Downstream Task
A "downstream task" refers to a secondary machine learning task that leverages the knowledge learned by a pre-trained model (often a large language model or foundation model) on a primary task. Current research focuses on improving the performance and robustness of these downstream tasks, addressing issues like bias propagation, efficient fine-tuning (e.g., using adapters or low-rank methods), and ensuring generalizability across diverse datasets and domains. This area is significant because it determines the practical applicability of powerful foundation models, impacting fields ranging from medical image analysis and natural language processing to remote sensing and materials science.
Papers
How Good Is It? Evaluating the Efficacy of Common versus Domain-Specific Prompts on Foundational Large Language Models
Oluyemi Enoch Amujo, Shanchieh Jay Yang
Investigating Self-Supervised Methods for Label-Efficient Learning
Srinivasa Rao Nandam, Sara Atito, Zhenhua Feng, Josef Kittler, Muhammad Awais