SlideShare a Scribd company logo
Getting started with
Cosmos DB + Linkurious
Enterprise.
1. Cosmos DB
2. Linkurious
Enterprise
3. Use cases
4. Demo
5. Q&A
Luis Bosquez
Program Manager @ Microsoft
@_lbosq
Jean Villedieu
Co-founder @ Microsoft
@jvilledieu
MODERN APPS FACE NEW
CHALLENGES
Managing and syncing data distributed around the globe
Delivering highly-responsive, real-time personalization
Processing and analyzing large, complex data
Scaling both throughput and storage based on global demand
Offering low-latency to global users
Modernizing existing apps and data
Azure Cosmos DB was built to support modern app patterns and use cases.
It enables industry-leading organizations to unlock the value of data, and respond to
global customers and changing business dynamics in real-time.
POWERING GLOBAL SOLUTIONS
Data distributed and
available globally
Puts data where your
users are
Build real-time
customer experiences
Enable latency-sensitive
personalization, bidding,
and fraud detection.
Ideal for gaming,
IoT & eCommerce
Predictable and fast
service, even during
traffic spikes
Simplified development
with serverless
architecture
Fully-managed
event-driven
micro-services with
elastic computing
power
Run Spark analytics
over operational data
Accelerate insights
from fast, global data
Lift and shift NoSQL
data
Lift and shift MongoDB
and Cassandra
workloads
A FULLY-MANAGED GLOBALLY DISTRIBUTED DATABASE SERVICE BUILT TO
GUARANTEE
EXTREMELY LOW LATENCY AND MASSIVE SCALE FOR MODERN APPS
AZURE COSMOS DB
Turnkey global
distribution
Elastic scale out
of storage & throughput
Guaranteed low latency
at the 99th
percentile
Comprehensive
SLAs
Five well-defined
consistency models
Table API
WHAT IS AZURE COSMOS DB
SQL
MongoDB
Column-family DocumentKey-value Graph
A globally distributed, massively scalable, multi-model database service
ELASTIC SCALE OUT OF STORAGE AND THROUGHPUT
SCALES AS YOUR APPS’ NEEDS CHANGE
Independently and elastically scale storage and
throughput across regions – even during unpredictable
traffic bursts – with a database that adapts to your
app’s needs.
• Elastically scale throughput from 10 to
100s of millions of requests/sec across
multiple regions
• Support for requests/sec for different
workloads
• Pay only for the throughput and storage
you need
GUARANTEED LOW LATENCY
PROVIDE USERS AROUND THE WORLD WITH FAST
ACCESS TO DATA
Serve <10 ms read and <15 ms write requests at the
99th percentile from the region nearest to users,
while delivering data globally.
TURNKEY GLOBAL DISTRIBUTION
PUT YOUR DATA WHERE YOUR USERS ARE IN
MINUTES
Automatically replicate all your data around the world,
and across more regions than Amazon and Google
combined.
• Available in all Azure regions
• Manual and automatic failover
• Automatic & synchronous multi-region
replication
Strong Bounded-stateless Session Consistent prefix Eventual
FIVE WELL-DEFINED CONSISTENCY MODELS
CHOOSE THE BEST CONSISTENCY MODEL FOR YOUR APP
Offers five consistency models
Provides control over performance-consistency tradeoffs,
backed by comprehensive SLAs.
An intuitive programming model offering low latency and high
availability for your planet-scale app.
MULTIPLE DATA MODELS AND APIs
USE THE MODEL THAT FITS YOUR REQUIREMENTS, AND THE
APIS, TOOLS, AND FRAMEWORKS YOU PREFER
Column-family Document
Table API
Key-valu
e
SQL
MongoDB
Graph
Cosmos DB offers a multitude of APIs to access and query data
including, SQL, various popular OSS APIs, and native support
for NoSQL workloads.
Use key-value, columnar, graph, and document data
Data is automatically indexed, with no schema or secondary
indexes required
Blazing fast queries with no lag
HANDLE ANY DATA WITH NO SCHEMA OR
INDEXING REQUIRED
Azure Cosmos DB’s schema-less service automatically indexes all your
data, regardless of the data model, to delivery blazing fast queries.
Item Color
Microwave
safe
Liquid
capacity
CPU Memory Storage
Geek
mug
Graphite Yes 16ox ??? ??? ???
Coffee
Bean
mug
Tan No 12oz ??? ??? ???
Surface
book
Gray ??? ??? 3.4
GHz
Intel
Skylak
e Core
i7-6600
U
16GB 1 TB
SSD
• Automatic index management
• Synchronous auto-indexing
• Freedom from schema + index management
• Works across every data model
• Ingest and serve data back out in milliseconds
GEE
K
COMPREHENSIVE SLAs
RUN YOUR APP ON WORLD-CLASS INFRASTRUCTURE
Azure Cosmos DB is the only service with financially-backed SLAs for
millisecond latency at the 99th percentile, 99.999% HA and guaranteed
throughput and consistency
HALatency
<10 ms
99th
percentile
99.999
%
Throughput Consistency
Guaranteed Guaranteed
TRUST YOUR DATA TO INDUSTRY-LEADING
SECURITY & COMPLIANCE
Azure is the world’s most trusted cloud, with more certifications
than any other cloud provider.
• Enterprise grade security
• Encryption at Rest and Transit
• Encryption is enabled automatically by default
• Comprehensive Azure compliance certification
TOP 10 REASONS WHY CUSTOMERS USE
AZURE COSMOS DB
Natively supports
different types of
data at massive scale
Provides
multi-tenancy and
enterprise-grade
security
The 1st
and only
database with
global distribution
turnkey capability
Enables mission
critical intelligent
applications
Deliver massive
storage/throughput
scalability database
Gives high flexibility
to optimize for speed
and cost
Boasts 5
well-defined
consistency models
to pick the right
consistency/latency/
throughput tradeoff
Naturally
analytics-ready and
perfect for
event-driven
architectures
Provides guaranteed
single digit
millisecond latency
at 99th
percentile
worldwide
Tackles big data
workloads with high
availability and
reliability
Cosmos DB Gremlin API
Fully Managed Cloud Graph Database
● Compliant with the Apache Tinkerpop Gremlin database specification the
Open-source standard for graph databases.
● Leverages all benefits of Azure Cosmos DB.
● Compatible with open-source drivers and connectors.
● Compatible with Linkurious for enterprise-grade visualization.
How to make graph
data accessible to
business users?
Uncover insights
hidden in graph data
with Linkurious
Enterprise.
Architecture
overview.
50+ clients around
the world.
Corporate structures
and anti-money
laundering.
Telecommunications
and law
enforcement.
Client data and fraud.
Linkurious Enterprise
+ Cosmos DB demo.
Getting started with Cosmos DB + Linkurious Enterprise
Ad

