SlideShare una empresa de Scribd logo
1 de 19
Descargar para leer sin conexión
www.arangodb.com 
Polyglot Persistence 
& 
Multi-Model Databases 
London Java Community 
28-10-2014 
Michael Hackstein 
@mchacki
Michael Hackstein 
‣ ArangoDB Core Team 
‣ Web Frontend 
‣ Graph visualisation 
‣ Graph features 
! 
! 
‣ Host of cologne.js 
! 
! 
‣ Master’s Degree 
(spec. Databases and 
Information Systems) 
2
The Single Model era is over 
3 
Relational World
The Multi Model era begins 
‣ Normally based on key-value stores (each document still 
4 
NoSQL World 
Documents - JSON 
{ 
“type": "sweater", 
“color": "blue", 
“size": “M”, 
“material”: “wool”, 
“form”: “turtleneck" 
} 
{ 
“type“: "pants", 
“waist": 32, 
“length”: 34, 
“color": "blue", 
“material”: “cotton" 
} 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
has a unique key) 
‣ Allow to save documents with logical similarity in 
“collections” 
‣ Treat data records as attribute-structured documents 
(data is no more opaque) 
‣ Often allow querying and indexing document attributes 
‣ Focussed on m-to-n relations between entities 
‣ Stores property graphs: entities and edges can have 
‣ Easily query paths of variable length 
K => V 
K => V 
K => V 
K => V 
{ 
“type": "sweater", 
“color": "blue", 
“size": “M”, 
“material”: “wool”, 
“form”: “turtleneck" 
} 
attributes 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
K => V 
Graphs 
Key Value 
{ 
“type“: "television", 
“diagonal screen size": 46, 
“hdmi inputs": 3, 
“wall mountable": true, 
“built-in digital tuner": true, 
“dynamic contrast ratio”: “50,000:1”, 
Resolution”: “1920x1080” 
} 
‣ Map value data to unique string keys (identifiers) 
‣ Treat data as opaque (data has no schema) 
‣ Can implement scaling and partitioning easily
An e-commerce system in Relational World 
5 
Sales-History 
Shopping-Cart 
Recommendations Customer 
Product-Catalog
Polyglot Persistence 
6 
Shopping Cart 
Product Catalog 
MongoDB 
Reporting 
RDBMS 
Financial Data 
RDBMS 
Recommendations 
Neo4J 
Analytics 
Cassandra 
Product Catalog 
Document 
Source: Martin Fowler, http://martinfowler.com/articles/nosql-intro.pdf 
Riak 
User activity log 
Cassandra 
User Sessions 
Redis 
Shopping Cart 
KeyValue 
Reporting 
RDBMS 
Financial Data 
RDBMS 
Recommendations 
Graph 
Analytics 
Column 
User activity log 
Column 
User Sessions 
KeyValue
Single Model Databases 
7 
Sales-History Recommendations 
Customer 
{ 
“userID": 239178239, 
“productID”: 128623883, 
“number": 5, 
“price”: 12.20, 
} 
DocumentStore GraphStore DocumentStore 
{ 
“userID": 239178239, 
“productID”: 128623883, 
“number": 5, 
“price”: 12.20, 
} 
{ 
“Name": "Smith", 
“lastLogin”: “2012-11-01", 
“Visits": 121, 
“shipping address”: “abc”, 
“shipping address”: “def” 
} 
{ 
“Name": "Meyer", 
“lastLogin”: “2012-11-21", 
“Visits": 20, 
“shipping address”: “xyz”, 
} 
{ 
“type": "sweater", 
“color": "blue", 
“size": “M”, 
“material”: “wool”, 
“form”: “turtleneck" 
} 
{ 
“type": "sweater", 
“color": "blue", 
“size": “M”, 
“material”: “wool”, 
“form”: “turtleneck" 
} 
Shopping-Cart Product-Catalog 
423453453 
4328, “shirt”, “L”, 1, 12.99 
6378, “sweater”, “M”, 2, 37.95 
3245, “sweater”, “blue”, 1, 99.95 
3245, “pants”, “32/34”, “black”, 1, 99.95 
=> 
874365563 
5463, “shirt”, “S”, 1, 9.99 
6378, “sweater”, “M”, 2, 37.95 
3245, “pants”, “32/34”, “black”, 1, 99.95 
=> 
{ 
“type“: "pants", 
“waist": 32, 
“length”: 34, 
“color": "blue", 
“material”: “cotton" 
} 
{ 
“type“: "television", 
“diagonal screen size": 46, 
“hdmi inputs": 3, 
“wall mountable": true, 
“built-in digital tuner": true, 
“dynamic contrast ratio”: “50,000:1”, 
Resolution”: “1920x1080” 
} 
KeyValueStore DocumentStore
Benefits 
‣ Natural mapping of data 
into DB 
‣ DB optimized for the data 
format 
‣ Queries are tailored for 
your data format 
‣ Focus on writing business 
logic 
8 
& Overhead 
‣Data has to be stored 
redundantly and has to be 
kept in sync 
‣Several technologies 
involved 
‣Administration effort is 
huge
Solution: Multi Model Database 
‣ Can natively store several kinds of data models: 
‣ Key-value pairs 
‣ Documents 
‣ Graphs 
‣ Delivers query mechanisms for all data models 
9
Polyglot Persistence Revisited 
Financial Data 
ArangoDB 
Recommendations 
ArangoDB 
10 
User Sessions 
KeyValue 
Shopping Cart 
KeyValue 
Product Catalog 
Document 
Reporting 
RDBMS 
Financial Data 
RDBMS 
Recommendations 
Graph 
Analytics 
Column 
User activity log 
Column 
Shopping Cart 
ArangoDB 
Product Catalog 
ArangoDB 
Reporting 
RDBMS 
Source: Martin Fowler, http://martinfowler.com/articles/nosql-intro.pdf 
Analytics 
Cassandra 
User activity log 
Cassandra 
User Sessions 
ArangoDB
Use Case: Multi-Model-Databases 
11 
Sales-History Recommendations 
Customer 
{ 
“userID": 239178239, 
“productID”: 128623883, 
“number": 5, 
“price”: 12.20, 
} 
DocumentStore GraphStore DocumentStore 
{ 
“userID": 239178239, 
“productID”: 128623883, 
“number": 5, 
“price”: 12.20, 
} 
{ 
“Name": "Smith", 
“lastLogin”: “2012-11-01", 
“Visits": 121, 
“shipping address”: “abc”, 
“shipping address”: “def” 
} 
{ 
“Name": "Meyer", 
“lastLogin”: “2012-11-21", 
“Visits": 20, 
“shipping address”: “xyz”, 
} 
{ 
“type": "sweater", 
“color": "blue", 
“size": “M”, 
“material”: “wool”, 
“form”: “turtleneck" 
} 
{ 
“type": "sweater", 
“color": "blue", 
“size": “M”, 
“material”: “wool”, 
“form”: “turtleneck" 
} 
Shopping-Cart Product-Catalog 
423453453 
4328, “shirt”, “L”, 1, 12.99 
6378, “sweater”, “M”, 2, 37.95 
3245, “sweater”, “blue”, 1, 99.95 
3245, “pants”, “32/34”, “black”, 1, 99.95 
=> 
874365563 
5463, “shirt”, “S”, 1, 9.99 
6378, “sweater”, “M”, 2, 37.95 
3245, “pants”, “32/34”, “black”, 1, 99.95 
=> 
{ 
“type“: "pants", 
“waist": 32, 
“length”: 34, 
“color": "blue", 
“material”: “cotton" 
} 
{ 
“type“: "television", 
“diagonal screen size": 46, 
“hdmi inputs": 3, 
“wall mountable": true, 
“built-in digital tuner": true, 
“dynamic contrast ratio”: “50,000:1”, 
Resolution”: “1920x1080” 
} 
KeyValueStore DocumentStore
My four favorite features of 
‣ AQL offering joins & traversals 
‣ ACID including Multi Collection Transactions 
‣ MULTI-MODEL stores graphs and documents 
12 
‣ FOXX extend the API and adapt it to your needs
AQL 
‣Document Query: 
FOR user IN users FILTER user.active == true 
FOR game IN games FILTER game.player == user._id 
RETURN { 
username: user.name, 
score: game.score 
} 
‣ Modify Documents: 
FOR u IN users FILTER u.status == 'not active' 
UPDATE u WITH { active: false } IN users 
! 
‣ Graph Traversal: 
RETURN GRAPH_TRAVERSAL( 
"underground_plan", „stations/main_station", 
"outbound", {minDepth: 2, maxDepth: 5} 
) 
13
ACID - Transactions 
‣ Invoke a transaction: 
db._executeTransaction({ 
collections: { 
write: ["users", "products"], 
read: "recommendations" 
}, 
action: function() { 
// all operations go here 
! 
} 
}); 
14 
throw "failure"; // Triggers rollback
Benefits & Overhead 
‣ Native mapping of data into 
DB 
‣ DB optimized 
‣ Queries are tailored for 
your data format 
‣ Focus on writing business 
logic 
15 
‣Data has to be stored 
redundantly and has to be 
kept in sync 
‣Several technologies 
‣Administration effort is 
‣One technology involved
Foxx 
‣ Add your own customized and versioned REST-API on top of 
ArangoDB in JavaScript 
‣ Include as a web service in Rails, Node.js etc. 
‣ Use as storage for Web-frameworks like AngularJS, EmberJS, Backbone etc. 
‣ Built-in authentication using OAuth2.0 or HTTP-Basic Auth 
‣ Operations are encapsulated in the database 
‣ low network traffic, direct data access 
‣ increases data privacy 
➡Multi-device setups 
➡Microservices 
/ 
(~( 
) ) /_/ 
( _-----_(@ @) 
(  / 
/|/--| V 
" " " " 
16
‣ open source and free (Apache 2 license) 
‣ sharding & replication 
‣ JavaScript throughout (V8 built into server) 
‣ drivers for a wide range of languages 
‣ web frontend 
‣ good & complete documentation 
‣ professional as well as community support 
17 
An overview of other features
Join our growing community 
18 
.. working on the geo index, the full text search and 
many APIs: Ruby, Python, PHP, Java, D, Javascript, ...
Thank you 
! 
! 
! 
‣ Further questions? 
‣ Follow me on twitter/github: @mchacki 
‣ Write me a mail: mchacki@arangodb.com 
‣ Join or google group: https://groups.google.com/forum/#!forum/arangodb 
19

