SlideShare a Scribd company logo
1 of 24
IBM PureData System
for Analytics
Powered by Netezza
Hossein Sarshar
Agenda
• What is PureData and Netezza
o History
o Characteristics
o Product chain
• PureData Hardware Architecture
o Introduction
o Hardware architecture
o Paralleled structures
• Analytics with PureData
o Introduction
o In-database analytics tools
• Demo
IBM® PureData™ for Analytics 2
What is PureData and
Netezza
PureSystems
PureFlex PureApplication
IBM® PureData™ for Analytics 3
In 2010, IBM bought a new analytics platform called
Netezza. It was founded in 2000 at Marlborough, CA.
IBM later rebranded it to PureData.
What is PureData and
Netezza
PureSystems
PureFlex PureApplication PureData
IBM® PureData™ for Analytics 4
PureSystems Product
Family
PureFlex:
o Combines and optimizes compute, storage, networking and virtualization
capabilities under a single, unified management console into an
infrastructure system.
PureApplication:
o Is a platform system designed and tuned specifically for transactional web
and database applications.
PureData:
o Based on Netezza technology, PureData is all data experts need in a
single well tuned appliance.
IBM® PureData™ for Analytics 5
PureData
Operational
Analytics
Transactions Analytics
PureSystems
Characteristics
• Built-in Experts
o No indexing/tuning/partitioning
o Fully parallel, optimized in-Database Analytics.
o No storage administration.
o No software installation.
• Integration by Design:
o Server, Storage, Database in one easy to use package.
o Automatic parallelization and resource optimization to scale economically
o Enterprise-class security and platform management
• Simplified Experience:
o Up and running in hours.
o Minimal ongoing administration.
o Standard interfaces to best of breed Analytics, BI, and data integration tools.
o Built-in analytics capabilities allow users to derive insight from data quickly.
o Easy connectivity to other Big Data Platform components
IBM® PureData™ for Analytics 6
Each of these come as an appliance equal to
simplified yet strong private clouds with
minimal administration
PureData Introduction
• It is a datawarehousing and data analytics
appliance that is fast enough to process terabytes
of data in seconds. It is a fully parallel machine.
• Netezza’s main technology is using FPGA (Field
Programmable Gateway Array) to filter
unnecessary files in parallel manner.
• PureData uses Netezza technology to perform
deep analytics on huge amount of data in a
reasonable time.
• It is purpose-built for high performance analytics.
• It supports all DB structures (3NF, Star, De-Normalized
table)
IBM® PureData™ for Analytics 7
PureData Architecture
IBM® PureData™ for Analytics 8
Disk storage
RAID 1 disks
High speed data
streams
SMP Host
Redhat linux
servers
Optimizer
Compiler
A gateway to
the system
Snippet-Blades
Query accelerator
using FPGAs
S-Blades (SPU)
IBM® PureData™ for Analytics 9
S-Blades
IBM® PureData™ for Analytics 10
Intel Quad-Core
Dual-Core FPGADRAM
IBM BladeCenter Server Netezza DB Accelerator
SAS Expander
Module
SAS Expander
Module
S-Blades Overview
• There are 8 intel core on IBM Blade-Center Server
and 8 FPGA on Netezza DB accelerator.
o FPGA has similar dimensions a CPU has, consumes 5 times less power and
clock speed is about 5 times less
o More caching capability
o Low latency and high throughput
• Each of these S-Blades takes ownership of 6-8 disks.
• The queries are divided into subqueries that are
processed by S-Blades.
IBM® PureData™ for Analytics 11
PureData AMPP (Shared-
Nothing) Architecture
12
Advanced
Analytics
Loader
ETL
BI
Applications
FPGA
Memory
CPU
FPGA
Memory
CPU
FPGA
Memory
CPU
Hosts
SMP
Host
Disk
Enclosures
S-Blades™
Network
Fabric
Netezza Appliance
FPGA Secret Sauce
IBM® PureData™ for Analytics 13
FPGA Core CPU Core
Uncompress
Project Restrict,
Visibility
Complex ∑
Group by, …
select DISTRICT,
PRODUCTGRP,
sum(NRX)
from MTHLY_RX_TERR_DATA
where MONTH = '20091201'
and MARKET = 509123
and SPECIALTY = 'GASTRO'
Slice of table
MTHLY_RX_TERR_DATA
(compressed)
where MONTH = '20091201'
and MARKET = 509123
and SPECIALTY = 'GASTRO'
sum(NRX)
select DISTRICT,
PRODUCTGRP,
sum(NRX)
Using FPGA reduces a
tremendous among of
unnecessary data movement
PureData System
Configuration
14IBM® PureData™ for Analytics
PureData System
Configuration
IBM® PureData™ for Analytics 15
PureData System
Configuration
IBM® PureData™ for Analytics 16
Single Rack System Multi Rack System
Specs N3001-
002
N3001-
005
N3001-
010
N3001-
020
N3001-
040
N3001-
080
Racks 1 1 1 2 4 8
Active S-Blades 2 4 7 14 28 56
CPU Cores 40 80 140 280 560 1120
FPGA Cores 32 64 112 224 448 896
User Data in TB 32 98 192 384 768 1536
N3001 is the newest IBM PureData
What is Achievable
• Having agile analytics platform.
• No administration effort to install/manage
• Scalability in petabyte level
• Linear speedup scalability by adding additional
racks.
• Big Data Meets Deep Analytics => No need to
sample
IBM® PureData™ for Analytics 17
High Performance
Analytics Architecture
IBM® PureData™ for Analytics 18
PureData Analytics
Modules
IBM® PureData™ for Analytics 19
Netezza In-Database
Analytics Options
Classification Time Series Clustering
Associate
Rules
Simulation
and Monte
Carlo Analysis
Geospatial
IBM® PureData™ for Analytics 20
Demo
• Installation
• Client Tool Exploration
• Command Execution
IBM® PureData™ for Analytics 21
Summary
• A system for analytics
• Out-of-the-box solution
• It uses FPGA technology to boost query execution
• It uses nothing-shared approach.
• PureData uses open standards to communicate to
outside world
• It has many NZ in-database and 3rd party in-
database options to enrich our analytics
IBM® PureData™ for Analytics 22
References
• http://www-01.ibm.com/software/data/netezza/
• http://www.ibm.com/ibm/puresystems/ca/en/
IBM® PureData™ for Analytics 24
IBM PureData System for Analytics Powered by Netezza

