PREMIUM ACCOUNTS

Support downtopc by buying or renewing your premium account using below links:







Partners
warezload

movieblogarea download
katzdownload

Udemy Artificial Neural NetWorks ANN with Keras in Python and R

Category: Courses / Others
Author: AD-TEAM
Date added: 11.10.2024 :03:38
Views: 1
Comments: 0










Description material
Udemy Artificial Neural NetWorks ANN with Keras in Python and R
3.72 GB | 00:20:16 | mp4 | 1920X1080 | 16:9
Genre:eLearning |Language:English



Files Included :
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)
[center]
Screenshot


[/center]

Warning! You are not allowed to view this text.

Warning! You are not allowed to view this text.

Warning! You are not allowed to view this text.

Join to our telegram Group
Information
Users of Guests are not allowed to comment this publication.
Choose Site Language
Keep downtopc Online Please

PREMIUM ACCOUNTS

Support downtopc by buying or renewing your premium account using below links: