SlideShare a Scribd company logo
1 of 20
easyDITA How-To Series:
Taxonomy 101: Classifying DITA Tasks



    Paul Wlodarczyk
    CEO, Jorsek LLC
    June 28, 2012
Poll: Please complete while folks arrive

 How are you delivering DITA Tasks or other
 procedural / how-to content?
 •    Portal with advanced / faceted search
 •    Static web pages or web help
 •    Print / PDF
 •    Windows Help
 •    Other



  6/28/2012              © Jorsek, LLC. All Rights Reserved.   2
Why talk about task oriented content?
 Task-oriented content is
 valuable:
 • It is versatile and can be
    reused in more
    deliverables than
    conceptual content
        –     Product user guides
        –     Context-sensitive help
        –     Knowledge base
        –     Support
        –     Training
 • It’s what most users are
   searching for in a
                                                                       A DITA Task published to MindTouch
   knowledge base or help

  6/28/2012                            © Jorsek, LLC. All Rights Reserved.                                  3
Benefits of using DTA for authoring tasks
 • Task authored in DITA are
        –     Concise
        –     Consistent
        –     Modular
        –     Semantic
 • DITA Tasks make good
   templates for content
   contributed by SMEs (like
   product engineers)
 • For software UA in
   particular, task-oriented
   content is perfect for QA. The
   task becomes the Test Case.

                                                                  The XML Source for a DITA Task
  6/28/2012                 © Jorsek, LLC. All Rights Reserved.                                    4
Anatomy of a DITA Task
 •    Title
 •    Short description
 •    Context
 •    Prerequisite
 •    Step section
 •    Step
 •    Command
 •    Sub Step
 •    Step Info
 •    Step Result
 •    Step Example
 •    Choice and Choice Table
 •    Example
 •    Post-requisite
 •    Result                                                          A DITA Task in easyDITA
  6/28/2012                     © Jorsek, LLC. All Rights Reserved.                             5
DITA Tasks are semantic

 • DITA tasks are inherently semantic
        – Not simple ordered lists
        – Not simple paragraphs
 • This is useful for
        – Dynamic rendition, e.g.
              • Expand / collapse steps
              • Interactive UI controls
        – Semantic Search in the context of the structure, e.g.
              • find STEPS that contain MENU CASCADES
              • Find STEP INFORMATION that contains IMAGES tagged with [text]
              • Find PREREQUISITES that contain [text]




  6/28/2012                          © Jorsek, LLC. All Rights Reserved.        6
Making tasks more findable with metadata

 • Q: How can we make content
   even more findable
        – For authors and content
          managers?
        – For end users in a dynamic
          delivery system?
 • A: Tag tasks with semantic
   metadata
        – Semantic = “meaning”
        – Metadata can be set with terms
          from controlled vocabularies
          defined and managed in a
          taxonomy
  6/28/2012                   © Jorsek, LLC. All Rights Reserved.   7
What is Metadata?
  • Literally “Data about the data”
  • Also known as “tags”
             – Not to be confused with the content itself (e.g.
               XML structure)
             – Can be embedded in a file (e.g. the DITA Prolog
               or attributes; JPEG image data) or associated in
               a CMS
  • Two main flavors:
             – Administrative metadata
                 • e.g. Content Type, Author, Date
                   Modified, Version, Title, etc.,
                 • Usually system-generated
                 • What the content is
             – Descriptive metadata
                 • Subject classification, keywords, etc.
                 • Usually manually authored
                 • What the content is about

 6/28/2012                                   © Jorsek, LLC. All Rights Reserved.   8
Key Concept: Taxonomy
   taxonomy n. A categorization
   scheme for concepts, often
   hierarchical
   • Most often, taxonomies show “is a”
     relationships, e.g. A mammal is a
     vertebrate, A rodent is a mammal, etc.
   • Navigation up and down the tree yields
     broader than (BT) and narrower than
     (NT) classification
             – Can be used to adjust search scope
   • Can also show related terms (RT)
             – Can be used to suggest related searches / “see
               also”
   • Can manage synonyms (UF – Use For)
             – Can be used to find content when search
               terms are not the preferred terms



 6/28/2012                                 © Jorsek, LLC. All Rights Reserved.   9
Using Taxonomy for controlled vocabularies
 • A taxonomy is the “source of truth” for what terms to use for
   various concepts – so terms are consistent.
 • Taxonomy terms can be used as controlled vocabularies (“pick-
   lists”) for metadata, so authors simply select preferred terms
        – Avoids typos, duplicates, word form variations, use of non-preferred terms
 • Some content management systems enable controlled
   vocabularies from taxonomies to be used for setting attribute
   values in DITA (e.g. selectatts like Audience, Product, Platform etc.).
 • Relationships between terms in a Taxonomy can improve search
        – CMS search and site search indexing tools can use equivalent and related
          terms to find content that does not contain the search term
        – Relationships between terms can be expressed as RDF in HTML content for
          improving web search indexing



