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15111 commits

Author SHA1 Message Date
Marcelo Vanzin 8301fadd8d [SPARK-13626][CORE] Avoid duplicate config deprecation warnings.
Three different things were needed to get rid of spurious warnings:
- silence deprecation warnings when cloning configuration
- change the way SparkHadoopUtil instantiates SparkConf to silence
  warnings
- avoid creating new SparkConf instances where it's not needed.

On top of that, I changed the way that Logging.scala detects the repl;
now it uses a method that is overridden in the repl's Main class, and
the hack in Utils.scala is not needed anymore. This makes the 2.11 repl
behave like the 2.10 one and set the default log level to WARN, which
is a lot better. Previously, this wasn't working because the 2.11 repl
triggers log initialization earlier than the 2.10 one.

I also removed and simplified some other code in the 2.11 repl's Main
to avoid replicating logic that already exists elsewhere in Spark.

Tested the 2.11 repl in local and yarn modes.

Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #11510 from vanzin/SPARK-13626.
2016-03-14 14:27:33 -07:00
Josh Rosen 38529d8f23 [SPARK-10907][SPARK-6157] Remove pendingUnrollMemory from MemoryStore
This patch refactors the MemoryStore to remove the concept of `pendingUnrollMemory`. It also fixes fixes SPARK-6157: "Unrolling with MEMORY_AND_DISK should always release memory".

Key changes:

- Inline `MemoryStore.tryToPut` at its three call sites in the `MemoryStore`.
- Inline `Memory.unrollSafely` at its only call site (in `MemoryStore.putIterator`).
- Inline `MemoryManager.acquireStorageMemory` at its call sites.
- Simplify the code as a result of this inlining (some parameters have fixed values after inlining, so lots of branches can be removed).
- Remove the `pendingUnrollMemory` map by returning the amount of unrollMemory allocated when returning an iterator after a failed `putIterator` call.
- Change `putIterator` to return an instance of `PartiallyUnrolledIterator`, a special iterator subclass which will automatically free the unroll memory of its partially-unrolled elements when the iterator is consumed. To handle cases where the iterator is not consumed (e.g. when a MEMORY_ONLY put fails), `PartiallyUnrolledIterator` exposes a `close()` method which may be called to discard the unrolled values and free their memory.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #11613 from JoshRosen/cleanup-unroll-memory.
2016-03-14 14:26:39 -07:00
Dongjoon Hyun a48296f4fe [SPARK-13686][MLLIB][STREAMING] Add a constructor parameter reqParam to (Streaming)LinearRegressionWithSGD
## What changes were proposed in this pull request?

`LinearRegressionWithSGD` and `StreamingLinearRegressionWithSGD` does not have `regParam` as their constructor arguments. They just depends on GradientDescent's default reqParam values.
To be consistent with other algorithms, we had better add them. The same default value is used.

## How was this patch tested?

Pass the existing unit test.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11527 from dongjoon-hyun/SPARK-13686.
2016-03-14 12:46:53 -07:00
Thomas Graves 23385e853e [SPARK-13054] Always post TaskEnd event for tasks
I am using dynamic container allocation and speculation and am seeing issues with the active task accounting. The Executor UI still shows active tasks on the an executor but the job/stage is all completed. I think its also affecting the dynamic allocation being able to release containers because it thinks there are still tasks.
There are multiple issues with this:
-  If the task end for tasks (in this case probably because of speculation) comes in after the stage is finished, then the DAGScheduler.handleTaskCompletion will skip the task completion event

Author: Thomas Graves <tgraves@prevailsail.corp.gq1.yahoo.com>
Author: Thomas Graves <tgraves@staydecay.corp.gq1.yahoo.com>
Author: Tom Graves <tgraves@yahoo-inc.com>

Closes #10951 from tgravescs/SPARK-11701.
2016-03-14 12:31:46 -07:00
Bjorn Jonsson e06493cb7b [MINOR][COMMON] Fix copy-paste oversight in variable naming
## What changes were proposed in this pull request?

JavaUtils.java has methods to convert time and byte strings for internal use, this change renames a variable used in byteStringAs(), from timeError to byteError.

Author: Bjorn Jonsson <bjornjon@gmail.com>

Closes #11695 from bjornjon/master.
2016-03-14 12:27:49 -07:00
Daniel Santana 9f13f0fc17 [MINOR][DOCS] Added Missing back slashes
## What changes were proposed in this pull request?

When studying spark many users just copy examples on the documentation and paste on their terminals
and because of that the missing backlashes lead them run into some shell errors.

The added backslashes avoid that problem for spark users with that behavior.

## How was this patch tested?

I generated the documentation locally using jekyll and checked the generated pages

Author: Daniel Santana <mestresan@gmail.com>

Closes #11699 from danielsan/master.
2016-03-14 12:26:08 -07:00
Bertrand Bossy 310981d49a [SPARK-12583][MESOS] Mesos shuffle service: Don't delete shuffle files before application has stopped
## Problem description:

Mesos shuffle service is completely unusable since Spark 1.6.0 . The problem seems to occur since the move from akka to netty in the networking layer. Until now, a connection from the driver to each shuffle service was used as a signal for the shuffle service to determine, whether the driver is still running. Since 1.6.0, this connection is closed after spark.shuffle.io.connectionTimeout (or spark.network.timeout if the former is not set) due to it being idle. The shuffle service interprets this as a signal that the driver has stopped, despite the driver still being alive. Thus, shuffle files are deleted before the application has stopped.

### Context and analysis:

spark shuffle fails with mesos after 2mins: https://issues.apache.org/jira/browse/SPARK-12583
External shuffle service broken w/ Mesos: https://issues.apache.org/jira/browse/SPARK-13159

This is a follow up on #11207 .

## What changes were proposed in this pull request?

This PR adds a heartbeat signal from the Driver (in MesosExternalShuffleClient) to all registered external mesos shuffle service instances. In MesosExternalShuffleBlockHandler, a thread periodically checks whether a driver has timed out and cleans an application's shuffle files if this is the case.

