The torchopt
package provides R implementation of deep learning
optimizers proposed in the literature. It is intended to support the use
of the torch package in R.
Installing the CRAN (stable) version of torchopt
:
install.packages("torchopt")
Installing the development version of torchopt
do as :
library(devtools)
install_github("e-sensing/torchopt")
#> Warning: package 'torch' was built under R version 4.1.3
torchopt
package provides the following R implementations of torch
optimizers:
-
optim_adamw()
: AdamW optimizer proposed by Loshchilov & Hutter (2019). Converted from thepytorch
code developed by Collin Donahue-Oponski available at https://gist.github.com/colllin/0b146b154c4351f9a40f741a28bff1e3 -
optim_adabelief()
: Adabelief optimizer proposed by Zhuang et al (2020). Converted from the authors’ PyTorch code: https://github.com/juntang-zhuang/Adabelief-Optimizer. -
optim_adabound()
: Adabound optimizer proposed by Luo et al.(2019). Converted from the authors’ PyTorch code: https://github.com/Luolc/AdaBound. -
optim_adahessian()
: Adahessian optimizer proposed by Yao et al.(2021). Converted from the authors’ PyTorch code: https://github.com/amirgholami. -
optim_madgrad()
: Momentumized, Adaptive, Dual Averaged Gradient Method for Stochastic Optimization (MADGRAD) optimizer proposed by Defazio & Jelassi (2021). The function is imported from madgrad package and the source code is available at https://github.com/mlverse/madgrad -
optim_nadam()
: Incorporation of Nesterov Momentum into Adam proposed by Dozat (2016). Converted from the PyTorch site https://github.com/pytorch/pytorch. -
optim_qhadam()
: Quasi-hyperbolic version of Adam proposed by Ma and Yarats(2019). Converted from the code developed by Meta AI: https://github.com/facebookresearch/qhoptim. -
optim_radam()
: Rectified verison of Adam proposed by Liu et al. (2019). Converted from the PyTorch code https://github.com/pytorch/pytorch. -
optim_swats()
: Optimizer that switches from Adam to SGD proposed by Keskar and Socher(2018). Converted from thepytorch
code developed by Patrik Purgai: https://github.com/Mrpatekful/swats -
optim_yogi()
: Yogi optimizer proposed by Zaheer et al.(2019). Converted from thepytorch
code developed by Nikolay Novik: https://github.com/jettify/pytorch-optimizer
You can also test optimizers using optimization test
functions
provided by torchopt
including "ackley"
, "beale"
, "booth"
,
"bukin_n6"
, "easom"
, "goldstein_price"
, "himmelblau"
,
"levi_n13"
, "matyas"
, "rastrigin"
, "rosenbrock"
, "sphere"
.
Optimization functions are useful to evaluate characteristics of
optimization algorithms, such as convergence rate, precision,
robustness, and performance. These functions give an idea about the
different situations that optimization algorithms can face.
In what follows, we perform tests using "beale"
test function. To
visualize an animated GIF, we set plot_each_step=TRUE
and capture each
step frame using gifski
package.
# test optim adamw
set.seed(12345)
torchopt::test_optim(
optim = torchopt::optim_adamw,
test_fn = "beale",
opt_hparams = list(lr = 0.1),
steps = 500,
plot_each_step = TRUE
)
set.seed(42)
test_optim(
optim = optim_adabelief,
opt_hparams = list(lr = 0.5),
steps = 400,
test_fn = "beale",
plot_each_step = TRUE
)
# set manual seed
set.seed(22)
test_optim(
optim = optim_adabound,
opt_hparams = list(lr = 0.5),
steps = 400,
test_fn = "beale",
plot_each_step = TRUE
)
# set manual seed
set.seed(290356)
test_optim(
optim = optim_adahessian,
opt_hparams = list(lr = 0.2),
steps = 500,
test_fn = "beale",
plot_each_step = TRUE
)
set.seed(256)
test_optim(
optim = optim_madgrad,
opt_hparams = list(lr = 0.05),
steps = 400,
test_fn = "beale",
plot_each_step = TRUE
)
set.seed(2903)
test_optim(
optim = optim_nadam,
opt_hparams = list(lr = 0.5, weight_decay = 0),
steps = 500,
test_fn = "beale",
plot_each_step = TRUE
)
set.seed(1024)
test_optim(
optim = optim_qhadam,
opt_hparams = list(lr = 0.1),
steps = 500,
test_fn = "beale",
plot_each_step = TRUE
)
set.seed(1024)
test_optim(
optim = optim_radam,
opt_hparams = list(lr = 1.0),
steps = 500,
test_fn = "beale",
plot_each_step = TRUE
)
set.seed(234)
test_optim(
optim = optim_swats,
opt_hparams = list(lr = 0.5),
steps = 500,
test_fn = "beale",
plot_each_step = TRUE
)
# set manual seed
set.seed(66)
test_optim(
optim = optim_yogi,
opt_hparams = list(lr = 0.1),
steps = 500,
test_fn = "beale",
plot_each_step = TRUE
)
We are thankful to Collin Donahue-Oponski https://github.com/colllin, Amir Gholami https://github.com/amirgholami, Liangchen Luo https://github.com/Luolc, Liyuan Liu https://github.com/LiyuanLucasLiu, Nikolay Novik https://github.com/jettify, Patrik Purgai https://github.com/Mrpatekful Juntang Zhuang https://github.com/juntang-zhuang and the PyTorch team https://github.com/pytorch/pytorch for providing pytorch code for the optimizers implemented in this package. We also thank Daniel Falbel https://github.com/dfalbel for providing support for the R version of PyTorch.
