SlideShare a Scribd company logo
Deploying massive scale for
graphs for realtime insights
B Brech
CTO POWER Solutions
blbrech@us.ibm.com
2
2
© 2016 International Business Machines Corporation
Drive Efficiency
- Time Reduction
- Cost Reduction
- Consistency
Better Insights
- Broader Scope
- Learning Models
- Speed & Accuracy
Better Business
- Innovation
- Customer Care
- Reactivity
Business relies more on Data than ever before
3
3
© 2016 International Business Machines Corporation
1990’
s
2020’
s
Video
Text
Exa
Pet
a
Ter
a
Gig
a
DataVolume
2000’
s
2010’
s
Structured data
Audio
Image
Me
d
High
Lo
w
ComputationalNeeds
SophisticationofAnalysis
Expressiveness
Digital Marketing
10+% of video
views
Wide Area Imagery
100’s TB per day72 video
hrs/minute
Media
Source: IBM
Market Insights
based on
composite
sources
Safety / Security
Healthcare
Customer
1B camera phones
1B medical images/yr
10s millions cameras
Enterprise Video
Used by 1/3 of
enterprises
Data Volume
Data Velocity
Data Authenticity
Data Complexity
Data Variability
Data Variety
While Data is Exploding
4
4
© 2016 International Business Machines Corporation
Time is Money
and
Insights are critical
Ingest Analyze Act Measure Learn
Optimize
Decision time is shrinking
5
5
© 2016 International Business Machines Corporation
Recommendation engines
- used in variety of industries
Network intrusion prevention
Fraud prevention
Financial Services
BioMedical - Genomics
Combination of Scale & Speed is critical
in many use cases
Extreme Scale Example:
- 30TB and growing DB
- 25 BG/s ingress
- over 400K updates / Sec
- 60B+ relationships
- Query Response < 200ms
6
6
© 2016 International Business Machines Corporation
DB2 > DB2Blu
SAP > SAP Hana
Oracle > 12C
CICS
EnterpriseDB
Etc..
NoSQLs :
MemCached, REDIS,
NEO4J, CASSANDRA,
MARIA, MONGO,
ORIENT, COUCH,
Etc…
Traditional DBs
going in-memory
Designed as
in-memory repositories
AnalyzeDecision
Innovation
Act
Ingest
But in-memory has some constraints and limits.
Data repositories are changing also
7
7
© 2016 International Business Machines Corporation
Built with open innovation to
put your data to work across the enterprise
Designed for
Big Data
Open
Innovation
Platform
Superior Cloud
Economics
IBM POWER8 : Designed for Big Data
8
8
© 2016 International Business Machines Corporation
UNSTRUCTURED IN-MEMORY STRUCTURED
Flash for extreme
performance
Massive IO
bandwidth
Continuous
data load
Parallel
processing
Large-scale
memory processing
Optimized for a broad range of big data & analytics workloads:
Processors
flexible, fast execution of
analytics algorithms
Memory
large, fast workspace to
maximize business insight
Cache
ensure continuous data load
for fast responses
4X
threads per core vs. x86
(up to 1536 threads per system)
4X
memory bandwidth vs. x861
(up to 16TB of memory)
4X
more cache vs. x862
(up to 800MB cache per socket)
IBM POWER8 brings performance and scale
9
9
© 2016 International Business Machines Corporation
POWER Ecosystem
Designed
for Big Data
Workload
Acceleration
Defined
by Software
Retail Healthcare
Banking Government Telecom
Open and
Collaborative
Technology &
Price/Perf
Leadership
Watson
LinuxHadoop
POWER8
Hypervisor
Virt I/O Server
Shared I/O
Single SMP Hardware System
Built in
Virtualization
Leading
Performance
Processor
Innovation
Streams
Foundations
Suzhou
PowerCore
Technology
Virtualization
Offerings
Key solutions:
+Open Source Tools
+Middleware
+Industry Solutions
+ Social / Mobile / Analytics / Cloud
Hadoop
Spark
10
10
© 2016 International Business Machines Corporation
Fundamental forces are accelerating
industry change
IT innovation can no longer
come from just the processor
Solution Innovation and
Acceleration is a key to
the future
Price/Performance
Full system stack innovation
required
Moore’s Law
Technology and
Processors
2000 2020
Firmware / OS
Accelerators
Software
Storage
Network
Full Stack
Acceleratio
n (Lower
is
better)
The OpenPOWER Foundation
is an open ecosystem,
using the
POWER Architecture to serve
the evolving needs of
customers.
11
11
© 2016 International Business Machines Corporation
NVLINK
GPUFPGA
Flash NIC
MRAM PCM
Solution Acceleration is a key to the future
12
12
© 2016 International Business Machines Corporation
NVLINK
GPU
Flash
Graphics – CAE - EDA
Weather
Defense
Financial Services
Bio-Sciences
General: Compression
Encryption
DataBases: Flash
Finance: Algorithms, Facial
Genomics : Algorithms
Decision
Support
Data
Analytics
Financial
Simulations
Genomic
Analysis
Network
Data Forensics
Facial
Recognition
Solution Acceleration is a key to the future
13
13
© 2016 International Business Machines Corporation
IBM Data Engine for NoSQL is an integrated platform for large and fast growing NoSQL data
stores. It builds on the CAPI capability of POWER8 systems and provides super-fast access to
large flash storage capacity. It delivers high speed access to both RAM and flash storage which
can result in significantly lower cost, and higher workload density for NoSQL deployments than a
standard RAM-based system. The solution offers superior performance and price-performance to
scale out x86 server deployments that are either limited in available memory per server or have
flash memory with limited data access latency.
Up to 56TB of extended memory with one POWER8 server + CAPI attach FLASH
Power S822L /
S812L
Flash System 900
Power S822L / S812L / S822 LC
NEW
External Flash Configuration Integrated Flash Configuration
Up to 8TB of super-fast storage tier on one POWER8 server
IBM Data Engine for NoSQL
Cost Savings for In-Memory NoSQL Data Stores
14
14
© 2016 International Business Machines Corporation
Identical hardware with 3 different
paths to data
FlashSystem
Conventional
I/O (FC) CAPI - E
IBM POWER S822L
CAPI - I
IBM's CAPI NVMe Flash Accelerator is almost 5X more
efficient in performing IO vs traditional storage.
21%
35%
56%
100%
0%
25%
50%
75%
100%
CAPI NVMe Traditional NVMe Traditional Storage -
Direct IO
Traditional Storage -
Filesystem
RelativeCAPI vs. NVMe Instruction Counts per IO
Kernel Instructions User Instructions
ON
CAPI Unlocks the Next Level
of Performance for Flash
15
15
© 2016 International Business Machines Corporation
ON
Efficient IO Enables True Utilization
of Storage Bandwidth
 Under heavy load, IOPs per thread
becomes a critical metric for sustaining
throughput in a storage system. As
throughput increases, more CPU is required
to maintain performance.
 CAPI NVMe flash leverages improved path
length, architectural improvements, and
hardware built-in to POWER8 to greatly-
improve the relative IOPs per CPU thread.
 At high levels of IO (sustained millions of
IOPs), more data can be processed more
efficiently, radically changing the amount of
CPU required to “feed the (IO) beast.”
0.6X
1X
2.6X
3.7X
0%
100%
200%
300%
400%
Fibre Channel NVMe CAPI Fibre Channel CAPI NVMe
AverageRelativeIOPs per CPU Thread
CAPI-accelerated NVMe Flash can issue 3.7X more IOs
per CPU thread than regular NVMe flash.
16
16
© 2016 International Business Machines Corporation
Neo4j + IBM POWER8:
Unparalleled Scale and Performance
Neo4j on IBM POWER8
The strength and tooling of Neo4j
The performance of POWER8
The scalability of POWER8 & CAPI
Flash
Unrivaled graph application
scalability and performance
ON
© 2016 IBM Corporation
Real-World mixed graph transaction workload
running Neo4j on POWER8 delivers 1.82X better
performance than Intel Xeon E5-2650 v4 Broadwell
711
390
0
100
200
300
400
500
600
700
800
POWER8 x86
RepresentativemixedworkloadThroughput
IBM Power S822LC (20c/160t) x86 Broadwell Server (24c/48t)
82%
More
Throughput
• POWER8 delivers 1.82X more
query throughput for a
representative mixed sample
workload than x86
– POWER8 (20 cores / 256 GB):
– x86 system with Broadwell
processor (24 cores / 256 GB):
•Based on IBM internal testing of single system and OS image running a real-world mixed graph transaction workload based on LDBC benchmark. Conducted under laboratory condition, individual result can vary based on workload size, use of storage
subsystems & other conditions.
• IBM Power System S822LC; 20 cores (2 x 10c chips) / 160 threads, POWER8; 256 GB memory, Neo4j, Ubuntu 16. Competitive stack: HP Proliant DL380 Gen9; 24 cores (2 x 12c chips) / 48 threads; Intel E5-2650 v4; 256 GB memory, Neo4j, RHEL 7.2 .
Pricing is based bundled pricing for S822LC with Integrated CAPI Flash card.
© 2016 International Business Machines Corporation 18
Scale up and/or out based on your
application requirements
• Out-of-order, super-
scalar design for
exploiting instruction
level parallelization
leading to low CPI
• Larger caches and
99.94% data-cache
hit rate
• SMT design to improve
core efficiency and
increase throughput
capability
Use the paradigm shift to realize your
imagination
CAPI-Flash
Performance and Scale as YOU Need ON
Open innovation to put data to work
across the enterprise
Thanks!
© 2016 International Business Machines Corporation
19
© Copyright International Business Machines Corporation 2016
Printed in the United States of America September 2016
IBM, the IBM logo, and ibm.com are trademarks or registered trademarks of International Business Machines Corp.,
registered in many jurisdictions worldwide. Other product and service names might be trademarks of IBM or other companies.
A current list of IBM trademarks is available on the Web at “Copyright and trademark information” at
www.ibm.com/legal/copytrade.shtml.
The following terms are trademarks or registered trademarks licensed by Power.org in the United States and/or other countries: Power ISA.
Information on the list of U.S. trademarks licensed by Power.org may be found at www.power.org/about/brand-center/.
Linux is a trademark of Linus Torvalds in the United States, other countries, or both.
Other company, product, and service names may be trademarks or service marks of others.
All information contained in this document is subject to change without notice. The products described in this document
are NOT intended for use in applications such as implantation, life support, or other hazardous uses where malfunction
could result in death, bodily injury, or catastrophic property damage. The information contained in this document does not
affect or change IBM product specifications or warranties. Nothing in this document shall operate as an express or implied
license or indemnity under the intellectual property rights of IBM or third parties. All information contained in this document
was obtained in specific environments, and is presented as an illustration. The results obtained in other operating
environments may vary.
While the information contained herein is believed to be accurate, such information is preliminary, and should not be relied upon for accuracy or completeness, and no representations
or warranties of accuracy or completeness are made.
Note: This document contains information on products in the design, sampling and/or initial production phases
of development. This information is subject to change without notice. Verify with your IBM field applications
engineer that you have the latest version of this document before finalizing a design.
You may use this documentation solely for developing technology products compatible with Power Architecture®. You may not modify or distribute this documentation. No license,
express or implied, by estoppel or otherwise to any intellectual property rights is granted by this document.
THE INFORMATION CONTAINED IN THIS DOCUMENT IS PROVIDED ON AN “AS IS” BASIS. In no event will IBM be
liable for damages arising directly or indirectly from any use of the information contained in this document.
IBM Systems and Technology Group
2070 Route 52, Bldg. 330
Hopewell Junction, NY 12533-6351
The IBM home page can be found at ibm.com®.
Version 1.1
January, 2016
Ad