## How was the this patch tested?

This patch has been tested on a small mesos test cluster using the spark-shell. Log output from mesos shuffle service:
```
16/02/19 15:13:45 INFO mesos.MesosExternalShuffleBlockHandler: Received registration request from app 294def07-3249-4e0f-8d71-bf8c83c58a50-0018 (remote address /xxx.xxx.xxx.xxx:52391, heartbeat timeout 120000 ms).
16/02/19 15:13:47 INFO shuffle.ExternalShuffleBlockResolver: Registered executor AppExecId{appId=294def07-3249-4e0f-8d71-bf8c83c58a50-0018, execId=3} with ExecutorShuffleInfo{localDirs=[/foo/blockmgr-c84c0697-a3f9-4f61-9c64-4d3ee227c047], subDirsPerLocalDir=64, shuffleManager=sort}
16/02/19 15:13:47 INFO shuffle.ExternalShuffleBlockResolver: Registered executor AppExecId{appId=294def07-3249-4e0f-8d71-bf8c83c58a50-0018, execId=7} with ExecutorShuffleInfo{localDirs=[/foo/blockmgr-bf46497a-de80-47b9-88f9-563123b59e03], subDirsPerLocalDir=64, shuffleManager=sort}
16/02/19 15:16:02 INFO mesos.MesosExternalShuffleBlockHandler: Application 294def07-3249-4e0f-8d71-bf8c83c58a50-0018 timed out. Removing shuffle files.
16/02/19 15:16:02 INFO shuffle.ExternalShuffleBlockResolver: Application 294def07-3249-4e0f-8d71-bf8c83c58a50-0018 removed, cleanupLocalDirs = true
16/02/19 15:16:02 INFO shuffle.ExternalShuffleBlockResolver: Cleaning up executor AppExecId{appId=294def07-3249-4e0f-8d71-bf8c83c58a50-0018, execId=3}'s 1 local dirs
16/02/19 15:16:02 INFO shuffle.ExternalShuffleBlockResolver: Cleaning up executor AppExecId{appId=294def07-3249-4e0f-8d71-bf8c83c58a50-0018, execId=7}'s 1 local dirs
```
Note: there are 2 executors running on this slave.

Author: Bertrand Bossy <bertrand.bossy@teralytics.net>

Closes #11272 from bbossy/SPARK-12583-mesos-shuffle-service-heartbeat.
2016-03-14 12:22:57 -07:00
Josh Rosen 07cb323e7a [SPARK-13848][SPARK-5185] Update to Py4J 0.9.2 in order to fix classloading issue
This patch upgrades Py4J from 0.9.1 to 0.9.2 in order to include a patch which modifies Py4J to use the current thread's ContextClassLoader when performing reflection / class loading. This is necessary in order to fix [SPARK-5185](https://issues.apache.org/jira/browse/SPARK-5185), a longstanding issue affecting the use of `--jars` and `--packages` in PySpark.

In order to demonstrate that the fix works, I removed the workarounds which were added as part of [SPARK-6027](https://issues.apache.org/jira/browse/SPARK-6027) / #4779 and other patches.

Py4J diff: https://github.com/bartdag/py4j/compare/0.9.1...0.9.2

/cc zsxwing tdas davies brkyvz

Author: Josh Rosen <joshrosen@databricks.com>

Closes #11687 from JoshRosen/py4j-0.9.2.
2016-03-14 12:22:02 -07:00
Liang-Chi Hsieh 6a4bfcd62b [SPARK-13658][SQL] BooleanSimplification rule is slow with large boolean expressions
JIRA: https://issues.apache.org/jira/browse/SPARK-13658

## What changes were proposed in this pull request?

Quoted from JIRA description: When run TPCDS Q3 [1] with lots predicates to filter out the partitions, the optimizer rule BooleanSimplification take about 2 seconds (it use lots of sematicsEqual, which require copy the whole tree).

It will great if we could speedup it.

[1] https://github.com/cloudera/impala-tpcds-kit/blob/master/queries/q3.sql

How to speed up it:

When we ask the canonicalized expression in `Expression`, it calls `Canonicalize.execute` on itself. `Canonicalize.execute` basically transforms up all expressions included in this expression. However, we don't keep the canonicalized versions for these children expressions. So in next time we ask the canonicalized expressions for the children expressions (e.g., `BooleanSimplification`), we will rerun `Canonicalize.execute` on each of them. It wastes much time.

By forcing the children expressions to get and keep their canonicalized versions first, we can avoid re-canonicalize these expressions.

I simply benchmark it with an expression which is part of the where clause in TPCDS Q3:

    val testRelation = LocalRelation('ss_sold_date_sk.int, 'd_moy.int, 'i_manufact_id.int, 'ss_item_sk.string, 'i_item_sk.string, 'd_date_sk.int)

