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Mapreduce 与 Hadoop 陆嘉恒 中国人民大学. 主要内容 分布式计算软件构架 MapReduce 介绍 分布式计算开源框架 Hadoop 介绍 小结.

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Presentation on theme: "Mapreduce 与 Hadoop 陆嘉恒 中国人民大学. 主要内容 分布式计算软件构架 MapReduce 介绍 分布式计算开源框架 Hadoop 介绍 小结."— Presentation transcript:

1 Mapreduce 与 Hadoop 陆嘉恒 中国人民大学

2 主要内容 分布式计算软件构架 MapReduce 介绍 分布式计算开源框架 Hadoop 介绍 小结

3 MapReduce Online Evaluation 使用 mapreduce 框架编程解决问题 在线检测系统允许测试自己的程序 http://cloudcomputing.ruc.edu.cn/index.jsp

4 MapReduce: Insight Consider the problem of counting the number of occurrences of each word in a large collection of documents” How would you do it in parallel ?

5 MapReduce Programming Model Inspired from map and reduce operations commonly used in functional programming languages like Lisp. Users implement interface of two primary methods: – 1. Map: (key1, val1) → (key2, val2) – 2. Reduce: (key2, [val2]) → [val3]

6 Map operation Map, a pure function, written by the user, takes an input key/value pair and produces a set of intermediate key/value pairs. – e.g. (doc—id, doc-content) Draw an analogy to SQL, map can be visualized as group-by clause of an aggregate query.

7 Reduce operation On completion of map phase, all the intermediate values for a given output key are combined together into a list and given to a reducer. Can be visualized as aggregate function (e.g., average) that is computed over all the rows with the same group-by attribute.

8 Pseudo-code map(String input_key, String input_value): // input_key: document name // input_value: document contents for each word w in input_value: EmitIntermediate(w, "1"); reduce(String output_key, Iterator intermediate_values): // output_key: a word // output_values: a list of counts int result = 0; for each v in intermediate_values: result += ParseInt(v); Emit(AsString(result));

9 MapReduce: Execution overview

10 MapReduce: Example

11 MapReduce in Parallel: Example

12 MapReduce: Fault Tolerance Handled via re-execution of tasks. Task completion committed through master What happens if Mapper fails ? – Re-execute completed + in-progress map tasks What happens if Reducer fails ? – Re-execute in progress reduce tasks What happens if Master fails ? – Potential trouble !!

13 MapReduce: Walk through of One more Application

14 MapReduce : PageRank PageRank models the behavior of a “random surfer”. C(t) is the out-degree of t, and (1-d) is a damping factor (random jump) The “random surfer” keeps clicking on successive links at random not taking content into consideration. Distributes its pages rank equally among all pages it links to. The dampening factor takes the surfer “getting bored” and typing arbitrary URL.

15 PageRank : Key Insights Effects at each iteration is local. i+1 th iteration depends only on i th iteration At iteration i, PageRank for individual nodes can be computed independently

16 PageRank using MapReduce Use Sparse matrix representation (M) Map each row of M to a list of PageRank “credit” to assign to out link neighbours. These prestige scores are reduced to a single PageRank value for a page by aggregating over them.

17 PageRank using MapReduce PageRank using MapReduce Map: distribute PageRank “credit” to link targets Reduce: gather up PageRank “credit” from multiple sources to compute new PageRank value Iterate until convergence Source of Image: Lin 2008

18 Phase 1: Process HTML Map task takes (URL, page-content) pairs and maps them to (URL, (PR init, list-of-urls)) – PR init is the “seed” PageRank for URL – list-of-urls contains all pages pointed to by URL Reduce task is just the identity function

19 Phase 2: PageRank Distribution Reduce task gets (URL, url_list) and many (URL, val) values – Sum vals and fix up with d to get new PR – Emit (URL, (new_rank, url_list)) Check for convergence using non parallel component

20 MapReduce: Some More Apps Distributed Grep. Count of URL Access Frequency. Clustering (K-means) Graph Algorithms. Indexing Systems MapReduce Programs In Google Source Tree

21 MapReduce: Extensions and similar apps PIG (Yahoo) Hadoop (Apache) DryadLinq (Microsoft)

22 Large Scale Systems Architecture using MapReduce User App MapReduce Distributed File Systems (GFS)

23 分布式计算软件构架 MapReduce 介绍 分布式计算开源框架 Hadoop 介绍 小结

24 Hadoop Book Our new book about cloud computing and Hadoop Download Chapter: http://www.jiahenglu.net/course/cloudcompu ting2010/index.html

