arquero

Arquero

Arquero is a JavaScript library for query processing and transformation of array-backed data tables. Following the relational algebra and inspired by the design of dplyr, Arquero provides a fluent API for manipulating column-oriented data frames. Arquero supports a range of data transformation tasks, including filter, sample, aggregation, window, join, and reshaping operations.

To get up and running, start with the Introducing Arquero tutorial, part of the Arquero notebook collection.

Have a question or need help? Visit the Arquero GitHub repo or post to the Arquero GitHub Discussions board.

Arquero is Spanish for “archer”: if datasets are arrows, Arquero helps their aim stay true. 🏹 Arquero also refers to a goalkeeper: safeguard your data from analytic “own goals”! 🥅 ✋ ⚽

API Documentation

Example

The core abstractions in Arquero are data tables, which model each column as an array of values, and verbs that transform data and return new tables. Verbs are table methods, allowing method chaining for multi-step transformations. Though each table is unique, many verbs reuse the underlying columns to limit duplication.

import { all, desc, op, table } from 'arquero';

// Average hours of sunshine per month, from https://usclimatedata.com/.
const dt = table({
  'Seattle': [69, 108, 178, 207, 253, 268, 312, 281, 221, 142, 72, 52],
  'Chicago': [135, 136, 187, 215, 281, 311, 318, 283, 226, 193, 113, 106],
  'San Francisco': [165, 182, 251, 281, 314, 330, 300, 272, 267, 243, 189, 156]
});

// Sorted differences between Seattle and Chicago.
// Table expressions use arrow function syntax.
dt.derive({
    month: d => op.row_number(),
    diff:  d => d.Seattle - d.Chicago
  })
  .select('month', 'diff')
  .orderby(desc('diff'))
  .print();

// Is Seattle more correlated with San Francisco or Chicago?
// Operations accept column name strings outside a function context.
dt.rollup({
    corr_sf:  op.corr('Seattle', 'San Francisco'),
    corr_chi: op.corr('Seattle', 'Chicago')
  })
  .print();

// Aggregate statistics per city, as output objects.
// Reshape (fold) the data to a two column layout: city, sun.
dt.fold(all(), { as: ['city', 'sun'] })
  .groupby('city')
  .rollup({
    min:  d => op.min(d.sun), // functional form of op.min('sun')
    max:  d => op.max(d.sun),
    avg:  d => op.average(d.sun),
    med:  d => op.median(d.sun),
    // functional forms permit flexible table expressions
    skew: ({sun: s}) => (op.mean(s) - op.median(s)) / op.stdev(s) || 0
  })
  .objects()

Usage

In Browser

To use in the browser, you can load Arquero from a content delivery network:

<script src="https://cdn.jsdelivr.net/npm/arquero@latest"></script>

Arquero will be imported into the aq global object. The default browser bundle also includes the Flechette library for processing Apache Arrow data.

Alternatively, you can build and import arquero.min.js from the dist directory, or build your own application bundle. When building custom application bundles for the browser, the module bundler should draw from the browser property of Arquero’s package.json file. For example, if using rollup, pass the browser: true option to the node-resolve plugin.

Arquero uses modern JavaScript features, and so will not work with some outdated browsers. To use Arquero with older browsers including Internet Explorer, set up your project with a transpiler such as Babel.

In Node.js or Application Bundles

First install arquero as a dependency, for example via npm install arquero --save. Arquero assumes Node version 18 or higher. As of Arquero version 6, the library uses type module and should be loaded using ES module syntax.

Import using ES module syntax, import all exports into a single object:

import * as aq from 'arquero';

Import using ES module syntax, with targeted imports:

import { op, table } from 'arquero';

Dynamic import (e.g., within a Node.js REPL):

aq = await import('arquero');

Build Instructions

To build and develop Arquero locally: