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| import pandas as pd |
| import pytest |
| from ..customization_dataset_preparation import ( |
| convert_into_prompt_completion_only, |
| convert_into_template, |
| drop_duplicated_rows, |
| drop_unrequired_fields, |
| get_common_suffix, |
| get_prepared_filename, |
| parse_template, |
| recommend_hyperparameters, |
| show_first_example_in_df, |
| split_into_train_validation, |
| template_mapper, |
| validate_template, |
| warn_and_drop_long_samples, |
| warn_completion_is_not_empty, |
| warn_duplicated_rows, |
| warn_imbalanced_completion, |
| warn_low_n_samples, |
| warn_missing_suffix, |
| ) |
|
|
|
|
| def test_recommend_hyperparameters(): |
| df_100 = pd.DataFrame({'prompt': ['prompt'] * 100, 'completion': ['completion'] * 100}) |
| assert recommend_hyperparameters(df_100) == { |
| 'batch_size': 32, |
| 'max_batch_size': 64, |
| 'num_virtual_tokens': 10, |
| 'encoder_hidden_size': 1024, |
| 'lr': 0.005, |
| 'epochs': 10, |
| 'max_seq_length': 104, |
| } |
|
|
| df_1000 = pd.DataFrame({'prompt': ['prompt'] * 1000, 'completion': ['completion'] * 1000}) |
| assert recommend_hyperparameters(df_1000) == { |
| 'batch_size': 32, |
| 'max_batch_size': 128, |
| 'num_virtual_tokens': 10, |
| 'encoder_hidden_size': 2048, |
| 'lr': 0.001, |
| 'epochs': 10, |
| 'max_seq_length': 104, |
| } |
| df_10000 = pd.DataFrame({'prompt': ['prompt'] * 10000, 'completion': ['completion'] * 10000}) |
| assert recommend_hyperparameters(df_10000) == { |
| 'batch_size': 32, |
| 'max_batch_size': 128, |
| 'num_virtual_tokens': 10, |
| 'encoder_hidden_size': 4096, |
| 'lr': 0.0005, |
| 'epochs': 10, |
| 'max_seq_length': 104, |
| } |
| df_100000 = pd.DataFrame({'prompt': ['prompt'] * 100000, 'completion': ['completion'] * 100000}) |
| assert recommend_hyperparameters(df_100000) == { |
| 'batch_size': 32, |
| 'max_batch_size': 128, |
| 'num_virtual_tokens': 10, |
| 'encoder_hidden_size': 4096, |
| 'lr': 0.0001, |
| 'epochs': 10, |
| 'max_seq_length': 104, |
| } |
|
|
|
|
| def test_warn_completion_is_not_empty(): |
|
|
| df_all_empty = pd.DataFrame({'prompt': ['prompt'] * 2, 'completion': [''] * 2}) |
|
|
| msg_all_empty = ( |
| "TODO: Note all completion fields are empty. This is possibly expected for inference but not for training" |
| ) |
|
|
| assert warn_completion_is_not_empty(df_all_empty) == msg_all_empty |
|
|
| df_some_empty = pd.DataFrame({'prompt': ['prompt'] * 2, 'completion': ['', 'completion']}) |
|
|
| msg_some_empty = f"""TODO: completion contains {1} empty values at rows ({[0]}) |
| Please check the original file that the fields for prompt template are |
| not empty and rerun dataset validation""" |
|
|
| assert warn_completion_is_not_empty(df_some_empty) == msg_some_empty |
|
|
| df_no_empty = pd.DataFrame({'prompt': ['prompt'] * 2, 'completion': ['completion'] * 2}) |
|
|
| assert warn_completion_is_not_empty(df_no_empty) is None |
|
|
|
|
| def test_warn_imbalanced_completion(): |
| df_generation = pd.DataFrame( |
| {'prompt': [f'prompt{i}' for i in range(100)], 'completion': [f'completion{i}' for i in range(100)]} |
| ) |
| assert warn_imbalanced_completion(df_generation) is None |
|
|
| df_classification_balanced = pd.DataFrame( |
| {'prompt': [f'prompt{i}' for i in range(100)], 'completion': [f'completion{i}' for i in range(5)] * 20} |
| ) |
|
|
| msg_classification_balanced = ( |
