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“Metadata for the ODS project”
David Martín Moncunill / Andreas Drakos
(d.martin@uah.es, drakos@agroknow.gr)
University of Alcalá / Agro-Know
Open Discovery Space
Index
1. Quick review of IEEE LOM Application Profiles
2. Presentation of the ODS AP
3. Detailed description of ODS LOM AP
4. Annotation tools
5. Next Module Preview: Mixing and Matching
Metadata Schemas
2
Application Profiles quick review
Application profiles
4
• A set of metadata elements, policies, and
guidelines defined for a particular application.
• Defines an application-appropriate set of
properties in a public and communicable
manner.
• Permits the building of loosely-coupled
systems that still offers powerful capabilities.
IEEE LOM
5
• Institute of Electrical and Electronics Engineers
Standards Association Standard for Learning
Object Metadata (IEEE 1484.12.1 – 2002).
• Internationally-recognised open standard for the
description of “learning objects”.
• Relevant attributes of learning objects to be
described include: type of object; author; owner;
terms of distribution; format; and pedagogical
attributes, such as teaching or interaction style.
IEEE LOM based APs
6
• Regional
– UK LOM Core (UK)
– ANZ-LOM (Australia and New Zealand)
– NORLOM (Norway)
• Domain
– Organic.Edunet (Organic agriculture)
– ODS: Open Discovery Space Application Profile
Presentation of the ODS AP
More than an AP
8
• Based on the IEEE LOM Standard
• Includes curriculum-based vocabularies that
will be used for the:
– Harmonization
– Alignment
– Aggregation of the metadata records
• Existing educational content repositories,
collections or federations into the ODS open
learning content infrastructure.
More than an AP
9
• The ODS Curriculum-based Vocabularies:
Science, Mathematics, ICT,
Social Studies, Arts, Language Learning,
Additional subjects as proposed by ODS Partners.
• A set of options for categories of social tags and
evaluative metadata, which can be utilized by the
ODS Portal towards enabling its end-users to
contribute their tags, comments or reviews about
the educational content provided by the ODS
Portal.
Objectives
10
• Finding the offered learning resources useful
for the classroom .
• Appreciating the cross-linguistic and cross-
border use of content.
• Perceive pedagogical benefits of the resources
provided.
• Facilitate automatic translation services.
• Socially-Powered.
Objectives
11
• Several different metadata applications
profiles used by the various repositories
integrated in ODS.

• A unique ODS application profile.
Detailed description of ODS LOM AP
Data Types
13
• CharacterString: text can be entered in the element directly (e.g.
“ISBN”, “ARIADNE”, “LOMv1.0”, etc.).
• LangString: the text must identify its language and there can be
one or more character strings in the element (e.g. “en”, “organic
agriculture”).
• DateTime: the element contains date and time information and
there can also be textual information about this point in time (e.g.
“2008-07-21”).
• Duration: the element contains information about an interval in
time and there can also be textual information about the duration
(e.g. “PT2H45M”, “PT50S”).
• Vocabulary: the element contains source and value where source is
a reference to publicly sourced and maintained value.
ODS AP Overview
14
.
Category Mandatory Recommended Optional
1 General 1 5 2
2 Life Cycle - 1 2
3 Meta-Metadata - 2 2
4 Technical 1 - 6
5 Educational - 5 6
6 Rights - 3 -
7 Relation - - 2
8 Annotation - - 3
9 Classification 2 - 2
Mandatory Elements
15
1.2 General.Title
Datatype LangString [SPM: 1000 char]
Size 1
Example
“en”, “A neutron star”
“gr”, “Ένας αστέρας
νετρονίων”
.
Gives the learning object a human readable name. It is a
LangString data type, which provides the possibility to
define the used language.
Mandatory Elements
16
4.3 Technical. Location
Datatype
CharacterString [SPM: 1000
char]
Size SPM: 10 items
Example “http://host/id”
.
A string that is used to access this learning object. It may be
a location (URL), or a method that resolves to a location
(URI). The first element of this list shall be the preferable
location.
Mandatory Elements
17
9.1 Classification.Purpose
Datatype Vocabulary
Size 1
Example
“discipline”
“educational objective”
.
It is a Vocabulary data type which describes the purpose of
classifying a learning object under a given classification
system.
Mandatory Elements
18
.
Stores a taxonomic path in a specific classification system.
Each succeeding level is a refinement in the definition of the
preceding level.
