SlideShare a Scribd company logo
San 
Francisco 
IIA 
– 
Winter 
Seminar 
How 
to 
Leverage 
Data 
Analy/cs 
to 
Improve 
your 
BoJom 
Line 
December 
5, 
2014 
Dan 
Samson, 
Exec. 
Director 
and 
CAE, 
Assurance 
Services, 
SRI 
Interna/onal 
Stephanie 
Gray, 
Senior 
Manager, 
Assurance 
Services, 
SRI 
Interna/onal 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
Agenda 
• Overview 
of 
SRI 
Interna/onal 
• Why 
Internal 
Audit 
Should 
Provide 
Data 
Analy/c 
Leadership 
• Value 
to 
the 
Enterprise 
• Examples 
of 
Data 
Analy/c 
Treasure 
Troves 
2
Overview 
of 
SRI 
Interna/onal 
Health 
Ultrasound 
Banking 
Novel 
drugs 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
• Who 
has 
heard 
of 
SRI 
Interna/onal? 
• You 
may 
be 
familiar 
with 
some 
of 
our 
innova/ons… 
3 
Siri 
First 
VPA 
Computer 
Mouse 
Personal 
compu3ng 
Telerobo/c 
Surgery 
Minimally 
invasive 
surgery 
Internet 
ARPANET 
-­‐ 
TCP-­‐based 
Internet 
transmission 
Magne3c 
ink 
character 
recogni3on 
Robo/cs 
Surface-­‐climbing 
robots 
Preclinical 
therapeu3cs 
for 
heart, 
lung, 
and 
blood
Overview 
of 
SRI 
Interna/onal 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
4 
Universi3es, 
Na3onal 
Labs 
Fundamental 
Science 
Corpora3ons 
Basic 
Research 
Applied 
Research 
Product 
Development 
Produc3on 
SRI
Why 
Internal 
Audit 
Should 
Provide 
Data 
Analy/c 
Leadership 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
5 
The Challenge: Innovate or Die 
• 
Value 
Factor 
= 
Perceived 
Customer 
Benefits 
Perceived 
Customer 
Costs 
• Benefits and Costs are 
determined by the customer 
(not by us!) 
• Who are your customers? 
Ø Audit Committee 
Ø Executive Management 
Ø Functional Owners 
Ø External Regulators 
Ø External (paying) Customers
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
Value 
to 
the 
Enterprise 
• Insights 
to 
business 
ac/vity; 
transac/on 
paJerns 
including 
anomalies 
• Process 
leaning 
• System 
op/miza/on 
• Reducing 
the 
cost 
of 
opera/ons 
• Revenue 
recovery 
and 
op/miza/on 
• Compliance 
monitoring 
6
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
Value 
to 
the 
Enterprise 
• Data 
analy/cs 
empower 
audit 
teams 
to 
make 
transforma/ve 
change 
• Enables 
customers 
to 
understand 
their 
data 
in 
new 
and 
different 
ways 
• Drives 
process 
efficiencies 
• Delivers 
hard, 
measurable 
savings, 
cost 
avoidance, 
and 
revenue 
recovery 
7
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
Value 
to 
the 
Enterprise 
• No 
more 
random 
or 
judgmental 
sampling, 
capability 
of 
analyzing 
100% 
of 
data 
• Perform 
data 
analysis 
during 
planning, 
before 
field 
work, 
to 
priori/ze 
scope 
• Present 
data 
profiles 
at 
Opening 
Mee/ng 
with 
customers 
– Value 
add 
during 
opening 
mee/ng. 
– How 
many 
opening 
mee/ngs 
tell 
the 
customer 
something 
they 
don’t 
know? 
– How 
ofen 
are 
opening 
mee/ngs 
staid 
and 
formulaic? 
8
Data 
Analy/c 
Treasure 
Troves 
Every 
func/on, 
process, 
and 
ac/vity 
produces 
data. 
All 
have 
poten/al 
cost 
recovery, 
revenue 
recovery, 
or 
cost 
avoidance 
poten/al. 
