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| | import os |
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| | import torch |
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|
| | from llamafactory.extras.misc import get_current_device |
| | from llamafactory.hparams import get_train_args |
| | from llamafactory.model import load_model, load_tokenizer |
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|
| | TINY_LLAMA = os.environ.get("TINY_LLAMA", "llamafactory/tiny-random-Llama-3") |
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|
| | TRAIN_ARGS = { |
| | "model_name_or_path": TINY_LLAMA, |
| | "stage": "sft", |
| | "do_train": True, |
| | "finetuning_type": "lora", |
| | "lora_target": "all", |
| | "dataset": "llamafactory/tiny-supervised-dataset", |
| | "dataset_dir": "ONLINE", |
| | "template": "llama3", |
| | "cutoff_len": 1024, |
| | "overwrite_cache": True, |
| | "output_dir": "dummy_dir", |
| | "overwrite_output_dir": True, |
| | "fp16": True, |
| | } |
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|
| | def test_checkpointing_enable(): |
| | model_args, _, _, finetuning_args, _ = get_train_args({"disable_gradient_checkpointing": False, **TRAIN_ARGS}) |
| | tokenizer_module = load_tokenizer(model_args) |
| | model = load_model(tokenizer_module["tokenizer"], model_args, finetuning_args, is_trainable=True) |
| | for module in filter(lambda m: hasattr(m, "gradient_checkpointing"), model.modules()): |
| | assert getattr(module, "gradient_checkpointing") is True |
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|
| | def test_checkpointing_disable(): |
| | model_args, _, _, finetuning_args, _ = get_train_args({"disable_gradient_checkpointing": True, **TRAIN_ARGS}) |
| | tokenizer_module = load_tokenizer(model_args) |
| | model = load_model(tokenizer_module["tokenizer"], model_args, finetuning_args, is_trainable=True) |
| | for module in filter(lambda m: hasattr(m, "gradient_checkpointing"), model.modules()): |
| | assert getattr(module, "gradient_checkpointing") is False |
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|
| | def test_upcast_layernorm(): |
| | model_args, _, _, finetuning_args, _ = get_train_args({"upcast_layernorm": True, **TRAIN_ARGS}) |
| | tokenizer_module = load_tokenizer(model_args) |
| | model = load_model(tokenizer_module["tokenizer"], model_args, finetuning_args, is_trainable=True) |
| | for name, param in model.named_parameters(): |
| | if param.ndim == 1 and "norm" in name: |
| | assert param.dtype == torch.float32 |
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|
| | def test_upcast_lmhead_output(): |
| | model_args, _, _, finetuning_args, _ = get_train_args({"upcast_lmhead_output": True, **TRAIN_ARGS}) |
| | tokenizer_module = load_tokenizer(model_args) |
| | model = load_model(tokenizer_module["tokenizer"], model_args, finetuning_args, is_trainable=True) |
| | inputs = torch.randn((1, 16), dtype=torch.float16, device=get_current_device()) |
| | outputs: "torch.Tensor" = model.get_output_embeddings()(inputs) |
| | assert outputs.dtype == torch.float32 |
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