Microsoft Fabric Updates Blog

Semantic Link: OneLake integrated Semantic Models

Semantic Link adds support for the recently released OneLake integrated semantic models! You can now directly access data using your semantic model’s name via OneLake using the read_table function and the new mode parameter set to onelake. This approach ensures that no load is placed on Analysis Services, enabling efficient data retrieval and avoids putting additional load on your Power BI capacity.

Optimized access of OneLake integrated semantic models

When using the onelake mode, the data is read directly from the delta tables in OneLake, which are kept up to date with the semantic model. This enables seamless access to the data for various data consumers without the need for additional ETL pipelines or data copying. Here’s a code snippet using the read_table function with onelake mode to read the customer table in the Adventure Works semantic model:

Programmatic export of data can be triggered using the new execute_tmsl function. This Python function allows you to run Tabular Model Scripting Language (TMSL) commands to export the data from your semantic model. Please note that XMLA read/write needs to be enabled for the semantic model.

Here’s a code snippet for triggering the programmatic export using the execute_tmsl:

Don’t miss out on the power of semantic link in Microsoft Fabric! Leverage the seamless integration between semantic models and Synapse Data Science to unlock the full potential of your data.

Gerelateerde blogberichten

Semantic Link: OneLake integrated Semantic Models

januari 28, 2026 door Katie Murray

If you’ve been trying to keep up with everything shipping in Microsoft Fabric, this January 2026 round-up is for you—covering the biggest updates across the platform, from new AI-powered catalog experiences and OneLake governance improvements to enhancements in Data Engineering, Data Warehouse, Real-Time Intelligence, and Data Factory. If you haven’t already, make sure FabCon Atlanta … Continue reading “Fabric January 2026 Feature Summary”

januari 8, 2026 door Adi Eldar

What if generating embeddings in Eventhouse didn’t require an external endpoint, callout policies, throttling management, or per‑request costs? That’s exactly what slm_embeddings_fl() delivers: a new user-defined function (UDF) that generates text embeddings using local Small Language Models (SLMs) from within the Kusto Python sandbox, returning vectors that you can immediately use for semantic search, similarity … Continue reading “Create Embeddings in Fabric Eventhouse with built-in Small Language Models (SLMs)”