Progress Report 04/27 Simon.

Slides:



Advertisements
Similar presentations
What is Cloud Computing? Massive computing resources, deployed among virtual datacenters, dynamically allocated to specific users and tasks and accessed.
Advertisements

Energy-efficient Task Scheduling in Heterogeneous Environment 2013/10/25.
University of Minnesota Optimizing MapReduce Provisioning in the Cloud Michael Cardosa, Aameek Singh†, Himabindu Pucha†, Abhishek Chandra
SLA-Oriented Resource Provisioning for Cloud Computing
System Center 2012 R2 Overview
Raga Gopalakrishnan University of Colorado at Boulder Adam Wierman (Caltech) Amy R. Ward (USC) Sherwin Doroudi (CMU) Scheduling and Staffing when Servers.
Locality-Aware Dynamic VM Reconfiguration on MapReduce Clouds Jongse Park, Daewoo Lee, Bokyeong Kim, Jaehyuk Huh, Seungryoul Maeng.
1 OSGi and Real Time Kelvin Nilsen, Ph.D., CTO. 2 For “traditional soft real time” with J2ME It would be nice if each OSGi bundle could: –Establish an.
Power Management in Cloud Computing using Green Algorithm -Kushal Mehta COP 6087 University of Central Florida.
Green Cloud Computing Hadi Salimi Distributed Systems Lab, School of Computer Engineering, Iran University of Science and Technology,
Chapter 1: Introduction
Energy Efficient Web Server Cluster Andrew Krioukov, Sara Alspaugh, Laura Keys, David Culler, Randy Katz.
1/16/2008CSCI 315 Operating Systems Design1 Introduction Notice: The slides for this lecture have been largely based on those accompanying the textbook.
By- Jaideep Moses, Ravi Iyer , Ramesh Illikkal and
WORKFLOWS IN CLOUD COMPUTING. CLOUD COMPUTING  Delivering applications or services in on-demand environment  Hundreds of thousands of users / applications.
Energy-aware Hierarchical Scheduling of Applications in Large Scale Data Centers Gaojin Wen, Jue Hong, Chengzhong Xu et al. Center for Cloud Computing,
Copyright © 2010 Platform Computing Corporation. All Rights Reserved.1 The CERN Cloud Computing Project William Lu, Ph.D. Platform Computing.
1 1 Hybrid Cloud Solutions (Private with Public Burst) Accelerate and Orchestrate Enterprise Applications.
 What is OS? What is OS?  What OS does? What OS does?  Structure of Operating System: Structure of Operating System:  Evolution of OS Evolution of.
Cloud Computing Energy efficient cloud computing Keke Chen.
 H.M.BILAL Operating System Concepts.  What is an Operating System?  Mainframe Systems  Desktop Systems  Multiprocessor Systems  Distributed Systems.
Cloud Resource Scheduling for Online and Batch Applications Kick-off meeting.
Challenges towards Elastic Power Management in Internet Data Center.
Abdulelah Alwabel Fault-Aware VM Allocation Mechanism For Desktop Clouds.
Data Placement and Task Scheduling in cloud, Online and Offline 赵青 天津科技大学
Looking Ahead: A New PSU Research Cloud Architecture Chuck Gilbert - Systems Architect and Systems Team Lead Research CI Coordinating Committee Meeting.
BOF: Megajobs Gracie: Grid Resource Virtualization and Customization Infrastructure How to execute hundreds of thousands tasks concurrently on distributed.
Power-Aware Scheduling of Virtual Machines in DVFS-enabled Clusters
CHT Project Progress Report 10/07 Simon. CHT Project Develop a resource management scheduling algorithm for CHT datacenter. ◦ Two types of jobs, interactive/latency-
PART II OPERATING SYSTEMS LECTURE 8 SO TAXONOMY Ştefan Stăncescu 1.
“Trusted Passages”: Meeting Trust Needs of Distributed Applications Mustaque Ahamad, Greg Eisenhauer, Jiantao Kong, Wenke Lee, Bryan Payne and Karsten.
Research on Asymmetric-aware Hypervisor Scheduler Project overview 6/4.
Workload management, virtualisation, clouds & multicore Andrew Lahiff.
Operating Systems.
CS4315A. Berrached:CMS:UHD1 Introduction to Operating Systems Chapter 1.
ECE 692 Power-Aware Computer Systems Final Review Prof. Xiaorui Wang.
Workload Active directory BizTalk server DHCP DNS Dynamics Exchange server Fax server IIS Lync server RDS SharePoint server SQL System Center Visual.
Analysis and Forming of Energy Efficiency and Green IT Metrics Framework for Sonera Helsinki Data Center HDC Matti Pärssinen Thesis supervisor: Prof. Jukka.
ChinaGrid: National Education and Research Infrastructure Hai Jin Huazhong University of Science and Technology
CT101: Computing Systems Introduction to Operating Systems.
Resource Provision for Batch and Interactive Workloads in Data Centers Ting-Wei Chang, Pangfeng Liu Department of Computer Science and Information Engineering,
Progress Report 07/06 Simon.
Md Baitul Al Sadi, Isaac J. Cushman, Lei Chen, Rami J. Haddad
Research Plan for Cloud-Assist VR 2017
Univa Grid Engine Makes Work Management Automatic and Efficient, Accelerates Deployment of Cloud Services with Power of Microsoft Azure MICROSOFT AZURE.
DEPARTMENT OF COMPUTER SCIENCE AND ENGINEERING CLOUD COMPUTING
Introduction to SDNS-Mon
University of Maryland College Park
CHT Project Progress Report
Cloud-Assisted VR.
N4S Gold Nugget Data Sheet
Abstract Major Cloud computing companies have started to integrate frameworks for parallel data processing in their product portfolio, making it easy for.
Celtic-Plus Proposers Day 22 September 2016, İstanbul
Computing Resource Allocation and Scheduling in A Data Center
Cloud-Assisted VR.
Yue Zhang, Nathan Vance, and Dong Wang
Cloud Computing Dr. Sharad Saxena.
Technical Capabilities
Subject Name: Operating System Concepts Subject Number:
Cloud Computing: Concepts
Progress Report 10/05 Simon.
Progress Report 08/31 Simon.
Chapter 1: Introduction
Progress Report 2015/01/28.
Progress Report 2017/02/08.
IIS Progress Report 2016/01/18.
Cloud Resource Scheduling for Online and Batch Applications
Progress Report 11/05.
Information Sciences and Systems Lab
Presentation transcript:

