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* Optimized Analytics Package for Spark* Platform is under Apache 2.0 (https://www.apache.org/licenses/LICENSE-2.0).
You can find the all the PMem Spill documents on the project web page.
Spark supports to cache RDDs in memory and disk. We know that memory is small in size and costly. Disks are much slower, although with large capacity. PMem Spill supports RDD Cache with Intel Optane PMem, adds PMem storage level to the existing RDD cache solutions besides memory and disk.
One of the most important capabilities in Spark is persisting (or caching) a dataset across operations, each persisted RDD can be stored using a different storage level, allowing you, for example,
to persist the dataset on disk, persist it in memory but as serialized Java objects (to save space), replicate it across nodes.
These levels are set by passing a StorageLevel
object, to persist()
. The cache()
method is a shorthand for using the default storage level,
which is StorageLevel.MEMORY_ONLY
(store deserialized objects in memory). The full set of storage levels is:
Storage Level | Meaning |
---|---|
MEMORY_ONLY | Store RDD as deserialized Java objects in the JVM. If the RDD does not fit in memory, some partitions will not be cached and will be recomputed on the fly each time they're needed. This is the default level. |
MEMORY_AND_DISK | Store RDD as deserialized Java objects in the JVM. If the RDD does not fit in memory, store the partitions that don't fit on disk, and read them from there when they're needed. |
MEMORY_ONLY_SER (Java and Scala) | Store RDD as serialized Java objects (one byte array per partition). This is generally more space-efficient than deserialized objects, especially when using a fast serializer, but more CPU-intensive to read. |
MEMORY_AND_DISK_SER (Java and Scala) | Similar to MEMORY_ONLY_SER, but spill partitions that don't fit in memory to disk instead of recomputing them on the fly each time they're needed. |
DISK_ONLY | Store the RDD partitions only on disk. |
MEMORY_ONLY_2, MEMORY_AND_DISK_2, etc. | Same as the levels above, but replicate each partition on two cluster nodes. |
OFF_HEAP (experimental) | Similar to MEMORY_ONLY_SER, but store the data in off-heap memory. This requires off-heap memory to be enabled. |
PMEM_ONLY | Similar to MEMORY_ONLY_SER, but spill partitions that don't fit in memory to Intel Optane PMem instead of recomputing them on the fly each time they're needed. |
PMEM_AND_DISK | Similar to MEMORY_AND_DISK_SER, but spill partitions that don't fit in memory to Intel Optane PMem and disk instead of recomputing them on the fly each time they're needed. |
Spark's storage levels are meant to provide different trade-offs between memory usage and CPU efficiency.
PMem storage level is added to support a new tier for storage level besides memory and disk. Using PMem library to access Optane PMem can help to avoid the overhead from disk. Large capacity and high I/O performance of PMem shows better performance than tied DRAM and disk solution under the same cost.
We have provided a Conda package which will automatically install dependencies needed by OAP, you can refer to OAP-Installation-Guide for more information. If you have finished OAP-Installation-Guide, you needn't compile and install Memkind, and you can find compiled OAP jars in $HOME/miniconda2/envs/oapenv/oap_jars
.
The following are required to configure OAP to use PMem cache in AppDirect mode.
-
PMem hardware is successfully deployed on each node in cluster.
-
Directories exposing PMem hardware on each socket. For example, on a two socket system the mounted PMem directories should appear as
/mnt/pmem0
and/mnt/pmem1
. Correctly installed PMem must be formatted and mounted on every cluster worker node.// use ipmctl command to show topology and dimm info of PMem ipmctl show -topology ipmctl show -dimm // provision PMem in app direct mode ipmctl create -goal PersistentMemoryType=AppDirect // reboot system to make configuration take affect reboot // check capacity provisioned for app direct mode(AppDirectCapacity) ipmctl show -memoryresources // show the PMem region information ipmctl show -region // create namespace based on the region, multi namespaces can be created on a single region ndctl create-namespace -m fsdax -r region0 ndctl create-namespace -m fsdax -r region1 // show the created namespaces fdisk -l // create and mount file system echo y | mkfs.ext4 /dev/pmem0 echo y | mkfs.ext4 /dev/pmem1 mkdir -p /mnt/pmem0 mkdir -p /mnt/pmem1 mount -o dax /dev/pmem0 /mnt/pmem0 mount -o dax /dev/pmem1 /mnt/pmem1
In this case file systems are generated for 2 numa nodes, which can be checked by "numactl --hardware". For a different number of numa nodes, a corresponding number of namespaces should be created to assure correct file system paths mapping to numa nodes.
-
Make sure Memkind library installed on every cluster worker node.
The Memkind library depends onlibnuma
at the runtime, so it must already exist in the worker node system. Build the latest memkind lib from source:git clone -b v1.10.1 https://github.com/memkind/memkind cd memkind ./autogen.sh ./configure make make install
-
For KMem Dax mode, we need to configure PMem as system ram. Kernel 5.1 or above is required to this mode.
daxctl migrate-device-model ndctl create-namespace --mode=devdax --map=mem ndctl list daxctl reconfigure-device dax0.0 --mode=system-ram daxctl reconfigure-device dax1.0 --mode=system-ram daxctl reconfigure-device daxX.Y --mode=system-ram
Refer Memkind KMem for details.
Before building PMem Spill, install PMem-Common locally:
git clone -b <tag-version> https://github.com/oap-project/pmem-common.git
cd pmem-common
mvn clean install -DskipTests
To build pmem spill, you can run below commands:
cd ${PMEM-SPILL}
mvn clean package -DskipTests
You will find jar files under oap-common/target and oap-spark/target.
