Views Research

Views Research

Simple Views - FAQ

Why not vega-lite?

  • vega-lite multiple lines approach is a bit weird and counter-intuitive. This matters as this is very common.
  • overall vega-lite retains too much complexity.

Vega-lite line example:

{
  "mark": "line",
  "encoding": {
    "x": {"field": "Date", "type": "temporal"},
    "y": {"field": "VIXClose", "type": "quantitative"}
  }
}

Why not this alternative series notation:

  series: [["x", "y"], ["x", "z"]]
  • pros: explicit about the series …
  • pros: you can plot two different series with different x values (as long as they have some commonality … )
  • cons: more verbose.
  • cons: 2nd multiple x values point is actually confusing for most users … (?)

Simplicity is crucial here so those cons outweight the pros.

Recline Views

To specify a Recline view, it must have type and state attributes.

"type" attribute

We used to use this attribute to identify what graph type we need: plotyl or vega-lite. I suppose it should be used for something else. Right now, if "type" attribute is set to vega-lite, we render vega-lite chart. In all other cases we render plotly chart.

"state" attribute

"state" attribute must be an object and have "graphType", "group" and "series" attributes.

"graphType" indicates type of the chart - line chart, bar chart, etc. Value must be a string.

"group" is used to specify base axis - right now it is used as abscissa. It must be a string that is usually a primary key in a resource.

"series" is used to specify ordinate - it must be an array of string elements. Each element represents a field name.

Example of the views attribute:

"views": [
    {
      "type": "Graph",
      "state": {
        "graphType": "lines",
        "group": "date",
        "series": [ "autumn" ]
      }
    }
  ]

Analysis of Vis libraries Graph Specs

TODO. Plotly partially covered below.

Analysis of Vis libraries data objects

Focus on "inline" data structure - i.e. data structure in memory.

Motivation for this: need to generate this data structure.

Vega

See: https://github.com/vega/vega/wiki/Data#examples

Data structure is standard "array of objects":

[
  {"x":0, "y":3},
  {"x":1, "y":5}
]

// note in Vega docs it is put as ...
[{"x":0, "y":3}, {"x":1, "y":5}]

Also supports simple array of values [1,2,3] which is implicitly mapped to:

[
  { "data": 1 },
  { "data": 2 },
  { "data": 3 }
]

Note that internally vega adds _id to all rows as a unique identifier (cf pandas).

// this input
[{"x":0, "y":3}, {"x":1, "y":5}]

// internally becomes
[{"_id":0, "x":0, "y":3}, {"_id":1, "x":1, "y":5}]

You can also add a name attribute to name the data table and then the data is put in values:

{
  "name": "table",
  "values": [12, 23, 47, 6, 52, 19]
}

Finally, inside the overall vega spec you put the data inside a data property:

{
  "width": 400,
  "height": 200,
  "padding": {"top": 10, "left": 30, "bottom": 30, "right": 10},
  "data": [
    {
      "name": "table",
      "values": [
        {"x": 1,  "y": 28}, {"x": 2,  "y": 55},
				...

See https://vega.github.io/vega-editor/?mode=vega

Remote Data

Looks like a lot like Resource. Assume that data is mapped to inline structure

Vega-Lite

https://vega.github.io/vega-lite/docs/data.html

Same as Vega except that:

  • data is an object not an array – only one data source allowed
    • Will be given the name source when converting to Vega
  • Only one property allowed: values
    • And for remote data: url and format

Plotly

http://help.plot.ly/json-chart-schema/ https://plot.ly/javascript/reference/

The Plotly model does not separate the data out quite as cleanly as vega does. The structure for Plotly json specs is as follows:

  • Oriented around "series"
  • Each series includes its data plus the spec for the graph
    • The data is stored in two attributes x and y
  • Separate layout property giving overall layout (e.g. margins, titles etc)

To give a sense of how it works this is the JS for creating a Plotly graph:

