您当前浏览器版本过低,为了不影响您的使用,建议您使用最新的谷歌浏览器、火狐浏览器、 360浏览器,更换浏览器后使用更流畅!(注意!双核浏览器请切换为极速模式)
400-607-9388
  • 卢宗青
  • 所属院校: 北京大学
  • 所属院系: 人工智能研究院
  • 职称: 研究员
  • 导师类型: 博导
  • 招生专业:
  • 研究领域: 主要研究方向为(多智能体)强化学习、移动/边缘智能系统。 研究领域:强化学习,移动/边缘智能系统
个人简介

个人简介

卢宗青现任北京大学计算机系数字媒体研究所研究员(“博雅青年学者”),“决策智能”课题组负责人。他于2014年在新加坡南洋理工大学获得计算机博士学位,2014至2017年在美国宾州州立大学从事博士后研究,并于2017年9月加入北京大学。他在东南大学获得学士和硕士学位。担任NeurIPS、IJCAI、AAMAS、INFOCOM等会议TPC,Nature Machine Intelligence等审稿人。 Current Projects Learning to Cooperate ATOC Biologically, communication is closely related to and probably originated from cooperation. For example, vervet monkeys can make different vocalizations to warn other members of the group about different predators. Similarly, communication can be crucially important in multi-agent reinforcement learning (MARL) for cooperation, especially for the scenarios where a large number of agents work in a collaborative way, such as autonomous vehicles planning, smart grid control, and multi-robot control. MARL can be simply seen as independent reinforcement learning (RL), where each learner treats the other agents as part of its environment. [Read More…] Reinforcement Learning, Multiagent Learning Distributed Video Processing Using Deep Learning on Networked Devices The vast adoption of mobile devices with cameras has greatly assisted in the proliferation of the creation and distribution of videos. Videos, which are a rich source of information, can be exploited for on-demand information retrieval. Deep learning using Convolutional Neural Networks (CNNs) is state of the art computer vision techniques that can be used for information retrieval. However, due to the high computation of video processing using CNNs, it is not feasible or costs too much to process all videos at a centralized entity, considering a large set of videos which is common in this big data epoch. [Read More…] Deep Learning, Edge Computing Past Projects Building Smartphone Networks Smartphones have great networking capabilities. They can access the Internet through cellular networks or wireless access points and communicate with nearby devices using WiFi Direct or Bluetooth. However, these network functions may not work in some circumstances where cellular towers and network infrastructure are destroyed, e.g. in disaster recovery. Nevertheless, communications in such scenarios are very important, and hence, in this research, we aim to build smartphone networks to provide communications without relying on cellular networks, wireless access points, or network infrastructure. [Read More…] Smartphones, Opportunistic Networking, Data Offload Health Sensing Using Mobile Devices Mobile devices, such as smartphones, have become commonplace in health care settings, leading to the development of both platforms and applications for health care, e.g., HealthKit on iOS, where apps can collect users’ health and activity data and the data will be used for medical research to bring more powerful health solutions. However, no data is collected for the research of infectious diseases. Moreover, currently, most health data are collected by manual input or external devices. [Read More…] Infectious Diseases, Human Contact Networks, Respiratory Symptoms, Smartphones Exploring Social Structure for Network Designs The proliferation of mobile devices, such as smartphones and tablets, and the popularity of online social networks that link humans, mobile devices and Internet together, increasingly emphasize the role of human behaviors on network designs. Due to the involvement of human behaviors, social structure provides crucial information of network structure and node organization, and thus can be exploited for network designs, e.g., in online social networks and mobile social networks. [Read More…] Social Networks, Community, Information Diffusion Teaching Undergraduate Courses Algorithms, Spring 2019, Spring 2020 Data Structures and Algorithms, Spring 2018 Introduction to Computer Systems, Fall 2017 Gradudate Courses Deep RL and Multi-Agent RL, Spring 2020 Services Technical Program Committee Member INFOCOM 2016 2019 2020 IJCAI 2020 AAMAS 2020 MM 2017 2018 Session Chair INFOCOM 2016, Session of Online Social Networks Conference Organization INFOCOM 2020 Worksop on Network Intelligence, General Co-Chair ACM TURC 2018, Award Co-Chair Contact Room 523, Yanyuan Building, Peking University, Beijing, 100871, China.

以上内容源自网络公开信息,仅作学术交流之目的,非为商业用途。
如若涉及侵权事宜,请及时与我们联络,我们将即刻修正或删除相关内容。
确定
匹配导师

资料审核中

您的资料已提交成功!

我们的工作人员会将会在3-5个工作日内和您联系

返回