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| """ |
| |
| NeMo LLM Customization service requires data to be in the form of .jsonl file with each line having only two fields (namely prompt and completion). |
| |
| However, you might not have your data readily in this format (or even filetype). |
| |
| This script will help you to convert from what you have to what you will need quickly and easily. |
| |
| You will need your datafile (in the form of a .jsonl, .json, .csv, .tsv or .xlsx). |
| Each row should contain one sample. |
| Make sure that the directory your file is in is readable and writeable. |
| Otherwise, please change it using chmod. Don't worry, we will not overwrite your existing file. |
| |
| With close to a dozen consideration factors that makes training optimal, there might just be something you overlook (we all do!). |
| To check if dataset has been prepared correctly |
| |
| !python customization_dataset_preparation.py --filename <filename> |
| |
| To format dataset from an alternative jsonl/json/csv/tsv/xlsx column structure (example here for Question Answering task) |
| |
| For instances, if you are working on a Question Answering Task, you would typically have the columns `context`, `question` and `answer` |
| |
| !python customization_dataset_preparation.py --filename <filename> --prompt_template "Context: {context} Question: {question} Answer:" --completion_template "{answer}" |
| |
| Other flags that can be set |
| |
| 1. `--drop_duplicates` : Use this flag to drop rows that are exactly the same for both prompt and completion |
| 2. `--split_train_validation` : Use this flag to split one file into separate train and validation files. |
| 3. `--val_proportion 0.1`: Use a float (default 0.1) between 0 and 1 to control how much of the dataset to allocate to the validation set and the remaining for the train dataset. |
| 4. `--short_context_model`: Use this flag to prepare data for use with models that have shorter context length of 2048 tokens (e.g. 5B and 20B models) |
| |
| What to expect |
| |
| After running this code, you see a list of suggestions to use under ACTIONABLE MESSAGES as well as some insights into your dataset under INFORMATIONAL MESSAGES. |
| |
| We suggest you prioritize changes suggested under ACTIONABLE MESSAGES but also have a look at the INFORMATIONAL MESSAGES to ensure that changes are done in an expected manner. |
| |
| """ |
| import argparse |
| import math |
| import os |
| import pathlib |
| from collections import Counter |
|
|
| import numpy as np |
| import pandas as pd |
|
|
|
|
| def load_file_into_df(filename): |
| message = None |
| if not os.path.isfile(filename): |
| raise ValueError(f"File {filename} does not exist") |
| if filename.lower().endswith(".jsonl"): |
| df = pd.read_json(filename, lines=True, dtype=str).fillna("") |
| elif filename.lower().endswith(".json"): |
| df = pd.read_json(filename, dtype=str).fillna("") |
| elif filename.lower().endswith(".xlsx"): |
| df = pd.read_excel(filename, dtype=str).fillna("") |
| message = "Note only the first sheet in your Excel file will be read." |
| elif filename.lower().endswith(".csv"): |
| df = pd.read_csv(filename, sep=",", dtype=str).fillna("") |
| elif filename.lower().endswith(".tsv"): |
| df = pd.read_csv(filename, sep="\t", dtype=str).fillna("") |
| else: |
| raise ValueError( |
| f"Filename {filename} does not have the acceptable extension of .jsonl, .json, .xlsx, .csv or .tsv" |
| ) |
| return df, message |
|
|
|
|
| def recommend_hyperparameters_human_readable(recommended_hyperparameters): |
| message = 'TODO: Recommended hyperparameters\n' |
| for param, param_value in recommended_hyperparameters.items(): |
| message += f'{param}: {param_value}\n' |
| return message |
|
|
|
|
| def recommend_hyperparameters(df, model=None): |
| """ |
| Makes recommendations on the batch_size to use for training, based on the dataset size |
| |
| """ |
| potential_batch_sizes = [2, 4, 8, 12, 16, 32, 64, 128] |
|
|
| max_bs = 128 |
| if len(df) < 128: |
| max_bs = 2 |
| for potential_bs in potential_batch_sizes: |
| if potential_bs < len(df) * 0.9: |
| max_bs = potential_bs |
|
|
| bs = min(max_bs, 32) |
|
|
| df_char_length = df.apply(lambda x: len(x.prompt) + len(x.completion), axis=1) |
| length_by_chars = sorted(list(df_char_length)) |
| n_samples_under_99p5_limit = math.ceil(len(df_char_length) * 0.995) |
