The speaker discussed the challenges faced with delayed and unreliable computing resources, particularly A100s, which led to difficulties in training models efficiently due to their poor reliability and quality. The temptation to switch to TPUs was evident, but the high cost of switching and the lack of familiarity with external code bases made sticking to GPUs and PyTorch a more practical choice despite the challenges.

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