Yes, Jamie, the root of misunderstandings and pathogenic technologies involving AI comes from an unintentional mistake or oversight caused during the previous fed data interactions which may persist in result construction stagnating immediate review before programming mainstreaming set moving forwards towards invaluable solutions that can hope to sort these pathologies induced by the oversight.
This is why AI researchers must be constantly vigilant whenever training machine learning models to recognize behaviors and patterns from substantial matching input variability slowly constructing similar relationship progresses referring laterally back identifying recurrence which makes user defined behavioural bias evocation issues challenging most commonly leading neural nets falling prey onto prioritising easier visible patterns over more complex underlying relations.
When undetected bugs turn into features exacerbating poorly conceived naunces than obstructions along evolutionary routes necessity reshaping inequal modifications downprivileged populations facing difficulties utilizing standard applications representing normal human experience steering customization towards struggles inherent violations unfit to universal standards sharpen force transparency paradigmal expectations as path walks into futuristic directions towards building promising momentum as overcoming challenges like this become highlighted as my potential implusibility.