| char_length_99p5 = length_by_chars[n_samples_under_99p5_limit - 1] |
| mean_char_length = np.mean(length_by_chars) |
| std_char_length = np.std(length_by_chars) |
|
|
| |
| max_char_length = max(min(mean_char_length + 2 * std_char_length, length_by_chars[-1]), char_length_99p5) |
|
|
| |
| max_seq_length = max_char_length // 4 + 100 |
|
|
| if len(df) <= 100: |
| encoder_hidden_size = 1024 |
| elif len(df) <= 1000: |
| encoder_hidden_size = 2048 |
| else: |
| encoder_hidden_size = 4096 |
|
|
| if len(df) <= 100: |
| lr = 5e-3 |
| elif len(df) <= 1000: |
| lr = 1e-3 |
| elif len(df) <= 10000: |
| lr = 5e-4 |
| else: |
| lr = 1e-4 |
|
|
| return { |
| 'batch_size': bs, |
| 'max_batch_size': max_bs, |
| 'num_virtual_tokens': 10, |
| 'lr': lr, |
| 'epochs': 10, |
| 'max_seq_length': max_seq_length, |
| 'encoder_hidden_size': encoder_hidden_size, |
| } |
|
|
|
|
| def estimating_customization_job_time(df, recommended_hyperparameters): |
| recommended_batch_size = recommended_hyperparameters['batch_size'] |
|
|
| size = df.memory_usage(index=True, deep=True).sum() |
| time_in_seconds_per_epoch = size / recommended_batch_size * 0.0025 |
|
|
| if time_in_seconds_per_epoch < 60: |
| time_per_epoch = f"{round(time_in_seconds_per_epoch, 2)} seconds" |
| elif time_in_seconds_per_epoch < 3600: |
| time_per_epoch = f"{round(time_in_seconds_per_epoch/60, 2)} minutes" |
| else: |
| time_per_epoch = f"{round(time_in_seconds_per_epoch/3600, 2)} hours" |
|
|
| message = f"TODO: Training will take around {time_per_epoch} for each epoch for gpt20b model and around half of that for gpt5b. Please set no. of epochs accordingly to ensure that the limit of 8h total is not exceeded." |
| return message |
|
|
|
|
| def warn_completion_is_not_empty(df): |
| message = None |
| field = "completion" |
| empty_rows = (df[field] == "") | (df[field].isnull()) |
| empty_indexes = df.reset_index().index[empty_rows].tolist() |
| if len(empty_indexes) == len(df): |
| message = ( |
| "TODO: Note all completion fields are empty. This is possibly expected for inference but not for training" |
| ) |
| elif len(empty_indexes) != 0: |
| message = f"""TODO: completion contains {len(empty_indexes)} empty values at rows ({empty_indexes}) |
| Please check the original file that the fields for prompt template are |
| not empty and rerun dataset validation""" |
| return message |
|
|
|
|
| def warn_imbalanced_completion(df): |
| completions = df["completion"].tolist() |
| completions_counter = Counter(completions) |
| message = None |
| |
| |
| if len(completions_counter) < len(completions) / 3: |
| message = f"There are {len(completions_counter)} unique completions over {len(completions)} samples.\nThe five most common completions are:" |
| for completion, n in completions_counter.most_common(5): |
| message += f"\n {n} samples ({round(100*n/len(completions),0)}%) with completion: {completion}" |
| return message |
|
|
|
|
| def get_common_suffix(series): |
| common_suffix = "" |
| while True: |
| candidate_common_suffixes = series.str[-(len(common_suffix) + 1) :] |
| if candidate_common_suffixes.nunique() != 1: |
| |
| |
| break |
| elif common_suffix == candidate_common_suffixes.values[0]: |
| |
| |
| break |
| else: |
| common_suffix = candidate_common_suffixes.values[0] |
| return common_suffix |
|
|
|
|
| def warn_missing_suffix(df): |
| message = '' |
| for field in ["prompt", "completion"]: |
| if not get_common_suffix(df[field]): |
| message += f"TODO: {field} does not have common suffix, please add one (e.g. \\n) at the end of {field}_template\n" |
| return message if message else None |
|
|
|
|
| def validate_template(template): |
| template_with_only_brackets = [i for i in template if i in ["{", "}"]] |
| error_msg = ( |
| "Your template (" |
| + template |
| + ") is not in the correct format.\ |
| Template must be in the format contains zero or more fields, \ |
| each field specified by {field}\ |
| For instance, it can be 'Context: {context} Question: {question}:" |
| ) |
| if len(template_with_only_brackets) % 2 != 0: |
| raise ValueError(error_msg) |
| for i in range(0, len(template_with_only_brackets), 2): |
| if not (template_with_only_brackets[i] == "{" and template_with_only_brackets[i + 1] == "}"): |
| raise ValueError(error_msg) |
| return None |
|
|
|
|
| def parse_template(template): |
| field_names = [] |
| i = 0 |
| in_field = False |
| while i < len(template): |
| if template[i] == "{": |
| field_names.append("") |
| in_field = True |
| elif template[i] == "}": |
| in_field = False |
| elif in_field: |
| field_names[-1] += template[i] |
| else: |
| pass |
| i += 1 |
| return field_names |
|
|
|
|
| def warn_duplicated_rows(df): |
| message = None |
| duplicated_rows = df.duplicated() |
| duplicated_indices = df.reset_index().index[duplicated_rows].tolist() |
| if len(duplicated_indices) > 0: |
| message = f"TODO: There are {len(duplicated_indices)} duplicated rows " |
| message += f"at rows ({duplicated_indices}) \n" |
| message += "Please check the original file to make sure that is expected\n" |
| message += "If it is not, please add the argument --drop_duplicate" |
| return message |
|
|
|
|
| def drop_duplicated_rows(df): |
| duplicated_rows = df.duplicated() |
| duplicated_indices = df.reset_index().index[duplicated_rows].tolist() |
| message = None |
| if len(duplicated_indices) > 0: |
| df = df.drop_duplicates() |
| message = f"There are {len(duplicated_indices)} duplicated rows\n" |
| message += f"Removed {len(duplicated_indices)} duplicate rows" |
| return df, message |
|
|
|
|
| def template_mapper(row, field_names, template): |
| for field_name in field_names: |
| template = template.replace("{" + field_name + "}", row[field_name]) |
| return template |
|
|
|
|
| def drop_unrequired_fields(df, required_fields=["prompt", "completion"]): |
| for column in df.columns: |
| if column not in required_fields: |
| df = df.drop(column, axis=1) |
| return df |
|
|
|
|
| def convert_into_template(df, template, prompt_or_completion="prompt"): |
| validate_template(template) |
| template = template.replace("\\n", "\n") |
| field_names = parse_template(template) |
| for field_name in field_names: |
| if field_name not in df.columns: |
| raise ValueError( |
| f"Field {field_name} requested in {prompt_or_completion}_template ({template}) but not found in file columns, which contains {list(df.columns)}" |
| ) |
| df[prompt_or_completion] = df.apply(lambda row: template_mapper(row, field_names, template), axis=1) |
| return df |
|
|
|
|
| def convert_into_prompt_completion_only(df, prompt_template="{prompt}", completion_template="{completion}"): |
| df = convert_into_template(df, prompt_template, prompt_or_completion="prompt") |
| df = convert_into_template(df, completion_template, prompt_or_completion="completion") |
| df = drop_unrequired_fields(df) |
| return df |
|
|
|
|
| def warn_and_drop_long_samples(df, max_total_char_length): |
| long_examples = df.apply(lambda x: len(x.prompt) + len(x.completion) > max_total_char_length, axis=1) |
| indices_of_long_examples = df.reset_index().index[long_examples].tolist() |
| message = None |
| if len(indices_of_long_examples) > 0: |
| message = f"""TODO: There are {len(indices_of_long_examples)} / {len(df)} |
| samples that have its prompt and completion too long |
| (over {max_total_char_length} chars), which have been dropped.""" |
| df = df.drop(indices_of_long_examples).reset_index() |
| df = df.drop('index', axis=1) |
| return df, message |
|
|
|
|
| def warn_low_n_samples(df, min_samples=64): |
| if len(df) < min_samples: |
| return f"""TODO: We would recommend having more samples (>{min_samples}) if possible but current_file only contains {len(df)} samples. """ |
| return None |
|
|
|
|
| def show_first_example_in_df(df): |
| message = '' |
| for column in df.columns: |
| |
| column_value = df[column][0].replace('\n', '\\n') |
| message += f"-->Column {column}:\n{column_value}\n" |
| return message |
|
|
|
|
| def get_prepared_filename(filename, split_train_validation=False): |
| message = "" |
|
|
| file_extension = pathlib.Path(filename).suffix |
| if not split_train_validation: |
| new_filename = filename.replace(file_extension, "_prepared.jsonl") |
| retry = 0 |
| while os.path.isfile(new_filename): |
| message += f"File {new_filename} exists. Trying next available filename increment\n" |
| retry += 1 |
| new_filename = filename.replace(file_extension, f"_prepared{retry}.jsonl") |
| return new_filename, message if message else None |
| else: |
| train_filename = filename.replace(file_extension, "_prepared_train.jsonl") |
| val_filename = filename.replace(file_extension, "_prepared_val.jsonl") |
| retry = 0 |
| while os.path.isfile(train_filename) or os.path.isfile(val_filename): |
