Jump to content

Dynamic: Difference between revisions

15 bytes removed ,  21 February 2023
no edit summary
No edit summary
No edit summary
Line 1: Line 1:
===Introduction==
===Introduction==
In machine learning, the term "dynamic" can refer to various concepts depending on its context. Generally speaking, this indicates a system's capacity for change or adaptation in response to new information or input. Examples include updating models based on new training data or adapting robot behavior according to environmental changes. This article will examine these different interpretations of "dynamic" in machine learning and how they are utilized in practice.
In machine learning, the term "dynamic" can refer to various concepts depending on its context. Generally speaking, this indicates a system's capacity for change or adaptation in response to new information or input. Examples include updating models based on new training data or adapting robot behavior according to environmental changes.
 
In machine learning, dynamic is the same as [[online]], which means something is done frequently or continuously.


==Dynamic Models==
==Dynamic Models==