SlideShare a Scribd company logo
1 of 10
Download to read offline
NETEZZA VS TERADATA VS
EXADATA
Asis Mohanty
CBIP, CDMP
asismohanty@gmail.com
Comparison Criteria
• Architecture
• Scalability
• Reliability
• Performance
• Compatibility
• Affordability
• Manageability
Architecture
   Functionality               Netezza                    Teradata             Exadata

Commodity/Proprietary Proprietary                 Proprietary            Proprietary
                      Asymmetric Massively
                      Parallel Processing (best                          Hybrid MPP-Shared
                      combination of SMP +                               everything
MPP                   MPP)                        True MPP               architecture.Clustered
                      Recommended for Data
                      Warehouse and               Both OLTP and EDW      Both OLTP and EDW
OLTP/EDW              Analytical platform         supported              supported
                                                  Bynets - 10 Gigabit
                                                  Ethernet
                       10gbps gigabyte            Interconnect node to   40gbps infiniband
Interconnect           Ethernet                   node                   switch
                       FPGA-Field                                        Smart scan and data
Storage layer          Programmable Gate                                 offloaded on storage
offloading             Arrays                                            server

Hardware Flexibilty    Fixed                      Fixed                  Fixed
                                                                         Linux and solaris-
O/S flexibility        Linux-preconfigured o/s Linux                     preconfigured o/s
Scalability
   Functionality                 Netezza               Teradata                 Exadata
                                                  Eight nodes in a fully Can scale from qtr to
Linear Scalability for   Scale upto qtr->half-    populated cabinet      half and full rack upto 8
storage                  >full rack               scalable to 6 cabinets full racks.
Linear Scalability for                            96 GB memory in        Fixed memory of 96gb
memory                   fixed                    each node              per node
                                                  Teradata integrated
                                                  data warehouse high-
                                                  speed data transfer
                                                  infrastructure and
                                                  native Hadoop          Open to use
Open to third party      open to use hadoop for   connectivity are       hadoop/nosql for
storage                  unstructured data        included.              unstructured data
                                                                         96gb can expand to
Memory Exapansion        Scalable                                        144gb per node
                                                  Scalable up to 6 fully
                                                  populated cabinets
                                                  and 200 Terabytes of Storage expansion can
Storage Exapansion       Scalable up to PB        customer data space scale upto
Reliability
   Functionality           Netezza          Teradata               Exadata
                                       Teradata software     High availabilty -
                                       redundant design      clustered instances.
                                       using journals and    Redundancy at every
Availability       High availability   fallback mechanism.   layer.
                                                             High redundancey ASM
                                       RAID-1 & RAID-0       mirroring as storage
Mirroring          Full mirroring      Available             layer

Data integrity     Fully ACID          ACID compliant        Fully ACID
Performance
   Functionality             Netezza                   Teradata                Exadata
                                                                        Query data offloaded to
                                                                        storage layer and using
                      AMPP (Asymmetric                                  storage index it
                      Massively Parallel                                retrieved required rows
                      Processing), Distribution                         avoiding unnecessary
Storage scan          Key & Row-Id ..                                   i/o
                                                  Teradata is based on
                                                  Primary Index and
                                                  Hashing algorithm is
Indexing              No Indexing                 dependent on PI      Required for oltp
                                                                       5tb solid state disk for
Flash Memory          ??                          ??                   memory cache

Storage Compression   10X Compression             30% compression  10x compression
                                                                   10x compression for
                                                                   achived data.
                                             Teradata 13           Uncompressed
                                             compresses mostly all overhead is zero as
                     10X Compression (Stores data types.           data read from storage
Columnar Compression columnr compression)    Reduced System I/O. in compressed format
Row based
compression          No                                            Oltp compression
Performance (Conn..)
   Functionality               Netezza                 Teradata               Exadata
                                                operates at the data
                                                storage block level to
Block Level            Host & Snippet takes     deliver dramatic
Compression            care of this.            space savings
                                                Shared Nothing
                                                architecture, data is
                                                stored equally on all
                       Shared nothing along     amps and fetched in
                       with AMPP(Asymmetric parallel. (more amps
                       Massively Parallel       implies faster         Mini 48 threads per
Parallelism            Processing) Architecture processing)            node
                                                                       Query used the
                                                                       parallelism based on
                       SPU & FPGA takes care of Table level partition proper partitioning at
Condtional Parallelism this                     support                table level.
Unconditional
Parallelism            NA                                              Doesn't support
                                                Based on Hashing
                       ~ 10 TB/Hr using Bulk    algorithm,data is
                       load or Informatica      stored equally on all 7tb/hr on full rack. Flat
Data loading Rate      Fastreader               amps.                  file loading
Compatibility
   Functionality                Netezza                  Teradata                Exadata
                        All BI tools can be used.                         All BI tools can be used.
                        Can use existing            Compatible with all   Can use existing
                        apps/tools with almost      BI Tools but          apps/tools with almost
                        no modification (out of     Customization         no modification (out of
BI app/tool integration the box)                    required              the box)
                                                                          Required minimal
                                                                          changes for
                                                                          partitioning if porting
                                                                          data from other
                                                                          database vendors. Not
                        Unnecessary/Slightly                              required for oracle
Data restructuring      required.                   Automatic             databases
Affordability
   Functionality             Netezza              Teradata               Exadata

