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QlikView Connectivity with SAP® Peter van Harten Gerd Janssens

BDWT 2012 BE QlikView Connectivity With SAP Gerd Janssens and Peter Van Harten

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Qlik

Vie

w C

onne

ctiv

ity w

ith S

AP

®

Pet

er v

an H

arte

nG

erd

Jans

sens

Leg

al D

iscl

aim

erT

his

Pre

sent

atio

n co

ntai

ns fo

rwar

d-lo

okin

g st

atem

ents

, inc

ludi

ng, b

ut n

ot li

mite

d to

, sta

tem

ents

reg

ardi

ng th

e va

lue

and

effe

ctiv

enes

s of

Qlik

Tec

h's

prod

ucts

, the

intr

oduc

tion

of p

rodu

ct e

nhan

cem

ents

or

addi

tiona

l pro

duct

s an

d Q

likT

ech'

s gr

owth

, ex

pans

ion

and

mar

ket l

eade

rshi

p, th

at in

volv

e ris

ks, u

ncer

tain

ties,

ass

umpt

ions

and

oth

er fa

ctor

s w

hich

, if t

hey

do n

ot

mat

eria

lize

or p

rove

cor

rect

, cou

ld c

ause

Qlik

Tec

h's

resu

lts to

diff

er m

ater

ially

from

thos

e ex

pres

sed

or im

plie

d by

suc

h fo

rwar

d-lo

okin

g st

atem

ents

. A

ll st

atem

ents

, oth

er th

an s

tate

men

ts o

f his

toric

al fa

ct, a

re s

tate

men

ts th

at c

ould

be

deem

ed

forw

ard-

look

ing

stat

emen

ts, i

nclu

ding

sta

tem

ents

con

tain

ing

the

wor

ds "

pred

icts

," "

plan

," "

expe

cts,

" "a

ntic

ipat

es,"

"be

lieve

s,"

"goa

l," "

targ

et,"

"es

timat

e,"

"pot

entia

l," "

may

", "

will

," "

mig

ht,"

"co

uld,

" an

d si

mila

r w

ords

. Q

likT

ech

inte

nds

all s

uch

forw

ard-

look

ing

stat

emen

ts to

be

cove

red

by th

e sa

fe h

arbo

r pr

ovis

ions

for

forw

ard-

look

ing

stat

emen

ts c

onta

ined

in S

ectio

n 21

E o

f th

e E

xcha

nge

Act

and

the

Priv

ate

Sec

uriti

es L

itiga

tion

Ref

orm

Act

of 1

995.

Act

ual r

esul

ts m

ay d

iffer

mat

eria

lly fr

om th

ose

proj

ecte

d in

suc

h st

atem

ents

due

to v

ario

us fa

ctor

s, in

clud

ing

but n

ot li

mite

d to

: ris

ks a

nd u

ncer

tain

ties

inhe

rent

in o

ur

busi

ness

; our

abi

lity

to a

ttrac

t new

cus

tom

ers

and

reta

in e

xist

ing

cust

omer

s; o

ur a

bilit

y to

eff

ectiv

ely

sell,

ser

vice

and

sup

port

ou

r pr

oduc

ts; o

ur a

bilit

y to

man

age

our

inte

rnat

iona

l ope

ratio

ns; o

ur a

bilit

y to

com

pete

eff

ectiv

ely;

our

abi

lity

to d

evel

op a

ndin

trod

uce

new

pro

duct

s an

d ad

d-on

s or

enh

ance

men

ts to

exi

stin

g pr

oduc

ts; o

ur a

bilit

y to

con

tinue

to p

rom

ote

and

mai

ntai

n ou

r br

and

in a

cos

t-ef

fect

ive

man

ner;

our

abi

lity

to m

anag

e gr

owth

; our

abi

lity

to a

ttrac

t and

ret

ain

key

pers

onne

l; th

e sc

ope

and

valid

ity o

f int

elle

ctua

l pro

pert

y rig

hts

appl

icab

le to

our

pro

duct

s; a

dver

se e

cono

mic

con

ditio

ns in

gen

eral

and

adv

erse

ec

onom

ic c

ondi

tions

spe

cific

ally

aff

ectin

g th

e m

arke

ts in

whi

ch w

e op

erat

e; a

nd o

ther

ris

ks m

ore

fully

des

crib

ed in

Qlik

Tec

h's

publ

icly

ava

ilabl

e fil

ings

with

the

Sec

uriti

es a

nd E

xcha

nge

Com

mis

sion

. P

ast p

erfo

rman

ce is

not

nec

essa

rily

indi

cativ

e of

fu

ture

res

ults

. T

he fo

rwar

d-lo

okin

g st

atem

ents

incl

uded

in th

is p

rese

ntat

ion

repr

esen

t Qlik

Tec

h's

view

s as

of t

he d

ate

of th

is

pres

enta

tion.

