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HOW TO GET THE RIGHT DATA FOR YOUR
AUDIT IN 3 EASY STEPS
WEBINAR
PRESENTER
Scott Jones, PE, CIA, CRMA
President and CEO
Key Performance Initiatives Inc.
AGENDA
1. Data Challenges
2. Objective
3. 3-Step Process
• IDENTIFY the data
• LOCATE the data
• VERIFY the data
4. Benefits and Take-Aways
DATA CHALLENGES
Cohn, Michael. Auditors see increased demand for data analytics. Accounting Today, April 5, 2017
https://www.accountingtoday.com/news/auditors-see-increased-demand-for-data-analytics
DATA CHALLENGES
Difficulty obtaining, accessing,
and/or compiling the data*
* Stippich & Preber. Data Analytics. The Institute of Internal Auditors Research
Foundation, 2016
A CAUTIONARY TALE
“Send me all your data”
OBJECTIVE: 3-STEP PROCESS
• Define a 3 Step Process for obtaining the right data:
• Identify
• Locate
• Verify
“But clearly within the audit space, the use of data analytics is
considered the best practice of today and the future….”
Brian Christensen, Executive VP of Global Internal Audit and Financial Advisory, Protiviti
THE FUNDAMENTAL ASSUMPTION
• Effective IT Internal Control Framework
• IT General Controls
• IT Application Controls
• (for the source of the data)
• Without IT controls, the auditor cannot rely on the data
• Testing of IT Controls is beyond the scope of this webinar
3-STEP PROCESS: FIND RIGHT DATA
STEP 1: IDENTIFY THE DATA
• Audit Objectives
• Audit Scope
• Data Analytics Objectives
• Audit Procedures
STEP 1: AUDIT OBJECTIVES
• Define specifically the intended outcomes of the audit
• IIA Standard 2210
• Objectives must be established for each engagement
• Derived from a risk assessment
• Consider: errors, fraud, noncompliance & other exposures
• Adequate criteria
• Examples
• Determine the operating effectiveness of internal controls for the
cash disbursement process.
• Assess compliance with the AP transaction approval policy
• Boundaries of the audit
• Process
• Location
• Time frame
• IIA Standard 2220
• The established scope must be sufficient to accomplish the
objectives of the engagement
• Consider relevant systems, records, personnel & physical properties
• Example
• Accounts Payable Process
• San Diego Region
• 2016
STEP 1: AUDIT SCOPE
STEP 1: DATA ANALYTICS OBJECTIVES
• Derived from Audit Objectives
• Scope should match audit scope
• Clearly defined purpose
• Examples
• To test the population of 2016 AP transactions of the San Diego
Region for indicators of fraud
• To test the population of 2016 AP transactions of the San Diego
Region for compliance with transaction approval thresholds
• To test the population of 2016 AP transactions of the San Diego
region to assure that purchases are from authorized vendors
STEP 1: DATA ANALYTICS PROCEDURES
• To achieve Data Analytic Objectives
• Examples
• Duplicates Test – invoice payments
• Join – vendor master file to AP data
• Summarization – identify high risk vendors
• Benford’s Law Analysis – anomalous frequency at
approval thresholds
CAVEAT RE: IPPF STANDARD 2310
• Internal Auditors must identify sufficient, reliable, relevant,
and useful information to achieve the engagement’s
objectives
• Sufficient – factual, adequate, convincing
• Reliable – best attainable information, using appropriate techniques
• Relevant – supports observations & conclusion, consistent with
objectives
• Useful – helps the organization meet its goals
STEP 2: LOCATE THE DATA
• Sources of Data
• Establish Relationships
• Data Request
• Types of Data
STEP 2: SOURCES OF DATA
• Self-service access
• Standard reports and queries
• IT or other third parties
• Audited entity – NOT a reliable source
STEP 2: ESTABLISH RELATIONSHIPS
• Who knows where the data are stored?
• Audited function
• IT
• Don’t rely on email
• Talk face to face
• Not just during the audit
• Seek to understand
• Availability
• Locations of databases
• Means of access
• Required authorizations
• Required security – PII, HIPAA, ITAR
STEP 2: DATA REQUEST
• Consider the Computer System
• Consider means of transfer
• Describe report
• Objective and scope
• Define fields
• Type of data
• Length
• Format
• Precision
STEP 2: TYPES OF DATA
• Character (text)
• Date
• Numeric
• Variable
• Continuous (Interval, Ratio)
• Discrete (integers, counts)
• Attribute
• Ordinal (ranked)
• Nominal (arbitrary classifications)
STEP 2: CHARACTER OR TEXT DATA
• Key consideration: Length
• Numbers imported as text may not be useful for calculations
• Check & Invoice Numbers – Numbers or Text?
STEP 2: DATE & TIME
• Key Consideration: Format
• Determine what the source reports
• Know what your software can import
• Format determines length
• Date only? or Date and Time?