More Related Content

What's hot

Databricks Platform.pptx
Databricks Platform.pptxDatabricks Platform.pptx
Databricks Platform.pptxAlex Ivy
 
MySQL Audit using Percona audit plugin and ELK
MySQL Audit using Percona audit plugin and ELKMySQL Audit using Percona audit plugin and ELK
MySQL Audit using Percona audit plugin and ELKYoungHeon (Roy) Kim
 
Apache Iceberg: An Architectural Look Under the Covers
Apache Iceberg: An Architectural Look Under the CoversApache Iceberg: An Architectural Look Under the Covers
Apache Iceberg: An Architectural Look Under the CoversScyllaDB
 
15 Troubleshooting tips and Tricks for Database 21c - KSAOUG
15 Troubleshooting tips and Tricks for Database 21c - KSAOUG15 Troubleshooting tips and Tricks for Database 21c - KSAOUG
15 Troubleshooting tips and Tricks for Database 21c - KSAOUGSandesh Rao
 
Less01 architecture
Less01 architectureLess01 architecture
Less01 architectureAmit Bhalla
 
Oracle sql high performance tuning
Oracle sql high performance tuningOracle sql high performance tuning
Oracle sql high performance tuningGuy Harrison
 
PostgreSQL Administration for System Administrators
PostgreSQL Administration for System AdministratorsPostgreSQL Administration for System Administrators
PostgreSQL Administration for System AdministratorsCommand Prompt., Inc
 
Apache Kafka With Spark Structured Streaming With Emma Liu, Nitin Saksena, Ra...
Apache Kafka With Spark Structured Streaming With Emma Liu, Nitin Saksena, Ra...Apache Kafka With Spark Structured Streaming With Emma Liu, Nitin Saksena, Ra...
Apache Kafka With Spark Structured Streaming With Emma Liu, Nitin Saksena, Ra...HostedbyConfluent
 
Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)James Serra
 
Architecture of exadata database machine – Part II
Architecture of exadata database machine – Part IIArchitecture of exadata database machine – Part II
Architecture of exadata database machine – Part IIParesh Nayak,OCP®,Prince2®
 
SeaweedFS introduction
SeaweedFS introductionSeaweedFS introduction
SeaweedFS introductionchrislusf
 
Building Reliable Data Lakes at Scale with Delta Lake
Building Reliable Data Lakes at Scale with Delta LakeBuilding Reliable Data Lakes at Scale with Delta Lake
Building Reliable Data Lakes at Scale with Delta LakeDatabricks
 
More mastering the art of indexing
More mastering the art of indexingMore mastering the art of indexing
More mastering the art of indexingYoshinori Matsunobu
 
The IBM Netezza Data Warehouse Appliance
The IBM Netezza Data Warehouse ApplianceThe IBM Netezza Data Warehouse Appliance
The IBM Netezza Data Warehouse ApplianceIBM Sverige
 
Oracle 12c Multitenant architecture
Oracle 12c Multitenant architectureOracle 12c Multitenant architecture
Oracle 12c Multitenant architecturenaderattia
 
Pandas UDF and Python Type Hint in Apache Spark 3.0
Pandas UDF and Python Type Hint in Apache Spark 3.0Pandas UDF and Python Type Hint in Apache Spark 3.0
Pandas UDF and Python Type Hint in Apache Spark 3.0Databricks
 
data-mesh-101.pptx
data-mesh-101.pptxdata-mesh-101.pptx
data-mesh-101.pptxTarekHamdi8
 
Spark SQL Deep Dive @ Melbourne Spark Meetup
Spark SQL Deep Dive @ Melbourne Spark MeetupSpark SQL Deep Dive @ Melbourne Spark Meetup
Spark SQL Deep Dive @ Melbourne Spark MeetupDatabricks
 

What's hot (20)

Databricks Platform.pptx
Databricks Platform.pptxDatabricks Platform.pptx
Databricks Platform.pptx
 
MySQL Audit using Percona audit plugin and ELK
MySQL Audit using Percona audit plugin and ELKMySQL Audit using Percona audit plugin and ELK
MySQL Audit using Percona audit plugin and ELK
 
Apache Iceberg: An Architectural Look Under the Covers
Apache Iceberg: An Architectural Look Under the CoversApache Iceberg: An Architectural Look Under the Covers
Apache Iceberg: An Architectural Look Under the Covers
 
NetApp & Storage fundamentals
NetApp & Storage fundamentalsNetApp & Storage fundamentals
NetApp & Storage fundamentals
 
