SlideShare une entreprise Scribd logo
1  sur  13
Télécharger pour lire hors ligne
Présentation On




Presented by:-
Sudipta Mahapatra
RegNo:-1021209061
RollNo:-60,7th Sem ,IT
Contents
•   Introduction
•   Why RADOOP
•   Architecture
•   Radoop sub-parts
•   Benefits
•   Conclusion and future work
Introduction
• Radoop is a tool used for data analysis.
• It is devloped by Gábor Makrai .
• Radoop closely integrates the highly optimized
  data analytics capabilities of Hadoop clusters,
  the distributed data warehouse Hive, and
  Mahout into the user-friendly interface of
  RapidMiner. This results in a powerful and
  easy-to-use data analytics solution for
  Hadoop.
Why Radoop ?
       Data is growing:It’s growing. Quickly. And it’s everywhere.

9000
                                    7910
8000
7000
6000
5000
4000
3000
2000
                       1227
1000
          130
   0
          2005         2010         2015
New kinds of data
    Structured data vs. Unstructured data growth


                        Complex, Unstructured

                                                               Analysis gap

                                Analysis gap
     Relational
                                                                Our
                                                                ability to
                                                                analyze


“The sexy job in the next 10 years will be statisticians”
 – Hal Varian, Chief Economist at Google
•Digital universe grew by 62% last year to 800K petabytes and will grow to
1.2 “zettabytes” this year.
Architechture
     Hive: A data warehouse
     infrastructure for data
     summarization & ad hoc querying.
     Mahout: A Scalable machine
     learning and datamining library.
     •HDFS is a distributed file system
     designed to hold very large amounts of
     data and provide high-throughput
     access to this information.
     •The Map-Reduce programming
     model is a Framework for distributed
     processing of large data sets.
     • RapidMiner is a toolkit for
     datamining.
RapidMiner
 RapidMiner, formerly YALE (Yet Another Learning
  Environment), is an environment for machine learning , data
  mining, text mining, predictive analytics, and business
  analytics.
 It is used for research, education, training, application
  development, and industrial applications.
 RapidMiner provides data mining and machine learning
  procedures including: data loading and transformation (ETL),
  data preprocessing and visualization, modeling, evaluation,
  and deployment. It is able to generate graphs like MS Excel.
 It is also used for analyzing data generated by high-
  throughput instruments used in processes such as
  genotyping, proteomics, and mass spectrometry.
Hive and Mahout
• Hive : is a data warehouse infrastructure built on top of
  Hadoop, i.e. it uses the distributed file system of Hadoop and
  the efficient access technologies. Hive was initially developed
  by Facebook and is now used and developed by many other
  companies for their distributed data warehouse.
• Mahout : is a machine learning library already offering many
  scalable machine learning libraries implemented as well on
  top of Hadoop and its map & reduce paradigm. Hence,
  Mahout is one of the first distributed data analytics
  framework making use of the power of Hadoop.
Map Reduce
   The Map-Reduce programming model
-Framework for distributed processing
        of large data sets
   Natural for:
– Log processing
– Web search indexing
– Ad-hoc queries
HDFS
HDFS is a distributed file system designed to hold very large amounts of data and
provide high-throughput access to this information.
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
No RAID required.
Advantages
 Scalability: Even data volumes in the
  terabyte and petabyte range can be
  analyzed.
 Radoop provides a user-friendly
  interface for editing and running ETL,
  analytics, and machine learning
  processes on Hadoop.
 Radoop provides easy-to-use graphical
  interface.
 It eliminates the ETL bottlenecks.
Conclusion and future work
 It has experimentally proved that within a time up to 1-8 gb
  of data analyzed with 4-16 nodes in radoop where in
  rapidminor up to 1gb of data can be analyzed.
 “we believe more than half of the world’s data will be stored
  in Apache Hadoop within 5 years” Hortonworks.
 Radoop is opening the doors for people who are less
  comfortable with Hadoop but want to use Hadoop for Big
  Data analysis.
Questions ?

