0 ratings
Machine Learning Engineering with Python: Manage the lifecycle of machine learning models using MLOps with practical examples
Transform your machine learning projects into successful deployments with this practical guide on how to build and scale solutions that solve real-world problems
Machine Learning Engineering with Python: Manage the lifecycle of machine learning models using MLOps with practical examples
物品 #: 74233457

Machine Learning Engineering with Python: Manage the lifecycle of machine learning models using MLOps with practical examples

物品 #: 74233457

HKD 625

Price Details

Excluding Shipping & Custom charges ( Shipping and custom charges will be calculated on checkout )

*All items will import from 美國

0 ratings 轉寫評價
有存貨
美國 從USA商店導入

QTY:

現在訂購,約可在下列時間收貨: 星期五, 七月 10
Our Top Logistics Partners
  • fedex
  • dhl
Transform your machine learning projects into successful deployments with this practical guide on how to build and scale solutions that solve real-world problems
U-Care Warranty:
None
選擇一個計劃
fast shipping

Fast
Shipping

free return

Free
Return*

secure packaging

Secure Packaging

100% original products

100% Original Products

pci-dss

PCI DSS Compliance

iso certified

ISO 27001 Certified


paypal payment
visa payment
mastercard payment
Note: Step Down Voltage Transformer required for using electronics products of 美國 store (110-120). Recommended power converters 立即購買.

What Stands Out

Practical MLOps Guide
This book offers real-world examples, making complex MLOps concepts accessible and applicable, enabling readers to effectively manage the lifecycle of machine learning models.
Updated Content
The second edition includes the latest developments in machine learning and MLOps, ensuring that readers have relevant and current insights into industry practices.
Comprehensive Learning
Covering both foundational and advanced topics, this book equips readers with the necessary skills to implement, monitor, and maintain machine learning solutions in various environments.

產品詳情

Shop Machine Learning Engineering with Python: Manage the lifecycle of machine learning models using MLOps with practical examples online at a best price in 香港. 1837631964
Item Weight1 lbs (450 grams)

Who Should Buy?

Suitable For
  • Aspiring Data Scientists

    Those entering the field will benefit from structured learning and practical examples to build foundational skills.

  • ML Engineers

    Current professionals aiming to enhance their MLOps knowledge and workflows will find valuable insights and techniques.

  • Project Managers

    Individuals overseeing ML projects will gain an understanding of model lifecycle and MLOps integration for better management.

Not Suitable For
  • Complete Beginners

    Readers with no prior knowledge of machine learning may find the book's concepts too advanced or confusing.

  • Casual Readers

    Those looking for a light overview of machine learning won't find this detailed, technical approach suitable.

  • Experienced Researchers

    Professionals conducting advanced research may not find new insights or techniques to benefit their specialized knowledge.

產品敘述

Machine Learning Engineering with Python: Manage the lifecycle of machine learning models using MLOps with practical examples

有疑問? 與我們聊天

客戶問題&回答

  • 題: What is 'Machine Learning Engineering with Python' about?

    回答: The book 'Machine Learning Engineering with Python' focuses on effectively managing the lifecycle of machine learning models, particularly through the lens of MLOps. It provides a comprehensive guide on deploying, maintaining, and optimizing machine learning systems. Practical examples throughout the book help bridge the gap between theory and application. Whether you are a beginner or experienced in ML, the content is structured to enhance your understanding of model production and maintenance, making it an essential resource for anyone looking to implement ML solutions in real-world scenarios.
  • 題: Who is the target audience for this book?

    回答: This book targets machine learning practitioners, data scientists, and software engineers looking to deepen their understanding of MLOps. It caters to both beginners and those with some experience in machine learning, making it a valuable resource for professionals seeking to streamline their model deployment and management processes. The content is designed to be practical, ensuring that readers can directly apply the concepts in their organizations or personal projects, facilitating a smooth transition from development to production.
  • 題: What practical examples does this book provide?

    回答: The book offers a variety of practical examples that illustrate key concepts in managing machine learning models. These examples range from end-to-end project walkthroughs to real-case scenarios showcasing how to implement MLOps practices efficiently. Readers can expect to find step-by-step guides for deploying models, monitoring performance, and iterating designs based on real-world data. This hands-on approach not only makes the complex themes of ML more digestible but also prepares readers for the challenges they may encounter in their projects.
  • 題: How does this book differ from other machine learning books?

    回答: Unlike many traditional machine learning books that focus heavily on algorithms and theory, 'Machine Learning Engineering with Python' emphasizes the lifecycle and operational aspects of ML models. This focus on MLOps as a discipline equips readers with a framework for deploying and managing their models effectively. The real-world examples and practical advice provided make it unique in helping professionals understand not just how to build models, but how to maintain and optimize them in production environments, setting it apart from more theoretical texts.
  • 題: What are the key topics covered in this edition?

