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Load Balancing in Distributed Systems

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Presentation on theme: "Load Balancing in Distributed Systems"— Presentation transcript:

1 Load Balancing in Distributed Systems
Nalini Venkatasubramanian

2 Global Distributed Systems and Multimedia
Motivation A given computer is overloaded Must decrease load and maintain certain characteristics Scalability Performance Throughput Ideally, this should be done transparently Solution: Load Balancing Global Distributed Systems and Multimedia

3 Introduction to Load Balancing
Distributed resource allocation Can be thought of as “distributed scheduling” Deals with distribution of processes among processors connected by a network Handles issues such as deciding which process should be handled by a given processor Can also be influenced by “distributed placement” Important in data intensive environments and applications Data placement may force process placement Global Distributed Systems and Multimedia

4 Load Balancing Relationships
Load Balancer Manages resources Resource assignment depends on policy or policies in effect Client Requests resources Requests services Global Distributed Systems and Multimedia

5 Load Balancing Overhead
Satisfy client resource access without imposing large amounts of overhead Performance How well resources are managed Efficiency Cost of accessing and using a resource obtained through a load balancer Global Distributed Systems and Multimedia

6 Global Distributed Systems and Multimedia
Load Balancing Issues When to migrate processes or forward requests Which processor should be chosen to handle a given process or request Should processes be moved off a computer How should searching for lightly loaded computer be performed Global Distributed Systems and Multimedia

7 Load Balancing Issues (cont.)
When should load balancing decisions be made What should be taken into account when making the above decisions How should old data be handled Should load balancing data be stored centrally, or in a distributed manner Global Distributed Systems and Multimedia

8 Load Balancing Issues (cont.)
Should computers make decisions together What is the performance/overhead tradeoff incurred by load balancing Prevention of overloading a lightly loaded computer Global Distributed Systems and Multimedia

9 Load Balancing Techniques
Basically two ways to perform load balancing Statically Resource is allocated once Dynamically Resource is allocated and managed (possibly dynamically reallocated) to ensure balanced load Global Distributed Systems and Multimedia

10 Global Distributed Systems and Multimedia
Static Load Balancing Resource allocation is performed once Once resource is allocated it remains allocated (for what duration??) Scheduling decisions are made Deterministically Probabilistically Global Distributed Systems and Multimedia

11 Static Load Balancing – cont’d
Advantages State generally need not be stored Simplifies implementation Less network traffic due to load balancing related messages Disadvantages Poor resource utilization A given resource may be used much more than others Does not adjust to fluctuations in the load Possible for resource to become overloaded Global Distributed Systems and Multimedia

12 Static Load Balancing – cont’d
Example of Static Load Balancing Forwarding processes/requests to a given computer based on dynamically assigned addresses (e.g. via DNS) Web servers (e.g. CNN) UCI host ea.uci.edu is load balanced Global Distributed Systems and Multimedia

13 Dynamic Load Balancing
Attempts to maintain a balanced load by managing resources while a resource is in use May involve the following Process migration Disabling further access to a resource until a later time Adding new resources “on-the-fly” Global Distributed Systems and Multimedia

14 Dynamic Load Balancing Strategies
Distributed versus non-distributed Should load information be stored centrally or across several hosts Simplicity versus overhead and reliability Cooperative versus non-cooperative Should decisions be made by a single load balancer or several Globally managed resources versus locally managed resources Global Distributed Systems and Multimedia

15 Dynamic Load Balancing Strategies - cont’d
Adaptive versus non-adaptive Should previous data effect scheduling decisions Preemptive versus non-preemptive Should a running process be preempted in favor of another process, or for migration to another resource Global Distributed Systems and Multimedia

16 Global Distributed Systems and Multimedia
Case Studies Load Balancing for Web Servers Load Balancing for Parallel Computers Load Balancing for Multimedia Applications Global Distributed Systems and Multimedia

17 Multimedia Applications
Electronic Commerce Video Servers                                                  Global Entertainment Network Web Servers Distance Learning Graphics Processing Tele-medicine Global Distributed Systems and Multimedia Requirements - Availability, Reliability, Quality-of-Service, Cost-effectiveness, Security

