SlideShare uma empresa Scribd logo
1 de 40
Baixar para ler offline
“Graphs in the Real World”
Developed, deployed and
battle-tested graph use-cases
Value from Data Relationships
Common Graph Database Use Cases
Internal Applications
Master Data Management
Network and
IT Operations
Fraud Detection
Customer-Facing Applications
Real-Time Recommendations
Graph-Based Search
Identity and
Access Management
Graphs for Master Data
Management
MDM as a Graph
What we *think* MDM is What MDM *really* is
Patient
Agent
G.P.Surgeon Partner
Insurance
Patient
AgentG.P.Surgeon
PartnerInsurance
Common Graphs in Master Data Management
C
C
A AA
U
S S SS S
USER_ACCESS
CONTROLLED_BY
SUBSCRIBED _BY
User
Customers
Accounts
Subscriptions
VP
Staff Staff StaffStaff
DirectorStaffDirector
Manager Manager Manager Manager
Fiber
Link
Fiber
Link
Fiber
Link
Ocean
Cable
Switch Switch
Router Router
Service
Organizational
Hierarchy
Product
Hierarchy
Network
Topology
/ CMDB
Social
Network
die Bayerische – Master Data Management
Mid-size
German insurer
Founded in 1858
More than
500 employees
Project executed
by Delvin GmbH,
subsidiary of
die Bayerische
Versicherung
360° View of the Customer
die Bayerische SOLUTION
• Complete view customer & policy
information by Field Sales
• Flexibly policy & customer search
• Overcome scaling limitations of
existing IBM DB2 system
• Extend information to sales partners
Classmates – Social network
Online yearbook
connecting friends from
school, work and military
in US and Canada
Founded as
Memory Lane in Seattle
Develop new social networking capabilities to
monetize yearbook-related offerings
• Show all the people I know in a yearbook
• Show yearbooks my friends appear in most often
• Show sections of a yearbook that my friends
appear most in
• Show me other schools my friends attended
Classmates SOLUTION
Neo4j provides a robust and scalable graph
database solution
• 3-instance cluster with cache sharding
and disaster-recovery
• 18ms response time for top 4 queries
• 100M nodes and 600M relationships in
initial graph—including people, images,
schools, yearbooks and pages
• Projected to grow to 1B nodes and 6B
relationships
Source:
“Growing the Elephant: Tales from
an Enterprise Data Model”
by Jeremy Posner (Synechron)
Enterprise Data World 2015
Graphs for Network and IT
Operations Management
Graphs in Networking
The Royal Netherlands
Meteorological Institute
Operational Infrastructure to Collect, Record, and Manage Weather Data
Graph Applied to Fraud Detection
Some Examples
Retail First Party Fraud
• Opening many lines of credit with no intention of paying back
• Accounts for $10B+ in annual losses at US banks(1)
Synthetic Identities and Fraud Rings
• Rings of synthetic identities committing fraud
Insurance – Whiplash for Cash
• Insurance scams using fake drivers, passengers and witnesses
• Increase network efficiency
eCommerce Fraud
• Online payment fraud
(1) Business Insider: http://www.businessinsider.com/how-to-use-social-networks-in-the-fight-against-first-party-
fraud-2011-3
Pros
Simple
Stops rookies
Discrete Data Analysis
Revolving
Debt
INVESTIGATE
INVESTIGATE
Number of accounts
Cons
False positives
False negatives
Connected Analysis
Revolving
Debt
Number of accounts
PROS
Detect fraud rings
Fewer false negatives
Graph of First Party Bank Fraud
Account
Holder
1
Account
Holder
2
Account
Holder
3
SSN
2
SSN
2
Phone
Numbe
r
2
Credit
Card
Address
1
Bank
Account
Bank
Account
Bank
Account
Phone
Numbe
r
2
Credit
Card
Unsecured
Loan
Unsecured
Loan
Insurance Fraud Example
Gartner’s Layered Fraud Prevention Approach (4)
(4) http://www.gartner.com/newsroom/id/1695014
Traditional Fraud Prevention
Analysis
of users
and their
endpoints
Analysis of
navigation
behavior and
suspect
patterns
Analysis of
anomaly
behavior by
channel
Analysis of
anomaly
behavior
correlated
across channels
Analysis of
relationships
to detect
organized crime
and collusion
Layer 1
Endpoint-
Centric
Navigation-
Centric
Account-
Centric
Cross-
Channel
Entity
Linking
Layer 2 Layer 3 Layer 4 Layer 5
DISCRETE DATA ANALYSIS CONNECTED ANALYSIS
Graphs for Real-time
Recommendations
Using Data Relationships for Recommendations
Collaborative filtering
Predict what users like based on the
similarity of their behaviors, activities
and preferences to others
Content-based filtering
Recommend items based on what users
have liked in the past
Movie
Person
Person
Retail Recommendations
“We found Neo4j to be literally thousands of times faster
than our prior MySQL solution, with queries that require
10-100 times less code. Today, Neo4j provides eBay with
functionality that was previously impossible.”
- Volker Pacher, Senior Developer, eBay
eBay – Real-time routing recommendations
• Order from local stores
• Deliveries within 90 minutes
• Leverage local courier
services
• Calculate best route in real-
time
Graphs for Graph-Based Search
Curaspan – Graph-based Search
Leader in patient
management for
discharges and referrals
Manages patient referrals
4600+ health care facilities
Connects providers, payers
via web-based patient
management platform
Founded in 1999 in
Newton, Massachusetts
“Find a skilled nursing facility within 5 miles of
the patient’s home, belonging to an eligible
health care group, offering speech therapy and
cardiac care, and optionally Italian language
services”
Curaspan WHERE ARE THE GRAPHS?
• Permissions: Caregivers to Patient Data
• Coverage: Organizational Relationships
• Provider Services & Skills
• Service Areas: Location Graph
Graphs for Identity and Access
Management
Identity & Access Management
• Based in Oslo
• #1 in Nordics
• #10 in world
Oslo-based Telco
#1 in Nordic countries
#10 in world
Mission-critical system
Availability and
responsiveness critical to
customer satisfaction
Telenor – Identity & Access Management
Source:
Using Graph Databases in
Real-Time to Solve Resource
Authorization at Telenor -
Sebastian Verheughe @
GraphConnect London 2013
Value from Data Relationships
Common Graph Database Use Cases
Internal Applications
Master Data Management
Network and
IT Operations
Fraud Detection
Customer-Facing Applications
Real-Time Recommendations
Graph-Based Search
Identity and
Access Management
Graphs in the Real World
March 2015

Mais conteúdo relacionado

Mais procurados

Graphdatenbank Neo4j: Konzept, Positionierung, Status Region DACH - Bruno Un...
 Graphdatenbank Neo4j: Konzept, Positionierung, Status Region DACH - Bruno Un... Graphdatenbank Neo4j: Konzept, Positionierung, Status Region DACH - Bruno Un...
Graphdatenbank Neo4j: Konzept, Positionierung, Status Region DACH - Bruno Un...Neo4j
 
