GIVING TOGETHER/ Class Gifts Received As of May 12, 2017

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GIVING TOGETHER/ Class Gifts Received As of May 12, 2017 GIVING TOGETHER/ Class Gifts received as of May 12, 2017 Reunion and Commencement Giving Commitments as of 5/25/2017 Brown Annual Fund Participation Comprehensive Giving+ Parents $4,937,172 NA NA Senior Gift $34,544 29% NA 5th Reunion $95,262 25.3% $329,277 10th Reunion $134,293 20.6% $617,831 15th Reunion $203,637 23.6% $1,208,362 20th Reunion $594,945 25.5% $2,248,058 25th Reunion $1,828,815 26.7% $13,001,241 30th Reunion $3,242,970 38.6% $29,984,291 35th Reunion $1,531,084 29.8% $30,101,094 40th Reunion $574,425 26.7% $65,413,505 45th Reunion $521,308 31.7% $28,881,826 50th Reunion $805,310 48.5% $10,125,355 55th Reunion $167,385 34.1% $22,915,915 60th Reunion $369,411 43% $5,281,240 65th Reunion $104,673 31.6% $1,174,882 70th Reunion $15,210 29.6% $555,815 +Total commitments to all University priorities made since the last Reunion. CLASS OF 2012 CLASS OF 2012 Impact this year Brown Annual Fund 2016-2017 class gift $95,262 Long-term investment Class comprehensive giving since last reunion $329,277 CLASS OF 2012 Impact this year Brown Annual Fund 2016-2017 class gift CLASS OF 2012 $95,262 Reunion Committees 5th REUNION GIFT COMMITTEE REUNION PARTICIPATION COMMITTEE REUNION ACTIVITIES COMMITTEE Manas Gautam '12, Co-Chair Arianna A. Ahiagbe '12 Meera Chappidi '12 Alexandra Salzman '12, Co-Chair Carly L. Arison '12 Colby Jenkins '12 Junli Chen '12 Heather L. Arison '12 Vikram Kedar '12 Max Chou '12 Lisa Berlin '12 Brijesh Patel '12 William Culler-Chase '12 Innessa M. Colaiacovo '12 Jennifer Popp '12 Aurelio Espinosa '12 Katherine A. Galvin '12 Imani Tisdale '12 Katherine Haves '12 Jennifer W. Lee '12 Brandon Kaufmann '12 Emir V. Okan '12 Rebecca McGoldrick '12 Josh Parker '12 Rebecca Tassell '12 Yue Wang '12 Chantel C. Whittle '12 Impact this year Brown Annual Fund 2016-2017 class gift CLASS OF 2012 $95,262 A Lisa C. Berlin♦ Nathan J. Chellman Karen Duong♦ Carissa Aboubakare♦ Natalie B. Berner♦ Andrew Chen♦ E Kristina M. Acevedo♦ Jennifer P. Bloom♦ Junli Chen♦ Sarah A. Ebert♦ Katherine B. Adams♦+ Alicia A. Boucher♦ Mark K. Chepkwony♦ Margot Elmaleh♦ Arianna A. Ahiagbe♦+ Elizabeth A. Bowman♦ Chenelle Chin♦+ Aurelio T. Espinosa♦ Graham J. Ahokas♦ Austin J. Boxler♦ Catherine K. Chiu♦ Nikilesh Eswarapu♦+ Daniel W. Alexander♦ George A. Brennan Peter D. Choi Sarah E. Evelyn♦+ Kate D. Alexander♦+ Garrett E. Bressler♦ Max I. Chou♦+ F Sthefany Alviar Henry E. Bruce♦ Veronica M. Clarkson♦ Lucy K. Fanelli♦+ James A. Amen II♦ William T. Bryan♦ Varina R. Clark Robert T. Farnham♦ Norin Ansari Sean H. Burns Innessa M. Colaiacovo♦+ Shakeela J. Faulkner♦ Noricia A. Aquino♦ C Abigail L. Colella♦ Jonathan M. Feldman♦+ Justin D. Ardini Ralph D. Cabezas♦ Alexander B. Crane♦ Jamie Y. Ferguson♦ Carly L. Arison♦ Catherine B. Carbone♦+ Danielle N. Crumley♦ Mica M. Fidler♦+ Heather L. Arison♦ Michael A. Caron♦ William T. Culler-Chase♦+ Julie I. Flanzer♦+ B Alexander L. Carrere D Roseanne J. Fleming Anna L. Baker Leigh L. Carroll♦ Marco A. De Leon♦ Tiberius Florea♦ Nancy C. Baker Jordan M. Carter♦ Krongkamol M. deLeon♦ Miranda E. Forman Hayley S. Ballerini♦ Ethan