What Is Federated Learning?:
Until recently, an organization would have had to collect and store data in a central location to train a model with machine learning. Now, federated learning offers an alternative. With this report, you'll learn how to train ML models without sharing sensitive data in the process. Google softw...
Gespeichert in:
Beteiligte Personen: | , |
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Körperschaften: | , |
Format: | Elektronisch E-Book |
Sprache: | Englisch |
Veröffentlicht: |
[Erscheinungsort nicht ermittelbar]
O'Reilly Media, Inc.
2021
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Ausgabe: | 1st edition. |
Schlagwörter: | |
Links: | https://learning.oreilly.com/library/view/-/9781098107253/?ar |
Zusammenfassung: | Until recently, an organization would have had to collect and store data in a central location to train a model with machine learning. Now, federated learning offers an alternative. With this report, you'll learn how to train ML models without sharing sensitive data in the process. Google software engineers Emily Glanz and Nova Fallen introduce the motivation and technologies behind federated learning, providing the context you need to integrate it into your use cases. Whether you're a CTO, a software engineer, or a program or product manager, this report will help you understand how federated learning extends the power of AI to areas where data privacy is crucial. With federated learning, you can train an algorithm across multiple decentralized edge devices or servers that hold local data samples. You'll bring model training to the location where data was generated and lives. After reading this report, you will: Understand basic concepts and technologies in the federated learning field Draw inspiration from industrial use cases of federated learning Understand the privacy principles underlying federated learning and associated technologies Explore real-world case studies Learn about software available to train models with federated learning Learn the state of the art and future developments in the field of federated learning. |
Beschreibung: | Online resource; Title from title page (viewed October 25, 2021) |
Umfang: | 1 Online-Ressource (40 Seiten) |
ISBN: | 9781098107253 109810725X |
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spelling | Glanz, Emily VerfasserIn aut What Is Federated Learning? Glanz, Emily 1st edition. [Erscheinungsort nicht ermittelbar] O'Reilly Media, Inc. 2021 1 Online-Ressource (40 Seiten) Text txt rdacontent Computermedien c rdamedia Online-Ressource cr rdacarrier Online resource; Title from title page (viewed October 25, 2021) Until recently, an organization would have had to collect and store data in a central location to train a model with machine learning. Now, federated learning offers an alternative. With this report, you'll learn how to train ML models without sharing sensitive data in the process. Google software engineers Emily Glanz and Nova Fallen introduce the motivation and technologies behind federated learning, providing the context you need to integrate it into your use cases. Whether you're a CTO, a software engineer, or a program or product manager, this report will help you understand how federated learning extends the power of AI to areas where data privacy is crucial. With federated learning, you can train an algorithm across multiple decentralized edge devices or servers that hold local data samples. You'll bring model training to the location where data was generated and lives. After reading this report, you will: Understand basic concepts and technologies in the federated learning field Draw inspiration from industrial use cases of federated learning Understand the privacy principles underlying federated learning and associated technologies Explore real-world case studies Learn about software available to train models with federated learning Learn the state of the art and future developments in the field of federated learning. Machine learning Apprentissage automatique Fallen, Nova VerfasserIn aut O'Reilly for Higher Education (Firm), MitwirkendeR ctb Safari, an O'Reilly Media Company. MitwirkendeR ctb |
spellingShingle | Glanz, Emily Fallen, Nova What Is Federated Learning? Machine learning Apprentissage automatique |
title | What Is Federated Learning? |
title_auth | What Is Federated Learning? |
title_exact_search | What Is Federated Learning? |
title_full | What Is Federated Learning? Glanz, Emily |
title_fullStr | What Is Federated Learning? Glanz, Emily |
title_full_unstemmed | What Is Federated Learning? Glanz, Emily |
title_short | What Is Federated Learning? |
title_sort | what is federated learning |
topic | Machine learning Apprentissage automatique |
topic_facet | Machine learning Apprentissage automatique |
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