15 Troubleshooting tips and Tricks for Database 21c - KSAOUG
15 Troubleshooting tips and Tricks for Database 21c - KSAOUG15 Troubleshooting tips and Tricks for Database 21c - KSAOUG
15 Troubleshooting tips and Tricks for Database 21c - KSAOUG
 
Less01 architecture
Less01 architectureLess01 architecture
Less01 architecture
 
Oracle sql high performance tuning
Oracle sql high performance tuningOracle sql high performance tuning
Oracle sql high performance tuning
 
PostgreSQL Administration for System Administrators
PostgreSQL Administration for System AdministratorsPostgreSQL Administration for System Administrators
PostgreSQL Administration for System Administrators
 
Apache Kafka With Spark Structured Streaming With Emma Liu, Nitin Saksena, Ra...
Apache Kafka With Spark Structured Streaming With Emma Liu, Nitin Saksena, Ra...Apache Kafka With Spark Structured Streaming With Emma Liu, Nitin Saksena, Ra...
Apache Kafka With Spark Structured Streaming With Emma Liu, Nitin Saksena, Ra...
 
Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)
 
Architecture of exadata database machine – Part II
Architecture of exadata database machine – Part IIArchitecture of exadata database machine – Part II
Architecture of exadata database machine – Part II
 
SeaweedFS introduction
SeaweedFS introductionSeaweedFS introduction
SeaweedFS introduction
 
Building Reliable Data Lakes at Scale with Delta Lake
Building Reliable Data Lakes at Scale with Delta LakeBuilding Reliable Data Lakes at Scale with Delta Lake
Building Reliable Data Lakes at Scale with Delta Lake
 
Dell & HP Blade Systems Overview
Dell & HP Blade Systems Overview Dell & HP Blade Systems Overview
Dell & HP Blade Systems Overview
 
More mastering the art of indexing
More mastering the art of indexingMore mastering the art of indexing
More mastering the art of indexing
 
The IBM Netezza Data Warehouse Appliance
The IBM Netezza Data Warehouse ApplianceThe IBM Netezza Data Warehouse Appliance
The IBM Netezza Data Warehouse Appliance
 
Oracle 12c Multitenant architecture
Oracle 12c Multitenant architectureOracle 12c Multitenant architecture
Oracle 12c Multitenant architecture
 
Pandas UDF and Python Type Hint in Apache Spark 3.0
Pandas UDF and Python Type Hint in Apache Spark 3.0Pandas UDF and Python Type Hint in Apache Spark 3.0
Pandas UDF and Python Type Hint in Apache Spark 3.0
 
data-mesh-101.pptx
data-mesh-101.pptxdata-mesh-101.pptx
data-mesh-101.pptx
 
Spark SQL Deep Dive @ Melbourne Spark Meetup
Spark SQL Deep Dive @ Melbourne Spark MeetupSpark SQL Deep Dive @ Melbourne Spark Meetup
Spark SQL Deep Dive @ Melbourne Spark Meetup
 

Viewers also liked

The IBM Netezza datawarehouse appliance
The IBM Netezza datawarehouse applianceThe IBM Netezza datawarehouse appliance
The IBM Netezza datawarehouse applianceIBM Danmark
 
An Introduction to Netezza
An Introduction to NetezzaAn Introduction to Netezza
An Introduction to NetezzaVijaya Chandrika
 
Ibm pure data system for analytics n3001
Ibm pure data system for analytics n3001Ibm pure data system for analytics n3001
Ibm pure data system for analytics n3001Abhishek Satyam
 
Netezza Deep Dives
Netezza Deep DivesNetezza Deep Dives
Netezza Deep DivesRush Shah
 
Netezza fundamentals for developers
Netezza fundamentals for developersNetezza fundamentals for developers
Netezza fundamentals for developersBiju Nair
 
Managing software projects with Team Foundation Server 2013 in Agile Scrum
Managing software projects with Team Foundation Server 2013 in Agile ScrumManaging software projects with Team Foundation Server 2013 in Agile Scrum
Managing software projects with Team Foundation Server 2013 in Agile ScrumHossein Sarshar
 
Using Netezza Query Plan to Improve Performace
Using Netezza Query Plan to Improve PerformaceUsing Netezza Query Plan to Improve Performace
Using Netezza Query Plan to Improve PerformaceBiju Nair
 
Centralizing users’ authentication at Active Directory level 
Centralizing users’ authentication at Active Directory level Centralizing users’ authentication at Active Directory level 
Centralizing users’ authentication at Active Directory level Hossein Sarshar
 
JPSPSLT-「WindowsAzure 最新事情」2014年2月版
JPSPSLT-「WindowsAzure 最新事情」2014年2月版JPSPSLT-「WindowsAzure 最新事情」2014年2月版
JPSPSLT-「WindowsAzure 最新事情」2014年2月版幸智 Yukinori 黒田 Kuroda
 
NENUG Apr14 Talk - data modeling for netezza
NENUG Apr14 Talk - data modeling for netezzaNENUG Apr14 Talk - data modeling for netezza
NENUG Apr14 Talk - data modeling for netezzaBiju Nair
 
Netezza workload management
Netezza workload managementNetezza workload management
Netezza workload managementBiju Nair
 
Building Extensions in VSTS and TFS
Building Extensions in VSTS and TFSBuilding Extensions in VSTS and TFS
Building Extensions in VSTS and TFSJeff Bramwell
 
