+1
Tested on HDP 2.3, YARN cluster mode, spark-shell

On Wed, Dec 23, 2015 at 6:14 AM, Allen Zhang <allenzhang...@126.com> wrote:

>
> +1 (non-binding)
>
> I have just tarball a new binary and tested am.nodelabelexpression and
> executor.nodelabelexpression manully, result is expected.
>
>
>
>
> At 2015-12-23 21:44:08, "Iulian Dragoș" <iulian.dra...@typesafe.com>
> wrote:
>
> +1 (non-binding)
>
> Tested Mesos deployments (client and cluster-mode, fine-grained and
> coarse-grained). Things look good
> <https://ci.typesafe.com/view/Spark/job/mit-docker-test-ref/8/console>.
>
> iulian
>
> On Wed, Dec 23, 2015 at 2:35 PM, Sean Owen <so...@cloudera.com> wrote:
>
>> Docker integration tests still fail for Mark and I, and should
>> probably be disabled:
>> https://issues.apache.org/jira/browse/SPARK-12426
>>
>> ... but if anyone else successfully runs these (and I assume Jenkins
>> does) then not a blocker.
>>
>> I'm having intermittent trouble with other tests passing, but nothing
>> unusual.
>> Sigs and hashes are OK.
>>
>> We have 30 issues fixed for 1.6.1. All but those resolved in the last
>> 24 hours or so should be fixed for 1.6.0 right? I can touch that up.
>>
>>
>>
>>
>>
>> On Tue, Dec 22, 2015 at 8:10 PM, Michael Armbrust
>> <mich...@databricks.com> wrote:
>> > Please vote on releasing the following candidate as Apache Spark version
>> > 1.6.0!
>> >
>> > The vote is open until Friday, December 25, 2015 at 18:00 UTC and
>> passes if
>> > a majority of at least 3 +1 PMC votes are cast.
>> >
>> > [ ] +1 Release this package as Apache Spark 1.6.0
>> > [ ] -1 Do not release this package because ...
>> >
>> > To learn more about Apache Spark, please see http://spark.apache.org/
>> >
>> > The tag to be voted on is v1.6.0-rc4
>> > (4062cda3087ae42c6c3cb24508fc1d3a931accdf)
>> >
>> > The release files, including signatures, digests, etc. can be found at:
>> > http://people.apache.org/~pwendell/spark-releases/spark-1.6.0-rc4-bin/
>> >
>> > Release artifacts are signed with the following key:
>> > https://people.apache.org/keys/committer/pwendell.asc
>> >
>> > The staging repository for this release can be found at:
>> > https://repository.apache.org/content/repositories/orgapachespark-1176/
>> >
>> > The test repository (versioned as v1.6.0-rc4) for this release can be
>> found
>> > at:
>> > https://repository.apache.org/content/repositories/orgapachespark-1175/
>> >
>> > The documentation corresponding to this release can be found at:
>> > http://people.apache.org/~pwendell/spark-releases/spark-1.6.0-rc4-docs/
>> >
>> > =======================================
>> > == How can I help test this release? ==
>> > =======================================
>> > If you are a Spark user, you can help us test this release by taking an
>> > existing Spark workload and running on this release candidate, then
>> > reporting any regressions.
>> >
>> > ================================================
>> > == What justifies a -1 vote for this release? ==
>> > ================================================
>> > This vote is happening towards the end of the 1.6 QA period, so -1 votes
>> > should only occur for significant regressions from 1.5. Bugs already
>> present
>> > in 1.5, minor regressions, or bugs related to new features will not
>> block
>> > this release.
>> >
>> > ===============================================================
>> > == What should happen to JIRA tickets still targeting 1.6.0? ==
>> > ===============================================================
>> > 1. It is OK for documentation patches to target 1.6.0 and still go into
>> > branch-1.6, since documentations will be published separately from the
>> > release.
>> > 2. New features for non-alpha-modules should target 1.7+.
>> > 3. Non-blocker bug fixes should target 1.6.1 or 1.7.0, or drop the
>> target
>> > version.
