2 options
Simplifying data engineering and analytics with delta : create analytics-ready data that fuels artificial intelligence and business intelligence / Anindita Mahapatra.
- Format:
- Book
- Author/Creator:
- Mahapatra, Anindita, author.
- Language:
- English
- Subjects (All):
- Database management.
- Data mining.
- Big data.
- Business--Data processing.
- Business.
- Physical Description:
- 1 online resource (335 pages)
- Place of Publication:
- Birmingham, UK : Packt Publishing, [2022]
- Biography/History:
- Mahapatra Anindita: Anindita Mahapatra is a lead solutions architect at Databricks in the data and AI space helping clients across all industry verticals reap value from their data infrastructure investments. She teaches a data engineering and analytics course at Harvard University as part of their extension school program. She has extensive big data and Hadoop consulting experience from Think Big/Teradata, prior to which she was managing the development of algorithmic app discovery and promotion for both Nokia and Microsoft stores. She holds a master's degree in liberal arts and management from Harvard Extension School, a master's in computer science from Boston University, and a bachelor's in computer science from BITS Pilani, India.
- Summary:
- Explore how Delta brings reliability, performance, and governance to your data lake and all the AI and BI use cases built on top of it Key Features Learn Delta's core concepts and features as well as what makes it a perfect match for data engineering and analysis Solve business challenges of different industry verticals using a scenario-based approach Make optimal choices by understanding the various tradeoffs provided by Delta Book Description Delta helps you generate reliable insights at scale and simplifies architecture around data pipelines, allowing you to focus primarily on refining the use cases being worked on. This is especially important when you consider that existing architecture is frequently reused for new use cases. In this book, you'll learn about the principles of distributed computing, data modeling techniques, and big data design patterns and templates that help solve end-to-end data flow problems for common scenarios and are reusable across use cases and industry verticals. You'll also learn how to recover from errors and the best practices around handling structured, semi-structured, and unstructured data using Delta. After that, you'll get to grips with features such as ACID transactions on big data, disciplined schema evolution, time travel to help rewind a dataset to a different time or version, and unified batch and streaming capabilities that will help you build agile and robust data products. By the end of this Delta book, you'll be able to use Delta as the foundational block for creating analytics-ready data that fuels all AI/BI use cases. What you will learn Explore the key challenges of traditional data lakes Appreciate the unique features of Delta that come out of the box Address reliability, performance, and governance concerns using Delta Analyze the open data format for an extensible and pluggable architecture Handle multiple use cases to support BI, AI, streaming, and data discovery Discover how common data and machine learning design patterns are executed on Delta Build and deploy data and machine learning pipelines at scale using Delta Who this book is for Data engineers, data scientists, ML practitioners, BI analysts, or anyone in the data domain working with big data will be able to put their knowledge to work with this practical guide to executing pipelines and supporting diverse use cases using the Delta protocol. Basic knowledge of SQL, Python programming, and Spark is required to get the most out of this book.
- Contents:
- Table of Contents An Introduction to Data Engineering Data Modeling and ETL Delta – The Foundation Block for Big Data Unifying Batch and Streaming with Delta Data Consolidation in Delta Lake Solving Common Data Pattern Scenarios with Delta Delta for Data Warehouse Use Cases Handling Atypical Data Scenarios with Delta Delta for Reproducible Machine Learning Pipelines Delta for Data Products and Services Operationalizing Data and ML Pipelines Optimizing Cost and Performance with Delta Managing Your Data Journey.
- Notes:
- Includes index.
- Description based on print version record.
- ISBN:
- 1-80181-071-0
- OCLC:
- 1334888420
The Penn Libraries is committed to describing library materials using current, accurate, and responsible language. If you discover outdated or inaccurate language, please fill out this feedback form to report it and suggest alternative language.