Scheduling Time Constrained Communication in Linear Networks

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Scheduling Time Constrained Communication in Linear Networks Micah Adler, Arnold L. Rosenberg, Ramesh K. Sitaraman and Walter Unger

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Scheduling Time Constrained Communication in Linear Networks. Micah Adler, Arnold L. Rosenberg, Ramesh K. Sitaraman and Walter Unger. The Problem – A Formal Definition. The underlying graph is a linear array. - PowerPoint PPT Presentation

Transcript of Scheduling Time Constrained Communication in Linear Networks

Page 1: Scheduling Time Constrained Communication in Linear Networks

Scheduling Time Constrained Communication in Linear

Networks

Micah Adler, Arnold L. Rosenberg, Ramesh K. Sitaraman and

Walter Unger

Page 2: Scheduling Time Constrained Communication in Linear Networks

The Problem – A Formal Definition

The underlying graph is a linear array. The problem consists of a set packets,

each with a source node + destination node has a release time + deadline.

The objective is to maximize the number of packets delivered in time.

Page 3: Scheduling Time Constrained Communication in Linear Networks

This Problem vs. the Former One

Each packet has a source+destination, release time+deadline

The objective is to deliver all packets; a schedule is feasible if it does so.

– A schedule either succeeds or fails

The objective is to maximize the number of delivered packets

Each packet has a source+destination and a deadline.

– Single release time

Page 4: Scheduling Time Constrained Communication in Linear Networks

Some More Formal Definitions

Formally, a massage is represented by a quadruple .

Its span is defined to be – The distance between source to dest.

Its slack is defined to be – The number of steps the message may

“rest”.

m)()( ,,, d

mr

mmm ttds

mmm sd

mr

md

ms

m ttt )()()(

Page 5: Scheduling Time Constrained Communication in Linear Networks

A Geometric View of the Problem

For a set of messages M and a linear array with n nodes, let

Each row represents a “time-instance”

Each column represents a node of the linear array

10 and 0|, nvtvtM n

Page 6: Scheduling Time Constrained Communication in Linear Networks

A Geometric View of the Problem(Cont)

A massage is represented by a parallelogram.

Its left vertical side lies between rows

within column Its right vertical side lies

between rows

within column

md

mr

m tt )()( ,

ms

)()( , dmm

rm tt

md

Page 7: Scheduling Time Constrained Communication in Linear Networks

A Geometric View of the Problem(Cont)

Some possible paths for the massages.– Recall: each

massage is represented by a parallelogram

What is the different between the green paths and the blue paths?

Page 8: Scheduling Time Constrained Communication in Linear Networks

Buffer Vs. Bufferless Routing

In the Buffered model messages may be buffered in transmit.

In the Bufferless they may not.

What does a Buffered solution look like? And a Bufferless one?

Page 9: Scheduling Time Constrained Communication in Linear Networks

The Bufferless Algorithm - Preliminaries

A scan-line of is the relevant segment of the function x-y=c, for some relevant c.

In what follows, assume these scan- lines are ordered from right to left.

nM

Page 10: Scheduling Time Constrained Communication in Linear Networks

The Bufferless Algorithm Preliminaries (cont)

A massage (parall.) m is relevant to a scan-line if:– A path has not been

assigned to m, yet.– The intersection

between m to is not empty.

– The segment of relevant to m has not been assigned yet.

il

il

il

Page 11: Scheduling Time Constrained Communication in Linear Networks

The Bufferless Algorithm – BFL

For each scan-line , from left to right:– Scan it from bottom to top; as long as there

are parallelograms relevant to assign the relevant segment of to the parall. with the lowest end-point among the relevant parallelograms.

• Note that this is an offline algorithm.

il

ilil

Page 12: Scheduling Time Constrained Communication in Linear Networks

The Bufferless Algorithm – an Operation Example.

Page 13: Scheduling Time Constrained Communication in Linear Networks

The Bufferless Algorithm – an Operation Example.

Page 14: Scheduling Time Constrained Communication in Linear Networks

The Bufferless Algorithm – an Operation Example.

Page 15: Scheduling Time Constrained Communication in Linear Networks

The Bufferless Algorithm – an Operation Example.

Page 16: Scheduling Time Constrained Communication in Linear Networks

The Bufferless Algorithm – an Operation Example.

Page 17: Scheduling Time Constrained Communication in Linear Networks

The Bufferless Algorithm – an Operation Example.

Page 18: Scheduling Time Constrained Communication in Linear Networks

BFL is Nearly Optimal

Theorem: for every set M of massages |OPTBL(M)| 2 • |BFL(M)|

Proof: we will prove that a 1:1 mapping

exists, and the Theorem will follow.

