【摘 要】
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The theme of CEISEE 2021 is“Software Engineering Education in the Post-Epidemic Internet Era: New Changes, New Technology, New Economy, and New Features”, especially the blooming of artificial intelligence, big data, cloud computing, block chain, IoT etc.
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The theme of CEISEE 2021 is“Software Engineering Education in the Post-Epidemic Internet Era: New Changes, New Technology, New Economy, and New Features”, especially the blooming of artificial intelligence, big data, cloud computing, block chain, IoT etc. Scope of the conference ranges from knowledge body and curriculum to the industry-university collaboration, to make the symposium more valuable and inspiring to the software engineering education community. The conference aims to explore the new approaches for software engineering education, including new software engineering related specialty programs and curriculum, cross-disciplinary education, cooperation between universities and industry, online education and e-learning, innovative entrepreneurship practice, international cooperation on education, and other relevant topics. The COVID-19 outbreak since 2020 has caused unprecedented difficulties and lost globally but also provided a much bigger opportunity for digital economy. The post-epidemic era has changed the pattern of the world, ushering in the era of Internet + services and Internet + education. With the popularity of the digital economy and the vigorous development of the software industry, enhanced software engineering education is even more needed. The promotion of China\'s characteristic demonstration software schools will further deepen the Chinese development of software engineering education. Through the One-Belt and One-Road initiative, China and the Europe will have a closer cooperation. Through more exchanges, China and the Europecan further strengthen cooperation in software industry, digital economy, IT industry and talent training, to face today\'s environment of new changes, new technology, new economy, and new features.
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