The torchopt project is released with a Contributor Code of Conduct. By contributing to this project, you agree to abide by its terms.
-
ADABELIEF: Juntang Zhuang, Tommy Tang, Yifan Ding, Sekhar Tatikonda, Nicha Dvornek, Xenophon Papademetris, James S. Duncan. “Adabelief Optimizer: Adapting Stepsizes by the Belief in Observed Gradients”, 34th Conference on Neural Information Processing Systems (NeurIPS 2020), https://arxiv.org/abs/2010.07468.
-
ADABOUND: Liangchen Luo, Yuanhao Xiong, Yan Liu, Xu Sun, “Adaptive Gradient Methods with Dynamic Bound of Learning Rate”, International Conference on Learning Representations (ICLR), 2019. https://doi.org/10.48550/arXiv.1902.09843.
-
ADAHESSIAN: Zhewei Yao, Amir Gholami, Sheng Shen, Mustafa Mustafa, Kurt Keutzer, Michael W. Mahoney. “Adahessian: An Adaptive Second Order Optimizer for Machine Learning”, AAAI Conference on Artificial Intelligence, 35(12), 10665-10673, 2021. https://arxiv.org/abs/2006.00719.
-
ADAMW: Ilya Loshchilov, Frank Hutter, “Decoupled Weight Decay Regularization”, International Conference on Learning Representations (ICLR) 2019. https://doi.org/10.48550/arXiv.1711.05101.
-
MADGRAD: Aaron Defazio, Samy Jelassi, “Adaptivity without Compromise: A Momentumized, Adaptive, Dual Averaged Gradient Method for Stochastic Optimization”, arXiv preprint arXiv:2101.11075, 2021. https://doi.org/10.48550/arXiv.2101.11075
-
NADAM: Timothy Dazat, “Incorporating Nesterov Momentum into Adam”, International Conference on Learning Representations (ICLR), 2019. https://openreview.net/pdf/OM0jvwB8jIp57ZJjtNEZ.pdf
-
QHADAM: Jerry Ma, Denis Yarats, “Quasi-hyperbolic momentum and Adam for deep learning”. https://arxiv.org/abs/1810.06801
-
RADAM: Liyuan Liu, Haoming Jiang, Pengcheng He, Weizhu Chen, Xiaodong Liu, Jianfeng Gao, Jiawei Han, “On the Variance of the Adaptive Learning Rate and Beyond”, International Conference on Learning Representations (ICLR) 2020. https://arxiv.org/abs/1908.03265.
-
SWATS: Nitish Keskar, Richard Socher, “Improving Generalization Performance by Switching from Adam to SGD”. International Conference on Learning Representations (ICLR), 2018. https://arxiv.org/abs/1712.07628.
-
YOGI: Manzil Zaheer, Sashank Reddi, Devendra Sachan, Satyen Kale, Sanjiv Kumar, “Adaptive Methods for Nonconvex Optimization”, Advances in Neural Information Processing Systems 31 (NeurIPS 2018). https://papers.nips.cc/paper/8186-adaptive-methods-for-nonconvex-optimization