| name | python-visuals |
| version | 26.25 |
| description | Python visual creation and matplotlib/seaborn patterns for PBIR reports. Automatically invoke when the user mentions "Python visual", "matplotlib in Power BI", "seaborn in Power BI", "pythonVisual", or asks to "create a Python visual", "add a matplotlib chart", "write a Python visual script". |
Python Visuals in Power BI (PBIR)
Report modification requires tooling. Two paths exist:
pbir CLI (preferred) -- use the pbir command and the pbir-cli skill. Install with uv tool install pbir-cli or pip install pbir-cli. Check availability with pbir --version.
- Direct JSON modification -- if
pbir is not available, use the pbir-format skill (pbip plugin) for PBIR JSON structure and patterns. Validate every change with jq empty <file.json>.
If neither the pbir-cli skill nor the pbir-format skill is loaded, ask the user to install the appropriate plugin before proceeding with report modifications.
Python visuals execute matplotlib/seaborn scripts to render static PNG images on the Power BI canvas. Prefer seaborn over raw matplotlib for cleaner syntax and better defaults -- it handles most chart types with less code.
Visual Identity
- visualType:
pythonVisual
- Data role:
Values (columns and measures, multiple allowed)
- Data variable:
dataset (pandas DataFrame, auto-injected)
- Row limit: 150,000 rows
- Output: Static PNG at 72 DPI -- no interactivity
Workflow: Creating a Python Visual
Step 1: Add the Visual
Create the visual.json file manually (see pbir-format skill in the pbip plugin for JSON structure) with visualType: pythonVisual, field bindings for the columns and measures you need (use Values:Table.Column or Values:Table.Measure format), and position/size as required.
Step 2: Write the Script
import matplotlib.pyplot as plt
fig, ax = plt.subplots(figsize=(8, 4))
ax.bar(dataset["Date"], dataset["Sales"], color="#5B8DBE")
ax.spines["top"].set_visible(False)
ax.spines["right"].set_visible(False)
plt.tight_layout()
plt.show()
Critical rules:
plt.show() is mandatory as the final line -- nothing renders without it
dataset is auto-injected as a pandas DataFrame; do not create it
- Column names match the
nativeQueryRef (display name) from field bindings
- Only the last
plt.show() call renders; multiple figures not supported
Step 2b: Review
Before presenting the script to the user, dispatch the python-reviewer agent to validate correctness and provide design feedback.
Step 3: Inject the Script
Set the script content in the visual's objects.script[0].properties.source literal value (see PBIR Format section below).
Escaping rules for visual.json injection:
The script must be encoded as a single-quoted DAX literal string inside expr.Literal.Value:
- Newlines in the script become
\n in the JSON string
- Double quotes inside the script (e.g.,
"#5B8DBE") become \" in the JSON string
- The entire script is wrapped in single quotes:
'import matplotlib...\nplt.show()'
- See
examples/visual/ for a complete real-world visual.json showing this encoding
Step 4: Validate
Validate JSON syntax with jq empty <visual.json> and inspect the visual.json to confirm script content and field bindings.
PBIR Format
Scripts are stored in visual.objects.script[0].properties:
{
"source": {"expr": {"Literal": {"Value": "'import matplotlib.pyplot as plt\\n...\\nplt.show()'"}}},
"provider": {"expr": {"Literal": {"Value": "'Python'"}}}
}
The CLI handles all escaping automatically.
Supported Libraries
Power BI Service (Python 3.11)
| Package | Version | Purpose |
|---|
| matplotlib | 3.8.4 | Primary plotting |
| seaborn | 0.13.2 | Statistical visualization |
| numpy | 2.0.0 | Numerical computing |
| pandas | 2.2.2 | Data manipulation |
| scipy | 1.13.1 | Scientific computing |
| scikit-learn | 1.5.0 | Machine learning |
| statsmodels | 0.14.2 | Statistical models |
| pillow | 10.4.0 | Image processing |
Not supported: plotly, bokeh, altair (networking blocked in Service).
Full package list: https://learn.microsoft.com/power-bi/connect-data/service-python-packages-support
Desktop
Any locally installed package works without restriction.
Best Practices
- Always call
plt.show() -- mandatory, must be the final line
- Use
figsize=(w, h) to match container aspect ratio (72 DPI output)
- Remove chart chrome --
ax.spines["top"].set_visible(False) etc.
