 课程大纲:
        
    课程大纲:                    Machine Learning with Python – 4 Days培训
      
Introduction to Applied Machine Learning
        Statistical learning vs. Machine learning
        Iteration and evaluation
        Bias-Variance trade-off
        Supervised Learning and Unsupervised Learning
        Machine Learning Languages, Types, and Examples
        Supervised vs Unsupervised Learning
        Supervised Learning
        Decision Trees
        Random Forests
        Model Evaluation
        Machine Learning with Python
        Choice of libraries
        Add-on tools
        Regression
        Linear regression
        Generalizations and Nonlinearity
        Exercises
        Classification
        Bayesian refresher
        Naive Bayes
        Logistic regression
        K-Nearest neighbors
        Exercises
        Cross-validation and Resampling
        Cross-validation approaches
        Bootstrap
        Exercises
        Unsupervised Learning
        K-means clustering
        Examples
        Challenges of unsupervised learning and beyond K-means
        Neural networks
        Layers and nodes
        Python neural network libraries
        Working with scikit-learn
        Working with PyBrain
        Deep Learning
 
     
     
         
     加入高级会员获得助教答疑
 加入高级会员获得助教答疑 
                