Graphs in Action
Graphs in ActionGraphs in Action
Graphs in ActionNeo4j
 
Introducing Neo4j
Introducing Neo4jIntroducing Neo4j
Introducing Neo4jNeo4j
 
Bigdata and ai in p2 p industry: Knowledge graph and inference
Bigdata and ai in p2 p industry:  Knowledge graph and inferenceBigdata and ai in p2 p industry:  Knowledge graph and inference
Bigdata and ai in p2 p industry: Knowledge graph and inferencesfbiganalytics
 
Introduction to Neo4j for the Emirates & Bahrain
Introduction to Neo4j for the Emirates & BahrainIntroduction to Neo4j for the Emirates & Bahrain
Introduction to Neo4j for the Emirates & BahrainNeo4j
 
The Graph Database Universe: Neo4j Overview
The Graph Database Universe: Neo4j OverviewThe Graph Database Universe: Neo4j Overview
The Graph Database Universe: Neo4j OverviewNeo4j
 
GraphTalk Berlin - Einführung in Graphdatenbanken
GraphTalk Berlin - Einführung in GraphdatenbankenGraphTalk Berlin - Einführung in Graphdatenbanken
GraphTalk Berlin - Einführung in GraphdatenbankenNeo4j
 
Webinar: RDBMS to Graphs
Webinar: RDBMS to GraphsWebinar: RDBMS to Graphs
Webinar: RDBMS to GraphsNeo4j
 
Introduction to Graph databases and Neo4j (by Stefan Armbruster)
Introduction to Graph databases and Neo4j (by Stefan Armbruster)Introduction to Graph databases and Neo4j (by Stefan Armbruster)
Introduction to Graph databases and Neo4j (by Stefan Armbruster)barcelonajug
 
Action from Insight - Joining the 2 Percent Who are Getting Big Data Right
Action from Insight - Joining the 2 Percent Who are Getting Big Data RightAction from Insight - Joining the 2 Percent Who are Getting Big Data Right
Action from Insight - Joining the 2 Percent Who are Getting Big Data RightStampedeCon
 
GraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph Databases
GraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph DatabasesGraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph Databases
GraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph DatabasesNeo4j
 
Making Sense of Graph Databases
Making Sense of Graph DatabasesMaking Sense of Graph Databases
Making Sense of Graph DatabasesInfiniteGraph
 
NoSQL Simplified: Schema vs. Schema-less
NoSQL Simplified: Schema vs. Schema-lessNoSQL Simplified: Schema vs. Schema-less
NoSQL Simplified: Schema vs. Schema-lessInfiniteGraph
 
Mastering Customer Data on Apache Spark
Mastering Customer Data on Apache SparkMastering Customer Data on Apache Spark
Mastering Customer Data on Apache SparkCaserta
 
GraphTalks Rome - The Italian Business Graph
GraphTalks Rome - The Italian Business GraphGraphTalks Rome - The Italian Business Graph
GraphTalks Rome - The Italian Business GraphNeo4j
 
Neo4j GraphTalks - Einführung in Graphdatenbanken
Neo4j GraphTalks - Einführung in GraphdatenbankenNeo4j GraphTalks - Einführung in Graphdatenbanken
Neo4j GraphTalks - Einführung in GraphdatenbankenNeo4j
 
The Five Graphs of Finance - Philip Rathle and Emil Eifrem @ GraphConnect NY ...
The Five Graphs of Finance - Philip Rathle and Emil Eifrem @ GraphConnect NY ...The Five Graphs of Finance - Philip Rathle and Emil Eifrem @ GraphConnect NY ...
The Five Graphs of Finance - Philip Rathle and Emil Eifrem @ GraphConnect NY ...Neo4j
 
RDBMS to Graphs
RDBMS to GraphsRDBMS to Graphs
RDBMS to GraphsNeo4j
 
Graphs in Action: In-depth look at Neo4j in Production
Graphs in Action: In-depth look at Neo4j in ProductionGraphs in Action: In-depth look at Neo4j in Production
Graphs in Action: In-depth look at Neo4j in ProductionNeo4j
 
Einstieg in Neo4j Graph Data Science
Einstieg in Neo4j Graph Data ScienceEinstieg in Neo4j Graph Data Science
Einstieg in Neo4j Graph Data ScienceNeo4j
 

Mais procurados (20)

Graphdatenbank Neo4j: Konzept, Positionierung, Status Region DACH - Bruno Un...
 Graphdatenbank Neo4j: Konzept, Positionierung, Status Region DACH - Bruno Un... Graphdatenbank Neo4j: Konzept, Positionierung, Status Region DACH - Bruno Un...
Graphdatenbank Neo4j: Konzept, Positionierung, Status Region DACH - Bruno Un...
 
Graphs in Action
Graphs in ActionGraphs in Action
Graphs in Action
 
Introducing Neo4j
Introducing Neo4jIntroducing Neo4j
Introducing Neo4j
 
Bigdata and ai in p2 p industry: Knowledge graph and inference
Bigdata and ai in p2 p industry:  Knowledge graph and inferenceBigdata and ai in p2 p industry:  Knowledge graph and inference
Bigdata and ai in p2 p industry: Knowledge graph and inference
 
Introduction to Neo4j for the Emirates & Bahrain
Introduction to Neo4j for the Emirates & BahrainIntroduction to Neo4j for the Emirates & Bahrain
Introduction to Neo4j for the Emirates & Bahrain
 
The Graph Database Universe: Neo4j Overview
The Graph Database Universe: Neo4j OverviewThe Graph Database Universe: Neo4j Overview
The Graph Database Universe: Neo4j Overview
 
GraphTalk Berlin - Einführung in Graphdatenbanken
GraphTalk Berlin - Einführung in GraphdatenbankenGraphTalk Berlin - Einführung in Graphdatenbanken
GraphTalk Berlin - Einführung in Graphdatenbanken
 
Webinar: RDBMS to Graphs
Webinar: RDBMS to GraphsWebinar: RDBMS to Graphs
Webinar: RDBMS to Graphs
 
Introduction to Graph databases and Neo4j (by Stefan Armbruster)
Introduction to Graph databases and Neo4j (by Stefan Armbruster)Introduction to Graph databases and Neo4j (by Stefan Armbruster)
Introduction to Graph databases and Neo4j (by Stefan Armbruster)
 
Action from Insight - Joining the 2 Percent Who are Getting Big Data Right
Action from Insight - Joining the 2 Percent Who are Getting Big Data RightAction from Insight - Joining the 2 Percent Who are Getting Big Data Right
Action from Insight - Joining the 2 Percent Who are Getting Big Data Right
 
GraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph Databases
GraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph DatabasesGraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph Databases
GraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph Databases
 
Making Sense of Graph Databases
Making Sense of Graph DatabasesMaking Sense of Graph Databases
Making Sense of Graph Databases
 
NoSQL Simplified: Schema vs. Schema-less
NoSQL Simplified: Schema vs. Schema-lessNoSQL Simplified: Schema vs. Schema-less
NoSQL Simplified: Schema vs. Schema-less
 
Mastering Customer Data on Apache Spark
Mastering Customer Data on Apache SparkMastering Customer Data on Apache Spark
Mastering Customer Data on Apache Spark
 
GraphTalks Rome - The Italian Business Graph
GraphTalks Rome - The Italian Business GraphGraphTalks Rome - The Italian Business Graph
GraphTalks Rome - The Italian Business Graph
 
Neo4j GraphTalks - Einführung in Graphdatenbanken
Neo4j GraphTalks - Einführung in GraphdatenbankenNeo4j GraphTalks - Einführung in Graphdatenbanken
Neo4j GraphTalks - Einführung in Graphdatenbanken
 
The Five Graphs of Finance - Philip Rathle and Emil Eifrem @ GraphConnect NY ...
The Five Graphs of Finance - Philip Rathle and Emil Eifrem @ GraphConnect NY ...The Five Graphs of Finance - Philip Rathle and Emil Eifrem @ GraphConnect NY ...
The Five Graphs of Finance - Philip Rathle and Emil Eifrem @ GraphConnect NY ...
 
