
Go Hyun-cheol's Unity 3D Genre-Based Practical Game Project - Defense Game
softcampus
Unity3D Practical Project Game Development by Genre Part 01 Defense game.
Basic
Unity
: "From Mathematical Foundations to the Latest Models: Completing the Deep Learning Pipeline with TensorFlow (44 Lectures Total)" The era of simply learning how to call model.fit() is over. From the very foundations of artificial neural networks—differentiation and gradient descent—to the essential use of TensorFlow and Keras in the industry, and even CNN/RNN for handling image and time-series data! We will help you systematically master the entire process of deep learning. Go beyond analyzed data and enter the amazing world of deep learning, where artificial intelligence mimicking the human brain learns and makes decisions on its own.
18 learners
Level Basic
Course period Unlimited
A clear understanding of core mathematics for deep learning (calculus, chain rule)
Architecture design capabilities from perceptrons to multi-layer perceptrons (MLP)
Mastering the deep learning model implementation and deployment process using TensorFlow/Keras
Professional model optimization skills using Dropout, EarlyStopping, and Optuna
Basic skills in image and sequence data processing using CNN and RNN
Who is this course right for?
- For those who want to become a professional deep learning modeler: This is highly recommended for those who want to go beyond simply using libraries and cover everything from the principles (mathematics/theory) of why artificial neural networks work to building practical models all at once.
- For those who want to properly open the 'black box' of deep learning: This is an essential course for aspiring AI engineers who want to gain complete control over the model training process by understanding the core engines of neural networks, such as derivatives, the chain rule, and backpropagation.
- Those who want to push model performance to the limit: Suitable for those struggling with overfitting or those who are desperate for 'real-world' practical techniques to automatically tune hyperparameters using Optuna, a cutting-edge optimization tool.
- For those who want to master image (CNN) and sequence (RNN) data: Recommended for those who want to experience core deep learning architectures, ranging from MNIST digit recognition to time-series data processing and transfer learning, which involves reusing powerful existing models.
- For those who want to master both theory and frameworks (TensorFlow/Keras) simultaneously: This was prepared for those who are curious about how to implement complex formulas into code and how to integrate TensorFlow's powerful features into real-world projects.
Need to know before starting?
Basic knowledge of Python syntax, Numpy, and Pandas is required.
Even if you lack a mathematical background, the core concepts are covered within the lectures, so you can successfully complete the course as long as you have the passion.
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46 lectures ∙ (15hr 27min)
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