B. Cecchetti♦+ Monica R. DeSantiago Drew J. Foster♦ Anna M. Baran♦ Daniel S. Chang Allison N. Deshler♦ Atilio Barreda II♦ David W. Chanin♦+ Keith M. Dufy♦ Arlando J. Battle♦+ Lizette Chaparro♦+ Matthew K. Dufy♦ ♦Denotes Brown Annual Fund donor. + Denotes fve or more consecutive years of giving to the Brown Annual Fund. Impact this year Brown Annual Fund 2016-2017 class gift CLASS OF 2012 $95,262 F (cont.) Alexander W. Hare♦ Madeline Jans-Neuberger♦ Danyelle F. King♦ Audrey E. Fox♦ Ian J. Harris♦ Matthew J. Jaroszewicz♦ Jamison M. Kinnane♦+ Jennifer A. Frary♦+ Jean-Herbert B. Harris♦ Robert L. Jefrey♦ Jessica M. Kirschner♦+ G Shavonne N. Hart♦ Samuel G. Johnson♦+ Alexandra H. Kolbe♦ Natasha C. Gadinsky♦ Madeleine E. Harvey♦ Timothy G. Johnstone♦+ Kevin T. Koopman♦ Nailah A. Gallego♦ Katherine A. Haves♦+ Timothy Y. Juhn♦ Alina Kung♦ Katherine A. Galvin♦ Hector Hernandez♦ Sarah J. Julian♦ Naomi P. Kuromiya♦ Chelsea E. Garber♦ Sifat Hingorani♦ K Darin Kurti♦ Marcus A. Gartner Araceli Mendez Hintermeister♦ Sophie Kainen Sadie B. Kurzban♦+ Manas Gautam♦+ Marisa A. Hobbs♦ Veronika T. Kamenova♦ L John R. Gayton♦ Laurielle L. Hofer♦ Brittany L. Katz Katelyn M. Landry♦ Nabeel N. Gillani♦ Edward R. Horton♦+ Kara A. Kaufman♦ Il Doo Lee♦ Daniel P. Gonon♦ Emily K. Hsieh♦+ Brandon M. Kaufmann♦ Jason Y. Lee♦+ Megan J. Gorman♦ Mark Hu♦ Katie L. Keady Jennifer W. Lee♦ Mark J. Gormley James S. Hunter♦+ Clare L. Kearney♦+ Benjamin G. Leib Maggie R. Goter♦ Rachel C. Hunter♦ Julia A. Keller Kathryn C. Lesneski♦ Ian T. Gray♦ Eugene J. Hwang♦ Dylan T. Kennamer♦ Eric B. Lewin♦+ Margot S. Grinberg♦ Mary O'Neill Hyde♦ Lisa A. Khanna♦ Max A. Lewin♦ Eric M. Gruebel♦ I Alyssa M. Kichula♦+ Simon P. Liebling Mark A. Guttag♦ Thomas P. Iadecola♦+ Julia S. Kim♦ Scott M. Linstone♦ H J Stephanie Y. Kim♦ Zhi Li♦+ Henry B. Harding♦ Aaron F. Jacobs♦ Graciela M. Kincaid♦ ♦Denotes Brown Annual Fund donor. + Denotes fve or more consecutive years of giving to the Brown Annual Fund. Impact this year Brown Annual Fund 2016-2017 class gift CLASS OF 2012 $95,262 L (cont.) Bridget K. McNamara Thuy-Mai V. Nguyen Daniel Prada♦ Amed A. Logrono♦ Robert A. Medairos♦ Halsey F. Niles♦+ Tara K. Prendergast♦ Christie Louie♦+ Shawn D. Medford♦ O Lara E. Press♦ Nathan B. Lovett Leila R. Meglio♦ Madeleine C. O'Neill♦ Abe D. Pressman♦ Gregory B. Lowen♦+ Vihang J. Mehta♦+ Emir V. Okan♦ Joanna H. Price Harmony S. Lu♦ Patricia R. Melvin♦ Chimso O. Okoji Daniella C. Prince♦ Brent D. Lunghino♦+ Rosemary A. Miller♦ Anne B. Oram James D. Putnam♦ Glenn H. Lutzky♦+ Phoebe Min♦ Kacie S. Overlander♦ Q Kerry D. Lynch♦ Lillian F. Mirviss♦ P Molly D. Quinn♦ M Mari A. Miyoshi♦ Allison E. Palm♦ R Kelsey J. MacMillan Michael A. Monn Ayoosh Pareek♦ Hector Ramirez♦ Michael D. Manella Eugenie D. Montaigne♦ Josh Parker♦+ Loyola J. Rankin Catherine Mardula♦ Julia R. More♦+ Melanie L. Pascal♦+ Andrew C. Rapp♦ Melanie Masarin♦ Kia R. Mosenthal♦ Shawn T. Patterson♦ Ethan C. Reed♦ Sandra G. Mastrangelo♦ Hannah J. Moser♦ Michael N. Perchonok♦+ Jonathan A. Regunberg♦ Cassandra L. Mastrostefano♦ Nina C. Mullen Ellen P. Perez♦+ Mathew A. Reiss♦ Spencer K. McAndrews Lily M. Mwalenga♦ Emily O. Perry♦ Alice Ren♦ Catherine McCarthy♦ N Adam T. Persinger♦ Julio C. Reyes♦ Ashley R. McDonnell♦ Benjamin