The 
only 
limiter 
is 
your 
imagina/on! 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
9
Data 
Analy/c 
Treasure 
Troves 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
Tradi3onal 
• Travel 
& 
Expense 
• Accounts 
Payable 
• Corporate 
Credit 
Cards 
• Accounts 
Receivable 
• Payroll 
But 
Also… 
• Third 
Party 
Agreements 
• Office 
Supplies 
• Telecommunica/ons 
• General 
Ledger 
Op/miza/on 
• Inventory 
10
Example 
– 
Travel 
& 
Expense 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
• Reasonableness 
of 
cost 
incurred 
in 
compliance 
with 
policy 
• Analysis 
of 
airfare 
booking 
/meliness 
• Analysis 
of 
airfare 
credits 
(unused 
airfare 
credits 
from 
cancela/ons) 
• Double 
payments 
• Cash 
vs. 
credit 
card 
use 
paJerns 
• Top 
travelers 
– 
logical? 
• Execu/ve 
spending 
• Expenses 
just 
below 
requirement 
to 
provide 
suppor/ng 
documenta/on 
• Typical 
cost 
recovery 
/ 
savings 
of 
3% 
of 
travel 
expenditures 
(e.g. 
3% 
of 
$10 
million 
is 
$300,000). 
• Hotel 
stays 
at 
non-­‐preferred 
proper/es, 
unreasonable 
hotel 
rates, 
unreasonable 
hotel 
rate 
types 
(suite, 
upgraded 
rooms, 
etc.), 
hotel 
rate 
packages 
(breakfast 
included 
yet 
reimbursed 
for 
breakfast) 
• Airfare 
booking 
/meliness. 
Booking 
within 
7 
days 
of 
travel 
brings 
a 
~33% 
premium. 
• Excess 
alcohol, 
types 
of 
alcohol 
(premium 
champagne) 
• Analysis 
of 
meal 
reimbursement 
amounts 
by 
staff 
for 
paJerns 
11
Travel 
& 
Expense 
Con/nued 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
Reasonableness 
of 
Expenditures 
Objec/ve: 
Assess 
expenses 
for 
reasonableness, 
reclaim 
excep/ons 
• Data 
extract 
from 
T&E 
System 
and 
any 
external 
travel 
provider. 
Key 
data 
include 
employee 
name, 
employee 
ID, 
expense 
amount, 
vendor 
name, 
expense 
date, 
expense 
type, 
travel 
purpose, 
travel 
dates 
and 
loca/on/s, 
FX 
rates. 
• Join 
files 
on 
employee 
name 
or 
ID. 
• Subtotal 
expenditures 
incurred 
by 
employee. 
ID 
top 
spenders. 
Examine 
hotel 
rates. 
Determine 
median 
by 
city 
and 
look 
for 
outliers. 
• Limo 
services. 
• Airline 
club 
memberships 
• Meals. 
Alcohol. 
Other 
reimbursements. 
• Airfare 
class 
service. 
Airfare 
Credits 
Objec/ve: 
Iden/ty 
unused 
airfare 
credits 
for 
use 
before 
expira/on 
• Data 
extract 
from 
external 
travel 
provider 
of 
unused 
airfare 
credits, 
employee 
names, 
airline, 
$ 
dollar 
amount 
of 
credit, 
original 
travel 
date, 
credit 
expira/on 
date. 
• Calculate 
difference 
between 
outstanding 
credits 
and 
change 
fees 
for 
net 
available 
cost 
savings. 
• Analyze 
credits 
by 
employee 
for 
paJerns. 
For 
personnel 
with 
excess 
credits 
and 
/ 
or 
high 
volume 
rebooking 
ac/vity, 
verify 
appropriate 
use 
of 
credits 
for 
business 
purposes. 
• Extract 
data 
charts 
for 
use 
by 
managers 
before 
airfare 
credits 
expire. 
• Certain 
airlines 
(United) 
will 
allow 
pooling 
of 
credits 
for 
use 
by 
other 
employees. 