More Related Content

What's hot (20)

Renault: A Data Lake Journey
Renault: A Data Lake JourneyRenault: A Data Lake Journey
Renault: A Data Lake Journey
DataWorks Summit
 
Ibm machine learning for z os
Ibm machine learning for z osIbm machine learning for z os
Ibm machine learning for z os
Cuneyt Goksu
 
Accelerate Migration to the Cloud using Data Virtualization (APAC)
Accelerate Migration to the Cloud using Data Virtualization (APAC)Accelerate Migration to the Cloud using Data Virtualization (APAC)
Accelerate Migration to the Cloud using Data Virtualization (APAC)
Denodo
 
Hitachi white-paper-future-proof-your-datacenter-with-the-right-nas-platform
Hitachi white-paper-future-proof-your-datacenter-with-the-right-nas-platformHitachi white-paper-future-proof-your-datacenter-with-the-right-nas-platform
Hitachi white-paper-future-proof-your-datacenter-with-the-right-nas-platform
Hitachi Vantara
 
Monitizing Big Data at Telecom Service Providers
Monitizing Big Data at Telecom Service ProvidersMonitizing Big Data at Telecom Service Providers
Monitizing Big Data at Telecom Service Providers
DataWorks Summit
 
Big-Data Server Farm Architecture
Big-Data Server Farm Architecture Big-Data Server Farm Architecture
Big-Data Server Farm Architecture
Jordan Chung
 
2016 Sept 1st - IBM Consultants & System Integrators Interchange - Big Data -...
2016 Sept 1st - IBM Consultants & System Integrators Interchange - Big Data -...2016 Sept 1st - IBM Consultants & System Integrators Interchange - Big Data -...
2016 Sept 1st - IBM Consultants & System Integrators Interchange - Big Data -...
Anand Haridass
 
Freddie Mac & KPMG Case Study – Advanced Machine Learning Data Integration wi...
Freddie Mac & KPMG Case Study – Advanced Machine Learning Data Integration wi...Freddie Mac & KPMG Case Study – Advanced Machine Learning Data Integration wi...
Freddie Mac & KPMG Case Study – Advanced Machine Learning Data Integration wi...
DataWorks Summit
 
Hitachi Data Systems Hadoop Solution
Hitachi Data Systems Hadoop SolutionHitachi Data Systems Hadoop Solution
Hitachi Data Systems Hadoop Solution
Hitachi Vantara
 
Mammothdb - Public VC Pitchdeck!
Mammothdb - Public VC Pitchdeck!Mammothdb - Public VC Pitchdeck!
Mammothdb - Public VC Pitchdeck!
Steve Keil
 
Data Engineer, Patterns & Architecture The future: Deep-dive into Microservic...
Data Engineer, Patterns & Architecture The future: Deep-dive into Microservic...Data Engineer, Patterns & Architecture The future: Deep-dive into Microservic...
Data Engineer, Patterns & Architecture The future: Deep-dive into Microservic...
Igor De Souza
 
Introducing dashDB MPP: The Power of Data Warehousing in the Cloud
Introducing dashDB MPP: The Power of Data Warehousing in the CloudIntroducing dashDB MPP: The Power of Data Warehousing in the Cloud
Introducing dashDB MPP: The Power of Data Warehousing in the Cloud
IBM Cloud Data Services
 
Using Hadoop for Cognitive Analytics
Using Hadoop for Cognitive AnalyticsUsing Hadoop for Cognitive Analytics
Using Hadoop for Cognitive Analytics
DataWorks Summit/Hadoop Summit
 
La creación de una capa operacional con MongoDB
La creación de una capa operacional con MongoDBLa creación de una capa operacional con MongoDB
La creación de una capa operacional con MongoDB
MongoDB
 
"Hadoop and Data Warehouse (DWH) – Friends, Enemies or Profiteers? What about...
"Hadoop and Data Warehouse (DWH) – Friends, Enemies or Profiteers? What about..."Hadoop and Data Warehouse (DWH) – Friends, Enemies or Profiteers? What about...
"Hadoop and Data Warehouse (DWH) – Friends, Enemies or Profiteers? What about...
Kai Wähner
 
IBM Cognos Business Intelligence using dashDB
IBM Cognos Business Intelligence using dashDBIBM Cognos Business Intelligence using dashDB
IBM Cognos Business Intelligence using dashDB
IBM Cloud Data Services
 
Securing and governing a multi-tenant data lake within the financial industry
Securing and governing a multi-tenant data lake within the financial industrySecuring and governing a multi-tenant data lake within the financial industry
Securing and governing a multi-tenant data lake within the financial industry
DataWorks Summit
 
IBM i and Linux case studies
IBM i and Linux case studiesIBM i and Linux case studies
IBM i and Linux case studies
David Spurway
 
CDS Overview (May 2015)
CDS Overview (May 2015)CDS Overview (May 2015)
CDS Overview (May 2015)
Karim Lalji
 
200 million qps on commodity hardware : Getting started with MySQL Cluster 7.4
200 million qps on commodity hardware : Getting started with MySQL Cluster 7.4200 million qps on commodity hardware : Getting started with MySQL Cluster 7.4
200 million qps on commodity hardware : Getting started with MySQL Cluster 7.4
Frazer Clement
 
Renault: A Data Lake Journey
Renault: A Data Lake JourneyRenault: A Data Lake Journey
Renault: A Data Lake Journey
DataWorks Summit
 
Ibm machine learning for z os
Ibm machine learning for z osIbm machine learning for z os
Ibm machine learning for z os
Cuneyt Goksu
 
Accelerate Migration to the Cloud using Data Virtualization (APAC)
Accelerate Migration to the Cloud using Data Virtualization (APAC)Accelerate Migration to the Cloud using Data Virtualization (APAC)
Accelerate Migration to the Cloud using Data Virtualization (APAC)
Denodo
 
Hitachi white-paper-future-proof-your-datacenter-with-the-right-nas-platform
Hitachi white-paper-future-proof-your-datacenter-with-the-right-nas-platformHitachi white-paper-future-proof-your-datacenter-with-the-right-nas-platform
Hitachi white-paper-future-proof-your-datacenter-with-the-right-nas-platform
Hitachi Vantara
 
Monitizing Big Data at Telecom Service Providers
Monitizing Big Data at Telecom Service ProvidersMonitizing Big Data at Telecom Service Providers
Monitizing Big Data at Telecom Service Providers
DataWorks Summit
 
