Proving grad(v_ . r_) = v_ with Spherical Polars | Math Gradient Help

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In summary, The conversation discussed proving that grad (v_ . r_) = v_ using spherical polars, where v_ is a uniform vector field. The individual mentioned that it is trivial to prove using summation convention or cartesian coordinates, but using spherical polars can be messy. They then brought up the identity: grad (a_.b_) = a x curl b + b x curl a + a . grad b + b . grad a and asked if it was true that curl v_ and grad v_ are 0 since v_ is a uniform field, and if grad r_ is the unit vector of r_ and curl r_ is 0. They also provided links to the form of the gradient in spherical coordinates
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Homework Statement


hi, any help with proving that grad (v_ . r_) = v_ using spherical polars, where v_ is a uniform vector field would be great
it is trivial to prove using summation convention or cartesian coordinates but having to use spherical polars looks messy...

thanks

Homework Equations


as above/below...

The Attempt at a Solution


i know the identity: grad (a_.b_) = a x curl b + b x curl a + a . grad b + b . grad a
is it true that curl v_ and grad v_ are 0 since v_ is a uniform field? and grad r_ is the unit vector of r_? and curl r_ is 0? where i think r_ is the position vector...
 
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  • #3


solved :)
thanks for the links, fzero
 
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