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Connecting Silos with Distributed and Private Computation
by
Vepakomma, Praneeth
in
Artificial intelligence
/ Career counseling
/ Counseling Psychology
/ Deep learning
/ Design
/ Libraries
/ Machine learning
/ Privacy
/ Privatization
/ Statistics
2024
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Do you wish to request the book?
Connecting Silos with Distributed and Private Computation
by
Vepakomma, Praneeth
in
Artificial intelligence
/ Career counseling
/ Counseling Psychology
/ Deep learning
/ Design
/ Libraries
/ Machine learning
/ Privacy
/ Privatization
/ Statistics
2024
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Dissertation
Connecting Silos with Distributed and Private Computation
2024
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Overview
Data in today’s world is increasingly siloed across a wide variety of entities with varying resource constraints. The quality of wisdom generated from a collaborative processing of such data is substantially better if the data from all these entities is shared across each other or centralized at a nodal entity. Such data sharing and centralization is often prohibited due to stringent privacy regulations, computational constraints, communication bottlenecks, trade secrets, trust issues and competition. This necessitates development of efficient methods for distributed computation while preserving privacy to generate wisdom whose quality is on par with the case of data centralization. This thesis covers methods introduced for the same in an inter-disciplinary manner to tackle several such problems using distributed and private computation.
Publisher
ProQuest Dissertations & Theses
Subject
ISBN
9798346391715
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