AI & Machine Learning Certification Training

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AI and Machine Learning Online Training

IconITInc is one of the best training institute in leading IT online training. We provide the best AI and Machine Learning Online Training with our highly professional real-time trainers. Running AI and Machine Learning results in dramatically improved performance, simplified administration and streamlined IT landscape resulting in lowering total cost of ownership. IconITInc also does corporate training and help them to train their employees.

Section 1: Overview of Artificial Intelligence

  • Introduction to Artificial Intelligence

Artificial Intelligence is a branch of science which makes machines to solve the complex problems in a human way. This chapter contains a history of artificial intelligence, detailed explanation of Artificial intelligence with a definition and meaning. It also explains why artificial intelligence is important in today’s world, what is involved in artificial intelligence and the academic disciplines which are related to artificial intelligence.

  • Intelligent Agents

This section will help you to learn what is intelligent agents, agents, and environment, a concept of rationality, types of agents – Generic agent, Autonomous agent, Reflex agent, Goal-Based Agent, Utility-based agent. The basis of classification of the agents is also explained in detail. The types of environment are also explained with examples.

Section 2: Representation and Search: State Space Search

  • Information on State Space Search

This chapter gives a brief introduction to State Space Search in artificial intelligence, its representation, components of search systems and the areas where state space search is used.

  • Graph theory on state space search

Under this chapter, you will learn what is a graph theory and how it may be used to model problem solving as a search through a graph of problem states. The And/or graph is explained with its uses. The components of the graph theory are also given a brief introduction.

  • Problem-Solving through state space search

The topics included in this section includes General Problem, Variants, types of problem-solving approach is explained with examples.

  • DFS algorithm

Depth First Search searches deeper into the problem space. This section also includes the advantages, disadvantages, and algorithm of depth-first search.

  • DFS with iterative deepening (DFID)

This is a combination of breadth-first search and depth-first search. In this section, you will learn what is an iterative deepening search, its properties, and algorithm along with examples.

  • Backtracking algorithm

Backtracking is an implementation of Artificial Intelligence. This section explains what is backtracking, description of the method when backtracking can be used and for what applications backtracking algorithm can be used. It is explained with a few examples and graphs.

Section 3: Representation and Search: Heuristic Search

  • Heuristic search overview

Heuristic search is a search technique that employs a rule of thumb for its moves. It plays a major role in search strategies. In this chapter, the general meaning and the technical meaning of Heuristic search is explained. It contains more information about the Heuristic search along with the function of the nodes and the goals. The section also contains the following topics which are its type of techniques

  • Pure Heuristic Search
  • A* Algorithm
  • Iterative- Deepening A*
  • Depth First Branch and Bound
  • Heuristic Path Algorithm
  • Recursive Best-First Search
  • Simple hill climbing

This chapter explains the Simple Hill Climbing technique in Heuristic search, function optimization of hill climbing, problems with simple hill climbing and its example.

  • The best first search algorithm

This algorithm combines the advantages of breadth-first and depth-first searches. This algorithm finds the most promising path. It is explained with examples.

  • Admissibility heuristic

This algorithm is used to estimate the cost to reach the goal state. In this chapter, you will learn what is admissibility heuristic, its formulation, construction and examples of admissible heuristic using a puzzle problem.

  • Min-Max algorithm

This algorithm is used in two-player games such as Chess and others. This section involves a brief introduction to search trees, introduction to the algorithm, explanation of the two players MIN and MAX, optimization, speeding the algorithm, adding alpha beta cut-offs and an example using a game is given for your easy understanding.

  • Alpha-beta pruning

Alpha-beta pruning is a method to reduce the number of nodes in the minimax algorithm in its search tree. This chapter explains the Alpha value of the node, a Beta value of the node, improvements over the minimax algorithm, its Pseudo code and a detailed game example.

Section 4: Machine Learning

  • Machine learning overview

Machine learning is applied statistics or mathematics. It is a subfield of computer science. This chapter gives a brief introduction about the Machine learning, history of machine learning, types of problems and tasks in machine learning and its algorithms.

  • Perceptron learning and Neural networks

In machine learning, a perceptron is an algorithm. This chapter starts with an explanation of what a learning rule is and how to develop the perceptron learning rule. The advantages and disadvantages of the perceptron rule are discussed. The model of perceptron learning is explained using the theory and examples.

