UNIVERSIDAD NACIONAL MAYOR DE SAN MARCOS (University of Peru, dean of America)
FACULTY OF ENGINEERING AND COMPUTER SYSTEMSAcademic School of Systems Engineering ProfessionalSILLABLE
1. GENERAL SPECIFICATION
Course Name: ARTIFICIAL INTELLIGENCE
Course Code: 207008
Course Length: 17 weeks
Method of Dictation: Technical - experimental
Weekly hours: Theory: 3 hours - Lab: 2 hours
Nature: Vocational
Number of credits: Four (04)
Prerequisites: 205007 - Operations Research I
Semester: 2011 - II
Coordinator: Vera Virginia Pomalaza
Teacher: Ana Maria Huayna, Hugo Vega, Rolando Maguiña
2. SOMMELIER
Artificial Intelligence, concepts, paradigms and applications in industry and services. Knowledge representation. Representation of AI problems as search in state space. Blind search methods and informed. Intelligent man-machine games. Expert systems, architecture, taxonomy and applications. Inference Engine. Engineering knowledge, concepts, evolution, CommonKADS Methodology. Quality and Validation of Expert Systems, Introduction to Machine Learning (Machine Learning) and heuristics.
3. GENERAL PURPOSE
Students will gain knowledge in the area of Artificial Intelligence in general and develop basic aspects of game development, intelligent and expert systems, and its application in intelligent problem solving in the areas of industry and services.
4. SPECIFIC OBJECTIVES
Upon completion, students will be able to:4.1. Understand that is Artificial Intelligence and complexity of their problems.
4.2. Represent and solve problems of human game - machine through a technical search state space.
4.3. Know the different search strategies blind and informed.
4.4. Design and develop intelligent software games man-machine interaction and artificial intelligence techniques used.
4.5. Understand what are expert systems and know when to use them.
4.6. Knowing which is the Knowledge Engineering and a method for developing knowledge-based systems
4.7. To assess the quality of the solution of expert systems.
4.8. Design and develop various systems based expert inference engine (method chaining), considering the quality criteria.
4.9. Understand the concepts of machine learning and heuristics, its importance and its applications in industry and services5. ANALYTICAL CONTENTS OF WEEKS
Semana | Temas | Trabajos |
Clasificación de problemas algorítmicos
| ||
Fundamentos de la Inteligencia Artificial
| ||
Métodos de Busqueda en un espacio de estados
| ||
Métodos de búsqueda a ciegas
| ||
Métodos de búsqueda informados
| ||
Métodos de búsqueda para juegos hombre-máquina
| ||
Fundamentos de sistemas expertos
| ||
| Semana de Parciales | ||
Presentacion de trabajos computacionales
| ||
Ingenieria de conocimiento
| ||
Adquisicion de conocimiento
| ||
Sistemas expertos Basados en Redes Neuronales
| ||
Calidad y Validación de Sistemas Expertos
| ||
Introducción a los Sistemas Inteligentes
| ||