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Overview
This library is a complete rewrite of the current vislib in Kibana and EUISeriesChart in EUI. The rationale behind this refactoring is the need for a testable and decoupled architecture for displaying data within charts. The current EUI implementation is based on ReactVis, which directly manipulates the data series inside components without a clear rendering pipeline and without a clean way to extend it. Some of the downsides of using ReactVis are:
- the main chart component, before rendering children, looks at their props and recomputes them, injecting new props. Some configuration is accessed through references to children components.
- the components are themselves SVG components that render bars, lines, and axes. The problem with this is that not all components can be rendered at the same time, but there is the need for a rendering pipeline to allow a correct placement for all the geometries, especially when we face the need for having auto-scaled axis dimensions.
- the only way to test the chart is testing the resulting SVG component. If rendered through canvas the test can be only a visual regression test.
- no possibility of manage x-indexing of elements
This new implementation revisits the concept of a charting library and tries to apply a unidirectional rendering flow to the concept of charting. The rendering flow is the following:
%%{init: {'theme': 'neutral', "flowchart" : { "curve" : "basis" } } }%%
flowchart TD
A(Aquire chart specs)
B(Compute series domains)
C(Compute chart dimensions)
D(Compute chart geometries)
E(Render chart)
A --> B --> C --> D --> E
This controlled flow allows us to achieve the following points:
- the computation of series dimensions (x and y domains of the datasets, for example) are required to precompute the space required for the axis labeling. Axis rendering is dependent on the axis displayed values, and thus on the data series provided. This is a required passage to accommodate automatically spaced axes . Other libraries just live the developer with the needs to specify static margin space to render the axis labels, and this can result in truncated labels.
- put a testing probe just before rendering the chart, the computed geometries are the exact values that need to be used to render on SVG, canvas or WebGL on that exact portion of the screen. No further calculation is needed on the rendered component. x, y, width, height, color, and transforms are computed before the rendering phase.
- reduce the rendering operation to the minimum required. Resizing, for example, will only require the last 3 phases to complete.
- decouple the chart from its rendering medium: can be SVG, canvas or WebGL, using React or any other DOM library.
- part of this computation can also be processed server side or on a WebWorker.
The rendering pipeline is achieved by revisiting the way a chart library is built. Instead of creating a chart library around a set of rendering components: bar series, axis etc., this new implementation decouples the specification of the chart from the rendering components. The rendering components are part of the internals of the library. We are exposing empty
react components to the developer, using the JSX format just as a declarative language to describe the specification of your chart and not as a set of real react components that will render something.
That is achieved using the following render function on the main Chart
component:
<Provider chartStore={this.chartSpecStore}>
<Fragment>
<SpecsParser>{this.props.children}</SpecsParser>
<ChartResizer />
{renderer === 'svg' && <SVGChart />}
{renderer === 'canvas' && <CanvasChart />}
{renderer === 'canvas_native' && <NativeChart />}
<Tooltips />
</Fragment>
</Provider>
Where all the children passed are rendered inside the SpecsParser
, that signal a state manager that we are updating the specification of the chart, but doesn't render anything.
The actual rendering is done by one of the rendered like the ReactChart
that is rendered after the rendering pipeline produced and saved the geometries on the state manager.
A spec can be something like the following:
<Chart renderer={renderer}>
<Settings rotation={rotation} />
<Axis id="bottom" position={AxisPosition.Bottom} title="Rendering test" />
<Axis id="left" position={AxisPosition.Left} />
<LineSeries
id="1"
yScaleType={ScaleType.Linear}
xScaleType={ScaleType.Linear}
xAccessor="x"
yAccessors={['y']}
data={BARCHART_1Y0G}
/>
<BarSeries
id="2"
yScaleType={ScaleType.Linear}
xScaleType={ScaleType.Linear}
xAccessor="x"
yAccessors={['y1', 'y2']}
splitSeriesAccessors={['g']}
stackAccessors={['x', 'g']}
data={BARCHART_2Y1G}
/>
</Chart>
The concept of an axis in this library follows the following constraints:
- there is no distinction between x-axis or y-axis.
