Gradient Ascent 2023

Resource

TopicLink
Linear AlgebraLink
Stats / ProbabilityLink
DeepLearning.AI Specialisation Course NotesLink
Linear RegressionLink
Logistic RegressionLink
Multi-Class vs Multi-Label ClassificationLink
Multi-Label ClassificationLink
Multi-Class Classification with Imbalanced DatasetLink
Naive BayesLink
Bias Variance Trade-offLink
Support Vector MachineLink
Support Vector Machine CodeLink
Ensemble Methods: Bagging, Boosting and BootstrappingLink
Feature Engineering for ML ModelsLink
Principal Component AnalysisLink
T-distributed Stochastic Neighbor Embedding(t-SNE)Link
K-means ClusteringLink
K-means Clustering CodeLink
K-Nearest Neighbour(KNN)Link
KNN CodeLink
Feature Engineering in ImagesLink
All about Natural Language Processing( Watch according to your needs)Link
Feature Scaling Link
Gaussian DistributionLink
Mini-Batch Gradient DescentLink
Gradient Descent with MomentumLink
Grid SearchLink
Batch NormalizationLink
Recurrent Neural Network (RNN)Link
Long-Short Term Memory (LSTM)Link
Different Types of Losses and significanceLink 1
Link 2
Link 3
Link 4
Evaluation Metrics and their significance in particular casesLink 1
Link 2
Link 3
Link 4
Regularization and Optimization Techniques (Blogs related to Andrew Ng DL Course 2)Link 1
Link 2
Link 3
Ensemble ModelsLink 1
Link 2
Link 3
Data Handling (Train, Dev and Test)Link 1
Link 2
Link 3
Machine Learning Case StudiesLink
Interview Prep Playlist (Krish Naik) - Checkout his other relevant playlists tooLink

Interview Experiences