前往小程序,Get更优阅读体验!
立即前往
首页
学习
活动
专区
工具
TVP
发布
社区首页 >专栏 >Flink on YARN模式下TaskManager的内存分配探究

Flink on YARN模式下TaskManager的内存分配探究

作者头像
王知无-import_bigdata
发布2021-06-01 14:21:52
1.3K0
发布2021-06-01 14:21:52
举报
文章被收录于专栏:大数据成神之路

我们使用如下的参数提交了Flink on YARN作业(per-job模式)。

代码语言:javascript
复制
/opt/flink-1.9.0/bin/flink run \
--detached \
--jobmanager yarn-cluster \
--yarnname "x.y.z" \
--yarnjobManagerMemory 2048 \
--yarntaskManagerMemory 4096 \
--yarnslots 2 \
--parallelism 20 \
--class x.y.z \
xyz-1.0.jar

该作业启动了10个TaskManager,并正常运行。来到该任务的Web界面,随便打开一个TaskManager页面,看看它的内存情况。

可见,虽然我们在参数中设置了TaskManager的内存为4GB大,但是上图显示的JVM堆大小只有2.47GB,另外还有一项“Flink Managed Memory”为1.78GB。在用VisualVM监控YarnTaskExecutorRunner时,会发现其JVM内存参数被如下设置:

显然Xmx+MaxDirectMemorySize才是我们在启动参数中设定的TM内存大小(4GB)。那么为什么会这样设置?“Flink Managed Memory”又是什么鬼?下面就来弄懂这些问题。

TaskManager内存布局如下图所示。

为了减少object overhead,Flink主要采用序列化的方式存储各种对象。序列化存储的最小单位叫做MemorySegment,底层为字节数组,大小由taskmanager.memory.segment-size参数指定,默认32KB大。下面分别介绍各块内存:

  • 网络缓存(Network Buffer):用于网络传输及与网络相关的动作(shuffle、广播等)的内存块,由MemorySegment组成。从Flink 1.5版本之后,网络缓存固定分配在堆外,这样可以充分利用零拷贝等技术。与它相关的三个参数及我们的设定值如下:
代码语言:javascript
复制
# 网络缓存占TM内存的默认比例,默认0.1
taskmanager.network.memory.fraction: 0.15
# 网络缓存的最小值和最大值 ,默认64MB和1GB
taskmanager.network.memory.min: 128mb
taskmanager.network.memory.max: 1gb
  • 托管内存(Flink Managed Memory):用于所有Flink内部算子逻辑的内存分配,以及中间数据的存储,同样由MemorySegment组成,并通过Flink的MemoryManager组件管理。它默认在堆内分配,如果开启堆外内存分配的开关,也可以在堆内、堆外同时分配。与它相关的两个参数如下:
代码语言:javascript
复制
# 堆内托管内存占TM堆内内存的比例,默认0.7
taskmanager.memory.fraction: 0.7
# 是否允许分配堆外托管内存,默认不允许
taskmanager.memory.off-heap: false

由此也可见,Flink的内存管理不像Spark一样区分Storage和Execution内存,而是直接合二为一,更加灵活。

  • 空闲内存(Free):虽然名为空闲,但实际上是存储用户代码和数据结构的,固定在堆内,可以理解为堆内内存除去托管内存后剩下的那部分。

如果我们想知道文章开头的问题中各块内存的大小是怎么来的,最好的办法自然是去读源码。下面以Flink 1.9.0源码为例来探索。

TaskManager内存分配逻辑

YARN per-job集群的启动入口位于o.a.f.yarn.YarnClusterDescriptor类中。

代码语言:javascript
复制
    public ClusterClient<ApplicationId> deployJobCluster(
        ClusterSpecification clusterSpecification,
        JobGraph jobGraph,
        boolean detached) throws ClusterDeploymentException {

        // this is required because the slots are allocated lazily
        jobGraph.setAllowQueuedScheduling(true);

        try {
            return deployInternal(
                clusterSpecification,
                "Flink per-job cluster",
                getYarnJobClusterEntrypoint(),
                jobGraph,
                detached);
        } catch (Exception e) {
            throw new ClusterDeploymentException("Could not deploy Yarn job cluster.", e);
        }
    }

