import pickle import torch hyperparams = [ # (chunk size, batch chunks) # (64, 4), (64, 8), (64, 16), (64, 32), (128, 2), (128, 4), (128, 8), (128, 16), (256, 1), (256, 2), (256, 4), (256, 8), (512, 1), (512, 2), (512, 4), (1024, 1), (1024, 2), (2048, 1), ] for chunk_size, batch_chunks in hyperparams: with open('data/avg-{}-{}.dat'.format(chunk_size, batch_chunks), 'rb') as f: ag, agsqr = pickle.load(f) variance = torch.sum(agsqr) - torch.sum(ag**2) stddev = torch.sqrt(variance).item() print(chunk_size, batch_chunks, stddev)