Contenu connexe

Tendances

Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...
Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...
Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...inside-BigData.com
 
Intro to Big Data Hadoop
Intro to Big Data HadoopIntro to Big Data Hadoop
Intro to Big Data HadoopApache Apex
 
Big Data Analysis Patterns - TriHUG 6/27/2013
Big Data Analysis Patterns - TriHUG 6/27/2013Big Data Analysis Patterns - TriHUG 6/27/2013
Big Data Analysis Patterns - TriHUG 6/27/2013boorad
 
Introduction to Big Data
Introduction to Big DataIntroduction to Big Data
Introduction to Big DataJoey Li
 
Big Data Analytics 2014
Big Data Analytics 2014Big Data Analytics 2014
Big Data Analytics 2014Stratebi
 
Hadoop: An Industry Perspective
Hadoop: An Industry PerspectiveHadoop: An Industry Perspective
Hadoop: An Industry PerspectiveCloudera, Inc.
 
Big data analytics, survey r.nabati
Big data analytics, survey r.nabatiBig data analytics, survey r.nabati
Big data analytics, survey r.nabatinabati
 
A Glimpse of Bigdata - Introduction
A Glimpse of Bigdata - IntroductionA Glimpse of Bigdata - Introduction
A Glimpse of Bigdata - Introductionsaisreealekhya
 
DW Appliance
DW ApplianceDW Appliance
DW ApplianceShankar R
 
Big Data Analytics Using Hadoop
Big Data Analytics Using HadoopBig Data Analytics Using Hadoop
Big Data Analytics Using HadoopSrikanth VNV
 
Big Data Analysis Patterns with Hadoop, Mahout and Solr
Big Data Analysis Patterns with Hadoop, Mahout and SolrBig Data Analysis Patterns with Hadoop, Mahout and Solr
Big Data Analysis Patterns with Hadoop, Mahout and Solrboorad
 
Introduction to Big Data
Introduction to Big DataIntroduction to Big Data
Introduction to Big DataAmpoolIO
 
Big Data Analytics with Hadoop, MongoDB and SQL Server
Big Data Analytics with Hadoop, MongoDB and SQL ServerBig Data Analytics with Hadoop, MongoDB and SQL Server
Big Data Analytics with Hadoop, MongoDB and SQL ServerMark Kromer
 

Tendances (20)

Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...
Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...
Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...
 
BigData
BigDataBigData
BigData
 
Intro to Big Data Hadoop
Intro to Big Data HadoopIntro to Big Data Hadoop
Intro to Big Data Hadoop
 
Big data Analytics Hadoop
Big data Analytics HadoopBig data Analytics Hadoop
Big data Analytics Hadoop
 
Big Data Analysis Patterns - TriHUG 6/27/2013
Big Data Analysis Patterns - TriHUG 6/27/2013Big Data Analysis Patterns - TriHUG 6/27/2013
Big Data Analysis Patterns - TriHUG 6/27/2013
 
Exploring Big Data Analytics Tools
Exploring Big Data Analytics ToolsExploring Big Data Analytics Tools
Exploring Big Data Analytics Tools
 
Introduction to Big Data
Introduction to Big DataIntroduction to Big Data
Introduction to Big Data
 
Big Data Analytics 2014
Big Data Analytics 2014Big Data Analytics 2014
Big Data Analytics 2014
 
Hadoop: An Industry Perspective
Hadoop: An Industry PerspectiveHadoop: An Industry Perspective
Hadoop: An Industry Perspective
 
Big data analytics, survey r.nabati
Big data analytics, survey r.nabatiBig data analytics, survey r.nabati
Big data analytics, survey r.nabati
 
A Glimpse of Bigdata - Introduction
A Glimpse of Bigdata - IntroductionA Glimpse of Bigdata - Introduction
A Glimpse of Bigdata - Introduction
 
DW Appliance
DW ApplianceDW Appliance
DW Appliance
 
Big Data Ecosystem
Big Data EcosystemBig Data Ecosystem
Big Data Ecosystem
 
View on big data technologies
View on big data technologiesView on big data technologies
View on big data technologies
 
Big Data
Big DataBig Data
Big Data
 
Big Data Analytics Using Hadoop
Big Data Analytics Using HadoopBig Data Analytics Using Hadoop
Big Data Analytics Using Hadoop
 
