March 10, 2021

1196 words 6 mins read

epezent/implot

epezent/implot

Advanced 2D Plotting for Dear ImGui

repo name epezent/implot
repo link https://github.com/epezent/implot
homepage
language C++
size (curr.) 1934 kB
stars (curr.) 1470
created 2020-04-21
license MIT License

ImPlot

ImPlot is an immediate mode, GPU accelerated plotting library for Dear ImGui. It aims to provide a first-class API that ImGui fans will love. ImPlot is well suited for visualizing program data in real-time or creating interactive plots, and requires minimal code to integrate. Just like ImGui, it does not burden the end user with GUI state management, avoids STL containers and C++ headers, and has no external dependencies except for ImGui itself.

Features

  • GPU accelerated rendering
  • multiple plot types:
    • line plots
    • shaded plots
    • scatter plots
    • vertical/horizontal bars graphs
    • vertical/horizontal error bars
    • stem plots
    • stair plots
    • pie charts
    • heatmap charts
    • 1D/2D histograms
    • images
    • and more likely to come
  • mix/match multiple plot items on a single plot
  • configurable axes ranges and scaling (linear/log)
  • time formatted x-axes (US formatted or ISO 8601)
  • reversible and lockable axes
  • up to three independent y-axes
  • controls for zooming, panning, box selection, and auto-fitting data
  • controls for creating persistent query ranges (see demo)
  • several plot styling options: 10 marker types, adjustable marker sizes, line weights, outline colors, fill colors, etc.
  • 16 built-in colormaps and support for and user-added colormaps
  • optional plot titles, axis labels, and grid labels
  • optional and configurable legends with toggle buttons to quickly show/hide plot items
  • default styling based on current ImGui theme, or completely custom plot styles
  • customizable data getters and data striding (just like ImGui:PlotLine)
  • accepts data as float, double, and 8, 16, 32, and 64-bit signed/unsigned integral types
  • and more! (see Announcements 2020/2021)

Usage

The API is used just like any other ImGui BeginX/EndX pair. First, start a new plot with ImPlot::BeginPlot(). Next, plot as many items as you want with the provided PlotX functions (e.g. PlotLine(), PlotBars(), PlotScatter(), etc). Finally, wrap things up with a call to ImPlot::EndPlot(). That’s it!

int   bar_data[11] = ...;
float x_data[1000] = ...;
float y_data[1000] = ...;

ImGui::Begin("My Window");
if (ImPlot::BeginPlot("My Plot")) {
    ImPlot::PlotBars("My Bar Plot", bar_data, 11);
    ImPlot::PlotLine("My Line Plot", x_data, y_data, 1000);
    ...
    ImPlot::EndPlot();
}
ImGui::End();

Usage

Of course, there’s much more you can do with ImPlot. Consult implot_demo.cpp for a comprehensive example of ImPlot’s features.

Interactive Demo

An online version of the demo is hosted here. You can view the plots and the source code that generated them. Note that this demo may not always be up to date and is not as performant as a desktop implementation, but it should give you a general taste of what’s possible with ImPlot. Special thanks to pthom for creating and hosting this!

Integration

  1. Set up an ImGui environment if you don’t already have one.
  2. Add implot.h, implot_internal.h, implot.cpp, implot_items.cpp and optionally implot_demo.cpp to your sources. Alternatively, you can get ImPlot using vcpkg.
  3. Create and destroy an ImPlotContext wherever you do so for your ImGuiContext:
ImGui::CreateContext();
ImPlot::CreateContext();
...
ImPlot::DestroyContext();
ImGui::DestroyContext();

You should be good to go!

If you want to test ImPlot quickly, consider trying mahi-gui, which bundles ImGui, ImPlot, and several other packages for you.

Special Notes

  • If you experience data truncation and/or visual glitches, it is HIGHLY recommended that you EITHER:
    1. Handle the ImGuiBackendFlags_RendererHasVtxOffset flag in your renderer when using 16-bit indices (the official OpenGL3 renderer supports this) and use an ImGui version with patch imgui@f6120f8, OR…
    2. Enable 32-bit indices by uncommenting #define ImDrawIdx unsigned int in your ImGui imconfig.h file.
  • By default, no anti-aliasing is done on line plots for performance gains. If you use 4x MSAA, then you likely won’t even notice. However, you can enable software AA per-plot with the ImPlotFlags_AntiAliased flag, or globally with ImPlot::GetStyle().AntiAliasedLines = true;.
  • Like ImGui, it is recommended that you compile and link ImPlot as a static library or directly as a part of your sources. However, if you are compiling ImPlot and ImGui as separate DLLs, make sure you set the current ImGui context with ImPlot::SetImGuiContext(ImGuiContext* ctx). This ensures that global ImGui variables are correctly shared across the DLL boundary.

FAQ

Q: Why?

A: ImGui is an incredibly powerful tool for rapid prototyping and development, but provides only limited mechanisms for data visualization. Two dimensional plots are ubiquitous and useful to almost any application. Being able to visualize your data in real-time will give you insight and better understanding of your application.

Q: Is ImPlot the right plotting library for me?

A: If you’re looking to generate publication quality plots and/or export plots to a file, ImPlot is NOT the library for you. ImPlot is geared toward plotting application data at realtime speeds. ImPlot does its best to create pretty plots (indeed, there are quite a few styling options available), but it will always favor function over form.

Q: Where is the documentation?

A: The API is thoroughly commented in implot.h, and the demo in implot_demo.cpp should be more than enough to get you started.

Q: Is ImPlot suitable for plotting large datasets?

A: Yes, within reason. You can plot tens to hundreds of thousands of points without issue, but don’t expect millions to be a buttery smooth experience. That said, you can always downsample extremely large datasets by telling ImPlot to stride your data at larger intervals if needed.

Q: What data types can I plot?

A: ImPlot plotting functions accept most scalar types: float, double, int8, uint8, int16, uint16, int32, uint32, int64, uint64. Arrays of custom structs or classes (e.g. Vector2f or similar) are easily passed to ImPlot functions using the built in striding features (see implot.h for documentation).

Q: Can plot styles be modified?

A: Yes. Data colormaps and various styling colors and variables can be pushed/popped or modified permanently on startup. Three default styles are available, as well as an automatic style that attempts to match you ImGui style.

Q: Does ImPlot support logarithmic scaling or time formatting?

A: Yep! Both logscale and timescale are supported.

Q: Does ImPlot support multiple y-axes? x-axes?

A: Yes. Up to three y-axes can be enabled. Multiple x-axes are not supported.

Q: Does ImPlot support [insert plot type]?

A: Maybe. Check the demo, gallery, or Announcements (2020/2021)to see if your desired plot type is shown. If not, consider submitting an issue or better yet, a PR!

Q: Does ImPlot support 3D plots?

A: No, and likely never will since ImGui only deals in 2D rendering.

Q: My plot lines look like crap!

A: See the note about anti-aliasing under Special Notes above.

Q: Does ImPlot provide analytic tools?

A: Not exactly, but it does give you the ability to query plot sub-ranges, with which you can process your data however you like.

Q: Can plots be exported/saved to image?

A: Not currently. Use your OS’s screen capturing mechanisms if you need to capture a plot. ImPlot is not suitable for rendering publication quality plots; it is only intended to be used as a visualization tool. Post-process your data with MATLAB or matplotlib for these purposes.

Q: Can ImPlot be used with other languages/bindings?

A: Yes, you can use the generated C binding, cimplot with most high level languages. DearPyGui provides a Python wrapper, among other things. A Rust binding, implot-rs, is currently in the works. An example using Emscripten can be found here.

comments powered by Disqus