'''ADAPTIVE BATCH SIZE''' print('Adaptive batch size: using grouping batch sampler, frames_per_gpu fixed fed in') print(' -> least padding, gather wavs with accumulated frames in a batch\n') # data total_hours = 95282 mel_hop_length = 256 mel_sampling_rate = 24000 # target wanted_max_updates = 1000000 # train params gpus = 8 frames_per_gpu = 38400 # 8 * 38400 = 307200 grad_accum = 1 # intermediate mini_batch_frames = frames_per_gpu * grad_accum * gpus mini_batch_hours = mini_batch_frames * mel_hop_length / mel_sampling_rate / 3600 updates_per_epoch = total_hours / mini_batch_hours steps_per_epoch = updates_per_epoch * grad_accum # result epochs = wanted_max_updates / updates_per_epoch print(f"epochs should be set to: {epochs:.0f} ({epochs/grad_accum:.1f} x gd_acum {grad_accum})") print(f"progress_bar should show approx. 0/{updates_per_epoch:.0f} updates") print(f" or approx. 0/{steps_per_epoch:.0f} steps") # others print(f"total {total_hours:.0f} hours") print(f"mini-batch of {mini_batch_frames:.0f} frames, {mini_batch_hours:.2f} hours per mini-batch")