I am trying to read a csv file into a dataframe. I know what the schema of my dataframe should be since I know my csv file. Also I am using spark csv package to read the file. I trying to specify the schema like below.

val pagecount = sqlContext.read.format("csv")
            .option("delimiter"," ").option("quote","")
            .option("schema","project: string ,article: string ,requests: integer ,bytes_served: long")
            .load("dbfs:/databricks-datasets/wikipedia-datasets/data-001/pagecounts/sample/pagecounts-20151124-170000")

But when I check the schema of the data frame I created, it seems to have taken its own schema. Am I doing anything wrong ? how to make spark to pick up the schema I mentioned ?

> pagecount.printSchema
root
|-- _c0: string (nullable = true)
|-- _c1: string (nullable = true)
|-- _c2: string (nullable = true)
|-- _c3: string (nullable = true)
  • which version of spark you are using ? – Arunakiran Nulu Oct 7 '16 at 23:58

Try below , you need not specify the schema. when you give inferSchema as true it should take it from your csv file.

val pagecount = sqlContext.read.format("csv")
     .option("delimiter"," ").option("quote","")
     .option("header", "true")
     .option("inferSchema", "true")
     .load("dbfs:/databricks-datasets/wikipedia-datasets/data-001/pagecounts/sample/pagecounts-20151124-170000")

if you want to manually specify the schema , you need to do as below

import org.apache.spark.sql.types._

val customSchema = StructType(Array(
        StructField("project", StringType, true),
        StructField("article", StringType, true),
        StructField("requests", IntegerType, true),
        StructField("bytes_served", DoubleType, true)))

     val pagecount = sqlContext.read.format("csv")
             .option("delimiter"," ").option("quote","")
             .option("header", "true")
             .schema(customSchema)
             .load("dbfs:/databricks-datasets/wikipedia-datasets/data-001/pagecounts/sample/pagecounts-20151124-170000")
  • I tried executing the code but it gave me the below error. val customSchema = StructType(Array( StructField("project", StringType, true), StructField("article", StringType, true), StructField("requests", IntegerType, true), StructField("bytes_served", DoubleType, true))) <console>:30: error: not found: value StructType val customSchema = StructType(Array( – Pa1 Oct 11 '16 at 3:21
  • Theoretically I know we can mention the schema but I am lost on how to mention the schema in terms of syntax, is there any help that I can look up for ? I referred official documentation bit it do not mention this case and do not have much examples – Pa1 Oct 11 '16 at 3:23
  • can you attach the error screenshot once – Arunakiran Nulu Oct 11 '16 at 3:43

I'm using the solution provided by Arunakiran Nulu in my analysis (see the code). Despite it is able to assign the correct types to the columns, all the values returned are null. Previously, I've tried to the option .option("inferSchema", "true") and it returns the correct values in the dataframe (although different type).

val customSchema = StructType(Array(
    StructField("numicu", StringType, true),
    StructField("fecha_solicitud", TimestampType, true),
    StructField("codtecnica", StringType, true),
    StructField("tecnica", StringType, true),
    StructField("finexploracion", TimestampType, true),
    StructField("ultimavalidacioninforme", TimestampType, true),
    StructField("validador", StringType, true)))

val df_explo = spark.read
        .format("csv")
        .option("header", "true")
        .option("delimiter", "\t")
        .option("timestampFormat", "yyyy/MM/dd HH:mm:ss") 
        .schema(customSchema)
        .load(filename)

Result

root


|-- numicu: string (nullable = true)
 |-- fecha_solicitud: timestamp (nullable = true)
 |-- codtecnica: string (nullable = true)
 |-- tecnica: string (nullable = true)
 |-- finexploracion: timestamp (nullable = true)
 |-- ultimavalidacioninforme: timestamp (nullable = true)
 |-- validador: string (nullable = true)

and the table is:

|numicu|fecha_solicitud|codtecnica|tecnica|finexploracion|ultimavalidacioninforme|validador|
+------+---------------+----------+-------+--------------+-----------------------+---------+
|  null|           null|      null|   null|          null|                   null|     null|
|  null|           null|      null|   null|          null|                   null|     null|
|  null|           null|      null|   null|          null|                   null|     null|
|  null|           null|      null|   null|          null|                   null|     null|
  • It looks like .option("timestampFormat", "yyyy/mm/dd HH:mm:ss") should instead be .option("timestampFormat", "yyyy/MM/dd HH:mm:ss"). [Notice the capital MM for month] Otherwise it will be interpreting the month digits as the minutes of the timestamp. – Rick Haffey May 14 at 16:47
  • Yes! You are right! I didn't notice. I'll edit my answer. Thanks – Alberto Castelo Becerra May 14 at 18:08
  • If you have a DateType column which may contain 'null' values, set .option("nullValue", "null") otherwise it considers entire row with null values. – narush May 24 at 11:19

Here's how you can work with a custom schema, a complete demo:

$> shell code,

echo "
Slingo, iOS 
Slingo, Android
" > game.csv

Scala code:

import org.apache.spark.sql.types._

val customSchema = StructType(Array(
  StructField("game_id", StringType, true),
  StructField("os_id", StringType, true)
))

val csv_df = spark.read.format("csv").schema(customSchema).load("game.csv")
csv_df.show 

csv_df.orderBy(asc("game_id"), desc("os_id")).show
csv_df.createOrReplaceTempView("game_view")
val sort_df = sql("select * from game_view order by game_id, os_id desc")
sort_df.show 

Thanks to the answer by @Nulu, it works for pyspark with minimal tweaking

from pyspark.sql.types import LongType, StringType, StructField, StructType, BooleanType, ArrayType, IntegerType

customSchema = StructType(Array(
    StructField("project", StringType, true),
    StructField("article", StringType, true),
    StructField("requests", IntegerType, true),
    StructField("bytes_served", DoubleType, true)))

pagecount = sc.read.format("com.databricks.spark.csv")
         .option("delimiter"," ")
         .option("quote","")
         .option("header", "false")
         .schema(customSchema)
         .load("dbfs:/databricks-datasets/wikipedia-datasets/data-001/pagecounts/sample/pagecounts-20151124-170000")
  • Above code doesn't work In pyspark. What worked for me is:>>> customSchema = StructType().add("MovieID", IntegerType(), True).add("Title", StringType(), True).add("Genres", StringType(), True) >>> df = sqlContext.read.format("csv").option("delimiter",",").option("header", "true").schema(customSchema).load("movies.csv") >>> df DataFrame[MovieID: int, Title: string, Genres: string] >>> – Anup May 15 at 9:13

For those interested in doing this in Python here is a working version.

customSchema = StructType([
    StructField("IDGC", StringType(), True),        
    StructField("SEARCHNAME", StringType(), True),
    StructField("PRICE", DoubleType(), True)
])
productDF = spark.read.load('/home/ForTesting/testProduct.csv', format="csv", header="true", sep='|', schema=customSchema)

testProduct.csv
ID|SEARCHNAME|PRICE
6607|EFKTON75LIN|890.88
6612|EFKTON100HEN|55.66

Hope this helps.

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