

Snowflake Data Engineering - Paperback
Pay over time for orders over $35.00 with
- Transform data using functions, stored procedures, and SQL
- Orchestrate data pipelines with streams and tasks, and monitor their execution
- Use Snowpark to run Python code in your pipelines
- Deploy Snowflake objects and code using continuous integration principles
- Optimize performance and costs when ingesting data into Snowflake Snowflake Data Engineering reveals how Snowflake makes it easy to work with unstructured data, set up continuous ingestion with Snowpipe, and keep your data safe and secure with best-in-class data governance features. Along the way, you'll practice the most important data engineering tasks as you work through relevant hands-on examples. Throughout, author Maja Ferle shares design tips drawn from her years of experience to ensure your pipeline follows the best practices of software engineering, security, and data governance. Foreword by Joe Reis. Purchase of the print book includes a free eBook in PDF and ePub formats from Manning Publications. About the technology Pipelines that ingest and transform raw data are the lifeblood of business analytics, and data engineers rely on Snowflake to help them deliver those pipelines efficiently. Snowflake is a full-service cloud-based platform that handles everything from near-infinite storage, fast elastic compute services, inbuilt AI/ML capabilities like vector search, text-to-SQL, code generation, and more. This book gives you what you need to create effective data pipelines on the Snowflake platform. About the book Snowflake Data Engineering guides you skill-by-skill through accomplishing on-the-job data engineering tasks using Snowflake. You'll start by building your first simple pipeline and then expand it by adding increasingly powerful features, including data governance and security, adding CI/CD into your pipelines, and even augmenting data with generative AI. You'll be amazed how far you can go in just a few short chapters! What's inside - Ingest data from the cloud, APIs, or Snowflake Marketplace
- Orchestrate data pipelines with streams and tasks
- Optimize performance and cost About the reader For software developers and data analysts. Readers should know the basics of SQL and the Cloud.
1 Data engineering with Snowflake
2 Creating your first data pipeline
Part 2
3 Best practices for data staging
4 Transforming data
5 Continuous data ingestion
6 Executing code natively with Snowpark
7 Augmenting data with outputs from large language models
8 Optimizing query performance
9 Controlling costs
10 Data governance and access control
Part 3
11 Designing data pipelines
12 Ingesting data incrementally
13 Orchestrating data pipelines
14 Testing for data integrity and completeness
15 Data pipeline continuous integration
About the Author
Maja Ferle is a seasoned data architect with more than 30 years of experience in data analytics, data warehousing, business intelligence, data engineering, data modeling, and database administration. She holds the SnowPro Advanced Data Engineer and the SnowPro Advanced Data Analyst certifications. She is also a Snowflake Subject Matter Expert and a Snowflake Data Superhero.
Contributor(s)
Author
Free shipping on orders over $75. Standard shipping takes 3-7 business days. Returns accepted within 30 days of purchase.
- Transform data using functions, stored procedures, and SQL
- Orchestrate data pipelines with streams and tasks, and monitor their execution
- Use Snowpark to run Python code in your pipelines
- Deploy Snowflake objects and code using continuous integration principles
- Optimize performance and costs when ingesting data into Snowflake Snowflake Data Engineering reveals how Snowflake makes it easy to work with unstructured data, set up continuous ingestion with Snowpipe, and keep your data safe and secure with best-in-class data governance features. Along the way, you'll practice the most important data engineering tasks as you work through relevant hands-on examples. Throughout, author Maja Ferle shares design tips drawn from her years of experience to ensure your pipeline follows the best practices of software engineering, security, and data governance. Foreword by Joe Reis. Purchase of the print book includes a free eBook in PDF and ePub formats from Manning Publications. About the technology Pipelines that ingest and transform raw data are the lifeblood of business analytics, and data engineers rely on Snowflake to help them deliver those pipelines efficiently. Snowflake is a full-service cloud-based platform that handles everything from near-infinite storage, fast elastic compute services, inbuilt AI/ML capabilities like vector search, text-to-SQL, code generation, and more. This book gives you what you need to create effective data pipelines on the Snowflake platform. About the book Snowflake Data Engineering guides you skill-by-skill through accomplishing on-the-job data engineering tasks using Snowflake. You'll start by building your first simple pipeline and then expand it by adding increasingly powerful features, including data governance and security, adding CI/CD into your pipelines, and even augmenting data with generative AI. You'll be amazed how far you can go in just a few short chapters! What's inside - Ingest data from the cloud, APIs, or Snowflake Marketplace
- Orchestrate data pipelines with streams and tasks
- Optimize performance and cost About the reader For software developers and data analysts. Readers should know the basics of SQL and the Cloud.
1 Data engineering with Snowflake
2 Creating your first data pipeline
Part 2
3 Best practices for data staging
4 Transforming data
5 Continuous data ingestion
6 Executing code natively with Snowpark
7 Augmenting data with outputs from large language models
8 Optimizing query performance
9 Controlling costs
10 Data governance and access control
Part 3
11 Designing data pipelines
12 Ingesting data incrementally
13 Orchestrating data pipelines
14 Testing for data integrity and completeness
15 Data pipeline continuous integration
About the Author
Maja Ferle is a seasoned data architect with more than 30 years of experience in data analytics, data warehousing, business intelligence, data engineering, data modeling, and database administration. She holds the SnowPro Advanced Data Engineer and the SnowPro Advanced Data Analyst certifications. She is also a Snowflake Subject Matter Expert and a Snowflake Data Superhero.
Contributor(s)
Author
