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Leroy Garcia. Map Reduce. What is Map Reduce?. A patented programming model developed by Google Derived from LISP and other forms of functional programming Used for processing large data and generating large data sets Exploits large set of commodity computers
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Leroy Garcia Map Reduce
What is Map Reduce? • A patented programming model developed by Google • Derived from LISP and other forms of functional programming • Used for processing large data and generating large data sets • Exploits large set of commodity computers • Executes process in distributed manner • Easy to use, no messy code
Implementation at Google • Machines w/ Multiple Processors • Commodity Networking Hardware • Cluster of Hundreds or Thousands of Machines • IDE Disks used for storage • Input Data managed by GFS • Users submit jobs to a scheduling system
Introduction • How does Map Reduce work?
Overview • Programming Model • Implementation • Refinement • Performance • Related Topics • Conclusion
Programming Model • Map • Input: key/value pair • Key: ex. Document Name • Value: ex. Document Contents • Output: • Set of Intermediate key/values
Programming Model • Reduce • Input: Intermediate key, values • Key: ex. A Word • Values: Values • Output • List of Values or a Single Value
Partitioning Function MAP R E D U C E Big Data Reduce Result
Execution Input: M M M M M M M Intermediate: k1:v k1:v k2:v k1:v k3:v k2:v k4:v k5:v k4:v k1:v k3:v Group by Key Grouped: k1:v,v,v,v k2:v k3:v,v k4:v,v,v k5:v R R R R R
Parallel Execution Map Task 1 Map Task 2 Map Task 3 M M M M M M M k1:v k1:v k2:v k1:v k3:v k2:v k4:v k5:v k4:v k1:v k3:v Partition Function Partition Function Partition Function Sort and Group Sort and Group k1:v,v,v,v k3:v,v k4:v,v,v k2:v k5:v R R R R R Reduce 1 Reduce 1
map map k k k v v v k k k v v v The Map Step Input key-value pairs Intermediate key-value pairs … … k v
Intermediate key-value pairs Key-value groups reduce reduce k k v v k v v v k k k v v v k v v group k v … … k v k v Reduce Step Output key-value pairs …
Word Count Reduce {Boy,34} {Boy,12} MAP {Boy,23} v {Boy,16} {Boy,34} {Girl,3} {Girl,18} {Girl,8} {Girl,18} {Boy,16} {Girl,5} {Boy,12} {Girl,8} {Girl,5} {Boy,23} {Girl,5} {Girl,12} {Boy,85} {Girl,43}
Examples • Distributed Grep • Count of URL Access Frequency • Reverse Web-Link Graph • Term-Vector per Host • Inverted Index • Distributed Sort
Practical Examples • Large PDF Generation • Artificial Intelligence • Statistical Data • Geographical Data
Large-Scale PDF Generation • The New York Times needs to generate PDF files for 11,000,000 articles (every article from 1851-1980) in the form of images scanned from the original paper • Each article is composed of numerous TIFF images which are scaled and glued together • Code for generating a PDF is relatively straightforward
Artificial Intelligence • Compute statistics • Central Limit Theorem • N voting nodes cast votes (map) • Tally votes and take action (reduce)
Statistical Analysis • Statistical analysis of current stock against historical data • Each node (map) computes similarity and ROI. • Tally Votes (reduce) to generate expected ROI and standard deviation Photos from: stockcharts.com
Geographical Data • Large data sets including road, intersection, and feature data • Problems that Google Maps has used MapReduce to solve • Locating roads connected to a given intersection • Rendering of map tiles • Finding nearest feature to a given address or location
Geographical Data • Input: Graph describing node network with all gas stations marked • Map: Search five mile radius of each gas station and mark distance to each node • Sort: Sort by key • Reduce: For each node, emit path and gas station with the shortest distance • Output: Graph marked and nearest gas station to each node
Map/Reduce Walkthrough • Map: (Functional Programming)uses a function on each element of the array • Mapper: The node that performs a function on one element of the set. • Reduce: (Functional programming) iterate a function across an array • Reducer: The node that reduces across all the like-keyed elements.