9.2 Classification.Taxon Path
9.2.1 Source 9.2.2 Taxon
9.2.2.1 Id 9.2.2.2 Entry
Datatype
LangString
[SPM: 1000
char]
-
Character
String
[SPM:100
char]
LangString
[SPM: 500
char]
Size 1 - 1 1
Example “Science” - “320” “Astronomy”
Recommended Elements
19
.
Stores a globally label that identifies a learning object as
unique. The ODS AP permits up to ten (10) identifiers for
each metadata record of a specific learning object.
1.1 General. Identifier
1.1.1 Catalog 1.1.2 Entry
Datatype
CharacterString
[SPM: 1000
char]
CharacterString
[SPM: 1000 char]
Size 1 1
Example
ISBN, ISSN,
URI,URL
http://www.ods-
project.eu/image.jpg
Recommended Elements
20
.
Defines all languages used within the learning object. It can
store up to ten (10) language elements
1.3 General.Language
Datatype
CharacterString [SPM: 1000
char]
Size SPM: 10 items
Example
“en”,
“gr”
Recommended Elements
21
.
Defines all languages used within the learning object. It can
store up to ten (10) language elements
1.4 General.Description
Datatype LangString [SPM:2000 char]
Size SPM: 10 items
Example
(“en”, “Artist's interpretation
of the x-ray burst of a
neutron star which is the
dead core of a massive star”)
Recommended Elements
22
.
Provides free text keywords describing the topic of the
learning object.
1.5 General.Keyword
Datatype LangString [SPM: 1000 char]
Size SPM: 10 items
Example
(“en”, “neutron stars”),
(“gr”, “αστέρες νετρονίου”)
Recommended Elements
23
.
Stores the functional granularity of the learning object.
1.8 General.Aggregation Level
Datatype Vocabulary
Size 1
Example “1”
Value Space Definition
1
The smallest level of aggregation, namely, an
educational resource
2
A collection of level 1 learning objects, namely, a
lesson plan
3
A collection of level 2 learning objects, namely an
educational scenario
Recommended Elements
24
.
Responsible for data about the entities that have
contributed to the state of the L.O. during its life cycle
2.3 LifeCycle.Contribute
2.3.1 Role 2.3.2 Entry 2.3.3 Date
Datatype Vocabulary
CharacterString
[SPM: 1000 char]
Date Time
Size 1 SPM: 40 items 1
Example “author”
<entity>
BEGIN:VCARD(…)
</entity>
“16/11/2012”
Recommended Elements
25
.
Represents a globally unique label that identifies a specific
metadata record. The ODS AP permits up to ten (10)
identifiers for each metadata record of a specific learning
object.
3.1 Meta - Metadata. Identifier
3.1.1 Catalog 3.1.2 Entry
Datatype
CharacterString
[SPM: 1000
char]
CharacterString
[SPM: 1000 char]
Size 1 1
Example “URI”
http://www.ods-
project.eu/description/12
Recommended Elements
26
.
Represents a globally unique label that identifies a specific
metadata record. The ODS AP permits up to ten (10)
identifiers for each metadata record of a specific learning
object.
3.1 Meta - Metadata. Identifier
3.1.1 Catalog 3.1.2 Entry
Datatype
CharacterString
[SPM: 1000
char]
CharacterString
[SPM: 1000 char]
Size 1 1
Example “URI”
http://www.ods-
project.eu/description/12
Recommended Elements
27
.
Represents those entities that have affected the state of
this metadata instance during its life cycle.
3.2 Meta – Metadata.Contribute
3.2.1 Role 3.2.2 Entity 3.2.3 Date
Datatype Vocabulary
CharacterString
[SPM: 1000 char]
Date Time
Size 1 SPM: 10 items 1
Example “creator”
<entity>
BEGIN:VCARD (…)
</entity>
“16/11/2012”
Recommended Elements
28
.
Indicates the specific kind of the learning object. It is a
Vocabulary data type and the ODS AP permits up to ten
(10) different 5.2 Educational.Learning Resource Type
elements.
5.2 Educational. Learning Resource Type
Datatype Vocabulary
Size SPM: 10 items
Example (“Diagram”), (“Exercise”)
Value Space Described in Section 5.6.11 of the ODS LOM AP
documentation
Recommended Elements
29
.
Indicates the principal environment within which the
learning and use of this learning object is intended to take
place
5.6 Educational.Context
Datatype Vocabulary
Size SPM: 10 items
Example
(“Primary Education”),
(“Secondary Education”)
Value Space Described in Section 5.6.15 of the ODS LOM AP
documentation
Recommended Elements
30
.
Intended to indicate the typical age of the user of the
learning object. It is a LangString data type and is
expressed by an age range (minimum age to maximum age)
separated by a hyphen. Either minimum or maximum value
can be set to U (undefined) meaning that then the range is
extended in that way.
