A small (~45 KB min), fast chart for time series, lines, areas, ohlc & bars (MIT Licensed)
μPlot is a fast, memory-efficient Canvas 2D-based chart for plotting time series, lines, areas, ohlc & bars; from a cold start it can create an interactive chart containing 150,000 data points in 90ms, scaling linearly at ~31,000 pts/ms. In addition to fast initial render, the zooming and cursor performance is by far the best of any similar charting lib; at ~50 KB, it's likely the smallest and fastest time series plotter that doesn't make use of context-limited WebGL shaders or WASM, both of which have much higher startup cost and code size.
166,650 point bench: https://leeoniya.github.io/uPlot/bench/uPlot.html
However, if you need 60fps performance with massive streaming datasets, uPlot can only get you so far. If you decide to venture into this realm with uPlot, make sure to unclog your rendering pipeline. WebGL should still be the tool of choice for applications like realtime signal or waveform visualizations: See danchitnis/webgl-plot, huww98/TimeChart, epezent/implot, or commercial products like LightningChart®.
- Multiple series w/toggle
- Multiple y-axes, scales & grids
- Temporal or numeric x-axis
- Linear, uniform or logarithmic scales
- Line & Area styles (stroke, fill, width, dash)
- Pluggable path renderers linear, spline, stepped, bars
- Zoom with auto-rescale
- Legend with live values
- Support for IANA Time Zone Names & DST
- Support for missing data
- Cursor sync for multiple charts
- Focus closest series
- Data streaming (live update)
- High / Low bands
- A lean, consistent, and powerful API with hooks & plugins
In order to stay lean, fast and focused the following features will not be added:
- No data parsing, aggregation, summation or statistical processing - just do it in advance. e.g. simples-statistics, https://github.com/leeoniya/uDSV
- No transitions or animations - they're always pure distractions.
- No collision avoidance for axis tick labels, so may require manual tweaking of spacing metrics if label customization significiantly increases default label widths.
- No stacked series: see "Stacked Area Graphs Are Not Your Friend" and a horrific demo. While smooth spline interpolation is available, its use is strongly discouraged: Your data is misrepresented!. Both visualizations are terrible at accurately communicating information.
- No built-in drag scrolling/panning due to ambiguous native zoom/selection behavior. However, this can be added externally via the plugin/hooks API: zoom-wheel, zoom-touch.
The docs are a perpetual work in progress, it seems. Start with /docs/README.md for a conceptual overview. The full API is further documented via comments in /dist/uPlot.d.ts. Additionally, an ever-expanding collection of runnable /demos covers the vast majority of uPlot's API.
- Jupyter widget (Sohail Somani)
- React, Vue.js and Svelte (Sergey Kalinichev)
- Python (Stéphane Caron)
Benchmarks done on this hardware:
- Date: 2023-03-11
- AMD Ryzen 7 PRO 5850U @ 1.9GHz, 32GB RAM
- EndeavourOS/Arch (KDE/Plasma), Chrome 113.0.5638.0 (64-bit)
- 4K display scaled to 1440p (1.5 devicePixelRatio)
Full size: https://leeoniya.github.io/uPlot/demos/multi-bars.html
Raw data: https://github.com/leeoniya/uPlot/blob/master/bench/results.json