Row or Columnar Database
Row or Columnar DatabaseRow or Columnar Database
Row or Columnar DatabaseBiju Nair
 
Column-Stores vs. Row-Stores: How Different are they Really?
Column-Stores vs. Row-Stores: How Different are they Really?Column-Stores vs. Row-Stores: How Different are they Really?
Column-Stores vs. Row-Stores: How Different are they Really?Daniel Abadi
 
High performance computing - building blocks, production & perspective
High performance computing - building blocks, production & perspectiveHigh performance computing - building blocks, production & perspective
High performance computing - building blocks, production & perspectiveJason Shih
 
Introduction to Team Foundation Server (TFS) Online
Introduction to Team Foundation Server (TFS) OnlineIntroduction to Team Foundation Server (TFS) Online
Introduction to Team Foundation Server (TFS) OnlineDenis Voituron
 

Viewers also liked (20)

The IBM Netezza datawarehouse appliance
The IBM Netezza datawarehouse applianceThe IBM Netezza datawarehouse appliance
The IBM Netezza datawarehouse appliance
 
An Introduction to Netezza
An Introduction to NetezzaAn Introduction to Netezza
An Introduction to Netezza
 
Ibm pure data system for analytics n3001
Ibm pure data system for analytics n3001Ibm pure data system for analytics n3001
Ibm pure data system for analytics n3001
 
Netezza Deep Dives
Netezza Deep DivesNetezza Deep Dives
Netezza Deep Dives
 
Netezza fundamentals for developers
Netezza fundamentals for developersNetezza fundamentals for developers
Netezza fundamentals for developers
 
Managing software projects with Team Foundation Server 2013 in Agile Scrum
Managing software projects with Team Foundation Server 2013 in Agile ScrumManaging software projects with Team Foundation Server 2013 in Agile Scrum
Managing software projects with Team Foundation Server 2013 in Agile Scrum
 
Using Netezza Query Plan to Improve Performace
Using Netezza Query Plan to Improve PerformaceUsing Netezza Query Plan to Improve Performace
Using Netezza Query Plan to Improve Performace
 
IIS Smooth Streaming
IIS Smooth StreamingIIS Smooth Streaming
IIS Smooth Streaming
 
Centralizing users’ authentication at Active Directory level 
Centralizing users’ authentication at Active Directory level Centralizing users’ authentication at Active Directory level 
Centralizing users’ authentication at Active Directory level 
 
IBM Netezza
IBM NetezzaIBM Netezza
IBM Netezza
 
JPSPSLT-「WindowsAzure 最新事情」2014年2月版
JPSPSLT-「WindowsAzure 最新事情」2014年2月版JPSPSLT-「WindowsAzure 最新事情」2014年2月版
JPSPSLT-「WindowsAzure 最新事情」2014年2月版
 
NENUG Apr14 Talk - data modeling for netezza
NENUG Apr14 Talk - data modeling for netezzaNENUG Apr14 Talk - data modeling for netezza
NENUG Apr14 Talk - data modeling for netezza
 
「Windows Azureで HPC 」 for JAZUG 2013年9月
「Windows Azureで HPC 」 for JAZUG 2013年9月「Windows Azureで HPC 」 for JAZUG 2013年9月
「Windows Azureで HPC 」 for JAZUG 2013年9月
 
Netezza workload management
Netezza workload managementNetezza workload management
Netezza workload management
 
Building Extensions in VSTS and TFS
Building Extensions in VSTS and TFSBuilding Extensions in VSTS and TFS
Building Extensions in VSTS and TFS
 
Row or Columnar Database
Row or Columnar DatabaseRow or Columnar Database
Row or Columnar Database
 
Column-Stores vs. Row-Stores: How Different are they Really?
Column-Stores vs. Row-Stores: How Different are they Really?Column-Stores vs. Row-Stores: How Different are they Really?
Column-Stores vs. Row-Stores: How Different are they Really?
 
High performance computing - building blocks, production & perspective
High performance computing - building blocks, production & perspectiveHigh performance computing - building blocks, production & perspective
High performance computing - building blocks, production & perspective
 
Medical Technology Innovation Techniques & Funding
Medical Technology Innovation Techniques & FundingMedical Technology Innovation Techniques & Funding
Medical Technology Innovation Techniques & Funding
 
Introduction to Team Foundation Server (TFS) Online
Introduction to Team Foundation Server (TFS) OnlineIntroduction to Team Foundation Server (TFS) Online
Introduction to Team Foundation Server (TFS) Online
 

Similar to IBM PureData System for Analytics Powered by Netezza

Netezza Online Training by www.etraining.guru in India
Netezza Online Training by www.etraining.guru in IndiaNetezza Online Training by www.etraining.guru in India
Netezza Online Training by www.etraining.guru in IndiaRavikumar Nandigam
 
Netezza TwinFin12 Architecture Administration
Netezza TwinFin12 Architecture AdministrationNetezza TwinFin12 Architecture Administration
Netezza TwinFin12 Architecture AdministrationBraja Krishna Das
 
Fórum E-Commerce Brasil | Tecnologias NVIDIA aplicadas ao e-commerce. Muito a...
Fórum E-Commerce Brasil | Tecnologias NVIDIA aplicadas ao e-commerce. Muito a...Fórum E-Commerce Brasil | Tecnologias NVIDIA aplicadas ao e-commerce. Muito a...
Fórum E-Commerce Brasil | Tecnologias NVIDIA aplicadas ao e-commerce. Muito a...E-Commerce Brasil
 