>> >
>> >
>> > ==================================================
>> > == Major changes to help you focus your testing ==
>> > ==================================================
>> >
>> > Notable changes since 1.6 RC3
>> >
>> >
>> >   - SPARK-12404 - Fix serialization error for Datasets with
>> > Timestamps/Arrays/Decimal
>> >   - SPARK-12218 - Fix incorrect pushdown of filters to parquet
>> >   - SPARK-12395 - Fix join columns of outer join for DataFrame using
>> >   - SPARK-12413 - Fix mesos HA
>> >
>> >
>> > Notable changes since 1.6 RC2
>> >
>> >
>> > - SPARK_VERSION has been set correctly
>> > - SPARK-12199 ML Docs are publishing correctly
>> > - SPARK-12345 Mesos cluster mode has been fixed
>> >
>> > Notable changes since 1.6 RC1
>> >
>> > Spark Streaming
>> >
>> > SPARK-2629  trackStateByKey has been renamed to mapWithState
>> >
>> > Spark SQL
>> >
>> > SPARK-12165 SPARK-12189 Fix bugs in eviction of storage memory by
>> execution.
>> > SPARK-12258 correct passing null into ScalaUDF
>> >
>> > Notable Features Since 1.5
>> >
>> > Spark SQL
>> >
>> > SPARK-11787 Parquet Performance - Improve Parquet scan performance when
>> > using flat schemas.
>> > SPARK-10810 Session Management - Isolated devault database (i.e USE
>> mydb)
>> > even on shared clusters.
>> > SPARK-9999  Dataset API - A type-safe API (similar to RDDs) that
>> performs
>> > many operations on serialized binary data and code generation (i.e.
>> Project
>> > Tungsten).
>> > SPARK-10000 Unified Memory Management - Shared memory for execution and
>> > caching instead of exclusive division of the regions.
>> > SPARK-11197 SQL Queries on Files - Concise syntax for running SQL
>> queries
>> > over files of any supported format without registering a table.
>> > SPARK-11745 Reading non-standard JSON files - Added options to read
>> > non-standard JSON files (e.g. single-quotes, unquoted attributes)
>> > SPARK-10412 Per-operator Metrics for SQL Execution - Display statistics
>> on a
>> > peroperator basis for memory usage and spilled data size.
>> > SPARK-11329 Star (*) expansion for StructTypes - Makes it easier to
>> nest and
>> > unest arbitrary numbers of columns
>> > SPARK-10917, SPARK-11149 In-memory Columnar Cache Performance -
>> Significant
>> > (up to 14x) speed up when caching data that contains complex types in
>> > DataFrames or SQL.
>> > SPARK-11111 Fast null-safe joins - Joins using null-safe equality (<=>)
>> will
>> > now execute using SortMergeJoin instead of computing a cartisian
>> product.
>> > SPARK-11389 SQL Execution Using Off-Heap Memory - Support for
>> configuring
>> > query execution to occur using off-heap memory to avoid GC overhead
>> > SPARK-10978 Datasource API Avoid Double Filter - When implemeting a
>> > datasource with filter pushdown, developers can now tell Spark SQL to
>> avoid
>> > double evaluating a pushed-down filter.
>> > SPARK-4849  Advanced Layout of Cached Data - storing partitioning and
>> > ordering schemes in In-memory table scan, and adding distributeBy and
>> > localSort to DF API
>> > SPARK-9858  Adaptive query execution - Intial support for automatically
>> > selecting the number of reducers for joins and aggregations.
>> > SPARK-9241  Improved query planner for queries having distinct
>> aggregations
>> > - Query plans of distinct aggregations are more robust when distinct
>> columns
>> > have high cardinality.
>> >
>> > Spark Streaming
>> >
>> > API Updates
>> >
>> > SPARK-2629  New improved state management - mapWithState - a DStream
>> > transformation for stateful stream processing, supercedes
>> updateStateByKey
>> > in functionality and performance.
>> > SPARK-11198 Kinesis record deaggregation - Kinesis streams have been
>> > upgraded to use KCL 1.4.0 and supports transparent deaggregation of
>> > KPL-aggregated records.
>> > SPARK-10891 Kinesis message handler function - Allows arbitraray
>> function to
>> > be applied to a Kinesis record in the Kinesis receiver before to
>> customize
>> > what data is to be stored in memory.
>> > SPARK-6328  Python Streamng Listener API - Get streaming statistics
>> > (scheduling delays, batch processing times, etc.) in streaming.
>> >
>> > UI Improvements
>> >
>> > Made failures visible in the streaming tab, in the timelines, batch
>> list,
>> > and batch details page.
