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by cleancoder0
1557 days ago
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There's quite a resurgence of need for optimization. There's a lot of companies that want to provide an Uber/Lyft-like service of their own product. So you have a bunch of smaller problems that you want to solve as best as possible in ~1 second. A lot of small companies with their delivery fleets want to optimize (pest control, christmas tree delivery, cleaning, technical service, construction (coordinating teams that construct multiple things at multiple locations at the same time) etc.). On the other hand, not related to TSP, the whole energy market in the US is very LP/ILP optimizable and has a lot of customers (charging home batteries, car batteries, discharging when price is high, etc.). I would admit that the scientific field of discrete optimization is littered with genetic algorithms, ant colonies and other "no free lunch" optimization algorithms that make very little sense from progress perspective, so it does feel like the golden era was from the 70s to early 90s. I do not have a PhD but somehow ended up doing machine learning and discrete optimization most of my career. |
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