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BỘ GIÁO DỤC VÀ ĐÀO TẠO TRƯỜNG ĐẠI HỌC SƯ PHẠM KỸ THUẬT THÀNH PHỐ HỒ CHÍ MINH LUẬN VĂN THẠC SĨ HOÀNG VŨ GIẢI PHÁP SONG SONG CHO VẤN ĐỀ GOM CỤM METAGENOMIC NGÀNH: KHOA HỌC MÁY TÍNH – 8480101 SKC007257 Tp Hồ Chí Minh, tháng 04/2021 Luan van BỘ GIÁO DỤC VÀ ĐÀO TẠO TRƯỜNG ĐẠI HỌC SƯ PHẠM KỸ THUẬT THÀNH PHỐ HỒ CHÍ MINH LUẬN VĂN THẠC SĨ HOÀNG VŨ GIẢI PHÁP SONG SONG CHO VẤN ĐỀ GOM CỤM TRÌNH TỰ METAGENOMIC NGÀNH: KHOA HỌC MÁY TÍNH - 8480101 Tp Hồ Chí Minh, tháng / 2021 Luan van BỘ GIÁO DỤC VÀ ĐÀO TẠO TRƯỜNG ĐẠI HỌC SƯ PHẠM KỸ THUẬT THÀNH PHỐ HỒ CHÍ MINH LUẬN VĂN THẠC SĨ HOÀNG VŨ GIẢI PHÁP SONG SONG CHO VẤN ĐỀ GOM CỤM TRÌNH TỰ METAGENOMIC NGÀNH: KHOA HỌC MÁY TÍNH – 8480101 Hướng dẫn khoa học: TS LÊ VĂN VINH Tp Hồ Chí Minh, tháng / 2021 Luan van Luan van Luan van Luan van Luan van Luan van Luan van LÝ LỊCH KHOA HỌC I LÝ LỊCH SƠ LƯỢC: Họ & tên: HOÀNG VŨ Giới tính: Nam Ngày, tháng, năm sinh: 26 / / 1983 Nơi sinh: Kiên Giang Quê quán: Thái Bình Dân tộc: Kinh Chỗ riêng địa liên lạc: 2111 ấp Quảng Lộc, xã Quảng Tiến, huyện Trảng Bom, tỉnh Đồng Nai Điện thoại quan: Điện thoại nhà riêng: 0989216882 Fax: E-mail: hvu267@gmail.com II QUÁ TRÌNH ĐÀO TẠO: Đại học: Hệ đào tạo: Chính quy Thời gian đào tạo từ 9/2001 đến 3/2006 Nơi học (trường, thành phố): Đại học Bách Khoa Tp Hồ Chí Minh Ngành học: Công nghệ thông tin Tên đồ án, luận án môn thi tốt nghiệp: Luận án: Phần mềm thời khóa biểu cho trường ĐH Bách Khoa Ngày & nơi bảo vệ đồ án, luận án thi tốt nghiệp: 12/2005 – ĐH Bách Khoa TP Hồ Chí Minh Người hướng dẫn: TS Nguyễn Thanh Sơn Thạc sĩ: Hệ đào tạo: Chính quy Thời gian đào tạo từ 10/2019 đến 5/2021 Nơi học (trường, thành phố): Đại học Sư Phạm Kỹ Thuật Tp Hồ Chí Minh Ngành học: Khoa học máy tính Tên luận văn: Giải pháp song song cho vấn đề gom cụm trình tự metagenomic i Luan van TÀI LIỆU THAM KHẢO [1] J Handelsman, et al The New Science of Metagenomics: Revealing the Secrets of Our Microbial Planet Washington (DC): National Academies Press (US); 2007: 12-32 [2] Fiers, Walter, et al Complete nucleotide sequence of bacteriophage MS2 RNA: primary and secondary structure of the replicase gene Nature 260.5551 (1976): 500-507 [3] Sanger, F., Coulson, A R., Friedmann, T., Air, G M., Barrell, B G., Brown, N L., & Smith, M (1978) The nucleotide sequence of bacteriophage φX174 Journal of molecular biology, 125(2), 225-246 [4] Fleischmann RD, Adams MD, White O, Clayton RA, Kirkness EF, et al Whole-genome random sequencing and assembly of Haemophilus influenzae Rd." 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CƠNG TRÌNH CƠNG BỐ Vu Hoang, Vinh Le Van, Hoai Tran Van, Lang Tran Van and Bao Huynh Quang Parallel algorithm for the unsupervised binning of metagenomic sequences ICMLSC 2021, The 5th International Conference on Machine Learning and Soft Computing (ACM Conference Proceedings), Sanya, China, January, 2021 59 Luan van 60 Luan van 61 Luan van 62 Luan van 63 Luan van 64 Luan van 65 Luan van Luan van ... cho nhà nghiên cứu Luan van 1.2 Bài toán gom cụm trình tự metagenomic Bài tốn gom cụm trình tự metagenomic vấn đề quan trọng cần giải phân tích liệu metagenomic Mục tiêu tốn phân chia trình tự. .. THÀNH PHỐ HỒ CHÍ MINH LUẬN VĂN THẠC SĨ HOÀNG VŨ GIẢI PHÁP SONG SONG CHO VẤN ĐỀ GOM CỤM TRÌNH TỰ METAGENOMIC NGÀNH: KHOA HỌC MÁY TÍNH – 8480101 Hướng dẫn khoa học: TS LÊ VĂN VINH Tp Hồ Chí Minh,... Tên luận văn: Giải pháp song song cho vấn đề gom cụm trình tự metagenomic i Luan van Ngày & nơi bảo vệ luận văn: 22/4/2021 – Đại học Sư Phạm Kỹ Thuật Tp Hồ Chí Minh Người hướng dẫn: TS Lê Văn Vinh

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