Programming Abstractions for Approximate Computing

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Programming Abstractions for Approximate Computing. Michael Carbin with Sasa Misailovic , Hank Hoffmann , Deokhwan Kim, Stelios Sidiroglou , Martin Rinard MIT. Challenges for Programming. Expression (specifying approximations) Reasoning (verifying resulting program) - PowerPoint PPT Presentation

Transcript of Programming Abstractions for Approximate Computing

Programming Abstractions for Approximate Computing

Michael Carbin

with Sasa Misailovic, Hank Hoffmann, Deokhwan Kim, Stelios Sidiroglou, Martin

Rinard

MIT

Challenges for Programming

• Expression (specifying approximations)

• Reasoning (verifying resulting program)

• Debugging (reproducing failures)

• Deployment (changes in assumptions)

Challenges for Programming

• Expression (specifying approximations)

• Reasoning (verifying resulting program)

• Debugging (reproducing failures)

• Deployment (changes in assumptions)

Fundamental Questions

• Scope• What do we approximate and how?

• Specifications of “Correctness” • What is correctness?

• Reasoning• How do we reason about correctness?

What do we approximate?

• Domains have inherent uncertainty

• Execution time dominated by a fraction of code

Benchmark

Domain LOC LOC (Kernel)

Time in Kernel (%)

sor numerical 173 23 82.30%

blackscholes

finance 494 88 65.11%

dctimage processing

532 62 99.20%

idct 532 93 98.86%

scale 218 88 93.43%

[Misailovic, Carbin, Achour, Qi, Rinard MIT-TR 14]

Approximation Transformations

• Approximate HardwarePCMOS, Palem et al. 2005; Narayanan et al., DATE ’10; Liu et al. ASPLOS ’11; Sampson et al, PLDI ’11; Esmaeilzadeh et al. , ASPLOS ’12, MICRO’ 12

• Function SubstitutionHoffman et al., APLOS ’11; Ansel et al., CGO ’11; Zhu et al., POPL ‘12

• Approximate MemoizationAlvarez et al., IEEE TOC ’05; Chaudhuri et al., FSE ’12; Samadi et al., ASPLOS ’14

• Relaxed Synchronization (Lock Elision)Renganarayana et al., RACES ’12; Rinard, HotPar ‘13; Misailovic, et al., RACES ’12

• Code PerforationRinard, ICS ‘06; Baek et al., PLDI 10; Misailovic et al., ICSE ’10; Sidiroglou et al., FSE ‘11; Misailovic et al., SAS ‘11; Zhu et al., POPL ‘12; Carbin et al. PEPM ’13;

float sum = 0;for (int i = 0; i < n; i += 1) { sum = sum + a[i];} float avg = sum / n;

Example: Loop Perforation

float sum = 0;for (int i = 0; i < n; i += 1) { sum = sum + a[i];} float avg = sum / n;float avg = (sum * 2) / n;

Example: Loop Perforation

i += 2

• Skip iterations (or truncate or random subset)

• Potentially add extrapolations to reduce bias

TraditionalTransformation

.c .c

What is correctness?

ApproximateTransformation

.c .c

What is correctness?

What is correctness?

• Safety: satisfies standard unary assertions (type safety, memory safety, partial functionality)

• Accuracy: program satisfies relational assertions that constrain difference in results

Relational Assertions

• Contribution: program logic and verification system that supports verifying relationships between implementations

• x<o>: value of x in original implementation

• x<a>: value of x in approximate implementation

relate |x<o> - x<a>| / x<o> <= .1;

[Carbin, Kim, Misailovic, Rinard PLDI’12, PEPM ‘13]

float sum = 0;for (int i = 0; i < n; i += 1) { sum = sum + a[i];} float avg = sum / n;float avg = (sum * 2) / n;

Example: Loop Perforation

i += 2

• Worst-case error:

float sum = 0;for (int i = 0; i < n; i += 1) { sum = sum + a[i];} float avg = sum / n;float avg = (sum * 2) / n;

