Need-to-Know Notes: Quick look at using PyBrain and a helper package called `pug-ann` to create a 6-node, single-layer, linear feed forward neural net ... All right good morning God this a great wake up to like lights um so welcome to the last round of
Lightning Talks April 10th Pycon 2015 - Useful Breakdown for Readers
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Quick look at using PyBrain and a helper package called `pug-ann` to create a 6-node, single-layer, linear feed forward neural net ... All right good morning God this a great wake up to like lights um so welcome to the last round of
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- Quick look at using PyBrain and a helper package called `pug-ann` to create a 6-node, single-layer, linear feed forward neural net ...
- All right good morning God this a great wake up to like lights um so welcome to the last round of
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