Deep Learning : Image Classification with Tensorflow in 2023

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Deep Learning Image Classification with Tensorflow in 2023 [TutsNode.net] - Deep Learning Image Classification with Tensorflow in 2023 18 - Deploying the Image classification model
  • 84 - Building API with Fastapi.mp4 (674.9 MB)
  • 79 - Understanding quantization.mp4 (268.2 MB)
  • 78 - Conversion from tensorflow to Onnx Model.mp4 (205.4 MB)
  • 81 - Quantization Aware training.mp4 (160.5 MB)
  • 82 - Conversion to tensorflowlite model.mp4 (154.7 MB)
  • 83 - How APIs work.mp4 (127.9 MB)
  • 86 - Load testing API.mp4 (106.3 MB)
  • 85 - Deploying API to the Cloud.mp4 (100.2 MB)
  • 80 - Practical quantization of Onnx Model.mp4 (65.0 MB)
8 - Data Augmentation
  • 44 - Albumentations with TensorFlow 2 and PyTorch for Data augmentation.mp4 (617.5 MB)
  • 41 - Data augmentation with TensorFlow using tfimage and Keras Layers.mp4 (424.0 MB)
  • 43 - Cutmix Data augmentation with TensorFlow 2 and intergration in tfdata.mp4 (344.2 MB)
  • 42 - Mixup Data augmentation with TensorFlow 2 with intergration in tfdata.mp4 (161.9 MB)
11 - MLOps with Weights and Biases
  • 52 - Experiment Tracking.mp4 (469.6 MB)
  • 54 - Dataset Versioning with Weights and Biases and TensorFlow 2.mp4 (329.4 MB)
  • 53 - Hyperparameter Tuning with Weights and Biases and TensorFlow 2.mp4 (222.7 MB)
  • 55 - Model Versioning with Weights and Biases and TensorFlow 2.mp4 (137.4 MB)
17 - Transformers in Vision
  • 72 - Understanding VITs.mp4 (422.0 MB)
  • 73 - Building VITs from scratch.mp4 (398.6 MB)
  • 74 - Finetuning Huggingface VITs.mp4 (206.6 MB)
  • 77 - Swin Transformers.mp4 (192.2 MB)
  • 75 - Model Evaluation with Wandb.mp4 (140.2 MB)
  • 76 - Data efficient Transformers.mp4 (72.8 MB)
2 - Tensors and variables
  • 4 - Initialization and Casting.mp4 (406.5 MB)
  • 7 - Linear Algebra Operations.mp4 (371.5 MB)
  • 8 - Common Methods.mp4 (299.1 MB)
  • 6 - Maths Operations.mp4 (215.0 MB)
  • 9 - RaggedTensors.mp4 (78.5 MB)
  • 5 - Indexing.mp4 (77.6 MB)
  • 12 - Variables.mp4 (44.9 MB)
  • 3 - Basics.mp4 (43.5 MB)
  • 11 - String Tensors.mp4 (23.0 MB)
  • 10 - Sparse Tensors.mp4 (18.0 MB)
12 - Human Emotions Detection
  • 57 - Modeling and Training.mp4 (371.9 MB)
  • 59 - Tensorflow records.mp4 (293.6 MB)
  • 56 - data preparation.mp4 (225.5 MB)
  • 58 - Data augmentation.mp4 (142.2 MB)
13 - Modern Convolutional Neural Networks
  • 62 - resnet.mp4 (351.8 MB)
  • 64 - mobilenet.mp4 (206.8 MB)
  • 65 - efficientnet.mp4 (189.2 MB)
  • 60 - Alexnet.mp4 (183.3 MB)
  • 63 - coding resnet.mp4 (180.3 MB)
  • 61 - vggnet.mp4 (116.4 MB)
4 - Building convnets with tensorflow
  • 25 - How and Why Convolutional Neural Networks Work.mp4 (348.7 MB)
  • 22 - Data Preparation.mp4 (160.6 MB)
  • 30 - Loading and Saving tensorflow models to gdrive.mp4 (128.9 MB)
  • 28 - Training.mp4 (113.7 MB)
  • 21 - Understanding the Task.mp4 (63.8 MB)
  • 24 - Data Processing.mp4 (54.5 MB)
  • 27 - Binary Crossentropy Loss.mp4 (47.1 MB)
  • 26 - Building ConvNets with TensorFlow.mp4 (44.7 MB)
  • 29 - Model Evaluation and Testing.mp4 (39.7 MB)
  • 23 - Data Visualization.mp4 (16.8 MB)
10 - Tensorboard integration with TensorFlow 2
  • 48 - Log data.mp4 (287.2 MB)
  • 50 - hyperparameter tuning.mp4 (195.0 MB)
  • 51 - Profiling and other visualizations with Tensorboard.mp4 (69.2 MB)
  • 49 - view model graphs.mp4 (21.5 MB)
3 - PREREQUISCITE Building neural networks with Tensorflow
  • 14 - Data Preparation.mp4 (276.3 MB)
  • 20 - Corrective Measures.mp4 (195.8 MB)
  • 19 - Validation and Testing.mp4 (135.7 MB)
  • 17 - Training and Optimization.mp4 (116.7 MB)
  • 15 - Linear Regression Model.mp4 (105.1 MB)
  • 16 - Error Sanctioning.mp4 (95.2 MB)
  • 13 - Understanding the Task.mp4 (30.5 MB)
  • 18 - Performance Measurement.mp4 (22.0 MB)
9 - Advanced Tensorflow
  • 47 - Custom Training Loops in TensorFlow 2.mp4 (234.9 MB)
  • 45 - Custom Loss and Metrics in TensorFlow 2.mp4 (176.1 MB)
  • 46 - Eager and Graph Modes in TensorFlow 2.mp4 (88.7 MB)
15 - Understanding the blackbox
  • 69 - gradcam method.mp4 (226.8 MB)
  • 68 - visualizing intermediate layers.mp4 (158.1 MB)
7 - Improving Model Performance
  • 37 - Callbacks with TensorFlow.mp4 (217.4 MB)
  • 40 - Mitigating Overfitting and Underfitting with Dropout Regularization.mp4 (202.1 MB)
  • 38 - Learning Rate Scheduling.mp4 (136.8 MB)
  • 39 - Model Checkpointing.mp4 (61.8 MB)
6 - Evaluating Classification Models
  • 34 - PrecisionRecallAccuracy.mp4 (211.4 MB)
  • 35 - Confusion Matrix.mp4 (62.3 MB)
  • 36 - ROC curve.mp4 (50.2 MB)
1 - Introduction
  • 2 - General Introduction.mp4 (202.1 MB)
  • 1 - Welcome.mp4 (32.0 MB)
14 - Transfer learning
  • 66 - Pretrained Models.mp4 (163.5 MB)
  • 67 - Finetuning.mp4 (112.2 MB)
5 - Building more advanced TensorFlow Models with Functional API Subclassing and Cu
  • 31 - Functional API.mp4 (138.4 MB)
  • 33 - Custom Layers.mp4 (135.7 MB)
  • 32 - Model Subclassing.mp4 (119.6 MB)
16 - Class Imbalance and Ensembling
  • 71 - Class imbalance.mp4 (100.6 MB)
  • 70 - Ensembling.mp4 (45.2 MB)
  • TutsNode.net.txt (0.1 KB)
  • [TGx]Downloaded from torrentgalaxy.to .txt (0.6 KB)
  • .pad
    • 0 (1.1 MB)
    • 1 (501.2 KB)
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Description