Plotly.plot('graphDiv', data, layout);

Examples

From http://help.plot.ly/json-chart-schema/ and links therein:

{
	"data": [
		{
			"x": [
				"giraffes", 
				"orangutans", 
				"monkeys"
			], 
			"y": [
				20, 
				14, 
				23
			], 
			"type": "bar"
		}
	]
}
[
  {
    "name": "SF Zoo",
    "marker": {
      "color": "rgba(55, 128, 191, 0.6)",
      "line": {
        "color": "rgba(55, 128, 191, 1.0)",
        "width": 1
      }
    },
    "y": [
      "giraffes",
      "orangutans",
      "monkeys"
    ],
    "x": [
      20,
      14,
      23
    ],
    "type": "bar",
    "orientation": "h",
    "uid": "a4a45d"
  },
  {
    "name": "LA Zoo",
    "marker": {
      "color": "rgba(255, 153, 51, 0.6)",
      "line": {
        "color": "rgba(255, 153, 51, 1.0)",
        "width": 1
      }
    },
    "y": [
      "giraffes",
      "orangutans",
      "monkeys"
    ],
    "x": [
      12,
      18,
      29
    ],
    "type": "bar",
    "orientation": "h",
    "uid": "d912bc"
  }
]

Appendix: Plotly Graph spec research

We would like users to be able to use Plotly JSON chart schema in their Data Package Views specs so they can take full advantage of Plotly's capabilities.

Here's an example - https://plot.ly/~Dreamshot/8259/

{
    "data": [
        {
            "name": "Col2", 
            "uid": "babced", 
            "fillcolor": "rgb(224, 102, 102)", 
            "y": [
                "17087182", 
                "29354370", 
                "38760373", 
                "40912332", 
            ], 
            "x": [
                "2000-01-01", 
                "2001-01-01", 
                "2002-01-01", 
                "2003-01-01", 
            ], 
            "fill": "tonexty", 
            "type": "scatter", 
            "mode": "none"
        }
    ], 
    "layout": {
        "autosize": false, 
        "yaxis": {
            "range": [
                0, 
                1124750578.9473684
            ], 
            "type": "linear", 
            "autorange": true, 
            "title": ""
        }, 
        "title": "Total Number of Websites", 
        "height": 500, 
        "width": 800, 
        "xaxis": {
            "tickformat": "%Y", 
            "title": "...", 
            "showgrid": false, 
            "range": [
                946702800000, 
                1451624400000
            ], 
            "type": "date", 
            "autorange": true
        }
    }
}

So, the major requirement will be link the plotly data structure with an external data resources in the Data Package View.

Key point: Plotly data is of form:

data: [
    {
      "name": ...
      x: [...]
      y: [...],
      z: [...] // optional
    },
    ...
  ]
}

We just need a way to bind these …

data: [
    {
      name: // by convention this must match the resource - if that is not possible use resource
      resource: .... // only if name cannot match resource
      x: "field name ..."  // if this is a string not an array then look it up in the resource ...
      y: "field name ..."
      z: "field name ..."
    },
    ...
  ]
}

Using this approach we would support most of Basic, Statistical and 3D charts of Plotly library. We would not support pie chart (labels, values), maps …

Data manipulations – not supported

In some examples of Plotly there are manipulations (e.g. filtering) on the raw data. As this is done in Javascript outside of Plotly JSON language we would not be able to support this.

In the plotlyToPlotly function:

export function plotlyToPlotly(view) {
  let plotlySpec = Object.assign({}, view.spec)
  
  for trace in plotlySpec.data {
    if(trace.resource) {
      let resource = findResourceByNameOrIndex(view, trace.resource)
      const rowsAsObjects = true
      const rows = getResourceCachedValues(resource, rowsAsObjects)
      if(trace.xField) {
        trace.x = rows.map(row => row[trace.xField])
        delete trace.xField
      }
      if(trace.yField) {
        trace.y = rows.map(row => row[trace.yField])
        delete trace.yField
      }
      if(trace.zField) {
        trace.z = rows.map(row => row[trace.zField])
        delete trace.zField
      }

      delete trace.resource      
    }
  }
  
  return plotlySpec
}

Data Transform Research

Plotly Transforms

No libraries for data transform have been found.

