No. For the easy 99.999% of driving they keep very little of the training data.
Basically you want to minimize manual interventions (aka disengagements). When the driver intervenes, they keep a few seconds before (30 seconds?) and after that intervention and add that to the training data.
So their training data is basically just the exceptional cases.
They need to just make sure they don’t overfit so that the learned model actually does have some “understanding” of why decisions are made and can generalize.
It's not clear that a bunch of cascaded rectified linear functions will every generalize to near 100%. The error floor is at a dangerous level regardless of training. AGI is needed to tackle the final 1%>
acchow|1 year ago
Basically you want to minimize manual interventions (aka disengagements). When the driver intervenes, they keep a few seconds before (30 seconds?) and after that intervention and add that to the training data.
So their training data is basically just the exceptional cases.
They need to just make sure they don’t overfit so that the learned model actually does have some “understanding” of why decisions are made and can generalize.
forgot-im-old|1 year ago