lorix

0.3.0 • Public • Published

Lorix

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Lorix is a simple, user-friendly Javascript DataFrame API for loading and transforming data.

Features

  • Enables rapid data wrangling on Javascript
  • Load and export data to/from text files and object arrays
  • Exposes a simple, functional data-oriented API that operates over an array of objects
  • Function chaining to encapsulate multiple data transformations in single blocks
  • Helpful error messages to assist debugging

Why Lorix?

I want a simple way to wrangle data with Javascript for my own projects, instead of having to resort to pandas on Python. Rather than building something low-level from scratch, optimizing for performance, I opted to design a DataFrame abstraction over existing libraries like lodash and d3. The idea isn't for this to compete performance-wise with other libraries (far from it!), but to provide an intuitive API for anyone to pick-up and transform small to medium-sized datasets directly in Javascript.

How to install

Requires Node v15+

npm install lorix

Get Started

Create a DataFrame

import lorix from "lorix";

let df1 = await lorix.readCsv("test.csv"); // Comma-separated file
let df2 = await lorix.readTsv("test.tsv"); // Tab-separated file
let df3 = await lorix.readDsv("test.psv", "|"); // User-specified delimiter

// Array of objects
// Note: All objects in the array need
// to have the same properties.
const dataArray = [
    {"colA": 1, "colB": 2},
    {"colA": 2, "colB": 3}
    {"colA": 3, "colB": 4}
];
let df4 = lorix.DataFrame.fromArray(dataArray);

Print top n rows

.head(n) prints the top n rows in tabular form to standard output.

df1.head(); // Print the top 10 rows by default
df1.head(15); // Define the number of rows to display

Iterate DataFrame rows like an object array

The DataFrame class implements the iterator pattern to allow users to iterate through rows like an array. This also enables the use of the spread operator for example.

for (let row of df1) {
    console.log(row);
}

let df = [...df1];

Export DataFrame rows as an object array

toArray() returns an object array, where each object is a row mapping columns to values.

let rowArray = df1.toArray();

Select columns

select(col1, col2, ...) returns a new DataFrame with the specified columns.

let df = df1.select("colA", "colB");

Drop columns

drop(col1, col2, ...) returns a new DataFrame without the specified columns.

let df = df1.drop("colA");

Define new column

withColumn(newCol, fn) returns a new DataFrame with a new column (newCol), as defined by the function fn. fn accepts a single parameter that represents a DataFrame row to expose access to individual column values.

let df = df1.withColumn("newCol", (row) => row["colA"] + row["colB"]);

Passing the row argument is not necessary if the expression doesn't use column values.

let df = df1.withColumn("newCol", () => 1 + 2);
let df = df1.withColumn("newCol", () => new Date());

Calls can be chained to define multiple columns in a single block.

let df = (
    df1
    .withColumn("newCol", () => 1)
    .withColumn("newCol2", () => 2)
);

Filter rows

filter(fn) returns a new Dataframe with rows filtered according to the function fn. fn accepts a single parameter that represents a DataFrame row to expose access to individual column values, and must return a boolean value to determine if the row is filtered or not.

let df = df1.filter(row => row["colA"] > 10);

Replace strings

String values can be replaced using one of the following DataFrame methods. Each accepts an array of columns over which the string-replacement is applied:

  • replace(cols, oldString, newString) - Returns a new DataFrame with first instance of string oldString replaced by newString.
  • replaceAll(cols, oldString, newString) - Returns a new DataFrame with all instances of string oldString replaced by newString.
  • regexReplace(cols, replaceRegex, newString) - Returns a new DataFrame with regular expression replaceRegex replaced by newString.
let df = df1.replace(["colA", "colB"], "oldSubstring", "newSubstring");
let df = df1.replaceAll(["colA"], "oldSubstring", "newSubstring");
let df = df1.regexReplace(["colA", "colB"], /oldSubstring/ig, "newSubstring");

Drop duplicate rows

distinct([subset]) returns a new DataFrame with duplicate rows dropped according to the optional list of columns subset. If subset is not passed, then duplicates will be identified across all columns. Only the first row found is kept for duplicate instances.

let df = df1.distinct();
let df = df1.distinct(["colA", "colB"]);

Sorting

orderBy(cols, [order]) returns a new DataFrame with rows sorted according to the array of columns specified (cols), and optionally an array (order) defining the order to sort these by. The order defaults to ascending if not specified.

let df = df1.orderBy(["colA"]);
let df = df1.orderBy(["colA", "colB"], ["asc", "desc"]);
let df = df1.orderBy("id"); // Error - requires an array of columns

Joining DataFrames

Two DataFrames can be joined in a number of ways. Lorix provides functions that mirror SQL join types, and adds other types that appear in Spark:

  • Cross Join
  • Inner Join
  • Left Join
  • Right Join
  • Left Anti Join
  • Right Anti Join
  • Full Outer Join

The join condition can be defined in the following ways:

  1. a single array of common column names.
  2. two arrays of the same size, with position-based joining between them.
  3. function defining the exact join condition between the two DataFrames.