More Related Content

What's hot (17)

Solution architecture
Solution architectureSolution architecture
Solution architecture
Rajat Agrawal
 
GraphTech Ecosystem - part 3: Graph Visualization
GraphTech Ecosystem - part 3: Graph VisualizationGraphTech Ecosystem - part 3: Graph Visualization
GraphTech Ecosystem - part 3: Graph Visualization
Linkurious
 
Bridging to a hybrid cloud data services architecture
Bridging to a hybrid cloud data services architectureBridging to a hybrid cloud data services architecture
Bridging to a hybrid cloud data services architecture
IBM Analytics
 
Graph Data: a New Data Management Frontier
Graph Data: a New Data Management FrontierGraph Data: a New Data Management Frontier
Graph Data: a New Data Management Frontier
Demai Ni
 
Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...
Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...
Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...
Dr. Arif Wider
 
Graph Database and Neo4j
Graph Database and Neo4jGraph Database and Neo4j
Graph Database and Neo4j
Sina Khorami
 
Solution architecture for big data projects
Solution architecture for big data projectsSolution architecture for big data projects
Solution architecture for big data projects
Sandeep Sharma IIMK Smart City,IoT,Bigdata,Cloud,BI,DW
 
Modern data warehouse
Modern data warehouseModern data warehouse
Modern data warehouse
Elena Lopez
 
Digikrit Company Profile
Digikrit Company ProfileDigikrit Company Profile
Digikrit Company Profile
Digikrit
 
Graph analytics in Linkurious Enterprise
Graph analytics in Linkurious EnterpriseGraph analytics in Linkurious Enterprise
Graph analytics in Linkurious Enterprise
Linkurious
 
Enterprise architecture for big data projects
Enterprise architecture for big data projectsEnterprise architecture for big data projects
Enterprise architecture for big data projects
Sandeep Sharma IIMK Smart City,IoT,Bigdata,Cloud,BI,DW
 
RAPIDS cuGraph – Accelerating all your Graph needs
RAPIDS cuGraph – Accelerating all your Graph needsRAPIDS cuGraph – Accelerating all your Graph needs
RAPIDS cuGraph – Accelerating all your Graph needs
Connected Data World
 
Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...
Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...
Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...
Denodo
 
Graphs in Telecommunications - Jesus Barrasa, Neo4j
Graphs in Telecommunications - Jesus Barrasa, Neo4jGraphs in Telecommunications - Jesus Barrasa, Neo4j
Graphs in Telecommunications - Jesus Barrasa, Neo4j
Neo4j
 
MongoDB Europe 2016 - Welcome
MongoDB Europe 2016 - WelcomeMongoDB Europe 2016 - Welcome
MongoDB Europe 2016 - Welcome
MongoDB
 
Master Meta Data
Master Meta DataMaster Meta Data
Master Meta Data
Digikrit
 
Pentaho Analytics on MongoDB
Pentaho Analytics on MongoDBPentaho Analytics on MongoDB
Pentaho Analytics on MongoDB
Mark Kromer
 
Solution architecture
Solution architectureSolution architecture
Solution architecture
Rajat Agrawal
 
GraphTech Ecosystem - part 3: Graph Visualization
GraphTech Ecosystem - part 3: Graph VisualizationGraphTech Ecosystem - part 3: Graph Visualization
GraphTech Ecosystem - part 3: Graph Visualization
Linkurious
 
Bridging to a hybrid cloud data services architecture
Bridging to a hybrid cloud data services architectureBridging to a hybrid cloud data services architecture
Bridging to a hybrid cloud data services architecture
IBM Analytics
 
Graph Data: a New Data Management Frontier
Graph Data: a New Data Management FrontierGraph Data: a New Data Management Frontier
Graph Data: a New Data Management Frontier
Demai Ni
 
Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...
Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...
Data Mesh in Practice - How Europe's Leading Online Platform for Fashion Goes...
Dr. Arif Wider
 
Graph Database and Neo4j
Graph Database and Neo4jGraph Database and Neo4j
Graph Database and Neo4j
Sina Khorami
 
Modern data warehouse
Modern data warehouseModern data warehouse
Modern data warehouse
Elena Lopez
 
Digikrit Company Profile
Digikrit Company ProfileDigikrit Company Profile
Digikrit Company Profile
Digikrit
 
Graph analytics in Linkurious Enterprise
Graph analytics in Linkurious EnterpriseGraph analytics in Linkurious Enterprise
Graph analytics in Linkurious Enterprise
Linkurious
 
RAPIDS cuGraph – Accelerating all your Graph needs
RAPIDS cuGraph – Accelerating all your Graph needsRAPIDS cuGraph – Accelerating all your Graph needs
RAPIDS cuGraph – Accelerating all your Graph needs
Connected Data World
 
Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...
Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...
Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...
Denodo
 
Graphs in Telecommunications - Jesus Barrasa, Neo4j
Graphs in Telecommunications - Jesus Barrasa, Neo4jGraphs in Telecommunications - Jesus Barrasa, Neo4j
Graphs in Telecommunications - Jesus Barrasa, Neo4j
Neo4j
 
MongoDB Europe 2016 - Welcome
MongoDB Europe 2016 - WelcomeMongoDB Europe 2016 - Welcome
MongoDB Europe 2016 - Welcome
MongoDB
 