| lib | size | done | js,rend,paint,sys | heap peak,final | mousemove (10s) | | ---------------------- | ------- | ------- | ----------------- | --------------- | ------------------- | | uPlot v1.6.24 | 47.9 KB | 34 ms | 51 2 1 34 | 21 MB 3 MB | 218 360 146 196 | | Chart.js v4.2.1 | 254 KB | 38 ms | 90 2 1 40 | 29 MB 10 MB | 1154 46 165 235 | | Flot v3.0.0 | 494 KB | 60 ms | 105 5 1 52 | 41 MB 21 MB | --- | | ECharts v5.4.1 | 1000 KB | 55 ms | 148 3 1 35 | 17 MB 3 MB | 1943 444 203 208 | | dygraphs v2.2.1 | 132 KB | 90 ms | 163 2 1 33 | 88 MB 42 MB | 1438 371 174 268 | | LightningChart® v4.0.2 | 1300 KB | --- ms | 250 2 1 33 | 33 MB 13 MB | 5390 120 128 325 | | CanvasJS v3.7.5 | 489 KB | 130 ms | 266 4 1 35 | 98 MB 69 MB | 1030 445 90 246 | | dvxCharts v5.1.0 | 373 KB | 160 ms | 264 23 1 62 | 100 MB 61 MB | 687 779 206 197 | | Highcharts v10.3.3 | 413 KB | --- ms | 416 7 1 38 | 97 MB 55 MB | 1286 824 205 242 | | Plotly.js v2.18.2 | 3600 KB | 310 ms | 655 14 1 40 | 104 MB 70 MB | 1814 163 25 208 | | ApexCharts v3.37.1 | 503 KB | 685 ms | 694 9 1 33 | 175 MB 46 MB | 1708 421 106 207 | | ZingChart v2.9.10 | 871 KB | 681 ms | 717 7 1 105 | 290 MB 195 MB | 9021 305 41 71 | | amCharts v5.3.7 | 625 KB | --- ms | 1601 3 3 46 | 147 MB 121 MB | 9171 71 460 167 |
- libs are sorted by their initial, cold-start, render performance (excluding network transfer time to download the lib)
size
includes the lib itself plus any dependencies required to render the benchmark, e.g. Moment, jQuery, etc.- Flot does not make available any minified assets and all their examples use the uncompressed sources; they also use an uncompressed version of jQuery :/
Some libraries provide their own performance demos:
- https://echarts.apache.org/next/examples/en/index.html
- https://github.com/sveinn-steinarsson/flot-downsample/
- https://dygraphs.com/tests/dygraph-many-points-benchmark.html
- https://www.chartjs.org/docs/latest/general/performance.html
- https://dash.plotly.com/performance
- https://www.highcharts.com/docs/advanced-chart-features/boost-module
- https://danchitnis.github.io/webgl-plot-examples/vanilla/
- https://huww98.github.io/TimeChart/docs/performance
- https://www.arction.com/lightningchart-js-performance/
TODO (all of these use SVG, so performance should be similar to Highcharts):
- Chartist.js
- d3-based
- C3.js
- dc.js
- MetricsGraphics
- rickshaw
Your browser's performance is highly dependent on your hardware, operating system, and GPU drivers.
If you're using a Chromium-based browser, there are some hidden settings that can unlock significant performance improvements for Canvas2D rendering. Most of these have to do with where and how the rasterization is performed.
Head over to https://leeoniya.github.io/uPlot/demos/sine-stream.html and open up Chrome's DevTools (F12), then toggle the Performance Monitor.
For me:
- On Windows 10 Desktop, Core i7-8700, 16GB RAM, AMD RX480 GPU, 2048 x 1080 resolution = 57% CPU usage
- On Manjaro Laptop (Arch Linux), AMD Ryzen 7 PRO 5850U, 48GB RAM, AMD Radeon RX Vega 8 (integrated GPU), 4K resolution = 99% CPU usage
If your CPU is close to 100%, it may be rasterizing everything in the same CPU process.
Pop open chrome://gpu
and see what's orange or red.
Then open chrome://flags
and search for "raster" to see what can be force-enabled.
- On my Manjaro/Ryzen/Integrated GPU setup, force-enabling
Canvas out-of-process rasterization
resulted in a dramatic framerate improvement. - On my Windows/i7/Dedicated GPU setup, toggling the same flags moved the work to another process (still good), but did not have a significant framerate impact.
YMMV!
- Dan Vanderkam's dygraphs was a big inspiration; in fact, my stale pull request #948 was a primary motivator for μPlot's inception.
- Adam Pearce for #15 - remove redundant lineTo commands.