    回答: The 2nd edition covers an extensive range of topics crucial for machine learning engineering, including data preprocessing, model deployment, performance monitoring, and continuous integration & delivery in ML workflows. It also addresses the evolving landscape of tools and technologies in MLOps, such as cloud services and automated pipelines. Each topic is designed to provide readers with a thorough understanding of how to take ML models from development to deployment while ensuring scalability and reliability, making it a timely resource in the fast-paced field of AI.
  • 題: What are the prerequisites for reading this book?

    回答: While the book is accessible to readers with basic Python programming skills, having a foundational understanding of machine learning concepts and practices is beneficial. Familiarity with libraries like Pandas, NumPy, and Scikit-learn will enhance comprehension. Those who have worked on machine learning projects will find it easier to grasp the operational aspects and practical applications discussed. This makes it ideal for professionals wanting to improve their skill set or students aiming to enter the field of machine learning engineering.
  • 題: How can I implement MLOps practices described in the book?

    回答: To implement the MLOps practices described in the book, start by setting up an agile and collaborative environment in your organization. Use the provided frameworks and roadmaps to develop a structured pipeline for model training, deployment, and monitoring. The practical examples serve as templates to guide your implementations. For instance, you can begin with small-scale projects, gradually applying the principles of version control and automated testing as you gain confidence. This approach not only leads to improved model performance but also enhances team collaboration.
  • 題: Is there any online content that accompanies the book?

    回答: Yes, the authors often provide supplementary materials and resources on their website or through online platforms associated with the book. These may include access to code examples, datasets for practice, and updates relevant to the latest trends in machine learning and MLOps. Engaging with the online content can enrich your learning experience by offering interactive elements that reinforce the concepts discussed in the book, making it easier to apply them to real-world situations.
  • 題: What are some common challenges faced in machine learning engineering?

    回答: Common challenges in machine learning engineering include model deployment complexities, data quality issues, and maintaining model performance over time. Other obstacles often involve integration with existing systems and managing resource allocation efficiently. The book addresses these challenges by providing strategies to mitigate them, such as implementing robust data handling practices and establishing effective monitoring systems. By following the methodologies described in the text, readers can better navigate these challenges and improve the resilience and reliability of their ML systems.
  • 題: Where can I buy 'Machine Learning Engineering with Python'?

    回答: You can purchase 'Machine Learning Engineering with Python: Manage the lifecycle of machine learning models using MLOps with practical examples 2nd Edition' on Ubuy. Ubuy offers a reliable platform for acquiring the book, ensuring that you get your copy quickly and efficiently. Whether you're looking to improve your skills in machine learning engineering or seeking practical insights into MLOps, this edition is a great addition to your library.

Neural Networks Editorial Review

未找到編輯評論

Customer Reviews & Ratings

4.0
1 客戶評分
  • 5 星
    0%
  • 4 星
    100%
  • 3 星
    0%
  • 2 星
    0%
  • 1 星
    0%

評價此產品

與其他客戶分享您的想法

Platform Trust & Buyer Confidence

trustpilot logo
3.9/5 90 + reviews
Read reviews
S
Sam
Verified buyer

“Great product, good packing, the goods arrived quickly and well protected.”

6 Jun 2026 · via Trustpilot
RD
Roxy
Verified buyer

“Great products and services”

17 April 2026 · via Trustpilot
SB
Samuel
Verified buyer

“Good market place with decent prices”

8 October 2025 · via Trustpilot
G
Gram4eild
Verified buyer

“whatever you want you will get delivered at reasonable pricing. I am a regular customer.”

18 Mar 2025 · via Trustpilot
HT
Henry
Verified buyer

“I've had a wonderful experience shopping with UBUY Hong Kong. The customer service is outstanding, and my orders always arrive on time. Very satisfied with their services!”

2 Jun 2024 · via Trustpilot
安全結帳 Global Delivery Easy Returns Genuine Products

Product Price History

重要資訊

  • 限制:如跨國購買產品,請注意製造商的保固有可能無效;製造商服務選項可能無法使用;產品手冊、教學、以及安全警示可能不會是目的地國家的語言;產品(與附加材料)設計也許不會符合目的地國家的標準、規格、以及標示要求;且產品也許不會符合目的地國家的伏特數值與其他電力標準(需要使用合適的變壓器或轉接器)。收件者須負責確定該產品在目的地國家可合法進口。當在 Ubuy 或其聯盟夥伴網站上訂購時,收件者為記錄上的進口者,且必須遵從目的地國家的法律與規範。
  • 由於 Ubuy 是一個全球搜尋引擎,並不是所有列於 Ubuy 的產品都有出售。產品須受出口/貿易法規規範。