Qlik

Tec

h an

ticip

ates

that

sub

sequ

ent e

vent

s an

d de

velo

pmen

ts w

ill c

ause

its

view

s to

cha

nge.

Qlik

Tec

h un

dert

akes

no

inte

ntio

n or

obl

igat

ion

to u

pdat

e or

rev

ise

any

forw

ard-

look

ing

stat

emen

ts, w

heth

er a

s a

resu

lt of

new

in

form

atio

n, fu

ture

eve

nts

or o

ther

wis

e. T

hese

forw

ard-

look

ing

stat

emen

ts s

houl

d no

t be

relie

d up

on a

s re

pres

entin

g Q

likT

ech'

s vi

ews

as o

f any

dat

e su

bseq

uent

to th

e da

te o

f thi

s pr

esen

tatio

n.

Thi

s P

rese

ntat

ion

shou

ld b

e re

ad in

con

junc

tion

with

Qlik

Tec

h's

perio

dic

repo

rts

filed

with

the

SE

C (

SE

C In

form

atio

n),

incl

udin

g th

e di

sclo

sure

s th

erei

n of

cer

tain

fact

ors

whi

ch m

ay a

ffec

t Qlik

Tec

h’s

futu

re p

erfo

rman

ce. I

ndiv

idua

l sta

tem

ents

ap

pear

ing

in th

is P

rese

ntat

ion

are

inte

nded

to b

e re

ad in

con

junc

tion

with

and

in th

e co

ntex

t of t

he c

ompl

ete

SE

C In

form

atio

ndo

cum

ents

in w

hich

they

app

ear,

rat

her

than

as

stan

d-al

one

stat

emen

ts.

© 2

012

Qlik

Tec

hnol

ogie

s In

c. A

ll rig

hts

rese

rved

. Qlik

Tec

h an

d Q

likV

iew

are

trad

emar

ks o

r re

gist

ered

trad

emar

ks o

f Qlik

T

echn

olog

ies

Inc.

or

its s

ubsi

diar

ies

in th

e U

.S. a

nd o

ther

cou

ntrie

s. O

ther

com

pany

nam

es, p

rodu

ct n

ames

and

com

pany

lo

gos

men

tione

d he

rein

are

the

trad

emar

ks, o

r re

gist

ered

trad

emar

ks o

f the

ir ow

ners

.

Ag

end

a

Intr

od

uct

ion

Arc

hit

ectu

re a

nd

ben

efit

s o

f th

e Q

likV

iew

Co

nn

ecto

r

Ove

rvie

w e

xtra

ctio

n fr

om

SA

P E

CC

6.0

(S

QL

con

nec

tor)

Dem

o t

oo

ls t

hat

co

me

wit

h t

he

con

nec

tor

(Scr

ipt

Bu

ilder

A

pp

licat

ion

)

Ove

rvie

w e

xtra

ctio

n fr

om

BW

/BI 7

.0 (

MD

X c

on

nec

tor)

Sec

uri

ty

Bes

t P

ract

ices

Intr

oduc

tion

Co

mm

on

Dat

a W

areh

ou

se C

hal

len

ges

Cos

tly

Per

form

ance

Ind

ust

ry A

vera

ge

Dep

loym

ent:

17

Mo

nth

s

Ind

ust

ry A

vera

ge

Ap

p C

reat

ion

: 5

Mo

nth

s

Serv

ices

Cos

t

$500

K$4

00K

$300

K$2

00K

$100

K $0

Long

Tim

e to

Get

Res

ults

SAP

BW

Cog

nos

Bus

ines

sO

bjec

ts

Dat

a in

Mul

tiple

For

mat

s

BA

RC

BI

Surv

ey 9

Info

Wor

ld &

ID

C B

I Su

rvey

Qu

ery

Per

form

.

Bu

sin

ess

Dis

cove

ry:

Bu

sin

ess

Use

r-D

rive

n B

I

Insi

gh

tE

very

wh

ere

Ap

p M

od

elR

emix

abili

ty

and

Rea

ssem

bly

So

cial

an

d

Co

llab

ora

tive

Mo

bili

ty

Fina

nce

HR

Sale

s

Mar

ketin

g

IT

Pro

duct

ion

ST

AC

K

VE

ND

OR

BI

•M

anag

ed

repo

rtin

g

EN

D U

SE

R•

Pre

-cal

cula

ted

dash

boar

ds

OP

ER

AT

ION

AL

DA

TA

SO

UR

CE

S

IT D

EP

AR

TM

EN

T

RE

PO

RT-

CE

NT

RIC

AR

CH

ITE

CT

UR

E(I

T-d

rive

n, t

igh

tly

con

tro

lled

)