The types of neural networks – single layer perceptron network and multilayer neuron network is explained in detail. The perceptron network architecture is explained with few pictures

The steps for constructing learning rules are also given in this chapter.

The linear separable problem is included in this section with examples.

The backpropagation algorithm and learning rule in multilayer perceptron are discussed here. It also explains how to calculate the backpropagation algorithm in a step by step procedure.

  • Updation of weight

The weight matrix of the perception, learning of processing elements with related to weight is included in this chapter.

  • Clustering algorithms

Clustering methods are organized by modeling approaches like centroid-based and hierarchical. It describes the class of problem and the class of methods. This chapter includes the details of the clustering algorithm and its popular algorithms k-Means, k-Medians, Expectation Maximisation and hierarchical clustering with few examples.

Section 5: Logic and Reasoning

  • Logic reasoning overview

Logic is the study of what follows from what. This section explains the facts about logic in artificial intelligence, why it is useful, the arguments and its logical meanings are explained in detail. Proof theory is used to check the validity of the arguments.

In propositional logic, lexicon and grammar are the syntaxes used and it is explained in detail under this topic along with the symbols used. The theorems, semantics, models, and arguments are also mentioned in this chapter.

  • First Order Predicate calculus (FOPC)

FOPC includes a wide range of entities. The predicate calculus includes variables and constants. The formula for FOPC is defined and each of its symbols is explained in detail with examples.

  • Modus ponens and Modus tollens

Modus Ponens and Modus tollens are forms of valid inferences. Modus Ponens involves two premises – conditional statement and the affirmation of the antecedent of the conditional statement. Both the terms are explained with examples.

  • Unification and deduction process

The unification algorithm, its expressions, and transactions are given in this chapter

  • Resolution refutation

Resolution rules, its meaning, propositional resolution example, a power of false and other examples are given in brief in this section.

  • Skolemization

This chapter explains what is Skolemization, how it works, uses of Skolemization and Skolem theories in detail.

Section 6: Rule-Based Programming

  • Production system

This section contains what is the production system, components of an AI production system, four classes of a production system, advantages and disadvantages of a production system. It also contains the following topics

  • Rules and commands of the production system
  • Data-driven search
  • Goal driven search
  • It’s Differences
  • Examples
  • CLIPS installation and clips tutorial

The topics included in this section are listed below

  • What are CLIPS?
  • What are expert systems?
  • History of CLIPS
  • Facts and Rules
  • Components of CLIPS
  • Variables and Pattern matching
  • Defining classes and instances
  • Wildcard matching
  • Field constraints
  • Mathematical operators
  • Truth and control tutorial

Section 7: Decision Making

  • Intelligent agent

This section starts with a brief introduction to the intelligent agent. The different types of agents are covered in this topic as mentioned in the list below

  • Generic agent
  • Autonomous agent
  • Reflex agent
  • Goal-based agent
  • Utility-based agent

All these types of agents are explained by a pictorial representation and example.

  • Utility theory

This section covers the following topics

  • Utility functions
  • Maximize expected utility
  • The basis of utility theory
  • Six axioms of utility theory
  • Examples
  • Decision theory

This chapter gives a brief introduction to decision theory, its perspectives, and disciplines of decision science. The different decision theory is also explained in detail.

  • Decision network

Decision network is a graphical representation of a decision problem. It is discussed in this chapter in detail with examples.

  • Reinforcement learning

This includes a definition, why reinforcement learning, how does it work, what are the motivations, what technology is used, who uses it, where can the reinforcement learning be applied and the limitations of reinforcement learning.

  • Markov Decision Processes (MDP)

This section includes the objectives, functions, models, dynamic programming, linear programming, and examples.

  • Dynamic Decision Networks (DDN)

DDN is a feature based extension of MDP. This section explains its features, representations, components along with examples.

Section 8: Stochastic methods

  • Basics of set theory

Here you will learn the importance of set theory, what is a set, set notation, well-defined sets, number sets, set equality, a cardinality of a set, subsets and proper subsets and finally power sets. It also includes the basic concepts in set theory.

  • Probability distribution

The joint probability distribution is explained in this section with an example and pictorial representation.

  • A Bayesian rule for conditional probability

This section explains what is Bayes’ theorem and how to calculate conditional probability using Bayes’ theorem. This is explained with few illustrations of college life, medical diagnosis, and witness reliability.

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