Coordination Mechanisms for Unrelated Machine Scheduling Yossi Azar joint work with Kamal Jain Vahab...

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Transcript of Coordination Mechanisms for Unrelated Machine Scheduling Yossi Azar joint work with Kamal Jain Vahab...

Coordination Mechanisms for Unrelated Machine Scheduling

Yossi Azarjoint work with

Kamal JainVahab Mirrokni

Price on Anarchy [KP, RT]

• Selfish users

• User goal: minimize its cost

• Nash Equilibrium (NE)

• System goal (e.g. Social welfare)

• The worst ratio of NE cost to OPT cost

Price of Anarchy Concept

• Not algorithmic

• Only analysis

• What to do if PoA is large

• How to influence the system

Possible Solutions

• Change the system (add tolls, payments)

• Stackelberg strategy = control some users

• Disadvantages: changing the settings, global knowledge

• Challenge: influence within the same setting and locally (distributed)

Coordination Mechanism [CKN]

• Mechanism: local policy (algorithm) that assigns a cost for each strategy of the user

• Advantages: local, same type of cost

• Goal: achieving good NE

• Example: scheduling jobs on machines

Unrelated Machine Scheduling

• m unrelated machines

• n jobs – each owned by different user

• p(i,j) - processing time of job i on machine j

• System goal: minimize completion time

• User goal: minimize its own completion time

• m unrelated machines

• n jobs – each owned by different user

• p(i,j) - processing time of job i on machine j

• System goal: minimize completion time

• User goal: minimize its own completion time

Unrelated Machines Scheduling

Machine A

A

B

A

B? ?

Machine B

Coordination Mechanism for Scheduling

Policy for each machine (algorithm) which

decides how to schedule jobs assigned to it

Each Policy induces NE on jobs

Local Scheduling Policies

A A

Shortest-First Policy Longest-First Policy

B B

A A

Type of Policies

• Local policy – depends on jobs assigned to machine

• Strongly local policy - depends only on processing time of jobs on that machine

• Ordering Policy = IIA (independence of irrelevant alternative)

Challenge

Design policies that results in

good NE (i.e. low PoA)

PoA of Longest First

• Results in poor NE

• The PoA is unbounded even for 2 machines

• The optimum completion time is low

• The completion time of NE is large

Unrelated Machines Scheduling

Machine A

A

B

A

B? ?

Machine B

Equilibrium for Longest First

A

B

A

B

Previous Results

• Identical Machines: constant [CKN]

• Related: constant, log m [CV,ILMS]

• Restricted assignment: log m [ILMS]

• Unrelated Machines: m (IK,DJ,ILMS)

Main Results

Negative Results (strongly local):

• PoA of any strongly local policy-at least

m/2

• In particular, PoA of Shortest-First is of

order m

• Resolve an open question from 1977

(Alg D by Ibarra and Kim)

Main Results

Positive Results (local):

• Local ordering policy with PoA of O(log m)

• Any local ordering policy – at least log m

• Pure Nash + Convergence O(log^2 m)

• More results on convergence …

Lower Bound for Strongly Local Policy

• We start with Shortest-First

• Extend it to arbitrary strongly local

IIA policy

• Shortest-First is interesting by its

own

Shortest-First

• Approx factor known to be at most m

• NE can be computed by shortest-first

greedy algorithm

(Alg D by Ibarra and Kim)

• An open question from 1977

• We show it is at least m/2

Idea of the Proof

• m types of jobs

• Type j can be scheduled on machines j &

j+1

• Processing time of type j on machine j is

low and on machine j+1 is high (ratio is j)

• All jobs on machine j have almost the

same processing time

Example for Shortest-First

?

B

C

A

? ?

Idea of the Proof

• OPT assign all jobs of type j to machine j

• Number of jobs is chosen such that OPT

has the same completion time for all

machines

Optimal Assignment

A

B

C

Idea of the Proof

• In NE about half jobs of type j are on

machine j and half on machine j+1

• Completion time of NE grows linearly in

m

Equilibrium for Shortest-First

?

B

C

A

? ?

Extend to Arbitrary Strongly Local

• Structure is similar to lower bound

for Shortest-First

• Arbitrary ordering function is given

for each machine

• Indices of jobs are chosen to behave

similar to the above example

Efficiency Based Algorithm

• Order jobs on each machine by their

efficiency

• Efficiency of job on machine is:

The ratio between job’s best processing

time to its processing time on this

machine

• PoA of algorithm is O(log m)

Equilibrium Improves

?

B

C

A

? ?

Efficiency Based Algorithm

• Unfortunately – pure NE may not

exist

• Iterative improvement may cycle

• Modified algorithm guarantees

convergence and pure NE with PoA

of O(log^2 m)

Modified Algorithm

• Each machine simulate log m submachines

(by round robin)

• Submachine k of machine j handles jobs

on efficiency between 2^{-k} and 2^{-

k+1}

• Jobs are ordered on submachine by

Shortest-First

• PoA of algorithm is O(log^2 m)

Summary

Coordination Mechanism:

• Influence on the quality of the equilibrium

Unrelated Machines:

• m – lower bound

• Shortest-First is at least m

• Local order by efficiency O(log m) – optimal

• Pure + Convergence O(log^2 m)

Discussion and Open Problems

• Non ordering strategies – get below log m

• Extend to network routing

• Show more effective usage of coordination mechanism