Master Data Engineering using Azure Data Analytics
- All prices mentioned above are in United States dollar.
- This product is available at Udemy.
- At udemy.com you can purchase Master Data Engineering using Azure Data Analytics for only $529.00
- The lowest price of Master Data Engineering using Azure Data Analytics was obtained on July 7, 2026 12:34 am.
Set Lowest Price Alert
×
Notify me, when price drops
Set Alert for Product: Master Data Engineering using Azure Data Analytics - $529.00

Price history
×
| Price history for Master Data Engineering using Azure Data Analytics | |
|---|---|
|
Latest updates:
|
|
Add to wishlistAdded to wishlistRemoved from wishlist 0
Master Data Engineering using Azure Data Analytics
$59.99
Description
| Price history for Master Data Engineering using Azure Data Analytics | |
|---|---|
|
Latest updates:
|
|
Didn't find the right price? Set price alert below
Set Alert for Product: Master Data Engineering using Azure Data Analytics - $529.00

Master Data Engineering using Azure Data Analytics
★★★★★
$529.00 in stock
Udemy.com
as of July 7, 2026 12:34 am
Learn Azure Storage for Data Lake, ADF for ETL, Synapse for Data Warehouse, Databricks for Big Data Pipeline, etc
Created by:
Durga Viswanatha Raju Gadiraju
CEO at ITVersity and CTO at Analytiqs, Inc
CEO at ITVersity and CTO at Analytiqs, Inc
Created by:
Pratik Kumar
Created by:
Madhuri Gadiraju
Created by:
Sai Varma
Created by:
Phani Bhushan Bozzam
Aspiring Project Manager & Creative UI/UX Designer
Aspiring Project Manager & Creative UI/UX Designer
Created by:
Raghu Raman Bhattathirippad
Mentor, SME and passionate content creator - All about Data
Mentor, SME and passionate content creator - All about Data
Created by:
Anushka Chakraborty
Rating:4.57 (259reviews)
2767students enrolled
What Will I Learn?
- Data Engineering leveraging Services under Azure Data Analytics such as Azure Storage, Data Factory, Azure SQL, Synapse, Databricks, etc.
- Setup Development Environment using Visual Studio Code on Windows
- Building Data Lake using Azure Storage (Blob and ADLS)
- Build Data Warehouse using Azure Synapse
- Implement ETL Logic using ADF Data Flow with Azure Storage as Source and Target
- In Depth Coverage of Orchestration using ADF Pipeline
- Overview of Azure SQL and Azure Synapse Serverless and Dedicated Pool Features
- Implement ETL Logic using ADF Data Flow with Azure SQL as Source and Azure Synapse as Target
- Using Data Copy to copy data between different sources and targets
- Performance Tuning Scenarios of ADF Data Flow and Pipelines
- Build Big Data Solutions using Azure Databricks
- Overview of Spark SQL and Pyspark Data Frame APIs
- Build ELT Pipelines using Databricks Jobs and Workflows
- Orchestrate Databricks Notebooks using ADF Pipelines
Requirements
- A Computer with at least 8 GB RAM
- Programming Experience using Python is highly desired as some of the topics are demonstrated using Python
- SQL Experience is highly desired as some of the topics are demonstrated using SQL
- Nice to have Data Engineering Experience using Pandas or Pyspark
- This course is ideal for experienced data engineers to add GCP Analytics Services as key skills to their profile
Target audience
- Beginner or Intermediate Data Engineers who want to learn Key Azure Analytics Services for Data Engineering such as Azure Storage, ADF, Synapse, Databricks, etc
- Intermediate Application Engineers who want to explore Data Engineering using Azure Analytics Services for Data Engineering such as Azure Storage, ADF, Synapse, Databricks, etc
- Data and Analytics Engineers who want to learn Data Engineering Azure Analytics Services for Data Engineering such as Azure Storage, ADF, Synapse, Databricks, etc
- Testers who want to learn key skills to test Data Engineering applications built using Azure Analytics Services for Data Engineering such as Azure Storage, ADF, Synapse, Databricks, etc
Price History
| Price history for Master Data Engineering using Azure Data Analytics | |
|---|---|
|
Latest updates:
|
|
Reviews (0)
User Reviews
0.0 out of 5
★★★★★
0
★★★★★
0
★★★★★
0
★★★★★
0
★★★★★
0
Write a review

There are no reviews yet.