Listen "Using Language Models to Simulate Human Samples: Acknowledgments and References"
Episode Synopsis
This story was originally published on HackerNoon at: https://hackernoon.com/using-language-models-to-simulate-human-samples-acknowledgments-and-references.
Explore the impact and challenges surrounding the adoption of datasheets for datasets.
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Datasheets for datasets have gained traction across academic and industry settings, fostering transparency and accountability. While implementation challenges exist, the benefits of improved communication and accountability outweigh the costs, driving adoption and evolution in dataset creation practices.
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