5.7 Educational. Typical Age Range
Datatype LangString [SPM: 1000 char]
Size SPM: 5 items
Example
(“15 – 18”),
(“18 – U”)
Recommended Elements
31
.
Exhibits how hard it is to work with or through this learning
object for the typical intended target audience.
5.8 Educational. Difficulty
Datatype Vocabulary
Size SPM: 5 items
Example
(“easy”),
(“very difficult”)
Value Space Described in Section 5.6.16 of the ODS LOM AP
documentation
Recommended Elements
32
.
Stores the approximate or time it takes to work with or
through this learning object for the typical intended target
audience.
5.9 Educational. Typical Learning Time
Datatype Duration
Size 1
Example “PT1H30M”, “PT1M45S”
Recommended Elements
33
.
Used to indicate if the use of the learning object requires
payment, so as to be used.
6.1 Rights. Cost
Datatype Vocabulary
Size 1
Example
“yes”
“no”
Recommended Elements
34
.
Used to indicate if any copyrights or other restrictions
apply to the learning object. The value “Yes” means that
the copyrights and/or other restrictions apply to the LO,
while “No” means that the learning object has no
restrictions and is not protected by copyrights.
6.2 Rights. Copyrights and Other Restrictions
Datatype Vocabulary
Size 1
Example
“yes”
“no”
Recommended Elements
35
.
Used to provide textual description of copyrights or other
restrictions that apply to the learning object.
6.3 Rights. Description
Datatype LangString [SPM: 1000 char]
Size 1
Example
“en”, “See copyright notice:
http://copyrightsnotice.org/ri
ghts.html”
Optional Elements
36
.
Used to store the geography or specific region to which the
learning object applies.
1.6 General.Coverage
Datatype LangString [SPM: 1000 char]
Size SPM: 10 items
Example
(“en”, “Europe”)
(“gr”, “Ευρώπη”)
Optional Elements
37
.
Provides information about the underlying organizational
structure of the learning object.
1.7 General.Structure
Datatype Vocabulary
Size 1
Example
(“atomic”)
(“collection”)
Value Space Described in Section 5.6.2 of the ODS LOM AP
documentation
Optional Elements
38
.
Intended to store the version/edition of the learning
object.
2.1 LifeCycle.Version
Datatype
LangString
[SPM: 50 Characters]
Size 1
Example (“en”, “v1.0”)
Optional Elements
39
.
Intended to indicate the completion status or condition to
the learning object.
2.2 LifeCycle.Status
Datatype Vocabulary
Size 1
Example
(“draft”)
(“final”)
Value Space Described in Section 5.6.4 of the ODS LOM AP
documentation
Optional Elements
40
.
Intended for the name and version of the authoritative
specification used to create this metadata instance.
3.3 Meta – Metadata. Metadata Schema
Datatype
CharacterString [SPM: 30
char]
Size SPM: 10 items
Example “LOMv1.0”
Optional Elements
41
.
Intended to describe the language of the metadata
instance.
3.4 Meta – Metadata. Language
Datatype
CharacterString [SPM: 100
char]
Size 1
Example “en”
Optional Elements
42
.
Presents information about the technical datatype(s) of (all
the components of) this learning object.
4.1 Technical. Format
Datatype
CharacterString [SPM: 500
char]
Size SPM: 40 items
Example
(“image/gif”)
(“application/x-director”)
(“text/xml”)
Value Space Described in Section 5.6.7 of the ODS LOM AP
documentation
Optional Elements
43
.
Intended to store the size of the digital learning objects in
bytes (octets). The size is represented as a decimal value
(radix 10). Consequently, only the digits “0” through “9”
should be used.
4.2 Technical. Size
Datatype
CharacterString [SPM: 500
char]
Size 1
Example
(“44000”)
(“50392”)
Optional Elements
44
.
Used for the grouping of multiple requirements. The composite
requirement is satisfied when one of the component requirements is
satisfied, i.e., the logical connector is OR.
4.4 Technical.Requirement
4.4.1.1OrCo
mposit. Type
4.4.1.2
OrComposite.
Name
4.4.1.3
OrComposite.
Minimum
Version
4.4.1.4
OrComposite.
Minimum
Version
Datatype Vocabulary Vocabulary CharacterString CharacterString
Size 1 1 1 1
Example
(“browser”)
(“operating
system”)
(“unix”)
(“multi - os”)
(“7”)
(“v 16.0.2”)
(“7”)
(“v 16.0.2”)
Optional Elements
45
.
Intended to hold a description on how to install the
learning object.
