GAT-B 2021 List of Qualified Candidates

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GAT-B 2021 List of Qualified Candidates REGIONAL CENTRE FOR BIOTECHNOLOGY DEPARTMENT OF BIOTECHNOLOGY MINISTRY OF SCIENCE & TECHNOLOGY, GOVERNMENT OF INDIA DBT POST GRADUATE PROGRAMME IN BIOTECHNOLOGY/ALLIED AREAS Graduate Aptitude Test – Biotechnology (GAT-B) 2021 (for admissions to DBT supported Post Graduate Programmes in Biotechnology/allied areas in academic year 2021-2022) Category wise list of qualified candidates in GAT-B 2021, following Reservation Policy of Government of India (A) List of qualified candidates under UnReserved / General (UR) Category GAT-B 2021 GAT-B 2021 GAT-B 2021 GAT-B 2021 Roll Score/Marks Candidate’s Name Category Per centage Category Application No. No. (out of 240) wise Rank 212904107507 WB1003010582 SHUVARGHYA CHAKRABORTY General 209.50 87.29% 1 212904112845 WB1008010183 Sourima Kundu General 208.50 86.88% 2 212904107534 UP1845010075 SAMRIDDHI SHUKLA General 201.50 83.96% 3 212904107305 WB1010010224 KOUSHIKI DAS General 200.50 83.54% 4 212904101211 UP0450010037 Shrestha Tomar General 198.00 82.50% 5 212904121164 WB1003010560 AKASHJYOTI PATHAK General 197.50 82.29% 6 212904106929 DL0117010448 Aayushi Deo General 196.50 81.88% 7 212904102924 WB1002010652 Pijush Bera General 195.00 81.25% 8 212904110975 MR2281010291 Siddhi Pavale General 195.00 81.25% 8 212904102479 DL0119010350 VARUNA ARORA General 193.00 80.42% 9 212904105034 MR2280010396 Mitika Pradeepkumar Taneja General 193.00 80.42% 9 212904100207 KL1772010062 J DEVACHANDANA General 192.50 80.21% 10 212904100345 WB1003010600 Arijit Das General 192.50 80.21% 10 212904115568 WB1003010650 RAJARSHI SARKAR General 191.50 79.79% 11 212904117868 WB1003010645 Snehendu Bose General 191.50 79.79% 11 212904100833 MR1685010107 PRACHI DUMBRE General 191.50 79.79% 11 212904115598 OR0412010170 PRIYANKA PATRA General 191.00 79.58% 12 212904108667 MP0389010078 RISHITA GUPTA General 190.50 79.38% 13 212904107120 WB1002010693 Soumyajit Kar General 190.00 79.17% 14 212904101735 WB1002010746 SOUMADIP ROY General 189.50 78.96% 15 212904106122 TN0869010035 SUBASHREE V General 189.50 78.96% 15 212904109203 DL0119010335 Pallavi Dutta General 189.00 78.75% 16 212904101992 DL0117010511 Shreya Putatunda General 188.50 78.54% 17 212904103834 OR0412010183 PREETI PRAGYA PANDA General 188.50 78.54% 17 212904103201 HR0429010065 Aastha General 188.00 78.33% 18 212904109773 UK0153010047 Sukirti Khantwal General 188.00 78.33% 18 212904106297 RJ0640010072 SALONI KHATRI General 187.50 78.13% 19 212904109411 WB1010010348 Sampurna Dasgupta General 187.50 78.13% 19 212904114776 DL0120010138 Simran Preet Kaur General 186.50 77.71% 20 212904117377 DL0115010756 MOHD SALIK NOOR General 186.50 77.71% 20 212904119614 HR0429010042 Mamta Chhetri General 186.50 77.71% 20 212904107661 WB1010010354 Triparna Chakraborty General 186.50 77.71% 20 212904117487 WB1007010357 SNEHA SAWOO General 186.00 77.50% 21 212904107889 DL0115010661 Mohit kathait General 186.00 77.50% 21 212904110821 WB1010010230 Reema Sahu General 186.00 77.50% 21 212904102243 DL0115010613 Pankaj Kumar Sharma General 185.50 77.29% 22 212904102839 DL0119010346 Muskan Gupta General 185.50 77.29% 22 212904100253 