  6/28/2012                        © Jorsek, LLC. All Rights Reserved.            10
Simple framework for tagging tasks
• In any industry, we’re all trying to help people do something to
  something in a context:
      – Who is doing what to what (+ other important context or condition)
• Examples
     Junior Service Technician doing preventive maintenance on Acme Jetpack
     XR7 that uses nitrous oxide injection technology
     Casual User clearing paper jam on MFD100 Copier with envelope tray option
     Case Worker performing an intake interview for a recently unemployed
     person in New York State
     Intermediate User publishing a DITA Map using DITA OT to PDF format
     Financial analyst calculating a WACC for a publicly traded company located in
     a country using GAPP accounting
     Registered Nurse administering medication to patient in the ICU and drug is a
     controlled substance
     Contract Service Technician doing diagnosis on P1000 Printer showing missing
     sections of the printed image
  6/28/2012                       © Jorsek, LLC. All Rights Reserved.            11
What metadata do you need?
 Information about the
 Performer, Activity, Object, and Context will help
 narrow search results for a user or author (see our
 blog post on Metadata 101: A Search First Approach)
 • Performer metadata:
     – Types of users (roles, experience, education
       level, etc.)
     – Types of employees
       (title, training, certifications, clearance, departmen
       t, skill level etc.)
     – Types of customers
 • Activity metadata:
       – Broad Task Types (e.g. for service:
           maintenance, diagnosis, repair, calibration, startup,
            etc.)
       – High Level Task names from a performance analysis
           / instructional design
       – Competencies from a model
       –
 6/28/2012 Commercial Services listing © Jorsek, LLC. All Rights Reserved.   12
What metadata do you need?
 Information about the
 Performer, Activity, Object, and Context will help
 narrow search results for a user or author (see our
 blog post on Metadata 101: A Search First Approach)
 • Object (i.e. “To what / to whom”) metadata:
       – Things: Product, product components, product
         subsystems
       – People: Types of customers or clients
 • Context metadata:
       –     Market / locale
       –     Product options
       –     Technologies
       –     Special situations
       –     Tools required
       –     Security classification
       –     Symptoms / Fault codes


 6/28/2012                             © Jorsek, LLC. All Rights Reserved.   13
Do we have to create these terms from scratch?
 No! You are surrounded by free sources for term lists, many are
 governed and authoritative. Don’t reinvent – borrow!
 Here are some common sources of terms:
 •       Corporate ECM or Web taxonomy (from IT or marketing)
 •       Industry-specific taxonomies (e.g. MeSH for life sciences, DSM for mental health)
 •       Government taxonomies (e.g. UK IPSV - Integrated Public Sector Vocabulary)
 •       Generic public domain taxonomies (e.g. People, Places, and Cultures; AP News)
 •       Other corporate sources:
           –     Training group (competency models, task analyses)
           –     HR (Job codes and Job Titles)
           –     Support / field service systems (Parts, fault classifications, failure modes, tools used)
           –     CRM data (Customer names, Customer categories, SKUs, Products & Services)
           –     Product data (Product BOMs, platforms, parts, subsystems, options)
           –     Organization Charts (Divisions, departments, locations, budget centers)
           –     Business Process Analysis (process names and steps, inputs and outputs)



     6/28/2012                                       © Jorsek, LLC. All Rights Reserved.                     14
Taxonomy Tools
 • You can build and manage a simple taxonomy in Microsoft Excel
 • Even if authors manually tag metadata, the Excel taxonomy can be a useful
   guide and source of terms to copy/paste
 • Each row is a term and each column is a level in the hierarchy




 • Put other data required for related and equivalent terms in columns to right of
   preferred term hierarchy
 • Add a column for scope notes
 • Use Grouping to help expand / collapse sections of a long taxonomy
 • If you have a CMS or other tool that consumes taxonomy, you can export a CSV
   file from Excel and import it to the CMS (see Mary Garcia’s excellent blog posts at
     TaxoDiary.com to learn how)
 6/28/2012                         © Jorsek, LLC. All Rights Reserved.              15
Taxonomy Tools
 • Consider using a Taxonomy Management System if:
    – You have a large taxonomy (over 500 terms)
    – The taxonomy changes often
    – You have a complex governance process for approving new terms
    – The taxonomy needs to be consumed by more than one system
    – You are using term relationships to improve search indexing




 6/28/2012                    © Jorsek, LLC. All Rights Reserved.     16
Guidelines for taxonomy quality
 • The hierarchy should reflect any of three relationships:
        – Generic (e.g. VehicleCar)
        – Instance (e.g. Mountain regionsRockies)
        – Whole-Part (e.g. HouseRoof)
 • Terms should be nouns or noun phrases.
 • Activities should be nouns or gerunds.
 • Avoid adjectives and prepositions unless integral to the term.
 • When in doubt singular vs. plural, choose plural; these are
   categories. Singular is OK for instances at the narrow end.
 • Named entities should be proper nouns.
 • Avoid punctuation and ampersands. Eliminate hyphens except
   where the term is confusing or unclear without them.
 • Make the most commonly used term the preferred term, even if it
   is an acronym (e.g. NASA). Make other forms Equivalent Terms.
  6/28/2012                       © Jorsek, LLC. All Rights Reserved.   17
Poll:

 Are you currently using controlled
 vocabularies for any of the following?
 •    CMS Metadata
 •    DITA Attributes
 •    Prolog Metadata and Keywords
 •    Other
 •    Not using controlled vocabularies



  6/28/2012             © Jorsek, LLC. All Rights Reserved.   18
Resources
 • LinkedIn Taxonomy Community of Practice
 • ANSI/NISO Z39.19-2005 - Guidelines on
   Construction, Format, and Management of Monolingual
   Controlled Vocabularies
 • IBM Presentation: Writing Effective DITA Task Topics
       – http://svdig.ditamap.com/DITATaskTopics_090310SR.ppt
 • TaxoDiary blog posts by Mary Garcia:
   Maintaining a Thesaurus in an Excel Workbook (two parts)
       – http://taxodiary.com/2012/04/maintaining-a-thesaurus-in-an-excel-
         workbook/
       – http://taxodiary.com/2012/05/maintaining-a-thesaurus-in-an-excel-
         workbook-part-2/
 • easyDITA blog posts and Twitter
       – easyDITA.com/blog and @easydita

 6/28/2012                       © Jorsek, LLC. All Rights Reserved.         19
Thank you!
 • Questions?
 • Recorded webcast will be available soon through our website –
   you will get an email with the link
 • Anyone can register after the event to view the recording
 • Slides will be available on SlideShare
       – www.slideshare.net/easydita
 • Next webcast July 25, featuring Amber Swope of DITA Strategies
   discussing Using Taxonomy for DITA Content. Please join us!




