Description: Data Engineering Best Practices by David Larochelle, Richard J. Schiller Estimated delivery 3-12 business days Format Paperback Condition Brand New Description Explore modern data engineering techniques and best practices to build scalable, efficient, and future-proof data processing systems across cloud platformsKey FeaturesArchitect and engineer optimized data solutions in the cloud with best practices for performance and cost-effectivenessExplore design patterns and use cases to balance roles, technology choices, and processes for a future-proof designLearn from experts to avoid common pitfalls in data engineering projectsPurchase of the print or Kindle book includes a free PDF eBookBook DescriptionRevolutionize your approach to data processing in the fast-paced business landscape with this essential guide to data engineering. Discover the power of scalable, efficient, and secure data solutions through expert guidance on data engineering principles and techniques. Written by two industry experts with over 60 years of combined experience, it offers deep insights into best practices, architecture, agile processes, and cloud-based pipelines.Youll start by defining the challenges data engineers face and understand how this agile and future-proof comprehensive data solution architecture addresses them. As you explore the extensive toolkit, mastering the capabilities of various instruments, youll gain the knowledge needed for independent research. Covering everything you need, right from data engineering fundamentals, the guide uses real-world examples to illustrate potential solutions. It elevates your skills to architect scalable data systems, implement agile development processes, and design cloud-based data pipelines. The book further equips you with the knowledge to harness serverless computing and microservices to build resilient data applications.By the end, youll be armed with the expertise to design and deliver high-performance data engineering solutions that are not only robust, efficient, and secure but also future-ready.What you will learnArchitect scalable data solutions within a well-architected frameworkImplement agile software development processes tailored to your organizations needsDesign cloud-based data pipelines for analytics, machine learning, and AI-ready data productsOptimize data engineering capabilities to ensure performance and long-term business valueApply best practices for data security, privacy, and complianceHarness serverless computing and microservices to build resilient, scalable, and trustworthy data pipelinesWho this book is forIf you are a data engineer, ETL developer, or big data engineer who wants to master the principles and techniques of data engineering, this book is for you. A basic understanding of data engineering concepts, ETL processes, and big data technologies is expected. This book is also for professionals who want to explore advanced data engineering practices, including scalable data solutions, agile software development, and cloud-based data processing pipelines. Author Biography Richard J. Schiller is a chief architect, distinguished engineer, and startup entrepreneur with 40 years ofexperience delivering real-time large-scale data processing systems. He holds an MS in computer engineeringfrom Columbia Universitys School of Engineering and Applied Science and a BA in computer scienceand applied mathematics. He has been involved with two prior successful startups and has coauthoredthree patents. He is a hands-on systems developer and innovator. David Larochelle has been involved in data engineering for startups, Fortune 500 companies, andresearch institutes. He holds a BS in computer science from the College of William & Mary, a Masters incomputer science from the University of Virginia, and a Masters in communication from the Universityof Pennsylvania. Davids career spans over 20 years, and his strong background has enabled him to workin a wide range of organizations, including startups, established companies, and research labs. Details ISBN 1803244984 ISBN-13 9781803244983 Title Data Engineering Best Practices Author David Larochelle, Richard J. Schiller Format Paperback Year 2024 Pages 550 Publisher Packt Publishing Limited GE_Item_ID:161623169; About Us Grand Eagle Retail is the ideal place for all your shopping needs! With fast shipping, low prices, friendly service and over 1,000,000 in stock items - you're bound to find what you want, at a price you'll love! Shipping & Delivery Times Shipping is FREE to any address in USA. Please view eBay estimated delivery times at the top of the listing. Deliveries are made by either USPS or Courier. We are unable to deliver faster than stated. International deliveries will take 1-6 weeks. NOTE: We are unable to offer combined shipping for multiple items purchased. This is because our items are shipped from different locations. Returns If you wish to return an item, please consult our Returns Policy as below: Please contact Customer Services and request "Return Authorisation" before you send your item back to us. Unauthorised returns will not be accepted. Returns must be postmarked within 4 business days of authorisation and must be in resellable condition. Returns are shipped at the customer's risk. We cannot take responsibility for items which are lost or damaged in transit. For purchases where a shipping charge was paid, there will be no refund of the original shipping charge. Additional Questions If you have any questions please feel free to Contact Us. Categories Baby Books Electronics Fashion Games Health & Beauty Home, Garden & Pets Movies Music Sports & Outdoors Toys
Price: 57.1 USD
Location: Fairfield, Ohio
End Time: 2024-11-13T16:38:20.000Z
Shipping Cost: 0 USD
Product Images
Item Specifics
Restocking Fee: No
Return shipping will be paid by: Buyer
All returns accepted: Returns Accepted
Item must be returned within: 30 Days
Refund will be given as: Money Back
Format: Paperback
ISBN-13: 9781803244983
Author: David Larochelle, Richard J. Schiller
Type: NA
Book Title: Data Engineering Best Practices
Language: Does not apply
Publication Name: NA