Please use this identifier to cite or link to this item: http://repository.iiitd.edu.in/xmlui/handle/123456789/1536
Title: Design & optimizing distributed learning gradients using control theory
Authors: Mehrotra, Sparsh
Roy, Sayan Basu (Advisor)
Keywords: AdamSSD
DADAM
G-AdaGrad
Issue Date: Dec-2023
Publisher: IIIT-Delhi
Abstract: We use different optimizers in everyday Machine Learning and Deep Learning applications. The task for any machine learning algorithm is to π‘šπ‘–π‘› 𝑓 (π‘₯), where 𝑓 is the objective function and π‘₯ is the input parameter. We can use standard algorithms like gradient descent for simple convex functions. Nowadays, more complex state-of-the-art optimizers like ADAM, ADAMSSD, and DADAM are used. Recent advancements have tackled the situation of finding the minimum for possibly non-convex settings. Recent state-of-the-art optimizers aim to solve the minimization problem for online and distributed settings as well. The aim is to develop an optimizer for distributed / online settings using the control theory analysis. Recent work in control theory doesn’t explore the idea of distributed and online settings.
URI: http://repository.iiitd.edu.in/xmlui/handle/123456789/1536
Appears in Collections:Year-2023

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