big data mining
DESCRIPTION
This is my presentation about Big data mining.TRANSCRIPT
Big Data Mining
Overview Introduction
Characteristics of Big Data
Big Data and it’s challenges
Big Data mining Tools
Big Data mining algorithm
Applications of Big Data
References
Q&A
Introduction
Interesting Facts The volume of business data worldwide, across all companies,
doubles every 1.2 years (was 1.5 years)
Daily 2500 quadrillion of data are produced and more than 90 percentage of data are produced within past two years.
A regular person is processing daily more data than a 16th century individual in his entire life
In the last years cost of storage and processing power dropped significantly
Bad data or poor data quality costs US businesses $600 billion annually
By 2015, 4.4 million IT jobs globally will be created to support big data (Gartner)
Facebook processes 10 TB of data every day / Twitter 7 TB
Google has over 3 million servers processing over 2 trillion searches per year in 2012 (only 22 million in 2000)
What is
The term Big data is used to describe a massive volume of both structured and unstructured data that is so large that it's difficult to process using traditional database and software techniques.
-Webopedia
Characteristics of Big Data
Volume - The quantity of data
Variety - categorizing the data
Velocity - speed of generation of data or the speed of processing the data
Variability - Inconsistency
Complexity - Managing the data
DATA MINING CHALLENGES WITH BIG DATA Main challenge for an intelligent database is handling Big data.
The important thing is scaling the large amount of data and provide solution for these problem by HACE theorem
ChallengesLocation of Big Data sources- Commonly Big Data
are stored in different locationsVolume of the Big Data- size of the Big Data grows
continuously.Hardware resources- RAM capacityPrivacy- Medical reports, bank transactionsHaving domain knowledgeGetting meaningful information
SolutionsParallel computing programmingAn efficient platform for computing will not have
centralized data storage instead of that platform will be distributed in big scale storage.
Restricting access to the data
BIG Data Mining Tools Hadoop Apache S4 Strom Apache Mahout MOA
Hadoop It is developed by Apache Software Foundation project and open
source software platform for scalable, distributed computing.
Apache Hadoop software library is a framework that allows for the distributed processing of large data sets across clusters of computers using simple programming models.
Hadoop provides fast and reliable analysis of both Structured and un structured data.
It is designed to scale up from single servers to thousands of machines, each offering local computation and storage.
Hadoop uses MapReduce programming model to mine data.
This MapReduce program is used to separate datasets which are sent as input into independent subsets. Those are process parallel map task.
Map() procedure that performs filtering and sorting
Reduce() procedure that performs a summary operation
Big Data Mining Algorithm Big data applications have so many sources to gather information.
If we want to mine data, we need to gather all distributed data to the centralized site. But it is prohibited because of high data transmission cost and privacy concerns.
Most of the mining levels order to achieve the pattern of correlations, or patterns can be discovered from combined variety of sources.
The global data mining is done through two steps process.
Model level
Knowledge level.
Each and every local sites use local data to calculate the data statistics and it share this information in order to achieve global data distribution in their data level.
In model level it will produce local pattern. This pattern will be produced after mined local data.
By sharing these local patterns with other local sites, we can produce a single global pattern.
At the knowledge level, model correlation analysis investigates the relevance between models generated from various data sources to determine how related the data sources are correlated to each other, and how to form accurate decisions based on models built from autonomous sources
Applications of Big Data Healthcare organizations can achieve better insight into disease
trends and patient treatments.
Public sector agencies can catch fraud and other threats in real-time.
Applications of Multimedia data
To find travelling pattern of travelers
CC TV camera footage
Photos and Videos from social network
Recommender system
Integration and mining of Bio data from various sources in Biological network by NSF (National Science Foundation).
Classifying the Big data stream in run time, by Australian Research council.
References[1] IEEE, Data Mining with Big Data, January 2014
[2] McKinsy Global Institute, Big Data: The next frontier for innovation, competition and productivity- May 2011
[3] Xindong Wu, Xinguan Zhu, Gong-Qing Wu, Wei Ding, 2013, Data Mining with Big Data
[4] Ahmed and Karypis 2012, Rezwan Ahmed, George Karpis, Algorithms for mining the evolution of conserved relational states in dynamic network
[5] Wu X. 2000, Building Intelligent Learning Database Systems, AI Magazine
[6] Oracle, June 2013,Unstructured Data Management with Oracle Database 12c
[7] Valery A.Petrushin, Jia-Yu Pan, Cees G.M.Snoek, 2010,Tenth International Workshop on Multimedia Data Mining
[8] Big data[Online].Available:www.en.wikipedia.org/wiki/Big_data
[9] Big data [Online]. Available: www.webopedia.com/TERM /B/ big_data.html
[10]IBM big data and information management [Online]. Available: www-01.ibm.com/software/data/bigdata
[11] Big data [Online]. Available: www.adainbigdata.com
[12] Big Data Explained [Online]. Available: www.mongodb.com/big-data-explained
[13] Big data [Online]. Available: www.sas.com/en_us/insights/big-data/what-is-big-data.html
[14] Big Data Mining Tools[Online]. Available: www.albertbifet.com/big-data-mining-tools
Cloud storage for Big Data
Processing