# Copyright (c) Meta Platforms, Inc. and affiliates. # This software may be used and distributed according to the terms of the Llama 2 Community License Agreement. import pytest from pytest import approx from unittest.mock import patch import torch from torch.optim import AdamW from torch.utils.data.dataloader import DataLoader from torch.utils.data.sampler import BatchSampler from llama_recipes.finetuning import main from llama_recipes.data.sampler import LengthBasedBatchSampler def get_fake_dataset(): return [{ "input_ids":[1], "attention_mask":[1], "labels":[1], }] @patch('llama_recipes.finetuning.torch.cuda.is_available') @patch('llama_recipes.finetuning.train') @patch('llama_recipes.finetuning.LlamaForCausalLM.from_pretrained') @patch('llama_recipes.finetuning.AutoTokenizer.from_pretrained') @patch('llama_recipes.finetuning.get_preprocessed_dataset') @patch('llama_recipes.finetuning.optim.AdamW') @patch('llama_recipes.finetuning.StepLR') @pytest.mark.parametrize("cuda_is_available", [True, False]) def test_finetuning_no_validation(step_lr, optimizer, get_dataset, tokenizer, get_model, train, cuda, cuda_is_available): kwargs = {"run_validation": False} get_dataset.return_value = get_fake_dataset() cuda.return_value = cuda_is_available main(**kwargs) assert train.call_count == 1 args, kwargs = train.call_args train_dataloader = args[1] eval_dataloader = args[2] assert isinstance(train_dataloader, DataLoader) assert eval_dataloader is None if cuda_is_available: assert get_model.return_value.to.call_count == 1 assert get_model.return_value.to.call_args.args[0] == "cuda" else: assert get_model.return_value.to.call_count == 0 @patch('llama_recipes.finetuning.torch.cuda.is_available') @patch('llama_recipes.finetuning.train') @patch('llama_recipes.finetuning.LlamaForCausalLM.from_pretrained') @patch('llama_recipes.finetuning.AutoTokenizer.from_pretrained') @patch('llama_recipes.finetuning.get_preprocessed_dataset') @patch('llama_recipes.finetuning.optim.AdamW') @patch('llama_recipes.finetuning.StepLR') @pytest.mark.parametrize("cuda_is_available", [True, False]) def test_finetuning_with_validation(step_lr, optimizer, get_dataset, tokenizer, get_model, train, cuda, cuda_is_available): kwargs = {"run_validation": True} get_dataset.return_value = get_fake_dataset() cuda.return_value = cuda_is_available main(**kwargs) assert train.call_count == 1 args, kwargs = train.call_args train_dataloader = args[1] eval_dataloader = args[2] assert isinstance(train_dataloader, DataLoader) assert isinstance(eval_dataloader, DataLoader) if cuda_is_available: assert get_model.return_value.to.call_count == 1 assert get_model.return_value.to.call_args.args[0] == "cuda" else: assert get_model.return_value.to.call_count == 0 @patch('llama_recipes.finetuning.torch.cuda.is_available') @patch('llama_recipes.finetuning.train') @patch('llama_recipes.finetuning.LlamaForCausalLM.from_pretrained') @patch('llama_recipes.finetuning.AutoTokenizer.from_pretrained') @patch('llama_recipes.finetuning.get_preprocessed_dataset') @patch('llama_recipes.finetuning.generate_peft_config') @patch('llama_recipes.finetuning.get_peft_model') @patch('llama_recipes.finetuning.optim.AdamW') @patch('llama_recipes.finetuning.StepLR') @pytest.mark.parametrize("cuda_is_available", [True, False]) def test_finetuning_peft(step_lr, optimizer, get_peft_model, gen_peft_config, get_dataset, tokenizer, get_model, train, cuda, cuda_is_available): kwargs = {"use_peft": True} get_dataset.return_value = get_fake_dataset() cuda.return_value = cuda_is_available main(**kwargs) if cuda_is_available: assert get_peft_model.return_value.to.call_count == 1 assert get_peft_model.return_value.to.call_args.args[0] == "cuda" else: assert get_peft_model.return_value.to.call_count == 0 assert get_peft_model.return_value.print_trainable_parameters.call_count == 1 @patch('llama_recipes.finetuning.train') @patch('llama_recipes.finetuning.LlamaForCausalLM.from_pretrained') @patch('llama_recipes.finetuning.AutoTokenizer.from_pretrained') @patch('llama_recipes.finetuning.get_preprocessed_dataset') @patch('llama_recipes.finetuning.get_peft_model') @patch('llama_recipes.finetuning.StepLR') def test_finetuning_weight_decay(step_lr, get_peft_model, get_dataset, tokenizer, get_model, train, mocker): kwargs = {"weight_decay": 0.01} get_dataset.return_value = get_fake_dataset() model = mocker.MagicMock(name="Model") model.parameters.return_value = [torch.ones(1,1)] get_model.return_value = model main(**kwargs) assert train.call_count == 1 args, kwargs = train.call_args optimizer = args[4] print(optimizer.state_dict()) assert isinstance(optimizer, AdamW) assert optimizer.state_dict()["param_groups"][0]["weight_decay"] == approx(0.01) @patch('llama_recipes.finetuning.train') @patch('llama_recipes.finetuning.LlamaForCausalLM.from_pretrained') @patch('llama_recipes.finetuning.AutoTokenizer.from_pretrained') @patch('llama_recipes.finetuning.get_preprocessed_dataset') @patch('llama_recipes.finetuning.optim.AdamW') @patch('llama_recipes.finetuning.StepLR') def test_batching_strategy(step_lr, optimizer, get_dataset, tokenizer, get_model, train): kwargs = {"batching_strategy": "packing"} get_dataset.return_value = get_fake_dataset() main(**kwargs) assert train.call_count == 1 args, kwargs = train.call_args train_dataloader, eval_dataloader = args[1:3] assert isinstance(train_dataloader.batch_sampler, BatchSampler) assert isinstance(eval_dataloader.batch_sampler, BatchSampler) kwargs["batching_strategy"] = "padding" train.reset_mock() main(**kwargs) assert train.call_count == 1 args, kwargs = train.call_args train_dataloader, eval_dataloader = args[1:3] assert isinstance(train_dataloader.batch_sampler, LengthBasedBatchSampler) assert isinstance(eval_dataloader.batch_sampler, LengthBasedBatchSampler) kwargs["batching_strategy"] = "none" with pytest.raises(ValueError): main(**kwargs)