Repository files navigation Archived lab assignments from Andrew Ng’s Coursera courses, for revision and quick lookup
1st Course: Neural Networks and Deep Learning
Lab1: Python Basics with Numpy
Lab2: Logistic Regression with a Neural Network Mindset
Lab3: Planar Data Classification with One Hidden Layer
Lab4: Building your Deep Neural Network Step by Step
Lab5: Deep Neural Network - Application
2nd Course: Improving Deep Neural Networks - Hyperparameter Tuning, Regularization and Optimization
Lab1: Initialization
Lab2: Regularization
Lab3: Gradient Checking
3rd Course: Structuring Machine Learning Projects
4th Course: Convolutional Neural Networks
5th Course: Sequence Models
1st Course: Python and Jupyter Notebooks
Lab1: Python and Jupyter Notebooks
Lab2: Model Representation
Lab3: Cost Function
Lab4: Gradient Descent
Lab5: Python, NumPy and vectorization
Lab6: Multiple linear regression
Lab7: Feature scaling and learning rate
Lab8: Feature engineering and Polynomial regression
Lab9: Linear regression with scikit-learn
Lab10: Linear Regression
Lab11: Classification
Lab12: Sigmoid function and logistic regression
Lab13: Decision boundary
Lab14: Logistic loss
Lab15: Cost function for logistic regression
Lab16: Gradient descent for logistic regression
Lab17: Logistic regression with scikit-learn
Lab18: Overfitting
Lab19: Regularization
Lab20: logistic regression
2nd Course: Advanced Learning Algorithms
Lab1: Neurons and Layers
Lab2: Coffee Roasting in Tensorflow
Lab3: CoffeeRoastingNumPy
Lab4: Neural Networks for Binary Classification
Lab5: ReLU activation
Lab6: Softmax
Lab7: Multiclass
Lab8: Derivatives
Lab9: Back propagation
Lab10: Neural Networks for Multiclass classification
Lab11: Model Evaluation and Selection
Lab12: Diagnosing Bias and Variance
Lab13: Advice for Applying Machine Learning
Lab14: Decision Trees
Lab15: Tree Ensembles
Lab16: Decision Trees (Assignment)
3rd Course: Unsupervised Learning, Recommenders, Reinforcement Learning
Lab1: k-means
Lab2: Anomaly Detection
Lab3: Collaborative Filtering Recommender Systems
Lab4: Deep Learning for Content-Based Filtering
Lab5: PCA and data visualization
Lab6: State-action value function
Lab7: Reinforcement Learning
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备份了 Andrew Ng 在 Coursera 上的 Online Courses Lab 作业资料,供复习查阅
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