PracticalMachineLearningwithH2O_Powerful.epub
- 资料大王PDF
-
0 次阅读
-
0 次下载
-
2024-10-19 19:06:32
微信
赏
支付宝
文档简介:
magnitude of processing power, or a slight algorithmic tweak, to go from
being pathetic and pointless to productive and profitable.
In the early ’90s, neural nets were being hailed as the new AI breakthrough. I
did some experiments applying them to computer go, but they were truly
awful when compared to the (still quite mediocre) results I could get using a
mix of domain-specific knowledge engineering, and heavily pruned tree
searches. And the ability to scale looked poor, too. When, 20 years later, I
heard talk of this new and shiny deep learning thing that was giving
impressive results in computer go, I was confused how this was different
from the neural nets I’d rejected all those years earlier. “Not that much” was
the answer; sometimes you just need more processing power (five or six
orders of magnitude in this case) for an algorithm to bear fruit.
H2O is software for machine learning and data analysis. Wanting to see what
other magic deep learning could perform was what personally led me to H2O
(though it does more than that: trees, linear models, unsupervised learning,
etc.), and I was immediately impressed. It ticks all the boxes:
O......
评论
发表评论