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Surname Given Homefac Homedept Grandtotal Abarbanel-Uemurataro Surname Given HomeFac HomeDept GrandTotal Abarbanel-UemuraTaro GEST 7 Abbas Ali GENIE CSIGUA 72.39 Abbas Sadiq GENIE CSIGUA 52.66 Abbes Chahreddine SSOC DVMOUA 10 Abbott Kevin SSOC PSYOUA 24 Abbott Caleb ARTS THEAUA 0.33 Abdallah Sara SSAN ACTPNUA 2.41 Abdennur Victoria ARTS ILSAUA 191.09 Abdesselam Aziz GENIE CSIGUA 117.78 Abdul-Majid Sawsan GENIE ELGGUA 14.98 Abdulnour Joseph SSAN ACTPNUA 3 Abdulridha Alaa GENIE CVGGUA 39.57 Abou-Hsab Georges ARTS LLMAUA 28.24 Abtahi Yasmine EDU EDUTEUA 39.06 Achab Karim ARTS ILSAUA 74.33 Acharya Ram SSOC ECOOUA 34 Adesina Opeyemi GENIE CSIGUA 3 Adlington Tara SSAN SINFNUA 8 Ado Abdoulkadre GEST 8 Afonso Carla SSAN SINFNUA 1.22 Afshar Zanjani Kaveh SSOC APIOUA 5 Agbaglah Gbemeho Gilou GENIE MCGGUA 1 Aggor-Boateng Adolphine SSOC SOCOUA 99 Aguer Céline SCIEN BCHSUA 1 Ahluwalia Kyle ARTS THEAUA 14 Ahmad Shamilah SSAN SINFNUA 4 Ahmed Mohamed GENIE ELGGUA 13.99 Ahola-Sidaway Janice EDU EDUDEUA 6 Ait Hammou Abdou GEST 21.5 Aizu Yoriko ARTS LLMAUA 67.19 Akhigbe Okhaide GEST 9.5 Akl Joyce ARTS LLMAUA 15.47 Al Hassan Lina ARTS ILSAUA 2.92 Alainachi Imad GENIE CVGGUA 1 Alamgir-Arif Rizwana SSOC ECOOUA 3 Albert Anne-Andrée SSAN SINFNUA 3.8 Alekseevskaia Mariia SSOC SOCOUA 3 Alencar Dos SantosVito Assis GENIE CVGGUA 3 Al-Fattal Rouba SSOC POLOUA 12 Al-Hasoo Basam ARTS LLMAUA 3.93 Alja'Afreh Mohammad GENIE CSIGUA 3 Al-Jarrah Ahmad GENIE MCGGUA 6 Allain Rhéal ARTS ILSAUA 17.32 Almansour Husham GENIE CVGGUA 1 Almaskut Ahmed SSAN ACTPNUA 16 Al-Mulla Zaid GEST 6 Alphonse Jean Roger EDU EDUFEUA 19.66 Alqawasmeh Yousef SCIEN MATSUA 3 Alshtaiwi Ma'Moun ARTS ILOBAUA 4.84 Altenmueller Laura ARTS MUSAUA 2.92 Alvarez HernandezAnalays ARTS ARVAUA 2 Alvaro Sam SSOC CRMOUA 160.14 Alves de Oliveira Thiago GENIE CSIGUA 4.66 Alvi Saba EDU EDUTEUA 28.22 Alwabari Sawsan ARTS LINAUA 1 Amedzro St-HilaireWalter SSOC MDGOUA 24 Amengay Abdelkarim SSOC POLOUA 4 Amery Zainab SSOC SOCOUA 14 Amin Muhamed ShiwanARTS HISAUA 11.2 Anderson Mark ARTS ILSAUA 48.5 Andishan Hamid ARTS PHIAUA 3 Andrews Ellen SSAN ORANUA 0.15 Angers Luc EDU EDUFEUA 11 Anghel Radu SSOC ECOOUA 15 Anstee Cameron ARTS ENGAUA 12 Antonova Slavka ARTS CMNAUA 4 Aoun Germain GEST MBAGTUA 4 Apedome Kouami Seli GEST MBAGTUA 34.23 Apollon Garick GEST MBAGTUA 79.47 Apperley Kim Yang-Ping SCIEN CHMSUA 3 Aqallal Alex SSOC ECOOUA 71.5 