SlideShare uma empresa Scribd logo
1 de 29
Baixar para ler offline
1
Einführung in Neo4j
2
• Die primären Anwendungsfälle von Graphdatenbanken
• Die ‚Secret Sauce‘ von Neo4j, die diese möglich machen
• Die Visualisierung von Graphen
• Einfach mit Neo4j loslegen, aber wie?
Who am I … Andrew Frei
3
(Andrew) -[:LIVES_NEAR]->(Zurich)
(Andrew) -[:HAS_SHOESIZE]-> (47)
(Andrew) -[:IS_TODAYS]-> (host)
(Andrew) -[:LOVES]-> (Neo4j)
(Andrew) -[:LOVES_SELLING]-> (Neo4j)
Tagline: Supporting Companies to 'Connect the Dots' with Graph Databases & Analytics
Contact: linkedin.com/in/andrew-frei/ and andrew.frei@neo4j.com
4
The way we use to work; look at it…..
5
Swap Glasses…
6
Look at it again, now as a graph
7
The Graph Problem Problem
Many organizations don’t realize that they have a graph problem.
Labeled Property Graph Model
88
• Nodes – Represent objects
in the graph
DRIVES
Labeled Property Graph Model
MARRIED TO
LIVES WITH
OW
NS
99
• Nodes – Represent objects
in the graph
• Relationship – Relate
nodes by type and direction
DRIVES
name: “Dan”
born: May 29, 1970
twitter: “@dan”
name: “Ann”
born: Dec 5, 1975
since:
Jan 10, 2011
brand: “Volvo”
model: “V70”
Latitude: 37.5629900°
Longitude: -122.3255300°
Labeled Property Graph Model
MARRIED TO
LIVES WITH
OW
NS
1010
• Nodes – Represent objects
in the graph
• Relationship – Relate
nodes by type and direction
• Property – Name-value
pairs that can go on nodes
and relationships
CAR
DRIVES
name: “Dan”
born: May 29, 1970
twitter: “@dan”
name: “Ann”
born: Dec 5, 1975
since:
Jan 10, 2011
brand: “Volvo”
model: “V70”
Latitude: 37.5629900°
Longitude: -122.3255300°
Labeled Property Graph Model
MARRIED TO
LIVES WITH
OW
NS
PERSON PERSON
1111
• Nodes – Represent objects
in the graph
• Relationship – Relate
nodes by type and direction
• Property – Name-value
pairs that can go on nodes
and relationships
• Label – Group nodes and
shape the domain
The Whiteboard Model Is the Physical Model
13
Industries - Use Cases
Telco & Utilities
Banks &
Insurers, Gov’t
Media, Software & IT
companies
Life Sciences &
Pharma
Manufacturing
& Logistics
eCommerce, other
industries
Connected Data - Use Cases
Network &
IT Operations
Fraud
Detection
Identity & Access
Management
Knowledge
Graph
Master Data
Management
Real-Time
Recommendations
15
Adobe Behance
Social Network of 10M
Graphic Artists
Background
● Social network of 10M graphic artists
● Peer-to-peer evaluation of art and works-in-progress
● Job sourcing site for creatives
● Massive, millions of updates (reads & writes) to Activity Feed
● 150 Mongos to 48 Cassandras to 3 Neo4j’s!
Business Problem
● Artists subscribe, appreciate and curate “galleries” of works of their own
and from other artists
● Activities Feed is how everyone receives updates
● 1st implementation was 150 MongoDB instances
● 2nd implementation shrunk to 48 Cassandras, but it was still too slow and
required heavy IT overhead
Solution and Benefits
● 3rd implementation shrunk to 3 Neo4j instances
● Saved over $500k in annual AWS fees
● Reduced data footprint from 50TB to 40GB
● Significantly easier to introduce new features like, “New projects in your
Network”
17
Dun & Bradstreet
Neo4j for Tracking Beneficial
Ownership
Background
● Regulations and requirements around beneficial
ownership
● Needed to let B2B clients book new business promptly
via accelerated due diligence investigations
Business Problem
● Investigations call for highly trained staff, and this activity is
hard to scale. A single request might tie up key people for
10-15 days, resulting in lost revenue
Solution and Benefits
● Use Neo4j to quickly query historic relationships between
business owners and companies
● Query responses take milliseconds versus days of skilled
manual research
ICIJ Panama Papers
Fraud Detection /
Graph-Based Search
Background
● International investigative team specializing in
cross-border crime, corruption and accountability of
power
Business Problem
● Find relationships between people, accounts, shell companies
and offshore accounts
● Biggest “Snowden-Style” document leak ever; 11.5 million
documents, 2.6TB of data
Solution and Benefits
● Pulitzer Prize winning investigation resulted in robust
coverage of fraud and corruption
● PM of Iceland resigned, exposed Putin, Prime Ministers,
gangsters, celebrities (Messi) - Trials are ongoing
How Neo4j Fits — Common Architecture Patterns
From Disparate Silos
To Cross-Silo Connections
From Tabular Data
To Connected Data
From Data Lake Analytics
to Real-Time Operations
for Graph Data Science™
Neo4j Graph Data
Science Library
Scalable Graph Algorithms
& Analytics Workspace
Native Graph
Creation & Persistence
Neo4j
Database
Visual Graph Exploration
& Prototyping
Neo4j
Bloom
Practical Integrated Intuitive
• Degree Centrality
• Closeness Centrality
• Harmonic Centrality
• Betweenness Centrality & Approx.
• PageRank
• Personalized PageRank
• ArticleRank
• Eigenvector Centrality
• Triangle Count
• Clustering Coefficients
• Connected Components (Union Find)
• Strongly Connected Components
• Label Propagation
• Louvain Modularity
• Balanced Triad (identification)
50+ Graph Algorithms in Neo4j
• Shortest Path
• Single-Source Shortest Path
• All Pairs Shortest Path
• A* Shortest Path
• Yen’s K Shortest Path
• Minimum Weight Spanning Tree
• K-Spanning Tree (MST)
• Random Walk
• Breadth & Depth First Search
• Triangle Count
• Local Clustering Coefficient
• Connected Components (Union Find)
• Strongly Connected Components
• Label Propagation
• Louvain Modularity
• K-1 Coloring
• Modularity Optimization
• Euclidean Distance
• Cosine Similarity
• Node Similarity (Jaccard)
• Overlap Similarity
• Pearson Similarity
• Approximate KNN
Pathfinding
& Search
Centrality /
Importance
Community
Detection
Similarity
Link
Prediction
• Adamic Adar
• Common Neighbors
• Preferential Attachment
• Resource Allocations
• Same Community
• Total Neighbors
... Auxiliary Functions:
• Random
graph generation
• Graph export
• One hot encoding
• Distributions & metrics
Embeddings
• Node2Vec
• Random Projections
• GraphSAGE
Mission
23
❏ Tom Hanks is getting old(er)...
❏ We can boost his career and put him together with a few new faces. Who do
you recommend? How would you give weight to your recommendation?
24
Analytics
Tooling
Graph
Transactions
Dev.
& Admin
Graph Analytics &
Data Science
25
Applications Business Users
Native Graph Technology for Applications & Analytics
Data Analysts
Data Scientists
Drivers & APIs Discovery & Visualization
Data Integration
Developers
Admins
7/10
20/25
7/10
Top Retail Firms
Top Financial Firms
Top Software Vendors
Anyway You Like It
Neo4j - The Graph Company
The Industry’s Largest Dedicated Investment in Graphs
26
Creator of the Property
Graph and Cypher language
at the core of the GQL ISO
project
Thousands of Customers
World-Wide
HQ in Silicon Valley, offices
include London, Munich,
Paris & Malmo
Industry Leaders use Neo4j
On-Prem
DB-as-a-Service
In the Cloud
27 neo4j.com/sandbox
28
Q & A
Contact details
29
Andrew Frei
Sales Manager Switzerland & Austria
Neo4j
linkedin.com/in/andrew-frei/
andrew.frei@neo4j.com
+41 78 793 42 56
www.neo4j.com
Bruno Ungermann
Sales Manager Germany
Neo4j
linkedin.com/in/brunoungermann/
bruno.ungermann@neo4j.com
www.neo4j.com