Más contenido relacionado

La actualidad más candente

Web Browser Controls in Adlib: The Hidden Diamond in the Adlib Treasure Chest
Web Browser Controls in Adlib: The Hidden Diamond in the Adlib Treasure ChestWeb Browser Controls in Adlib: The Hidden Diamond in the Adlib Treasure Chest
Web Browser Controls in Adlib: The Hidden Diamond in the Adlib Treasure ChestAxiell ALM
 
CenitHub: Introduction
CenitHub: Introduction CenitHub: Introduction
CenitHub: Introduction Miguel Sancho
 
An E-commerce App in action built on top of a Multi-model Database
An E-commerce App in action built on top of a Multi-model DatabaseAn E-commerce App in action built on top of a Multi-model Database
An E-commerce App in action built on top of a Multi-model DatabaseArangoDB Database
 
Query Languages for Document Stores
Query Languages for Document StoresQuery Languages for Document Stores
Query Languages for Document StoresInteractiveCologne
 
CData Data Today: A Developer's Dilemma
CData Data Today: A Developer's DilemmaCData Data Today: A Developer's Dilemma
CData Data Today: A Developer's DilemmaJerod Johnson
 
DocumentDB - NoSQL on Cloud at Reboot2015
DocumentDB - NoSQL on Cloud at Reboot2015DocumentDB - NoSQL on Cloud at Reboot2015
DocumentDB - NoSQL on Cloud at Reboot2015Vidyasagar Machupalli
 
Analyze and visualize non-relational data with DocumentDB + Power BI
Analyze and visualize non-relational data with DocumentDB + Power BIAnalyze and visualize non-relational data with DocumentDB + Power BI
Analyze and visualize non-relational data with DocumentDB + Power BISriram Hariharan
 
Hands-On: Managing Slowly Changing Dimensions Using TD Workflow
Hands-On: Managing Slowly Changing Dimensions Using TD WorkflowHands-On: Managing Slowly Changing Dimensions Using TD Workflow
Hands-On: Managing Slowly Changing Dimensions Using TD WorkflowTreasure Data, Inc.
 
Jumpstart: MongoDB BI Connector & Tableau
Jumpstart: MongoDB BI Connector & TableauJumpstart: MongoDB BI Connector & Tableau
Jumpstart: MongoDB BI Connector & TableauMongoDB
 
MongoDB .local London 2019: MongoDB Atlas Data Lake Technical Deep Dive
MongoDB .local London 2019: MongoDB Atlas Data Lake Technical Deep DiveMongoDB .local London 2019: MongoDB Atlas Data Lake Technical Deep Dive
MongoDB .local London 2019: MongoDB Atlas Data Lake Technical Deep DiveMongoDB
 
Data persistence using pouchdb and couchdb
Data persistence using pouchdb and couchdbData persistence using pouchdb and couchdb
Data persistence using pouchdb and couchdbDimgba Kalu
 
Azure DocumentDB for Healthcare Integration
Azure DocumentDB for Healthcare IntegrationAzure DocumentDB for Healthcare Integration
Azure DocumentDB for Healthcare IntegrationBizTalk360
 
MongoDB .local Paris 2020: Devenez explorateur de données avec MongoDB Charts
MongoDB .local Paris 2020: Devenez explorateur de données avec MongoDB ChartsMongoDB .local Paris 2020: Devenez explorateur de données avec MongoDB Charts
MongoDB .local Paris 2020: Devenez explorateur de données avec MongoDB ChartsMongoDB
 
Backbone using Extensible Database APIs over HTTP
Backbone using Extensible Database APIs over HTTPBackbone using Extensible Database APIs over HTTP
Backbone using Extensible Database APIs over HTTPMax Neunhöffer
 
MongoDB .local Chicago 2019: MongoDB Atlas Data Lake Technical Deep Dive
MongoDB .local Chicago 2019: MongoDB Atlas Data Lake Technical Deep DiveMongoDB .local Chicago 2019: MongoDB Atlas Data Lake Technical Deep Dive
MongoDB .local Chicago 2019: MongoDB Atlas Data Lake Technical Deep DiveMongoDB
 
