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AGENDA
• Introduction
• Data Lake discussion
• Data Governance & Prevention of Data Swamps
• Q & A
ENSURING YOUR DATA LAKE
DOESN’T BECOME A DATA
SWAMP
DAMA CHICAGO – 2.17.2016
DATA LAKE DEFINITION
NVISIA® Confidential 20162
What is a “data lake”?
Big data has been around long enough now that pretty much everybody in the field can rattle off a list of tools
used in the Big Data world. For example: Hadoop, NoSQL, Hortonworks, Spark, Pig, Hive, Cassandra,
Cloudera, Storm, HBASE, and Data Lake just to name a few. One of them that caught my eye recently that
never came up in my research on Big Data was Data Swamp.
“A data lake is a storage repository that holds a vast amount of raw data in its native format until it is needed.” – techtarget
“Data Lake”: centrally managed repository using low cost technologies to land any and all data that might potentially be
valuable for analysis and operationalizing that insight.”- O’Reilly
“The data lake dream is of a place with data-centered architecture, where silos are minimized, and processing happens with little
friction in a scalable, distributed environment. Data itself is no longer restrained by initial schema decisions, and can be exploited
more freely by the enterprise.” – Forbes
“A data lake, as opposed to a data warehouse, contains the mess of raw unstructured or multi-structured data that for the most
part has unrecognized value for the firm. While traditional data warehouses will clean up and convert incoming data for specific
analysis and applications, theraw data residing in lakes are still waiting for applications to discover ways to manufacture
insights.” – Wall Street & Technology
“A data lake is a massive, easily accessible, centralized repository of large volumes of structured and unstructured data.” – Technopedia
And you cannot forget everyone’s go to for information…Wikipedia.
“A Data lake is a large storage repository that ‘holds data until it is needed’”
DATA LAKE PROMISE
NVISIA® Confidential 20163
Data lake – Promise
The promise of a data lake is a place that you can store data in its raw form, unencumbered by validation,
mastering, or quality processes, so as to allow consumers to choose what data is of value to them with a
quick time to market.
DATA LAKE TYPICAL REALIZATION
NVISIA® Confidential 20164
Data Lake – Typical Realization aka Data Swamp
Unfortunately, the best laid plans can go awry, especially with encroaching delivery deadlines, ill-defined
purpose for the data lake, lack of definition of desired analytics, ill-defined data sources…
“Without descriptive metadata and a mechanism to maintain it, the data lake risks turning into a data swamp. And without
metadata, every subsequent use of data means analysts start from scratch.” (source: Garner “Beware the Data Lake Fallacy)
DATA SWAMP CHARACTERISTICS AND MY DEFINITION
NVISIA® Confidential 20165
Data Swamp – Characteristics
• Large volume of data
• Unrestrained data structures
• Lack of governance around the data (“until it is
needed”)
Data Swamp – My Definition
• Unstructured, ungoverned, and out of control data
lake
• …where data is hard to find, hard to use, and is
consumed out of context
DATA SWAMP PREVENTION
NVISIA® Confidential 20166
• Keep up the velocity of delivering data to your data lake
to ensure usage can be evaluated by potential
consumers – lest it appear in shadow IT instances
• Develop safe zones, where data can be guaranteed fit-
for-use, complete with validation and mastering
processes – in short “governed”
• Focus should be about giving consumers choices that
are in their self-interest – encourage use of “trusted”
data in safe zones, as opposed to “use at your own risk”
data that will lead to decisions based on inconsistent, ill-
defined, unmanaged data
Techniques to prevent your Data Lake from
becoming “Swamp-ish”
DATA SWAMP CLEANING TECHNIQUES
NVISIA® Confidential 20167
Techniques to clean your Data Swamp
• Work with your consumers and integration teams early in their Data Lake integration initiatives (using
sprint-ahead approach)
• Introduce data governance processes that address their consumption scenarios
• Collaborate early and often with data scientists and analysts to operationalize new consumption ideas
• Evangelize safe zones where “trusted” data lives – partner with business consumers early and often
Finance
safe zone
Sales safe
zone
Quality
Mastering
Validation
Quality
Mastering
Validation
DATA SWAMP SAFE ZONES
NVISIA® Confidential 20168
Data Swamp “safe zones”
• Subject area / consumer focused locations where data can be guaranteed fit-for-use –
“trusted”.