Master Meta Data
Master Meta DataMaster Meta Data
Master Meta Data
Digikrit
 
Pentaho Analytics on MongoDB
Pentaho Analytics on MongoDBPentaho Analytics on MongoDB
Pentaho Analytics on MongoDB
Mark Kromer
 

Similar to Getting started with Cosmos DB + Linkurious Enterprise (20)

Azure Cosmos DB - NET Conf AR 2017 - English
Azure Cosmos DB - NET Conf AR 2017 - EnglishAzure Cosmos DB - NET Conf AR 2017 - English
Azure Cosmos DB - NET Conf AR 2017 - English
Matias Quaranta
 
Tour de France Azure PaaS 3/7 Stocker des informations
Tour de France Azure PaaS 3/7 Stocker des informationsTour de France Azure PaaS 3/7 Stocker des informations
Tour de France Azure PaaS 3/7 Stocker des informations
Alex Danvy
 
Session: Modern Data WareHouse
Session: Modern Data WareHouseSession: Modern Data WareHouse
Session: Modern Data WareHouse
Karina Matos
 
NoSQL Migration Technical Pitch Deck
NoSQL Migration Technical Pitch DeckNoSQL Migration Technical Pitch Deck
NoSQL Migration Technical Pitch Deck
Nicholas Vossburg
 
Joseph keynote @ Microsoft Data Amp, April 2017
Joseph keynote @ Microsoft Data Amp, April 2017Joseph keynote @ Microsoft Data Amp, April 2017
Joseph keynote @ Microsoft Data Amp, April 2017
SeokJin Han
 
SQL Server on Azure VM datasheet.pptx
SQL Server on Azure VM datasheet.pptxSQL Server on Azure VM datasheet.pptx
SQL Server on Azure VM datasheet.pptx
MESBetise
 
SQL Server on Azure VM datasheet.dsadaspptx
SQL Server on Azure VM datasheet.dsadaspptxSQL Server on Azure VM datasheet.dsadaspptx
SQL Server on Azure VM datasheet.dsadaspptx
JustineGarcia32
 
Cloud Native Apps
Cloud Native AppsCloud Native Apps
Cloud Native Apps
David Chou
 
Azure Cosmos DB - Azure Austin Meetup
Azure Cosmos DB - Azure Austin MeetupAzure Cosmos DB - Azure Austin Meetup
Azure Cosmos DB - Azure Austin Meetup
Matias Quaranta
 
Luciano Moreira_Jacob Bogie-BRSP005-10.3_22_FINAL.pdf
Luciano Moreira_Jacob Bogie-BRSP005-10.3_22_FINAL.pdfLuciano Moreira_Jacob Bogie-BRSP005-10.3_22_FINAL.pdf
Luciano Moreira_Jacob Bogie-BRSP005-10.3_22_FINAL.pdf
HostedbyConfluent
 
Azure Cosmos DB L100 Pitch Deck
Azure Cosmos DB L100 Pitch DeckAzure Cosmos DB L100 Pitch Deck
Azure Cosmos DB L100 Pitch Deck
Nicholas Vossburg
 
Azure Cosmos DB by Mohammed Gadi AUG April 2019
Azure Cosmos DB by Mohammed Gadi AUG April 2019Azure Cosmos DB by Mohammed Gadi AUG April 2019
Azure Cosmos DB by Mohammed Gadi AUG April 2019
Mohammed Gadi
 
A Quick Introduction to Microsoft Azure Public Cloud
A Quick Introduction to Microsoft Azure Public CloudA Quick Introduction to Microsoft Azure Public Cloud
A Quick Introduction to Microsoft Azure Public Cloud
ZNetLive
 
Microsoft Azure
Microsoft AzureMicrosoft Azure
Microsoft Azure
David Chou
 
Microsoft Azure Public Cloud - MDSC1
Microsoft Azure Public Cloud - MDSC1Microsoft Azure Public Cloud - MDSC1
Microsoft Azure Public Cloud - MDSC1
MDSC1
 
Azure Fundamentals Part 2
Azure Fundamentals Part 2Azure Fundamentals Part 2
Azure Fundamentals Part 2
CCG
 
Windows Azure In 30mins for none technical audience
Windows Azure In 30mins for none technical audienceWindows Azure In 30mins for none technical audience
Windows Azure In 30mins for none technical audience
Eric Nelson
 
Latest Microsoft Azure Solutions and Announcements - Presented by atidan june...
Latest Microsoft Azure Solutions and Announcements - Presented by atidan june...Latest Microsoft Azure Solutions and Announcements - Presented by atidan june...
Latest Microsoft Azure Solutions and Announcements - Presented by atidan june...
David J Rosenthal
 
Webinar | From Zero to 1 Million with Google Cloud Platform and DataStax
Webinar | From Zero to 1 Million with Google Cloud Platform and DataStaxWebinar | From Zero to 1 Million with Google Cloud Platform and DataStax
Webinar | From Zero to 1 Million with Google Cloud Platform and DataStax
DataStax
 
MSFT MAIW Data Mod - Session 1 Deck_Why Migrate your databases to Azure_Sept ...
MSFT MAIW Data Mod - Session 1 Deck_Why Migrate your databases to Azure_Sept ...MSFT MAIW Data Mod - Session 1 Deck_Why Migrate your databases to Azure_Sept ...
MSFT MAIW Data Mod - Session 1 Deck_Why Migrate your databases to Azure_Sept ...
ssuser01a66e
 
Azure Cosmos DB - NET Conf AR 2017 - English
Azure Cosmos DB - NET Conf AR 2017 - EnglishAzure Cosmos DB - NET Conf AR 2017 - English
Azure Cosmos DB - NET Conf AR 2017 - English
Matias Quaranta
 
Tour de France Azure PaaS 3/7 Stocker des informations
Tour de France Azure PaaS 3/7 Stocker des informationsTour de France Azure PaaS 3/7 Stocker des informations
Tour de France Azure PaaS 3/7 Stocker des informations
Alex Danvy
 