12 
Airfare 
Booking 
Timeliness 
Objec/ve: 
Assess 
reserva/on 
/meliness 
for 
cost 
avoidence 
• Data 
extract 
from 
travel 
provider 
including 
employee 
name 
/ 
ID, 
date 
of 
reserva/on, 
date 
of 
travel, 
cost 
of 
airfare 
and 
fees. 
• Calculate 
number 
of 
days 
between 
date 
of 
reserva/on 
and 
date 
of 
travel. 
Stra/fy 
based 
on 
the 
number 
of 
resul/ng 
days. 
• Calculate 
median 
$ 
airfare 
for 
each 
grouping. 
• Calculate 
variance 
between 
groupings 
(<7 
days 
before 
travel, 
7<14 
days 
before 
travel, 
14<21 
days 
before 
travel, 
>21 
days 
before 
travel) 
and 
average 
$ 
airfare 
in 
popula/on. 
Expense 
PaJerns 
Objec/ve: 
Iden/fy 
poten/al 
fraud 
and 
misappropria/on 
of 
funds 
• Data 
extract 
as 
noted 
in 
Reasonableness 
• Run 
Benford 
Law 
Analysis 
(three 
digit) 
on 
expense 
amount 
• Extract 
anomalies 
for 
further 
inves/ga/on 
• Analyze 
cost 
paJerns 
over 
the 
year 
for 
reasonableness
Example 
-­‐ 
Accounts 
Payable 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
• Duplicate 
Payments; 
especially 
at 
companies 
with 
mul/ple 
accoun/ng 
systems 
or 
divisions 
• Payment 
discounts 
lost 
(due 
date 
vs. 
paid 
date) 
• Payment 
amount 
> 
invoice 
amount 
• Aging 
of 
open 
accounts 
payable 
invoices 
• Vendor 
credits 
• Top 
vendors 
by 
$ 
and 
by 
volume 
(look 
at 
high 
and 
low 
volume) 
• Benford 
Analysis 
• Payments 
to 
employees 
• Payments 
to 
vendors 
not 
on 
the 
vendor 
master 
list 
• Round 
$ 
amounts 
(payments 
or 
invoice 
amount) 
• Splixng 
payments 
13
Accounts 
Payable 
con/nued 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
Duplicate 
Payments 
Objec/ve: 
Iden/fy 
duplicate 
payments 
• Data 
extract 
of 
payments 
made 
from 
Accounts 
Payable 
including 
vendor 
name, 
vendor 
number, 
payment 
amount, 
payment 
date, 
payment/check 
#, 
invoice 
net 
amount, 
invoice 
creator 
ID, 
invoice 
date, 
invoice 
due 
date, 
invoice 
#, 
payment 
loca/on, 
payment 
type, 
payment 
void 
date. 
• Analyze 
data 
for 
payments 
for 
the 
same 
invoice 
amount, 
vendor 
name, 
and 
date. 
Key 
is 
“invoice 
amount”, 
as 
payment 
could 
be 
for 
mul/ple 
invoices. 
• Analyze 
payments 
for 
different 
vendors 
with 
similar 
names. 
• Analyze 
payments 
for 
different 
vendors 
with 
same 
address 
Payment 
Discounts 
Objec/ve: 
Iden/fy 
lost 
vendor 
payment 
discounts 
• Data 
extract 
as 
noted 
under 
duplicate 
payments 
as 
well 
as 
vendor 
master 
file. 
• Extract 
vendors 
with 
payment 
discount 
terms 
and 
join 
to 
accounts 
payable 
file 
on 
vendor 
ID. 
• Analyze 
payment 
date 
vs. 
due 
date 
to 
iden/fy 
those 
vendors 
paid 
afer 
discount 
period. 
• Calculate 
total 
discount 
lost 
by 
vendor 
for 
year. 
14 
Vendor 
Credits 
Objec/ve: 
Iden/fy 
outstanding 
credits 
for 
inac/ve 
vendors 
• Use 
data 
extract 
to 
query 
balances 
by 
vendor 
name 
for 
credit 
balances. 