Big-Data Server Farm Architecture
Big-Data Server Farm Architecture Big-Data Server Farm Architecture
Big-Data Server Farm Architecture
Jordan Chung
 
2016 Sept 1st - IBM Consultants & System Integrators Interchange - Big Data -...
2016 Sept 1st - IBM Consultants & System Integrators Interchange - Big Data -...2016 Sept 1st - IBM Consultants & System Integrators Interchange - Big Data -...
2016 Sept 1st - IBM Consultants & System Integrators Interchange - Big Data -...
Anand Haridass
 
Freddie Mac & KPMG Case Study – Advanced Machine Learning Data Integration wi...
Freddie Mac & KPMG Case Study – Advanced Machine Learning Data Integration wi...Freddie Mac & KPMG Case Study – Advanced Machine Learning Data Integration wi...
Freddie Mac & KPMG Case Study – Advanced Machine Learning Data Integration wi...
DataWorks Summit
 
Hitachi Data Systems Hadoop Solution
Hitachi Data Systems Hadoop SolutionHitachi Data Systems Hadoop Solution
Hitachi Data Systems Hadoop Solution
Hitachi Vantara
 
Mammothdb - Public VC Pitchdeck!
Mammothdb - Public VC Pitchdeck!Mammothdb - Public VC Pitchdeck!
Mammothdb - Public VC Pitchdeck!
Steve Keil
 
Data Engineer, Patterns & Architecture The future: Deep-dive into Microservic...
Data Engineer, Patterns & Architecture The future: Deep-dive into Microservic...Data Engineer, Patterns & Architecture The future: Deep-dive into Microservic...
Data Engineer, Patterns & Architecture The future: Deep-dive into Microservic...
Igor De Souza
 
Introducing dashDB MPP: The Power of Data Warehousing in the Cloud
Introducing dashDB MPP: The Power of Data Warehousing in the CloudIntroducing dashDB MPP: The Power of Data Warehousing in the Cloud
Introducing dashDB MPP: The Power of Data Warehousing in the Cloud
IBM Cloud Data Services
 
La creación de una capa operacional con MongoDB
La creación de una capa operacional con MongoDBLa creación de una capa operacional con MongoDB
La creación de una capa operacional con MongoDB
MongoDB
 
"Hadoop and Data Warehouse (DWH) – Friends, Enemies or Profiteers? What about...
"Hadoop and Data Warehouse (DWH) – Friends, Enemies or Profiteers? What about..."Hadoop and Data Warehouse (DWH) – Friends, Enemies or Profiteers? What about...
"Hadoop and Data Warehouse (DWH) – Friends, Enemies or Profiteers? What about...
Kai Wähner
 
IBM Cognos Business Intelligence using dashDB
IBM Cognos Business Intelligence using dashDBIBM Cognos Business Intelligence using dashDB
IBM Cognos Business Intelligence using dashDB
IBM Cloud Data Services
 
Securing and governing a multi-tenant data lake within the financial industry
Securing and governing a multi-tenant data lake within the financial industrySecuring and governing a multi-tenant data lake within the financial industry
Securing and governing a multi-tenant data lake within the financial industry
DataWorks Summit
 
IBM i and Linux case studies
IBM i and Linux case studiesIBM i and Linux case studies
IBM i and Linux case studies
David Spurway
 
CDS Overview (May 2015)
CDS Overview (May 2015)CDS Overview (May 2015)
CDS Overview (May 2015)
Karim Lalji
 
200 million qps on commodity hardware : Getting started with MySQL Cluster 7.4
200 million qps on commodity hardware : Getting started with MySQL Cluster 7.4200 million qps on commodity hardware : Getting started with MySQL Cluster 7.4
200 million qps on commodity hardware : Getting started with MySQL Cluster 7.4
Frazer Clement
 

Viewers also liked (20)

Natural Language Processing with Graphs
Natural Language Processing with GraphsNatural Language Processing with Graphs
Natural Language Processing with Graphs
Neo4j
 
Knowledge Architecture: Graphing Your Knowledge
Knowledge Architecture: Graphing Your KnowledgeKnowledge Architecture: Graphing Your Knowledge
Knowledge Architecture: Graphing Your Knowledge
Neo4j
 
Neo4j the Anti Crime Database
Neo4j the Anti Crime DatabaseNeo4j the Anti Crime Database
Neo4j the Anti Crime Database
Neo4j
 
Fraud Detection with Neo4j
Fraud Detection with Neo4jFraud Detection with Neo4j
Fraud Detection with Neo4j
Neo4j
 
Neo4j GraphTalks Panama Papers
Neo4j GraphTalks Panama PapersNeo4j GraphTalks Panama Papers
Neo4j GraphTalks Panama Papers
Neo4j
 
Neo4j PartnerDay Amsterdam 2017
Neo4j PartnerDay Amsterdam 2017Neo4j PartnerDay Amsterdam 2017
Neo4j PartnerDay Amsterdam 2017
Neo4j
 
Neo4j Import Webinar
Neo4j Import WebinarNeo4j Import Webinar
Neo4j Import Webinar
Neo4j
 
Using Graph theory to understand Intent & Concepts - Neo4j User Group (Januar...
Using Graph theory to understand Intent & Concepts - Neo4j User Group (Januar...Using Graph theory to understand Intent & Concepts - Neo4j User Group (Januar...
Using Graph theory to understand Intent & Concepts - Neo4j User Group (Januar...
TUMRA | Big Data Science - Gain a competitive advantage through Big Data & Data Science
 
How the IBM Platform LSF Architecture Accelerates Technical Computing
How the IBM Platform LSF Architecture Accelerates Technical ComputingHow the IBM Platform LSF Architecture Accelerates Technical Computing
How the IBM Platform LSF Architecture Accelerates Technical Computing
IBM India Smarter Computing
 
Using neo4j for enterprise metadata requirements
Using neo4j for enterprise metadata requirementsUsing neo4j for enterprise metadata requirements
Using neo4j for enterprise metadata requirements
Neo4j
 
Neo4j Introduction - Game of Thrones
Neo4j Introduction  - Game of ThronesNeo4j Introduction  - Game of Thrones
Neo4j Introduction - Game of Thrones
Neo4j
 
ETL into Neo4j
ETL into Neo4jETL into Neo4j
ETL into Neo4j
Max De Marzi
 
Introducing Neo4j
Introducing Neo4jIntroducing Neo4j
Introducing Neo4j
Neo4j
 
Webinar: Large Scale Graph Processing with IBM Power Systems & Neo4j
Webinar: Large Scale Graph Processing with IBM Power Systems & Neo4jWebinar: Large Scale Graph Processing with IBM Power Systems & Neo4j
Webinar: Large Scale Graph Processing with IBM Power Systems & Neo4j
Neo4j
 
Introduction: Relational to Graphs
Introduction: Relational to GraphsIntroduction: Relational to Graphs
Introduction: Relational to Graphs
Neo4j
 
Digital Transformation in a Connected World
Digital Transformation in a Connected WorldDigital Transformation in a Connected World
Digital Transformation in a Connected World
Neo4j
 
Neo4j -[:LOVES]-> Cypher
Neo4j -[:LOVES]-> CypherNeo4j -[:LOVES]-> Cypher
Neo4j -[:LOVES]-> Cypher
jexp
 
Neo4j graphs in the real world - graph days d.c. - april 14, 2015
Neo4j   graphs in the real world - graph days d.c. - april 14, 2015Neo4j   graphs in the real world - graph days d.c. - april 14, 2015
Neo4j graphs in the real world - graph days d.c. - april 14, 2015
Neo4j
 
Graphs for Enterprise Architects
Graphs for Enterprise ArchitectsGraphs for Enterprise Architects
Graphs for Enterprise Architects
Neo4j
 
Intro to Graphs and Neo4j
Intro to Graphs and Neo4jIntro to Graphs and Neo4j
Intro to Graphs and Neo4j
Neo4j
 
Natural Language Processing with Graphs
Natural Language Processing with GraphsNatural Language Processing with Graphs
Natural Language Processing with Graphs
Neo4j
 
Knowledge Architecture: Graphing Your Knowledge
Knowledge Architecture: Graphing Your KnowledgeKnowledge Architecture: Graphing Your Knowledge
Knowledge Architecture: Graphing Your Knowledge
Neo4j
 
Neo4j the Anti Crime Database
Neo4j the Anti Crime DatabaseNeo4j the Anti Crime Database
Neo4j the Anti Crime Database
Neo4j
 
Fraud Detection with Neo4j
Fraud Detection with Neo4jFraud Detection with Neo4j
Fraud Detection with Neo4j
Neo4j
 
Neo4j GraphTalks Panama Papers
Neo4j GraphTalks Panama PapersNeo4j GraphTalks Panama Papers
Neo4j GraphTalks Panama Papers
Neo4j
 
Neo4j PartnerDay Amsterdam 2017
Neo4j PartnerDay Amsterdam 2017Neo4j PartnerDay Amsterdam 2017
Neo4j PartnerDay Amsterdam 2017
Neo4j
 
Neo4j Import Webinar
Neo4j Import WebinarNeo4j Import Webinar
Neo4j Import Webinar
Neo4j
 
