The Main objective of this project is detect whether a patient have Diabetes or not and to know this, we have used classification techniques of Decision tree, AdaBoost, XGBoost and also clustering techniques of Support Vector Machine, Principal Component Analysis (PCA), K-Mean, Linear Discriminant Analysis(LDA).
Sedentary lifestyle, poor diet and work pressure lead the diabetes disease which may cause several fatal health issues like heart attack, strokes, kidney failure, nerve damage etc. Diabetes can be effectively managed when caught early with high accuracy. Machine Learning (ML) approaches are very effective to early detection and prediction of diabetes. The goal of this paper is to offer the inclusive examination of the diagnosis of diabetes by supervised and unsupervised ML algorithms. This survey includes papers on the diagnosis of diabetes from 2018-2020. Decision tree based algorithm such as C4.5, AdaBoost, XGBoost, etc., have predicted the diabetes with high accuracy. Unsupervised learning techniques such as PCA and K-Mean are also useful in the attribute selection and outlier detection from the large dataset. This study reveals that K-Mean and SVM have also diagnosed and evaluated diabetes by high accuracy as an amalgamation of supervised and unsupervised machine learning techniques.
Keywords: - Decision tree, AdaBoost, XGBoost, Principal Component Analysis (PCA), K-Mean, Linear Discriminant Analysis (LDA), and Support Vector Machine.
NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Hardware:
Software:
· Practical exposure to
· Hardware and software tools
· Solution providing for real time problems
· Working with team/individual
· Work on creative ideas
· Testing techniques
· Error correction mechanisms
· What type of technology versions is used?
· Working of Tensor Flow
· Implementation of Deep Learning techniques
· Working of CNN algorithm
· Working of Transfer Learning methods
· Building of model creations
· Scope of project
· Applications of the project
· About Python language
· About Deep Learning Frameworks
Use of Data Science