RDBMS to Graphs
RDBMS to GraphsRDBMS to Graphs
RDBMS to Graphs
 
Graphs in Action: In-depth look at Neo4j in Production
Graphs in Action: In-depth look at Neo4j in ProductionGraphs in Action: In-depth look at Neo4j in Production
Graphs in Action: In-depth look at Neo4j in Production
 
Einstieg in Neo4j Graph Data Science
Einstieg in Neo4j Graph Data ScienceEinstieg in Neo4j Graph Data Science
Einstieg in Neo4j Graph Data Science
 

Destaque

Using a Graph Database for Next-Gen MDM
Using a Graph Database for Next-Gen MDMUsing a Graph Database for Next-Gen MDM
Using a Graph Database for Next-Gen MDMNeo4j
 
Relational to Big Graph
Relational to Big GraphRelational to Big Graph
Relational to Big GraphNeo4j
 
Natural Language Processing with Graphs
Natural Language Processing with GraphsNatural Language Processing with Graphs
Natural Language Processing with GraphsNeo4j
 
Importing Data into Neo4j quickly and easily - StackOverflow
Importing Data into Neo4j quickly and easily - StackOverflowImporting Data into Neo4j quickly and easily - StackOverflow
Importing Data into Neo4j quickly and easily - StackOverflowNeo4j
 
Neo4j the Anti Crime Database
Neo4j the Anti Crime DatabaseNeo4j the Anti Crime Database
Neo4j the Anti Crime DatabaseNeo4j
 
Fraud Detection with Neo4j
Fraud Detection with Neo4jFraud Detection with Neo4j
Fraud Detection with Neo4jNeo4j
 
An overview of Neo4j Internals
An overview of Neo4j InternalsAn overview of Neo4j Internals
An overview of Neo4j InternalsTobias Lindaaker
 
Relational to Graph - Import
Relational to Graph - ImportRelational to Graph - Import
Relational to Graph - ImportNeo4j
 
Introduction to Graph Databases
Introduction to Graph DatabasesIntroduction to Graph Databases
Introduction to Graph DatabasesMax De Marzi
 
Neo4j Import Webinar
Neo4j Import WebinarNeo4j Import Webinar
Neo4j Import WebinarNeo4j
 
Using neo4j for enterprise metadata requirements
Using neo4j for enterprise metadata requirementsUsing neo4j for enterprise metadata requirements
Using neo4j for enterprise metadata requirementsNeo4j
 
Neo4j Introduction - Game of Thrones
Neo4j Introduction  - Game of ThronesNeo4j Introduction  - Game of Thrones
Neo4j Introduction - Game of ThronesNeo4j
 
New opportunities for connected data : Neo4j the graph database
New opportunities for connected data : Neo4j the graph databaseNew opportunities for connected data : Neo4j the graph database
New opportunities for connected data : Neo4j the graph databaseCédric Fauvet
 
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 & Neo4jNeo4j
 
Unlocking Success in the 3 Stages of Master Data Management
Unlocking Success in the 3 Stages of Master Data ManagementUnlocking Success in the 3 Stages of Master Data Management
Unlocking Success in the 3 Stages of Master Data ManagementPerficient, Inc.
 
GraphConnect 2014 SF: The Business Graph
GraphConnect 2014 SF: The Business GraphGraphConnect 2014 SF: The Business Graph
GraphConnect 2014 SF: The Business GraphNeo4j
 
Graph your business
Graph your businessGraph your business
Graph your businessNeo4j
 
Transparency One : La (re)découverte de la chaîne d'approvisionnement
Transparency One : La (re)découverte de la chaîne d'approvisionnementTransparency One : La (re)découverte de la chaîne d'approvisionnement
Transparency One : La (re)découverte de la chaîne d'approvisionnementNeo4j
 
Metadata and Access Control
Metadata and Access ControlMetadata and Access Control
Metadata and Access ControlNeo4j
 

Destaque (20)

Using a Graph Database for Next-Gen MDM
Using a Graph Database for Next-Gen MDMUsing a Graph Database for Next-Gen MDM
Using a Graph Database for Next-Gen MDM
 
Relational to Big Graph
Relational to Big GraphRelational to Big Graph
Relational to Big Graph
 
Natural Language Processing with Graphs
Natural Language Processing with GraphsNatural Language Processing with Graphs
Natural Language Processing with Graphs
 
Importing Data into Neo4j quickly and easily - StackOverflow
Importing Data into Neo4j quickly and easily - StackOverflowImporting Data into Neo4j quickly and easily - StackOverflow
Importing Data into Neo4j quickly and easily - StackOverflow
 
Neo4j the Anti Crime Database
Neo4j the Anti Crime DatabaseNeo4j the Anti Crime Database
Neo4j the Anti Crime Database
 
Fraud Detection with Neo4j
Fraud Detection with Neo4jFraud Detection with Neo4j
Fraud Detection with Neo4j
 
An overview of Neo4j Internals
An overview of Neo4j InternalsAn overview of Neo4j Internals
An overview of Neo4j Internals
 
Relational to Graph - Import
Relational to Graph - ImportRelational to Graph - Import
Relational to Graph - Import
 
Introduction to Graph Databases
Introduction to Graph DatabasesIntroduction to Graph Databases
Introduction to Graph Databases
 
Neo4j Import Webinar
Neo4j Import WebinarNeo4j Import Webinar
Neo4j Import Webinar
 
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...
 
