Introduction to Machine Learning Training in Jersey City
 
                    Enroll in or hire us to teach our Introduction to Machine Learning class in Jersey City,  New Jersey by calling us @303.377.6176.  Like all HSG
                    classes, Introduction to Machine Learning may be offered either onsite or via instructor led virtual training.  Consider looking at our public training schedule to see if it
                    is scheduled:  Public Training Classes
                    
                
                        Provided there are enough attendees, Introduction to Machine Learning may be taught at one of our local training facilities.  
                    
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                	 We offer private customized training for groups of 3 or more attendees.
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| Course Description | ||
| Why write programs when the computer can instead learn them from data?
In this class you will learn how to make this happen, from the simplest
machine learning algorithms to quite sophisticated ones. 
                        Course Length: 3 Days Course Tuition: $2250 (US) | ||
| Prerequisites | |
| Experience in software development, project management, or business or systems analysis is desirable, but not mandatory. | |
| Course Outline | 
| 
	Introduction 
	What is Machine Learning 
	Why is Machine Learning important 
	Stages of gaining knowledge 
	Types of Machine Learning 
	Groupings and Classification 
	Challenges 
	Input to Output 
	Functional Learning 
	Parametric and Non-Parametric Functions 
	Bias and Variance 
	Bias-Variance Trade-Off 
	Overfitting and Underfitting 
	Linear Regression 
	Linear Fitting 
	Loss Function 
	Least Squares Fit 
	Polynomial and Quadratic Models 
	Regularization 
	Lasso and Ridge Regression 
	Cross-Validation 
	Logistic Regression 
	Log Odds 
	Standard Logistic Function 
	Training a Logistic Regression Model 
	Advantages and Disadvantages 
	Linear Disriminant Analysis 
	Purpose 
	Learning LDA Models 
	Mean and Variance 
	Making Predictions 
	Bayes Theorem 
	Extensions to LDA 
	Classification Models 
	Definition 
	Stages 
	Two Class and Multi-Class Tasks 
	Techniques 
	Example of a Decision Tree 
	Decision Tree Induction 
	Structure of a split 
	Measure of node impurity 
	Stopping criteria 
	Advantages and Disadvantages 
	Generalization 
	Classifier Performance 
	Occam's Razor 
	Addressing Overfitting 
	Pruning 
	Model Validation 
	Validation Strategies 
	Bayesian Classifiers - Naive Bayes 
	Bayesian Classification 
	Examples 
	Bayes classifiers 
	Naive Bayes classifier 
	Estimate from data 
	K-Nearest Neighbors 
	Introduction 
	Instance based classifiers 
	Rote Learning 
	Nearest Neighbor classifier 
	Definition of Nearest Neighbor 
	Distance metrics 
	Choosing the values of K 
	Scaling issues 
	Different names 
	Neural Networks 
	Historical Sketch 
	Applications 
	Biological replication 
	Artificial Neurons 
	Activation Functions 
	Learning Networks 
	Perceptrons 
	Perceptron structure 
	Decision boundary 
	Training process 
	Training rule 
	Squared error function 
	Gradient error function 
	Gradient descent 
	Equivalence of Perceptron and Linear Models 
	Structure of Multilayer Neural Network 
	Neural Network architectures 
	Roles of nodes 
	Algorithm for Learning Neural Network 
	Sigmoid Unit 
	Backpropagation 
	Backward Pass 
	Convergence of Backpropagation 
	Avoid Overfitting 
	Expressiveness of Multilayer Neural Networks 
	Support Vector Machines 
	Linearly Separated Classes 
	Computation of Optimal Hyperplane 
	Maximum Margin 
	Non-Linearity 
	Non-Linear Boundary 
	Transformations 
	Kernel Trick 
	Ensemble Methods 
	Classifiers 
	Building and Using a Committee Ensemble 
	Binomial Distribution 
	Why do Ensembles Work 
	Diversity 
	Accuracy and speed 
	Bootstrap Sampling 
	Bagging 
	Boosting 
	AdaBoost | 
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