Arbach Geraldine ARTS ILSAUA 297.84 Arbour Nicole SCIEN BIOSUA 1 Arbuthnott Devin SCIEN BIOSUA 1 Archibald Matthew GEST MBAGTUA 96.66 Argo Claire SSAN REANUA 0.02 Argue Trevor ARTS MUSAUA 0.38 Arif Faisal SSOC ECOOUA 17 Armstrong John ARTS MUSAUA 18.92 Arsenault Florian EDU EDUFEUA 17 Ashlock Richard Issac ARTS MUSAUA 3.54 Asif Furqan SSOC DVMOUA 5 Astaraky Davood GEST 25 Astwood Laura ARTS THEAUA 1 Atala Garcia Lili ARTS TRAAUA 1 Atherton Maureen EDU EDUTEUA 15 Atkins Hazel ARTS ENGAUA 57 Attwood Tyler SSOC POLOUA 96.07 Atytalla John ARTS PHIAUA 6 Aubé Sylvain SSAN ACTPNUA 3.32 Aubert Jean-François GEST MBAGTUA 87.23 Aubie Geneviève SSAN SINFNUA 14 Auclair Paul ARTS THEAUA 1 Aucoin-MckenziePauline SSOC SOCOUA 14 Audet Richard SSAN PHTNUA 18.15 Audi Joseph GEST MBAGTUA 66.5 Ausman Tasha-Ann EDU 2 Avey John ARTS MUSAUA 21.23 Avidar Noémie ARTS THEAUA 0.5 Avila Francisca SSAN ACTPNUA 3.3 Awad Mark SSAN SINFNUA 4 Ayande Alpha GEST 10 Ba Haroon Hussein SSAN ORANUA 0.03 Baba Rahim SSOC SOCOUA 92 Babashov Vusal GEST 1 Baczkowska Magdalena SSOC SVSOUA 6 Bagheri Kevin GENIE MCGGUA 13 Bahmannia Mitra Sadat ARTS ILSAUA 39.35 Bahrani Sepideh GEST 3 Bahri Moujib GEST 1 Bailey Glen GEST 2.5 Bailey Elaine ARTS ENGAUA 73.5 Baker Scott GENIE CVGGUA 4 Baker Jennifer ARTS ENGAUA 21 Baker Stéphanie SSOC PSYOUA 7 Baldwin Betsey ARTS HISAUA 43 Balsawer Veena EDU EDUDEUA 0.53 Banihashemi Bahman GENIE CVGGUA 3 Bano Nafisa GENIE MCGGUA 30 Banyongen Elie ARTS CMNAUA 42 Baptiste Françoise SSAN ERGNUA 1 Barber Leslie-Anne GEST 12 Barbocz Judit ARTS ILSAUA 21.72 Barclay Janice EDU EDUTEUA 1 Barker Shauna ARTS MUSAUA 47.3 Barker Bryce SSOC PSYOUA 3 Barkman Heather ARTS CLSRAUA 6 Barnat Ons ARTS ARTAUA 4.83 Barnes John SSAN ACTPNUA 88 Barnett Calla SSOC DVMOUA 1 Bar-On Santor Gefen ARTS ENGAUA 71.77 Baroud Jamilee EDU EDUFEUA 0.5 Barsive Isabelle ARTS CMNAUA 83 Bartosova Lucie ARTS TRAAUA 16.15 Basak Ajoy SSAN EISSNUA 13.51 Bastien Suzanne GENIE ELGGUA 3 Bataineh Hana SSOC ECOOUA 3 Bauman-Buffone Cheryl EDU EDUTEUA 6 Baymout Mohamed GEST MBAGTUA 66.39 Bazinet Geneviève ARTS MUSAUA 48.15 Beamish Nikola SSAN SINFNUA 14 Beauchamp Christopher SSOC PSYOUA 6 Beauclair Nicolas ARTS CDNAUA 3 Beaudin Pierre EDU EDUFEUA 3 Beaudin Francine EDU EDUFEUA 6 Beaudoin Alice-Lynn SSAN SINFNUA 10 Beaudry Simon SSOC PSYOUA 51.76 Beaulieu François SSAN ACTPNUA 94.24 Beaulieu Guy SCIEN MATSUA 54 Beauregard Yves SSAN ORANUA 37.6 Beauregard Devin SSOC