Download - Presentation
![Page 1: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/1.jpg)
1
A DATA MAPPING STRATEGY FOR PARALLEL DATA MINING NODES IN GRID
CONNECTED TO A STORAGE CLOUD
S K Manu (1ks12cs083) Under the guidance of Murali Krishna V (1ks11cs048) Swathi.KNaseeruddin V N (1ks11cs053) Asst.ProfNavneet Kumar (1ks11cs055)
K.S Institute Of Technology Bangalore-62Department Of Computer Science
Batch-10
![Page 2: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/2.jpg)
2
Problem Statement• To Reduce the computation time to process data by distributing the
processing task onto systems and providing high availability of data by using private storage cloud.
![Page 3: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/3.jpg)
3
The architecture of storage cloud
![Page 4: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/4.jpg)
4
Design
4
STORAGE CLOUD
Storage node
1
Storage node
2
Hadoop Master
Hadoop slave 1
Hadoop Slave 2
1 3
6
445
22
7
User
Controller node Of1 gb 1 gb
500 mb
500 mb
5
Result
![Page 5: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/5.jpg)
5
Implementation Of Modules• User Interface• Openstack Storage Cloud• Hadoop Distribution And Processing
![Page 6: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/6.jpg)
6
Testing And Results• Successful upload of data • Successful download of data• Successful map and reduce
![Page 7: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/7.jpg)
7
Web page login
![Page 8: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/8.jpg)
8
Simple User Interface
![Page 9: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/9.jpg)
9
Upload Successful
![Page 10: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/10.jpg)
10
Download Sucessful
![Page 11: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/11.jpg)
11
Hadoop Map Reduce Process
![Page 12: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/12.jpg)
12
Demo
![Page 13: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/13.jpg)
13
Possible Outcomes• To process the data according to the user requirements.• High data availability.• Easy user interface.• Robust environment.• Reduced computation time.
![Page 14: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/14.jpg)
14
References• 2015 IEEE International Conference on Computational
Intelligence & Communication Technology on Handling Big Data Efficiently by using MapReduce Technique.• http://docs.openstack.org/juno/install-guide/install/apt/
content/• http://stackoverflow.com/• https://www.google.co.in/?gfe_rd=cr&ei=HHoWVpqdD
uLI8AffhYH4DA
![Page 15: Presentation](https://reader034.vdocumento.com/reader034/viewer/2022052705/587196b01a28ab044e8b4ce7/html5/thumbnails/15.jpg)
15
THANK YOU