Using neo4j for enterprise metadata requirements
Using neo4j for enterprise metadata requirementsUsing neo4j for enterprise metadata requirements
Using neo4j for enterprise metadata requirements
 
Neo4j Introduction - Game of Thrones
Neo4j Introduction  - Game of ThronesNeo4j Introduction  - Game of Thrones
Neo4j Introduction - Game of Thrones
 
New opportunities for connected data : Neo4j the graph database
New opportunities for connected data : Neo4j the graph databaseNew opportunities for connected data : Neo4j the graph database
New opportunities for connected data : Neo4j the graph database
 
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
 
Unlocking Success in the 3 Stages of Master Data Management
Unlocking Success in the 3 Stages of Master Data ManagementUnlocking Success in the 3 Stages of Master Data Management
Unlocking Success in the 3 Stages of Master Data Management
 
GraphConnect 2014 SF: The Business Graph
GraphConnect 2014 SF: The Business GraphGraphConnect 2014 SF: The Business Graph
GraphConnect 2014 SF: The Business Graph
 
Graph your business
Graph your businessGraph your business
Graph your business
 
Transparency One : La (re)découverte de la chaîne d'approvisionnement
Transparency One : La (re)découverte de la chaîne d'approvisionnementTransparency One : La (re)découverte de la chaîne d'approvisionnement
Transparency One : La (re)découverte de la chaîne d'approvisionnement
 
Metadata and Access Control
Metadata and Access ControlMetadata and Access Control
Metadata and Access Control
 

Semelhante a Neo4j graphs in the real world - graph days d.c. - april 14, 2015

Graphs in the Real World
Graphs in the Real WorldGraphs in the Real World
Graphs in the Real WorldNeo4j
 
Cloud and business agility
Cloud and business agilityCloud and business agility
Cloud and business agilityMike ORourke
 
Connections Drive Digital Transformation
Connections Drive Digital TransformationConnections Drive Digital Transformation
Connections Drive Digital TransformationNeo4j
 
Digital Transformation and the Journey to a Highly Connected Enterprise
Digital Transformation and the Journey to a Highly Connected EnterpriseDigital Transformation and the Journey to a Highly Connected Enterprise
Digital Transformation and the Journey to a Highly Connected EnterpriseNeo4j
 
Knowledge Graphs Webinar- 11/7/2017
Knowledge Graphs Webinar- 11/7/2017Knowledge Graphs Webinar- 11/7/2017
Knowledge Graphs Webinar- 11/7/2017Neo4j
 
ZIGRAM Introduction Deck June 2019
ZIGRAM Introduction Deck June 2019ZIGRAM Introduction Deck June 2019
ZIGRAM Introduction Deck June 2019ZIGRAM
 
EVOLVING PATTERNS IN BIG DATA - NEIL AVERY
EVOLVING PATTERNS IN BIG DATA - NEIL AVERYEVOLVING PATTERNS IN BIG DATA - NEIL AVERY
EVOLVING PATTERNS IN BIG DATA - NEIL AVERYBig Data Week
 
Becoming a Customer Centric Bank
Becoming a Customer Centric BankBecoming a Customer Centric Bank
Becoming a Customer Centric BankNG DATA
 
Big Data and MDM altogether: the winning association
Big Data and MDM altogether: the winning associationBig Data and MDM altogether: the winning association
Big Data and MDM altogether: the winning associationJean-Michel Franco
 
Big data
Big dataBig data
Big dataRiya
 
Five FinTech Trends in 2018
Five FinTech Trends in 2018Five FinTech Trends in 2018
Five FinTech Trends in 2018PortfolioQuest
 
Smarter analytics101 v2.0.1
Smarter analytics101 v2.0.1Smarter analytics101 v2.0.1
Smarter analytics101 v2.0.1Jenawahl
 
Ibm ofa ottawa_analytics_in_gov _campbell_robertson
Ibm  ofa ottawa_analytics_in_gov _campbell_robertsonIbm  ofa ottawa_analytics_in_gov _campbell_robertson
Ibm ofa ottawa_analytics_in_gov _campbell_robertsondawnrk
 
Ibm ofa ottawa_analytics_in_gov _campbell_robertson
Ibm  ofa ottawa_analytics_in_gov _campbell_robertsonIbm  ofa ottawa_analytics_in_gov _campbell_robertson
Ibm ofa ottawa_analytics_in_gov _campbell_robertsondawnrk
 
Ibm ofa ottawa_analytics_in_gov _campbell_robertson
Ibm  ofa ottawa_analytics_in_gov _campbell_robertsonIbm  ofa ottawa_analytics_in_gov _campbell_robertson
Ibm ofa ottawa_analytics_in_gov _campbell_robertsondawnrk
 
Big Data, Big Investment
Big Data, Big InvestmentBig Data, Big Investment
Big Data, Big InvestmentGGV Capital
 
Comment aider les entreprises à trouver et implémenter de nouvelles sources d...
Comment aider les entreprises à trouver et implémenter de nouvelles sources d...Comment aider les entreprises à trouver et implémenter de nouvelles sources d...
Comment aider les entreprises à trouver et implémenter de nouvelles sources d...TelecomValley
 
Relying on Data for Strategic Decision-Making--Financial Services Experience
Relying on Data for Strategic Decision-Making--Financial Services ExperienceRelying on Data for Strategic Decision-Making--Financial Services Experience
Relying on Data for Strategic Decision-Making--Financial Services ExperienceCloudera, Inc.
 
Analytics: What is it really and how can it help my organization?
Analytics: What is it really and how can it help my organization?Analytics: What is it really and how can it help my organization?
Analytics: What is it really and how can it help my organization?SAS Canada
 

Semelhante a Neo4j graphs in the real world - graph days d.c. - april 14, 2015 (20)

Graphs in the Real World
Graphs in the Real WorldGraphs in the Real World
Graphs in the Real World
 
Big Data: How does it fit in your data strategy?
Big Data: How does it fit in your data strategy?Big Data: How does it fit in your data strategy?
Big Data: How does it fit in your data strategy?
 
Cloud and business agility
Cloud and business agilityCloud and business agility
Cloud and business agility
 
Connections Drive Digital Transformation
Connections Drive Digital TransformationConnections Drive Digital Transformation
Connections Drive Digital Transformation
 
Digital Transformation and the Journey to a Highly Connected Enterprise
Digital Transformation and the Journey to a Highly Connected EnterpriseDigital Transformation and the Journey to a Highly Connected Enterprise
Digital Transformation and the Journey to a Highly Connected Enterprise
 
Knowledge Graphs Webinar- 11/7/2017
Knowledge Graphs Webinar- 11/7/2017Knowledge Graphs Webinar- 11/7/2017
Knowledge Graphs Webinar- 11/7/2017
 
ZIGRAM Introduction Deck June 2019
ZIGRAM Introduction Deck June 2019ZIGRAM Introduction Deck June 2019
ZIGRAM Introduction Deck June 2019
 
EVOLVING PATTERNS IN BIG DATA - NEIL AVERY
EVOLVING PATTERNS IN BIG DATA - NEIL AVERYEVOLVING PATTERNS IN BIG DATA - NEIL AVERY
EVOLVING PATTERNS IN BIG DATA - NEIL AVERY
 
Becoming a Customer Centric Bank
Becoming a Customer Centric BankBecoming a Customer Centric Bank
Becoming a Customer Centric Bank
 
Big Data and MDM altogether: the winning association
Big Data and MDM altogether: the winning associationBig Data and MDM altogether: the winning association
Big Data and MDM altogether: the winning association
 
Big data
Big dataBig data
Big data
 
Five FinTech Trends in 2018
Five FinTech Trends in 2018Five FinTech Trends in 2018
Five FinTech Trends in 2018
 
Smarter analytics101 v2.0.1
Smarter analytics101 v2.0.1Smarter analytics101 v2.0.1
Smarter analytics101 v2.0.1
 
Ibm ofa ottawa_analytics_in_gov _campbell_robertson
Ibm  ofa ottawa_analytics_in_gov _campbell_robertsonIbm  ofa ottawa_analytics_in_gov _campbell_robertson
Ibm ofa ottawa_analytics_in_gov _campbell_robertson
 
Ibm ofa ottawa_analytics_in_gov _campbell_robertson
Ibm  ofa ottawa_analytics_in_gov _campbell_robertsonIbm  ofa ottawa_analytics_in_gov _campbell_robertson
Ibm ofa ottawa_analytics_in_gov _campbell_robertson
 
Ibm ofa ottawa_analytics_in_gov _campbell_robertson
Ibm  ofa ottawa_analytics_in_gov _campbell_robertsonIbm  ofa ottawa_analytics_in_gov _campbell_robertson
Ibm ofa ottawa_analytics_in_gov _campbell_robertson
 
Big Data, Big Investment
Big Data, Big InvestmentBig Data, Big Investment
Big Data, Big Investment
 
Comment aider les entreprises à trouver et implémenter de nouvelles sources d...
Comment aider les entreprises à trouver et implémenter de nouvelles sources d...Comment aider les entreprises à trouver et implémenter de nouvelles sources d...
Comment aider les entreprises à trouver et implémenter de nouvelles sources d...
 