• Evaluate 
age 
of 
credits. 
• Request 
refund 
checks 
for 
inac/ve 
vendors 
or 
greatly 
aged 
credits. 
Cash 
Flow 
(commercial 
enterprise) 
Objec/ve: 
Op/mize 
cash 
flow 
related 
to 
payments 
• Data 
extract 
as 
noted 
under 
duplicate 
payments 
and 
payment 
discounts. 
• Calculate 
(create 
new 
field) 
“# 
of 
days 
to 
pay” 
by 
vendor 
by 
comparing 
invoice 
due 
date 
to 
payment 
date. 
• Analyze 
delta 
between 
# 
days 
to 
pay 
and 
payment 
terms 
(10, 
30, 
45 
days) 
by 
vendor 
for 
all 
payments. 
• The 
difference 
represents 
underu/lized 
cash 
flow. 
Consider 
adding 
interest 
rate 
factor.
Example 
-­‐ 
Third 
Party 
Agreements 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
• Zombie 
(evergreen) 
agreements 
such 
as 
subscrip/ons, 
services, 
etc. 
• Agreements 
with 
automa/c 
rate 
increases 
• Mul/ple 
agreements 
with 
the 
same 
vendor 
• Vendors 
billing 
at 
incorrect 
rates 
• Vendors 
providing 
wrong 
type 
/ 
level 
of 
service 
vs. 
agreement 
15
Third 
Party 
Agreements 
con/nued 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
Sofware 
Licenses 
Objec/ve: 
Analyze 
sofware 
agreements 
for 
op/miza/on 
• Extract 
payment 
data 
for 
sofware 
providers/vendors. 
Determine 
top 
provider 
over 
a 
certain 
$ 
threshold 
• Request 
licensing 
data 
from 
sofware 
provider 
(non-­‐enterprise-­‐ 
wide 
agreement) 
including 
licensee 
/ 
IP 
address 
or 
other 
iden/fier. 
• Request 
log-­‐on 
data 
from 
provider 
• Analyze 
/ 
compare 
log-­‐on 
data 
vs. 
ac/ve 
licenses. 
• Iden/fy 
licenses 
that 
are 
not 
used 
or 
infrequently 
used 
for 
elimina/on 
Volume 
Discounts 
Objec/ve: 
Iden/fy 
vendors 
with 
mul/ple 
agreements 
for 
consolida/on 
• Data 
extract 
of 
payments 
made 
from 
Accounts 
Payable 
including 
vendor 
name, 
vendor 
number, 
and 
payment 
amount. 
• Analyze 
for 
like 
vendor 
names. 
• Sum 
spend 
by 
like 
vendor 
names. 
• Analyze 
for 
renego/a/on 
poten/al. 
For 
example, 
a 
company 
may 
have 
mul/ple 
agreements 
with 
a 
telecommunica/ons 
provider 
with 
mul/ple 
plans 
instead 
of 
one 
plan. 
16 
Zombie 
Agreements 
Objec/ve: 
Iden/fy 
vendor 
agreements 
on 
auto-­‐pilot 
for 
cost 
savings 
• Data 
extract 
of 
vendor 
master 
file 
including 
vendor 
name, 
vendor 
ID, 
and 
contract 
/ 
agreement 
expira/on 
date. 
If 
not 
in 
vendor 
master 
file, 
extract 
from 
appropriate 
system. 
Data 
extract 
of 
payments 
made 
from 
Accounts 
Payable 
including 
vendor 
name 
and 
vendor 
ID. 
Join 
on 
vendor 
ID 
for 
those 
vendors 
with 
no 
agreement 
expira/on 
date 
AND 
payments 
in 
last 
12 
months. 
• Analyze 
spend 
for 
vendor 
agreements 
with 
no 
expira/on 
date 
for 
mul/-­‐year 
period. 
Assess 
reasonableness 
of 
spend 
over 
/me. 
