what's up everyone welcome to part one
of a new series where we look at the
basics of tensor flow so the goal of
this series is to start at the absolute
beginning and get a very good
fundamental understanding of how tensor
flow works and hopefully work our way up
to more complex models so in this video
we're gonna start with the most basic
example and look at linear regression
with tensor flow so let's get started so
the purpose of this series is to...
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