Relying on Data for Strategic Decision-Making--Financial Services Experience
Relying on Data for Strategic Decision-Making--Financial Services ExperienceRelying on Data for Strategic Decision-Making--Financial Services Experience
Relying on Data for Strategic Decision-Making--Financial Services Experience
 
Analytics: What is it really and how can it help my organization?
Analytics: What is it really and how can it help my organization?Analytics: What is it really and how can it help my organization?
Analytics: What is it really and how can it help my organization?
 

Mais de Neo4j

Connecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfConnecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfNeo4j
 
ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...
ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...
ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...Neo4j
 
BBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafos
BBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafosBBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafos
BBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafosNeo4j
 
Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...
Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...
Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...Neo4j
 
GraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4j
GraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4jGraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4j
GraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4jNeo4j
 
Neo4j_Exploring the Impact of Graph Technology on Financial Services.pdf
Neo4j_Exploring the Impact of Graph Technology on Financial Services.pdfNeo4j_Exploring the Impact of Graph Technology on Financial Services.pdf
Neo4j_Exploring the Impact of Graph Technology on Financial Services.pdfNeo4j
 
Rabobank_Exploring the Impact of Graph Technology on Financial Services.pdf
Rabobank_Exploring the Impact of Graph Technology on Financial Services.pdfRabobank_Exploring the Impact of Graph Technology on Financial Services.pdf
Rabobank_Exploring the Impact of Graph Technology on Financial Services.pdfNeo4j
 
Webinar - IA generativa e grafi Neo4j: RAG time!
Webinar - IA generativa e grafi Neo4j: RAG time!Webinar - IA generativa e grafi Neo4j: RAG time!
Webinar - IA generativa e grafi Neo4j: RAG time!Neo4j
 
IA Generativa y Grafos de Neo4j: RAG time
IA Generativa y Grafos de Neo4j: RAG timeIA Generativa y Grafos de Neo4j: RAG time
IA Generativa y Grafos de Neo4j: RAG timeNeo4j
 
Neo4j: Data Engineering for RAG (retrieval augmented generation)
Neo4j: Data Engineering for RAG (retrieval augmented generation)Neo4j: Data Engineering for RAG (retrieval augmented generation)
Neo4j: Data Engineering for RAG (retrieval augmented generation)Neo4j
 
Neo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdf
Neo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdfNeo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdf
Neo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdfNeo4j
 
Enabling GenAI Breakthroughs with Knowledge Graphs
Enabling GenAI Breakthroughs with Knowledge GraphsEnabling GenAI Breakthroughs with Knowledge Graphs
Enabling GenAI Breakthroughs with Knowledge GraphsNeo4j
 
Neo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdf
Neo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdfNeo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdf
Neo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdfNeo4j
 
Neo4j Jesus Barrasa The Art of the Possible with Graph
Neo4j Jesus Barrasa The Art of the Possible with GraphNeo4j Jesus Barrasa The Art of the Possible with Graph
Neo4j Jesus Barrasa The Art of the Possible with GraphNeo4j
 
SWIFT: Maintaining Critical Standards in the Financial Services Industry with...
SWIFT: Maintaining Critical Standards in the Financial Services Industry with...SWIFT: Maintaining Critical Standards in the Financial Services Industry with...
SWIFT: Maintaining Critical Standards in the Financial Services Industry with...Neo4j
 
Deloitte & Red Cross: Talk to your data with Knowledge-enriched Generative AI
Deloitte & Red Cross: Talk to your data with Knowledge-enriched Generative AIDeloitte & Red Cross: Talk to your data with Knowledge-enriched Generative AI
Deloitte & Red Cross: Talk to your data with Knowledge-enriched Generative AINeo4j
 
Ingka Digital: Linked Metadata by Design
Ingka Digital: Linked Metadata by DesignIngka Digital: Linked Metadata by Design
Ingka Digital: Linked Metadata by DesignNeo4j
 
Discover Neo4j Aura_ The Future of Graph Database-as-a-Service Workshop_3.13.24
Discover Neo4j Aura_ The Future of Graph Database-as-a-Service Workshop_3.13.24Discover Neo4j Aura_ The Future of Graph Database-as-a-Service Workshop_3.13.24
Discover Neo4j Aura_ The Future of Graph Database-as-a-Service Workshop_3.13.24Neo4j
 
GraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptx
GraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptxGraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptx
GraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptxNeo4j
 
Emil Eifrem at GraphSummit Copenhagen 2024 - The Art of the Possible.pptx
Emil Eifrem at GraphSummit Copenhagen 2024 - The Art of the Possible.pptxEmil Eifrem at GraphSummit Copenhagen 2024 - The Art of the Possible.pptx
Emil Eifrem at GraphSummit Copenhagen 2024 - The Art of the Possible.pptxNeo4j
 

Mais de Neo4j (20)

Connecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfConnecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdf
 
ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...
ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...
ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...
 
BBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafos
BBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafosBBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafos
BBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafos
 
Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...
Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...
Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...
 
GraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4j
GraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4jGraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4j
GraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4j
 
Neo4j_Exploring the Impact of Graph Technology on Financial Services.pdf
Neo4j_Exploring the Impact of Graph Technology on Financial Services.pdfNeo4j_Exploring the Impact of Graph Technology on Financial Services.pdf
Neo4j_Exploring the Impact of Graph Technology on Financial Services.pdf
 
Rabobank_Exploring the Impact of Graph Technology on Financial Services.pdf
Rabobank_Exploring the Impact of Graph Technology on Financial Services.pdfRabobank_Exploring the Impact of Graph Technology on Financial Services.pdf
Rabobank_Exploring the Impact of Graph Technology on Financial Services.pdf
 
Webinar - IA generativa e grafi Neo4j: RAG time!
Webinar - IA generativa e grafi Neo4j: RAG time!Webinar - IA generativa e grafi Neo4j: RAG time!
Webinar - IA generativa e grafi Neo4j: RAG time!
 
