Course Detail

Machine Learning

Machine Learning - Autodraft CAD Training Centre


Course Detail


Course Description

Machine Learning

Machine learning is the science of getting computers to act without being explicitly programmed. In the past decade, machine learning has given us self-driving cars, practical speech recognition, effective web search, and a vastly improved understanding of the human genome.

Syllabus

  • Understanding Machine Learning Models
  • Understand what is a Machine Learning Model
  • Various Machine Learning Models
  • Choosing the Right Model
  • Training and Evaluating the Model
  • Improving the Performance of the Model
  • More on Models
  • Understanding Predictive Model
  • Working with Linear Regression
  • Working with Polynomial Regression
  • Understanding Multi Level Models
  • Selecting the Right Model or Model Selection
  • Need for selecting the Right Model
  • Understanding Algorithm Boosting
  • Various Types of Algorithm Boosting
  • Understanding Adaptive Boosting
  • Understanding Machine Learning Algorithms
  • Understanding the Machine Learning Algorithms
  • Importance of Algorithms in Machine Learning
  • Exploring different types of Machine Learning Algorithms
  • Supervised Learning
  • Unsupervised Learning
  • Reinforcement Learning
  • Exploring Supervised Learning Algorithms
  • Understanding the Supervised Learning Algorithm
  • Understanding Classifications
  • Working with different types of Classifications
  • Learning and Implementing Classifications
  • Logistic Regression
  • Naïve Bayes Classifier
  • Nearest Neighbour
  • Support Vector Machines (SVM)
  • Decision Trees
  • Boosted Trees
  • Random Forest
  • Time Series Analysis (TSA)
  • Understanding Time Series Analysis
  • Advantages of using TSA
  • Understanding various components of TSA
  • AR and MA Models
  • Understanding Stationarity
  • Implementing Forecasting using TSA
  • Exploring Un-Supervised Learning Algorithms
  • Understanding Unsupervised Learning
  • Understanding Clustering and its uses
  • Exploring K-means
  • What is K-means Clustering
  • How K-means Clustering Algorithm Works
  • Implementing K-means Clustering
  • Exploring Hierarchical Clustering
  • Understanding Hierarchical Clustering
  • Implementing Hierarchical Clustering
  • Understanding Dimensionality Reduction
  • Importance of Dimensions
  • Purpose and advantages of Dimensionality Reduction
  • Understanding Principal Component Analysis (PCA)
  • Understanding Linear Discriminant Analysis (LDA)
  • Understanding Hypothesis Testing
  • What is Hypothesis Testing in Machine Learning
  • Advantages of using Hypothesis Testing
  • Basics of Hypothesis
  • Normalization
  • Standard Normalization
  • Parameters of Hypothesis Testing
  • Null Hypothesis
  • Alternative Hypothesis
  • The P-Value
  • Types of Tests
  • T Test
  • Z Test
  • ANOVA Test
  • Chi-Square Test
  • Overview Reinforcement Learning Algorithm
  • Understanding Reinforcement Learning Algorithm
  • Advantages of Reinforcement Learning Algorithm
  • Components of Reinforcement Learning Algorithm
  • Exploration Vs Exploitation tradeoff
  • Hands on Projects

Institute Overview

Madurai, Tamil Nadu, India

Autodraft CAD Training Centre in Madurai is one of the leading businesses in the AUTOCAD Training Institutes. Also known for Tally Training Institutes, AUTOCAD Training Institutes, Computer Software Training Institutes, CAD Training Institutes, Compu... Read More

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