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04th(of(February(2014(|(Yves(Studer(

((((((((((((((((((((((Big(Data(in(Prac@ce(
Towards(a(procedure(model(for(
Big(Data(

Costa(&(Oliveira((2012)(

#1 You are able to identify
common hurdles when doing
Big Data.
#2 You know some strategies
and a procedure model to
overcome these.

Big(Data:(Agenda(
1.  Why?(Mo@va@on(&(perspec@ves(on(

2’#

2.  What?(Short(overview(of(challenges(

7’#

Data(in(an(enterprise(

3.  How?(An(example(of(a(procedure(
model(

5’#
?!(
?(?(
Why?

Your Motivation

New Paradigm: Big data streaming into
an enterprise means(not(just(to(capture(and(store(
data(but(to(put(it(into(the(hands(of(end users.
Aberdeen(Group((2012)(
What(type(of(Big(Data(to(exploit?(
External(

External(
(Data(

Linking(internal(
and(external(
informa@on(

Internal(

Dig(deeper(into(
the(current(pool(

Data(

which(can(already(
be(used(

Insurance(
Sector(
Extend(the(
Example(
territory(
Explore(the(black(
hole(

Analyse(dead(
storage(

exists(but(yet(
unused(

not(yet(
collected(
Based(on(Arthur(D.(LiXle((2013)(

Why(external(data?(

Insurance(
Sector(
Example(

Insurance(is(a(predic@on(business:(
(

“If(a(predic@on(model(is(only(4(to(5(
percent(beXer(than(a(naïve(predic@on,(
but(new,(external(data(can(help(improve(
that(by(a(couple(of(points(across(millions(of(
transac@ons,(that’s(huge.”(

Edward&Vandenberg,&Farmers&Insurance’s&Director&
of&Advanced&Analy=cs&in&Whi=ng&(2013)&
It(is(said(to(be(worth(the(trouble(
! (2.5(@mes(stock(apprecia@on.((
! (2(@mes(larger(EBITDA(growth.((
! (1.6(@mes(higher(revenue(growth.(

IBM&&&The&Economist&(2012)&&

Analy@cal(advantages((
of(external(Data(

Insurance(
Sector(
Example(

•  BeXer(understanding(of(customer(habits(/(risks(
•  Effec@ve(marke-ng:(judge(customer(reac@ons(
•  Improved(tracking(of(insurance(markets(and(the(
overall1business1health1
•  Development(of(new1products1and(programs(to(
capitalize(on(market(changes.(
•  BeXer(fraud(detec-on1
Whi=ng&(2013)&
What?
YOUR1CHALLENGES1
Your Challenges

Challenges(

Insurance(
Sector(
Example(

New(data(choices(
Privacy(concerns(
Time(delays(
Increasing(data(volume:(Volumeecapable(
Infrastructure(
•  Innova@on:(Cultural(Shif(
•  Gegng(the(external(data(before(the(project(
•  Human(Bias(
• 
• 
• 
• 

Whi@ng((2013)(
Selected(Challenges(

Challenge 1:
Value Issues

Challenge 2:
Legal Issues

Challenge 1: Value Issues
Where(Big(Data(creates(Value(

D.(LiXle((2012)(

#1(

Data(analysis(not(detailed(enough(

#3(

End(users(gegng(data(not(fast(enough(

#2(

Data(inaccessible(/(underused(

#4(

Data$too$fragmented$/$‘siloed’$not$
ac4onable

Based(on(survey(by(Aberdeen(Group((2012)(
Transla@ng(Big(Data(into(Value(

#1(
#2(
#3(
#4(
Schmarzo((2013)(

What(to(do?((I)(
!  Iden@fy(key(business(ini@a@ves(
!  Business(&(IT(stakeholder(collabora@on(
!  Formalise(the(“envisioning(process”(
!  Use(Prototpyes(
Schmarzo((2013)(
What(to(do?((II)(
!  Understand(technology(&(architectural(
op@ons(
(
!  Uncover(new(mone@sa@on(possibilites(
(
!  Understand(the(organisa@onal(
implica@ons(
Schmarzo((2013)(

Challenge 2: Legal Issues
legal rules collide with
technological and
business realities
Tene(&(Polonetsky((2012)(

Selected(Legal(Issues(
•  Obsolete(Concept(“Personally(
Iden@fiable(Informa@on”((PII)?(
•  Data(Minimisa@on(and(Big(Data?(
Old(Roots(of(Privacy(Guidelines(
Closed(Networks(
Limited(
Limited(
numbers(
numbers(
of(Sources(
of(Sources(

1(Actor((
(“Data(Controller”)(

Organisa@on(for(Economic(Coeopera@on(and(
Development((2013)(

What(is(PII?(
•  Defini-on:1“any(informa@on(rela@ng(to(an(
iden@fied(or(iden@fiable(individual”.(
Any(data(that(are(not1related1to(an(iden@fied(or(
iden@fiable(individual(are(therefore(none
personal(and(are(outside1the1scope1of1the1
Guidelines.(
Organisa@on(for(Economic(Coeopera@on(and(
Development((2013)(
“Nice,(if(we(
anonymise(it(is(
no(PII!”(
“Tradi@onally,(deGiden-fica-on1was(viewed(as(a(silver(
bullet(allowing(organisa@ons(to(reap(the(benefits(of(analy@cs(
while(preserving(individuals’(privacy.((
Tene(&(Polonetsky((2012)(

