Big Data Analytics For Smart Grid
Offered By: NITTTR via Swayam
Course Description
Overview
With the fast development of digital technology and cloud computing, more and more data are produced through digital equipment and sensors, as well as through human activities and communications. The collected data are mounting at an exponential rate and the structure of them is also becoming much more complicated. The processing and analysis method of these large volume data is a new challenge but also an opportunity with the concept of “big data”.This course explores the usage of open source software python for demonstration of usage of big data in smart grid. It begins with the importance of big data analysis in smart grid, intelligent data collection devices followed by machine learning and deep learning algorithms used in data analytics for smart grid.
INTENDED AUDIENCE: Undergraduate students, Postgraduate students, research scholars, faculties of technical institutes, Industrial professionals.
PREREQUISITES: Basics of Power Systems, Basic knowledge of statistics.
INDUSTRY SUPPORT: The course is organised in Collaboration with eminent Industries such as Opal-RT and IBM.
INTENDED AUDIENCE: Undergraduate students, Postgraduate students, research scholars, faculties of technical institutes, Industrial professionals.
PREREQUISITES: Basics of Power Systems, Basic knowledge of statistics.
INDUSTRY SUPPORT: The course is organised in Collaboration with eminent Industries such as Opal-RT and IBM.
Syllabus
COURSE LAYOUT
Week1: Need of Data Analysis in Smart GridWeek2: Intelligent Data Collection Devices in Smart GridWeek3: Data Science Pertaining to Smart Grid AnalyticsWeek4: Tools for Big Data AnalyticsWeek5: Conventional Machine Learning Algorithms for Data AnalyticsWeek6: Advanced Machine Learning Algorithms for Data AnalyticsWeek7: Big Data Analytics for Smart Grid- Case StudiesWeek8: Cloud and edge computing for Big data analytics
Taught by
Dr. Ritula Thakur
Related Courses
Social Network AnalysisUniversity of Michigan via Coursera Intro to Algorithms
Udacity Data Analysis
Johns Hopkins University via Coursera Computing for Data Analysis
Johns Hopkins University via Coursera Health in Numbers: Quantitative Methods in Clinical & Public Health Research
Harvard University via edX