All the snippets need to be optimized to be made scalable and are only initial implementations of the standard ML algos
- UNIVARIATE and MULTIVARIATE LINEAR REGRESSION(W/WO GRADIENT DESCENT) -- DONE
- LOGISTIC REGRESSION on first 10 principal components of a dataset to CLASSIFY an Experiemnt as of Physics OR Chemistry -- DONE
- NEURAL NETS for binary geo-coordinates classification using back propogation -- DONE ** The Architecture of the neural net implemented is shown below ,with two hidden layers and two units in each hidden layer, apart from bias term **
- SUPPORT VECTOR MACHINES -- 3 dimensional feature set mapped to 180 dimensional feature set where m= #landmarks/#training egs using gaussian kernel
- K-Means Clustering --DONE
- Principal Component Analysis (PCA) --DONE
- Col Filtering --TODO