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Personalized-Cancer-Diagnosis

Objective

A sequenced cancer tumour can have thousands of genetic mutations . Our objective is to distinguish between the mutations that can lead to tumours and the meutral mutations. From genes and their variations , we can classify them into 9 classes , some of these classes can lead to cancer tumours.

This is a case study from Applied AI Course . So the entire code is not exclusive . Only the assignment in the Case study is exclusive.