copy and paste this google map to your website or blog!
Press copy button and paste into your blog or website.
(Please switch to 'HTML' mode when posting into your blog. Examples: WordPress Example, Blogger Example)
China University of Petroleum-Beijing CUP International Cooperation Project Included in the Achievements List of President Xi Jinping’s State Visit to Brazil On November 20, 2024, President Xi Jinping conducted a state visit to Brazil
China University of Petroleum-Beijing - 中国石油大学(北京) CUP is known as the “Cradle of Petroleum Talents” for cultivatingnearly 200,000 excellent professional talents since its founding There are over 16,000 students studying at CUP, including 8,074 full-time undergraduates, 5,945 master students, 1,543 PhD students and 702 international students
College of International Education - 中国石油大学(北京) The College of International Education is a teaching unit engaged in enrollment publicity, teaching management, and student management of international education projects At present, the college has one dean and one vice-dean, with admissions office, integrated office and Students Affairs Office The specific division of labor of each department is as follows College leaders Dean
College of International Education - 中国石油大学(北京) A: All successful applicants that are admitted and did not study their Chinese language at CUP will undergo a Chinese Language test as they report to the university and have to pass it before they can start their studies
China University of Petroleum-Beijing - 中国石油大学(北京) Ultimately, the team “Bai Jing Bu By” from China University of Petroleum-Beijing claimed the highest honor—the “Excellence Cup ” Additionally, 15 teams were awarded national first and second prizes, recognizing their outstanding creativity and engineering acumen
College of International Education - 中国石油大学(北京) Under the umbrella of Globalization, CUP has promoted international exchanges and cooperation that have increased its global stature in higher education Moreover, the university maintains multi-level, multi-disciplinary, multi-channel exchanges and collaboration with 196 universities and companies, including the United States, France, Britain
Physics-informed graph neural network for predicting fluid flow in . . . * Corresponding author E-mail address: xueliang@cup edu cn (L Xue) Peer review under the responsibility of China (Beijing) University of Petroleum reservoirs by discretizing and solving differential equations However, these traditional methods often face a range of chal-lenges and limitations