STEP 2: NUMERIC
• Key consideration: Precision
• Source Precision
• Useful Precision
• Type of Data
STEP 2: TYPES OF DATA
• Variable
• Also referred to as Quantitative
• Types include Interval, Ratio
• Numbered
• Attribute
• Also referred to as Qualitative
• Types Nominal, Ordinal
• Good/Bad, Red/Yellow/Green
• Sometimes represented by numbers
STEP 2: HIERARCHY OF NUMERIC DATA
• Variables
• Real Numbers
• Continuous: All calculations are valid
• Discrete: Most calculations are valid
• Data may be treated as ordinal or nominal
• Ordinal
• Values represent ranked order of the data
• Calculations based on ordering are valid
• Data may be treated as nominal but not variable
• Nominal
• Values are arbitrary numbers that represent categories
• Only frequency calculations are valid
• Data may not be treated as ordinal or variable
STEP 2: LOCATE THE DATA
STEP 2: EXAMPLE DATA REQUEST
Report
Report Name Report Description Expected
Completion
Date
AP Report – San Diego Oracle report of account payable
transactions for KPI San Diego from
payment dates 1/1/2016 through
12/31/2016
5/31/2017
STEP 2: EXAMPLE DATA REQUEST
Fields
STEP 3: VERIFY DATA INTEGRITY
• Transfer the Data
• Completeness
• Reliability
STEP 3: TRANSFER THE DATA
• Minimize intermediary handling
• Options
• ODBC
• FTP
• Shared Drive
• SharePoint
• Print report or PDF
• Email
• Portable Media
• Consider security requirements
• Access management
• Encryption
STEP 3: COMPLETENESS OF DATA
• Compare record counts to source
• Reliability
• Compare control totals for numeric fields to source
• For all important numeric fields
• Watch for blanks reported as “Errors”
• Run Summarizations and evaluate reasonableness
• Check first and last dates
• Check key sequences for gaps and duplicates
• Example: Concur can report multiple records for one expense report
• Compare to print reports
STEP 3: VERIFY DATA INTEGRITY
BENEFITS & TAKE-AWAYS
• IDENTIFY
• Data relevant to audit objectives
• LOCATE
• Independent sources
• Communicate face-to-face
• Specific requests
• VERIFY
• Data integrity
• Minimize transfer handling
• Completeness
• Reliability
Learn more about
CaseWare IDEA Data Analysis
Contact us at salesidea@caseware.com to
schedule a demonstration
HOW TO GET THE RIGHT DATA FOR YOUR
AUDIT IN 3 EASY STEPS
WEBINAR
Visit casewareanalytics.com
Email salesidea@caseware.com

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Audit Webinar How to get the right data for your audit in 3 easy steps

  • 1. HOW TO GET THE RIGHT DATA FOR YOUR AUDIT IN 3 EASY STEPS WEBINAR
  • 2. PRESENTER Scott Jones, PE, CIA, CRMA President and CEO Key Performance Initiatives Inc.
  • 3. AGENDA 1. Data Challenges 2. Objective 3. 3-Step Process • IDENTIFY the data • LOCATE the data • VERIFY the data 4. Benefits and Take-Aways
  • 4. DATA CHALLENGES Cohn, Michael. Auditors see increased demand for data analytics. Accounting Today, April 5, 2017 https://www.accountingtoday.com/news/auditors-see-increased-demand-for-data-analytics
  • 5. DATA CHALLENGES Difficulty obtaining, accessing, and/or compiling the data* * Stippich & Preber. Data Analytics. The Institute of Internal Auditors Research Foundation, 2016
  • 6. A CAUTIONARY TALE “Send me all your data”
  • 7. OBJECTIVE: 3-STEP PROCESS • Define a 3 Step Process for obtaining the right data: • Identify • Locate • Verify “But clearly within the audit space, the use of data analytics is considered the best practice of today and the future….” Brian Christensen, Executive VP of Global Internal Audit and Financial Advisory, Protiviti
  • 8. THE FUNDAMENTAL ASSUMPTION • Effective IT Internal Control Framework • IT General Controls • IT Application Controls • (for the source of the data) • Without IT controls, the auditor cannot rely on the data • Testing of IT Controls is beyond the scope of this webinar
  • 9. 3-STEP PROCESS: FIND RIGHT DATA
  • 10. STEP 1: IDENTIFY THE DATA • Audit Objectives • Audit Scope • Data Analytics Objectives • Audit Procedures
  • 11. STEP 1: AUDIT OBJECTIVES • Define specifically the intended outcomes of the audit • IIA Standard 2210 • Objectives must be established for each engagement • Derived from a risk assessment • Consider: errors, fraud, noncompliance & other exposures • Adequate criteria • Examples • Determine the operating effectiveness of internal controls for the cash disbursement process. • Assess compliance with the AP transaction approval policy
  • 12. • Boundaries of the audit • Process • Location • Time frame • IIA Standard 2220 • The established scope must be sufficient to accomplish the objectives of the engagement • Consider relevant systems, records, personnel & physical properties • Example • Accounts Payable Process • San Diego Region • 2016 STEP 1: AUDIT SCOPE
