Machine Learning at Enterprise Scale

How Real Practitioners Handle Six Common Challenges


Machine Learning at Enterprise Scale
Machine Learning at Enterprise Scale
Compliments of Qubole

Book Details

Authors Piero Cinquegrana, Matheen Raza
Publisher O'Reilly Media
Published 2019
Edition 1st
Paperback 41 pages
Language English
ISBN-13 9781492050810, 9781492050803
ISBN-10 1492050814, 1492050806
License Compliments of Qubole

Book Description

Enterprises in traditional and emerging industries alike are increasingly turning to machine learning (ML) to maximize the value of their business data. But many of these teams are likely to experience significant hurdles and setbacks throughout the journey. In this practical ebook, data scientists and machine learning engineers explore six common challenges that teams face every day when creating, managing, and scaling ML applications.

For each problem, you'll get hard-earned advice from Hussein Mehanna, AI engineering director for Google Cloud; Nakul Arora, VP of product management and marketing at Infosys; Patrick Hall, senior director for data science products at H2O; Matt Harrison, consultant and corporate trainer at MetaSnake; Joao Natali, data science director at Neustar; and Jerry Overton, data scientist and technology fellow at DXC.

Accomplished data scientist Piero Cinquegrana and Matheen Raza of Qubole examine ways to overcome challenges that include:
- Reconciling disparate interfaces
- Resolving environment dependencies
- Ensuring close collaboration among all ML stakeholders
- Building or renting adequate ML infrastructure
- Meeting the scalability needs of your application
- Enabling smooth deployment of ML projects


This book is published as open-access, which means it is freely available to read, download, and share without restrictions.

If you enjoyed the book and would like to support the author, you can purchase a printed copy (hardcover or paperback) from official retailers.

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