E. Nacar♦+ Ngoc H. Pham♦ Hobart C. Reynolds♦ Rebecca A. McGoldrick♦+ Alexander Y. Nef♦ Charles J. Pletcher♦+ Yoo-Jin R. Rhee♦ Sam M. McGrath Irene V. Nemesio♦ Douglas W. Poole♦ Kaleigh P. McKinney♦ Bao-Nhat D. Nguyen♦ Ryan M. Potocki♦ ♦Denotes Brown Annual Fund donor. + Denotes fve or more consecutive years of giving to the Brown Annual Fund. Impact this year Brown Annual Fund 2016-2017 class gift CLASS OF 2012 $95,262 R (cont.) Dongho Shin♦ Rebecca W. Tassell♦ Liza F. Weisberg♦+ William M. Riedel♦ Lilly V. Siems♦ Jena L. Tavormina Michael H. Weissman♦+ Luisa Robledo♦ Sydney L. Silverstein♦+ Patrick M. Temple♦ Zoe F. Weiss Alyse Rocco Emily C. Simmons♦ Thunwa Theerakarn♦+ Chantel C. Whittle♦ Jose M. Rodriguez♦ Beatrice A. Sims Alyssa B. Thelemaque♦ Mikel A. Wiggins Alec Roelke♦+ Kayla M. Smith♦+ Clay E. Thibodeaux♦ Justin D. Williams♦ Cara F. Rosenbaum♦ Matthew E. Smith♦ John J. Tiernan♦+ Victoria A. Wilson♦ Emily A. Rosen♦+ Matthew P. Smith♦ Alexander L. Tin♦ Kelly E. Winter♦ Hilary R. Rosenthal♦ Matthew P. Smith Yuri Tomikawa♦ Justin M. Wolfe♦ Joseph R. Rosner♦ Daniel T. Smithwick♦ Amy E. Traver♦+ Samantha Wong♦ Naomi Heilweil Rotenberg Soojeong Song♦ Landon R. Turley♦ Madeline J. Wozniak Samantha H. Ryu♦ Caroline J. Sousslof♦ U Mark Wu♦ S Gianna M. Spinelli♦ Caroline Dean Udelhofen♦ X Cecilia A. Salama Leslie D. Springmeyer♦+ Natalie S. Uduwela♦ Chentong T. Xu♦ Zana Salzman♦ Srihari Y. Sritharan♦ Pattie L. Umali♦ Cayla J. Saret♦+ Anna E. Stanciof♦ Samuel T. Usher♦ Anish A. Sarma♦ Eric R. Stix♦ V Susan F. Scavone♦ Dingyi Sun♦ Derek R. Vance♦ Andrew J. Schef♦+ T Michelle C. Vanderploeg Isaac A. Schlecht♦+ Michael C. Tackef♦+ Karina E. Villanueva♦ Lindsey E. Schupp♦ Abigail A. Taft♦ Victor V. Vu♦+ Paul R. Shamirian♦ Wei-Lin Tan♦ Yue Wang♦ ♦Denotes Brown Annual Fund donor. + Denotes fve or more consecutive years of giving to the Brown Annual Fund. Impact this year Brown Annual Fund 2016-2017 class gift CLASS OF 2012 $95,262 Y Kevin Zheng♦ Hee Seung Yang Beini I. Zhou♦ Chelsea Gordon Yates♦ Yutian Zhou♦ Margaret Yi♦ Julianne Bishop Zolnierczyk♦+ Sachi Yokose♦+ Anonymous♦ Jenny C. Yu♦ Anonymous♦ Jovian Yu Anonymous♦+ Z Anonymous♦ Brent M. Zajaczkowski♦ Ang Zheng♦ ♦Denotes Brown Annual Fund donor. + Denotes fve or more consecutive years of giving to the Brown Annual Fund. CLASS OF 2007 CLASS OF 2007 Impact this year Brown Annual Fund 2016-2017 class gift $134,293 Long-term investment Class comprehensive giving since last reunion $617,831 Class of 2007, 5th Reunion CLASS OF 2007 Impact this year Brown Annual Fund 2016-2017 class gift CLASS OF 2007 $134,293 Reunion Committees 10th REUNION GIFT COMMITTEE REUNION PARTICIPATION REUNION ACTIVITIES COMMITTEE COMMITTEE Tyler Gafney '07, Co-Chair Scott Nelson '07 Lauren Anderson '07 Lauren Anderson '07, Co-Chair Robby Klaber '07, Co-Chair Erik Peterson '07 Swathi Bojedla '07 Mia Levi '07, Co-Chair Deena Klaber '07, Co-Chair Drew Rifkin '07 John S. Butler '07 Isaac Gross '07 Reid Brewer '07 AJ Issenman '07 Liz Muscarella '07 Lee Chu '07 Sophie Rifkin '07 Jill Javier '07 Jade Palomino '07 Michael Gladstone '07 Karen Tai '07 Karen Kwei '07 Robbie Greenglass '07 Nicholas Wall '07 Aerin Lim '07 Yohan Minaya '07 Philip T.
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