• Based 
on 
analysis 
select 
agreements 
for 
renego/a/on. 
Your 
Example?
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
Example 
-­‐ 
Office 
Supplies 
• Most 
companies 
nego/ate 
an 
agreement 
with 
their 
office 
supply 
company 
that 
includes 
deeper 
discounts 
for 
certain 
items 
• Supply 
chain 
func/ons 
ofen 
rely 
on 
the 
vendor 
to 
determine 
the 
most 
deeply 
discounted 
items 
• Internal 
Audit 
can 
perform 
data 
analy/cs 
to 
determine 
the 
op/mal 
“market 
basket” 
to 
minimize 
cost 
Also 
look 
at… 
• Average 
cost 
per 
employee 
for 
office 
supplies, 
look 
for 
departments 
with 
significant 
outliers; 
this 
may 
indicate 
thef 
• Analyze 
for 
key 
words 
– MacBook, 
computer, 
projector, 
LCD, 
Bose, 
Bluetooth, 
phone, 
sofware 
• Analyze 
for 
shipping 
address 
17
Example 
– 
Telecommunica/ons 
(Mobile, 
Land 
Lines, 
and 
Internet) 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
• Analyze 
usage 
to 
determine 
Company’s 
need 
and 
iden/fy 
efficiencies. 
• Do 
services 
match 
business 
needs 
(interna/onal 
vs. 
domes/c)? 
• Determine 
if 
service 
agreement 
is 
op/mized 
for 
business 
needs. 
Also 
look 
at… 
• Unusual/added 
fees 
for 
services 
not 
needed 
for 
business 
use. 
• Analyze 
usage 
by 
employee 
and 
determine 
reasonableness 
based 
upon 
job 
func/on. 
– Does 
an 
employee 
that 
travels 
interna/onally 
once 
or 
twice 
per 
year 
need 
an 
interna/onal 
phone 
plan? 
18
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
Example 
-­‐ 
Shipping 
• Analyze 
shipment 
types 
(land, 
air, 
priority, 
next 
day, 
overnight, 
etc.) 
• Inbound 
shipment 
cost 
analysis. 
What 
rate 
are 
you 
paying 
for 
inbound 
shipment? 
Leverage 
company 
shipper/agreement. 
• Analysis 
of 
overnight 
vs. 
second 
day 
shipments, 
land 
vs. 
air, 
etc. 
• Shipping 
cost 
analysis 
by 
region 
shipped 
to 
and 
received. 
• Op/mize 
shipping 
service 
agreement 
for 
business 
need. 
19
Example 
– 
U/li/es 
(Electricity, 
Gas, 
Steam, 
etc.) 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
• Analyze 
usage 
by 
loca/on 
and 
period 
of 
/me. 
• Analyze 
peak 
(demand) 
charges 
and 
iden/fy 
root 
cause. 
• Review 
billing 
rates 
for 
reasonableness. 
Benchmark 
with 
other 
providers. 
• When 
possible, 
obtain 
gain 
of 
scale 
and 
use 
one 
provider 
for 
mul/ple 
loca/ons 
and 
services. 
• Iden/fy 
areas 
of 
waste 
of 
energy 
and 
gas. 
20
Other 
Processes 
-­‐ 
Discussion 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
• Name 
a 
func/on, 
process, 
ac/vity… 
21
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
Data 
Analy/c 
Resources 
• Remember…it’s 
not 
the 
tool 
it’s 
the 
thought 
process 
and 
design. 
• There 
are 
many 
good 
data 
analy/c 
tools. 
