User: Guest  Login
Document type:
Bachelorarbeit
Author(s):
Danylo Movchan
Title:
Implementing a learning-rate scheduler in a Newton-CG Optimizer for Deep Learning
Abstract:
Nowadays, Deep Neural Networks models are at the peak of their popularity and find applications in a variety fields, e.g. in translation engines, where Natural Language Processing is used. Training such networks requires enormous computing resources and can take up to 2 weeks, and most often uses rather naive first-order optimization algorithms. Given the fact that modern deep neural networks have several millions of parameters, second-order methods have long been considered unfeasible beca...     »
Supervisor:
Hans-Joachim Bungartz
Advisor:
Severin Reiz
Year:
2022
Quarter:
2. Quartal
Year / month:
2022-05
Month:
May
Pages:
65
Language:
en
University:
Technical University of Munich
Faculty:
TUM School of Computation, Information and Technology
TUM Institution:
Fakultät für Informatik
 BibTeX