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April 19, 2022 - 12:16am. April 19, 2022. By now, you’ve heard the good news: The business world is embracing data-driven decision making and growing their data practices at an unprecedented clip. What if the problem isn’t in the volume of data, but rather where it is located—and how hard it is to gather?
April 19, 2022 - 12:16am. April 19, 2022. By now, you’ve heard the good news: The business world is embracing data-driven decision making and growing their data practices at an unprecedented clip. What if the problem isn’t in the volume of data, but rather where it is located—and how hard it is to gather?
Phase 2: Solution Development ¶ Phase 2 of the challenge took place from October 2022 to late January 2023. The first- and third-place teams' models were a form of logistic regression, while the second-place team used Poisson regression.
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An empirical analysis of compute-optimal large language model training.” Bloomberg used a guideline called the Chinchilla scaling principles to decide on the smallest viable model for their goals. After all, moving a pretrained model is often easier than transferring large datasets. Scaling Instruction-Finetuned Language Models.”
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