– Audit 
Control 
Language 
(ACL). 
hJp://www.acl.com/ 
– SAS 
JMP. 
hJp://www.jmp.com/ 
– Microsof 
Excel 
22
Thank 
You! 
www.linkedin.com/in/danielasamson/ 
© 
2014 
SRI 
Interna/onal 
-­‐ 
Company 
Confiden/al 
and 
Proprietary 
Informa/on 
23

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How to Leverage Data Analytics to Improve your Bottom Line_SF IIA Dec 2014

  • 1. San Francisco IIA – Winter Seminar How to Leverage Data Analy/cs to Improve your BoJom Line December 5, 2014 Dan Samson, Exec. Director and CAE, Assurance Services, SRI Interna/onal Stephanie Gray, Senior Manager, Assurance Services, SRI Interna/onal © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on
  • 2. © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on Agenda • Overview of SRI Interna/onal • Why Internal Audit Should Provide Data Analy/c Leadership • Value to the Enterprise • Examples of Data Analy/c Treasure Troves 2
  • 3. Overview of SRI Interna/onal Health Ultrasound Banking Novel drugs © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on • Who has heard of SRI Interna/onal? • You may be familiar with some of our innova/ons… 3 Siri First VPA Computer Mouse Personal compu3ng Telerobo/c Surgery Minimally invasive surgery Internet ARPANET -­‐ TCP-­‐based Internet transmission Magne3c ink character recogni3on Robo/cs Surface-­‐climbing robots Preclinical therapeu3cs for heart, lung, and blood
  • 4. Overview of SRI Interna/onal © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on 4 Universi3es, Na3onal Labs Fundamental Science Corpora3ons Basic Research Applied Research Product Development Produc3on SRI
  • 5. Why Internal Audit Should Provide Data Analy/c Leadership © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on 5 The Challenge: Innovate or Die • Value Factor = Perceived Customer Benefits Perceived Customer Costs • Benefits and Costs are determined by the customer (not by us!) • Who are your customers? Ø Audit Committee Ø Executive Management Ø Functional Owners Ø External Regulators Ø External (paying) Customers
  • 6. © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on Value to the Enterprise • Insights to business ac/vity; transac/on paJerns including anomalies • Process leaning • System op/miza/on • Reducing the cost of opera/ons • Revenue recovery and op/miza/on • Compliance monitoring 6
  • 7. © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on Value to the Enterprise • Data analy/cs empower audit teams to make transforma/ve change • Enables customers to understand their data in new and different ways • Drives process efficiencies • Delivers hard, measurable savings, cost avoidance, and revenue recovery 7
  • 8. © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on Value to the Enterprise • No more random or judgmental sampling, capability of analyzing 100% of data • Perform data analysis during planning, before field work, to priori/ze scope • Present data profiles at Opening Mee/ng with customers – Value add during opening mee/ng. – How many opening mee/ngs tell the customer something they don’t know? – How ofen are opening mee/ngs staid and formulaic? 8
  • 9. Data Analy/c Treasure Troves Every func/on, process, and ac/vity produces data. All have poten/al cost recovery, revenue recovery, or cost avoidance poten/al. The only limiter is your imagina/on! © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on 9
  • 10. Data Analy/c Treasure Troves © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on Tradi3onal • Travel & Expense • Accounts Payable • Corporate Credit Cards • Accounts Receivable • Payroll But Also… • Third Party Agreements • Office Supplies • Telecommunica/ons • General Ledger Op/miza/on • Inventory 10
  • 11. Example – Travel & Expense © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on • Reasonableness of cost incurred in compliance with policy • Analysis of airfare booking /meliness • Analysis of airfare credits (unused airfare credits from cancela/ons) • Double payments • Cash vs. credit card use paJerns • Top travelers – logical? • Execu/ve spending • Expenses just below requirement to provide suppor/ng documenta/on • Typical cost recovery / savings of 3% of travel expenditures (e.g. 3% of $10 million is $300,000). • Hotel stays at non-­‐preferred proper/es, unreasonable hotel rates, unreasonable hotel rate types (suite, upgraded rooms, etc.), hotel rate packages (breakfast included yet reimbursed for breakfast) • Airfare booking /meliness. Booking within 7 days of travel brings a ~33% premium. • Excess alcohol, types of alcohol (premium champagne) • Analysis of meal reimbursement amounts by staff for paJerns 11
