÿ‘Ÿ Supports callbacks to customize your runs. You can either set callbacks in your model implementations or give them explicitly to the Trainer.

Please check trainer.utils.callbacks to see available callbacks.

Here is how you provide an explicit call back to a ๐Ÿ‘ŸTrainer object for weight reinitialization.

def my_callback(trainer):
    print(" > My callback was called.")

trainer = Trainer(..., callbacks={"on_init_end": my_callback})
trainer.fit()

Profiling example

  • Create the torch profiler as you like and pass it to the trainer.
    import torch
    profiler = torch.profiler.profile(
        activities=[
            torch.profiler.ProfilerActivity.CPU,
            torch.profiler.ProfilerActivity.CUDA,
        ],
        schedule=torch.profiler.schedule(wait=1, warmup=1, active=3, repeat=2),
        on_trace_ready=torch.profiler.tensorboard_trace_handler("./profiler/"),
        record_shapes=True,
        profile_memory=True,
        with_stack=True,
    )
    prof = trainer.profile_fit(profiler, epochs=1, small_run=64)
    then run Tensorboard
  • Run the tensorboard.
    tensorboard --logdir="./profiler/"

Supported Experiment Loggers

To add a new logger, you must subclass BaseDashboardLogger and overload its functions.

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