Machine Learning for Engineering and Science Applications

Machine Learning for Engineering and Science Applications Training provided by University of Indian Institute of Technology Madras

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Created by IIT Madras Staff Last updated Tue, 01-Mar-2022 English


Machine Learning for Engineering and Science Applications free videos and free material uploaded by IIT Madras Staff .

Syllabus / What will i learn?

COURSE LAYOUT

Week 1: Mathematical Basics 1 – Introduction to Machine Learning, Linear Algebra

Week 2: Mathematical Basics 2 - Probability

Week 3: Computational Basics – Numerical computation and optimization, Introduction to Machine learning packages

Week 4: Linear and Logistic Regression – Bias/Variance Tradeoff, Regularization, Variants of Gradient Descent, MLE, MAP, Applications

Week 5: Neural Networks – Multilayer Perceptron, Backpropagation, Applications

Week 6: Convolutional Neural Networks 1 – CNN Operations, CNN architectures

Week 7: Convolutional Neural Networks 2 – Training, Transfer Learning, Applications

Week 8: Recurrent Neural Networks RNN, LSTM, GRU, Applications

Week 9: Classical Techniques 1 – Bayesian Regression, Binary Trees, Random Forests, SVM, Naïve Bayes, Applications

Week 10: Classical Techniques 2 – k-Means, kNN, GMM, Expectation Maximization, Applications

Week 11: Advanced Techniques 1 – Structured Probabilistic Models, Monte Carlo Methods

Week 12: Advanced Techniques 2 – Autoencoders, Generative Adversarial Network



Curriculum for this course
0 Lessons 00:00:00 Hours
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Description

Recent applications of machine learning have exploded due to cheaply available computational resources as well as wide availability of data. Machine Learning (ML) techniques provides a set of tools that can automatically detect patterns in data which can then be utilized for predictions and for developing models. Developments in ML algorithms and computational capabilities have now made it possible to scale engineering analysis, decision making and design rapidly. This, however, requires an engineer to understand the limits and applicability of the appropriate ML algorithms. This course aims to provide a broad overview of modern algorithms in ML, so that engineers may apply these judiciously. Towards this end, the course will focus on broad heuristics governing basic ML algorithms in the context of specific engineering applications. Students will also be trained to implement these methods utilizing open source packages such as TensorFlow.INTENDED AUDIENCE: Postgraduate students in all engineering and science disciplines. Mature seniorundergraduate students may also attempt the course.PREREQUISITES:Familiarity with Multivariable Calculus, Linear Algebra, Probability, Statistics. Comfortable with programming in PythonINDUSTRY SUPPORT: Should be of interest to companies trying to employ engineers familiar with Machine Learning

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Free

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