To enable rdd cache on Intel Optane PMem, you need add the following configurations to spark-defaults.conf
spark.memory.pmem.extension.enabled true
spark.memory.pmem.initial.path [Your Optane PMem paths seperate with comma]
spark.memory.pmem.initial.size [Your Optane PMem size in GB]
spark.memory.pmem.usable.ratio [from 0 to 1, 0.85 is recommended]
spark.yarn.numa.enabled true
spark.yarn.numa.num [Your numa node number]
spark.memory.pmem.mode [AppDirect | KMemDax]
spark.files file://${PATH_TO_PMEM_SPILL_JAR}/pmem-rdd-cache-<version>-with-spark-<version>.jar,file://${PATH_TO_PMEM_COMMON_JAR}/pmem-common-<version>-with-spark-<version>.jar
spark.executor.extraClassPath ./pmem-rdd-cache-<version>-with-spark-<version>.jar:./pmem-common-<version>-with-spark-<version>.jar
spark.driver.extraClassPath file://${PATH_TO_PMEM_SPILL_JAR}/pmem-rdd-cache-<version>-with-spark-<version>.jar:file://${PATH_TO_PMEM_COMMON_JAR}/pmem-common-<version>-with-spark-<version>.jar
There's a new StorageLevel: PMEM_AND_DISK being added to cache data to Optane PMem, at the places you previously cache/persist data to memory, use PMEM_AND_DISK to substitute the previous StorageLevel, data will be cached to Optane PMem.
persist(StorageLevel.PMEM_AND_DISK)
You can use Hibench to run K-means workload:
After you Build Hibench, then follow Run SparkBench documentation. Here are some tips besides this documentation you need to notice. Follow the documentation to configure these 4 files:
HiBench/conf/hadoop.conf
HiBench/conf/hibench.conf
HiBench/conf/spark.conf
HiBench/conf/workloads/ml/kmeans.conf
Note that you need add hibench.kmeans.storage.level PMEM_AND_DISK
to kmeans.conf
, which can enable both PMem and Disk to cache data.
If you completed OAP-Installation-Guide, you also need add the following configs to spark.conf
spark.executorEnv.LD_LIBRARY_PATH $HOME/miniconda2/envs/oapenv/lib
spark.executor.extraLibraryPath $HOME/miniconda2/envs/oapenv/lib
spark.driver.extraLibraryPath $HOME/miniconda2/envs/oapenv/lib
Then you can run the following 2 commands to run K-means workloads:
bin/workloads/ml/kmeans/prepare/prepare.sh
bin/workloads/ml/kmeans/spark/run.sh
Then you can find the log as below:
patching args=
Parsing conf: /home/wh/HiBench/conf/hadoop.conf
Parsing conf: /home/wh/HiBench/conf/hibench.conf
Parsing conf: /home/wh/HiBench/conf/spark.conf
Parsing conf: /home/wh/HiBench/conf/workloads/ml/kmeans.conf
probe sleep jar: /opt/Beaver/hadoop/share/hadoop/mapreduce/hadoop-mapreduce-client-jobclient-2.7.3-tests.jar
start ScalaSparkKmeans bench
hdfs rm -r: /opt/Beaver/hadoop/bin/hadoop --config /opt/Beaver/hadoop/etc/hadoop fs -rm -r -skipTrash hdfs://vsr219:9000/HiBench/Kmeans/Output
rm: `hdfs://vsr219:9000/HiBench/Kmeans/Output': No such file or directory
hdfs du -s: /opt/Beaver/hadoop/bin/hadoop --config /opt/Beaver/hadoop/etc/hadoop fs -du -s hdfs://vsr219:9000/HiBench/Kmeans/Input
Export env: SPARKBENCH_PROPERTIES_FILES=/home/wh/HiBench/report/kmeans/spark/conf/sparkbench/sparkbench.conf
Export env: HADOOP_CONF_DIR=/opt/Beaver/hadoop/etc/hadoop
Submit Spark job: /opt/Beaver/spark/bin/spark-submit --properties-file /home/wh/HiBench/report/kmeans/spark/conf/sparkbench/spark.conf --class com.intel.hibench.sparkbench.ml.DenseKMeans --master yarn-client --num-executors 2 --executor-cores 45 --executor-memory 100g /home/wh/HiBench/sparkbench/assembly/target/sparkbench-assembly-8.0-SNAPSHOT-dist.jar -k 10 --numIterations 5 --storageLevel PMEM_AND_DISK hdfs://vsr219:9000/HiBench/Kmeans/Input/samples
20/07/03 09:07:49 INFO util.ShutdownHookManager: Deleting directory /tmp/spark-43459116-f4e3-4fe1-bb29-9bca0afa5286
finish ScalaSparkKmeans bench
Open the Spark History Web UI and go to the Storage tab page to verify the cache metrics.
For the scenario that data will exceed the block cache capacity. Memkind 1.9.0 and kernel 4.18 is recommended to avoid the unexpected issue.
Currently, PMem Spill packages includes all Spark changed files.
- MemoryMode.java
- MemoryManager.scala
- StorageMemoryPool.scala
- UnifiedMemoryManager.scala
- MemoryStore.scala
- BlockManager.scala
- StorageLevel.scala
- TestMemoryManager
Please make sure your code change in above source code will not break current function.
The files from this package should avoid depending on other OAP module except PMem-Common.