0 ratings
Engineering MLOps: Rapidly build, test, and manage production-ready machine learning life cycles at scale
Item #: 42980623

Engineering MLOps: Rapidly build, test, and manage production-ready machine learning life cycles at scale

Item #: 42980623

ANG 79

Price Details

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

*All items will import from US

0 ratings Write a review
In stock
us Imported from USA store

QTY:

Order now and get it around Sunday, June 28
Our Top Logistics Partners
  • fedex
  • dhl
U-Care Warranty:
None
Select a Plan
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

What Stands Out

Rapid Deployment
Streamline the machine learning lifecycle with tools that facilitate quick deployment, enabling teams to transition from development to production faster than traditional methods.
Comprehensive Management
Offers holistic management capabilities to oversee all ML operational aspects, ensuring stability and efficiency from testing through to production, addressing pain points often faced by developers.
Scalable Solutions
Designed to support large-scale machine learning projects, providing the flexibility to expand operations as needed without compromising performance or reliability.

Product Details

Ubuy Sint Maarten - Discover Engineering MLOps: streamline machine learning life cycles. Build, test, and manage ML projects at scale. Shop now at Ubuy Sint Maarten.
Publisher Packt Publishing
Publication date April 19, 2021
Language English
Print length 370 pages
ISBN-10 1800562888
ISBN-13 978-1800562882
Item Weight 1.4 pounds (640 grams)
Dimensions 7.5 x 0.84 x 9.25 inches (19.1 x 2.1 x 23.5 cm)

Who Should Buy?

Suitable For
  • Data Scientists

    Data scientists can streamline their workflow, quickly build models, and deploy them effectively using this platform.

  • DevOps Teams

    DevOps professionals can efficiently manage the CI/CD pipelines for machine learning applications, ensuring high reliability and scalability.

  • Machine Learning Engineers

    ML engineers looking to manage the entire lifecycle of machine learning projects will find this product essential for automation.

Not Suitable For
  • Non-Technical Users

    Individuals without a technical background may struggle to utilize the complex tools and features effectively.

  • Small Startups

    Small startups with limited resources may find the scale and requirements of this product overwhelming and unnecessary.

  • Casual Users

    Occasional users or those looking for basic machine learning solutions may find this product too advanced for their needs.

Product Description

Engineering MLOps: Rapidly build, test, and manage production-ready machine learning life cycles at scale

Have any Query? Chat with us

Customer Questions & Answers

  • Question: What is Engineering MLOps about?

    Answer: Engineering MLOps focuses on the practices and tools necessary for managing the entire machine learning lifecycle. It integrates data engineering, model development, and operationalization, providing a systematic approach to deploying machine learning models at scale. This methodology is vital as it ensures that ML models are not only built efficiently but also effectively maintained and monitored post-deployment, allowing organizations to adapt to changing data dynamics and business needs.
  • Question: Who is the target audience for Engineering MLOps?

    Answer: The book is designed for data scientists, machine learning engineers, and DevOps professionals interested in improving their MLOps skills. Whether you're an individual looking to enhance your skill set or an organization striving to streamline ML operations, the practical insights and workflows outlined in the book offer immense value. It caters to varying levels of expertise, making it applicable for both beginners and seasoned practitioners aiming for operational excellence.
  • Question: What key concepts are covered in Engineering MLOps?

    Answer: Engineering MLOps covers critical topics such as continuous integration and continuous deployment (CI/CD) for machine learning models, data versioning, and collaboration between teams. It emphasizes automation in model building and testing, ensuring that production-ready models can be rapidly iterated upon. These concepts are essential for organizations looking to implement agile methodologies in their machine learning projects, fostering innovation and responsiveness to market demands.
  • Question: How can Engineering MLOps help with scaling machine learning projects?

    Answer: Engineering MLOps provides frameworks and tools designed specifically for scaling machine learning initiatives across teams and infrastructure. By implementing best practices for model deployment, monitoring, and governance, organizations can ensure that their ML applications are consistent, reliable, and performance-optimized. This scalability enhances collaboration, reduces silos, and allows for faster iterations, boosting the overall efficiency of ML operations.
  • Question: What are some practical applications of Engineering MLOps?

    Answer: Practical applications of Engineering MLOps include automating the deployment of predictive models in sectors such as finance, e-commerce, and healthcare. For instance, in e-commerce, businesses might use MLOps to optimize recommendation systems, improving customer engagement by delivering personalized experiences. By adopting MLOps practices, organizations can also streamline their operations, reduce model downtime, and ensure compliance with regulatory standards.
  • Question: How does Engineering MLOps differ from traditional software development?