    val input = ('d_date_sk === 'ss_sold_date_sk) && ('ss_item_sk === 'i_item_sk) && ('i_manufact_id === 436) && ('d_moy === 12) && (('ss_sold_date_sk > 2415355 && 'ss_sold_date_sk < 2415385) || ('ss_sold_date_sk > 2415720 && 'ss_sold_date_sk < 2415750) || ('ss_sold_date_sk > 2416085 && 'ss_sold_date_sk < 2416115) || ('ss_sold_date_sk > 2416450 && 'ss_sold_date_sk < 2416480) || ('ss_sold_date_sk > 2416816 && 'ss_sold_date_sk < 2416846) || ('ss_sold_date_sk > 2417181 && 'ss_sold_date_sk < 2417211) || ('ss_sold_date_sk > 2417546 && 'ss_sold_date_sk < 2417576) || ('ss_sold_date_sk > 2417911 && 'ss_sold_date_sk < 2417941) || ('ss_sold_date_sk > 2418277 && 'ss_sold_date_sk < 2418307) || ('ss_sold_date_sk > 2418642 && 'ss_sold_date_sk < 2418672) || ('ss_sold_date_sk > 2419007 && 'ss_sold_date_sk < 2419037) || ('ss_sold_date_sk > 2419372 && 'ss_sold_date_sk < 2419402) || ('ss_sold_date_sk > 2419738 && 'ss_sold_date_sk < 2419768) || ('ss_sold_date_sk > 2420103 && 'ss_sold_date_sk < 2420133) || ('ss_sold_date_sk > 2420468 && 'ss_sold_date_sk < 2420498) || ('ss_sold_date_sk > 2420833 && 'ss_sold_date_sk < 2420863) || ('ss_sold_date_sk > 2421199 && 'ss_sold_date_sk < 2421229) || ('ss_sold_date_sk > 2421564 && 'ss_sold_date_sk < 2421594) || ('ss_sold_date_sk > 2421929 && 'ss_sold_date_sk < 2421959) || ('ss_sold_date_sk > 2422294 && 'ss_sold_date_sk < 2422324) || ('ss_sold_date_sk > 2422660 && 'ss_sold_date_sk < 2422690) || ('ss_sold_date_sk > 2423025 && 'ss_sold_date_sk < 2423055) || ('ss_sold_date_sk > 2423390 && 'ss_sold_date_sk < 2423420) || ('ss_sold_date_sk > 2423755 && 'ss_sold_date_sk < 2423785) || ('ss_sold_date_sk > 2424121 && 'ss_sold_date_sk < 2424151) || ('ss_sold_date_sk > 2424486 && 'ss_sold_date_sk < 2424516) || ('ss_sold_date_sk > 2424851 && 'ss_sold_date_sk < 2424881) || ('ss_sold_date_sk > 2425216 && 'ss_sold_date_sk < 2425246) || ('ss_sold_date_sk > 2425582 && 'ss_sold_date_sk < 2425612) || ('ss_sold_date_sk > 2425947 && 'ss_sold_date_sk < 2425977) || ('ss_sold_date_sk > 2426312 && 'ss_sold_date_sk < 2426342) || ('ss_sold_date_sk > 2426677 && 'ss_sold_date_sk < 2426707) || ('ss_sold_date_sk > 2427043 && 'ss_sold_date_sk < 2427073) || ('ss_sold_date_sk > 2427408 && 'ss_sold_date_sk < 2427438) || ('ss_sold_date_sk > 2427773 && 'ss_sold_date_sk < 2427803) || ('ss_sold_date_sk > 2428138 && 'ss_sold_date_sk < 2428168) || ('ss_sold_date_sk > 2428504 && 'ss_sold_date_sk < 2428534) || ('ss_sold_date_sk > 2428869 && 'ss_sold_date_sk < 2428899) || ('ss_sold_date_sk > 2429234 && 'ss_sold_date_sk < 2429264) || ('ss_sold_date_sk > 2429599 && 'ss_sold_date_sk < 2429629) || ('ss_sold_date_sk > 2429965 && 'ss_sold_date_sk < 2429995) || ('ss_sold_date_sk > 2430330 && 'ss_sold_date_sk < 2430360) || ('ss_sold_date_sk > 2430695 && 'ss_sold_date_sk < 2430725) || ('ss_sold_date_sk > 2431060 && 'ss_sold_date_sk < 2431090) || ('ss_sold_date_sk > 2431426 && 'ss_sold_date_sk < 2431456) || ('ss_sold_date_sk > 2431791 && 'ss_sold_date_sk < 2431821) || ('ss_sold_date_sk > 2432156 && 'ss_sold_date_sk < 2432186) || ('ss_sold_date_sk > 2432521 && 'ss_sold_date_sk < 2432551) || ('ss_sold_date_sk > 2432887 && 'ss_sold_date_sk < 2432917) || ('ss_sold_date_sk > 2433252 && 'ss_sold_date_sk < 2433282) || ('ss_sold_date_sk > 2433617 && 'ss_sold_date_sk < 2433647) || ('ss_sold_date_sk > 2433982 && 'ss_sold_date_sk < 2434012) || ('ss_sold_date_sk > 2434348 && 'ss_sold_date_sk < 2434378) || ('ss_sold_date_sk > 2434713 && 'ss_sold_date_sk < 2434743)))

    val plan = testRelation.where(input).analyze
    val actual = Optimize.execute(plan)

With this patch:

    352 milliseconds
    346 milliseconds
    340 milliseconds

Without this patch:

    585 milliseconds
    880 milliseconds
    677 milliseconds

## How was this patch tested?

Existing tests should pass.

Author: Liang-Chi Hsieh <simonh@tw.ibm.com>
Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #11647 from viirya/improve-expr-canonicalize.
2016-03-14 11:23:29 -07:00
Ryan Blue 63f642aea3 [SPARK-13779][YARN] Avoid cancelling non-local container requests.
To maximize locality, the YarnAllocator would cancel any requests with a
stale locality preference or no locality preference. This assumed that
the majority of tasks had locality preferences, but may not be the case
when scanning S3. This caused container requests for S3 tasks to be
constantly cancelled and resubmitted.

This changes the allocator's logic to cancel only stale requests and
just enough requests without locality preferences to submit requests
with locality preferences. This avoids cancelling requests without
locality preferences that would be resubmitted without locality
preferences.

We've deployed this patch on our clusters and verified that jobs that couldn't get executors because they kept canceling and resubmitting requests are fixed. Large jobs are running fine.

Author: Ryan Blue <blue@apache.org>

Closes #11612 from rdblue/SPARK-13779-fix-yarn-allocator-requests.
2016-03-14 11:18:37 -07:00
Marcelo Vanzin 45f8053be5 [SPARK-13578][CORE] Modify launch scripts to not use assemblies.
Instead of looking for a specially-named assembly, the scripts now will
blindly add all jars under the libs directory to the classpath. This
libs directory is still currently the old assembly dir, so things should
keep working the same way as before until we make more packaging changes.

