so much data

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So Much Data So Much Data Bernard Chazelle Bernard Chazelle Princeton University Princeton University So Little Time So Little Time

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So Much Data. So Little Time. Bernard Chazelle Princeton University. So Many Slides. (before lunch). So Little Time. Bernard Chazelle Princeton University. math. algorithms. experimentation. 2006. computation. - PowerPoint PPT Presentation

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Page 1: So Much Data

So Much DataSo Much DataSo Much DataSo Much Data

Bernard ChazelleBernard Chazelle

Princeton UniversityPrinceton University

Bernard ChazelleBernard Chazelle

Princeton UniversityPrinceton University

So Little TimeSo Little TimeSo Little TimeSo Little Time

Page 2: So Much Data

So Many SlidesSo Many SlidesSo Many SlidesSo Many Slides

Bernard ChazelleBernard Chazelle

Princeton UniversityPrinceton University

Bernard ChazelleBernard Chazelle

Princeton UniversityPrinceton University

So Little Time So Little Time

So Little Time So Little Time

(before lunch)(before lunch) (before lunch)(before lunch)

Page 3: So Much Data

computation

math experimentation

algorithms

Page 4: So Much Data

Computers have two Computers have two problemsproblems

Computers have two Computers have two problemsproblems

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1. They don’t have steering 1. They don’t have steering wheelswheels

1. They don’t have steering 1. They don’t have steering wheelswheels

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2. End of Moore’s Law

party’s over !

party’s over !

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computation

algorithms experimentation

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32x 17

22432

= 544

This is not me

Page 10: So Much Data

FFT

RSA

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Page 12: So Much Data
Page 13: So Much Data

noisy

low entropy

uncertain

unevenly priced

big

Page 14: So Much Data

noisy

low entropy

uncertain

unevenly priced

big

Page 15: So Much Data

Biomedical imaging

Sloan Digital Sky

Survey4 petabytes4 petabytes

(~1MG)(~1MG)4 petabytes4 petabytes

(~1MG)(~1MG)

10 10 petabytes/yrpetabytes/yr

10 10 petabytes/yrpetabytes/yr

150 petabytes/yr150 petabytes/yr150 petabytes/yr150 petabytes/yr

Page 16: So Much Data

Collected works of Micha Sharir

My A(9,9)-th paper

Page 17: So Much Data

massive input

massive input outputoutput

Sublinear Sublinear AlgorithmsAlgorithmsSublinear Sublinear

AlgorithmsAlgorithms

Sample tiny fractionSample tiny fractionSample tiny fractionSample tiny fraction

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Shortest PathsShortest PathsShortest PathsShortest Paths [C-Liu-Magen ’03]

New New YorkYork

New New YorkYork

DelphiDelphiDelphiDelphi

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Ray ShootingRay ShootingRay ShootingRay Shooting

Volume Intersection Point location

Page 20: So Much Data

Approximate MSTApproximate MSTApproximate MSTApproximate MST [C-Rubinfeld-Trevisan ’01]

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Reduces to counting connected componentsReduces to counting connected componentsReduces to counting connected componentsReduces to counting connected components

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EEEE = no. connected components= no. connected components= no. connected components= no. connected components

varvarvarvar << (no. connected components)<< (no. connected components)<< (no. connected components)<< (no. connected components)2222

whp, is a good estimator

of # connected components

Page 23: So Much Data

worst case worst case worst case worst case

input spaceinput spaceinput spaceinput space

average case average case (uniform)(uniform)average case average case (uniform)(uniform)

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worst case worst case worst case worst case

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average case = actuarial view average case = actuarial view average case = actuarial view average case = actuarial view

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“ OK, if you elect NOT to have the surgery, the insurance company offers 6 days and 7 nights in Barbados. “

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arbitrary, unknown random sourcearbitrary, unknown random sourcearbitrary, unknown random sourcearbitrary, unknown random source

Self-Improving Self-Improving AlgorithmsAlgorithms

Self-Improving Self-Improving AlgorithmsAlgorithms

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Yes ! This could be YOU, too !

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E Tk Optimal expected time for random source

time T1

time T2

time T3

time T4

Page 30: So Much Data

Clustering Clustering [ Ailon-C-Liu-Comandur [ Ailon-C-Liu-Comandur ’05 ]’05 ]Clustering Clustering [ Ailon-C-Liu-Comandur [ Ailon-C-Liu-Comandur ’05 ]’05 ]

K-median over Hamming K-median over Hamming cubecubeK-median over Hamming K-median over Hamming cubecube

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minimize sum of distancesminimize sum of distancesminimize sum of distancesminimize sum of distances

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minimize sum of distancesminimize sum of distancesminimize sum of distancesminimize sum of distances

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[ Kumar-Sabharwal-Sen ’04 ][ Kumar-Sabharwal-Sen ’04 ][ Kumar-Sabharwal-Sen ’04 ][ Kumar-Sabharwal-Sen ’04 ]

COST OPT( 1 + )

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How to achieve linear limiting How to achieve linear limiting time?time?How to achieve linear limiting How to achieve linear limiting time?time?