IA Generativa y Grafos de Neo4j: RAG time
IA Generativa y Grafos de Neo4j: RAG timeIA Generativa y Grafos de Neo4j: RAG time
IA Generativa y Grafos de Neo4j: RAG time
 
Neo4j: Data Engineering for RAG (retrieval augmented generation)
Neo4j: Data Engineering for RAG (retrieval augmented generation)Neo4j: Data Engineering for RAG (retrieval augmented generation)
Neo4j: Data Engineering for RAG (retrieval augmented generation)
 
Neo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdf
Neo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdfNeo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdf
Neo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdf
 
Enabling GenAI Breakthroughs with Knowledge Graphs
Enabling GenAI Breakthroughs with Knowledge GraphsEnabling GenAI Breakthroughs with Knowledge Graphs
Enabling GenAI Breakthroughs with Knowledge Graphs
 
Neo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdf
Neo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdfNeo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdf
Neo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdf
 
Neo4j Jesus Barrasa The Art of the Possible with Graph
Neo4j Jesus Barrasa The Art of the Possible with GraphNeo4j Jesus Barrasa The Art of the Possible with Graph
Neo4j Jesus Barrasa The Art of the Possible with Graph
 
SWIFT: Maintaining Critical Standards in the Financial Services Industry with...
SWIFT: Maintaining Critical Standards in the Financial Services Industry with...SWIFT: Maintaining Critical Standards in the Financial Services Industry with...
SWIFT: Maintaining Critical Standards in the Financial Services Industry with...
 
Deloitte & Red Cross: Talk to your data with Knowledge-enriched Generative AI
Deloitte & Red Cross: Talk to your data with Knowledge-enriched Generative AIDeloitte & Red Cross: Talk to your data with Knowledge-enriched Generative AI
Deloitte & Red Cross: Talk to your data with Knowledge-enriched Generative AI
 
Ingka Digital: Linked Metadata by Design
Ingka Digital: Linked Metadata by DesignIngka Digital: Linked Metadata by Design
Ingka Digital: Linked Metadata by Design
 
Discover Neo4j Aura_ The Future of Graph Database-as-a-Service Workshop_3.13.24
Discover Neo4j Aura_ The Future of Graph Database-as-a-Service Workshop_3.13.24Discover Neo4j Aura_ The Future of Graph Database-as-a-Service Workshop_3.13.24
Discover Neo4j Aura_ The Future of Graph Database-as-a-Service Workshop_3.13.24
 
GraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptx
GraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptxGraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptx
GraphSummit Copenhagen 2024 - Neo4j Vision and Roadmap.pptx
 
Emil Eifrem at GraphSummit Copenhagen 2024 - The Art of the Possible.pptx
Emil Eifrem at GraphSummit Copenhagen 2024 - The Art of the Possible.pptxEmil Eifrem at GraphSummit Copenhagen 2024 - The Art of the Possible.pptx
Emil Eifrem at GraphSummit Copenhagen 2024 - The Art of the Possible.pptx
 

Último

OpenChain Education Work Group Monthly Meeting - 2024-04-10 - Full Recording
OpenChain Education Work Group Monthly Meeting - 2024-04-10 - Full RecordingOpenChain Education Work Group Monthly Meeting - 2024-04-10 - Full Recording
OpenChain Education Work Group Monthly Meeting - 2024-04-10 - Full RecordingShane Coughlan
 
Best Angular 17 Classroom & Online training - Naresh IT
Best Angular 17 Classroom & Online training - Naresh ITBest Angular 17 Classroom & Online training - Naresh IT
Best Angular 17 Classroom & Online training - Naresh ITmanoharjgpsolutions
 
SensoDat: Simulation-based Sensor Dataset of Self-driving Cars
SensoDat: Simulation-based Sensor Dataset of Self-driving CarsSensoDat: Simulation-based Sensor Dataset of Self-driving Cars
SensoDat: Simulation-based Sensor Dataset of Self-driving CarsChristian Birchler
 
The Role of IoT and Sensor Technology in Cargo Cloud Solutions.pptx
The Role of IoT and Sensor Technology in Cargo Cloud Solutions.pptxThe Role of IoT and Sensor Technology in Cargo Cloud Solutions.pptx
The Role of IoT and Sensor Technology in Cargo Cloud Solutions.pptxRTS corp
 
What’s New in VictoriaMetrics: Q1 2024 Updates
What’s New in VictoriaMetrics: Q1 2024 UpdatesWhat’s New in VictoriaMetrics: Q1 2024 Updates
What’s New in VictoriaMetrics: Q1 2024 UpdatesVictoriaMetrics
 
OpenChain AI Study Group - Europe and Asia Recap - 2024-04-11 - Full Recording
OpenChain AI Study Group - Europe and Asia Recap - 2024-04-11 - Full RecordingOpenChain AI Study Group - Europe and Asia Recap - 2024-04-11 - Full Recording
OpenChain AI Study Group - Europe and Asia Recap - 2024-04-11 - Full RecordingShane Coughlan
 
SAM Training Session - How to use EXCEL ?
SAM Training Session - How to use EXCEL ?SAM Training Session - How to use EXCEL ?
SAM Training Session - How to use EXCEL ?Alexandre Beguel
 
Amazon Bedrock in Action - presentation of the Bedrock's capabilities
Amazon Bedrock in Action - presentation of the Bedrock's capabilitiesAmazon Bedrock in Action - presentation of the Bedrock's capabilities
Amazon Bedrock in Action - presentation of the Bedrock's capabilitiesKrzysztofKkol1
 
Ronisha Informatics Private Limited Catalogue
Ronisha Informatics Private Limited CatalogueRonisha Informatics Private Limited Catalogue
Ronisha Informatics Private Limited Catalogueitservices996
 
JavaLand 2024 - Going serverless with Quarkus GraalVM native images and AWS L...
JavaLand 2024 - Going serverless with Quarkus GraalVM native images and AWS L...JavaLand 2024 - Going serverless with Quarkus GraalVM native images and AWS L...
JavaLand 2024 - Going serverless with Quarkus GraalVM native images and AWS L...Bert Jan Schrijver
 
Osi security architecture in network.pptx
Osi security architecture in network.pptxOsi security architecture in network.pptx
Osi security architecture in network.pptxVinzoCenzo
 
Understanding Flamingo - DeepMind's VLM Architecture
Understanding Flamingo - DeepMind's VLM ArchitectureUnderstanding Flamingo - DeepMind's VLM Architecture
Understanding Flamingo - DeepMind's VLM Architecturerahul_net
 
Revolutionizing the Digital Transformation Office - Leveraging OnePlan’s AI a...
Revolutionizing the Digital Transformation Office - Leveraging OnePlan’s AI a...Revolutionizing the Digital Transformation Office - Leveraging OnePlan’s AI a...
Revolutionizing the Digital Transformation Office - Leveraging OnePlan’s AI a...OnePlan Solutions
 
UI5ers live - Custom Controls wrapping 3rd-party libs.pptx
UI5ers live - Custom Controls wrapping 3rd-party libs.pptxUI5ers live - Custom Controls wrapping 3rd-party libs.pptx
UI5ers live - Custom Controls wrapping 3rd-party libs.pptxAndreas Kunz
 
Comparing Linux OS Image Update Models - EOSS 2024.pdf
Comparing Linux OS Image Update Models - EOSS 2024.pdfComparing Linux OS Image Update Models - EOSS 2024.pdf
Comparing Linux OS Image Update Models - EOSS 2024.pdfDrew Moseley
 
