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Phase 2: Systems Analysis

Learn about enterprise modeling concepts and tools such as entity-relationship diagrams, data flow diagrams, and data dictionaries. Understand the relationship between logical and physical models.

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Phase 2: Systems Analysis

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  1. Phase 2: Systems Analysis Chapter 4 Enterprise Modeling

  2. Chapter Objectives • Describe enterprise modeling concepts and tools, including entity-relationship diagrams, data flow diagrams, a data dictionary, and process descriptions • Explain how ERDs provide an overview of system interactions • Describe the symbols used in data flow diagrams and explain the rules • Draw data flow diagrams in a sequence, from general to specific

  3. Chapter Objectives • Explain how to level and balance a set of data flow diagrams • Describe how a data dictionary is used and what it contains • Use process description tools, including structured English, decision tables, and decision trees • Describe the relationship between logical and physical models

  4. Enterprise Modeling Tools • Systems analysts use many graphical techniques to describe an information system • Two popular tools are entity-relationship diagrams and data flow diagrams

  5. Entity-Relationship Diagrams • An entity is a person, place, thing, or event for which data is collected and maintained • An initial ERD helps you understand the interaction among system entities and provides an overall view of the system

  6. Entity-Relationship Diagrams • Drawing an Initial ERD • The first step is to list the entities that you identified during the fact-finding process and to consider the nature of the relationships that link them • Cardinality Figure 4-2

  7. Entity-Relationship Diagrams • Types of Relationships • 1:1, 1:M, M:N

  8. Data Flow Diagrams • A data flow diagram (DFD) shows how data moves through an information system but does not show program logic or processing steps • A set of DFDs provides a logical model that shows what the system does, not how it does it

  9. Data Flow Diagrams • DFD Symbols • DFDs use four basic symbols that represent processes, data flows, data stores, and entities • Gane and Sarson symbol set • Yourdon symbol set • Symbols are referenced by using all capital letters for the symbol name Figure 4-7

  10. Data Flow Diagrams • DFD Symbols Figure 4-7

  11. Data Flow Diagrams • DFD Symbols • Process symbol and Data flow symbols Figure 4-8

  12. Data Flow Diagrams • Data store symbol

  13. Data Flow Diagrams • Entity Symbol

  14. Data Flow Diagrams • Context Diagrams • The first step towards DFDs • Top-level view of an information system that shows the system’s boundaries and scope • Do not show any data stores in a context diagram because data stores are internal to the system • Begin by reviewing the system requirements to identify all external data sources and destinations

  15. Data Flow Diagrams • Context Diagrams

  16. Data Flow Diagrams • Conventions for DFDs • Each context diagram must fit on one page • The process name in the context diagram should be the name of the information system • Use unique names within each set of symbols • Do not cross lines • Use a unique reference number for each process symbol

  17. Data Flow Diagrams • Diagram 0 • Zooms in on the context diagram and shows major processes, data flows, and data stores • Must retain all the connections that flow into and out of process 0 • Each process has a reference number • Diverging data flow Figure 4-19

  18. Data Flow Diagrams • Diagram 0 • If same data flows in both directions, you can use a double-headed arrow • Diagram 0 represents exploded view of process 0 • Parent diagram • Child diagram • Functional primitive Figure 4-20

  19. Data Flow Diagrams • Diagram 0 for the Grading System

  20. Data Flow Diagrams • Lower-Level Diagrams • Created using leveling and balancing techniques • Leveling • Uses a series of increasingly detailed DFDs to describe an information system • Exploding, partitioning, or decomposing Figure 4-22 Figure 4-21

  21. Data Flow Diagrams • Lower-Level Diagrams • Balancing • Ensures that the input and output data flows of the parent DFD are maintained on the child DFD Figure 4-25 Figure 4-24 Figure 4-23

  22. Data Flow Diagrams • Strategies for Developing DFDs • A set of DFDs is a graphical, top-down model • With a bottom-up strategy, you first identify all functional primitives, data stores, entities, and data flows • The main objective is to ensure that your model is accurate and easy to understand

