from torch import randn, randint from torchmetrics.classification import MulticlassCalibrationError metric = MulticlassCalibrationError(num_classes=3, n_bins=3, norm='l1') metric.update(randn(20,3).softmax(dim=-1), randint(3, (20,))) fig_, ax_ = metric.plot()