Fix ```subset``` function error when only set ```select``` argument. Please refer to the [JIRA](https://issues.apache.org/jira/browse/SPARK-12234) about the error and how to reproduce it.
cc sun-rui felixcheung shivaram
Author: Yanbo Liang <ybliang8@gmail.com>
Closes#10217 from yanboliang/spark-12234.
SparkR support ```read.parquet``` and deprecate ```parquetFile```. This change is similar with #10145 for ```jsonFile```.
Author: Yanbo Liang <ybliang8@gmail.com>
Closes#10191 from yanboliang/spark-12198.
Process arguments passed to the spark-shell. Fixes running the spark-shell from within a build environment.
Author: Jakob Odersky <jodersky@gmail.com>
Closes#9824 from jodersky/shell-2.11.
Add `computePrincipalComponentsAndVariance` to also compute PCA's explained variance.
CC mengxr
Author: Sean Owen <sowen@cloudera.com>
Closes#9736 from srowen/SPARK-11530.
The original code does not properly handle the cases where the prefix is null, but suffix is not null - the suffix should be used but is not.
The fix is using StringBuilder to construct the proper file name.
Author: bomeng <bmeng@us.ibm.com>
Author: Bo Meng <mengbo@bos-macbook-pro.usca.ibm.com>
Closes#10185 from bomeng/SPARK-12136.
in https://github.com/apache/spark/pull/10133 we found that, we shoud ensure the children of `TreeNode` are all accessible in the `productIterator`, or the behavior will be very confusing.
In this PR, I try to fix this problem by expsing the `loopVar`.
This also fixes SPARK-12131 which is caused by the hacky `MapObjects`.
Author: Wenchen Fan <wenchen@databricks.com>
Closes#10239 from cloud-fan/map-objects.
SPARK-12244:
Based on feedback from early users and personal experience attempting to explain it, the name trackStateByKey had two problem.
"trackState" is a completely new term which really does not give any intuition on what the operation is
the resultant data stream of objects returned by the function is called in docs as the "emitted" data for the lack of a better.
"mapWithState" makes sense because the API is like a mapping function like (Key, Value) => T with State as an additional parameter. The resultant data stream is "mapped data". So both problems are solved.
SPARK-12245:
From initial experiences, not having the key in the function makes it hard to return mapped stuff, as the whole information of the records is not there. Basically the user is restricted to doing something like mapValue() instead of map(). So adding the key as a parameter.
Author: Tathagata Das <tathagata.das1565@gmail.com>
Closes#10224 from tdas/rename.
This commit fixes dependency issues which prevented the Docker-based JDBC integration tests from running in the Maven build.
Author: Mark Grover <mgrover@cloudera.com>
Closes#9876 from markgrover/master_docker.
Don't warn when description isn't valid HTML since it may properly be like "SELECT ... where foo <= 1"
The tests for this code indicate that it's normal to handle strings like this that don't contain HTML as a string rather than markup. Hence logging every such instance as a warning is too noisy since it's not a problem. this is an issue for stages whose name contain SQL like the above
CC tdas as author of this bit of code
Author: Sean Owen <sowen@cloudera.com>
Closes#10159 from srowen/SPARK-11824.
This patch fixes a bug in the eviction of storage memory by execution.
## The bug:
In general, execution should be able to evict storage memory when the total storage memory usage is greater than `maxMemory * spark.memory.storageFraction`. Due to a bug, however, Spark might wind up evicting no storage memory in certain cases where the storage memory usage was between `maxMemory * spark.memory.storageFraction` and `maxMemory`. For example, here is a regression test which illustrates the bug:
```scala
val maxMemory = 1000L
val taskAttemptId = 0L
val (mm, ms) = makeThings(maxMemory)
// Since we used the default storage fraction (0.5), we should be able to allocate 500 bytes
// of storage memory which are immune to eviction by execution memory pressure.
// Acquire enough storage memory to exceed the storage region size
assert(mm.acquireStorageMemory(dummyBlock, 750L, evictedBlocks))
assertEvictBlocksToFreeSpaceNotCalled(ms)
assert(mm.executionMemoryUsed === 0L)
assert(mm.storageMemoryUsed === 750L)
// At this point, storage is using 250 more bytes of memory than it is guaranteed, so execution
// should be able to reclaim up to 250 bytes of storage memory.
