Proposal for the Theme on Big Data. Analytics. Qiang Yang, HKUST Jiannong Cao, PolyU Qi-man Shao, CUHK. May 2015
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1 Proposal for the Theme on Big Data Analytics May 2015 Qiang Yang, HKUST Jiannong Cao, PolyU Qi-man Shao, CUHK
2 Motivation The world's technological per-capita capacity to store information doubled every 40 months As of 2012, 2.5 exabytes ( ) of data/day Relational database management systems and desktop statistics and visualization packages often have difficulty handling big data. Big Data: new driver for digital economy&society Gartner: hundreds of billions of GDP by Intangible factor after labor and capital Data Science: The fourth paradigm 2
3 The Power of Big Data Big Data can bring big values to our life in almost every aspects. Technologically, Big Data is bringing about changes in our lives because it allows diverse and heterogeneous data to be fully integrated and analyzed to help us make decisions. Today, with the Big Data technology, thousands of data from seemingly unrelated areas can help support important decisions. This is the power of Big Data. Areas of Applications Health and Well being Policy making and public opinions Smart cities and more efficient society New online educational models: MOOC and Student-Teacher modeling Robotics and human-robot interaction Much of this power hinges on Research on Analytics 3
4 Hong Kong needs Big Data Research 1. to develop state-of-the-art Big Data platform in research, education and industrial applications, and open it to the Hong Kong society and the world at large, and 2. to make a difference in Smart Cities, Health and Well-being (including supporting aging populations), and modernizing Finance, Education and Logistics in Hong Kong. 4
5 Big Data Analytics Objectives 5
6 Relation to Smart Cities and IoT World economic forum ranking HK s infrastructure: #1 Maintain the lead in IT Infrastructure East Kowloon Project: Energizing Hong Kong via Smart Cities Big Data: IoT provides the infrastructure for collecting the data Smart Cities as important application goal 6
7 Research Objectives Big Data Analytics: data mining and machine learning Large-scale machine learning, data mining and data visualization Big Data Computing: data center support for Analytics Big data collection and transformation, integration and distributed data management and computing Big Data Theory, Privacy&Security issues on Analytics Big data sampling and statistical theory, Big data security and privacy Big Data Science: 4 th Paradigm Analytics for Science and Engineering Big Data and Multi-disciplines (Bio, Chemistry, Engineering, Social) 7
8 Why Hong Kong is Ready for the Theme We have the best researchers in machine learning, data mining, data management, sensor networks, statistics, and multidisciplinary research such as bioinformatics China National 973 Projects on Big Data IEEE Transactions on Big Data: EiC ACM KDD Conferences: PC and Conference Chairs Winner of Big Data related international competitions New industries based on lots of data Financial industry, logistics industry, education sector, government services, etc. We have many potential collaborators and partners Huawei, Tencent, Baidu, Alibaba, Google, Microsoft, etc. 8
9 Data Extraction HKUST CUHK Baptist HSBC Astri Big Data Analytics Workflow Data Integration HKUST HKU City U Alibaba Astri Big Data Computing &Data Management 9 Applications Biology and Genetics Chemistry Physics Government Policies Social Sciences General Health Logistics Finance Business Data Mining & Visualization HKUST CUHK City U Huawei Tencent CUHK HKUST HKU PolyU City U Baptist U
10 Multi-disciplinary Big-data Analytics Objectives: Interdisciplinary, multi-university, multi-team research on heterogeneous scientific and technological big data analytics 10
11 Why Big Data needs Team Work? Big data analytics is necessarily a joint effort by researchers from academic institutions, government and society and industry. The government and industry are sources of Big Data, and providers of problems and challenges, The academic researchers are solution providers. When it comes to package the solutions from university labs to transfer to the real world, universities and industry must work together to build scalable and robust solutions. 11
12 Expected Outcomes New methodologies and solutions for Big Data research New applications that impact the society and industry in Hong Kong and beyond, and New digital economies created based on big data New educational programs for students; cultivating leaders for the Big Data society and industry. 12
13 Breakthroughs Expected New algorithms, methodologies, systems and applications in Big Data New knowledge from Big data applications in Science, Engineering, and Societal Problems New insights into Big data practices in real world New ways to protect security and privacy of big data relevant to individuals and organizations 13
14 Call for Proposals in Big Data Analytics Foundations in Big Data Analytics Research: developing and studying fundamental theories, algorithms, techniques, methodologies, technologies to address the effectiveness and efficiency issues to enable the applicability of Big Data problems; Innovative Applications in Big Data Analytics: developing techniques, methodologies and technologies of key importance to a Big Data problem that requires the seamless cooperation of domain scientists with big data researchers. 14
15 Benefit for the Hong Kong Society Can Hong Kong transform into a more datadriven society and maintain its leadership globally? How can companies in Hong Kong become more competitive with Big Data technology? Can Data Science in Hong Kong s research fields benefit from strong foundations on big data? Can the government become more efficient with big data driven methodologies in decision making? Can education, finance, logistics and health benefit from the ever increasing data? 15
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