How the IBM Platform LSF Architecture Accelerates Technical Computing
How the IBM Platform LSF Architecture Accelerates Technical ComputingHow the IBM Platform LSF Architecture Accelerates Technical Computing
How the IBM Platform LSF Architecture Accelerates Technical Computing
IBM India Smarter Computing
 
Using neo4j for enterprise metadata requirements
Using neo4j for enterprise metadata requirementsUsing neo4j for enterprise metadata requirements
Using neo4j for enterprise metadata requirements
Neo4j
 
Neo4j Introduction - Game of Thrones
Neo4j Introduction  - Game of ThronesNeo4j Introduction  - Game of Thrones
Neo4j Introduction - Game of Thrones
Neo4j
 
Introducing Neo4j
Introducing Neo4jIntroducing Neo4j
Introducing Neo4j
Neo4j
 
Webinar: Large Scale Graph Processing with IBM Power Systems & Neo4j
Webinar: Large Scale Graph Processing with IBM Power Systems & Neo4jWebinar: Large Scale Graph Processing with IBM Power Systems & Neo4j
Webinar: Large Scale Graph Processing with IBM Power Systems & Neo4j
Neo4j
 
Introduction: Relational to Graphs
Introduction: Relational to GraphsIntroduction: Relational to Graphs
Introduction: Relational to Graphs
Neo4j
 
Digital Transformation in a Connected World
Digital Transformation in a Connected WorldDigital Transformation in a Connected World
Digital Transformation in a Connected World
Neo4j
 
Neo4j -[:LOVES]-> Cypher
Neo4j -[:LOVES]-> CypherNeo4j -[:LOVES]-> Cypher
Neo4j -[:LOVES]-> Cypher
jexp
 
Neo4j graphs in the real world - graph days d.c. - april 14, 2015
Neo4j   graphs in the real world - graph days d.c. - april 14, 2015Neo4j   graphs in the real world - graph days d.c. - april 14, 2015
Neo4j graphs in the real world - graph days d.c. - april 14, 2015
Neo4j
 
Graphs for Enterprise Architects
Graphs for Enterprise ArchitectsGraphs for Enterprise Architects
Graphs for Enterprise Architects
Neo4j
 
Intro to Graphs and Neo4j
Intro to Graphs and Neo4jIntro to Graphs and Neo4j
Intro to Graphs and Neo4j
Neo4j
 
Ad

Similar to Deploying Massive Scale Graphs for Realtime Insights (20)

Ibm symp14 referentin_barbara koch_power_8 launch bk
Ibm symp14 referentin_barbara koch_power_8 launch bkIbm symp14 referentin_barbara koch_power_8 launch bk
Ibm symp14 referentin_barbara koch_power_8 launch bk
IBM Switzerland
 
IBM Power leading Cognitive Systems
IBM Power leading Cognitive SystemsIBM Power leading Cognitive Systems
IBM Power leading Cognitive Systems
Hugo Blanco
 
IBM Power Systems Update 1Q17
IBM Power Systems Update 1Q17IBM Power Systems Update 1Q17
IBM Power Systems Update 1Q17
David Spurway
 
Pushing new industry standards with Sap Hana
Pushing new industry standards with Sap HanaPushing new industry standards with Sap Hana
Pushing new industry standards with Sap Hana
Ankit Bose
 
Data Engine for NoSQL - IBM Power Systems
Data Engine for NoSQL - IBM Power SystemsData Engine for NoSQL - IBM Power Systems
Data Engine for NoSQL - IBM Power Systems
thinkASG
 
Presentacin webinar move_up_to_power8_with_scale_out_servers_final
Presentacin webinar move_up_to_power8_with_scale_out_servers_finalPresentacin webinar move_up_to_power8_with_scale_out_servers_final
Presentacin webinar move_up_to_power8_with_scale_out_servers_final
Diego Alberto Tamayo
 
IBM Power Systems: Designed for Data
IBM Power Systems: Designed for DataIBM Power Systems: Designed for Data
IBM Power Systems: Designed for Data
IBM Power Systems
 
Ibm power 824
Ibm power 824Ibm power 824
Ibm power 824
Diego Rodriguez
 
transform your busines with superior cloud economics
transform your busines with superior cloud economicstransform your busines with superior cloud economics
transform your busines with superior cloud economics
Diana Sofia Moreno Rodriguez
 
K5.Fujitsu World Tour 2016-Winning with NetApp in Digital Transformation Age,...
K5.Fujitsu World Tour 2016-Winning with NetApp in Digital Transformation Age,...K5.Fujitsu World Tour 2016-Winning with NetApp in Digital Transformation Age,...
K5.Fujitsu World Tour 2016-Winning with NetApp in Digital Transformation Age,...
Fujitsu India
 
IBM DS8880 and IBM Z - Integrated by Design
IBM DS8880 and IBM Z - Integrated by DesignIBM DS8880 and IBM Z - Integrated by Design
IBM DS8880 and IBM Z - Integrated by Design
Stefan Lein
 
Analyzing Big Data - Jeff Scheel
Analyzing Big Data - Jeff ScheelAnalyzing Big Data - Jeff Scheel
Analyzing Big Data - Jeff Scheel
Kangaroot
 
IBM Power Systems - enabling cloud solutions
IBM Power Systems - enabling cloud solutionsIBM Power Systems - enabling cloud solutions
IBM Power Systems - enabling cloud solutions
David Spurway
 
NetApp All Flash storage
NetApp All Flash storageNetApp All Flash storage
NetApp All Flash storage
MarketingArrowECS_CZ
 
IBM POWER - An ideal platform for scale-out deployments
IBM POWER - An ideal platform for scale-out deploymentsIBM POWER - An ideal platform for scale-out deployments
IBM POWER - An ideal platform for scale-out deployments
thinkASG
 
SAP HANA on POWER9 systems
SAP HANA on POWER9 systemsSAP HANA on POWER9 systems
SAP HANA on POWER9 systems
Ganesan Narayanasamy
 
V9000 Data Sheet.PDF
V9000 Data Sheet.PDFV9000 Data Sheet.PDF
V9000 Data Sheet.PDF
Michael Martin
 
IBM eX5 Workload Optimized x86 Servers
IBM eX5 Workload Optimized x86 ServersIBM eX5 Workload Optimized x86 Servers
IBM eX5 Workload Optimized x86 Servers
Cliff Kinard
 
RedisConf17 - Redis Enterprise on IBM Power Systems
RedisConf17 - Redis Enterprise on IBM Power SystemsRedisConf17 - Redis Enterprise on IBM Power Systems
RedisConf17 - Redis Enterprise on IBM Power Systems
Redis Labs
 
Presentazione IBM System Storage - evento Venaria 14 ottobre
Presentazione IBM System Storage - evento Venaria 14 ottobrePresentazione IBM System Storage - evento Venaria 14 ottobre
Presentazione IBM System Storage - evento Venaria 14 ottobre
PRAGMA PROGETTI
 
Ibm symp14 referentin_barbara koch_power_8 launch bk
Ibm symp14 referentin_barbara koch_power_8 launch bkIbm symp14 referentin_barbara koch_power_8 launch bk
Ibm symp14 referentin_barbara koch_power_8 launch bk
IBM Switzerland
 
IBM Power leading Cognitive Systems
IBM Power leading Cognitive SystemsIBM Power leading Cognitive Systems
IBM Power leading Cognitive Systems
Hugo Blanco
 
IBM Power Systems Update 1Q17
IBM Power Systems Update 1Q17IBM Power Systems Update 1Q17
IBM Power Systems Update 1Q17
David Spurway
 
Pushing new industry standards with Sap Hana
Pushing new industry standards with Sap HanaPushing new industry standards with Sap Hana
Pushing new industry standards with Sap Hana
Ankit Bose
 
Data Engine for NoSQL - IBM Power Systems
Data Engine for NoSQL - IBM Power SystemsData Engine for NoSQL - IBM Power Systems
Data Engine for NoSQL - IBM Power Systems
thinkASG
 
Presentacin webinar move_up_to_power8_with_scale_out_servers_final
Presentacin webinar move_up_to_power8_with_scale_out_servers_finalPresentacin webinar move_up_to_power8_with_scale_out_servers_final
Presentacin webinar move_up_to_power8_with_scale_out_servers_final
Diego Alberto Tamayo
 
IBM Power Systems: Designed for Data
IBM Power Systems: Designed for DataIBM Power Systems: Designed for Data
IBM Power Systems: Designed for Data
IBM Power Systems
 
transform your busines with superior cloud economics
transform your busines with superior cloud economicstransform your busines with superior cloud economics
transform your busines with superior cloud economics
Diana Sofia Moreno Rodriguez
 
K5.Fujitsu World Tour 2016-Winning with NetApp in Digital Transformation Age,...
K5.Fujitsu World Tour 2016-Winning with NetApp in Digital Transformation Age,...K5.Fujitsu World Tour 2016-Winning with NetApp in Digital Transformation Age,...
K5.Fujitsu World Tour 2016-Winning with NetApp in Digital Transformation Age,...
Fujitsu India
 
