- Startseite /
- Bücher /
- Computer und Technologie /
- Software /
- Enterprise Applications /
- Business Intelligence Tools /
- Designing Machine Learning Systems: An Iterat...
Designing Machine Learning Systems: An Iterative Process for Production-Ready Applications
CHF 52
Price Details
Excluding Shipping & Custom charges ( Shipping and custom charges will be calculated on checkout )
*All items will import from USA
37%
Ubuy ist bestrebt, Ihre Sicherheit und Privatsphäre zu schützen. Unser fortschrittliches Zahlungssicherheitssystem gewährleistet Vertraulichkeit, indem Ihre Daten während der Übertragung mit AES (Advanced Encryption Standards) und SSL (Secure Socket Layer) Protokollen verschlüsselt werden. Ihre Zahlungsdaten sind 100% sicher, da wir Ihre Zahlungsdaten nicht an Drittanbieter weitergeben.
Learn a holistic approach to designing ML systems that are reliable, scalable, maintainable, and adaptive to changing environments and business requirements.
Fast
Shipping
Kostenlose
Rücksendung*
Sichere Verpackung
100 % Originalprodukte
PCI DSS-Standards
ISO 27001-zertifiziert
Besondere Merkmale
Produktdetails
- Written by experts from O'Reilly, a leading publisher in technology and business
- Designed for individuals who want to leverage machine learning to solve real-world problems
- Caters to ML engineers, data scientists, data engineers, ML platform engineers, and engineering managers
- Addresses scenarios such as deploying and updating models, automation, bias detection, and ML system responsibility
- Also beneficial for tool developers, individuals seeking ML-related roles, and technical and business leaders
- Assumes basic understanding of various ML models, techniques, metrics, statistical concepts, and common ML tasks
| Publisher | O'Reilly Media |
| Publication date | June 21, 2022 |
| Edition | 1st |
| Language | English |
| Print length | 386 pages |
| ISBN-10 | 1098107969 |
| ISBN-13 | 978-1098107963 |
| Item Weight | 1.4 pounds (640 grams) |
| Dimensions | 6.9 x 0.7 x 9.1 inches (17.5 x 1.8 x 23.1 cm) |
Für wen ist das Produkt geeignet?
-
Data Scientists
Ideal for data scientists seeking practical frameworks for developing and deploying scalable machine learning systems effectively.
-
Software Engineers
Provides software engineers with guidelines for integrating machine learning into existing applications and enhancing production readiness.
-
Project Managers
Useful for project managers overseeing machine learning projects, ensuring alignment between development and operational goals.
-
Complete Beginners
Not suitable for total newcomers; prior knowledge of machine learning principles is necessary to grasp the content.
PRODUKTBESCHREIBUNG
Kunden Fragen und Antworten
-
Frage:
What is the main focus of 'Designing Machine Learning Systems'?
Antworten: The main focus of 'Designing Machine Learning Systems: An Iterative Process for Production-Ready Applications' is to guide practitioners through the iterative processes required to build effective machine learning systems. It delves into the methodologies for designing, developing, and deploying systems that are not only robust but also scalable. This book emphasizes understanding user needs and iterating based on feedback, making it integral for those looking to implement practical machine learning solutions in various fields, such as finance, healthcare, or retail. -
Frage:
Who is the target audience for this book?
Antworten: 'Designing Machine Learning Systems' is primarily aimed at software engineers, data scientists, and machine learning practitioners who seek practical guidance on building production-ready systems. Additionally, it appeals to product managers and decision-makers who want to comprehend the iterative design process. The book serves as an essential resource for anyone involved in delivering AI-driven solutions, ensuring they can navigate the complexities of machine learning methodologies effectively. -
Frage:
Does the book cover real-world case studies?
Antworten: Yes, the book incorporates various real-world case studies to illustrate the concepts discussed. These examples demonstrate how the iterative process can be applied to actual machine learning projects, including challenges faced and solutions implemented. By studying these cases, readers can gain valuable insights into best practices and common pitfalls, which can help them implement similar strategies in their own projects across industries such as e-commerce and healthcare. -
Frage:
What methodologies are discussed in the book?
Antworten: The book discusses several methodologies including agile development, user-centered design, and model prototyping. Each methodology is presented in the context of machine learning, focusing on how they can be utilized to enhance system design and user experience. By understanding these methodologies, practitioners can better manage project timelines and improve collaboration among team members in dynamic environments, leading to more effective and user-oriented machine learning systems. -
Frage:
How does this book address challenges in machine learning system design?
Antworten: This book addresses challenges in machine learning system design by focusing on common pitfalls and providing targeted solutions. It highlights the importance of validation, data management, and feedback loops in overcoming these challenges. Readers will learn about iterative testing and refinement strategies that can be applied to tackle issues such as model drift or data quality, ensuring that their systems remain effective and reliable in production environments. -
Frage:
Is there any accompanying online resource or community for readers?
Antworten: Yes, many readers have access to online resources and communities related to the book. These platforms often include discussion forums, supplementary materials, and practical exercises. Engaging with these resources not only enhances the learning experience but also allows readers to connect with like-minded individuals. This collaborative learning approach fosters an environment where they can share insights and challenges faced while applying the concepts from the book in real-world scenarios. -
Frage:
Are there any prerequisites for understanding the content?
