SlideShare uma empresa Scribd logo
1 de 77
Baixar para ler offline
Entity Relationships in
a Document Database
    MapReduce Views for SQL Users
Entity:
An object defined by its identity
and a thread of continuity[1]




             1. "Entity" Domain-driven Design Community <http://domaindrivendesign.org/node/109>.
Entity
Relationship
Model
Join vs. Collation
SQL Query Joining
Publishers and Books
SELECT
  `publisher`.`id`,
  `publisher`.`name`,
  `book`.`title`
FROM `publisher`
FULL OUTER JOIN `book`
  ON `publisher`.`id` = `book`.`publisher_id`
ORDER BY
  `publisher`.`id`,
  `book`.`title`;
Joined Result Set
publisher.id publisher.name          book.title
                              Building iPhone Apps with
  oreilly    O'Reilly Media
                              HTML, CSS, and JavaScript
                              CouchDB: The Definitive
  oreilly    O'Reilly Media
                                     Guide
                              DocBook: The Definitive
  oreilly    O'Reilly Media
                                     Guide

  oreilly    O'Reilly Media     RESTful Web Services
Joined Result Set
     Publisher (“left”)
publisher.id publisher.name          book.title
                              Building iPhone Apps with
  oreilly    O'Reilly Media
                              HTML, CSS, and JavaScript
                              CouchDB: The Definitive
  oreilly    O'Reilly Media
                                     Guide
                              DocBook: The Definitive
  oreilly    O'Reilly Media
                                     Guide

  oreilly    O'Reilly Media     RESTful Web Services
Joined Result Set
     Publisher (“left”)            Book “right”
publisher.id publisher.name          book.title
                              Building iPhone Apps with
  oreilly    O'Reilly Media
                              HTML, CSS, and JavaScript
                              CouchDB: The Definitive
  oreilly    O'Reilly Media
                                     Guide
                              DocBook: The Definitive
  oreilly    O'Reilly Media
                                     Guide

  oreilly    O'Reilly Media     RESTful Web Services
Collated Result Set
      key            id                 value

  ["oreilly",0]   "oreilly"        "O'Reilly Media"
                              "Building iPhone Apps with
  ["oreilly",1]   "oreilly"
                              HTML, CSS, and JavaScript"
                               "CouchDB: The Definitive
  ["oreilly",1]   "oreilly"
                                         Guide"
                               "DocBook: The Definitive
  ["oreilly",1]   "oreilly"
                                         Guide"
  ["oreilly",1]   "oreilly"    "RESTful Web Services"
Collated Result Set
    key            id                 value

["oreilly",0]   "oreilly"        "O'Reilly Media"        Publisher
                            "Building iPhone Apps with
["oreilly",1]   "oreilly"
                            HTML, CSS, and JavaScript"
                             "CouchDB: The Definitive
["oreilly",1]   "oreilly"
                                       Guide"
                             "DocBook: The Definitive
["oreilly",1]   "oreilly"
                                       Guide"
["oreilly",1]   "oreilly"    "RESTful Web Services"
Collated Result Set
    key            id                 value

["oreilly",0]   "oreilly"        "O'Reilly Media"        Publisher
                            "Building iPhone Apps with
["oreilly",1]   "oreilly"
                            HTML, CSS, and JavaScript"
                             "CouchDB: The Definitive
["oreilly",1]   "oreilly"
                                       Guide"
                                                          Books
                             "DocBook: The Definitive
["oreilly",1]   "oreilly"
                                       Guide"
["oreilly",1]   "oreilly"    "RESTful Web Services"
View Result Sets
Made up of columns and rows

Every row has the same three columns:
  • key
  • id
  • value
Columns can contain a mixture of logical data types
One to Many Relationships
Embedded Entities:
Nest related entities within a document
Embedded Entities
A single document represents the “one” entity

Nested entities (JSON Array) represents the “many” entities

Simplest way to create a one to many relationship
Example: Publisher
with Nested Books
{
  "_id":"oreilly",
  "collection":"publisher",
  "name":"O'Reilly Media",
  "books":[
    { "title":"CouchDB: The Definitive Guide" },
    { "title":"RESTful Web Services" },
    { "title":"DocBook: The Definitive Guide" },
    { "title":"Building iPhone Apps with HTML, CSS,
and JavaScript" }
  ]
}
Map Function
function(doc) {
  if ("publisher" == doc.collection) {
    emit([doc._id, 0], doc.name);
    for (var i in doc.books) {
      emit([doc._id, 1], doc.books[i].title);
    }
  }
}
Result Set
     key            id                 value

 ["oreilly",0]   "oreilly"        "O'Reilly Media"
                             "Building iPhone Apps with
 ["oreilly",1]   "oreilly"
                             HTML, CSS, and JavaScript"
                              "CouchDB: The Definitive
 ["oreilly",1]   "oreilly"
                                        Guide"
                              "DocBook: The Definitive
 ["oreilly",1]   "oreilly"
                                        Guide"
 ["oreilly",1]   "oreilly"    "RESTful Web Services"
Limitations
Only works if there aren’t a large number of related entities:
 • Too many nested entities can result in very large documents
 • Slow to transfer between client and server
 • Unwieldy to modify
 • Time-consuming to index
Related Documents:
Reference an entity by its identifier
Related Documents
A document representing the “one” entity

Separate documents for each “many” entity

Each “many” entity references its related
“one” entity by the “one” entity’s document identifier

Makes for smaller documents

Reduces the probability of document update conflicts
Example: Publisher
{
    "_id":"oreilly",
    "collection":"publisher",
    "name":"O'Reilly Media"
}
Example: Related Book
{
    "_id":"9780596155896",
    "collection":"book",
    "title":"CouchDB: The Definitive Guide",
    "publisher":"oreilly"
}
Map Function
function(doc) {
  if ("publisher" == doc.collection) {
    emit([doc._id, 0], doc.name);
  }
  if ("book" == doc.collection) {
    emit([doc.publisher, 1], doc.title);
  }
}
Result Set
      key                   id              value