18 Multimedia Load Management
Primary focus resource optimization across streams and resource management across servers. Quality of Service continuous delivery requirement minor violations of performance requirements Admission Control - resource reservation/negotiation Media Delivery - Resource scheduling (CPU,Disk) Resource Mgmt. Implies Admission Control Caching, VCR Control, Server Selection, Data Placement Global Distributed Systems and Multimedia

19 Distributed MM Servers
Video Server Topology Partitioned Server Externally Switched Fully Switched Video File Placement Heterogeneous Workload - large/small, hot/cold Online Placement Good placement is important dynamic replication time-consuming, dynamic load-bal complementary Global Distributed Systems and Multimedia

20 Dynamic Load Balancing
Adapts to statistical fluctuations and changing access patterns Dynamic Migration Deals with poor initial placement Replication Dynamic Segment Replication partial replication (quick response, less expensive) Total Replication on-demand vs. predictive Global Distributed Systems and Multimedia

21 Load Management of Distributed MM Servers
Adaptive Scheduling Assigns requests to servers based on demand and load factors. Invokes replication-on-demand, request migration Predictive Placement Invokes dereplication Optimizations Eager Replication Lazy Dereplication Global Distributed Systems and Multimedia

22 A Scalable Video Server Architecture
Distribution Network requests data Distribution Controller Data Source Data Source Data Source Tertiery Storage ... control Global Distributed Systems and Multimedia

23 Architectural View of a Networked MM System
Qos Broker and Load Management System Node Manager Node Manager Node Manager Node Manager ... Local Data Streaming Global Distributed Systems and Multimedia

24 Resources in a Video Server
Client Client Network Processing Module Communication Modules Data Manipulation Modules Storage Modules Global Distributed Systems and Multimedia

25 Load Placement Scenario
Data Source S2 Data Source S1 Storage: 8 objects Bandwidth: 3 requests Storage: 2 objects Bandwidth: 8 requests Access Network ... Clients Global Distributed Systems and Multimedia

26 Characterizing Server Resource Usage
Ability to service a request on a server depends on: resource available characteristics of a request Load factor(LF) for a request: represents how far a server is from request admission threshold. LF (Ri, Sj) = max (Dbi/DBj , Mi/Mj , CPUi/CPUj , Xi/Xj) Global Distributed Systems and Multimedia

27 Global Distributed Systems and Multimedia
Adaptive Scheduling When the broker receives a request Ri for a video object Vi : Consider only data sources that have a copy of Vi. Consider only data sources tha have sufficient resources to support Ri. Chooser server for which LF (Ri, Sj) is a minimum. If no such server exists Reject request. Perform replication-on-demand. Perform request migration. Global Distributed Systems and Multimedia

28 Predictive Data Placement
Determines when, where and how many replicas of a video object. Initiated periodically. Results in an assignment of replicas to data sources. Greedy algorithm that uses revenue generated as a metric. Global Distributed Systems and Multimedia

29 The Greedy Cost Placement Matrix
PM(Vi, Sj) is the maximum revenue that can accrue from allocating Vi to Sj. Greedy heuristic: Map(Vi,Sj) = 1 if PM(Vi,Sj) = a b max(PM(Va,Sb)) Global Distributed Systems and Multimedia

30 Global Distributed Systems and Multimedia
Optimizations To minimize the overhead of replication Eager replication Replication of video object in anticipation Performed when server resources are free Lazy Dereplication Critical nature of storage resources Mark reusable resources, reclaim disk space later If disk blocks are not overwritten, can be reclaimed Global Distributed Systems and Multimedia

31 Global Distributed Systems and Multimedia
Life of a video object Global Distributed Systems and Multimedia

32 Performance Evaluation Policies
Global Distributed Systems and Multimedia

33 Performance Evaluation - Startup Latencies
Global Distributed Systems and Multimedia

34 Performance of the basic configuration
Global Distributed Systems and Multimedia

35 Performance Evaluation - Varying Replication BW
Global Distributed Systems and Multimedia

36 Performance Evaluation Summary
P1: entails high startup latency, requires high storage and replication bandwidth. P2: Unacceptably poor performance. P3: Similar performance to P4 in many cases. At low transfer bandwidths, P4 outperforms P3. P4: Performs well in all cases. Global Distributed Systems and Multimedia


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