With this CSV example:


The standard method I use Pandas is this:

  1. Parse CSV

  2. Select columns into a data frame (col1 and col3)

  3. Process the column (e.g. avarage the values of col1 and col3)

Is there a JavaScript library that does that like Pandas?

  • 4
    Let us know what you wind up going with. This is an important question for many of us. – Ahmed Fasih Jun 8 '15 at 4:36

All answers are good. Hoping my answer is comprehensive (i.e. tries to list all options). I hope to return and revise this answer with any criteria to help make a choice.

I hope anyone coming here is familiar with d3. d3 is very useful "swiss army knife" for handling data in Javascript, like pandas is helpful for Python. You may see d3 used frequently like pandas, even if d3 is not exactly a DataFrame/Pandas replacement (i.e. d3 doesn't have the same API; d3 doesn't have Series / DataFrame which behave like in pandas)

Ahmed's answer explains how d3 can be used to achieve some DataFrame functionality, and some of the libraries below were inspired by things like LearnJsData which uses d3 and lodash.

As for DataFrame-focused-features , I was overwhelmed with JS libraries which help. Here's a quick list of some of the options you might've encountered. I haven't checked any of them in detail yet (Most I found in combination Google + NPM search).

Be careful you use a variety that you can work with; some are Node.js aka Server-side Javascript, some are browser-compatible aka client-side Javascript. Some are Typescript.

  • pandas-js
    • From STEEL and Feras' answers
    • "pandas.js is an open source (experimental) library mimicking the Python pandas library. It relies on Immutable.js as the NumPy logical equivalent. The main data objects in pandas.js are, like in Python pandas, the Series and the DataFrame."
  • dataframe-js
    • "DataFrame-js provides an immutable data structure for javascript and datascience, the DataFrame, which allows to work on rows and columns with a sql and functional programming inspired api."
  • data-forge
  • jsdataframe
    • "Jsdataframe is a JavaScript data wrangling library inspired by data frame functionality in R and Python Pandas."
  • dataframe
    • "explore data by grouping and reducing."

Then after coming to this question, checking other answers here and doing more searching, I found options like:

  • Apache Arrow in JS
    • Thanks to user Back2Basics suggestion:
    • "Apache Arrow is a columnar memory layout specification for encoding vectors and table-like containers of flat and nested data. Apache Arrow is the emerging standard for large in-memory columnar data (Spark, Pandas, Drill, Graphistry, ...)"
  • Observable
    • At first glance, seems like a JS alternative to the IPython/Jupyter "notebooks"
    • Observable's page promises: "Reactive programming", a "Community", on a "Web Platform"
    • See 5 minute intro here
  • recline (from Rufus' answer)
    • I expected an emphasis on DataFrame's API, which Pandas itself tries to preserve from R document its replacement/improvement/correspondence to every R function.
    • Instead I find an emphasis recline's example emphasizes the jQuery way of getting data into the DOM its (awesome) Multiview (the UI), which doesn't require jQuery but does require a browser! More examples
    • ...or an emphasis on its MVC-ish architecture; including back-end stuff (i.e. database connections)
    • I am probably being too harsh; after all, one of the nice things about pandas is how it can create visualizations easily; out-of-the-box.
  • js-data
    • Really more of an ORM! Most of its modules correspond to different data storage questions (js-data-mongodb, js-data-redis, js-data-cloud-datastore), sorting, filtering, etc.
    • On plus-side does work on Node.js as a first-priority; "Works in Node.js and in the Browser."
  • miso (another suggestion from Rufus)
  • AlaSQL
    • "AlaSQL" is an open source SQL database for Javascript with a strong focus on query speed and data source flexibility for both relational data and schemaless data. It works in your browser, Node.js, and Cordova."
  • Some thought experiments:

I hope this post can become a community wiki, and evaluate (i.e. compare the different options above) against different criteria like:

  • Panda's criterias in its R comparison
    • Performance
    • Functionality/flexibility
    • Ease-of-use
  • My own suggestions
    • Similarity to Pandas / Dataframe API's
    • Specifically hits on their main features
    • Data-science emphasis > UI emphasis
    • Demonstrated integration in combination with other tools like Jupyter (interactive notebooks), etc

Some things a JS library may never do (but could it?)