 6/28/2012                      © Jorsek, LLC. All Rights Reserved.   20

More Related Content

What's hot

DITA, Semantics, Content Management, Dynamic Documents, and Linked Data – A M...
DITA, Semantics, Content Management, Dynamic Documents, and Linked Data – A M...DITA, Semantics, Content Management, Dynamic Documents, and Linked Data – A M...
DITA, Semantics, Content Management, Dynamic Documents, and Linked Data – A M...Paul Wlodarczyk
 
Organizing Knowledge: A Knowledge Manager’s Primer to Taxonomy Development
Organizing Knowledge: A Knowledge Manager’s Primer to Taxonomy DevelopmentOrganizing Knowledge: A Knowledge Manager’s Primer to Taxonomy Development
Organizing Knowledge: A Knowledge Manager’s Primer to Taxonomy DevelopmentArt Schlussel
 
The art of information architecture in Office 365
The art of information architecture in Office 365The art of information architecture in Office 365
The art of information architecture in Office 365Simon Rawson
 
Essential Metadata Strategies
Essential Metadata StrategiesEssential Metadata Strategies
Essential Metadata StrategiesDATAVERSITY
 
Metadata Strategies
Metadata StrategiesMetadata Strategies
Metadata StrategiesDATAVERSITY
 
The Importance of DataOps in a Multi-Cloud World
The Importance of DataOps in a Multi-Cloud WorldThe Importance of DataOps in a Multi-Cloud World
The Importance of DataOps in a Multi-Cloud WorldDATAVERSITY
 
Building and using ontologies
Building and using ontologies Building and using ontologies
Building and using ontologies Elena Simperl
 
Building a Knowledge Graph using NLP and Ontologies
Building a Knowledge Graph using NLP and OntologiesBuilding a Knowledge Graph using NLP and Ontologies
Building a Knowledge Graph using NLP and OntologiesNeo4j
 
Vector Search for Data Scientists.pdf
Vector Search for Data Scientists.pdfVector Search for Data Scientists.pdf
Vector Search for Data Scientists.pdfConnorShorten2
 
Delta Lake with Azure Databricks
Delta Lake with Azure DatabricksDelta Lake with Azure Databricks
Delta Lake with Azure DatabricksDustin Vannoy
 
Dataiku Data Science Studio (datasheet)
Dataiku Data Science Studio (datasheet)Dataiku Data Science Studio (datasheet)
Dataiku Data Science Studio (datasheet)John Cann
 
Non Relational Databases
Non Relational DatabasesNon Relational Databases
Non Relational DatabasesChris Baglieri
 
The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...
The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...
The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...Databricks
 
Data Governance and Metadata Management
Data Governance and Metadata ManagementData Governance and Metadata Management
Data Governance and Metadata Management DATAVERSITY
 

What's hot (20)

DITA, Semantics, Content Management, Dynamic Documents, and Linked Data – A M...
DITA, Semantics, Content Management, Dynamic Documents, and Linked Data – A M...DITA, Semantics, Content Management, Dynamic Documents, and Linked Data – A M...
DITA, Semantics, Content Management, Dynamic Documents, and Linked Data – A M...
 
Organizing Knowledge: A Knowledge Manager’s Primer to Taxonomy Development
Organizing Knowledge: A Knowledge Manager’s Primer to Taxonomy DevelopmentOrganizing Knowledge: A Knowledge Manager’s Primer to Taxonomy Development
Organizing Knowledge: A Knowledge Manager’s Primer to Taxonomy Development
 
Contours of DITA 2.0
Contours of DITA 2.0Contours of DITA 2.0
Contours of DITA 2.0
 
The art of information architecture in Office 365
The art of information architecture in Office 365The art of information architecture in Office 365
The art of information architecture in Office 365
 
Essential Metadata Strategies
Essential Metadata StrategiesEssential Metadata Strategies
Essential Metadata Strategies
 
Taxonomy 101
Taxonomy 101Taxonomy 101
Taxonomy 101
 
Taxonomies and Metadata
Taxonomies and MetadataTaxonomies and Metadata
Taxonomies and Metadata
 
Metadata Strategies
Metadata StrategiesMetadata Strategies
Metadata Strategies
 
The Importance of DataOps in a Multi-Cloud World
The Importance of DataOps in a Multi-Cloud WorldThe Importance of DataOps in a Multi-Cloud World
The Importance of DataOps in a Multi-Cloud World
 
Building and using ontologies
Building and using ontologies Building and using ontologies
Building and using ontologies
 
Building a Knowledge Graph using NLP and Ontologies
Building a Knowledge Graph using NLP and OntologiesBuilding a Knowledge Graph using NLP and Ontologies
Building a Knowledge Graph using NLP and Ontologies
 
Vector Search for Data Scientists.pdf
Vector Search for Data Scientists.pdfVector Search for Data Scientists.pdf
Vector Search for Data Scientists.pdf
 
Hive: Loading Data
Hive: Loading DataHive: Loading Data
Hive: Loading Data
 
Delta Lake with Azure Databricks
Delta Lake with Azure DatabricksDelta Lake with Azure Databricks
Delta Lake with Azure Databricks
 
Dataiku Data Science Studio (datasheet)
Dataiku Data Science Studio (datasheet)Dataiku Data Science Studio (datasheet)
Dataiku Data Science Studio (datasheet)
 
Non Relational Databases
Non Relational DatabasesNon Relational Databases
Non Relational Databases
 
TiDB Introduction
TiDB IntroductionTiDB Introduction
TiDB Introduction
 
Data Mesh
Data MeshData Mesh
Data Mesh
 
The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...
The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...
The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...
 
Data Governance and Metadata Management
Data Governance and Metadata ManagementData Governance and Metadata Management
Data Governance and Metadata Management
 

Viewers also liked

Creating Documentation With A Wiki: The DITA Storm Project
Creating Documentation With A Wiki: The DITA Storm ProjectCreating Documentation With A Wiki: The DITA Storm Project
Creating Documentation With A Wiki: The DITA Storm ProjectScott Abel
 
Surviving the Transition to DITA: Trusted Partners can Ease the Pain
Surviving the Transition to DITA: Trusted Partners can Ease the PainSurviving the Transition to DITA: Trusted Partners can Ease the Pain
Surviving the Transition to DITA: Trusted Partners can Ease the PainNicki L. Davis, Ph.D.
 
