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Csed Naac Done Evaluative Report of the Department Please provide data for last 5 years 1. Name of the Department : Computer Science and Engineering ` 2. Year of establishment : 1992 3. Is the Department part of a School/Faculty of the university? No 4. Names of programmes offered (UG, PG, M.Phil., Ph.D., Integrated Masters; Integrated Ph.D., D.Sc., D.Litt., etc.) Field of Duration Year of Title Sanctioned Intake Specialization (Years) Starting Computer Science 180 4 Years 1992 Machine Learning 4 Years Under- 30 2014 and Data Analytics Graduate 4 Years Program Computer Animation and 30 2014 Gaming Software 30 2 Years 2002 Post-Graduate Engineering Programs Computer Science 30 2 Years 2005 Information Security 30 2 Years 2012 Research Ph. D. Programs 5. Interdisciplinary programmes and departments involved: Courses in collaboration with other universities, industries, foreign institutions, etc. Ph.D. Infosys: Agile Software Development Approaches Cisco: Network Security EMC2: Cloud Infrastructure and Services NVIDIA: Parallel and Distributed Computing EFREI, France, UMKC, University of Florida: Project Semester University of Dublin: Design and Creativity Spoken tutorials by IIT, Mumbai 6. Details of programmes discontinued, if any, with reasons : Nil 7. Examination System: Annual/Semester/Trimester/Choice Based Credit System : Semester 435 8. Participation of the department in the courses offered by other departments Civil Engineering UTA-003: Computer Programming Department (CED) TA-104: Information Technology(Free Elective) UTA-005:Internet and Java Programming (Free Elective) Electrical and UTA-003: Computer Programming Instrumentation TA-104: Information Technology(Free Elective) Engineering UTA-005:Internet and Java Programming (Free Department (EIED) Elective) CS-004: Computer System Architecture CS-020: Simulation and Modeling CS-021: Visual Programming CS-035: Network Programming and Administration CS-037: Embedded Systems Programming CS-040: Data Mining and Pattern Recognition CS-047: Linux System Administration CS-050: VLSI CAD Electrical Engineering UTA-003: Computer Programming Department TA-104: Information Technology(Free Elective) (BE offered by EIED) CS-004: Computer System Architecture CS-021: Visual Programming CS-037: Embedded Systems Programming CS-040: Data Mining and Pattern Recognition CS-047: Linux System Administration UTA-005:Internet and Java Programming (Free Elective) Electronics and UTA-003: Computer Programming Communication TA-104: Information Technology(Free Elective) Engineering CS-048: Data Structure and Information Department (ECED) CS-020: Simulation and Modelling CS-021: Visual Programming CS-035: Network Programming and Administration UTA-005:Internet and Java Programming (Free Elective) CS-037: Embedded Systems Programming CS-040: Data Mining and Pattern Recognition CS-047: Linux System Administration CS-050: VLSI CAD CS-052: VLSI Testing Mechanical UTA-003: Computer Programming Engineering UTA-005:Internet and Java Programming (Free Department (MED) Elective) TA-104: Information Technology(Free Elective) 436 9. Number of teaching posts sanctioned, filled and actual (Professors/Associate Professors/Asst. Professors/others) Actual Post Sanctioned Filled ( including CAS & MPS) Professor 06 01 01 Associate Professor 11 04 04 Assistant Professor 22 22 22 Others -- 06 06 11. Faculty profile with name, qualification, designation, area of specialization, experience and research under guidance Name Qualification, Designation Specialization No. of No of Ph. D University and year (administrativ years of / M. Phil. of graduation e positions, if experience Students any) guided in last 4 Years Dr. Seema M.E (IIT, Professor Parallel and 22 Years Bawa Kharagpur), Ph.D., Distributed TU, 2004 Computing, Grid computing 8 Dr. B.E.(CE), Poona Associate Network 20 Years Maninder University 1994 Professor Security, Singh M.E.(SE) TIET, 2002 Computer Ph.D., TU, 2007 Networks, Grid and Cloud Computing 1 Dr. Deepak B.E. (SLIET) Associate Algorithms, 17 Years Garg Ph.D. TU, 2007 Professor Bioinformatics (Head of the Department) 8 Dr. A. K. B.E. 1991, M.E., Associate Wireless 24 Years Verma Ph.D. Thapar Professor Networks Institute of Engineering & Technology University 2008. 