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Reliability-Driven
Dynamic Binding
via Feedback Control
A. Filieri, C. Ghezzi, A. Leva, M. Maggio
Motivation




 Running System


                  2
Motivation

Usage profile




                Running System


                                 2
Motivation

Usage profile                     Network




                Running System


                                           2
Motivation

Usage profile                     Network




                Running System

                                 3rd parties
                                               2
Motivation

Usage profile                     Network




                Running System

QoS goals                        3rd parties
                                               2
Motivation

Usage profile                     Network




                Running System

QoS goals                        3rd parties
                                               2
Motivation

Usage profile                     Network
                 Deal with
            continuous changes
                Running System

QoS goals                        3rd parties
                                               2
SOA

Login                 Shipping   CheckOut



Search                            Logout


 Buy

       [Buy more]

                                            3
Adaptation via dynamic
       binding

Login                     Shipping         CheckOut



Search                                      Logout
                    UPS              DHL

 Buy

       [Buy more]

                                                      4
Goal




       5
Goal


Make the system continuously
 provide desired reliability




                               5
Goal
             Make the system continuously
              provide desired reliability

i.e. the probability of successfully accomplishing
the assigned task




                                                     5
Goal
             Make the system continuously
              provide desired reliability

i.e. the probability of successfully accomplishing
the assigned task

                           = ¯

                                                     5
Goal
             Make the system continuously
              provide desired reliability

i.e. the probability of successfully accomplishing
the assigned task

                           = ¯
            ¯
                                                     5
Goal
             Make the system continuously
              provide desired reliability

i.e. the probability of successfully accomplishing
the assigned task

                           = ¯
            ¯                              max ( )
                                                     5
State of the art

      Shipping




UPS              DHL




                               6
State of the art

                       • Heuristics
      Shipping




UPS              DHL
                       • Optimization


                                        6
State of the art

                       • Heuristics
      Shipping          Fast, but no guarantees


UPS              DHL
                       • Optimization
                        Best decision, but slow


                                              6
Our proposal

Exploit established control   theory to get
efficient, effective, and scalable
            dynamic selection




                                              7
What’s the model


w
     S*




                       8
What’s the model

             S1

w
     S*

             S2




                       8
What’s the model

             S1        S

w
     S*

             S2        F




                           8
What’s the model

                  r1
             S1               S

w                      1-r2
     S*
                       1-r1
             S2               F
                  r2



                                  8
What’s the model

                     r1
                S1               S
          p
w                         1-r2
     S*
                          1-r1
          1-p
                S2               F
                     r2



                                     8
What’s the model

                           r1(k)
                      S1                S
              p(k)
w(k)                               1-r2(k)
        S*
                                   1-r1(k)
             1-p(k)
                      S2                F
                           r2(k)



                                             9
What’s the model

                                  r1(k)
                             S1                S
                     p(k)
  w(k)                                    1-r2(k)
            S*
                                          1-r1(k)
                    1-p(k)
                             S2                F
                                  r2(k)



Sampling time: Ts                                   9
What’s the model

                             n1(k)
                                     r1(k)
                                S1                S
          n*(k)      p(k)
  w(k)                                       1-r2(k)
            S*
                             n2(k)           1-r1(k)
                    1-p(k)
                                S2                F
                                     r2(k)



Sampling time: Ts                                      9
What’s the model

                               n1(k) , R1
                                            r1(k)
                                  S1                     S
          n*(k), R*    p(k)
  w(k)                                              1-r2(k)
             S*
                               n2(k) , R2           1-r1(k)
                      1-p(k)
                                  S2                     F
                                            r2(k)



Sampling time: Ts                                             9
What’s the model

                               n1(k) , R1
                                            r1(k)
                                  S1                     S
          n*(k), R*    p(k)
  w(k)                                              1-r2(k)
             S*
                               n2(k) , R2           1-r1(k)
                      1-p(k)
                                  S2                     F
                                            r2(k)



