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Why machine learning and data science in Excel?

Do data scientists and data analysts use Excel at all?

The answer is a resounding “Yes, they do!”

Few people in an organization can read a Jupyter Notebook, but literally everyone is familiar with Excel. It provides the direct, visual insight that both experts and beginners need to apply the most common machine learning methods. Plus, it is naturally suited to data preparation.

In fact, the simplicity of Excel lowers barriers to entry and allows you to undertake your own data analysis right away. Even if you are not a computer science graduate with Python coding skills, this course will teach you how to perform machine learning and advanced statistical analysis on your own.

Excel is the perfect environment to grasp the logic of different machine learning techniques in an easy-to-understand way. All you need to do is get started, and in no time, you will be able to fully understand the intuition behind ML algorithms without having to code at all.

So, if you are not into programming but you want to break into data science, statistical analysis, and machine learning, and you aspire to become a data analyst or data scientist, you’ve come to the right place.

Machine learning methods we will cover in the course:

   Linear regression
   Multiple Linear Regression
   Logistic Regression
   Cluster Analysis
   K-Means Clustering
   Decision Trees

You will learn fundamental statistical and machine learning concepts, such as:

   Regression coefficients
   Variability
   OLS assumptions
   ROC curve
   Underfitting
   Overfitting
   Difference between classification and clustering
   How to choose the number of clusters
   How to cluster categorical data
   When to standardize data
   Pros and Cons of clustering
   Entropy (Loss function)
   Information gain

As you can see, we aim to teach you the foundations of machine learning and advanced statistical analysis in a software that is truly easy to understand. And the best part is, once you finish this course, you will have the transferable theoretical knowledge you’ll need if you decide to dive into the advanced frameworks available in Python.

So, if you are passionate about machine learning but you don’t know how to code, then this course is the perfect opportunity for you. Click ‘Buy Now’, get excited, and begin your ML journey today!!
Who this course is for:

   You Should Take This Course If You Want to Understand Machine Learning Fundamentals
   Don’t Know How to Code but You Want to Perform Machine Learning On Your Own? This Is the Perfect Course for You
   This Course Is Great If You Aspire to Become a Data Analyst or a Data Scientist

Requirements

   Understanding of Basic Statistics
   Beginner Excel Knowledge

Last Updated 1/2022

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