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Data Mining Data Analysis
Financial Services

             Heriot Prentice
             Vaco Orlando
Heriot Prentice
Over 28 years of proven management &
consulting experience in internal auditing. This
includes:

o Audit Team Leader for the Scottish Office
  Audit Unit - Scotland's equivalent of the
  Government Accounting Office (GAO)
o Senior Manager of Enterprise Risk Security
  (ERS) with Deloitte

Heriot is also a Member & Distinguished Faculty Member of the
Institute of Internal Auditors (IIA).

Also led the creation & implementation of:

o The GAIT Methodology
o The Global Technology Audit Guide (GTAG)
What is Data Mining/Analysis?
Data mining is the process of
discovering actionable information
from large sets of data. Data
mining uses mathematical
analysis to derive patterns and
trends that exist in data.
Typically, these patterns cannot
be discovered by traditional data
exploration because the
relationships are too complex or
because there is too much data.
Where do You Start?
Conduct an evaluation of data
analysis software; determine the
best fit for your audit function and
build the confidence that the
product selected will yield the
results you desire to bring
excellence to your department,

including recognition of your
team’s skills and abilities to the
entire organization.
What are the benefits?
Potential to review 100% off your
data population. Thus providing
additional assurance

Clients can save money, identify
potential fraud and assist them to
comply with current legislation. We
use a sophisticated suite of data
analysis tools to review information
held on your systems electronically
in an efficient, timely and cost-
effective manner.
Example Usage Scenarios
Asset Management

Loans by Bank or Branch

Investment Securities

Cash Disbursements

Credit Card Management

Real Estate Loans

Savings and Demand Deposits

Trust Assets

General Accounting General Ledger

Pension and Other Trusts
Our Part in the puzzle?
o We help clients determine a
  profile of features designed to
  meet the objectives that they have
  in mind

o Educate and train your staff on
  how to maximize the most form
  your selected product

o Run the complete data
  mining/analysis process
Contact Me
If you have a question or simply want to connect for a possible future project.



o Email: hprentice@vacoorlando.com
o LinkedIn:
  http://www.linkedin.com/in/heriotprentice
o Phone: (407) 712-7878
o Cell: (407) 375-3182


My Services:

o http://linkd.in/Services_Vaco_Resources

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Data mining financial services

  • 1. Data Mining Data Analysis Financial Services Heriot Prentice Vaco Orlando
  • 2. Heriot Prentice Over 28 years of proven management & consulting experience in internal auditing. This includes: o Audit Team Leader for the Scottish Office Audit Unit - Scotland's equivalent of the Government Accounting Office (GAO) o Senior Manager of Enterprise Risk Security (ERS) with Deloitte Heriot is also a Member & Distinguished Faculty Member of the Institute of Internal Auditors (IIA). Also led the creation & implementation of: o The GAIT Methodology o The Global Technology Audit Guide (GTAG)
  • 3. What is Data Mining/Analysis? Data mining is the process of discovering actionable information from large sets of data. Data mining uses mathematical analysis to derive patterns and trends that exist in data. Typically, these patterns cannot be discovered by traditional data exploration because the relationships are too complex or because there is too much data.
  • 4. Where do You Start? Conduct an evaluation of data analysis software; determine the best fit for your audit function and build the confidence that the product selected will yield the results you desire to bring excellence to your department, including recognition of your team’s skills and abilities to the entire organization.
  • 5. What are the benefits? Potential to review 100% off your data population. Thus providing additional assurance Clients can save money, identify potential fraud and assist them to comply with current legislation. We use a sophisticated suite of data analysis tools to review information held on your systems electronically in an efficient, timely and cost- effective manner.
  • 6. Example Usage Scenarios Asset Management Loans by Bank or Branch Investment Securities Cash Disbursements Credit Card Management Real Estate Loans Savings and Demand Deposits Trust Assets General Accounting General Ledger Pension and Other Trusts
  • 7. Our Part in the puzzle? o We help clients determine a profile of features designed to meet the objectives that they have in mind o Educate and train your staff on how to maximize the most form your selected product o Run the complete data mining/analysis process
  • 8. Contact Me If you have a question or simply want to connect for a possible future project. o Email: hprentice@vacoorlando.com o LinkedIn: http://www.linkedin.com/in/heriotprentice o Phone: (407) 712-7878 o Cell: (407) 375-3182 My Services: o http://linkd.in/Services_Vaco_Resources