Vega Transforms

https://github.com/vega/vega/wiki/Data-Transforms - v2

https://vega.github.io/vega/docs/transforms/ - v3

Vega provided Data Transforms can be used to manipulate datasets before rendering a visualisation. E.g., one may need to perform transformations such as aggregation or filtering (there many types, see link above) of a dataset and display the graph only after that. Another situation would be creating a new dataset by applying various calculations on an old one.

Usually transforms are defined in transform array inside data property.

"Transforms that do not filter or generate new data objects can be used within the transform array of a mark definition to specify post-encoding transforms."

Examples:

Filtering

https://vega.github.io/vega-editor/?mode=vega&spec=parallel_coords

This example filters rows that have both Horsepower and Miles_per_Gallon fields.

{
 "data": [
    {
      "name": "cars",
      "url": "data/cars.json",
      "transform": [
        {
          "type": "filter",
          "test": "datum.Horsepower && datum.Miles_per_Gallon"
        }  
      ]
    }
  ] 
}

Geopath, aggregate, lookup, filter, sort, voronoi and linkpath

https://vega.github.io/vega-editor/?mode=vega&spec=airports

This example has a lot of transforms - in some cases there is only transform applied to a dataset, in other cases there are sequence of transforms.

In the first dataset, it applies geopath transform which maps GeoJSON features to SVG path strings. It uses alberUsa projection type (more about projection).

In the second dataset, it applies sum operation on "count" field and outputs it as "flights" fields.

In the third dataset:

  1. it compares its "iata" field against "origin" field of "traffic" dataset. Matching values are outputed as "traffic" field.
  2. Next, it filters out all values that are null.
  3. After that, it applies geo transform as in the first dataset above.
  4. Next, it filters out layout_x and layout_y values that are null.
  5. Then, it sorts dataset by traffic.flights field in descending order.
  6. After that, it applies voronoi transform to compute voronoi diagram based on "layout_x" and "layout_y" fields.

In the last dataset:

  1. First, it filters values on which there is a signal called "hover" (specified in the Vega spec's "signals" property) with "iata" attribute that matches to the dataset's "origin" field.
  2. Next, it looks up matching values of "airports" dataset's "iata" field against its "origin" and "destination" fields. Output fields are saved as "_source" and "_target".
  3. Filters "_source" and "_target" values that are truthy (not null).
  4. Finally, linkpath transform creates visual links between nodes (more about linkpath).
{
  "data": [
    {
      "name": "states",
      "url": "data/us-10m.json",
      "format": {"type": "topojson", "feature": "states"},
      "transform": [
        {
          "type": "geopath", "projection": "albersUsa",
          "scale": 1200, "translate": [450, 280]
        }
      ]
    },
    {
      "name": "traffic",
      "url": "data/flights-airport.csv",
      "format": {"type": "csv", "parse": "auto"},
      "transform": [
        {
          "type": "aggregate", "groupby": ["origin"],
          "summarize": [{"field": "count", "ops": ["sum"], "as": ["flights"]}]
        }
      ]
    },
    {
      "name": "airports",
      "url": "data/airports.csv",
      "format": {"type": "csv", "parse": "auto"},
      "transform": [
        {
          "type": "lookup", "on": "traffic", "onKey": "origin",
          "keys": ["iata"], "as": ["traffic"]
        },
        {
          "type": "filter",
          "test": "datum.traffic != null"
        },
        {
          "type": "geo", "projection": "albersUsa",
          "scale": 1200, "translate": [450, 280],
          "lon": "longitude", "lat": "latitude"
        },
        {
          "type": "filter",
          "test": "datum.layout_x != null && datum.layout_y != null"
        },
        { "type": "sort", "by": "-traffic.flights" },
        { "type": "voronoi", "x": "layout_x", "y": "layout_y" }
      ]
    },
    {
      "name": "routes",
      "url": "data/flights-airport.csv",
      "format": {"type": "csv", "parse": "auto"},
      "transform": [
        { "type": "filter", "test": "hover && hover.iata == datum.origin" },
        {
          "type": "lookup", "on": "airports", "onKey": "iata",
          "keys": ["origin", "destination"], "as": ["_source", "_target"]
        },
        { "type": "filter", "test": "datum._source && datum._target" },
        { "type": "linkpath" }
      ]
    }
  ]
}

