Updating search results...

Search Resources

6 Results

View
Selected filters:
  • neural-nets
Artificial Intelligence
Conditional Remix & Share Permitted
CC BY-NC-SA
Rating
0.0 stars

This course introduces representations, techniques, and architectures used to build applied systems and to account for intelligence from a computational point of view. This course also explores applications of rule chaining, heuristic search, logic, constraint propagation, constrained search, and other problem-solving paradigms. In addition, it covers applications of decision trees, neural nets, SVMs and other learning paradigms.

Subject:
Applied Science
Computer Science
Engineering
Material Type:
Full Course
Provider Set:
MIT OpenCourseWare
Author:
Kaelbling, Leslie
Lozano-Pérez, Tomás
Date Added:
02/01/2005
Big Data Analytics: IOT BASED RECOMMENDATION SYSTEM FOR TOURISM
Unrestricted Use
CC BY
Rating
0.0 stars

The IOT services are for customer convenience, control in online booking IOT services such as radio station, smart coffee makers, dim lights and energy programmed lights. Our System will able to recommend the valid customer opinion by analyzing UAE, UK and Oman hotel aspects like services, value, cleanliness and location from customers’ reviews. it include the Big Analytics, Hadoop, HDFS, Sentiment Analytics, Emotion Analytics, ANOVA in Map-Reduce.

Subject:
Computer Science
Material Type:
Module
Author:
Sharjeel Imtiaz
Date Added:
04/11/2019
Big Data Analytics: IOT Recomendation system for Tourism
Conditional Remix & Share Permitted
CC BY-NC-SA
Rating
0.0 stars

This project will recommend a big data analytics tool for the customers, ministry and hotels in Oman to adapt new hotel services after considering together hotel services with customer opinions. The IOT services are for customer convenience, control in online booking IOT services such as radio station, smart coffee makers, dim lights and energy programmed lights.The big data analytics will analyze the hotel information , rating and reviews of UK , Dubai to recomend aspect like services especially IOT services. The coverage of Analysis in R: Big data Analytics with Hadoop/HDFS Sentiment AnalysisEmotion Analysis Machine Learning K-mean , Regression and Neural NetworkAnova version to analyze Big data of 90k reviews 

Subject:
Information Science
Material Type:
Module
Author:
sharjeel imtiaz
Date Added:
04/11/2019
Identification, Estimation, and Learning
Conditional Remix & Share Permitted
CC BY-NC-SA
Rating
0.0 stars

This course provides a broad theoretical basis for system identification, estimation, and learning. Students will study least squares estimation and its convergence properties, Kalman filters, noise dynamics and system representation, function approximation theory, neural nets, radial basis functions, wavelets, Volterra expansions, informative data sets, persistent excitation, asymptotic variance, central limit theorems, model structure selection, system order estimate, maximum likelihood, unbiased estimates, Cramer-Rao lower bound, Kullback-Leibler information distance, Akaike’s information criterion, experiment design, and model validation.

Subject:
Applied Science
Career and Technical Education
Computer Science
Electronic Technology
Engineering
Material Type:
Full Course
Provider Set:
MIT OpenCourseWare
Author:
Asada, Harry
Date Added:
02/01/2006
Matrix Methods in Data Analysis, Signal Processing, and Machine Learning
Conditional Remix & Share Permitted
CC BY-NC-SA
Rating
0.0 stars

Linear algebra concepts are key for understanding and creating machine learning algorithms, especially as applied to deep learning and neural networks. This course reviews linear algebra with applications to probability and statistics and optimization–and above all a full explanation of deep learning.

Subject:
Applied Science
Career and Technical Education
Electronic Technology
Engineering
Mathematics
Material Type:
Full Course
Provider Set:
MIT OpenCourseWare
Author:
Strang, Gilbert
Date Added:
02/01/2018
Medical Artificial Intelligence
Conditional Remix & Share Permitted
CC BY-NC-SA
Rating
0.0 stars

This course provides an intensive introduction to artificial intelligence and its applications to problems of medical diagnosis, therapy selection, and monitoring and learning from databases. It meets with lectures and recitations of 6.034 Artificial Intelligence, whose material is supplemented by additional medical-specific readings in a weekly discussion session. Students are responsible for completing all homework assignments in 6.034 and for additional problems and/or papers.

Subject:
Applied Science
Biology
Computer Science
Engineering
Life Science
Material Type:
Full Course
Provider Set:
MIT OpenCourseWare
Author:
Ohno-Machado, Lucila
Szolovits, Peter
Date Added:
02/01/2005