- the distinction is between the position of the axis on the chart (top, bottom, left, or right) in relation to the rotation of the chart: A standard horizontal bar chart with a Y axis (for a dependent variable whose values rise to the top) can be supported by left and right axis that will show the Y values, and the bottom and top axes will show the X axis for an independent variable. In contrast, a 90-degree (clockwise-rotated) bar chart, with Y values that spread from left to right, will have a horizontal (bottom/top) axis that shows the Y independent variable and the left/right vertical axis that shows the X variable.
As a constraint, we allow only one X-axis, but we provide the ability to add multiple Y-axes (also if it's a discouraged practice (see https://blog.datawrapper.de/dualaxis/ or http://www.storytellingwithdata.com/blog/2016/2/1/be-gone-dual-y-axis)).
A domain represents a variable extent in data set. It is usually used to draw the position of the specific value/datum along one axis (vertical or horizontal). On a series chart, we always need to have at least two domains, representing the 2 dimensions of the data we are drawing.
It's an array of values, that will be used to compute the chart. Usually, each element must have at least 2 values to be charted. Multiple values can be used to specify how we want to split the chart by series and by y values.
Examples of datasets:
// 1 metric (y) and no groups/split series ===> 1 single series
const BARCHART_1Y0G = [{ x: 0, y: 1 }, { x: 1, y: 2 }, { x: 2, y: 10 }, { x: 3, y: 6 }];
// 2 metrics (2y) and 1 group/split series ===> 4 different data series
const BARCHART_2Y1G = [
{ x: 0, g: 'a', y1: 1, y2: 4 },
{ x: 0, g: 'b', y1: 3, y2: 6 },
{ x: 1, g: 'a', y1: 2, y2: 1 },
{ x: 1, g: 'b', y1: 2, y2: 5 },
{ x: 2, g: 'a', y1: 10, y2: 5 },
{ x: 2, g: 'b', y1: 3, y2: 1 },
{ x: 3, g: 'a', y1: 7, y2: 3 },
{ x: 3, g: 'b', y1: 6, y2: 4 },
];
These datasets can be used as input for any type of chart specification. These are the interfaces that make up a BasicSpec
(some sort of abstract specification)
export interface SeriesSpec {
/** The ID of the spec */
id: SpecId;
/** The name or label of the spec */
name?: string;
/** The ID of the spec group
* @default __global__
*/
groupId: GroupId;
/** An array of data */
data: Datum[];
/** The type of series you are looking to render */
seriesType: SeriesType;
/** Set colors for specific series */
color?: SeriesColorAccessor;
/** If the series should appear in the legend
* @default false
*/
hideInLegend?: boolean;
/** Index per series to sort by */
sortIndex?: number;
}
export interface SeriesAccessors {
/** The field name of the x value on Datum object */
xAccessor: Accessor;
/** An array of field names one per y metric value */
yAccessors: Accessor[];
/** An optional accessor of the y0 value: base point for area/bar charts */
y0Accessors?: Accessor[];
/** An array of fields thats indicates the datum series membership */
splitSeriesAccessors?: Accessor[];
/** An array of fields thats indicates the stack membership */
stackAccessors?: Accessor[];
/** An optional array of field name thats indicates the stack membership */
colorAccessors?: Accessor[];
}
export interface SeriesScales {
/**
* The x axis scale type
* @default ScaleType.Ordinal
*/
xScaleType: ScaleType.Ordinal | ScaleType.Linear | ScaleType.Time;
/**
* If using a ScaleType.Time this timezone identifier is required to
* compute a nice set of xScale ticks. Can be any IANA zone supported by
* the host environment, or a fixed-offset name of the form 'utc+3',
* or the strings 'local' or 'utc'.
