| |
| from unittest import mock |
|
|
| from litgpt.data import Deita, SFTDataset |
| from litgpt.data.deita import format_dataset |
| from litgpt.prompts import Alpaca as AlpacaPromptStyle |
|
|
|
|
| def test_format_dataset(): |
| data = [ |
| { |
| "prompt": "prompt1", |
| "prompt_id": "1", |
| "messages": [ |
| {"content": "question1", "role": "user"}, |
| {"content": "response1", "role": "assistant"}, |
| {"content": "question2", "role": "user"}, |
| {"content": "response2", "role": "assistant"}, |
| ], |
| }, |
| { |
| "prompt": "prompt2", |
| "prompt_id": "2", |
| "messages": [ |
| {"content": "question3", "role": "user"}, |
| {"content": "response3", "role": "assistant"}, |
| {"content": "question4", "role": "user"}, |
| {"content": "response4", "role": "assistant"}, |
| ], |
| }, |
| ] |
|
|
| assert format_dataset(data, include_multi_turn_conversations=False) == [ |
| {"instruction": "question1", "output": "response1", "input": ""}, |
| {"instruction": "question3", "output": "response3", "input": ""}, |
| ] |
| assert format_dataset(data, include_multi_turn_conversations=True) == [ |
| {"instruction": "question1", "output": "response1", "input": ""}, |
| {"instruction": "question2", "output": "response2", "input": ""}, |
| {"instruction": "question3", "output": "response3", "input": ""}, |
| {"instruction": "question4", "output": "response4", "input": ""}, |
| ] |
|
|
|
|
| @mock.patch("litgpt.data.deita.format_dataset") |
| @mock.patch("datasets.load_dataset") |
| def test_deita(_, format_dataset_mock, mock_tokenizer, tmp_path): |
| format_dataset_mock.return_value = [ |
| {"instruction": "inst1", "output": "out1"}, |
| {"instruction": "inst2", "output": "out2"}, |
| {"instruction": "inst3", "output": "out3"}, |
| ] |
|
|
| deita = Deita(num_workers=0, download_dir=tmp_path) |
| assert isinstance(deita.prompt_style, AlpacaPromptStyle) |
| deita.connect(mock_tokenizer, batch_size=2, max_seq_length=10) |
| deita.prepare_data() |
| deita.setup() |
|
|
| train_dataloader = deita.train_dataloader() |
| assert isinstance(train_dataloader.dataset, SFTDataset) |
| assert len(train_dataloader) == 2 |
|
|
| val_dataloader = deita.val_dataloader() |
| assert isinstance(val_dataloader.dataset, SFTDataset) |
| assert len(val_dataloader) == 2 |
|
|
| assert isinstance(train_dataloader.dataset.prompt_style, AlpacaPromptStyle) |
| assert isinstance(val_dataloader.dataset.prompt_style, AlpacaPromptStyle) |
|
|
| |
| assert deita.prepare_data_per_node |
|
|