Example: Loop Perforation

i += 2

Novel Safety Verification Concept

• Assume validity of assertions in original program

• Use relations to prove that approximation does not change validity of assertions

• Lower verification complexity than verifying an assertion outright

assert (safe(*p))

p<o> == p<a>

safe(*p<o>)

safe(*p<a>)

∧ ⊨

Specifications and Reasoning

• Worst-case (for all inputs)• Non-interference [Sampson et al., PLDI ‘11]• Assertions [Carbin et al., PLDI ‘12; PEPM ‘13]• Accuracy [Carbin et al., PLDI ‘12]

• Statistical (with some probability)• Assertions [Sampson et al., PLDI ‘14]• Reliability [Carbin, Misailovic, and Rinard,

OOPSLA ‘13]• Expected Error [Zhu, Misailovic et al., POPL

‘13]• Probabilistic Error Bounds [Misailovic et al.,

SAS ‘13]

Questions from Computer Science

Question #1:

“Programmers will never do this.”- Unnamed Systems and PL Researchers

ChallengeR

easo

nin

g

Com

ple

xit

y

Types

Partial Specifications

Full FunctionalCorrectness

Expressivity

ChallengeR

easo

nin

g

Com

ple

xit

y

Types

Partial Specifications

Full FunctionalCorrectness

Expressivity

• Ordering of unary assertions still true (improved by relational verification)

Challenge

Worst-case AccuracyReliability

Probabilistic Accuracy BoundsProbabilistic Assertions

Error DistributionsExpected Error

Reaso

nin

g

Com

ple

xit

y

Expressivity

Performance/Energy Benefit

Assertions

float sum = 0;for (int i = 0; i < n; i += 1) { sum = sum + a[i];} float avg = sum / n;float avg = (sum * 2) / n;

Example: Loop Perforation (Misailovic et al., SAS ‘11)

i += 2

• Worst-case error:

• Probabilistic Error Bound (.95):

float sum = 0;for (int i = 0; i < n; i += 1) { sum = sum + a[i];} float avg = sum / n;float avg = (sum * 2) / n;

Example: Loop Perforation (Misailovic et al., SAS ‘11)

i += 2

Question #2:

“There’s no hope for building approximate hardware.”- Unnamed Computer Architect

Challenge

• Approx. PL community must work with hardware community to collaborate on models (not the PL community’s expertise)

• Approx. hardware community faces major challenge in publishing deep architectural changes: simulation widely panned

• Moving forward may require large joint effort

Question #3:

“I believe your techniques are fundamentally flawed.”- Unnamed Numerical Analyst

Challenge

• Numerical analysts have been wronged• Programming systems have failed to

provide support for making the statements they desire

• Approximate computing community risks repeating work done by numerical analysis• Opportunity for collaboration

• New research opportunities• It’s no longer just about floating-point

Broadly Accessible Motivations• Programming with uncertainty

(uncertain operations and data)

• Programming unrealizable computation (large scale numerical simulations)

• Useful computation from non-digital fabrics(analog, quantum, biological, and human)Opportunity to build reliable and

resilient computing systems built upon

anything

End

Conclusion

• Adoption hinges on tradeoff between expressivity, complexity and benefit

• Opportunity/necessity for tighter integration of PL and hardware communities

Open Challenges and Directions

Problem: benefits (performance/energy) may vary between different types of guarantees

Worst-case Accuracy

Reliability

Probabilistic Accuracy Bounds

Probabilistic Assertions

Error DistributionsExpected AccuracyReaso

nin

g

Com

ple

xit

y

Expressivity

Open Challenges and Directions

Expressivity and Reasoning Complexity

Type Checking

Partial Specifications

Full FunctionalCorrectness

Experimental Results

Benchmark LOC LOC (Kernel) Time in Kernel(%)

sor 23 173 82.30%

blackscholes 88 494 65.11%

dct 62 532 99.20%

idct 93 532 98.86%

scale 88 218 93.43%

Open Challenges Directions

• Traditional Tradeoff

Reasoning Complexity

Performance/Energy

Type Checking

Partial Specifications

Dynamic Analysis

Full FunctionalCorrectness