<strike id="jrjdx"><ins id="jrjdx"></ins></strike>

<address id="jrjdx"></address>

    <listing id="jrjdx"><listing id="jrjdx"><meter id="jrjdx"></meter></listing></listing>
    <address id="jrjdx"></address><form id="jrjdx"><th id="jrjdx"><th id="jrjdx"></th></th></form>
    <address id="jrjdx"><address id="jrjdx"><listing id="jrjdx"></listing></address></address>
    <noframes id="jrjdx">

    <noframes id="jrjdx">
    <form id="jrjdx"></form><form id="jrjdx"></form>

      <noframes id="jrjdx"><address id="jrjdx"><listing id="jrjdx"></listing></address>
      <noframes id="jrjdx">

      課程目錄:大數據分析培訓
      4401 人關注
      (78637/99817)
      課程大綱:

                大數據分析培訓

       

       

       

      Section 1: Simple linear regression
      Fit a simple linear regression between two variables in R;Interpret output from R;Use models
      to predict a response variable;Validate the assumptions of the model.
      Section 2: Modelling data
      Adapt the simple linear regression model in R to deal with multiple variables;Incorporate continuous and categorical variables
      in their models;Select the best-fitting model by inspecting the R output.
      Section 3: Many models
      Manipulate nested dataframes in R;Use R to apply simultaneous linear models to large data frames by stratifying
      the data;Interpret the output of learner models.
      Section 4: Classification
      Adapt linear models to take into account when the response is a categorical variable;Implement Logistic regression (LR)
      in R;Implement Generalised linear models (GLMs) in R;Implement Linear discriminant analysis (LDA) in R.
      Section 5: Prediction using models
      Implement the principles of building a model to do prediction using classification;Split data into training and test sets,
      perform cross validation and model evaluation metrics;Use model selection for explaining data
      with models;Analyse the overfitting and bias-variance trade-off in prediction problems.
      Section 6: Getting bigger
      Set up and apply sparklyr;Use logical verbs in R by applying native sparklyr versions of the verbs.
      Section 7: Supervised machine learning with sparklyr
      Apply sparklyr to machine learning regression and classification models;Use machine learning models
      for prediction;Illustrate how distributed computing techniques can be used for “bigger” problems.
      Section 8: Deep learning
      Use massive amounts of data to train multi-layer networks for classification;Understand some
      of the guiding principles behind training deep networks, including the use of autoencoders, dropout,
      regularization, and early termination;Use sparklyr and H2O to train deep networks.
      Section 9: Deep learning applications and scaling up
      Understand some of the ways in which massive amounts of unlabelled data, and partially labelled data,
      is used to train neural network models;Leverage existing trained networks for targeting
      new applications;Implement architectures for object classification and object detection and assess their effectiveness.
      Section 10: Bringing it all together
      Consolidate your understanding of relationships between the methodologies presented in this course,
      theirrelative strengths, weaknesses and range of applicability of these methods.

      日韩不卡高清