 课程大纲:
        
    课程大纲:         Applied AI from Scratch in Python培训
Supervised learning: classification and regression
        Machine Learning in Python: intro to the scikit-learn API
        linear and logistic regression
        support vector machine
        neural networks
        random forest
        Setting up an end-to-end supervised learning pipeline using scikit-learn
        working with data files
        imputation of missing values
        handling categorical variables
        visualizing data
        Python frameworks for for AI applications:
        TensorFlow, Theano, Caffe and Keras
        AI at scale with Apache Spark: Mlib
        Advanced neural network architectures
        convolutional neural networks for image analysis
        recurrent neural networks for time-structured data
        the long short-term memory cell
        Unsupervised learning: clustering, anomaly detection
        implementing principal component analysis with scikit-learn
        implementing autoencoders in Keras
        Practical examples of problems that AI can solve (hands-on exercises using Jupyter notebooks), e.g. 
        image analysis
        forecasting complex financial series, such as stock prices,
        complex pattern recognition
        natural language processing
        recommender systems
        Understand limitations of AI methods: modes of failure, costs and common difficulties
        overfitting
        bias/variance trade-off
        biases in observational data
        neural network poisoning
        Applied Project work (optional)
 
     
     
         
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