SharePoint Content Database Sizing-BLOB-Crawl
SharePoint Content Database Sizing-BLOB-CrawlSharePoint Content Database Sizing-BLOB-Crawl
SharePoint Content Database Sizing-BLOB-CrawlE Blake
 
MongoDB .local Munich 2019: Telediagnosis@Daimler powered by MongoDB
MongoDB .local Munich 2019: Telediagnosis@Daimler powered by MongoDBMongoDB .local Munich 2019: Telediagnosis@Daimler powered by MongoDB
MongoDB .local Munich 2019: Telediagnosis@Daimler powered by MongoDBMongoDB
 
MongoDB SoCal 2020: Migrate Anything* to MongoDB Atlas
MongoDB SoCal 2020: Migrate Anything* to MongoDB AtlasMongoDB SoCal 2020: Migrate Anything* to MongoDB Atlas
MongoDB SoCal 2020: Migrate Anything* to MongoDB AtlasMongoDB
 
MongoDB and Azure Databricks
MongoDB and Azure DatabricksMongoDB and Azure Databricks
MongoDB and Azure DatabricksMongoDB
 
C* Summit 2013: Optimizing the Public Cloud for Cost and Scalability with Cas...
C* Summit 2013: Optimizing the Public Cloud for Cost and Scalability with Cas...C* Summit 2013: Optimizing the Public Cloud for Cost and Scalability with Cas...
C* Summit 2013: Optimizing the Public Cloud for Cost and Scalability with Cas...DataStax Academy
 

La actualidad más candente (20)

Web Browser Controls in Adlib: The Hidden Diamond in the Adlib Treasure Chest
Web Browser Controls in Adlib: The Hidden Diamond in the Adlib Treasure ChestWeb Browser Controls in Adlib: The Hidden Diamond in the Adlib Treasure Chest
Web Browser Controls in Adlib: The Hidden Diamond in the Adlib Treasure Chest
 
CenitHub: Introduction
CenitHub: Introduction CenitHub: Introduction
CenitHub: Introduction
 
An E-commerce App in action built on top of a Multi-model Database
An E-commerce App in action built on top of a Multi-model DatabaseAn E-commerce App in action built on top of a Multi-model Database
An E-commerce App in action built on top of a Multi-model Database
 
Query Languages for Document Stores
Query Languages for Document StoresQuery Languages for Document Stores
Query Languages for Document Stores
 
CData Data Today: A Developer's Dilemma
CData Data Today: A Developer's DilemmaCData Data Today: A Developer's Dilemma
CData Data Today: A Developer's Dilemma
 
DocumentDB - NoSQL on Cloud at Reboot2015
DocumentDB - NoSQL on Cloud at Reboot2015DocumentDB - NoSQL on Cloud at Reboot2015
DocumentDB - NoSQL on Cloud at Reboot2015
 
Analyze and visualize non-relational data with DocumentDB + Power BI
Analyze and visualize non-relational data with DocumentDB + Power BIAnalyze and visualize non-relational data with DocumentDB + Power BI
Analyze and visualize non-relational data with DocumentDB + Power BI
 
Hands-On: Managing Slowly Changing Dimensions Using TD Workflow
Hands-On: Managing Slowly Changing Dimensions Using TD WorkflowHands-On: Managing Slowly Changing Dimensions Using TD Workflow
Hands-On: Managing Slowly Changing Dimensions Using TD Workflow
 
Jumpstart: MongoDB BI Connector & Tableau
Jumpstart: MongoDB BI Connector & TableauJumpstart: MongoDB BI Connector & Tableau
Jumpstart: MongoDB BI Connector & Tableau
 
MongoDB .local London 2019: MongoDB Atlas Data Lake Technical Deep Dive
MongoDB .local London 2019: MongoDB Atlas Data Lake Technical Deep DiveMongoDB .local London 2019: MongoDB Atlas Data Lake Technical Deep Dive
MongoDB .local London 2019: MongoDB Atlas Data Lake Technical Deep Dive
 
Data persistence using pouchdb and couchdb
Data persistence using pouchdb and couchdbData persistence using pouchdb and couchdb
Data persistence using pouchdb and couchdb
 
Azure DocumentDB for Healthcare Integration
Azure DocumentDB for Healthcare IntegrationAzure DocumentDB for Healthcare Integration
Azure DocumentDB for Healthcare Integration
 
MongoDB .local Paris 2020: Devenez explorateur de données avec MongoDB Charts
MongoDB .local Paris 2020: Devenez explorateur de données avec MongoDB ChartsMongoDB .local Paris 2020: Devenez explorateur de données avec MongoDB Charts
MongoDB .local Paris 2020: Devenez explorateur de données avec MongoDB Charts
 
Backbone using Extensible Database APIs over HTTP
Backbone using Extensible Database APIs over HTTPBackbone using Extensible Database APIs over HTTP
Backbone using Extensible Database APIs over HTTP
 
MongoDB .local Chicago 2019: MongoDB Atlas Data Lake Technical Deep Dive
MongoDB .local Chicago 2019: MongoDB Atlas Data Lake Technical Deep DiveMongoDB .local Chicago 2019: MongoDB Atlas Data Lake Technical Deep Dive
MongoDB .local Chicago 2019: MongoDB Atlas Data Lake Technical Deep Dive
 
SharePoint Content Database Sizing-BLOB-Crawl
SharePoint Content Database Sizing-BLOB-CrawlSharePoint Content Database Sizing-BLOB-Crawl
SharePoint Content Database Sizing-BLOB-Crawl
 
MongoDB .local Munich 2019: Telediagnosis@Daimler powered by MongoDB
MongoDB .local Munich 2019: Telediagnosis@Daimler powered by MongoDBMongoDB .local Munich 2019: Telediagnosis@Daimler powered by MongoDB
MongoDB .local Munich 2019: Telediagnosis@Daimler powered by MongoDB
 
MongoDB SoCal 2020: Migrate Anything* to MongoDB Atlas
MongoDB SoCal 2020: Migrate Anything* to MongoDB AtlasMongoDB SoCal 2020: Migrate Anything* to MongoDB Atlas
MongoDB SoCal 2020: Migrate Anything* to MongoDB Atlas
 
MongoDB and Azure Databricks
MongoDB and Azure DatabricksMongoDB and Azure Databricks
MongoDB and Azure Databricks
 
C* Summit 2013: Optimizing the Public Cloud for Cost and Scalability with Cas...
C* Summit 2013: Optimizing the Public Cloud for Cost and Scalability with Cas...C* Summit 2013: Optimizing the Public Cloud for Cost and Scalability with Cas...
C* Summit 2013: Optimizing the Public Cloud for Cost and Scalability with Cas...
 