Localization and DITA: What you Need to Know - LocWorld32
Localization and DITA: What you Need to Know - LocWorld32Localization and DITA: What you Need to Know - LocWorld32
Localization and DITA: What you Need to Know - LocWorld32IXIASOFT
 
Converting Unstructured Docs to XML/DITA/ePub
Converting Unstructured Docs to XML/DITA/ePubConverting Unstructured Docs to XML/DITA/ePub
Converting Unstructured Docs to XML/DITA/ePubDCLab
 
Pat Farrell, Migrating Legacy Documentation to XML and DITA
Pat Farrell, Migrating Legacy Documentation to XML and DITAPat Farrell, Migrating Legacy Documentation to XML and DITA
Pat Farrell, Migrating Legacy Documentation to XML and DITAfarrelldoc
 
The Elusive Promise of Reuse
The Elusive Promise of ReuseThe Elusive Promise of Reuse
The Elusive Promise of ReuseLeigh White
 
Joe Gelb: Taxonomy and Delivery
Joe Gelb: Taxonomy and DeliveryJoe Gelb: Taxonomy and Delivery
Joe Gelb: Taxonomy and DeliveryJack Molisani
 
Easy steps to convert your content to structured (frame maker and xml)
Easy steps to convert your content to structured (frame maker and xml)Easy steps to convert your content to structured (frame maker and xml)
Easy steps to convert your content to structured (frame maker and xml)Publishing Smarter
 
How to Optimize Your Metadata and Taxonomy
How to Optimize Your Metadata and TaxonomyHow to Optimize Your Metadata and Taxonomy
How to Optimize Your Metadata and TaxonomyIXIASOFT
 
Reports and DITA Metrics IXIASOFT User Conference 2016
Reports and DITA Metrics IXIASOFT User Conference 2016Reports and DITA Metrics IXIASOFT User Conference 2016
Reports and DITA Metrics IXIASOFT User Conference 2016IXIASOFT
 
Optimizing Content Reuse with DITA
Optimizing Content Reuse with DITAOptimizing Content Reuse with DITA
Optimizing Content Reuse with DITAIXIASOFT
 
Developing training websites in multiple languages with (mostly) open-source ...
Developing training websites in multiple languages with (mostly) open-source ...Developing training websites in multiple languages with (mostly) open-source ...
Developing training websites in multiple languages with (mostly) open-source ...Scriptorium Publishing
 
Blurring the Lines between ECM and CCMS
Blurring the Lines between ECM and CCMSBlurring the Lines between ECM and CCMS
Blurring the Lines between ECM and CCMSLavaCon
 
Understanding Information Architecture
Understanding Information ArchitectureUnderstanding Information Architecture
Understanding Information ArchitectureScott Abel
 
Multiplying the Power of Taxonomy with Granular, Structured Content
Multiplying the Power of Taxonomy with Granular, Structured ContentMultiplying the Power of Taxonomy with Granular, Structured Content
Multiplying the Power of Taxonomy with Granular, Structured ContentJoe Pairman
 
Wireframing, Mockups, and Prototyping Made Easy
Wireframing, Mockups, and Prototyping Made EasyWireframing, Mockups, and Prototyping Made Easy
Wireframing, Mockups, and Prototyping Made EasyJohn Collins
 
10 Million Dita Topics Can't Be Wrong
10 Million Dita Topics Can't Be Wrong10 Million Dita Topics Can't Be Wrong
10 Million Dita Topics Can't Be WrongIXIASOFT
 

Viewers also liked (20)

Creating Documentation With A Wiki: The DITA Storm Project
Creating Documentation With A Wiki: The DITA Storm ProjectCreating Documentation With A Wiki: The DITA Storm Project
Creating Documentation With A Wiki: The DITA Storm Project
 
Surviving the Transition to DITA: Trusted Partners can Ease the Pain
Surviving the Transition to DITA: Trusted Partners can Ease the PainSurviving the Transition to DITA: Trusted Partners can Ease the Pain
Surviving the Transition to DITA: Trusted Partners can Ease the Pain
 
Localization and DITA: What you Need to Know - LocWorld32
Localization and DITA: What you Need to Know - LocWorld32Localization and DITA: What you Need to Know - LocWorld32
Localization and DITA: What you Need to Know - LocWorld32
 
Converting Unstructured Docs to XML/DITA/ePub
Converting Unstructured Docs to XML/DITA/ePubConverting Unstructured Docs to XML/DITA/ePub
Converting Unstructured Docs to XML/DITA/ePub
 
Pat Farrell, Migrating Legacy Documentation to XML and DITA
Pat Farrell, Migrating Legacy Documentation to XML and DITAPat Farrell, Migrating Legacy Documentation to XML and DITA
Pat Farrell, Migrating Legacy Documentation to XML and DITA
 
Metadata: Queen to King Content?
Metadata: Queen to King Content?Metadata: Queen to King Content?
Metadata: Queen to King Content?
 
