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Data Mining and the Analytics Workflow

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Janani Ravi

2:54:42

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  • 01 - Course Overview.mp4
    01:52
  • 02 - Module Overview.mp4
    01:23
  • 03 - Prerequisites and Course Outline.mp4
    01:25
  • 04 - What Is Data Mining.mp4
    05:43
  • 05 - The Data Mining Workflow.mp4
    03:10
  • 06 - Data Mining and Big Data.mp4
    04:47
  • 07 - Mitigating Data Silos.mp4
    05:05
  • 08 - Data Mining, Statistics, and Machine Learning.mp4
    05:38
  • 09 - Demo - Installing Libraries.mp4
    01:50
  • 10 - Module Summary.mp4
    01:30
  • 11 - Module Overview.mp4
    01:21
  • 12 - Finding Patterns in Data.mp4
    02:58
  • 13 - Association Rules for Market Basket Analysis.mp4
    04:30
  • 14 - Frequent Itemsets and Support.mp4
    03:55
  • 15 - Confidence, Lift, and Conviction.mp4
    04:15
  • 16 - The Apriori Algorithm.mp4
    03:37
  • 17 - Demo - Exploratory Data Analysis on Bakery Transactions.mp4
    06:25
  • 18 - Demo - Setting up the Data for Association Rule Mining.mp4
    01:37
  • 19 - Demo - Using the Apriori Algorithm to Generate Frequent Itemsets.mp4
    04:38
  • 20 - Demo - Association Rule Mining.mp4
    04:15
  • 21 - Clustering.mp4
    03:16
  • 22 - Demo - Preparing Data for Cluster Analysis.mp4
    03:28
  • 23 - Demo - Performing Cluster Analysis.mp4
    04:40
  • 24 - Module Summary.mp4
    01:32
  • 25 - Module Overview.mp4
    02:08
  • 26 - Rule-based vs. ML-based Models.mp4
    04:14
  • 27 - Demo - Rule Based Classification of Animal Species.mp4
    03:45
  • 28 - Demo - Rule Based Classification of Iris Flowers.mp4
    06:46
  • 29 - Overview of Logistic Regression, Support Vector Machines, and Naive Bayes for Classification.mp4
    07:14
  • 30 - Demo - ML-based Classification of Gender Voices.mp4
    07:32
  • 31 - Module Summary.mp4
    01:18
  • 32 - Module Overview.mp4
    01:57
  • 33 - Building Regression Models.mp4
    03:03
  • 34 - Demo - Simple Regression.mp4
    03:36
  • 35 - Demo - Preparing Data for Regression.mp4
    05:48
  • 36 - Demo - Multiple Regression.mp4
    01:48
  • 37 - Demo - Hierarchical Regression.mp4
    04:38
  • 38 - Demo - Stepwise Regression Using Recursive Feature Elimination.mp4
    03:50
  • 39 - Demo - Stepwise Regression Using Forward and Backward Selection.mp4
    04:26
  • 40 - Demo - Setwise Regression.mp4
    02:32
  • 41 - Module Summary.mp4
    01:30
  • 42 - Module Overview.mp4
    01:11
  • 43 - The CRISP-DM Methodology .mp4
    03:43
  • 44 - Demo - Data Understanding.mp4
    04:42
  • 45 - Demo - Data Preparation.mp4
    07:03
  • 46 - Demo - Building and Evaluating Models.mp4
    02:41
  • 47 - Demo - Model Deployment.mp4
    04:50
  • 48 - Summary and Further Study.mp4
    01:37
  • Description


    This course explains the continuing relevance of Data Mining today, in the context of applying machine learning techniques to big data. It covers conceptual and practical details of powerful techniques such as Association Rules learning and the industry-standard CRISP-DM methodology for data mining workflows.

    What You'll Learn?


      Data Mining is an umbrella term used for techniques that find patterns in large datasets. Simply put, data mining is the application of machine learning techniques on big data. The popularity of the term Data Mining peaked some years ago, but in substance, data mining is perhaps more relevant today than it has ever been.

      In this course, Data Mining and the Analytics Workflow you will gain the ability to formulate your use-case as a Data Mining problem, and then apply a classic process, the CRISP-DM methodology, to solve it.

      First, you will learn how association rules learning works, and why it is considered a classic data mining application, predating the explosion in the popularity of ML. You will see the similarities and contrasts between association rules learning and recommender systems.

      Next, you will discover how big data and machine learning both squarely lie within the ambit of data mining, even as more traditional data mining links to statistics and information retrieval continue to exist.

      Finally, you will round out your knowledge by learning about an industry-standard process for building data mining applications, know as the CRISP-DM. This technique is about two decades old but has retained its relevance, and closely mirrors the classic machine learning workflow in wide use today.

      When you’re finished with this course, you will have the skills and knowledge to design and implement the right data mining solution, one that applies machine learning on big data, for your use-case.

    More details


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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 48
    • duration 2:54:42
    • level preliminary
    • Release Date 2023/10/15