The only lost feature is the detection of multiple assemblies; I consider
that a minor nicety that only really affects few developers, so it's probably
ok.

Tested locally by running spark-shell; also did some minor Win32 testing
(just made sure spark-shell started).

Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #11591 from vanzin/SPARK-13578.
2016-03-14 11:13:26 -07:00
Josh Rosen 9a87afd7d1 [SPARK-13833] Guard against race condition when re-caching disk blocks in memory
When reading data from the DiskStore and attempting to cache it back into the memory store, we should guard against race conditions where multiple readers are attempting to re-cache the same block in memory.

This patch accomplishes this by synchronizing on the block's `BlockInfo` object while trying to re-cache a block.

(Will file JIRA as soon as ASF JIRA stops being down / laggy).

Author: Josh Rosen <joshrosen@databricks.com>

Closes #11660 from JoshRosen/concurrent-recaching-fixes.
2016-03-14 10:48:24 -07:00
Andrew Or 9a1680c2c8 [SPARK-13139][SQL] Follow-ups to #11573
Addressing outstanding comments in #11573.

Jenkins, new test case in `DDLCommandSuite`

Author: Andrew Or <andrew@databricks.com>

Closes #11667 from andrewor14/ddl-parser-followups.
2016-03-14 09:59:22 -07:00
Yin Huai 250832c733 [SPARK-13207][SQL] Make partitioning discovery ignore _SUCCESS files.
If a _SUCCESS appears in the inner partitioning dir, partition discovery will treat that _SUCCESS file as a data file. Then, partition discovery will fail because it finds that the dir structure is not valid. We should ignore those `_SUCCESS` files.

In future, it is better to ignore all files/dirs starting with `_` or `.`. This PR does not make this change. I am thinking about making this change simple, so we can consider of getting it in branch 1.6.

To ignore all files/dirs starting with `_` or `, the main change is to let ParquetRelation have another way to get metadata files. Right now, it relies on FileStatusCache's cachedLeafStatuses, which returns file statuses of both metadata files (e.g. metadata files used by parquet) and data files, which requires more changes.

https://issues.apache.org/jira/browse/SPARK-13207

Author: Yin Huai <yhuai@databricks.com>

Closes #11088 from yhuai/SPARK-13207.
2016-03-14 09:03:13 -07:00
Wilson Wu 31d069d4c2 [SPARK-13746][TESTS] stop using deprecated SynchronizedSet
trait SynchronizedSet in package mutable is deprecated

Author: Wilson Wu <wilson888888888@gmail.com>

Closes #11580 from wilson888888888/spark-synchronizedset.
2016-03-14 09:13:29 +00:00
Dongjoon Hyun acdf219703 [MINOR][DOCS] Fix more typos in comments/strings.
## What changes were proposed in this pull request?

This PR fixes 135 typos over 107 files:
* 121 typos in comments
* 11 typos in testcase name
* 3 typos in log messages

## How was this patch tested?

Manual.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11689 from dongjoon-hyun/fix_more_typos.
2016-03-14 09:07:39 +00:00
Reynold Xin e58fa19d17 Closes #11668 2016-03-13 22:14:59 -07:00
Sean Owen 1840852841 [SPARK-13823][CORE][STREAMING][SQL] Always specify Charset in String <-> byte[] conversions (and remaining Coverity items)
## What changes were proposed in this pull request?

- Fixes calls to `new String(byte[])` or `String.getBytes()` that rely on platform default encoding, to use UTF-8
- Same for `InputStreamReader` and `OutputStreamWriter` constructors
- Standardizes on UTF-8 everywhere
- Standardizes specifying the encoding with `StandardCharsets.UTF-8`, not the Guava constant or "UTF-8" (which means handling `UnuspportedEncodingException`)
- (also addresses the other remaining Coverity scan issues, which are pretty trivial; these are separated into commit 1deecd8d9c )

## How was this patch tested?

Jenkins tests

Author: Sean Owen <sowen@cloudera.com>

Closes #11657 from srowen/SPARK-13823.
2016-03-13 21:03:49 -07:00
Dongjoon Hyun 473263f959 [SPARK-13834][BUILD] Update sbt and sbt plugins for 2.x.
## What changes were proposed in this pull request?

For 2.0.0, we had better make **sbt** and **sbt plugins** up-to-date. This PR checks the status of each plugins and bumps the followings.

* sbt: 0.13.9 --> 0.13.11
* sbteclipse-plugin: 2.2.0 --> 4.0.0
* sbt-dependency-graph: 0.7.4 --> 0.8.2
* sbt-mima-plugin: 0.1.6 --> 0.1.9
* sbt-revolver: 0.7.2 --> 0.8.0

All other plugins are up-to-date. (Note that `sbt-avro` seems to be change from 0.3.2 to 1.0.1, but it's not published in the repository.)

During upgrade, this PR also updated the following MiMa error. Note that the related excluding filter is already registered correctly. It seems due to the change of MiMa exception result.
```
 // SPARK-12896 Send only accumulator updates to driver, not TaskMetrics
 ProblemFilters.exclude[IncompatibleMethTypeProblem]("org.apache.spark.Accumulable.this"),
-ProblemFilters.exclude[IncompatibleMethTypeProblem]("org.apache.spark.Accumulator.this"),
+ProblemFilters.exclude[DirectMissingMethodProblem]("org.apache.spark.Accumulator.this"),
```

## How was this patch tested?

Pass the Jenkins build.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11669 from dongjoon-hyun/update_mima.
2016-03-13 18:47:04 -07:00
Jacky Li f3daa099bf [SQL] fix typo in DataSourceRegister
## What changes were proposed in this pull request?
fix typo in DataSourceRegister

## How was this patch tested?

found when going through latest code

Author: Jacky Li <jacky.likun@huawei.com>

Closes #11686 from jackylk/patch-12.
2016-03-13 18:44:02 -07:00
Sun Rui c7e68c3968 [SPARK-13812][SPARKR] Fix SparkR lint-r test errors.
## What changes were proposed in this pull request?

