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Department of Computer Science & Engineering

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Presentation on theme: "Department of Computer Science & Engineering"— Presentation transcript:

1 Department of Computer Science & Engineering
Data Analytics (CS40003) Dr. Debasis Samanta Associate Professor Department of Computer Science & Engineering

2 Today’s discussion… Semester organization Syllabus Course objective
Course plan Reference and study materials Course web page Contact details

3 …Course organization Title: Data Analytics Code: CS40003
Credit: = 3 Slot: F Timing Wednesday: 10:00-10:55 Thursday: 09:00-09:55 Friday: 11:00-11:55 (+12:55) Venue: V2, Vikramshila Complex

4 …Course objective This course will cover fundamental algorithms and techniques used in Data Analytics. The statistical foundations will be covered first, followed by various machine learning and data mining algorithms. Technological aspects like data management, scalable computation and visualization will also be covered. In summary, this course will provide exposure to theory as well as practical systems and software used in data analytics. After completing this course, you will learn how to: Find a meaningful pattern in data Graphically interpret data Implement the analytic algorithms Handle large scale analytics projects from various domains Develop intelligent decision support systems

5 …Syllabus Data definition Descriptive Statistics
Concept of data Data vs. Information Data categorization Descriptive Statistics Measure of central tendency Measure of location of dispersion Basic Analysis Techniques Statistical hypothesis generation and testing Chi-Square test t-Test, Analysis of variance, Correlation analysis Maximum likelihood test

6 …Syllabus Data Analysis Techniques Case Studies and Projects
Regression analysis Classification techniques Clustering techniques Association rule analysis Case Studies and Projects Understanding few business scenarios Feature engineering and visualization Scalable and parallel computing with Hadoop and MapReduce Sensitivity analysis

7 …Study materials Probability & Statistics for Engineers & Scientists (9th Edn.), Ronald E. Walpole, Raymond H. Myers, Sharon L. Myers and Keying Ye, Prentice Hall Inc. The Elements of Statistical Learning, Data Mining, Inference, and Prediction (2nd Edn.), Trevor Hastie Robert Tibshirani, Jerome Friedman, Springer, 2014 An Introduction to Statistical Learning: with Applications in R, G. James, D. Witten, T Hastie, and R. Tibshirani, Springer, 2013 Software for Data Analysis: Programming with R (Statistics and Computing), John M. Chambers, Springer, 2012 Mining Massive Data Sets, A. Rajaraman and J. Ullman, Cambridge University Press, 2012. Advances in Complex Data Modeling and Computational Methods in Statistics, Anna Maria Paganoni and Piercesare Secchi, Springer, 2013

8 …Study materials Lecture slides and other materials can be had at
Data Mining and Analysis, Mohammed J. Zaki, Wagner Meira, Cambridge University Press, 2012 Hadoop: The Definitive Guide (2nd Edn.) by Tom White, O-Reilly, 2014 MapReduce Design Patterns: Building Effective Algorithms and Analytics for Hadoop and Other Systems, Donald Miner, Adam Shook, O'Reilly, 2014 Beginning R: The Statistical Programming Language, Mark Gardener, Wiley, 2013 Lecture slides and other materials can be had at

9 …Evaluation plan Minimum attendance required: 75% of the total classes
Mid-Semester evaluation: 30% End-Semester evaluation: 40% Project-based evaluation: 30% (in four phases) Note: Minimum attendance and presence in all evaluations are must (other than some medical or emergency ground. No compensatory test or extended submission).

10 Automated Attendance Marking …

11 Device Requirement Android Lollipop - 5.0+ Unknown Sources
To install non-google play store application Internet connectivity Use VPN for proxy enabled Wi-Fi connection GPS enabled

12 Installation and Setup
Download the application Install the application Turn install from “unknown sources” on Open the application Click Sign Up button

13 Click the Student button

14 Enter your detail… Enter details carefully
Note: Roll number is your UID. Caution: Information once entered cannot be modified. Please review before submitting. Password should be at least 8 characters. Press Sign Up button Wait until the process completes

15 Sign In Enter your registered address Enter password

16 Enroll Course Enter Course details Click Request Approval
Course ID: CS40003 Teacher ID: DSM Semester: Autumn Slot: F Click Request Approval

17 Mark your attendance Sign in Click “Attendance” Course ID: CS40003
Wait till announcement and note down Unique Id Sign in Click “Attendance” Course ID: CS40003 Semester: Autumn Slot: F Enter Unique Code Click “Attend Class” button

18 …Submissions of projects and assignments
Moodle Course Management System Steps to enroll to the course at Moodle Create your account (if it is not created earlier) User Id: <Roll Number> Password: account: Enrolment Key : CS40003 Verification your account, check the registered mail box Login to Moodle with “User Id” and “Password” Select the course “Data Analytics” from list of courses at the link “My Course”

19 …Doubt clearance and discussions
Please use “Discussion Forum” at the link “Moodle” in the course web page at

20 While you are in the class…

21 Happy Learning!


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