IBM DS8880 and IBM Z - Integrated by Design
IBM DS8880 and IBM Z - Integrated by DesignIBM DS8880 and IBM Z - Integrated by Design
IBM DS8880 and IBM Z - Integrated by Design
Stefan Lein
 
Analyzing Big Data - Jeff Scheel
Analyzing Big Data - Jeff ScheelAnalyzing Big Data - Jeff Scheel
Analyzing Big Data - Jeff Scheel
Kangaroot
 
IBM Power Systems - enabling cloud solutions
IBM Power Systems - enabling cloud solutionsIBM Power Systems - enabling cloud solutions
IBM Power Systems - enabling cloud solutions
David Spurway
 
IBM POWER - An ideal platform for scale-out deployments
IBM POWER - An ideal platform for scale-out deploymentsIBM POWER - An ideal platform for scale-out deployments
IBM POWER - An ideal platform for scale-out deployments
thinkASG
 
IBM eX5 Workload Optimized x86 Servers
IBM eX5 Workload Optimized x86 ServersIBM eX5 Workload Optimized x86 Servers
IBM eX5 Workload Optimized x86 Servers
Cliff Kinard
 
RedisConf17 - Redis Enterprise on IBM Power Systems
RedisConf17 - Redis Enterprise on IBM Power SystemsRedisConf17 - Redis Enterprise on IBM Power Systems
RedisConf17 - Redis Enterprise on IBM Power Systems
Redis Labs
 
Presentazione IBM System Storage - evento Venaria 14 ottobre
Presentazione IBM System Storage - evento Venaria 14 ottobrePresentazione IBM System Storage - evento Venaria 14 ottobre
Presentazione IBM System Storage - evento Venaria 14 ottobre
PRAGMA PROGETTI
 
Ad

More from Neo4j (20)

Graphs & GraphRAG - Essential Ingredients for GenAI
Graphs & GraphRAG - Essential Ingredients for GenAIGraphs & GraphRAG - Essential Ingredients for GenAI
Graphs & GraphRAG - Essential Ingredients for GenAI
Neo4j
 
Neo4j Knowledge for Customer Experience.pptx
Neo4j Knowledge for Customer Experience.pptxNeo4j Knowledge for Customer Experience.pptx
Neo4j Knowledge for Customer Experience.pptx
Neo4j
 
GraphTalk New Zealand - The Art of The Possible.pptx
GraphTalk New Zealand - The Art of The Possible.pptxGraphTalk New Zealand - The Art of The Possible.pptx
GraphTalk New Zealand - The Art of The Possible.pptx
Neo4j
 
Neo4j: The Art of the Possible with Graph
Neo4j: The Art of the Possible with GraphNeo4j: The Art of the Possible with Graph
Neo4j: The Art of the Possible with Graph
Neo4j
 
Smarter Knowledge Graphs For Public Sector
Smarter Knowledge Graphs For Public  SectorSmarter Knowledge Graphs For Public  Sector
Smarter Knowledge Graphs For Public Sector
Neo4j
 
GraphRAG and Knowledge Graphs Exploring AI's Future
GraphRAG and Knowledge Graphs Exploring AI's FutureGraphRAG and Knowledge Graphs Exploring AI's Future
GraphRAG and Knowledge Graphs Exploring AI's Future
Neo4j
 
Matinée GenAI & GraphRAG Paris - Décembre 24
Matinée GenAI & GraphRAG Paris - Décembre 24Matinée GenAI & GraphRAG Paris - Décembre 24
Matinée GenAI & GraphRAG Paris - Décembre 24
Neo4j
 
ANZ Presentation: GraphSummit Melbourne 2024
ANZ Presentation: GraphSummit Melbourne 2024ANZ Presentation: GraphSummit Melbourne 2024
ANZ Presentation: GraphSummit Melbourne 2024
Neo4j
 
Google Cloud Presentation GraphSummit Melbourne 2024: Building Generative AI ...
Google Cloud Presentation GraphSummit Melbourne 2024: Building Generative AI ...Google Cloud Presentation GraphSummit Melbourne 2024: Building Generative AI ...
Google Cloud Presentation GraphSummit Melbourne 2024: Building Generative AI ...
Neo4j
 
Telstra Presentation GraphSummit Melbourne: Optimising Business Outcomes with...
Telstra Presentation GraphSummit Melbourne: Optimising Business Outcomes with...Telstra Presentation GraphSummit Melbourne: Optimising Business Outcomes with...
Telstra Presentation GraphSummit Melbourne: Optimising Business Outcomes with...
Neo4j
 
Hands-On GraphRAG Workshop: GraphSummit Melbourne 2024
Hands-On GraphRAG Workshop: GraphSummit Melbourne 2024Hands-On GraphRAG Workshop: GraphSummit Melbourne 2024
Hands-On GraphRAG Workshop: GraphSummit Melbourne 2024
Neo4j
 
Démonstration Digital Twin Building Wire Management
Démonstration Digital Twin Building Wire ManagementDémonstration Digital Twin Building Wire Management
Démonstration Digital Twin Building Wire Management
Neo4j
 
Swiss Life - Les graphes au service de la détection de fraude dans le domaine...
Swiss Life - Les graphes au service de la détection de fraude dans le domaine...Swiss Life - Les graphes au service de la détection de fraude dans le domaine...
Swiss Life - Les graphes au service de la détection de fraude dans le domaine...
Neo4j
 
Démonstration Supply Chain - GraphTalk Paris
Démonstration Supply Chain - GraphTalk ParisDémonstration Supply Chain - GraphTalk Paris
Démonstration Supply Chain - GraphTalk Paris
Neo4j
 
The Art of Possible - GraphTalk Paris Opening Session
The Art of Possible - GraphTalk Paris Opening SessionThe Art of Possible - GraphTalk Paris Opening Session
The Art of Possible - GraphTalk Paris Opening Session
Neo4j
 
How Siemens bolstered supply chain resilience with graph-powered AI insights ...
How Siemens bolstered supply chain resilience with graph-powered AI insights ...How Siemens bolstered supply chain resilience with graph-powered AI insights ...
How Siemens bolstered supply chain resilience with graph-powered AI insights ...
Neo4j
 
Knowledge Graphs for AI-Ready Data and Enterprise Deployment - Gartner IT Sym...
Knowledge Graphs for AI-Ready Data and Enterprise Deployment - Gartner IT Sym...Knowledge Graphs for AI-Ready Data and Enterprise Deployment - Gartner IT Sym...
Knowledge Graphs for AI-Ready Data and Enterprise Deployment - Gartner IT Sym...
Neo4j
 
Neo4j Graph Data Modelling Session - GraphTalk
Neo4j Graph Data Modelling Session - GraphTalkNeo4j Graph Data Modelling Session - GraphTalk
Neo4j Graph Data Modelling Session - GraphTalk
Neo4j
 
Neo4j: The Art of Possible with Graph Technology
Neo4j: The Art of Possible with Graph TechnologyNeo4j: The Art of Possible with Graph Technology
Neo4j: The Art of Possible with Graph Technology
Neo4j
 
Astra Zeneca: How KG and GenAI Revolutionise Biopharma and Life Sciences
Astra Zeneca: How KG and GenAI Revolutionise Biopharma and Life SciencesAstra Zeneca: How KG and GenAI Revolutionise Biopharma and Life Sciences
Astra Zeneca: How KG and GenAI Revolutionise Biopharma and Life Sciences
Neo4j
 
Graphs & GraphRAG - Essential Ingredients for GenAI
Graphs & GraphRAG - Essential Ingredients for GenAIGraphs & GraphRAG - Essential Ingredients for GenAI
Graphs & GraphRAG - Essential Ingredients for GenAI
Neo4j
 
Neo4j Knowledge for Customer Experience.pptx
Neo4j Knowledge for Customer Experience.pptxNeo4j Knowledge for Customer Experience.pptx
Neo4j Knowledge for Customer Experience.pptx
Neo4j
 
GraphTalk New Zealand - The Art of The Possible.pptx
GraphTalk New Zealand - The Art of The Possible.pptxGraphTalk New Zealand - The Art of The Possible.pptx
GraphTalk New Zealand - The Art of The Possible.pptx
Neo4j
 
Neo4j: The Art of the Possible with Graph
Neo4j: The Art of the Possible with GraphNeo4j: The Art of the Possible with Graph
Neo4j: The Art of the Possible with Graph
Neo4j
 
Smarter Knowledge Graphs For Public Sector
Smarter Knowledge Graphs For Public  SectorSmarter Knowledge Graphs For Public  Sector
Smarter Knowledge Graphs For Public Sector
Neo4j
 
GraphRAG and Knowledge Graphs Exploring AI's Future
GraphRAG and Knowledge Graphs Exploring AI's FutureGraphRAG and Knowledge Graphs Exploring AI's Future
GraphRAG and Knowledge Graphs Exploring AI's Future
Neo4j
 
Matinée GenAI & GraphRAG Paris - Décembre 24
Matinée GenAI & GraphRAG Paris - Décembre 24Matinée GenAI & GraphRAG Paris - Décembre 24
Matinée GenAI & GraphRAG Paris - Décembre 24
Neo4j
 
