MongoDBRiverPlugin

MongoDBRiverPlugin类是插件注册类,它继承自AbstractPlugin,其功能是

1.      在RiverModule中注册一个MongoDBRiver

2.      在RestModule中注册一个RestMongoDBRiverAction

package org.elasticsearch.plugin.river.mongodb;
import org.elasticsearch.plugins.AbstractPlugin;
import org.elasticsearch.rest.RestModule;
import org.elasticsearch.rest.action.mongodb.RestMongoDBRiverAction;
import org.elasticsearch.river.RiversModule;
import org.elasticsearch.river.mongodb.MongoDBRiver;
import org.elasticsearch.river.mongodb.MongoDBRiverModule;
/**
* @author flaper87 (Flavio Percoco Premoli)
* @author aparo (Alberto Paro)
* @author kryptt (Rodolfo Hansen)
*/
public class MongoDBRiverPlugin extends AbstractPlugin {
@Override
public String name() {
return MongoDBRiver.NAME;
}
@Override
public String description() {
return MongoDBRiver.DESCRIPTION;
}
/**
* Register the MongoDB river to Elasticsearch node
*
* @param module
*/
public void onModule(RiversModule module) {
module.registerRiver(MongoDBRiver.TYPE, MongoDBRiverModule.class);
}
/**
* Register the REST move to Elasticsearch node
*
* @param module
*/
public void onModule(RestModule module) {
module.addRestAction(RestMongoDBRiverAction.class);
}
}


MongoDBRiver

首先看river部分 org.elasticsearch.river.mongodb.MongoDBRiver是核心类,构造函数中都是都是elasticsearch 的配置信息和服务


参数类型

参数名称

含义

取值

RiverName

riverName

名称

 

RiverSettings

settings

设置信息

 

String

riverIndexName

索引名

 

Client

client

客户端

 

ScriptService

scriptService 

脚本服务

 

MongoDBRiverDefinition

definition

解析后的定义

MongoDBRiverDefinition.parseSettings(riverName.name(),riverIndexName, settings, scriptService);

还有一个参数stream表示操作流,用来存储需要放在mongo oplog中的数据队列

BlockingQueue<QueueEntry> stream = 
definition.getThrottleSize() == -1 ? 
new LinkedTransferQueue<QueueEntry>() 
: new ArrayBlockingQueue<QueueEntry>(definition.getThrottleSize());

可以看到,如果definition中设定的阈值大小没有设定的话,使用一个链表数据结构作为队列,否则使用一个数组队列。不过两种情况使用的数据结构都是多线程使用的数据结构BlockingQueue阻塞队列。阻塞队列是用在“生产者-消费者”模式的主要数据结构,其作用是如果队列空,则消费者阻塞;如果队列满,则生产者阻塞。而且队列支持多个生产者和消费者线程。其中QueueEntry定义如下,其中Operation是一个枚举,包含了各种mongodb操作:INSERT,UPDATE, DELETE, DROP_COLLECTION, DROP_DATABASE, COMMAND, UNKNOWN;

protected static class QueueEntry {
private final DBObject data;
private final Operation operation;
private final Timestamp<?> oplogTimestamp;
private final String collection;
public QueueEntry(DBObject data, String collection) {
this(null, Operation.INSERT, data, collection);
}
public QueueEntry(Timestamp<?> oplogTimestamp, Operation oplogOperation, DBObject data, String collection) {
this.data = data;
this.operation = oplogOperation;
this.oplogTimestamp = oplogTimestamp;
this.collection = collection;
}
public boolean isOplogEntry() {
return oplogTimestamp != null;
}
public boolean isAttachment() {
return (data instanceof GridFSDBFile);
}
public DBObject getData() {
return data;
}
public Operation getOperation() {
return operation;
}
public Timestamp<?> getOplogTimestamp() {
return oplogTimestamp;
}
public String getCollection() {
return collection;
}
}
}

最后MongoDBRiver构造函数里面还有一个全局参数SharedContext context,这个参数包含了这个队列的引用,并且包含了整体运行状态的一个上下文状态:UNKNOWN, START_FAILED, RUNNING, STOPPED, IMPORT_FAILED,INITIAL_IMPORT_FAILED, SCRIPT_IMPORT_FAILED, RIVER_STALE;

this.context = new SharedContext(stream, Status.STOPPED);

初始化之后就可以,elasticsearch将通过start方法启动这个插件,启动逻辑如下:

* 首先是各种状态的检查:

     1、 用client获取elastic的状态,转成Status


client.prepareGet("_river", "mongodb-river", "_riverstatus").get()
XContentMapValues.extractValue("mongodb.status")

    

2、如果状态是IMPORT_FAILED、INITIAL_IMPORT_FAILED、SCRIPT_IMPORT_FAILED Status.START_FAILED 或者 STOPPED;表示有问题,直接打印日志并返回