Further research on Vega transforms

https://github.com/vega/vega-dataflow-examples/

It is quite difficult to me to read the code as there is not enough documentation. I have included here the simplest example:

vega-dataflow.js contains Dataflow, all transforms and vega's utilities.

<!DOCTYPE HTML>
<html>
  <head>
    <title>Dataflow CountPattern</title>
    <script src="../../build/vega-dataflow.js"></script>
    <style>
      body { margin: 10px; font-family: Helvetica Neue, Arial; font-size: 14px; }
      textarea { width: 800px; height: 200px; }
      pre { font-family: Monaco; font-size: 10px; }
    </style>
  </head>
  <body>
    <textarea id="text"></textarea><br/>
    <input id="slider" type="range" min="2" max="10" value="4"/>
    Frequency Threshold<br/>
    <pre id="output"></pre>
  </body>
</html>

df is a Dataflow instance where we register (.add) functions and parameters - as below on line 36-38. The same with adding transforms - lines 40-44. We can pass different parameters to the transforms depending on requirements of each of them. Event handlers can added by using .on method of the Dataflow instance - lines 46-48.

var tx = vega.transforms; // all transforms 
var out = document.querySelector('#output');
var area = document.querySelector('#text');
area.value = [
  "Despite myriad tools for visualizing data, there remains a gap between the notational efficiency of high-level visualization systems and the expressiveness and accessibility of low-level graphical systems."
].join('\n\n');
var stopwords = "(i|me|my|myself|we|us|our|ours|ourselves|you|your|yours|yourself|yourselves|he|him|his)";

var get = vega.field('data');

function readText(_, pulse) {
  if (this.value) pulse.rem = this.value;
  return pulse.source = pulse.add = [vega.ingest(area.value)];
}

function threshold(_) {
  var freq = _.freq,
      f = function(t) { return t.count >= freq; };
  return (f.fields = ['count'], f);
}

function updatePage() {
  out.innerText = c1.value.slice()
    .sort(function(a,b) {
      return (b.count - a.count)
        || (b.text > a.text ? -1 : a.text > b.text ? 1 : 0);
    })
    .map(function(t) {
      return t.text + ': ' + t.count;
    })
    .join('\n');
}

var df = new vega.Dataflow(), // create a new Dataflow instance
// then add various operators into Dataflow instance:
    ft = df.add(4), // word frequency threshold
    ff = df.add(threshold, {freq:ft})
    rt = df.add(readText),
    // add a transforms (tx):
    cp = df.add(tx.CountPattern, {field:get, case:'lower',
      pattern:'[\\w\']{2,}', stopwords:stopwords, pulse:rt}),
    cc = df.add(tx.Collect, {pulse:cp}),
    fc = df.add(tx.Filter, {expr:ff, pulse:cc}),
    c1 = df.add(tx.Collect, {pulse:fc}),
    up = df.add(updatePage, {pulse: c1});
df.on(df.events(area, 'keyup').debounce(250), rt)
  .on(df.events('#slider', 'input'), ft, function(_, e) { return +e.target.value; })
  .run();

#### Old analysis

There are number of transforms and they are located in different libraries. Basics are here https://github.com/vega/vega-dataflow/tree/master/src/transforms