POLOUA 18 Beausoleil Guy ARTS THEAUA 3 Bebbington Howard SSOC CRMOUA 19 Becke Peter GEST MBAETUA 5 Beckwith Paul ARTS GEGAUA 15 Bégin-Galarneau Marie-Ève SSOC PSYOUA 2.3 Begley Michael EDU EDUDEUA 54 Béguet Véronique SSOC SOCOUA 39 Behringer Ronald SSOC POLOUA 10 Bélanger SarrazinRoxanne ARTS CLAAUA 3 Belda Carol ARTS ILSAUA 228.45 Beldjehem Mokhtar GENIE CSIGUA 32.27 Bellavance Rene-Etienne ARTS ILSAUA 203.72 Belle-Isle Luc EDU EDUDEUA 14 Bellemare Alex ARTS FRAAUA 3 Bellerive André GENIE MCGGUA 6 Belzile Karina SSAN NUTNUA 21 Ben Soltane Sonia SSOC SVSOUA 3 Bénard Michèle SSOC PSYOUA 108 Bencherif Adib SSOC APIOUA 4 Benoit Laurent ARTS CMNAUA 31 Benoit Caroline SSAN SINFNUA 26.98 Benson Rebecca ARTS THEAUA 6 Bentley Daniel SSOC PSYOUA 53 Bentoumi Rachid SCIEN MATSUA 23 Berard Jason SSOC PSYOUA 3 Bergen Jenn EDU EDUTEUA 8 Bergeron Sofia-Marie ARTS MUSAUA 0.77 Bergeron Christian SSOC SOCOUA 27.66 Bergevin-TheriaultFrancis SSAN REANUA 0.66 Bergquist Robert GEST MBAGTUA 13 Beritognolo Gustavo ARTS LINAUA 18 Bernal Rodriguez Alejandra ARTS LLMAUA 9.36 Bernier Emilie SSOC POLOUA 41.5 Berrichi Boussad ARTS FRAAUA 29.53 Bertino Julian ARTS MUSAUA 1.53 Bertoli Mauro ARTS MUSAUA 9.85 Bertrand Danny ARTS HISAUA 14 Best Marlene SSOC PSYOUA 13.8 Bhola Rajiv ARTS CLAAUA 42 Biabanimilani Omid SSOC ECHOUA 8 Biard Kathleen SSOC PSYOUA 21.5 Bien-Aimé Dawn SSAN SINFNUA 129.85 Bigras Jacynthe SSAN ORANUA 9.19 Bigras Sophie SSAN SINFNUA 2.55 Bilayi-Biakana Clemonell Lord BaronatSCIEN MATSUA 4 Bilgen Baris ARTS TRAAUA 8 Bilodeau Annik ARTS LLMAUA 15.23 Binet Jonathan SSOC SVSOUA 14.28 Birioukov Anton EDU EDUTEUA 6 Birkus Andras GEST 1 Birt Paul ARTS LINAUA 1 Bissada Kirsti SSAN EISSNUA 8 Blab Danielle SSOC POLOUA 9 Blais-Rochette Camille SSOC PSYOUA 0.05 Blondin Denis SSAN ACTPNUA 2.83 Bloom Laura SSAN SINFNUA 10 Boaye Belle Alvine GENIE CSIGUA 3 Boco Jean-Clotaire ARTS CMNAUA 21 Bogui Maomra ARTS CMNAUA 21 Boily Céline ARTS ILSAUA 110.52 Boily Patrick SCIEN MATSUA 5 Bois Chantal EDU EDUDEUA 89.32 Boisvenu Michèle SSAN ACTPNUA 29.51 Boisvert Christine SSOC PSYOUA 95 Boivin Geneviève ARTS CMNAUA 13 Boivin Guy GEST MBAGTUA 125 Boivin Janele SSOC PSYOUA 2 Boneva Krasimira ARTS ILSAUA 148.03 Boogaart Thomas ARTS HISAUA 95.5 Boonstra Melissa SSAN SINFNUA 6 Boreux Maxime Paul C. ARTS GEGAUA 9 Borland Karen ARTS LLMAUA 62.97 Boroumand Nooshin ARTS ILSAUA 34.46 Bouabdillah Naima SSAN SINFNUA 65.4 Bouchard Daniel ARTS CMNAUA 67 