Destacado

Domain Driven Design and NoSQL TLV
Domain Driven Design and NoSQL TLVDomain Driven Design and NoSQL TLV
Domain Driven Design and NoSQL TLVArangoDB Database
 
CAP and the Architectural Consequences by martin Schönert
CAP and the Architectural Consequences by martin SchönertCAP and the Architectural Consequences by martin Schönert
CAP and the Architectural Consequences by martin SchönertArangoDB Database
 
Polyglot Persistence & Multi Model-Databases at JMaghreb3.0
Polyglot Persistence & Multi Model-Databases at JMaghreb3.0Polyglot Persistence & Multi Model-Databases at JMaghreb3.0
Polyglot Persistence & Multi Model-Databases at JMaghreb3.0ArangoDB Database
 
Creating Fault Tolerant Services on Mesos
Creating Fault Tolerant Services on MesosCreating Fault Tolerant Services on Mesos
Creating Fault Tolerant Services on MesosArangoDB Database
 
Row or Columnar Database
Row or Columnar DatabaseRow or Columnar Database
Row or Columnar DatabaseBiju Nair
 
Introduction to column oriented databases
Introduction to column oriented databasesIntroduction to column oriented databases
Introduction to column oriented databasesArangoDB Database
 
Query mechanisms for NoSQL databases
Query mechanisms for NoSQL databasesQuery mechanisms for NoSQL databases
Query mechanisms for NoSQL databasesArangoDB Database
 
Domain Driven Design und Nosql
Domain Driven Design und Nosql Domain Driven Design und Nosql
Domain Driven Design und Nosql ArangoDB Database
 
Einführung in nosql // ArangoDB mit Symfony 2
Einführung in nosql // ArangoDB mit Symfony 2Einführung in nosql // ArangoDB mit Symfony 2
Einführung in nosql // ArangoDB mit Symfony 2ArangoDB Database
 

Destacado (13)

Wir sind aber nicht Twitter
Wir sind aber nicht TwitterWir sind aber nicht Twitter
Wir sind aber nicht Twitter
 
Guacamole
GuacamoleGuacamole
Guacamole
 
Domain Driven Design and NoSQL TLV
Domain Driven Design and NoSQL TLVDomain Driven Design and NoSQL TLV
Domain Driven Design and NoSQL TLV
 
CAP and the Architectural Consequences by martin Schönert
CAP and the Architectural Consequences by martin SchönertCAP and the Architectural Consequences by martin Schönert
CAP and the Architectural Consequences by martin Schönert
 
Polyglot Persistence & Multi Model-Databases at JMaghreb3.0
Polyglot Persistence & Multi Model-Databases at JMaghreb3.0Polyglot Persistence & Multi Model-Databases at JMaghreb3.0
Polyglot Persistence & Multi Model-Databases at JMaghreb3.0
 
NoSQL meets Microservices
NoSQL meets MicroservicesNoSQL meets Microservices
NoSQL meets Microservices
 
Creating Fault Tolerant Services on Mesos
Creating Fault Tolerant Services on MesosCreating Fault Tolerant Services on Mesos
Creating Fault Tolerant Services on Mesos
 
Row or Columnar Database
Row or Columnar DatabaseRow or Columnar Database
Row or Columnar Database
 
Introduction to column oriented databases
Introduction to column oriented databasesIntroduction to column oriented databases
Introduction to column oriented databases
 
Query mechanisms for NoSQL databases
Query mechanisms for NoSQL databasesQuery mechanisms for NoSQL databases
Query mechanisms for NoSQL databases
 
Domain Driven Design und Nosql
Domain Driven Design und Nosql Domain Driven Design und Nosql
Domain Driven Design und Nosql
 
Einführung in nosql // ArangoDB mit Symfony 2
Einführung in nosql // ArangoDB mit Symfony 2Einführung in nosql // ArangoDB mit Symfony 2
Einführung in nosql // ArangoDB mit Symfony 2
 
SlideShare 101
SlideShare 101SlideShare 101
SlideShare 101
 

Similar a Multi model-databases 29-10-2014 LJC

Polyglot Persistence & Multi-Model Databases (FullStack Toronto)
Polyglot Persistence & Multi-Model Databases (FullStack Toronto)Polyglot Persistence & Multi-Model Databases (FullStack Toronto)
Polyglot Persistence & Multi-Model Databases (FullStack Toronto)ArangoDB Database
 
OSDC 2015: Ingo Friepoertner | Polyglot Persistence & Multi-Model NoSQL Datab...
OSDC 2015: Ingo Friepoertner | Polyglot Persistence & Multi-Model NoSQL Datab...OSDC 2015: Ingo Friepoertner | Polyglot Persistence & Multi-Model NoSQL Datab...
OSDC 2015: Ingo Friepoertner | Polyglot Persistence & Multi-Model NoSQL Datab...NETWAYS
 
Polyglot Persistence & Multi-Model Databases
Polyglot Persistence & Multi-Model DatabasesPolyglot Persistence & Multi-Model Databases
Polyglot Persistence & Multi-Model DatabasesArangoDB Database
 
SH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptx
SH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptxSH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptx
SH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptxMongoDB
 
SH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptx
SH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptxSH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptx
SH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptxMongoDB
 
Michael Hackstein - NoSQL meets Microservices - NoSQL matters Dublin 2015
Michael Hackstein - NoSQL meets Microservices - NoSQL matters Dublin 2015Michael Hackstein - NoSQL meets Microservices - NoSQL matters Dublin 2015
Michael Hackstein - NoSQL meets Microservices - NoSQL matters Dublin 2015NoSQLmatters
 
NoSQL meets Microservices - Michael Hackstein
NoSQL meets Microservices - Michael HacksteinNoSQL meets Microservices - Michael Hackstein
NoSQL meets Microservices - Michael Hacksteindistributed matters
 
MongoDB World 2019: Building an Efficient and Performant Data Model: Real Wor...
MongoDB World 2019: Building an Efficient and Performant Data Model: Real Wor...MongoDB World 2019: Building an Efficient and Performant Data Model: Real Wor...
MongoDB World 2019: Building an Efficient and Performant Data Model: Real Wor...MongoDB
 
[MongoDB.local Bengaluru 2018] Keynote
[MongoDB.local Bengaluru 2018] Keynote[MongoDB.local Bengaluru 2018] Keynote
[MongoDB.local Bengaluru 2018] KeynoteMongoDB
 
IE9에서 HTML5 개발하기
IE9에서 HTML5 개발하기IE9에서 HTML5 개발하기
IE9에서 HTML5 개발하기Reagan Hwang
 
Strongly Typed Languages and Flexible Schemas
Strongly Typed Languages and Flexible SchemasStrongly Typed Languages and Flexible Schemas
Strongly Typed Languages and Flexible SchemasNorberto Leite
 
You know what iMEAN? Using MEAN stack for application dev on Informix
You know what iMEAN? Using MEAN stack for application dev on InformixYou know what iMEAN? Using MEAN stack for application dev on Informix
You know what iMEAN? Using MEAN stack for application dev on InformixKeshav Murthy
 
Couchbase Tutorial: Big data Open Source Systems: VLDB2018
Couchbase Tutorial: Big data Open Source Systems: VLDB2018Couchbase Tutorial: Big data Open Source Systems: VLDB2018
Couchbase Tutorial: Big data Open Source Systems: VLDB2018Keshav Murthy
 
Webinar: Strongly Typed Languages and Flexible Schemas
Webinar: Strongly Typed Languages and Flexible SchemasWebinar: Strongly Typed Languages and Flexible Schemas
Webinar: Strongly Typed Languages and Flexible SchemasMongoDB
 
Windows8 lightningtalk
Windows8 lightningtalkWindows8 lightningtalk
Windows8 lightningtalkcarlspierre
 