Session: Modern Data WareHouse
Session: Modern Data WareHouseSession: Modern Data WareHouse
Session: Modern Data WareHouse
Karina Matos
 
NoSQL Migration Technical Pitch Deck
NoSQL Migration Technical Pitch DeckNoSQL Migration Technical Pitch Deck
NoSQL Migration Technical Pitch Deck
Nicholas Vossburg
 
Joseph keynote @ Microsoft Data Amp, April 2017
Joseph keynote @ Microsoft Data Amp, April 2017Joseph keynote @ Microsoft Data Amp, April 2017
Joseph keynote @ Microsoft Data Amp, April 2017
SeokJin Han
 
SQL Server on Azure VM datasheet.pptx
SQL Server on Azure VM datasheet.pptxSQL Server on Azure VM datasheet.pptx
SQL Server on Azure VM datasheet.pptx
MESBetise
 
SQL Server on Azure VM datasheet.dsadaspptx
SQL Server on Azure VM datasheet.dsadaspptxSQL Server on Azure VM datasheet.dsadaspptx
SQL Server on Azure VM datasheet.dsadaspptx
JustineGarcia32
 
Cloud Native Apps
Cloud Native AppsCloud Native Apps
Cloud Native Apps
David Chou
 
Azure Cosmos DB - Azure Austin Meetup
Azure Cosmos DB - Azure Austin MeetupAzure Cosmos DB - Azure Austin Meetup
Azure Cosmos DB - Azure Austin Meetup
Matias Quaranta
 
Luciano Moreira_Jacob Bogie-BRSP005-10.3_22_FINAL.pdf
Luciano Moreira_Jacob Bogie-BRSP005-10.3_22_FINAL.pdfLuciano Moreira_Jacob Bogie-BRSP005-10.3_22_FINAL.pdf
Luciano Moreira_Jacob Bogie-BRSP005-10.3_22_FINAL.pdf
HostedbyConfluent
 
Azure Cosmos DB L100 Pitch Deck
Azure Cosmos DB L100 Pitch DeckAzure Cosmos DB L100 Pitch Deck
Azure Cosmos DB L100 Pitch Deck
Nicholas Vossburg
 
Azure Cosmos DB by Mohammed Gadi AUG April 2019
Azure Cosmos DB by Mohammed Gadi AUG April 2019Azure Cosmos DB by Mohammed Gadi AUG April 2019
Azure Cosmos DB by Mohammed Gadi AUG April 2019
Mohammed Gadi
 
A Quick Introduction to Microsoft Azure Public Cloud
A Quick Introduction to Microsoft Azure Public CloudA Quick Introduction to Microsoft Azure Public Cloud
A Quick Introduction to Microsoft Azure Public Cloud
ZNetLive
 
Microsoft Azure
Microsoft AzureMicrosoft Azure
Microsoft Azure
David Chou
 
Microsoft Azure Public Cloud - MDSC1
Microsoft Azure Public Cloud - MDSC1Microsoft Azure Public Cloud - MDSC1
Microsoft Azure Public Cloud - MDSC1
MDSC1
 
Azure Fundamentals Part 2
Azure Fundamentals Part 2Azure Fundamentals Part 2
Azure Fundamentals Part 2
CCG
 
Windows Azure In 30mins for none technical audience
Windows Azure In 30mins for none technical audienceWindows Azure In 30mins for none technical audience
Windows Azure In 30mins for none technical audience
Eric Nelson
 
Latest Microsoft Azure Solutions and Announcements - Presented by atidan june...
Latest Microsoft Azure Solutions and Announcements - Presented by atidan june...Latest Microsoft Azure Solutions and Announcements - Presented by atidan june...
Latest Microsoft Azure Solutions and Announcements - Presented by atidan june...
David J Rosenthal
 
Webinar | From Zero to 1 Million with Google Cloud Platform and DataStax
Webinar | From Zero to 1 Million with Google Cloud Platform and DataStaxWebinar | From Zero to 1 Million with Google Cloud Platform and DataStax
Webinar | From Zero to 1 Million with Google Cloud Platform and DataStax
DataStax
 
MSFT MAIW Data Mod - Session 1 Deck_Why Migrate your databases to Azure_Sept ...
MSFT MAIW Data Mod - Session 1 Deck_Why Migrate your databases to Azure_Sept ...MSFT MAIW Data Mod - Session 1 Deck_Why Migrate your databases to Azure_Sept ...
MSFT MAIW Data Mod - Session 1 Deck_Why Migrate your databases to Azure_Sept ...
ssuser01a66e
 
Ad

More from Linkurious (20)

Using graph technology for multi-INT investigations
Using graph technology for multi-INT investigationsUsing graph technology for multi-INT investigations
Using graph technology for multi-INT investigations
Linkurious
 
Webinar: What's new in Linkurious Enterprise 2.8
Webinar: What's new in Linkurious Enterprise 2.8Webinar: What's new in Linkurious Enterprise 2.8
Webinar: What's new in Linkurious Enterprise 2.8
Linkurious
 
Graph-based intelligence analysis
Graph-based intelligence analysis Graph-based intelligence analysis
Graph-based intelligence analysis
Linkurious
 
What's new in Linkurious Enterprise 2.7
What's new in Linkurious Enterprise 2.7What's new in Linkurious Enterprise 2.7
What's new in Linkurious Enterprise 2.7
Linkurious
 
GraphTech Ecosystem - part 2: Graph Analytics
 GraphTech Ecosystem - part 2: Graph Analytics GraphTech Ecosystem - part 2: Graph Analytics
GraphTech Ecosystem - part 2: Graph Analytics
Linkurious
 
3 types of fraud graph analytics can help defeat
3 types of fraud graph analytics can help defeat3 types of fraud graph analytics can help defeat
3 types of fraud graph analytics can help defeat
Linkurious
 
Graph technology and data-journalism: the case of the Paradise Papers
Graph technology and data-journalism: the case of the Paradise PapersGraph technology and data-journalism: the case of the Paradise Papers
Graph technology and data-journalism: the case of the Paradise Papers
Linkurious
 