Upfront entry cost    Less than $1M          Less than $1M        $1M for full rack
                      Less than 1 DBA and    Less than 1 DBA and Less than 1 DBA and
Ongoing admin costs   system administrator   system administrator system administrator
Support/Maintenance
cost                  Less                   Medium               132000K for Full rack
Manageability
   Functionality              Netezza             Teradata                  Exadata
Server/DBMS/disk
integration          Fully integrated       Fully Integrated       Fully Integrated
                                            Minimal - Gives
                                            recommendations for
                                            optimal performance if
Performance tuning   Not Required           coded wrongly.         Minimal
                                            Comes with Industry
                     Supports Industry      specific logical data
Data modeling        Standard Data models   models (Integrated)    Unnecessary

Install time         Less than 1 day                               Less than 1 day
Expansion/
Upgradation          Simple                                        Simple

More Related Content

What's hot

Melbourne: Certus Data 2.0 Vault Meetup with Snowflake - Data Vault In The Cl...
Melbourne: Certus Data 2.0 Vault Meetup with Snowflake - Data Vault In The Cl...Melbourne: Certus Data 2.0 Vault Meetup with Snowflake - Data Vault In The Cl...
Melbourne: Certus Data 2.0 Vault Meetup with Snowflake - Data Vault In The Cl...Certus Solutions
 
Future of Data Engineering
Future of Data EngineeringFuture of Data Engineering
Future of Data EngineeringC4Media
 
Get Savvy with Snowflake
Get Savvy with SnowflakeGet Savvy with Snowflake
Get Savvy with SnowflakeMatillion
 
Oracle Data Protection - 2. část
Oracle Data Protection - 2. částOracle Data Protection - 2. část
Oracle Data Protection - 2. částMarketingArrowECS_CZ
 
Migration to Oracle Multitenant
Migration to Oracle MultitenantMigration to Oracle Multitenant
Migration to Oracle MultitenantJitendra Singh
 
Hadoop Hbase - Introduction
Hadoop Hbase - IntroductionHadoop Hbase - Introduction
Hadoop Hbase - IntroductionBlandine Larbret
 
Wars of MySQL Cluster ( InnoDB Cluster VS Galera )
Wars of MySQL Cluster ( InnoDB Cluster VS Galera ) Wars of MySQL Cluster ( InnoDB Cluster VS Galera )
Wars of MySQL Cluster ( InnoDB Cluster VS Galera ) Mydbops
 
A Closer Look at Apache Kudu
A Closer Look at Apache KuduA Closer Look at Apache Kudu
A Closer Look at Apache KuduAndriy Zabavskyy
 
A Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and HudiA Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and HudiDatabricks
 
Differentiate Big Data vs Data Warehouse use cases for a cloud solution
Differentiate Big Data vs Data Warehouse use cases for a cloud solutionDifferentiate Big Data vs Data Warehouse use cases for a cloud solution
Differentiate Big Data vs Data Warehouse use cases for a cloud solutionJames Serra
 
Extreme Replication - Performance Tuning Oracle GoldenGate
Extreme Replication - Performance Tuning Oracle GoldenGateExtreme Replication - Performance Tuning Oracle GoldenGate
Extreme Replication - Performance Tuning Oracle GoldenGateBobby Curtis
 
Building a Big Data Solution
Building a Big Data SolutionBuilding a Big Data Solution
Building a Big Data SolutionJames Serra
 
Changing the game with cloud dw
Changing the game with cloud dwChanging the game with cloud dw
Changing the game with cloud dwelephantscale
 
Big data architectures and the data lake
Big data architectures and the data lakeBig data architectures and the data lake
Big data architectures and the data lakeJames Serra
 
Enabling a Data Mesh Architecture with Data Virtualization
Enabling a Data Mesh Architecture with Data VirtualizationEnabling a Data Mesh Architecture with Data Virtualization
Enabling a Data Mesh Architecture with Data VirtualizationDenodo
 
Cloudera - The Modern Platform for Analytics
Cloudera - The Modern Platform for AnalyticsCloudera - The Modern Platform for Analytics
Cloudera - The Modern Platform for AnalyticsCloudera, Inc.
 
Introduction to snowflake
Introduction to snowflakeIntroduction to snowflake
Introduction to snowflakeSunil Gurav
 

What's hot (20)

Melbourne: Certus Data 2.0 Vault Meetup with Snowflake - Data Vault In The Cl...
Melbourne: Certus Data 2.0 Vault Meetup with Snowflake - Data Vault In The Cl...Melbourne: Certus Data 2.0 Vault Meetup with Snowflake - Data Vault In The Cl...
Melbourne: Certus Data 2.0 Vault Meetup with Snowflake - Data Vault In The Cl...
 