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
 
How Graph Databases efficiently store, manage and query connected data at s...
How Graph Databases efficiently  store, manage and query  connected data at s...How Graph Databases efficiently  store, manage and query  connected data at s...
How Graph Databases efficiently store, manage and query connected data at s...jexp
 
RDBMS to Graph Webinar
RDBMS to Graph WebinarRDBMS to Graph Webinar
RDBMS to Graph WebinarNeo4j
 
Introduction: Relational to Graphs
Introduction: Relational to GraphsIntroduction: Relational to Graphs
Introduction: Relational to GraphsNeo4j
 
Graph database Use Cases
Graph database Use CasesGraph database Use Cases
Graph database Use CasesMax De Marzi
 
Intro to Graphs and Neo4j
Intro to Graphs and Neo4jIntro to Graphs and Neo4j
Intro to Graphs and Neo4jjexp
 
Intro to Cypher
Intro to CypherIntro to Cypher
Intro to CypherNeo4j
 
Intro to Neo4j Webinar
Intro to Neo4j WebinarIntro to Neo4j Webinar
Intro to Neo4j WebinarNeo4j
 
Introduction to Neo4j
Introduction to Neo4jIntroduction to Neo4j
Introduction to Neo4jNeo4j
 
Relational to Big Graph
Relational to Big GraphRelational to Big Graph
Relational to Big GraphNeo4j
 
An Introduction to NOSQL, Graph Databases and Neo4j
An Introduction to NOSQL, Graph Databases and Neo4jAn Introduction to NOSQL, Graph Databases and Neo4j
An Introduction to NOSQL, Graph Databases and Neo4jDebanjan Mahata
 
Family tree of data – provenance and neo4j
Family tree of data – provenance and neo4jFamily tree of data – provenance and neo4j
Family tree of data – provenance and neo4jM. David Allen
 
Neo4j GraphTalk Helsinki - Introduction and Graph Use Cases
Neo4j GraphTalk Helsinki - Introduction and Graph Use CasesNeo4j GraphTalk Helsinki - Introduction and Graph Use Cases
Neo4j GraphTalk Helsinki - Introduction and Graph Use CasesNeo4j
 
Graphs for Enterprise Architects
Graphs for Enterprise ArchitectsGraphs for Enterprise Architects
Graphs for Enterprise ArchitectsNeo4j
 
Neo4j – The Fastest Path to Scalable Real-Time Analytics
Neo4j – The Fastest Path to Scalable Real-Time AnalyticsNeo4j – The Fastest Path to Scalable Real-Time Analytics
Neo4j – The Fastest Path to Scalable Real-Time AnalyticsNeo4j
 
Neo4j Import Webinar
Neo4j Import WebinarNeo4j Import Webinar
Neo4j Import WebinarNeo4j
 
Webinar: RDBMS to Graphs
Webinar: RDBMS to GraphsWebinar: RDBMS to Graphs
Webinar: RDBMS to GraphsNeo4j
 
Neo4j Fundamentals
Neo4j FundamentalsNeo4j Fundamentals
Neo4j FundamentalsMax De Marzi
 
Introducing Neo4j graph database
Introducing Neo4j graph databaseIntroducing Neo4j graph database
Introducing Neo4j graph databaseAmirhossein Saberi
 

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...
 
