Introduction to Data Science and AI & ML, Data Science, AI & ML, Essential Concepts in AI and ML Data Understanding, Representation and Visualisation
Machine Learning:
Linear Methods, Linear Regression, Multiple Linear Regression, Non-Linear Regression, Clustering, Forecasting models, Perceptron and Neural Network, Decision Trees, Support Vector Machines.
Probabilistic Models, Dynamic programming and Reinforcement Programming, Evolutionary Algorithms, Time Series Models, Deep Learning, Emerging Trends in ML, Unsupervised Learning
Foundations for AI, AI Basics , AI Classification, Supervised Learning, Feature Engineering Regression, Model Selection, Model Performance , Ranking
Introduction to ML with R and using Python, Python and R for Artificial Intelligence, Machine Learning, and Data Science, AI/ML in aerospace industry
Course outcomes:
At the end of the course the student will be able to:
1. Apply the concepts of Artificial Intelligence and Machine Learning
2. Develop the knowledge to understand, represent and visualise the data that form the foundation to AI and ML
3. Apply different ML algorithms to different situations in Aerospace Industry
Question paper pattern:
The SEE question paper will be set for 100 marks and the marks scored will be proportionately reduced to 60.
Textbook/ Textbooks
1 Machine Learning and Artificial Intelligence Ameet V Joshi Springer 2019
2 Artificial Intelligence and Machine Learning fundamentals Zsolt Nagy Packt Publishing 2018
Reference Books
1 Artificial Intelligence and Machine Learning Vinod Chandra SS PHI Learning 2014
2 Basics of Artificial Intelligence and Machine Learning Dheeraj Mehrotra Notion Press 2019