  • 1
    Thanks for this wonderful overview. I know both the use of pandas dataframes and SQL. What are the advantages (and disadvantages) of using JS using dataframes versus a JS SQL database? – tardis Nov 30 '17 at 10:39
  • @molotow this is a great question, but I don't have much experience with JS SQL databases (though they look cool). In general I would guess that dataframe-type approaches would support more "data wrangling" / "data-science" focused functions, like inferring empty values; doing matrix multiplication, etc. Whereas a (JS) SQL is more focused on relational stuff: querying, sorting, filtering. Of course there will be overlap; dataframe can JOIN, sort, and filter, just like SQL includes some statistical functions and etc. Anyone else have ideas? – The Red Pea Nov 30 '17 at 18:54
  • 1
    the fact that there are so many options is annoying. Rather have the community focused on one thing only and make it good. – Claudiu Creanga Nov 28 '18 at 1:38
  • 3
    (Arrow JS author here) @ClaudiuCreanga I understand the frustration. Initially we wrote ArrowJS in an attempt to bridge the divide between node/browsers and more traditional big-data stacks, and we've invested most heavily in excellent IPC/streaming primitives so far. As next steps, we'd love to start integrating with more JS libs (tensorflow, d3, etc.), and PRs are always welcome. An alternative approach is things like JPMC's Perspective project, which uses ArrowJS to consume and produce Arrow tables. – ptaylor May 11 '19 at 1:47
  • 1
    is there a functionality for the dataframe merge in pandas equivalent in javascript ? – Phani vikranth May 13 '19 at 19:06

I've been working on a data wrangling library for JavaScript called data-forge. It's inspired by LINQ and Pandas.

It can be installed like this:

npm install --save data-forge

Your example would work like this:

var csvData = "Source,col1,col2,col3\n" +
    "foo,1,2,3\n" +

var dataForge = require('data-forge');
var dataFrame = 
        .parseInts([ "col1", "col2", "col3" ])

If your data was in a CSV file you could load it like this:

var dataFrame = dataForge.readFileSync(fileName)
    .parseInts([ "col1", "col2", "col3" ])

You can use the select method to transform rows.

You can extract a column using getSeries then use the select method to transform values in that column.

You get your data back out of the data-frame like this:

var data = dataFrame.toArray();

To average a column:

 var avg = dataFrame.getSeries("col1").average();

There is much more you can do with this.

You can find more documentation on npm.


Pandas.js at the moment is an experimental library, but seems very promising it uses under the hood immutable.js and NumpPy logic, both data objects series and DataFrame are there..

  • 1
    It looks like the library hasn't had a commit in over two years, and seems to have many issues. I wouldn't say 'very promising'. – jarthur Nov 27 '19 at 22:24

Below is Python numpy and pandas


import numpy as np
import pandas as pd

data_frame = pd.DataFrame(np.random.randn(5, 4), ['A', 'B', 'C', 'D', 'E'], [1, 2, 3, 4])

data_frame[5] = np.random.randint(1, 50, 5)

print(data_frame.loc[['C', 'D'], [2, 3]])

# axis 1 = Y | 0 = X
data_frame.drop(5, axis=1, inplace=True)



The same can be achieved in JavaScript* [numjs works only with Node.js] But D3.js has much advanced Data file set options. Both numjs and Pandas-js still in works..

import np from 'numjs';
import { DataFrame } from 'pandas-js';

const df = new DataFrame(np.random.randn(5, 4), ['A', 'B', 'C', 'D', 'E'], [1, 2, 3, 4])

// df

          1         2         3         4
A  0.023126  1.078130 -0.521409 -1.480726
B  0.920194 -0.201019  0.028180  0.558041
C -0.650564 -0.505693 -0.533010  0.441858
D -0.973549  0.095626 -1.302843  1.109872
E -0.989123 -1.382969 -1.682573 -0.637132



I think the closest thing are libraries like:

Recline in particular has a Dataset object with a structure somewhat similar to Pandas data frames. It then allows you to connect your data with "Views" such as a data grid, graphing, maps etc. Views are usually thin wrappers around existing best of breed visualization libraries such as D3, Flot, SlickGrid etc.

Here's an example for Recline:

// Load some data
var dataset = recline.Model.Dataset({
  records: [
    { value: 1, date: '2012-08-07' },
    { value: 5, b: '2013-09-07' }
  // Load CSV data instead
  // (And Recline has support for many more data source types)
  // url: 'my-local-csv-file.csv',
  // backend: 'csv'

// get an element from your HTML for the viewer
var $el = $('#data-viewer');

var allInOneDataViewer = new recline.View.MultiView({
  model: dataset,
  el: $el
// Your new Data Viewer will be live!

Ceaveat The following is applicable only to d3 v3, and not the latest d4v4!