How Graph Databases efficiently store, manage and query connected data at s...
How Graph Databases efficiently  store, manage and query  connected data at s...How Graph Databases efficiently  store, manage and query  connected data at s...
How Graph Databases efficiently store, manage and query connected data at s...
 
RDBMS to Graph Webinar
RDBMS to Graph WebinarRDBMS to Graph Webinar
RDBMS to Graph Webinar
 
Introduction: Relational to Graphs
Introduction: Relational to GraphsIntroduction: Relational to Graphs
Introduction: Relational to Graphs
 
Graph database Use Cases
Graph database Use CasesGraph database Use Cases
Graph database Use Cases
 
Intro to Graphs and Neo4j
Intro to Graphs and Neo4jIntro to Graphs and Neo4j
Intro to Graphs and Neo4j
 
Intro to Cypher
Intro to CypherIntro to Cypher
Intro to Cypher
 
Intro to Neo4j Webinar
Intro to Neo4j WebinarIntro to Neo4j Webinar
Intro to Neo4j Webinar
 
Introduction to Neo4j
Introduction to Neo4jIntroduction to Neo4j
Introduction to Neo4j
 
Neo4j in Depth
Neo4j in DepthNeo4j in Depth
Neo4j in Depth
 
Relational to Big Graph
Relational to Big GraphRelational to Big Graph
Relational to Big Graph
 
An Introduction to NOSQL, Graph Databases and Neo4j
An Introduction to NOSQL, Graph Databases and Neo4jAn Introduction to NOSQL, Graph Databases and Neo4j
An Introduction to NOSQL, Graph Databases and Neo4j
 
Family tree of data – provenance and neo4j
Family tree of data – provenance and neo4jFamily tree of data – provenance and neo4j
Family tree of data – provenance and neo4j
 
Neo4j GraphTalk Helsinki - Introduction and Graph Use Cases
Neo4j GraphTalk Helsinki - Introduction and Graph Use CasesNeo4j GraphTalk Helsinki - Introduction and Graph Use Cases
Neo4j GraphTalk Helsinki - Introduction and Graph Use Cases
 
Graphs for Enterprise Architects
Graphs for Enterprise ArchitectsGraphs for Enterprise Architects
Graphs for Enterprise Architects
 
Neo4j – The Fastest Path to Scalable Real-Time Analytics
Neo4j – The Fastest Path to Scalable Real-Time AnalyticsNeo4j – The Fastest Path to Scalable Real-Time Analytics
Neo4j – The Fastest Path to Scalable Real-Time Analytics
 
Neo4j Import Webinar
Neo4j Import WebinarNeo4j Import Webinar
Neo4j Import Webinar
 
Webinar: RDBMS to Graphs
Webinar: RDBMS to GraphsWebinar: RDBMS to Graphs
Webinar: RDBMS to Graphs
 
Neo4j Fundamentals
Neo4j FundamentalsNeo4j Fundamentals
Neo4j Fundamentals
 
Introducing Neo4j graph database
Introducing Neo4j graph databaseIntroducing Neo4j graph database
Introducing Neo4j graph database
 

Semelhante a Einführung in Neo4j

State of Florida Neo4j Graph Briefing - Cyber IAM
State of Florida Neo4j Graph Briefing - Cyber IAMState of Florida Neo4j Graph Briefing - Cyber IAM
State of Florida Neo4j Graph Briefing - Cyber IAMNeo4j
 
Graphs fun vjug2
Graphs fun vjug2Graphs fun vjug2
Graphs fun vjug2Neo4j
 
Neo4j GraphTalk Basel - Building intelligent Software with Graphs
Neo4j GraphTalk Basel - Building intelligent Software with GraphsNeo4j GraphTalk Basel - Building intelligent Software with Graphs
Neo4j GraphTalk Basel - Building intelligent Software with GraphsNeo4j
 
Neo4j Training Introduction
Neo4j Training IntroductionNeo4j Training Introduction
Neo4j Training IntroductionMax De Marzi
 
Introduction to Neo4j and .Net
Introduction to Neo4j and .NetIntroduction to Neo4j and .Net
Introduction to Neo4j and .NetNeo4j
 
Neo4j GraphDay Munich - How to make your GraphDB project successful
Neo4j GraphDay Munich - How to make your GraphDB project successfulNeo4j GraphDay Munich - How to make your GraphDB project successful
Neo4j GraphDay Munich - How to make your GraphDB project successfulNeo4j
 
Neo4j GraphTalk Oslo - Building Intelligent Solutions with Graphs
Neo4j GraphTalk Oslo - Building Intelligent Solutions with GraphsNeo4j GraphTalk Oslo - Building Intelligent Solutions with Graphs
Neo4j GraphTalk Oslo - Building Intelligent Solutions with GraphsNeo4j
 