其中,ClusterSpecification对象持有该集群的4个基本参数:JobManager内存大小、TaskManager内存大小、TaskManager数量、每个TaskManager的slot数。而deployInternal()方法在开头调用了o.a.f.yarn.AbstractYarnClusterDescriptor抽象类的validateClusterSpecification()方法,用于校验ClusterSpecification是否合法。

代码语言:javascript
复制
    private void validateClusterSpecification(ClusterSpecification clusterSpecification) throws FlinkException {
        try {
            final long taskManagerMemorySize = clusterSpecification.getTaskManagerMemoryMB();
            // We do the validation by calling the calculation methods here
            // Internally these methods will check whether the cluster can be started with the provided
            // ClusterSpecification and the configured memory requirements
            final long cutoff = ContaineredTaskManagerParameters.calculateCutoffMB(flinkConfiguration, taskManagerMemorySize);
            TaskManagerServices.calculateHeapSizeMB(taskManagerMemorySize - cutoff, flinkConfiguration);
        } catch (IllegalArgumentException iae) {
            throw new FlinkException("Cannot fulfill the minimum memory requirements with the provided " +
                "cluster specification. Please increase the memory of the cluster.", iae);
        }
    }

ClusterSpecification.getTaskManagerMemoryMB()方法返回的就是-ytm/--yarntaskManagerMemory参数设定的内存,最终反映在Flink代码中都是taskmanager.heap.size配置项的值。

接下来首先调用ContaineredTaskManagerParameters.calculateCutoffMB()方法,它负责计算一个承载TM的YARN Container需要预留多少内存给TM之外的逻辑来使用。

代码语言:javascript
复制
    public static long calculateCutoffMB(Configuration config, long containerMemoryMB) {
        Preconditions.checkArgument(containerMemoryMB > 0);

        // (1) check cutoff ratio
        final float memoryCutoffRatio = config.getFloat(
            ResourceManagerOptions.CONTAINERIZED_HEAP_CUTOFF_RATIO);

        if (memoryCutoffRatio >= 1 || memoryCutoffRatio <= 0) {
            throw new IllegalArgumentException("The configuration value '"
                + ResourceManagerOptions.CONTAINERIZED_HEAP_CUTOFF_RATIO.key() + "' must be between 0 and 1. Value given="
                + memoryCutoffRatio);
        }

        // (2) check min cutoff value
        final int minCutoff = config.getInteger(
            ResourceManagerOptions.CONTAINERIZED_HEAP_CUTOFF_MIN);

        if (minCutoff >= containerMemoryMB) {
            throw new IllegalArgumentException("The configuration value '"
                + ResourceManagerOptions.CONTAINERIZED_HEAP_CUTOFF_MIN.key() + "'='" + minCutoff
                + "' is larger than the total container memory " + containerMemoryMB);
        }

        // (3) check between heap and off-heap
        long cutoff = (long) (containerMemoryMB * memoryCutoffRatio);
        if (cutoff < minCutoff) {
            cutoff = minCutoff;
        }
        return cutoff;
    }

该方法的执行流程如下:

  1. 获取containerized.heap-cutoff-ratio参数,它代表Container预留的非TM内存占设定的TM内存的比例,默认值0.25;
  2. 获取containerized.heap-cutoff-min参数,它代表Container预留的非TM内存的最小值,默认值600MB;
  3. 按比例计算预留内存,并保证结果不小于最小值。

由此可见,在Flink on YARN时,我们设定的TM内存实际上是Container的内存。也就是说,一个TM能利用的总内存(包含堆内和堆外)是:

代码语言:javascript
复制
tm_total_memory = taskmanager.heap.size - max[containerized.heap-cutoff-min, taskmanager.heap.size * containerized.heap-cutoff-ratio]

用文章开头给的参数实际计算一下:

代码语言:javascript
复制
tm_total_memory = 4096 - max[600, 4096 * 0.25] = 3072

接下来看TaskManagerServices.calculateHeapSizeMB()方法。

代码语言:javascript
复制
    public static long calculateHeapSizeMB(long totalJavaMemorySizeMB, Configuration config) {
        Preconditions.checkArgument(totalJavaMemorySizeMB > 0);