7 Dr. B.E. 1997 (SLIET), Associate Grid and Cloud 17.5 Years Inderveer M.E. 2003 (TIET), Professor Computing, Chana Ph.D. TU 2009 Software Engineering 3 Dr. Neeraj Ph.D. , SMVD Assistant Wireless and 14 Years Kumar University, Katra Professor mobile (J&K), India computing 1 Dr. V. P. Ph. D., TU, 2007. Assistant Soft Computing, 25 Years Singh Professor Computer Architecture 437 Name Qualification, Designation Specialization No. of No of Ph. D University and year (administrativ years of / M. Phil. of graduation e positions, if experience Students any) guided in last 4 Years Dr. Rinkle M.S. (Software Assistant Parallel and 17 Years Rani Systems), BITS Professor Distributed Pilani, 2001 Computing, Ph. D. Punjabi Algorithm Univ., Patiala, 2011 Design Mr. Anil B.E., Punjabi Assistant Computer 18 Years Vashisht University,1994 Professor Networks, Data Base Administration Mr. Vinod M.E., TU, 2009 Assistant Software 19 years Kumar (pursuing Ph. D.) Professor Engineering, Bhalla Object Oriented Design Dr. Shalini MS (System Assistant Theory of 16 Years Batra Software) BITS, Professor Computations, Pilani Parallel and Ph. D., TU, Patiala, distributed 2012 Computing Dr. Shivani B.E. (TIET) M.E., Assistant Artificial 16 Years Goel TU, Patiala, 2006, Professor Intelligence, Ph. D., TU, 2012 Software Reuse, Component based Development Dr. Prateek B.Tech, PTU, 1998 Assistant DBMS, Machine 16 .5 years Bhatia MS, BITS Pilani, Professor Translation 2001 Ph. D. TU, (Warden, Patiala, 2012 Hostel H; Ph.D Incharge) Dr. B.E., Ph.D. Assistant Modeling and 18 Years Sushma Professor (ISO Simulation Jain coordinator) Mr. M. Tech. Assistant Algorithms and 14 years Ravinder (Pursuing Ph. D.) Professor Natural Kumar (Dept. Sports Language Co- Processing coordinator) Dr. Ajay Ph. D. Assistant Theory of 10.5 Years Kumar Professor Computations, Network Programming Ms. M. Tech. Assistant Software 9.5 Years Ashima (Pursuing Ph. D.) Professor Engineering, Singh SPM 438 Name Qualification, Designation Specialization No. of No of Ph. D University and year (administrativ years of / M. Phil. of graduation e positions, if experience Students any) guided in last 4 Years Mr. Karun M. Tech. Punjab Assistant Compiler 10.5 Years Verma University Chd. Professor Construction, (Pursuing Ph. D.) Computer Architecture Mr. Sumit M. Tech. Assistant Network 9.5 years Miglani Professor (PG Programming Coordinator) Mr. M. Tech. (CSE) 2008, Assistant Computer 6.5 Years Rajkumar JUIT Waknaghat, Professor Graphics, Tekchanda Solan (Time-table Software ni (Pursuing Ph. D.) Coordinator) Engineering Mr. Ashish M. S. (BITS, Pilani, Assistant Computer 11 years Aggarwal 2002) Professor Networks (Pursuing Ph. D.) Ms. Anju M. Tech (IT), 2004, Assistant Cloud 15 Years Bala Panjabi University, Professor Computing 1999 B.E. (SLIET) (Pursuing Ph. D.) Mr. Vinay M. Tech (CSE), Assistant Operating 8 Years Arora 2007, Kuruk. Professor System, System University (IAP Software (Pursuing Ph. D.) Coordinator) Dr. Daman Ph.D. (Punjabi Assistant Submitted, E- 9 Years Deep Kaur Univ.), M.Tech Professor governance, (Thapar Univ. ), (PG Grid Computing B.Tech coordinator) Dr. PhD (IIT BHU), Assistant Database, Data 5.5 Years Ashutosh M. Tech. Professor Mining and Mishra (PG Software coordinator) Engineering Ms. Jhilik B.Tech, Ph. D. Assistant Computer 2 year Bhattachar submitted Professor(PG Vision and ya (kindly verify) Coordinator) Image Processing Ms. M.E. (CSE) Thapar Lecturer Parallel and 5.5 Years Karamjit Institute of (Contractual) Distributed Kaur Engineering & Computing Cheema Technology University 2008 (Pursuing Ph. D.) 439 Name Qualification, Designation Specialization No. of No of Ph. D University and year (administrativ years of / M. Phil. of graduation e positions, if experience Students any) guided in last 4 Years Ms. M.E. (CSE) Thapar Lecturer Natural 4.5 Years Rupinder Institute of (Contractual) Language Deep Kaur Engineering & Processing Technology University 2010 Ms. B.Tech, M.E, TU, Lecturer Software 3 Years Harkiran Pursuing Ph. D. (Contractual) Engineering, Kaur (Member Cultural Souvenir Computing, Committee) Semantic Web Ms. Maggi B.Tech, M.Tech Lecturer Content-Based 2.5 Year (Contractual) Image Retrieval, Medical Image Processing, Computer- Aided Diagnosis Ms. B.Tech, M.Tech, Lecturer Wireless Sensor 2.5 year Sukhchand Pursuing Ph. D. (Contractual) Networks an Ms. B.Tech, M.Tech, Lecturer Networks, 1.5 Year Tarunpreet Pursuing Ph. D. (Contractual) Security and Bhatia UG Privacy coordinator Dr. Ph.D Lecturer Machine 2.5 Year Prashant (Contractual) Learning Rana 12. List of senior Visiting Fellows, adjunct faculty, emeritus professors : Expert Lectures by Outsiders in Computer Science Department 2010 S. Name of the Expert with Title of the Expert Lecture Date and Venue No. Designation 1. Prof. Subir Kumar Ghosh, Introduction to Graph October 28-30, 2010, TU School of Technology & Algorithms Computer Science, Tata Institute of Fundamental Research, Mumbai 440 S. Name of the Expert with Title of the Expert Lecture Date and Venue No. Designation 2. Prof. Sandeep Sen, Department Introduction to Geometric October 28-30, 2010, TU of Computer Science & Algorithms Engineering, Indian Institute of Technology, New Delhi ,110 016. 3. Prof. Subhas Chandra Nandy, Introduction to Randomized October 28-30, 2010, TU Advanced Computing
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