  • 12. Travel & Expense Con/nued © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on Reasonableness of Expenditures Objec/ve: Assess expenses for reasonableness, reclaim excep/ons • Data extract from T&E System and any external travel provider. Key data include employee name, employee ID, expense amount, vendor name, expense date, expense type, travel purpose, travel dates and loca/on/s, FX rates. • Join files on employee name or ID. • Subtotal expenditures incurred by employee. ID top spenders. Examine hotel rates. Determine median by city and look for outliers. • Limo services. • Airline club memberships • Meals. Alcohol. Other reimbursements. • Airfare class service. Airfare Credits Objec/ve: Iden/ty unused airfare credits for use before expira/on • Data extract from external travel provider of unused airfare credits, employee names, airline, $ dollar amount of credit, original travel date, credit expira/on date. • Calculate difference between outstanding credits and change fees for net available cost savings. • Analyze credits by employee for paJerns. For personnel with excess credits and / or high volume rebooking ac/vity, verify appropriate use of credits for business purposes. • Extract data charts for use by managers before airfare credits expire. • Certain airlines (United) will allow pooling of credits for use by other employees. 12 Airfare Booking Timeliness Objec/ve: Assess reserva/on /meliness for cost avoidence • Data extract from travel provider including employee name / ID, date of reserva/on, date of travel, cost of airfare and fees. • Calculate number of days between date of reserva/on and date of travel. Stra/fy based on the number of resul/ng days. • Calculate median $ airfare for each grouping. • Calculate variance between groupings (<7 days before travel, 7<14 days before travel, 14<21 days before travel, >21 days before travel) and average $ airfare in popula/on. Expense PaJerns Objec/ve: Iden/fy poten/al fraud and misappropria/on of funds • Data extract as noted in Reasonableness • Run Benford Law Analysis (three digit) on expense amount • Extract anomalies for further inves/ga/on • Analyze cost paJerns over the year for reasonableness
  • 13. Example -­‐ Accounts Payable © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on • Duplicate Payments; especially at companies with mul/ple accoun/ng systems or divisions • Payment discounts lost (due date vs. paid date) • Payment amount > invoice amount • Aging of open accounts payable invoices • Vendor credits • Top vendors by $ and by volume (look at high and low volume) • Benford Analysis • Payments to employees • Payments to vendors not on the vendor master list • Round $ amounts (payments or invoice amount) • Splixng payments 13
  • 14. Accounts Payable con/nued © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on Duplicate Payments Objec/ve: Iden/fy duplicate payments • Data extract of payments made from Accounts Payable including vendor name, vendor number, payment amount, payment date, payment/check #, invoice net amount, invoice creator ID, invoice date, invoice due date, invoice #, payment loca/on, payment type, payment void date. • Analyze data for payments for the same invoice amount, vendor name, and date. Key is “invoice amount”, as payment could be for mul/ple invoices. • Analyze payments for different vendors with similar names. • Analyze payments for different vendors with same address Payment Discounts Objec/ve: Iden/fy lost vendor payment discounts • Data extract as noted under duplicate payments as well as vendor master file. • Extract vendors with payment discount terms and join to accounts payable file on vendor ID. • Analyze payment date vs. due date to iden/fy those vendors paid afer discount period. • Calculate total discount lost by vendor for year. 14 Vendor Credits Objec/ve: Iden/fy outstanding credits for inac/ve vendors • Use data extract to query balances by vendor name for credit balances. • Evaluate age of credits. • Request refund checks for inac/ve vendors or greatly aged credits. Cash Flow (commercial enterprise) Objec/ve: Op/mize cash flow related to payments • Data extract as noted under duplicate payments and payment discounts. • Calculate (create new field) “# of days to pay” by vendor by comparing invoice due date to payment date. • Analyze delta between # days to pay and payment terms (10, 30, 45 days) by vendor for all payments. • The difference represents underu/lized cash flow. Consider adding interest rate factor.
