The Internet of Federated Things (IoFT)
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RAED KONTAR | NAICHEN SHI | XUBO YUE | SEOKHYUN CHUNG | EUNSHIN BYON | MOSHARAF CHOWDHURY | JUDY JIN | WISSAM KONTAR | NEDA MASOUD | MAHER | NOUEIHED | CHINEDUM E. OKWUDIRE | GARVESH RASKUTTI | ROMESH SAIGAL | KARANDEEP SINGH | YE ZHISHENG | R. Saigal | M. Chowdhury | G. Raskutti | R. Kontar | Naichen Shi | Xubo Yue | Seokhyun Chung | E. Byon | Judy Jin | Wissam Kontar | Neda Masoud | Maher | Noueihed | C. Okwudire | Karandeep Singh | Ye Zhisheng | Mosharaf Chowdhury | Garvesh Raskutti | Mosharaf Chowdhury | Mosharaf Chowdhury
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