GraphTour 2020 - Neo4j: What's New?
GraphTour 2020 - Neo4j: What's New?GraphTour 2020 - Neo4j: What's New?
GraphTour 2020 - Neo4j: What's New?Neo4j
 
Graph databases and the #panamapapers
Graph databases and the #panamapapersGraph databases and the #panamapapers
Graph databases and the #panamapapersdarthvader42
 
GraphTalk Helsinki - Introduction to Graphs and Neo4j
GraphTalk Helsinki - Introduction to Graphs and Neo4jGraphTalk Helsinki - Introduction to Graphs and Neo4j
GraphTalk Helsinki - Introduction to Graphs and Neo4jNeo4j
 
Neo4j GraphTalk Düsseldorf - Building intelligent solutions with Graphs
Neo4j GraphTalk Düsseldorf - Building intelligent solutions with GraphsNeo4j GraphTalk Düsseldorf - Building intelligent solutions with Graphs
Neo4j GraphTalk Düsseldorf - Building intelligent solutions with GraphsNeo4j
 
GraphTalk Wien - Intelligente Lösungen mit Graphen erstellen
GraphTalk Wien - Intelligente Lösungen mit Graphen erstellenGraphTalk Wien - Intelligente Lösungen mit Graphen erstellen
GraphTalk Wien - Intelligente Lösungen mit Graphen erstellenNeo4j
 
Neo4j GraphTalk Oslo - Introduction to Graphs
Neo4j GraphTalk Oslo - Introduction to GraphsNeo4j GraphTalk Oslo - Introduction to Graphs
Neo4j GraphTalk Oslo - Introduction to GraphsNeo4j
 
GraphConnect 2014 SF: The Business Graph
GraphConnect 2014 SF: The Business GraphGraphConnect 2014 SF: The Business Graph
GraphConnect 2014 SF: The Business GraphNeo4j
 
Intro to graphs for HR analytics
Intro to graphs for HR analyticsIntro to graphs for HR analytics
Intro to graphs for HR analyticsRik Van Bruggen
 
Silicon Valley Code Camp 2016 - MongoDB in production
Silicon Valley Code Camp 2016 - MongoDB in productionSilicon Valley Code Camp 2016 - MongoDB in production
Silicon Valley Code Camp 2016 - MongoDB in productionDaniel Coupal
 
Introducción a NoSQL
Introducción a NoSQLIntroducción a NoSQL
Introducción a NoSQLMongoDB
 
Processing Large Graphs
Processing Large GraphsProcessing Large Graphs
Processing Large GraphsNishant Gandhi
 
Neo4j Product Update and Bloom Demo
Neo4j Product Update and Bloom DemoNeo4j Product Update and Bloom Demo
Neo4j Product Update and Bloom DemoNeo4j
 

Semelhante a Einführung in Neo4j (20)

State of Florida Neo4j Graph Briefing - Cyber IAM
State of Florida Neo4j Graph Briefing - Cyber IAMState of Florida Neo4j Graph Briefing - Cyber IAM
State of Florida Neo4j Graph Briefing - Cyber IAM
 
Graphs fun vjug2
Graphs fun vjug2Graphs fun vjug2
Graphs fun vjug2
 
Neo4j GraphTalk Basel - Building intelligent Software with Graphs
Neo4j GraphTalk Basel - Building intelligent Software with GraphsNeo4j GraphTalk Basel - Building intelligent Software with Graphs
Neo4j GraphTalk Basel - Building intelligent Software with Graphs
 
Neo4j Training Introduction
Neo4j Training IntroductionNeo4j Training Introduction
Neo4j Training Introduction
 
Introduction to Neo4j and .Net
Introduction to Neo4j and .NetIntroduction to Neo4j and .Net
Introduction to Neo4j and .Net
 
Neo4j GraphDay Munich - How to make your GraphDB project successful
Neo4j GraphDay Munich - How to make your GraphDB project successfulNeo4j GraphDay Munich - How to make your GraphDB project successful
Neo4j GraphDay Munich - How to make your GraphDB project successful
 
Neo4j GraphTalk Oslo - Building Intelligent Solutions with Graphs
Neo4j GraphTalk Oslo - Building Intelligent Solutions with GraphsNeo4j GraphTalk Oslo - Building Intelligent Solutions with Graphs
Neo4j GraphTalk Oslo - Building Intelligent Solutions with Graphs
 
GraphTour 2020 - Neo4j: What's New?
GraphTour 2020 - Neo4j: What's New?GraphTour 2020 - Neo4j: What's New?
GraphTour 2020 - Neo4j: What's New?
 
