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深度學習|資訊工程學系 吳尚鴻

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This class introduces the concepts and practices of deep learning. The course consists of three parts. In the first part, we give a quick introduction of classical machine learning and review some key concepts required to understand deep learning.In the second part, we discuss how deep learning differs from classical machine learning and explain why it is effective in dealing with complex problems such as the image and natural language processing. Various CNN and RNN models will be covered. In the third part, we introduce the deep reinforcement learning and its applications.This course also gives coding labs. We will use Python 3 as the main programming language throughout the course. Some popular machine learning libraries such as Scikit-learn and Tensorflow will be used and explained in details. 《keywords:深度學習, ☑️Deep Learning, ☑️Scientific Python, ☑️Neural Networks, ☑️Numerical Optimization》

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  • NTHU-OCW 課程來源

  • NTHU-OCW 課程討論區

  • 第1R講 Introduction/Scientific Python 101
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    第2R講 Linear Algebra/Data Exploration & PCA
    第3R講 Probability & Information Theory/Decision Trees & Random Forest
    第4R講 Numerical Optimization/ Perceptron & Adaline /Regression
    第5R講 Learning Theory & Regularization /Regularization
    第6R講 Probabilistic Models/Logistic Regression & Metrics
    第7R講 Non-Parametric Methods & SVMs/SVMs & Scikit-Learn Pipelines
    第8R講 Cross Validation & Ensembling/CV & Ensembling
    第9R講 Large-Scale Machine Learning
    第10R講 Neural Networks: Design/ TensorFlow101 & Word2Vec
    第11R講 Neural Networks: Optimization & Regularization
    第12R講 Convolutional Neural Networks
    第13R講 Recurrent Neural Networks/Seq2Seq Learning for Machine Translation
    第14R講 Unsupervised Learning/Autoencoders/GANs
    第15R講 Semisupervised/Transfer Learning and the Future
    第16R講 Reinforcement Learning/Q-learning
    第17R講 Deep Reinforcement Learning/ DQN & Policy Network
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