This PR fixes all newly captured SparkR lint-r errors after the lintr package is updated from github.

## How was this patch tested?

dev/lint-r
SparkR unit tests

Author: Sun Rui <rui.sun@intel.com>

Closes #11652 from sun-rui/SPARK-13812.
2016-03-13 14:30:44 -07:00
Bjorn Jonsson 515e4afbc7 [SPARK-13810][CORE] Add Port Configuration Suggestions on Bind Exceptions
## What changes were proposed in this pull request?
Currently, when a java.net.BindException is thrown, it displays the following message:

java.net.BindException: Address already in use: Service '$serviceName' failed after 16 retries!

This change adds port configuration suggestions to the BindException, for example, for the UI, it now displays

java.net.BindException: Address already in use: Service 'SparkUI' failed after 16 retries! Consider explicitly setting the appropriate port for 'SparkUI' (for example spark.ui.port for SparkUI) to an available port or increasing spark.port.maxRetries.

## How was this patch tested?
Manual tests

Author: Bjorn Jonsson <bjornjon@gmail.com>

Closes #11644 from bjornjon/master.
2016-03-13 10:18:24 +00:00
Dongjoon Hyun db88d0204e [MINOR][DOCS] Replace DataFrame with Dataset in Javadoc.
## What changes were proposed in this pull request?

SPARK-13817 (PR #11656) replaces `DataFrame` with `Dataset` from Java. This PR fixes the remaining broken links and sample Java code in `package-info.java`. As a result, it will update the following Javadoc.

* http://spark.apache.org/docs/latest/api/java/org/apache/spark/ml/attribute/package-summary.html
* http://spark.apache.org/docs/latest/api/java/org/apache/spark/ml/feature/package-summary.html

## How was this patch tested?

Manual.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11675 from dongjoon-hyun/replace_dataframe_with_dataset_in_javadoc.
2016-03-13 12:11:18 +08:00
Cheng Lian c079420d7c [SPARK-13841][SQL] Removes Dataset.collectRows()/takeRows()
## What changes were proposed in this pull request?

This PR removes two methods, `collectRows()` and `takeRows()`, from `Dataset[T]`. These methods were added in PR #11443, and were later considered not useful.

## How was this patch tested?

Existing tests should do the work.

Author: Cheng Lian <lian@databricks.com>

Closes #11678 from liancheng/remove-collect-rows-and-take-rows.
2016-03-13 12:02:52 +08:00
Cheng Lian 4eace4d384 [SPARK-13828][SQL] Bring back stack trace of AnalysisException thrown from QueryExecution.assertAnalyzed
PR #11443 added an extra `plan: Option[LogicalPlan]` argument to `AnalysisException` and attached partially analyzed plan to thrown `AnalysisException` in `QueryExecution.assertAnalyzed()`.  However, the original stack trace wasn't properly inherited.  This PR fixes this issue by inheriting the stack trace.

A test case is added to verify that the first entry of `AnalysisException` stack trace isn't from `QueryExecution`.

Author: Cheng Lian <lian@databricks.com>

Closes #11677 from liancheng/analysis-exception-stacktrace.
2016-03-12 11:25:15 -08:00
Davies Liu ba8c86d06f [SPARK-13671] [SPARK-13311] [SQL] Use different physical plans for RDD and data sources
## What changes were proposed in this pull request?

This PR split the PhysicalRDD into two classes, PhysicalRDD and PhysicalScan. PhysicalRDD is used for DataFrames that is created from existing RDD. PhysicalScan is used for DataFrame that is created from data sources. This enable use to apply different optimization on both of them.

Also fix the problem for sameResult() on two DataSourceScan.

Also fix the equality check to toString for `In`. It's better to use Seq there, but we can't break this public API (sad).

## How was this patch tested?

Existing tests. Manually tested with TPCDS query Q59 and Q64, all those duplicated exchanges can be re-used now, also saw there are 40+% performance improvement (saving half of the scan).

Author: Davies Liu <davies@databricks.com>

Closes #11514 from davies/existing_rdd.
2016-03-12 00:48:36 -08:00
Davies Liu 2ef4c5963b [SPARK-13830] prefer block manager than direct result for large result
## What changes were proposed in this pull request?

The current RPC can't handle large blocks very well, it's very slow to fetch 100M block (about 1 minute). Once switch to block manager to fetch that, it took about 10 seconds (still could be improved).

## How was this patch tested?

existing unit tests.

Author: Davies Liu <davies@databricks.com>

Closes #11659 from davies/direct_result.
2016-03-11 15:39:21 -08:00
Andrew Or 66d9d0edfe [SPARK-13139][SQL] Parse Hive DDL commands ourselves
## What changes were proposed in this pull request?

This patch is ported over from viirya's changes in #11048. Currently for most DDLs we just pass the query text directly to Hive. Instead, we should parse these commands ourselves and in the future (not part of this patch) use the `HiveCatalog` to process these DDLs. This is a pretext to merging `SQLContext` and `HiveContext`.

Note: As of this patch we still pass the query text to Hive. The difference is that we now parse the commands ourselves so in the future we can just use our own catalog.

## How was this patch tested?

Jenkins, new `DDLCommandSuite`, which comprises of about 40% of the changes here.

Author: Andrew Or <andrew@databricks.com>

Closes #11573 from andrewor14/parser-plus-plus.
2016-03-11 15:13:48 -08:00
Zheng RuiFeng 42afd72c65 [SPARK-13814] [PYSPARK] Delete unnecessary imports in python examples files
JIRA:  https://issues.apache.org/jira/browse/SPARK-13814

## What changes were proposed in this pull request?

delete unnecessary imports in python examples files

## How was this patch tested?

manual tests

Author: Zheng RuiFeng <ruifengz@foxmail.com>

Closes #11651 from zhengruifeng/del_import_pe.
2016-03-11 13:49:37 -08:00
Josh Rosen 073bf9d4d9 [SPARK-13807] De-duplicate Python*Helper instantiation code in PySpark streaming
This patch de-duplicates code in PySpark streaming which loads the `Python*Helper` classes. I also changed a few `raise e` statements to simply `raise` in order to preserve the full exception stacktrace when re-throwing.