Big Data Analysis Patterns with Hadoop, Mahout and Solr
Big Data Analysis Patterns with Hadoop, Mahout and SolrBig Data Analysis Patterns with Hadoop, Mahout and Solr
Big Data Analysis Patterns with Hadoop, Mahout and Solr
 
Introduction to Big Data
Introduction to Big DataIntroduction to Big Data
Introduction to Big Data
 
Big Data Analytics with Hadoop, MongoDB and SQL Server
Big Data Analytics with Hadoop, MongoDB and SQL ServerBig Data Analytics with Hadoop, MongoDB and SQL Server
Big Data Analytics with Hadoop, MongoDB and SQL Server
 
Big data ppt
Big data pptBig data ppt
Big data ppt
 

Similaire à Présentation on radoop

Big Data Analytics with Hadoop
Big Data Analytics with HadoopBig Data Analytics with Hadoop
Big Data Analytics with HadoopPhilippe Julio
 
Lecture 5 - Big Data and Hadoop Intro.ppt
Lecture 5 - Big Data and Hadoop Intro.pptLecture 5 - Big Data and Hadoop Intro.ppt
Lecture 5 - Big Data and Hadoop Intro.pptalmaraniabwmalk
 
Simple, Modular and Extensible Big Data Platform Concept
Simple, Modular and Extensible Big Data Platform ConceptSimple, Modular and Extensible Big Data Platform Concept
Simple, Modular and Extensible Big Data Platform ConceptSatish Mohan
 
Big Data Practice_Planning_steps_RK
Big Data Practice_Planning_steps_RKBig Data Practice_Planning_steps_RK
Big Data Practice_Planning_steps_RKRajesh Jayarman
 
Hadoop data-lake-white-paper
Hadoop data-lake-white-paperHadoop data-lake-white-paper
Hadoop data-lake-white-paperSupratim Ray
 
Architecting the Future of Big Data and Search
Architecting the Future of Big Data and SearchArchitecting the Future of Big Data and Search
Architecting the Future of Big Data and SearchHortonworks
 
Big data and Hadoop overview
Big data and Hadoop overviewBig data and Hadoop overview
Big data and Hadoop overviewNitesh Ghosh
 
Fundamentals of big data analytics and Hadoop
Fundamentals of big data analytics and HadoopFundamentals of big data analytics and Hadoop
Fundamentals of big data analytics and HadoopArchana Gopinath
 
Introduction To Big Data & Hadoop
Introduction To Big Data & HadoopIntroduction To Big Data & Hadoop
Introduction To Big Data & HadoopBlackvard
 
Apache hadoop bigdata-in-banking
Apache hadoop bigdata-in-bankingApache hadoop bigdata-in-banking
Apache hadoop bigdata-in-bankingm_hepburn
 
Foxvalley bigdata
Foxvalley bigdataFoxvalley bigdata
Foxvalley bigdataTom Rogers
 
Anexinet Big Data Solutions
Anexinet Big Data SolutionsAnexinet Big Data Solutions
Anexinet Big Data SolutionsMark Kromer
 
Hadoop and IoT Sinergija 2014
Hadoop and IoT Sinergija 2014Hadoop and IoT Sinergija 2014
Hadoop and IoT Sinergija 2014Milos Milovanovic
 
Hadoop and IoT Sinergija 2014
Hadoop and IoT Sinergija 2014Hadoop and IoT Sinergija 2014
Hadoop and IoT Sinergija 2014Darko Marjanovic
 
Hadoop as data refinery
Hadoop as data refineryHadoop as data refinery
Hadoop as data refinerySteve Loughran
 

Similaire à Présentation on radoop (20)

Big Data Analytics with Hadoop
Big Data Analytics with HadoopBig Data Analytics with Hadoop
Big Data Analytics with Hadoop
 
Lecture 5 - Big Data and Hadoop Intro.ppt
Lecture 5 - Big Data and Hadoop Intro.pptLecture 5 - Big Data and Hadoop Intro.ppt
Lecture 5 - Big Data and Hadoop Intro.ppt
 