25 Outline Architecture of Hadoop Distributed File System Hadoop usage at Facebook

26 Hadoop, Why? Need to process Multi Petabyte Datasets Expensive to build reliability in each application. Nodes fail every day – Failure is expected, rather than exceptional. – The number of nodes in a cluster is not constant. Need common infrastructure – Efficient, reliable, Open Source Apache License

27 Hadoop History Dec 2004 – Google GFS paper published July 2005 – Nutch uses MapReduce Feb 2006 – Becomes Lucene subproject Apr 2007 – Yahoo! on 1000-node cluster Jan 2008 – An Apache Top Level Project Jul 2008 – A 4000 node test cluster Sept 2008 – Hive becomes a Hadoop subproject

28 Who uses Hadoop? Amazon/A9 Facebook Google IBM Joost Last.fm New York Times PowerSet Veoh Yahoo!

29 Commodity Hardware Typically in 2 level architecture – Nodes are commodity PCs – 30-40 nodes/rack – Uplink from rack is 3-4 gigabit – Rack-internal is 1 gigabit

30 Goals of HDFS Very Large Distributed File System – 10K nodes, 100 million files, 10 PB Assumes Commodity Hardware – Files are replicated to handle hardware failure – Detect failures and recovers from them Optimized for Batch Processing – Data locations exposed so that computations can move to where data resides – Provides very high aggregate bandwidth User Space, runs on heterogeneous OS

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32 Distributed File System Single Namespace for entire cluster Data Coherency – Write-once-read-many access model – Client can only append to existing files Files are broken up into blocks – Typically 128 MB block size – Each block replicated on multiple DataNodes Intelligent Client – Client can find location of blocks – Client accesses data directly from DataNode

33 NameNode Metadata Meta-data in Memory – The entire metadata is in main memory – No demand paging of meta-data Types of Metadata – List of files – List of Blocks for each file – List of DataNodes for each block – File attributes, e.g creation time, replication factor A Transaction Log – Records file creations, file deletions. etc

34 DataNode A Block Server – Stores data in the local file system (e.g. ext3) – Stores meta-data of a block (e.g. CRC) – Serves data and meta-data to Clients Block Report – Periodically sends a report of all existing blocks to the NameNode Facilitates Pipelining of Data – Forwards data to other specified DataNodes

35 Block Placement Current Strategy -- One replica on local node -- Second replica on a remote rack -- Third replica on same remote rack -- Additional replicas are randomly placed Clients read from nearest replica Would like to make this policy pluggable

36 Data Correctness Use Checksums to validate data – Use CRC32 File Creation – Client computes checksum per 512 byte – DataNode stores the checksum File access – Client retrieves the data and checksum from DataNode – If Validation fails, Client tries other replicas

37 NameNode Failure A single point of failure Transaction Log stored in multiple directories – A directory on the local file system – A directory on a remote file system (NFS/CIFS)

38 Data Pipelining Client retrieves a list of DataNodes on which to place replicas of a block Client writes block to the first DataNode The first DataNode forwards the data to the next DataNode in the Pipeline When all replicas are written, the Client moves on to write the next block in file

39 Rebalancer Goal: % disk full on DataNodes should be similar – Usually run when new DataNodes are added – Cluster is online when Rebalancer is active – Rebalancer is to avoid network congestion

40 Hadoop at Facebook Production cluster – 4800 cores, 600 machines, 16GB per machine – April 2009 – 8000 cores, 1000 machines, 32 GB per machine – July 2009 – 4 SATA disks of 1 TB each per machine – 2 level network hierarchy, 40 machines per rack – Total cluster size is 2 PB, projected to be 12 PB in Q3 2009 Test cluster 800 cores, 16GB each

41 Useful Links HDFS Design: – http://hadoop.apache.org/core/docs/current/hdfs_design.html http://hadoop.apache.org/core/docs/current/hdfs_design.html Hadoop API: – http://hadoop.apache.org/core/docs/current/api/ http://hadoop.apache.org/core/docs/current/api/ Hive: – http://hadoop.apache.org/hive/http://hadoop.apache.org/hive/

42 小结 分布式计算软件构架 MapReduce 分布式计算开源框架 Hadoop

43 谢谢!


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