4.5 Technical. Installation Remarks
Datatype LangString [SPM: 1000 char]
Size 1
Example
(“en”, “Unzip the zip file and
launch index.html in your
web browser”)
Optional Elements
46
.
Intended to store information about other software and
hardware requirements.
4.6 Technical. Other Platform Requirements
Datatype LangString [SPM: 1000 char]
Size 1
Example
(“en”, “sound card”), (“en”,
“runtime X”)
Optional Elements
47
.
Holds the time a continuous learning object takes when
played at intended speed.
4.7 Technical. Duration
Datatype Duration
Size 1
Example
(“PT1H30M”)
(“PT1M45S”)
Optional Elements
48
.
Intended to store the definition of a learning object
according to its interactivity type with the user.
5.1 Educational.Interactivity Type
Datatype Vocabulary
Size 1
Example
(“Active”)
(“Mixed”)
Value Space Described in Section 5.6.10 of the ODS LOM AP
documentation
Optional Elements
49
.
Intended to store the degree of interactivity characterizing
this learning object. Interactivity in this context refers to
the degree to which the learner can influence the aspect of
behavior of the learning object.
5.3 Educational.Interactivity Level
Datatype Vocabulary
Size 1
Example
(“low”)
(“very high”)
Value Space Described in Section 5.6.12 of the ODS LOM AP
documentation
Optional Elements
50
.
Intended to store the degree of conciseness of learning
object. The semantic density of a learning object may be
estimated depending on the relation between the amount
of information provided and the size, span or duration of
the LO.
5.4 Educational.Density
Datatype Vocabulary
Size 1
Example
(“low”)
(“very high”)
Value Space Derives its values from IEEE LOM v1.0 Vocabulary.
Optional Elements
51
.
Intended to indicate the role of principal user(s) for which
this learning object was designed.
5.5 Educational.Intended End User Role
Datatype Vocabulary
Size SPM:10 items
Example
(“Author”)
(“Teacher”)
Value Space Described in Section 5.6.14 of the ODS LOM AP
documentation
Optional Elements
52
.
Intended to provide comments on how this learning object
is to be used.
5.10 Educational.Description
Datatype LangString [SPM:1000 char]
Size SPM: 10 items
Example
(“en”, “Teacher guidelines
that come with a textbook.”)
Optional Elements
53
.
Stores the human language(s) used by typical intended
user of this learning object.
5.11 Educational.Language
Datatype
CharacterString [SPM: 100
char]
Size SPM: 10 items
Example
(“en”),
(“fr”)
Optional Elements
54
.
Intended to describe the nature of the relationship
between this learning object and the target learning object,
identified by “7.2 Relation.Resource”.
7.1 Relation. Kind
Datatype Vocabulary
Size 1
Example
(“ispartof”),
(“haspart”),
(“isversionof”)
Value Space Described in Section 5.6.17 of the ODS LOM AP
documentation
Optional Elements
55
.
Stores the target learning object that this relationship
references.
7.2 Relation.Resource
7.2.1.1
Relation.Resource.
Identifier.Catalog
7.2.1.2
Relation.Resource.
Identifier. Entry
7.2.2
Relation.Resource.
Description
Datatype
CharacterString
[SPM: 1000 char]
CharacterString
[SPM: 1000 char]
LangString
[SPM: 1000 char]
Size 1 1 SPM:10 items
Example
(“ISBN”),
(“ARIADNE”),
(“URI”)
(“2-7342-0318”)
(“LEAO875”)
(“en”, “The Quick Time
movie of the
horizontal throw on
the web site of the
Wikipedia”)
Optional Elements
56
.
Stores the entity (i.e., people, organization) that created
this annotation.
8.1 Annotation.Entity
Datatype
CharacterString
[SPM: 1000 char]
Size 1
Example
<entity>
BEGIN:VCARD
(…)
END:VCARD
</entity>
Optional Elements
57
.
Stores the date in which the specific annotation was
created.
8.2 Annotation.Date
Datatype DateTime
Size 1
Example (“2012 – 11 – 27”)
Optional Elements
58
.
Contains the description of this annotation regarding the
LO.
8.3 Annotation.Description
Datatype
LangString
[SPM: 1000 char]
Size 1
Example
(“en”, “I have used this video
with my student”. They really
enjoy being able to modify
some features of the
experiment”)
Optional Elements
59
.
Contains a textual description of the characteristics being
described.
9.3 Classification.Description
Datatype
LangString
[SPM: 2000 char]
Size 1
Example
(“en”, “This learning object
can be used to educate
people how to use a
telescope”)
Optional Elements
60
.
