read-excel-file
Read small to medium *.xlsx
files in a browser or Node.js. Parse to JSON with a strict schema.
Demo
Also check out write-excel-file
for writing simple *.xlsx
files.
Install
npm install read-excel-file --save
If you're not using a bundler then use a standalone version from a CDN.
Use
Browser
<input type="file" id="input" />
import readXlsxFile from 'read-excel-file'
const input = document.getElementById('input')
input.addEventListener('change', () => {
readXlsxFile(input.files[0]).then((rows) => {
})
})
fetch('https://example.com/spreadsheet.xlsx')
.then(response => response.blob())
.then(blob => readXlsxFile(blob))
.then((rows) => {
})
readXlsxFile(arrayBuffer).then((rows) => {
})
Note: Internet Explorer 11 requires a Promise
polyfill. Example.
Node.js
const readXlsxFile = require('read-excel-file/node')
readXlsxFile('/path/to/file').then((rows) => {
})
readXlsxFile(fs.createReadStream('/path/to/file')).then((rows) => {
})
readXlsxFile(Buffer.from(fs.readFileSync('/path/to/file'))).then((rows) => {
})
Web Worker
const worker = new Worker('web-worker.js')
worker.onmessage = function(event) {
console.log(event.data)
}
worker.onerror = function(event) {
console.error(event.message)
}
const input = document.getElementById('input')
input.addEventListener('change', () => {
worker.postMessage(input.files[0])
})
web-worker.js
import readXlsxFile from 'read-excel-file/web-worker'
onmessage = function(event) {
readXlsxFile(event.data).then((rows) => {
postMessage(rows)
})
}
JSON
To read spreadsheet data and then convert it to an array of JSON objects, pass a schema
option when calling readXlsxFile()
. In that case, instead of returning an array of rows of cells, it will return an object of shape { rows, errors }
where rows
is gonna be an array of JSON objects created from the spreadsheet data according to the schema
, and errors
is gonna be an array of errors encountered while converting spreadsheet data to JSON objects.
Each property of a JSON object should be described by an "entry" in the schema
. The key of the entry should be the column's title in the spreadsheet. The value of the entry should be an object with properties:
property
— The name of the object's property.required
— (optional) Required properties of the object could be marked as such.
required: boolean
— true
or false
.required: (object) => boolean
— A function returning true
or false
depending on some other properties of the object.
validate(value)
— (optional) Cell value validation function. Is only called on non-empty cells. If the cell value is invalid, it should throw an error with the error message set to the error code.type
— (optional) The type of the value. Defines how the cell value will be parsed. If no type
is specified then the cell value is returned "as is": as a string, number, date or boolean. A type
could be a:
- Built-in type:
- "Utility" type exported from the library:
- Custom type:
- A function that receives a cell value and returns a parsed value. If the value is invalid, it should throw an error with the error message set to the error code.
Note on missing columns or empty cells
When converting cell values to object properties, by default, it skips any missing columns or empty cells, which means that property values for such cells will be undefined
. To be more specific, first it interprets any missing columns as if those columns existed but had empty cells, and then it interprets all empty cells as undefined
s in the output objects.
In some cases thought that default behavior is not appropriate.
For example, spreadsheet data might be used to update an SQL database using Sequelize ORM library, and Sequelize completely ignores any undefined
values. In order for Sequelize to set a certain field value to NULL
in the database, it must be passed as null
rather than undefined
.
So for Sequelize use case, property values for any missing columns should stay undefined
but property values for any empty cells should be null
. That could be achieved by passing two parameters to read-excel-file
: schemaPropertyValueForMissingColumn: undefined
and schemaPropertyValueForEmptyCell: null
.
An additional option that could be passed in that case would be schemaPropertyShouldSkipRequiredValidationForMissingColumn: (column, { object }) => true
: it would skip required
validation for columns that're missing from the spreadsheet.
There's also a legacy parameter includeNullValues: true
that could be replaced with the following combination of parameters:
schemaPropertyValueForMissingColumn: null
schemaPropertyValueForEmptyCell: null
getEmptyObjectValue = () => null
errors
If there were any errors while converting spreadsheet data to JSON objects, the errors
property returned from the function will be a non-empty array. An element of the errors
property contains properties:
error: string
— The error code. Examples: "required"
, "invalid"
.
- If a custom
validate()
function is defined and it throws a new Error(message)
then the error
property will be the same as the message
value. - If a custom
type()
function is defined and it throws a new Error(message)
then the error
property will be the same as the message
value.
reason?: string
— An optional secondary error code providing more details about the error. Currently, it's only returned for "built-in" type
s. Example: { error: "invalid", reason: "not_a_number" }
for type: Number
means that "the cell value is invalid because it's not a number".row: number
— The row number in the original file. 1
means the first row, etc.column: string
— The column title.value?: any
— The cell value.type?: any
— The schema type
for this column.