Fraudes Financières: Méthodes de Prévention et Détection
Fraudes Financières: Méthodes de Prévention et DétectionFraudes Financières: Méthodes de Prévention et Détection
Fraudes Financières: Méthodes de Prévention et Détection
Linkurious
 
Detecting eCommerce Fraud with Neo4j and Linkurious
Detecting eCommerce Fraud with Neo4j and LinkuriousDetecting eCommerce Fraud with Neo4j and Linkurious
Detecting eCommerce Fraud with Neo4j and Linkurious
Linkurious
 
Graph-powered data lineage in Finance
Graph-powered data lineage in FinanceGraph-powered data lineage in Finance
Graph-powered data lineage in Finance
Linkurious
 
Using Linkurious in your Enterprise Architecture projects
Using Linkurious in your Enterprise Architecture projectsUsing Linkurious in your Enterprise Architecture projects
Using Linkurious in your Enterprise Architecture projects
Linkurious
 
Linkurious SDK: Build enterprise-ready graph applications faster
Linkurious SDK: Build enterprise-ready graph applications fasterLinkurious SDK: Build enterprise-ready graph applications faster
Linkurious SDK: Build enterprise-ready graph applications faster
Linkurious
 
Fighting financial crime with graph analysis at BIWA Summit 2017
Fighting financial crime with graph analysis at BIWA Summit 2017Fighting financial crime with graph analysis at BIWA Summit 2017
Fighting financial crime with graph analysis at BIWA Summit 2017
Linkurious
 
Reinforcing AML systems with graph technologies.
Reinforcing AML systems with graph technologies.Reinforcing AML systems with graph technologies.
Reinforcing AML systems with graph technologies.
Linkurious
 
Using graphs technologies for intelligence analysis.
Using graphs technologies for intelligence analysis. Using graphs technologies for intelligence analysis.
Using graphs technologies for intelligence analysis.
Linkurious
 
The 8 most common graph visualization mistakes
The 8 most common graph visualization mistakesThe 8 most common graph visualization mistakes
The 8 most common graph visualization mistakes
Linkurious
 
Panama papers: how ICIJ used Linkurious to investigate the Mossack Fonseca leaks
Panama papers: how ICIJ used Linkurious to investigate the Mossack Fonseca leaksPanama papers: how ICIJ used Linkurious to investigate the Mossack Fonseca leaks
Panama papers: how ICIJ used Linkurious to investigate the Mossack Fonseca leaks
Linkurious
 
La visualisation au service de la lutte contre la fraude
La visualisation au service de la lutte contre la fraudeLa visualisation au service de la lutte contre la fraude
La visualisation au service de la lutte contre la fraude
Linkurious
 
Finding answers through visualization (GraphDay Barcelona Feb 2016)
Finding answers through visualization (GraphDay Barcelona Feb 2016)Finding answers through visualization (GraphDay Barcelona Feb 2016)
Finding answers through visualization (GraphDay Barcelona Feb 2016)
Linkurious
 
Graph analysis of the European public tenders
Graph analysis of the European public tendersGraph analysis of the European public tenders
Graph analysis of the European public tenders
Linkurious
 
Using graph technology for multi-INT investigations
Using graph technology for multi-INT investigationsUsing graph technology for multi-INT investigations
Using graph technology for multi-INT investigations
Linkurious
 
Webinar: What's new in Linkurious Enterprise 2.8
Webinar: What's new in Linkurious Enterprise 2.8Webinar: What's new in Linkurious Enterprise 2.8
Webinar: What's new in Linkurious Enterprise 2.8
Linkurious
 
Graph-based intelligence analysis
Graph-based intelligence analysis Graph-based intelligence analysis
Graph-based intelligence analysis
Linkurious
 
What's new in Linkurious Enterprise 2.7
What's new in Linkurious Enterprise 2.7What's new in Linkurious Enterprise 2.7
What's new in Linkurious Enterprise 2.7
Linkurious
 
GraphTech Ecosystem - part 2: Graph Analytics
 GraphTech Ecosystem - part 2: Graph Analytics GraphTech Ecosystem - part 2: Graph Analytics
GraphTech Ecosystem - part 2: Graph Analytics
Linkurious
 
3 types of fraud graph analytics can help defeat
3 types of fraud graph analytics can help defeat3 types of fraud graph analytics can help defeat
3 types of fraud graph analytics can help defeat
Linkurious
 
Graph technology and data-journalism: the case of the Paradise Papers
Graph technology and data-journalism: the case of the Paradise PapersGraph technology and data-journalism: the case of the Paradise Papers
Graph technology and data-journalism: the case of the Paradise Papers
Linkurious
 
Fraudes Financières: Méthodes de Prévention et Détection
Fraudes Financières: Méthodes de Prévention et DétectionFraudes Financières: Méthodes de Prévention et Détection
Fraudes Financières: Méthodes de Prévention et Détection
Linkurious
 
Detecting eCommerce Fraud with Neo4j and Linkurious
Detecting eCommerce Fraud with Neo4j and LinkuriousDetecting eCommerce Fraud with Neo4j and Linkurious
Detecting eCommerce Fraud with Neo4j and Linkurious
Linkurious
 
Graph-powered data lineage in Finance
Graph-powered data lineage in FinanceGraph-powered data lineage in Finance
Graph-powered data lineage in Finance
Linkurious
 
Using Linkurious in your Enterprise Architecture projects
Using Linkurious in your Enterprise Architecture projectsUsing Linkurious in your Enterprise Architecture projects
Using Linkurious in your Enterprise Architecture projects
Linkurious
 
Linkurious SDK: Build enterprise-ready graph applications faster
Linkurious SDK: Build enterprise-ready graph applications fasterLinkurious SDK: Build enterprise-ready graph applications faster
Linkurious SDK: Build enterprise-ready graph applications faster
Linkurious
 
Fighting financial crime with graph analysis at BIWA Summit 2017
Fighting financial crime with graph analysis at BIWA Summit 2017Fighting financial crime with graph analysis at BIWA Summit 2017
Fighting financial crime with graph analysis at BIWA Summit 2017
Linkurious
 