ANZ Presentation: GraphSummit Melbourne 2024
ANZ Presentation: GraphSummit Melbourne 2024ANZ Presentation: GraphSummit Melbourne 2024
ANZ Presentation: GraphSummit Melbourne 2024
Neo4j
 
Google Cloud Presentation GraphSummit Melbourne 2024: Building Generative AI ...
Google Cloud Presentation GraphSummit Melbourne 2024: Building Generative AI ...Google Cloud Presentation GraphSummit Melbourne 2024: Building Generative AI ...
Google Cloud Presentation GraphSummit Melbourne 2024: Building Generative AI ...
Neo4j
 
Telstra Presentation GraphSummit Melbourne: Optimising Business Outcomes with...
Telstra Presentation GraphSummit Melbourne: Optimising Business Outcomes with...Telstra Presentation GraphSummit Melbourne: Optimising Business Outcomes with...
Telstra Presentation GraphSummit Melbourne: Optimising Business Outcomes with...
Neo4j
 
Hands-On GraphRAG Workshop: GraphSummit Melbourne 2024
Hands-On GraphRAG Workshop: GraphSummit Melbourne 2024Hands-On GraphRAG Workshop: GraphSummit Melbourne 2024
Hands-On GraphRAG Workshop: GraphSummit Melbourne 2024
Neo4j
 
Démonstration Digital Twin Building Wire Management
Démonstration Digital Twin Building Wire ManagementDémonstration Digital Twin Building Wire Management
Démonstration Digital Twin Building Wire Management
Neo4j
 
Swiss Life - Les graphes au service de la détection de fraude dans le domaine...
Swiss Life - Les graphes au service de la détection de fraude dans le domaine...Swiss Life - Les graphes au service de la détection de fraude dans le domaine...
Swiss Life - Les graphes au service de la détection de fraude dans le domaine...
Neo4j
 
Démonstration Supply Chain - GraphTalk Paris
Démonstration Supply Chain - GraphTalk ParisDémonstration Supply Chain - GraphTalk Paris
Démonstration Supply Chain - GraphTalk Paris
Neo4j
 
The Art of Possible - GraphTalk Paris Opening Session
The Art of Possible - GraphTalk Paris Opening SessionThe Art of Possible - GraphTalk Paris Opening Session
The Art of Possible - GraphTalk Paris Opening Session
Neo4j
 
How Siemens bolstered supply chain resilience with graph-powered AI insights ...
How Siemens bolstered supply chain resilience with graph-powered AI insights ...How Siemens bolstered supply chain resilience with graph-powered AI insights ...
How Siemens bolstered supply chain resilience with graph-powered AI insights ...
Neo4j
 
Knowledge Graphs for AI-Ready Data and Enterprise Deployment - Gartner IT Sym...
Knowledge Graphs for AI-Ready Data and Enterprise Deployment - Gartner IT Sym...Knowledge Graphs for AI-Ready Data and Enterprise Deployment - Gartner IT Sym...
Knowledge Graphs for AI-Ready Data and Enterprise Deployment - Gartner IT Sym...
Neo4j
 
Neo4j Graph Data Modelling Session - GraphTalk
Neo4j Graph Data Modelling Session - GraphTalkNeo4j Graph Data Modelling Session - GraphTalk
Neo4j Graph Data Modelling Session - GraphTalk
Neo4j
 
Neo4j: The Art of Possible with Graph Technology
Neo4j: The Art of Possible with Graph TechnologyNeo4j: The Art of Possible with Graph Technology
Neo4j: The Art of Possible with Graph Technology
Neo4j
 
Astra Zeneca: How KG and GenAI Revolutionise Biopharma and Life Sciences
Astra Zeneca: How KG and GenAI Revolutionise Biopharma and Life SciencesAstra Zeneca: How KG and GenAI Revolutionise Biopharma and Life Sciences
Astra Zeneca: How KG and GenAI Revolutionise Biopharma and Life Sciences
Neo4j
 

Recently uploaded (20)

Get & Download Wondershare Filmora Crack Latest [2025]
Get & Download Wondershare Filmora Crack Latest [2025]Get & Download Wondershare Filmora Crack Latest [2025]
Get & Download Wondershare Filmora Crack Latest [2025]
saniaaftab72555
 
Requirements in Engineering AI- Enabled Systems: Open Problems and Safe AI Sy...
Requirements in Engineering AI- Enabled Systems: Open Problems and Safe AI Sy...Requirements in Engineering AI- Enabled Systems: Open Problems and Safe AI Sy...
Requirements in Engineering AI- Enabled Systems: Open Problems and Safe AI Sy...
Lionel Briand
 
Solidworks Crack 2025 latest new + license code
Solidworks Crack 2025 latest new + license codeSolidworks Crack 2025 latest new + license code
Solidworks Crack 2025 latest new + license code
aneelaramzan63
 
Microsoft AI Nonprofit Use Cases and Live Demo_2025.04.30.pdf
Microsoft AI Nonprofit Use Cases and Live Demo_2025.04.30.pdfMicrosoft AI Nonprofit Use Cases and Live Demo_2025.04.30.pdf
Microsoft AI Nonprofit Use Cases and Live Demo_2025.04.30.pdf
TechSoup
 
Adobe After Effects Crack FREE FRESH version 2025
Adobe After Effects Crack FREE FRESH version 2025Adobe After Effects Crack FREE FRESH version 2025
Adobe After Effects Crack FREE FRESH version 2025
kashifyounis067
 
What Do Contribution Guidelines Say About Software Testing? (MSR 2025)
What Do Contribution Guidelines Say About Software Testing? (MSR 2025)What Do Contribution Guidelines Say About Software Testing? (MSR 2025)
What Do Contribution Guidelines Say About Software Testing? (MSR 2025)
Andre Hora
 
WinRAR Crack for Windows (100% Working 2025)
WinRAR Crack for Windows (100% Working 2025)WinRAR Crack for Windows (100% Working 2025)
WinRAR Crack for Windows (100% Working 2025)
sh607827
 
Kubernetes_101_Zero_to_Platform_Engineer.pptx
Kubernetes_101_Zero_to_Platform_Engineer.pptxKubernetes_101_Zero_to_Platform_Engineer.pptx
Kubernetes_101_Zero_to_Platform_Engineer.pptx
CloudScouts
 
Adobe Marketo Engage Champion Deep Dive - SFDC CRM Synch V2 & Usage Dashboards
Adobe Marketo Engage Champion Deep Dive - SFDC CRM Synch V2 & Usage DashboardsAdobe Marketo Engage Champion Deep Dive - SFDC CRM Synch V2 & Usage Dashboards
Adobe Marketo Engage Champion Deep Dive - SFDC CRM Synch V2 & Usage Dashboards
BradBedford3
 
FL Studio Producer Edition Crack 2025 Full Version
FL Studio Producer Edition Crack 2025 Full VersionFL Studio Producer Edition Crack 2025 Full Version
FL Studio Producer Edition Crack 2025 Full Version
tahirabibi60507
 
Exploring Code Comprehension in Scientific Programming: Preliminary Insight...
Exploring Code Comprehension  in Scientific Programming:  Preliminary Insight...Exploring Code Comprehension  in Scientific Programming:  Preliminary Insight...
Exploring Code Comprehension in Scientific Programming: Preliminary Insight...
University of Hawai‘i at Mānoa
 
TestMigrationsInPy: A Dataset of Test Migrations from Unittest to Pytest (MSR...
TestMigrationsInPy: A Dataset of Test Migrations from Unittest to Pytest (MSR...TestMigrationsInPy: A Dataset of Test Migrations from Unittest to Pytest (MSR...
TestMigrationsInPy: A Dataset of Test Migrations from Unittest to Pytest (MSR...
Andre Hora
 
Landscape of Requirements Engineering for/by AI through Literature Review
Landscape of Requirements Engineering for/by AI through Literature ReviewLandscape of Requirements Engineering for/by AI through Literature Review
Landscape of Requirements Engineering for/by AI through Literature Review
Hironori Washizaki
 
Secure Test Infrastructure: The Backbone of Trustworthy Software Development
Secure Test Infrastructure: The Backbone of Trustworthy Software DevelopmentSecure Test Infrastructure: The Backbone of Trustworthy Software Development
Secure Test Infrastructure: The Backbone of Trustworthy Software Development
Shubham Joshi
 
Expand your AI adoption with AgentExchange
Expand your AI adoption with AgentExchangeExpand your AI adoption with AgentExchange
Expand your AI adoption with AgentExchange
Fexle Services Pvt. Ltd.
 