Graph databases and the #panamapapers
Graph databases and the #panamapapersGraph databases and the #panamapapers
Graph databases and the #panamapapers
 
GraphTalk Helsinki - Introduction to Graphs and Neo4j
GraphTalk Helsinki - Introduction to Graphs and Neo4jGraphTalk Helsinki - Introduction to Graphs and Neo4j
GraphTalk Helsinki - Introduction to Graphs and Neo4j
 
Neo4j GraphTalk Düsseldorf - Building intelligent solutions with Graphs
Neo4j GraphTalk Düsseldorf - Building intelligent solutions with GraphsNeo4j GraphTalk Düsseldorf - Building intelligent solutions with Graphs
Neo4j GraphTalk Düsseldorf - Building intelligent solutions with Graphs
 
GraphTalk Wien - Intelligente Lösungen mit Graphen erstellen
GraphTalk Wien - Intelligente Lösungen mit Graphen erstellenGraphTalk Wien - Intelligente Lösungen mit Graphen erstellen
GraphTalk Wien - Intelligente Lösungen mit Graphen erstellen
 
Neo4j GraphTalk Oslo - Introduction to Graphs
Neo4j GraphTalk Oslo - Introduction to GraphsNeo4j GraphTalk Oslo - Introduction to Graphs
Neo4j GraphTalk Oslo - Introduction to Graphs
 
GraphConnect 2014 SF: The Business Graph
GraphConnect 2014 SF: The Business GraphGraphConnect 2014 SF: The Business Graph
GraphConnect 2014 SF: The Business Graph
 
Intro to graphs for HR analytics
Intro to graphs for HR analyticsIntro to graphs for HR analytics
Intro to graphs for HR analytics
 
MongoDB Basics
MongoDB BasicsMongoDB Basics
MongoDB Basics
 
Silicon Valley Code Camp 2016 - MongoDB in production
Silicon Valley Code Camp 2016 - MongoDB in productionSilicon Valley Code Camp 2016 - MongoDB in production
Silicon Valley Code Camp 2016 - MongoDB in production
 
Introducción a NoSQL
Introducción a NoSQLIntroducción a NoSQL
Introducción a NoSQL
 
Processing Large Graphs
Processing Large GraphsProcessing Large Graphs
Processing Large Graphs
 
Neo4j Product Update and Bloom Demo
Neo4j Product Update and Bloom DemoNeo4j Product Update and Bloom Demo
Neo4j Product Update and Bloom Demo
 

Mais de Neo4j

QIAGEN: Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
QIAGEN: Biomedical Knowledge Graphs for Data Scientists and BioinformaticiansQIAGEN: Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
QIAGEN: Biomedical Knowledge Graphs for Data Scientists and BioinformaticiansNeo4j
 
EY_Graph Database Powered Sustainability
EY_Graph Database Powered SustainabilityEY_Graph Database Powered Sustainability
EY_Graph Database Powered SustainabilityNeo4j
 
SIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge GraphSIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge GraphNeo4j
 
Build your next Gen AI Breakthrough - April 2024
Build your next Gen AI Breakthrough - April 2024Build your next Gen AI Breakthrough - April 2024
Build your next Gen AI Breakthrough - April 2024Neo4j
 
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
 

Mais de Neo4j (20)

QIAGEN: Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
QIAGEN: Biomedical Knowledge Graphs for Data Scientists and BioinformaticiansQIAGEN: Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
QIAGEN: Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
 
EY_Graph Database Powered Sustainability
EY_Graph Database Powered SustainabilityEY_Graph Database Powered Sustainability
EY_Graph Database Powered Sustainability
 
SIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge GraphSIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge Graph
 
Build your next Gen AI Breakthrough - April 2024
Build your next Gen AI Breakthrough - April 2024Build your next Gen AI Breakthrough - April 2024
Build your next Gen AI Breakthrough - April 2024
 
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
 

Último

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
 
Balasore Best It Company|| Top 10 IT Company || Balasore Software company Odisha
Balasore Best It Company|| Top 10 IT Company || Balasore Software company OdishaBalasore Best It Company|| Top 10 IT Company || Balasore Software company Odisha
Balasore Best It Company|| Top 10 IT Company || Balasore Software company Odishasmiwainfosol
 
Software Project Health Check: Best Practices and Techniques for Your Product...
Software Project Health Check: Best Practices and Techniques for Your Product...Software Project Health Check: Best Practices and Techniques for Your Product...
Software Project Health Check: Best Practices and Techniques for Your Product...Velvetech LLC
 
Unveiling Design Patterns: A Visual Guide with UML Diagrams
Unveiling Design Patterns: A Visual Guide with UML DiagramsUnveiling Design Patterns: A Visual Guide with UML Diagrams
Unveiling Design Patterns: A Visual Guide with UML DiagramsAhmed Mohamed
 
KnowAPIs-UnknownPerf-jaxMainz-2024 (1).pptx
KnowAPIs-UnknownPerf-jaxMainz-2024 (1).pptxKnowAPIs-UnknownPerf-jaxMainz-2024 (1).pptx
KnowAPIs-UnknownPerf-jaxMainz-2024 (1).pptxTier1 app
 
VK Business Profile - provides IT solutions and Web Development
VK Business Profile - provides IT solutions and Web DevelopmentVK Business Profile - provides IT solutions and Web Development
VK Business Profile - provides IT solutions and Web Developmentvyaparkranti
 
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
 
Alfresco TTL#157 - Troubleshooting Made Easy: Deciphering Alfresco mTLS Confi...
Alfresco TTL#157 - Troubleshooting Made Easy: Deciphering Alfresco mTLS Confi...Alfresco TTL#157 - Troubleshooting Made Easy: Deciphering Alfresco mTLS Confi...
Alfresco TTL#157 - Troubleshooting Made Easy: Deciphering Alfresco mTLS Confi...Angel Borroy López
 
React Server Component in Next.js by Hanief Utama
React Server Component in Next.js by Hanief UtamaReact Server Component in Next.js by Hanief Utama
React Server Component in Next.js by Hanief UtamaHanief Utama
 
