I have a large Excel(xlsx and xls) file with multiple sheet and I need convert it to RDD or Dataframe so that it can be joined to other dataframe later. I was thinking of using Apache POI and save it as a CSV and then read csv in dataframe. But if there is any libraries or API that can help in this Process would be easy. Any help is highly appreciated.


5 Answers 5


The solution to your problem is to use Spark Excel dependency in your project.

Spark Excel has flexible options to play with.

I have tested the following code to read from excel and convert it to dataframe and it just works perfect

def readExcel(file: String): DataFrame = sqlContext.read
    .option("location", file)
    .option("useHeader", "true")
    .option("treatEmptyValuesAsNulls", "true")
    .option("inferSchema", "true")
    .option("addColorColumns", "False")

val data = readExcel("path to your excel file")


you can give sheetname as option if your excel sheet has multiple sheets

.option("sheetName", "Sheet2")

I hope its helpful


Here are read and write examples to read from and write into excel with full set of options...

Source spark-excel from crealytics

Scala API Spark 2.0+:

Create a DataFrame from an Excel file

    import org.apache.spark.sql._

val spark: SparkSession = ???
val df = spark.read
        .option("sheetName", "Daily") // Required
        .option("useHeader", "true") // Required
        .option("treatEmptyValuesAsNulls", "false") // Optional, default: true
        .option("inferSchema", "false") // Optional, default: false
        .option("addColorColumns", "true") // Optional, default: false
        .option("startColumn", 0) // Optional, default: 0
        .option("endColumn", 99) // Optional, default: Int.MaxValue
        .option("timestampFormat", "MM-dd-yyyy HH:mm:ss") // Optional, default: yyyy-mm-dd hh:mm:ss[.fffffffff]
        .option("maxRowsInMemory", 20) // Optional, default None. If set, uses a streaming reader which can help with big files
        .option("excerptSize", 10) // Optional, default: 10. If set and if schema inferred, number of rows to infer schema from
        .schema(myCustomSchema) // Optional, default: Either inferred schema, or all columns are Strings

Write a DataFrame to an Excel file

      .option("sheetName", "Daily")
      .option("useHeader", "true")
      .option("dateFormat", "yy-mmm-d") // Optional, default: yy-m-d h:mm
      .option("timestampFormat", "mm-dd-yyyy hh:mm:ss") // Optional, default: yyyy-mm-dd hh:mm:ss.000

Note: Instead of sheet1 or sheet2 you can use their names as well.. in this example given above Daily is sheet name.

  • If you want to use it from spark shell...

This package can be added to Spark using the --packages command line option. For example, to include it when starting the spark shell:

    $SPARK_HOME/bin/spark-shell --packages com.crealytics:spark-excel_2.11:0.13.1

  • Dependencies needs to be added (in case of maven etc...):
groupId: com.crealytics
artifactId: spark-excel_2.11
version: 0.13.1

Further reading : See my article (How to do Simple reporting with Excel sheets using Apache Spark, Scala ?) of how to write in to excel file after an aggregations in to many excel sheets

Tip : This is very useful approach particularly for writing maven test cases where you can place excel sheets with sample data in excel src/main/resources folder and you can access them in your unit test cases(scala/java), which creates DataFrame[s] out of excel sheet...

A Spark datasource for the HadoopOffice library. This Spark datasource assumes at least Spark 2.0.1. However, the HadoopOffice library can also be used directly from Spark 1.x. Currently this datasource supports the following formats of the HadoopOffice library:

Excel Datasource format: org.zuinnote.spark.office.Excel Loading and Saving of old Excel (.xls) and new Excel (.xlsx) This datasource is available on Spark-packages.org and on Maven Central.

  • I used spark.read.format("com.crealytics.spark.excel").option("location","/home/mylocation/myfile.xlsx").load() but got java.lang.IllegalArgumentException: Parameter "path" is missing in options.
    – Regressor
    Sep 17, 2018 at 16:08
  • Actually, I've to store a spark dataframe in a excel file format with few column as a read only nature? Can you guide me regarding the same? Apr 28, 2022 at 19:37

Alternatively, you can use the HadoopOffice library (https://github.com/ZuInnoTe/hadoopoffice/wiki), which supports also encrypted Excel documents and linked workbooks, amongst other features. Of course Spark is also supported.

  • Hello All,Can we use the above to write data to multiple tabs in an excel sheet?.
    – Bharath
    Feb 26, 2018 at 14:46
  • I assume you mean multiple sheets in an Excel workbook. Yes, it can write to multiple sheets. Basically you define a SpreadSheetCellDAO which specifies formattedValue, Comment, Formula, Address and Sheet. However, to support you more I would need to know more about your use case. Feel free to provide the information as Github issue: github.com/ZuInnoTe/hadoopoffice/issues Feb 27, 2018 at 18:48
  • I have a column that has the values with double quotes eg: "xxxxx,yyy,zzz". Because of this, the value is not considered as a single column, if I see the dataframe, instead of one column, it is showing as 3 columns
    – ashK
    Oct 18, 2019 at 11:56
  • That is strange. There is no logic to split that column based on commas or double quotes. Can you please check with the Apache POI people: poi.apache.org/help/index.html ? Can you also please verify that it is indeed just one column and provide an example file? Oct 19, 2019 at 13:25

I have used com.crealytics.spark.excel-0.11 version jar and created in spark-Java, it would be the same in scala too, just need to change javaSparkContext to SparkContext.

tempTable = new SQLContext(javaSparkContxt).read()
    .option("sheetName", "sheet1")
    .option("useHeader", "false") // Required 
    .option("treatEmptyValuesAsNulls","false") // Optional, default: true 
    .option("inferSchema", "false") //Optional, default: false 
    .option("addColorColumns", "false") //Required
    .option("timestampFormat", "MM-dd-yyyy HH:mm:ss") // Optional, default: yyyy-mm-dd hh:mm:ss[.fffffffff] .schema(schema)
  • Actually, I've to store a spark dataframe in a excel file format with few column as a read only nature? Can you guide me regarding the same? Apr 28, 2022 at 19:37

Hope this should help.

val df_excel= spark.read.
                   option("useHeader", "true").
                   option("treatEmptyValuesAsNulls", "false").
                   option("inferSchema", "false"). 
                   option("addColorColumns", "false").load(file_path)

  • Actually, I've to store a spark dataframe in a excel file format with few column as a read only nature? Can you guide me regarding the same? Apr 28, 2022 at 19:37

Not the answer you're looking for? Browse other questions tagged or ask your own question.