Difference between revisions of "Resource:Paper Carnival 2019"

From MobiNetS
Jump to: navigation, search
Line 49: Line 49:
** Joint Online Edge Caching and Load Balancing for Mobile Data Offloading in 5G Networks, ICDCS’19
** Joint Online Edge Caching and Load Balancing for Mobile Data Offloading in 5G Networks, ICDCS’19
====Offloading (2)====
====Offloading (2)====
* 10:35-11:30, Offloading in Fog & D2D, [[Member:Yunpeng_Han|Yunpeng Han]]
** D2D Offloading for Statistical QoS Provisionings Over 5G Multimedia Mobile Wireless Networks, INFOCOM’19
** Fog-based Data Offloading in Urban IoT Scenarios, INFOCOM’19
====Federated learning====
====Federated learning====
* 14:00-15:30, Federated learning, [[Member:Yuhong_Jiang|Yuhong Jiang]]
** Federated Learning over Wireless Networks: Optimization Model Design and Analysis, INFOCOM’19
** A Collaborative Learning Based Approach for Parameter Configuration of Cellular Networks, INFOCOM’19
** DÏoT: A Federated Self-learning Anomaly Detection System for IoT, ICDCS’19
====VR-Streaming====
====VR-Streaming====
====Instant delivery====
* 15:35-16:35, VR Streaming, [[Member:Jingwei_Li|Jingwei Li]]
** Pano: Optimizing 360 Video Streaming with a Better Understanding of Quality Perception, SigComm’19
** DRL360: 360-degree Video Streaming with Deep Reinforcement Learning, INFOCOM’19
** Beyond QoE: Diversity Adaption in Video Streaming at the Edge, ICDCS’19
====Path programming====
* 16:40-17:40, Path programming, [[Member:Wenjie_Huang|Wenjie Huang]]
** Route Prediction for Instant Delivery, Proc. of the ACM
** Experience on urban pick-up scheduling
 
===20190923===
Mobile and wireless for IoT.
====Mobile services====
* 9:30-10:30, VeMo: Enabling Transparent Vehicular Mobility Modeling at Individual Levels with Full Penetration, MobiCom’19,  [[Member:Anqi_Yang|Anqi Yang]]
* 10:30-11:30, On Optimal Neighbor Discovery, SigComm’19, [[Member:Silin_Feng|Silin Feng]]
====System level support for IoT====
* 14:00-15:00, CapeVM: A Safe and Fast Virtual Machine for Resource-Constrained Internet-of- Things Devices, SenSys’18, [[Member:Changsheng_Liu|Changsheng Liu]]
* 15:00-16:00, A Millimeter Wave Network for Billions of Things, SigComm’19, [[Member:Jiwei_Mo|Jiwei Mo]]
====Tutorial (3)====
* 16:20-17:20, Low-power IoT programming with TinyOS/TelosB testbed, [[Member:Minghang_Yang|Minghang Yang]]
* 17:20-18:00, Review and idea discussion
====Dinner====
* 18:30-20:30, TBD

Revision as of 22:05, 16 September 2019

This page shows the first seminar in the 19-20 semester.

20190921

Edge and LoRa!

Opening

  • 9:00-9:30, From students to researchers – Producing knowledge in the latest topics!, Zhiwei Zhao

Edge (1)

  • 9: 30-10:30, Service placement, Chang Shu
    • Joint Service Placement and Request Routing in Multi-cell Mobile Edge Computing Networks, INFOCOM'19
    • Service Placement with Provable Guarantees in Heterogeneous Edge Computing Systems, INFOCOM'19
    • Joint Placement and Allocation of Virtual Network Functions with Budget and Capacity Constraints, INFOCOM'19
    • Service Placement and Request Scheduling for Data-intensive Applications in Edge Clouds, INFOCOM'19
    • Winning at the Starting Line: Joint Network Selection and Service Placement for Mobile Edge Computing, INFOCOM'19
    • Adaptive User-managed Service Placement for Mobile Edge Computing: An Online Learning Approach, INFOCOM'19
    • Adaptive Interference-Aware VNF Placement for Service-Customized 5G Network Slices, INFOCOM'19
    • Deep Reinforcement Learning Based VNF Management in Geo-distributed Edge Computing, ICDCS’19

Edge (2)