Description

Image classification models find themselves in different places today, like farms, hospitals, industries, schools, and highways,…

With the creation of much more efficient deep learning models from the early 2010s, we have seen a great improvement in the state of the art in the domain of image classification.

In this course, we shall take you on an amazing journey in which you’ll master different concepts with a step-by-step approach. We shall start by understanding how image classification algorithms work, and deploying them to the cloud while observing best practices. We are going to be using Tensorflow 2 (the world’s most popular library for deep learning, built by Google) and Huggingface

You will learn:

The Basics of Tensorflow (Tensors, Model building, training, and evaluation)
Deep Learning algorithms like Convolutional neural networks and Vision Transformers
Evaluation of Classification Models (Precision, Recall, Accuracy, F1-score, Confusion Matrix, ROC Curve)
Mitigating overfitting with Data augmentation
Advanced Tensorflow concepts like Custom Losses and Metrics, Eager and Graph Modes and Custom Training Loops, Tensorboard
Machine Learning Operations (MLOps) with Weights and Biases (Experiment Tracking, Hyperparameter Tuning, Dataset Versioning, Model Versioning)
Binary Classification with Malaria detection
Multi-class Classification with Human Emotions Detection
Transfer learning with modern Convnets (Vggnet, Resnet, Mobilenet, Efficientnet)
Model Deployment (Onnx format, Quantization, Fastapi, Heroku Cloud)

If you are willing to move a step further in your career, this course is destined for you and we are super excited to help achieve your goals!

This course is offered to you by Neuralearn. And just like every other course by Neuralearn, we lay much emphasis on feedback. Your reviews and questions in the forum will help us better this course. Feel free to ask as many questions as possible on the forum. We do our very best to reply in the shortest possible time.

Enjoy!!!
Who this course is for:

Beginner Python Developers curious about Applying Deep Learning for Computer vision
Deep Learning for Computer vision Practitioners who want gain a mastery of how things work under the hood
Anyone who wants to master deep learning fundamentals and also practice deep learning for image classification using best practices in TensorFlow.
Computer Vision practitioners who want to learn how state of art image classification models are built and trained using deep learning.
Anyone wanting to deploy image classification Models
Learners who want a practical approach to Deep learning for image classification

Requirements

Basic Knowledge of Python
Access to an internet connection, as we shall be using Google Colab (free version)

Last Updated 2/2023



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Deep Learning : Image Classification with Tensorflow in 2023


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15 GB
seeders:21
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Deep Learning : Image Classification with Tensorflow in 2023


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