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EarlySectOCD-EC

Course: CS 577, Fall 2009
School: USC
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S USC C E 1. 2. 3. 4. University of Southern California Center for Software Engineering LCO OCD Early Sections Draft Exit Criteria Introduction section with purpose and references. SoA: Per MBASE GL, OCD . Organization Background. SoA: Per MBASE GL, OCD 2.1; degree of detail risk driven. Organization Goals. SoA: Per MBASE GL, OCD 2.2; degree of detail risk driven. Description of Current System. SoA: Compliant...

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S USC C E 1. 2. 3. 4. University of Southern California Center for Software Engineering LCO OCD Early Sections Draft Exit Criteria Introduction section with purpose and references. SoA: Per MBASE GL, OCD . Organization Background. SoA: Per MBASE GL, OCD 2.1; degree of detail risk driven. Organization Goals. SoA: Per MBASE GL, OCD 2.2; degree of detail risk driven. Description of Current System. SoA: Compliant with MBASE GL, OCD 2.3; High level "block diagram", either ad hoc [like Simplifiers & Complicators diagrams], or combination of Component and/or Deployment View, but with a RUP Business Object Model if needed; degree of detail risk driven. Entity Model. SoA: Compliant with MBASE GL, OCD 2.4; either an RUP Business Object Model or a regular class model, as appropriate; risk driven level of content, with well-named associations, and cardinality, only but key attributes and seldom operations. Organization Activity Model. SoA: Compliant with MBASE GL, OCD 2.5; an Activity Model or a Business Activity Model, with classes restricted to those needed; risk driven level of content. Alternatively, based on risk, you may have to include a Use-case Model or a Sequence Diagram. Interaction Model. SoA: Compliant with MBASE GL, OCD 2.6 (esp. "every entity and activity"); Team-Collaboration Diagram and Work-Collaboration Diagram (Sequence Diagram); risk dr...

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