Execution Overview • Split input files • Starts up copies of the program in cluster. • Copy of program is sent to the Master • Master assigns either map or reduce responsibilities • Map Worker reads the splits • Parses key/value pairs out of the input data • Passes each pair to the user-defined Map function. • Buffer pairs are written to local disc partitioned into regions by partitioning function • The locations of these buffered pairs on the local disk are passed back to the master. • Master is responsible for forwarding these locations to the reduce workers. • Location of the buffer pairs are given to Reduce Workerby the master • Sorts Intermediate keys • The reduce worker iterates over the sorted intermediate data for each unique intermediate key. • passes the key and the corresponding set of intermediate values to the user's Reduce function. • The output of the Reduce function is appended to a final output file for this reduce partition. • When all map tasks and reduce tasks have been completed, the master wakes up the user program
fork fork fork Master assign map assign reduce Input Data Worker Output File 0 write Worker local write Split 0 read Worker Split 1 Output File 1 Split 2 Worker Worker remote read, sort Distributed Execution Overview User Program
Fault Tolerance • Worker Failure • Master Failure • Dealing with Stragglers • Locality • Task Granularity • Skipping Bad Record
Worker Failure Worker A Map Task 1 Complete Ping Ping Worker AZ Reduce Task 1 Failed Reduce Task 1 Idle Master Worker BX Reduce Task 1 In Progress Worker B Map Task 2 Complete Failed Map Task 2 Idle Worker C Map Task 2 In Progress
Master Failure Master Fail • Checkpoints Checkpoint 125 Checkpoint 124 Checkpoint 123 Checkpoint 125 NEW MASTER MASTER
Dealing with Stragglers • Straggler- a machine in a cluster than is running significantly slower than the rest Straggler Map Task Finish Task Line Good Machine Map Task Copy
Locality • Input Data is stored locally • GFS divides files in 64 MB blocks • Stores 3 copies of the blocks on different machines • Finds Replica of input data and scheduled map tasks. • Map tasks scheduled so GFS input block replica are on same machine or same rack
Task Granularity • Minimizes time for fault recovery • Can pipeline shuffling with map execution • Better dynamic load balancing • Often use 200,000 map/5000 reduce tasks w/ 2000 machines
Partitoning Function • The users of MapReduce specify the number of reduce tasks/output files that they desire. • Data gets partitioned across these tasks using a partitioning function on the intermediate key. • Special partitioning function. • eg.hash(Hostname(urlkey)) mod R. • Ordering Guarantee • Intermediate keys are process in increasing key order. • Generates sorted output per partition.
Combiner Function(Optional) • Used by the Map Task when there is a significant repetition in the intermediate keys produced by each Map Task Map Worker Map Function Combiner Function (Girls, 1) (Girls, 1) Text Document (Girls, 6) (Girls, 2) (Girls, 2)
Input and Output Types • Input: • Supports reading data of various formats • Support for new input type using a simple implementation of a reader interface. • Ex.Database • Ex. Datastructure Mapped in Memory • Output: • User codes supports to handle new type
Skipping Bad Records • Map/Reduce functions sometimes fail for particular inputs • Best solution is to debug & fix, but not always possible • On seg fault: • Send UDP packet to master from signal handler • Include sequence number of record being processed • If master sees two failures for same record: • Next worker is told to skip the record
Performance Tests run on cluster of 1800 machines: 4 GB of memory Dual-processor 2 GHz Xeons with Hyperthreading Dual 160 GB IDE disks Gigabit Ethernet per machine Bisection bandwidth approximately 100 Gbps Two Benchmarks
MR_Grep Inputs Scanned • Locality optimization helps: • 1800 machines read 1 TB of data at peak of ~31 GB/s • Without this, rack switches would limit to 10 GB/s
MR_Sort Normal No Backup Tasks 200 Processes Killed
Other Notable Implementations of MapReduce • Hadoop • Open-source implementation of MapReduce • HDFS • Primary storage system used by Hadoop applications. HDFS creates multiple replicas of data blocks and distributes them on compute nodes throughout a cluster to enable reliable, extremely rapid computations. • Amazon Elastic Compute Cloud (EC2) • Virtualized computing environment designed for use with other Amazon services (especially S3) • Amazon Simple Storage Service (S3) • Scalable, inexpensive internet storage which can store and retrieve any amount of data at any time from anywhere on the web • Asynchronous, decentralized system which aims to reduce scaling bottlenecks and single points of failure
Conclusion • MapReduce has proven to be a useful abstraction • Greatly simplifies large-scale computations at Google • Easily Handles machine failure. • Allows users to focus on problem, without having to deal with complicated code behind the scene.