Not So Common Memory Leaks in Java Webinar
Not So Common Memory Leaks in Java WebinarNot So Common Memory Leaks in Java Webinar
Not So Common Memory Leaks in Java Webinar
Tier1 app
 
Adobe Master Collection CC Crack Advance Version 2025
Adobe Master Collection CC Crack Advance Version 2025Adobe Master Collection CC Crack Advance Version 2025
Adobe Master Collection CC Crack Advance Version 2025
kashifyounis067
 
How to Batch Export Lotus Notes NSF Emails to Outlook PST Easily?
How to Batch Export Lotus Notes NSF Emails to Outlook PST Easily?How to Batch Export Lotus Notes NSF Emails to Outlook PST Easily?
How to Batch Export Lotus Notes NSF Emails to Outlook PST Easily?
steaveroggers
 
F-Secure Freedome VPN 2025 Crack Plus Activation New Version
F-Secure Freedome VPN 2025 Crack Plus Activation  New VersionF-Secure Freedome VPN 2025 Crack Plus Activation  New Version
F-Secure Freedome VPN 2025 Crack Plus Activation New Version
saimabibi60507
 
Exceptional Behaviors: How Frequently Are They Tested? (AST 2025)
Exceptional Behaviors: How Frequently Are They Tested? (AST 2025)Exceptional Behaviors: How Frequently Are They Tested? (AST 2025)
Exceptional Behaviors: How Frequently Are They Tested? (AST 2025)
Andre Hora
 
Get & Download Wondershare Filmora Crack Latest [2025]
Get & Download Wondershare Filmora Crack Latest [2025]Get & Download Wondershare Filmora Crack Latest [2025]
Get & Download Wondershare Filmora Crack Latest [2025]
saniaaftab72555
 
Requirements in Engineering AI- Enabled Systems: Open Problems and Safe AI Sy...
Requirements in Engineering AI- Enabled Systems: Open Problems and Safe AI Sy...Requirements in Engineering AI- Enabled Systems: Open Problems and Safe AI Sy...
Requirements in Engineering AI- Enabled Systems: Open Problems and Safe AI Sy...
Lionel Briand
 
Solidworks Crack 2025 latest new + license code
Solidworks Crack 2025 latest new + license codeSolidworks Crack 2025 latest new + license code
Solidworks Crack 2025 latest new + license code
aneelaramzan63
 
Microsoft AI Nonprofit Use Cases and Live Demo_2025.04.30.pdf
Microsoft AI Nonprofit Use Cases and Live Demo_2025.04.30.pdfMicrosoft AI Nonprofit Use Cases and Live Demo_2025.04.30.pdf
Microsoft AI Nonprofit Use Cases and Live Demo_2025.04.30.pdf
TechSoup
 
Adobe After Effects Crack FREE FRESH version 2025
Adobe After Effects Crack FREE FRESH version 2025Adobe After Effects Crack FREE FRESH version 2025
Adobe After Effects Crack FREE FRESH version 2025
kashifyounis067
 
What Do Contribution Guidelines Say About Software Testing? (MSR 2025)
What Do Contribution Guidelines Say About Software Testing? (MSR 2025)What Do Contribution Guidelines Say About Software Testing? (MSR 2025)
What Do Contribution Guidelines Say About Software Testing? (MSR 2025)
Andre Hora
 
WinRAR Crack for Windows (100% Working 2025)
WinRAR Crack for Windows (100% Working 2025)WinRAR Crack for Windows (100% Working 2025)
WinRAR Crack for Windows (100% Working 2025)
sh607827
 
Kubernetes_101_Zero_to_Platform_Engineer.pptx
Kubernetes_101_Zero_to_Platform_Engineer.pptxKubernetes_101_Zero_to_Platform_Engineer.pptx
Kubernetes_101_Zero_to_Platform_Engineer.pptx
CloudScouts
 
Adobe Marketo Engage Champion Deep Dive - SFDC CRM Synch V2 & Usage Dashboards
Adobe Marketo Engage Champion Deep Dive - SFDC CRM Synch V2 & Usage DashboardsAdobe Marketo Engage Champion Deep Dive - SFDC CRM Synch V2 & Usage Dashboards
Adobe Marketo Engage Champion Deep Dive - SFDC CRM Synch V2 & Usage Dashboards
BradBedford3
 
FL Studio Producer Edition Crack 2025 Full Version
FL Studio Producer Edition Crack 2025 Full VersionFL Studio Producer Edition Crack 2025 Full Version
FL Studio Producer Edition Crack 2025 Full Version
tahirabibi60507
 
Exploring Code Comprehension in Scientific Programming: Preliminary Insight...
Exploring Code Comprehension  in Scientific Programming:  Preliminary Insight...Exploring Code Comprehension  in Scientific Programming:  Preliminary Insight...
Exploring Code Comprehension in Scientific Programming: Preliminary Insight...
University of Hawai‘i at Mānoa
 
TestMigrationsInPy: A Dataset of Test Migrations from Unittest to Pytest (MSR...
TestMigrationsInPy: A Dataset of Test Migrations from Unittest to Pytest (MSR...TestMigrationsInPy: A Dataset of Test Migrations from Unittest to Pytest (MSR...
TestMigrationsInPy: A Dataset of Test Migrations from Unittest to Pytest (MSR...
Andre Hora
 
Landscape of Requirements Engineering for/by AI through Literature Review
Landscape of Requirements Engineering for/by AI through Literature ReviewLandscape of Requirements Engineering for/by AI through Literature Review
Landscape of Requirements Engineering for/by AI through Literature Review
Hironori Washizaki
 
Secure Test Infrastructure: The Backbone of Trustworthy Software Development
Secure Test Infrastructure: The Backbone of Trustworthy Software DevelopmentSecure Test Infrastructure: The Backbone of Trustworthy Software Development
Secure Test Infrastructure: The Backbone of Trustworthy Software Development
Shubham Joshi
 
Expand your AI adoption with AgentExchange
Expand your AI adoption with AgentExchangeExpand your AI adoption with AgentExchange
Expand your AI adoption with AgentExchange
Fexle Services Pvt. Ltd.
 
Not So Common Memory Leaks in Java Webinar
Not So Common Memory Leaks in Java WebinarNot So Common Memory Leaks in Java Webinar
Not So Common Memory Leaks in Java Webinar
Tier1 app
 
Adobe Master Collection CC Crack Advance Version 2025
Adobe Master Collection CC Crack Advance Version 2025Adobe Master Collection CC Crack Advance Version 2025
Adobe Master Collection CC Crack Advance Version 2025
kashifyounis067
 
How to Batch Export Lotus Notes NSF Emails to Outlook PST Easily?
How to Batch Export Lotus Notes NSF Emails to Outlook PST Easily?How to Batch Export Lotus Notes NSF Emails to Outlook PST Easily?
How to Batch Export Lotus Notes NSF Emails to Outlook PST Easily?
steaveroggers
 
F-Secure Freedome VPN 2025 Crack Plus Activation New Version
F-Secure Freedome VPN 2025 Crack Plus Activation  New VersionF-Secure Freedome VPN 2025 Crack Plus Activation  New Version
F-Secure Freedome VPN 2025 Crack Plus Activation New Version
saimabibi60507
 
Exceptional Behaviors: How Frequently Are They Tested? (AST 2025)
Exceptional Behaviors: How Frequently Are They Tested? (AST 2025)Exceptional Behaviors: How Frequently Are They Tested? (AST 2025)
Exceptional Behaviors: How Frequently Are They Tested? (AST 2025)
Andre Hora
 

