Data Engineering Design Patterns
Recipes for Solving the Most Common Data Engineering Problems
カートのアイテムが多すぎます
カートに追加できませんでした。
ウィッシュリストに追加できませんでした。
ほしい物リストの削除に失敗しました。
ポッドキャストのフォローに失敗しました
ポッドキャストのフォロー解除に失敗しました
プレミアムプラン3か月
月額99円キャンペーン開催中
¥2,200 で購入
-
ナレーター:
-
Charles Constant
このコンテンツについて
Data projects are an intrinsic part of an organization's technical ecosystem, but data engineers in many companies continue to work on problems that others have already solved. This hands-on guide shows you how to provide valuable data by focusing on various aspects of data engineering, including data ingestion, data quality, idempotency, and more.
Author Bartosz Konieczny guides you through the process of building reliable end-to-end data engineering projects, from data ingestion to data observability, focusing on data engineering design patterns that solve common business problems in a secure and storage-optimized manner. Each pattern includes a user-facing description of the problem, solutions, and consequences that place the pattern into the context of real-life scenarios.
Throughout this journey, you'll use open source data tools and public cloud services to apply each pattern. You'll learn about challenges data engineers face and their impact on data systems; how these challenges relate to data system components; useful applications of data engineering patterns; how to identify and fix issues with your current data components; and technology-agnostic solutions to new and existing data projects, with open source implementation examples.
PLEASE NOTE: When you purchase this title, the accompanying PDF will be available in your Audible Library along with the audio.
©2025 Bartosz Konieczny (P)2025 Ascent Audioこちらもおすすめ
-
The Decision Intelligence Handbook
- Practical Steps for Evidence-Based Decisions in a Complex World
- 著者: L. Y. Pratt, N.E. Malcolm
- ナレーター: Daniel Henning
- 再生時間: 10 時間 2 分
- 完全版
-
総合評価0
-
ナレーション0
-
ストーリー0
Decision intelligence (DI) has been widely named as a top technology trend for several years, and Gartner reports that more than a third of large organizations are adopting it. Some even say that DI is the next step in the evolution of AI. Many software vendors offer DI solutions today, as they help organizations implement their evidence-based or data-driven decision strategies. But until now, there has been little practical guidance for organizations to formalize decision making and integrate their decisions with data. With this book, authors L. Y. Pratt and N. E. Malcolm fill this gap.
著者: L. Y. Pratt, 、その他
-
Data Smart
- Using Data Science to Transform Information into Insight
- 著者: John W. Foreman
- ナレーター: Matthew Josdal
- 再生時間: 10 時間 48 分
- 完全版
-
総合評価0
-
ナレーション0
-
ストーリー0
Data science gets thrown around in the press like it's magic. Major retailers are predicting everything, from when their customers are pregnant to when they want a new pair of Chuck Taylors. It's a brave new world where seemingly meaningless data can be transformed into valuable insight to drive smart business decisions. Data science is little more than using straightforward steps to process raw data into actionable insight. And in Data Smart, author and data scientist John Foreman will teach how you how that's done within the familiar environment of a spreadsheet.
著者: John W. Foreman
-
Implementing Data Mesh
- Design, Build, and Implement Data Contracts, Data Products, and Data Mesh
- 著者: Jean-Georges Perrin, Eric Broda
- ナレーター: Daniel Henning
- 再生時間: 8 時間 23 分
- 完全版
-
総合評価0
-
ナレーション0
-
ストーリー0
As data continues to grow and become more complex, organizations seek innovative solutions to manage their data effectively. Data mesh is one solution that provides a new approach to managing data in complex organizations. This practical guide offers step-by-step guidance on how to implement data mesh in your organization.
著者: Jean-Georges Perrin, 、その他
-
Software Engineering for Data Scientists
- From Notebooks to Scalable Systems
- 著者: Catherine Nelson
- ナレーター: Teri Schnaubelt
- 再生時間: 7 時間 41 分
- 完全版
-
総合評価0
-
ナレーション0
-
ストーリー0
Data science happens in code. The ability to write reproducible, robust, scaleable code is key to a data science project's success—and is absolutely essential for those working with production code. This practical book bridges the gap between data science and software engineering, and clearly explains how to apply the best practices from software engineering to data science.
著者: Catherine Nelson
-
Working with AI
- Real Stories of Human-Machine Collaboration (Management on the Cutting Edge)
- 著者: Thomas H. Davenport, Steven M. Miller
- ナレーター: Tim Andres Pabon
- 再生時間: 8 時間 50 分
- 完全版
-
総合評価0
-
ナレーション0
-
ストーリー0
This book breaks through both the hype and the doom-and-gloom surrounding automation and the deployment of artificial intelligence-enabled—“smart”—systems at work. Management and technology experts Thomas Davenport and Steven Miller show that, contrary to widespread predictions, prescriptions, and denunciations, AI is not primarily a job destroyer. Rather, AI changes the way we work—by taking over some tasks but not entire jobs, freeing people to do other, more important and more challenging work.