["oreilly",0]   "oreilly"         "O'Reilly Media"
                                  "CouchDB: The Definitive
["oreilly",1]   "9780596155896"
                                  Guide"
["oreilly",1]   "9780596529260"   "RESTful Web Services"
                                  "Building iPhone Apps with
["oreilly",1]   "9780596805791"
                                  HTML, CSS, and JavaScript"
                                  "DocBook: The Definitive
["oreilly",1]   "9781565925809"
                                  Guide"
Limitations
When retrieving the entity on the “right” side of the relationship,
one cannot include any data from the entity on the “left” side of
the relationship without the use of an additional query

Only works for one to many relationships
Many to Many Relationships
List of Keys:
Reference entities by their identifiers
List of Keys
A document representing each “many” entity on the “left” side
of the relationship

Separate documents for each “many” entity on the “right” side
of the relationship

Each “many” entity on the “right” side of the relationship
maintains a list of document identifiers for its related “many”
entities on the “left” side of the relationship
Books and Related Authors
Example: Book
{
    "_id":"9780596805029",
    "collection":"book",
    "title":"DocBook 5: The Definitive Guide"
}
Example: Book
{
    "_id":"9781565920514",
    "collection":"book",
    "title":"Making TeX Work"
}
Example: Book
{
    "_id":"9781565925809",
    "collection":"book",
    "title":"DocBook: The Definitive Guide"
}
Example: Author
{
    "_id":"muellner",
    "collection":"author",
    "name":"Leonard Muellner",
    "books":[
      "9781565925809"
    ]
}
Example: Author
{
    "_id":"walsh",
    "collection":"author",
    "name":"Norman Walsh",
    "books":[
      "9780596805029",
      "9781565925809",
      "9781565920514"
    ]
}
Map Function
function(doc) {
  if ("book" == doc.collection) {
    emit([doc._id, 0], doc.title);
  }
  if ("author" == doc.collection) {
    for (var i in doc.books) {
      emit([doc.books[i], 1], doc.name);
    }
  }
}
Result Set
        key                   id                  value
["9780596805029",0] "9780596805029" "DocBook 5: The Definitive Guide"

["9780596805029",1] "walsh"          "Norman Walsh"

["9781565920514",0] "9781565920514" "Making TeX Work"

["9781565920514",1] "walsh"          "Norman Walsh"

["9781565925809",0] "9781565925809" "DocBook: The Definitive Guide"

["9781565925809",1] "muellner"       "Leonard Muellner"

["9781565925809",1] "walsh"          "Norman Walsh"
Authors and Related Books
Map Function
function(doc) {
  if ("author" == doc.collection) {
    emit([doc._id, 0], doc.name);
    for (var i in doc.books) {
      emit([doc._id, 1], {"_id":doc.books[i]});
    }
  }
}
Result Set
      key              id              value
["muellner",0]   "muellner"   "Leonard Muellner"

["muellner",1]   "muellner"   {"_id":"9781565925809"}

["walsh",0]      "walsh"      "Norman Walsh"

["walsh",1]      "walsh"      {"_id":"9780596805029"}

["walsh",1]      "walsh"      {"_id":"9781565920514"}

["walsh",1]      "walsh"      {"_id":"9781565925809"}
Including Docs
  include_docs=true
     key          id    value               doc (truncated)
["muellner",0] "muellner" …     {"name":"Leonard Muellner"}
["muellner",1] "muellner" …     {"title":"DocBook: The Definitive Guide"}
["walsh",0]   "walsh"   …       {"name":"Norman Walsh"}
["walsh",1]   "walsh"   …       {"title":"DocBook 5: The Definitive Guide"}
["walsh",1]   "walsh"   …       {"title":"Making TeX Work"}
["walsh",1]   "walsh"   …       {"title":"DocBook: The Definitive Guide"}
Or, we can reverse the references…
Example: Author
{
    "_id":"muellner",
    "collection":"author",
    "name":"Leonard Muellner"
}
Example: Author
{
    "_id":"walsh",
    "collection":"author",
    "name":"Norman Walsh"
}
Example: Book
{
    "_id":"9780596805029",
    "collection":"book",
    "title":"DocBook 5: The Definitive Guide",
    "authors":[
      "walsh"
    ]
}
Example: Book
{
    "_id":"9781565920514",
    "collection":"book",
    "title":"Making TeX Work",
    "authors":[
      "walsh"
    ]
}
Example: Book
{
    "_id":"9781565925809",
    "collection":"book",
    "title":"DocBook: The Definitive Guide",
    "authors":[
      "muellner",
      "walsh"
    ]
}
Map Function
function(doc) {
  if ("author" == doc.collection) {
    emit([doc._id, 0], doc.name);
  }
  if ("book" == doc.collection) {
    for (var i in doc.authors) {
      emit([doc.authors[i], 1], doc.title);
    }
  }
}
Result Set
     key                id                  value
["muellner",0] "muellner"     "Leonard Muellner"
["muellner",1] "9781565925809" "DocBook: The Definitive Guide"
["walsh",0]   "walsh"         "Norman Walsh"
["walsh",1]   "9780596805029" "DocBook 5: The Definitive Guide"
["walsh",1]   "9781565920514" "Making TeX Work"
["walsh",1]   "9781565925809" "DocBook: The Definitive Guide"
Limitations
Queries from the “right” side of the relationship cannot include
any data from entities on the “left” side of the relationship
(without the use of include_docs)

A document representing an entity with lots of relationships
could become quite large
Relationship Documents:
Create a document to represent each
individual relationship
Relationship Documents
A document representing each “many” entity on the “left” side
of the relationship

Separate documents for each “many” entity on the “right” side
of the relationship

Neither the “left” nor “right” side of the relationship contain any
direct references to each other