Sampling time: Ts                                             9
What’s the model

                               n1(k) , R1              nS(k)
                                            r1(k)
                                  S1                     S
          n*(k), R*    p(k)
  w(k)                                              1-r2(k)
             S*
                               n2(k) , R2           1-r1(k)
                                                        nF(k)
                      1-p(k)
                                  S2                     F
                                            r2(k)



Sampling time: Ts                                               9
What’s the model

                             n1(k) R1
                                 ,                 nS(k)
                                         r1(k)
                                S1                    S
         n*(k) R*
             ,       p(k)
  w(k)                                           1-r2(k)
            S*
                             n2(k), R2              nF(k)
                                                 1-r1(k)
                    1-p(k)
                                S2                    F
                                         r2(k)



Sampling time: Ts                                           9
What’s the model

                               n1(k) , R1              nS(k)
                                            r1(k)
                                  S1                     S
          n*(k), R*    p(k)
  w(k)                                              1-r2(k)
             S*
                               n2(k) , R2           1-r1(k)
                                                        nF(k)
                      1-p(k)
                                  S2                     F
                                            r2(k)



Sampling time: Ts                                               9
What’s the model

                               n1(k) , R1              nS(k)
                                            r1(k)
                                  S1                     S
          n*(k), R*    p(k)
  w(k)                                              1-r2(k)
             S*
                               n2(k) , R2           1-r1(k)
                                                        nF(k)
                      1-p(k)      S2                     F
                                            r2(k)



Sampling time: Ts                                               9
Global picture
                               S1
                         p
w
           S*
                         1-p
                               S2
       p        n1,n2,
                nS,nF

     Controller

                                    10
Controller
Reliability of the system:


                             +




                                 11
Controller
Reliability of the system:


                             +
Controller’s goal:




                                 11
Controller
Reliability of the system:


                             +
Controller’s goal:

                                 = ¯
                       +

                                       11
Controller
Reliability of the system:


                             +
Controller’s goal:

            min(                 ¯ )
                             +

                                       11
Controller
Reliability of the system:


                             +
Controller’s goal:

            min(                 ¯ )
                             +

Controller’s output:
                                       11
How to design the
  controller?




                    12
How to design the
        controller?
The system has to follow its set point




                                         12
How to design the
        controller?
The system has to follow its set point

The system is not linear




                                         12
How to design the
        controller?
The system has to follow its set point

The system is not linear

What are the disturbances of the process?


                                            12
How to design the
         controller?
 The system has to follow its set point

 The system is not linear


What are the disturbances of the process?

                                            12
Disturbances




               13
Disturbances
1.0


0.8


0.6


0.4


0.2                  Fluctuation
 0
      0   5     10    15           20   25   30   35
                           Time step




                                                       13
Disturbances
1.0


0.8


0.6


0.4


0.2                                                            Smooth
 0
        0                     5                      10        15           20   25   30   35
                                                                    Time step
      1.0


      0.8


      0.6


      0.4


      0.2
                Fluctuation
       0
            0   5   10   15           20   25   30        35
                              Time step


                                                                                                14
Disturbances
1.0


0.8


0.6


0.4


0.2                                                                 Sharp
 0
        0                     5                      10        15           20   25                 30                      35
                                                                    Time step
      1.0                                                                        1.0


      0.8                                                                        0.8


      0.6                                                                        0.6


      0.4


      0.2
                Fluctuation                                                      0.4


                                                                                 0.2
                                                                                               Smooth
       0                                                                          0
            0   5   10   15           20   25   30        35                           0   5   10   15           20   25   30    35
                              Time step                                                                  Time step


                                                                                                                                      15
Fluctuation




              16
Fluctuation
Equilibrium n = (n, p, ¯)
            ¯    ¯ ¯ r




                            16
Fluctuation
Equilibrium n = (n, p, ¯)
            ¯    ¯ ¯ r


Linearizing the system around the equilibrium:




                                                 16
Fluctuation
Equilibrium n = (n, p, ¯)
            ¯    ¯ ¯ r


Linearizing the system around the equilibrium:
                                     S1
         w
                                     S2



                                                 16
Fluctuation
Equilibrium n = (n, p, ¯)
            ¯    ¯ ¯ r


Linearizing the system around the equilibrium:
                                     S1
         w
                                     S2

