1.

Record Nr.

UNINA9910427048903321

Autore

Leonard Andy

Titolo

SQL Server data automation through frameworks : building metadata-driven frameworks with T-SQL, SSIS, and Azure Data Factory / / Andy Leonard, Kent Bradshaw

Pubbl/distr/stampa

Berkeley, California : , : Apress, , [2020]

©2020

ISBN

1-4842-6213-1

Edizione

[1st ed. 2020.]

Descrizione fisica

1 online resource (XX, 391 p. 350 illus.)

Disciplina

005.7585

Soggetti

Client/server computing

Microsoft software

Lingua di pubblicazione

Inglese

Formato

Materiale a stampa

Livello bibliografico

Monografia

Note generali

Includes index.

Nota di contenuto

Part I: Stored Procedure-Based Database Frameworks -- 1. Stored Procedures 101 -- 2. Automation with Stored Procedures -- 3. Stored Procedure Orchestrators -- 4. A Stored Procedure-Base Metadata-Driven Framework -- Part II: SSIS Frameworks -- 5. A Simple Custom File-Based SSIS Framework -- 6. Framework Execution Engine -- 7. Framework Logging -- 8. Azure-SSIS Integration Runtime -- 9. Deploy A Simple Custom File-Based Azure-SSIS Framework -- 10. Framework Logging in ADF -- 11. Fault Tolerance in the ADF Framework.

Sommario/riassunto

Learn to automate SQL Server operations using frameworks built from metadata-driven stored procedures and SQL Server Integration Services (SSIS). Bring all the power of Transact-SQL (T-SQL) and Microsoft .NET to bear on your repetitive data, data integration, and ETL processes. Do this for no added cost over what you’ve already spent on licensing SQL Server. The tools and methods from this book may be applied to on-premises and Azure SQL Server instances. The SSIS framework from this book works in Azure Data Factory (ADF) and provides DevOps personnel the ability to execute child packages outside a project—functionality not natively available in SSIS. Frameworks not only reduce the time required to deliver enterprise functionality, but can also accelerate troubleshooting and problem resolution. You'll learn in this



book how frameworks also improve code quality by using metadata to drive processes. Much of the work performed by data professionals can be classified as “drudge work”—tasks that are repetitive and template-based. The frameworks-based approach shown in this book helps you to avoid that drudgery by turning repetitive tasks into "one and done" operations. Frameworks as described in this book also support enterprise DevOps with built-in logging functionality. You will: Create a stored procedure framework to automate SQL process execution Base your framework on a working system of stored procedures and execution logging Create an SSIS framework to reduce the complexity of executing multiple SSIS packages Deploy stored procedure and SSIS frameworks to Azure Data Factory environments in the cloud.