For each distinct relationship, a separate document includes the
document identifiers for both the “left” and “right” sides of the
relationship
Example: Book
{
    "_id":"9780596805029",
    "collection":"book",
    "title":"DocBook 5: The Definitive Guide"
}
Example: Book
{
    "_id":"9781565920514",
    "collection":"book",
    "title":"Making TeX Work"
}
Example: Book
{
    "_id":"9781565925809",
    "collection":"book",
    "title":"DocBook: The Definitive Guide"
}
Example: Author
{
    "_id":"muellner",
    "collection":"author",
    "name":"Leonard Muellner"
}
Example: Author
{
    "_id":"walsh",
    "collection":"author",
    "name":"Norman Walsh"
}
Example:
Relationship Document
{
    "_id":"44005f2c",
    "collection":"book-author",
    "book":"9780596805029",
    "author":"walsh"
}
Example:
Relationship Document
{
    "_id":"44005f72",
    "collection":"book-author",
    "book":"9781565920514",
    "author":"walsh"
}
Example:
Relationship Document
{
    "_id":"44006720",
    "collection":"book-author",
    "book":"9781565925809",
    "author":"muellner"
}
Example:
Relationship Document
{
    "_id":"44006b0d",
    "collection":"book-author",
    "book":"9781565925809",
    "author":"walsh"
}
Books and Related Authors
Map Function
function(doc) {
  if ("book" == doc.collection) {
    emit([doc._id, 0], doc.title);
  }
  if ("book-author" == doc.collection) {
    emit([doc.book, 1], {"_id":doc.author});
  }
}
Result Set
       key                 id                         value
["9780596805029",0] "9780596805029" "DocBook 5: The Definitive Guide"
["9780596805029",1] "44005f2c"      {"_id":"walsh"}
["9781565920514",0] "9781565920514" "Making TeX Work"
["9781565920514",1] "44005f72"      {"_id":"walsh"}
["9781565925809",0] "9781565925809" "DocBook: The Definitive Guide"
["9781565925809",1] "44006720"      {"_id":"muellner"}
["9781565925809",1] "44006b0d"      {"_id":"walsh"}
Including Docs
  include_docs=true
      key         id value               doc (truncated)
["9780596805029",0] … …      {"title":"DocBook 5: The Definitive Guide"}
["9780596805029",1] … …      {"name":"Norman Walsh"}
["9781565920514",0] … …      {"title":"Making TeX Work"}
["9781565920514",1] … …      {"author","name":"Norman Walsh"}
["9781565925809",0] … …      {"title":"DocBook: The Definitive Guide"}
["9781565925809",1] … …      {"name":"Leonard Muellner"}
["9781565925809",1] … …      {"name":"Norman Walsh"}
Authors and Related Books
Map Function
function(doc) {
  if ("author" == doc.collection) {
    emit([doc._id, 0], doc.name);
  }
  if ("book-author" == doc.collection) {
    emit([doc.author, 1], {"_id":doc.book});
  }
}
Result Set
      key              id              value
["muellner",0]   "muellner"   "Leonard Muellner"

["muellner",1]   "44006720"   {"_id":"9781565925809"}

["walsh",0]      "walsh"      "Norman Walsh"

["walsh",1]      "44005f2c"   {"_id":"9780596805029"}

["walsh",1]      "44005f72"   {"_id":"9781565920514"}

["walsh",1]      "44006b0d"   {"_id":"9781565925809"}
Including Docs
include_docs=true
     key       id value               doc (truncated)
["muellner",0] …   …      {"name":"Leonard Muellner"}
["muellner",1] …   …      {"title":"DocBook: The Definitive Guide"}
["walsh",0]   …    …      {"name":"Norman Walsh"}
["walsh",1]   …    …      {"title":"DocBook 5: The Definitive Guide"}
["walsh",1]   …    …      {"title":"Making TeX Work"}
["walsh",1]   …    …      {"title":"DocBook: The Definitive Guide"}
Limitations
Queries can only contain data from the “left” or “right” side of the
relationship (without the use of include_docs)

Maintaining relationship documents may require more work
Final Thoughts
Document Databases Compared
to Relational Databases
Document databases have no tables (and therefore no columns)

Indexes (views) are queried directly, instead of being used to
optimize more generalized queries

Result set columns can contain a mix of logical data types

No built-in concept of relationships between documents

Related entities can be embedded in a document, referenced from
a document, or both
Caveats
No referential integrity

No atomic transactions across document boundaries

Some patterns may involve denormalized (i.e. redundant) data

Data inconsistencies are inevitable (i.e. eventual consistency)

Consider the implications of replication—what may seem
consistent with one database may not be consistent across nodes
(e.g. referencing entities that don’t yet exist on the node)
Additional Techniques
Use the startkey and endkey parameters to retrieve one entity and
its related entities:
 startkey=["9781565925809"]&endkey=["9781565925809",{}]

Define a reduce function and use grouping levels

Use UUIDs rather than natural keys for better performance

Use the bulk document API when writing Relationship Documents

When using the List of Keys or Relationship Documents patterns,
denormalize data so that you can have data from the “right” and
“left” side of the relationship within your query results
Cheat Sheet
                  Embedded     Related                 Relationship
                                          List of Keys
                   Entities   Documents                Documents

 One to Many         ✓           ✓
Many to Many                                     ✓                       ✓
<= N* Relations      ✓                           ✓
> N* Relations                   ✓                                       ✓


                                             *   where N is a large number for your system
http://oreilly.com/catalog/9781449303129/   http://oreilly.com/catalog/9781449303433/
Thank You
                                  @BradleyHolt
                             http://bradley-holt.com
                           bradley.holt@foundline.com




Copyright © 2011-2012 Bradley Holt. All rights reserved.

Mais conteúdo relacionado

Mais procurados

Modeling Data in MongoDB
Modeling Data in MongoDBModeling Data in MongoDB
Modeling Data in MongoDB
lehresman
 
Building web applications with mongo db presentation
Building web applications with mongo db presentationBuilding web applications with mongo db presentation
Building web applications with mongo db presentation
Murat Çakal
 
Back to Basics 1: Thinking in documents
Back to Basics 1: Thinking in documentsBack to Basics 1: Thinking in documents
Back to Basics 1: Thinking in documents
MongoDB
 
Building a Social Network with MongoDB
  Building a Social Network with MongoDB  Building a Social Network with MongoDB
Building a Social Network with MongoDB
Fred Chu
 

Mais procurados (20)

Back to Basics Webinar 3: Schema Design Thinking in Documents
 Back to Basics Webinar 3: Schema Design Thinking in Documents Back to Basics Webinar 3: Schema Design Thinking in Documents
Back to Basics Webinar 3: Schema Design Thinking in Documents
 