Input space {0,1}Input space {0,1}Input space {0,1}Input space {0,1}dndndndn

prob < O(dn)/KSSprob < O(dn)/KSSprob < O(dn)/KSSprob < O(dn)/KSS

Identify coreIdentify coreIdentify coreIdentify core

TailTail::TailTail::

Use KSS Use KSS Use KSS Use KSS

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Store sample of Store sample of precomputed KSSprecomputed KSSStore sample of Store sample of precomputed KSSprecomputed KSS

Nearest neighborNearest neighborNearest neighborNearest neighborIncremental algorithmIncremental algorithmIncremental algorithmIncremental algorithm

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Main difficulty: How to spot the tail?Main difficulty: How to spot the tail?Main difficulty: How to spot the tail?Main difficulty: How to spot the tail?

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Page 38: So Much Data

encode

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decode

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Page 41: So Much Data

Data inaccessible before noise

What makes you What makes you think it’s wrong?think it’s wrong?

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Data inaccessible before noise

must satisfy some propertymust satisfy some property

(eg, convex, bipartite)(eg, convex, bipartite)

but does not quitebut does not quite

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f(x) = ?f(x) = ?

x

f(x)

data

f = access function

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f(x) = ?f(x) = ?

x

f(x)

f = access function

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f(x) = ?f(x) = ?

x

f(x)

But life being what it is…

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f(x) = ?f(x) = ?

x

f(x)

Page 47: So Much Data

)(O

Humans

Define distance from any object to data class

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f(x) = ?f(x) = ?

x

g(x)

x1, x2,…

f(x1), f(x2),…

filter

g is access function for:

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Online DataOnline DataReconstructiReconstructi

onon

Online DataOnline DataReconstructiReconstructi

onon

Page 50: So Much Data

Monotone function: [n] Rd

Filter requires polylog (n) lookups

[ Ailon-C-Liu-Comandur ’04 ][ Ailon-C-Liu-Comandur ’04 ] [ Ailon-C-Liu-Comandur ’04 ][ Ailon-C-Liu-Comandur ’04 ]

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Convex Convex polygonpolygon

Filter requires : lookups

[C-Comandur ’06 ]

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Convex Convex terrainterrain

lookups

Filter requires :

Page 53: So Much Data

Iterated planar separator Iterated planar separator theoremtheorem

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Iterated planar separator Iterated planar separator theoremtheorem

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Iterated Iterated (weak)(weak) planar separator theorem planar separator theorem

in sublinear time!in sublinear time!in sublinear time!in sublinear time!

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Using epsilon-nets in spaces of unbounded VC Using epsilon-nets in spaces of unbounded VC dimensiondimension

reconstruct

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bipartite graph

k-connectivity

expander

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denoising low-dim attractor sets

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Priced Priced

computation & computation & accuracyaccuracy

Priced Priced

computation & computation & accuracyaccuracy

spectrometry/cloning/gene chipspectrometry/cloning/gene chip PCR/hybridization/chromatographyPCR/hybridization/chromatography gel electrophoresis/blottinggel electrophoresis/blotting

spectrometry/cloning/gene chipspectrometry/cloning/gene chip PCR/hybridization/chromatographyPCR/hybridization/chromatography gel electrophoresis/blottinggel electrophoresis/blotting

001100001010001111110011001101011100001100000101111o1o1100001100

001100001010001111110011001101011100001100000101111o1o1100001100

Linear programmingLinear programming Linear programmingLinear programming

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Pricing dataPricing data

Pricing dataPricing data

Factoring is easy. Here’s why…Factoring is easy. Here’s why…Factoring is easy. Here’s why…Factoring is easy. Here’s why…Gaussian mixture sample: Gaussian mixture sample: 0010010100100110101010100100101001001101010101….….

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Collaborators:Collaborators: Nir Ailon, Seshadri Comandur, Ding Liu

Avner Magen, Ronitt Rubinfeld, Luca Trevisan

Collaborators:Collaborators: Nir Ailon, Seshadri Comandur, Ding Liu

Avner Magen, Ronitt Rubinfeld, Luca Trevisan