Machine Learning Design Patterns

┬╖ "O'Reilly Media, Inc."
рдИ-рдкреБрд╕реНрддрдХ
408
рдкреЗрдЬ
рдкрд╛рддреНрд░
рд░реЗрдЯрд┐рдВрдЧ рдЖрдгрд┐ рдкрд░реАрдХреНрд╖рдгреЗ рдпрд╛рдВрдЪреА рдкрдбрддрд╛рд│рдгреА рдХреЗрд▓реЗрд▓реА рдирд╛рд╣реА ┬ардЕрдзрд┐рдХ рдЬрд╛рдгреВрди рдШреНрдпрд╛

рдпрд╛ рдИ-рдкреБрд╕реНрддрдХрд╛рд╡рд┐рд╖рдпреА

The design patterns in this book capture best practices and solutions to recurring problems in machine learning. The authors, three Google engineers, catalog proven methods to help data scientists tackle common problems throughout the ML process. These design patterns codify the experience of hundreds of experts into straightforward, approachable advice.

In this book, you will find detailed explanations of 30 patterns for data and problem representation, operationalization, repeatability, reproducibility, flexibility, explainability, and fairness. Each pattern includes a description of the problem, a variety of potential solutions, and recommendations for choosing the best technique for your situation.

You'll learn how to:

  • Identify and mitigate common challenges when training, evaluating, and deploying ML models
  • Represent data for different ML model types, including embeddings, feature crosses, and more
  • Choose the right model type for specific problems
  • Build a robust training loop that uses checkpoints, distribution strategy, and hyperparameter tuning
  • Deploy scalable ML systems that you can retrain and update to reflect new data
  • Interpret model predictions for stakeholders and ensure models are treating users fairly

рд▓реЗрдЦрдХрд╛рд╡рд┐рд╖рдпреА

Valliappa (Lak) Lakshmanan is Global Head for Data Analytics and AI Solutions on Google Cloud. His team builds software solutions for business problems using Google Cloud's data analytics and machine learning products. He founded Google's Advanced Solutions Lab ML Immersion program. Before Google, Lak was a Director of Data Science at Climate Corporation and a Research Scientist at NOAA.

Sara Robinson is a Developer Advocate on Google's Cloud Platform team, focusing on machine learning. She inspires developers and data scientists to integrate ML into their applications through demos, online content, and events. Sara has a bachelorтАЩs degree from Brandeis University. Before Google, she was a Developer Advocate on the Firebase team.

Michael Munn is an ML Solutions Engineer at Google where he works with customers of Google Cloud on helping them design, implement, and deploy machine learning models. He also teaches an ML Immersion Program at the Advanced Solutions Lab. Michael has a PhD in mathematics from the City University of New York. Before joining Google, he worked as a research professor.

рдпрд╛ рдИ-рдкреБрд╕реНрддрдХрд▓рд╛ рд░реЗрдЯрд┐рдВрдЧ рджреНрдпрд╛

рддреБрдореНрд╣рд╛рд▓рд╛ рдХрд╛рдп рд╡рд╛рдЯрддреЗ рддреЗ рдЖрдореНрд╣рд╛рд▓рд╛ рд╕рд╛рдВрдЧрд╛.

рд╡рд╛рдЪрди рдорд╛рд╣рд┐рддреА

рд╕реНрдорд╛рд░реНрдЯрдлреЛрди рдЖрдгрд┐ рдЯреЕрдмрд▓реЗрдЯ
Android рдЖрдгрд┐ iPad/iPhone рд╕рд╛рдареА Google Play рдмреБрдХ рдЕтАНреЕрдк рдЗрдВрд╕реНтАНрдЯреЙрд▓ рдХрд░рд╛. рд╣реЗ рддреБрдордЪреНтАНрдпрд╛ рдЦрд╛рддреНтАНрдпрд╛рдиреЗ рдЖрдкреЛрдЖрдк рд╕рд┐рдВрдХ рд╣реЛрддреЗ рдЖрдгрд┐ рддреБрдореНтАНрд╣реА рдЬреЗрдереЗ рдХреБрдареЗ рдЕрд╕рд╛рд▓ рддреЗрдереВрди рддреБрдореНтАНрд╣рд╛рд▓рд╛ рдСрдирд▓рд╛рдЗрди рдХрд┐рдВрд╡рд╛ рдСрдлрд▓рд╛рдЗрди рд╡рд╛рдЪрдгреНтАНрдпрд╛рдЪреА рдЕрдиреБрдорддреА рджреЗрддреЗ.
рд▓реЕрдкрдЯреЙрдк рдЖрдгрд┐ рдХреЙрдВрдкреНрдпреБрдЯрд░
рддреБрдореНрд╣реА рддреБрдордЪреНрдпрд╛ рдХрд╛рдБрдкреНрдпреБрдЯрд░рдЪрд╛ рд╡реЗрдм рдмреНрд░рд╛рдЙрдЭрд░ рд╡рд╛рдкрд░реВрди Google Play рд╡рд░ рдЦрд░реЗрджреА рдХреЗрд▓реЗрд▓реА рдСрдбрд┐рдУрдмреБрдХ рдРрдХреВ рд╢рдХрддрд╛.
рдИрд╡рд╛рдЪрдХ рдЖрдгрд┐ рдЗрддрд░ рдбрд┐рд╡реНрд╣рд╛рдЗрд╕реЗрд╕
Kobo eReaders рд╕рд╛рд░рдЦреНрдпрд╛ рдИ-рдЗрдВрдХ рдбрд┐рд╡реНтАНрд╣рд╛рдЗрд╕рд╡рд░ рд╡рд╛рдЪрдгреНтАНрдпрд╛рд╕рд╛рдареА, рддреБрдореНрд╣реА рдПрдЦрд╛рджреА рдлрд╛рдЗрд▓ рдбрд╛рдЙрдирд▓реЛрдб рдХрд░реВрди рддреА рддреБрдордЪреНтАНрдпрд╛ рдбрд┐рд╡реНтАНрд╣рд╛рдЗрд╕рд╡рд░ рдЯреНрд░рд╛рдиреНрд╕рдлрд░ рдХрд░рдгреЗ рдЖрд╡рд╢реНрдпрдХ рдЖрд╣реЗ. рд╕рдкреЛрд░реНрдЯ рдЕрд╕рд▓реЗрд▓реНрдпрд╛ eReaders рд╡рд░ рдлрд╛рдЗрд▓ рдЯреНрд░рд╛рдиреНрд╕рдлрд░ рдХрд░рдгреНрдпрд╛рд╕рд╛рдареА, рдорджрдд рдХреЗрдВрджреНрд░ рдордзреАрд▓ рддрдкрд╢реАрд▓рд╡рд╛рд░ рд╕реВрдЪрдирд╛ рдлреЙрд▓реЛ рдХрд░рд╛.