All cloud architects need to know how to build data platforms--the key to enabling businesses with data and delivering enterprise-wide intelligence in a fast and efficient way. This handbook is ideal for learning how to design, build, and modernize cloud native data and machine learning platforms us
Architecting Data and Machine Learning Platforms (Second Early Release)
β Scribed by Marco Tranquillin, Valliappa Lakshmanan, and Firat Tekiner
- Publisher
- O'Reilly Media, Inc.
- Year
- 2023
- Tongue
- English
- Leaves
- 270
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
All cloud architects need to know how to build data platformsβthe key to enabling businesses with data and delivering enterprise-wide intelligence in a fast and efficient way. This handbook is ideal for learning how to design, build, and modernize cloud native data and Machine Learning platforms using AWS, Azure, Google Cloud, or multicloud tools like Fivetran, dbt, Snowflake, and Databricks.
Authors Marco Tranquillin, Valliappa Lakshmanan, and Firat Tekiner cover the entire data lifecycle in a cloud environment, from ingestion to activation, using real-world enterprise architectures. You'll learn how to transform and modernize familiar solutions, like data warehouses and data lakes, and you'll be able to leverage recent AI/ML patterns to get accurate and quicker insights to drive competitive advantage.
What is a data platform? Why do you need it? What does building a data and ML platform involve? Why should you build your data platform on the cloud? This book starts by answering these common questions that arise when dealing with data and ML projects. We then lay out the strategic journey that we recommend you take to build data and ML capabilities in your business, and wrap up all the concepts in a model data modernization case.
This book shows you how to:
Design a modern cloud native or hybrid data analytics and Machine Learning platform
Accelerate data-led innovation by consolidating enterprise data in a data platform
Democratize access to enterprise data and allow business teams to extract insights and build AI/ML capabilities
Enable your business to make decisions in real time using streaming pipelines
Move from a descriptive analytics approach to a more predictive and prescriptive one by building an MLOps platform
Make your organization more effective in working with data analytics and Machine Learning in a cloud environment
Who is this book for?
This book is for architects who wish to support data-driven decision making in their business by creating a data and ML platform using public cloud technologies. It is also relevant for a data engineer, data analyst, data scientist, or ML engineer, who will find several useful concepts to gain a high-level design view of the systems that they might be implementing on top of.
π SIMILAR VOLUMES
As tech products become more prevalent today, the demand for machine learning professionals continues to grow. But the responsibilities and skill sets required of ML professionals still vary drastically from company to company, making the interview process difficult to predict. In this guide, data s
With the increasing use of AI in high-stakes domains such as medicine, law, and defense, organizations spend a lot of time and money to make ML models trustworthy. Many books on the subject offer deep dives into theories and concepts. This guide provides a practical starting point to help developmen
All cloud architects need to know how to build data platformsβthe key to enabling businesses with data and delivering enterprise-wide intelligence in a fast and efficient way. This handbook is ideal for learning how to design, build, and modernize cloud native data and machine learning platforms usi
<p>All cloud architects need to know how to build data platforms that enable businesses to make data-driven decisions and deliver enterprise-wide intelligence in a fast and efficient way. This handbook shows you how to design, build, and modernize cloud native data and machine learning platforms usi