Taxonomy: Do I Need One
Taxonomy: Do I Need OneTaxonomy: Do I Need One
Taxonomy: Do I Need One
 
The Elusive Promise of Reuse
The Elusive Promise of ReuseThe Elusive Promise of Reuse
The Elusive Promise of Reuse
 
Joe Gelb: Taxonomy and Delivery
Joe Gelb: Taxonomy and DeliveryJoe Gelb: Taxonomy and Delivery
Joe Gelb: Taxonomy and Delivery
 
Easy steps to convert your content to structured (frame maker and xml)
Easy steps to convert your content to structured (frame maker and xml)Easy steps to convert your content to structured (frame maker and xml)
Easy steps to convert your content to structured (frame maker and xml)
 
How to Optimize Your Metadata and Taxonomy
How to Optimize Your Metadata and TaxonomyHow to Optimize Your Metadata and Taxonomy
How to Optimize Your Metadata and Taxonomy
 
Reports and DITA Metrics IXIASOFT User Conference 2016
Reports and DITA Metrics IXIASOFT User Conference 2016Reports and DITA Metrics IXIASOFT User Conference 2016
Reports and DITA Metrics IXIASOFT User Conference 2016
 
Optimizing Content Reuse with DITA
Optimizing Content Reuse with DITAOptimizing Content Reuse with DITA
Optimizing Content Reuse with DITA
 
Developing training websites in multiple languages with (mostly) open-source ...
Developing training websites in multiple languages with (mostly) open-source ...Developing training websites in multiple languages with (mostly) open-source ...
Developing training websites in multiple languages with (mostly) open-source ...
 
Blurring the Lines between ECM and CCMS
Blurring the Lines between ECM and CCMSBlurring the Lines between ECM and CCMS
Blurring the Lines between ECM and CCMS
 
Understanding Information Architecture
Understanding Information ArchitectureUnderstanding Information Architecture
Understanding Information Architecture
 
DITA Quick Start
DITA Quick StartDITA Quick Start
DITA Quick Start
 
Multiplying the Power of Taxonomy with Granular, Structured Content
Multiplying the Power of Taxonomy with Granular, Structured ContentMultiplying the Power of Taxonomy with Granular, Structured Content
Multiplying the Power of Taxonomy with Granular, Structured Content
 
Wireframing, Mockups, and Prototyping Made Easy
Wireframing, Mockups, and Prototyping Made EasyWireframing, Mockups, and Prototyping Made Easy
Wireframing, Mockups, and Prototyping Made Easy
 
10 Million Dita Topics Can't Be Wrong
10 Million Dita Topics Can't Be Wrong10 Million Dita Topics Can't Be Wrong
10 Million Dita Topics Can't Be Wrong
 

Similar to Taxonomy 101: Classifying DITA Tasks

Playing Tag: Managed Metadata and Taxonomies in SharePoint 2010
Playing Tag: Managed Metadata and Taxonomies in SharePoint 2010Playing Tag: Managed Metadata and Taxonomies in SharePoint 2010
Playing Tag: Managed Metadata and Taxonomies in SharePoint 2010Henry Ong
 
[AIIM17] Data Categorization You Can Live With - Monica Crocker
[AIIM17]  Data Categorization You Can Live With - Monica Crocker [AIIM17]  Data Categorization You Can Live With - Monica Crocker
[AIIM17] Data Categorization You Can Live With - Monica Crocker AIIM International
 
Monica Crocker Implementing Ecm Aiim 2009
Monica Crocker   Implementing Ecm Aiim 2009Monica Crocker   Implementing Ecm Aiim 2009
Monica Crocker Implementing Ecm Aiim 2009AIIM Minnesota
 
Tools and Techniques for Creating, Maintaining, and Distributing Shareable Me...
Tools and Techniques for Creating, Maintaining, and Distributing Shareable Me...Tools and Techniques for Creating, Maintaining, and Distributing Shareable Me...
Tools and Techniques for Creating, Maintaining, and Distributing Shareable Me...Jenn Riley
 
chapter11-220725121546-671fc36c.pdf
chapter11-220725121546-671fc36c.pdfchapter11-220725121546-671fc36c.pdf
chapter11-220725121546-671fc36c.pdfMahmoudSOLIMAN380726
 
‏‏‏‏‏‏‏‏Chapter 11: Meta-data Management
‏‏‏‏‏‏‏‏Chapter 11: Meta-data Management‏‏‏‏‏‏‏‏Chapter 11: Meta-data Management
‏‏‏‏‏‏‏‏Chapter 11: Meta-data ManagementAhmed Alorage
 
Streamlining Your Path to Metadata Charlotte Robidoux Stacey Swart
Streamlining Your Path to Metadata Charlotte Robidoux Stacey SwartStreamlining Your Path to Metadata Charlotte Robidoux Stacey Swart
Streamlining Your Path to Metadata Charlotte Robidoux Stacey SwartHewlett Packard Enterprise Services
 
Designing High Quality Data Driven Solutions 110520
Designing High Quality Data Driven Solutions 110520Designing High Quality Data Driven Solutions 110520
Designing High Quality Data Driven Solutions 110520MariaHalstead1
 
Metastudio DRM. Product presentation (en)
Metastudio DRM. Product presentation (en)Metastudio DRM. Product presentation (en)
Metastudio DRM. Product presentation (en)Ireneusz Chmielak
 
Making Meaning with Metadata
Making Meaning with MetadataMaking Meaning with Metadata
Making Meaning with MetadataJohn Horodyski
 
Product Keynote: Advancing Denodo’s Logical Data Fabric with AI and Advanced ...
Product Keynote: Advancing Denodo’s Logical Data Fabric with AI and Advanced ...Product Keynote: Advancing Denodo’s Logical Data Fabric with AI and Advanced ...
Product Keynote: Advancing Denodo’s Logical Data Fabric with AI and Advanced ...Denodo
 
Data Management Planning for researchers
Data Management Planning for researchersData Management Planning for researchers
Data Management Planning for researchersSarah Jones
 
Dita webinar 20th march
Dita webinar 20th marchDita webinar 20th march
Dita webinar 20th marchMetapercept
 
Why You Need Intelligent Metadata and Auto-classification in Records Management
Why You Need Intelligent Metadata and Auto-classification in Records ManagementWhy You Need Intelligent Metadata and Auto-classification in Records Management
Why You Need Intelligent Metadata and Auto-classification in Records ManagementConcept Searching, Inc
 
