Scaling Science: Optimizing Scientific Investment with Machine Learning and Network Science
發布時間 :2019-09-26  閱讀次數 :3768

報告時間:2019年10月8日(星期二)❎,10:00~11:30

報告地點🤽🏽:閔行校區生物藥學樓3-105會議室

聯系人:許平

報告人:James Woodward Weis

 

 

 

 

簡介:

James W. Weis is a research affiliate of the MIT Media Lab and a doctoral candidate in the MIT Computational and Systems Biology program. James has published peer-reviewed work in areas as diverse as synthetic biology, computational chemistry, machine learning, and technology transfer, been featured by news outlets from the USA to Brazil, and has given numerous invited lectures internationally. James was also the founder of Nest.Bio Labs, a Founding Partner at Nest.Bio Ventures, Founder of the MIT Alumni Life Science Angels of Boston, Founding President of the MIT Biotech Group, and a quantitative trader in New York City.

 

報告摘要:

From Göbekli Tepe to the World Wide Web, the story of civilization is the story of collaboration—the goal-oriented organization of resources. However, while the quantity, speed, complexity, and economic importance of the scientific enterprise have grown exponentially in recent decades, our core resource allocation frameworks have failed to scale accordingly. The application of modern machine learning methods on the history of science could close this gap—and thus dramatically improve the efficiency of the hundreds of billions of dollars that are deployed to support research and development annually. In this talk, James will discuss projects that he is pioneering within the MIT Media Lab. By collecting, structuring, and computing on over 5 billion data points, we can gain insight into the features that predict highly-impactful technologies, propose ideas for collaborations, and—via the application of portfolio theory—suggest impact-optimized funding strategies.

 

EON体育4平台专业提供🔍:EON体育4平台EON体育4EON体育4登录等服务,提供最新官网平台、地址、注册、登陆、登录、入口、全站、网站、网页、网址、娱乐、手机版、app、下载、欧洲杯、欧冠、nba、世界杯、英超等,界面美观优质完美,安全稳定,服务一流📊👨🏼‍💼,EON体育4平台欢迎您。 EON体育4平台官網xml地圖