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2011.02159
Cited By
Reverse engineering learned optimizers reveals known and novel mechanisms
4 November 2020
Niru Maheswaranathan
David Sussillo
Luke Metz
Ruoxi Sun
Jascha Narain Sohl-Dickstein
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Papers citing
"Reverse engineering learned optimizers reveals known and novel mechanisms"
10 / 10 papers shown
Title
Investigation into the Training Dynamics of Learned Optimizers
Jan Sobotka
Petr Simánek
Daniel Vasata
26
0
0
12 Dec 2023
Improving physics-informed neural networks with meta-learned optimization
Alexander Bihlo
PINN
31
18
0
13 Mar 2023
VeLO: Training Versatile Learned Optimizers by Scaling Up
Luke Metz
James Harrison
C. Freeman
Amil Merchant
Lucas Beyer
...
Naman Agrawal
Ben Poole
Igor Mordatch
Adam Roberts
Jascha Narain Sohl-Dickstein
24
60
0
17 Nov 2022
A Closer Look at Learned Optimization: Stability, Robustness, and Inductive Biases
James Harrison
Luke Metz
Jascha Narain Sohl-Dickstein
44
22
0
22 Sep 2022
Practical tradeoffs between memory, compute, and performance in learned optimizers
Luke Metz
C. Freeman
James Harrison
Niru Maheswaranathan
Jascha Narain Sohl-Dickstein
33
32
0
22 Mar 2022
Symbolic Learning to Optimize: Towards Interpretability and Scalability
Wenqing Zheng
Tianlong Chen
Ting-Kuei Hu
Zhangyang Wang
37
18
0
13 Mar 2022
Tutorial on amortized optimization
Brandon Amos
OffRL
75
43
0
01 Feb 2022
Learn2Hop: Learned Optimization on Rough Landscapes
Amil Merchant
Luke Metz
S. Schoenholz
E. D. Cubuk
15
16
0
20 Jul 2021
Learning to Optimize: A Primer and A Benchmark
Tianlong Chen
Xiaohan Chen
Wuyang Chen
Howard Heaton
Jialin Liu
Zhangyang Wang
W. Yin
35
225
0
23 Mar 2021
A Differential Equation for Modeling Nesterov's Accelerated Gradient Method: Theory and Insights
Weijie Su
Stephen P. Boyd
Emmanuel J. Candes
99
1,152
0
04 Mar 2015
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