Here's a link to the whitespace-change-free diff: https://github.com/apache/spark/compare/master...JoshRosen:pyspark-reflection-deduplication?w=0

Author: Josh Rosen <joshrosen@databricks.com>

Closes #11641 from JoshRosen/pyspark-reflection-deduplication.
2016-03-11 11:18:51 -08:00
Nezih Yigitbasi ff776b2fc1 [SPARK-13328][CORE] Poor read performance for broadcast variables with dynamic resource allocation
When dynamic resource allocation is enabled fetching broadcast variables from removed executors were causing job failures and SPARK-9591 fixed this problem by trying all locations of a block before giving up. However, the locations of a block is retrieved only once from the driver in this process and the locations in this list can be stale due to dynamic resource allocation. This situation gets worse when running on a large cluster as the size of this location list can be in the order of several hundreds out of which there may be tens of stale entries. What we have observed is with the default settings of 3 max retries and 5s between retries (that's 15s per location) the time it takes to read a broadcast variable can be as high as ~17m (70 failed attempts * 15s/attempt)

Author: Nezih Yigitbasi <nyigitbasi@netflix.com>

Closes #11241 from nezihyigitbasi/SPARK-13328.
2016-03-11 11:11:53 -08:00
Liwei Lin eb650a81f1 [STREAMING][MINOR] Fix a duplicate "be" in comments
Author: Liwei Lin <proflin.me@gmail.com>

Closes #11650 from lw-lin/typo.
2016-03-11 11:07:27 -08:00
Marcelo Vanzin 99b7187c2d [SPARK-13780][SQL] Add missing dependency to build.
This is needed to avoid odd compiler errors when building just the
sql package with maven, because of odd interactions between scalac
and shaded classes.

Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #11640 from vanzin/SPARK-13780.
2016-03-11 10:27:38 -08:00
Cheng Lian 6d37e1eb90 [SPARK-13817][BUILD][SQL] Re-enable MiMA and removes object DataFrame
## What changes were proposed in this pull request?

PR #11443 temporarily disabled MiMA check, this PR re-enables it.

One extra change is that `object DataFrame` is also removed. The only purpose of introducing `object DataFrame` was to use it as an internal factory for creating `Dataset[Row]`. By replacing this internal factory with `Dataset.newDataFrame`, both `DataFrame` and `DataFrame$` are entirely removed from the API, so that we can simply put a `MissingClassProblem` filter in `MimaExcludes.scala` for most DataFrame API  changes.

## How was this patch tested?

Tested by MiMA check triggered by Jenkins.

Author: Cheng Lian <lian@databricks.com>

Closes #11656 from liancheng/re-enable-mima.
2016-03-11 22:17:50 +08:00
Marcelo Vanzin 07f1c54477 [SPARK-13577][YARN] Allow Spark jar to be multiple jars, archive.
In preparation for the demise of assemblies, this change allows the
YARN backend to use multiple jars and globs as the "Spark jar". The
config option has been renamed to "spark.yarn.jars" to reflect that.

A second option "spark.yarn.archive" was also added; if set, this
takes precedence and uploads an archive expected to contain the jar
files with the Spark code and its dependencies.

Existing deployments should keep working, mostly. This change drops
support for the "SPARK_JAR" environment variable, and also does not
fall back to using "jarOfClass" if no configuration is set, falling
back to finding files under SPARK_HOME instead. This should be fine
since "jarOfClass" probably wouldn't work unless you were using
spark-submit anyway.

Tested with the unit tests, and trying the different config options
on a YARN cluster.

Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #11500 from vanzin/SPARK-13577.
2016-03-11 07:54:57 -06:00
Nick Pentreath 8fff0f92a4 [HOT-FIX][SQL][ML] Fix compile error from use of DataFrame in Java MaxAbsScaler example
## What changes were proposed in this pull request?

Fix build failure introduced in #11392 (change `DataFrame` -> `Dataset<Row>`).

## How was this patch tested?

Existing build/unit tests

Author: Nick Pentreath <nick.pentreath@gmail.com>

Closes #11653 from MLnick/java-maxabs-example-fix.
2016-03-11 10:20:39 +02:00
sethah 234f781ae1 [SPARK-13787][ML][PYSPARK] Pyspark feature importances for decision tree and random forest
## What changes were proposed in this pull request?

This patch adds a `featureImportance` property to the Pyspark API for `DecisionTreeRegressionModel`, `DecisionTreeClassificationModel`, `RandomForestRegressionModel` and `RandomForestClassificationModel`.

## How was this patch tested?

Python doc tests for the affected classes were updated to check feature importances.

Author: sethah <seth.hendrickson16@gmail.com>

Closes #11622 from sethah/SPARK-13787.
2016-03-11 09:54:23 +02:00
Yuhao Yang 0b713e0455 [SPARK-13512][ML] add example and doc for MaxAbsScaler
## What changes were proposed in this pull request?

jira: https://issues.apache.org/jira/browse/SPARK-13512
Add example and doc for ml.feature.MaxAbsScaler.

## How was this patch tested?
 unit tests

Author: Yuhao Yang <hhbyyh@gmail.com>

Closes #11392 from hhbyyh/maxabsdoc.
2016-03-11 09:31:35 +02:00
Josh Rosen 6ca990fb36 [SPARK-13294][PROJECT INFRA] Remove MiMa's dependency on spark-class / Spark assembly
This patch removes the need to build a full Spark assembly before running the `dev/mima` script.