    

    3、 如果没有问题,则使用方法设定river为启动状态:

MongoDBRiverHelper.setRiverStatus(client, riverName.getName(), Status.RUNNING);
context.setStatus(Status.RUNNING);



    4、如果不存在索引则建立之


// Create the index if it does not exist
client.admin().indices().prepareCreate(definition.getIndexName()).get();

   5、 如果是GridFS要做一些额外的索引工作

client.admin().indices().preparePutMapping(definition.getIndexName()).setType(definition.getTypeName()).setSource(getGridFSMapping()).get();

    6、 然后我们开始启动相关的线程:

如果是mongos,就启动多个OpLog处理线程,否则使用一个线程,创建方式如下:

EsExecutors.daemonThreadFactory(settings.globalSettings(), "mongodb_river_slurper").newThread(
    new Slurper(definition.getMongoServers(), definition, context, client));

   7、启动之后再启动Indexer进程

EsExecutors.daemonThreadFactory(settings.globalSettings(),"mongodb_river_indexer").newThread(new Indexer(this, definition, context, client, scriptService));

   8、最后再启动一个状态监测进程:


EsExecutors.daemonThreadFactory(settings.globalSettings(), "mongodb_river_status").newThread(new StatusChecker(this, definition, context));

*  所以代码的核心就是三个线程:

收割 new Slurper(definition.getMongoServers(), definition, context,client)

索引处理 new Indexer(this, definition, context, client, scriptService)

状态检查 new StatusChecker(this, definition, context)

可以看到共同的参数都是:一个definition包含所有的配置,context包含了操作队列和状态



Slurper收割线程


其逻辑是:

1、  如果driver的状态是Running,则查找OpLog的信息并放入stream队列中

 

2、 如果无法获取oplogCollection队列,则退出线程failed to assign oplogCollection orslurpedCollection

3、  增量处理是按照上次注入时间点为查询条件的

cursor = oplogCursor(startTimestamp);
if (cursor == null) {
    cursor = processFullOplog();
}

查询条件是

filter.put(MongoDBRiver.OPLOG_TIMESTAMP,new BasicDBObject(QueryOperators.GTE, time));

ts > time

4、获得数据库指针之后,处理每一个OpLog的数据

while (cursor.hasNext()) {
    DBObject item = cursor.next();
    startTimestamp = processOplogEntry(item, startTimestamp);
}

处理这些数据最后就是调用 addToStream 或 addInsertToStream 加入stream中

 

初始化导入

上面的过程只适合于从当前时间开始的数据,如果需要把原来的数据导入的话,还需要做一个initialimport

当程序配置满足一下条件的时候,才会在第一次运行该线程的时候进行初始化导入:

SkipInitialImport == false
InitialTimestamp == null // initial timestamp 为空
MongoDBRiver.getIndexCount(client, definition) == 0 // 没有index过
MongoDBRiver.getLastTimestamp(client, definition) == null;
Get the latest timestamp for a given namespace.

满足这些条件之后才会进行数据的初始化导入:初始化导入会查看一下设置,如果是ImportAllCollections,则检查每一个collection并注入否则,找出设定的collection并注入

核心代码是这样的:

if (!definition.isSkipInitialImport()) {
                    if (!riverHasIndexedFromOplog() && definition.getInitialTimestamp() == null) {
                        if (!isIndexEmpty()) {
                            MongoDBRiverHelper.setRiverStatus(client, definition.getRiverName(), Status.INITIAL_IMPORT_FAILED);
                            break;
                        }
                        if (definition.isImportAllCollections()) {
                            for (String name : slurpedDb.getCollectionNames()) {
                                DBCollection collection = slurpedDb.getCollection(name);
                                startTimestamp = doInitialImport(collection);
                            }
                        } else {
                            DBCollection collection = slurpedDb.getCollection(definition.getMongoCollection());
                            startTimestamp = doInitialImport(collection);
                        }
                    }
                } else {
                    logger.info("Skip initial import from collection {}", definition.getMongoCollection());
                }