>> > Made output operations visible in the streaming tab as progress bars.
>> >
>> > MLlib
>> >
>> > New algorithms/models
>> >
>> > SPARK-8518  Survival analysis - Log-linear model for survival analysis
>> > SPARK-9834  Normal equation for least squares - Normal equation solver,
>> > providing R-like model summary statistics
>> > SPARK-3147  Online hypothesis testing - A/B testing in the Spark
>> Streaming
>> > framework
>> > SPARK-9930  New feature transformers - ChiSqSelector,
>> QuantileDiscretizer,
>> > SQL transformer
>> > SPARK-6517  Bisecting K-Means clustering - Fast top-down clustering
>> variant
>> > of K-Means
>> >
>> > API improvements
>> >
>> > ML Pipelines
>> >
>> > SPARK-6725  Pipeline persistence - Save/load for ML Pipelines, with
>> partial
>> > coverage of spark.mlalgorithms
>> > SPARK-5565  LDA in ML Pipelines - API for Latent Dirichlet Allocation
>> in ML
>> > Pipelines
>> >
>> > R API
>> >
>> > SPARK-9836  R-like statistics for GLMs - (Partial) R-like stats for
>> ordinary
>> > least squares via summary(model)
>> > SPARK-9681  Feature interactions in R formula - Interaction operator
>> ":" in
>> > R formula
>> >
>> > Python API - Many improvements to Python API to approach feature parity
>> >
>> > Misc improvements
>> >
>> > SPARK-7685 , SPARK-9642  Instance weights for GLMs - Logistic and Linear
>> > Regression can take instance weights
>> > SPARK-10384, SPARK-10385 Univariate and bivariate statistics in
>> DataFrames -
>> > Variance, stddev, correlations, etc.
>> > SPARK-10117 LIBSVM data source - LIBSVM as a SQL data source
>> >
>> > Documentation improvements
>> >
>> > SPARK-7751  @since versions - Documentation includes initial version
>> when
>> > classes and methods were added
>> > SPARK-11337 Testable example code - Automated testing for code in user
>> guide
>> > examples
>> >
>> > Deprecations
>> >
>> > In spark.mllib.clustering.KMeans, the "runs" parameter has been
>> deprecated.
>> > In spark.ml.classification.LogisticRegressionModel and
>> > spark.ml.regression.LinearRegressionModel, the "weights" field has been
>> > deprecated, in favor of the new name "coefficients." This helps
>> disambiguate
>> > from instance (row) weights given to algorithms.
>> >
>> > Changes of behavior
>> >
>> > spark.mllib.tree.GradientBoostedTrees validationTol has changed
>> semantics in
>> > 1.6. Previously, it was a threshold for absolute change in error. Now,
>> it
>> > resembles the behavior of GradientDescent convergenceTol: For large
>> errors,
>> > it uses relative error (relative to the previous error); for small
>> errors (<
>> > 0.01), it uses absolute error.
>> > spark.ml.feature.RegexTokenizer: Previously, it did not convert strings
>> to
>> > lowercase before tokenizing. Now, it converts to lowercase by default,
>> with
>> > an option not to. This matches the behavior of the simpler Tokenizer
>> > transformer.
>> > Spark SQL's partition discovery has been changed to only discover
>> partition
>> > directories that are children of the given path. (i.e. if
>> > path="/my/data/x=1" then x=1 will no longer be considered a partition
>> but
>> > only children of x=1.) This behavior can be overridden by manually
>> > specifying the basePath that partitioning discovery should start with
>> > (SPARK-11678).
>> > When casting a value of an integral type to timestamp (e.g. casting a
>> long
>> > value to timestamp), the value is treated as being in seconds instead of
>> > milliseconds (SPARK-11724).
>> > With the improved query planner for queries having distinct aggregations
>> > (SPARK-9241), the plan of a query having a single distinct aggregation
>> has
>> > been changed to a more robust version. To switch back to the plan
>> generated
>> > by Spark 1.5's planner, please set
>> > spark.sql.specializeSingleDistinctAggPlanning to true (SPARK-12077).
>>
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>>
>>
>
>
> --
>
> --
> Iulian Dragos
>
> ------
> Reactive Apps on the JVM
> www.typesafe.com
>
>

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