filmov
tv
Machine Intelligence - Lecture 9 (Cluster Validity, Probability, Fuzzy Sets, FCM)
Показать описание
SYDE 522 – Machine Intelligence (Winter 2019, University of Waterloo)
Target Audience: Senior Undergraduate Engineering Students
Course Outline - The objective of this course is to introduce the students to the main concepts of machine intelligence as parts of a broader framework of “artificial intelligence”. An overview of different learning, inference and optimization schemes will be provided, including Principal Component Analysis, Support Vector Machines, Self-Organizing Maps, Decision Trees, Backpropagation Networks, Autoencoders, Convolutional Networks, Fuzzy Inferencing, Bayesian Inferencing, Evolutionary algorithms, and Ant Colonies.
Lecture 9 - (Cluster Validity, Probability, Fuzzy Sets, FCM)
Target Audience: Senior Undergraduate Engineering Students
Course Outline - The objective of this course is to introduce the students to the main concepts of machine intelligence as parts of a broader framework of “artificial intelligence”. An overview of different learning, inference and optimization schemes will be provided, including Principal Component Analysis, Support Vector Machines, Self-Organizing Maps, Decision Trees, Backpropagation Networks, Autoencoders, Convolutional Networks, Fuzzy Inferencing, Bayesian Inferencing, Evolutionary algorithms, and Ant Colonies.
Lecture 9 - (Cluster Validity, Probability, Fuzzy Sets, FCM)
Machine Intelligence - Lecture 9 (Cluster Validity, Probability, Fuzzy Sets, FCM)
ARTIFICIAL INTELLIGENCE LECTURE 9
Lecture 9/9/16: Introduction to CNNs
Machine Intelligence - Lecture 10 (Regression, Neurons, Perceptron, Learning)
Lecture 9/23/24: Synthetic Signature Generation
Ethics of Artificial Intelligence - Part 1 :: Machine Intelligence Course, Lecture 23
Machine Intelligence - Lecture 18 (Evolutionary Algorithms)
Machine Intelligence - Lecture 17 (Fuzzy Logic, Fuzzy Inference)
PIM Course: Lecture 2: How to Evaluate Data Movement Bottlenecks (Fall 2024)
Machine Intelligence - Lecture 13 (Convolutional Neural Networks, CNNs)
Lecture 9 | CNN Architectures
MIT: Machine Learning 6.036, Lecture 9: State machines and Markov decision processes (Fall 2020)
Machine Intelligence - Lecture 11 (Backpropagation, Topology, Overfitting, Autoencoders)
EfficientML.ai Lecture 9 - Knowledge Distillation (MIT 6.5940, Fall 2024)
Lecture 9: Artificial Neural Networks and Deep Learning – Machine Learning for Engineers
Lecture 9: Machine Translation and Advanced Recurrent LSTMs and GRUs
Machine Translation - Lecture 9: Computation Graphs
Machine Intelligence - Lecture 19 (Opposition-Based Learning, GAs, DE)
Mathematics for Machine Learning - Lecture 9: Reinforcement Learning: Q-learning
EfficientML.ai Lecture 9 - Knowledge Distillation (MIT 6.5940, Fall 2024, Zoom recording)
Lecture 9: Security and Cryptography (2020)
IIT Bombay Lecture Hall | IIT Bombay Motivation | #shorts #ytshorts #iit
Lecture 9 | AI Free Basic Course
Machine Learning | What Is Machine Learning? | Introduction To Machine Learning | 2024 | Simplilearn
Комментарии