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Showing the single result
Employee Attrition using Machine Learning
The main objective of this project is to predict the employee attrition rate using Machine Learning Algorithms such as SVM and Naive Bayes algorithms. After the results obtained, the performance of the model is evaluated by calculating the accuracy score and showing it in the form of a confusion matrix.
Platform? ? ? ? ?: Python
Delivery? ? ? ? ? :? One Day
Support? ? ? ? ? : Online Live Session
Deliverables? : Project Files, Report and Presentation
SKU: PAN_ML_005 Categories: AI Projects, Big Data & Data Science Projects, OpenCV Projects, Python Projects Tags: AI | Python, artificial intelligence, Data science, Deep Learning projects | OpenCV Projects | AI projects, Employee Attrition – Machine Learning - AI | Python, image processing | OpenCV, Machine Learning, NLP, Python
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