- I modified the `tools` project to remove a direct dependency on Spark, so `sbt/sbt tools/fullClasspath` will now return the classpath for the `GenerateMIMAIgnore` class itself plus its own dependencies.
   - This required me to delete two classes full of dead code that we don't use anymore
- `GenerateMIMAIgnore` now uses [ClassUtil](http://software.clapper.org/classutil/) to find all of the Spark classes rather than our homemade JAR traversal code. The problem in our own code was that it didn't handle folders of classes properly, which is necessary in order to generate excludes with an assembly-free Spark build.
- `./dev/mima` no longer runs through `spark-class`, eliminating the need to reason about classpath ordering between `SPARK_CLASSPATH` and the assembly.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #11178 from JoshRosen/remove-assembly-in-run-tests.
2016-03-10 23:28:34 -08:00
Zheng RuiFeng d18276cb1d [SPARK-13672][ML] Add python examples of BisectingKMeans in ML and MLLIB
JIRA: https://issues.apache.org/jira/browse/SPARK-13672

## What changes were proposed in this pull request?

add two python examples of BisectingKMeans for ml and mllib

## How was this patch tested?

manual tests

Author: Zheng RuiFeng <ruifengz@foxmail.com>

Closes #11515 from zhengruifeng/mllib_bkm_pe.
2016-03-11 09:21:12 +02:00
Marcelo Vanzin e33bc67c8f [MINOR][CORE] Fix a duplicate "and" in a log message.
Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #11642 from vanzin/spark-conf-typo.
2016-03-10 22:15:30 -08:00
Wenchen Fan 74c4e2651f [HOT-FIX] fix compile
Fix the compilation failure introduced by https://github.com/apache/spark/pull/11555 because of a merge conflict.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #11648 from cloud-fan/hotbug.
2016-03-11 13:52:11 +08:00
Wenchen Fan 6871cc8f3e [SPARK-12718][SPARK-13720][SQL] SQL generation support for window functions
## What changes were proposed in this pull request?

Add SQL generation support for window functions. The idea is simple, just treat `Window` operator like `Project`, i.e. add subquery to its child when necessary, generate a `SELECT ... FROM ...` SQL string, implement `sql` method for window related expressions, e.g. `WindowSpecDefinition`, `WindowFrame`, etc.

This PR also fixed SPARK-13720 by improving the process of adding extra `SubqueryAlias`(the `RecoverScopingInfo` rule). Before this PR, we update the qualifiers in project list while adding the subquery. However, this is incomplete as we need to update qualifiers in all ancestors that refer attributes here. In this PR, we split `RecoverScopingInfo` into 2 rules: `AddSubQuery` and `UpdateQualifier`. `AddSubQuery` only add subquery if necessary, and `UpdateQualifier` will re-propagate and update qualifiers bottom up.

Ideally we should put the bug fix part in an individual PR, but this bug also blocks the window stuff, so I put them together here.

Many thanks to gatorsmile for the initial discussion and test cases!

## How was this patch tested?

new tests in `LogicalPlanToSQLSuite`

Author: Wenchen Fan <wenchen@databricks.com>

Closes #11555 from cloud-fan/window.
2016-03-11 13:22:34 +08:00
gatorsmile 560489f4e1 [SPARK-13732][SPARK-13797][SQL] Remove projectList from Window and Eliminate useless Window
#### What changes were proposed in this pull request?

`projectList` is useless. Its value is always the same as the child.output. Remove it from the class `Window`. Removal can simplify the codes in Analyzer and Optimizer.

This PR is based on the discussion started by cloud-fan in a separate PR:
https://github.com/apache/spark/pull/5604#discussion_r55140466

This PR also eliminates useless `Window`.

cloud-fan yhuai

#### How was this patch tested?

Existing test cases cover it.

Author: gatorsmile <gatorsmile@gmail.com>
Author: xiaoli <lixiao1983@gmail.com>
Author: Xiao Li <xiaoli@Xiaos-MacBook-Pro.local>

Closes #11565 from gatorsmile/removeProjListWindow.
2016-03-11 11:59:18 +08:00
Yanbo Liang 4d535d1f1c [SPARK-13389][SPARKR] SparkR support first/last with ignore NAs
## What changes were proposed in this pull request?

SparkR support first/last with ignore NAs

cc sun-rui felixcheung shivaram

## How was the this patch tested?

unit tests

Author: Yanbo Liang <ybliang8@gmail.com>

Closes #11267 from yanboliang/spark-13389.
2016-03-10 17:31:19 -08:00
Sameer Agarwal c3a6269ca9 [SPARK-13789] Infer additional constraints from attribute equality
## What changes were proposed in this pull request?

This PR adds support for inferring an additional set of data constraints based on attribute equality. For e.g., if an operator has constraints of the form (`a = 5`, `a = b`), we can now automatically infer an additional constraint of the form `b = 5`

## How was this patch tested?

Tested that new constraints are properly inferred for filters (by adding a new test) and equi-joins (by modifying an existing test)

Author: Sameer Agarwal <sameer@databricks.com>

Closes #11618 from sameeragarwal/infer-isequal-constraints.
2016-03-10 17:29:45 -08:00
Oscar D. Lara Yejas 416e71af4d [SPARK-13327][SPARKR] Added parameter validations for colnames<-
Author: Oscar D. Lara Yejas <odlaraye@oscars-mbp.attlocal.net>
Author: Oscar D. Lara Yejas <odlaraye@oscars-mbp.usca.ibm.com>

Closes #11220 from olarayej/SPARK-13312-3.
2016-03-10 17:10:23 -08:00
Dongjoon Hyun 88fa866620 [MINOR][DOC] Fix supported hive version in doc
## What changes were proposed in this pull request?

Today, Spark 1.6.1 and updated docs are release. Unfortunately, there is obsolete hive version information on docs: [Building Spark](http://spark.apache.org/docs/latest/building-spark.html#building-with-hive-and-jdbc-support). This PR fixes the following two lines.
```
-By default Spark will build with Hive 0.13.1 bindings.
+By default Spark will build with Hive 1.2.1 bindings.
-# Apache Hadoop 2.4.X with Hive 13 support
+# Apache Hadoop 2.4.X with Hive 1.2.1 support
```
`sql/README.md` file also describe

## How was this patch tested?

Manual.