Contains keyword description of learning objective relative
to its stated purpose.
9.4 Classification.Keyword
Datatype
LangString
[SPM: 1000 char]
Size 1
Example (“telescope”, “planets”)
Questions?
61
Thanks!
Contact: d.martin@uah.es
drakos@agroknow.gr

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Edrene.2014 ODS Application Profile

  • 1. “Metadata for the ODS project” David Martín Moncunill / Andreas Drakos (d.martin@uah.es, drakos@agroknow.gr) University of Alcalá / Agro-Know Open Discovery Space
  • 2. Index 1. Quick review of IEEE LOM Application Profiles 2. Presentation of the ODS AP 3. Detailed description of ODS LOM AP 4. Annotation tools 5. Next Module Preview: Mixing and Matching Metadata Schemas 2
  • 4. Application profiles 4 • A set of metadata elements, policies, and guidelines defined for a particular application. • Defines an application-appropriate set of properties in a public and communicable manner. • Permits the building of loosely-coupled systems that still offers powerful capabilities.
  • 5. IEEE LOM 5 • Institute of Electrical and Electronics Engineers Standards Association Standard for Learning Object Metadata (IEEE 1484.12.1 – 2002). • Internationally-recognised open standard for the description of “learning objects”. • Relevant attributes of learning objects to be described include: type of object; author; owner; terms of distribution; format; and pedagogical attributes, such as teaching or interaction style.
  • 6. IEEE LOM based APs 6 • Regional – UK LOM Core (UK) – ANZ-LOM (Australia and New Zealand) – NORLOM (Norway) • Domain – Organic.Edunet (Organic agriculture) – ODS: Open Discovery Space Application Profile
  • 8. More than an AP 8 • Based on the IEEE LOM Standard • Includes curriculum-based vocabularies that will be used for the: – Harmonization – Alignment – Aggregation of the metadata records • Existing educational content repositories, collections or federations into the ODS open learning content infrastructure.
  • 9. More than an AP 9 • The ODS Curriculum-based Vocabularies: Science, Mathematics, ICT, Social Studies, Arts, Language Learning, Additional subjects as proposed by ODS Partners. • A set of options for categories of social tags and evaluative metadata, which can be utilized by the ODS Portal towards enabling its end-users to contribute their tags, comments or reviews about the educational content provided by the ODS Portal.
  • 10. Objectives 10 • Finding the offered learning resources useful for the classroom . • Appreciating the cross-linguistic and cross- border use of content. • Perceive pedagogical benefits of the resources provided. • Facilitate automatic translation services. • Socially-Powered.
  • 11. Objectives 11 • Several different metadata applications profiles used by the various repositories integrated in ODS.  • A unique ODS application profile.
  • 13. Data Types 13 • CharacterString: text can be entered in the element directly (e.g. “ISBN”, “ARIADNE”, “LOMv1.0”, etc.). • LangString: the text must identify its language and there can be one or more character strings in the element (e.g. “en”, “organic agriculture”). • DateTime: the element contains date and time information and there can also be textual information about this point in time (e.g. “2008-07-21”). • Duration: the element contains information about an interval in time and there can also be textual information about the duration (e.g. “PT2H45M”, “PT50S”). • Vocabulary: the element contains source and value where source is a reference to publicly sourced and maintained value.
  • 14. ODS AP Overview 14 . Category Mandatory Recommended Optional 1 General 1 5 2 2 Life Cycle - 1 2 3 Meta-Metadata - 2 2 4 Technical 1 - 6 5 Educational - 5 6 6 Rights - 3 - 7 Relation - - 2 8 Annotation - - 3 9 Classification 2 - 2
  • 15. Mandatory Elements 15 1.2 General.Title Datatype LangString [SPM: 1000 char] Size 1 Example “en”, “A neutron star” “gr”, “Ένας αστέρας νετρονίων” . Gives the learning object a human readable name. It is a LangString data type, which provides the possibility to define the used language.
  • 16. Mandatory Elements 16 4.3 Technical. Location Datatype CharacterString [SPM: 1000 char] Size SPM: 10 items Example “http://host/id” . A string that is used to access this learning object. It may be a location (URL), or a method that resolves to a location (URI). The first element of this list shall be the preferable location.
  • 17. Mandatory Elements 17 9.1 Classification.Purpose Datatype Vocabulary Size 1 Example “discipline” “educational objective” . It is a Vocabulary data type which describes the purpose of classifying a learning object under a given classification system.