Pavankumar_TeraData_DBA_8yrsExp
Pavankumar_TeraData_DBA_8yrsExpPavankumar_TeraData_DBA_8yrsExp
Pavankumar_TeraData_DBA_8yrsExppavankumar akula
 
Webinar: Decoding the Mystery - How to Know if You Need a Data Catalog, a Dat...
Webinar: Decoding the Mystery - How to Know if You Need a Data Catalog, a Dat...Webinar: Decoding the Mystery - How to Know if You Need a Data Catalog, a Dat...
Webinar: Decoding the Mystery - How to Know if You Need a Data Catalog, a Dat...DATAVERSITY
 
Data Systems Integration & Business Value Pt. 1: Metadata
Data Systems Integration & Business Value Pt. 1: MetadataData Systems Integration & Business Value Pt. 1: Metadata
Data Systems Integration & Business Value Pt. 1: MetadataDATAVERSITY
 
Data-Ed: Data Systems Integration & Business Value PT. 1: Metadata
Data-Ed: Data Systems Integration & Business Value PT. 1: MetadataData-Ed: Data Systems Integration & Business Value PT. 1: Metadata
Data-Ed: Data Systems Integration & Business Value PT. 1: MetadataData Blueprint
 

Similar to Taxonomy 101: Classifying DITA Tasks (20)

Playing Tag: Managed Metadata and Taxonomies in SharePoint 2010
Playing Tag: Managed Metadata and Taxonomies in SharePoint 2010Playing Tag: Managed Metadata and Taxonomies in SharePoint 2010
Playing Tag: Managed Metadata and Taxonomies in SharePoint 2010
 
[AIIM17] Data Categorization You Can Live With - Monica Crocker
[AIIM17]  Data Categorization You Can Live With - Monica Crocker [AIIM17]  Data Categorization You Can Live With - Monica Crocker
[AIIM17] Data Categorization You Can Live With - Monica Crocker
 
Monica Crocker Implementing Ecm Aiim 2009
Monica Crocker   Implementing Ecm Aiim 2009Monica Crocker   Implementing Ecm Aiim 2009
Monica Crocker Implementing Ecm Aiim 2009
 
Tools and Techniques for Creating, Maintaining, and Distributing Shareable Me...
Tools and Techniques for Creating, Maintaining, and Distributing Shareable Me...Tools and Techniques for Creating, Maintaining, and Distributing Shareable Me...
Tools and Techniques for Creating, Maintaining, and Distributing Shareable Me...
 
chapter11-220725121546-671fc36c.pdf
chapter11-220725121546-671fc36c.pdfchapter11-220725121546-671fc36c.pdf
chapter11-220725121546-671fc36c.pdf
 
‏‏‏‏‏‏‏‏Chapter 11: Meta-data Management
‏‏‏‏‏‏‏‏Chapter 11: Meta-data Management‏‏‏‏‏‏‏‏Chapter 11: Meta-data Management
‏‏‏‏‏‏‏‏Chapter 11: Meta-data Management
 
Streamlining Your Path to Metadata Charlotte Robidoux Stacey Swart
Streamlining Your Path to Metadata Charlotte Robidoux Stacey SwartStreamlining Your Path to Metadata Charlotte Robidoux Stacey Swart
Streamlining Your Path to Metadata Charlotte Robidoux Stacey Swart
 
Designing High Quality Data Driven Solutions 110520
Designing High Quality Data Driven Solutions 110520Designing High Quality Data Driven Solutions 110520
Designing High Quality Data Driven Solutions 110520
 
Nlp model
Nlp modelNlp model
Nlp model
 
Metastudio DRM. Product presentation (en)
Metastudio DRM. Product presentation (en)Metastudio DRM. Product presentation (en)
Metastudio DRM. Product presentation (en)
 
Making Meaning with Metadata
Making Meaning with MetadataMaking Meaning with Metadata
Making Meaning with Metadata
 
Product Keynote: Advancing Denodo’s Logical Data Fabric with AI and Advanced ...
Product Keynote: Advancing Denodo’s Logical Data Fabric with AI and Advanced ...Product Keynote: Advancing Denodo’s Logical Data Fabric with AI and Advanced ...
Product Keynote: Advancing Denodo’s Logical Data Fabric with AI and Advanced ...
 
Data Management Planning for researchers
Data Management Planning for researchersData Management Planning for researchers
Data Management Planning for researchers
 
Dita webinar 20th march
Dita webinar 20th marchDita webinar 20th march
Dita webinar 20th march
 
Why You Need Intelligent Metadata and Auto-classification in Records Management
Why You Need Intelligent Metadata and Auto-classification in Records ManagementWhy You Need Intelligent Metadata and Auto-classification in Records Management
Why You Need Intelligent Metadata and Auto-classification in Records Management
 
Pavankumar_TeraData_DBA_8yrsExp
Pavankumar_TeraData_DBA_8yrsExpPavankumar_TeraData_DBA_8yrsExp
Pavankumar_TeraData_DBA_8yrsExp
 
1 d.1
1 d.11 d.1
1 d.1
 
Webinar: Decoding the Mystery - How to Know if You Need a Data Catalog, a Dat...
Webinar: Decoding the Mystery - How to Know if You Need a Data Catalog, a Dat...Webinar: Decoding the Mystery - How to Know if You Need a Data Catalog, a Dat...
Webinar: Decoding the Mystery - How to Know if You Need a Data Catalog, a Dat...
 
