| name | refresh-semantic-model |
| version | 26.25 |
| description | Automatically invoke this skill whenever the user asks to refresh a semantic model or a dataset. Can also be used to manage, optimize, troubleshoot, or configure a refresh or a refresh schedule. |
Refreshing Semantic Models
Trigger, monitor, validate, and troubleshoot semantic model refreshes via the Power BI Enhanced Refresh REST API and Fabric CLI.
Core Concepts
A semantic model refresh reloads data from upstream sources and/or recalculates dependent objects (calculated columns, calculated tables, measures). The scope can be the entire model, specific tables, or individual partitions.
Six refresh types are available via the REST API; a seventh (add) is TMSL-only:
| Type | Reloads Data | Recalculates | Primary Use Case | API |
|---|
full | Yes | Yes | Complete reload from scratch | REST |
automatic | Conditional | Conditional | Smart refresh; process only if needed | REST |
dataOnly | Yes | No* | Reload data; clear dependents | REST |
calculate | No | Yes | Recalculate without reloading data | REST |
clearValues | No | No | Empty data from objects | REST |
defragment | No | No | Clean up column dictionaries | REST |
add | Append | Yes | Append rows to a partition | TMSL |
*dataOnly clears dependent objects (calculated columns, calculated tables) but does not recalculate them. Follow with a calculate refresh to restore them.
For detailed descriptions, behavior with incremental refresh policies, commit modes, and parallelism options, consult references/refresh-types.md.
Refresh Workflow
Step 1: Resolve IDs
Extract the workspace and model GUIDs needed for API calls:
WS_ID=$(fab get "WorkspaceName.Workspace" -q "id" | tr -d '"')
MODEL_ID=$(fab get "WorkspaceName.Workspace/ModelName.SemanticModel" -q "id" | tr -d '"')
Step 2: Query Baseline Data (Pre-Refresh Validation)
Before triggering the refresh, capture a baseline snapshot to later verify that data actually changed. Execute a DAX query against the model to get current row counts or max dates:
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/executeQueries" \
-X post -i '{
"queries": [{"query": "EVALUATE ROW(\"RowCount\", COUNTROWS(FactSales), \"MaxDate\", MAX(FactSales[OrderDate]))"}],
"serializerSettings": {"includeNulls": true}
}'
Record the output. This baseline is compared after refresh to confirm new data arrived.
Step 3: Trigger the Refresh
Full model refresh (simplest):
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/refreshes" \
-X post -i '{"type":"full"}'
Refresh specific tables:
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/refreshes" \
-X post -i '{
"type": "full",
"objects": [{"table": "FactSales"}, {"table": "DimProduct"}]
}'
Refresh specific partitions:
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/refreshes" \
-X post -i '{
"type": "full",
"objects": [
{"table": "FactSales", "partition": "FactSales_2024"},
{"table": "FactSales", "partition": "FactSales_2023"}
]
}'
Data-only refresh (skip recalculation):
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/refreshes" \
-X post -i '{"type":"dataOnly","objects":[{"table":"FactSales"}]}'
Calculate only (no data reload):
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/refreshes" \
-X post -i '{"type":"calculate"}'
Clear values from a table:
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/refreshes" \
-X post -i '{"type":"clearValues","objects":[{"table":"StagingTable"}]}'
For the script-based approach with CLI arguments, use scripts/refresh_model.py.
Step 4: Monitor Status
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/refreshes?\$top=1"
Status values: Unknown, InProgress, Completed, Failed, Disabled, Cancelled
Step 5: Post-Refresh Validation
After the refresh completes, re-run the same DAX query from Step 2 and compare:
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/executeQueries" \
-X post -i '{
"queries": [{"query": "EVALUATE ROW(\"RowCount\", COUNTROWS(FactSales), \"MaxDate\", MAX(FactSales[OrderDate]))"}],
"serializerSettings": {"includeNulls": true}
}'
If data has not changed after a successful refresh:
- The upstream data source has not been updated
- The ETL pipeline (Fabric pipeline, notebook, Data Factory, or other orchestration) needs to run first
- Check the lakehouse/warehouse/SQL database to verify fresh data exists
- For Fabric lakehouses: run
fab run "Workspace.Workspace/Pipeline.DataPipeline" or trigger the notebook
- The refresh only pulls what the source provides; if the source is stale, the refresh will succeed but show no new data
Step 6: Cancel (if needed)
To cancel an in-progress enhanced refresh, first retrieve the requestId from the refresh history:
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/refreshes?\$top=1"
The response includes a requestId field. Use it to cancel:
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/refreshes/<requestId>" \
-X delete
Only works for refreshes triggered via the Enhanced API (not scheduled or portal refreshes).