// Therefore, execution should now be able to require up to 500 bytes of memory:
assert(mm.acquireExecutionMemory(500L, taskAttemptId, MemoryMode.ON_HEAP) === 500L) // <--- fails by only returning 250L
assert(mm.storageMemoryUsed === 500L)
assert(mm.executionMemoryUsed === 500L)
assertEvictBlocksToFreeSpaceCalled(ms, 250L)
```
The problem relates to the control flow / interaction between `StorageMemoryPool.shrinkPoolToReclaimSpace()` and `MemoryStore.ensureFreeSpace()`. While trying to allocate the 500 bytes of execution memory, the `UnifiedMemoryManager` discovers that it will need to reclaim 250 bytes of memory from storage, so it calls `StorageMemoryPool.shrinkPoolToReclaimSpace(250L)`. This method, in turn, calls `MemoryStore.ensureFreeSpace(250L)`. However, `ensureFreeSpace()` first checks whether the requested space is less than `maxStorageMemory - storageMemoryUsed`, which will be true if there is any free execution memory because it turns out that `MemoryStore.maxStorageMemory = (maxMemory - onHeapExecutionMemoryPool.memoryUsed)` when the `UnifiedMemoryManager` is used.
The control flow here is somewhat confusing (it grew to be messy / confusing over time / as a result of the merging / refactoring of several components). In the pre-Spark 1.6 code, `ensureFreeSpace` was called directly by the `MemoryStore` itself, whereas in 1.6 it's involved in a confusing control flow where `MemoryStore` calls `MemoryManager.acquireStorageMemory`, which then calls back into `MemoryStore.ensureFreeSpace`, which, in turn, calls `MemoryManager.freeStorageMemory`.
## The solution:
The solution implemented in this patch is to remove the confusing circular control flow between `MemoryManager` and `MemoryStore`, making the storage memory acquisition process much more linear / straightforward. The key changes:
- Remove a layer of inheritance which made the memory manager code harder to understand (53841174760a24a0df3eb1562af1f33dbe340eb9).
- Move some bounds checks earlier in the call chain (13ba7ada77f87ef1ec362aec35c89a924e6987cb).
- Refactor `ensureFreeSpace()` so that the part which evicts blocks can be called independently from the part which checks whether there is enough free space to avoid eviction (7c68ca09cb1b12f157400866983f753ac863380e).
- Realize that this lets us remove a layer of overloads from `ensureFreeSpace` (eec4f6c87423d5e482b710e098486b3bbc4daf06).
- Realize that `ensureFreeSpace()` can simply be replaced with an `evictBlocksToFreeSpace()` method which is called [after we've already figured out](2dc842aea8/core/src/main/scala/org/apache/spark/memory/StorageMemoryPool.scala (L88)) how much memory needs to be reclaimed via eviction; (2dc842aea82c8895125d46a00aa43dfb0d121de9).
Along the way, I fixed some problems with the mocks in `MemoryManagerSuite`: the old mocks would [unconditionally](80a824d36e/core/src/test/scala/org/apache/spark/memory/MemoryManagerSuite.scala (L84)) report that a block had been evicted even if there was enough space in the storage pool such that eviction would be avoided.
I also fixed a problem where `StorageMemoryPool._memoryUsed` might become negative due to freed memory being double-counted when excution evicts storage. The problem was that `StorageMemoryPoolshrinkPoolToFreeSpace` would [decrement `_memoryUsed`](7c68ca09cb (diff-935c68a9803be144ed7bafdd2f756a0fL133)) even though `StorageMemoryPool.freeMemory` had already decremented it as each evicted block was freed. See SPARK-12189 for details.
Author: Josh Rosen <joshrosen@databricks.com>
Author: Andrew Or <andrew@databricks.com>
Closes#10170 from JoshRosen/SPARK-12165.
This lines up the HBase token logic with that done for Hive in SPARK-11265: reflection with only CFNE being swallowed.
There is a test, one which doesn't try to put HBase on the yarn/test class and really do the reflection (the way the hive introspection does). If people do want that then it could be added with careful POM work
+also: cut an incorrect comment from the Hive test case before copying it, and a couple of imports that may have been related to the hive test in the past.
Author: Steve Loughran <stevel@hortonworks.com>
Closes#10227 from steveloughran/stevel/patches/SPARK-12241-obtainTokenForHBase.
Because of AM failure, the target executor number between driver and AM will be different, which will lead to unexpected behavior in dynamic allocation. So when AM is re-registered with driver, state in `ExecutorAllocationManager` and `CoarseGrainedSchedulerBacked` should be reset.
