Probabilistic Classification
Probabilistic classification in machine learning refers to classification models that predict a probability distribution over a set of classes, rather than just predicting the most likely class.
How Probabilistic Classification Works
These models, such as logistic regression and some neural networks, output probabilities for each class, which can be more informative than just a single class label, especially in cases where decision-making involves assessing risks and uncertainties.
Download this guide to delve into the most common LLM security risks and ways to mitigate them.
untouchable mode.
Lakera Guard protects your LLM applications from cybersecurity risks with a single line of code. Get started in minutes. Become stronger every day.
Several people are typing about AI/ML security. 
Come join us and 1000+ others in a chat that’s thoroughly SFW.