- Use hex colors matching the report theme
- Keep scripts simple -- 5-min timeout Desktop, 1-min Service
- Minimize transforms -- do heavy computation in DAX/Power Query instead
- Use
try/except for robustness in production scripts
- Copy data first --
data = dataset.copy() before manipulation
Limitations
| Constraint | Desktop | Service |
|---|
| Output | Static PNG, 72 DPI | Static PNG, 72 DPI |
| Timeout | 5 minutes | 1 minute |
| Row limit | 150,000 | 150,000 |
| Payload | -- | 30 MB |
| Networking | Unrestricted | Blocked |
| Gateway | Personal only | Personal only |
| Cross-filter FROM | Not supported | Not supported |
| Receive cross-filter | Yes | Yes |
| Publish to web | Not supported | Not supported |
| Embed (app-owns-data) | Not supported | Not supported |
Script Structure Template
import matplotlib.pyplot as plt
import numpy as np
if dataset.empty:
fig, ax = plt.subplots(1, 1, figsize=(6, 4))
ax.text(0.5, 0.5, "No data available", ha='center', va='center', fontsize=14, color='#888888')
ax.axis('off')
plt.show()
else:
data = dataset.copy()
fig, ax = plt.subplots(figsize=(8, 4))
ax.plot(data["X"], data["Y"], color="#5B8DBE", linewidth=2)
ax.spines["top"].set_visible(False)
ax.spines["right"].set_visible(False)
ax.grid(axis="y", alpha=0.3)
plt.tight_layout()
plt.show()
When to Use a Script Visual
Reach for a Python visual only when all of the following hold:
- The chart has no native equivalent and no reasonable Deneb spec
- The value is in a statistical computation that must run at render time (model fit, kernel density, forecast band), not just a shape Vega could draw
- The visual does not need to be a cross-filter source, hover tooltips, publish-to-web, or app-owns-data embed
- The report is served in a Pro/PPU or higher capacity with a Fabric-enabled region
If interactivity or cross-filtering matters, use Deneb (a static PNG cannot be a selection source). If the need is a small inline mark (sparkline, bar, status pill), use an SVG measure (no row cap, no timeout, no licensing/region gate, renders under publish-to-web). The script visual's niche is narrow: compute-at-render statistical plots for internal or org consumption.
Python vs R once a script visual is the right call: use Python when the computation leans on scikit-learn, statsmodels, or scipy, or when surrounding report logic is already Python. Use R for publication-quality statistical defaults and packages with no Python peer (forecast, corrplot, pheatmap, ridgeline/violin). Where equal, default to whichever language the report's other scripts use; mixing doubles the publish-time package surface to validate.
Do not default to a script visual because a chart type "looks statistical." A box plot, lollipop, or dumbbell is an SVG-measure or Deneb job; reserve scripts for charts that genuinely compute.
References
references/data-model.md -- dataset grouping mechanic, the row/byte caps, and how to force per-row input
references/community-examples.md -- seaborn gallery examples organized by chart type, plus matplotlib and Python Graph Gallery links
references/chart-patterns.md -- Common matplotlib/seaborn chart patterns (bar, heatmap, donut, KPI, area)
examples/script/ -- Standalone Python scripts (bar-chart, trend-line) -- ready to inject into visual.json after escaping
examples/visual/bar-chart.json -- PBIR visual.json: horizontal stacked bar with PY comparison lines and % change labels
examples/visual/kpi-card.json -- PBIR visual.json: text-based KPI with value, % change indicator, and PY comparison
examples/visual/trend-line.json -- PBIR visual.json: area chart with line plot and monthly x-axis
Fetching Docs
To retrieve current Python visual / package support docs, use microsoft_docs_search + microsoft_docs_fetch (MCP) if available, otherwise mslearn search + mslearn fetch (CLI). Search based on the user's request and run multiple searches as needed to ensure sufficient context before proceeding.
Related Skills
pbi-report-design -- Layout and design best practices
r-visuals -- R Script visuals (same concept, different language)
deneb-visuals -- Vega/Vega-Lite visuals (interactive, vector-based alternative)
svg-visuals -- SVG via DAX measures (lightweight inline graphics)
pbir-format (pbip plugin) -- PBIR JSON format reference