Add support for local:// URI scheme for addJars()
This PR adds support for a new URI scheme for SparkContext.addJars(): `local://file/path`.
The *local* scheme indicates that the `/file/path` exists on every worker node. The reason for its existence is for big library JARs, which would be really expensive to serve using the standard HTTP fileserver distribution method, especially for big clusters. Today the only inexpensive method (assuming such a file is on every host, via say NFS, rsync, etc.) of doing this is to add the JAR to the SPARK_CLASSPATH, but we want a method where the user does not need to modify the Spark configuration.
I would add something to the docs, but it's not obvious where to add it.
Oh, and it would be great if this could be merged in time for 0.8.1.
Reduce the memory footprint of BlockInfo objects
This pull request reduces the memory footprint of all BlockInfo objects and makes additional optimizations for shuffle blocks. For all BlockInfo objects, these changes remove two boolean fields and one Object field. For shuffle blocks, we additionally remove an Object field and a boolean field.
When storing tens of thousands of these objects, this may add up to significant memory savings. A ShuffleBlockInfo now only needs to wrap a single long.
This was motivated by a [report of high blockInfo memory usage during shuffles](https://mail-archives.apache.org/mod_mbox/incubator-spark-user/201310.mbox/%3C20131026134353.202b2b9b%40sh9%3E).
I haven't run benchmarks to measure the exact memory savings.
/cc @aarondav
Display both task ID and task attempt ID in UI, and rename taskId to taskAttemptId
Previously only the task attempt ID was shown in the UI; this was confusing because the job can be shown as complete while there are tasks still running. Showing the task ID in addition to the attempt ID makes it clear which tasks are redundant.
This commit also renames taskId to taskAttemptId in TaskInfo and in the local/cluster schedulers. This identifier was used to uniquely identify attempts, not tasks, so the current naming was confusing. The new naming is also more consistent with map reduce.
Eliminate extra memory usage when shuffle file consolidation is disabled
Otherwise, we see SPARK-946 even when shuffle file consolidation is disabled.
Fixing SPARK-946 is still forthcoming.
System.getProperties.toMap will fail-fast when concurrently modified,
and it seems like some other thread started by SparkContext does
a System.setProperty during it's initialization.
Handle this by just looping on ConcurrentModificationException, which
seems the safest, since the non-fail-fast methods (Hastable.entrySet)
have undefined behavior under concurrent modification.
Improve error message when multiple assembly jars are present.
This can happen easily if building different hadoop versions. Right now it gives a class not found exception.
Added new Spark Streaming operations
New operations
- transformWith which allows arbitrary 2-to-1 DStream transform, added to Scala and Java API
- StreamingContext.transform to allow arbitrary n-to-1 DStream
- leftOuterJoin and rightOuterJoin between 2 DStreams, added to Scala and Java API
- missing variations of join and cogroup added to Scala Java API
- missing JavaStreamingContext.union
Updated a number of Java and Scala API docs