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| import os
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| import pytest
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| import torch
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| from llamafactory.train.test_utils import (
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| check_lora_model,
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| compare_model,
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| load_infer_model,
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| load_reference_model,
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| load_train_model,
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| patch_valuehead_model,
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| )
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| TINY_LLAMA3 = os.getenv("TINY_LLAMA3", "llamafactory/tiny-random-Llama-3")
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| TINY_LLAMA_ADAPTER = os.getenv("TINY_LLAMA_ADAPTER", "llamafactory/tiny-random-Llama-3-lora")
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| TINY_LLAMA_VALUEHEAD = os.getenv("TINY_LLAMA_VALUEHEAD", "llamafactory/tiny-random-Llama-3-valuehead")
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| TRAIN_ARGS = {
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| "model_name_or_path": TINY_LLAMA3,
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| "stage": "sft",
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| "do_train": True,
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| "finetuning_type": "lora",
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| "dataset": "llamafactory/tiny-supervised-dataset",
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| "dataset_dir": "ONLINE",
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| "template": "llama3",
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| "cutoff_len": 1024,
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| "output_dir": "dummy_dir",
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| "overwrite_output_dir": True,
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| "fp16": True,
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| }
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| INFER_ARGS = {
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| "model_name_or_path": TINY_LLAMA3,
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| "adapter_name_or_path": TINY_LLAMA_ADAPTER,
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| "finetuning_type": "lora",
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| "template": "llama3",
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| "infer_dtype": "float16",
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| }
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| @pytest.fixture
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| def fix_valuehead_cpu_loading():
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| patch_valuehead_model()
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| def test_lora_train_qv_modules():
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| model = load_train_model(lora_target="q_proj,v_proj", **TRAIN_ARGS)
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| linear_modules, _ = check_lora_model(model)
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| assert linear_modules == {"q_proj", "v_proj"}
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| def test_lora_train_all_modules():
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| model = load_train_model(lora_target="all", **TRAIN_ARGS)
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| linear_modules, _ = check_lora_model(model)
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| assert linear_modules == {"q_proj", "k_proj", "v_proj", "o_proj", "up_proj", "gate_proj", "down_proj"}
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| def test_lora_train_extra_modules():
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| model = load_train_model(additional_target="embed_tokens,lm_head", **TRAIN_ARGS)
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| _, extra_modules = check_lora_model(model)
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| assert extra_modules == {"embed_tokens", "lm_head"}
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| def test_lora_train_old_adapters():
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| model = load_train_model(adapter_name_or_path=TINY_LLAMA_ADAPTER, create_new_adapter=False, **TRAIN_ARGS)
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| ref_model = load_reference_model(TINY_LLAMA3, TINY_LLAMA_ADAPTER, use_lora=True, is_trainable=True)
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| compare_model(model, ref_model)
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| def test_lora_train_new_adapters():
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| model = load_train_model(adapter_name_or_path=TINY_LLAMA_ADAPTER, create_new_adapter=True, **TRAIN_ARGS)
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| ref_model = load_reference_model(TINY_LLAMA3, TINY_LLAMA_ADAPTER, use_lora=True, is_trainable=True)
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| compare_model(
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| model, ref_model, diff_keys=["q_proj", "k_proj", "v_proj", "o_proj", "up_proj", "gate_proj", "down_proj"]
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| )
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| @pytest.mark.usefixtures("fix_valuehead_cpu_loading")
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| def test_lora_train_valuehead():
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| model = load_train_model(add_valuehead=True, **TRAIN_ARGS)
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| ref_model = load_reference_model(TINY_LLAMA_VALUEHEAD, is_trainable=True, add_valuehead=True)
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| state_dict = model.state_dict()
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| ref_state_dict = ref_model.state_dict()
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| assert torch.allclose(state_dict["v_head.summary.weight"], ref_state_dict["v_head.summary.weight"])
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| assert torch.allclose(state_dict["v_head.summary.bias"], ref_state_dict["v_head.summary.bias"])
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| def test_lora_inference():
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| model = load_infer_model(**INFER_ARGS)
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| ref_model = load_reference_model(TINY_LLAMA3, TINY_LLAMA_ADAPTER, use_lora=True).merge_and_unload()
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| compare_model(model, ref_model)
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