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  1. 1. Hadoop Framework for Distributed Applications Nishant M Gandhi BE 4th YEAR Comp. Eng.C K Pithawalla College of Engineering & Technology,Surat.
  2. 2. Hadoop• Introduction• History• Key Technologies – MapReduce – HDFS• Other Projects On Hadoop• Conclusion
  3. 3. Introduction:What is ? Hadoop is a framework for running applications on large clusters built of commodity hardware. ----HADOOP WIKI Hadoop is a free, Java-based programming framework that supports the processing of large data sets in a distributed computing environment.
  4. 4. Introduction (conti..) #1 Open Source #2 Part of Apache group #3 Power of JAVA #4 Supported By Big Web Giant Companies#1 Google’s Powerful Computation MapReduce Technology#2 Hadoop Distributed File System(HDFS) inspired by Google FileSystem(GFS)#3 Used for Cluster & Distributed Computing#4 Support from…
  5. 5. History:Inventor Doug Cutting, creator of Apache LuceneThe Origin of the Name “Hadoop”:The name my kid gave a stuffed yellow elephant. Short, relatively easy tospell and pronounce, meaningless, and not used elsewhere: those are mynaming criteria. ---Daug Cutting.Started with building Web Search Engine •Nutch in 2002 •Aim was to index billions of pages •Architecture can’t support billions of pagesGoogle’s GFS in 2003 solved storage problem •Nutch Distributed Filesystem(NDFS) in 2004Google’s MapReduce in 2004 •MapReduce implimented in Nutch 2005Feb 2006 they moved out of Nutch to form an independentsubproject of Lucene called Hadoop.
  6. 6. History (conti..)At around the same time, Doug Cutting joined YahooFebruary 2008 , Yahoo! announced that its production search indexwas being generated by a 10,000-core Hadoop cluster In January 2008, Hadoop was made its own top-level project at apache, confirming its success and its diverse, active community. By this time Hadoop was being used by many other companies besides Yahoo! such as • Last.fm • Facebook • The New York Times • Twitter • Microsoft • IBM
  7. 7. Key Technologies: •MapReduce -Computational Parallel Programming Model -Technology developed by google •Hadoop Distributed File System -Distributed File System for large data set -Inspired by Google File System
  8. 8. Key Technologies: MapReduce
  9. 9. Key Technologies: MapReduce • Programming model developed at Google • Sort/merge based distributed computing • Initially, it was intended for their internal search/indexing application, but now used extensively by more organizations (e.g., Yahoo, Amazon.com, IBM, etc.) • It is functional style programming (e.g., LISP) that is naturally parallelizable across a large cluster of workstations or PCS. • The underlying system takes care of the partitioning of the input data, scheduling the program’s execution across several machines, handling machine failures, and managing required inter-machine communication. (This is the key for Hadoop’s success)
  10. 10. Key Technologies: HDFS At Google MapReduce operation are run on a special file system called Google File System (GFS) that is highly optimized for this purpose. GFS is not open source. Doug Cutting and others at Yahoo! reverse engineered the GFS and called it Hadoop Distributed File System (HDFS).
  11. 11. Key Technologies: HDFS
  12. 12. Key Technologies: 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
  13. 13. Other Projects on Hadoop: ZooKeeper: co-ordination services Pig: A high-level data-flow language and execution framework for parallel computation. Hive:A data warehouse infrastructure that provides data summarization and ad hoc querying. Chukwa: A data collection system for managing large distributed systems.
  14. 14. Other Projects on Hadoop: Avro: Apache Avro is a data serialization system. Avro provides: •Rich data structures. •A compact, fast, binary data format. •A container file, to store persistent data. •Simple integration with dynamic languages. Just as Googles Bigtable leverages the distributed data storage provided by the Google File System, HBase provides Bigtable-like capabilities on top of Hadoop Core.
  15. 15. Hadoop Architecture on DELL C SeriesServer:
  16. 16. Conclusion:Hadoop has been very effective solution for companies dealing with the data in perabytes.It has solved many problems in industry related to huge data management and distributed system.As it is open source, so it is adopted by companies widely.
  17. 17. Thank You…..