Dealing with Cultural Dispersion — Stefano Lambiase — ICSE-SEIS 2024
Dealing with Cultural Dispersion — Stefano Lambiase — ICSE-SEIS 2024Dealing with Cultural Dispersion — Stefano Lambiase — ICSE-SEIS 2024
Dealing with Cultural Dispersion — Stefano Lambiase — ICSE-SEIS 2024StefanoLambiase
 
Cloud Data Center Network Construction - IEEE
Cloud Data Center Network Construction - IEEECloud Data Center Network Construction - IEEE
Cloud Data Center Network Construction - IEEEVICTOR MAESTRE RAMIREZ
 
Sending Calendar Invites on SES and Calendarsnack.pdf
Sending Calendar Invites on SES and Calendarsnack.pdfSending Calendar Invites on SES and Calendarsnack.pdf
Sending Calendar Invites on SES and Calendarsnack.pdf31events.com
 
SpotFlow: Tracking Method Calls and States at Runtime
SpotFlow: Tracking Method Calls and States at RuntimeSpotFlow: Tracking Method Calls and States at Runtime
SpotFlow: Tracking Method Calls and States at Runtimeandrehoraa
 
What is Fashion PLM and Why Do You Need It
What is Fashion PLM and Why Do You Need ItWhat is Fashion PLM and Why Do You Need It
What is Fashion PLM and Why Do You Need ItWave PLM
 
How to submit a standout Adobe Champion Application
How to submit a standout Adobe Champion ApplicationHow to submit a standout Adobe Champion Application
How to submit a standout Adobe Champion ApplicationBradBedford3
 
Intelligent Home Wi-Fi Solutions | ThinkPalm
Intelligent Home Wi-Fi Solutions | ThinkPalmIntelligent Home Wi-Fi Solutions | ThinkPalm
Intelligent Home Wi-Fi Solutions | ThinkPalmSujith Sukumaran
 
PREDICTING RIVER WATER QUALITY ppt presentation
PREDICTING  RIVER  WATER QUALITY  ppt presentationPREDICTING  RIVER  WATER QUALITY  ppt presentation
PREDICTING RIVER WATER QUALITY ppt presentationvaddepallysandeep122
 
GOING AOT WITH GRAALVM – DEVOXX GREECE.pdf
GOING AOT WITH GRAALVM – DEVOXX GREECE.pdfGOING AOT WITH GRAALVM – DEVOXX GREECE.pdf
GOING AOT WITH GRAALVM – DEVOXX GREECE.pdfAlina Yurenko
 
What is Advanced Excel and what are some best practices for designing and cre...
What is Advanced Excel and what are some best practices for designing and cre...What is Advanced Excel and what are some best practices for designing and cre...
What is Advanced Excel and what are some best practices for designing and cre...Technogeeks
 
Tech Tuesday - Mastering Time Management Unlock the Power of OnePlan's Timesh...
Tech Tuesday - Mastering Time Management Unlock the Power of OnePlan's Timesh...Tech Tuesday - Mastering Time Management Unlock the Power of OnePlan's Timesh...
Tech Tuesday - Mastering Time Management Unlock the Power of OnePlan's Timesh...OnePlan Solutions
 

Último (20)

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
 
Balasore Best It Company|| Top 10 IT Company || Balasore Software company Odisha
Balasore Best It Company|| Top 10 IT Company || Balasore Software company OdishaBalasore Best It Company|| Top 10 IT Company || Balasore Software company Odisha
Balasore Best It Company|| Top 10 IT Company || Balasore Software company Odisha
 
Software Project Health Check: Best Practices and Techniques for Your Product...
Software Project Health Check: Best Practices and Techniques for Your Product...Software Project Health Check: Best Practices and Techniques for Your Product...
Software Project Health Check: Best Practices and Techniques for Your Product...
 
Unveiling Design Patterns: A Visual Guide with UML Diagrams
Unveiling Design Patterns: A Visual Guide with UML DiagramsUnveiling Design Patterns: A Visual Guide with UML Diagrams
Unveiling Design Patterns: A Visual Guide with UML Diagrams
 
KnowAPIs-UnknownPerf-jaxMainz-2024 (1).pptx
KnowAPIs-UnknownPerf-jaxMainz-2024 (1).pptxKnowAPIs-UnknownPerf-jaxMainz-2024 (1).pptx
KnowAPIs-UnknownPerf-jaxMainz-2024 (1).pptx
 
VK Business Profile - provides IT solutions and Web Development
VK Business Profile - provides IT solutions and Web DevelopmentVK Business Profile - provides IT solutions and Web Development
VK Business Profile - provides IT solutions and Web Development
 
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
 
Alfresco TTL#157 - Troubleshooting Made Easy: Deciphering Alfresco mTLS Confi...
Alfresco TTL#157 - Troubleshooting Made Easy: Deciphering Alfresco mTLS Confi...Alfresco TTL#157 - Troubleshooting Made Easy: Deciphering Alfresco mTLS Confi...
Alfresco TTL#157 - Troubleshooting Made Easy: Deciphering Alfresco mTLS Confi...
 
