Auxiliary Task Reweighting for Minimum-data Learning
Baifeng Shi, Judy Hoffman, et al.
NeurIPS 2020
As artificial intelligence (AI) transitions from research to deployment, creating the appropriate datasets and data pipelines to develop and evaluate AI models is increasingly the biggest challenge. Automated AI model builders that are publicly available can now achieve top performance in many applications. In contrast, the design and sculpting of the data used to develop AI often rely on bespoke manual work, and they critically affect the trustworthiness of the model. This Perspective discusses key considerations for each stage of the data-for-AI pipeline—starting from data design to data sculpting (for example, cleaning, valuation and annotation) and data evaluation—to make AI more reliable. We highlight technical advances that help to make the data-for-AI pipeline more scalable and rigorous. Furthermore, we discuss how recent data regulations and policies can impact AI.
Baifeng Shi, Judy Hoffman, et al.
NeurIPS 2020
Jitendra Singh, Smit Marvaniya, et al.
INFORMS 2022
Raúl Fernández Díaz, Lam Thanh Hoang, et al.
ICLR 2025
Shashanka Ubaru, Lior Horesh, et al.
Journal of Biomedical Informatics