State of the Art Datasets
Research on state-of-the-art datasets focuses on improving data quality, diversity, and utility for machine learning. Current efforts center on developing new datasets tailored to specific tasks (e.g., autonomous driving, yoga pose recognition), creating standardized metadata formats for improved discoverability and interoperability, and developing methods for data selection and enrichment to optimize model performance and mitigate biases. These advancements are crucial for advancing machine learning across various domains, enabling more robust, efficient, and ethically sound model development.
Papers
February 16, 2022
February 1, 2022
January 17, 2022
December 16, 2021
December 15, 2021