Well,(boss…(

(
[…](computer(scien@sts(have(
repeatedly(shown(that(even(
anonymised(data(can(typically(
be(reeiden@fied(and(
associated(with(specific(
individuals.”(
(
Tene(&(Polonetsky((2012)(
(
Solu@on?(

(
“Treat(all(data(as(PII(or(
you(play(whackeaemole”(
Paul(Ohm((2012)(from(University(of(Colorado(
Law(School(

Data(Minimisa@on(
•  Organisa@ons(are(required(to(
–  limit1the1collec-on1of1personal1data1to(the(
minimum(extent(necessary(to(obtain(their(
legi@mate(goals.((
–  delete1old1data1that(is(no(longer(required(

Organisa@on(for(Economic(Coeopera@on(and(
Development((2013)(
Solu@on?(
•  In(a(big(data(world,(the(principle(of(data(
minimiza@on(should(be(interpreted1
differently1
–  requiring(organiza@ons(to(deeiden@fy(data,(
–  implement(reasonable(security(measures,(
–  limit(uses(of(data(for(acceptable(purposes(
(individual(&(societal(view).(

Tene(&(Polonetsky((2012)(

What’s(next?(
•  The(EU(Data(Protec@on(Direc@ve(is(being(
finalised(by(this(year*((
•  The(OECD(currently(assesses((
–  employment(impact(of(dataedriven(automa-on,(
–  issues(related(to(compe@@on(
–  and(intellectual1property(rights.(

(
*(Some(vivid(discussions(are(currently(going(on,(
(follow(#EUDataP(on(TwiXer(
3(

1(

2(

How?
A Procedure Model

The(Big(Data(Procedure(Model(
Con@nuous(
Improvement(
True(endetoeend(
integra@on(

7(
6(

Exploita@on(of(new(Data(
5(
Consolida@on(&(
Migra@on(

8(

Repor@ng(&(Predic@ve(
Analy@cs(

4(
3(

2(
1(

Implementa@on(
Prepara@on(of(IT(

Maturity(Assessment(

BITKOM((2012)(
Phase(1:(Maturity(Assessment(
51

BusinesseOp@misa@on(

41

Some(Processes(op@mised(

Applica@on(

31

Some(Project(in(endephase(

Strategy(

21

Some(Projects(started(

Centre(of(Excellence(

11

Some(Concepts(&(PoC(

Big(Data(Ini@a@ves(

01

Inexistent(

1(

Op@misa@on(

Legacy(Applica@ons(

Maturity(Assessment(
BITKOM((2012)(

Phase(2:(Prepare(IT(for(Big(Data(

(
ITegoals(
GapeAnalysis(
(
2(
1(

Prepara@on(of(IT(

Maturity(Assessment(

BITKOM((2012)(
Phase(3:(Implementa@on(
(
Integra@on(into(exis@ng(ITelandscape(
Consider(CloudeSolu@ons(
(
3(
2(
1(

Implementa@on(
Prepara@on(of(IT(

Maturity(Assessment(

BITKOM((2012)(

Cultural(Issue:(ParadigmeShif(
Tradi-onal1
Business(Unit(
defines(
ques@ons(

IT(structures(
data(to(
answer(the(
ques@ons(

Big1Data1

?

IT(enables(
(cloud)(
plauorm(for(
discovery(

?

Business(Units(
discover(informa@on(
in(data(

based(on(Hoge((2012)(
Phase(4:(Consolida@on(&(Migra@on(
(
Op@misa@on(of(exis@ng(infrastructure?(
New(data(sources?(
(
Ownership(of(Data!(
Consolida@on(&(
4(
(
Migra@on(
3(
2(
1(

Implementa@on(
Prepara@on(of(IT(

Maturity(Assessment(

BITKOM((2012)(

Phase(5:(Exploita@on(of(new(Data(

Exploita@on(of(new(Data(
5(
Consolida@on(&(
Migra@on(

4(
3(

2(
1(

Implementa@on(
Prepara@on(of(IT(

Maturity(Assessment(

BITKOM((2012)(
Phase(6:(Repor@ng(&(Predic@ve(
Analy@cs(

6(

Exploita@on(of(new(Data(

Repor@ng(&(Predic@ve(
Analy@cs(

5(
Consolida@on(&(
Migra@on(

4(
3(

2(
1(

Implementa@on(
Prepara@on(of(IT(

Maturity(Assessment(

BITKOM((2012)(

Phase(7:(Endetoeend(Integra@on(
True(endetoeend(
integra@on(
6(

Exploita@on(of(new(Data(
5(
Consolida@on(&(
Migra@on(

7(

Repor@ng(&(Predic@ve(
Analy@cs(

4(
3(

2(
1(

Implementa@on(
Prepara@on(of(IT(

Maturity(Assessment(

BITKOM((2012)(
Phase(8:(Con@nuous(Improvement((
Con@nuous(
Improvement(

8(

True(endetoeend(
integra@on(
6(

Exploita@on(of(new(Data(
5(
Consolida@on(&(
Migra@on(

7(

Repor@ng(&(Predic@ve(
Analy@cs(

4(
3(

2(
1(

Implementa@on(
Prepara@on(of(IT(

Maturity(Assessment(

BITKOM((2012)(

Key(Takeaways(
•  (External)(Big(Data(can(create(a(compe@@ve(
advantage(
•  To(achieve(it,(many(issues(have(to(be(
considered.(Our(focus(today(was(on:(
–  Finding(the(business(value(
–  An@cipa@ng(legal(changes(