  • 13. STEP 1: DATA ANALYTICS OBJECTIVES • Derived from Audit Objectives • Scope should match audit scope • Clearly defined purpose • Examples • To test the population of 2016 AP transactions of the San Diego Region for indicators of fraud • To test the population of 2016 AP transactions of the San Diego Region for compliance with transaction approval thresholds • To test the population of 2016 AP transactions of the San Diego region to assure that purchases are from authorized vendors
  • 14. STEP 1: DATA ANALYTICS PROCEDURES • To achieve Data Analytic Objectives • Examples • Duplicates Test – invoice payments • Join – vendor master file to AP data • Summarization – identify high risk vendors • Benford’s Law Analysis – anomalous frequency at approval thresholds
  • 15. CAVEAT RE: IPPF STANDARD 2310 • Internal Auditors must identify sufficient, reliable, relevant, and useful information to achieve the engagement’s objectives • Sufficient – factual, adequate, convincing • Reliable – best attainable information, using appropriate techniques • Relevant – supports observations & conclusion, consistent with objectives • Useful – helps the organization meet its goals
  • 16. STEP 2: LOCATE THE DATA • Sources of Data • Establish Relationships • Data Request • Types of Data
  • 17. STEP 2: SOURCES OF DATA • Self-service access • Standard reports and queries • IT or other third parties • Audited entity – NOT a reliable source
  • 18. STEP 2: ESTABLISH RELATIONSHIPS • Who knows where the data are stored? • Audited function • IT • Don’t rely on email • Talk face to face • Not just during the audit • Seek to understand • Availability • Locations of databases • Means of access • Required authorizations • Required security – PII, HIPAA, ITAR
  • 19. STEP 2: DATA REQUEST • Consider the Computer System • Consider means of transfer • Describe report • Objective and scope • Define fields • Type of data • Length • Format • Precision
  • 20. STEP 2: TYPES OF DATA • Character (text) • Date • Numeric • Variable • Continuous (Interval, Ratio) • Discrete (integers, counts) • Attribute • Ordinal (ranked) • Nominal (arbitrary classifications)
  • 21. STEP 2: CHARACTER OR TEXT DATA • Key consideration: Length • Numbers imported as text may not be useful for calculations • Check & Invoice Numbers – Numbers or Text?
  • 22. STEP 2: DATE & TIME • Key Consideration: Format • Determine what the source reports • Know what your software can import • Format determines length • Date only? or Date and Time?
  • 23. STEP 2: NUMERIC • Key consideration: Precision • Source Precision • Useful Precision • Type of Data
  • 24. STEP 2: TYPES OF DATA • Variable • Also referred to as Quantitative • Types include Interval, Ratio • Numbered • Attribute • Also referred to as Qualitative • Types Nominal, Ordinal • Good/Bad, Red/Yellow/Green • Sometimes represented by numbers
  • 25. STEP 2: HIERARCHY OF NUMERIC DATA • Variables • Real Numbers • Continuous: All calculations are valid • Discrete: Most calculations are valid • Data may be treated as ordinal or nominal • Ordinal • Values represent ranked order of the data • Calculations based on ordering are valid • Data may be treated as nominal but not variable • Nominal • Values are arbitrary numbers that represent categories • Only frequency calculations are valid • Data may not be treated as ordinal or variable
  • 26. STEP 2: LOCATE THE DATA
  • 27. STEP 2: EXAMPLE DATA REQUEST Report Report Name Report Description Expected Completion Date AP Report – San Diego Oracle report of account payable transactions for KPI San Diego from payment dates 1/1/2016 through 12/31/2016 5/31/2017
  • 28. STEP 2: EXAMPLE DATA REQUEST Fields
  • 29. STEP 3: VERIFY DATA INTEGRITY • Transfer the Data • Completeness • Reliability
  • 30. STEP 3: TRANSFER THE DATA • Minimize intermediary handling • Options • ODBC • FTP • Shared Drive • SharePoint • Print report or PDF • Email • Portable Media • Consider security requirements • Access management • Encryption
  • 31. STEP 3: COMPLETENESS OF DATA • Compare record counts to source • Reliability • Compare control totals for numeric fields to source • For all important numeric fields • Watch for blanks reported as “Errors” • Run Summarizations and evaluate reasonableness • Check first and last dates • Check key sequences for gaps and duplicates • Example: Concur can report multiple records for one expense report • Compare to print reports
  • 32. STEP 3: VERIFY DATA INTEGRITY
  • 33. BENEFITS & TAKE-AWAYS • IDENTIFY • Data relevant to audit objectives • LOCATE • Independent sources • Communicate face-to-face • Specific requests • VERIFY • Data integrity • Minimize transfer handling • Completeness • Reliability
  • 34. Learn more about CaseWare IDEA Data Analysis Contact us at salesidea@caseware.com to schedule a demonstration
  • 35. HOW TO GET THE RIGHT DATA FOR YOUR AUDIT IN 3 EASY STEPS WEBINAR Visit casewareanalytics.com Email salesidea@caseware.com