Automatic documentation generator and analyzer for Power BI semantic models (TMDL) and reports (PBIR)
Project description
pbi-semantic-doc
Automatic documentation generator and analyzer for Power BI projects.
Built with ❤️ by ViciusLio in collaboration with Claude AI (Anthropic).
If your Power BI project lives in a Git repository as a .pbip project, this tool can:
- Document semantic models (TMDL format) — tables, columns, measures, relationships, DAX patterns, complexity index
- Analyze reports (PBIR and PBIR-Legacy) — pages, visuals, bookmarks, visual type distribution, complexity index
Zero configuration. Zero external dependencies. Drop it into any pipeline.
pip install pbi-semantic-doc
# Document a semantic model
pbi-semantic-doc ./MyProject.SemanticModel --output docs/MODEL.md
# Analyze a report
pbi-semantic-doc ./MyProject.Report --analyze-report --output docs/REPORT.md
# Both at once (from the .pbip project folder)
pbi-semantic-doc ./MyProject --combined --output docs/FULL.md
Why this exists
Power BI semantic models have become real codebases. With .pbip projects and TMDL, every table, measure, and relationship is a text file you can version, review, and diff. The tooling around that workflow is still catching up: there is no built-in way to generate human-readable documentation from a semantic model without opening Power BI Desktop or paying for a third-party service.
pbi-semantic-doc fills that gap. It is a plain Python CLI tool you can drop into any pipeline — a pre-commit hook, a GitHub Action, a local script — and get documentation that stays in sync with your model automatically.
Installation
pip install pbi-semantic-doc
Or from source:
git clone https://github.com/ViciusLio/pbi-semantic-doc
cd pbi-semantic-doc
pip install -e .
Usage
Semantic Model Documentation
# Basic — writes MODEL_DOC.md inside the model folder
pbi-semantic-doc ./MyProject.SemanticModel
# Specify output path
pbi-semantic-doc ./MyProject.SemanticModel --output ./docs/MODEL.md
# Point to the .pbip parent folder (auto-discovers the .SemanticModel subfolder)
pbi-semantic-doc . --output MODEL.md
# Suppress console output (useful in CI)
pbi-semantic-doc ./MyProject.SemanticModel --output ./docs/MODEL.md --quiet
Report Analysis
# Markdown output (default)
pbi-semantic-doc ./MyProject.Report --analyze-report --output ./docs/REPORT.md
# JSON output for programmatic use
pbi-semantic-doc ./MyProject.Report --analyze-report --format json --output analysis.json
# Text summary to console
pbi-semantic-doc ./MyProject.Report --analyze-report --format text
Combined Analysis
# Analyze both model and report from a .pbip project folder
pbi-semantic-doc ./MyProject --combined --output ./docs/FULL.md
# JSON combined output
pbi-semantic-doc ./MyProject --combined --format json --output analysis.json
CLI reference
| Flag | Description |
|---|---|
PATH |
Path to .SemanticModel, .Report, or .pbip project folder |
--analyze-report |
Analyze report instead of semantic model |
--combined |
Analyze both semantic model and report |
--format |
Output format: md (default), json, text |
--output, -o |
Output file path |
--quiet, -q |
Suppress console output |
Expected folder structure
MyProject/
├── MyProject.pbip
├── MyProject.SemanticModel/
│ └── definition/
│ ├── model.tmdl
│ ├── relationships.tmdl
│ └── tables/
│ ├── Sales.tmdl
│ └── Calendar.tmdl
└── MyProject.Report/
└── definition/
├── version.json
├── pages/ # PBIR format (new)
│ └── Page1/
│ ├── page.json
│ └── visuals/
│ └── Visual1/
│ └── visual.json
├── bookmarks/
│ └── Bookmark1.bookmark.json
├── reportExtensions.json
└── report.json # PBIR-Legacy format (old)
Features
Semantic Model Documentation
- Parses standard TMDL folder structure (
.pbipprojects, Power BI Desktop) - Documents tables, columns (data types, descriptions, hidden status), measures (full DAX), and relationships
- Generates automatic DAX pattern descriptions when no manual description is present
- Extracts model name from the
.SemanticModelfolder name - Complexity Index — normalized 0–1 score per model (see below)
Report Analysis
- Supports PBIR (folder-based, new) and PBIR-Legacy (
report.json) formats - Classifies all standard and custom visual types
- Detects mobile layouts, drill-through pages, hidden pages, filters
- Identifies custom marketplace visuals by name
- Complexity Index — normalized 0–1 score per report (see below)
- Outputs Markdown, JSON, and plain text
General
- Zero external dependencies — pure Python 3.9+ stdlib
- Installable via pip; works as a CLI or Python library
- CI/CD ready (GitHub Actions, pre-commit hooks)
- Windows-compatible (Unicode on cp1252 terminals)
Complexity Index
Both the semantic model and the report get a normalized 0–1 complexity score.