Using the Refresh Script
The scripts/refresh_model.py script wraps the Enhanced Refresh API with CLI arguments:
uv run scripts/refresh_model.py -w $WS_ID -m $MODEL_ID
uv run scripts/refresh_model.py -w $WS_ID -m $MODEL_ID --tables Sales,Calendar
uv run scripts/refresh_model.py -w $WS_ID -m $MODEL_ID --partitions Sales:Sales_2024
uv run scripts/refresh_model.py -w $WS_ID -m $MODEL_ID -t dataOnly --tables FactSales
uv run scripts/refresh_model.py -w $WS_ID -m $MODEL_ID -t calculate
uv run scripts/refresh_model.py -w $WS_ID -m $MODEL_ID --commit partialBatch --parallelism 4
uv run scripts/refresh_model.py -w $WS_ID -m $MODEL_ID --no-policy
uv run scripts/refresh_model.py -w $WS_ID -m $MODEL_ID --status-only
uv run scripts/refresh_model.py -w $WS_ID -m $MODEL_ID --poll
Enhanced Refresh Options
The Enhanced Refresh API (Premium/Fabric capacity required) extends the standard refresh with:
| Parameter | Default | Purpose |
|---|
type | automatic | Refresh type (full, automatic, dataOnly, calculate, etc.) |
commitMode | transactional | Atomic commit or per-object partial batch |
maxParallelism | 10 | Number of parallel processing threads |
retryCount | 0 | Automatic retries on failure |
objects | Entire model | Array of table/partition targets |
applyRefreshPolicy | true | Apply or skip incremental refresh policy |
effectiveDate | Current date | Override date for incremental policy window |
timeout | 05:00:00 | Per-attempt timeout (max total 24h with retries) |
Common Patterns
Two-Phase Refresh (Large Models)
Split data loading and recalculation for better control and failure isolation:
dataOnly with partialBatch to reload all tables (each committed independently)
calculate with transactional to recalculate everything atomically
Selective Partition Refresh
For tables with incremental refresh, refresh only specific time-range partitions rather than the entire table. To discover partition names, query the model's TMSL metadata via the XMLA endpoint using Tabular Editor, SSMS, or by exporting with the Fabric CLI:
fab export "Workspace.Workspace/Model.SemanticModel" -o /tmp/model -f
Inspect the exported TMDL table files; each partition block lists the partition name. Target specific partitions in the objects array of the refresh request.
Refresh After ETL
When orchestrating a data pipeline:
- Run the upstream ETL (Fabric pipeline, notebook, ADF, or custom)
- Verify fresh data in the source (lakehouse, warehouse, SQL)
- Trigger the semantic model refresh
- Validate with a DAX query that row counts or max dates changed
- If unchanged, investigate the ETL output; the semantic model refresh succeeded but the source was stale
Troubleshooting
Quick reference for the most common failures. For the full troubleshooting guide with debugging workflows and detailed error tables, read references/troubleshooting.md.
| Symptom | Likely Cause | Resolution |
|---|
| Failed with credential error | Credentials expired, missing, or didn't carry over after copy | Update in dataset settings; only shared cloud connections transfer with fab cp |
| Type mismatch on a table | Source column types don't match model column types | Check column data types in the model definition vs source schema; add Table.TransformColumnTypes in partition expression |
| Column does not exist | Source column renamed, removed, or differently cased | Check source schema; add Table.RenameColumns in partition expression |
| Timeout (2h shared / 5h Premium) | Model too large for a single refresh window | Implement incremental refresh; use partition-level refresh via XMLA; reduce model size |
| Calculated tables empty | dataOnly refresh clears but doesn't rebuild | Follow with a calculate refresh via the Enhanced Refresh API to rebuild calculated tables and calc groups |
| Throttled on Premium | Too many concurrent refreshes | Stagger refresh schedules; refresh during off-peak |
Debugging per-table failures
When a full refresh fails, isolate the failing table by refreshing individual tables via the Enhanced Refresh API:
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/refreshes" \
-X post -i '{"type":"full","objects":[{"table":"Customers"}]}'
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/refreshes" \
-X post -i '{"type":"full","objects":[{"table":"Invoices"}]}'
fab api -A powerbi "groups/$WS_ID/datasets/$MODEL_ID/refreshes" \
-X post -i '{"type":"calculate"}'
Check the failing table's partition expression and compare source schema against the model's expected column names and types via fab export or fab table schema.
Large Model Strategies
Models over 1 GB or with refresh times exceeding an hour benefit from targeted approaches:
- Partition-level refresh: Refresh individual table partitions via the enhanced REST API or XMLA endpoint instead of the full model. Requires Premium/Fabric capacity.
- Incremental refresh: Automatically partition large tables by date; only recent data refreshes each cycle. Configure
RangeStart/RangeEnd parameters in Power Query. Also supports detect-data-changes to skip unchanged partitions entirely.
- Aggregations: Pre-aggregate large fact tables at a coarser grain into an import-mode aggregation table. Detail queries fall through to DirectQuery. Reduces both refresh time and memory.
- Hybrid tables: Historical partitions in import mode; a real-time DirectQuery partition for recent data. Related tables must be Dual storage mode.
- Scale-out: Isolate refresh from query workloads by enabling semantic model scale-out on Premium capacities. A read-only replica handles queries while the primary refreshes.
Capacity Limits
| Capacity Type | Max Refreshes/Day | Default Timeout | Enhanced Features |
|---|
| Pro | 8 | 2 hours | No |
| Premium Per User | 48 | 5 hours | Yes |
| Premium / Fabric | 48 | 5 hours | Yes |
Pro capacity supports only full-model standard refreshes. Enhanced refresh features (table/partition targeting, commit modes, parallelism, cancel, timeout override) require Premium or Fabric capacity.
Requirements
- Workspace contributor or higher permissions
fab CLI authenticated: fab auth login
Additional Resources
Reference Files
references/refresh-types.md -- Complete reference for all 7 refresh types, commit modes, parallelism, incremental policy interaction, status values, XMLA/TMSL details, and the two-phase refresh pattern
references/troubleshooting.md -- Comprehensive troubleshooting guide: credential errors, type/schema mismatches, timeouts, capacity limits, incremental refresh issues, debugging workflows, and large model strategies
Scripts
scripts/refresh_model.py -- CLI tool for triggering and monitoring refreshes with all enhanced options
Related Skills
semantic-model -- Model design, build, and quality/performance review
lineage-analysis -- Downstream report discovery and impact analysis
standardize-naming-conventions -- Naming audit and remediation
fabric-cli (fabric-cli plugin) -- Workspace and item management via fab CLI