Software Systems Development
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SOFTWARE SYSTEMS DEVELOPMENT
MAP-REDUCE , Hadoop, HBase
The problem
Batch (offline) processing of huge data set using commodity hardware
Linear scalability
Need infrastructure to handle all the mechanics, allow for developer to focus on the processing logic/algorithms
Data Sets
The New York Stock Exchange: 1 Terabyte of data per day
Facebook: 100 billion of photos, 1 Petabyte(1000 Terabytes)
Internet Archive: 2 Petabyte of data, growing by 20 Terabytes per month
Can’t put data on a single node, need distributed file system to hold it
Batch processing
Single write/append multiple reads Analyze Log files for most frequent URL
Each data entry is self-contained At each step , each data entry can be
treated individually After the aggregation, each aggregated
data set can be treated individually
Grid Computing
Grid computing Cluster of processing nodes attached to
shared storage through fiber (typically Storage Area Network)
Work well for computation intensive tasks, problem with huge data sets as network become a bottleneck
Programming paradigm: Low level Message Passing Interface (MPI)
Hadoop
Open-source implementation of 2 key ideas HDFS: Hadoop distributed file system Map-Reduce: Programming Model
Build based on Google infrastructure (GFS, Map-Reduce papers published 2003/2004)
Java/Python/C interfaces, several projects built on top of it
Approach
Limited but simple model fit to broad range of applications
Handle communications, redundancies , scheduling in the infrastructure
Move computation to data instead of moving data to computation
Who is using Hadoop?
Distributed File System (HDFS) Files are split into large blocks (128M,
64M) Compare with typical FS block of 512Bytes
Replicated among Data Nodes(DN) 3 copies by default
Name Node (NN) keeps track of files and pieces Single Master node
Stream-based I/O Sequential access
HDFS: File Read
HDFS: File Write
HDFS: Data Node Distance
Map Reduce
A Programming Model
Decompose a processing job into Map and Reduce stages
Developer need to provide code for Map and Reduce functions, configure the job and let Hadoop handle the rest
Map-Reduce Model
MAP function
Map each data entry into a pair <key, value>
Examples Map each log file entry into <URL,1> Map day stock trading record into <STOCK,
Price>
Hadoop: Shuffle/Merge phase Hadoop merges(shuffles) output of the
MAP stage into <key, valulue1, value2, value3>
Examples <URL, 1 ,1 ,1 ,1 ,1 1> <STOCK, Price On day 1, Price On day 2..>
Reduce function
Reduce entries produces by Hadoop merging processing into <key, value> pair
Examples Map <URL, 1,1,1> into <URL, 3> Map <Stock, 3,2,10> into <Stock, 10>
Map-Reduce Flow
Hadoop Infrastructure
Replicate/Distribute data among the nodes Input Output Map/Shuffle output
Schedule Processing Partition Data Assign processing nodes (PN) Move code to PN(e.g. send Map/Reduce code) Manage failures (block CRC, rerun MAP/Reduce
if necessary)
Example: Trading Data Processing Input:
Historical Stock Data Records are CSV (comma separated values)
text file Each line : stock_symbol, low_price, high_price 1987-2009 data for all stocks one record per
stock per day
Output: Maximum interday delta for each stock
Map Function: Part I
Map Function: Part II
Reduce Function
Running the Job : Part I
Running the Job: Part II
Inside Hadoop
Datastore: HBASE
Distributed Column-Oriented database on top of HDFS
Modeled after Google’s BigTable data store
Random Reads/Writes on to of sequential stream-oriented HDFS
Billions of Rows * Millions of Columns * Thousands of Versions
HBASE: Logical View
Row Key Time Stamp
Column Contents
Column Family Anchor (Referred by/to)
Column “mime”
“com.cnn.www”
T9 cnnsi.com cnn.com/1
T8 my.look.ca
cnn.com/2
T6 “<html>.. “
Text/html
T5 “<html>.. “
t3 “<html>.. “
Physical View
Row Key Time Stamp Column: Contents
Com.cnn.www T6 “<html>..”
T5 “<html>..”
T3 “<html>..”
Row Key Time Stamp Column Family: Anchor
Com.cnn.www T9 cnnsi.com cnn.com/1
T5 my.look.ca cnn.com/2
Row Key Time Stamp Column: mime
Com.cnn.www T6 text/html
HBASE: Region Servers
Tables are split into horizontal regions Each region comprises a subset of rows
HDFS Namenode, dataNode
MapReduce JobTracker, TaskTracker
HBASE Master Server, Region Server
HBASE Architecture
HBASE vs RDMS
HBase tables are similar to RDBS tables with a difference Rows are sorted with a Row Key Only cells are versioned Columns can be added on the fly by client
as long as the column family they belong to preexists