Machine Learning Task

Machine learning tasks encompass a broad range of problems where algorithms learn patterns from data to make predictions or decisions. Current research emphasizes improving model efficiency and accuracy, exploring novel architectures like XNet and investigating the energy consumption of various approaches. Significant efforts focus on addressing challenges like data bias, privacy concerns (including data de-identification and machine unlearning), and the development of tools for auditing data usage and evaluating model fairness. These advancements are crucial for enhancing the reliability, trustworthiness, and ethical deployment of machine learning across diverse applications.

Papers