• Data governance processes (including validation, mastering, and quality) are applied
to give context and consistency to data, converting it to trust-worthy information
• To maintain time-to-market and relevancy to changing business objectives, these
processes should be applied using an agile, sprint-ahead approach
• Early participation with business consumers is key to minimizing the impact to
delivery velocity
Finance
safe zone
Sales safe
zone
DATA SWAMP CLEANING PROCESSES
NVISIA® Confidential 20169
Cleaning your Data Swamp (in a hurry)
The key to ensuring you will actually get to provide “trusted” data is to delivery timely ,
relevant solutions, without significantly slowing the time to market
• Establish expectations of “trusted data” for stakeholders
• Gather information on how data is currently managed
• Align with stakeholders on the value and implementation approach for pragmatic Data
Governance
• Architect a pragmatic solution that produces “trusted” data, without significantly affecting
delivery velocity
• Validate that changes to people, processes and artifacts align with stakeholder goals
• Reach consensus on Data Governance implementation strategy and approach
… and do so in a way that’s palatable to your organization
… within a timely fashion (to ensure relevancy to business stakeholders)
Quality
Mastering
Validation
DATA GOVERNANCE IN A HURRY (SHAMELESS PLUG)
NVISIA® Confidential 201610
Cleaning your Data Swamp (in a hurry)
The key to ensuring you will actually get to provide “trusted” data is to delivery timely ,
relevant solutions, without significantly slowing the time to market
• Establish expectations of “trusted data” for stakeholders
• Gather information on how data is currently managed
• Align with stakeholders on the value and implementation approach for pragmatic Data
Governance
• Architect a pragmatic solution that produces “trusted” data, without significantly affecting
delivery velocity
• Validate that changes to people, processes and artifacts align with stakeholder goals
• Reach consensus on Data Governance implementation strategy and approach
… and do so in a way that’s palatable to your organization
… within a timely fashion (to ensure relevancy to business stakeholders)
Quality
Mastering
Validation
DATA GOVERNANCE IN A HURRY
NVISIA® Confidential 201611
DATA SWAMP ALTERNATIVES TO CLEANING
NVISIA® Confidential 201612
Ungoverned data encourages people to interpret their data
out of context
QUESTIONS?
THANKS FOR YOUR TIME
Michael Vogt
Managing Director, Data Management
NVISIA
mvogt@nvisia.com
NVISIA® Confidential 201613

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Ensuring Your Data Lake Doesn't Become a Data Swamp

  • 1. AGENDA • Introduction • Data Lake discussion • Data Governance & Prevention of Data Swamps • Q & A ENSURING YOUR DATA LAKE DOESN’T BECOME A DATA SWAMP DAMA CHICAGO – 2.17.2016
  • 2. DATA LAKE DEFINITION NVISIA® Confidential 20162 What is a “data lake”? Big data has been around long enough now that pretty much everybody in the field can rattle off a list of tools used in the Big Data world. For example: Hadoop, NoSQL, Hortonworks, Spark, Pig, Hive, Cassandra, Cloudera, Storm, HBASE, and Data Lake just to name a few. One of them that caught my eye recently that never came up in my research on Big Data was Data Swamp. “A data lake is a storage repository that holds a vast amount of raw data in its native format until it is needed.” – techtarget “Data Lake”: centrally managed repository using low cost technologies to land any and all data that might potentially be valuable for analysis and operationalizing that insight.”- O’Reilly “The data lake dream is of a place with data-centered architecture, where silos are minimized, and processing happens with little friction in a scalable, distributed environment. Data itself is no longer restrained by initial schema decisions, and can be exploited more freely by the enterprise.” – Forbes “A data lake, as opposed to a data warehouse, contains the mess of raw unstructured or multi-structured data that for the most part has unrecognized value for the firm. While traditional data warehouses will clean up and convert incoming data for specific analysis and applications, theraw data residing in lakes are still waiting for applications to discover ways to manufacture insights.” – Wall Street & Technology “A data lake is a massive, easily accessible, centralized repository of large volumes of structured and unstructured data.” – Technopedia And you cannot forget everyone’s go to for information…Wikipedia. “A Data lake is a large storage repository that ‘holds data until it is needed’”
  • 3. DATA LAKE PROMISE NVISIA® Confidential 20163 Data lake – Promise The promise of a data lake is a place that you can store data in its raw form, unencumbered by validation, mastering, or quality processes, so as to allow consumers to choose what data is of value to them with a quick time to market.