Generally, all data flow happens in the vega-dataflow module. There are lots of complicated operations performed to data input and parameters. Some of transform functions are inherited from another functions/classes which makes difficult to separate them:

Filter function:

export default function Filter(params) {
  Transform.call(this, fastmap(), params);
}

var prototype = inherits(Filter, Transform);

// more code for prototype

and Transform is:

import Operator from './Operator';
import {inherits} from 'vega-util';

/**
 * Abstract class for operators that process data tuples.
 * Subclasses must provide a {@link transform} method for operator processing.
 * @constructor
 * @param {*} [init] - The initial value for this operator.
 * @param {object} [params] - The parameters for this operator.
 * @param {Operator} [source] - The operator from which to receive pulses.
 */
export default function Transform(init, params) {
  Operator.call(this, init, null, params);
}

var prototype = inherits(Transform, Operator);

/**
 * Overrides {@link Operator.evaluate} for transform operators.
 * Marshalls parameter values and then invokes {@link transform}.
 * @param {Pulse} pulse - the current dataflow pulse.
 * @return {Pulse} The output pulse (or StopPropagation). A falsy return
     value (including undefined) will let the input pulse pass through.
 */
prototype.evaluate = function(pulse) {
  var params = this.marshall(pulse.stamp),
      out = this.transform(params, pulse);
  params.clear();
  return out;
};

/**
 * Process incoming pulses.
 * Subclasses should override this method to implement transforms.
 * @param {Parameters} _ - The operator parameter values.
 * @param {Pulse} pulse - The current dataflow pulse.
 * @return {Pulse} The output pulse (or StopPropagation). A falsy return
 *   value (including undefined) will let the input pulse pass through.
 */
prototype.transform = function() {};

and as we can see Transform inherits from Operator and so on.

But some of the transform functions looks independent:

Getting cross product:

// filter is an optional  function for selectively including tuples in the cross product.
function cross(input, a, b, filter) {
  var data = [],
      t = {},
      n = input.length,
      i = 0,
      j, left;

  for (; i<n; ++i) {
    t[a] = left = input[i];
    for (j=0; j<n; ++j) {
      t[b] = input[j];
      if (filter(t)) {
        data.push(ingest(t));
        t = {};
        t[a] = left;
      }
    }
  }

  return data;
}

Other transforms:

DP Pipelines transforms

DPP provides number of transforms that can be applied to a dataset. However, those transforms cannot be processed inside browsers as the library requires Python scripts to run.

Below is a copy-paste from DPP docs:

concatenate

Concatenates a number of streamed resources and converts them to a single resource.

Parameters:

  • sources - Which resources to concatenate. Same semantics as resources in stream_remote_resources.

    If omitted, all resources in datapackage are concatenated.

    Resources to concatenate must appear in consecutive order within the data-package.

  • target - Target resource to hold the concatenated data. Should define at least the following properties:

    • name - name of the resource
    • path - path in the data-package for this file.

    If omitted, the target resource will receive the name concat and will be saved at data/concat.csv in the datapackage.

  • fields - Mapping of fields between the sources and the target, so that the keys are the target field names, and values are lists of source field names.

    This mapping is used to create the target resources schema.

    Note that the target field name is always assumed to be mapped to itself.

Example:

- run: concatenate
  parameters: 
    target:
      name: multi-year-report
      path: data/multi-year-report.csv
    sources: 'report-year-20[0-9]{2}'
    fields:
      activity: []
      amount: ['2009_amount', 'Amount', 'AMOUNT [USD]', '$$$']    

In this example we concatenate all resources that look like report-year-<year>, and output them to the multi-year-report resource.

The output contains two fields:

  • activity , which is called activity in all sources
  • amount, which has varying names in different resources (e.g. Amount, 2009_amount, amount etc.)

join

Joins two streamed resources.

"Joining" in our case means taking the target resource, and adding fields to each of its rows by looking up data in the source resource.