著者: Thomas H. Davenport, 、その他
-
Fundamentals of Data Engineering
- Plan and Build Robust Data Systems
- 著者: Joe Reis, Matt Housley
- ナレーター: Adam Verner
- 再生時間: 17 時間 31 分
- 完全版
-
総合評価0
-
ナレーション0
-
ストーリー0
Data engineering has grown rapidly in the past decade, leaving many software engineers, data scientists, and analysts looking for a comprehensive view of this practice. With this practical book, you'll learn how to plan and build systems to serve the needs of your organization and customers by evaluating the best technologies available through the framework of the data engineering lifecycle.
著者: Joe Reis, 、その他
-
The Decision Intelligence Handbook
- Practical Steps for Evidence-Based Decisions in a Complex World
- 著者: L. Y. Pratt, N.E. Malcolm
- ナレーター: Daniel Henning
- 再生時間: 10 時間 2 分
- 完全版
-
総合評価0
-
ナレーション0
-
ストーリー0
Decision intelligence (DI) has been widely named as a top technology trend for several years, and Gartner reports that more than a third of large organizations are adopting it. Some even say that DI is the next step in the evolution of AI. Many software vendors offer DI solutions today, as they help organizations implement their evidence-based or data-driven decision strategies. But until now, there has been little practical guidance for organizations to formalize decision making and integrate their decisions with data. With this book, authors L. Y. Pratt and N. E. Malcolm fill this gap.
著者: L. Y. Pratt, 、その他
-
Data Smart
- Using Data Science to Transform Information into Insight
- 著者: John W. Foreman
- ナレーター: Matthew Josdal
- 再生時間: 10 時間 48 分
- 完全版
-
総合評価0
-
ナレーション0
-
ストーリー0
Data science gets thrown around in the press like it's magic. Major retailers are predicting everything, from when their customers are pregnant to when they want a new pair of Chuck Taylors. It's a brave new world where seemingly meaningless data can be transformed into valuable insight to drive smart business decisions. Data science is little more than using straightforward steps to process raw data into actionable insight. And in Data Smart, author and data scientist John Foreman will teach how you how that's done within the familiar environment of a spreadsheet.
著者: John W. Foreman
-
Implementing Data Mesh
- Design, Build, and Implement Data Contracts, Data Products, and Data Mesh
- 著者: Jean-Georges Perrin, Eric Broda
- ナレーター: Daniel Henning
- 再生時間: 8 時間 23 分
- 完全版
-
総合評価0
-
ナレーション0
-
ストーリー0
As data continues to grow and become more complex, organizations seek innovative solutions to manage their data effectively. Data mesh is one solution that provides a new approach to managing data in complex organizations. This practical guide offers step-by-step guidance on how to implement data mesh in your organization.
著者: Jean-Georges Perrin, 、その他
-
Software Engineering for Data Scientists
- From Notebooks to Scalable Systems
- 著者: Catherine Nelson
- ナレーター: Teri Schnaubelt
- 再生時間: 7 時間 41 分
- 完全版
-
総合評価0
-
ナレーション0
-
ストーリー0
Data science happens in code. The ability to write reproducible, robust, scaleable code is key to a data science project's success—and is absolutely essential for those working with production code. This practical book bridges the gap between data science and software engineering, and clearly explains how to apply the best practices from software engineering to data science.
著者: Catherine Nelson
-
Working with AI
- Real Stories of Human-Machine Collaboration (Management on the Cutting Edge)
- 著者: Thomas H. Davenport, Steven M. Miller
- ナレーター: Tim Andres Pabon
- 再生時間: 8 時間 50 分
- 完全版
-
総合評価0
-
ナレーション0
-
ストーリー0
This book breaks through both the hype and the doom-and-gloom surrounding automation and the deployment of artificial intelligence-enabled—“smart”—systems at work. Management and technology experts Thomas Davenport and Steven Miller show that, contrary to widespread predictions, prescriptions, and denunciations, AI is not primarily a job destroyer. Rather, AI changes the way we work—by taking over some tasks but not entire jobs, freeing people to do other, more important and more challenging work.
著者: Thomas H. Davenport, 、その他
-
Fundamentals of Data Engineering
- Plan and Build Robust Data Systems
- 著者: Joe Reis, Matt Housley
- ナレーター: Adam Verner
- 再生時間: 17 時間 31 分
- 完全版
-
総合評価0
-
ナレーション0
-
ストーリー0
Data engineering has grown rapidly in the past decade, leaving many software engineers, data scientists, and analysts looking for a comprehensive view of this practice. With this practical book, you'll learn how to plan and build systems to serve the needs of your organization and customers by evaluating the best technologies available through the framework of the data engineering lifecycle.
著者: Joe Reis, 、その他