•  Procedure(models(allow(to(tackle(the(Big(Data(
challenges(step(by(step.(
We(can(do(it.(

Bibliographic,References,
,,
AberdeenGroup,,2012.,In#memory)Compu-ng :)Li2ing)the)Burden)of)Big)Data)Two)Birds)with)One)
Stone.)Available,at:,h?p://spoAire.Bbco.com/~/media/contentEcenter/arBcles/aberdeenEinE
memoryEanalyBcsEforEbigEdata.pdf,[Accessed,January,4th,,2014].,
BITKOM,,2012.,Management,von,BigEData,Projekten.,Available,at:,h?p://www.bitkom.org/files/
documents/LF_big_data2013_web.pdf,[Accessed,January,4th,,2014].,
BoozAllenHamilton,,2012.,Harnessing,Big,Data,to,Solve,Complex,Problems:,The,Cloud,AnalyBcs,
Reference,Architecture.,Available,at:,h?p://www.boozallen.com/media/file/theEcloudE
analyBcsEreferenceEarchitectureEvp.pdf,[Accessed,January,4th,,2014].,
Davenport,,T.H.,&,Harris,,J.G.,,2007.,Compe-ng)on)Analy-cs:)The)new)Science)of)Winning,
(eBook).,,Boston,,Massachuse?s:,Harvard,Business,School,Publishing.,Available,at:,h?p://
www.amazon.com,[Accessed,November,28,,2013].,
Davenport,,T.H.,,2012.,Enterprise)Analy-cs:)Op-mize)Performance,)Process,)and)Decisions)
Through)Big)Data,(eBook).,,New,Jersey:,FT,Press.,Available,at:,h?p://www.amazon.com,
[Accessed,November,28,,2013].,
,
Bibliographic,References,
Hoge,,W.,,Big,Value,from,Big,Data.,,,pp.1–19.,Available,at:,h?p://www.slideshare.net/
WilfriedHoge/ibmEbigEvalueEfromEbigEdata,[Accessed,January,5,,2014].,
IBM,Center,for,Applied,Insights,,2012.,Outperforming,in,a,dataErich,,hyperEconnected,world.,
Available,at:,h?p://wwwE01.ibm.com/common/ssi/cgiEbin/ssialias?
htmlfid=YTE03002USEN&appname=wwwsearch,[Accessed,January,16,,2014],
Lee,,E.,,2013.,Insurers,Tame,the,Challenge,of,Data,Through,Context.,PropertyCasualty360.,
Available,at:,h?p://www.propertycasualty360.com/2013/01/31/insurersEtameEtheE
challengeEofEdataEthroughEcontex?t=analyBcsEdata,[Accessed,January,28,,2014].,
Paul,M.,Schwartz,&,Daniel,J.,Solove,,The,PII,Problem:,Privacy,and,a,New,Concept,of,Personally,
IdenBfiable,InformaBon,,86,NYU,L.,REV.,1814,(2011),
Tene,,O.,&,Polonetsky,,J.,,2012.,Big,Data,for,All:,Privacy,and,User,Control,in,the,Age,of,AnalyBcs.,
Northwestern)Journal)of)Technology)and)Intellectual)Property,,11(5).,Available,at:,h?p://
papers.ssrn.com/sol3/papers.cfm?abstract_id=2149364,[Accessed,January,30,,2014].,
Tene,,O.,,2012.,The,ComplexiBes,of,Defining,PersonalData:,AnonymizaBon,,8,DATA,PROT.,L.,&,
POLICY,8,,6.,

Image,Sources,
Penguins,E,h?ps://www.kernel.org/pub/linux/kernel/people/paulmck/Confessions/
Elephant_Team_03.jpg,
Elephant,in,rage,E,h?p://www.snidelyworld.com/Humor/Photos/ElephantRage.jpg,
Money,elephant,E,h?p://goclom.net/origamiEpapier/origamiEelephantEfacile.aspx,
Elephant,parade,E,h?p://www.viralread.com/wpEcontent/uploads/2013/04/circusEelephants.jpg,
Water,&,hands,E,h?p://flickr.com/dinabenne?,
Stones,E,h?p://flickr.com/arztsamui,
Wall,E,h?p://flickr.com/rudolfvlcek,
Dashboard,E,h?p://flickr.com/sashaLah,
Silos,E,h?p://flickr.com/davidvernon,
,
All,accessed,at,20th,of,January,2014,
,

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