  23. Data Flow Diagrams • Strategies for Developing DFDs • General rule of thumb is that a diagram should have no more than nine process symbols • To construct a logical model of a complex system, you might use a combination of top-down and bottom-up strategies • The best approach depends on the information system you are modeling Figure 4-27 Figure 4-26 Figure 4-28

  24. Data Dictionary • A data dictionary, or data repository, is a central storehouse of information • An analyst uses the data dictionary to collect, document, and organize specific facts about the system • The data dictionary also defines and describes all data elements and meaningful combinations of data elements

  25. Data Dictionary • A data element, also called a data item or field, is the smallest piece of data that has meaning • Data elements are combined into records, also called data structures • A record is a meaningful combination of related data elements that is included in a data flow or retained in a data store Figure 4-29

  26. Data Dictionary • Documenting the Data Elements • You must document every data element in the data dictionary • The objective is to provide clear, comprehensive information about the data and processes that make up the system Figure 4-31 Figure 4-30

  27. Data Dictionary • Documenting the Data Elements • The following attributes usually are recorded and described • Data element name and label • Alias • Type and length • Default value • Acceptable values - Domain and validity rules

  28. Data Dictionary • Documenting the Data Elements • The following attributes usually are recorded and described • Source • Security • Responsible user(s) • Description and comments

  29. Data Dictionary • Documenting the Data Flows • The typical attributes are as follows • Data flow name or label • Description • Alternate name(s) • Origin • Destination • Record • Value and frequency Figure 4-32

  30. Data Dictionary • Documenting the Data Stores • Typical characteristics of a data store are • Data store name or label • Description • Alternate name(s) • Attributes • Volume and frequency Figure 4-33

  31. Data Dictionary • Documenting the Processes • Typical characteristics of a process • Process name or label • Description • Process number • Process description Figure 4-34

  32. Data Dictionary • Documenting the Entities • Typical characteristics of an entity include • Entity name • Description • Alternate name(s) • Input data flows • Output data flows Figure 4-35

  33. Data Dictionary • Documenting the Records • Typical characteristics of a record include • Record or data structure name • Definition or description • Alternate name(s) • Attributes Figure 4-36

  34. Data Dictionary • Data Dictionary Reports • You can obtain many valuable reports from a data dictionary • An alphabetized list of all data elements by name • A report by user departments of data elements that must be updated by each department • A report of all data flows and data stores that use a particular data element • Detailed reports showing all characteristics

  35. Process Description Tools • A process description documents the details of a functional primitive, which represents a specific set of processing steps and business logic

  36. Process Description Tools • Modular Design • Based on combinations of three logical structures, sometimes called control structures which serve as building blocks for the process • Sequence • Selection • Iteration - looping Figure 4-38 Figure 4-37 Figure 4-39

  37. Process Description Tools • Structured English • Must conform to the following rules • Use only the three building blocks of sequence, selection, and iteration • Use indentation for readability • Use a limited vocabulary, including standard terms used in the data dictionary and specific words that describe the processing rules

  38. Process Description Tools • Structured English • Might look familiar to programming students because it resembles pseudocode Figure 4-41 Figure 4-40

  39. Process Description Tools • Decision Tables • Shows a logical structure, with all possible combinations of conditions and resulting actions • It is important to consider every possible outcome to ensure that you have overlooked nothing Figure 4-43 Figure 4-42

  40. Process Description Tools • Decision Tables • Can have more than two possible outcomes • Often are the best way to describe a complex set of conditions Figure 4-44

  41. Process Description Tools • Decision Trees • Graphical representation of the conditions, actions, and rules found in a decision table • Whether to use a decision table or tree often is a matter of personal preference Figure 4-46 Figure 4-45

  42. Logical Versus Physical Models • While structured analysis tools are used to develop a logical model for a new information system, such tools also can be used to develop physical models of an information system • A physical model shows how the system’s requirements are implemented

  43. Logical Versus Physical Models • Sequence of Models • Many systems analysts create a physical model of the current system and then develop a logical model of the current system before tackling a logical model of the new system • Performing that extra step allows them to understand the current system better

  44. Logical Versus Physical Models • Four-Model Approach • Develop a physical model of the current system, a logical model of the current system, a logical model of the new system, and a physical model of the new system • The only disadvantage of the four-model approach is the added time and cost

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