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Cluster Analysis : Unsupervised Machine Learning in Python

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Karthik K

46:43

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  • 1 - Introduction.mp4
    02:07
  • 2 - Artificial Intelligence.mp4
    02:03
  • 3 - Machine Learning.mp4
    01:05
  • 4 - Supervised Learning.mp4
    02:38
  • 5 - Classification Models.txt
  • 5 - Supervised Learning Classifications.mp4
    00:39
  • 6 - Regression Analysis.txt
  • 6 - Supervised Learning Regressions.mp4
    00:42
  • 7 - Unsupervised Learning.mp4
    01:07
  • 8 - Python 3 Programming.txt
  • 8 - Unsupervised Learning Clustering.mp4
    01:31
  • 9 - Installation of Python Platform.mp4
    01:17
  • 9 - Python 3 Installation.txt
  • 1 - Test your knowledge.html
  • 10 - Important Terminologies.mp4
    01:21
  • 10 - MallCustomers.csv
  • 11 - KMeans Clustering.mp4
    08:46
  • 11 - MallCustomers.csv
  • 11 - kmeans.zip
  • 12 - Hierarchical Clustering.mp4
    05:56
  • 12 - MallCustomers.csv
  • 12 - hierarchical.zip
  • 13 - Silhouette Score.mp4
    01:42
  • 14 - CalinskiHarabasz Index Variance Ratio Criterion.mp4
    00:30
  • 15 - DaviesBouldin Index.mp4
    00:47
  • 16 - MallCustomers.csv
  • 16 - Mean Shift Clustering.mp4
    06:15
  • 16 - meanshift.zip
  • 17 - DBSCAN Density Based Spatial Clustering of Applications with Noise.mp4
    05:03
  • 17 - MallCustomers.csv
  • 17 - dbscan.zip
  • 18 - MallCustomers.csv
  • 18 - OPTICS Ordering points to identify the clustering structure.mp4
    01:29
  • 18 - optics.zip
  • 19 - MallCustomers.csv
  • 19 - Spectral Clustering.mp4
    01:45
  • 19 - spectralclustering.zip
  • Description


    A Quick Way to Learn and Implement Clustering Algorithms for Pattern Recognition in Python. A Course for Beginners.

    What You'll Learn?


    • Describe the input and output of a clustering model
    • Prepare data with feature engineering techniques
    • Implement K-Means Clustering, Hierarchical Clustering, Mean Shift Clustering, DBSCAN, OPTICS and Spectral Clustering models
    • Determine the optimal number of clusters
    • Use a variety of performance metrics such as Silhouette Score, Calinski-Harabasz Index and Davies-Bouldin Index.

    Who is this for?


  • Beginners starting out to the field of Machine Learning.
  • Industry professionals and aspiring data scientists.
  • People who want to know how to write their clustering code.
  • What You Need to Know?


  • Basic knowledge of Python Programming
  • More details


    Description

    Artificial intelligence and machine learning are touching our everyday lives in more-and-more ways. There’s an endless supply of industries and applications that machine learning can make more efficient and intelligent. You have probably come across Google News, which automatically groups similar news articles under a topic. Have you ever wondered what process runs in the background to arrive at these groups? Unsupervised machine learning is the underlying method behind a large part of this. Unsupervised machine learning algorithms analyze and cluster unlabeled datasets. These algorithms discover hidden patterns or data groupings without human intervention. This course introduces you to one of the prominent modelling families of Unsupervised Machine Learning called Clustering. This course provides the learners with the foundational knowledge to use Clustering models to create insights. You will become familiar with the most successful and widely used Clustering techniques, such as:

    • K-Means Clustering

    • Hierarchical Clustering

    • Mean Shift Clustering

    • DBSCAN : Density-Based Spatial Clustering of Applications with Noise

    • OPTICS : Ordering points to identify the clustering structure

    • Spectral Clustering

    You will learn how to train clustering models to cluster and use performance metrics to compare different models. By the end of this course, you will be able to build machine learning models to make clusters using your data. The complete Python programs and datasets included in the class are also available for download. This course is designed most straightforwardly to utilize your time wisely. Get ready to do more learning than your machine!

    Happy Learning.


    Career Growth:

    Employment website Indeed has listed machine learning engineers as #1 among The Best Jobs in the U.S., citing a 344% growth rate and a median salary of $146,085 per year. Overall, computer and information technology jobs are booming, with employment projected to grow 11% from 2019 to 2029.

    Who this course is for:

    • Beginners starting out to the field of Machine Learning.
    • Industry professionals and aspiring data scientists.
    • People who want to know how to write their clustering code.

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    Engineer dedicated to utilizing the power of Machine learning and Deep learning to solve real-world problems, improve design and performance assessment. Over ten years of experience in engineering and R&D environment. Engineering professional with a focus on Multi-physics CFD-ML from IIT Madras. Experienced in implementing action-oriented solutions to complex business problem.
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 19
    • duration 46:43
    • English subtitles has
    • Release Date 2024/03/21