| f"There are {5} unique completions over {100} samples.\nThe five most common completions are:" |
| ) |
| for i in range(5): |
| msg_classification_balanced += f"\n {20} samples ({20.0}%) with completion: completion{i}" |
|
|
| assert warn_imbalanced_completion(df_classification_balanced) == msg_classification_balanced |
|
|
| df_classification_imbalanced = pd.DataFrame( |
| { |
| 'prompt': [f'prompt{i}' for i in range(100)], |
| 'completion': ['completion0'] * 95 + [f'completion{i}' for i in range(5)], |
| } |
| ) |
|
|
| msg_classification_imbalanced = ( |
| f"There are {5} unique completions over {100} samples.\nThe five most common completions are:" |
| ) |
| msg_classification_imbalanced += f"\n {96} samples ({96.0}%) with completion: completion0" |
| for i in range(1, 5): |
| msg_classification_imbalanced += f"\n {1} samples ({1.0}%) with completion: completion{i}" |
|
|
| assert warn_imbalanced_completion(df_classification_imbalanced) == msg_classification_imbalanced |
|
|
|
|
| def test_get_common_suffix(): |
| df = pd.DataFrame( |
| { |
| 'prompt': [f'prompt{i} answer:' for i in range(100)], |
| 'completion': [f'completion{i}' for i in range(100)], |
| 'empty_completion': [''] * 100, |
| 'some_empty_completion': ['', 'completion'] * 50, |
| } |
| ) |
| assert get_common_suffix(df.prompt) == " answer:" |
| assert get_common_suffix(df.completion) == "" |
| assert get_common_suffix(df.empty_completion) == "" |
| assert get_common_suffix(df.some_empty_completion) == "" |
|
|
|
|
| def test_warn_missing_suffix(): |
| df_no_common = pd.DataFrame( |
| {'prompt': [f'prompt{i}' for i in range(100)], 'completion': [f'completion{i}' for i in range(100)],} |
| ) |
| message = f"TODO: prompt does not have common suffix, please add one (e.g. \\n) at the end of prompt_template\n" |
| message += ( |
| f"TODO: completion does not have common suffix, please add one (e.g. \\n) at the end of completion_template\n" |
| ) |
|
|
| assert warn_missing_suffix(df_no_common) == message |
| df_common = pd.DataFrame( |
| {'prompt': [f'prompt{i} answer:' for i in range(100)], 'completion': [f'completion{i}\n' for i in range(100)],} |
| ) |
| assert warn_missing_suffix(df_common) is None |
|
|
|
|
| def test_parse_template(): |
| template_qa_prompt = "Context: {context}, Question: {question} Answer:" |
| template_qa_completion = "{answer}" |
| template_prompt = "{prompt}" |
| template_completion = "{completion}" |
| assert parse_template(template_qa_prompt) == ['context', 'question'] |
| assert parse_template(template_qa_completion) == ['answer'] |
| assert parse_template(template_prompt) == ['prompt'] |
| assert parse_template(template_completion) == ['completion'] |
|
|
|
|
| def test_validate_template(): |
| template = "{prompt}" |
| template_missing_left = "prompt}" |
| template_missing_right = "{prompt" |
| template_twice = "{{prompt}}" |
| template_enclosed = "{prompt{enclosed}}" |
| assert validate_template(template) is None |
| with pytest.raises(ValueError): |
| validate_template(template_missing_left) |
| with pytest.raises(ValueError): |
| validate_template(template_missing_right) |
| with pytest.raises(ValueError): |
| validate_template(template_twice) |
| with pytest.raises(ValueError): |
| validate_template(template_enclosed) |
|
|
|
|
| def test_warn_duplicated_rows(): |