I am partial to d3.js, and while it won't be a total replacement for Pandas, if you spend some time learning its paradigm, it should be able to take care of all your data wrangling for you. (And if you wind up wanting to display results in the browser, it's ideally suited to that.)

Example. My CSV file data.csv:


In the same directory, create an index.html containing the following:

<!DOCTYPE html>
    <meta charset="utf-8"/>
    <title>My D3 demo</title>

    <script src="http://d3js.org/d3.v3.min.js" charset="utf-8"></script>

      <script charset="utf-8" src="demo.js"></script>

and also a demo.js file containing the following:


       // How to format each row. Since the CSV file has a header, `row` will be
       // an object with keys derived from the header.
       function(row) {
         return {name : row.name, age : +row.age, color : row.color};

       // Callback to run once all data's loaded and ready.
       function(data) {
         // Log the data to the JavaScript console

         // Compute some interesting results
         var averageAge = data.reduce(function(prev, curr) {
           return prev + curr.age;
         }, 0) / data.length;

         // Also, display it
         var ulSelection = d3.select('body').append('ul');
         var valuesSelection =
                 function(d) { return d.age; });
         var totalSelection =
             ulSelection.append('li').text('Average: ' + averageAge);

In the directory, run python -m SimpleHTTPServer 8181, and open http://localhost:8181 in your browser to see a simple listing of the ages and their average.

This simple example shows a few relevant features of d3:

  • Excellent support for ingesting online data (CSV, TSV, JSON, etc.)
  • Data wrangling smarts baked in
  • Data-driven DOM manipulation (maybe the hardest thing to wrap one's head around): your data gets transformed into DOM elements.
  • 1
    just to help future newbies - above instructions are no longer valid for d3 v4. think the mapping stage is done within the data callback now e.g. github.com/d3/d3-dsv/blob/master/README.md#csvParseRows – swyx Dec 29 '16 at 14:33
  • @swyx thanks for heads up, can you correct the example and post as answer? – Ahmed Fasih Dec 29 '16 at 18:39
  • @AhmedFasih You should correct your own post for the benefit of everyone. Also, swyx doesn't have enough reputation to edit your post. – Carles Alcolea Sep 18 '17 at 12:43
  • @CarlesAlcolea I added a big disclaimer at the top, sorry I don’t have time to get up to speed on the current API right now 😿 – Ahmed Fasih Sep 18 '17 at 14:19
  • @AhmedFasih well that's better than before :) Thanks! – Carles Alcolea Sep 20 '17 at 4:21

It's pretty easy to parse CSV in javascript because each line's already essentially a javascript array. If you load your csv into an array of strings (one per line) it's pretty easy to load an array of arrays with the values:

var pivot = function(data){
    var result = [];
    for (var i = 0; i < data.length; i++){
        for (var j=0; j < data[i].length; j++){
            if (i === 0){
                result[j] = [];
            result[j][i] = data[i][j];
    return result;

var getData = function() {
    var csvString = $(".myText").val();
    var csvLines = csvString.split(/\n?$/m);

    var dataTable = [];

    for (var i = 0; i < csvLines.length; i++){
        var values;
        eval("values = [" + csvLines[i] + "]");
        dataTable[i] = values;

    return pivot(dataTable);

Then getData() returns a multidimensional array of values by column.

I've demonstrated this in a jsFiddle for you.

Of course, you can't do it quite this easily if you don't trust the input - if there could be script in your data which eval might pick up, etc.

  • I know you put a warning in your answer, but I really can't stress enough how bad this method is from a security point of view. – xApple Apr 17 '19 at 13:17
  • It's only bad from a security point of view if he doesn't trust the input. If, for example, he is doing a school project in which he already knows his input files (because he or his teacher has provided them ahead of time in a specific format), this is a compact, easy, and, legible solution. He didn't give any context regarding the source of his inputs, just ask for a way to read the CSV in for easy processing. – Steve K Apr 23 '19 at 4:45

Here is an dynamic approach assuming an existing header on line 1. The csv is loaded with d3.js.

function csvToColumnArrays(csv) {

    var mainObj = {},
    header = Object.keys(csv[0]);

    for (var i = 0; i < header.length; i++) {

        mainObj[header[i]] = [];

    csv.map(function(d) {

        for (key in mainObj) {


    return mainObj;


d3.csv(path, function(csv) {

    var df = csvToColumnArrays(csv);         


Then you are able to access each column of the data similar an R, python or Matlab dataframe with df.column_header[row_number].

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