| message += f"File {train_filename} or {val_filename} exists. Trying next available filename increment\n" |
| retry += 1 |
| train_filename = filename.replace(file_extension, f"_prepared_train{retry}.jsonl") |
| val_filename = filename.replace(file_extension, f"_prepared_val{retry}.jsonl") |
| return [train_filename, val_filename], message if message else None |
|
|
|
|
| def split_into_train_validation(df, val_proportion=0.1): |
| n_val = int(val_proportion * len(df)) |
| df_val = df.sample(n=n_val, random_state=42) |
| df_train = df.drop(df_val.index) |
| return df_train, df_val |
|
|
|
|
| def write_df_to_jsonl(df, filename): |
| df.to_json(filename, lines=True, orient="records", force_ascii=False) |
| return f"File {filename} written" |
|
|
|
|
| def print_select_messages(title, select_messages): |
| print("*" * 40) |
| print(title) |
| print("*" * 40) |
| for idx, message in enumerate(select_messages): |
| print(f"{idx+1}.") |
| print(message) |
|
|
|
|
| def print_all_messages(messages): |
| messages = [message for message in messages if message] |
| info_messages = [message for message in messages if not message.startswith("TODO")] |
| to_do_messages = [message for message in messages if message.startswith("TODO")] |
|
|
| print_select_messages("ACTIONABLE MESSAGES", to_do_messages) |
| print_select_messages("INFORMATIONAL MESSAGES", info_messages) |
|
|
|
|
| if __name__ == "__main__": |
| parser = argparse.ArgumentParser(description="Prepares data for NeMoLLM Customization Service") |
| parser.add_argument("--filename", "-f", required=True) |
| parser.add_argument("--prompt_template", "-pt", default="{prompt}") |
| parser.add_argument("--completion_template", "-ct", default="{completion}") |
| parser.add_argument("--drop_duplicates", "-dd", action="store_true") |
| parser.add_argument("--split_train_validation", "-stv", action="store_true") |
| parser.add_argument( |
| "--short_context_model", |
| "-scm", |
| action="store_true", |
| help="Specifies if using models with shorter context length of 2048 tokens e.g. 5B and 20B models", |
| ) |
| parser.add_argument( |
| "--val_proportion", |
| "-vp", |
| default=0.1, |
| type=float, |
| help="Give a number between 0 to 1, \ |
| representing proportion of samples to go into the validation set\ |
| only use when --split_train_validation is set", |
| ) |
| args = parser.parse_args() |
| messages = [] |
| messages.append(str(args)) |
|
|
| if args.short_context_model: |
| MAX_TOKEN_LENGTH = 2048 |
| else: |
| MAX_TOKEN_LENGTH = 4096 |
|
|
| |
| MAX_TOTAL_CHAR_LENGTH = 4 * MAX_TOKEN_LENGTH |
|
|
| df, message = load_file_into_df(args.filename) |
| messages.append(message) |
|
|
| messages.append("-------Before converting into prompt and completion template------ \n") |
| messages[-1] += show_first_example_in_df(df) |
|
|
| df = convert_into_prompt_completion_only( |
| df, prompt_template=args.prompt_template, completion_template=args.completion_template |
| ) |
|
|
| messages.append("-------After converting into prompt and completion template------ \n") |
| messages[-1] += show_first_example_in_df(df) |
|
|
| if args.drop_duplicates: |
| df, message = drop_duplicated_rows(df) |
| messages.append(message) |
| else: |
| messages.append(warn_duplicated_rows(df)) |
|
|
| messages.append(warn_missing_suffix(df)) |
|
|
| messages.append(warn_completion_is_not_empty(df)) |
| messages.append(warn_imbalanced_completion(df)) |
| messages.append(warn_low_n_samples(df)) |
|
|
| df, message = warn_and_drop_long_samples(df, MAX_TOTAL_CHAR_LENGTH) |
| messages.append(message) |
|
|
| recommended_hyperparameters = recommend_hyperparameters(df) |
| recommend_hyperparameters_message = recommend_hyperparameters_human_readable(recommended_hyperparameters) |
| messages.append(recommend_hyperparameters_message) |
|
|
| messages.append(estimating_customization_job_time(df, recommended_hyperparameters)) |
|
|
| prepared_filename, message = get_prepared_filename( |
| args.filename, split_train_validation=args.split_train_validation |
| ) |
| messages.append(message) |
| if args.split_train_validation: |
| df_train, df_val = split_into_train_validation(df, val_proportion=args.val_proportion) |
| messages.append(write_df_to_jsonl(df_train, prepared_filename[0])) |
| messages.append(write_df_to_jsonl(df_val, prepared_filename[1])) |
| else: |
| messages.append(write_df_to_jsonl(df, prepared_filename)) |
|
|
| print_all_messages(messages) |
|
|