A special case for the join operation is when there is no target stream, and all unique rows from the source are used to create it. This mode is called deduplication mode - The target resource will be created and deduplicated rows from the source will be added to it.

Parameters:

  • source - information regarding the source resource

    • name - name of the resource
    • key - One of
      • List of field names which should be used as the lookup key
      • String, which would be interpreted as a Python format string used to form the key (e.g. {<field_name_1>}:{field_name_2})
    • delete - delete from data-package after joining (False by default)
  • target - Target resource to hold the joined data. Should define at least the following properties:

    • name - as in source
    • key - as in source, or null for creating the target resource and performing deduplication.
  • fields - mapping of fields from the source resource to the target resource. Keys should be field names in the target resource. Values can define two attributes:

    • name - field name in the source (by default is the same as the target field name)

    • aggregate - aggregation strategy (how to handle multiple source rows with the same key). Can take the following options:

      • sum - summarise aggregated values. For numeric values it's the arithmetic sum, for strings the concatenation of strings and for other types will error.

      • avg - calculate the average of aggregated values.

        For numeric values it's the arithmetic average and for other types will err.

      • max - calculate the maximum of aggregated values.

        For numeric values it's the arithmetic maximum, for strings the dictionary maximum and for other types will error.

      • min - calculate the minimum of aggregated values.

        For numeric values it's the arithmetic minimum, for strings the dictionary minimum and for other types will error.

      • first - take the first value encountered

      • last - take the last value encountered

      • count - count the number of occurrences of a specific key For this method, specifying name is not required. In case it is specified, count will count the number of non-null values for that source field.

      • set - collect all distinct values of the aggregated field, unordered

      • array - collect all values of the aggregated field, in order of appearance

      • any - pick any value.

      By default, aggregate takes the any value.

    If neither name or aggregate need to be specified, the mapping can map to the empty object {} or to null.

  • full - Boolean,

    • If True (the default), failed lookups in the source will result in "null" values at the source.
    • if False, failed lookups in the source will result in dropping the row from the target.

Important: the "source" resource must appear before the "target" resource in the data-package.

Examples:

- run: join
  parameters: 
    source:
      name: world_population
      key: ["country_code"]
      delete: yes
    target:
      name: country_gdp_2015
      key: ["CC"]
    fields:
      population:
        name: "census_2015"        
    full: true

The above example aims to create a package containing the GDP and Population of each country in the world.

We have one resource (world_population) with data that looks like:

country_codecountry_namecensus_2000census_2015
UKUnited Kingdom5885700464715810

And another resource (country_gdp_2015) with data that looks like:

CCGDP (£m)Net Debt (£m)
UK18323181606600

The join command will match rows in both datasets based on the country_code / CC fields, and then copying the value in the census_2015 field into a new population field.

The resulting data package will have the world_population resource removed and the country_gdp_2015 resource looking like:

CCGDP (£m)Net Debt (£m)population
UK1832318160660064715810

A more complex example:

- run: join
  parameters: 
    source:
      name: screen_actor_salaries
      key: "{production} ({year})"
    target:
      name: mgm_movies
      key: "{title}"
    fields:
      num_actors:
        aggregate: 'count'
      average_salary:
        name: salary
        aggregate: 'avg'
      total_salaries:
        name: salary
        aggregate: 'sum'
    full: false

This example aims to analyse salaries for screen actors in the MGM studios.

Once more, we have one resource (screen_actor_salaries) with data that looks like:

yearproductionactorsalary
2016Vertigo 2Mr. T15000000
2016Vertigo 2Robert Downey Jr.7000000
2015The Fall - ResurrectionJeniffer Lawrence18000000
2015Alf - The Return to MelmackThe Rock12000000

And another resource (mgm_movies) with data that looks like:

titledirectorproducer
Vertigo 2 (2016)Lindsay LohanLee Ka Shing
iRobot - The Movie (2018)Mr. TMr. T

The join command will match rows in both datasets based on the movie name and production year. Notice how we overcome incompatible fields by using different key patterns.

