

Here’s why enrolling in this course is a smart choice:
This comprehensive course will serve as your ultimate guide to unsupervised learning and clustering techniques, utilizing the R-programming language and JavaScript.
In addition to practical demonstrations of R-scripts, this course delves into the theoretical foundations of unsupervised machine learning, providing you with a deep understanding of concepts such as K-means and Hierarchical clustering.
You’ll gain expertise in various aspects of practical data science related to unsupervised machine learning and clustering, saving you valuable time and resources compared to other expensive materials in the field of R-based data science.
Unlocking Opportunities:
In today’s era of big data, organizations worldwide harness the power of R and Google Cloud Computing Services for data analysis in business and research. Mastering unsupervised learning in R can give your career a significant boost and provide your company with a competitive edge. Moreover, you’ll explore the capabilities of cloud computing using Google services like Earth Engine, applying unsupervised K-means learning to real-world mapping applications.
Course Content:
This course comprises eight comprehensive sections, covering every facet of unsupervised machine learning, from theory to practice:
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Gain a solid grasp of Machine Learning, Cluster Analysis, and Unsupervised Machine Learning from theory to practical application.
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Leverage the potential of unsupervised learning, including cluster analysis, both in R and with Google Cloud Services.
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Dive into Machine Learning, Supervised Learning, and Unsupervised Learning within the R environment.
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Complete two independent projects focusing on Unsupervised Machine Learning, one in R and the other using Google Cloud Services.
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Implement Unsupervised Clustering Techniques, including K-means Clustering and Hierarchical Clustering, among others.
No Prior Knowledge Required:
This course is designed for learners with no prior experience in R or statistics/machine learning. It begins with fundamental R Data Science concepts and gradually progresses to more complex topics. You’ll work with real data from various sources, including a real-life project on Google’s cloud computing platform. All scripts and data used in the course will be provided, making your learning journey smooth and practical.
Unique Approach:
This course stands out from other training resources due to its hands-on, easy-to-follow methods, which simplify even the most complex R concepts. Each lecture aims to enhance your data science and clustering skills, empowering you with practical solutions. By the end of the course, you’ll confidently analyze diverse data streams for your projects, earning recognition from future employers for your advanced machine learning expertise and knowledge of cutting-edge data science techniques.
Target Audience:
Ideal for professionals needing to use cluster analysis, unsupervised machine learning, and R in their field, this course offers valuable insights and skills essential for success.
Practical Exercises:
Engage in practical exercises where you’ll receive precise instructions and datasets to implement machine learning algorithms using R and Google Cloud Computing tools.
Enroll Now:
Join this course today to embark on a transformative journey in the realm of unsupervised machine learning and clustering.
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9Introduction
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10Lab: Installing Packages and Package Management in R
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11Lab: Variables in R and assigning Variables in R
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12Overview of data types and data structures in R
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13Lab: data types and data structures in R
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14Dataframes: overview
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15Functions in R - overview
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16Lab: Functions in R - get started!
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17Lab: For Loops in R
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18Read Data into R