Reinforcing AML systems with graph technologies.
Reinforcing AML systems with graph technologies.Reinforcing AML systems with graph technologies.
Reinforcing AML systems with graph technologies.
Linkurious
 
Using graphs technologies for intelligence analysis.
Using graphs technologies for intelligence analysis. Using graphs technologies for intelligence analysis.
Using graphs technologies for intelligence analysis.
Linkurious
 
The 8 most common graph visualization mistakes
The 8 most common graph visualization mistakesThe 8 most common graph visualization mistakes
The 8 most common graph visualization mistakes
Linkurious
 
Panama papers: how ICIJ used Linkurious to investigate the Mossack Fonseca leaks
Panama papers: how ICIJ used Linkurious to investigate the Mossack Fonseca leaksPanama papers: how ICIJ used Linkurious to investigate the Mossack Fonseca leaks
Panama papers: how ICIJ used Linkurious to investigate the Mossack Fonseca leaks
Linkurious
 
La visualisation au service de la lutte contre la fraude
La visualisation au service de la lutte contre la fraudeLa visualisation au service de la lutte contre la fraude
La visualisation au service de la lutte contre la fraude
Linkurious
 
Finding answers through visualization (GraphDay Barcelona Feb 2016)
Finding answers through visualization (GraphDay Barcelona Feb 2016)Finding answers through visualization (GraphDay Barcelona Feb 2016)
Finding answers through visualization (GraphDay Barcelona Feb 2016)
Linkurious
 
Graph analysis of the European public tenders
Graph analysis of the European public tendersGraph analysis of the European public tenders
Graph analysis of the European public tenders
Linkurious
 
Ad

Recently uploaded (20)

Deloitte Analytics - Applying Process Mining in an audit context
Deloitte Analytics - Applying Process Mining in an audit contextDeloitte Analytics - Applying Process Mining in an audit context
Deloitte Analytics - Applying Process Mining in an audit context
Process mining Evangelist
 
Flip flop presenation-Presented By Mubahir khan.pptx
Flip flop presenation-Presented By Mubahir khan.pptxFlip flop presenation-Presented By Mubahir khan.pptx
Flip flop presenation-Presented By Mubahir khan.pptx
mubashirkhan45461
 
Principles of information security Chapter 5.ppt
Principles of information security Chapter 5.pptPrinciples of information security Chapter 5.ppt
Principles of information security Chapter 5.ppt
EstherBaguma
 
Data Analytics Overview and its applications
Data Analytics Overview and its applicationsData Analytics Overview and its applications
Data Analytics Overview and its applications
JanmejayaMishra7
 
Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...
Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...
Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...
James Francis Paradigm Asset Management
 
03 Daniel 2-notes.ppt seminario escatologia
03 Daniel 2-notes.ppt seminario escatologia03 Daniel 2-notes.ppt seminario escatologia
03 Daniel 2-notes.ppt seminario escatologia
Alexander Romero Arosquipa
 
Conic Sectionfaggavahabaayhahahahahs.pptx
Conic Sectionfaggavahabaayhahahahahs.pptxConic Sectionfaggavahabaayhahahahahs.pptx
Conic Sectionfaggavahabaayhahahahahs.pptx
taiwanesechetan
 
183409-christina-rossetti.pdfdsfsdasggsag
183409-christina-rossetti.pdfdsfsdasggsag183409-christina-rossetti.pdfdsfsdasggsag
183409-christina-rossetti.pdfdsfsdasggsag
fardin123rahman07
 
Day 1 - Lab 1 Reconnaissance Scanning with NMAP, Vulnerability Assessment wit...
Day 1 - Lab 1 Reconnaissance Scanning with NMAP, Vulnerability Assessment wit...Day 1 - Lab 1 Reconnaissance Scanning with NMAP, Vulnerability Assessment wit...
Day 1 - Lab 1 Reconnaissance Scanning with NMAP, Vulnerability Assessment wit...
Abodahab
 
How iCode cybertech Helped Me Recover My Lost Funds
How iCode cybertech Helped Me Recover My Lost FundsHow iCode cybertech Helped Me Recover My Lost Funds
How iCode cybertech Helped Me Recover My Lost Funds
ireneschmid345
 
Calories_Prediction_using_Linear_Regression.pptx
Calories_Prediction_using_Linear_Regression.pptxCalories_Prediction_using_Linear_Regression.pptx
Calories_Prediction_using_Linear_Regression.pptx
TijiLMAHESHWARI
 
GenAI for Quant Analytics: survey-analytics.ai
GenAI for Quant Analytics: survey-analytics.aiGenAI for Quant Analytics: survey-analytics.ai
GenAI for Quant Analytics: survey-analytics.ai
Inspirient
 
Adobe Analytics NOAM Central User Group April 2025 Agent AI: Uncovering the S...
Adobe Analytics NOAM Central User Group April 2025 Agent AI: Uncovering the S...Adobe Analytics NOAM Central User Group April 2025 Agent AI: Uncovering the S...
Adobe Analytics NOAM Central User Group April 2025 Agent AI: Uncovering the S...
gmuir1066
 
FPET_Implementation_2_MA to 360 Engage Direct.pptx
FPET_Implementation_2_MA to 360 Engage Direct.pptxFPET_Implementation_2_MA to 360 Engage Direct.pptx
FPET_Implementation_2_MA to 360 Engage Direct.pptx
ssuser4ef83d
 
04302025_CCC TUG_DataVista: The Design Story
04302025_CCC TUG_DataVista: The Design Story04302025_CCC TUG_DataVista: The Design Story
04302025_CCC TUG_DataVista: The Design Story
ccctableauusergroup
 
IAS-slides2-ia-aaaaaaaaaaain-business.pdf
IAS-slides2-ia-aaaaaaaaaaain-business.pdfIAS-slides2-ia-aaaaaaaaaaain-business.pdf
IAS-slides2-ia-aaaaaaaaaaain-business.pdf
mcgardenlevi9
 
