+1





在2017年08月16日 04:53,Jiri Kremser<jkrem...@redhat.com> 写道:
+1 (non-binding)



On Tue, Aug 15, 2017 at 10:19 PM, Shubham Chopra <shubham.cho...@gmail.com> 
wrote:

+1 (non-binding)


~Shubham.


On Tue, Aug 15, 2017 at 2:11 PM, Erik Erlandson <eerla...@redhat.com> wrote:



Kubernetes has evolved into an important container orchestration platform; it 
has a large and growing user base and an active ecosystem.  Users of Apache 
Spark who are also deploying applications on Kubernetes (or are planning to) 
will have convergence-related motivations for migrating their Spark 
applications to Kubernetes as well. It avoids the need for deploying separate 
cluster infra for Spark workloads and allows Spark applications to take full 
advantage of inhabiting the same orchestration environment as other 
applications.  In this respect, native Kubernetes support for Spark represents 
a way to optimize uptake and retention of Apache Spark among the members of the 
expanding Kubernetes community.



On Tue, Aug 15, 2017 at 8:43 AM, Erik Erlandson <eerla...@redhat.com> wrote:

+1 (non-binding)




On Tue, Aug 15, 2017 at 8:32 AM, Anirudh Ramanathan <fox...@google.com> wrote:

Spark on Kubernetes effort has been developed separately in a fork, and linked 
back from the Apache Spark project as an experimental backend. We're ~6 months 
in, have had 5 releases. 

2 Spark versions maintained (2.1, and 2.2)
Extensive integration testing and refactoring efforts to maintain code quality
Developer and user-facing documentation
10+ consistent code contributors from different organizations involved in 
actively maintaining and using the project, with several more members involved 
in testing and providing feedback.
The community has delivered several talks on Spark-on-Kubernetes generating 
lots of feedback from users.
In addition to these, we've seen efforts spawn off such as:

HDFS on Kubernetes with Locality and Performance Experiments

Kerberized access to HDFS from Spark running on Kubernetes

Following the SPIP process, I'm putting this SPIP up for a vote.

+1: Yeah, let's go forward and implement the SPIP.

+0: Don't really care.

-1: I don't think this is a good idea because of the following technical 
reasons.
If there is any further clarification desired, on the design or the 
implementation, please feel free to ask questions or provide feedback.




SPIP: Kubernetes as A Native Cluster Manager




Full Design Doc: link


JIRA: https://issues.apache.org/jira/browse/SPARK-18278

Kubernetes Issue: https://github.com/kubernetes/kubernetes/issues/34377




Authors: Yinan Li, Anirudh Ramanathan, Erik Erlandson, Andrew Ash, Matt Cheah,

Ilan Filonenko, Sean Suchter, Kimoon Kim

Background and Motivation

Containerization and cluster management technologies are constantly evolving in 
the cluster computing world. Apache Spark currently implements support for 
Apache Hadoop YARN and Apache Mesos, in addition to providing its own 
standalone cluster manager. In 2014, Google announced development of Kubernetes 
which has its own unique feature set and differentiates itself from YARN and 
Mesos. Since its debut, it has seen contributions from over 1300 contributors 
with over 50000 commits. Kubernetes has cemented itself as a core player in the 
cluster computing world, and cloud-computing providers such as Google Container 
Engine, Google Compute Engine, Amazon Web Services, and Microsoft Azure support 
running Kubernetes clusters.




This document outlines a proposal for integrating Apache Spark with Kubernetes 
in a first class way, adding Kubernetes to the list of cluster managers that 
Spark can be used with. Doing so would allow users to share their computing 
resources and containerization framework between their existing applications on 
Kubernetes and their computational Spark applications. Although there is 
existing support for running a Spark standalone cluster on Kubernetes, there 
are still major advantages and significant interest in having native execution 
support. For example, this integration provides better support for 
multi-tenancy and dynamic resource allocation. It also allows users to run 
applications of different Spark versions of their choices in the same cluster.




The feature is being developed in a separate fork in order to minimize risk to 
the main project during development. Since the start of the development in 
November of 2016, it has received over 100 commits from over 20 contributors 
and supports two releases based on Spark 2.1 and 2.2 respectively. 
Documentation is also being actively worked on both in the main project 
repository and also in the repository 
https://github.com/apache-spark-on-k8s/userdocs. Regarding real-world use 
cases, we have seen cluster setup that uses 1000+ cores. We are also seeing 
growing interests on this project from more and more organizations.