The resulting dataset could look like:

titledirectorproducernum_actorsaverage_salarytotal_salaries
Vertigo 2 (2016)Lindsay LohanLee Ka Shing21100000022000000

Vega Dataflow usage for DP views

Vega has quite a lot of data transform functions available, however, most of them require complicated JSON descriptor to use. Although we may implement them in the future, at the moment we could start with the most basic and essential ones:

List of transforms that we could use:

  • Aggregate
  • Filter
  • Formula (applies given formula to dataset)
  • Sample

Aggregate example

We have dataset with 4 fields - a, b, c and d. Lets apply different aggregation methods on them - count, sum, min and max:

const vegadataflow = require('./build/vega-dataflow.js');

var tx = vegadataflow.transforms,
    changeset = vegadataflow.changeset;

var data = [
 {
   "a": 17.76,
   "b": 20.14,
   "c": 17.05,
   "d": 17.79
 },
 {
   "a": 19.19,
   "b": 21.29,
   "c": 19.19,
   "d": 19.92
 },
 {
   "a": 20.33,
   "b": 22.9,
   "c": 19.52,
   "d": 21.12
 },
 {
   "a": 20.15,
   "b": 20.72,
   "c": 19.04,
   "d": 19.31
 },
 {
   "a": 17.93,
   "b": 18.09,
   "c": 16.99,
   "d": 17.01
 }
];

var a = vegadataflow.field('a'),
    b = vegadataflow.field('b'),
    c = vegadataflow.field('c'),
    d = vegadataflow.field('d');

var df = new vegadataflow.Dataflow(),
    col = df.add(tx.Collect),
    agg = df.add(tx.Aggregate, {
            fields: [a, b, c, d],
            ops: ['count', 'sum', 'min', 'max'],
            pulse: col
          }),
    out = df.add(tx.Collect, {pulse: agg});

df.pulse(col, changeset().insert(data)).run();

console.dir(out.value);

Output:

[ 
  {
    _id: 7, 
    count_a: 5, 
    sum_b: 103.14, 
    min_c: 16.99, 
    max_d: 21.12 
  }
]

Filter example

Using the dataset from example above, lets filter values of field a that are not greater than 19:

const vegadataflow = require('./build/vega-dataflow.js');

var tx = vegadataflow.transforms,
    changeset = vegadataflow.changeset;

var data = [
 {
   "a": 17.76,
   "b": 20.14,
   "c": 17.05,
   "d": 17.79
 },
 {
   "a": 19.19,
   "b": 21.29,
   "c": 19.19,
   "d": 19.92
 },
 {
   "a": 20.33,
   "b": 22.9,
   "c": 19.52,
   "d": 21.12
 },
 {
   "a": 20.15,
   "b": 20.72,
   "c": 19.04,
   "d": 19.31
 },
 {
   "a": 17.93,
   "b": 18.09,
   "c": 16.99,
   "d": 17.01
 }
];

var a = vegadataflow.field('a');

var filter1 = vegadataflow.accessor(d => { return d.a > 19 }, ['a']);

var df = new vegadataflow.Dataflow(),
    ex = df.add(null),
    col = df.add(tx.Collect),
    fil = df.add(tx.Filter, {expr: ex, pulse: col}),
    out = df.add(tx.Collect, {pulse: fil});

df.pulse(col, changeset().insert(data));
df.update(ex, filter1).run();

console.log(out.value);

Output:

[ 
  { a: 19.19, b: 21.29, c: 19.19, d: 19.92, _id: 3 },
  { a: 20.33, b: 22.9, c: 19.52, d: 21.12, _id: 4 },
  { a: 20.15, b: 20.72, c: 19.04, d: 19.31, _id: 5 } 
]