How to join illuminati Agent in uganda call+256776963507/0741506136
How to join illuminati Agent in uganda call+256776963507/0741506136How to join illuminati Agent in uganda call+256776963507/0741506136
How to join illuminati Agent in uganda call+256776963507/0741506136
illuminati Agent uganda call+256776963507/0741506136
 
Just-In-Timeasdfffffffghhhhhhhhhhj Systems.ppt
Just-In-Timeasdfffffffghhhhhhhhhhj Systems.pptJust-In-Timeasdfffffffghhhhhhhhhhj Systems.ppt
Just-In-Timeasdfffffffghhhhhhhhhhj Systems.ppt
ssuser5f8f49
 
md-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptx
md-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptxmd-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptx
md-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptx
fatimalazaar2004
 
VKS-Python Basics for Beginners and advance.pptx
VKS-Python Basics for Beginners and advance.pptxVKS-Python Basics for Beginners and advance.pptx
VKS-Python Basics for Beginners and advance.pptx
Vinod Srivastava
 
Deloitte Analytics - Applying Process Mining in an audit context
Deloitte Analytics - Applying Process Mining in an audit contextDeloitte Analytics - Applying Process Mining in an audit context
Deloitte Analytics - Applying Process Mining in an audit context
Process mining Evangelist
 
Flip flop presenation-Presented By Mubahir khan.pptx
Flip flop presenation-Presented By Mubahir khan.pptxFlip flop presenation-Presented By Mubahir khan.pptx
Flip flop presenation-Presented By Mubahir khan.pptx
mubashirkhan45461
 
Principles of information security Chapter 5.ppt
Principles of information security Chapter 5.pptPrinciples of information security Chapter 5.ppt
Principles of information security Chapter 5.ppt
EstherBaguma
 
Data Analytics Overview and its applications
Data Analytics Overview and its applicationsData Analytics Overview and its applications
Data Analytics Overview and its applications
JanmejayaMishra7
 
Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...
Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...
Safety Innovation in Mt. Vernon A Westchester County Model for New Rochelle a...
James Francis Paradigm Asset Management
 
Conic Sectionfaggavahabaayhahahahahs.pptx
Conic Sectionfaggavahabaayhahahahahs.pptxConic Sectionfaggavahabaayhahahahahs.pptx
Conic Sectionfaggavahabaayhahahahahs.pptx
taiwanesechetan
 
183409-christina-rossetti.pdfdsfsdasggsag
183409-christina-rossetti.pdfdsfsdasggsag183409-christina-rossetti.pdfdsfsdasggsag
183409-christina-rossetti.pdfdsfsdasggsag
fardin123rahman07
 
Day 1 - Lab 1 Reconnaissance Scanning with NMAP, Vulnerability Assessment wit...
Day 1 - Lab 1 Reconnaissance Scanning with NMAP, Vulnerability Assessment wit...Day 1 - Lab 1 Reconnaissance Scanning with NMAP, Vulnerability Assessment wit...
Day 1 - Lab 1 Reconnaissance Scanning with NMAP, Vulnerability Assessment wit...
Abodahab
 
How iCode cybertech Helped Me Recover My Lost Funds
How iCode cybertech Helped Me Recover My Lost FundsHow iCode cybertech Helped Me Recover My Lost Funds
How iCode cybertech Helped Me Recover My Lost Funds
ireneschmid345
 
Calories_Prediction_using_Linear_Regression.pptx
Calories_Prediction_using_Linear_Regression.pptxCalories_Prediction_using_Linear_Regression.pptx
Calories_Prediction_using_Linear_Regression.pptx
TijiLMAHESHWARI
 
GenAI for Quant Analytics: survey-analytics.ai
GenAI for Quant Analytics: survey-analytics.aiGenAI for Quant Analytics: survey-analytics.ai
GenAI for Quant Analytics: survey-analytics.ai
Inspirient
 
Adobe Analytics NOAM Central User Group April 2025 Agent AI: Uncovering the S...
Adobe Analytics NOAM Central User Group April 2025 Agent AI: Uncovering the S...Adobe Analytics NOAM Central User Group April 2025 Agent AI: Uncovering the S...
Adobe Analytics NOAM Central User Group April 2025 Agent AI: Uncovering the S...
gmuir1066
 
FPET_Implementation_2_MA to 360 Engage Direct.pptx
FPET_Implementation_2_MA to 360 Engage Direct.pptxFPET_Implementation_2_MA to 360 Engage Direct.pptx
FPET_Implementation_2_MA to 360 Engage Direct.pptx
ssuser4ef83d
 
04302025_CCC TUG_DataVista: The Design Story
04302025_CCC TUG_DataVista: The Design Story04302025_CCC TUG_DataVista: The Design Story
04302025_CCC TUG_DataVista: The Design Story
ccctableauusergroup
 
IAS-slides2-ia-aaaaaaaaaaain-business.pdf
IAS-slides2-ia-aaaaaaaaaaain-business.pdfIAS-slides2-ia-aaaaaaaaaaain-business.pdf
IAS-slides2-ia-aaaaaaaaaaain-business.pdf
mcgardenlevi9
 
Just-In-Timeasdfffffffghhhhhhhhhhj Systems.ppt
Just-In-Timeasdfffffffghhhhhhhhhhj Systems.pptJust-In-Timeasdfffffffghhhhhhhhhhj Systems.ppt
Just-In-Timeasdfffffffghhhhhhhhhhj Systems.ppt
ssuser5f8f49
 
md-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptx
md-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptxmd-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptx
md-presentHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHation.pptx
fatimalazaar2004
 
VKS-Python Basics for Beginners and advance.pptx
VKS-Python Basics for Beginners and advance.pptxVKS-Python Basics for Beginners and advance.pptx
VKS-Python Basics for Beginners and advance.pptx
Vinod Srivastava
 

