1 - Introduction (18.41 MB) 37 - Python Dataset for classification problem (75.73 MB) 38 - Python Normalization and TestTrain split (65.45 MB) 39 - R Dataset Normalization and TestTrain set (103.5 MB) 41 - Different ways to create ANN using Keras (9.31 MB) 42 - Building the Neural Network using Keras (118.1 MB) 43 - Compiling and Training the Neural Network model (116.66 MB) 44 - Evaluating performance and Predicting using Keras (98.49 MB) 45 - BuildingCompiling and Training (105.98 MB) 46 - Evaluating and Predicting (73.78 MB) 47 - Building Neural Network for Regression Problem (279.96 MB) 48 - Using Functional API for complex architectures (130.58 MB) 49 - Building Regression Model with Functional AP (97.06 MB) 50 - Complex Architectures using Functional API (125.97 MB) 51 - Saving Restoring Models and Using Callbacks (251.89 MB) 52 - Saving Restoring Models and Using Callbacks (287.59 MB) 53 - Hyperparameter Tuning (56.16 MB) 54 - Hyperparameter Tuning (56.13 MB) 55 - Testtrain split (29.85 MB) 56 - Bias Variance tradeoff (18.35 MB) 57 - Test train split in Python (55.84 MB) 58 - Test train split in R (108.52 MB) 59 - The final milestone (8.36 MB) 10 - Lists Part 1 (11.23 MB) 11 - Lists Part 2 (13.29 MB) 12 - Tuples and Directories (12.88 MB) 13 - Working with Numpy Library of Python (52.79 MB) 14 - Working with Pandas Library of Python (55.76 MB) 15 - Working with Seaborn Library of Python (45.77 MB) 3 - Installing Python and Anaconda (15.35 MB) 4 - This is a milestone (26.14 MB) 5 - Opening Jupyter Notebook (54.65 MB) 6 - Introduction to Jupyter part 1 (21.66 MB) 7 - Introduction to Jupyter part 2 (8.42 MB) 8 - Arithmetic operators in Python Python Basics (10.41 MB) 9 - Strings in Python Python Basics (81.08 MB) 17 - Integrating ChatGPT with Jupyter notebook (52.42 MB) 18 - Installing R and R studio (62.41 MB) 19 - Basics of R and R studio (33.12 MB) 20 - Packages in R (120.74 MB) 21 - Inputting data part 1 Inbuilt datasets of R (37.55 MB) 22 - Inputting data part 2 Manual data entry (25.45 MB) 23 - Inputting data part 3 Importing from CSV or Text files (108.48 MB) 24 - Creating Barplots in R (141.02 MB) 25 - Creating Histograms in R (37.07 MB) 26 - Perceptron (39.4 MB) 27 - Activation Functions (24.54 MB) 28 - Python Creating Perceptron model (129.03 MB) 29 - Basic Terminologies (28.61 MB) 30 - Gradient Descent (44.32 MB) 31 - Back Propagation (84.48 MB) 32 - Some Important Concepts (52.78 MB) 33 - Hyperparameters (33.06 MB) 34 - Keras and Tensorflow (11.05 MB) 35 - Installing Tensorflow and Keras in Python (29.51 MB) 36 - Installing TensorFlow and Keras in R (14.93 MB)