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I'm encountering a challenging issue with GPU memory not being released properly between successive training phases in PyTorch, leading to CUDA out of memory errors.

My project involves fine-tuning a model in two consecutive phases:

  • first on a FP (Further pretraining Phase) dataset,
  • and then on an SFT (Supervised Fine-tuning) dataset.

The code structure is as follows:

from transformers import AutoModelForCausalLM

# Model and data loader initialization
model = AutoModelForCausalLM.from_pretrained(args.model)  # fig.1
fp_data_loader = data_loader(fp_dataset)
sft_data_loader = data_loader(sft_dataset)

# First phase of training
fp_model, fp_loss = train_loop(model, fp_data_loader) #fig.2
fp_model.module.save_pretrained(checkpoint_dir)

# Attempt to release GPU memory
del model, fp_data_loader,
# del fp_model
# fp_model = AutoModelForCausalLM.from_pretrained(checkpoint_dir)
gc.collect()
torch.cuda.empty_cache()  #fig.3

# Second phase of training
sft_model, sft_loss = train_loop(fp_model, sft_data_loader)

enter image description here
fig.1: when model is on gpu

enter image description here
fig.2: during training

enter image description here
fig.3: after empty_cache (capture issue: ignore gpu0's 77762/81920, it is 57524/81920)

My expectation was that the gpu allocation of fig.1 would be like after empty_cache, but there is quite a lot of gpu memory allocated as in fig.3

Despite explicitly deleting the model and data loader used in the first phase and calling gc.collect() and torch.cuda.empty_cache(), the GPU memory does not seem to be fully released. As a result, when initiating the second training phase, I'm faced with a CUDA out of memory error.

I also wrap my model, optimizer, and data loaders with accelerator.prepare() for mixed precision and distributed training, which might be relevant.

Has anyone faced similar issues or has suggestions on ensuring that GPU memory is properly released between training phases? I've considered completely restarting the process between phases but would prefer a cleaner solution if possible.

PS: This question was machine translated from Korean, apologies if there is awkward language.

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  • @talonmies I used AI for just translate my text.. I wrote whole text in my language, and just use chatgpt to translate in English..
    – hjsg1010
    Mar 5 at 1:11
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    ChatGPT is banned here for writing questions and answers, I have re-written the last line to make it clearer. Also your question doesn't need the CUDA tag, it isn't a CUDA programming question, it is a PyTorch memeory management question
    – talonmies
    Mar 5 at 1:26
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    Perhaps also try deleting fp_loss and fp_model? This is something I experience with sentence-transformers as well (I think in the eval loop) and so far the only solution I've found is to restart my ide. Mar 5 at 1:30
  • @talonmies thanks for giving tips using stackoverflow. have a nice day.
    – hjsg1010
    Mar 5 at 1:31
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    @DavidWaterworth yes I tried del all other variables that possibly allocated in gpu memory. Also Now I'm trying to do wrap by subprocess in python, so just kill FP process after fp_train_loop is done.
    – hjsg1010
    Mar 5 at 1:49

1 Answer 1

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Scheduling successive workoads on multi GPU environments can be quite a pain, especially for workloads with multi-phase dependencies. If you are still encountering challenges around it, Run:ai is an alternative that helps companies manage workloads efficiently and schedule them automatically on clusters. We can chat on Linkedin if you think it might be useful

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