Getting started with Cosmos DB + Linkurious Enterprise

  • 1. Getting started with Cosmos DB + Linkurious Enterprise.
  • 2. 1. Cosmos DB 2. Linkurious Enterprise 3. Use cases 4. Demo 5. Q&A Luis Bosquez Program Manager @ Microsoft @_lbosq Jean Villedieu Co-founder @ Microsoft @jvilledieu
  • 3. MODERN APPS FACE NEW CHALLENGES Managing and syncing data distributed around the globe Delivering highly-responsive, real-time personalization Processing and analyzing large, complex data Scaling both throughput and storage based on global demand Offering low-latency to global users Modernizing existing apps and data
  • 4. Azure Cosmos DB was built to support modern app patterns and use cases. It enables industry-leading organizations to unlock the value of data, and respond to global customers and changing business dynamics in real-time. POWERING GLOBAL SOLUTIONS Data distributed and available globally Puts data where your users are Build real-time customer experiences Enable latency-sensitive personalization, bidding, and fraud detection. Ideal for gaming, IoT & eCommerce Predictable and fast service, even during traffic spikes Simplified development with serverless architecture Fully-managed event-driven micro-services with elastic computing power Run Spark analytics over operational data Accelerate insights from fast, global data Lift and shift NoSQL data Lift and shift MongoDB and Cassandra workloads
  • 5. A FULLY-MANAGED GLOBALLY DISTRIBUTED DATABASE SERVICE BUILT TO GUARANTEE EXTREMELY LOW LATENCY AND MASSIVE SCALE FOR MODERN APPS AZURE COSMOS DB
  • 6. Turnkey global distribution Elastic scale out of storage & throughput Guaranteed low latency at the 99th percentile Comprehensive SLAs Five well-defined consistency models Table API WHAT IS AZURE COSMOS DB SQL MongoDB Column-family DocumentKey-value Graph A globally distributed, massively scalable, multi-model database service
  • 7. ELASTIC SCALE OUT OF STORAGE AND THROUGHPUT SCALES AS YOUR APPS’ NEEDS CHANGE Independently and elastically scale storage and throughput across regions – even during unpredictable traffic bursts – with a database that adapts to your app’s needs. • Elastically scale throughput from 10 to 100s of millions of requests/sec across multiple regions • Support for requests/sec for different workloads • Pay only for the throughput and storage you need
  • 8. GUARANTEED LOW LATENCY PROVIDE USERS AROUND THE WORLD WITH FAST ACCESS TO DATA Serve <10 ms read and <15 ms write requests at the 99th percentile from the region nearest to users, while delivering data globally.
  • 9. TURNKEY GLOBAL DISTRIBUTION PUT YOUR DATA WHERE YOUR USERS ARE IN MINUTES Automatically replicate all your data around the world, and across more regions than Amazon and Google combined. • Available in all Azure regions • Manual and automatic failover • Automatic & synchronous multi-region replication
  • 10. Strong Bounded-stateless Session Consistent prefix Eventual FIVE WELL-DEFINED CONSISTENCY MODELS CHOOSE THE BEST CONSISTENCY MODEL FOR YOUR APP Offers five consistency models Provides control over performance-consistency tradeoffs, backed by comprehensive SLAs. An intuitive programming model offering low latency and high availability for your planet-scale app.
  • 11. MULTIPLE DATA MODELS AND APIs USE THE MODEL THAT FITS YOUR REQUIREMENTS, AND THE APIS, TOOLS, AND FRAMEWORKS YOU PREFER Column-family Document Table API Key-valu e SQL MongoDB Graph Cosmos DB offers a multitude of APIs to access and query data including, SQL, various popular OSS APIs, and native support for NoSQL workloads. Use key-value, columnar, graph, and document data Data is automatically indexed, with no schema or secondary indexes required Blazing fast queries with no lag
  • 12. HANDLE ANY DATA WITH NO SCHEMA OR INDEXING REQUIRED Azure Cosmos DB’s schema-less service automatically indexes all your data, regardless of the data model, to delivery blazing fast queries. Item Color Microwave safe Liquid capacity CPU Memory Storage Geek mug Graphite Yes 16ox ??? ??? ??? Coffee Bean mug Tan No 12oz ??? ??? ??? Surface book Gray ??? ??? 3.4 GHz Intel Skylak e Core i7-6600 U 16GB 1 TB SSD • Automatic index management • Synchronous auto-indexing • Freedom from schema + index management • Works across every data model • Ingest and serve data back out in milliseconds GEE K
  • 13. COMPREHENSIVE SLAs RUN YOUR APP ON WORLD-CLASS INFRASTRUCTURE Azure Cosmos DB is the only service with financially-backed SLAs for millisecond latency at the 99th percentile, 99.999% HA and guaranteed throughput and consistency HALatency <10 ms 99th percentile 99.999 % Throughput Consistency Guaranteed Guaranteed
  • 14. TRUST YOUR DATA TO INDUSTRY-LEADING SECURITY & COMPLIANCE Azure is the world’s most trusted cloud, with more certifications than any other cloud provider. • Enterprise grade security • Encryption at Rest and Transit • Encryption is enabled automatically by default • Comprehensive Azure compliance certification
  • 15. TOP 10 REASONS WHY CUSTOMERS USE AZURE COSMOS DB Natively supports different types of data at massive scale Provides multi-tenancy and enterprise-grade security The 1st and only database with global distribution turnkey capability Enables mission critical intelligent applications Deliver massive storage/throughput scalability database Gives high flexibility to optimize for speed and cost Boasts 5 well-defined consistency models to pick the right consistency/latency/ throughput tradeoff Naturally analytics-ready and perfect for event-driven architectures Provides guaranteed single digit millisecond latency at 99th percentile worldwide Tackles big data workloads with high availability and reliability
  • 16. Cosmos DB Gremlin API Fully Managed Cloud Graph Database ● Compliant with the Apache Tinkerpop Gremlin database specification the Open-source standard for graph databases. ● Leverages all benefits of Azure Cosmos DB. ● Compatible with open-source drivers and connectors. ● Compatible with Linkurious for enterprise-grade visualization.
  • 17. How to make graph data accessible to business users?
  • 18. Uncover insights hidden in graph data with Linkurious Enterprise.
  • 23. Client data and fraud.