  • 4. DATA LAKE TYPICAL REALIZATION NVISIA® Confidential 20164 Data Lake – Typical Realization aka Data Swamp Unfortunately, the best laid plans can go awry, especially with encroaching delivery deadlines, ill-defined purpose for the data lake, lack of definition of desired analytics, ill-defined data sources… “Without descriptive metadata and a mechanism to maintain it, the data lake risks turning into a data swamp. And without metadata, every subsequent use of data means analysts start from scratch.” (source: Garner “Beware the Data Lake Fallacy)
  • 5. DATA SWAMP CHARACTERISTICS AND MY DEFINITION NVISIA® Confidential 20165 Data Swamp – Characteristics • Large volume of data • Unrestrained data structures • Lack of governance around the data (“until it is needed”) Data Swamp – My Definition • Unstructured, ungoverned, and out of control data lake • …where data is hard to find, hard to use, and is consumed out of context
  • 6. DATA SWAMP PREVENTION NVISIA® Confidential 20166 • Keep up the velocity of delivering data to your data lake to ensure usage can be evaluated by potential consumers – lest it appear in shadow IT instances • Develop safe zones, where data can be guaranteed fit- for-use, complete with validation and mastering processes – in short “governed” • Focus should be about giving consumers choices that are in their self-interest – encourage use of “trusted” data in safe zones, as opposed to “use at your own risk” data that will lead to decisions based on inconsistent, ill- defined, unmanaged data Techniques to prevent your Data Lake from becoming “Swamp-ish”
  • 7. DATA SWAMP CLEANING TECHNIQUES NVISIA® Confidential 20167 Techniques to clean your Data Swamp • Work with your consumers and integration teams early in their Data Lake integration initiatives (using sprint-ahead approach) • Introduce data governance processes that address their consumption scenarios • Collaborate early and often with data scientists and analysts to operationalize new consumption ideas • Evangelize safe zones where “trusted” data lives – partner with business consumers early and often Finance safe zone Sales safe zone Quality Mastering Validation Quality Mastering Validation
  • 8. DATA SWAMP SAFE ZONES NVISIA® Confidential 20168 Data Swamp “safe zones” • Subject area / consumer focused locations where data can be guaranteed fit-for-use – “trusted”. • Data governance processes (including validation, mastering, and quality) are applied to give context and consistency to data, converting it to trust-worthy information • To maintain time-to-market and relevancy to changing business objectives, these processes should be applied using an agile, sprint-ahead approach • Early participation with business consumers is key to minimizing the impact to delivery velocity Finance safe zone Sales safe zone
  • 9. DATA SWAMP CLEANING PROCESSES NVISIA® Confidential 20169 Cleaning your Data Swamp (in a hurry) The key to ensuring you will actually get to provide “trusted” data is to delivery timely , relevant solutions, without significantly slowing the time to market • Establish expectations of “trusted data” for stakeholders • Gather information on how data is currently managed • Align with stakeholders on the value and implementation approach for pragmatic Data Governance • Architect a pragmatic solution that produces “trusted” data, without significantly affecting delivery velocity • Validate that changes to people, processes and artifacts align with stakeholder goals • Reach consensus on Data Governance implementation strategy and approach … and do so in a way that’s palatable to your organization … within a timely fashion (to ensure relevancy to business stakeholders) Quality Mastering Validation
  • 10. DATA GOVERNANCE IN A HURRY (SHAMELESS PLUG) NVISIA® Confidential 201610 Cleaning your Data Swamp (in a hurry) The key to ensuring you will actually get to provide “trusted” data is to delivery timely , relevant solutions, without significantly slowing the time to market • Establish expectations of “trusted data” for stakeholders • Gather information on how data is currently managed • Align with stakeholders on the value and implementation approach for pragmatic Data Governance • Architect a pragmatic solution that produces “trusted” data, without significantly affecting delivery velocity • Validate that changes to people, processes and artifacts align with stakeholder goals • Reach consensus on Data Governance implementation strategy and approach … and do so in a way that’s palatable to your organization … within a timely fashion (to ensure relevancy to business stakeholders) Quality Mastering Validation
  • 11. DATA GOVERNANCE IN A HURRY NVISIA® Confidential 201611
  • 12. DATA SWAMP ALTERNATIVES TO CLEANING NVISIA® Confidential 201612 Ungoverned data encourages people to interpret their data out of context
  • 13. QUESTIONS? THANKS FOR YOUR TIME Michael Vogt Managing Director, Data Management NVISIA mvogt@nvisia.com NVISIA® Confidential 201613