)BFL()BFL(\)OPT(1:1

MMM

Page 19: Scheduling Time Constrained Communication in Linear Networks

BFL is Nearly Optimal –the Proof

Consider a massage– Let pm be the segment assigned to it under

OPT.• The right corner of a segment assigned to a

massage must be in pm. (why?) – (If there is more than one such massage, choose

one arbitrarily).

• Map m’ to m.

As OPT produce a valid schedule, the mapping is indeed 1:1 (why?)

)BFL(\)OPT( MMm

)BFL(' Mm

Page 20: Scheduling Time Constrained Communication in Linear Networks

Buffered vs. Bufferless Scheduling

Theorem: If all massages in the set M have the same span or the same release time then

|OPTB(M)| 2 • |OPTBL(M)|

Theorem: If all massages in the set M have the same slack then

|OPTB(M)| 3 • |OPTBL(M)|

Page 21: Scheduling Time Constrained Communication in Linear Networks

Buffered vs. Bufferless Scheduling

Theorem: for any message set M |OPTB(M)| 4 • (log(M) +1) • |OPTBL(M)|– When

)( max)( , )( max)(

||),(),(1 min)(

^)(

^)(

^^)(

MMMtMt

MMMtM

ss

s

Page 22: Scheduling Time Constrained Communication in Linear Networks

The Buffered Algorithm

The Buffered algorithm, BUF, mimics the bufferless algorithm, BFL, and achieves the same performances. Thus we have:

|OPTB(M)| = ((log(M) ) • |OPTBL(M)|)

– And in the cases mentioned above

|OPTB(M)| = ( |OPTBL(M)|)

– So, what do we need the buffers for?

Page 23: Scheduling Time Constrained Communication in Linear Networks

The Buffered algorithm (cont)

The buffers are used to convert the offline algorithm BFL to an – Distributed

• Only the source node of a massage m receives information about m.

– Online• The information about m is received only at time .

– Local• All routing decisions made by a node are derived only by

information the node received.

algorithm, BUF.

)(rmt

Page 24: Scheduling Time Constrained Communication in Linear Networks

The Buffered algorithm (cont)

Preliminaries: for a massage m let lbuf[m]

(lbfl[m] ) be the scan line in which m reaches

its destination. The invariant: for any message set M,

for every lbuf[m] =lbfl[m] .– Yet, the algorithm is distributed, online and local.

What obstacles must the algorithm overcome?

Mm

Page 25: Scheduling Time Constrained Communication in Linear Networks

Possible problems of the Buffered Algorithm

Premature Preemptive

Page 26: Scheduling Time Constrained Communication in Linear Networks

The Buffered Algorithm, BUF, Preliminaries

Fact: for node v at time t there is a single relevant scan-line, lv-t.

Each node v maintain a list of relevant packets in time t, Ev[v-t].– Can solve the premature problem.– What about the preemptive problem?

Let MRE[v-t] be the endpoint closest (from the left) to node v on lv-t .

Page 27: Scheduling Time Constrained Communication in Linear Networks

The Buffered Algorithm, BUF.

At time t each node v forwards to node v+1 along scan line lv-t

i. The information MRE[v-t].

ii. A massage from Ev[v-t] with the nearest destination of any massage in Ev[v-t] whose source node is MRE[v-t].

• (of course, only if such a massage exists).

Page 28: Scheduling Time Constrained Communication in Linear Networks

The Buffered Algorithm – an Operation Example.

Page 29: Scheduling Time Constrained Communication in Linear Networks

The Buffered Algorithm – an Operation Example.

Page 30: Scheduling Time Constrained Communication in Linear Networks

The Buffered Algorithm – an Operation Example.

Page 31: Scheduling Time Constrained Communication in Linear Networks

The Buffered Algorithm – an Operation Example.

Page 32: Scheduling Time Constrained Communication in Linear Networks

The Buffered Algorithm – an Operation Example.

Page 33: Scheduling Time Constrained Communication in Linear Networks

The Buffered Algorithm – an Operation Example.

Page 34: Scheduling Time Constrained Communication in Linear Networks

The Buffered Algorithm – an Operation Example.

Page 35: Scheduling Time Constrained Communication in Linear Networks

The Buffered Algorithm – an Operation Example.

Page 36: Scheduling Time Constrained Communication in Linear Networks

The Buffered Algorithm – an Operation Example.

Page 37: Scheduling Time Constrained Communication in Linear Networks

The Buffered Algorithm – an Operation Example.

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BUF Compared With BFL

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Questions?