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by uoaei
1207 days ago
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This may be the case in certain shops or disciplines, but I can assure you, if you have the right insights, you can use statistical and ML principles to achieve better accuracy with orders of magnitude less compute. I consider it a tragedy that we throw huge hogs of models into datacenters and let them churn without giving much thought to improving performance. The climate impacts relative to the real benefits are measurable and depressing for a field so focused on innovation. Usually the 100x model built by a team of "data scientists" over a month is no better than a 1x model built by a couple SMEs over a couple weeks. |
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There are plenty of times when deep learning is the wrong solution, and probably most businesses out there should not ever expect to need any kind of highly compute-intensive model training. But there are also plenty cases where neural networks are the right solution as well (even if not "deep learning" as such).
Maybe I'll be convinced if you share some specific examples. Otherwise I'll assume that your comment is just arrogant derision.