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Agile machine learningeffective mach...
~
Carter, Eric.
Agile machine learningeffective machine learning inspired by the agile manifesto /
Record Type:
Electronic resources : Monograph/item
Title/Author:
Agile machine learningby Eric Carter, Matthew Hurst.
Reminder of title:
effective machine learning inspired by the agile manifesto /
Author:
Carter, Eric.
other author:
Hurst, Matthew.
Published:
Berkeley, CA :Apress :2019.
Description:
xvii, 248 p. :ill., digital ;24 cm.
Contained By:
Springer Nature eBook
Subject:
Machine learning.
Online resource:
https://doi.org/10.1007/978-1-4842-5107-2
ISBN:
9781484251072$q(electronic bk.)
Agile machine learningeffective machine learning inspired by the agile manifesto /
Carter, Eric.
Agile machine learning
effective machine learning inspired by the agile manifesto /[electronic resource] :by Eric Carter, Matthew Hurst. - Berkeley, CA :Apress :2019. - xvii, 248 p. :ill., digital ;24 cm.
Chapter 1: Early Delivery -- Chapter 2: Changing Requirements -- Chapter 3: Continuous Delivery -- Chapter 4: Aligning with the Business -- Chapter 5: Motivated Individuals -- Chapter 6: Effective Communication -- Chapter 7: Monitoring -- Chapter 8: Sustainable Development -- Chapter 9: Technical Excellence -- Chapter 10 Simplicity -- Chapter 11: Self-organizing Teams -- Chapter 12: Tuning and Adjusting -- Chapter 13: Conclusion.
Build resilient applied machine learning teams that deliver better data products through adapting the guiding principles of the Agile Manifesto. Bringing together talented people to create a great applied machine learning team is no small feat. With developers and data scientists both contributing expertise in their respective fields, communication alone can be a challenge. Agile Machine Learning teaches you how to deliver superior data products through agile processes and to learn, by example, how to organize and manage a fast-paced team challenged with solving novel data problems at scale, in a production environment. The authors' approach models the ground-breaking engineering principles described in the Agile Manifesto. The book provides further context, and contrasts the original principles with the requirements of systems that deliver a data product. What You'll Learn: Effectively run a data engineering team that is metrics-focused, experiment-focused, and data-focused Make sound implementation and model exploration decisions based on the data and the metrics Know the importance of data wallowing: analyzing data in real time in a group setting Recognize the value of always being able to measure your current state objectively Understand data literacy, a key attribute of a reliable data engineer, from definitions to expectations This book is for anyone who manages a machine learning team, or is responsible for creating production-ready inference components. Anyone responsible for data project workflow of sampling data; labeling, training, testing, improving, and maintaining models; and system and data metrics will also find this book useful. Readers should be familiar with software engineering and understand the basics of machine learning and working with data.
ISBN: 9781484251072$q(electronic bk.)
Standard No.: 10.1007/978-1-4842-5107-2doiSubjects--Topical Terms:
188639
Machine learning.
LC Class. No.: Q325.5 / .C37 2019
Dewey Class. No.: 006.31
Agile machine learningeffective machine learning inspired by the agile manifesto /
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Chapter 1: Early Delivery -- Chapter 2: Changing Requirements -- Chapter 3: Continuous Delivery -- Chapter 4: Aligning with the Business -- Chapter 5: Motivated Individuals -- Chapter 6: Effective Communication -- Chapter 7: Monitoring -- Chapter 8: Sustainable Development -- Chapter 9: Technical Excellence -- Chapter 10 Simplicity -- Chapter 11: Self-organizing Teams -- Chapter 12: Tuning and Adjusting -- Chapter 13: Conclusion.
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Build resilient applied machine learning teams that deliver better data products through adapting the guiding principles of the Agile Manifesto. Bringing together talented people to create a great applied machine learning team is no small feat. With developers and data scientists both contributing expertise in their respective fields, communication alone can be a challenge. Agile Machine Learning teaches you how to deliver superior data products through agile processes and to learn, by example, how to organize and manage a fast-paced team challenged with solving novel data problems at scale, in a production environment. The authors' approach models the ground-breaking engineering principles described in the Agile Manifesto. The book provides further context, and contrasts the original principles with the requirements of systems that deliver a data product. What You'll Learn: Effectively run a data engineering team that is metrics-focused, experiment-focused, and data-focused Make sound implementation and model exploration decisions based on the data and the metrics Know the importance of data wallowing: analyzing data in real time in a group setting Recognize the value of always being able to measure your current state objectively Understand data literacy, a key attribute of a reliable data engineer, from definitions to expectations This book is for anyone who manages a machine learning team, or is responsible for creating production-ready inference components. Anyone responsible for data project workflow of sampling data; labeling, training, testing, improving, and maintaining models; and system and data metrics will also find this book useful. Readers should be familiar with software engineering and understand the basics of machine learning and working with data.
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Professional and Applied Computing (SpringerNature-12059)
based on 0 review(s)
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EB Q325.5 .C323 2019 2019
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https://doi.org/10.1007/978-1-4842-5107-2
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