DL0116010779 Himanshu General 185.00 77.08% 23 212904107604 WB1010010223 SHREYASEE DAS General 185.00 77.08% 23 212904104097 GJ1092010030 Nandini Datta General 184.50 76.88% 24 212904100614 WB1010010212 KAMALLATA CHAKRABORTY General 184.50 76.88% 24 212904103005 DL0117010422 ESPITA MANNA General 184.00 76.67% 25 212904104668 DL0115010648 Rajiv Sharma General 184.00 76.67% 25 212904100108 DL0120010145 Mrittika Adhikary General 184.00 76.67% 25 212904100355 WB1008010180 Baivabi Bhattacharya General 183.50 76.46% 26 212904108843 WB1003010561 SNEHASIS SARKAR General 183.50 76.46% 26 212904109218 DL0120010185 JAYA General 183.50 76.46% 26 212904115967 WB1003010572 SOURAV BHATTACHARYYA General 182.50 76.04% 27 212904121212 WB1009030028 SAGARJYOTI PATHAK General 182.50 76.04% 27 212904105048 WB1008010201 SOUMI SEN General 182.50 76.04% 27 212904108966 UP0450010034 KHUSHBOO ARORA General 182.50 76.04% 27 212904105542 WB1003010568 ROHIT CHEL General 182.00 75.83% 28 212904106219 RJ0640010068 Charul Jain General 182.00 75.83% 28 212904106383 UP0931010030 Prama Pandey General 182.00 75.83% 28 212904107558 WB1007010376 SREEMOYEE PODDER General 182.00 75.83% 28 212904112308 MR1685010096 Sonali Nitin Hanjankar General 182.00 75.83% 28 212904112556 UP1430010022 ISHA DHINGRA General 181.50 75.63% 29 212904105936 PB0834010002 PARUL GARG General 181.50 75.63% 29 212904106488 RJ0640010113 Deepanshu Garg General 181.50 75.63% 29 212904106591 DL0119010209 Prial Taneja General 181.50 75.63% 29 212904121415 DL0117010463 Riya Madan General 181.00 75.42% 30 212904115773 WB1002010664 Subhashis Indra General 180.50 75.21% 31 212904107999 WB1007010485 SWAGATAM MAITY General 180.50 75.21% 31 212904118862 JH0443010069 AYUSHI KUMARI General 180.00 75.00% 32 212904122461 DL0120010093 Manshi Rana General 180.00 75.00% 32 212904102857 UP0732010063 SIDDHI GUPTA General 180.00 75.00% 32 212904100194 WB1003010638 SHOUNOK PANJA General 179.50 74.79% 33 212904108217 DL0119010207 APARNA RAI General 179.00 74.58% 34 212904100966 WB1007010501 ANINDA SUNDAR MODAK General 179.00 74.58% 34 212904111758 UK0153010012 Gahna Bahrani General 179.00 74.58% 34 212904114910 KL1772010138 Justina Raichel Jojo General 178.50 74.38% 35 212904114731 UP1430010010 SHRUTI CHAUHAN General 178.00 74.17% 36 212904122704 DL0115010741 MOHD SARIM SIDDIQUI General 178.00 74.17% 36 212904112214 GJ1291010052 Shah Helly Ketankumar General 177.50 73.96% 37 212904116331 AM0256010017 Saloni Jain General 177.00 73.75% 38 212904100300 WB1002010665 SWAGATO BHATTACHARJEE General 177.00 73.75% 38 212904101273 UK0153010040 Aakanksha Madhwal General 177.00 73.75% 38 212904101761 WB1003010529 SHOUVIK BHATTACHARYA General 176.50 73.54% 39 212904119906 CH0138010077 DIVYA General 176.50 73.54% 39 212904121167 DL0116010776 Tarun Bhaskar General 176.50 73.54% 39 212904120331 UP1845010072 Neha Singh General 176.00 73.33% 40 212904120507 AM0258010239 Raj Deep Jha General 176.00 73.33% 40 212904106037 DL0120010168 Sudarshana Chatterjee General 176.00 73.33% 40 212904116981 WB1009010082 Nirnisha Pramanik General 175.50 73.13% 41 212904102013 UP0152010013 AARTI NOTNANI General 175.50 73.13% 41 212904105427 MR2282010057 SHIVALI HEMANT BHONSLE General 175.50 73.13% 41 212904100743 MR1685010256 