React Server Component in Next.js by Hanief Utama
React Server Component in Next.js by Hanief UtamaReact Server Component in Next.js by Hanief Utama
React Server Component in Next.js by Hanief Utama
 
Dealing with Cultural Dispersion — Stefano Lambiase — ICSE-SEIS 2024
Dealing with Cultural Dispersion — Stefano Lambiase — ICSE-SEIS 2024Dealing with Cultural Dispersion — Stefano Lambiase — ICSE-SEIS 2024
Dealing with Cultural Dispersion — Stefano Lambiase — ICSE-SEIS 2024
 
Cloud Data Center Network Construction - IEEE
Cloud Data Center Network Construction - IEEECloud Data Center Network Construction - IEEE
Cloud Data Center Network Construction - IEEE
 
Sending Calendar Invites on SES and Calendarsnack.pdf
Sending Calendar Invites on SES and Calendarsnack.pdfSending Calendar Invites on SES and Calendarsnack.pdf
Sending Calendar Invites on SES and Calendarsnack.pdf
 
SpotFlow: Tracking Method Calls and States at Runtime
SpotFlow: Tracking Method Calls and States at RuntimeSpotFlow: Tracking Method Calls and States at Runtime
SpotFlow: Tracking Method Calls and States at Runtime
 
What is Fashion PLM and Why Do You Need It
What is Fashion PLM and Why Do You Need ItWhat is Fashion PLM and Why Do You Need It
What is Fashion PLM and Why Do You Need It
 
How to submit a standout Adobe Champion Application
How to submit a standout Adobe Champion ApplicationHow to submit a standout Adobe Champion Application
How to submit a standout Adobe Champion Application
 
Intelligent Home Wi-Fi Solutions | ThinkPalm
Intelligent Home Wi-Fi Solutions | ThinkPalmIntelligent Home Wi-Fi Solutions | ThinkPalm
Intelligent Home Wi-Fi Solutions | ThinkPalm
 
PREDICTING RIVER WATER QUALITY ppt presentation
PREDICTING  RIVER  WATER QUALITY  ppt presentationPREDICTING  RIVER  WATER QUALITY  ppt presentation
PREDICTING RIVER WATER QUALITY ppt presentation
 
GOING AOT WITH GRAALVM – DEVOXX GREECE.pdf
GOING AOT WITH GRAALVM – DEVOXX GREECE.pdfGOING AOT WITH GRAALVM – DEVOXX GREECE.pdf
GOING AOT WITH GRAALVM – DEVOXX GREECE.pdf
 
What is Advanced Excel and what are some best practices for designing and cre...
What is Advanced Excel and what are some best practices for designing and cre...What is Advanced Excel and what are some best practices for designing and cre...
What is Advanced Excel and what are some best practices for designing and cre...
 
Tech Tuesday - Mastering Time Management Unlock the Power of OnePlan's Timesh...
Tech Tuesday - Mastering Time Management Unlock the Power of OnePlan's Timesh...Tech Tuesday - Mastering Time Management Unlock the Power of OnePlan's Timesh...
Tech Tuesday - Mastering Time Management Unlock the Power of OnePlan's Timesh...
 

