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Resource Selector Chuang Liu
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What do we want to do? A smart Resource Selector App R S Resource requirement
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What do we want to do? App R S These Resources seem fit your requirement best
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Goal A Resource Selector for general purpose Matching between application’s requirement and a set of resources Adaptability to dynamic status of distributed environment Support ownership of resource Support performance model of application The interface between application and RS should be simple
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RS--Structure Resourc e Selector GRI S GIIS MDS Ap p RS MatchMaker Requirement Resource A subset of resource App
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Challenges How to specify resource and request and how to match request with resource. Consistency of data in RS and system status. How to choose N resources from M available resources. (N <=M)
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Challenges How to specify the request and resource and how to match the request with resource Consistency of data in RS and system status. How to choose N resources from M available resources. (N <=M)
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ClassAd— Mechanism to specify resources and request The classad mechanism is a language for expressing and evaluating attribute A classad is a set of named expressions Each named expression is called an attribute Expression similar to those found in C/C++
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ClassAd : example(resource) [ OpSys=“LINUX”; Name= “trapezius.cs.uchicago.edu”; LoadAvg= 0.03; Friends = (“foster”, “dave”); Untrusted = (“evil”, “rival”); Constraints= !member(other.Owner, Untrusted) && (LoadAvg < 0.3); ]
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ClassAd : example(request) [ Owner=“chliu”; Requirements= other.LoadAvg < 0.3 && other.opSys=“LINUX”; Rank = 1/other.LoadAvg; ]
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Challenges How to specify the resource and request and how to match the request with resource. Consistency of data in RS and system status. How to choose N resources from M available resources. (N <=M)
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Consistency Several threads in RS update information about system status based TTL value. –Update information about available resource by access GIIS – Update information about status of every resource by access GRIS or GIIS Tradeoff between Performance and Consistency
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Challenges How to specify the resource and request and how to match the request with resource. Consistency of data in RS and system status. How to choose N resources from M available resources which fit application’s requirement best. (N <=M)
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Resource Selection How to select N resource from M available resources efficiently. How to judge which one is best among several matched results
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Resource Selection How to select N resource from M available resources efficiently. How to judge which one is best among several matched results
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Criteria to judge the desirability of resource Performance model –F(resource Info, application info) –[ minCPUSpeed > 10 MIPS – minMemSize > 100 MB – Rank= minCPUSpeed * NumOfResource –] –Embed a program or function call in Classad ? Classad don’t support function call in expression.
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Resource Selection How to Select N resources from M available resources How to judge which one is best among several matched results
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Bilateral match- Clique Organize all available resources into several cliques. Classads for resource Classads for clique Classads for requirement Match maker
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Clique- How to organize clique Methods to organize clique –Manually –Automatically –Pros: Easy and useful –Cons: Not flexibility
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Clique- Naive Naive method –For example: Resource: { a, b, c} Cliques {a}, {b}, {c}, {a, b}, {b,c}, {a,c}, {a, b, c} –Cons The number of clique is 2 to N
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Gang Match Gang Matching 1 N Classads for resource Classads for requirement Match maker
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Gang match- Greedy Algorithm Greedy Algorithm –Clique, candidate = null – Match the requirement with every resource –Choose resource with highest ranking as the first number of clique –For(;;) { – If (clique match requirement) and (performance of application increase) – Candidate=clique – Match the requirement with resource which is not in clique – Add node with highest ranking in the left nodes to clique – Else – Return Candidate –}
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Gang match- Greedy Algorithm Pros: –High performance –Give pretty good optimal result to loosely coupled application Cons: –Locally optimal choice does not always lead to globally optimal solution
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Gang match- Port and docking Ports and docking [ Ports = { [ Label = Host1; Requirements= MemorySize > 17.2M; Constraint = Host1.Arch == "INTEL" && Host1.OpSys == "LINUX"; Rank = Host1.MIPS ], [ Label = Host2; Requirements= MemoryReqs > 18 M; Constraint = Host2.Arch == "INTEL" && Host2.OpSys == "LINUX" && Host1.Subnet == Host2.Subnet Rank = Host2.KFlops ] Rank = 1 * Host1.MIPS + 8 * Host2.Kflops; } ]
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Gang match- Port and docking Pros: –Internal mechanism provided by Classad –? Available in Classad package Cons: –Match performance –Application need to specify how many nodes it wanted
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Gang match- Dynamic programming Limited resource use –System administrator control how many resources user can use –User’s requirement [ performance > threadhold value && number of resource is as little as possible] –Application’s requirement App specify how many CPU it wanted in request A 4 X 4 X 4 Grid calculation, numOfCPU < 64
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Gang match Dynamic programming Multi-dimensions knapsack problem –Knapsack problem : “There are M items, every item has a Weight and a Value. Try to choose items from these items such that their value is maximum and their total weight is less than W.”
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Gang match- Dynamic programming Pros: –More flexible –Always provide good resource to application –polynomial time algorithm o(N) Cons: –Performance is bad than greedy algorithm
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Project Status A RS is running, but not smart enough. –Two match strateges have been implemented Clique Greedy algorithm
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Open problem How well does RS work? –Performance of application on selected resource –Cost of RS Evaluate different strategy in match making
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Welcome comment and suggestion Thank you!
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