Future of Data Engineering
Future of Data EngineeringFuture of Data Engineering
Future of Data Engineering
 
Get Savvy with Snowflake
Get Savvy with SnowflakeGet Savvy with Snowflake
Get Savvy with Snowflake
 
Oracle Data Protection - 2. část
Oracle Data Protection - 2. částOracle Data Protection - 2. část
Oracle Data Protection - 2. část
 
Migration to Oracle Multitenant
Migration to Oracle MultitenantMigration to Oracle Multitenant
Migration to Oracle Multitenant
 
Kudu Deep-Dive
Kudu Deep-DiveKudu Deep-Dive
Kudu Deep-Dive
 
Hadoop Hbase - Introduction
Hadoop Hbase - IntroductionHadoop Hbase - Introduction
Hadoop Hbase - Introduction
 
Wars of MySQL Cluster ( InnoDB Cluster VS Galera )
Wars of MySQL Cluster ( InnoDB Cluster VS Galera ) Wars of MySQL Cluster ( InnoDB Cluster VS Galera )
Wars of MySQL Cluster ( InnoDB Cluster VS Galera )
 
A Closer Look at Apache Kudu
A Closer Look at Apache KuduA Closer Look at Apache Kudu
A Closer Look at Apache Kudu
 
NetApp & Storage fundamentals
NetApp & Storage fundamentalsNetApp & Storage fundamentals
NetApp & Storage fundamentals
 
A Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and HudiA Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and Hudi
 
Differentiate Big Data vs Data Warehouse use cases for a cloud solution
Differentiate Big Data vs Data Warehouse use cases for a cloud solutionDifferentiate Big Data vs Data Warehouse use cases for a cloud solution
Differentiate Big Data vs Data Warehouse use cases for a cloud solution
 
Extreme Replication - Performance Tuning Oracle GoldenGate
Extreme Replication - Performance Tuning Oracle GoldenGateExtreme Replication - Performance Tuning Oracle GoldenGate
Extreme Replication - Performance Tuning Oracle GoldenGate
 
Building a Big Data Solution
Building a Big Data SolutionBuilding a Big Data Solution
Building a Big Data Solution
 
Changing the game with cloud dw
Changing the game with cloud dwChanging the game with cloud dw
Changing the game with cloud dw
 
Big data architectures and the data lake
Big data architectures and the data lakeBig data architectures and the data lake
Big data architectures and the data lake
 
Enabling a Data Mesh Architecture with Data Virtualization
Enabling a Data Mesh Architecture with Data VirtualizationEnabling a Data Mesh Architecture with Data Virtualization
Enabling a Data Mesh Architecture with Data Virtualization
 
Cloudera - The Modern Platform for Analytics
Cloudera - The Modern Platform for AnalyticsCloudera - The Modern Platform for Analytics
Cloudera - The Modern Platform for Analytics
 
Introduction to snowflake
Introduction to snowflakeIntroduction to snowflake
Introduction to snowflake
 
Greenplum Architecture
Greenplum ArchitectureGreenplum Architecture
Greenplum Architecture
 

Viewers also liked

Netezza vs teradata
Netezza vs teradataNetezza vs teradata
Netezza vs teradataAsis Mohanty
 
Comparison of MPP Data Warehouse Platforms
Comparison of MPP Data Warehouse PlatformsComparison of MPP Data Warehouse Platforms
Comparison of MPP Data Warehouse PlatformsDavid Portnoy
 
Magic quadrant for data warehouse database management systems
Magic quadrant for data warehouse database management systems Magic quadrant for data warehouse database management systems
Magic quadrant for data warehouse database management systems divjeev
 
Teradata introduction
Teradata introductionTeradata introduction
Teradata introductionRameejmd
 
Hybrid Data Warehouse Hadoop Implementations
Hybrid Data Warehouse Hadoop ImplementationsHybrid Data Warehouse Hadoop Implementations
Hybrid Data Warehouse Hadoop ImplementationsDavid Portnoy
 
Hadoop and Netezza - Co-existence or Competition?
Hadoop and Netezza - Co-existence or Competition?Hadoop and Netezza - Co-existence or Competition?
Hadoop and Netezza - Co-existence or Competition?Krishnan Parasuraman
 
Building an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureBuilding an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureJames Serra
 
How to Use Algorithms to Scale Digital Business
How to Use Algorithms to Scale Digital BusinessHow to Use Algorithms to Scale Digital Business
How to Use Algorithms to Scale Digital BusinessTeradata
 
Why Data Virtualization? An Introduction by Denodo
Why Data Virtualization? An Introduction by DenodoWhy Data Virtualization? An Introduction by Denodo
Why Data Virtualization? An Introduction by DenodoJusto Hidalgo
 
