Deep Learning Masterclass with TensorFlow 2 Over 20 Projects
Deep Learning Masterclass with TensorFlow 2 Over 20 Projects, available at $79.99, has an average rating of 4.41, with 350 lectures, based on 357 reviews, and has 5697 subscribers.
You will learn about The Basics of Tensors and Variables with Tensorflow Basics of Tensorflow and training neural networks with TensorFlow 2. Convolutional Neural Networks applied to Malaria Detection Building more advanced Tensorflow models with Functional API, Model Subclassing and Custom Layers Evaluating Classification Models using different metrics like: Precision,Recall,Accuracy and F1-score Classification Model Evaluation with Confusion Matrix and ROC Curve Tensorflow Callbacks, Learning Rate Scheduling and Model Check-pointing Mitigating Overfitting and Underfitting with Dropout, Regularization, Data augmentation Data augmentation with TensorFlow using TensorFlow image and Keras Layers Advanced augmentation strategies like Cutmix and Mixup Data augmentation with Albumentations with TensorFlow 2 and PyTorch Custom Loss and Metrics in TensorFlow 2 Eager and Graph Modes in TensorFlow 2 Custom Training Loops in TensorFlow 2 Integrating Tensorboard with TensorFlow 2 for data logging, viewing model graphs, hyperparameter tuning and profiling Machine Learning Operations (MLOps) with Weights and Biases Experiment tracking with Wandb Hyperparameter tuning with Wandb Dataset versioning with Wandb Model versioning with Wandb Human emotions detection Modern convolutional neural networks(Alexnet, Vggnet, Resnet, Mobilenet, EfficientNet) Transfer learning Visualizing convnet intermediate layers Grad-cam method Model ensembling and class imbalance Transformers in Vision Model deployment Conversion from tensorflow to Onnx Model Quantization Aware training Building API with Fastapi Deploying API to the Cloud Object detection from scratch with YOLO Image Segmentation from scratch with UNET model People Counting from scratch with Csrnet Digit generation with Variational autoencoders (VAE) Face generation with Generative adversarial neural networks (GAN) Sentiment Analysis with Recurrent neural networks, Attention Models and Transformers from scratch Neural Machine Translation with Recurrent neural networks, Attention Models and Transformers from scratch Intent Classification with Deberta in Huggingface transformers Neural Machine Translation with T5 in Huggingface transformers Extractive Question Answering with Longformer in Huggingface transformers E-commerce search engine with Sentence transformers Lyrics Generator with GPT2 in Huggingface transformers Grammatical Error Correction with T5 in Huggingface transformers Elon Musk Bot with BlenderBot in Huggingface transformers This course is ideal for individuals who are Beginner Python Developers curious about Applying Deep Learning for Computer vision and Natural Language Processing or Deep Learning for Computer vision Practitioners who want gain a mastery of how things work under the hood or Anyone who wants to master deep learning fundamentals and also practice deep learning for computer vision using best practices in TensorFlow. or Computer Vision practitioners who want to learn how state of art computer vision models are built and trained using deep learning. or Natural Language Processing practitioners who want to learn how state of art NLP models are built and trained using deep learning. or Anyone wanting to deploy ML Models or Learners who want a practical approach to Deep learning for Computer vision, Natural Language Processing and Sound recognition It is particularly useful for Beginner Python Developers curious about Applying Deep Learning for Computer vision and Natural Language Processing or Deep Learning for Computer vision Practitioners who want gain a mastery of how things work under the hood or Anyone who wants to master deep learning fundamentals and also practice deep learning for computer vision using best practices in TensorFlow. or Computer Vision practitioners who want to learn how state of art computer vision models are built and trained using deep learning. or Natural Language Processing practitioners who want to learn how state of art NLP models are built and trained using deep learning. or Anyone wanting to deploy ML Models or Learners who want a practical approach to Deep learning for Computer vision, Natural Language Processing and Sound recognition.
