Garbage in, gospel out
We've all heard the phrase "Garbage in, garbage out." If the data entered into the system is bad, any reports coming out of it will be bad. Simple.
But what about "Garbage in, gospel out"? (I first heard this from my father.) Translated, this is reflected in the attitude of "If the system says it is so, it must be."
We've probably all encountered this with a consumer goods company when the customer service rep says "Sir, my records show your service is working fine," as I sit on my end with no internet service.
The antidote to Garbage in, Gospel out is "Trust, but verify." It's ok to assume your data reports are good, as long as you've verified they are good! One way to verify your data is through the use of data integrity reports.
![]()
Wes's Wednesday Wisdom Archives
There is nothing so permanent as business rules
There is nothing so permanent as business rules Nobel Prize-winning economist Milton Friedman said, “There’s nothing […]
Budget for feature discovery and adoption
Budget for feature discovery and adoption When developing a budget for implementation of a new […]
Customize staff pages for better user adoption
Customize staff pages for better user adoption The single most important element to data management […]
Don’t ask questions for which you already know the answer
Don’t ask questions for which you already know the answer I was recently completing an […]
All decisions involve risk
All decisions involve risk Whether it’s choosing a new AMS or introducing a new product […]
Try flowcharting your processes
Try flowcharting your processes Working with a client recently on their membership join process reminded me […]
“I just want a system I don’t have to fight with.”
“I just want a system I don’t have to fight with.” I asked my client: […]
Inertia Contributes to Bad Data
Inertia Contributes to Bad Data Without knowing anything about your organization or its data, I’d […]
What are you doing with new contacts?
What Are You Doing with New Contacts/ I was very interested to read in a […]
Be Aware of Selection Bias
Be Aware of Selection Bias I wrote recently about the mistaken perception of older members […]