MongoDB Schema Design: Four Real-World Examples
MongoDB Schema Design: Four Real-World ExamplesMongoDB Schema Design: Four Real-World Examples
MongoDB Schema Design: Four Real-World Examples
 
Socialite, the Open Source Status Feed Part 2: Managing the Social Graph
Socialite, the Open Source Status Feed Part 2: Managing the Social GraphSocialite, the Open Source Status Feed Part 2: Managing the Social Graph
Socialite, the Open Source Status Feed Part 2: Managing the Social Graph
 
MongoDB Schema Design
MongoDB Schema DesignMongoDB Schema Design
MongoDB Schema Design
 
Modeling Data in MongoDB
Modeling Data in MongoDBModeling Data in MongoDB
Modeling Data in MongoDB
 
Mongo db operations_v2
Mongo db operations_v2Mongo db operations_v2
Mongo db operations_v2
 
Building your first app with MongoDB
Building your first app with MongoDBBuilding your first app with MongoDB
Building your first app with MongoDB
 
Practical Ruby Projects With Mongo Db
Practical Ruby Projects With Mongo DbPractical Ruby Projects With Mongo Db
Practical Ruby Projects With Mongo Db
 
The Fine Art of Schema Design in MongoDB: Dos and Don'ts
The Fine Art of Schema Design in MongoDB: Dos and Don'tsThe Fine Art of Schema Design in MongoDB: Dos and Don'ts
The Fine Art of Schema Design in MongoDB: Dos and Don'ts
 
Conceptos básicos. Seminario web 4: Indexación avanzada, índices de texto y g...
Conceptos básicos. Seminario web 4: Indexación avanzada, índices de texto y g...Conceptos básicos. Seminario web 4: Indexación avanzada, índices de texto y g...
Conceptos básicos. Seminario web 4: Indexación avanzada, índices de texto y g...
 
Building web applications with mongo db presentation
Building web applications with mongo db presentationBuilding web applications with mongo db presentation
Building web applications with mongo db presentation
 
Mongo DB schema design patterns
Mongo DB schema design patternsMongo DB schema design patterns
Mongo DB schema design patterns
 
MongoDB and hadoop
MongoDB and hadoopMongoDB and hadoop
MongoDB and hadoop
 
Socialite, the Open Source Status Feed
Socialite, the Open Source Status FeedSocialite, the Open Source Status Feed
Socialite, the Open Source Status Feed
 
Back to Basics 1: Thinking in documents
Back to Basics 1: Thinking in documentsBack to Basics 1: Thinking in documents
Back to Basics 1: Thinking in documents
 
Socialite, the Open Source Status Feed Part 3: Scaling the Data Feed
Socialite, the Open Source Status Feed Part 3: Scaling the Data FeedSocialite, the Open Source Status Feed Part 3: Scaling the Data Feed
Socialite, the Open Source Status Feed Part 3: Scaling the Data Feed
 
Conceptos básicos. seminario web 3 : Diseño de esquema pensado para documentos
Conceptos básicos. seminario web 3 : Diseño de esquema pensado para documentosConceptos básicos. seminario web 3 : Diseño de esquema pensado para documentos
Conceptos básicos. seminario web 3 : Diseño de esquema pensado para documentos
 
Building a Social Network with MongoDB
  Building a Social Network with MongoDB  Building a Social Network with MongoDB
Building a Social Network with MongoDB
 
Dev Jumpstart: Schema Design Best Practices
Dev Jumpstart: Schema Design Best PracticesDev Jumpstart: Schema Design Best Practices
Dev Jumpstart: Schema Design Best Practices
 
Couchdb List and Show Introduction
Couchdb List and Show IntroductionCouchdb List and Show Introduction
Couchdb List and Show Introduction
 

Semelhante a Entity Relationships in a Document Database at CouchConf Boston

Schema design mongo_boston
Schema design mongo_bostonSchema design mongo_boston
Schema design mongo_boston
MongoDB
 
Schema & Design
Schema & DesignSchema & Design
Schema & Design
MongoDB
 
CouchDB Open Source Bridge
CouchDB Open Source BridgeCouchDB Open Source Bridge
CouchDB Open Source Bridge
Chris Anderson
 
MongoDB Schema Design
MongoDB Schema DesignMongoDB Schema Design
MongoDB Schema Design
aaronheckmann
 

Semelhante a Entity Relationships in a Document Database at CouchConf Boston (20)

Schema Design
Schema DesignSchema Design
Schema Design
 
Schema design mongo_boston
Schema design mongo_bostonSchema design mongo_boston
Schema design mongo_boston
 
Library hacks
Library hacksLibrary hacks
Library hacks
 
Introduction to CouchDB
Introduction to CouchDBIntroduction to CouchDB
Introduction to CouchDB
 
Schema Design
Schema DesignSchema Design
Schema Design
 
Schema & Design
Schema & DesignSchema & Design
Schema & Design
 
Modeling JSON data for NoSQL document databases
Modeling JSON data for NoSQL document databasesModeling JSON data for NoSQL document databases
Modeling JSON data for NoSQL document databases
 
1428393873 mhkx3 ln
1428393873 mhkx3 ln1428393873 mhkx3 ln
1428393873 mhkx3 ln
 
Couchdb Nosql
Couchdb NosqlCouchdb Nosql
Couchdb Nosql
 
Cognitive Search: Announcing the smartest enterprise search engine, now with ...
Cognitive Search: Announcing the smartest enterprise search engine, now with ...Cognitive Search: Announcing the smartest enterprise search engine, now with ...
Cognitive Search: Announcing the smartest enterprise search engine, now with ...
 