Data Systems Integration & Business Value Pt. 1: Metadata
Data Systems Integration & Business Value Pt. 1: MetadataData Systems Integration & Business Value Pt. 1: Metadata
Data Systems Integration & Business Value Pt. 1: Metadata
 
Data-Ed: Data Systems Integration & Business Value PT. 1: Metadata
Data-Ed: Data Systems Integration & Business Value PT. 1: MetadataData-Ed: Data Systems Integration & Business Value PT. 1: Metadata
Data-Ed: Data Systems Integration & Business Value PT. 1: Metadata
 

Recently uploaded

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)wesley chun
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsJoaquim Jorge
 
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024The Digital Insurer
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking MenDelhi Call girls
 
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?Igalia
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...Martijn de Jong
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityPrincipled Technologies
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Drew Madelung
 
Advantages of Hiring UIUX Design Service Providers for Your Business
Advantages of Hiring UIUX Design Service Providers for Your BusinessAdvantages of Hiring UIUX Design Service Providers for Your Business
Advantages of Hiring UIUX Design Service Providers for Your BusinessPixlogix Infotech
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking MenDelhi Call girls
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonetsnaman860154
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsMaria Levchenko
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationMichael W. Hawkins
 
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slidevu2urc
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking MenDelhi Call girls
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Servicegiselly40
 
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...Neo4j
 
A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024Results
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountPuma Security, LLC
 
The Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptxThe Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptxMalak Abu Hammad
 

Recently uploaded (20)

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)
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
 
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men
 
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?
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
Advantages of Hiring UIUX Design Service Providers for Your Business
Advantages of Hiring UIUX Design Service Providers for Your BusinessAdvantages of Hiring UIUX Design Service Providers for Your Business
Advantages of Hiring UIUX Design Service Providers for Your Business
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonets
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
 
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Service
 
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...
 
A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path Mount
 
The Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptxThe Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptx
 