  • 18. Mandatory Elements 18 . Stores a taxonomic path in a specific classification system. Each succeeding level is a refinement in the definition of the preceding level. 9.2 Classification.Taxon Path 9.2.1 Source 9.2.2 Taxon 9.2.2.1 Id 9.2.2.2 Entry Datatype LangString [SPM: 1000 char] - Character String [SPM:100 char] LangString [SPM: 500 char] Size 1 - 1 1 Example “Science” - “320” “Astronomy”
  • 19. Recommended Elements 19 . Stores a globally label that identifies a learning object as unique. The ODS AP permits up to ten (10) identifiers for each metadata record of a specific learning object. 1.1 General. Identifier 1.1.1 Catalog 1.1.2 Entry Datatype CharacterString [SPM: 1000 char] CharacterString [SPM: 1000 char] Size 1 1 Example ISBN, ISSN, URI,URL http://www.ods- project.eu/image.jpg
  • 20. Recommended Elements 20 . Defines all languages used within the learning object. It can store up to ten (10) language elements 1.3 General.Language Datatype CharacterString [SPM: 1000 char] Size SPM: 10 items Example “en”, “gr”
  • 21. Recommended Elements 21 . Defines all languages used within the learning object. It can store up to ten (10) language elements 1.4 General.Description Datatype LangString [SPM:2000 char] Size SPM: 10 items Example (“en”, “Artist's interpretation of the x-ray burst of a neutron star which is the dead core of a massive star”)
  • 22. Recommended Elements 22 . Provides free text keywords describing the topic of the learning object. 1.5 General.Keyword Datatype LangString [SPM: 1000 char] Size SPM: 10 items Example (“en”, “neutron stars”), (“gr”, “αστέρες νετρονίου”)
  • 23. Recommended Elements 23 . Stores the functional granularity of the learning object. 1.8 General.Aggregation Level Datatype Vocabulary Size 1 Example “1” Value Space Definition 1 The smallest level of aggregation, namely, an educational resource 2 A collection of level 1 learning objects, namely, a lesson plan 3 A collection of level 2 learning objects, namely an educational scenario
  • 24. Recommended Elements 24 . Responsible for data about the entities that have contributed to the state of the L.O. during its life cycle 2.3 LifeCycle.Contribute 2.3.1 Role 2.3.2 Entry 2.3.3 Date Datatype Vocabulary CharacterString [SPM: 1000 char] Date Time Size 1 SPM: 40 items 1 Example “author” <entity> BEGIN:VCARD(…) </entity> “16/11/2012”
  • 25. Recommended Elements 25 . Represents a globally unique label that identifies a specific metadata record. The ODS AP permits up to ten (10) identifiers for each metadata record of a specific learning object. 3.1 Meta - Metadata. Identifier 3.1.1 Catalog 3.1.2 Entry Datatype CharacterString [SPM: 1000 char] CharacterString [SPM: 1000 char] Size 1 1 Example “URI” http://www.ods- project.eu/description/12
  • 26. Recommended Elements 26 . Represents a globally unique label that identifies a specific metadata record. The ODS AP permits up to ten (10) identifiers for each metadata record of a specific learning object. 3.1 Meta - Metadata. Identifier 3.1.1 Catalog 3.1.2 Entry Datatype CharacterString [SPM: 1000 char] CharacterString [SPM: 1000 char] Size 1 1 Example “URI” http://www.ods- project.eu/description/12
  • 27. Recommended Elements 27 . Represents those entities that have affected the state of this metadata instance during its life cycle. 3.2 Meta – Metadata.Contribute 3.2.1 Role 3.2.2 Entity 3.2.3 Date Datatype Vocabulary CharacterString [SPM: 1000 char] Date Time Size 1 SPM: 10 items 1 Example “creator” <entity> BEGIN:VCARD (…) </entity> “16/11/2012”
  • 28. Recommended Elements 28 . Indicates the specific kind of the learning object. It is a Vocabulary data type and the ODS AP permits up to ten (10) different 5.2 Educational.Learning Resource Type elements. 5.2 Educational. Learning Resource Type Datatype Vocabulary Size SPM: 10 items Example (“Diagram”), (“Exercise”) Value Space Described in Section 5.6.11 of the ODS LOM AP documentation
  • 29. Recommended Elements 29 . Indicates the principal environment within which the learning and use of this learning object is intended to take place 5.6 Educational.Context Datatype Vocabulary Size SPM: 10 items Example (“Primary Education”), (“Secondary Education”) Value Space Described in Section 5.6.15 of the ODS LOM AP documentation