    Answer: Unlike traditional software development, which often follows a linear approach, Engineering MLOps embraces a more iterative and collaborative methodology tailored for machine learning applications. It incorporates data management, model training, and deployment into a seamless workflow, allowing for real-time feedback and continuous enhancement. This approach is crucial, as machine learning involves constant data changes and model evolution, requiring an adaptable and dynamic operational framework.
  • Question: What tools are recommended for implementing MLOps as discussed in Engineering MLOps?

    Answer: The book recommends various tools to facilitate MLOps, including Kubeflow for orchestration, MLflow for tracking experiments, and Terraform for infrastructure management. Additionally, it explores version control systems for data and models, which are critical for maintaining consistency during model updates. By leveraging these tools, organizations can ensure that their machine learning processes are efficient, repeatable, and scalable across various environments.
  • Question: What are the benefits of adopting MLOps practices from Engineering MLOps?

    Answer: Adopting MLOps practices as outlined in Engineering MLOps brings several benefits, such as improved collaboration between data science and IT teams, increased model reliability, and quicker deployment cycles. These practices help ensure that machine learning projects align with business goals, leading to increased efficiency and profitability. Furthermore, organizations can achieve better monitoring and governance of their models, adapting more rapidly to market changes and regulatory requirements.
  • Question: Can Engineering MLOps assist in overcoming common challenges in machine learning projects?

    Answer: Yes, Engineering MLOps offers strategies to address prevalent challenges in machine learning projects, such as model drift, deployment bottlenecks, and collaboration issues. The book teaches best practices for monitoring model performance over time and implementing robust version control, making it easier to identify and mitigate issues as they arise. By following the guidance provided, teams can significantly reduce project risks and enhance the quality of their ML solutions.
  • Question: Where can I buy Engineering MLOps in Sint Maarten?

    Answer: You can purchase Engineering MLOps: Rapidly build, test, and manage production-ready machine learning life cycles at scale from Ubuy. Ubuy is a reliable online marketplace that offers a wide variety of books, including this title, making it easy for you to access this valuable resource.

Intelligence & Semantics Editorial Review

**** "Engineering MLOps" stands out as a vital resource for those looking to navigate the complexities of machine learning operations, especially with a focus on Microsoft's Azure platform. The author, Emmanuel Raj, successfully combines practical examples with hands-on implementation, making it an engaging read for both novice data scientists and experienced engineers. The book is structured into three core sections: building ML models, deploying them, and monitoring their performance, providing a comprehensive introduction to the entire machine learning life cycle. Customer feedback highlights the book’s clarity; its straightforward language and digestible concepts enable readers to grasp intricate details effectively. The inclusion of a real-life business problem serves as a coherent thread throughout the text, illustrating MLOps stages in a relatable manner. This aspect makes the book advantageous not just for technical professionals but also for business stakeholders in tech domains. Though the emphasis on Azure's services throughout the book may deter those using other cloud solutions, it's acknowledged that the fundamental principles discussed are broadly applicable. However, readers have noted minor drawbacks such as typographical errors and some illustrations being less effective due to being printed in black-and-white. These issues, while noted, do not significantly overshadow the book's solid content, which remains highly regarded. In summary, "Engineering MLOps" is recommended for anyone eager to improve their MLOps skills and deepen their understanding of machine learning in production environments, especially within Azure's ecosystem. **

Customer Reviews & Ratings

5.0
1 customers ratings
  • 5 Star
    100%
  • 4 Star
    0%
  • 3 Star
    0%
  • 2 Star
    0%
  • 1 Star
    0%

Review this product

Share your thoughts with other customers

Pros

  • Practical examples with hands-on implementation.
  • Clear and straightforward language, making concepts easy to understand.
  • Well-structured content covering vital aspects of MLOps.
  • Beneficial for various audiences, including both technical and business professionals.
  • Comprehensive coverage of monitoring machine learning models in production.

Cons

  • A heavy emphasis on Azure, making applicability to other cloud platforms limited.

Product Price History

Important information

  • Limitations : For products shipped internationally, please note that any manufacturer warranty may not be valid; manufacturer service options may not be available; product manuals, instructions, and safety warnings may not be in destination country languages; the products (and accompanying materials) may not be designed in accordance with destination country standards, specifications, and labeling requirements; and the products may not conform to destination country voltage and other electrical standards (requiring use of an adapter or converter if appropriate). The recipient is responsible for assuring that the product can be lawfully imported to the destination country. When ordering from Ubuy or its affiliates, the recipient is the importer of record and must comply with all laws and regulations of the destination country.
  • Not all the products listed on Ubuy are for sale, as Ubuy is a global search engine. Products are subject to export/trade regulations.