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Revision as of 12:08, 22 September 2018
- Backpropagation
- Gradient Descent Optimization & Challenges
- AI Verification and Validation
- Nuts and Bolts of Applying Deep Learning
The Wall - Deep Learning
Deep neural nets are huge and bulky inefficient creatures that allow you to effectively solve a learning problem by getting huge amounts of data and a super computer. They currently trade efficiency for brute force almost every time.
The Expert