MVP Cloud OS Week Track 1 9 Sept: Data liberty
MVP Cloud OS Week Track 1 9 Sept: Data libertyMVP Cloud OS Week Track 1 9 Sept: Data liberty
MVP Cloud OS Week Track 1 9 Sept: Data libertycsmyth501
 
MVP Cloud OS Week: 9 Sept, Track 1 Data Liberty
MVP Cloud OS Week: 9 Sept, Track 1 Data LibertyMVP Cloud OS Week: 9 Sept, Track 1 Data Liberty
MVP Cloud OS Week: 9 Sept, Track 1 Data Libertycsmyth501
 
Building your First MEAN App
Building your First MEAN AppBuilding your First MEAN App
Building your First MEAN AppMongoDB
 

Similar a Multi model-databases 29-10-2014 LJC (20)

Polyglot Persistence & Multi-Model Databases (FullStack Toronto)
Polyglot Persistence & Multi-Model Databases (FullStack Toronto)Polyglot Persistence & Multi-Model Databases (FullStack Toronto)
Polyglot Persistence & Multi-Model Databases (FullStack Toronto)
 
OSDC 2015: Ingo Friepoertner | Polyglot Persistence & Multi-Model NoSQL Datab...
OSDC 2015: Ingo Friepoertner | Polyglot Persistence & Multi-Model NoSQL Datab...OSDC 2015: Ingo Friepoertner | Polyglot Persistence & Multi-Model NoSQL Datab...
OSDC 2015: Ingo Friepoertner | Polyglot Persistence & Multi-Model NoSQL Datab...
 
Polyglot Persistence & Multi-Model Databases
Polyglot Persistence & Multi-Model DatabasesPolyglot Persistence & Multi-Model Databases
Polyglot Persistence & Multi-Model Databases
 
SH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptx
SH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptxSH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptx
SH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptx
 
SH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptx
SH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptxSH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptx
SH 1 - SES 2 part 2 - Tel Aviv MDBlocal - Eliot Keynote.pptx
 
Michael Hackstein - NoSQL meets Microservices - NoSQL matters Dublin 2015
Michael Hackstein - NoSQL meets Microservices - NoSQL matters Dublin 2015Michael Hackstein - NoSQL meets Microservices - NoSQL matters Dublin 2015
Michael Hackstein - NoSQL meets Microservices - NoSQL matters Dublin 2015
 
NoSQL meets Microservices - Michael Hackstein
NoSQL meets Microservices - Michael HacksteinNoSQL meets Microservices - Michael Hackstein
NoSQL meets Microservices - Michael Hackstein
 
MongoDB World 2019: Building an Efficient and Performant Data Model: Real Wor...
MongoDB World 2019: Building an Efficient and Performant Data Model: Real Wor...MongoDB World 2019: Building an Efficient and Performant Data Model: Real Wor...
MongoDB World 2019: Building an Efficient and Performant Data Model: Real Wor...
 
[MongoDB.local Bengaluru 2018] Keynote
[MongoDB.local Bengaluru 2018] Keynote[MongoDB.local Bengaluru 2018] Keynote
[MongoDB.local Bengaluru 2018] Keynote
 
MongoDB Meetup
MongoDB MeetupMongoDB Meetup
MongoDB Meetup
 
IE9에서 HTML5 개발하기
IE9에서 HTML5 개발하기IE9에서 HTML5 개발하기
IE9에서 HTML5 개발하기
 
Strongly Typed Languages and Flexible Schemas
Strongly Typed Languages and Flexible SchemasStrongly Typed Languages and Flexible Schemas
Strongly Typed Languages and Flexible Schemas
 
You know what iMEAN? Using MEAN stack for application dev on Informix
You know what iMEAN? Using MEAN stack for application dev on InformixYou know what iMEAN? Using MEAN stack for application dev on Informix
You know what iMEAN? Using MEAN stack for application dev on Informix
 
Couchbase Tutorial: Big data Open Source Systems: VLDB2018
Couchbase Tutorial: Big data Open Source Systems: VLDB2018Couchbase Tutorial: Big data Open Source Systems: VLDB2018
Couchbase Tutorial: Big data Open Source Systems: VLDB2018
 
Webinar: Strongly Typed Languages and Flexible Schemas
Webinar: Strongly Typed Languages and Flexible SchemasWebinar: Strongly Typed Languages and Flexible Schemas
Webinar: Strongly Typed Languages and Flexible Schemas
 
Windows8 lightningtalk
Windows8 lightningtalkWindows8 lightningtalk
Windows8 lightningtalk
 
Introduction To R
Introduction To RIntroduction To R
Introduction To R
 
MVP Cloud OS Week Track 1 9 Sept: Data liberty
MVP Cloud OS Week Track 1 9 Sept: Data libertyMVP Cloud OS Week Track 1 9 Sept: Data liberty
MVP Cloud OS Week Track 1 9 Sept: Data liberty
 
MVP Cloud OS Week: 9 Sept, Track 1 Data Liberty
MVP Cloud OS Week: 9 Sept, Track 1 Data LibertyMVP Cloud OS Week: 9 Sept, Track 1 Data Liberty
MVP Cloud OS Week: 9 Sept, Track 1 Data Liberty
 
Building your First MEAN App
Building your First MEAN AppBuilding your First MEAN App
Building your First MEAN App
 

Más de ArangoDB Database

ATO 2022 - Machine Learning + Graph Databases for Better Recommendations (3)....
ATO 2022 - Machine Learning + Graph Databases for Better Recommendations (3)....ATO 2022 - Machine Learning + Graph Databases for Better Recommendations (3)....
ATO 2022 - Machine Learning + Graph Databases for Better Recommendations (3)....ArangoDB Database
 
Machine Learning + Graph Databases for Better Recommendations V2 08/20/2022
Machine Learning + Graph Databases for Better Recommendations V2 08/20/2022Machine Learning + Graph Databases for Better Recommendations V2 08/20/2022
Machine Learning + Graph Databases for Better Recommendations V2 08/20/2022ArangoDB Database
 
Machine Learning + Graph Databases for Better Recommendations V1 08/06/2022
Machine Learning + Graph Databases for Better Recommendations V1 08/06/2022Machine Learning + Graph Databases for Better Recommendations V1 08/06/2022
Machine Learning + Graph Databases for Better Recommendations V1 08/06/2022ArangoDB Database
 
ArangoDB 3.9 - Further Powering Graphs at Scale
ArangoDB 3.9 - Further Powering Graphs at ScaleArangoDB 3.9 - Further Powering Graphs at Scale
ArangoDB 3.9 - Further Powering Graphs at ScaleArangoDB Database
 
GraphSage vs Pinsage #InsideArangoDB
GraphSage vs Pinsage #InsideArangoDBGraphSage vs Pinsage #InsideArangoDB
GraphSage vs Pinsage #InsideArangoDBArangoDB Database
 
Webinar: ArangoDB 3.8 Preview - Analytics at Scale
Webinar: ArangoDB 3.8 Preview - Analytics at Scale Webinar: ArangoDB 3.8 Preview - Analytics at Scale
Webinar: ArangoDB 3.8 Preview - Analytics at Scale ArangoDB Database
 
