Difference between revisions of "Bookkeeping Quarter"
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#*[[Data validation]]. | #*[[Data validation]]. | ||
#'''[[Data model]]'''. An analysis model that depicts the logical structure of data, independent of the data design or data storage mechanisms. | #'''[[Data model]]'''. An analysis model that depicts the logical structure of data, independent of the data design or data storage mechanisms. | ||
+ | #*[[Optionality]]. Defining whether or not a relationship between entities in a data model is mandatory. Optionality is shown on a data model with a special notation. | ||
+ | #*[[Cardinality]]. The number of occurrences of one entity in a data model that are linked to a second entity. Cardinality is shown on a data model with a special notation, number (e.g., 1), or letter (e.g., M for many). | ||
#*[[Data flow diagram]] (DFD). An analysis model that illustrates processes that occur, along with the flows of data to and from those processes. | #*[[Data flow diagram]] (DFD). An analysis model that illustrates processes that occur, along with the flows of data to and from those processes. | ||
− | + | #*[[State diagram]]. An analysis model showing the life cycle of a data entity or class. | |
− | *[[ | + | #*[[Sequence diagram]]. A type of diagram that shows objects participating in interactions and the messages exchanged between them. |
− | *[[ | + | #*[[Class model]]. A type of data model that depicts information groups as classes. |
− | + | #'''[[Data dictionary]]'''. An analysis model describing the data structures and attributes needed by the system. | |
− | + | #*[[Data entity]]. A group of related information to be stored by the system. Entities can be people, roles, places, things, organizations, occurrences in time, concepts, or documents. | |
− | *[[Class model]]. A type of data model that depicts information groups as classes. | + | #*[[Attribute]]. A data element with a specified data type that describes information associated with a concept or entity. |
− | + | #*[[Glossary]]. A list and definition of the business terms and concepts relevant to the solution being built or enhanced. | |
− | *[[Data entity]]. A group of related information to be stored by the system. Entities can be people, roles, places, things, organizations, occurrences in time, concepts, or documents. | + | #*[[Jargon]]. Specialized terminology or technical language that members of a group use to communicate among themselves. |
− | + | #'''[[Categorization]]'''. | |
− | + | #*[[Structural rule]]. Structural rules determine when something is or is not true or when things fall into a certain category. They describe categorizations that may change over time. | |
− | *[[ | + | #*[[Knowledge area]]. A group of related tasks that support a key function of business analysis. |
− | + | #'''[[Repository]]'''. A real or virtual facility where all information on a specific topic is stored and is available for retrieval. | |
− | + | #*[[Interoperability]]. Ability of systems to communicate by exchanging data or services. | |
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===Methods=== | ===Methods=== |
Revision as of 15:56, 5 April 2018
Organizational Learning Quarter (hereinafter, the Quarter) is the first of four lectures of Operations Quadrivium (hereinafter, the Quadrivium):
- The Quarter is designed to introduce its learners to enterprise discovery, or, in other words, to concepts related to obtaining data needed to administer the enterprise effort; and
- The Quadrivium examines concepts of administering various types of enterprises known as enterprise administration as a whole.
The Quadrivium is the first of seven modules of Septem Artes Administrativi, which is a course designed to introduce its learners to general concepts in business administration, management, and organizational behavior.
Contents
Outline
The predecessor lecture is Workteam Leadership Quarter.
Concepts
- Learning. Any relatively permanent change in behavior that occurs as a result of experience.
- Lessons learned. The learning gained from the process of performing the project. Lessons learned may be identified at any point.
- Lessons learned process. A process improvement technique used to learn about and improve on a process or project. A lessons learned session involves a special meeting in which the team explores what worked, what didn't work, what could be learned from the just-completed iteration, and how to adapt processes and techniques before continuing or starting anew.
- Data research.
- Data structure.
- Data model. An analysis model that depicts the logical structure of data, independent of the data design or data storage mechanisms.
- Optionality. Defining whether or not a relationship between entities in a data model is mandatory. Optionality is shown on a data model with a special notation.
- Cardinality. The number of occurrences of one entity in a data model that are linked to a second entity. Cardinality is shown on a data model with a special notation, number (e.g., 1), or letter (e.g., M for many).
- Data flow diagram (DFD). An analysis model that illustrates processes that occur, along with the flows of data to and from those processes.
- State diagram. An analysis model showing the life cycle of a data entity or class.
- Sequence diagram. A type of diagram that shows objects participating in interactions and the messages exchanged between them.
- Class model. A type of data model that depicts information groups as classes.
- Data dictionary. An analysis model describing the data structures and attributes needed by the system.
- Data entity. A group of related information to be stored by the system. Entities can be people, roles, places, things, organizations, occurrences in time, concepts, or documents.
- Attribute. A data element with a specified data type that describes information associated with a concept or entity.
- Glossary. A list and definition of the business terms and concepts relevant to the solution being built or enhanced.
- Jargon. Specialized terminology or technical language that members of a group use to communicate among themselves.
- Categorization.
- Structural rule. Structural rules determine when something is or is not true or when things fall into a certain category. They describe categorizations that may change over time.
- Knowledge area. A group of related tasks that support a key function of business analysis.
- Repository. A real or virtual facility where all information on a specific topic is stored and is available for retrieval.
- Interoperability. Ability of systems to communicate by exchanging data or services.
Methods
Instruments
Results
Practices
The successor lecture is Business Intelligence Quarter.