百家乐怎么玩-澳门百家乐官网娱乐城网址_网上百家乐是不是真的_全讯网888 (中国)·官方网站

Picturing high-dimensional data

Michael Gibb

 

Professor Joe Qin Sizhao
Professor Joe Qin Sizhao

 

Data science tools help us to see more clearly the dimensions of a vast array of fields, from unemployment figures, university rankings, power supplies in urban settings and manufacturing output, to name but a few, according to Professor Joe Qin Sizhao, Dean and Chair Professor of the School of Data Science at City University of Hong Kong (CityU).

Professor Qin was speaking at the latest instalment of the President’s Lecture Series: Excellence in Academia.

“Data analytics bring intelligence and knowledge for predicting and inferring causality,” said Professor Qin, who is also the Director of the Hong Kong Institute for Data Science. “You start with a problem and then you collect the data and look for dynamic features.”

The speaker said he chose this topic “Picturing high-dimensional data” for his talk, which was delivered both online and with a limited audience on campus, because the visualisation aspect of data science possesses extensive applications in a world packed with data.

There are estimated to be around 200 trillion tweets a year, over 52 million pages on Wikipedia, and 79 million academic papers on the Clarivate’s Web of Science, he said. Without visualisation tools, a firm concept of how large these data sets really are is almost unthinkable.

To illustrate this point, Professor Qin played a video that revealed how new ideas cluster, germinate and evolve at certain points in history. The video presented the extent of the academic research on which a seminal paper, in this case Crick and Watson’s on the double helix published in the 1950s, depended; as well as the breadth of later research that has drawn on the initial Crick and Watson breakthrough publication.

In addition, Professor Qin explained how data science tools can reveal the “dark side” of data, i.e. areas of uncertainty in, for example, the development of new technologies, and that they are not only for highlighting the positive “white side” of algorithm-generated data.

Professor Qin concluded that visualisation tools are essential for areas as diverse as business analytics, financial technology, e-commerce, social media analysis, health informatics, engineering systems, and smart city technology. With the exponential growth of big data and the data sciences, the need for such visualisation tools can only grow stronger.

YOU MAY BE INTERESTED

Contact Information

Communications and Institutional Research Office

Back to top
线上百家乐官网玩法| 澳门赌博经历| 百家乐龙虎的投注法| 全讯网999| 投注网| 百家乐官网娱乐送白菜| 百家乐哪里可以玩| 娱乐城注册体验金| 百家乐官网棋牌正式版| 克拉克百家乐试玩| 娱网棋牌官方下载| 聚宝盆百家乐官网游戏| 罗盘24山图| 大发888官方hgx2dafa888gwd| 百家乐官网龙虎斗等| 新2百家乐娱乐城| 百家乐官网怎么会赢| 百家乐体育博彩| bet365备用| 鼎尚百家乐官网的玩法技巧和规则 | 百家乐官网游戏什么时间容易出| 全讯网导航| 安阳百家乐官网赌博| 百家乐官网是否有规律| 大佬百家乐官网的玩法技巧和规则 | 广东百家乐官网网| 缅甸百家乐娱乐场开户注册| 在线百家乐官网| 新梦想百家乐的玩法技巧和规则| 百家乐官网投注平台信誉排名| 澳门百家乐论坛及玩法| 致胜百家乐官网下载| 大发888 制度| 八运24山下卦局| 百家乐官网娱乐城信息| 百家乐庄闲和的概率| 百家乐官网云顶| 香港六合彩报| 百家乐官网博娱乐网赌百家乐官网的玩法技巧和规则 | 诚信真人博彩网站| 百家乐如何取胜|