An example of using a schema
const schema = {
'START DATE': {
prop: 'date',
type: Date
},
'NUMBER OF STUDENTS': {
prop: 'numberOfStudents',
type: Number,
required: true
},
'COURSE': {
prop: 'course',
type: {
'IS FREE': {
prop: 'isFree',
type: Boolean
},
'COURSE TITLE': {
prop: 'title',
type: String
}
}
},
'CONTACT': {
prop: 'contact',
required: true,
type: (value) => {
const number = parsePhoneNumber(value)
if (!number) {
throw new Error('invalid')
}
return number
}
},
'STATUS': {
prop: 'status',
type: String,
oneOf: [
'SCHEDULED',
'STARTED',
'FINISHED'
]
}
}
readXlsxFile(file, { schema }).then(({ rows, errors }) => {
errors.length === 0
rows === [{
date: new Date(2018, 2, 24),
numberOfStudents: 10,
course: {
isFree: true,
title: 'Chemistry'
},
contact: '+11234567890',
status: 'SCHEDULED'
}]
})
Separate use
The function for converting input data rows to JSON objects using a schema is exported independently as read-excel-file/map
, if anyone's interested.
import convertToJson from "read-excel-file/map"
const { rows, errors } = convertToJson(data, schema, options)
Maps a list of rows — data
— into a list of objects — rows
— using a schema
as a mapping specification.
data
— An array of rows, each row being an array of cells. The first row should be the list of column headers and the rest of the rows should be the data.schema
— A "to JSON" convertion schema (see above).options
— (optional) Schema conversion parameters of read-excel-file
:
schemaPropertyValueForMissingColumn
— By default, when some of the schema
columns are missing in the input data
, those properties are set to undefined
in the output objects. Pass schemaPropertyValueForMissingColumn: null
to set such "missing column" properties to null
in the output objects.schemaPropertyValueForNullCellValue
— By default, when it encounters a null
value in a cell in input data
, it sets it to undefined
in the output object. Pass schemaPropertyValueForNullCellValue: null
to make it set such values as null
s in output objects.schemaPropertyValueForUndefinedCellValue
— By default, when it encounters an undefined
value in a cell in input data
, it it sets it to undefined
in the output object. Pass schemaPropertyValueForUndefinedCellValue: null
to make it set such values as null
s in output objects.schemaPropertyShouldSkipRequiredValidationForMissingColumn: (column: string, { object }) => boolean
— By default, it does apply required
validation to schema
properties for which columns are missing in the input data
. One could pass a custom schemaPropertyShouldSkipRequiredValidationForMissingColumn(column, { object })
to disable required
validation for missing columns in some or all cases.getEmptyObjectValue(object, { path? })
— By default, it returns null
for an "empty" resulting object. One could override that value using getEmptyObjectValue(object, { path })
parameter. The value applies to both top-level object and any nested sub-objects in case of a nested schema, hence the additional (optional) path?: string
parameter.getEmptyArrayValue(array, { path })
— By default, it returns null
for an "empty" array value. One could override that value using getEmptyArrayValue(array, { path })
parameter.
Returns a list of "mapped objects".
When parsing a schema property value, in case of an error, the value of that property is gonna be undefined
.
When a "mapped object" is empty, i.e. when all property values of it are null
or undefined
, it is returned as null
rather than an object.
Schema: Tips and Features
Custom type
example.
{
'COLUMN_TITLE': {
type: (value) => {
try {
return parseValue(value)
} catch (error) {
console.error(error)
throw new Error('invalid')
}
}
}
}
Ignoring empty rows.
By default, it ignores any empty rows. To disable that behavior, pass ignoreEmptyRows: false
option.
readXlsxFile(file, {
schema,
ignoreEmptyRows: false
})
How to fix spreadsheet data before schema
parsing. For example, how to ignore irrelevant rows.
Sometimes, a spreadsheet doesn't exactly have the structure required by this library's schema
parsing feature: for example, it may be missing a header row, or contain some purely presentational / irrelevant / "garbage" rows that should be removed. To fix that, one could pass an optional transformData(data)
function that would modify the spreadsheet contents as required.
readXlsxFile(file, {
schema,
transformData(data) {
return [['ID', 'NAME', ...]].concat(data)
return data.filter(row => row.filter(column => column !== null).length > 0)
}
})
A React component for displaying errors that occured during schema parsing/validation.
import { parseExcelDate } from 'read-excel-file'
function ParseExcelError({ children }) {
const { type, value, error, reason, row, column } = children
return (
<div>
<code>"{error}"</code>
{reason && ' '}
{reason && <code>("{reason}")</code>}
{' for value '}
<code>{stringifyValue(value)}</code>
{' in column '}
<code>"{column}"</code>
{' in row '}
<code>{row}</code>
{' of spreadsheet'}
</div>
)
}
function stringifyValue(value) {
if (typeof value === 'string') {
return '"' + value + '"'
}
return String(value)
}
JSON (mapping)
Same as above, but simpler: without any parsing or validation.
