04311nam 22006135 450 991033823070332120200630072717.01-4842-5107-510.1007/978-1-4842-5107-2(CKB)4100000009076161(MiAaPQ)EBC5879995(DE-He213)978-1-4842-5107-2(CaSebORM)9781484251072(PPN)248605003(OCoLC)1122564749(OCoLC)on1122564749(EXLCZ)99410000000907616120190821d2019 u| 0engurcnu||||||||rdacontentrdamediardacarrierAgile Machine Learning Effective Machine Learning Inspired by the Agile Manifesto /by Eric Carter, Matthew Hurst1st ed. 2019.Berkeley, CA :Apress :Imprint: Apress,2019.1 online resource (257 pages) illustrationsIncludes index.1-4842-5106-7 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.Microsoft softwareMicrosoft .NET FrameworkSoftware engineeringBig dataMicrosoft and .NEThttps://scigraph.springernature.com/ontologies/product-market-codes/I29030Software Engineeringhttps://scigraph.springernature.com/ontologies/product-market-codes/I14029Big Datahttps://scigraph.springernature.com/ontologies/product-market-codes/I29120Microsoft software.Microsoft .NET Framework.Software engineering.Big data.Microsoft and .NET.Software Engineering.Big Data.004.165Carter Ericauthttp://id.loc.gov/vocabulary/relators/aut1063749Hurst Matthewauthttp://id.loc.gov/vocabulary/relators/autUMIUMIBOOK9910338230703321Agile Machine Learning2534317UNINA