Progress Report 04/27 Simon

Current Projects Energy-efficient scheduling on asymmetric multi-core platform. [CHT] Cloud resource scheduling for online and batch applications. [VR] Live reality fusion. Hierarchical resource management system(in a data center).

Energy-efficient Scheduling on Asymmetric Multi-core Platform Minimize the power consumption while provide sufficient resources for throughput guaranteed jobs. Current status Waiting for the response from ICPP’16. 翔昕 is working on his thesis.

Cloud Resource Scheduling for Online and Batch Applications Develop a resource management framework for private cloud. Dynamically adjust the resource allocation in order to meet the SLA of applications. Current status Working on the final report. 佑隆 is working on building the experimental environment and his thesis.

Live Reality Fusion Fuse multiple live 360’ videos into one virtual reality. Short-term target: fuse the 360’ video of 106 and 107 in IIS building. Current status 禎佑 is working on 360’ video stitching with 祖儀, assistant of Dr. Wang.

Hierarchical Resource Management System Motivation The current designs of resource allocator do not cooperate with the scheduler. Goal Design a hierarchical resource management system that integrates the resource allocator and scheduler. Improve the resource utilization and energy- efficiency of servers in a data center.

Crowdsourcing Resource Allocator Inspired by the video clip: https://www.youtube.com/watch?v=X24omb N09_k Procedures: Design a game with the same mechanisms as a resource allocator in a data center. Collect the traces with high scores and analyze these traces. Big data, machine learning, deep learning … Design new allocation methods.

Interface 332 A B C A B B B A A C C

Discussion