Backup netezza-tsm-v1403c-140330170451-phpapp01
Backup netezza-tsm-v1403c-140330170451-phpapp01Backup netezza-tsm-v1403c-140330170451-phpapp01
Backup netezza-tsm-v1403c-140330170451-phpapp01Arunkumar Shanmugam
 
M|18 Intel and MariaDB: Strategic Collaboration to Enhance MariaDB Functional...
M|18 Intel and MariaDB: Strategic Collaboration to Enhance MariaDB Functional...M|18 Intel and MariaDB: Strategic Collaboration to Enhance MariaDB Functional...
M|18 Intel and MariaDB: Strategic Collaboration to Enhance MariaDB Functional...MariaDB plc
 
Pedal to the Metal: Accelerating Spark with Silicon Innovation
Pedal to the Metal: Accelerating Spark with Silicon InnovationPedal to the Metal: Accelerating Spark with Silicon Innovation
Pedal to the Metal: Accelerating Spark with Silicon InnovationJen Aman
 
Teradata Technology Leadership and Innovation
Teradata Technology Leadership  and InnovationTeradata Technology Leadership  and Innovation
Teradata Technology Leadership and InnovationTeradata
 
Webinář: Dell VRTX - datacentrum vše-v-jednom za skvělou cenu / 7.10.2013
Webinář: Dell VRTX - datacentrum vše-v-jednom za skvělou cenu / 7.10.2013Webinář: Dell VRTX - datacentrum vše-v-jednom za skvělou cenu / 7.10.2013
Webinář: Dell VRTX - datacentrum vše-v-jednom za skvělou cenu / 7.10.2013Jaroslav Prodelal
 
Yashi dealer meeting settembre 2016 tecnologie xeon intel italia
Yashi dealer meeting settembre 2016 tecnologie xeon intel italiaYashi dealer meeting settembre 2016 tecnologie xeon intel italia
Yashi dealer meeting settembre 2016 tecnologie xeon intel italiaYashi Italia
 
Red Hat Storage Day Atlanta - Designing Ceph Clusters Using Intel-Based Hardw...
Red Hat Storage Day Atlanta - Designing Ceph Clusters Using Intel-Based Hardw...Red Hat Storage Day Atlanta - Designing Ceph Clusters Using Intel-Based Hardw...
Red Hat Storage Day Atlanta - Designing Ceph Clusters Using Intel-Based Hardw...Red_Hat_Storage
 
PCI Express* based Storage: Data Center NVM Express* Platform Topologies
PCI Express* based Storage: Data Center NVM Express* Platform TopologiesPCI Express* based Storage: Data Center NVM Express* Platform Topologies
PCI Express* based Storage: Data Center NVM Express* Platform TopologiesOdinot Stanislas
 
Infraestructura oracle
Infraestructura oracleInfraestructura oracle
Infraestructura oracleFran Navarro
 
Backup Options for IBM PureData for Analytics powered by Netezza
Backup Options for IBM PureData for Analytics powered by NetezzaBackup Options for IBM PureData for Analytics powered by Netezza
Backup Options for IBM PureData for Analytics powered by NetezzaTony Pearson
 
IBM Special Announcement session Intel #IDF2013 September 10, 2013
IBM Special Announcement session Intel #IDF2013 September 10, 2013IBM Special Announcement session Intel #IDF2013 September 10, 2013
IBM Special Announcement session Intel #IDF2013 September 10, 2013Cliff Kinard
 
Intel Distribution for Python - Scaling for HPC and Big Data
Intel Distribution for Python - Scaling for HPC and Big DataIntel Distribution for Python - Scaling for HPC and Big Data
Intel Distribution for Python - Scaling for HPC and Big DataDESMOND YUEN
 
20190909_PGconf.ASIA_KaiGai
20190909_PGconf.ASIA_KaiGai20190909_PGconf.ASIA_KaiGai
20190909_PGconf.ASIA_KaiGaiKohei KaiGai
 
PGConf.ASIA 2019 Bali - Full-throttle Running on Terabytes Log-data - Kohei K...
PGConf.ASIA 2019 Bali - Full-throttle Running on Terabytes Log-data - Kohei K...PGConf.ASIA 2019 Bali - Full-throttle Running on Terabytes Log-data - Kohei K...
PGConf.ASIA 2019 Bali - Full-throttle Running on Terabytes Log-data - Kohei K...Equnix Business Solutions
 
Python* Scalability in Production Environments
Python* Scalability in Production EnvironmentsPython* Scalability in Production Environments
Python* Scalability in Production EnvironmentsIntel® Software
 
Powering Real-Time Big Data Analytics with a Next-Gen GPU Database
Powering Real-Time Big Data Analytics with a Next-Gen GPU DatabasePowering Real-Time Big Data Analytics with a Next-Gen GPU Database
Powering Real-Time Big Data Analytics with a Next-Gen GPU DatabaseKinetica
 

Similar to IBM PureData System for Analytics Powered by Netezza (20)

Netezza Online Training by www.etraining.guru in India
Netezza Online Training by www.etraining.guru in IndiaNetezza Online Training by www.etraining.guru in India
Netezza Online Training by www.etraining.guru in India
 
Netezza TwinFin12 Architecture Administration
Netezza TwinFin12 Architecture AdministrationNetezza TwinFin12 Architecture Administration
Netezza TwinFin12 Architecture Administration
 
Fórum E-Commerce Brasil | Tecnologias NVIDIA aplicadas ao e-commerce. Muito a...
Fórum E-Commerce Brasil | Tecnologias NVIDIA aplicadas ao e-commerce. Muito a...Fórum E-Commerce Brasil | Tecnologias NVIDIA aplicadas ao e-commerce. Muito a...
Fórum E-Commerce Brasil | Tecnologias NVIDIA aplicadas ao e-commerce. Muito a...
 