  • 10:30-11:00, System&Protocols, Chang Shu
    • Offloading Distributed Applications onto SmartNICs using iPipe, SigComm’19
    • Dynamic Heterogeneity-Aware Coded Cooperative Computation at the Edge, ICNP’18
    • Nomad: An Efficient Consensus Approach for Latency-Sensitive Edge-Cloud Applications, INFOCOM’19
  • 11:00-11:30, Edge-based Apps, Chang Shu
    • Hetero-Edge: Orchestration of Real-time Vision Applications on Heterogeneous Edge Clouds, INFOCOM’19
    • Edge Assisted Real-time Object Detection for Mobile Augmented Reality, MobiCom’19
    • MARVEL: Enabling Mobile Augmented Reality with Low Energy and Low Latency, SenSys’18
    • DARE: Dynamic Adaptive Mobile Augmented Reality with Edge Computing, ICNP’18

Tutorial (1)

  • 11:30-12:00, Simulation and experiments for edge computing, Yunpeng Han

LoRa (1)

  • 14:00-15:00, Measurements in LoRa, Wenliang Mao
    • Challenge: Unlicensed LPWANs Are Not Yet the Path to Ubiquitous Connectivity, MobiCom’19
    • Known and unknown facts of LoRa: Experiences from a large-scale measurement study, ToN’19
    • LoRaWAN: Evaluation of link-and system-level performance, IoTJ’18
    • Understanding the limits of LoRaWAN, ComMag’17
    • Low power wide area network analysis: Can LoRa scale? WCL’17
  • 15:05-16:05, LoRa protocols, Wenliang Mao
    • LongShoT: Long-Range Synchronization of Time, IPSN’19
    • Automated Estimation of Link Quality for LoRa: A Remote Sensing Approach, IPSN’19
    • Integration of LoRaWAN and 4G/5G for the Industrial Internet of Things, ComMag’18

Tutorial (2)

  • 16:10-16:50, LoRa programming with Arduino, Xuan Yang
  • 16:50-17:10, Review and discussions

20190922

Offloaded and distributed!

Offloading (1)

  • 9:30-10:30, Offloading in Edge, Yunpeng Han
    • Joint Offloading Decision and Resource Allocation with Uncertain Task Computing Requirement, INFOCOM’19
    • Joint Online Edge Caching and Load Balancing for Mobile Data Offloading in 5G Networks, ICDCS’19

Offloading (2)

  • 10:35-11:30, Offloading in Fog & D2D, Yunpeng Han
    • D2D Offloading for Statistical QoS Provisionings Over 5G Multimedia Mobile Wireless Networks, INFOCOM’19
    • Fog-based Data Offloading in Urban IoT Scenarios, INFOCOM’19

Federated learning

  • 14:00-15:30, Federated learning, Yuhong Jiang
    • Federated Learning over Wireless Networks: Optimization Model Design and Analysis, INFOCOM’19
    • A Collaborative Learning Based Approach for Parameter Configuration of Cellular Networks, INFOCOM’19
    • DÏoT: A Federated Self-learning Anomaly Detection System for IoT, ICDCS’19

VR-Streaming

  • 15:35-16:35, VR Streaming, Jingwei Li
    • Pano: Optimizing 360 Video Streaming with a Better Understanding of Quality Perception, SigComm’19
    • DRL360: 360-degree Video Streaming with Deep Reinforcement Learning, INFOCOM’19
    • Beyond QoE: Diversity Adaption in Video Streaming at the Edge, ICDCS’19

Path programming

  • 16:40-17:40, Path programming, Wenjie Huang
    • Route Prediction for Instant Delivery, Proc. of the ACM
    • Experience on urban pick-up scheduling

20190923

Mobile and wireless for IoT.

Mobile services

  • 9:30-10:30, VeMo: Enabling Transparent Vehicular Mobility Modeling at Individual Levels with Full Penetration, MobiCom’19, Anqi Yang
  • 10:30-11:30, On Optimal Neighbor Discovery, SigComm’19, Silin Feng

System level support for IoT

  • 14:00-15:00, CapeVM: A Safe and Fast Virtual Machine for Resource-Constrained Internet-of- Things Devices, SenSys’18, Changsheng Liu
  • 15:00-16:00, A Millimeter Wave Network for Billions of Things, SigComm’19, Jiwei Mo

Tutorial (3)

  • 16:20-17:20, Low-power IoT programming with TinyOS/TelosB testbed, Minghang Yang
  • 17:20-18:00, Review and idea discussion

Dinner

  • 18:30-20:30, TBD