The goal of Uncertainty Baselines is to provide a template for researchers to build on. The baselines can be a starting point for any new ideas, applications, and/or for communicating with other uncertainty and robustness researchers. This is done in three ways:
- Provide high-quality implementations of standard and state-of-the-art methods on standard tasks.
- Have minimal dependencies on other files in the codebase. Baselines should be easily forkable without relying on other baselines and generic modules.
- Prescribe best practices for uncertainty and robustness benchmarking.
Motivation. There are many uncertainty and robustness implementations across GitHub. However, they are typically one-off experiments for a specific paper (many papers don't even have code). There are no clear examples that uncertainty researchers can build on to quickly prototype their work. Everyone must implement their own baseline. In fact, even on standard tasks, every project differs slightly in their experiment setup, whether it be architectures, hyperparameters, or data preprocessing. This makes it difficult to compare properly against baselines.
To install the latest development version, run
pip install "git+https://github.com/google/uncertainty-baselines.git#egg=uncertainty_baselines"
There is not yet a stable version (nor an official release of this library). All
APIs are subject to change. Installing uncertainty_baselines
does not
automatically install any backend. For TensorFlow, you will need to install
TensorFlow ( tensorflow
or tf-nightly
), TensorFlow Addons (tensorflow- addons
or tfa-nightly
), and TensorBoard (tensorboard
or tb-nightly
). See
the extra dependencies one can install in setup.py
.
The
baselines/
directory includes all the baselines, organized by their training dataset.
For example,
baselines/cifar/determinstic.py
is a Wide ResNet 28-10 obtaining 96.0% test accuracy on CIFAR-10.
Launching with TPUs. You often need TPUs to reproduce baselines. There are three options:
-
Colab. Colab offers free TPUs. This is the most convenient and budget-friendly option. You can experiment with a baseline by copying its script and running it from scratch. This works well for simple experimentation. However, be careful relying on Colab long-term: TPU access isn't guaranteed, and Colab can only go so far for managing multiple long experiments.
-
Google Cloud. This is the most flexible option. First, you'll need to create a virtual machine instance (details here).
Here's an example to launch the BatchEnsemble baseline on CIFAR-10. We assume a few environment variables which are set up with the cloud TPU (details here).
export BUCKET=gs://bucket-name export TPU_NAME=ub-cifar-batchensemble export DATA_DIR=$BUCKET/tensorflow_datasets export OUTPUT_DIR=$BUCKET/model python baselines/cifar/batchensemble.py \ --tpu=$TPU_NAME \ --data_dir=$DATA_DIR \ --output_dir=$OUTPUT_DIR
Note the TPU's accelerator type must align with the number of cores for the baseline (
num_cores
flag). In this example, BatchEnsemble uses a default ofnum_cores=8
. So the TPU must be set up withaccelerator_type=v3-8
. -
Change the flags. For example, go from 8 TPU cores to 8 GPUs, or reduce the number of cores to train the baseline.
python baselines/cifar/batchensemble.py \ --data_dir=/tmp/tensorflow_datasets \ --output_dir=/tmp/model \ --use_gpu=True \ --num_cores=8
Results may be similar, but ultimately all bets are off. GPU vs TPU may not make much of a difference in practice, especially if you use the same numerical precision. However, changing the number of cores matters a lot. The total batch size during each training step is often determined by
num_cores
, so be careful!
The
ub.datasets
module consists of datasets following the
TensorFlow Datasets API.
They add minimal logic such as default data preprocessing.
Note: in ipython/colab notebook, one may need to activate tf earger execution mode tf.compat.v1.enable_eager_execution()
.
import uncertainty_baselines as ub
# Load CIFAR-10, holding out 10% for validation.
dataset_builder = ub.datasets.Cifar10Dataset(split='train',
validation_percent=0.1)
train_dataset = dataset_builder.load(batch_size=FLAGS.batch_size)
for batch in train_dataset:
# Apply code over batches of the data.
You can also use get
to instantiate datasets from strings (e.g., commandline
flags).
dataset_builder = ub.datasets.get(dataset_name, split=split, **dataset_kwargs)
To use the datasets in Jax and PyTorch:
for batch in tfds.as_numpy(ds):
train_step(batch)
Note that tfds.as_numpy
calls tensor.numpy()
. This invokes an unnecessary
copy compared to tensor._numpy()
.
for batch in iter(ds):
train_step(jax.tree.map(lambda y: y._numpy(), batch))
The
ub.models
module consists of models following the
tf.keras.Model
API.
import uncertainty_baselines as ub
model = ub.models.wide_resnet(input_shape=(32, 32, 3),
depth=28,
width_multiplier=10,
num_classes=10,
l2=1e-4)
We define metrics used across datasets below. All results are reported by roughly 3 significant digits and averaged over 10 runs.
-
# Parameters. Number of parameters in the model to make predictions after training.
-
Test Accuracy. Accuracy over the test set. For a dataset of
N
input-output pairs(xn, yn)
where the labelyn
takes on 1 ofK
values, the accuracy is1/N \sum_{n=1}^N 1[ \argmax{ p(yn | xn) } = yn ],
where
1
is the indicator function that is 1 when the model's predicted class is equal to the label and 0 otherwise. -
Test Cal. Error. Expected calibration error (ECE) over the test set (Naeini et al., 2015). ECE discretizes the probability interval
[0, 1]
under equally spaced bins and assigns each predicted probability to the bin that encompasses it. The calibration error is the difference between the fraction of predictions in the bin that are correct (accuracy) and the mean of the probabilities in the bin (confidence). The expected calibration error averages across bins.For a dataset of
N
input-output pairs(xn, yn)
where the labelyn
takes on 1 ofK
values, ECE computes a weighted average\sum_{b=1}^B n_b / N | acc(b) - conf(b) |,
where
B
is the number of bins,n_b
is the number of predictions in binb
, andacc(b)
andconf(b)
is the accuracy and confidence of binb
respectively. -
Test NLL. Negative log-likelihood over the test set (measured in nats). For a dataset of
N
input-output pairs(xn, yn)
, the negative log-likelihood is-1/N \sum_{n=1}^N \log p(yn | xn).