Backup netezza-tsm-v1403c-140330170451-phpapp01
Backup netezza-tsm-v1403c-140330170451-phpapp01Backup netezza-tsm-v1403c-140330170451-phpapp01
Backup netezza-tsm-v1403c-140330170451-phpapp01
 
M|18 Intel and MariaDB: Strategic Collaboration to Enhance MariaDB Functional...
M|18 Intel and MariaDB: Strategic Collaboration to Enhance MariaDB Functional...M|18 Intel and MariaDB: Strategic Collaboration to Enhance MariaDB Functional...
M|18 Intel and MariaDB: Strategic Collaboration to Enhance MariaDB Functional...
 
Pedal to the Metal: Accelerating Spark with Silicon Innovation
Pedal to the Metal: Accelerating Spark with Silicon InnovationPedal to the Metal: Accelerating Spark with Silicon Innovation
Pedal to the Metal: Accelerating Spark with Silicon Innovation
 
Teradata Technology Leadership and Innovation
Teradata Technology Leadership  and InnovationTeradata Technology Leadership  and Innovation
Teradata Technology Leadership and Innovation
 
Webinář: Dell VRTX - datacentrum vše-v-jednom za skvělou cenu / 7.10.2013
Webinář: Dell VRTX - datacentrum vše-v-jednom za skvělou cenu / 7.10.2013Webinář: Dell VRTX - datacentrum vše-v-jednom za skvělou cenu / 7.10.2013
Webinář: Dell VRTX - datacentrum vše-v-jednom za skvělou cenu / 7.10.2013
 
Yashi dealer meeting settembre 2016 tecnologie xeon intel italia
Yashi dealer meeting settembre 2016 tecnologie xeon intel italiaYashi dealer meeting settembre 2016 tecnologie xeon intel italia
Yashi dealer meeting settembre 2016 tecnologie xeon intel italia
 
Red Hat Storage Day Atlanta - Designing Ceph Clusters Using Intel-Based Hardw...
Red Hat Storage Day Atlanta - Designing Ceph Clusters Using Intel-Based Hardw...Red Hat Storage Day Atlanta - Designing Ceph Clusters Using Intel-Based Hardw...
Red Hat Storage Day Atlanta - Designing Ceph Clusters Using Intel-Based Hardw...
 
PCI Express* based Storage: Data Center NVM Express* Platform Topologies
PCI Express* based Storage: Data Center NVM Express* Platform TopologiesPCI Express* based Storage: Data Center NVM Express* Platform Topologies
PCI Express* based Storage: Data Center NVM Express* Platform Topologies
 
Infraestructura oracle
Infraestructura oracleInfraestructura oracle
Infraestructura oracle
 
Backup Options for IBM PureData for Analytics powered by Netezza
Backup Options for IBM PureData for Analytics powered by NetezzaBackup Options for IBM PureData for Analytics powered by Netezza
Backup Options for IBM PureData for Analytics powered by Netezza
 
IBM Special Announcement session Intel #IDF2013 September 10, 2013
IBM Special Announcement session Intel #IDF2013 September 10, 2013IBM Special Announcement session Intel #IDF2013 September 10, 2013
IBM Special Announcement session Intel #IDF2013 September 10, 2013
 
Intel Distribution for Python - Scaling for HPC and Big Data
Intel Distribution for Python - Scaling for HPC and Big DataIntel Distribution for Python - Scaling for HPC and Big Data
Intel Distribution for Python - Scaling for HPC and Big Data
 
20190909_PGconf.ASIA_KaiGai
20190909_PGconf.ASIA_KaiGai20190909_PGconf.ASIA_KaiGai
20190909_PGconf.ASIA_KaiGai
 
PGConf.ASIA 2019 Bali - Full-throttle Running on Terabytes Log-data - Kohei K...
PGConf.ASIA 2019 Bali - Full-throttle Running on Terabytes Log-data - Kohei K...PGConf.ASIA 2019 Bali - Full-throttle Running on Terabytes Log-data - Kohei K...
PGConf.ASIA 2019 Bali - Full-throttle Running on Terabytes Log-data - Kohei K...
 
Python* Scalability in Production Environments
Python* Scalability in Production EnvironmentsPython* Scalability in Production Environments
Python* Scalability in Production Environments
 
Intel python 2017
Intel python 2017Intel python 2017
Intel python 2017
 
Powering Real-Time Big Data Analytics with a Next-Gen GPU Database
Powering Real-Time Big Data Analytics with a Next-Gen GPU DatabasePowering Real-Time Big Data Analytics with a Next-Gen GPU Database
Powering Real-Time Big Data Analytics with a Next-Gen GPU Database
 

Recently uploaded

dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.pptdokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.pptSonatrach
 
Kantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdf
Kantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdfKantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdf
Kantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdfSocial Samosa
 
Generative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and MilvusGenerative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and MilvusTimothy Spann
 
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service AmravatiVIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service AmravatiSuhani Kapoor
 
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptxEMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptxthyngster
 
