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Experimental Design for Data Analysis

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Janani Ravi

2:45:25

104 View
  • 1. Course Overview.mp4
    01:55
  • 1. Module Overview.mp4
    01:13
  • 2. Prerequisites and Course Outline.mp4
    01:20
  • 3. Connecting the Dots with Data.mp4
    02:58
  • 4. Hypothesis Testing.mp4
    07:27
  • 5. T-tests.mp4
    03:18
  • 6. ANOVA.mp4
    04:46
  • 7. Designing a Machine Learning Experiment.mp4
    05:12
  • 8. Summary.mp4
    01:38
  • 1. Module Overview.mp4
    01:33
  • 2. Getting Started with Azure ML Studio.mp4
    05:23
  • 3. Loading and Visualizing Data.mp4
    05:07
  • 4. Exploring Relationships in Data.mp4
    04:31
  • 5. Preprocessing and Preparing Data.mp4
    06:02
  • 6. Building and Training a Regression Model for Price Prediction.mp4
    07:59
  • 7. Building and Training a Regression Model in Python.mp4
    08:56
  • 8. Summary.mp4
    01:24
  • 1. Module Overview.mp4
    01:10
  • 2. Overfitting and Techniques to Mitigate Overfitting.mp4
    06:55
  • 3. Accuracy, Precision, and Recall.mp4
    05:00
  • 4. The ROC Curve.mp4
    04:07
  • 5. Preparing and Processing Data.mp4
    07:13
  • 6. Building Training and Evaluating a Classification Model.mp4
    07:47
  • 7. Summary.mp4
    01:33
  • 01. Module Overview.mp4
    01:20
  • 02. Cross-validation in the ML Workflow.mp4
    01:53
  • 03. Singular Cross-validation.mp4
    03:33
  • 04. Cross-validation Using Azure ML Studio.mp4
    05:43
  • 05. K-fold Cross-validation and Variants.mp4
    06:16
  • 06. K-fold Cross-validation in scikit-learn.mp4
    07:09
  • 07. Repeated K-fold Cross-validation in scikit-learn.mp4
    04:02
  • 08. Stratified K-fold Cross-validation in scikit-learn.mp4
    05:14
  • 09. Group K-fold in scikit-learn.mp4
    04:03
  • 10. Summary.mp4
    01:26
  • 1. Module Overview.mp4
    02:23
  • 2. Hyperparameter Tuning.mp4
    02:07
  • 3. Decision Trees.mp4
    03:09
  • 4. Hyperparameter Tuning a Decision Forest Classifier.mp4
    06:33
  • 5. Tuning and Scoring Multiple Models.mp4
    04:51
  • 6. Summary and Further Study.mp4
    01:16
  • Description


    This course covers conceptual and practical aspects of building and evaluating machine learning models in a way that uses data judiciously, while also accounting for considerations such as ordering and relationships within data and other biases.

    What You'll Learn?


      Providing crisp, clear, actionable points-of-view to senior executives is becoming an increasingly important role of data scientists and data professionals these days. Now, a point-of-view must represent a hypothesis, ideally backed by data. In this course, Experimental Design for Data Analysis, you will gain the ability to construct such hypotheses from data and use rigorous frameworks to test whether they hold true. First, you will learn how inferential statistics and hypothesis testing form the basis of data modeling and machine learning. Next, you will discover how the process of building machine learning models is akin to that of designing an experiment and how training and validation techniques help rigorously evaluate the results of such experiments. Then, you will round out the course by studying various forms of cross-validation, including both singular and iterative techniques to cope with independent, identically distributed data and grouped data. Finally, you will also learn how you can refine your models using these techniques with hyperparameter tuning. When you’re finished with this course, you will have the skills and knowledge to build and evaluate models, specifically including machine learning models, using rigorous cross-validation frameworks and hyperparameter tuning.

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    Janani has a Masters degree from Stanford and worked for 7+ years at Google. She was one of the original engineers on Google Docs and holds 4 patents for its real-time collaborative editing framework. After spending years working in tech in the Bay Area, New York, and Singapore at companies such as Microsoft, Google, and Flipkart, Janani finally decided to combine her love for technology with her passion for teaching. She is now the co-founder of Loonycorn, a content studio focused on providing high-quality content for technical skill development. Loonycorn is working on developing an engine (patent filed) to automate animations for presentations and educational content.
    Pluralsight, LLC is an American privately held online education company that offers a variety of video training courses for software developers, IT administrators, and creative professionals through its website. Founded in 2004 by Aaron Skonnard, Keith Brown, Fritz Onion, and Bill Williams, the company has its headquarters in Farmington, Utah. As of July 2018, it uses more than 1,400 subject-matter experts as authors, and offers more than 7,000 courses in its catalog. Since first moving its courses online in 2007, the company has expanded, developing a full enterprise platform, and adding skills assessment modules.
    • language english
    • Training sessions 40
    • duration 2:45:25
    • level average
    • English subtitles has
    • Release Date 2022/12/12