Reputation: 6364
I have the following code
I invoke spark-shell as follows
./spark-shell --conf spark.cassandra.connection.host=170.99.99.134 --executor-memory 15G --executor-cores 12 --conf spark.cassandra.input.split.size_in_mb=67108864
code
scala> val df = spark.sql("SELECT test from hello") // Billion rows in hello and test column is 1KB
df: org.apache.spark.sql.DataFrame = [test: binary]
scala> df.count
[Stage 0:> (0 + 2) / 13] // I dont know what these numbers mean precisely.
If I invoke spark-shell as follows
./spark-shell --conf spark.cassandra.connection.host=170.99.99.134
code
val df = spark.sql("SELECT test from hello") // This has about billion rows
scala> df.count
[Stage 0:=> (686 + 2) / 24686] // What are these numbers precisely?
Both of these versions didn't work Spark keeps running forever and I have been waiting for more than 15 mins and no response. Any ideas on what could be wrong and how to fix this?
I am using Spark 2.0.2 and spark-cassandra-connector_2.11-2.0.0-M3.jar
Upvotes: 1
Views: 3231
Reputation: 330083
Dataset.count
is slow because it is not very smart when it comes to external data sources. It rewrites query as (it is good):
SELECT COUNT(1) FROM table
but instead of pushing COUNT
down it just executes :
SELECT 1 FROM table
against the source (it'll fetch a billion ones in your case) and then aggregates locally to get the final result. Numbers you see are tasks counters.
There is an optimized cassandraCount
operation on CassandraRDD
:
sc.cassandraTable(keyspace, table).cassandraCount
More about server side operations can be found in the documentation.
Upvotes: 4