Semantic Model
| Dimension | Weight | Reference maximum |
|---|---|---|
| Visible tables | 20% | 30 tables |
| Measures | 30% | 150 measures |
| Measure DAX complexity (avg) | 30% | — |
| Relationships | 10% | 50 relationships |
| Columns | 10% | 300 columns |
Measure DAX complexity is itself a 0–1 score per measure, combining:
- Expression length (40%) — normalized to 500 characters
- Detected pattern count (60%) — CALCULATE, VAR, time intelligence, iterators, filter modifiers, RANKX, SWITCH, USERELATIONSHIP (max 5 distinct categories)
Report
| Dimension | Weight | Reference maximum |
|---|---|---|
| Pages | 25% | 50 pages |
| Visuals | 45% | 300 visuals |
| Bookmarks | 20% | 30 bookmarks |
| Report-level measures | 10% | 10 measures |
A score of 0.5 (50%) indicates a moderately complex model or report. Both scores are always in the 0–1 range.
DAX pattern recognition
Automatic measure descriptions are generated by inspecting DAX expressions. Recognized patterns:
| Category | Functions |
|---|---|
| Aggregations | SUM, AVERAGE, COUNT, DISTINCTCOUNT, MIN, MAX |
| Iterators | SUMX, AVERAGEX, COUNTX, FILTER |
| Time intelligence | TOTALYTD, TOTALMTD, SAMEPERIODLASTYEAR, DATEADD, PARALLELPERIOD |
| Context modification | CALCULATE, ALL, ALLEXCEPT, KEEPFILTERS |
| Variables | VAR/RETURN |
| Safe division | DIVIDE |
| Conditional logic | IF, SWITCH |
| Ranking | RANKX, TOPN |
| Cross-table | RELATED, USERELATIONSHIP |
Manual descriptions in Power BI Desktop always take precedence over auto-generated ones.
Roadmap
v0.3 — Data Sources & Power Query
- Data source discovery: extract connection strings, server/database names, SharePoint/OneLake endpoints from TMDL partitions
- Power Query (M) extraction: expose the full M expression for each table partition
- Custom query detection: flag tables using
Value.NativeQueryor inline SQL — a common maintenance risk - Dataflow & lakehouse references: identify tables sourced from Power BI Dataflows, Fabric Lakehouses, or Warehouses
v0.4 — Deep Model Analysis
- Column lineage: trace which measures reference which columns across tables
- Unused columns: detect columns not referenced in any measure, relationship, or visual
- Measure dependency graph: DAG of measure-to-measure dependencies
- Hidden object inventory: report on all hidden tables and columns
v0.5 — Report Deep Dive
- Visual-to-measure mapping: detect which measures each visual uses (from
prototypeQuery) - Filter analysis: page-level and visual-level filters with target fields and values
- Theme extraction: color palette and font settings from theme files
- Tooltip page detection: pages used exclusively as tooltip layers
Future
- Interactive single-file HTML output
- Pre-commit hook configuration helper
- VS Code extension wrapper
Contributing
Issues and pull requests are welcome at github.com/ViciusLio/pbi-semantic-doc.
pip install pytest
pytest tests/ -v # 138 tests
License
MIT — see LICENSE.
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