Training models with billions or trillions of parameters demands advanced parallel computing. Researchers must decide how to combine parallelism strategies,…
Training models with billions or trillions of parameters demands advanced parallel computing. Researchers must decide how to combine parallelism strategies, select the most efficient accelerated libraries, and integrate low-precision formats such as FP8 and FP4—all without sacrificing speed or memory. There are accelerated frameworks that help, but adapting to these specific methodologies…