Data Warehouse Design and Best Practices
Data Warehouse Design and Best PracticesData Warehouse Design and Best Practices
Data Warehouse Design and Best PracticesIvo Andreev
 
25 Digital Transformation Case Studies In Retail
25 Digital Transformation Case Studies In Retail25 Digital Transformation Case Studies In Retail
25 Digital Transformation Case Studies In RetailHappy Marketer
 
Isometric projections for engineering students
Isometric projections for engineering studentsIsometric projections for engineering students
Isometric projections for engineering studentsAkshay Darji
 
Agile Software Development Overview
Agile Software Development OverviewAgile Software Development Overview
Agile Software Development OverviewStewart Rogers
 
Performance Management System
Performance Management SystemPerformance Management System
Performance Management SystemSurabhi Mohan
 
Office automation system
Office automation systemOffice automation system
Office automation systemMilan Padariya
 
Gartner TOP 10 Strategic Technology Trends 2017
Gartner TOP 10 Strategic Technology Trends 2017Gartner TOP 10 Strategic Technology Trends 2017
Gartner TOP 10 Strategic Technology Trends 2017Den Reymer
 
Teradata Professional Services Overview
Teradata Professional Services OverviewTeradata Professional Services Overview
Teradata Professional Services OverviewTeradata
 

Viewers also liked (20)

Netezza vs teradata
Netezza vs teradataNetezza vs teradata
Netezza vs teradata
 
Comparison of MPP Data Warehouse Platforms
Comparison of MPP Data Warehouse PlatformsComparison of MPP Data Warehouse Platforms
Comparison of MPP Data Warehouse Platforms
 
Magic quadrant for data warehouse database management systems
Magic quadrant for data warehouse database management systems Magic quadrant for data warehouse database management systems
Magic quadrant for data warehouse database management systems
 
Teradata introduction
Teradata introductionTeradata introduction
Teradata introduction
 
Hybrid Data Warehouse Hadoop Implementations
Hybrid Data Warehouse Hadoop ImplementationsHybrid Data Warehouse Hadoop Implementations
Hybrid Data Warehouse Hadoop Implementations
 
Hadoop and Netezza - Co-existence or Competition?
Hadoop and Netezza - Co-existence or Competition?Hadoop and Netezza - Co-existence or Competition?
Hadoop and Netezza - Co-existence or Competition?
 
Building an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureBuilding an Effective Data Warehouse Architecture
Building an Effective Data Warehouse Architecture
 
MPP vs Hadoop
MPP vs HadoopMPP vs Hadoop
MPP vs Hadoop
 
How to Use Algorithms to Scale Digital Business
How to Use Algorithms to Scale Digital BusinessHow to Use Algorithms to Scale Digital Business
How to Use Algorithms to Scale Digital Business
 
Why Data Virtualization? An Introduction by Denodo
Why Data Virtualization? An Introduction by DenodoWhy Data Virtualization? An Introduction by Denodo
Why Data Virtualization? An Introduction by Denodo
 
Sketching User Experience
Sketching User ExperienceSketching User Experience
Sketching User Experience
 
Ab initio beginner's course topic 1
Ab initio beginner's course   topic 1Ab initio beginner's course   topic 1
Ab initio beginner's course topic 1
 
Data Warehouse Design and Best Practices
Data Warehouse Design and Best PracticesData Warehouse Design and Best Practices
Data Warehouse Design and Best Practices
 
25 Digital Transformation Case Studies In Retail
25 Digital Transformation Case Studies In Retail25 Digital Transformation Case Studies In Retail
25 Digital Transformation Case Studies In Retail
 
Isometric projections for engineering students
Isometric projections for engineering studentsIsometric projections for engineering students
Isometric projections for engineering students
 
Agile Software Development Overview
Agile Software Development OverviewAgile Software Development Overview
Agile Software Development Overview
 
Performance Management System
Performance Management SystemPerformance Management System
Performance Management System
 
Office automation system
Office automation systemOffice automation system
Office automation system
 
Gartner TOP 10 Strategic Technology Trends 2017
Gartner TOP 10 Strategic Technology Trends 2017Gartner TOP 10 Strategic Technology Trends 2017
Gartner TOP 10 Strategic Technology Trends 2017
 
Teradata Professional Services Overview
Teradata Professional Services OverviewTeradata Professional Services Overview
Teradata Professional Services Overview
 

Similar to NETEZZA VS TERADATA VS EXADATA: A COMPARISON OF DATA WAREHOUSE PLATFORMS

Sn wf12 amd fabric server (satheesh nanniyur) oct 12
Sn wf12 amd fabric server (satheesh nanniyur) oct 12Sn wf12 amd fabric server (satheesh nanniyur) oct 12
Sn wf12 amd fabric server (satheesh nanniyur) oct 12Satheesh Nanniyur
 