定制英国白金汉大学毕业证(UCB毕业证书) 成绩单原版一比一
定制英国白金汉大学毕业证(UCB毕业证书)																			成绩单原版一比一定制英国白金汉大学毕业证(UCB毕业证书)																			成绩单原版一比一
定制英国白金汉大学毕业证(UCB毕业证书) 成绩单原版一比一ffjhghh
 
Unveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data AnalystUnveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data AnalystSamantha Rae Coolbeth
 
Brighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingBrighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingNeil Barnes
 
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...Suhani Kapoor
 
Carero dropshipping via API with DroFx.pptx
Carero dropshipping via API with DroFx.pptxCarero dropshipping via API with DroFx.pptx
Carero dropshipping via API with DroFx.pptxolyaivanovalion
 
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfMarket Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfRachmat Ramadhan H
 
100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptxAnupama Kate
 
Customer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxCustomer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxEmmanuel Dauda
 
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Serviceranjana rawat
 
Introduction-to-Machine-Learning (1).pptx
Introduction-to-Machine-Learning (1).pptxIntroduction-to-Machine-Learning (1).pptx
Introduction-to-Machine-Learning (1).pptxfirstjob4
 
Ukraine War presentation: KNOW THE BASICS
Ukraine War presentation: KNOW THE BASICSUkraine War presentation: KNOW THE BASICS
Ukraine War presentation: KNOW THE BASICSAishani27
 
Week-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionWeek-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionfulawalesam
 
04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationshipsccctableauusergroup
 
Call Girls In Mahipalpur O9654467111 Escorts Service
Call Girls In Mahipalpur O9654467111  Escorts ServiceCall Girls In Mahipalpur O9654467111  Escorts Service
Call Girls In Mahipalpur O9654467111 Escorts ServiceSapana Sha
 
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /WhatsappsBeautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsappssapnasaifi408
 

Recently uploaded (20)

dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.pptdokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
 
Kantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdf
Kantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdfKantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdf
Kantar AI Summit- Under Embargo till Wednesday, 24th April 2024, 4 PM, IST.pdf
 
Generative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and MilvusGenerative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and Milvus
 
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service AmravatiVIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
 
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptxEMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
 
定制英国白金汉大学毕业证(UCB毕业证书) 成绩单原版一比一
定制英国白金汉大学毕业证(UCB毕业证书)																			成绩单原版一比一定制英国白金汉大学毕业证(UCB毕业证书)																			成绩单原版一比一
定制英国白金汉大学毕业证(UCB毕业证书) 成绩单原版一比一
 
Unveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data AnalystUnveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data Analyst
 
Brighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingBrighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data Storytelling
 
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
 
Carero dropshipping via API with DroFx.pptx
Carero dropshipping via API with DroFx.pptxCarero dropshipping via API with DroFx.pptx
Carero dropshipping via API with DroFx.pptx
 
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfMarket Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
 
100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx
 
Customer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxCustomer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptx
 
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
 
Introduction-to-Machine-Learning (1).pptx
Introduction-to-Machine-Learning (1).pptxIntroduction-to-Machine-Learning (1).pptx
Introduction-to-Machine-Learning (1).pptx
 
Ukraine War presentation: KNOW THE BASICS
Ukraine War presentation: KNOW THE BASICSUkraine War presentation: KNOW THE BASICS
Ukraine War presentation: KNOW THE BASICS
 
Week-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionWeek-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interaction
 
04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships
 
Call Girls In Mahipalpur O9654467111 Escorts Service
Call Girls In Mahipalpur O9654467111  Escorts ServiceCall Girls In Mahipalpur O9654467111  Escorts Service
Call Girls In Mahipalpur O9654467111 Escorts Service
 
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /WhatsappsBeautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
 

