I have a 10GB csv file in hadoop cluster with duplicate columns. I try to analyse it in SparkR so I use spark-csv
package to parse it as DataFrame
:
df <- read.df(
sqlContext,
FILE_PATH,
source = "com.databricks.spark.csv",
header = "true",
mode = "DROPMALFORMED"
)
But since df have duplicate Email
columns, if I want to select this column, it would error out:
select(df, 'Email')
15/11/19 15:41:58 ERROR RBackendHandler: select on 1422 failed
Error in invokeJava(isStatic = FALSE, objId$id, methodName, ...) :
org.apache.spark.sql.AnalysisException: Reference 'Email' is ambiguous, could be: Email#350, Email#361.;
at org.apache.spark.sql.catalyst.plans.logical.LogicalPlan.resolve(LogicalPlan.scala:278)
...
I want to keep the first occurrence of Email
column and delete the latter, how can I do that?
The best way would be to change the column name upstream ;)
However, it seems that is not possible, so there are a couple of options:
If the case of the columns are different("email" vs "Email") you can turn on case sensitivity:
sql(sqlContext, "set spark.sql.caseSensitive=true")
If the column names are exactly the same, you will need to manually specify the schema and skip the first row to avoid the headers:
customSchema <- structType(
structField("year", "integer"),
structField("make", "string"),
structField("model", "string"),
structField("comment", "string"),
structField("blank", "string"))
df <- read.df(sqlContext, "cars.csv", source = "com.databricks.spark.csv", header="true", schema = customSchema)