Machine Learning Software Engineering Patterns and Their Engineering
Machine Learning Software Engineering Patterns and Their EngineeringMachine Learning Software Engineering Patterns and Their Engineering
Machine Learning Software Engineering Patterns and Their EngineeringHironori Washizaki
 
Introduction to Firebase Workshop Slides
Introduction to Firebase Workshop SlidesIntroduction to Firebase Workshop Slides
Introduction to Firebase Workshop Slidesvaideheekore1
 
eSoftTools IMAP Backup Software and migration tools
eSoftTools IMAP Backup Software and migration toolseSoftTools IMAP Backup Software and migration tools
eSoftTools IMAP Backup Software and migration toolsosttopstonverter
 
Simplifying Microservices & Apps - The art of effortless development - Meetup...
Simplifying Microservices & Apps - The art of effortless development - Meetup...Simplifying Microservices & Apps - The art of effortless development - Meetup...
Simplifying Microservices & Apps - The art of effortless development - Meetup...Rob Geurden
 
Post Quantum Cryptography – The Impact on Identity
Post Quantum Cryptography – The Impact on IdentityPost Quantum Cryptography – The Impact on Identity
Post Quantum Cryptography – The Impact on Identityteam-WIBU
 

Último (20)

OpenChain Education Work Group Monthly Meeting - 2024-04-10 - Full Recording
OpenChain Education Work Group Monthly Meeting - 2024-04-10 - Full RecordingOpenChain Education Work Group Monthly Meeting - 2024-04-10 - Full Recording
OpenChain Education Work Group Monthly Meeting - 2024-04-10 - Full Recording
 
Best Angular 17 Classroom & Online training - Naresh IT
Best Angular 17 Classroom & Online training - Naresh ITBest Angular 17 Classroom & Online training - Naresh IT
Best Angular 17 Classroom & Online training - Naresh IT
 
SensoDat: Simulation-based Sensor Dataset of Self-driving Cars
SensoDat: Simulation-based Sensor Dataset of Self-driving CarsSensoDat: Simulation-based Sensor Dataset of Self-driving Cars
SensoDat: Simulation-based Sensor Dataset of Self-driving Cars
 
The Role of IoT and Sensor Technology in Cargo Cloud Solutions.pptx
The Role of IoT and Sensor Technology in Cargo Cloud Solutions.pptxThe Role of IoT and Sensor Technology in Cargo Cloud Solutions.pptx
The Role of IoT and Sensor Technology in Cargo Cloud Solutions.pptx
 
What’s New in VictoriaMetrics: Q1 2024 Updates
What’s New in VictoriaMetrics: Q1 2024 UpdatesWhat’s New in VictoriaMetrics: Q1 2024 Updates
What’s New in VictoriaMetrics: Q1 2024 Updates
 
OpenChain AI Study Group - Europe and Asia Recap - 2024-04-11 - Full Recording
OpenChain AI Study Group - Europe and Asia Recap - 2024-04-11 - Full RecordingOpenChain AI Study Group - Europe and Asia Recap - 2024-04-11 - Full Recording
OpenChain AI Study Group - Europe and Asia Recap - 2024-04-11 - Full Recording
 
SAM Training Session - How to use EXCEL ?
SAM Training Session - How to use EXCEL ?SAM Training Session - How to use EXCEL ?
SAM Training Session - How to use EXCEL ?
 
Amazon Bedrock in Action - presentation of the Bedrock's capabilities
Amazon Bedrock in Action - presentation of the Bedrock's capabilitiesAmazon Bedrock in Action - presentation of the Bedrock's capabilities
Amazon Bedrock in Action - presentation of the Bedrock's capabilities
 
Ronisha Informatics Private Limited Catalogue
Ronisha Informatics Private Limited CatalogueRonisha Informatics Private Limited Catalogue
Ronisha Informatics Private Limited Catalogue
 
JavaLand 2024 - Going serverless with Quarkus GraalVM native images and AWS L...
JavaLand 2024 - Going serverless with Quarkus GraalVM native images and AWS L...JavaLand 2024 - Going serverless with Quarkus GraalVM native images and AWS L...
JavaLand 2024 - Going serverless with Quarkus GraalVM native images and AWS L...
 
Osi security architecture in network.pptx
Osi security architecture in network.pptxOsi security architecture in network.pptx
Osi security architecture in network.pptx
 
Understanding Flamingo - DeepMind's VLM Architecture
Understanding Flamingo - DeepMind's VLM ArchitectureUnderstanding Flamingo - DeepMind's VLM Architecture
Understanding Flamingo - DeepMind's VLM Architecture
 
Revolutionizing the Digital Transformation Office - Leveraging OnePlan’s AI a...
Revolutionizing the Digital Transformation Office - Leveraging OnePlan’s AI a...Revolutionizing the Digital Transformation Office - Leveraging OnePlan’s AI a...
Revolutionizing the Digital Transformation Office - Leveraging OnePlan’s AI a...
 
UI5ers live - Custom Controls wrapping 3rd-party libs.pptx
UI5ers live - Custom Controls wrapping 3rd-party libs.pptxUI5ers live - Custom Controls wrapping 3rd-party libs.pptx
UI5ers live - Custom Controls wrapping 3rd-party libs.pptx
 
Comparing Linux OS Image Update Models - EOSS 2024.pdf
Comparing Linux OS Image Update Models - EOSS 2024.pdfComparing Linux OS Image Update Models - EOSS 2024.pdf
Comparing Linux OS Image Update Models - EOSS 2024.pdf
 
Machine Learning Software Engineering Patterns and Their Engineering
Machine Learning Software Engineering Patterns and Their EngineeringMachine Learning Software Engineering Patterns and Their Engineering
Machine Learning Software Engineering Patterns and Their Engineering
 
Introduction to Firebase Workshop Slides
Introduction to Firebase Workshop SlidesIntroduction to Firebase Workshop Slides
Introduction to Firebase Workshop Slides
 
eSoftTools IMAP Backup Software and migration tools
eSoftTools IMAP Backup Software and migration toolseSoftTools IMAP Backup Software and migration tools
eSoftTools IMAP Backup Software and migration tools
 
Simplifying Microservices & Apps - The art of effortless development - Meetup...
Simplifying Microservices & Apps - The art of effortless development - Meetup...Simplifying Microservices & Apps - The art of effortless development - Meetup...
Simplifying Microservices & Apps - The art of effortless development - Meetup...
 