/**
* Does an initial sync the same way MongoDB does.
* https://groups.google.com/
* forum/?fromgroups=#!topic/mongodb-user/sOKlhD_E2ns
*
* @return the last oplog timestamp before the import began
* @throws InterruptedException
* if the blocking queue stream is interrupted while waiting
*/
protected Timestamp<?> doInitialImport(DBCollection collection) throws InterruptedException {
// TODO: ensure the index type is empty
// DBCollection slurpedCollection =
// slurpedDb.getCollection(definition.getMongoCollection());
logger.info("MongoDBRiver is beginning initial import of " + collection.getFullName());
Timestamp<?> startTimestamp = getCurrentOplogTimestamp();
boolean inProgress = true;
String lastId = null;
while (inProgress) {
DBCursor cursor = null;
try {
if (definition.isDisableIndexRefresh()) {
updateIndexRefresh(definition.getIndexName(), -1L);
}
if (!definition.isMongoGridFS()) {
logger.info("Collection {} - count: {}", collection.getName(), collection.count());
long count = 0;
cursor = collection.find(getFilterForInitialImport(definition.getMongoCollectionFilter(), lastId));
while (cursor.hasNext()) {
DBObject object = cursor.next();
count++;
if (cursor.hasNext()) {
lastId = addInsertToStream(null, applyFieldFilter(object), collection.getName());
} else {
logger.debug("Last entry for initial import - add timestamp: {}", startTimestamp);
lastId = addInsertToStream(startTimestamp, applyFieldFilter(object), collection.getName());
}
}
inProgress = false;
logger.info("Number documents indexed: {}", count);
} else {
// TODO: To be optimized.
// https://github.com/mongodb/mongo-java-driver/pull/48#issuecomment-25241988
// possible option: Get the object id list from .fs
// collection
// then call GriDFS.findOne
GridFS grid = new GridFS(mongo.getDB(definition.getMongoDb()), definition.getMongoCollection());
cursor = grid.getFileList();
while (cursor.hasNext()) {
DBObject object = cursor.next();
if (object instanceof GridFSDBFile) {
GridFSDBFile file = grid.findOne(new ObjectId(object.get(MongoDBRiver.MONGODB_ID_FIELD).toString()));
if (cursor.hasNext()) {
lastId = addInsertToStream(null, file);
} else {
logger.debug("Last entry for initial import - add timestamp: {}", startTimestamp);
lastId = addInsertToStream(startTimestamp, file);
}
}
}
inProgress = false;
}
} catch (MongoException.CursorNotFound e) {
logger.info("Initial import - Cursor {} has been closed. About to open a new cusor.", cursor.getCursorId());
logger.debug("Total document inserted [{}]", totalDocuments.get());
} finally {
if (cursor != null) {
logger.trace("Closing initial import cursor");
cursor.close();
}
if (definition.isDisableIndexRefresh()) {
updateIndexRefresh(definition.getIndexName(), TimeValue.timeValueSeconds(1));
}
}
}
return startTimestamp;
}
private BasicDBObject getFilterForInitialImport(BasicDBObject filter, String id) {
if (id == null) {
return filter;
} else {
BasicDBObject filterId = new BasicDBObject(MongoDBRiver.MONGODB_ID_FIELD, new BasicBSONObject(QueryOperators.GT, id));
if (filter == null) {
return filterId;
} else {
List<BasicDBObject> values = ImmutableList.of(filter, filterId);
return new BasicDBObject(QueryOperators.AND, values);

}
}



 Indexer线程


其逻辑是:

1、如果driver的状态是Running,则从stream队列中获取信息并放入Index中

在构造函数初始化的时候会做一些MongoDBRiverBulkProcessor的创建 build:

SimpleEntry<String, String> entry = new SimpleEntry<String, String>(index, type);
        if (!processors.containsKey(entry)) {
            processors.put(new SimpleEntry<String, String>(index, type), new MongoDBRiverBulkProcessor.Builder(river, definition, client,
                    index, type).build());
        }
        return processors.get(entry);



然后在业务逻辑中读取entry,并processBlockingQueue processBlockingQueue就是根据不同的业务的内容做不同的处理,就是对不同的操作用相关的es api加以处理。

// 1. Attempt to fill as much of the bulk request as possible
                QueueEntry entry = context.getStream().take();
                lastTimestamp = processBlockingQueue(entry);
                while ((entry = context.getStream().poll(definition.getBulk().getFlushInterval().millis(), MILLISECONDS)) != null) {
                    lastTimestamp = processBlockingQueue(entry);
                }

                // 2. Update the timestamp
                if (lastTimestamp != null) {
                    MongoDBRiver.setLastTimestamp(definition, lastTimestamp,
                            getBulkProcessor(definition.getIndexName(), definition.getTypeName()).getBulkProcessor());
                }



StatusChecker

状态检查就是更具用户的命令进行开/关

 

就是检查elastic中的最新状态【用户设定的状态】:MongoDBRiverHelper.getRiverStatus(client, riverName);

如果状态和当前状态不一致,就进行driver的start或stop

 

用一个流程图来解释这几个线程之间的关系就是这样的:

mongodb enterprise和 mongodb company的区别 mongodb与es_elasticsearch

RestModule

注册这个模块的作用是在原来es支持的rest api基础上,增加针对mongodb的新的api类型,具体实现可以参考一下这篇文章,这里不再赘述了:

http://elasticsearchserverbook.com/creating-custom-elasticsearch-rest-action/

参考文档:

https://github.com/richardwilly98/elasticsearch-river-mongodb

http://elasticsearchserverbook.com/creating-custom-elasticsearch-rest-action/