Graph Analytics with ArangoDB
Graph Analytics with ArangoDBGraph Analytics with ArangoDB
Graph Analytics with ArangoDBArangoDB Database
 
Getting Started with ArangoDB Oasis
Getting Started with ArangoDB OasisGetting Started with ArangoDB Oasis
Getting Started with ArangoDB OasisArangoDB Database
 
Custom Pregel Algorithms in ArangoDB
Custom Pregel Algorithms in ArangoDBCustom Pregel Algorithms in ArangoDB
Custom Pregel Algorithms in ArangoDBArangoDB Database
 
Hacktoberfest 2020 - Intro to Knowledge Graphs
Hacktoberfest 2020 - Intro to Knowledge GraphsHacktoberfest 2020 - Intro to Knowledge Graphs
Hacktoberfest 2020 - Intro to Knowledge GraphsArangoDB Database
 
A Graph Database That Scales - ArangoDB 3.7 Release Webinar
A Graph Database That Scales - ArangoDB 3.7 Release WebinarA Graph Database That Scales - ArangoDB 3.7 Release Webinar
A Graph Database That Scales - ArangoDB 3.7 Release WebinarArangoDB Database
 
gVisor, Kata Containers, Firecracker, Docker: Who is Who in the Container Space?
gVisor, Kata Containers, Firecracker, Docker: Who is Who in the Container Space?gVisor, Kata Containers, Firecracker, Docker: Who is Who in the Container Space?
gVisor, Kata Containers, Firecracker, Docker: Who is Who in the Container Space?ArangoDB Database
 
ArangoML Pipeline Cloud - Managed Machine Learning Metadata
ArangoML Pipeline Cloud - Managed Machine Learning MetadataArangoML Pipeline Cloud - Managed Machine Learning Metadata
ArangoML Pipeline Cloud - Managed Machine Learning MetadataArangoDB Database
 
ArangoDB 3.7 Roadmap: Performance at Scale
ArangoDB 3.7 Roadmap: Performance at ScaleArangoDB 3.7 Roadmap: Performance at Scale
ArangoDB 3.7 Roadmap: Performance at ScaleArangoDB Database
 
Webinar: What to expect from ArangoDB Oasis
Webinar: What to expect from ArangoDB OasisWebinar: What to expect from ArangoDB Oasis
Webinar: What to expect from ArangoDB OasisArangoDB Database
 
ArangoDB 3.5 Feature Overview Webinar - Sept 12, 2019
ArangoDB 3.5 Feature Overview Webinar - Sept 12, 2019ArangoDB 3.5 Feature Overview Webinar - Sept 12, 2019
ArangoDB 3.5 Feature Overview Webinar - Sept 12, 2019ArangoDB Database
 
An introduction to multi-model databases
An introduction to multi-model databasesAn introduction to multi-model databases
An introduction to multi-model databasesArangoDB Database
 
Running complex data queries in a distributed system
Running complex data queries in a distributed systemRunning complex data queries in a distributed system
Running complex data queries in a distributed systemArangoDB Database
 
Guacamole Fiesta: What do avocados and databases have in common?
Guacamole Fiesta: What do avocados and databases have in common?Guacamole Fiesta: What do avocados and databases have in common?
Guacamole Fiesta: What do avocados and databases have in common?ArangoDB Database
 

Más de ArangoDB Database (20)

ATO 2022 - Machine Learning + Graph Databases for Better Recommendations (3)....
ATO 2022 - Machine Learning + Graph Databases for Better Recommendations (3)....ATO 2022 - Machine Learning + Graph Databases for Better Recommendations (3)....
ATO 2022 - Machine Learning + Graph Databases for Better Recommendations (3)....
 
Machine Learning + Graph Databases for Better Recommendations V2 08/20/2022
Machine Learning + Graph Databases for Better Recommendations V2 08/20/2022Machine Learning + Graph Databases for Better Recommendations V2 08/20/2022
Machine Learning + Graph Databases for Better Recommendations V2 08/20/2022
 
Machine Learning + Graph Databases for Better Recommendations V1 08/06/2022
Machine Learning + Graph Databases for Better Recommendations V1 08/06/2022Machine Learning + Graph Databases for Better Recommendations V1 08/06/2022
Machine Learning + Graph Databases for Better Recommendations V1 08/06/2022
 
ArangoDB 3.9 - Further Powering Graphs at Scale
ArangoDB 3.9 - Further Powering Graphs at ScaleArangoDB 3.9 - Further Powering Graphs at Scale
ArangoDB 3.9 - Further Powering Graphs at Scale
 
GraphSage vs Pinsage #InsideArangoDB
GraphSage vs Pinsage #InsideArangoDBGraphSage vs Pinsage #InsideArangoDB
GraphSage vs Pinsage #InsideArangoDB
 
Webinar: ArangoDB 3.8 Preview - Analytics at Scale
Webinar: ArangoDB 3.8 Preview - Analytics at Scale Webinar: ArangoDB 3.8 Preview - Analytics at Scale
Webinar: ArangoDB 3.8 Preview - Analytics at Scale
 
Graph Analytics with ArangoDB
Graph Analytics with ArangoDBGraph Analytics with ArangoDB
Graph Analytics with ArangoDB
 
Getting Started with ArangoDB Oasis
Getting Started with ArangoDB OasisGetting Started with ArangoDB Oasis
Getting Started with ArangoDB Oasis
 
Custom Pregel Algorithms in ArangoDB
Custom Pregel Algorithms in ArangoDBCustom Pregel Algorithms in ArangoDB
Custom Pregel Algorithms in ArangoDB
 
Hacktoberfest 2020 - Intro to Knowledge Graphs
Hacktoberfest 2020 - Intro to Knowledge GraphsHacktoberfest 2020 - Intro to Knowledge Graphs
Hacktoberfest 2020 - Intro to Knowledge Graphs
 
A Graph Database That Scales - ArangoDB 3.7 Release Webinar
A Graph Database That Scales - ArangoDB 3.7 Release WebinarA Graph Database That Scales - ArangoDB 3.7 Release Webinar
A Graph Database That Scales - ArangoDB 3.7 Release Webinar
 
gVisor, Kata Containers, Firecracker, Docker: Who is Who in the Container Space?
gVisor, Kata Containers, Firecracker, Docker: Who is Who in the Container Space?gVisor, Kata Containers, Firecracker, Docker: Who is Who in the Container Space?
gVisor, Kata Containers, Firecracker, Docker: Who is Who in the Container Space?
 