RISHAB SINGH General 175.50 73.13% 41 212904102541 WB1008010175 AHELI CHAKRABORTY General 175.00 72.92% 42 212904112057 GJ1291010047 SAMIKSHA RELE General 175.00 72.92% 42 212904122249 WB1007010495 Pradip Bhattacharjee General 174.50 72.71% 43 212904109095 WB1007010426 SATRAJIT DAS General 174.50 72.71% 43 212904100393 UP0354010077 Utsav Bose General 174.00 72.50% 44 212904105465 DL0115010644 Arnab Kakati General 174.00 72.50% 44 212904101488 MR2281010087 SHAMBHAVI MISHRA General 173.50 72.29% 45 212904114913 DL0120010122 Bhumika Chaudhary General 173.50 72.29% 45 212904101809 WB1002010727 Swapnil Roy General 173.50 72.29% 45 212904105952 UP1151030010 RACHIT ANAND General 173.50 72.29% 45 212904115320 GJ1291010030 Ritika Chandekar General 173.00 72.08% 46 212904123300 MP0389010120 Nimish Sharma General 173.00 72.08% 46 212904103563 DL0115010714 Sahil Raina General 173.00 72.08% 46 212904104817 UP0152010031 Abhilasha Singh General 173.00 72.08% 46 212904100609 OR0412010257 Subhanarayan Mishra General 173.00 72.08% 46 212904112334 AM0359010051 NAYAN JYOTI BORAH General 173.00 72.08% 46 212904103471 DL0117010449 Shrinkhla Singh General 172.50 71.88% 47 212904118222 UP0255010019 MUSKAN AGARWAL General 172.00 71.67% 48 212904119410 UP1247010097 Sreelakshmi S Kumar General 172.00 71.67% 48 212904108370 WB1002010740 Ayan Chatterjee General 172.00 71.67% 48 212904109557 UP1430010040 Zoya Quddoos General 172.00 71.67% 48 212904119795 BR0746010153 Ajay kumar acharya General 171.50 71.46% 49 212904106109 DL0120010060 Manita Raina General 171.50 71.46% 49 212904106827 UP0255010018 KRATI GUPTA General 171.00 71.25% 50 212904110742 MR2280010406 ISHIKA RAJIV MUNDHRA General 171.00 71.25% 50 212904113907 HR0429010099 Megha General 170.50 71.04% 51 212904115221 DL0119010361 Swati Lakshmi General 170.50 71.04% 51 212904122118 KL1879010164 DELNA V D General 170.50 71.04% 51 212904104612 WB1002010709 PRATISTHA SARKAR General 170.50 71.04% 51 212904100535 UP0931010021 DEEPAL VARSHNEY General 170.50 71.04% 51 212904110242 MR1685010025 Sarah Shajee Thomas General 170.50 71.04% 51 212904101441 WB1009010090 Rohini Bhattacharjya General 170.00 70.83% 52 212904114068 OR0412010239 Suryaprakash Tripathy General 170.00 70.83% 52 212904101682 GJ1291010067 Kendrekar Padmini Sham General 170.00 70.83% 52 212904116478 WB1009010115 Monali Mondal General 170.00 70.83% 52 212904119131 MR1685010193 Sharon Raju General 170.00 70.83% 52 212904121741 DL0115010622 PAWAN KAUSHIK General 170.00 70.83% 52 212904100644 TN0166010040 MERIN MARY MATHEW General 170.00 70.83% 52 212904106407 MR1786010172 Siddhi Bangale General 170.00 70.83% 52 212904102009 UK0153010055 Harsh Agrawal General 169.50 70.63% 53 212904120465 CH0138010057 Bhavya Ahuja General 169.50 70.63% 53 212904123311 CH0138010019 vidhu chandrika General 169.50 70.63% 53 212904105391 PB0136010028 Aditi Chauhan General 169.50 70.63% 53 212904111716 MR2281010121 Sneha S Das General 169.50 70.63% 53 212904115566 AP1877010064 SANTOSH KUMAR PANDA General 169.00 70.42% 54 212904120983 WB1008010205 AKRITI SAHA General 169.00 70.42% 54 212904105920 DL0117010423 Prerna General 169.00 70.42% 54 212904114627 MR2280010311 Raje Shrutika Pravin General
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