Big Data
Big DataBig Data
Big Data
 
Simple, Modular and Extensible Big Data Platform Concept
Simple, Modular and Extensible Big Data Platform ConceptSimple, Modular and Extensible Big Data Platform Concept
Simple, Modular and Extensible Big Data Platform Concept
 
Big Data Practice_Planning_steps_RK
Big Data Practice_Planning_steps_RKBig Data Practice_Planning_steps_RK
Big Data Practice_Planning_steps_RK
 
Big Data Analytics
Big Data AnalyticsBig Data Analytics
Big Data Analytics
 
Hadoop data-lake-white-paper
Hadoop data-lake-white-paperHadoop data-lake-white-paper
Hadoop data-lake-white-paper
 
Architecting the Future of Big Data and Search
Architecting the Future of Big Data and SearchArchitecting the Future of Big Data and Search
Architecting the Future of Big Data and Search
 
Big data and Hadoop overview
Big data and Hadoop overviewBig data and Hadoop overview
Big data and Hadoop overview
 
Hadoop
HadoopHadoop
Hadoop
 
Fundamentals of big data analytics and Hadoop
Fundamentals of big data analytics and HadoopFundamentals of big data analytics and Hadoop
Fundamentals of big data analytics and Hadoop
 
Introduction To Big Data & Hadoop
Introduction To Big Data & HadoopIntroduction To Big Data & Hadoop
Introduction To Big Data & Hadoop
 
Apache hadoop bigdata-in-banking
Apache hadoop bigdata-in-bankingApache hadoop bigdata-in-banking
Apache hadoop bigdata-in-banking
 
Hadoop HDFS.ppt
Hadoop HDFS.pptHadoop HDFS.ppt
Hadoop HDFS.ppt
 
Big Data , Big Problem?
Big Data , Big Problem?Big Data , Big Problem?
Big Data , Big Problem?
 
Foxvalley bigdata
Foxvalley bigdataFoxvalley bigdata
Foxvalley bigdata
 
Anexinet Big Data Solutions
Anexinet Big Data SolutionsAnexinet Big Data Solutions
Anexinet Big Data Solutions
 
Hadoop and IoT Sinergija 2014
Hadoop and IoT Sinergija 2014Hadoop and IoT Sinergija 2014
Hadoop and IoT Sinergija 2014
 
Hadoop and IoT Sinergija 2014
Hadoop and IoT Sinergija 2014Hadoop and IoT Sinergija 2014
Hadoop and IoT Sinergija 2014
 
Hadoop as data refinery
Hadoop as data refineryHadoop as data refinery
Hadoop as data refinery
 

Dernier

Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityGeoBlogs
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphThiyagu K
 
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxPOINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxSayali Powar
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfciinovamais
 
Introduction to ArtificiaI Intelligence in Higher Education
Introduction to ArtificiaI Intelligence in Higher EducationIntroduction to ArtificiaI Intelligence in Higher Education
Introduction to ArtificiaI Intelligence in Higher Educationpboyjonauth
 
mini mental status format.docx
mini    mental       status     format.docxmini    mental       status     format.docx
mini mental status format.docxPoojaSen20
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdfssuser54595a
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingTechSoup
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdfQucHHunhnh
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...EduSkills OECD
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxheathfieldcps1
 
The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13Steve Thomason
 
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Sapana Sha
 
Web & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfWeb & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfJayanti Pande
 
Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...
Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...
Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...RKavithamani
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Celine George
 
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptxContemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptxRoyAbrique
 

Dernier (20)

Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activity
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot Graph
 
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxPOINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
 
TataKelola dan KamSiber Kecerdasan Buatan v022.pdf
TataKelola dan KamSiber Kecerdasan Buatan v022.pdfTataKelola dan KamSiber Kecerdasan Buatan v022.pdf
TataKelola dan KamSiber Kecerdasan Buatan v022.pdf
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
 
Introduction to ArtificiaI Intelligence in Higher Education
Introduction to ArtificiaI Intelligence in Higher EducationIntroduction to ArtificiaI Intelligence in Higher Education
Introduction to ArtificiaI Intelligence in Higher Education
 
mini mental status format.docx
mini    mental       status     format.docxmini    mental       status     format.docx
mini mental status format.docx
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy Consulting
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
 
