I'm facing an issue with spark cassandra connector on scala while updating a table in my keyspace

Here is my piece of code

                        " SET a= a + " + b + " WHERE x=" +
                        x + " AND y=" + y +
                        " AND z=" + x


val KeySpace    = new CassandraSQLContext(sparkContext)


When I execute this code, I'm getting an error like this

Exception in thread "main" java.lang.RuntimeException: [1.1] failure: ``insert'' expected but identifier UPDATE found

Any idea why this is happening? How can I fix this?

  • What is the result if you run the SQL statement that is generated by your code directly on Cassandra?
    – ofirski
    Aug 6, 2015 at 4:27
  • @kerkero : If I run it on cassandra, it will either update the row if the key is already present, or will create a new row for that key if the key is not present Aug 6, 2015 at 4:31
  • Did you define the column which corresponds to "a" in your example as counter type?
    – ofirski
    Aug 6, 2015 at 4:42
  • If is defined, BTW... its not counter, its a set Aug 6, 2015 at 4:43
  • Hi @SunilKumarBM, in an arguably biased view I'd recommend using phantom for a normal Cassandra application, the spark connector is specifically geared towards Spark applications, whereas phantom is meant to be the foundation of any Cassandra based API.
    – flavian
    Sep 9, 2015 at 19:32

2 Answers 2


The UPDATE of a table with counter column is feasible via the spark-cassandra-connector. You will have to use DataFrames and DataFrameWriter method save with mode "append" (or SaveMode.Append if you prefer). Check the code DataFrameWriter.scala.

For example, given a table:

cqlsh:test> SELECT * FROM name_counter ;

 name    | surname | count
    John |   Smith |   100
   Zhang |     Wei |  1000
 Angelos |   Papas |    10

The code should look like this:

val updateRdd = sc.parallelize(Seq(Row("John",    "Smith", 1L),
                                   Row("Zhang",   "Wei",   2L),
                                   Row("Angelos", "Papas", 3L)))

val tblStruct = new StructType(
    Array(StructField("name",    StringType, nullable = false),
          StructField("surname", StringType, nullable = false),
          StructField("count",   LongType,   nullable = false)))

val updateDf  = sqlContext.createDataFrame(updateRdd, tblStruct)

.options(Map("keyspace" -> "test", "table" -> "name_counter"))


 name    | surname | count
    John |   Smith |   101
   Zhang |     Wei |  1002
 Angelos |   Papas |    13

The DataFrame conversion can be simpler by implicitly convert an RDD to a DataFrame: import sqlContext.implicits._ and using .toDF().

Check the full code for this toy application: https://github.com/kyrsideris/SparkUpdateCassandra/tree/master

Since versions are very important here, the above apply to Scala 2.11.7, Spark 1.5.1, spark-cassandra-connector 1.5.0-RC1-s_2.11, Cassandra 3.0.5. DataFrameWriter is designated as @Experimental since @since 1.4.0.

  • how can i insert new record or delete using dataframe?
    – H Raval
    Feb 14, 2017 at 10:13

I believe that you cannot update natively through the SPARK connector. See the documention:

"The default behavior of the Spark Cassandra Connector is to overwrite collections when inserted into a cassandra table. To override this behavior you can specify a custom mapper with instructions on how you would like the collection to be treated."

So you'll want to actually INSERT a new record with an existing key.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge that you have read and understand our privacy policy and code of conduct.

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