Shibukanta Barman. January 2017. Mahasweta Debir Golpobiswa : Loingik Pratirodh, (ISBN : 978-93-82042-47-1,) Udar Akash, Ghotok Pukur

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Shibukanta Barman. January 2017. Mahasweta Debir Golpobiswa : Loingik Pratirodh, (ISBN : 978-93-82042-47-1,) Udar Akash, Ghotok Pukur University Faculty Details Page on DU Web-site (PLEASE FILL THIS IN AND SUBMIT A HARD COPY AND SOFT COPY ON CD ALONGWITH YOUR PERIODIC INCREMENT CERTIFICATE (PIC)) Title Dr. First Name SHIBU Last Name BARMAN Photograph KANTA Designation Assistant Professor (Ad-hoc) of Bengali. Department Modern Indian Languages and Literary Studies Address (Campus) Department of Modern Indian Languages and Literary Studies, Tutorial building, Arts Faculty, University of Delhi, Delhi -110007. (Residence) E 49 B, First floor, Lane no-3, Hardev Nagar, New Delhi, Delhi-110084. Phone No (Campus) (Residence) optional Mobile 09775924042 / 9911706049 Fax Email [email protected] Web-Page ----------------------- Education Subject Institution Year Details Ph.D. (Bengali) Assam University, Silchar 2015 Thesis topic: Mahaswetar nirbachita chhotogolpe protibadi nari satta M.A. (Bengali) Assam University, Sichar 2009 Subject: Bengali Language and literature Career Profile Organization / Institution Designation Duration Role Assam University, Silchar Assistant Professor August 2016 - Till date Teaching (Ad-hoc) Research Interests / Specialization Literary theory and folk tradition of Rajbangsi Teaching Experience ( Subjects/Courses Taught) 4th August 2016 – Till date: Bengali Language Teaching, Indian Literary Theories, Rabindranath Tagore literature, 20 th Century Bengali Literature (Novel & short story’s). , Literature of Bangladesh (Poetry, Essays and Plays). Honors & Awards Mahasweta Debi smriti Award, 2017, by Udar Akash & Udar Prithibi, India & Bangladesh moeetri Utsav, Ho chi minh sarani, Kolkata, West Bengal 700071 Publications (LAST FIVE YEARS) Books Shibukanta Barman. January 2017. Mahasweta Debir golpobiswa : Loingik pratirodh, (ISBN : 978-93-82042-47-1,) Udar Akash, Ghotok pukur. www.du.ac.in Page 1 Shibukanta Barman. (Ed.) 2017. Anya Mahasweta somalachoker darpane. (ISBN: 978-93-82042-85-3) Udar Akash: Ghatak pukur. In Indexed/ Peer Reviewed Journals Year of Title Journal Co-Author Publication Shibukanta Barman, 2017, Mahaswetar chhotogalpe swatantratar Anusandhan, Udar Akash, a Peer review Research Journal, Vol-16, edited by Faruque Ahamed & Mousumi Biswas, south 24 pargana, January 2017, (ISSN 2320-3498) Articles: 1. Shibukanta Barman, 2013, Sarat chandrer palli samaj : Nibir path , Dwiralap, No-67, Edited by Tapadhir Bhattacharya, October 2013, Silchar, Assam, (ISSN 0975-5608). 2. ______________________. 2014, Nimno bargio pratibad : Mahasweta Debir Uponyas, Adhunik Bangla sahitya boichitrer nana dik, Edited by Mrinal kranti Debnath & Kanai Das, The See Book Agency, Kolkata, February 2014, (ISBN 978-9383816-05-7) 3. ______________________. 2015. Swarantarer nirikhe Mahaswetar chhotogolpo, Bangla katha sahitya o Anyanyo prosonga, Edited by Haridas Mondal & Gabinda Biswas, The See Book Agency, Kolkata, Jun 2015, . (ISBN: 978-93-83816-33-0 ) 4. ______________________. 2015, Samaj O sanskritite nari, Sahityer swadhinata, Edited by Pralay Nag & Supendranath Roy, Nandita Publication, Kolkata, 2015, (ISBN 13-978- 81-922477-9-3) 5. ______________________. 2015. Mahaswetar Uponyas O rajnoitik bastab, Research Journal, Edited by Dr. Durba Deb & Dr. Barunjyoti Choudhury, Bengali Department, Assam University, September 2015 International Conference Presentations: ------------------- National Conference Presentations: www.du.ac.in Page 2 1. Presented a paper titled Pathak patikriyabader nirikhe Mahaswetar Chhotogolpa in a national seminar on Literary Relations: India and the World organized by Department of Modern Indian Languages and Literary studies, University of Delhi, Delhi, 9 th and 10 th , March 2017. 2. Presented a paper titled Mahaswetar chotogalpa : Matri charitrer anusandhan, organized by Bangiya sahitya samsad, Korolbagh Delhi, December 2016. Total Publication Profile optional Books Two In Indexed/ Peer Reviewed Journals ------------------------------------ Articles Seven Conference Presentations Two Public Service / University Service / Consulting Activity ------------------------------------ Professional Societies Memberships ---------------------------------------- Projects (Major Grants / Collaborations) -------------------------------------- Other Details (Signature of Faculty Member) (Signature & Stamp of Head of the Department) www.du.ac.in Page 3 .
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