![Page 1: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/1.jpg)
BIG DATAWhy is this Issue a Big Deal for International Associations?
![Page 2: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/2.jpg)
The GapHistory of data
![Page 3: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/3.jpg)
Last centuryThe birth and raise of the Information Technology
DATA
TIME
![Page 4: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/4.jpg)
Last centuryThe value of data
DATA
TIME
$$$
![Page 5: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/5.jpg)
Next decadeThe Gap
DATA
TIME
THE GAP
$$$
![Page 6: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/6.jpg)
Why you should careWorking the GAP
1
3
2
Your data value is decreasing rapidly
Cost to keep data up-to-date is increasing as much as the required time to ensure quality and consistency.
Your data is fragmenting and leaking
Processing data is getting cheaper. Your data (clients, ambassadors, etc…) is leaving traces
in other databases. With enough sources, someone could be able to figure out your internal data.
You don’t want to be the last man standing
More and more value is being generated by opening up your data rather than sinking with it.
Open Data and Big Data enable you to extract business intelligence at a never available before level.
![Page 7: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/7.jpg)
Truth is: The GAP is getting hugeWorking the GAP
“During 2008, the number of things
connected to the Internet exceeded
the number of people on earth.
By 2020, there will be 50 billion.”
- CISCO
![Page 8: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/8.jpg)
Outsourcing changes
41
%
59
% 100%
250h 360h 610hSpent on the project
Client Human Equation Total project
+ =
You can’t buy your way out of this one…
![Page 9: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/9.jpg)
5 sources of dataFor a typical organization
![Page 10: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/10.jpg)
The 5 DATA SOURCESYou should be looking at
1. Internal Data
2. Semi-Structured Data
3. Social Media Data
4. Paid Data
1. Open Data
![Page 11: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/11.jpg)
What is Open Data?Changing the discussion
• Free
• Structured
• Automatically updated
• Organic
• Real-Time
• Universal
![Page 12: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/12.jpg)
What is Open Data?Change in the discussion
“Adopted by 41 governments, Open Data
has now reach a critical mass of more than
10 million datasets.”
- Wikipedia
![Page 13: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/13.jpg)
Case Study 01From Champion to Sponsored
![Page 14: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/14.jpg)
![Page 15: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/15.jpg)
![Page 16: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/16.jpg)
![Page 17: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/17.jpg)
![Page 18: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/18.jpg)
![Page 19: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/19.jpg)
![Page 20: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/20.jpg)
![Page 21: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/21.jpg)
![Page 22: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/22.jpg)
![Page 23: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/23.jpg)
![Page 24: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/24.jpg)
![Page 25: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/25.jpg)
![Page 26: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/26.jpg)
![Page 27: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/27.jpg)
![Page 28: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/28.jpg)
![Page 29: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/29.jpg)
Available data
![Page 30: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/30.jpg)
Case Study 02From Visitors to Clients
![Page 31: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/31.jpg)
![Page 32: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/32.jpg)
![Page 33: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/33.jpg)
![Page 34: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/34.jpg)
![Page 35: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/35.jpg)
![Page 36: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/36.jpg)
![Page 37: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/37.jpg)
![Page 38: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/38.jpg)
Next steps
![Page 39: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/39.jpg)
CMM – Capacity Maturity ModelData Governance and Performance Plan
1. Initial - data is not centralized and managed by a committee.
Extraction of business intelligence is chaotic, ad hoc, individual
heroics.
2. Repeatable - the data is centralized and at least documented
sufficiently such that stakeholders can get some business intelligence
3. Defined - the plan is defined/confirmed as a standard business
process, and connect various data to stakeholders
4. Managed - the plan is now quantitatively in accordance with agreed-
upon performance and metrics. Instructions.
5. Optimizing – the data governance plan is growing, challenging
stakeholders with new, unrequested business intelligence coming
from organic sources
Do you have a Data Governance and Performance plan ?
![Page 40: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/40.jpg)
CMM – Capacity Maturity ModelData Governance and Performance Plan
1. Initial - data is not centralized and managed by a committee.
Extraction of business intelligence is chaotic, ad hoc, individual
heroics.
2. Repeatable - the data is centralized and at least documented
sufficiently such that stakeholders can get some business intelligence
3. Defined - the plan is defined/confirmed as a standard business
process, and connect various data to stakeholders
4. Managed - the plan is now quantitatively in accordance with agreed-
upon performance and metrics. Instructions.
5. Optimizing – the data governance plan is growing, challenging
stakeholders with new, unrequested business intelligence coming
from organic sources
Do you have a Data Governance and Performance plan ?
![Page 41: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/41.jpg)
CMM – Capacity Maturity ModelData Governance and Performance Plan
1. Initial - data is not centralized and managed by a committee.
Extraction of business intelligence is chaotic, ad hoc, individual
heroics.
2. Repeatable - the data is centralized and at least documented
sufficiently such that stakeholders can get some business intelligence
3. Defined - the plan is defined/confirmed as a standard business
process, and connect various data to stakeholders
4. Managed - the plan is now quantitatively in accordance with agreed-
upon performance and metrics. Instructions.
5. Optimizing – the data governance plan is growing, challenging
stakeholders with new, unrequested business intelligence coming
from organic sources
Do you have a Data Governance and Performance plan ?
![Page 42: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/42.jpg)
CMM – Capacity Maturity ModelData Governance and Performance Plan
1. Initial - data is not centralized and managed by a committee.
Extraction of business intelligence is chaotic, ad hoc, individual
heroics.
2. Repeatable - the data is centralized and at least documented
sufficiently such that stakeholders can get some business intelligence
3. Defined - the plan is defined/confirmed as a standard business
process, and connect various data to stakeholders
4. Managed - the plan is now quantitatively in accordance with agreed-
upon performance and metrics. Instructions.
5. Optimizing – the data governance plan is growing, challenging
stakeholders with new, unrequested business intelligence coming
from organic sources
Do you have a Data Governance and Performance plan ?
![Page 43: IMEX Frankfurt - BIG DATA session - Human Equation](https://reader034.vdocuments.mx/reader034/viewer/2022052509/55a243da1a28abfc448b4786/html5/thumbnails/43.jpg)
CMM – Capacity Maturity ModelData Governance and Performance Plan
1. Initial - data is not centralized and managed by a committee.
Extraction of business intelligence is chaotic, ad hoc, individual
heroics.
2. Repeatable - the data is centralized and at least documented
sufficiently such that stakeholders can get some business intelligence
3. Defined - the plan is defined/confirmed as a standard business
process, and connect various data to stakeholders
4. Managed - the plan is now quantitatively in accordance with agreed-
upon performance and metrics. Instructions.
5. Optimizing – the data governance plan is growing, challenging
stakeholders with new, unrequested business intelligence coming
from organic sources
Do you have a Data Governance and Performance plan ?