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Data Quality
Introduction
Today is world of heterogeneity.
We have different technologies.
We operate on different platforms.
We have large amount of data being generated
everyday in all sorts of organizations and
Enterprises.
And we do have problems with data.
Problems
Duplicated , inconsistent
, ambiguous, incomplete.
So there is a need to collect data in one
place and clean up the data.
Why data quality matters?
Good data is your most valuable asset, and
bad data can seriously harm your
business and credibility…
1.What have you missed?
2.When things go wrong.
3.Making confident decisions.
What is data quality?
Data quality is a perception or an assessment
of data’s fitness to serve its purpose in a given
context.
It is described by several dimensions like
•Correctness / Accuracy : Accuracy of data is the
degree to which the captured data correctly describes
the real world entity.
•Consistency: This is about the single version of truth.
Consistency means data throughout the enterprise
should be sync with each other.
Contd…
•Completeness: It is the extent to which
the expected attributes of data are
provided.
•Timeliness: Right data to the right person
at the right time is important for business.
•Metadata: Data about data.
Maintenance of data quality
Data quality results from the process of going through
the data and scrubbing it, standardizing it, and de
duplicating records, as well as doing some of the data
enrichment.
1. Maintain complete data.
2. Clean up your data by standardizing it using rules.
3. Use fancy algorithms to detect duplicates. Eg: ICS
and Informatics Computer System.
4. Avoid entry of duplicate leads and contacts.
5. Merge existing duplicate records.
6. Use roles for security.
Bill no CustomerName SocialSecurityNumber
101 Mr. Aleck Stevenson ADWPS10017
Bill no CustomerName SocialSecurityNumber
205 Mr. S Aleck ADWPS10017
Bill no CustomerName SocialSecurityNumber
314 Mr. Stevenson Aleck ADWPS10017
Bill no CustomerName SocialSecurityNumber
316 Mr. Alec Stevenson ADWPS10017
Invoice 3
Invoice 2
Invoice 4
Invoice 1
Inconsistent data before cleaning up
Bill no CustomerName SocialSecurityNumber
205 Mr. Aleck Stevenson ADWPS10017
Bill no CustomerName SocialSecurityNumber
101 Mr. Aleck Stevenson ADWPS10017
Bill no CustomerName SocialSecurityNumber
314 Mr. Aleck Stevenson ADWPS10017
Bill no CustomerName SocialSecurityNumber
316 Mr. Aleck Stevenson ADWPS10017
Invoice 1
Invoice 4
Invoice 3
Invoice 2
Consistent data after cleaning up
Data Profiling
Context
In process of data warehouse design, many database
professionals face situations like:
1. Several data inconsistencies in source, like missing
records or NULL values.
2. Or, column they chose to be the primary key column is
not unique throughout the table.
3. Or, schema design is not coherent to the end user
requirement.
4. Or, any other concern with the data, that must have been
fixed right at the beginning.
To fix such data quality issues would mean
making changes in ETL data flow
packages., cleaning the identified
inconsistencies etc.
This in turn will lead to a lot of re-work to be
done.
Re-work will mean added costs to the
company, both in terms of time and effort.
So, what one would do in such a case?
Solution
Instead of a solution to the problem, it would be
better to catch it right at the start before it
becomes a problem.
After all “PREVENTION IS BETTER THAN CURE”.
Hence data profiling software came to the
rescue.
What is data profiling ?
It is the process of statistically examining and analyzing
the content in a data source, and hence collecting
information about the data. It consists of techniques
used to analyze the data we have for accuracy and
completeness.
1. Data profiling helps us make a thorough assessment
of data quality.
2. It assists the discovery of anomalies in data.
3. It helps us understand
content, structure, relationships, etc. about the data
in the data source we are analyzing.
Contd…
4. It helps us know whether the existing data can be
applied to other areas or purposes.
5. It helps us understand the various
issues/challenges we may face in a database
project much before the actual work begins. This
enables us to make early decisions and act
accordingly.
6. It is also used to assess and validate metadata.
When and how to conduct data
profiling?
Generally, data profiling is conducted in two
ways:
1.Writing SQL queries on sample data extracts
put into a database.
2.Using data profiling tools.
When to conduct Data
Profiling?
-> At the discovery/requirements
gathering phase
-> Just before the dimensional modeling
process
-> During ETL package design.
How to conduct Data Profiling?
Data profiling involves statistical analysis of the data at
source and the data being loaded, as well as analysis of
metadata. These statistics may be used for various
analysis purposes. Common examples of analyses to be
done are:
Data quality: Analyze the quality of data at the data
source.
NULL values: Look out for the number of NULL values in
an attribute.
Candidate keys: Analysis of the extent to which certain
columns are distinct will give developer useful
information w. r. t. selection of candidate keys.
Primary key selection: To check whether the candidate key
column does not violate the basic requirements of not
having NULL values or duplicate values.
Empty string values: A string column may contain NULL or
even empty sting values that may create problems later.
String length: An analysis of largest and shortest possible
length as well as the average string length of a sting-type
column can help us decide what data type would be
most suitable for the said column.
Identification of cardinality: The cardinality relationships
are important for inner and outer join considerations
with regard to several BI tools.
Data format: Sometimes, the format in which certain
data is written in some columns may or may not be
user-friendly.
Common Data Profiling Software
Most of the data-integration/analysis soft-wares have data
profiling built into them. Alternatively, various independent
data profiling tools are also available. Some popular ones are:
• Trillium Enterprise Data quality
• Datiris Profiler
• Talend Data Profiler
• IBM Infosphere Information Analyzer
• SSIS Data Profiling Task
• Oracle Warehouse Builder
Thanks…

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Data quality and data profiling

  • 2. Introduction Today is world of heterogeneity. We have different technologies. We operate on different platforms. We have large amount of data being generated everyday in all sorts of organizations and Enterprises. And we do have problems with data.
