I believe spark.rdd.compress requires the data to be serialized. In my case, I have data already compressed which becomes decompressed as I try to cache it. I believe even when I set spark.rdd.compress to *true, *Spark will still decompress the data and then serialize it and then compress the serialized data.
Although Parquet is an option, I believe it will only make sense to use it when running Spark SQL. However, if I am using graphx or mllib will it help? Thanks, Adnan Haider B.S Candidate, Computer Science Illinois Institute of Technology On Thu, Oct 22, 2015 at 7:15 AM, Igor Berman <igor.ber...@gmail.com> wrote: > check spark.rdd.compress > > On 19 October 2015 at 21:13, ahaider3 <ahaid...@hawk.iit.edu> wrote: > >> Hi, >> A lot of the data I have in HDFS is compressed. I noticed when I load this >> data into spark and cache it, Spark unrolls the data like normal but >> stores >> the data uncompressed in memory. For example, suppose /data/ is an RDD >> with >> compressed partitions on HDFS. I then cache the data. When I call >> /data.count()/, the data is rightly decompressed since it needs to find >> the >> value of /.count()/. But, the data that is cached is also decompressed. >> Can >> a partition be compressed in spark? I know spark allows for data to be >> compressed, after serialization. But what if, I only want the partitions >> compressed. >> >> >> >> -- >> View this message in context: >> http://apache-spark-user-list.1001560.n3.nabble.com/Storing-Compressed-data-in-HDFS-into-Spark-tp25123.html >> Sent from the Apache Spark User List mailing list archive at Nabble.com. >> >> --------------------------------------------------------------------- >> To unsubscribe, e-mail: user-unsubscr...@spark.apache.org >> For additional commands, e-mail: user-h...@spark.apache.org >> >> >