(If this patch involves UI changes, please attach a screenshot; otherwise, remove this)

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11639 from dongjoon-hyun/fix_doc_hive_version.
2016-03-10 17:07:18 -08:00
Cheng Lian 1d542785b9 [SPARK-13244][SQL] Migrates DataFrame to Dataset
## What changes were proposed in this pull request?

This PR unifies DataFrame and Dataset by migrating existing DataFrame operations to Dataset and make `DataFrame` a type alias of `Dataset[Row]`.

Most Scala code changes are source compatible, but Java API is broken as Java knows nothing about Scala type alias (mostly replacing `DataFrame` with `Dataset<Row>`).

There are several noticeable API changes related to those returning arrays:

1.  `collect`/`take`

    -   Old APIs in class `DataFrame`:

        ```scala
        def collect(): Array[Row]
        def take(n: Int): Array[Row]
        ```

    -   New APIs in class `Dataset[T]`:

        ```scala
        def collect(): Array[T]
        def take(n: Int): Array[T]

        def collectRows(): Array[Row]
        def takeRows(n: Int): Array[Row]
        ```

    Two specialized methods `collectRows` and `takeRows` are added because Java doesn't support returning generic arrays. Thus, for example, `DataFrame.collect(): Array[T]` actually returns `Object` instead of `Array<T>` from Java side.

    Normally, Java users may fall back to `collectAsList` and `takeAsList`.  The two new specialized versions are added to avoid performance regression in ML related code (but maybe I'm wrong and they are not necessary here).

1.  `randomSplit`

    -   Old APIs in class `DataFrame`:

        ```scala
        def randomSplit(weights: Array[Double], seed: Long): Array[DataFrame]
        def randomSplit(weights: Array[Double]): Array[DataFrame]
        ```

    -   New APIs in class `Dataset[T]`:

        ```scala
        def randomSplit(weights: Array[Double], seed: Long): Array[Dataset[T]]
        def randomSplit(weights: Array[Double]): Array[Dataset[T]]
        ```

    Similar problem as above, but hasn't been addressed for Java API yet.  We can probably add `randomSplitAsList` to fix this one.

1.  `groupBy`

    Some original `DataFrame.groupBy` methods have conflicting signature with original `Dataset.groupBy` methods.  To distinguish these two, typed `Dataset.groupBy` methods are renamed to `groupByKey`.

Other noticeable changes:

1.  Dataset always do eager analysis now

    We used to support disabling DataFrame eager analysis to help reporting partially analyzed malformed logical plan on analysis failure.  However, Dataset encoders requires eager analysi during Dataset construction.  To preserve the error reporting feature, `AnalysisException` now takes an extra `Option[LogicalPlan]` argument to hold the partially analyzed plan, so that we can check the plan tree when reporting test failures.  This plan is passed by `QueryExecution.assertAnalyzed`.

## How was this patch tested?

Existing tests do the work.

## TODO

- [ ] Fix all tests
- [ ] Re-enable MiMA check
- [ ] Update ScalaDoc (`since`, `group`, and example code)

Author: Cheng Lian <lian@databricks.com>
Author: Yin Huai <yhuai@databricks.com>
Author: Wenchen Fan <wenchen@databricks.com>
Author: Cheng Lian <liancheng@users.noreply.github.com>

Closes #11443 from liancheng/ds-to-df.
2016-03-10 17:00:17 -08:00
Shixiong Zhu 27fe6bacc5 [SPARK-13604][CORE] Sync worker's state after registering with master
## What changes were proposed in this pull request?

Here lists all cases that Master cannot talk with Worker for a while and then network is back.

1. Master doesn't know the network issue (not yet timeout)

  a. Worker doesn't know the network issue (onDisconnected is not called)
    - Worker keeps sending Heartbeat. Both Worker and Master don't know the network issue. Nothing to do. (Finally, Master will notice the heartbeat timeout if network is not recovered)

  b. Worker knows the network issue (onDisconnected is called)
    - Worker stops sending Heartbeat and sends `RegisterWorker` to master. Master will reply `RegisterWorkerFailed("Duplicate worker ID")`. Worker calls "System.exit(1)" (Finally, Master will notice the heartbeat timeout if network is not recovered) (May leak driver processes. See [SPARK-13602](https://issues.apache.org/jira/browse/SPARK-13602))

2. Worker timeout (Master knows the network issue). In such case,  master removes Worker and its executors and drivers.

  a. Worker doesn't know the network issue (onDisconnected is not called)
    - Worker keeps sending Heartbeat.
    - If the network is back, say Master receives Heartbeat, Master sends `ReconnectWorker` to Worker
    - Worker send `RegisterWorker` to master.
    - Master accepts `RegisterWorker` but doesn't know executors and drivers in Worker. (may leak executors)

  b. Worker knows the network issue (onDisconnected is called)
    - Worker stop sending `Heartbeat`. Worker will send "RegisterWorker" to master.
    - Master accepts `RegisterWorker` but doesn't know executors and drivers in Worker. (may leak executors)

This PR fixes executors and drivers leak in 2.a and 2.b when Worker reregisters with Master. The approach is making Worker send `WorkerLatestState` to sync the state after registering with master successfully. Then Master will ask Worker to kill unknown executors and drivers.

Note:  Worker cannot just kill executors after registering with master because in the worker, `LaunchExecutor` and `RegisteredWorker` are processed in two threads. If `LaunchExecutor` happens before `RegisteredWorker`, Worker's executor list will contain new executors after Master accepts `RegisterWorker`. We should not kill these executors. So sending the list to Master and let Master tell Worker which executors should be killed.

## How was this patch tested?

test("SPARK-13604: Master should ask Worker kill unknown executors and drivers")

Author: Shixiong Zhu <shixiong@databricks.com>

Closes #11455 from zsxwing/orphan-executors.
2016-03-10 16:59:14 -08:00