| df_duplicated = pd.DataFrame({'prompt': ['prompt'] * 2, 'completion': ['completion'] * 2}) |
|
|
| message_duplicated = f"TODO: There are {1} duplicated rows " |
| message_duplicated += f"at rows ([1]) \n" |
| message_duplicated += "Please check the original file to make sure that is expected\n" |
| message_duplicated += "If it is not, please add the argument --drop_duplicate" |
|
|
| assert warn_duplicated_rows(df_duplicated) == message_duplicated |
|
|
| df_unique = pd.DataFrame({'prompt': ['prompt', 'prompt1'], 'completion': ['completion', 'completion1']}) |
| assert warn_duplicated_rows(df_unique) is None |
|
|
| df_only_prompt_duplicated = pd.DataFrame({'prompt': ['prompt'] * 2, 'completion': ['completion', 'completion1']}) |
| assert warn_duplicated_rows(df_only_prompt_duplicated) is None |
|
|
|
|
| def test_drop_duplicated_rows(): |
| df_deduplicated = pd.DataFrame({'prompt': ['prompt'], 'completion': ['completion']}) |
|
|
| df_duplicated = pd.DataFrame({'prompt': ['prompt'] * 2, 'completion': ['completion'] * 2}) |
| message_duplicated = "There are 1 duplicated rows\n" |
| message_duplicated += "Removed 1 duplicate rows" |
|
|
| assert drop_duplicated_rows(df_duplicated)[0].equals(df_deduplicated) |
| assert drop_duplicated_rows(df_duplicated)[1] == message_duplicated |
|
|
| df_unique = pd.DataFrame({'prompt': ['prompt', 'prompt1'], 'completion': ['completion', 'completion1']}) |
| assert drop_duplicated_rows(df_unique) == (df_unique, None) |
|
|
| df_only_prompt_duplicated = pd.DataFrame({'prompt': ['prompt'] * 2, 'completion': ['completion', 'completion1']}) |
| assert drop_duplicated_rows(df_only_prompt_duplicated) == (df_only_prompt_duplicated, None) |
|
|
|
|
| def test_template_mapper(): |
|
|
| df = pd.DataFrame({'prompt': ['prompt sample'],}) |
|
|
| template = "{prompt}" |
| field_names = ['prompt'] |
| assert template_mapper(df.iloc[0], field_names, template) == 'prompt sample' |
|
|
| df_qa = pd.DataFrame({'question': ['question sample'], 'context': ['context sample']}) |
|
|
| template_qa = "Context: {context} Question: {question} Answer:" |
| field_names_qa = ['context', 'question'] |
| assert ( |
| template_mapper(df_qa.iloc[0], field_names_qa, template_qa) |
| == "Context: context sample Question: question sample Answer:" |
| ) |
|
|
|
|
| def test_drop_unrequired_fields(): |
| df = pd.DataFrame( |
| {'question': ['question'], 'context': ['context'], 'prompt': ['prompt'], 'completion': ['completion']} |
| ) |
|
|
| df_dropped_unnecessary_fields = pd.DataFrame({'prompt': ['prompt'], 'completion': ['completion']}) |
| assert df_dropped_unnecessary_fields.equals(drop_unrequired_fields(df)) |
|
|
|
|
| def test_convert_into_template(): |
| df_non_existant_field_name = pd.DataFrame({'question': ['question']}) |
|
|
| template = "Context: {context} Question: {question} Answer:" |
| with pytest.raises(ValueError): |
| convert_into_template(df_non_existant_field_name, template) |
|
|
| df = pd.DataFrame({'question': ['question sample'], 'context': ['context sample'],}) |
|
|
| df_prompt = pd.DataFrame( |
| { |
| 'question': ['question sample'], |
| 'context': ['context sample'], |
| 'prompt': ["Context: context sample Question: question sample Answer:"], |
| } |
| ) |
| assert convert_into_template(df, template).equals(df_prompt) |
|
|
|
|
| def test_convert_into_prompt_completion_only(): |
