|
|
|
|
|
by jacquesm
2174 days ago
|
|
Take any domain that requires classification work that has not yet been targeted and make a run for it. You likely will be able to adapt one of the existing nets or even use transfer learning to outperform a human. That's the low hanging fruit. For instance: quality control: abnormality detection (for instance: in medicine), agriculture (lots of movement there right now), parts inspection, assembly inspection, sorting and so on. There are more applications for this stuff than you might think at first glance, essentially if a toddler can do it and it is a job right now that's a good target. |
|
none of these is anything someone can run from their bedroom because they have very high quality and regulatory requirements and require constant work outside of the actual AI training.
This is actually reflected in the margins of "AI" companies, which are significantly lower than traditional SAAS businesses and require significantly more manpower to deal with the long tailed problems, which is where the AI fails but it's what actually matters.