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by lzaborowski
106 days ago
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I like the idea of flipping the constraint. Most ML benchmarks assume unlimited data and limited compute, so people optimize for speed. If high-quality training data becomes the real bottleneck, then the interesting question is how much signal you can extract from the same dataset when compute is cheap. |
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