Post Quantum Cryptography – The Impact on Identity
Post Quantum Cryptography – The Impact on IdentityPost Quantum Cryptography – The Impact on Identity
Post Quantum Cryptography – The Impact on Identity
 

Neo4j graphs in the real world - graph days d.c. - april 14, 2015

  • 1. “Graphs in the Real World” Developed, deployed and battle-tested graph use-cases
  • 2. Value from Data Relationships Common Graph Database Use Cases Internal Applications Master Data Management Network and IT Operations Fraud Detection Customer-Facing Applications Real-Time Recommendations Graph-Based Search Identity and Access Management
  • 3. Graphs for Master Data Management
  • 4. MDM as a Graph What we *think* MDM is What MDM *really* is Patient Agent G.P.Surgeon Partner Insurance Patient AgentG.P.Surgeon PartnerInsurance
  • 5. Common Graphs in Master Data Management C C A AA U S S SS S USER_ACCESS CONTROLLED_BY SUBSCRIBED _BY User Customers Accounts Subscriptions VP Staff Staff StaffStaff DirectorStaffDirector Manager Manager Manager Manager Fiber Link Fiber Link Fiber Link Ocean Cable Switch Switch Router Router Service Organizational Hierarchy Product Hierarchy Network Topology / CMDB Social Network
  • 6. die Bayerische – Master Data Management Mid-size German insurer Founded in 1858 More than 500 employees Project executed by Delvin GmbH, subsidiary of die Bayerische Versicherung 360° View of the Customer
  • 7. die Bayerische SOLUTION • Complete view customer & policy information by Field Sales • Flexibly policy & customer search • Overcome scaling limitations of existing IBM DB2 system • Extend information to sales partners
  • 8. Classmates – Social network Online yearbook connecting friends from school, work and military in US and Canada Founded as Memory Lane in Seattle Develop new social networking capabilities to monetize yearbook-related offerings • Show all the people I know in a yearbook • Show yearbooks my friends appear in most often • Show sections of a yearbook that my friends appear most in • Show me other schools my friends attended
  • 9. Classmates SOLUTION Neo4j provides a robust and scalable graph database solution • 3-instance cluster with cache sharding and disaster-recovery • 18ms response time for top 4 queries • 100M nodes and 600M relationships in initial graph—including people, images, schools, yearbooks and pages • Projected to grow to 1B nodes and 6B relationships
  • 10. Source: “Growing the Elephant: Tales from an Enterprise Data Model” by Jeremy Posner (Synechron) Enterprise Data World 2015
  • 11. Graphs for Network and IT Operations Management
  • 12.
  • 13.
  • 15. The Royal Netherlands Meteorological Institute Operational Infrastructure to Collect, Record, and Manage Weather Data
  • 16. Graph Applied to Fraud Detection
  • 17. Some Examples Retail First Party Fraud • Opening many lines of credit with no intention of paying back • Accounts for $10B+ in annual losses at US banks(1) Synthetic Identities and Fraud Rings • Rings of synthetic identities committing fraud Insurance – Whiplash for Cash • Insurance scams using fake drivers, passengers and witnesses • Increase network efficiency eCommerce Fraud • Online payment fraud (1) Business Insider: http://www.businessinsider.com/how-to-use-social-networks-in-the-fight-against-first-party- fraud-2011-3
  • 18. Pros Simple Stops rookies Discrete Data Analysis Revolving Debt INVESTIGATE INVESTIGATE Number of accounts Cons False positives False negatives
  • 19. Connected Analysis Revolving Debt Number of accounts PROS Detect fraud rings Fewer false negatives
  • 20. Graph of First Party Bank Fraud Account Holder 1 Account Holder 2 Account Holder 3 SSN 2 SSN 2 Phone Numbe r 2 Credit Card Address 1 Bank Account Bank Account Bank Account Phone Numbe r 2 Credit Card Unsecured Loan Unsecured Loan
  • 22. Gartner’s Layered Fraud Prevention Approach (4) (4) http://www.gartner.com/newsroom/id/1695014 Traditional Fraud Prevention Analysis of users and their endpoints Analysis of navigation behavior and suspect patterns Analysis of anomaly behavior by channel Analysis of anomaly behavior correlated across channels Analysis of relationships to detect organized crime and collusion Layer 1 Endpoint- Centric Navigation- Centric Account- Centric Cross- Channel Entity Linking Layer 2 Layer 3 Layer 4 Layer 5 DISCRETE DATA ANALYSIS CONNECTED ANALYSIS
  • 24. Using Data Relationships for Recommendations Collaborative filtering Predict what users like based on the similarity of their behaviors, activities and preferences to others Content-based filtering Recommend items based on what users have liked in the past Movie Person Person
  • 26. “We found Neo4j to be literally thousands of times faster than our prior MySQL solution, with queries that require 10-100 times less code. Today, Neo4j provides eBay with functionality that was previously impossible.” - Volker Pacher, Senior Developer, eBay
  • 27.
  • 28.
  • 29. eBay – Real-time routing recommendations • Order from local stores • Deliveries within 90 minutes • Leverage local courier services • Calculate best route in real- time
  • 31. Curaspan – Graph-based Search Leader in patient management for discharges and referrals Manages patient referrals 4600+ health care facilities Connects providers, payers via web-based patient management platform Founded in 1999 in Newton, Massachusetts “Find a skilled nursing facility within 5 miles of the patient’s home, belonging to an eligible health care group, offering speech therapy and cardiac care, and optionally Italian language services”
  • 32. Curaspan WHERE ARE THE GRAPHS? • Permissions: Caregivers to Patient Data • Coverage: Organizational Relationships • Provider Services & Skills • Service Areas: Location Graph
  • 33. Graphs for Identity and Access Management
  • 34. Identity & Access Management • Based in Oslo • #1 in Nordics • #10 in world
  • 35. Oslo-based Telco #1 in Nordic countries #10 in world Mission-critical system Availability and responsiveness critical to customer satisfaction Telenor – Identity & Access Management
  • 36. Source: Using Graph Databases in Real-Time to Solve Resource Authorization at Telenor - Sebastian Verheughe @ GraphConnect London 2013
  • 37.
  • 38.
  • 39. Value from Data Relationships Common Graph Database Use Cases Internal Applications Master Data Management Network and IT Operations Fraud Detection Customer-Facing Applications Real-Time Recommendations Graph-Based Search Identity and Access Management
  • 40. Graphs in the Real World March 2015

Notas do Editor

  1. Field sales unit needed easy access to policies and customer data in variety of ways Growing business needed growing support Existing IBM DB2 system unable to meet performance requirements as it scaled Needed 24/7 system for sales unit outside the company
  2. Scale: Neo4j can handle 34B nodes and 34B relationships
  3. Fraudsters have gotten smart  in order to pull off large scam or theft, they coordinate multiple bits of activity within shaded area.
  4. Ten people collude to commit insurance fraud, five false accidents are staged Assuming an average claim of $40K per injured person and $5K per car, the ring can claim up to $1.6M for 40 people injured! where each person plays the role of the driver once, a witness once and a passenger three times.
  5. Need to include all approaches to catch rookies and experienced fraudsters
  6. Can do one or both but able to do more: jump up category trees, etc.
  7. Slowest query on MySQL took longer than their fastest delivery
  8. Discharge nurses and intake coordinators: Met fast, real-time performance demands Supported queries span multiple hierarchies including provider and employee-permissions graphs Improved data model to handle adding more dimensions to the data such as insurance networks, service areas and care organizations Greatly simplified queries, simplifying multi-page SQL statements into one Neo4j function Improve poor performance of Oracle solution Support more complexity including granular, role-based access control Different roles use the tool and different roles able to see different things Need a smart search – not just searching for a keyword – data model according to natural structure and then exposing for search gives you enormous power when searching