Deploying Massive Scale Graphs for Realtime Insights

  • 1. Deploying massive scale for graphs for realtime insights B Brech CTO POWER Solutions [email protected]
  • 2. 2 2 © 2016 International Business Machines Corporation Drive Efficiency - Time Reduction - Cost Reduction - Consistency Better Insights - Broader Scope - Learning Models - Speed & Accuracy Better Business - Innovation - Customer Care - Reactivity Business relies more on Data than ever before
  • 3. 3 3 © 2016 International Business Machines Corporation 1990’ s 2020’ s Video Text Exa Pet a Ter a Gig a DataVolume 2000’ s 2010’ s Structured data Audio Image Me d High Lo w ComputationalNeeds SophisticationofAnalysis Expressiveness Digital Marketing 10+% of video views Wide Area Imagery 100’s TB per day72 video hrs/minute Media Source: IBM Market Insights based on composite sources Safety / Security Healthcare Customer 1B camera phones 1B medical images/yr 10s millions cameras Enterprise Video Used by 1/3 of enterprises Data Volume Data Velocity Data Authenticity Data Complexity Data Variability Data Variety While Data is Exploding
  • 4. 4 4 © 2016 International Business Machines Corporation Time is Money and Insights are critical Ingest Analyze Act Measure Learn Optimize Decision time is shrinking
  • 5. 5 5 © 2016 International Business Machines Corporation Recommendation engines - used in variety of industries Network intrusion prevention Fraud prevention Financial Services BioMedical - Genomics Combination of Scale & Speed is critical in many use cases Extreme Scale Example: - 30TB and growing DB - 25 BG/s ingress - over 400K updates / Sec - 60B+ relationships - Query Response < 200ms
  • 6. 6 6 © 2016 International Business Machines Corporation DB2 > DB2Blu SAP > SAP Hana Oracle > 12C CICS EnterpriseDB Etc.. NoSQLs : MemCached, REDIS, NEO4J, CASSANDRA, MARIA, MONGO, ORIENT, COUCH, Etc… Traditional DBs going in-memory Designed as in-memory repositories AnalyzeDecision Innovation Act Ingest But in-memory has some constraints and limits. Data repositories are changing also
  • 7. 7 7 © 2016 International Business Machines Corporation Built with open innovation to put your data to work across the enterprise Designed for Big Data Open Innovation Platform Superior Cloud Economics IBM POWER8 : Designed for Big Data
  • 8. 8 8 © 2016 International Business Machines Corporation UNSTRUCTURED IN-MEMORY STRUCTURED Flash for extreme performance Massive IO bandwidth Continuous data load Parallel processing Large-scale memory processing Optimized for a broad range of big data & analytics workloads: Processors flexible, fast execution of analytics algorithms Memory large, fast workspace to maximize business insight Cache ensure continuous data load for fast responses 4X threads per core vs. x86 (up to 1536 threads per system) 4X memory bandwidth vs. x861 (up to 16TB of memory) 4X more cache vs. x862 (up to 800MB cache per socket) IBM POWER8 brings performance and scale
  • 9. 9 9 © 2016 International Business Machines Corporation POWER Ecosystem Designed for Big Data Workload Acceleration Defined by Software Retail Healthcare Banking Government Telecom Open and Collaborative Technology & Price/Perf Leadership Watson LinuxHadoop POWER8 Hypervisor Virt I/O Server Shared I/O Single SMP Hardware System Built in Virtualization Leading Performance Processor Innovation Streams Foundations Suzhou PowerCore Technology Virtualization Offerings Key solutions: +Open Source Tools +Middleware +Industry Solutions + Social / Mobile / Analytics / Cloud Hadoop Spark
  • 10. 10 10 © 2016 International Business Machines Corporation Fundamental forces are accelerating industry change IT innovation can no longer come from just the processor Solution Innovation and Acceleration is a key to the future Price/Performance Full system stack innovation required Moore’s Law Technology and Processors 2000 2020 Firmware / OS Accelerators Software Storage Network Full Stack Acceleratio n (Lower is better) The OpenPOWER Foundation is an open ecosystem, using the POWER Architecture to serve the evolving needs of customers.
  • 11. 11 11 © 2016 International Business Machines Corporation NVLINK GPUFPGA Flash NIC MRAM PCM Solution Acceleration is a key to the future
  • 12. 12 12 © 2016 International Business Machines Corporation NVLINK GPU Flash Graphics – CAE - EDA Weather Defense Financial Services Bio-Sciences General: Compression Encryption DataBases: Flash Finance: Algorithms, Facial Genomics : Algorithms Decision Support Data Analytics Financial Simulations Genomic Analysis Network Data Forensics Facial Recognition Solution Acceleration is a key to the future
  • 13. 13 13 © 2016 International Business Machines Corporation IBM Data Engine for NoSQL is an integrated platform for large and fast growing NoSQL data stores. It builds on the CAPI capability of POWER8 systems and provides super-fast access to large flash storage capacity. It delivers high speed access to both RAM and flash storage which can result in significantly lower cost, and higher workload density for NoSQL deployments than a standard RAM-based system. The solution offers superior performance and price-performance to scale out x86 server deployments that are either limited in available memory per server or have flash memory with limited data access latency. Up to 56TB of extended memory with one POWER8 server + CAPI attach FLASH Power S822L / S812L Flash System 900 Power S822L / S812L / S822 LC NEW External Flash Configuration Integrated Flash Configuration Up to 8TB of super-fast storage tier on one POWER8 server IBM Data Engine for NoSQL Cost Savings for In-Memory NoSQL Data Stores
  • 14. 14 14 © 2016 International Business Machines Corporation Identical hardware with 3 different paths to data FlashSystem Conventional I/O (FC) CAPI - E IBM POWER S822L CAPI - I IBM's CAPI NVMe Flash Accelerator is almost 5X more efficient in performing IO vs traditional storage. 21% 35% 56% 100% 0% 25% 50% 75% 100% CAPI NVMe Traditional NVMe Traditional Storage - Direct IO Traditional Storage - Filesystem RelativeCAPI vs. NVMe Instruction Counts per IO Kernel Instructions User Instructions ON CAPI Unlocks the Next Level of Performance for Flash
  • 15. 15 15 © 2016 International Business Machines Corporation ON Efficient IO Enables True Utilization of Storage Bandwidth  Under heavy load, IOPs per thread becomes a critical metric for sustaining throughput in a storage system. As throughput increases, more CPU is required to maintain performance.  CAPI NVMe flash leverages improved path length, architectural improvements, and hardware built-in to POWER8 to greatly- improve the relative IOPs per CPU thread.  At high levels of IO (sustained millions of IOPs), more data can be processed more efficiently, radically changing the amount of CPU required to “feed the (IO) beast.” 0.6X 1X 2.6X 3.7X 0% 100% 200% 300% 400% Fibre Channel NVMe CAPI Fibre Channel CAPI NVMe AverageRelativeIOPs per CPU Thread CAPI-accelerated NVMe Flash can issue 3.7X more IOs per CPU thread than regular NVMe flash.
  • 16. 16 16 © 2016 International Business Machines Corporation Neo4j + IBM POWER8: Unparalleled Scale and Performance Neo4j on IBM POWER8 The strength and tooling of Neo4j The performance of POWER8 The scalability of POWER8 & CAPI Flash Unrivaled graph application scalability and performance ON
  • 17. © 2016 IBM Corporation Real-World mixed graph transaction workload running Neo4j on POWER8 delivers 1.82X better performance than Intel Xeon E5-2650 v4 Broadwell 711 390 0 100 200 300 400 500 600 700 800 POWER8 x86 RepresentativemixedworkloadThroughput IBM Power S822LC (20c/160t) x86 Broadwell Server (24c/48t) 82% More Throughput • POWER8 delivers 1.82X more query throughput for a representative mixed sample workload than x86 – POWER8 (20 cores / 256 GB): – x86 system with Broadwell processor (24 cores / 256 GB): •Based on IBM internal testing of single system and OS image running a real-world mixed graph transaction workload based on LDBC benchmark. Conducted under laboratory condition, individual result can vary based on workload size, use of storage subsystems & other conditions. • IBM Power System S822LC; 20 cores (2 x 10c chips) / 160 threads, POWER8; 256 GB memory, Neo4j, Ubuntu 16. Competitive stack: HP Proliant DL380 Gen9; 24 cores (2 x 12c chips) / 48 threads; Intel E5-2650 v4; 256 GB memory, Neo4j, RHEL 7.2 . Pricing is based bundled pricing for S822LC with Integrated CAPI Flash card.
  • 18. © 2016 International Business Machines Corporation 18 Scale up and/or out based on your application requirements • Out-of-order, super- scalar design for exploiting instruction level parallelization leading to low CPI • Larger caches and 99.94% data-cache hit rate • SMT design to improve core efficiency and increase throughput capability Use the paradigm shift to realize your imagination CAPI-Flash Performance and Scale as YOU Need ON
  • 19. Open innovation to put data to work across the enterprise Thanks! © 2016 International Business Machines Corporation 19
  • 20. © Copyright International Business Machines Corporation 2016 Printed in the United States of America September 2016 IBM, the IBM logo, and ibm.com are trademarks or registered trademarks of International Business Machines Corp., registered in many jurisdictions worldwide. Other product and service names might be trademarks of IBM or other companies. A current list of IBM trademarks is available on the Web at “Copyright and trademark information” at www.ibm.com/legal/copytrade.shtml. The following terms are trademarks or registered trademarks licensed by Power.org in the United States and/or other countries: Power ISA. Information on the list of U.S. trademarks licensed by Power.org may be found at www.power.org/about/brand-center/. Linux is a trademark of Linus Torvalds in the United States, other countries, or both. Other company, product, and service names may be trademarks or service marks of others. All information contained in this document is subject to change without notice. The products described in this document are NOT intended for use in applications such as implantation, life support, or other hazardous uses where malfunction could result in death, bodily injury, or catastrophic property damage. The information contained in this document does not affect or change IBM product specifications or warranties. Nothing in this document shall operate as an express or implied license or indemnity under the intellectual property rights of IBM or third parties. All information contained in this document was obtained in specific environments, and is presented as an illustration. The results obtained in other operating environments may vary. While the information contained herein is believed to be accurate, such information is preliminary, and should not be relied upon for accuracy or completeness, and no representations or warranties of accuracy or completeness are made. Note: This document contains information on products in the design, sampling and/or initial production phases of development. This information is subject to change without notice. Verify with your IBM field applications engineer that you have the latest version of this document before finalizing a design. You may use this documentation solely for developing technology products compatible with Power Architecture®. You may not modify or distribute this documentation. No license, express or implied, by estoppel or otherwise to any intellectual property rights is granted by this document. THE INFORMATION CONTAINED IN THIS DOCUMENT IS PROVIDED ON AN “AS IS” BASIS. In no event will IBM be liable for damages arising directly or indirectly from any use of the information contained in this document. IBM Systems and Technology Group 2070 Route 52, Bldg. 330 Hopewell Junction, NY 12533-6351 The IBM home page can be found at ibm.com®. Version 1.1 January, 2016