IBM PureData System for Analytics Powered by Netezza

  • 1. IBM PureData System for Analytics Powered by Netezza Hossein Sarshar
  • 2. Agenda • What is PureData and Netezza o History o Characteristics o Product chain • PureData Hardware Architecture o Introduction o Hardware architecture o Paralleled structures • Analytics with PureData o Introduction o In-database analytics tools • Demo IBM® PureData™ for Analytics 2
  • 3. What is PureData and Netezza PureSystems PureFlex PureApplication IBM® PureData™ for Analytics 3
  • 4. In 2010, IBM bought a new analytics platform called Netezza. It was founded in 2000 at Marlborough, CA. IBM later rebranded it to PureData. What is PureData and Netezza PureSystems PureFlex PureApplication PureData IBM® PureData™ for Analytics 4
  • 5. PureSystems Product Family PureFlex: o Combines and optimizes compute, storage, networking and virtualization capabilities under a single, unified management console into an infrastructure system. PureApplication: o Is a platform system designed and tuned specifically for transactional web and database applications. PureData: o Based on Netezza technology, PureData is all data experts need in a single well tuned appliance. IBM® PureData™ for Analytics 5 PureData Operational Analytics Transactions Analytics
  • 6. PureSystems Characteristics • Built-in Experts o No indexing/tuning/partitioning o Fully parallel, optimized in-Database Analytics. o No storage administration. o No software installation. • Integration by Design: o Server, Storage, Database in one easy to use package. o Automatic parallelization and resource optimization to scale economically o Enterprise-class security and platform management • Simplified Experience: o Up and running in hours. o Minimal ongoing administration. o Standard interfaces to best of breed Analytics, BI, and data integration tools. o Built-in analytics capabilities allow users to derive insight from data quickly. o Easy connectivity to other Big Data Platform components IBM® PureData™ for Analytics 6 Each of these come as an appliance equal to simplified yet strong private clouds with minimal administration
  • 7. PureData Introduction • It is a datawarehousing and data analytics appliance that is fast enough to process terabytes of data in seconds. It is a fully parallel machine. • Netezza’s main technology is using FPGA (Field Programmable Gateway Array) to filter unnecessary files in parallel manner. • PureData uses Netezza technology to perform deep analytics on huge amount of data in a reasonable time. • It is purpose-built for high performance analytics. • It supports all DB structures (3NF, Star, De-Normalized table) IBM® PureData™ for Analytics 7
  • 8. PureData Architecture IBM® PureData™ for Analytics 8 Disk storage RAID 1 disks High speed data streams SMP Host Redhat linux servers Optimizer Compiler A gateway to the system Snippet-Blades Query accelerator using FPGAs
  • 10. S-Blades IBM® PureData™ for Analytics 10 Intel Quad-Core Dual-Core FPGADRAM IBM BladeCenter Server Netezza DB Accelerator SAS Expander Module SAS Expander Module
  • 11. S-Blades Overview • There are 8 intel core on IBM Blade-Center Server and 8 FPGA on Netezza DB accelerator. o FPGA has similar dimensions a CPU has, consumes 5 times less power and clock speed is about 5 times less o More caching capability o Low latency and high throughput • Each of these S-Blades takes ownership of 6-8 disks. • The queries are divided into subqueries that are processed by S-Blades. IBM® PureData™ for Analytics 11
  • 12. PureData AMPP (Shared- Nothing) Architecture 12 Advanced Analytics Loader ETL BI Applications FPGA Memory CPU FPGA Memory CPU FPGA Memory CPU Hosts SMP Host Disk Enclosures S-Blades™ Network Fabric Netezza Appliance
  • 13. FPGA Secret Sauce IBM® PureData™ for Analytics 13 FPGA Core CPU Core Uncompress Project Restrict, Visibility Complex ∑ Group by, … select DISTRICT, PRODUCTGRP, sum(NRX) from MTHLY_RX_TERR_DATA where MONTH = '20091201' and MARKET = 509123 and SPECIALTY = 'GASTRO' Slice of table MTHLY_RX_TERR_DATA (compressed) where MONTH = '20091201' and MARKET = 509123 and SPECIALTY = 'GASTRO' sum(NRX) select DISTRICT, PRODUCTGRP, sum(NRX) Using FPGA reduces a tremendous among of unnecessary data movement
  • 16. PureData System Configuration IBM® PureData™ for Analytics 16 Single Rack System Multi Rack System Specs N3001- 002 N3001- 005 N3001- 010 N3001- 020 N3001- 040 N3001- 080 Racks 1 1 1 2 4 8 Active S-Blades 2 4 7 14 28 56 CPU Cores 40 80 140 280 560 1120 FPGA Cores 32 64 112 224 448 896 User Data in TB 32 98 192 384 768 1536 N3001 is the newest IBM PureData
  • 17. What is Achievable • Having agile analytics platform. • No administration effort to install/manage • Scalability in petabyte level • Linear speedup scalability by adding additional racks. • Big Data Meets Deep Analytics => No need to sample IBM® PureData™ for Analytics 17
  • 18. High Performance Analytics Architecture IBM® PureData™ for Analytics 18
  • 20. Netezza In-Database Analytics Options Classification Time Series Clustering Associate Rules Simulation and Monte Carlo Analysis Geospatial IBM® PureData™ for Analytics 20
  • 21. Demo • Installation • Client Tool Exploration • Command Execution IBM® PureData™ for Analytics 21
  • 22. Summary • A system for analytics • Out-of-the-box solution • It uses FPGA technology to boost query execution • It uses nothing-shared approach. • PureData uses open standards to communicate to outside world • It has many NZ in-database and 3rd party in- database options to enrich our analytics IBM® PureData™ for Analytics 22

Editor's Notes

  1. PureFlex: Platform as a Service: PaaS PureApplication and PureData: SaaS
  2. PureFlex: Platform as a Service: PaaS PureApplication and PureData: SaaS
  3. SMP: symmetric multiprocessor system
  4. Linux server installed on BladeCenter Server
  5. Based on divide and conquer method. PureData handles the parallelization with no user knowledge. Netezza’s proprietary AMPP (Asymmetric Massively Parallel Processing) architecture is a two-tiered system designed to quickly handle very large queries from multiple users. The first tier is a high-performance Linux SMP host that compiles data query tasks received from business intelligence applications, and generates query execution plans. It then divides a query into a sequence of sub-tasks, or snippets that can be executed in parallel, and distributes the snippets to the second tier for execution. The second tier consists of one to hundreds of snippet processing blades, or S-Blades, where all the primary processing work of the appliance is executed. The S-Blades are intelligent processing nodes that make up the massively parallel processing (MPP) engine of the appliance. Each S-Blade is an independent server that contains multi-core Intel-based CPUs and Netezza’s proprietary multi-engine, high-throughput FPGAs. The S-Blade is composed of a standard blade-server combined with a special Netezza Database Accelerator card that snaps alongside the blade. Each S-Blade is, in turn, connected to multiple disk drives processing multiple data streams in parallel in TwinFin or Skimmer.
  6. FPGA are to filter out 90-95 percent of irrelevant data passes the rest of data to CPU cores. It is a pipeline processing approach that boosts the performance.