riversongs Posted January 3, 2024 Report Share Posted January 3, 2024 Free Download Foundation Of Artificial Neural NetworksPublished 1/2024MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHzLanguage: English | Size: 3.33 GB | Duration: 2h 31mBasics of ANN, McCulloch Pitts Model, Perceptron, BackPropagation Model, Associative Network and Unsupervised modelWhat you'll learnUnderstand the fundamentals of Artificial Neural NetworksLearn the various topologies and learning algorithms of ANNUnderstand supervised learning network paradigmsUnderstand unsupervised learning network paradigmsAble to understand and solve problem for each neural network modelRequirementsNo Pre-Requisite for this course. Students can listen to the lectures of the course Artificial Neural Network from baseDescriptionThis course serves as an insightful exploration into the Basics of Artificial Neural Networks (ANN) and key models that have played pivotal roles in shaping the field of neural network research and applications. Covering foundational concepts from the McCulloch Pitts Model to advanced algorithms like Backpropagation, Associative Networks, and Unsupervised Models, participants will gain a comprehensive understanding of the principles driving modern artificial intelligence.Introduction to Artificial Neural Networks (ANN):Overview of Biological Neural Networks and inspiration behind developing Artificial Neural NetworksMcCulloch Pitts Model:In-depth examination of the McCulloch Pitts Model as a pioneering concept in neural network architecture. Understanding the basic principles that laid the groundwork for subsequent developments.Perceptron:Exploration of the Perceptron model as a fundamental building block of neural networks.Insight into how Perceptrons process information and make binary decisions.BackPropagation Model:Detailed study of the Backpropagation algorithm as a crucial element in training neural networks.Analysis of error backpropagation and its role in optimizing the performance of neural networks.Associative Network:Introduction to Associative Networks and the significance of connections between elements.Application of associative memory for pattern recognition and retrieval.Unsupervised Models:Comprehensive coverage of Unsupervised Learning in neural networks.Exploration of self-organizing maps, clustering, and other unsupervised techniques.This course is tailored for aspiring data scientists, machine learning enthusiasts, and professionals seeking to enhance their understanding of neural networks. Additionally, students and researchers interested in staying abreast of the latest developments in artificial intelligence will find this course invaluable. Embark on this educational journey to acquire a solid foundation in neural networks and gain the knowledge and skills necessary to navigate the dynamic landscape of artificial intelligence.OverviewSection 1: Biological and Artificial NeuronLecture 1 Introduction to the courseLecture 2 Introduction to ANNLecture 3 Characteristic of BrainLecture 4 Activation Functions, and ThresholdSection 2: McCulloch Pitts Neural ModelLecture 5 McCulloch Pitts - IntroductionLecture 6 McCulloch Pitts - Example 1Lecture 7 McCulloch Pitts - Example 2Section 3: Backpropagation networkLecture 8 BackPropagation Network IntroductionLecture 9 BackPropagation Network WorkingLecture 10 BackPropagation Network Activation Function and WorkingLecture 11 BackPropagation Network ExampleSection 4: Associative NetworkLecture 12 Auto Associative NetworkLecture 13 Hetero Associative NetworkSection 5: Unsupervised LearningLecture 14 Self Organizing MapComputer science students,Beginners who want to learn Machine Learning,Students interested in understanding the basic working of Artificial Neural Network ModelsHomepagehttps://www.udemy.com/course/foundation-of-artificial-neural-networks/Download ( Rapidgator )https://rg.to/file/378cfa4cccad5d20ae76de0f0306a59a/tvqhx.Foundation.Of.Artificial.Neural.Networks.part1.rar.htmlhttps://rg.to/file/c8e0c93ec184bc4b9942d312922dcab7/tvqhx.Foundation.Of.Artificial.Neural.Networks.part2.rar.htmlhttps://rg.to/file/522b173381cb5c023c167946801065c5/tvqhx.Foundation.Of.Artificial.Neural.Networks.part3.rar.htmlhttps://rg.to/file/2d02b4c836a3532db073e7ac4a84c5de/tvqhx.Foundation.Of.Artificial.Neural.Networks.part4.rar.htmlUploadgighttps://uploadgig.com/file/download/3875E9Da5d68E9fc/tvqhx.Foundation.Of.Artificial.Neural.Networks.part1.rarhttps://uploadgig.com/file/download/dcd1d271A755189b/tvqhx.Foundation.Of.Artificial.Neural.Networks.part2.rarhttps://uploadgig.com/file/download/c87037B17180a1f9/tvqhx.Foundation.Of.Artificial.Neural.Networks.part3.rarhttps://uploadgig.com/file/download/bC2abaa85c43541E/tvqhx.Foundation.Of.Artificial.Neural.Networks.part4.rarDownload ( NitroFlare )https://nitroflare.com/view/150E2B5CA404C6D/tvqhx.Foundation.Of.Artificial.Neural.Networks.part1.rarhttps://nitroflare.com/view/4C507479A6A2C35/tvqhx.Foundation.Of.Artificial.Neural.Networks.part2.rarhttps://nitroflare.com/view/DE8D8978B978CDB/tvqhx.Foundation.Of.Artificial.Neural.Networks.part3.rarhttps://nitroflare.com/view/81E6CFBA7FAD8DF/tvqhx.Foundation.Of.Artificial.Neural.Networks.part4.rarFikperhttps://fikper.com/hOQ9N12XYl/tvqhx.Foundation.Of.Artificial.Neural.Networks.part1.rar.htmlhttps://fikper.com/D0ZnMY3bh9/tvqhx.Foundation.Of.Artificial.Neural.Networks.part2.rar.htmlhttps://fikper.com/9SyPmlRiIr/tvqhx.Foundation.Of.Artificial.Neural.Networks.part3.rar.htmlhttps://fikper.com/Dry7y6JXnZ/tvqhx.Foundation.Of.Artificial.Neural.Networks.part4.rar.htmlNo Password - Links are Interchangeable Link to comment Share on other sites More sharing options...
Recommended Posts
Please sign in to comment
You will be able to leave a comment after signing in
Sign In Now