Tapping into Scientific Data with Hadoop and Flink
Tapping into Scientific Data with Hadoop and FlinkTapping into Scientific Data with Hadoop and Flink
Tapping into Scientific Data with Hadoop and Flink
 
CouchDB Open Source Bridge
CouchDB Open Source BridgeCouchDB Open Source Bridge
CouchDB Open Source Bridge
 
NoSQL databases and managing big data
NoSQL databases and managing big dataNoSQL databases and managing big data
NoSQL databases and managing big data
 
MongoDB Schema Design
MongoDB Schema DesignMongoDB Schema Design
MongoDB Schema Design
 
Webinar: Schema Design
Webinar: Schema DesignWebinar: Schema Design
Webinar: Schema Design
 
What do we want computers to do for us?
What do we want computers to do for us? What do we want computers to do for us?
What do we want computers to do for us?
 
lecture_34e.pptx
lecture_34e.pptxlecture_34e.pptx
lecture_34e.pptx
 
Introducing Azure DocumentDB - NoSQL, No Problem
Introducing Azure DocumentDB - NoSQL, No ProblemIntroducing Azure DocumentDB - NoSQL, No Problem
Introducing Azure DocumentDB - NoSQL, No Problem
 
Introduction to MongoDB
Introduction to MongoDBIntroduction to MongoDB
Introduction to MongoDB
 
MongoDB San Francisco 2013: Schema design presented by Jason Zucchetto, Consu...
MongoDB San Francisco 2013: Schema design presented by Jason Zucchetto, Consu...MongoDB San Francisco 2013: Schema design presented by Jason Zucchetto, Consu...
MongoDB San Francisco 2013: Schema design presented by Jason Zucchetto, Consu...
 

Mais de Bradley Holt

Domain-Driven Design at ZendCon 2012
Domain-Driven Design at ZendCon 2012Domain-Driven Design at ZendCon 2012
Domain-Driven Design at ZendCon 2012
Bradley Holt
 

Mais de Bradley Holt (14)

Domain-Driven Design at ZendCon 2012
Domain-Driven Design at ZendCon 2012Domain-Driven Design at ZendCon 2012
Domain-Driven Design at ZendCon 2012
 
Domain-Driven Design
Domain-Driven DesignDomain-Driven Design
Domain-Driven Design
 
CouchConf NYC CouchApps
CouchConf NYC CouchAppsCouchConf NYC CouchApps
CouchConf NYC CouchApps
 
ZendCon 2011 UnCon Domain-Driven Design
ZendCon 2011 UnCon Domain-Driven DesignZendCon 2011 UnCon Domain-Driven Design
ZendCon 2011 UnCon Domain-Driven Design
 
ZendCon 2011 Learning CouchDB
ZendCon 2011 Learning CouchDBZendCon 2011 Learning CouchDB
ZendCon 2011 Learning CouchDB
 
jQuery Conference Boston 2011 CouchApps
jQuery Conference Boston 2011 CouchAppsjQuery Conference Boston 2011 CouchApps
jQuery Conference Boston 2011 CouchApps
 
OSCON 2011 Learning CouchDB
OSCON 2011 Learning CouchDBOSCON 2011 Learning CouchDB
OSCON 2011 Learning CouchDB
 
Load Balancing with Apache
Load Balancing with ApacheLoad Balancing with Apache
Load Balancing with Apache
 
Intermediate PHP
Intermediate PHPIntermediate PHP
Intermediate PHP
 
New Features in PHP 5.3
New Features in PHP 5.3New Features in PHP 5.3
New Features in PHP 5.3
 
Introduction to PHP
Introduction to PHPIntroduction to PHP
Introduction to PHP
 
Resource-Oriented Web Services
Resource-Oriented Web ServicesResource-Oriented Web Services
Resource-Oriented Web Services
 
Zend Framework Quick Start Walkthrough
Zend Framework Quick Start WalkthroughZend Framework Quick Start Walkthrough
Zend Framework Quick Start Walkthrough
 
Burlington, VT PHP Users Group Subversion Presentation
Burlington, VT PHP Users Group Subversion PresentationBurlington, VT PHP Users Group Subversion Presentation
Burlington, VT PHP Users Group Subversion Presentation
 

Último

+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
?#DUbAI#??##{{(☎️+971_581248768%)**%*]'#abortion pills for sale in dubai@
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 

Último (20)

Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
Deploy with confidence: VMware Cloud Foundation 5.1 on next gen Dell PowerEdg...
Deploy with confidence: VMware Cloud Foundation 5.1 on next gen Dell PowerEdg...Deploy with confidence: VMware Cloud Foundation 5.1 on next gen Dell PowerEdg...
Deploy with confidence: VMware Cloud Foundation 5.1 on next gen Dell PowerEdg...
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Script
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone ProcessorsExploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 