*/
timeZone?: string;
/**
* The y axis scale type
* @default ScaleType.Linear
*/
yScaleType: ScaleContinuousType;
}
A BarSeriesSpec
for example is the following intersection type:
export type BarSeriesSpec = SeriesSpec &
SeriesAccessors &
SeriesScales & {
seriesType: SeriesType.Bar;
};
A chart can be fed with data in the following ways:
- one series type specification with one
data
props configured. - a set of series types with
data
props configured. In these case the data arrays are merged together as the following rules:- x values are merged together. If the chart has multiple different
xScaleType
s, the main x scale type is coerced toScaleType.Linear
if all the scales are continuous or toScaleType.Ordinal
if one scale type is ordinal. Also, a temporal scale is, in specific cases, coerced to linear, so be careful to configure correctly the scales. - if there is a specified x domain on the spec, this is used as x domain for that series, and it's merged together with the existing x domains.
- specifications with
splitAccessors
are split into different series. Each specification is treated in a separated manner: if you have one chart with 3 series merged to one chart with 1 series, this results in a chart that has each x value split in two (the number of specifications used, two charts) then on split is used to accommodate 3 series and the other to accommodate the remaining series. If you want to treat each series in the same way, split your chart before and create 4 different BarSeries specs, so that these are rendered evenly on the x-axis. - bar, area, and line series with a
stackAccessor
are stacked together each stacked above their respective group (areas with areas, bars with bars, lines with lines. You cannot mix stacking bars above lines above areas). - bar series without
stackAccessors
are clustered together for the same x value - area and line series, without
stackAccessors
are just drawn each one on their own layer (not stacked nor clustered). - the y value is influenced by the following aspects:
- if there is a specified y domain on the spec, this is used as y domain for that series
- if no or only one y-axis is specified, each y value is treated as part of the same domain.
- if there is more than one y-axis (visible or not), the y domains are merged in respect of the same
groupId
. For e.g. two bar charts, and two y-axes, each for a spec, one per bar value. The rendered bar heights are independent of each other, because of the two axes. - if the data are stacked or not. Stacked produces a rendering where the lower bottom of the chart is the previous series y value.
- x values are merged together. If the chart has multiple different
On the current Visualize Editor
, you can stack or cluster in the following cases:
- when adding multiple Y values: each Y value can be stacked (every type) or clustered (only bars)
- when splitting a series, each series can be stacked (every type) or clustered (only bars)
Small multiples are created using the <SmallMultiples>
component, which takes multiple <splitSeries>
components with the usual element inside. <splitSeries>
can contain only BarSeries
AreaSeries
and LineSeries
Axis and other configurations need to be configured outside the splitSeries
element.
In the case of small multiples, each splitSeries
computes its own x and y domains. Then the x domains are merged and expanded. The same happens with the main Y domains; they are merged together.
Each bar datum
of a Bar data series can be assigned a custom color or style with the styleAccessor
prop.
The styleAccessor
prop expects a callback function which will be called on every datum
in every bar series with the signiture below. This callback should return a color string
or a partial BarSeriesStyle
, which will override any series-level styles for the respective datum
. You are passed seriesIdentifier
to identify the series the datum
belongs to and the raw datum
to derive conditions against.
Return types:
-
Color
: Color value as astring
will set the barfill
to that color -
RecursivePartial<BarSeriesStyle>
: Style values to be merged with base bar styles -
null
: Keep existing bar style
type BarStyleAccessor = (
datum: RawDataSeriesDatum,
seriesIdentifier: XYChartSeriesIdentifier,
) => RecursivePartial<BarSeriesStyle> | Color | null;
Each point datum
of a Line or Area data series can be assigned a custom color or style with the pointStyleAccessor
prop.
The pointStyleAccessor
prop expects a callback function which will be called on every datum
in every line or area series with the signiture below. This callback should return a color string
or a partial PointStyle
, which will override any series-level styles for the respective datum
. You are passed seriesIdentifier
to identify the series the datum
belongs to and the raw datum
to derive conditions against.
Return types:
-
Color
: Color value as astring
will set the pointstroke
to that color -
RecursivePartial<PointStyle>
: Style values to be merged with base point styles -
null
: Keep existing point style
type PointStyleAccessor = (
datum: RawDataSeriesDatum,
seriesIdentifier: XYChartSeriesIdentifier,
) => RecursivePartial<PointStyle> | Color | null;
Note: When overriding bar or point styles be mindful of performance and these accessor functions will be call on every bar/point is every series. Precomputing any expensive task before rendering.