Staff of Color (SOC) Retention Efforts DDSD
Staff of Color (SOC) Retention Efforts DDSDStaff of Color (SOC) Retention Efforts DDSD
Staff of Color (SOC) Retention Efforts DDSD
 
The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13
 
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
 
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptxINDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
 
Web & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfWeb & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdf
 
Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...
Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...
Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17
 
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptxContemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
 

Présentation on radoop

  • 1. Présentation On Presented by:- Sudipta Mahapatra RegNo:-1021209061 RollNo:-60,7th Sem ,IT
  • 2. Contents • Introduction • Why RADOOP • Architecture • Radoop sub-parts • Benefits • Conclusion and future work
  • 3. Introduction • Radoop is a tool used for data analysis. • It is devloped by Gábor Makrai . • Radoop closely integrates the highly optimized data analytics capabilities of Hadoop clusters, the distributed data warehouse Hive, and Mahout into the user-friendly interface of RapidMiner. This results in a powerful and easy-to-use data analytics solution for Hadoop.
  • 4. Why Radoop ? Data is growing:It’s growing. Quickly. And it’s everywhere. 9000 7910 8000 7000 6000 5000 4000 3000 2000 1227 1000 130 0 2005 2010 2015
  • 5. New kinds of data Structured data vs. Unstructured data growth Complex, Unstructured Analysis gap Analysis gap Relational Our ability to analyze “The sexy job in the next 10 years will be statisticians” – Hal Varian, Chief Economist at Google •Digital universe grew by 62% last year to 800K petabytes and will grow to 1.2 “zettabytes” this year.
  • 6. Architechture Hive: A data warehouse infrastructure for data summarization & ad hoc querying. Mahout: A Scalable machine learning and datamining library. •HDFS is a distributed file system designed to hold very large amounts of data and provide high-throughput access to this information. •The Map-Reduce programming model is a Framework for distributed processing of large data sets. • RapidMiner is a toolkit for datamining.
  • 7. RapidMiner  RapidMiner, formerly YALE (Yet Another Learning Environment), is an environment for machine learning , data mining, text mining, predictive analytics, and business analytics.  It is used for research, education, training, application development, and industrial applications.  RapidMiner provides data mining and machine learning procedures including: data loading and transformation (ETL), data preprocessing and visualization, modeling, evaluation, and deployment. It is able to generate graphs like MS Excel.  It is also used for analyzing data generated by high- throughput instruments used in processes such as genotyping, proteomics, and mass spectrometry.
  • 8. Hive and Mahout • Hive : is a data warehouse infrastructure built on top of Hadoop, i.e. it uses the distributed file system of Hadoop and the efficient access technologies. Hive was initially developed by Facebook and is now used and developed by many other companies for their distributed data warehouse. • Mahout : is a machine learning library already offering many scalable machine learning libraries implemented as well on top of Hadoop and its map & reduce paradigm. Hence, Mahout is one of the first distributed data analytics framework making use of the power of Hadoop.
  • 9. Map Reduce The Map-Reduce programming model -Framework for distributed processing of large data sets Natural for: – Log processing – Web search indexing – Ad-hoc queries
  • 10. HDFS HDFS is a distributed file system designed to hold very large amounts of data and provide high-throughput access to this information. 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 No RAID required.
  • 11. Advantages  Scalability: Even data volumes in the terabyte and petabyte range can be analyzed.  Radoop provides a user-friendly interface for editing and running ETL, analytics, and machine learning processes on Hadoop.  Radoop provides easy-to-use graphical interface.  It eliminates the ETL bottlenecks.
  • 12. Conclusion and future work  It has experimentally proved that within a time up to 1-8 gb of data analyzed with 4-16 nodes in radoop where in rapidminor up to 1gb of data can be analyzed.  “we believe more than half of the world’s data will be stored in Apache Hadoop within 5 years” Hortonworks.  Radoop is opening the doors for people who are less comfortable with Hadoop but want to use Hadoop for Big Data analysis.