aimpreserving
Aimpreserving is a term used in the field of artificial intelligence and machine learning to describe the process of maintaining the performance and accuracy of a trained model over time. As models are deployed in real-world applications, they may encounter new data that differs from the data they were trained on. This can lead to a decline in performance, a phenomenon known as model drift. Aimpreserving techniques aim to mitigate this issue by continuously updating and refining the model with new data, ensuring that it remains accurate and reliable.
One common aimpreserving technique is called incremental learning, where the model is updated with new data
Aimpreserving is crucial for maintaining the trust and reliability of AI systems in critical applications, such