ArangoML Pipeline Cloud - Managed Machine Learning Metadata
ArangoML Pipeline Cloud - Managed Machine Learning MetadataArangoML Pipeline Cloud - Managed Machine Learning Metadata
ArangoML Pipeline Cloud - Managed Machine Learning Metadata
 
ArangoDB 3.7 Roadmap: Performance at Scale
ArangoDB 3.7 Roadmap: Performance at ScaleArangoDB 3.7 Roadmap: Performance at Scale
ArangoDB 3.7 Roadmap: Performance at Scale
 
Webinar: What to expect from ArangoDB Oasis
Webinar: What to expect from ArangoDB OasisWebinar: What to expect from ArangoDB Oasis
Webinar: What to expect from ArangoDB Oasis
 
ArangoDB 3.5 Feature Overview Webinar - Sept 12, 2019
ArangoDB 3.5 Feature Overview Webinar - Sept 12, 2019ArangoDB 3.5 Feature Overview Webinar - Sept 12, 2019
ArangoDB 3.5 Feature Overview Webinar - Sept 12, 2019
 
3.5 webinar
3.5 webinar 3.5 webinar
3.5 webinar
 
An introduction to multi-model databases
An introduction to multi-model databasesAn introduction to multi-model databases
An introduction to multi-model databases
 
Running complex data queries in a distributed system
Running complex data queries in a distributed systemRunning complex data queries in a distributed system
Running complex data queries in a distributed system
 
Guacamole Fiesta: What do avocados and databases have in common?
Guacamole Fiesta: What do avocados and databases have in common?Guacamole Fiesta: What do avocados and databases have in common?
Guacamole Fiesta: What do avocados and databases have in common?
 

Último

定制英国白金汉大学毕业证(UCB毕业证书) 成绩单原版一比一
定制英国白金汉大学毕业证(UCB毕业证书)																			成绩单原版一比一定制英国白金汉大学毕业证(UCB毕业证书)																			成绩单原版一比一
定制英国白金汉大学毕业证(UCB毕业证书) 成绩单原版一比一ffjhghh
 
April 2024 - Crypto Market Report's Analysis
April 2024 - Crypto Market Report's AnalysisApril 2024 - Crypto Market Report's Analysis
April 2024 - Crypto Market Report's Analysismanisha194592
 
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service BhilaiLow Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service BhilaiSuhani Kapoor
 
04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationshipsccctableauusergroup
 
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改atducpo
 
Log Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxLog Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxJohnnyPlasten
 
BPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptx
BPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptxBPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptx
BPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptxMohammedJunaid861692
 
B2 Creative Industry Response Evaluation.docx
B2 Creative Industry Response Evaluation.docxB2 Creative Industry Response Evaluation.docx
B2 Creative Industry Response Evaluation.docxStephen266013
 
Carero dropshipping via API with DroFx.pptx
Carero dropshipping via API with DroFx.pptxCarero dropshipping via API with DroFx.pptx
Carero dropshipping via API with DroFx.pptxolyaivanovalion
 
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Callshivangimorya083
 
Data-Analysis for Chicago Crime Data 2023
Data-Analysis for Chicago Crime Data  2023Data-Analysis for Chicago Crime Data  2023
Data-Analysis for Chicago Crime Data 2023ymrp368
 
Week-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionWeek-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionfulawalesam
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...apidays
 
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...Suhani Kapoor
 
Schema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdfSchema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdfLars Albertsson
 
RA-11058_IRR-COMPRESS Do 198 series of 1998
RA-11058_IRR-COMPRESS Do 198 series of 1998RA-11058_IRR-COMPRESS Do 198 series of 1998
RA-11058_IRR-COMPRESS Do 198 series of 1998YohFuh
 
Industrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfIndustrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfLars Albertsson
 
Delhi Call Girls Punjabi Bagh 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls Punjabi Bagh 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls Punjabi Bagh 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls Punjabi Bagh 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Callshivangimorya083
 
100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptxAnupama Kate
 
Edukaciniai dropshipping via API with DroFx
Edukaciniai dropshipping via API with DroFxEdukaciniai dropshipping via API with DroFx
Edukaciniai dropshipping via API with DroFxolyaivanovalion
 

Último (20)

定制英国白金汉大学毕业证(UCB毕业证书) 成绩单原版一比一
定制英国白金汉大学毕业证(UCB毕业证书)																			成绩单原版一比一定制英国白金汉大学毕业证(UCB毕业证书)																			成绩单原版一比一
定制英国白金汉大学毕业证(UCB毕业证书) 成绩单原版一比一
 
April 2024 - Crypto Market Report's Analysis
April 2024 - Crypto Market Report's AnalysisApril 2024 - Crypto Market Report's Analysis
April 2024 - Crypto Market Report's Analysis
 
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service BhilaiLow Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
 
04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships
 
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
 
Log Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxLog Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptx
 
BPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptx
BPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptxBPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptx
BPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptx
 
B2 Creative Industry Response Evaluation.docx
B2 Creative Industry Response Evaluation.docxB2 Creative Industry Response Evaluation.docx
B2 Creative Industry Response Evaluation.docx
 
Carero dropshipping via API with DroFx.pptx
Carero dropshipping via API with DroFx.pptxCarero dropshipping via API with DroFx.pptx
Carero dropshipping via API with DroFx.pptx
 
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
 
Data-Analysis for Chicago Crime Data 2023
Data-Analysis for Chicago Crime Data  2023Data-Analysis for Chicago Crime Data  2023
Data-Analysis for Chicago Crime Data 2023
 
Week-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionWeek-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interaction
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
 
Schema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdfSchema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdf
 
RA-11058_IRR-COMPRESS Do 198 series of 1998
RA-11058_IRR-COMPRESS Do 198 series of 1998RA-11058_IRR-COMPRESS Do 198 series of 1998
RA-11058_IRR-COMPRESS Do 198 series of 1998
 
Industrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfIndustrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdf
 
Delhi Call Girls Punjabi Bagh 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls Punjabi Bagh 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls Punjabi Bagh 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls Punjabi Bagh 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
 
100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx
 
Edukaciniai dropshipping via API with DroFx
Edukaciniai dropshipping via API with DroFxEdukaciniai dropshipping via API with DroFx
Edukaciniai dropshipping via API with DroFx
 