     Standard PI controller
                                                 16
Smooth and sharp
          changes
Auto-tuner: decide the configuration of the PI
     to cope with the given equilibrium




                                                17
Smooth and sharp
          changes
Auto-tuner: decide the configuration of the PI
     to cope with the given equilibrium

     Trade-off between responsiveness
        and overshooting avoidance



                                                17
Smooth and sharp
          changes
Auto-tuner: decide the configuration of the PI
     to cope with the given equilibrium

     Trade-off between responsiveness
        and overshooting avoidance

     Limitation: the goal has to be feasible
                                                17
Multiple alternatives




                        18
Multiple alternatives
       C0

            p   1-p




                        18
Multiple alternatives
             C0

                  p   1-p




   C0                   C0

        p   1-p              p   1-p




                                       18
Multiple alternatives
                       C0

                            p   1-p              Level 1
                                                 Ts
Multirate
controller
             C0                   C0

                  p   1-p              p   1-p   Level 2
                                                 Ts/2

                                                           18
Example
          C0

               p   1-p




C0                   C0

     p   1-p              p   1-p




                                    19
Example
          C0

               p   1-p




C0                   C0

     p   1-p              p   1-p




.5        .7             .6   .95   19
Example
                     C0

                          p   1-p



Goal: .9

           C0                   C0

                p   1-p              p   1-p




           .5        .7             .6   .95   19
Example
                         C0

                              p   1-p



Goal: .9

               C0                   C0
    =      .
                    p   1-p              p   1-p




               .5        .7             .6   .95   19
Example
                         C0

                              p   1-p



Goal: .9

               C0                   C0
    =      .                                       = .   .
                    p   1-p              p   1-p




               .5        .7             .6   .95             19
Example
                         C0
                                             =     .
                              p   1-p



Goal: .9

               C0                   C0
    =      .                                           = .   .
                    p   1-p              p   1-p




               .5        .7             .6   .95                 19
Validation

• Matlab simulation
• Java stand-alone
• J2EE with Spring and AOP



                             20
Validation




             21
Conclusions
Effective
Efficient
Scalable
Formally grounded




                     22
Conclusions
Effective
Efficient
Scalable
Formally grounded

Trade-off reliability/performance
Improve AT
Best tree balancing
Other quantitative properties
                                    22
Try it @Home


    http://filieri.dei.polimi.it/publications/2012-seams/




Partially funded by the European Commission, Programme IDEAS-ERC, Project 227977-SMScom
                                                                                          23
Control Equations




{                   24
Control Equations




{
n( ) =   n(     )     r(     )
         +P(        ) · r(       ) + w(   )

r( ) =   min{tm , n( )}




                                              24
Control Equations




{
n( ) =    n(     )     r(           )
          +P(        ) · r(             ) + w(       )

r( ) =    min{tm , n( )}


                     ( )        (          )
( )=
         ( )    (          )+       ( )          (       )


                                                             24
Control Equations




{
n( ) =    n(      )     r(           )
          +P(         ) · r(             ) + w(       )

r( ) =    min{tm , n( )}


                      ( )        (          )
( )=
         ( )     (          )+       ( )          (       )


               Set point: ¯
                                                              24
Fluctuation




              25
Fluctuation
Equilibrium   n = (n, p, ¯)
              ¯    ¯ ¯ r




                              25
Fluctuation
Equilibrium   n = (n, p, ¯)
              ¯    ¯ ¯ r



                  n( )   =    A n(     )+
Linearized                    B p(      ) + B r(   )
  system          y( )   =    C n( )




                                                       25
Fluctuation
Equilibrium   n = (n, p, ¯)
              ¯    ¯ ¯ r



                  n( )   =    A n(     )+
Linearized                    B p(      ) + B r(   )
  system          y( )   =    C n( )



Z-transform    ( )=
                                                       25
Controller




             26
Controller

Error   ( )=¯   ( )




                      26
Controller

Error          ( )=¯   ( )



Standard PI
         ( )   =   (   )+ (     )· (   )
         ( )   =   ( )+ · ( )



                                           26

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