PAS 8 Datasheet
PAS 8 DatasheetPAS 8 Datasheet
PAS 8 DatasheetPanasas
 
PAN 9 Datasheet
PAN 9 DatasheetPAN 9 Datasheet
PAN 9 DatasheetPanasas
 
Panasas ActiveStor 11 and 12: Parallel NAS Appliance for HPC Workloads
Panasas ActiveStor 11 and 12: Parallel NAS Appliance for HPC WorkloadsPanasas ActiveStor 11 and 12: Parallel NAS Appliance for HPC Workloads
Panasas ActiveStor 11 and 12: Parallel NAS Appliance for HPC WorkloadsPanasas
 
Impala presentation ahad rana
Impala presentation ahad ranaImpala presentation ahad rana
Impala presentation ahad ranaData Con LA
 
Oracle en Entel Summit 2010
Oracle en Entel Summit 2010Oracle en Entel Summit 2010
Oracle en Entel Summit 2010Entel
 
Sun storage tek 2500 series disk array technical presentation
Sun storage tek 2500 series disk array technical presentationSun storage tek 2500 series disk array technical presentation
Sun storage tek 2500 series disk array technical presentationxKinAnx
 
Sun storage tek 6140 technical presentation
Sun storage tek 6140 technical presentationSun storage tek 6140 technical presentation
Sun storage tek 6140 technical presentationxKinAnx
 
Sun storage tek 6140 customer presentation
Sun storage tek 6140 customer presentationSun storage tek 6140 customer presentation
Sun storage tek 6140 customer presentationxKinAnx
 
Using Many-Core Processors to Improve the Performance of Space Computing Plat...
Using Many-Core Processors to Improve the Performance of Space Computing Plat...Using Many-Core Processors to Improve the Performance of Space Computing Plat...
Using Many-Core Processors to Improve the Performance of Space Computing Plat...Fisnik Kraja
 
NetApp-ClusteredONTAP-Fall2012
NetApp-ClusteredONTAP-Fall2012NetApp-ClusteredONTAP-Fall2012
NetApp-ClusteredONTAP-Fall2012Michael Harding
 
Top Technology Trends
Top Technology Trends Top Technology Trends
Top Technology Trends InnoTech
 
Beyond The Data Grid: Coherence, Normalisation, Joins and Linear Scalability
Beyond The Data Grid: Coherence, Normalisation, Joins and Linear ScalabilityBeyond The Data Grid: Coherence, Normalisation, Joins and Linear Scalability
Beyond The Data Grid: Coherence, Normalisation, Joins and Linear ScalabilityBen Stopford
 
Intel’S Larrabee
Intel’S LarrabeeIntel’S Larrabee
Intel’S Larrabeevipinpnair
 
Architecting the Future of Big Data & Search - Eric Baldeschwieler
Architecting the Future of Big Data & Search - Eric BaldeschwielerArchitecting the Future of Big Data & Search - Eric Baldeschwieler
Architecting the Future of Big Data & Search - Eric Baldeschwielerlucenerevolution
 
CETH for XDP [Linux Meetup Santa Clara | July 2016]
CETH for XDP [Linux Meetup Santa Clara | July 2016] CETH for XDP [Linux Meetup Santa Clara | July 2016]
CETH for XDP [Linux Meetup Santa Clara | July 2016] IO Visor Project
 
Mitmepalgeline uus protsessor T4 SUN´i perekonnast - Karel Kannel
Mitmepalgeline uus protsessor T4 SUN´i perekonnast - Karel KannelMitmepalgeline uus protsessor T4 SUN´i perekonnast - Karel Kannel
Mitmepalgeline uus protsessor T4 SUN´i perekonnast - Karel KannelORACLE USER GROUP ESTONIA
 
Apache con 2013-hadoop
Apache con 2013-hadoopApache con 2013-hadoop
Apache con 2013-hadoopSteve Watt
 

Similar to NETEZZA VS TERADATA VS EXADATA: A COMPARISON OF DATA WAREHOUSE PLATFORMS (20)

Sn wf12 amd fabric server (satheesh nanniyur) oct 12
Sn wf12 amd fabric server (satheesh nanniyur) oct 12Sn wf12 amd fabric server (satheesh nanniyur) oct 12
Sn wf12 amd fabric server (satheesh nanniyur) oct 12
 
Super cluster oracleday cl 7
Super cluster oracleday cl 7Super cluster oracleday cl 7
Super cluster oracleday cl 7
 
PAS 8 Datasheet
PAS 8 DatasheetPAS 8 Datasheet
PAS 8 Datasheet
 
PAN 9 Datasheet
PAN 9 DatasheetPAN 9 Datasheet
PAN 9 Datasheet
 
Panasas ActiveStor 11 and 12: Parallel NAS Appliance for HPC Workloads
Panasas ActiveStor 11 and 12: Parallel NAS Appliance for HPC WorkloadsPanasas ActiveStor 11 and 12: Parallel NAS Appliance for HPC Workloads
Panasas ActiveStor 11 and 12: Parallel NAS Appliance for HPC Workloads
 