Formula example

Using the same dataset, lets apply mapping on a field:

const vegadataflow = require('./build/vega-dataflow.js');

var tx = vegadataflow.transforms,
    changeset = vegadataflow.changeset;

var data = [
 {
   "a": 17.76,
   "b": 20.14,
   "c": 17.05,
   "d": 17.79
 },
 {
   "a": 19.19,
   "b": 21.29,
   "c": 19.19,
   "d": 19.92
 },
 {
   "a": 20.33,
   "b": 22.9,
   "c": 19.52,
   "d": 21.12
 },
 {
   "a": 20.15,
   "b": 20.72,
   "c": 19.04,
   "d": 19.31
 },
 {
   "a": 17.93,
   "b": 18.09,
   "c": 16.99,
   "d": 17.01
 }
];


var df = new vegadataflow.Dataflow(),
    e = vegadataflow.field('e'),
    f = vegadataflow.field('f'),
    formula1 = vegadataflow.accessor(d => { return d.a * 10; }, ['a']),
    formula2 = vegadataflow.accessor(d => { return d.b / 10; }, ['b']),
    col = df.add(tx.Collect),
    fa = df.add(tx.Formula, {expr: formula1, as: 'e', pulse: col}),
    fb = df.add(tx.Formula, {expr: formula2, as: 'f', pulse: fa});

df.pulse(col, changeset().insert(data)).run();

console.log(col.value.map(e));
console.log(col.value.map(f));

Output:

[ 177.60000000000002, 191.9, 203.29999999999998, 201.5, 179.3 ]
[ 2.0140000000000002, 2.129, 2.29, 2.072, 1.809 ]

Sample example

Lets create a dataset with 100 rows and take a sample of 10 from it:

const vegadataflow = require('./build/vega-dataflow.js');

var tx = vegadataflow.transforms,
    changeset = vegadataflow.changeset;

var n = 100,
    sampleSize = 10,
    data = Array(n),
    i;

for(i=0; i<n; i++) data[i] = {v:Math.random()};

var df = new vegadataflow.Dataflow(),
    s = df.add(tx.Sample, {size: sampleSize});

df.pulse(s, changeset().insert(data)).run();

console.log(s.value);

Output:

[ 
  { v: 0.3332451883830292, _id: 69 },
  { v: 0.2874480689159735, _id: 3 },
  { v: 0.18009915754527817, _id: 41 },
  { v: 0.10513776386462825, _id: 27 },
  { v: 0.4972760501252764, _id: 35 },
  { v: 0.757859721485594, _id: 67 },
  { v: 0.248170225498199, _id: 64 },
  { v: 0.431513510601889, _id: 28 },
  { v: 0.07281378713091247, _id: 37 },
  { v: 0.9543216903991236, _id: 33 } 
]

Suggestion on usage from datapackage.json

Our current simple view layout:

{
  name: 'sample',
  resource: [0],
  specType: 'simple',
  spec: {
    type: 'line',
    group: 'a',
    series: ['b', 'c']
  }
}

We could add transform property that would be a specification for transforms to be applied. Each transform would have slightly different properties:

Aggregate

{
  ...
  transform: {
    type: 'aggregate',
    fields: ['a', 'b'],
    operations: ['sum', 'min']
  },
  ...
}

For aggregate transform, a publisher should pass a field name and an operation to be applied. Operations should be one of https://vega.github.io/vega/docs/transforms/aggregate/

Filter

{
  ...
  transform: {
    type: 'filter',
    expr: 'data.fieldName > 10'
  },
  ...
}

For filter type expression should evaluate to true or false so only truthy values will be kept.

Formula

{
  ...
  transform: {
    type: 'formula',
    expr: ['data.fieldName * 2', 'data.fieldName + 10'],
    as: ['x', 'y']
  },
  ...
}

For formula type, a field will be mapped with given expression and output will be stored in new fields that are specified in as property.

Sample

  ...
  transform: {
    type: 'sample',
    size: 'some integer'
  },
  ...

In sample type, only size of a sample is needed.

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