  • 30. Recommended Elements 30 . Intended to indicate the typical age of the user of the learning object. It is a LangString data type and is expressed by an age range (minimum age to maximum age) separated by a hyphen. Either minimum or maximum value can be set to U (undefined) meaning that then the range is extended in that way. 5.7 Educational. Typical Age Range Datatype LangString [SPM: 1000 char] Size SPM: 5 items Example (“15 – 18”), (“18 – U”)
  • 31. Recommended Elements 31 . Exhibits how hard it is to work with or through this learning object for the typical intended target audience. 5.8 Educational. Difficulty Datatype Vocabulary Size SPM: 5 items Example (“easy”), (“very difficult”) Value Space Described in Section 5.6.16 of the ODS LOM AP documentation
  • 32. Recommended Elements 32 . Stores the approximate or time it takes to work with or through this learning object for the typical intended target audience. 5.9 Educational. Typical Learning Time Datatype Duration Size 1 Example “PT1H30M”, “PT1M45S”
  • 33. Recommended Elements 33 . Used to indicate if the use of the learning object requires payment, so as to be used. 6.1 Rights. Cost Datatype Vocabulary Size 1 Example “yes” “no”
  • 34. Recommended Elements 34 . Used to indicate if any copyrights or other restrictions apply to the learning object. The value “Yes” means that the copyrights and/or other restrictions apply to the LO, while “No” means that the learning object has no restrictions and is not protected by copyrights. 6.2 Rights. Copyrights and Other Restrictions Datatype Vocabulary Size 1 Example “yes” “no”
  • 35. Recommended Elements 35 . Used to provide textual description of copyrights or other restrictions that apply to the learning object. 6.3 Rights. Description Datatype LangString [SPM: 1000 char] Size 1 Example “en”, “See copyright notice: http://copyrightsnotice.org/ri ghts.html”
  • 36. Optional Elements 36 . Used to store the geography or specific region to which the learning object applies. 1.6 General.Coverage Datatype LangString [SPM: 1000 char] Size SPM: 10 items Example (“en”, “Europe”) (“gr”, “Ευρώπη”)
  • 37. Optional Elements 37 . Provides information about the underlying organizational structure of the learning object. 1.7 General.Structure Datatype Vocabulary Size 1 Example (“atomic”) (“collection”) Value Space Described in Section 5.6.2 of the ODS LOM AP documentation
  • 38. Optional Elements 38 . Intended to store the version/edition of the learning object. 2.1 LifeCycle.Version Datatype LangString [SPM: 50 Characters] Size 1 Example (“en”, “v1.0”)
  • 39. Optional Elements 39 . Intended to indicate the completion status or condition to the learning object. 2.2 LifeCycle.Status Datatype Vocabulary Size 1 Example (“draft”) (“final”) Value Space Described in Section 5.6.4 of the ODS LOM AP documentation
  • 40. Optional Elements 40 . Intended for the name and version of the authoritative specification used to create this metadata instance. 3.3 Meta – Metadata. Metadata Schema Datatype CharacterString [SPM: 30 char] Size SPM: 10 items Example “LOMv1.0”
  • 41. Optional Elements 41 . Intended to describe the language of the metadata instance. 3.4 Meta – Metadata. Language Datatype CharacterString [SPM: 100 char] Size 1 Example “en”
  • 42. Optional Elements 42 . Presents information about the technical datatype(s) of (all the components of) this learning object. 4.1 Technical. Format Datatype CharacterString [SPM: 500 char] Size SPM: 40 items Example (“image/gif”) (“application/x-director”) (“text/xml”) Value Space Described in Section 5.6.7 of the ODS LOM AP documentation
  • 43. Optional Elements 43 . Intended to store the size of the digital learning objects in bytes (octets). The size is represented as a decimal value (radix 10). Consequently, only the digits “0” through “9” should be used. 4.2 Technical. Size Datatype CharacterString [SPM: 500 char] Size 1 Example (“44000”) (“50392”)
  • 44. Optional Elements 44 . Used for the grouping of multiple requirements. The composite requirement is satisfied when one of the component requirements is satisfied, i.e., the logical connector is OR. 4.4 Technical.Requirement 4.4.1.1OrCo mposit. Type 4.4.1.2 OrComposite. Name 4.4.1.3 OrComposite. Minimum Version 4.4.1.4 OrComposite. Minimum Version Datatype Vocabulary Vocabulary CharacterString CharacterString Size 1 1 1 1 Example (“browser”) (“operating system”) (“unix”) (“multi - os”) (“7”) (“v 16.0.2”) (“7”) (“v 16.0.2”)
  • 45. Optional Elements 45 . Intended to hold a description on how to install the learning object. 4.5 Technical. Installation Remarks Datatype LangString [SPM: 1000 char] Size 1 Example (“en”, “Unzip the zip file and launch index.html in your web browser”)