        // all values below here are in bytes

        final long totalProcessMemory = megabytesToBytes(totalJavaMemorySizeMB);
        final long networkReservedMemory = getReservedNetworkMemory(config, totalProcessMemory);
        final long heapAndManagedMemory = totalProcessMemory - networkReservedMemory;

        if (config.getBoolean(TaskManagerOptions.MEMORY_OFF_HEAP)) {
            final long managedMemorySize = getManagedMemoryFromHeapAndManaged(config, heapAndManagedMemory);

            ConfigurationParserUtils.checkConfigParameter(managedMemorySize < heapAndManagedMemory, managedMemorySize,
                TaskManagerOptions.MANAGED_MEMORY_SIZE.key(),
                    "Managed memory size too large for " + (networkReservedMemory >> 20) +
                        " MB network buffer memory and a total of " + totalJavaMemorySizeMB +
                        " MB JVM memory");

            return bytesToMegabytes(heapAndManagedMemory - managedMemorySize);
        }
        else {
            return bytesToMegabytes(heapAndManagedMemory);
        }
    }

为了简化问题及符合我们的实际应用,就不考虑开启堆外托管内存的情况了。这里涉及到了计算Network buffer大小的方法```

代码语言:javascript
复制
NettyShuffleEnvironmentConfiguration.calculateNetworkBufferMemory()。

    public static long calculateNetworkBufferMemory(long totalJavaMemorySize, Configuration config) {
        final int segmentSize = ConfigurationParserUtils.getPageSize(config);

        final long networkBufBytes;
        if (hasNewNetworkConfig(config)) {
            float networkBufFraction = config.getFloat(NettyShuffleEnvironmentOptions.NETWORK_BUFFERS_MEMORY_FRACTION);
            long networkBufSize = (long) (totalJavaMemorySize * networkBufFraction);
            networkBufBytes = calculateNewNetworkBufferMemory(config, networkBufSize, totalJavaMemorySize);
        } else {
            // use old (deprecated) network buffers parameter
            // 旧版逻辑,不再看了
        }

        return networkBufBytes;
    }

    private static long calculateNewNetworkBufferMemory(Configuration config, long networkBufSize, long maxJvmHeapMemory) {
        float networkBufFraction = config.getFloat(NettyShuffleEnvironmentOptions.NETWORK_BUFFERS_MEMORY_FRACTION);
        long networkBufMin = MemorySize.parse(config.getString(NettyShuffleEnvironmentOptions.NETWORK_BUFFERS_MEMORY_MIN)).getBytes();
        long networkBufMax = MemorySize.parse(config.getString(NettyShuffleEnvironmentOptions.NETWORK_BUFFERS_MEMORY_MAX)).getBytes();

        int pageSize = ConfigurationParserUtils.getPageSize(config);
        checkNewNetworkConfig(pageSize, networkBufFraction, networkBufMin, networkBufMax);
        long networkBufBytes = Math.min(networkBufMax, Math.max(networkBufMin, networkBufSize));

        ConfigurationParserUtils.checkConfigParameter(/*...*/);

        return networkBufBytes;
    }

由此可见,网络缓存的大小这样确定:

代码语言:javascript
复制
network_buffer_memory = min[taskmanager.network.memory.max, max(askmanager.network.memory.min, tm_total_memory * taskmanager.network.memory.fraction)]

代入数值:

代码语言:javascript
复制
network_buffer_memory = min[1024, max(128, 3072 * 0.15)] = 460.8

也就是说,TM真正使用的堆内内存为:

代码语言:javascript
复制
tm_heap_memory = tm_total_memory - network_buffer_memory = 3072 - 460.8 ≈ 2611

这完全符合VisualVM截图中的-Xms/-Xmx设定。

同理,可以看一下TaskManager UI中的网络缓存MemorySegment计数。

通过计算得知,网络缓存的实际值与上面算出来的network_buffer_memory值是非常接近的。

那么堆内托管内存的值是怎么计算出来的呢?前面提到了托管内存由MemoryManager管理,来看看TaskManagerServices.createMemoryManager()方法,它用设定好的参数来初始化一个MemoryManager。

