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00:00:05
ah
00:00:12
i see
00:00:17
so here we have plastic rubber in the sense that we have um
00:00:22
uh uh the radio profile so we we we have function on the ski of
00:00:27
our features and we need to the project them on the on the three volume
00:00:31
for these we have the right to provide that is the one the function is one the function here is not
00:00:36
uh it's not to put them on the degree and
00:00:40
all the of our spherical harmonics we have one single
00:00:44
read your profile and this uh this when we can separate the function on on the radio
00:00:49
profile and the function on on the uh spherical coordinates is what we call a loss of rubber
00:00:57
so in the future work with we have actually already doughnuts but they didn't have to basically it
00:01:01
and it's adding a more ready profiles that are

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