Initially, I was trying to simultaneously do the videos and the book together. But at a point I realized the information given in videos is more practical and less theory. And the theory in the book is too vast for me to cover each topic. So if you can please help me how to use the book in the most efficent way, it'll be great. Otherwise, if you can just tell me some topics which are ought to be studied in detail for cracking an interviews would also be really help full.
Hi, should we have a faculty call so I can better understand what interviews you are appearing for and hence suggest better. Please ping one of the counselors online or mail email@example.com to set up a call. Thanks
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