Antworten: While it's beneficial to have a basic understanding of machine learning concepts, the book is structured to cater to both novices and experienced practitioners. Readers should ideally be familiar with programming and statistical principles, but the content gradually builds up, ensuring that those with varying levels of expertise can grasp key ideas. This inclusivity makes it an excellent resource for teams looking to upskill or for individuals aiming to enter the field of machine learning. -
Frage:
What makes this book different from other machine learning books?
Antworten: What sets 'Designing Machine Learning Systems' apart from other machine learning books is its strong emphasis on the iterative process and practical application in real-world scenarios. Rather than focusing solely on theory, it combines theoretical principles with actionable steps, making it easier for readers to implement the strategies in their projects. This pragmatic approach ensures that the reader not only learns about machine learning but is also equipped with the tools needed for successful application. -
Frage:
Where can I buy 'Designing Machine Learning Systems' in NG?
Antworten: You can purchase 'Designing Machine Learning Systems: An Iterative Process for Production-Ready Applications 1st Edition' at Ubuy, a reliable online retailer in Liechtenstein. Ubuy offers a user-friendly platform that allows you to browse, order, and have the book delivered to your doorstep. With Ubuy, you are guaranteed a smooth shopping experience with secure payment options and efficient customer support, ensuring you can easily access this essential resource for your machine learning journey.
Business Intelligence Tools Editorial Review
The Designing Machine Learning Systems book is a great resource for anyone interested in developing their knowledge of machine learning systems in the practical world. The book gets into all the practical details of handling machine learning systems, including managing data, solving problems, and getting good training data. The book is well-balanced between industry and academia, and it covers a wide variety of topics, making it a must-read for anyone who wants to build a product with machine learning. The author is articulate, and the illustrations are excellent, making the hard concepts more Consumable. However, the book is not focused heavily on machine learning-specific teachings of ML concepts but is great at explaining everything about building an end-to-end ML application.
Kundenbewertungen
-
5 Sterne
79%
-
4 Sterne
10%
-
3 Sterne
6%
-
2 Sterne
2%
-
1 Sterne
3%
Bewerten Sie dieses Produkt
Teilen Sie Ihre Meinung mit anderen Kunden
Vorteile
- Well-balanced between industry and academia
- Excellent coverage of practical details in handling machine learning systems
- Great resource for building an ML application and managing data
Nachteile
- Less focus on proven practical patterns for large-scale machine learning
Platform Trust & Buyer Confidence
“The product received very good packaging & safe…Thank You”
“Accurate delivery timing given”
“Not madly expensive like I thought, and much quicker than promised.”
“Never dealt with Ubuy before, but everything worked out great. Seamless cross border purchasing and shipping. Thanks!”
“The process was smooth, with clear communication and timelines. This was my 1st purchase and I am really impressed. I will definitely be coming back.”
Produktpreisverlauf
Wichtige Information
- Einschränkungen: Für international versandte Produkte beachten Sie bitte, dass jegliche Herstellergarantie nicht gültig sein könnte; Herstellerservice-Optionen nicht verfügbar sein könnten; Produkthandbücher, Gebrauchsanleitungen und Sicherheitshinweise nicht in der Sprache des Ziellandes verfasst sein könnten; die Produkte (und Begleitmaterialien) könnten nicht im Einklang mit den Standards, Spezifizierungen und Etikettierungsvorgaben des Ziellandes entworfen sein; und die Produkte könnten nicht der Voltzahl und anderen elektrischen Standards des Ziellandes entsprechen (weshalb, falls zutreffend, die Verwendung eines Adapters oder Umwandlers erforderlich sein könnte). Der Empfänger ist dafür verantwortlich sicherzustellen, dass das Produkt legal in das Zielland importiert werden kann. Bei der Bestellung von Ubuy oder seinen Partnern ist der Empfänger der eingetragene Importeur und muss sich an alle Gesetze und Regulierungen des Ziellandes halten.
- Nicht alle auf Ubuy aufgeführten Produkte werden zum Verkauf angeboten, da Ubuy eine globale Suchmaschine ist. Produkte unterliegen Export-/Handelsbestimmungen.
CHF 52
Bestellen Sie jetzt und erhalten Sie es am Sunday, Juli 26
Dieser Artikel unterliegt in meinem Land keinen Beschränkungen. (Klicken Sie bitte auf den obigen Link, wenn dieser Artikel in Ihrem Land keinen Beschränkungen unterliegt. Unser Team wird ihn dann prüfen und zulassen.)
QTY:
PCI DSS compliant and ISO 27001:2022 certified, with encrypted payments and full buyer protection on every order.
Merkmale und Vorteile
- Design ML systems that are reliable and adaptable
- Learn to process and create training data
- Automate the process for continually developing, evaluating, deploying, and updating models
- Develop a monitoring system to detect and address production issues
- Architect an ML platform that serves across use cases
- Develop responsible ML systems
Ubuy Assurance
Experience worry-free shopping with 100% original products, PCI DSS-compliant payment security, ISO 27001-certified data protection, the fastest cross-border delivery, free returns *, and secure packaging on every order.

