Tutorials :

Foundations of AI – From Problem–Solving to Machine Learning

      Author: Baturi   |   24 August 2023   |   comments: 0

Foundations of AI – From Problem–Solving to Machine Learning
Free Download Foundations of AI – From Problem–Solving to Machine Learning
Published 8/2023
Created by Dr.Deeba K
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 44 Lectures ( 8h 15m ) | Size: 3 GB


The course bridges problem-solving, search algorithms, and knowledge representation, paving the way for Machine Learning
What you'll learn
Provide an understanding of the basic techniques for building intelligent computer systems
Understand the search technique procedures applied to real world problems
Understand the types of logic and knowledge representation schemes
Understanding of how AI is applied to problems
Requirements
No prerequisites are there for this course. Students can listen to the lectures of the course Artificial Intelligence from base
Description
Artificial Intelligence (AI) has emerged as one of the most life changing technologies of our time, revolutionizing industries and reshaping the way we live and work. Rooted in the concept of developing machines with the ability to mimic human intelligence, AI has unlocked tremendous potential across various sectors, from healthcare and finance to transportation and entertainment.This course provides a comprehensive introduction to the field of Artificial Intelligence (AI) by covering fundamental problem-solving strategies, agent-based analysis, constraint satisfaction problems, search algorithms, and knowledge representation.Basic Problem Solving Strategies: The course starts by introducing students to various problem-solving approaches commonly used in AI. These strategies include techniques like divide and conquer, greedy algorithms, dynamic programming, and backtracking. To help students grasp these concepts, toy problems (simple, illustrative examples) are used as initial learning tools.Agent-Based Analysis: In AI, an agent is an entity that perceives its environment and takes actions to achieve certain goals. The course delves into the concept of agents and their characteristics, such as rationality and autonomy. Students learn how agents can interact with the environment and adapt their behaviour based on feedback and observations.Constraint Satisfaction Problems: Constraint satisfaction problems (CSPs) are a class of problems where the goal is to find a solution that satisfies a set of constraints. The course explores how to model real-world problems as CSPs and how to use various algorithms, like backtracking and constraint propagation, to efficiently find solutions.Search Space and Searching Algorithms: One of the fundamental aspects of AI is searching through a vast space of possible solutions to find the best one. The course explains the concept of a search space, which represents all possible states of a problem and how to traverse it systematically. Students learn about uninformed search algorithms like breadth-first search and depth-first search, as well as informed search algorithms like A* search and heuristic-based techniques.Knowledge Representation: Representing knowledge is crucial for AI systems to reason and make decisions. The course delves into two main types of knowledge representation: propositional logic and predicate logic.Propositional Logic: This part of the course teaches students how to represent knowledge using propositions, which are simple statements that can be either true or false. They learn about logical connectives (AND, OR, NOT, etc.) and how to build complex expressions to represent relationships and rules.Predicate Logic: Predicate logic extends propositional logic by introducing variables and quantifiers. Students learn how to express relationships and properties involving multiple entities and make use of quantifiers like "for all" and "there exists" to reason about sets of objects.Inference and Reasoning: Once knowledge is represented, students are introduced to the process of inference, which involves deriving new information from existing knowledge using logical rules and deduction techniques. They learn how to apply inference mechanisms to reach conclusions based on the given knowledge base.Overall, this course provides a solid foundation in problem-solving, search algorithms, and knowledge representation essential for understanding various AI techniques and applications. By the end of the course, students should be able to apply these concepts to model and solve real-world problems using AI techniques.
Who this course is for
Computer science students
Students preparing for Gate exams
Anyone planing for Government Exams in Computer Science base
Students interested in understanding the basic working of Artificial Intelligence
Anyone willing to learn the working of Artificial Intelligence
Homepage
https://www.udemy.com/course/foundations-of-ai-from-problem-solving-to-machine-learning/










Rapidgator
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part3.rar.html
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part1.rar.html
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part4.rar.html
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part2.rar.html
Uploadgig
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part4.rar
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part2.rar
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part1.rar
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part3.rar
NitroFlare
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part2.rar
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part3.rar
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part4.rar
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part1.rar
Fikper
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part2.rar.html
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part1.rar.html
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part4.rar.html
lrvvz.Foundations.of.AI.From.ProblemSolving.to.Machine.Learning.part3.rar.html

Foundations of AI – From Problem–Solving to Machine Learning Torrent Download , Foundations of AI – From Problem–Solving to Machine Learning Watch Free Online , Foundations of AI – From Problem–Solving to Machine Learning Download Online
Foundations of AI – From Problem–Solving to Machine Learning Fast Download
Foundations of AI – From Problem–Solving to Machine Learning Full Download

free Foundations of AI – From Problem–Solving to Machine Learning, Downloads Foundations of AI – From Problem–Solving to Machine Learning, Rapidgator Foundations of AI – From Problem–Solving to Machine Learning, Nitroflare Foundations of AI – From Problem–Solving to Machine Learning, Mediafire Foundations of AI – From Problem–Solving to Machine Learning, Uploadgig Foundations of AI – From Problem–Solving to Machine Learning, Mega Foundations of AI – From Problem–Solving to Machine Learning, Torrent Download Foundations of AI – From Problem–Solving to Machine Learning, HitFile Foundations of AI – From Problem–Solving to Machine Learning , GoogleDrive Foundations of AI – From Problem–Solving to Machine Learning,  Please feel free to post your Foundations of AI – From Problem–Solving to Machine Learning Download, Tutorials, Ebook, Audio Books, Magazines, Software, Mp3, Free WSO Download , Free Courses Graphics , video, subtitle, sample, torrent, NFO, Crack, Patch,Rapidgator, mediafire,Mega, Serial, keygen, Watch online, requirements or whatever-related comments here.





DISCLAIMER
None of the files shown here are hosted or transmitted by this server. The links are provided solely by this site's users. The administrator of our site cannot be held responsible for what its users post, or any other actions of its users. You may not use this site to distribute or download any material when you do not have the legal rights to do so. It is your own responsibility to adhere to these terms.

Copyright © 2018 - 2023 Dl4All. All rights reserved.