Teradata training
Teradata trainingTeradata training
Teradata training
 
Impala presentation ahad rana
Impala presentation ahad ranaImpala presentation ahad rana
Impala presentation ahad rana
 
Oracle en Entel Summit 2010
Oracle en Entel Summit 2010Oracle en Entel Summit 2010
Oracle en Entel Summit 2010
 
Sun storage tek 2500 series disk array technical presentation
Sun storage tek 2500 series disk array technical presentationSun storage tek 2500 series disk array technical presentation
Sun storage tek 2500 series disk array technical presentation
 
Sun storage tek 6140 technical presentation
Sun storage tek 6140 technical presentationSun storage tek 6140 technical presentation
Sun storage tek 6140 technical presentation
 
Sun storage tek 6140 customer presentation
Sun storage tek 6140 customer presentationSun storage tek 6140 customer presentation
Sun storage tek 6140 customer presentation
 
Using Many-Core Processors to Improve the Performance of Space Computing Plat...
Using Many-Core Processors to Improve the Performance of Space Computing Plat...Using Many-Core Processors to Improve the Performance of Space Computing Plat...
Using Many-Core Processors to Improve the Performance of Space Computing Plat...
 
NetApp-ClusteredONTAP-Fall2012
NetApp-ClusteredONTAP-Fall2012NetApp-ClusteredONTAP-Fall2012
NetApp-ClusteredONTAP-Fall2012
 
Top Technology Trends
Top Technology Trends Top Technology Trends
Top Technology Trends
 
Beyond The Data Grid: Coherence, Normalisation, Joins and Linear Scalability
Beyond The Data Grid: Coherence, Normalisation, Joins and Linear ScalabilityBeyond The Data Grid: Coherence, Normalisation, Joins and Linear Scalability
Beyond The Data Grid: Coherence, Normalisation, Joins and Linear Scalability
 
Intel’S Larrabee
Intel’S LarrabeeIntel’S Larrabee
Intel’S Larrabee
 
Architecting the Future of Big Data & Search - Eric Baldeschwieler
Architecting the Future of Big Data & Search - Eric BaldeschwielerArchitecting the Future of Big Data & Search - Eric Baldeschwieler
Architecting the Future of Big Data & Search - Eric Baldeschwieler
 
CETH for XDP [Linux Meetup Santa Clara | July 2016]
CETH for XDP [Linux Meetup Santa Clara | July 2016] CETH for XDP [Linux Meetup Santa Clara | July 2016]
CETH for XDP [Linux Meetup Santa Clara | July 2016]
 
Mitmepalgeline uus protsessor T4 SUN´i perekonnast - Karel Kannel
Mitmepalgeline uus protsessor T4 SUN´i perekonnast - Karel KannelMitmepalgeline uus protsessor T4 SUN´i perekonnast - Karel Kannel
Mitmepalgeline uus protsessor T4 SUN´i perekonnast - Karel Kannel
 
Apache con 2013-hadoop
Apache con 2013-hadoopApache con 2013-hadoop
Apache con 2013-hadoop
 

More from Asis Mohanty

Cloud Data Warehouses
Cloud Data WarehousesCloud Data Warehouses
Cloud Data WarehousesAsis Mohanty
 
Cloud Lambda Architecture Patterns
Cloud Lambda Architecture PatternsCloud Lambda Architecture Patterns
Cloud Lambda Architecture PatternsAsis Mohanty
 
Cassandra basics 2.0
Cassandra basics 2.0Cassandra basics 2.0
Cassandra basics 2.0Asis Mohanty
 
Hadoop Architecture Options for Existing Enterprise DataWarehouse
Hadoop Architecture Options for Existing Enterprise DataWarehouseHadoop Architecture Options for Existing Enterprise DataWarehouse
Hadoop Architecture Options for Existing Enterprise DataWarehouseAsis Mohanty
 
ETL tool evaluation criteria
ETL tool evaluation criteriaETL tool evaluation criteria
ETL tool evaluation criteriaAsis Mohanty
 
Cognos vs Hyperion vs SSAS Comparison
Cognos vs Hyperion vs SSAS ComparisonCognos vs Hyperion vs SSAS Comparison
Cognos vs Hyperion vs SSAS ComparisonAsis Mohanty
 
Reporting/Dashboard Evaluations
Reporting/Dashboard EvaluationsReporting/Dashboard Evaluations
Reporting/Dashboard EvaluationsAsis Mohanty
 
Oracle to Netezza Migration Casestudy
Oracle to Netezza Migration CasestudyOracle to Netezza Migration Casestudy
Oracle to Netezza Migration CasestudyAsis Mohanty
 
BI Error Processing Framework
BI Error Processing FrameworkBI Error Processing Framework
BI Error Processing FrameworkAsis Mohanty
 
Change data capture the journey to real time bi
Change data capture the journey to real time biChange data capture the journey to real time bi
Change data capture the journey to real time biAsis Mohanty
 

More from Asis Mohanty (13)

Cloud Data Warehouses
Cloud Data WarehousesCloud Data Warehouses
Cloud Data Warehouses
 
