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Evolution of Data Analysis By Monica Holtforster
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Page 1: Evolution of Data Analysis By Monica Holtforster.

Evolution of Data Analysis

By Monica Holtforster

Page 2: Evolution of Data Analysis By Monica Holtforster.

History of Audit Analytics

• Cobol / Easytrieve• DOS• Windows• Server Technology

Page 3: Evolution of Data Analysis By Monica Holtforster.

In the Beginning

Page 4: Evolution of Data Analysis By Monica Holtforster.

DOS Based Data Analytics

Page 5: Evolution of Data Analysis By Monica Holtforster.

Today’s Audit Software

Page 6: Evolution of Data Analysis By Monica Holtforster.

Impact of Technology on Software

• Speed of processing / file size accommodated• Ease of use• Import options available• Graphical repesentation• Technical level of user

Page 7: Evolution of Data Analysis By Monica Holtforster.

Data created and captured worldwide

Source: “Digital Universe” study 2008

Exabytes

Tenfold growth observed in five years

ATMsERPs

Transactional data CRM , Accounting

databases, new compliance requirements, new medias etc…

Page 8: Evolution of Data Analysis By Monica Holtforster.

IDC Study highlights

• In 2011, digital data was 10 times size of 2006

• 44-fold in the next ten years

• Data growth can not be ignored

• Tools are in place and proven

Page 9: Evolution of Data Analysis By Monica Holtforster.

Evolution of Data Analysis Techniques

Source: ISACA– July2011

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Where is your company’s use of data analysis on this chart?

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Definition of Ad Hoc

• Typically used for initial investigation • Typically run to support specific projects• Rarely performed directly on production

systems• May be difficult to repeat if steps not well

documented• Often relies on skill of selected skilled

individuals

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Evolution of Data Analysis techniques

Source: ISACA– July2011

PC based audit software

Page 13: Evolution of Data Analysis By Monica Holtforster.

Definition of Repeatable

• Predefined and scripted to perform the same tests on similar data

• Data access tools may be used to import data directly from production systems

• Reliance on skilled individuals significantly reduced

• The quality of analysis is improved and remains consistent as the data acquisition process is partially or fully automated

Page 14: Evolution of Data Analysis By Monica Holtforster.

Centralized Analytics

• Centralized approach for the development, storage and operation of repeatable DA

• Standards for development of DA are documented

• Applications are set up and scheduled to run against the centralized data on a regular basis

• Data can either be pushed or pulled from different sources

Page 15: Evolution of Data Analysis By Monica Holtforster.

Source: ISACA– July2011

Evolution of Data Analysis techniques

Server based software

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Continuous Monitoring

• Analytics are fully automated and running at regularly scheduled intervals

• may be embedded directly into a production system

• often developed and owned by operations management

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Source: ISACA– July2011

Evolution of Data Analysis techniques

CM software running on a server

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Recommendations

• Do simple process development first, using existing software

• Automate data extraction and validation• Reduce false positives• Prioritize by likelihood of recovery• Refine and document the testing process

over several cycles.

Page 19: Evolution of Data Analysis By Monica Holtforster.

Future Expectations

Predictive pre-canned analysisIncreased intelligence in the

softwareIntegration of different toolsUse of external sources for

comparison

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Conclusion

As the definition of data changes, who knows what additional changes we will see incorporated into data analytics?