This issue is originally addressed in #8737 , here re-opened again. Thanks a lot KaiXinXiaoLei for finding this issue.
andrewor14 and vanzin would you please help to review this, thanks a lot.
Author: jerryshao <sshao@hortonworks.com>
Closes#9963 from jerryshao/SPARK-10582.
Currently word2vec has the window hard coded at 5, some users may want different sizes (for example if using on n-gram input or similar). User request comes from http://stackoverflow.com/questions/32231975/spark-word2vec-window-size .
Author: Holden Karau <holden@us.ibm.com>
Author: Holden Karau <holden@pigscanfly.ca>
Closes#8513 from holdenk/SPARK-10299-word2vec-should-allow-users-to-specify-the-window-size.
This PR adds a `private[sql]` method `metadata` to `SparkPlan`, which can be used to describe detail information about a physical plan during visualization. Specifically, this PR uses this method to provide details of `PhysicalRDD`s translated from a data source relation. For example, a `ParquetRelation` converted from Hive metastore table `default.psrc` is now shown as the following screenshot:
![image](https://cloud.githubusercontent.com/assets/230655/11526657/e10cb7e6-9916-11e5-9afa-f108932ec890.png)
And here is the screenshot for a regular `ParquetRelation` (not converted from Hive metastore table) loaded from a really long path:
![output](https://cloud.githubusercontent.com/assets/230655/11680582/37c66460-9e94-11e5-8f50-842db5309d5a.png)
Author: Cheng Lian <lian@databricks.com>
Closes#10004 from liancheng/spark-12012.physical-rdd-metadata.
Currently Parquet predicate tests all pass even if filters are not pushed down or this is disabled.
In this PR, For checking evaluating filters, Simply it makes the expression from `expression.Filter` and then try to create filters just like Spark does.
For checking the results, this manually accesses to the child rdd (of `expression.Filter`) and produces the results which should be filtered properly, and then compares it to expected values.
Now, if filters are not pushed down or this is disabled, this throws exceptions.
Author: hyukjinkwon <gurwls223@gmail.com>
Closes#9659 from HyukjinKwon/SPARK-11676.
felixcheung , mengxr
Just added a message to require()
Author: Dominik Dahlem <dominik.dahlem@gmail.combination>
Closes#9598 from dahlem/ddahlem_regression_evaluator_double_predictions_message_04112015.
The checker tries to follow as closely as possible the guidelines of
the code style document, and makes some decisions where the guide is
not clear. In particular:
- wildcard imports come first when there are other imports in the
same package
- multi-import blocks come before single imports
- lower-case names inside multi-import blocks come before others
In some projects, such as graphx, there seems to be a convention to
separate o.a.s imports from the project's own; to simplify the
checker, I chose not to allow that, which is a strict interpretation
of the code style guide, even though I think it makes sense.
Since the checks are based on syntax only, some edge cases may
generate spurious warnings; for example, when class names start
with a lower case letter (and are thus treated as a package name
by the checker).
The checker is currently only generating warnings, and since there
are many of those, the build output does get a little noisy. The
idea is to fix the code (and the checker, as needed) little by little
instead of having a huge change that touches everywhere.
Author: Marcelo Vanzin <vanzin@cloudera.com>
Closes#6502 from vanzin/SPARK-3873.
Documentation regarding the `IndexToString` label transformer with code snippets in Scala/Java/Python.
Author: BenFradet <benjamin.fradet@gmail.com>
Closes#10166 from BenFradet/SPARK-12159.
jira: https://issues.apache.org/jira/browse/SPARK-11605
Check Java compatibility for MLlib for this release.
fix:
1. `StreamingTest.registerStream` needs java friendly interface.
2. `GradientBoostedTreesModel.computeInitialPredictionAndError` and `GradientBoostedTreesModel.updatePredictionError` has java compatibility issue. Mark them as `developerAPI`.
TBD:
[updated] no fix for now per discussion.
`org.apache.spark.mllib.classification.LogisticRegressionModel`
`public scala.Option<java.lang.Object> getThreshold();` has wrong return type for Java invocation.
`SVMModel` has the similar issue.
Yet adding a `scala.Option<java.util.Double> getThreshold()` would result in an overloading error due to the same function signature. And adding a new function with different name seems to be not necessary.
cc jkbradley feynmanliang
Author: Yuhao Yang <hhbyyh@gmail.com>
Closes#10102 from hhbyyh/javaAPI.