Cloud Lambda Architecture Patterns
Cloud Lambda Architecture PatternsCloud Lambda Architecture Patterns
Cloud Lambda Architecture Patterns
 
Apache TAJO
Apache TAJOApache TAJO
Apache TAJO
 
Cassandra basics 2.0
Cassandra basics 2.0Cassandra basics 2.0
Cassandra basics 2.0
 
What is hadoop
What is hadoopWhat is hadoop
What is hadoop
 
Hadoop Architecture Options for Existing Enterprise DataWarehouse
Hadoop Architecture Options for Existing Enterprise DataWarehouseHadoop Architecture Options for Existing Enterprise DataWarehouse
Hadoop Architecture Options for Existing Enterprise DataWarehouse
 
ETL tool evaluation criteria
ETL tool evaluation criteriaETL tool evaluation criteria
ETL tool evaluation criteria
 
COGNOS Vs OBIEE
COGNOS Vs OBIEECOGNOS Vs OBIEE
COGNOS Vs OBIEE
 
Cognos vs Hyperion vs SSAS Comparison
Cognos vs Hyperion vs SSAS ComparisonCognos vs Hyperion vs SSAS Comparison
Cognos vs Hyperion vs SSAS Comparison
 
Reporting/Dashboard Evaluations
Reporting/Dashboard EvaluationsReporting/Dashboard Evaluations
Reporting/Dashboard Evaluations
 
Oracle to Netezza Migration Casestudy
Oracle to Netezza Migration CasestudyOracle to Netezza Migration Casestudy
Oracle to Netezza Migration Casestudy
 
BI Error Processing Framework
BI Error Processing FrameworkBI Error Processing Framework
BI Error Processing Framework
 
Change data capture the journey to real time bi
Change data capture the journey to real time biChange data capture the journey to real time bi
Change data capture the journey to real time bi
 

Recently uploaded

Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slidespraypatel2
 
Key Features Of Token Development (1).pptx
Key  Features Of Token  Development (1).pptxKey  Features Of Token  Development (1).pptx
Key Features Of Token Development (1).pptxLBM Solutions
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking MenDelhi Call girls
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptxHampshireHUG
 
The Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptxThe Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptxMalak Abu Hammad
 
Unblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesUnblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesSinan KOZAK
 
Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Paola De la Torre
 
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | DelhiFULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhisoniya singh
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationSafe Software
 
Pigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsMaria Levchenko
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerThousandEyes
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonetsnaman860154
 
Azure Monitor & Application Insight to monitor Infrastructure & Application
Azure Monitor & Application Insight to monitor Infrastructure & ApplicationAzure Monitor & Application Insight to monitor Infrastructure & Application
Azure Monitor & Application Insight to monitor Infrastructure & ApplicationAndikSusilo4
 
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptxFactors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptxKatpro Technologies
 
Enhancing Worker Digital Experience: A Hands-on Workshop for Partners
Enhancing Worker Digital Experience: A Hands-on Workshop for PartnersEnhancing Worker Digital Experience: A Hands-on Workshop for Partners
Enhancing Worker Digital Experience: A Hands-on Workshop for PartnersThousandEyes
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsEnterprise Knowledge
 
SIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge GraphSIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge GraphNeo4j
 
Maximizing Board Effectiveness 2024 Webinar.pptx
Maximizing Board Effectiveness 2024 Webinar.pptxMaximizing Board Effectiveness 2024 Webinar.pptx
Maximizing Board Effectiveness 2024 Webinar.pptxOnBoard
 
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreternaman860154
 

Recently uploaded (20)

Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slides
 
Key Features Of Token Development (1).pptx
Key  Features Of Token  Development (1).pptxKey  Features Of Token  Development (1).pptx
Key Features Of Token Development (1).pptx
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
 
The Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptxThe Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptx
 
Unblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesUnblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen Frames
 
Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101
 
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | DelhiFULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
 
Pigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food Manufacturing
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonets
 
Azure Monitor & Application Insight to monitor Infrastructure & Application
Azure Monitor & Application Insight to monitor Infrastructure & ApplicationAzure Monitor & Application Insight to monitor Infrastructure & Application
Azure Monitor & Application Insight to monitor Infrastructure & Application
 
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptxFactors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
 
Enhancing Worker Digital Experience: A Hands-on Workshop for Partners
Enhancing Worker Digital Experience: A Hands-on Workshop for PartnersEnhancing Worker Digital Experience: A Hands-on Workshop for Partners
Enhancing Worker Digital Experience: A Hands-on Workshop for Partners
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
 
SIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge GraphSIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge Graph
 
Maximizing Board Effectiveness 2024 Webinar.pptx
Maximizing Board Effectiveness 2024 Webinar.pptxMaximizing Board Effectiveness 2024 Webinar.pptx
Maximizing Board Effectiveness 2024 Webinar.pptx
 
