Skip to content

Series of notebooks that walks through the fundamentals of machine learning and data science.

Notifications You must be signed in to change notification settings

SRM-ACM-Women/Machine-Learning-and-Data-Science

Repository files navigation

Machine Learning & Data Science

Series of notebooks that walks through the fundamentals of machine learning and data science.

Important Algorithms for a beginner to learn and implement Machine Learning:

Linear Regression Logistic Regression K-Nearest Neighbours K-Means Clustering Naive Bayes SVMs Decision Trees Random Forest Dimensionality Reduction Algorithms Gradient Boosting algorithms- XGBoost, GBM, LightGBM, CatBoost

Topics Covered:

  • naive-bayes
  • Basic-Computer Vision
  • Basic_ANN_using_Keras_and_Tensorflow
  • Breast_Cancer_Prediction
  • Callbacks
  • Classification model
  • Credit Card Fraud Detection
  • Detecting_Masks
  • Diabetes_dataset_with_Neural_Networks_and_validation_split
  • Fashion_MNIST_dataset_with_Neural_Networks
  • Heart_disease_prediction
  • Linear regression
  • Logistic Regression
  • Mask Detection
  • OpenCV_Webcam
  • Polynomial Regression
  • RandomForestClassifier
  • Sentiment_analysis
  • Stock Price Prediction
  • Summarizer
  • Training_the_CNN
  • Vanilla-Autoencoder
  • spam identifier
  • topicExtraction
  • SVM Classifier
  • MLP Classifier (Multi-Layer Perceptron)

Issue

Ensure the bug was not already reported by searching on GitHub under issues. If you're unable to find an open issue addressing the bug, open a new issue.

Write detailed information. Detailed information is very helpful to understand an issue.


Pull Requests

Pull Requests are always welcome.


License

MIT © SRM-ACM-Women

This project is licensed under the MIT License License

About

Series of notebooks that walks through the fundamentals of machine learning and data science.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published