Sometimes, a developer might want to use some other (more advanced) solution for schema parsing and validation (like yup
). If a developer passes a map
option instead of a schema
option to readXlsxFile()
, then it would just map each data row to a JSON object without doing any parsing or validation. Cell values will remain "as is": as a string, number, date or boolean.
const map = {
'START DATE': 'date',
'NUMBER OF STUDENTS': 'numberOfStudents',
'COURSE': {
'course': {
'IS FREE': 'isFree',
'COURSE TITLE': 'title'
}
}
}
readXlsxFile(file, { map }).then(({ rows }) => {
rows === [{
date: new Date(2018, 2, 24),
numberOfStudents: 10,
course: {
isFree: true,
title: 'Chemistry'
}
}]
})
Multiple Sheets
By default, it reads the first sheet in the document. If you have multiple sheets in your spreadsheet then pass either a sheet number (starting from 1
) or a sheet name in the options
argument.
readXlsxFile(file, { sheet: 2 }).then((data) => {
...
})
readXlsxFile(file, { sheet: 'Sheet1' }).then((data) => {
...
})
By default, options.sheet
is 1
.
To get the names of all sheets, use readSheetNames()
function:
readSheetNames(file).then((sheetNames) => {
})
Dates
XLSX format originally had no dedicated "date" type, so dates are in almost all cases stored simply as numbers (the count of days since 01/01/1900
) along with a "format" description (like "d mmm yyyy"
) that instructs the spreadsheet viewer software to format the date in the cell using that certain format.
When using readXlsx()
with a schema
parameter, all schema columns having type Date
are automatically parsed as dates. When using readXlsx()
without a schema
parameter, this library attempts to guess whether a cell contains a date or just a number by examining the cell's "format" — if the "format" is one of the built-in date formats then such cells' values are automatically parsed as dates. In other cases, when date cells use a non-built-in format (like "mm/dd/yyyy"
), one can pass an explicit dateFormat
parameter to instruct the library to parse numeric cells having such "format" as dates:
readXlsxFile(file, { dateFormat: 'mm/dd/yyyy' })
Trim
By default, it automatically trims all string values. To disable this feature, pass trim: false
option.
readXlsxFile(file, { trim: false })
Parse Numbers
By default, it parses numeric cell values from strings. In some rare cases though, javascript's inherently limited floating-point number precision might become an issue. An example might be finance and banking domain. To work around that, this library supports passing a custom parseNumber(string)
function option.
import Decimal from 'decimal.js'
readXlsxFile(file, {
parseNumber: (string) => new Decimal(string)
})
Transform
Sometimes, a spreadsheet doesn't exactly have the structure required by this library's schema
parsing feature: for example, it may be missing a header row, or contain some purely presentational / empty / "garbage" rows that should be removed. To fix that, one could pass an optional transformData(data)
function that would modify the spreadsheet contents as required.
readXlsxFile(file, {
schema,
transformData(data) {
return [['ID', 'NAME', ...]].concat(data)
return data.filter(row => row.filter(column => column !== null).length > 0)
}
})
Limitations
Performance
There have been some reports about performance issues when reading very large *.xlsx
spreadsheets using this library. It's true that this library's main point have been usability and convenience, and not performance when handling huge datasets. For example, the time of parsing a file with 2000 rows / 20 columns is about 3 seconds. So, for reading huge datasets, perhaps use something like xlsx
package instead. There're no comparative benchmarks between the two, so if you'll be making one, share it in the Issues.
Formulas
Dynamically calculated cells using formulas (SUM
, etc) are not supported.
TypeScript
I'm not a TypeScript expert, so the community has to write the typings (and test those). See example index.d.ts
.
CDN
One can use any npm CDN service, e.g. unpkg.com or jsdelivr.net
<script src="https://unpkg.com/read-excel-file@5.x/bundle/read-excel-file.min.js"></script>
<script>
var input = document.getElementById('input')
input.addEventListener('change', function() {
readXlsxFile(input.files[0]).then(function(rows) {
})
})
</script>
TypeScript
This library comes with TypeScript "typings". If you happen to find any bugs in those, create an issue.
References
Uses xmldom
for parsing XML.
GitHub
On March 9th, 2020, GitHub, Inc. silently banned my account (erasing all my repos, issues and comments, even in my employer's private repos) without any notice or explanation. Because of that, all source codes had to be promptly moved to GitLab. The GitHub repo is now only used as a backup (you can star the repo there too), and the primary repo is now the GitLab one. Issues can be reported in any repo.
License
MIT