Entity Relationships in a Document Database at CouchConf Boston

  • 1. Entity Relationships in a Document Database MapReduce Views for SQL Users
  • 2. Entity: An object defined by its identity and a thread of continuity[1] 1. "Entity" Domain-driven Design Community <http://domaindrivendesign.org/node/109>.
  • 5. SQL Query Joining Publishers and Books SELECT `publisher`.`id`, `publisher`.`name`, `book`.`title` FROM `publisher` FULL OUTER JOIN `book` ON `publisher`.`id` = `book`.`publisher_id` ORDER BY `publisher`.`id`, `book`.`title`;
  • 6. Joined Result Set publisher.id publisher.name book.title Building iPhone Apps with oreilly O'Reilly Media HTML, CSS, and JavaScript CouchDB: The Definitive oreilly O'Reilly Media Guide DocBook: The Definitive oreilly O'Reilly Media Guide oreilly O'Reilly Media RESTful Web Services
  • 7. Joined Result Set Publisher (“left”) publisher.id publisher.name book.title Building iPhone Apps with oreilly O'Reilly Media HTML, CSS, and JavaScript CouchDB: The Definitive oreilly O'Reilly Media Guide DocBook: The Definitive oreilly O'Reilly Media Guide oreilly O'Reilly Media RESTful Web Services
  • 8. Joined Result Set Publisher (“left”) Book “right” publisher.id publisher.name book.title Building iPhone Apps with oreilly O'Reilly Media HTML, CSS, and JavaScript CouchDB: The Definitive oreilly O'Reilly Media Guide DocBook: The Definitive oreilly O'Reilly Media Guide oreilly O'Reilly Media RESTful Web Services
  • 9. Collated Result Set key id value ["oreilly",0] "oreilly" "O'Reilly Media" "Building iPhone Apps with ["oreilly",1] "oreilly" HTML, CSS, and JavaScript" "CouchDB: The Definitive ["oreilly",1] "oreilly" Guide" "DocBook: The Definitive ["oreilly",1] "oreilly" Guide" ["oreilly",1] "oreilly" "RESTful Web Services"
  • 10. Collated Result Set key id value ["oreilly",0] "oreilly" "O'Reilly Media" Publisher "Building iPhone Apps with ["oreilly",1] "oreilly" HTML, CSS, and JavaScript" "CouchDB: The Definitive ["oreilly",1] "oreilly" Guide" "DocBook: The Definitive ["oreilly",1] "oreilly" Guide" ["oreilly",1] "oreilly" "RESTful Web Services"
  • 11. Collated Result Set key id value ["oreilly",0] "oreilly" "O'Reilly Media" Publisher "Building iPhone Apps with ["oreilly",1] "oreilly" HTML, CSS, and JavaScript" "CouchDB: The Definitive ["oreilly",1] "oreilly" Guide" Books "DocBook: The Definitive ["oreilly",1] "oreilly" Guide" ["oreilly",1] "oreilly" "RESTful Web Services"
  • 12. View Result Sets Made up of columns and rows Every row has the same three columns: • key • id • value Columns can contain a mixture of logical data types
  • 13. One to Many Relationships
  • 14. Embedded Entities: Nest related entities within a document
  • 15. Embedded Entities A single document represents the “one” entity Nested entities (JSON Array) represents the “many” entities Simplest way to create a one to many relationship
  • 16. Example: Publisher with Nested Books { "_id":"oreilly", "collection":"publisher", "name":"O'Reilly Media", "books":[ { "title":"CouchDB: The Definitive Guide" }, { "title":"RESTful Web Services" }, { "title":"DocBook: The Definitive Guide" }, { "title":"Building iPhone Apps with HTML, CSS, and JavaScript" } ] }
  • 17. Map Function function(doc) { if ("publisher" == doc.collection) { emit([doc._id, 0], doc.name); for (var i in doc.books) { emit([doc._id, 1], doc.books[i].title); } } }
  • 18. Result Set key id value ["oreilly",0] "oreilly" "O'Reilly Media" "Building iPhone Apps with ["oreilly",1] "oreilly" HTML, CSS, and JavaScript" "CouchDB: The Definitive ["oreilly",1] "oreilly" Guide" "DocBook: The Definitive ["oreilly",1] "oreilly" Guide" ["oreilly",1] "oreilly" "RESTful Web Services"
  • 19. Limitations Only works if there aren’t a large number of related entities: • Too many nested entities can result in very large documents • Slow to transfer between client and server • Unwieldy to modify • Time-consuming to index
  • 20. Related Documents: Reference an entity by its identifier
  • 21. Related Documents A document representing the “one” entity Separate documents for each “many” entity Each “many” entity references its related “one” entity by the “one” entity’s document identifier Makes for smaller documents Reduces the probability of document update conflicts
  • 22. Example: Publisher { "_id":"oreilly", "collection":"publisher", "name":"O'Reilly Media" }
  • 23. Example: Related Book { "_id":"9780596155896", "collection":"book", "title":"CouchDB: The Definitive Guide", "publisher":"oreilly" }
  • 24. Map Function function(doc) { if ("publisher" == doc.collection) { emit([doc._id, 0], doc.name); } if ("book" == doc.collection) { emit([doc.publisher, 1], doc.title); } }
  • 25. Result Set key id value ["oreilly",0] "oreilly" "O'Reilly Media" "CouchDB: The Definitive ["oreilly",1] "9780596155896" Guide" ["oreilly",1] "9780596529260" "RESTful Web Services" "Building iPhone Apps with ["oreilly",1] "9780596805791" HTML, CSS, and JavaScript" "DocBook: The Definitive ["oreilly",1] "9781565925809" Guide"
  • 26. Limitations When retrieving the entity on the “right” side of the relationship, one cannot include any data from the entity on the “left” side of the relationship without the use of an additional query Only works for one to many relationships
  • 27. Many to Many Relationships
  • 28. List of Keys: Reference entities by their identifiers
  • 29. List of Keys A document representing each “many” entity on the “left” side of the relationship Separate documents for each “many” entity on the “right” side of the relationship Each “many” entity on the “right” side of the relationship maintains a list of document identifiers for its related “many” entities on the “left” side of the relationship
  • 30. Books and Related Authors
  • 31. Example: Book { "_id":"9780596805029", "collection":"book", "title":"DocBook 5: The Definitive Guide" }
  • 32. Example: Book { "_id":"9781565920514", "collection":"book", "title":"Making TeX Work" }
  • 33. Example: Book { "_id":"9781565925809", "collection":"book", "title":"DocBook: The Definitive Guide" }
  • 34. Example: Author { "_id":"muellner", "collection":"author", "name":"Leonard Muellner", "books":[ "9781565925809" ] }
  • 35. Example: Author { "_id":"walsh", "collection":"author", "name":"Norman Walsh", "books":[ "9780596805029", "9781565925809", "9781565920514" ] }
  • 36. Map Function function(doc) { if ("book" == doc.collection) { emit([doc._id, 0], doc.title); } if ("author" == doc.collection) { for (var i in doc.books) { emit([doc.books[i], 1], doc.name); } } }
  • 37. Result Set key id value ["9780596805029",0] "9780596805029" "DocBook 5: The Definitive Guide" ["9780596805029",1] "walsh" "Norman Walsh" ["9781565920514",0] "9781565920514" "Making TeX Work" ["9781565920514",1] "walsh" "Norman Walsh" ["9781565925809",0] "9781565925809" "DocBook: The Definitive Guide" ["9781565925809",1] "muellner" "Leonard Muellner" ["9781565925809",1] "walsh" "Norman Walsh"
  • 39. Map Function function(doc) { if ("author" == doc.collection) { emit([doc._id, 0], doc.name); for (var i in doc.books) { emit([doc._id, 1], {"_id":doc.books[i]}); } } }
  • 40. Result Set key id value ["muellner",0] "muellner" "Leonard Muellner" ["muellner",1] "muellner" {"_id":"9781565925809"} ["walsh",0] "walsh" "Norman Walsh" ["walsh",1] "walsh" {"_id":"9780596805029"} ["walsh",1] "walsh" {"_id":"9781565920514"} ["walsh",1] "walsh" {"_id":"9781565925809"}