  • 15. Example -­‐ Third Party Agreements © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on • Zombie (evergreen) agreements such as subscrip/ons, services, etc. • Agreements with automa/c rate increases • Mul/ple agreements with the same vendor • Vendors billing at incorrect rates • Vendors providing wrong type / level of service vs. agreement 15
  • 16. Third Party Agreements con/nued © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on Sofware Licenses Objec/ve: Analyze sofware agreements for op/miza/on • Extract payment data for sofware providers/vendors. Determine top provider over a certain $ threshold • Request licensing data from sofware provider (non-­‐enterprise-­‐ wide agreement) including licensee / IP address or other iden/fier. • Request log-­‐on data from provider • Analyze / compare log-­‐on data vs. ac/ve licenses. • Iden/fy licenses that are not used or infrequently used for elimina/on Volume Discounts Objec/ve: Iden/fy vendors with mul/ple agreements for consolida/on • Data extract of payments made from Accounts Payable including vendor name, vendor number, and payment amount. • Analyze for like vendor names. • Sum spend by like vendor names. • Analyze for renego/a/on poten/al. For example, a company may have mul/ple agreements with a telecommunica/ons provider with mul/ple plans instead of one plan. 16 Zombie Agreements Objec/ve: Iden/fy vendor agreements on auto-­‐pilot for cost savings • Data extract of vendor master file including vendor name, vendor ID, and contract / agreement expira/on date. If not in vendor master file, extract from appropriate system. Data extract of payments made from Accounts Payable including vendor name and vendor ID. Join on vendor ID for those vendors with no agreement expira/on date AND payments in last 12 months. • Analyze spend for vendor agreements with no expira/on date for mul/-­‐year period. Assess reasonableness of spend over /me. • Based on analysis select agreements for renego/a/on. Your Example?
  • 17. © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on Example -­‐ Office Supplies • Most companies nego/ate an agreement with their office supply company that includes deeper discounts for certain items • Supply chain func/ons ofen rely on the vendor to determine the most deeply discounted items • Internal Audit can perform data analy/cs to determine the op/mal “market basket” to minimize cost Also look at… • Average cost per employee for office supplies, look for departments with significant outliers; this may indicate thef • Analyze for key words – MacBook, computer, projector, LCD, Bose, Bluetooth, phone, sofware • Analyze for shipping address 17
  • 18. Example – Telecommunica/ons (Mobile, Land Lines, and Internet) © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on • Analyze usage to determine Company’s need and iden/fy efficiencies. • Do services match business needs (interna/onal vs. domes/c)? • Determine if service agreement is op/mized for business needs. Also look at… • Unusual/added fees for services not needed for business use. • Analyze usage by employee and determine reasonableness based upon job func/on. – Does an employee that travels interna/onally once or twice per year need an interna/onal phone plan? 18
  • 19. © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on Example -­‐ Shipping • Analyze shipment types (land, air, priority, next day, overnight, etc.) • Inbound shipment cost analysis. What rate are you paying for inbound shipment? Leverage company shipper/agreement. • Analysis of overnight vs. second day shipments, land vs. air, etc. • Shipping cost analysis by region shipped to and received. • Op/mize shipping service agreement for business need. 19
  • 20. Example – U/li/es (Electricity, Gas, Steam, etc.) © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on • Analyze usage by loca/on and period of /me. • Analyze peak (demand) charges and iden/fy root cause. • Review billing rates for reasonableness. Benchmark with other providers. • When possible, obtain gain of scale and use one provider for mul/ple loca/ons and services. • Iden/fy areas of waste of energy and gas. 20
  • 21. Other Processes -­‐ Discussion © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on • Name a func/on, process, ac/vity… 21
  • 22. © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on Data Analy/c Resources • Remember…it’s not the tool it’s the thought process and design. • There are many good data analy/c tools. – Audit Control Language (ACL). hJp://www.acl.com/ – SAS JMP. hJp://www.jmp.com/ – Microsof Excel 22
  • 23. Thank You! www.linkedin.com/in/danielasamson/ © 2014 SRI Interna/onal -­‐ Company Confiden/al and Proprietary Informa/on 23