Description
Skills at a glance
-
Maintain a data analytics solution (25–30%)
-
Prepare data (45–50%)
-
Implement and manage semantic models (25–30%)
Maintain a data analytics solution (25–30%)
Implement security and governance
-
Implement workspace-level access controls
-
Implement item-level access controls
-
Implement row-level, column-level, object-level, and file-level access control
-
Apply sensitivity labels to items
-
Endorse items
Maintain the analytics development lifecycle
-
Configure version control for a workspace
-
Create and manage a Power BI Desktop project (.pbip)
-
Create and configure deployment pipelines
-
Perform impact analysis of downstream dependencies from lakehouses, data warehouses, dataflows, and semantic models
-
Deploy and manage semantic models by using the XMLA endpoint
-
Create and update reusable assets, including Power BI template (.pbit) files, Power BI data source (.pbids) files, and shared semantic models
Prepare data (45–50%)
Get data
-
Create a data connection
-
Discover data by using OneLake data hub and real-time hub
-
Ingest or access data as needed
-
Choose between a lakehouse, warehouse, or eventhouse
-
Implement OneLake integration for eventhouse and semantic models
Transform data
-
Create views, functions, and stored procedures
-
Enrich data by adding new columns or tables
-
Implement a star schema for a lakehouse or warehouse
-
Denormalize data
-
Aggregate data
-
Merge or join data
-
Identify and resolve duplicate data, missing data, or null values
-
Convert column data types
-
Filter data
Query and analyze data
-
Select, filter, and aggregate data by using the Visual Query Editor
-
Select, filter, and aggregate data by using SQL
-
Select, filter, and aggregate data by using KQL
Implement and manage semantic models (25–30%)
Design and build semantic models
-
Choose a storage mode
-
Implement a star schema for a semantic model
-
Implement relationships, such as bridge tables and many-to-many relationships
-
Write calculations that use DAX variables and functions, such as iterators, table filtering, windowing, and information functions
-
Implement calculation groups, dynamic format strings, and field parameters
-
Identify use cases for and configure large semantic model storage format
-
Design and build composite models
Optimize enterprise-scale semantic models
-
Implement performance improvements in queries and report visuals
-
Improve DAX performance
-
Configure Direct Lake, including default fallback and refresh behavior
-
Implement incremental refresh for semantic models
Who this course is for:
- You work closely with stakeholders for business requirements and partner with architects, analysts, engineers, and administrators.
Reviews
There are no reviews yet.