adathacking
Adathacking is a term that describes the practice of deliberately introducing subtle, often imperceptible, modifications to data. These modifications are designed to alter the behavior of artificial intelligence or machine learning models when processing that data. The goal of adathacking can vary, ranging from disrupting a model's performance to causing it to misclassify or generate specific outputs.
Unlike traditional hacking which often targets system vulnerabilities, adathacking focuses on manipulating the input data itself.
The motivations behind adathacking can include malicious intent, such as causing a self-driving car's vision system