www.ml-class.org by 
Professor Andrew Ng and 
his team
It's, at least, as interesting as the more popular 
www.ai-class.com
The following is a tentative syllabus for the class:
    Introduction to Machine Learning. Univariate linear regression. (Optional: Linear algebra review.)
    Multivariate linear regression. Practical aspects of implementation. Octave tutorial.
    Logistic regression, One-vs-all, Regularization.
    Neural Networks, backpropagation, gradient checking.
    Support Vector Machines (SVMs) and intuitions. Quick survey of other algorithms: Naive Bayes, Decision trees, Boosting.
    Practical advice for applying learning algorithms: How to develop, debugging, feature/model design, setting up experiment structure.
    Unsupervised learning: Agglomerative clustering, K-means, PCA, when to use each. (Optional/extra credit: ICA).
    Anomaly detection. Combining supervised and unsupervised.
    Other applications: Recommender systems. Learning to rank (search).
    Large-scale/parallel machine learning and big data. ML system design/practical methods. Team design of ML systems.
 
            www.ml-class.org by 
Professor Andrew Ng and 
his team
It's, at least, as interesting as the more popular 
www.ai-class.com
The following is a tentative syllabus for the class:
    Introduction to Machine Learning. Univariate linear regression. (Optional: Linear algebra review.)
    Multivariate linear regression. Practical aspects of implementation. Octave tutorial.
    Logistic regression, One-vs-all, Regularization.
    Neural Networks, backpropagation, gradient checking.
    Support Vector Machines (SVMs) and intuitions. Quick survey of other algorithms: Naive Bayes, Decision trees, Boosting.
    Practical advice for applying learning algorithms: How to develop, debugging, feature/model design, setting up experiment structure.
    Unsupervised learning: Agglomerative clustering, K-means, PCA, when to use each. (Optional/extra credit: ICA).
    Anomaly detection. Combining supervised and unsupervised.
    Other applications: Recommender systems. Learning to rank (search).
    Large-scale/parallel machine learning and big data. ML system design/practical methods. Team design of ML systems.