# Copyright (c) 2025, NVIDIA CORPORATION. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. """Blendable dataset.""" import os import subprocess import time import numpy as np import torch from nemo.utils import logging from nemo.utils.app_state import AppState class BlendableDataset(torch.utils.data.Dataset): """ """ def __init__(self, datasets, weights, size): self.datasets = datasets num_datasets = len(datasets) assert num_datasets == len(weights) self.size = size # Normalize weights. weights = np.array(weights, dtype=np.float64) sum_weights = np.sum(weights) assert sum_weights > 0.0 weights /= sum_weights # Build indecies. start_time = time.time() assert num_datasets < 255 self.dataset_index = np.zeros(self.size, dtype=np.uint8) self.dataset_sample_index = np.zeros(self.size, dtype=np.int64) app_state = AppState() # Determine if we are in a distributed environment is_dist = torch.distributed.is_available() and torch.distributed.is_initialized() try: # Defensive check for local_rank in AppState local_rank = getattr(app_state, 'local_rank', 0) if is_dist else 0 if local_rank == 0: compile_helper() if is_dist: torch.distributed.barrier() # pylint: disable=import-outside-toplevel from nemo.collections.common.data import helpers except ImportError as exc: raise ImportError( 'Could not compile megatron dataset C++ helper functions and therefore ' 'cannot import helpers python file.' ) from exc # Only the main process (rank 0) should handle logging/progress within helpers is_main_process = (torch.distributed.get_rank() == 0) if is_dist else True helpers.build_blending_indices( self.dataset_index, self.dataset_sample_index, weights, num_datasets, self.size, is_main_process, ) logging.info(f'> elapsed time for building blendable dataset indices: {time.time() - start_time:.2f} (sec)') def __len__(self): return self.size def __getitem__(self, idx): dataset_idx = self.dataset_index[idx] sample_idx = self.dataset_sample_index[idx] dataset_size = len(self.datasets[dataset_idx]) # Ensure the sample index doesn't exceed the dataset size if sample_idx >= dataset_size: logging.warning(f"Index {sample_idx} out of bounds for dataset {dataset_idx}. Reusing existing examples.") sample_idx = sample_idx % dataset_size logging.warning(f"Reusing index {sample_idx} for dataset {dataset_idx}.") return self.datasets[dataset_idx][sample_idx] def create_data_mmap(self): """ """ for dataset in self.datasets: dataset.create_data_mmap() class MemoryEfficientBlendableDataset(torch.utils.data.Dataset): """ A BlendableDataset implementation that uses less memory than the original implementation. Indices are computed algorithmically instead of storing them in memory. To test call: MemoryEfficientBlendableDataset.test_index_blending() """ def __init__(self, datasets, weights, size, weight_bins=100): self.datasets = datasets num_datasets = len(datasets) assert num_datasets == len(weights) weight_bins = min(weight_bins, size) self.size = size self.weight_bins = weight_bins # Normalize weights. weights = np.array(weights, dtype=np.float64) assert (weights > 0.0).all() sum_weights = np.sum(weights) assert sum_weights > 0.0 self.weights = weights / sum_weights # create ds index based on weights ds_index = [] ds_bias = [] for i, w in enumerate(self.weights): n = int(w * weight_bins) ds_index.extend([i] * n) ds_bias.extend(range(n)) # make sure arrays have length of weight_bins n = weight_bins - len(ds_index) ds_index.extend([i] * n) ds_bias.extend(range(ds_bias[-1], ds_bias[-1] + n)) self.ds_index = np.array(ds_index, dtype=np.uint32) self.ds_index_size = np.array([(self.ds_index == i).sum() for i in range(num_datasets)], dtype=np.uint32) assert (self.ds_index_size > 0).all(), ( "Some datasets have no samples in the blendable dataset, " "increase weight_bins or the offending weight. " f"ds_index_size = {self.ds_index_size}" ) self.ds_bias = np.array(ds_bias, dtype=np.uint32) self.ds_size = np.array([len(ds) for ds in datasets], dtype=np.uint32) def get_ds_sample_idx(self, idx): """Returns ds index and sample index (within the ds) for the given index in the blendable dataset.""" bin = idx % self.weight_bins ds_idx = self.ds_index[bin] sample_idx = (self.ds_bias[bin] + (idx // self.weight_bins) * self.ds_index_size[ds_idx]) % self.ds_size[ ds_idx ] return ds_idx, sample_idx def __len__(self): return self.size def __getitem__(self, idx): ds_idx, sample_idx = self.get_ds_sample_idx(idx) return self.datasets[ds_idx][sample_idx] @classmethod def test_index_blending(cls): """Visualize indices of blended dataset""" import matplotlib.pyplot as plt plt.ion() class DS(torch.utils.data.Dataset): """ """ def __init__(self, size, data): self.size = size self.data = data def __len__(self): return self.size def __getitem__(self, idx): return self.data[idx] for weight_bins in [10, 100]: blend_ds = MemoryEfficientBlendableDataset( [DS(10, "a"), DS(10, "b"), DS(10, "c")], [0.5, 0.3, 0.2], 50, weight_bins=weight_bins ) ds_sample_idx_list = [blend_ds.get_ds_sample_idx(i) for i in range(50)] ds_list = list(zip(*ds_sample_idx_list))[0] sample_list = list(zip(*ds_sample_idx_list))[1] plt.figure() plt.plot(ds_list, label="ds idx") plt.plot(sample_list, label="sample") plt.legend() plt.grid() plt.title(f"weight_bins={weight_bins}") def compile_helper(): """Compile helper function ar runtime. Make sure this is invoked on a single process.""" path = os.path.abspath(os.path.dirname(__file__)) ret = subprocess.run(['make', '-C', path]) if ret.returncode != 0: logging.error("Making C++ dataset helpers module failed, exiting.") import sys sys.exit(1)