Search Results (9)

Save

Please log in to save materials.

View
Selected filters:
  • Genetic Algorithms
Artificial Intelligence, Fall 2010
Conditions of Use:
Remix and Share
Rating

This course introduces students to the basic knowledge representation, problem solving, and ... More

This course introduces students to the basic knowledge representation, problem solving, and learning methods of artificial intelligence. Upon completion of 6.034, students should be able to develop intelligent systems by assembling solutions to concrete computational problems, understand the role of knowledge representation, problem solving, and learning in intelligent-system engineering, and appreciate the role of problem solving, vision, and language in understanding human intelligence from a computational perspective. Less

More
Subject:
Computer Science
Information Science
Material Type:
Assessments
Homework and Assignments
Readings
Syllabi
Provider:
M.I.T.
Provider Set:
MIT OpenCourseWare
Author:
Winston, Patrick Henry
Less
Courseware : Artificial  Intelligence
Rating

Artificial Intelligence : Course lectures, hours 42. There are 11 pdf files, ... More

Artificial Intelligence : Course lectures, hours 42. There are 11 pdf files, total 562 pages. Topics : Introduction to AI; Problem Solving - Search and Control Strategies; Knowledge Representation Issues - Predicate Logic, Rules; Reasoning System - Symbolic, Statistical; Game Playing; Learning; Expert System; Fundamentals of Neural Networks; Fundamentals of Genetic Algorithms; Natural Language Processing; Common Sense. Less

More
Subject:
Computer Science
Material Type:
Full Course
Lecture Notes
Provider:
Jaypee Institute of Engineering and Technology (JIET)
Provider Set:
Individual Authors
Author:
RC Chakraborty
Less
Courseware : Soft Computing
Rating

Soft Computing : Course lectures, hours 42. There are 9 pdf files, ... More

Soft Computing : Course lectures, hours 42. There are 9 pdf files, total 398 pages. Topics : Introduction to Soft Computing; Fundamentals of Neural Network; Back Propagation Network; Associative Memory; Adaptive Resonance Theory; Fuzzy Set Theory; Fuzzy Systems; Fundamentals of Genetic Algorithms; Hybrid Systems. Less

More
Subject:
Computer Science
Material Type:
Full Course
Lecture Notes
Provider:
Jaypee Institute of Engineering and Technology (JIET)
Provider Set:
Individual Authors
Author:
RC Chakraborty
Less
Medical Artificial Intelligence, Spring 2005
Conditions of Use:
Remix and Share
Rating

Introduces representations, techniques, and architectures used to build applied systems and to ... More

Introduces representations, techniques, and architectures used to build applied systems and to account for intelligence from a computational point of view. Applications of rule chaining, heuristic search, constraint propagation, constrained search, inheritance, and other problem-solving paradigms. Applications of identification trees, neural nets, genetic algorithms, and other learning paradigms. Speculations on the contributions of human vision and language systems to human intelligence. Less

More
Subject:
Health, Medicine and Nursing
Material Type:
Activities and Labs
Assessments
Full Course
Homework and Assignments
Lecture Notes
Syllabi
Provider:
M.I.T.
Provider Set:
MIT OpenCourseWare
Author:
Szolovits, Peter
Less
Multidisciplinary System Design Optimization, Spring 2010
Conditions of Use:
Remix and Share
Rating

There is need for a rigorous, quantitative multidisciplinary design methodology that works ... More

There is need for a rigorous, quantitative multidisciplinary design methodology that works with the non-quantitative and creative side of the design process in engineering systems. The goal of multidisciplinary systems design optimization is to create advanced and complex engineering systems that must be competitive not only in terms of performance, but also in terms of life-cycle value. The objective of the course is to present tools and methodologies for performing system optimization in a multidisciplinary design context. Focus will be equally strong on all three aspects of the problem: (i) the multidisciplinary character of engineering systems, (ii) design of these complex systems, and (iii) tools for optimization. Less

More
Subject:
Material Type:
Activities and Labs
Homework and Assignments
Lecture Notes
Readings
Syllabi
Provider:
M.I.T.
Provider Set:
MIT OpenCourseWare
Author:
de Weck, Olivier
Willcox, Karen
Less
Neural Coding and Perception of Sound, Spring 2005
Conditions of Use:
Remix and Share
Rating

Neural structures and mechanisms mediating the detection, localization, and recognition of sounds. ... More