代码语言:javascript
复制

    private static MemoryManager createMemoryManager(
            TaskManagerServicesConfiguration taskManagerServicesConfiguration) throws Exception {
        long configuredMemory = taskManagerServicesConfiguration.getConfiguredMemory();
        MemoryType memType = taskManagerServicesConfiguration.getMemoryType();

        final long memorySize;

        boolean preAllocateMemory = taskManagerServicesConfiguration.isPreAllocateMemory();

        if (configuredMemory > 0) {
            if (preAllocateMemory) {
                LOG.info(/*...*/);
            } else {
                LOG.info(/*...*/);
            }
            memorySize = configuredMemory << 20; // megabytes to bytes
        } else {
            // similar to #calculateNetworkBufferMemory(TaskManagerServicesConfiguration tmConfig)
            float memoryFraction = taskManagerServicesConfiguration.getMemoryFraction();

            if (memType == MemoryType.HEAP) {
                long freeHeapMemoryWithDefrag = taskManagerServicesConfiguration.getFreeHeapMemoryWithDefrag();
                // network buffers allocated off-heap -> use memoryFraction of the available heap:
                long relativeMemSize = (long) (freeHeapMemoryWithDefrag * memoryFraction);
                if (preAllocateMemory) {
                    LOG.info(/*...*/);
                } else {
                    LOG.info(/*...*/);
                }
                memorySize = relativeMemSize;
            } else if (memType == MemoryType.OFF_HEAP) {
                long maxJvmHeapMemory = taskManagerServicesConfiguration.getMaxJvmHeapMemory();
                // The maximum heap memory has been adjusted according to the fraction (see
                // calculateHeapSizeMB(long totalJavaMemorySizeMB, Configuration config)), i.e.
                // maxJvmHeap = jvmTotalNoNet - jvmTotalNoNet * memoryFraction = jvmTotalNoNet * (1 - memoryFraction)
                // directMemorySize = jvmTotalNoNet * memoryFraction
                long directMemorySize = (long) (maxJvmHeapMemory / (1.0 - memoryFraction) * memoryFraction);
                if (preAllocateMemory) {
                    LOG.info(/*...*/);
                } else {
                    LOG.info(/*...*/);
                }
                memorySize = directMemorySize;
            } else {
                throw new RuntimeException("No supported memory type detected.");
            }
        }

        // now start the memory manager
        final MemoryManager memoryManager;
        try {
            memoryManager = new MemoryManager(
                memorySize,
                taskManagerServicesConfiguration.getNumberOfSlots(),
                taskManagerServicesConfiguration.getPageSize(),
                memType,
                preAllocateMemory);
        } catch (OutOfMemoryError e) {
            // ...
        }
        return memoryManager;
    }

简要叙述一下流程:

  1. 获取taskmanager.memory.size参数,用来确定托管内存的绝对大小;
  2. 如果taskmanager.memory.size未设置,就继续获取前面提到过的taskmanager.memory.fraction参数;
  3. 只考虑堆内内存的情况,调用TaskManagerServicesConfiguration.getFreeHeapMemoryWithDefrag()方法,先主动触发GC,然后获取可用的堆内存量。可见,如果没有意外,程序初始化时该方法返回的值与前文的-Xms/-Xmx应该相同;
  4. 计算托管内存大小和其他参数,返回MemoryManager实例。

一般来讲我们都不会简单粗暴地设置taskmanager.memory.size。所以:

代码语言:javascript
复制
flink_managed_memory = tm_heap_memory * taskmanager.memory.fraction = 2611 * 0.7 ≈ 1827

这就是TaskManager UI中显示的托管内存大小了。

本文参与 腾讯云自媒体同步曝光计划,分享自微信公众号。
原始发表:2021-05-10,如有侵权请联系 cloudcommunity@tencent.com 删除

本文分享自 大数据技术与架构 微信公众号,前往查看

如有侵权,请联系 cloudcommunity@tencent.com 删除。

本文参与 腾讯云自媒体同步曝光计划  ,欢迎热爱写作的你一起参与!

评论
登录后参与评论
0 条评论
热度
最新
推荐阅读
目录
  • TaskManager内存分配逻辑
相关产品与服务
大数据
全栈大数据产品,面向海量数据场景,帮助您 “智理无数,心中有数”!
领券
问题归档专栏文章快讯文章归档关键词归档开发者手册归档开发者手册 Section 归档