  • 46. Optional Elements 46 . Intended to store information about other software and hardware requirements. 4.6 Technical. Other Platform Requirements Datatype LangString [SPM: 1000 char] Size 1 Example (“en”, “sound card”), (“en”, “runtime X”)
  • 47. Optional Elements 47 . Holds the time a continuous learning object takes when played at intended speed. 4.7 Technical. Duration Datatype Duration Size 1 Example (“PT1H30M”) (“PT1M45S”)
  • 48. Optional Elements 48 . Intended to store the definition of a learning object according to its interactivity type with the user. 5.1 Educational.Interactivity Type Datatype Vocabulary Size 1 Example (“Active”) (“Mixed”) Value Space Described in Section 5.6.10 of the ODS LOM AP documentation
  • 49. Optional Elements 49 . Intended to store the degree of interactivity characterizing this learning object. Interactivity in this context refers to the degree to which the learner can influence the aspect of behavior of the learning object. 5.3 Educational.Interactivity Level Datatype Vocabulary Size 1 Example (“low”) (“very high”) Value Space Described in Section 5.6.12 of the ODS LOM AP documentation
  • 50. Optional Elements 50 . Intended to store the degree of conciseness of learning object. The semantic density of a learning object may be estimated depending on the relation between the amount of information provided and the size, span or duration of the LO. 5.4 Educational.Density Datatype Vocabulary Size 1 Example (“low”) (“very high”) Value Space Derives its values from IEEE LOM v1.0 Vocabulary.
  • 51. Optional Elements 51 . Intended to indicate the role of principal user(s) for which this learning object was designed. 5.5 Educational.Intended End User Role Datatype Vocabulary Size SPM:10 items Example (“Author”) (“Teacher”) Value Space Described in Section 5.6.14 of the ODS LOM AP documentation
  • 52. Optional Elements 52 . Intended to provide comments on how this learning object is to be used. 5.10 Educational.Description Datatype LangString [SPM:1000 char] Size SPM: 10 items Example (“en”, “Teacher guidelines that come with a textbook.”)
  • 53. Optional Elements 53 . Stores the human language(s) used by typical intended user of this learning object. 5.11 Educational.Language Datatype CharacterString [SPM: 100 char] Size SPM: 10 items Example (“en”), (“fr”)
  • 54. Optional Elements 54 . Intended to describe the nature of the relationship between this learning object and the target learning object, identified by “7.2 Relation.Resource”. 7.1 Relation. Kind Datatype Vocabulary Size 1 Example (“ispartof”), (“haspart”), (“isversionof”) Value Space Described in Section 5.6.17 of the ODS LOM AP documentation
  • 55. Optional Elements 55 . Stores the target learning object that this relationship references. 7.2 Relation.Resource 7.2.1.1 Relation.Resource. Identifier.Catalog 7.2.1.2 Relation.Resource. Identifier. Entry 7.2.2 Relation.Resource. Description Datatype CharacterString [SPM: 1000 char] CharacterString [SPM: 1000 char] LangString [SPM: 1000 char] Size 1 1 SPM:10 items Example (“ISBN”), (“ARIADNE”), (“URI”) (“2-7342-0318”) (“LEAO875”) (“en”, “The Quick Time movie of the horizontal throw on the web site of the Wikipedia”)
  • 56. Optional Elements 56 . Stores the entity (i.e., people, organization) that created this annotation. 8.1 Annotation.Entity Datatype CharacterString [SPM: 1000 char] Size 1 Example <entity> BEGIN:VCARD (…) END:VCARD </entity>
  • 57. Optional Elements 57 . Stores the date in which the specific annotation was created. 8.2 Annotation.Date Datatype DateTime Size 1 Example (“2012 – 11 – 27”)
  • 58. Optional Elements 58 . Contains the description of this annotation regarding the LO. 8.3 Annotation.Description Datatype LangString [SPM: 1000 char] Size 1 Example (“en”, “I have used this video with my student”. They really enjoy being able to modify some features of the experiment”)
  • 59. Optional Elements 59 . Contains a textual description of the characteristics being described. 9.3 Classification.Description Datatype LangString [SPM: 2000 char] Size 1 Example (“en”, “This learning object can be used to educate people how to use a telescope”)
  • 60. Optional Elements 60 . Contains keyword description of learning objective relative to its stated purpose. 9.4 Classification.Keyword Datatype LangString [SPM: 1000 char] Size 1 Example (“telescope”, “planets”)