Delays application of ResolvePivot until all aggregates are resolved to prevent problems with UnresolvedFunction and adds unit test
Author: Andrew Ray <ray.andrew@gmail.com>
Closes#10202 from aray/sql-pivot-unresolved-function.
jira: https://issues.apache.org/jira/browse/SPARK-10393
Since the logic of the text processing part has been moved to ML estimators/transformers, replace the related code in LDA Example with the ML pipeline.
Author: Yuhao Yang <hhbyyh@gmail.com>
Author: yuhaoyang <yuhao@zhanglipings-iMac.local>
Closes#8551 from hhbyyh/ldaExUpdate.
This PR contains the following updates:
- Created a new private variable `boundTEncoder` that can be shared by multiple functions, `RDD`, `select` and `collect`.
- Replaced all the `queryExecution.analyzed` by the function call `logicalPlan`
- A few API comments are using wrong class names (e.g., `DataFrame`) or parameter names (e.g., `n`)
- A few API descriptions are wrong. (e.g., `mapPartitions`)
marmbrus rxin cloud-fan Could you take a look and check if they are appropriate? Thank you!
Author: gatorsmile <gatorsmile@gmail.com>
Closes#10184 from gatorsmile/datasetClean.
This PR is to add three more data types into Encoder, including `BigDecimal`, `Date` and `Timestamp`.
marmbrus cloud-fan rxin Could you take a quick look at these three types? Not sure if it can be merged to 1.6. Thank you very much!
Author: gatorsmile <gatorsmile@gmail.com>
Closes#10188 from gatorsmile/dataTypesinEncoder.
checked with hive, greatest/least should cast their children to a tightest common type,
i.e. `(int, long) => long`, `(int, string) => error`, `(decimal(10,5), decimal(5, 10)) => error`
Author: Wenchen Fan <wenchen@databricks.com>
Closes#10196 from cloud-fan/type-coercion.
SPARK-12060 fixed JavaSerializerInstance.serialize
This PR applies the same technique on two other classes.
zsxwing
Author: tedyu <yuzhihong@gmail.com>
Closes#10177 from tedyu/master.
The json endpoint for stages doesn't include information on the stage duration that is present in the UI. This looks like a simple oversight, they should be included. eg., the metrics should be included at api/v1/applications/<appId>/stages.
Metrics I've added are: submissionTime, firstTaskLaunchedTime and completionTime
Author: Xin Ren <iamshrek@126.com>
Closes#10107 from keypointt/SPARK-11155.
Fix commons-collection group ID to commons-collections for version 3.x
Patches earlier PR at https://github.com/apache/spark/pull/9731
Author: Sean Owen <sowen@cloudera.com>
Closes#10198 from srowen/SPARK-11652.2.
This reverts PR #10002, commit 78209b0cca.
The original PR wasn't tested on Jenkins before being merged.
Author: Cheng Lian <lian@databricks.com>
Closes#10200 from liancheng/revert-pr-10002.
Sparse feature generated in LinearDataGenerator does not create dense vectors as an intermediate any more.
Author: Nakul Jindal <njindal@us.ibm.com>
Closes#9756 from nakul02/SPARK-11439_sparse_without_creating_dense_feature.
Add ```SQLTransformer``` user guide, example code and make Scala API doc more clear.
Author: Yanbo Liang <ybliang8@gmail.com>
Closes#10006 from yanboliang/spark-11958.
Made new patch contaning only markdown examples moved to exmaple/folder.
Ony three java code were not shfted since they were contaning compliation error ,these classes are
1)StandardScale 2)NormalizerExample 3)VectorIndexer
Author: Xusen Yin <yinxusen@gmail.com>
Author: somideshmukh <somilde@us.ibm.com>
Closes#10002 from somideshmukh/SomilBranch1.33.
Switched from using SQLContext constructor to using getOrCreate, mainly in model save/load methods.
This covers all instances in spark.mllib. There were no uses of the constructor in spark.ml.
CC: mengxr yhuai
Author: Joseph K. Bradley <joseph@databricks.com>
Closes#10161 from jkbradley/mllib-sqlcontext-fix.
In SPARK-11946 the API for pivot was changed a bit and got updated doc, the doc changes were not made for the python api though. This PR updates the python doc to be consistent.
Author: Andrew Ray <ray.andrew@gmail.com>
Closes#10176 from aray/sql-pivot-python-doc.
See the thread Ben started:
http://search-hadoop.com/m/q3RTtveEuhjsr7g/
This PR adds drop() method to DataFrame which accepts multiple column names
Author: tedyu <yuzhihong@gmail.com>
Closes#9862 from ted-yu/master.