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Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang
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Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Dec 18, 2015

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Page 1: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Sporadic Server Scheduling in Linux

Theory vs. Practice

Mark Stanovich

Theodore Baker

Andy Wang

Page 2: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Real-Time Scheduling Theory

Analysis techniques to design a system to meet timing constraints

Schedulability analysis

– Workload models

– Processor models

– Scheduling algorithms

Page 3: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Real-Time Scheduling Theory

Analysis techniques to design a system to meet timing constraints

Schedulability analysis

– Workload models

– Processor models

– Scheduling algorithms

Page 4: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

timePeriod = T Computation time

WCET = C

Deadline = D

Task

jobs (j1, j2, j3, …)

Release time 4

Task = {T, C, D}

Periodic Task

Page 5: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Periodic Task

sched_setscheduler(SCHED_FIFO)

clock_nanosleep()

Page 6: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Periodic Task

Assumptions WCET is reliable Arrivals are periodic

Not realistic for most tasks

Page 7: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Polling Server

time

time

Job arrivals

Initialbudget

Replenishment period

Page 8: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Polling Server

Type of aperiodic server CPU time no worse than an equivalent

periodic task Can be modeled as a periodic task

WCET = Initial Budget Period = Replenishment Period

Budget consumed as CPU time is used CPU time forfeited if not used

Replenish budget every period

Page 9: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Polling Server

Good Bounds CPU time Analyzable workload Simplicity

Can be better Faster response time if budget is not forfeited

Page 10: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Sporadic Server

time

time

Job arrivals

Initialbudget

Replenishment period

replenishments

Page 11: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Sporadic Server

Originally proposed by Sprunt et. al. Parameters

– Initial budget

– Replenishment period Bounds CPU interference for other tasks Fits into the periodic task workload model Better avg. response time than polling server

Page 12: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Sporadic Server

Scheduling algorithm for fixed-task-priority systems

Can be used in UNIX priority model SCHED_SPORADIC is a version of SS

defined in POSIX definition

Page 13: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Implementation

Linux 2.6.38 Softirq threading patch ported from earlier RT

patch Sporadic server implementation

Uniprocessor

Page 14: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Sporadic Server Performance

Metrics Interference for lower priority tasks Average response time

Page 15: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

An experiment

Sends UDP packet withcurrent timestamp

Receives UDP packets

Calculate response time based on arrival at UDP layer

Measure CPU time for 10 second burst

A B

Page 16: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Measuring CPU Time

Regher's “hourglass” technique Constantly read time stamp counter

– Detect preemptions by larger gaps

– Sum execution chunks Hourglass thread lower than SS thread

– Measures interference from SS thread

Page 17: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Measuring CPU Time

Network receive thread Sporadic and polling server

Budget = 1 msec Period = 10 msec

SCHED_FIFO Hourglass thread

SCHED_FIFO Lower priority than network receive thread

Page 18: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

CPU Utilization

Page 19: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Response Time

Page 20: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Interference

SS budget limited to CPU demand Additional overheads lower priority tasks

– Context switch time

– Cache eviction and reloading Not in theoretical workload model Guarantees of theory require interference to

be included in the analysis

Page 21: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Polling Server

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time

= aperiodic job CPU time

= aperiodic job arrival

timebudget CS+SS 2

Page 22: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Sporadic Server

22

time

= aperiodic job CPU time

= aperiodic job arrival

= replenishment period

max_repl2 timebudget CS+SS

Page 23: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Over Provisioning

All context switch time may not be used

– e.g., one replenishment per period Account for CS time on-line

– Charge SS for each preemption

Page 24: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

CPU Utilization

Page 25: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Response Time

Page 26: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Response Time

Page 27: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Analysis Light load

– Sporadic Server

• Low response time

– Polling Server

• High response time Heavy load

– Sporadic Server

• High response time

• Dropped packets

– Polling Server

• Low response time

• No dropped packets

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Page 28: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Can we get the best of both?

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Sporadic ServerLight loads

Polling ServerHeavy loads

Page 29: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Hybrid Server

How to switch

– Ensure bounded interference

– SS with 1 replenishment is same as polling server

– Coalesce replenishments• Push replenishments further into the future

Switching point

– Server has work but no budget

Page 30: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Sporadic Server

time

Page 31: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Sporadic Server

31

time

Page 32: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Response Time

Page 33: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

CPU Utilization

Page 34: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Switching

Immediate coalescing may be too extreme CPU time could be used for better response time

Gradual approach Coalesce a few replenishments

Page 35: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Sporadic Server

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time

Page 36: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Sporadic Server

36

time

Page 37: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Sporadic Server

37

time

Page 38: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Response Time

Page 39: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

CPU Utilization

Page 40: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Conclusion

Theoretical analysis provides solid guarantees Implementation must match abstract models

Additional interference terms need to be considered

SS can fit into the theoretical analysis

Page 41: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Deferrable Server

Page 42: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Deferrable Server

Bandwidth Preserving Allow server to retain budget

Periodically replenish budget WCET != Budget

Page 43: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Response Time

Page 44: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

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Replenishment Policy

replenishment period

replenishment

initial budget

time

arrival time(work available for server)

Page 45: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

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Bandwidth Preservation

replenishment

initial budget

time

arrival time(work available for server)

replenishment period

Page 46: Sporadic Server Scheduling in Linux Theory vs. Practice Mark Stanovich Theodore Baker Andy Wang.

Sporadic Server

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time