Einführung in Neo4j

  • 1. 1
  • 2. Einführung in Neo4j 2 • Die primären Anwendungsfälle von Graphdatenbanken • Die ‚Secret Sauce‘ von Neo4j, die diese möglich machen • Die Visualisierung von Graphen • Einfach mit Neo4j loslegen, aber wie?
  • 3. Who am I … Andrew Frei 3 (Andrew) -[:LIVES_NEAR]->(Zurich) (Andrew) -[:HAS_SHOESIZE]-> (47) (Andrew) -[:IS_TODAYS]-> (host) (Andrew) -[:LOVES]-> (Neo4j) (Andrew) -[:LOVES_SELLING]-> (Neo4j) Tagline: Supporting Companies to 'Connect the Dots' with Graph Databases & Analytics Contact: linkedin.com/in/andrew-frei/ and andrew.frei@neo4j.com
  • 4. 4 The way we use to work; look at it…..
  • 6. 6 Look at it again, now as a graph
  • 7. 7 The Graph Problem Problem Many organizations don’t realize that they have a graph problem.
  • 8. Labeled Property Graph Model 88 • Nodes – Represent objects in the graph
  • 9. DRIVES Labeled Property Graph Model MARRIED TO LIVES WITH OW NS 99 • Nodes – Represent objects in the graph • Relationship – Relate nodes by type and direction
  • 10. DRIVES name: “Dan” born: May 29, 1970 twitter: “@dan” name: “Ann” born: Dec 5, 1975 since: Jan 10, 2011 brand: “Volvo” model: “V70” Latitude: 37.5629900° Longitude: -122.3255300° Labeled Property Graph Model MARRIED TO LIVES WITH OW NS 1010 • Nodes – Represent objects in the graph • Relationship – Relate nodes by type and direction • Property – Name-value pairs that can go on nodes and relationships
  • 11. CAR DRIVES name: “Dan” born: May 29, 1970 twitter: “@dan” name: “Ann” born: Dec 5, 1975 since: Jan 10, 2011 brand: “Volvo” model: “V70” Latitude: 37.5629900° Longitude: -122.3255300° Labeled Property Graph Model MARRIED TO LIVES WITH OW NS PERSON PERSON 1111 • Nodes – Represent objects in the graph • Relationship – Relate nodes by type and direction • Property – Name-value pairs that can go on nodes and relationships • Label – Group nodes and shape the domain
  • 12. The Whiteboard Model Is the Physical Model
  • 13. 13 Industries - Use Cases Telco & Utilities Banks & Insurers, Gov’t Media, Software & IT companies Life Sciences & Pharma Manufacturing & Logistics eCommerce, other industries
  • 14. Connected Data - Use Cases Network & IT Operations Fraud Detection Identity & Access Management Knowledge Graph Master Data Management Real-Time Recommendations
  • 15. 15
  • 16. Adobe Behance Social Network of 10M Graphic Artists Background ● Social network of 10M graphic artists ● Peer-to-peer evaluation of art and works-in-progress ● Job sourcing site for creatives ● Massive, millions of updates (reads & writes) to Activity Feed ● 150 Mongos to 48 Cassandras to 3 Neo4j’s! Business Problem ● Artists subscribe, appreciate and curate “galleries” of works of their own and from other artists ● Activities Feed is how everyone receives updates ● 1st implementation was 150 MongoDB instances ● 2nd implementation shrunk to 48 Cassandras, but it was still too slow and required heavy IT overhead Solution and Benefits ● 3rd implementation shrunk to 3 Neo4j instances ● Saved over $500k in annual AWS fees ● Reduced data footprint from 50TB to 40GB ● Significantly easier to introduce new features like, “New projects in your Network”
  • 17. 17
  • 18. Dun & Bradstreet Neo4j for Tracking Beneficial Ownership Background ● Regulations and requirements around beneficial ownership ● Needed to let B2B clients book new business promptly via accelerated due diligence investigations Business Problem ● Investigations call for highly trained staff, and this activity is hard to scale. A single request might tie up key people for 10-15 days, resulting in lost revenue Solution and Benefits ● Use Neo4j to quickly query historic relationships between business owners and companies ● Query responses take milliseconds versus days of skilled manual research
  • 19. ICIJ Panama Papers Fraud Detection / Graph-Based Search Background ● International investigative team specializing in cross-border crime, corruption and accountability of power Business Problem ● Find relationships between people, accounts, shell companies and offshore accounts ● Biggest “Snowden-Style” document leak ever; 11.5 million documents, 2.6TB of data Solution and Benefits ● Pulitzer Prize winning investigation resulted in robust coverage of fraud and corruption ● PM of Iceland resigned, exposed Putin, Prime Ministers, gangsters, celebrities (Messi) - Trials are ongoing
  • 20. How Neo4j Fits — Common Architecture Patterns From Disparate Silos To Cross-Silo Connections From Tabular Data To Connected Data From Data Lake Analytics to Real-Time Operations
  • 21. for Graph Data Science™ Neo4j Graph Data Science Library Scalable Graph Algorithms & Analytics Workspace Native Graph Creation & Persistence Neo4j Database Visual Graph Exploration & Prototyping Neo4j Bloom Practical Integrated Intuitive
  • 22. • Degree Centrality • Closeness Centrality • Harmonic Centrality • Betweenness Centrality & Approx. • PageRank • Personalized PageRank • ArticleRank • Eigenvector Centrality • Triangle Count • Clustering Coefficients • Connected Components (Union Find) • Strongly Connected Components • Label Propagation • Louvain Modularity • Balanced Triad (identification) 50+ Graph Algorithms in Neo4j • Shortest Path • Single-Source Shortest Path • All Pairs Shortest Path • A* Shortest Path • Yen’s K Shortest Path • Minimum Weight Spanning Tree • K-Spanning Tree (MST) • Random Walk • Breadth & Depth First Search • Triangle Count • Local Clustering Coefficient • Connected Components (Union Find) • Strongly Connected Components • Label Propagation • Louvain Modularity • K-1 Coloring • Modularity Optimization • Euclidean Distance • Cosine Similarity • Node Similarity (Jaccard) • Overlap Similarity • Pearson Similarity • Approximate KNN Pathfinding & Search Centrality / Importance Community Detection Similarity Link Prediction • Adamic Adar • Common Neighbors • Preferential Attachment • Resource Allocations • Same Community • Total Neighbors ... Auxiliary Functions: • Random graph generation • Graph export • One hot encoding • Distributions & metrics Embeddings • Node2Vec • Random Projections • GraphSAGE
  • 23. Mission 23 ❏ Tom Hanks is getting old(er)... ❏ We can boost his career and put him together with a few new faces. Who do you recommend? How would you give weight to your recommendation?
  • 24. 24
  • 25. Analytics Tooling Graph Transactions Dev. & Admin Graph Analytics & Data Science 25 Applications Business Users Native Graph Technology for Applications & Analytics Data Analysts Data Scientists Drivers & APIs Discovery & Visualization Data Integration Developers Admins
  • 26. 7/10 20/25 7/10 Top Retail Firms Top Financial Firms Top Software Vendors Anyway You Like It Neo4j - The Graph Company The Industry’s Largest Dedicated Investment in Graphs 26 Creator of the Property Graph and Cypher language at the core of the GQL ISO project Thousands of Customers World-Wide HQ in Silicon Valley, offices include London, Munich, Paris & Malmo Industry Leaders use Neo4j On-Prem DB-as-a-Service In the Cloud
  • 29. Contact details 29 Andrew Frei Sales Manager Switzerland & Austria Neo4j linkedin.com/in/andrew-frei/ andrew.frei@neo4j.com +41 78 793 42 56 www.neo4j.com Bruno Ungermann Sales Manager Germany Neo4j linkedin.com/in/brunoungermann/ bruno.ungermann@neo4j.com www.neo4j.com