  • 3. Problems Duplicated , inconsistent , ambiguous, incomplete. So there is a need to collect data in one place and clean up the data.
  • 4. Why data quality matters? Good data is your most valuable asset, and bad data can seriously harm your business and credibility… 1.What have you missed? 2.When things go wrong. 3.Making confident decisions.
  • 5. What is data quality? Data quality is a perception or an assessment of data’s fitness to serve its purpose in a given context. It is described by several dimensions like •Correctness / Accuracy : Accuracy of data is the degree to which the captured data correctly describes the real world entity. •Consistency: This is about the single version of truth. Consistency means data throughout the enterprise should be sync with each other.
  • 6. Contd… •Completeness: It is the extent to which the expected attributes of data are provided. •Timeliness: Right data to the right person at the right time is important for business. •Metadata: Data about data.
  • 7. Maintenance of data quality Data quality results from the process of going through the data and scrubbing it, standardizing it, and de duplicating records, as well as doing some of the data enrichment. 1. Maintain complete data. 2. Clean up your data by standardizing it using rules. 3. Use fancy algorithms to detect duplicates. Eg: ICS and Informatics Computer System. 4. Avoid entry of duplicate leads and contacts. 5. Merge existing duplicate records. 6. Use roles for security.
  • 8. Bill no CustomerName SocialSecurityNumber 101 Mr. Aleck Stevenson ADWPS10017 Bill no CustomerName SocialSecurityNumber 205 Mr. S Aleck ADWPS10017 Bill no CustomerName SocialSecurityNumber 314 Mr. Stevenson Aleck ADWPS10017 Bill no CustomerName SocialSecurityNumber 316 Mr. Alec Stevenson ADWPS10017 Invoice 3 Invoice 2 Invoice 4 Invoice 1 Inconsistent data before cleaning up
  • 9. Bill no CustomerName SocialSecurityNumber 205 Mr. Aleck Stevenson ADWPS10017 Bill no CustomerName SocialSecurityNumber 101 Mr. Aleck Stevenson ADWPS10017 Bill no CustomerName SocialSecurityNumber 314 Mr. Aleck Stevenson ADWPS10017 Bill no CustomerName SocialSecurityNumber 316 Mr. Aleck Stevenson ADWPS10017 Invoice 1 Invoice 4 Invoice 3 Invoice 2 Consistent data after cleaning up
  • 11. Context In process of data warehouse design, many database professionals face situations like: 1. Several data inconsistencies in source, like missing records or NULL values. 2. Or, column they chose to be the primary key column is not unique throughout the table. 3. Or, schema design is not coherent to the end user requirement. 4. Or, any other concern with the data, that must have been fixed right at the beginning.
  • 12. To fix such data quality issues would mean making changes in ETL data flow packages., cleaning the identified inconsistencies etc. This in turn will lead to a lot of re-work to be done. Re-work will mean added costs to the company, both in terms of time and effort. So, what one would do in such a case?
  • 13. Solution Instead of a solution to the problem, it would be better to catch it right at the start before it becomes a problem. After all “PREVENTION IS BETTER THAN CURE”. Hence data profiling software came to the rescue.
  • 14. What is data profiling ? It is the process of statistically examining and analyzing the content in a data source, and hence collecting information about the data. It consists of techniques used to analyze the data we have for accuracy and completeness. 1. Data profiling helps us make a thorough assessment of data quality. 2. It assists the discovery of anomalies in data. 3. It helps us understand content, structure, relationships, etc. about the data in the data source we are analyzing.
  • 15. Contd… 4. It helps us know whether the existing data can be applied to other areas or purposes. 5. It helps us understand the various issues/challenges we may face in a database project much before the actual work begins. This enables us to make early decisions and act accordingly. 6. It is also used to assess and validate metadata.
  • 16. When and how to conduct data profiling? Generally, data profiling is conducted in two ways: 1.Writing SQL queries on sample data extracts put into a database. 2.Using data profiling tools.
  • 17. When to conduct Data Profiling? -> At the discovery/requirements gathering phase -> Just before the dimensional modeling process -> During ETL package design.
  • 18. How to conduct Data Profiling? Data profiling involves statistical analysis of the data at source and the data being loaded, as well as analysis of metadata. These statistics may be used for various analysis purposes. Common examples of analyses to be done are: Data quality: Analyze the quality of data at the data source. NULL values: Look out for the number of NULL values in an attribute.
  • 19. Candidate keys: Analysis of the extent to which certain columns are distinct will give developer useful information w. r. t. selection of candidate keys. Primary key selection: To check whether the candidate key column does not violate the basic requirements of not having NULL values or duplicate values. Empty string values: A string column may contain NULL or even empty sting values that may create problems later. String length: An analysis of largest and shortest possible length as well as the average string length of a sting-type column can help us decide what data type would be most suitable for the said column.
  • 20. Identification of cardinality: The cardinality relationships are important for inner and outer join considerations with regard to several BI tools. Data format: Sometimes, the format in which certain data is written in some columns may or may not be user-friendly.
  • 21. Common Data Profiling Software Most of the data-integration/analysis soft-wares have data profiling built into them. Alternatively, various independent data profiling tools are also available. Some popular ones are: • Trillium Enterprise Data quality • Datiris Profiler • Talend Data Profiler • IBM Infosphere Information Analyzer • SSIS Data Profiling Task • Oracle Warehouse Builder