
Understanding Azure Data Factory: Operationalizing Big Data and Advanced Analytics Solutions
Sudhir / Narain Rawat
Résumé
This book starts with an overview of the Azure Data Factory as a hybrid ETL/ELT orchestration service on Azure. The book then dives into data movement and the connectivity capability of Azure Data Factory. You will learn about the support for hybrid data integration from disparate sources such as on-premise, cloud, or from SaaS applications. Detailed guidance is provided on how to transform data and on control flow. Demonstration of operationalizing the pipelines and ETL with SSIS is included. You will know how to leverage Azure Data Factory to run existing SSIS packages. As you advance through the book, you will wrap up by learning how to create a single pane for end-to-end monitoring, which is a key skill in building advanced analytics and big data pipelines.
What You'll Learn
- Understand data integration on Azure cloud
- Build and operationalize an ADF pipeline
- Modernize a data warehouse
- Be aware of performance and security considerations while moving data
Who This Book Is For Data engineers and big data developers. ETL (extract, transform, load) developers also will find the book useful in demonstrating various operations.
1. Introduction to Azure Data Factory
* Overview
* Integration runtime (CIR, SHIR, SSIS IR)
* Linked Services and datasets
* Activities
* Pipelines
2. Data Movement
* Copy Activity
* Scenario: 1. Hybrid and 2. Cloud
* Performance
i. Hybrid
ii. Cloud
3. Data Transformation
* All activities
* Define and build solution using Various activities
* Scenario
4. Managing Flow
* Basically defining Control flow
* All control flow activity
* Use cases/ Scenario: Multi-table load using single pipeline, Lookup and data copy.
5. Security
* ADF Metadata
* Data Movement (in transit/ rest)
* Credential Management
* Ports and Firewalls for hybrid scenarios
6. Monitoring
* &^ Activity (data engineer)
* Integration runtime (DevOps)
* UI, SDK, PSH
* Azure Monitor and OMS
7. Executing SSIS Packages
* Demo/ Scenario: Setup
8. Operationalizing Pipelines
* Parameters & System variables
* Setting up Triggers
* Scenario: end-to-end (operationalized)
9 . Summary
* 1. Hybrid pipelines (ETL), 2. Modern DW (UX)
* 3. ISV - SDK/ customizable (.NET/ PSH/ Python)
Sudhir Rawat is a senior software engineer at Microsoft Corporation. He has 15 years of experience in turning data to insights. He is involved in various activities, including development, consulting, troubleshooting, and speaking. He works extensively on the data platform. He has delivered sessions on platforms at Microsoft TechEd India, Microsoft Azure Conference, Great India Developer Summit, SQL Server Annual Summit, Reboot (MVP), and many more. His certifications include MCITP, MCTS, MCT on SQL Server Business Intelligence, MCPS on Implementing Microsoft Azure Infrastructure Solutions, and MS on Designing and Implementing Big Data Analytics Solutions.
Abhishek Narain works as a technical program manager on the Azure Data Governance team at Microsoft. Previously he has worked as a consultant at Microsoft and Infragistics and he has worked on various Azure services and Windows app development projects. He is a public speaker and regularly speaks at various events, including Node Day, Droidcon, Microsoft TechEd, PyCon, the Great India Developer Summit and many others. Before joining Microsoft, he was awarded the Microsoft MVP designation.
Caractéristiques techniques
PAPIER | |
Éditeur(s) | Apress |
Auteur(s) | Sudhir / Narain Rawat |
Parution | 18/12/2018 |
Nb. de pages | 368 |
EAN13 | 9781484241219 |
Avantages Eyrolles.com
Consultez aussi
- Les meilleures ventes en Graphisme & Photo
- Les meilleures ventes en Informatique
- Les meilleures ventes en Construction
- Les meilleures ventes en Entreprise & Droit
- Les meilleures ventes en Sciences
- Les meilleures ventes en Littérature
- Les meilleures ventes en Arts & Loisirs
- Les meilleures ventes en Vie pratique
- Les meilleures ventes en Voyage et Tourisme
- Les meilleures ventes en BD et Jeunesse