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Machine Learning Course in Mumbai and Thane

"NetTech India is best institute to learn Machine Learning course in Thane and Mumbai. Our course is designed for everyone who want to learn Machine Learning. NetTech India provides<br>special offers in fees for Machine Learning course. NetTech India have separate HR team professionals who will take care of all students interview needs. For more information please visit to our website NetTech India.com or call us on 9870803004/5."<br>

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Machine Learning Course in Mumbai and Thane

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  1. MACHINE LEARNING Section 1 : Introduction to Machine Learning Introduction to Machine Learning Types of Machine learning Data understanding : real life example Why Machine learning is future Which skills are required for Machine learning Discussion on different packages used for ML Related concepts: Splitting the dataset into train set and test set Practical knowledge of the algorithm on Python and R Section 2: Data prepressing & Regression Techniques Linear Regression Technique Dataset with problem description Non- Linear Regression Techniques Logistic Regression Technique Section 3 : K- Nearest Neighbors K-Nearest Neighbors Concept and theory Distance functions: Euclidean, Minkowski Why should we use KNN? Mathematical approach Dataset with problem description Practical application on Python and R Section 4 : Support Vector Machine Support Vector machine Introduction to Support Vector machine Mathematical Approach Theory on hyperplane Dataset with problem description Practical application on R and Python Section 5 : Random Forest Random Forest Theory and mathematical concepts Entropy and Decision Tree Dataset with problem description Classification using random forest on Python and R

  2. Section 6 : Naïve Bayes Introduction of Naïve Bayes Theory of classification Concept of probability: prior and posterior Bayes Theorem Mathematical concepts Limitation of Naïve Bayes Dataset with problem description Practical application on Python and R Section 7: Decision Tree Introduction to Decision tree Significance of using Decision Tree Different kinds of Decision Tree Procedure and technique of Decision Tree Practical application of Decision Tree on R and Python Section 8: Clustering Introduction of clustering K-mean clustering Dataset with problem description Practical application on Python and R Section 9: Gradient descent Gradient descent Stochastic Gradient descent Gradient boosting Types of boosting Bootstrapping Practical application on Python and R Section 10: Natural Language Processing Introduction of Natural Language Processing Information Retrieval Concepts and how to deal with humungous information Related concepts and theory Section 11: Deep Learning Introduction of Deep Learning Scope of Deep Learning Understanding Artificial Neural Network(ANN) Activation function & Neuron Feature learning and feature engineering Introduction to python advance packages for Machine Learning: TensorFlow Real world Machine Learning projects 203, Ratnamani Bldg, Near Platform No.1. Opp. Rajdarshan Society, Thane-West Web: www.nettechindia.com Mob : 9870803004/ 5

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