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    Master Deep Learning for Computer Vision in TensorFlow[2025]

    Posted By: Sigha
    Master Deep Learning for Computer Vision in TensorFlow[2025]

    Master Deep Learning for Computer Vision in TensorFlow[2025]
    2025-01-10
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English (US) | Size: 27.98 GB | Duration: 47h 49m

    Use ConvNets & Vision Transformers to build projects in Image classification,generation,segmentation & Object detection

    What you'll learn
    The Basics of Tensors and Variables with Tensorflow
    Mastery of the fundamentals of Machine Learning and The Machine Learning Developmment Lifecycle.
    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)

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

    Description
    Deep Learning is a hot topic today! This is because of the impact it's having in several industries. One of fields in which deep learning has the most influence today is Computer Vision.Object detection, Image Segmentation, Image Classification, Image Generation & People Counting To understand why Deep Learning based Computer Vision is so popular; it suffices to take a look at the different domains where giving a computer the power to understand its surroundings via a camera has changed our lives.Some applications of Computer Vision are:Helping doctors more efficiently carry out medical diagnosticsenabling farmers to harvest their products with robots, with  the need for very little human intervention,Enable self-driving carsHelping quick response surveillance with smart CCTV systems, as the cameras now have an eye and a brainCreation of art  with GANs, VAEs, and Diffusion ModelsData analytics in sports, where players' movements are monitored automatically using sophisticated computer vision algorithms.The demand for Computer Vision 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, built by Google) and Huggingface. We shall start by understanding how to build very simple models (like Linear regression model for car price prediction and binary classifier for malaria prediction) using Tensorflow to much more advanced models (like object detection model with YOLO and 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 for computer vision solutions that big tech companies encounter.You will learn: The Basics of TensorFlow (Tensors, Model building, training, and evaluation)Deep Learning algorithms like Convolutional neural networks and Vision TransformersEvaluation of Classification Models (Precision, Recall, Accuracy, F1-score, Confusion Matrix, ROC Curve)Mitigating overfitting with Data augmentationAdvanced Tensorflow concepts like Custom Losses and Metrics, Eager and Graph Modes and Custom Training Loops, TensorboardMachine 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 DetectionTransfer learning with modern Convnets (Vggnet, Resnet, Mobilenet, Efficientnet) and Vision Transformers (VITs)Object Detection with YOLO (You Only Look Once)Image Segmentation with UNetPeople Counting with Csrnet Model Deployment (Distillation, Onnx format, Quantization, Fastapi, Heroku Cloud)Digit generation with Variational AutoencodersFace generation with Generative Adversarial Neural NetworksIf 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 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., Anyone wanting to deploy ML Models, Learners who want a practical approach to Deep learning for Computer vision, Computer Vision practitioners who want to learn how state of art computer vision models are built and trained using deep learning.


    Master Deep Learning for Computer Vision in TensorFlow[2025]


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