  • 41. Including Docs include_docs=true key id value doc (truncated) ["muellner",0] "muellner" … {"name":"Leonard Muellner"} ["muellner",1] "muellner" … {"title":"DocBook: The Definitive Guide"} ["walsh",0] "walsh" … {"name":"Norman Walsh"} ["walsh",1] "walsh" … {"title":"DocBook 5: The Definitive Guide"} ["walsh",1] "walsh" … {"title":"Making TeX Work"} ["walsh",1] "walsh" … {"title":"DocBook: The Definitive Guide"}
  • 42. Or, we can reverse the references…
  • 43. Example: Author { "_id":"muellner", "collection":"author", "name":"Leonard Muellner" }
  • 44. Example: Author { "_id":"walsh", "collection":"author", "name":"Norman Walsh" }
  • 45. Example: Book { "_id":"9780596805029", "collection":"book", "title":"DocBook 5: The Definitive Guide", "authors":[ "walsh" ] }
  • 46. Example: Book { "_id":"9781565920514", "collection":"book", "title":"Making TeX Work", "authors":[ "walsh" ] }
  • 47. Example: Book { "_id":"9781565925809", "collection":"book", "title":"DocBook: The Definitive Guide", "authors":[ "muellner", "walsh" ] }
  • 48. Map Function function(doc) { if ("author" == doc.collection) { emit([doc._id, 0], doc.name); } if ("book" == doc.collection) { for (var i in doc.authors) { emit([doc.authors[i], 1], doc.title); } } }
  • 49. Result Set key id value ["muellner",0] "muellner" "Leonard Muellner" ["muellner",1] "9781565925809" "DocBook: The Definitive Guide" ["walsh",0] "walsh" "Norman Walsh" ["walsh",1] "9780596805029" "DocBook 5: The Definitive Guide" ["walsh",1] "9781565920514" "Making TeX Work" ["walsh",1] "9781565925809" "DocBook: The Definitive Guide"
  • 50. Limitations Queries from the “right” side of the relationship cannot include any data from entities on the “left” side of the relationship (without the use of include_docs) A document representing an entity with lots of relationships could become quite large
  • 51. Relationship Documents: Create a document to represent each individual relationship
  • 52. Relationship Documents A document representing each “many” entity on the “left” side of the relationship Separate documents for each “many” entity on the “right” side of the relationship Neither the “left” nor “right” side of the relationship contain any direct references to each other For each distinct relationship, a separate document includes the document identifiers for both the “left” and “right” sides of the relationship
  • 53. Example: Book { "_id":"9780596805029", "collection":"book", "title":"DocBook 5: The Definitive Guide" }
  • 54. Example: Book { "_id":"9781565920514", "collection":"book", "title":"Making TeX Work" }
  • 55. Example: Book { "_id":"9781565925809", "collection":"book", "title":"DocBook: The Definitive Guide" }
  • 56. Example: Author { "_id":"muellner", "collection":"author", "name":"Leonard Muellner" }
  • 57. Example: Author { "_id":"walsh", "collection":"author", "name":"Norman Walsh" }
  • 58. Example: Relationship Document { "_id":"44005f2c", "collection":"book-author", "book":"9780596805029", "author":"walsh" }
  • 59. Example: Relationship Document { "_id":"44005f72", "collection":"book-author", "book":"9781565920514", "author":"walsh" }
  • 60. Example: Relationship Document { "_id":"44006720", "collection":"book-author", "book":"9781565925809", "author":"muellner" }
  • 61. Example: Relationship Document { "_id":"44006b0d", "collection":"book-author", "book":"9781565925809", "author":"walsh" }
  • 62. Books and Related Authors
  • 63. Map Function function(doc) { if ("book" == doc.collection) { emit([doc._id, 0], doc.title); } if ("book-author" == doc.collection) { emit([doc.book, 1], {"_id":doc.author}); } }
  • 64. Result Set key id value ["9780596805029",0] "9780596805029" "DocBook 5: The Definitive Guide" ["9780596805029",1] "44005f2c" {"_id":"walsh"} ["9781565920514",0] "9781565920514" "Making TeX Work" ["9781565920514",1] "44005f72" {"_id":"walsh"} ["9781565925809",0] "9781565925809" "DocBook: The Definitive Guide" ["9781565925809",1] "44006720" {"_id":"muellner"} ["9781565925809",1] "44006b0d" {"_id":"walsh"}
  • 65. Including Docs include_docs=true key id value doc (truncated) ["9780596805029",0] … … {"title":"DocBook 5: The Definitive Guide"} ["9780596805029",1] … … {"name":"Norman Walsh"} ["9781565920514",0] … … {"title":"Making TeX Work"} ["9781565920514",1] … … {"author","name":"Norman Walsh"} ["9781565925809",0] … … {"title":"DocBook: The Definitive Guide"} ["9781565925809",1] … … {"name":"Leonard Muellner"} ["9781565925809",1] … … {"name":"Norman Walsh"}
  • 67. Map Function function(doc) { if ("author" == doc.collection) { emit([doc._id, 0], doc.name); } if ("book-author" == doc.collection) { emit([doc.author, 1], {"_id":doc.book}); } }
  • 68. Result Set key id value ["muellner",0] "muellner" "Leonard Muellner" ["muellner",1] "44006720" {"_id":"9781565925809"} ["walsh",0] "walsh" "Norman Walsh" ["walsh",1] "44005f2c" {"_id":"9780596805029"} ["walsh",1] "44005f72" {"_id":"9781565920514"} ["walsh",1] "44006b0d" {"_id":"9781565925809"}
  • 69. Including Docs include_docs=true key id value doc (truncated) ["muellner",0] … … {"name":"Leonard Muellner"} ["muellner",1] … … {"title":"DocBook: The Definitive Guide"} ["walsh",0] … … {"name":"Norman Walsh"} ["walsh",1] … … {"title":"DocBook 5: The Definitive Guide"} ["walsh",1] … … {"title":"Making TeX Work"} ["walsh",1] … … {"title":"DocBook: The Definitive Guide"}
  • 70. Limitations Queries can only contain data from the “left” or “right” side of the relationship (without the use of include_docs) Maintaining relationship documents may require more work
  • 72. Document Databases Compared to Relational Databases Document databases have no tables (and therefore no columns) Indexes (views) are queried directly, instead of being used to optimize more generalized queries Result set columns can contain a mix of logical data types No built-in concept of relationships between documents Related entities can be embedded in a document, referenced from a document, or both
  • 73. Caveats No referential integrity No atomic transactions across document boundaries Some patterns may involve denormalized (i.e. redundant) data Data inconsistencies are inevitable (i.e. eventual consistency) Consider the implications of replication—what may seem consistent with one database may not be consistent across nodes (e.g. referencing entities that don’t yet exist on the node)
  • 74. Additional Techniques Use the startkey and endkey parameters to retrieve one entity and its related entities: startkey=["9781565925809"]&endkey=["9781565925809",{}] Define a reduce function and use grouping levels Use UUIDs rather than natural keys for better performance Use the bulk document API when writing Relationship Documents When using the List of Keys or Relationship Documents patterns, denormalize data so that you can have data from the “right” and “left” side of the relationship within your query results
  • 75. Cheat Sheet Embedded Related Relationship List of Keys Entities Documents Documents One to Many ✓ ✓ Many to Many ✓ ✓ <= N* Relations ✓ ✓ > N* Relations ✓ ✓ * where N is a large number for your system
  • 76. http://oreilly.com/catalog/9781449303129/ http://oreilly.com/catalog/9781449303433/
  • 77. Thank You @BradleyHolt http://bradley-holt.com bradley.holt@foundline.com Copyright © 2011-2012 Bradley Holt. All rights reserved.

