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Tensor board for analysis

so what is the use of tensorboard ?
we can use this tool to analyse the model we create using tensorflow
so why we need to analyse
the answer is we need to train model and pick the model
which has a higher rate of accuracy and min loss.


ok accuracy and loss what is this.
how to create a model
how to feed to it to tensor board ,it is not that difficult its simple easy and fun.


before that i learned it from this guy who uses tensorboard like anything
his name is sentdex
https://www.youtube.com/watch?v=lV09_8432VA&t=129s.

awesome tutorial man.

before that if do not have any idea of python ,no problem u can learn it in a week and
pick it up from there so enjoy python programming.


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