Neural structures and mechanisms mediating the detection, localization, and recognition of sounds. Discussion of how acoustic signals are coded by auditory neurons, the impact of these codes on behavorial performance, and the circuitry and cellular mechanisms underlying signal transformations. Topics include temporal coding, neural maps and feature detectors, learning and plasticity, and feedback control. General principles are conveyed by theme discussions of auditory masking, sound localization, musical pitch, speech coding, and cochlear implants, and auditory scene analysis. Less

More
Subject:
Psychology
Material Type:
Activities and Labs
Full Course
Homework and Assignments
Lecture Notes
Syllabi
Provider:
M.I.T.
Provider Set:
MIT OpenCourseWare
Author:
Delgutte, Bertrand
Less
Non-Standard Computing
Conditions of Use:
Read the Fine Print
Rating

Inspired by reality-based computing from the natural world, this course covers several ... More

Inspired by reality-based computing from the natural world, this course covers several unconventional computational methods and theories, such as quantum computation, DNA and molecular computation, genetic algorithms, self-organizing networks, and cellular automata. Note: for this course, it will be quite helpful to have a working knowledge of cellular biology (available from the Saylor FoundationĺÎĺ_ĺĚĺ_s BIO301). Upon successful completion of this course, the student will be able to: describe abstracted finite-memory program, a finite state automaton, and regular language; list and explain the characteristics of universal Turing transducers; describe the computational idea behind the DNA-based computer; explain the differences between bio-electronic, biochemical, and biomechanical computers; describe the functional principles of genetic algorithms and list their limitations; define the cellular automaton and the cellular neural network, and show examples of how they compute; describe how logic gates may be constructed for quantum bits; describe a simple model for a quantum computer based on a classical computer; describe an algorithm which makes use of quantum parallelism. This free course may be completed online at any time. (Computer Science 411) Less

More
Subject:
Computer Science
Material Type:
Assessments
Full Course
Readings
Syllabi
Textbooks
Video Lectures
Provider:
The Saylor Foundation
Provider Set:
Saylor Foundation
Less
Pattern Recognition and Analysis, Fall 2006
Conditions of Use:
Remix and Share
Rating

Fundamentals of characterizing and recognizing patterns and features of interest in numerical ... More

Fundamentals of characterizing and recognizing patterns and features of interest in numerical data. Basic tools and theory for signal understanding problems with applications to user modeling, affect recognition, speech recognition and understanding, computer vision, physiological analysis, and more. Decision theory, statistical classification, maximum likelihood and Bayesian estimation, non-parametric methods, unsupervised learning and clustering. Additional topics on machine and human learning from active research. Less

More
Subject:
Statistics and Probability
Material Type:
Activities and Labs
Full Course
Homework and Assignments
Syllabi
Provider:
M.I.T.
Provider Set:
MIT OpenCourseWare
Author:
Picard, Rosalind
Less
Space System Architecture and Design, Fall 2004
Conditions of Use:
Remix and Share
Rating

Space System Architecture and Design incorporates lectures, readings and discussion on topics ... More

Space System Architecture and Design incorporates lectures, readings and discussion on topics in the architecting of space systems. The class reviews existing space system architectures and the classical methods of designing them. Sessions focus on multi-attribute utility theory as a new design paradigm for space systems, when combined with integrated concurrent engineering and efficient searches of large architectural tradspaces. Designing for flexibility and uncertainty is considered, as are policy and product development issues. Less

More
Subject:
Architecture and Design
Material Type:
Full Course
Homework and Assignments
Lecture Notes
Syllabi
Provider:
M.I.T.
Provider Set:
MIT OpenCourseWare
Author:
Hastings, Daniel
Less
2002 gnirpS ,ngiseD gnireenignE liviC ot noitcudortnI
Rating

.)310.1( tcejbus ngised enotspac eht dna )150.1 ,140.1 ,130.1( stcejbus ngised aera ... More

.)310.1( tcejbus ngised enotspac eht dna )150.1 ,140.1 ,130.1( stcejbus ngised aera ytlaiceps tneuqesbus eht ni desu si hcihw decudortni si esac ngised egral A .naps efil detcepxe dna ,srotcaf laicos dna cimonoce ,tnemnorivne larutan ,tnemnorivne tliub gnitsixe eht fo noitaredisnoc sa llew sa sehcaorppa lacinhcet snrecnoc ylticilpxe ngised tcejorP .)sdaor dna segdirb ,sgnidliub ,.g.e( seitilicaf tliub no sisahpme na htiw ,sesac ngised lareves sedulcnI .gnireenigne livic ni secitcarp dna seussi ngised sa llew sa ,gnivlos-melborp evitaerc dna ngised gnireenigne fo seuqinhcet dna ,sloot ,yroeht eht ot stneduts secudortnI Less

More
Less