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Published byRosemary Shields Modified over 9 years ago
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Implementing and Integrating AI Systems
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What Is Implementation? Implementation can be defined as getting a newly developed or significantly changed system to be used by those for whom it was intended.
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What Is Institutionalization? It is a process through which the AI system becomes incorporated as an ongoing part of organizational activities.
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Measuring Implementation Success Intended or actual use of the system User’s satisfaction Attainment of original objectives Documented benefits ($): cost savings, time savings
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Determinants of Successful Implementation Technical Factors Behavioral Factors Change Management Process and Structure User Involvement Ethics Organizational Support External Environment
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Technical Factors Level of complexity (must be low) Response time Reliability Availability Accessibility Lack of equipment Mismatched hardware/software
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Behavioral Factors Decision styles: analytically-oriented, autocratic Organizational climate: supporting innovations vs. lagging with changes Resistance change: unknown entity, strange technology, self-preservation Organizational expectations: overexpectations
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Process Factors Top management support User involvement
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Organizational Factors Adequate resources Relationship with the IS department Organizational politics
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Values and Ethics Goals of the project Implementation process: Consider an example to achieve a sales goal through violation of an antitrust law. Possible impact on other systems
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External Environment Legal issues: The French government requires that all Web sites based in France be in French. Social issues Economic issues Political issues
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Implementation Strategies Divide the project into manageable pieces –Prototypes – Evolutionary approach Keep the solution simple –Be simple –Hide complexity –Avoid change Get user participation
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System Integration Integration of computer-based systems means that the systems are merged into one facility rather than having separate hardware, software, and communications for each independent system.
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AI Attached to DSS Database intelligent component Intelligent agent for model management Improving the user interface Consultant to DSS builders Consultant to users
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AI Contributions to DBMS Helps on data warehouse Helps on access to large databases Symbolic representation of data
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AI Contributions to Model Management Systems Helps in selecting models Provides judgmental elements to models Improves sensitivity analysis Generates alternative solutions Provides heuristics Speeds up trial-and-error simulation
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AI Contributions to Interface Provides explanations Provides terms familiar to user Acts as a tutor
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Examples ES rules on investment can be analyzed by a DSS via a simulation. ES identification of a problem can be referred to a DSS for a solution. A DSS decision on acquisition can be directed to an ES for qualitative evaluation. A DSS that schedules employees can direct its output to an ES.
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Technical Issues of Integration Technical feasibility Connectivity Architecture Data structure
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