Enroll now: Deep Learning Masterclass with TensorFlow 2 Over 20 Projects
Summary
Title: Deep Learning Masterclass with TensorFlow 2 Over 20 Projects
Price: $79.99
Average Rating: 4.41
Number of Lectures: 350
Number of Published Lectures: 213
Number of Curriculum Items: 350
Number of Published Curriculum Objects: 213
Original Price: $199.99
Quality Status: approved
Status: Live
What You Will Learn
- The Basics of Tensors and Variables with Tensorflow
- Basics of Tensorflow and training neural networks with TensorFlow 2.
- Convolutional Neural Networks applied to Malaria Detection
- Building more advanced Tensorflow models with Functional API, Model Subclassing and Custom Layers
- Evaluating Classification Models using different metrics like: Precision,Recall,Accuracy and F1-score
- Classification Model Evaluation with Confusion Matrix and ROC Curve
- Tensorflow Callbacks, Learning Rate Scheduling and Model Check-pointing
- Mitigating Overfitting and Underfitting with Dropout, Regularization, Data augmentation
- Data augmentation with TensorFlow using TensorFlow image and Keras Layers
- Advanced augmentation strategies like Cutmix and Mixup
- Data augmentation with Albumentations with TensorFlow 2 and PyTorch
- Custom Loss and Metrics in TensorFlow 2
- Eager and Graph Modes in TensorFlow 2
- Custom Training Loops in TensorFlow 2
- Integrating Tensorboard with TensorFlow 2 for data logging, viewing model graphs, hyperparameter tuning and profiling
- Machine Learning Operations (MLOps) with Weights and Biases
- Experiment tracking with Wandb
- Hyperparameter tuning with Wandb
- Dataset versioning with Wandb
- Model versioning with Wandb
- Human emotions detection
- Modern convolutional neural networks(Alexnet, Vggnet, Resnet, Mobilenet, EfficientNet)
- Transfer learning
- Visualizing convnet intermediate layers
- Grad-cam method
- Model ensembling and class imbalance
- Transformers in Vision
- Model deployment
- Conversion from tensorflow to Onnx Model
- Quantization Aware training
- Building API with Fastapi
- Deploying API to the Cloud
- Object detection from scratch with YOLO
- Image Segmentation from scratch with UNET model
- People Counting from scratch with Csrnet
- Digit generation with Variational autoencoders (VAE)
- Face generation with Generative adversarial neural networks (GAN)
- Sentiment Analysis with Recurrent neural networks, Attention Models and Transformers from scratch
- Neural Machine Translation with Recurrent neural networks, Attention Models and Transformers from scratch
- Intent Classification with Deberta in Huggingface transformers
- Neural Machine Translation with T5 in Huggingface transformers
- Extractive Question Answering with Longformer in Huggingface transformers
- E-commerce search engine with Sentence transformers
- Lyrics Generator with GPT2 in Huggingface transformers
- Grammatical Error Correction with T5 in Huggingface transformers
- Elon Musk Bot with BlenderBot in Huggingface transformers
Who Should Attend
- Beginner Python Developers curious about Applying Deep Learning for Computer vision and Natural Language Processing
- 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 computer vision using best practices in TensorFlow.
- Computer Vision practitioners who want to learn how state of art computer vision models are built and trained using deep learning.
- Natural Language Processing practitioners who want to learn how state of art NLP models are built and trained using deep learning.
- Anyone wanting to deploy ML Models
- Learners who want a practical approach to Deep learning for Computer vision, Natural Language Processing and Sound recognition
Target Audiences
- Beginner Python Developers curious about Applying Deep Learning for Computer vision and Natural Language Processing
- 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 computer vision using best practices in TensorFlow.
- Computer Vision practitioners who want to learn how state of art computer vision models are built and trained using deep learning.
- Natural Language Processing practitioners who want to learn how state of art NLP models are built and trained using deep learning.
- Anyone wanting to deploy ML Models
- Learners who want a practical approach to Deep learning for Computer vision, Natural Language Processing and Sound recognition
Deep Learningis one of the most popular fields in computer science today. It has applications in many and very varied domains. With the publishing of much more efficient deep learning models in the early 2010s, we have seen a great improvement in the state of the art in domains like Computer Vision, Natural Language Processing, Image Generation, and Signal Processing.
