Improving the Scalability of Data Center Networks with Traffic-aware Virtual Machine Placement Authors:Xiaoqiao Meng, Vasileios Pappas, Li Zhang Presented.

Slides:



Advertisements
Similar presentations
CONFIDENTIAL © 2004 Procket Networks, Inc. All rights reserved. 4-Feb-14 The 21 st Century Intelligent Network Tony Li, Carl DeSousa.
Advertisements

Towards Predictable Datacenter Networks
2  Industry trends and challenges  Windows Server 2012: Beyond virtualization  Complete virtualization platform  Improved scalability and performance.
Scalable Rule Management for Data Centers Masoud Moshref, Minlan Yu, Abhishek Sharma, Ramesh Govindan 4/3/2013.
VCRIB: Virtual Cloud Rule Information Base Masoud Moshref, Minlan Yu, Abhishek Sharma, Ramesh Govindan HotCloud 2012.
Ragib Hasan Johns Hopkins University en Spring 2011 Lecture 11 04/25/2011 Security and Privacy in Cloud Computing.
COMMA: Coordinating the Migration of Multi-tier applications 1 Jie Zheng* T.S Eugene Ng* Kunwadee Sripanidkulchai† Zhaolei Liu* *Rice University, USA †NECTEC,
Scaling Internet Routers Using Optics Producing a 100TB/s Router Ashley Green and Brad Rosen February 16, 2004.
Ashish Gupta, Marcia Zangrilli, Ananth I. Sundararaj, Peter A. Dinda, Bruce B. Lowekamp EECS, Northwestern University Computer Science, College of William.
Hardness of Approximation and Greedy Algorithms for the Adaptation Problem in Virtual Environments Ananth I. Sundararaj, Manan Sanghi, John R. Lange and.
TCOM 540/11 TCOM 540 Session 6. TCOM 540/12 Agenda Review Session 4 and 5 assignments Multicenter local access design.
A Scalable, Commodity Data Center Network Architecture Mohammad Al-Fares, Alexander Loukissas, Amin Vahdat Presented by Gregory Peaker and Tyler Maclean.
Wireless Video Sensor Networks Vijaya S Malla Harish Reddy Kottam Kirankumar Srilanka.
Kick-off meeting 3 October 2012 Patras. Research Team B Communication Networks Laboratory (CNL), Computer Engineering & Informatics Department (CEID),
Datacenter Wide-areaEnterprise LOAD-BALANCER Client Servers.
Bandwidth Measurements for VMs in Cloud Amit Gupta and Rohit Ranchal Ref. Cloud Monitoring Framework by H. Khandelwal, R. Kompella and R. Ramasubramanian.
CSE598C Project: Dynamic virtual server placement Yoojin Hong.
Datacenter Wide-areaEnterprise LOAD-BALANCER Client Servers.
1 Wide Area Network. 2 What is a WAN? A wide area network (WAN ) is a data communications network that covers a relatively broad geographic area and that.
Xiaoqiao Meng, Vasileios Pappas, Li Zhang IBM T.J. Watson Research Center Improving the Scalability of Data Center Networks with Traffic-aware Virtual.
Sharing the Data Center Network Alan Shieh, Srikanth Kandula, Albert Greenberg, Changhoon Kim, Bikas Saha Microsoft Research, Cornell University, Windows.
Simulation of Cloud Environments
Bargaining Towards Maximized Resource Utilization in Video Streaming Datacenters Yuan Feng 1, Baochun Li 1, and Bo Li 2 1 Department of Electrical and.
Algorithms for Provisioning Virtual Private Networks in the Hose Model Source: Sigcomm 2001, to appear in IEEE/ACM Transactions on Networking Author: Amit.
PIC: Practical Internet Coordinates for Distance Estimation Manuel Costa joint work with Miguel Castro, Ant Rowstron, Peter Key Microsoft Research Cambridge.
Network Aware Resource Allocation in Distributed Clouds.
Spiros Papadimitriou Jimeng Sun IBM T.J. Watson Research Center Hawthorne, NY, USA Reporter: Nai-Hui, Ku.
Adaptive software in cloud computing Marin Litoiu York University Canada.
Improving Network I/O Virtualization for Cloud Computing.
Wavelength Assignment in Waveband Switching Networks with Wavelength Conversion Xiaojun Cao; Chunming Qiao; Anand, V. Jikai LI GLOBECOM '04. IEEE Volume.
COMS E Cloud Computing and Data Center Networking Sambit Sahu
Cloud Scale Performance & Diagnosability Comprehensive SDN Core Infrastructure Enhancements vRSS Remote Live Monitoring NIC Teaming Hyper-V Network.
CloudNaaS: A Cloud Networking Platform for Enterprise Applications Theophilus Benson*, Aditya Akella*, Anees Shaikh +, Sambit Sahu + (*University of Wisconsin,
1 Finding Constant From Change: Revisiting Network Performance Aware Optimizations on IaaS Clouds Yifan Gong, Bingsheng He, Dan Li Nanyang Technological.
Joint Power Optimization Through VM Placement and Flow Scheduling in Data Centers DAWEI LI, JIE WU (TEMPLE UNIVERISTY) ZHIYONG LIU, AND FA ZHANG (CHINESE.
LogP Model Motivation BSP Model Limited to BW of Network (g) and Load of PE Requires large load per super steps. Need Better Models for Portable Algorithms.
Resource/Accuracy Tradeoffs in Software-Defined Measurement Masoud Moshref, Minlan Yu, Ramesh Govindan HotSDN’13.
Software Defined Networks for Dynamic Datacenter and Cloud Environments.
Server VirtualizationServer Virtualization Hyper-V 2012.
Optimizing Live Migration of Virtual Machines across Wide Area Networks using Integrated Replication and Scheduling Sumit Kumar Bose, Unisys Scott Brock,
InterConnection Network Topologies to Minimize graph diameter: Low Diameter Regular graphs and Physical Wire Length Constrained networks Nilesh Choudhury.
Surviving Failures in Bandwidth Constrained Datacenters Authors: Peter Bodik Ishai Menache Mosharaf Chowdhury Pradeepkumar Mani David A.Maltz Ion Stoica.
1 Wide Area Network Emulation on the Millennium Bhaskaran Raman Yan Chen Weidong Cui Randy Katz {bhaskar, yanchen, wdc, Millennium.
Authors: Xiaoqiao Meng, Vasileio Pappas and Li Zhang
Optimizing Live Migration of Virtual Machines across Wide Area Networks using Integrated Replication and Scheduling Sumit Kumar Bose, Unisys Scott Brock,
Efficient Resource Provisioning in Compute Clouds via VM Multiplexing
Energy-Efficient Randomized Switching for Maximizing Lifetime in Tree- Based Wireless Sensor Networks Sk Kajal Arefin Imon, Adnan Khan, Mario Di Francesco,
Basil Apostolou & Craig Pringle The why and how of hybrid cloud CLD22 3.
Optimal Relay Placement for Indoor Sensor Networks Cuiyao Xue †, Yanmin Zhu †, Lei Ni †, Minglu Li †, Bo Li ‡ † Shanghai Jiao Tong University ‡ HK University.
HOW TO BUILD A BETTER TESTBED Fabien Hermenier Robert Ricci LESSONS FROM A DECADE OF NETWORK EXPERIMENTS ON EMULAB TridentCom ’
Seminar On Rain Technology
SEMINAR TOPIC ON “RAIN TECHNOLOGY”
A Hierarchical Edge Cloud Architecture for Mobile Computing IEEE INFOCOM 2016 Liang Tong, Yong Li and Wei Gao University of Tennessee – Knoxville 1.
Warehouse Scaled Computers
Chen Qian, Xin Li University of Kentucky
Xin Li, Chen Qian University of Kentucky
Organizations Are Embracing New Opportunities
Hydra: Leveraging Functional Slicing for Efficient Distributed SDN Controllers Yiyang Chang, Ashkan Rezaei, Balajee Vamanan, Jahangir Hasan, Sanjay Rao.
Datacenter Interconnection Network Design
Wide Area Network.
CHAPTER 1 INTRODUCTION:
Bandwidth Measurements for VMs in Cloud
Latent Space Model for Road Networks to Predict Time-Varying Traffic
Topological Ordering Algorithm: Example
Topological Ordering Algorithm: Example
Topological Ordering Algorithm: Example
Microsoft Virtual Academy
Topological Ordering Algorithm: Example
Elmo Muhammad Shahbaz Lalith Suresh, Jennifer Rexford, Nick Feamster,
Towards Predictable Datacenter Networks
Presentation transcript:

Improving the Scalability of Data Center Networks with Traffic-aware Virtual Machine Placement Authors:Xiaoqiao Meng, Vasileios Pappas, Li Zhang Presented By:Manoj Raj Penmetcha

Introduction The paper presents novel approaches to reduce the latencies and increase the efficiency of networks by viewing the placement of VMs within the topology of the datacenter Apart from the standard improvisations on the network routing algorithms and network topology, the paper present approaches to increase the effective bandwidth between VM pairs with high data transfer and reduce the latency between such pairs

Introduction Here it uses a 2 Tier approach Algorithm First it clusters the slots available on the physical machines using the switch distance as the clustering measure and then cluster the VMs using the cost matrix as the clustering measure. Then the algorithm tries to match the clusters first and eventually the members within the matched clusters.

Advantages Approach is toward the placement of the VMs and not towards the scaling of the network hardware. This is useful where the network hardware is not being currently used to the full potential due to bottlenecks. The beneficial topology conditions and other network parameters which would lead to useful application of the optimization problem are also studied.

Advantages Apart from the solution to the optimization problem, the effect of traffic models, topology models such as the Global Traffic Model, Partitioned Traffic Model are also presented.

Disadvantages The paper completely ignore the effect of network related optimization on the result of the optimization of placement of VMs. The min cut algorithm used for clustering the slots available on the physical machines is of high polynomial complexity (O(n^4)), which is not ideal for large datacenters.

Disadvantages It has been proved that the TVMPP has polynomial time solutions only for the global traffic model, but the real traffic model in a datacenter is a hybrid model varying from the global traffic model, appropriate optimizations for a real scenario have not been aptly discussed

Reference Improving the Scalability of Data Center Networks with Traffic-aware Virtual Machine Placement. by Xiaoqiao Meng, Vasileios Pappas, Li Zhang IBM T.J. Watson Research Center 19 Skyline Drive, Hawthorne, NY 10532