IT R

OL

E•

Dat

a pr

epar

atio

n an

dgo

vern

ance

+•

Res

pons

ible

for

build

ing

all t

he

anal

yses

Th

e E

volv

ing

BI L

and

scap

e

Th

e E

volv

ing

BI L

and

scap

e an

d IT

’s C

han

gin

g R

ole

ST

AC

K

VE

ND

OR

BI

•M

anag

ed

repo

rtin

gIT

RO

LE

•D

ata

prep

arat

ion

and

gove

rnan

ce

+•

Ena

ble

busi

ness

us

ers

to c

reat

eth

eir

own

anal

yses

IT R

OL

E•

Dat

a pr

epar

atio

n an

dgo

vern

ance

+•

Res

pons

ible

for

build

ing

all t

he

anal

yses

EN

D U

SE

R•

Pre

-cal

cula

ted

dash

boar

ds

BU

SIN

ES

S U

SE

R

•S

elf-

serv

ice

anal

ysis

•C

reat

e an

alys

is

rele

vant

to s

peci

fic

busi

ness

pro

blem

s

•C

hang

e an

alys

is

on th

e fly

QL

IKV

IEW

•D

ynam

ic

dash

boar

ds

•S

earc

h liv

e da

ta

•A

ny d

evic

e

OP

ER

AT

ION

AL

DA

TA

SO

UR

CE

S

IT D

EP

AR

TM

EN

T

RE

PO

RT-

CE

NT

RIC

AR

CH

ITE

CT

UR

E(I

T-d

rive

n, t

igh

tly

con

tro

lled

)B

US

INE

SS

DIS

CO

VE

RY

AR

CH

ITE

CT

UR

E(B

usi

nes

s u

ser-

dri

ven

, sel

f-se

rvic

e)

SA

P B

I as

Mai

n D

ata

War

eho

use

Po

ten

tial

Ch

alle

ng

es :

•H

ard

to in

tegr

ate

non-

SA

P d

ata

•W

eakn

esse

s in

man

agin

g la

rge

data

vol

umes

•C

ompl

ex in

terf

aces

for

third

-par

ty

prod

ucts

•P

oor

perf

orm

ance

•C

ostly

to a

chie

ve

•C

ompl

ex to

use

•N

o se

lf se

rvic

e

Mak

ing

th

e C

om

ple

x S

imp

le

•C

onso

lidat

es in

form

atio

nra

pidl

y fr

om S

AP

BI,

SA

P R

/3 o

r an

y ot

her

data

sou

rce

•S

earc

h an

d an

alyz

e da

ta w

ithG

oogl

e-lik

e ea

se a

nd s

peed

•Tr

ue s

elf-

serv

ice

BI

•R

apid

dev

elop

men

t of

new

app

licat

ions

Arc

hite

ctur

e an

d be

nefit

s of

the

Qlik

Vie

wC

onne

ctor

Co

nn

ect

to A

dd

Val

ue

Qlik

Vie

wC

on

nec

tor

for

use

w

ith

SA

P N

etw

eave

•E

nabl

es S

AP

cus

tom

ers

to

get

easy

and

qui

ck a

cces

s to

al

l the

dat

a hi

dden

in d

iffer

ent

SA

P s

yste

ms

•S

AP

dat

a ca

n th

en e

asily

be

com

bine

d w

ith N

on-S

AP

dat

a w

ithin

indi

vidu

al Q

V-a

naly

tical

ap

plic

atio

ns

•C

reat

es v

alue

out

of S

AP

sy

stem

s w

ithin

a fe

w w

eeks

–ra

ther

than

mon

ths/

year

s

•C

ertif

ied

by S

AP

•S

AP

bec

omes

a “

stan

dard

” da

ta s

ourc

e fo

r Q

V D

evel

opm

ent

•7

conn

ecto

rs, S

QL

base

d an

d M

DX

bas

ed (

for

BW

info

cu

bes/

quer

ies)

Rem

ote

Fu

nct

ion

Cal

l co

nn

ecti

on

to

SA

P

•O

pens

the

door

for

quic

k an

d ea

sy d

evel

opm

ent

of a

ny k

ind

of

anal

ytic

al

appl

icat

ion

with

in Q

likV

iew

Pro

vid

es Q

likV

iew

Scr

ipt

Bu

ilder

Ap

plic

atio

n

•R

eads

Clu

ster

, Poo

l and

Tra

nspa

rent

tabl

es•

Incl

udin

g S

AP

Met

adat

a•

Ext

ract

s ta

bles

/vie

ws

from

SA

P (

stan

dard

or

cust

om Z

* an

d Y

*)•

Ext

ract

s B

W in

fo c

ubes

/BE

X q

uerie

s or

OD

S/D

SO

•E

xtra

cts

from

SA

P q

uerie

s

Rea

ds

SA

P d

ata

dic

tio

nar

y

•In

itial

cer

tific

atio

n D

ecem

ber

2006

•R

ecer

tifie

d A

pril

2009

Co

mp

atib

le w

ith

R/3

>=

4.6C

an

d B

W >

= 3.