Taxonomy 101: Classifying DITA Tasks

  • 1. easyDITA How-To Series: Taxonomy 101: Classifying DITA Tasks Paul Wlodarczyk CEO, Jorsek LLC June 28, 2012
  • 2. Poll: Please complete while folks arrive How are you delivering DITA Tasks or other procedural / how-to content? • Portal with advanced / faceted search • Static web pages or web help • Print / PDF • Windows Help • Other 6/28/2012 © Jorsek, LLC. All Rights Reserved. 2
  • 3. Why talk about task oriented content? Task-oriented content is valuable: • It is versatile and can be reused in more deliverables than conceptual content – Product user guides – Context-sensitive help – Knowledge base – Support – Training • It’s what most users are searching for in a A DITA Task published to MindTouch knowledge base or help 6/28/2012 © Jorsek, LLC. All Rights Reserved. 3
  • 4. Benefits of using DTA for authoring tasks • Task authored in DITA are – Concise – Consistent – Modular – Semantic • DITA Tasks make good templates for content contributed by SMEs (like product engineers) • For software UA in particular, task-oriented content is perfect for QA. The task becomes the Test Case. The XML Source for a DITA Task 6/28/2012 © Jorsek, LLC. All Rights Reserved. 4
  • 5. Anatomy of a DITA Task • Title • Short description • Context • Prerequisite • Step section • Step • Command • Sub Step • Step Info • Step Result • Step Example • Choice and Choice Table • Example • Post-requisite • Result A DITA Task in easyDITA 6/28/2012 © Jorsek, LLC. All Rights Reserved. 5
  • 6. DITA Tasks are semantic • DITA tasks are inherently semantic – Not simple ordered lists – Not simple paragraphs • This is useful for – Dynamic rendition, e.g. • Expand / collapse steps • Interactive UI controls – Semantic Search in the context of the structure, e.g. • find STEPS that contain MENU CASCADES • Find STEP INFORMATION that contains IMAGES tagged with [text] • Find PREREQUISITES that contain [text] 6/28/2012 © Jorsek, LLC. All Rights Reserved. 6
  • 7. Making tasks more findable with metadata • Q: How can we make content even more findable – For authors and content managers? – For end users in a dynamic delivery system? • A: Tag tasks with semantic metadata – Semantic = “meaning” – Metadata can be set with terms from controlled vocabularies defined and managed in a taxonomy 6/28/2012 © Jorsek, LLC. All Rights Reserved. 7
  • 8. What is Metadata? • Literally “Data about the data” • Also known as “tags” – Not to be confused with the content itself (e.g. XML structure) – Can be embedded in a file (e.g. the DITA Prolog or attributes; JPEG image data) or associated in a CMS • Two main flavors: – Administrative metadata • e.g. Content Type, Author, Date Modified, Version, Title, etc., • Usually system-generated • What the content is – Descriptive metadata • Subject classification, keywords, etc. • Usually manually authored • What the content is about 6/28/2012 © Jorsek, LLC. All Rights Reserved. 8
  • 9. Key Concept: Taxonomy taxonomy n. A categorization scheme for concepts, often hierarchical • Most often, taxonomies show “is a” relationships, e.g. A mammal is a vertebrate, A rodent is a mammal, etc. • Navigation up and down the tree yields broader than (BT) and narrower than (NT) classification – Can be used to adjust search scope • Can also show related terms (RT) – Can be used to suggest related searches / “see also” • Can manage synonyms (UF – Use For) – Can be used to find content when search terms are not the preferred terms 6/28/2012 © Jorsek, LLC. All Rights Reserved. 9
  • 10. Using Taxonomy for controlled vocabularies • A taxonomy is the “source of truth” for what terms to use for various concepts – so terms are consistent. • Taxonomy terms can be used as controlled vocabularies (“pick- lists”) for metadata, so authors simply select preferred terms – Avoids typos, duplicates, word form variations, use of non-preferred terms • Some content management systems enable controlled vocabularies from taxonomies to be used for setting attribute values in DITA (e.g. selectatts like Audience, Product, Platform etc.). • Relationships between terms in a Taxonomy can improve search – CMS search and site search indexing tools can use equivalent and related terms to find content that does not contain the search term – Relationships between terms can be expressed as RDF in HTML content for improving web search indexing 6/28/2012 © Jorsek, LLC. All Rights Reserved. 10
  • 11. Simple framework for tagging tasks • In any industry, we’re all trying to help people do something to something in a context: – Who is doing what to what (+ other important context or condition) • Examples Junior Service Technician doing preventive maintenance on Acme Jetpack XR7 that uses nitrous oxide injection technology Casual User clearing paper jam on MFD100 Copier with envelope tray option Case Worker performing an intake interview for a recently unemployed person in New York State Intermediate User publishing a DITA Map using DITA OT to PDF format Financial analyst calculating a WACC for a publicly traded company located in a country using GAPP accounting Registered Nurse administering medication to patient in the ICU and drug is a controlled substance Contract Service Technician doing diagnosis on P1000 Printer showing missing sections of the printed image 6/28/2012 © Jorsek, LLC. All Rights Reserved. 11
  • 12. What metadata do you need? Information about the Performer, Activity, Object, and Context will help narrow search results for a user or author (see our blog post on Metadata 101: A Search First Approach) • Performer metadata: – Types of users (roles, experience, education level, etc.) – Types of employees (title, training, certifications, clearance, departmen t, skill level etc.) – Types of customers • Activity metadata: – Broad Task Types (e.g. for service: maintenance, diagnosis, repair, calibration, startup, etc.) – High Level Task names from a performance analysis / instructional design – Competencies from a model – 6/28/2012 Commercial Services listing © Jorsek, LLC. All Rights Reserved. 12
  • 13. What metadata do you need? Information about the Performer, Activity, Object, and Context will help narrow search results for a user or author (see our blog post on Metadata 101: A Search First Approach) • Object (i.e. “To what / to whom”) metadata: – Things: Product, product components, product subsystems – People: Types of customers or clients • Context metadata: – Market / locale – Product options – Technologies – Special situations – Tools required – Security classification – Symptoms / Fault codes 6/28/2012 © Jorsek, LLC. All Rights Reserved. 13
  • 14. Do we have to create these terms from scratch? No! You are surrounded by free sources for term lists, many are governed and authoritative. Don’t reinvent – borrow! Here are some common sources of terms: • Corporate ECM or Web taxonomy (from IT or marketing) • Industry-specific taxonomies (e.g. MeSH for life sciences, DSM for mental health) • Government taxonomies (e.g. UK IPSV - Integrated Public Sector Vocabulary) • Generic public domain taxonomies (e.g. People, Places, and Cultures; AP News) • Other corporate sources: – Training group (competency models, task analyses) – HR (Job codes and Job Titles) – Support / field service systems (Parts, fault classifications, failure modes, tools used) – CRM data (Customer names, Customer categories, SKUs, Products & Services) – Product data (Product BOMs, platforms, parts, subsystems, options) – Organization Charts (Divisions, departments, locations, budget centers) – Business Process Analysis (process names and steps, inputs and outputs) 6/28/2012 © Jorsek, LLC. All Rights Reserved. 14
  • 15. Taxonomy Tools • You can build and manage a simple taxonomy in Microsoft Excel • Even if authors manually tag metadata, the Excel taxonomy can be a useful guide and source of terms to copy/paste • Each row is a term and each column is a level in the hierarchy • Put other data required for related and equivalent terms in columns to right of preferred term hierarchy • Add a column for scope notes • Use Grouping to help expand / collapse sections of a long taxonomy • If you have a CMS or other tool that consumes taxonomy, you can export a CSV file from Excel and import it to the CMS (see Mary Garcia’s excellent blog posts at TaxoDiary.com to learn how) 6/28/2012 © Jorsek, LLC. All Rights Reserved. 15
  • 16. Taxonomy Tools • Consider using a Taxonomy Management System if: – You have a large taxonomy (over 500 terms) – The taxonomy changes often – You have a complex governance process for approving new terms – The taxonomy needs to be consumed by more than one system – You are using term relationships to improve search indexing 6/28/2012 © Jorsek, LLC. All Rights Reserved. 16
  • 17. Guidelines for taxonomy quality • The hierarchy should reflect any of three relationships: – Generic (e.g. VehicleCar) – Instance (e.g. Mountain regionsRockies) – Whole-Part (e.g. HouseRoof) • Terms should be nouns or noun phrases. • Activities should be nouns or gerunds. • Avoid adjectives and prepositions unless integral to the term. • When in doubt singular vs. plural, choose plural; these are categories. Singular is OK for instances at the narrow end. • Named entities should be proper nouns. • Avoid punctuation and ampersands. Eliminate hyphens except where the term is confusing or unclear without them. • Make the most commonly used term the preferred term, even if it is an acronym (e.g. NASA). Make other forms Equivalent Terms. 6/28/2012 © Jorsek, LLC. All Rights Reserved. 17
  • 18. Poll: Are you currently using controlled vocabularies for any of the following? • CMS Metadata • DITA Attributes • Prolog Metadata and Keywords • Other • Not using controlled vocabularies 6/28/2012 © Jorsek, LLC. All Rights Reserved. 18
  • 19. Resources • LinkedIn Taxonomy Community of Practice • ANSI/NISO Z39.19-2005 - Guidelines on Construction, Format, and Management of Monolingual Controlled Vocabularies • IBM Presentation: Writing Effective DITA Task Topics – http://svdig.ditamap.com/DITATaskTopics_090310SR.ppt • TaxoDiary blog posts by Mary Garcia: Maintaining a Thesaurus in an Excel Workbook (two parts) – http://taxodiary.com/2012/04/maintaining-a-thesaurus-in-an-excel- workbook/ – http://taxodiary.com/2012/05/maintaining-a-thesaurus-in-an-excel- workbook-part-2/ • easyDITA blog posts and Twitter – easyDITA.com/blog and @easydita 6/28/2012 © Jorsek, LLC. All Rights Reserved. 19
  • 20. Thank you! • Questions? • Recorded webcast will be available soon through our website – you will get an email with the link • Anyone can register after the event to view the recording • Slides will be available on SlideShare – www.slideshare.net/easydita • Next webcast July 25, featuring Amber Swope of DITA Strategies discussing Using Taxonomy for DITA Content. Please join us! 6/28/2012 © Jorsek, LLC. All Rights Reserved. 20