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by shaklee3
2982 days ago
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Tensor cores are hardware optimized for NN. You call it baggage, Nvidia calls it extra revenue. Because some people need double precision, and those people are willing to pay a lot of money. So the V100 continues to be the cheapest way to train and do inference on NN because you can actually amortize the server cost over time. With tpu, you pay the hourly price forever. TPU are better only in the case of NN jobs that are short in length or you don't have the capital to buy a server. Anything longer, you can buy a Titan v and come out far ahead. By the way, the Tesla cards have no graphics output, so I'm sure why you'd say they have graphics baggage. |
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Baggage is a company thing. Google really has been an AI company since in the late 90s when Larry Page was asked about using AI to improve search and he replied he was using search to make AI happen.
Ha! When you amortize you are still spending money and you saying this really bothers me and is such a problem.
Too many look at things like you do and why companies get into problems. Capitalizing is not magic.
BTW, Google is also going to be able to iterate much quicker as the AI breakthroughs happen and come out with new versions that should stay well ahead of Nvidia.
The dynamics of the chip business have changed. Use to be companies bought chips from someone and then put them in to servers and sold the servers.
The problem is the company making the chips are NOT running the chips and do not have any skin in the game or the data needed to improve.
Now we have companies like Google making the chips and also running the chips and why we see power footprint being the focus far more than the past.
We will see all the big operations including Amazon make their own chips more and more.
A perfect example if Capsule networks replacing some uses of CNNs. Google with Hinton developed the Capsule network approach and will be supporting it far faster then you will see from Nvidia.
Then there is the canonical framework for AI being TF.
All of this was theoretical advantageous for Google and now we get to see they appear to be real with the pricing of the TPUs being about half of the cost of using Nvidia.