The demand for Deep Learning engineers is skyrocketing and experts in this field are highly paid, because of their value.However, getting started in this field isn’t easy. There’s so much information out there, much of which is outdated and many times don’t take the beginners into consideration 🙁
In this course, we shall take you on an amazing journey in which you’ll master different concepts with a step-by-step and project-based approach. You shall be using Tensorflow 2 (the world’s most popular library for deep learning, and built by Google) and Huggingface.We shall start by understanding how to build very simple models (like Linear regression models for car price prediction, text classifiers for movie reviews, binary classifiers for malaria prediction) using Tensorflow and Huggingface transformers, to more advanced models (like object detection models with YOLO, lyrics generator model with GPT2and Image generation with GANs)
After going through this course and carrying out the different projects, you will develop the skill sets needed to develop modern deep-learning solutions that big tech companies encounter.
You will learn:
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The Basics of Tensorflow (Tensors, Model building, training, and evaluation)
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Deep Learning algorithms like Convolutional neural networks and Vision Transformers
-
Evaluation of Classification Models (Precision, Recall, Accuracy, F1-score, Confusion Matrix, ROC Curve)
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Mitigating overfitting with Data augmentation
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Advanced Tensorflow concepts like Custom Losses and Metrics, Eager and Graph Modes and Custom Training Loops, Tensorboard
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Machine Learning Operations (MLOps) with Weights and Biases (Experiment Tracking, Hyperparameter Tuning, Dataset Versioning, Model Versioning)
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Binary Classification with Malaria detection
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Multi-class Classification with Human Emotions Detection
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Transfer learning with modern Convnets (Vggnet, Resnet, Mobilenet, Efficientnet) and Vision Transformers (VITs)
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Object Detection with YOLO (You Only Look Once)
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Image Segmentation with UNet
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People Counting with Csrnet
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Model Deployment (Distillation, Onnx format, Quantization, Fastapi, Heroku Cloud)
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Digit generation with Variational Autoencoders
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Face generation with Generative Adversarial Neural Networks
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Text Preprocessing for Natural Language Processing.
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Deep Learning algorithms like Recurrent Neural Networks, Attention Models, Transformers, and Convolutional neural networks.
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Sentiment analysis with RNNs, Transformers, and Huggingface Transformers (Deberta)
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Transfer learning with Word2vec and modern Transformers (GPT, Bert, ULmfit, Deberta, T5…)
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Machine translation with RNNs, attention, transformers, and Huggingface Transformers (T5)
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Model Deployment (Onnx format, Quantization, Fastapi, Heroku Cloud)
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Intent Classification with Debertain Huggingface transformers
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Named Entity Relation with Roberta in Huggingface transformers
-
Neural Machine Translation with T5 in Huggingface transformers
-
Extractive Question Answering with Longformer in Huggingface transformers
-
E-commerce search engine with Sentence transformers
-
Lyrics Generator with GPT2 in Huggingface transformers
-
Grammatical Error Correction with T5 in Huggingface transformers
-
Elon Musk Bot with BlenderBot in Huggingface transformers
-
Speech recognition with RNNs
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!!!