Bouchard Francois GENIE EMPGUA 5.5 Boucher Louise ARTS GEGAUA 37 Boucher Nadia ARTS MUSAUA 1 Boucher Pierre-Alexandre SCIEN PHYSUA 18.98 Boucher Lalonde Veronique SCIEN BIOSUA 4 Boucher-GuèvremontSarah SSOC SVSOUA 1 Bouchoucha Ibtihel SSOC POLOUA 17.5 Boudreau Chantal SSOC SVSOUA 3 Boudreault Genevieve EDU EDUDEUA 2.66 Bougie Karine ARTS FRAAUA 28 Boukacem Dalila ARTS ILSAUA 45.34 Boukhatem Mohamed-Hedi SCIEN PHYSUA 23.75 Boulanger Anne-Marie SCIEN CHMSUA 18 Boulanger Jenna SSOC PSYOUA 10 Boulerice Donat EDU EDUDEUA 264 Bourgeois Huguette ARTS ILSAUA 65.83 Bourgeois Adèle SCIEN MATSUA 4 Bourget Marie-Josée EDU EDUDEUA 233.97 Bourque Annie SSAN ORANUA 16.8 Bowen James GEST MBAGTUA 115 Bowles Anna EDU EDUDEUA 68.5 Boyd Jennifer SSAN ACTPNUA 3.66 Boyer Pierre SSOC SSOOUA 38.26 Bracken-Roche Ciara SSOC CRMOUA 1 Bradley Jamie ARTS ENGAUA 83 Bradley-St-Cyr Ruth ARTS ENGAUA 25.5 Brahim Monia ARTS FRAAUA 14 Bramburger Jason SCIEN MATSUA 3 Brannen Kathleen ARTS LINAUA 40.27 Brasseur Louise EDU EDUDEUA 239.41 Brathwaite-SturgeonGerard GEST MBAGTUA 125.5 Breault André GEST 16 Bredeson Caroline SSAN ORANUA 7.23 Brennan Julie SCIEN BIOSUA 6 Briciu Bianca SSOC POLOUA 3 Brien Christie ARTS LINAUA 18 Brigham Andrew ARTS PHIAUA 1 Brisson Maxime ARTS MUSAUA 7.14 Brooks Lauren SSAN ACTPNUA 0.5 Brophy Carolyn ARTS ILSAUA 105.33 Broughton Jillian ARTS MUSAUA 0.39 Brown Anthony GEST 15.89 Brown Mark ARTS PHIAUA 106 Bruckel-LichtenoeckerAngela ARTS ILSAUA 104.32 Brueder Bénédicte ARTS TRAAUA 12 Bruff Robert ARTS ILSAUA 42.83 Brun del Re Ariane ARTS FRAAUA 4 Brunet Marie-Hélène EDU 13 Bruyère Benoit SSAN ERGNUA 13.21 Buckley Frances EDU EDUDEUA 43.79 Buetti David SSOC SVSOUA 3 Buisson Sylvie SSAN SINFNUA 93.52 Burden Douglas ARTS MUSAUA 44.88 Burgess Caroline ARTS GEGAUA 6 Burgess Sharon SSAN ORANUA 12.91 Burn Nicholas GENIE CHGGUA 40.58 Burton David EDU EDUTEUA 15 Busby Keith SSOC PSYOUA 119 Bush Clarissa SSOC PSYOUA 23 Buss Andreas SSOC SOCOUA 52 Butler Paul GEST 3 Buziak Milena ARTS THEAUA 3 Byer Stacey SSAN SINFNUA 53 Caccamo Emmanuelle ARTS ARVAUA 3 Cadet Elysee-Robert EDU EDUDEUA 56.66 Cadieux Stéphanie ARTS ESIAUA 7 Cadieux Alexandre ARTS THEAUA 12 Camarena CastellanosRicardo ARTS LLMAUA 6.62 Camargo Rafael SCIEN BIOSUA 4 Cameron Barbara SSAN SINFNUA 90.47 Campbell Luc SSAN PHTNUA 1.64 Campbell Elizabeth SSAN SINFNUA 4 Campbell Lindsay SSAN SINFNUA 4 Campion Josée
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