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
Free
$84.99
If the coupon is not opening, disable Adblock, or try another browser.
If you reach this page after the coupon expired then search the latest coupon here
This post is exclusively published on eduexpertisehub.com
Tags: udemy coupons 100 off, udemy coupons, udemy coupons 2025, udemy online free courses, Udemy Coupons April 2025
#udemycoupons