When using a function, the parameters represent left and right DataFrames being joined. These are used to refer to the DataFrame columns.

let df = df1.crossJoin(df2)

let df = df1.innerJoin(df2, ["colA", "colB"]);  // Columns must exist in both DataFrames
let df = df1.innerJoin(df2, ["colA", "colC"], ["colB", "colD"]);  // Equivalent to colA == colB and colC == colD
let df = df1.innerJoin(df2, (l, r) => l.colA == r.colB);
let df = df1.innerJoin(df2, (l, r) => (l.colA == r.colB) & (l.colC == r.colD));

let df = df1.leftJoin(df2, (l, r) => (l.colA == r.colB) | (l.colC == r.colD));

let df = df1.rightJoin(df2, (l, r) => (l.colA > r.colB) & (l.colC < r.colD));

let df = df1.leftAntiJoin(df2, (l, r) => (l.colA == r.colB) | (l.colC == r.colD));

let df = df1.rightAntiJoin(df2, (l, r) => (l.colA > r.colB) & (l.colC < r.colD));

let df = df1.fullOuterJoin(df2, ["colA", "colB"]);

Aggregating with groupBy

groupBy(cols, aggMap) is an analogue of SQL's GROUP BY, and is used to perform aggregations.

  • cols is an array of columns that will be grouped.
  • aggMap is an object mapping columns to the aggregations you want performed on these. This can either be an array, or a string (e.g. sum, mean, count).

Available aggregate functions are currently:

  • sum
  • mean
  • count
  • min
  • max

Output columns are named using the current name suffixed by the aggregation applied, e.g. colC_sum, colC_mean.

let df = df1.groupBy(
    ["colA", "colB"],
    {
        "colC": ["sum", "mean", "count"],
        "colD": "sum",
        "colE": ["min", "max"]
    }
);

Window functions

.window(windowFunc, [partitionByCols], [orderByCols], [windowSize]) can be applied within .withColumn to apply window function windowFunc to the DataFrame. The window parameters follow, defined as:

  • partitionByCols is an optional array of columns used to partition the DataFrame rows.
  • orderByCols is an optional array consisting of two sub-arrays - one defining the set of columns to sort, and another the sort order (see .orderBy for more details).
  • windowSize is an optional array with two values defining the range of rows over which the window function is applied for each group. The first value defines the number of preceding rows to include in the window, and the second value being the number of proceding rows. If no windowSize parameter is passed, the entire set of rows is exposed to the window function for each group.
    • Positive integer representing the number of rows
    • unboundedPreceding all previous rows, relative to the current row
    • unboundedProceeding all following rows, relative to the current row
    • currentRow represents the current row

Lorix currently exposes the following window functions:

  • sum(col) - sum of values.
  • min(col) - minimum value.
  • max(col) - maximum value.
  • mean(col) - mean value.
  • median(col) - median value.
  • quantile(col, p) - returns the p-quantile, where p is a number in the range [0, 1].
  • variance(col) - returns an unbiased estimator of the population variance.
  • stdev(col) - returns the standard deviation, defined as the square root of the bias-corrected variance.
  • lag(col, n) - returns the value of the n-th row prior to the current row.
  • lead(col, n) - returns the value of the n-th row after the current row.
  • rownumber() - returns the sequential number of a row within the partition.
let df = df1.withColumn(
    "colStddev",
    lorix.window(
        lorix.stdev("colX"),   // window function (takes a column name, and any other required/option parameters)
        ["colA"],              // columns defining how rows are partitioned
        [["colB"], ["desc"]],  // optional - order columns
        [14, lorix.currentRow] // optional - window size definition (14 rows preceding to current row)
    )
);

Union between DataFrames

unionByName(df) returns a new DataFrame including the set of rows from both DataFrames being unioned. Both DataFrames must have the same columns, otherwise an error will be thrown.

let df = df1.unionByName(df2);

License

Free Software through the GNU Affero GPL v3

See LICENSE file for details.

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Version

0.3.0

License

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Collaborators

  • jmsmistral