| df = pd.DataFrame({'question': ['question sample'], 'context': ['context sample'], 'answer': ['answer sample']}) |
|
|
| df_prompt = pd.DataFrame( |
| {'prompt': ["Context: context sample Question: question sample Answer:"], 'completion': ["answer sample"]} |
| ) |
|
|
| prompt_template = "Context: {context} Question: {question} Answer:" |
| completion_template = "{answer}" |
|
|
| assert df_prompt.equals( |
| convert_into_prompt_completion_only( |
| df, prompt_template=prompt_template, completion_template=completion_template |
| ) |
| ) |
| assert df_prompt.equals(convert_into_prompt_completion_only(df_prompt)) |
|
|
|
|
| def get_indexes_of_long_examples(df, max_total_char_length): |
| long_examples = df.apply(lambda x: len(x.prompt) + len(x.completion) > max_total_char_length, axis=1) |
| return df.reset_index().index[long_examples].tolist() |
|
|
|
|
| def test_warn_and_drop_long_samples(): |
| df = pd.DataFrame({'prompt': ['a' * 12000, 'a' * 9000, 'a'], 'completion': ['b' * 12000, 'b' * 2000, 'b']}) |
|
|
| expected_df = pd.DataFrame({'prompt': ['a'], 'completion': ['b']}) |
| message = f"""TODO: There are {2} / {3} |
| samples that have its prompt and completion too long |
| (over {10000} chars), which have been dropped.""" |
|
|
| assert expected_df.equals(warn_and_drop_long_samples(df, 10000)[0]) |
| assert warn_and_drop_long_samples(df, 10000)[1] == message |
|
|
| df_short = pd.DataFrame({'prompt': ['a'] * 2, 'completion': ['b'] * 2}) |
|
|
| assert warn_and_drop_long_samples(df_short, 10000) == (df_short, None) |
|
|
|
|
| def test_warn_low_n_samples(): |
| df_low = pd.DataFrame({'prompt': ['a'] * 10, 'completion': ['b'] * 10}) |
|
|
| df_high = pd.DataFrame({'prompt': ['a'] * 100, 'completion': ['b'] * 100}) |
|
|
| message = ( |
| "TODO: We would recommend having more samples (>64) if possible but current_file only contains 10 samples. " |
| ) |
| assert warn_low_n_samples(df_low) == message |
| assert warn_low_n_samples(df_high) is None |
|
|
|
|
| def test_show_first_example_in_df(): |
| df = pd.DataFrame({'question': ['question sample'], 'context': ['context sample'], 'answer': ['answer sample']}) |
|
|
| message = f"-->Column question:\nquestion sample\n" |
| message += f"-->Column context:\ncontext sample\n" |
| message += f"-->Column answer:\nanswer sample\n" |
|
|
| assert message == show_first_example_in_df(df) |
|
|
|
|
| def test_get_prepared_filename(): |
| filename = "tmp/sample.jsonl" |
| prepared_filename = "tmp/sample_prepared.jsonl" |
| prepared_train_filename = "tmp/sample_prepared_train.jsonl" |
| prepared_val_filename = "tmp/sample_prepared_val.jsonl" |
| assert get_prepared_filename(filename) == (prepared_filename, None) |
| assert get_prepared_filename(filename, split_train_validation=True) == ( |
| [prepared_train_filename, prepared_val_filename,], |
| None, |
| ) |
| csv_filename = "tmp/sample.csv" |
| prepared_filename = "tmp/sample_prepared.jsonl" |
| assert get_prepared_filename(csv_filename) == (prepared_filename, None) |
|
|
|
|
| def test_split_into_train_validation(): |
| df = pd.DataFrame({'prompt': ['a'] * 10, 'completion': ['b'] * 10}) |
| df_train, df_val = split_into_train_validation(df, val_proportion=0.1) |
| assert len(df_train) == 9 |
| assert len(df_val) == 1 |
|
|
| df_train, df_val = split_into_train_validation(df, val_proportion=0.2) |
| assert len(df_train) == 8 |
| assert len(df_val) == 2 |
|
|