Enjoy these sample visualizations built with Protovis. For any example,
use your browser to view the source or the backing dataset.
Protovis is no longer under active
development.
The final release
of Protovis was
v3.3.1 (4.7
MB)
. The Protovis team is now developing a new visualization
library,
D3.js
, with
improved support for animation and interaction. D3 builds on many of the
concepts in Protovis; for more details, please read the
introduction
and browse the
examples
.
Conventional
While Protovis is designed for custom visualization, it is still easy
to create many standard chart types. These simpler examples serve as an
introduction to the language, demonstrating key abstractions such as
quantitative and
ordinal
scales
, while hinting
at more advanced features,
including
stack
layout
.
Area Charts
Bar & Column Charts
Scatterplots
Pie & Donut Charts
Line & Step Charts
Stacked Charts
Grouped Charts
Many charting libraries provide stock chart designs, but offer only
limited customization; Protovis excels at custom visualization design
through a concise representation and precise control over graphical
marks. These examples, including a few recreations of unusual historical
designs, demonstrate the language’s expressiveness.
Anderson’s Flowers
Becker’s Barley
Bertin’s Hotel
Streamgraphs
Sparklines
Bullet Charts
Bubble Charts
Sizing the Horizon
Candlestick Charts
Burtin’s Antibiotics
Nightingale’s Rose
Playfair’s Wheat
Gas & Driving
Seattle Weather
Marey’s Trains
Stemplots
Merge Sort
Visualizations need not be static! With support for event-handlers and
reusable behaviors, Protovis allows the user to explore and analyze data
visually. Here we show how many standard interaction techniques can be
quickly implemented.
Index Charts
Parallel Coordinates
Job Voyager
Minnesota Employment
Focus + Context
Pan + Zoom
Brush + Link
Tooltips
Pointing
Spline Editor
Bubbles
Many datasets can be organized into natural hierarchies. Consider:
spatial entities, such as counties, states, and countries; command
structures for businesses and governments; software packages and
phylogenetic trees. Even for data lacking apparent hierarchy, statistical
methods such as
k-means clustering
may be applied to organize data
empirically. Special visualization techniques exist to leverage
hierarchical structure, allowing multiscale inferences of both individual
elements and global trends.
Dendrograms
Sunbursts
Icicles
Indented Trees
Circle Packing
Node-Link Trees
Treemaps
Graph visualizations often seek to reveal relationship patterns between
entities and groups in the underlying dataset. For example, given a social
network, who are the central players, and what cliques or bridges exist?
Can multivariate data (such as gender or affiliation) explain those
patterns?
Arc Diagrams
Force-Directed Layouts
Matrix Diagrams
Protovis offers two avenues of visualizing geospatial data: build on
top of existing browser-based map tools (such
as
Google Maps
or
OpenLayers
),
or use our own
geo
scales for custom visualization design.
Minard’s Napoleon
Oakland Crimespotting
Choropleth Maps
Symbol Maps
Dorling Cartograms
Map Projections
Heatmaps
Dymaxion Maps
Although Protovis lacks the bevy of tools provided by statistical
packages such as
R
and
MATLAB
, we do include a few
rudimentary facilities for statistical data analysis. Combining
statistical methods with rapid prototyping of visualizations allows for
efficient visual exploration of complex datasets.
Q-Q Plots
Box-and-Whisker Plots
Histograms
Error Bars
Mean & Deviation
Not all visualizations need an empirical dataset to justify their
existence. It can be fun and rewarding to use visualization purely for
aesthetics or entertainment. Often, a few simple rules are enough to
define a world rich
with
emergent
complexity and beauty.
Conway’s Game of Life
Automaton Explorer
Belousov–Zhabotinsky
N
-Body Problem
PolarClock
Rainbow Worm