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[Music] hello on my name is Krishna and welcome to my youtube channel so guys today in this particular video we are going to discuss a very important topic which is called as bias and variance and then we are also going to discuss about topics like overfitting under fitting I probably think you have heard a lot and if I talk about just bias and variance you also heard about terminologies like high bias low variance low bias high variance like all this kind of terminologies will try to understand properly and we are going to take both the example of regression and classification problem statement and will understand these terms so let us take an example over here I have a problem statement with respect to x and y these are my points and our aim is actually to create a best fit line with the help of a linear regression and there are various different kind of linear regression like multiple linear regression polynomial linear regression here specifically Ive used polynomial linear regre