Streamlit charts & data
Present data clearly.
Choosing display elements
| Element | Use Case |
|---|---|
st.dataframe | Interactive exploration, sorting, filtering |
st.data_editor | User-editable tables |
st.table | Static display, no interaction needed |
st.metric | KPIs with delta indicators |
st.json | Structured data inspection |
Native charts first
Prefer Streamlit's native charts for simple cases.
st.line_chart(df, x="date", y="revenue") st.bar_chart(df, x="category", y="count") st.scatter_chart(df, x="age", y="salary") st.area_chart(df, x="date", y="value")
Native charts support additional parameters: color for series grouping, stack for bar/area stacking, size for scatter point sizing, horizontal for horizontal bars. See the chart API reference for full options.
Human-readable labels
Use clear labels—not column names or abbreviations. Skip x_label/y_label if the column names are already readable.
# BAD: cryptic column names without labels st.line_chart(df, x="dt", y="rev") # GOOD: readable columns, no labels needed st.line_chart(df, x="date", y="revenue") # GOOD: cryptic columns, add labels st.line_chart(df, x="dt", y="rev", x_label="Date", y_label="Revenue")
Altair for complex charts
Use Altair when you need more control. Altair is bundled with Streamlit (no extra install), while Plotly requires an additional package. Pick one and stay consistent throughout your app.
import altair as alt
chart = alt.Chart(df).mark_line().encode(
x=alt.X("date:T", title="Date"),
y=alt.Y("revenue:Q", title="Revenue ($)"),
color="region:N"
)
st.altair_chart(chart)
When to use Altair:
- •Custom axis formatting
- •Multiple series with legends
- •Interactive tooltips
- •Layered visualizations
Dataframe column configuration
Use column_config where it adds value—formatting currencies, showing progress bars, displaying links or images. Don't add config just for labels or tooltips that don't meaningfully improve readability. Works with both st.dataframe and st.data_editor.
st.dataframe(
df,
column_config={
"revenue": st.column_config.NumberColumn(
"Revenue",
format="$%.2f"
),
"completion": st.column_config.ProgressColumn(
"Progress",
min_value=0,
max_value=100
),
"url": st.column_config.LinkColumn("Website"),
"logo": st.column_config.ImageColumn("Logo"),
"created_at": st.column_config.DatetimeColumn(
"Created",
format="MMM DD, YYYY"
),
"internal_id": None, # Hide non-essential columns
},
hide_index=True,
)
Note on hiding columns: Setting a column to None hides it from the UI, but the data is still sent to the frontend. For truly sensitive data, pre-filter the DataFrame before displaying.
Dataframe best practices:
- •Hide useless index:
hide_index=True - •Or make index meaningful:
df = df.set_index("customer_name")before displaying - •Hide internal/technical columns: Set column to
Nonein config (but pre-filter for sensitive data) - •Use visual column types where they help: sparklines for trends, progress bars for completion, images for logos
Column types:
- •
AreaChartColumn→ Area sparklines - •
BarChartColumn→ Bar sparklines - •
CheckboxColumn→ Boolean as checkbox - •
DateColumn→ Date only (no time) - •
DatetimeColumn→ Dates with formatting - •
ImageColumn→ Images - •
JSONColumn→ Display JSON objects - •
LineChartColumn→ Sparkline charts - •
LinkColumn→ Clickable links - •
ListColumn→ Display lists/arrays - •
MultiselectColumn→ Multi-value selection - •
NumberColumn→ Numbers with formatting - •
ProgressColumn→ Progress bars - •
SelectboxColumn→ Editable dropdown - •
TextColumn→ Text with formatting - •
TimeColumn→ Time only (no date)
Pinned columns
Keep important columns visible while scrolling horizontally:
st.dataframe(
df,
column_config={
"Title": st.column_config.TextColumn(pinned=True), # Always visible
"Rating": st.column_config.ProgressColumn(min_value=0, max_value=10),
},
hide_index=True,
)
Data editor
Use st.data_editor when users need to edit data directly:
edited_df = st.data_editor(
df,
num_rows="dynamic", # Allow adding/deleting rows
column_config={
"status": st.column_config.SelectboxColumn(
"Status",
options=["pending", "approved", "rejected"]
),
},
)
# React to edits
if not edited_df.equals(df):
save_changes(edited_df)
JSON display
For structured data inspection. Accepts dicts, lists, or any JSON-serializable object:
st.json({"name": "John", "scores": [95, 87, 92]})
Sparklines in metrics
Add chart_data and chart_type to metrics for visual context.
values = [700, 720, 715, 740, 762, 755, 780]
st.metric(
label="Developers",
value="762k",
delta="-7.42% (MoM)",
delta_color="inverse",
chart_data=values,
chart_type="line" # or "bar"
)
Note: Sparklines only show y-values and ignore x-axis spacing. Use them for evenly-spaced data (like daily or weekly snapshots). For irregularly-spaced time series, use a proper chart instead.
See building-streamlit-dashboards for composing metrics into dashboard layouts.