While it is easy to bootstrap the project in a forked repository, it is hard to 
maintain it in the long run because of the tricky process of rebasing onto the 
upstream and lack of awareness in the large Spark community. It would be 
beneficial to both the Spark and Kubernetes community seeing this feature being 
merged upstream. On one hand, it gives Spark users the option of running their 
Spark workloads along with other workloads that may already be running on 
Kubernetes, enabling better resource sharing and isolation, and better cluster 
administration. On the other hand, it gives Kubernetes a leap forward in the 
area of large-scale data processing by being an officially supported cluster 
manager for Spark. The risk of merging into upstream is low because most of the 
changes are purely incremental, i.e., new Kubernetes-aware implementations of 
existing interfaces/classes in Spark core are introduced. The development is 
also concentrated in a single place at resource-managers/kubernetes. The risk 
is further reduced by a comprehensive integration test framework, and an active 
and responsive community of future maintainers.

Target Personas

Devops, data scientists, data engineers, application developers, anyone who can 
benefit from having Kubernetes as a native cluster manager for Spark.

Goals

Make Kubernetes a first-class cluster manager for Spark, alongside Spark 
Standalone, Yarn, and Mesos.

Support both client and cluster deployment mode.

Support dynamic resource allocation.

Support Spark Java/Scala, PySpark, and Spark R applications.

Support secure HDFS access.

Allow running applications of different Spark versions in the same cluster 
through the ability to specify the driver and executor Docker images on a 
per-application basis.

Support specification and enforcement of limits on both CPU cores and memory.

Non-Goals

Support cluster resource scheduling and sharing beyond capabilities offered 
natively by the Kubernetes per-namespace resource quota model.

Proposed API Changes

Most API changes are purely incremental, i.e., new Kubernetes-aware 
implementations of existing interfaces/classes in Spark core are introduced. 
Detailed changes are as follows.

A new cluster manager option KUBERNETES is introduced and some changes are made 
to SparkSubmit to make it be aware of this option.

A new implementation of CoarseGrainedSchedulerBackend, namely 
KubernetesClusterSchedulerBackend is responsible for managing the creation and 
deletion of executor Pods through the Kubernetes API.

A new implementation of TaskSchedulerImpl, namely KubernetesTaskSchedulerImpl, 
and a new implementation of TaskSetManager, namely Kubernetes TaskSetManager, 
are introduced for Kubernetes-aware task scheduling.

When dynamic resource allocation is enabled, a new implementation of 
ExternalShuffleService, namely KubernetesExternalShuffleService is introduced.

Design Sketch

Below we briefly describe the design. For more details on the design and 
architecture, please refer to the architecture documentation. The main idea of 
this design is to run Spark driver and executors inside Kubernetes Pods. Pods 
are a co-located and co-scheduled group of one or more containers run in a 
shared context. The driver is responsible for creating and destroying executor 
Pods through the Kubernetes API, while Kubernetes is fully responsible for 
scheduling the Pods to run on available nodes in the cluster. In the cluster 
mode, the driver also runs in a Pod in the cluster, created through the 
Kubernetes API by a Kubernetes-aware submission client called by the 
spark-submit script. Because the driver runs in a Pod, it is reachable by the 
executors in the cluster using its Pod IP. In the client mode, the driver runs 
outside the cluster and calls the Kubernetes API to create and destroy executor 
Pods. The driver must be routable from within the cluster for the executors to 
communicate with it.




The main component running in the driver is the 
KubernetesClusterSchedulerBackend, an implementation of 
CoarseGrainedSchedulerBackend, which manages allocating and destroying 
executors via the Kubernetes API, as instructed by Spark core via calls to 
methods doRequestTotalExecutors and doKillExecutors, respectively. Within the 
KubernetesClusterSchedulerBackend, a separate kubernetes-pod-allocator thread 
handles the creation of new executor Pods with appropriate throttling and 
monitoring. Throttling is achieved using a feedback loop that makes decision on 
submitting new requests for executors based on whether previous executor Pod 
creation requests have completed. This indirection is necessary because the 
Kubernetes API server accepts requests for new Pods optimistically, with the 
anticipation of being able to eventually schedule them to run. However, it is 
undesirable to have a very large number of Pods that cannot be scheduled and 
stay pending within the cluster. The throttling mechanism gives us control over 
how fast an application scales up (which can be configured), and helps prevent 
Spark applications from DOS-ing the Kubernetes API server with too many Pod 
creation requests. The executor Pods simply run the 
CoarseGrainedExecutorBackend class from a pre-built Docker image that contains 
a Spark distribution.