Course Curriculum
Chapter 1: Introduction
Lecture 1: Welcome
Lecture 2: General Introduction
Lecture 3: Link to Code
Chapter 2: Tensors and Variables
Lecture 1: Link to Code
Lecture 2: Tensor Basics
Lecture 3: Tensor Initialization and Casting
Lecture 4: Indexing
Lecture 5: Maths Operations in Tensorflow
Lecture 6: Linear Algebra Operations in Tensorflow
Lecture 7: Common Methods
Lecture 8: Ragged Tensors
Lecture 9: Sparse Tensors
Lecture 10: String Tensors
Lecture 11: Tensorflow Variables
Chapter 3: Building a Simple Neural Network in Tensorflow
Lecture 1: Link to Dataset
Lecture 2: Link to Code
Lecture 3: Task Understanding
Lecture 4: Data Preparation
Lecture 5: Linear Regression Model
Lecture 6: Error sanctioning
Lecture 7: Training and Optimization
Lecture 8: Performance Measurement
Lecture 9: Validation and testing
Lecture 10: Corrective Measures
Lecture 11: TensorFlow Datasets
Chapter 4: Building Convolutional Neural Networks [Malaria Diagnosis]
Lecture 1: Link to Code
Lecture 2: Task understanding
Lecture 3: Data Preparation
Lecture 4: Data visualization
Lecture 5: Data Processing
Lecture 6: How and Why Convolutional Neural Networks work
Lecture 7: Building Convnets in Tensorflow
Lecture 8: Binary Crossentropy loss
Lecture 9: Convnet training
Lecture 10: Model evaluation and testing
Lecture 11: Loading and Saving Tensorflow Models to Google Drive
Chapter 5: Building more advanced Models with Functional API, Subclassing and Custom Layers
Lecture 1: Functional API
Lecture 2: Model Subclassing
Lecture 3: Custom Layers
Chapter 6: Evaluating Classification Models
Lecture 1: Precision,Recall and Accuracy
Lecture 2: Confusion Matrix
Lecture 3: ROC Plots
Chapter 7: Improving Model Performance
Lecture 1: Tensorflow Callbacks
Lecture 2: Learning rate scheduling
Lecture 3: Model checkpointing
Lecture 4: Mitigating overfitting and underfitting
Chapter 8: Data augmentation
Lecture 1: Data augmentation with TensorFlow using tf.image and Keras Layers
Lecture 2: Mixup Data augmentation with TensorFlow 2 with intergration in tf.data
Lecture 3: Cutmix Data augmentation with TensorFlow 2 and intergration in tf.data
Lecture 4: Albumentations with TensorFlow 2 and PyTorch for Data augmentation
Chapter 9: Advanced Tensorflow Concepts
Lecture 1: Custom Loss and Metrics
Lecture 2: Eager and graph modes
Lecture 3: Custom training loops
Chapter 10: Tensorboard integration
Lecture 1: Data logging
Lecture 2: Viewing model graphs
Lecture 3: Hyperparameter tuning
Lecture 4: Profiling and other visualizations with Tensorboard.
Chapter 11: MLOps with Weights and Biases
Lecture 1: Experiment tracking
Lecture 2: Hyperparameter tuning with wandb
Lecture 3: Dataset Versioning with Weights and Biases and TensorFlow 2
Lecture 4: Model Versioning with Weights and Biases and TensorFlow 2
Chapter 12: Human Emotions Detection
Lecture 1: Link to Code
Lecture 2: Data preparation
Lecture 3: Modeling and training
Lecture 4: Data augmentation
Lecture 5: Tensorflow records
Chapter 13: Modern Convolutional Neural Networks
Lecture 1: Alexnet
Lecture 2: Vggnet
Lecture 3: Resnet
Lecture 4: Coding Resnets
Lecture 5: Mobilenet
Lecture 6: Efficientnet
Chapter 14: Transfer Learning
Lecture 1: Leveraging pretrained models
Lecture 2: Finetuning
Chapter 15: Understanding the blackbox
Lecture 1: Visualizing intermediate layers
Lecture 2: Grad-cam method
Chapter 16: Ensembling and class imbalance
Lecture 1: Ensembling
Lecture 2: Class Imbalance
Chapter 17: Transformers in Vision
Lecture 1: Understanding VITs
Lecture 2: Building VITs from scratch
Lecture 3: Finetuning Huggingface transformers
Lecture 4: Model evaluation with wandb
Lecture 5: Data efficient transformers
Instructors
-
Neuralearn Dot AI
Helping millions of learners, master Deep Learning.
Rating Distribution
- 1 stars: 19 votes
- 2 stars: 11 votes
- 3 stars: 27 votes
- 4 stars: 99 votes
- 5 stars: 199 votes
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