I meet lots of people who tell me fatalistically (& often despondently) that it's near impossible to do important work on neural nets today, unless you have huge compute and huge data sets.
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Does this mean computational power or big data is useless? No, of course not. There are important questions that can likely only be addressed that way. But if you want to work on AI, it seems to me a mistake to be too focused on the need for lots of data and lots of compute.
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This was my conclusion before leaving particle physics for a small-ish company looking to AI to support it's product. Hard problems are fun because they require creativity. Building a bigger hammer is fun, but flexibility (ergo creativity) is often lost in the wash, IMO.
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+1. There's also a growing body of research showing that we don't need these huge ANNs, either; that they can be pruned to a fraction of their weight space and still perform just as well. Probably true for dataset size too; "big data" likely not as necessary as we think.
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I'm in agreement with you :)
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Same with building a company. Same with writing a screenplay. Same with a stand-up routine.
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Often small science is the work of a person or group working on funds carved out of a Big Science block grant. The innovation ecosystem needs both Deans and iconoclasts . Institutionally speaking, Big Science is the necessary infrastructure for science development post-1945.
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