It is equivalent up to a constant to the KL divergence from the true data distribution to the model, therefore capturing the overall goodness of fit to the true distribution (Murphy, 2012). It can also be intepreted as the amount of bits (nats) to explain the data (Grunwald, 2004).
-
Train/Test Runtime. Training runtime is the total wall-clock time to train the model, including any intermediate test set evaluations. Test Runtime refers to the time it takes to run a forward pass on the GPU/TPU, i.e., the duration for which the device is not idle. Note that Test Runtime does not include time on the coordinator: this is more precise in comparing baselines because including the coordinator adds overhead in GPU/TPU scheduling and data fetching---producing high variance results.
Viewing metrics.
Uncertainty Baselines writes TensorFlow summaries to the model_dir
which can
be consumed by TensorBoard. This includes the TensorBoard hyperparameters
plugin, which can be used to analyze hyperparamter tuning sweeps.
If you wish to upload to the PUBLICLY READABLE tensorboard.dev, use:
tensorboard dev upload --logdir MODEL_DIR --plugins "scalars,graphs,hparams" --name "My experiment" --description "My experiment details"
If you'd like to cite Uncertainty Baselines, use the following BibTeX entry.
Z. Nado, N. Band, M. Collier, J. Djolonga, M. Dusenberry, S. Farquhar, A. Filos, M. Havasi, R. Jenatton, G. Jerfel, J. Liu, Z. Mariet, J. Nixon, S. Padhy, J. Ren, T. Rudner, Y. Wen, F. Wenzel, K. Murphy, D. Sculley, B. Lakshminarayanan, J. Snoek, Y. Gal, and D. Tran. Uncertainty Baselines: Benchmarks for uncertainty & robustness in deep learning, arXiv preprint arXiv:2106.04015, 2021.
@article{nado2021uncertainty,
author = {Zachary Nado and Neil Band and Mark Collier and Josip Djolonga and Michael Dusenberry and Sebastian Farquhar and Angelos Filos and Marton Havasi and Rodolphe Jenatton and Ghassen Jerfel and Jeremiah Liu and Zelda Mariet and Jeremy Nixon and Shreyas Padhy and Jie Ren and Tim Rudner and Yeming Wen and Florian Wenzel and Kevin Murphy and D. Sculley and Balaji Lakshminarayanan and Jasper Snoek and Yarin Gal and Dustin Tran},
title = {{Uncertainty Baselines}: Benchmarks for Uncertainty \& Robustness in Deep Learning},
journal = {arXiv preprint arXiv:2106.04015},
year = {2021},
}
The following papers have used code from Uncertainty Baselines:
- A Simple Fix to Mahalanobis Distance for Improving Near-OOD Detection
- BatchEnsemble: An Alternative Approach to Efficient Ensembles and Lifelong Learning
- DEUP: Direct Epistemic Uncertainty Prediction
- Distilling Ensembles Improves Uncertainty Estimates
- Efficient and Scalable Bayesian Neural Nets with Rank-1 Factors
- Exploring the Uncertainty Properties of Neural Networks' Implicit Priors in the Infinite-Width Limit
- Hyperparameter Ensembles for Robustness and Uncertainty Quantification
- Measuring Calibration in Deep Learning
- Measuring and Improving Model-Moderator Collaboration using Uncertainty Estimation
- Neural networks with late-phase weights
- On the Practicality of Deterministic Epistemic Uncertainty
- Prediction-Time Batch Normalization for Robustness under Covariate Shift
- Refining the variational posterior through iterative optimization
- Revisiting One-vs-All Classifiers for Predictive Uncertainty and Out-of-Distribution Detection in Neural Networks
- Simple and Principled Uncertainty Estimation with Deterministic Deep Learning via Distance Awareness
- Training independent subnetworks for robust prediction
- Plex: Towards Reliability Using Pretrained Large Model Extensions, available here
Before committing code, make sure that the file is formatted according to yapf's yapf style:
yapf -i --style yapf [source file]
- Write a script that loads the fixed training dataset and model. Typically, this is forked from other baselines.
- After tuning, set the default flag values to the best hyperparameters.
- Add the baseline's performance to the table of results in the corresponding
README.md
.
- Add the bibtex reference to
references.md
. - Add the dataset definition to the datasets/ dir. Every file should have a subclass of
datasets.base.BaseDataset
, which at a minimum requires implementing a constructor, atfds.core.DatasetBuilder
, and_create_process_example_fn
. - Add a test that at a minimum constructs the dataset and checks the shapes of elements.
- Add the dataset to
datasets/datasets.py
for easy access. - Add the dataset class to
datasets/__init__.py
.
For an example of adding a dataset, see this pull request.
-
Add the bibtex reference to
references.md
. -
Add the model definition to the models/ dir. Every file should have a
create_model
function with the following signature:def create_model( batch_size: int, ... **unused_kwargs: Dict[str, Any]) -> tf.keras.models.Model:
-
Add a test that at a minimum constructs the model and does a forward pass.
-
Add the model to
models/models.py
for easy access. -
Add the
create_model
function tomodels/__init__.py
.