There are auxiliary and optional components: ResourceStagingServer and 
KubernetesExternalShuffleService, which serve specific purposes described 
below. The ResourceStagingServer serves as a file store (in the absence of a 
persistent storage layer in Kubernetes) for application dependencies uploaded 
from the submission client machine, which then get downloaded from the server 
by the init-containers in the driver and executor Pods. It is a Jetty server 
with JAX-RS and has two endpoints for uploading and downloading files, 
respectively. Security tokens are returned in the responses for file uploading 
and must be carried in the requests for downloading the files. The 
ResourceStagingServer is deployed as a Kubernetes Service backed by a 
Deployment in the cluster and multiple instances may be deployed in the same 
cluster. Spark applications specify which ResourceStagingServer instance to use 
through a configuration property.




The KubernetesExternalShuffleService is used to support dynamic resource 
allocation, with which the number of executors of a Spark application can 
change at runtime based on the resource needs. It provides an additional 
endpoint for drivers that allows the shuffle service to delete driver 
termination and clean up the shuffle files associated with corresponding 
application. There are two ways of deploying the 
KubernetesExternalShuffleService: running a shuffle service Pod on each node in 
the cluster or a subset of the nodes using a DaemonSet, or running a shuffle 
service container in each of the executor Pods. In the first option, each 
shuffle service container mounts a hostPath volume. The same hostPath volume is 
also mounted by each of the executor containers, which must also have the 
environment variable SPARK_LOCAL_DIRS point to the hostPath. In the second 
option, a shuffle service container is co-located with an executor container in 
each of the executor Pods. The two containers share an emptyDir volume where 
the shuffle data gets written to. There may be multiple instances of the 
shuffle service deployed in a cluster that may be used for different versions 
of Spark, or for different priority levels with different resource quotas.




New Kubernetes-specific configuration options are also introduced to facilitate 
specification and customization of driver and executor Pods and related 
Kubernetes resources. For example, driver and executor Pods can be created in a 
particular Kubernetes namespace and on a particular set of the nodes in the 
cluster. Users are allowed to apply labels and annotations to the driver and 
executor Pods.




Additionally, secure HDFS support is being actively worked on following the 
design here. Both short-running jobs and long-running jobs that need periodic 
delegation token refresh are supported, leveraging built-in Kubernetes 
constructs like Secrets. Please refer to the design doc for details.

Rejected Designs
Resource Staging by the Driver

A first implementation effectively included the ResourceStagingServer in the 
driver container itself. The driver container ran a custom command that opened 
an HTTP endpoint and waited for the submission client to send resources to it. 
The server would then run the driver code after it had received the resources 
from the submission client machine. The problem with this approach is that the 
submission client needs to deploy the driver in such a way that the driver 
itself would be reachable from outside of the cluster, but it is difficult for 
an automated framework which is not aware of the cluster's configuration to 
expose an arbitrary pod in a generic way. The Service-based design chosen 
allows a cluster administrator to expose the ResourceStagingServer in a manner 
that makes sense for their cluster, such as with an Ingress or with a NodePort 
service.

Kubernetes External Shuffle Service

Several alternatives were considered for the design of the shuffle service. The 
first design postulated the use of long-lived executor pods and sidecar 
containers in them running the shuffle service. The advantage of this model was 
that it would let us use emptyDir for sharing as opposed to using node local 
storage, which guarantees better lifecycle management of storage by Kubernetes. 
The apparent disadvantage was that it would be a departure from the traditional 
Spark methodology of keeping executors for only as long as required in dynamic 
allocation mode. It would additionally use up more resources than strictly 
necessary during the course of long-running jobs, partially losing the 
advantage of dynamic scaling.




Another alternative considered was to use a separate shuffle service manager as 
a nameserver. This design has a few drawbacks. First, this means another 
component that needs authentication/authorization management and maintenance. 
Second, this separate component needs to be kept in sync with the Kubernetes 
cluster. Last but not least, most of functionality of this separate component 
can be performed by a combination of the in-cluster shuffle service and the 
Kubernetes API server.

Pluggable Scheduler Backends

Fully pluggable scheduler backends were considered as a more generalized 
solution, and remain interesting as a possible avenue for future-proofing 
against new scheduling targets.  For the purposes of this project, adding a new 
specialized scheduler backend for Kubernetes was chosen as the approach due to 
its very low impact on the core Spark code; making scheduler fully pluggable 
would be a high-impact high-risk modification to Spark’s core libraries. The 
pluggable scheduler backends effort is being tracked in JIRA-19700.










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