Notas do Editor

  1. \n
  2. \n
  3. \n
  4. \n
  5. A full outer join effectively combines both left and right outer joins. If your relational database doesn&amp;#x2019;t support full outer joins then a left outer join is &amp;#x201C;close enough&amp;#x201D; for the following examples.\n
  6. Entities are joined together in a single row.\n
  7. Entities are joined together in a single row.\n
  8. Entities are joined together in a single row.\n
  9. Entities are collated together, but in separate rows.\nNote the use of compound keys.\n
  10. Entities are collated together, but in separate rows.\nNote the use of compound keys.\n
  11. Entities are collated together, but in separate rows.\nNote the use of compound keys.\n
  12. Result set may also include a doc column if include_docs is set to true.\n
  13. Result set may also include a doc column if include_docs is set to true.\n
  14. Result set may also include a doc column if include_docs is set to true.\n
  15. \n
  16. \n
  17. \n
  18. \n
  19. \n
  20. \n
  21. The &amp;#x201C;0&amp;#x201D; and &amp;#x201C;1&amp;#x201D; make publisher sort before the publisher&amp;#x2019;s books.\nNote the use of compound keys.\n
  22. \n
  23. \n
  24. \n
  25. \n
  26. \n
  27. \n
  28. \n
  29. \n
  30. \n
  31. \n
  32. \n
  33. \n
  34. \n
  35. \n
  36. \n
  37. Note that the keys are the same as with the embedded document approach, but the IDs are different.\n
  38. \n
  39. \n
  40. \n
  41. \n
  42. \n
  43. \n
  44. \n
  45. \n
  46. \n
  47. \n
  48. \n
  49. \n
  50. \n
  51. \n
  52. \n
  53. \n
  54. \n
  55. \n
  56. Note that the best we can do is emit the book IDs, as we don&amp;#x2019;t have access to any other book data.\n
  57. \n
  58. Note that it includes the doc having the referenced ID, not the doc from which the row was emitted.\nNote that the docs are truncated.\n
  59. \n
  60. \n
  61. \n
  62. \n
  63. \n
  64. \n
  65. \n
  66. \n
  67. \n
  68. \n
  69. \n
  70. \n
  71. \n
  72. \n
  73. \n
  74. \n
  75. Note that none of the entity documents contain any references to other entities.\n
  76. \n
  77. \n
  78. \n
  79. \n
  80. \n
  81. \n
  82. \n
  83. \n
  84. \n
  85. \n
  86. \n
  87. \n
  88. \n
  89. \n
  90. \n
  91. Note that the docs are truncated.\n
  92. \n
  93. \n
  94. \n
  95. Note that the docs are truncated.\n
  96. \n
  97. \n
  98. \n
  99. \n
  100. \n
  101. \n
  102. \n
  103. \n
  104. Note that these are trade-offs that provide associated benefits.\n
  105. Note that these are trade-offs that provide associated benefits.\n
  106. Note that these are trade-offs that provide associated benefits.\n
  107. Note that these are trade-offs that provide associated benefits.\n
  108. Note that these are trade-offs that provide associated benefits.\n
  109. Note that the startkey and endkey parameters need to be URL encoded.\nNote that one must account for the &amp;#x201C;left&amp;#x201D; entity when using grouping levels.\nNote that UUIDs are especially useful for Relationship Documents.\nNote that the bulk document API is not transactional!\n
  110. Note that the startkey and endkey parameters need to be URL encoded.\nNote that one must account for the &amp;#x201C;left&amp;#x201D; entity when using grouping levels.\nNote that UUIDs are especially useful for Relationship Documents.\nNote that the bulk document API is not transactional!\n
  111. Note that the startkey and endkey parameters need to be URL encoded.\nNote that one must account for the &amp;#x201C;left&amp;#x201D; entity when using grouping levels.\nNote that UUIDs are especially useful for Relationship Documents.\nNote that the bulk document API is not transactional!\n
  112. Note that the startkey and endkey parameters need to be URL encoded.\nNote that one must account for the &amp;#x201C;left&amp;#x201D; entity when using grouping levels.\nNote that UUIDs are especially useful for Relationship Documents.\nNote that the bulk document API is not transactional!\n
  113. Note that the startkey and endkey parameters need to be URL encoded.\nNote that one must account for the &amp;#x201C;left&amp;#x201D; entity when using grouping levels.\nNote that UUIDs are especially useful for Relationship Documents.\nNote that the bulk document API is not transactional!\n
  114. \n
  115. \n
  116. \n