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreter
 

NETEZZA VS TERADATA VS EXADATA: A COMPARISON OF DATA WAREHOUSE PLATFORMS

  • 1. NETEZZA VS TERADATA VS EXADATA Asis Mohanty CBIP, CDMP asismohanty@gmail.com
  • 2. Comparison Criteria • Architecture • Scalability • Reliability • Performance • Compatibility • Affordability • Manageability
  • 3. Architecture Functionality Netezza Teradata Exadata Commodity/Proprietary Proprietary Proprietary Proprietary Asymmetric Massively Parallel Processing (best Hybrid MPP-Shared combination of SMP + everything MPP MPP) True MPP architecture.Clustered Recommended for Data Warehouse and Both OLTP and EDW Both OLTP and EDW OLTP/EDW Analytical platform supported supported Bynets - 10 Gigabit Ethernet 10gbps gigabyte Interconnect node to 40gbps infiniband Interconnect Ethernet node switch FPGA-Field Smart scan and data Storage layer Programmable Gate offloaded on storage offloading Arrays server Hardware Flexibilty Fixed Fixed Fixed Linux and solaris- O/S flexibility Linux-preconfigured o/s Linux preconfigured o/s
  • 4. Scalability Functionality Netezza Teradata Exadata Eight nodes in a fully Can scale from qtr to Linear Scalability for Scale upto qtr->half- populated cabinet half and full rack upto 8 storage >full rack scalable to 6 cabinets full racks. Linear Scalability for 96 GB memory in Fixed memory of 96gb memory fixed each node per node Teradata integrated data warehouse high- speed data transfer infrastructure and native Hadoop Open to use Open to third party open to use hadoop for connectivity are hadoop/nosql for storage unstructured data included. unstructured data 96gb can expand to Memory Exapansion Scalable 144gb per node Scalable up to 6 fully populated cabinets and 200 Terabytes of Storage expansion can Storage Exapansion Scalable up to PB customer data space scale upto
  • 5. Reliability Functionality Netezza Teradata Exadata Teradata software High availabilty - redundant design clustered instances. using journals and Redundancy at every Availability High availability fallback mechanism. layer. High redundancey ASM RAID-1 & RAID-0 mirroring as storage Mirroring Full mirroring Available layer Data integrity Fully ACID ACID compliant Fully ACID
  • 6. Performance Functionality Netezza Teradata Exadata Query data offloaded to storage layer and using AMPP (Asymmetric storage index it Massively Parallel retrieved required rows Processing), Distribution avoiding unnecessary Storage scan Key & Row-Id .. i/o Teradata is based on Primary Index and Hashing algorithm is Indexing No Indexing dependent on PI Required for oltp 5tb solid state disk for Flash Memory ?? ?? memory cache Storage Compression 10X Compression 30% compression 10x compression 10x compression for achived data. Teradata 13 Uncompressed compresses mostly all overhead is zero as 10X Compression (Stores data types. data read from storage Columnar Compression columnr compression) Reduced System I/O. in compressed format Row based compression No Oltp compression
  • 7. Performance (Conn..) Functionality Netezza Teradata Exadata operates at the data storage block level to Block Level Host & Snippet takes deliver dramatic Compression care of this. space savings Shared Nothing architecture, data is stored equally on all Shared nothing along amps and fetched in with AMPP(Asymmetric parallel. (more amps Massively Parallel implies faster Mini 48 threads per Parallelism Processing) Architecture processing) node Query used the parallelism based on SPU & FPGA takes care of Table level partition proper partitioning at Condtional Parallelism this support table level. Unconditional Parallelism NA Doesn't support Based on Hashing ~ 10 TB/Hr using Bulk algorithm,data is load or Informatica stored equally on all 7tb/hr on full rack. Flat Data loading Rate Fastreader amps. file loading
  • 8. Compatibility Functionality Netezza Teradata Exadata All BI tools can be used. All BI tools can be used. Can use existing Compatible with all Can use existing apps/tools with almost BI Tools but apps/tools with almost no modification (out of Customization no modification (out of BI app/tool integration the box) required the box) Required minimal changes for partitioning if porting data from other database vendors. Not Unnecessary/Slightly required for oracle Data restructuring required. Automatic databases
  • 9. Affordability Functionality Netezza Teradata Exadata Upfront entry cost Less than $1M Less than $1M $1M for full rack Less than 1 DBA and Less than 1 DBA and Less than 1 DBA and Ongoing admin costs system administrator system administrator system administrator Support/Maintenance cost Less Medium 132000K for Full rack
  • 10. Manageability Functionality Netezza Teradata Exadata Server/DBMS/disk integration Fully integrated Fully Integrated Fully Integrated Minimal - Gives recommendations for optimal performance if Performance tuning Not Required coded wrongly. Minimal Comes with Industry Supports Industry specific logical data Data modeling Standard Data models models (Integrated) Unnecessary Install time Less than 1 day Less than 1 day Expansion/ Upgradation Simple Simple