1

Wh

at is

th

e Q

likvi

ew C

on

nec

tor

?

EX

CE

LS

QL

SA

PE

RP

OR

AC

LE

SA

LE

SF

OR

CE

DA

TA

WA

RE

HO

US

EIN

FO

RM

AT

ICA

Fin

ance

Mar

ketin

g

Sal

esO

pera

tions

Presentation

QL

IKV

IEW

WE

BS

ER

VE

RB

US

INE

SS

DIS

CO

VE

RY

AP

PS

Application

QL

IKV

IEW

PU

BL

ISH

ER

BU

SIN

ES

S U

SE

RS

IT A

dmin

s

QV

W; Q

VD

file

s

Win

dow

s B

ased

F

ile S

hare

(O

ptio

nal)

Cus

tom

con

nect

ors;

OD

BC

; O

LED

B; Q

VX

; XM

LT

hird

-Par

ty

Inte

grat

ion:

•In

form

atic

a•

Del

l•

Boo

mi

•S

ybas

e•

Goo

gle

Big

Que

ry•

and

man

y m

ore…

Sec

urity

In

tegr

atio

n:

•W

indo

ws

Ser

ver

•T

ivol

i Sof

twar

e•

IBM

OP

ER

AT

ION

AL

DA

TA

SO

UR

CE

S

Data Access

Qlik

Vie

wB

usi

nes

s D

isco

very

Pla

tfo

rm

QL

IKV

IEW

SE

RV

ER

Dat

a / B

usin

ess

Ana

lyst

s D

evel

oper

s

QL

IKV

IEW

MA

NA

GE

ME

NT

C

ON

SO

LE

QL

IKV

IEW

DE

VE

LO

PE

R

Win

dow

s IIS

Bu

sin

ess

Ben

efit

s

•de

ploy

men

ts a

re m

easu

red

in d

ays

and

wee

ks—

not m

onth

s. T

his

way

, im

plem

enta

tion

cost

s ar

e si

gnifi

cant

ly lo

wer

than

com

petin

g so

lutio

ns.

Rap

id D

eplo

ymen

t

•Q

likV

iew

pulls

dat

a di

rect

ly fr

om S

AP.

Dat

a fr

om

SA

P B

W a

nd o

ther

dat

a w

areh

ouse

can

be

load

ed a

s w

ell –

but i

t is

not r

equi

red.

No

Dat

a W

areh

ou

se

req

uir

ed

•Q

likV

iew

com

bine

s da

ta fr

om m

ultip

le s

ourc

es,

givi

ng c

usto

mer

s a

com

plet

e vi

ew o

f the

ir bu

sine

ss.

SA

P a

nd

No

n-S

AP

d

ata

com

bin

ed

•P

aten

ted

tech

nolo

gy m

akes

Qlik

Vie

wap

plic

atio

ns

easy

to le

arn,

for

deve

lope

rs a

nd fo

r en

d-us

ers.

E

asy-

To-U

se

Tech

nic

al B

enef

its

Acc

ess

to S

AP

dat

a us

ing

SA

P la

test

Net

wea

ver

RF

C

No

depe

nden

cies

on

othe

r pr

oduc

ts (

e.g.

SA

PG

UI,

Bex

)

Fie

ld le

vel s

ecur

ity

Fol

low

s S

AP

sec

urity

mod

el

Del

ta lo

ad c

apab

le

Zer

o ad

min

istr

atio

n

One

con

nect

or to

mul

tiple

SA

P s

erve

rs (

DE

V, Q

AS

, PR

D)

Par

alle

l dow

nloa

ds

No

extr

a ha

rdw

are

(coe

xist

s w

ith Q

V D

evel

opm

ent a

nd P

ublis

her)

Qui

ck in

stal

latio

n an

d co

nfig

urat

ion

(1/2

hr)

Aut

omat

ic E

TL

scrip

t gen

erat

ion

base

d on

eas

y po

int a

nd c

lick

sele

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me

to v

alue

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Mon

ths

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g Is

Bel

ievi

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In a

few

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s,

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will

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ld a

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king

Qlik

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w a

pplic

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Tha

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ou