Multi model-databases 29-10-2014 LJC

  • 1. www.arangodb.com Polyglot Persistence & Multi-Model Databases London Java Community 28-10-2014 Michael Hackstein @mchacki
  • 2. Michael Hackstein ‣ ArangoDB Core Team ‣ Web Frontend ‣ Graph visualisation ‣ Graph features ! ! ‣ Host of cologne.js ! ! ‣ Master’s Degree (spec. Databases and Information Systems) 2
  • 3. The Single Model era is over 3 Relational World
  • 4. The Multi Model era begins ‣ Normally based on key-value stores (each document still 4 NoSQL World Documents - JSON { “type": "sweater", “color": "blue", “size": “M”, “material”: “wool”, “form”: “turtleneck" } { “type“: "pants", “waist": 32, “length”: 34, “color": "blue", “material”: “cotton" } K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V has a unique key) ‣ Allow to save documents with logical similarity in “collections” ‣ Treat data records as attribute-structured documents (data is no more opaque) ‣ Often allow querying and indexing document attributes ‣ Focussed on m-to-n relations between entities ‣ Stores property graphs: entities and edges can have ‣ Easily query paths of variable length K => V K => V K => V K => V { “type": "sweater", “color": "blue", “size": “M”, “material”: “wool”, “form”: “turtleneck" } attributes K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V K => V Graphs Key Value { “type“: "television", “diagonal screen size": 46, “hdmi inputs": 3, “wall mountable": true, “built-in digital tuner": true, “dynamic contrast ratio”: “50,000:1”, Resolution”: “1920x1080” } ‣ Map value data to unique string keys (identifiers) ‣ Treat data as opaque (data has no schema) ‣ Can implement scaling and partitioning easily
  • 5. An e-commerce system in Relational World 5 Sales-History Shopping-Cart Recommendations Customer Product-Catalog
  • 6. Polyglot Persistence 6 Shopping Cart Product Catalog MongoDB Reporting RDBMS Financial Data RDBMS Recommendations Neo4J Analytics Cassandra Product Catalog Document Source: Martin Fowler, http://martinfowler.com/articles/nosql-intro.pdf Riak User activity log Cassandra User Sessions Redis Shopping Cart KeyValue Reporting RDBMS Financial Data RDBMS Recommendations Graph Analytics Column User activity log Column User Sessions KeyValue
  • 7. Single Model Databases 7 Sales-History Recommendations Customer { “userID": 239178239, “productID”: 128623883, “number": 5, “price”: 12.20, } DocumentStore GraphStore DocumentStore { “userID": 239178239, “productID”: 128623883, “number": 5, “price”: 12.20, } { “Name": "Smith", “lastLogin”: “2012-11-01", “Visits": 121, “shipping address”: “abc”, “shipping address”: “def” } { “Name": "Meyer", “lastLogin”: “2012-11-21", “Visits": 20, “shipping address”: “xyz”, } { “type": "sweater", “color": "blue", “size": “M”, “material”: “wool”, “form”: “turtleneck" } { “type": "sweater", “color": "blue", “size": “M”, “material”: “wool”, “form”: “turtleneck" } Shopping-Cart Product-Catalog 423453453 4328, “shirt”, “L”, 1, 12.99 6378, “sweater”, “M”, 2, 37.95 3245, “sweater”, “blue”, 1, 99.95 3245, “pants”, “32/34”, “black”, 1, 99.95 => 874365563 5463, “shirt”, “S”, 1, 9.99 6378, “sweater”, “M”, 2, 37.95 3245, “pants”, “32/34”, “black”, 1, 99.95 => { “type“: "pants", “waist": 32, “length”: 34, “color": "blue", “material”: “cotton" } { “type“: "television", “diagonal screen size": 46, “hdmi inputs": 3, “wall mountable": true, “built-in digital tuner": true, “dynamic contrast ratio”: “50,000:1”, Resolution”: “1920x1080” } KeyValueStore DocumentStore
  • 8. Benefits ‣ Natural mapping of data into DB ‣ DB optimized for the data format ‣ Queries are tailored for your data format ‣ Focus on writing business logic 8 & Overhead ‣Data has to be stored redundantly and has to be kept in sync ‣Several technologies involved ‣Administration effort is huge
  • 9. Solution: Multi Model Database ‣ Can natively store several kinds of data models: ‣ Key-value pairs ‣ Documents ‣ Graphs ‣ Delivers query mechanisms for all data models 9
  • 10. Polyglot Persistence Revisited Financial Data ArangoDB Recommendations ArangoDB 10 User Sessions KeyValue Shopping Cart KeyValue Product Catalog Document Reporting RDBMS Financial Data RDBMS Recommendations Graph Analytics Column User activity log Column Shopping Cart ArangoDB Product Catalog ArangoDB Reporting RDBMS Source: Martin Fowler, http://martinfowler.com/articles/nosql-intro.pdf Analytics Cassandra User activity log Cassandra User Sessions ArangoDB
  • 11. Use Case: Multi-Model-Databases 11 Sales-History Recommendations Customer { “userID": 239178239, “productID”: 128623883, “number": 5, “price”: 12.20, } DocumentStore GraphStore DocumentStore { “userID": 239178239, “productID”: 128623883, “number": 5, “price”: 12.20, } { “Name": "Smith", “lastLogin”: “2012-11-01", “Visits": 121, “shipping address”: “abc”, “shipping address”: “def” } { “Name": "Meyer", “lastLogin”: “2012-11-21", “Visits": 20, “shipping address”: “xyz”, } { “type": "sweater", “color": "blue", “size": “M”, “material”: “wool”, “form”: “turtleneck" } { “type": "sweater", “color": "blue", “size": “M”, “material”: “wool”, “form”: “turtleneck" } Shopping-Cart Product-Catalog 423453453 4328, “shirt”, “L”, 1, 12.99 6378, “sweater”, “M”, 2, 37.95 3245, “sweater”, “blue”, 1, 99.95 3245, “pants”, “32/34”, “black”, 1, 99.95 => 874365563 5463, “shirt”, “S”, 1, 9.99 6378, “sweater”, “M”, 2, 37.95 3245, “pants”, “32/34”, “black”, 1, 99.95 => { “type“: "pants", “waist": 32, “length”: 34, “color": "blue", “material”: “cotton" } { “type“: "television", “diagonal screen size": 46, “hdmi inputs": 3, “wall mountable": true, “built-in digital tuner": true, “dynamic contrast ratio”: “50,000:1”, Resolution”: “1920x1080” } KeyValueStore DocumentStore
  • 12. My four favorite features of ‣ AQL offering joins & traversals ‣ ACID including Multi Collection Transactions ‣ MULTI-MODEL stores graphs and documents 12 ‣ FOXX extend the API and adapt it to your needs
  • 13. AQL ‣Document Query: FOR user IN users FILTER user.active == true FOR game IN games FILTER game.player == user._id RETURN { username: user.name, score: game.score } ‣ Modify Documents: FOR u IN users FILTER u.status == 'not active' UPDATE u WITH { active: false } IN users ! ‣ Graph Traversal: RETURN GRAPH_TRAVERSAL( "underground_plan", „stations/main_station", "outbound", {minDepth: 2, maxDepth: 5} ) 13
  • 14. ACID - Transactions ‣ Invoke a transaction: db._executeTransaction({ collections: { write: ["users", "products"], read: "recommendations" }, action: function() { // all operations go here ! } }); 14 throw "failure"; // Triggers rollback
  • 15. Benefits & Overhead ‣ Native mapping of data into DB ‣ DB optimized ‣ Queries are tailored for your data format ‣ Focus on writing business logic 15 ‣Data has to be stored redundantly and has to be kept in sync ‣Several technologies ‣Administration effort is ‣One technology involved
  • 16. Foxx ‣ Add your own customized and versioned REST-API on top of ArangoDB in JavaScript ‣ Include as a web service in Rails, Node.js etc. ‣ Use as storage for Web-frameworks like AngularJS, EmberJS, Backbone etc. ‣ Built-in authentication using OAuth2.0 or HTTP-Basic Auth ‣ Operations are encapsulated in the database ‣ low network traffic, direct data access ‣ increases data privacy ➡Multi-device setups ➡Microservices / (~( ) ) /_/ ( _-----_(@ @) ( / /|/--| V " " " " 16
  • 17. ‣ open source and free (Apache 2 license) ‣ sharding & replication ‣ JavaScript throughout (V8 built into server) ‣ drivers for a wide range of languages ‣ web frontend ‣ good & complete documentation ‣ professional as well as community support 17 An overview of other features
  • 18. Join our growing community 18 .. working on the geo index, the full text search and many APIs: Ruby, Python, PHP, Java, D, Javascript, ...
  • 19. Thank you ! ! ! ‣ Further questions? ‣ Follow me on twitter/github: @mchacki ‣ Write me a mail: mchacki@arangodb.com ‣ Join or google group: https://groups.google.com/forum/#!forum/arangodb 19