PREMIUM ACCOUNTS

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







Partners
warezload

movieblogarea download
katzdownload

Udemy Master Deep Learning for Computer Vision in TensorFlow 2024

Category: Courses / Others
Author: AD-TEAM
Date added: 27.10.2024 :07:56
Views: 0
Comments: 0










Description material
Udemy Master Deep Learning for Computer Vision in TensorFlow 2024
22.21 GB | 01:04:27 | mp4 | 1280X720 | 16:9
Genre:eLearning |Language:English



Files Included :
1 Welcome (21.29 MB)
2 General Introduction (222.86 MB)
3 Course Content (77.74 MB)
1 Data Logging (287.15 MB)
2 Viewing Model Graphs (21.5 MB)
3 Hyperparameter tuning (194.95 MB)
4 Profiling and other visualizations with Tensorboard (69.23 MB)
1 Experiment Tracking (469.67 MB)
2 Hyperparameter Tuning with Weights and Biases and TensorFlow 2 (186.11 MB)
3 Dataset Versioning with Weights and Biases and TensorFlow 2 (329.36 MB)
4 Data Versioning with Wandb (329.5 MB)
5 Model Versioning with Weights and Biases and TensorFlow 2 (137.45 MB)
2 Data Preparation (225.41 MB)
3 Modeling and Training (371.79 MB)
4 Data augmentation (142.09 MB)
5 Tensorflow Records (293.65 MB)
1 Alexnet (183.52 MB)
2 Vggnet (116.45 MB)
3 Resnet (351.48 MB)
4 Coding Resnet (180.36 MB)
5 Mobilenet (206.77 MB)
6 Efficientnet (189.24 MB)
1 Leveraging Pretrained Models (163.38 MB)
2 Finetuning (112.17 MB)
1 Visualizing intermediate layers (157.97 MB)
2 Grad-cam Method (226.85 MB)
1 Ensembling (45.22 MB)
2 Class Imbalance (100.61 MB)
1 Understanding VITs (421.93 MB)
2 Building VITs from scratch (398.59 MB)
3 Finetuning Huggingface Transformers (206.49 MB)
4 Model Evaluation with Wandb (140.23 MB)
5 Data efficient transformers (72.86 MB)
6 Swin Transformers (192.31 MB)
1 Model Conversion from Tensorflow to Onnx (205.38 MB)
2 Understanding quantization (159.78 MB)
3 Practical quantization of Onnx model (64.99 MB)
4 Quantization Aware training (160.52 MB)
5 Conversion to Tensorflow lite model (154.58 MB)
6 What is an API (127.97 MB)
7 Building the Emotions Detection API with Fastapi (674.71 MB)
8 Deploy the Emotions Detection API to the Cloud (103.37 MB)
9 Load tesing the Emotions Detection API with Locust (106.28 MB)
2 Understanding object detection (52.42 MB)
3 YOLO Paper (571.91 MB)
4 Dataset Preparation (401 MB)
5 YOLO Resnet (53.95 MB)
6 YOLO Loss (691.12 MB)
7 Data augmentation (219.2 MB)
8 Testing (308.94 MB)
9 Data generators (51.43 MB)
10 String Tensors (29.49 MB)
11 Tensorflow Variables (25.62 MB)
2 Tensor Basics (33.14 MB)
3 Tensor Initialization and Casting (306.74 MB)
4 Indexing (157.44 MB)
5 Maths Operations in Tensorflow (217.22 MB)
6 Linear Algebra Operations in Tensorflow (381.47 MB)
7 Common Tensorflow Methods (214.15 MB)
8 Ragged Tensors (96.8 MB)
9 Sparse Tensors (19.48 MB)
10 Model Evaluation with FiftyOne (258.54 MB)
11 Virtual Cloth Try-on with Stable Diffusion Inpainting (218.75 MB)
12 Building FiftyOne Data Augmentation Plugin with Stable Diffusion Inpainting (556.54 MB)
2 Problem Understanding (35.83 MB)
3 Data Downloading (35.11 MB)
4 Data Splitting (118.89 MB)
5 Data Processing (178.72 MB)
6 Data Visualization with Matplotlib (69.72 MB)
7 Data Visualization with FiftyOne (184.92 MB)
8 Understanding Segformer (190.77 MB)
9 Model Creation (183.3 MB)
2 People Counting - Shangai Tech Dataset (83.51 MB)
3 Dataset Preparation (323.88 MB)
4 CSRNET (75.34 MB)
5 Training and Optimization (51.85 MB)
6 Data Augmentation (260.93 MB)
2 Introduction to Image generation (27.26 MB)
3 Understanding Variational autoencoders (117.51 MB)
4 VAE training and digit generation (299.23 MB)
5 Latent space visualizations (112.88 MB)
6 How GANs work (232.5 MB)
7 The GAN Loss (163.18 MB)
8 Improving GAN training (168.74 MB)
9 Face generation with GANs (411.8 MB)
1 Python Installation (18.15 MB)
10 Encapsulation (11.58 MB)
11 Polymorphism (13.41 MB)
12 Decorators (90.77 MB)
13 Generators (46.59 MB)
14 Numpy Package (207.96 MB)
15 Matplotlib Introduction (21.53 MB)
2 Conditional Statements (89.57 MB)
3 Variables and Basic Operators (134.99 MB)
4 Loops (93.23 MB)
5 Methods (88.44 MB)
6 Objects and Classes (59.14 MB)
7 Operator Overloading (52.9 MB)
8 Method Types (48.35 MB)
9 Inheritance (57.33 MB)
10 Corrective Measures (80.25 MB)
11 TensorFlow Datasets (79.43 MB)
3 Task Understanding (23.56 MB)
4 Data Preparation (224.68 MB)
5 Linear Regression Model (101.06 MB)
6 Error Sanctioning (107.8 MB)
7 Training and Optimization (132.36 MB)
8 Performance Measurement (27.3 MB)
9 Validation and Testing (178.06 MB)
10 Model Evaluation and Testing (29.58 MB)
11 Loading and Saving Tensorflow Models to Google Drive (128.9 MB)
2 Task Understanding (56.87 MB)
3 Data Preparation (155.88 MB)
4 Data Visualization (18.8 MB)
5 Data Processing (39.52 MB)
6 How and Why Convolutional Neural Networks work (348.61 MB)
7 Building Convnets in Tensorflow (44.7 MB)
8 Binary Crossentropy Loss (57.44 MB)
9 Convnet Training (64.63 MB)
1 Functional API (138.4 MB)
2 Model Subclassing (119.54 MB)
3 Custom Layers (135.7 MB)
1 Precision,Recall and Accuracy (211.32 MB)
2 Confusion Matrix (62.37 MB)
3 ROC Curve (50.19 MB)
1 Tensorflow Callbacks (217.44 MB)
2 Learning rate scheduling (136.87 MB)
3 Model checkpointing (61.83 MB)
4 Mitigating Overfitting and Underfitting with Dropout, Regularization (202 MB)
1 Data augmentation with TensorFlow using tf image and Keras Layers (475.19 MB)
2 Mixup Data augmentation with TensorFlow 2 with intergration in tf data (161.77 MB)
3 Cutmix Data augmentation with TensorFlow 2 and intergration in tf data (344.06 MB)
4 Albumentations with TensorFlow 2 and PyTorch for Data augmentation (197.33 MB)
1 Custom Loss and Metrics (176.01 MB)
2 Eager and Graph Modes (88.69 MB)
3 Custom Training Loops (234.98 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: