Basics of Machine Learning
Seize the opportunity to learn the Basics of Machine Learning from our free course. Comprehend concepts like supervised and unsupervised Machine Learning, linear regression, Pearson's coefficient, and coefficient of determinant.
Skills you’ll Learn
About this course
This free course starts by providing a brief introduction to Machine Learning. You will understand the purpose of its algorithms and go through its industry use cases. Further, you will learn about the mathematical space where Machine Learning occurs. You will then move on to the critical concepts like supervised Machine Learning, linear regression, Pearson's coefficient, best fit line, and coefficient of determinant. Lastly, you will look through a case study to understand these concepts better. Enroll in this free Basics of Machine Learning course and complete the quiz at the end to earn a free certificate.
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Course Outline
Data is the soul of Machine Learning, and there are specific methods to deal with it efficiently. This module first introduces Machine Learning and talks about the mathematical procedures involved. You will learn about supervised and unsupervised learning, Data Science Machine Learning steps, linear regression, Pearson's coefficient, best fit line, and coefficient of determinant. Lastly, you will be going through a case study to help you effectively comprehend Machine Learning concepts.
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Frequently Asked Questions
What are the prerequisites required to learn this free Machine Learning course?
No prerequisites are required for this course, and any fresher who wants to start with Machine Learning basics can register for this free course.
Will I have lifetime access to this free course?
You can revisit this Basics of Machine Learning course at any time for free.
What are my next learning options after this Basics of Machine Learning course?
If you are looking to dive into advanced concepts of Machine Learning, look into Great Learning’s Best Machine Learning Course and efficiently build your career in Machine Learning.
What is Machine Learning used for?
Machine Learning is a form of data analysis that automates the building of analytical models. It's a field of Artificial Intelligence based on the idea that computers can learn from data, identify patterns, and draw conclusions with little or no human input.
Why is Machine Learning so popular?
There are a few reasons why Machine Learning is becoming increasingly popular:
1. Machine Learning can be used to automatically find patterns in data, which is especially useful for data that is too large or complex for humans to process manually.
2. It can be used to make predictions about future events, which is valuable for businesses that want to make decisions based on data-driven insights.
3. It is becoming more accessible due to advancements in technology, leading to more businesses and individuals utilizing Machine Learning to solve complicated problems efficiently.
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Basics of Machine Learning
Machine Learning helps you in data analysis that automates analytical model building. Machine Learning is also closely related to Artificial Intelligence, which allows it to achieve similar intelligence as humans. Machine learning helps machines learn from the data, identify patterns, understand problems, and make decisions with lesser human interaction. Compared to past Machine Learning techniques, it has come to a new era where Machine Learning has more productive techniques and algorithms that have allowed one to reach greater heights in developing new software. The introduction of the new computing technologies has enabled Machine Learning to unleash various benefits that can help developers create smart applications.
Machine learning is integral in developing AI applications, face detection and recognition, and more. It paved the way for creating the algorithm utilized for the machines’ self-learning feature. Machine Learning and Artificial Intelligence play a critical role in Robotics applications. In this data-driven world, Data Science plays an important role. Managing a large amount of data is now easier with the help of Machine Learning algorithms. For example, using Machine Learning algorithms, you can separate stars from quasars present across the universe. Big Data is also an important concept one should be familiar with. It helps you play with data much faster and enables a heuristic approach.
With the improvement in Machine Learning algorithms, it has gained the ability to apply complex mathematical calculations to Big Data, often automatically and at a faster rate, which is one of the recent development. Machine Learning has become an integral part of the majority of the applications that are being created. Take the example of self-driving cars, which is the essence of Machine Learning. Online recommendations are the fruitful result of Machine Learning applications. The linguist rule creation is a successful attempt because of Machine Learning. Fraud detection is also successfully implemented with the help of Machine Learning algorithms and techniques. If you want to become a successful developer, you should be thorough in the Basics of Machine Learning.
Artificial Intelligence is, in the long run for mimicking human abilities. It is able to achieve it with the help of Machine Learning. Machine Learning and Artificial Intelligence go together. You can see Machine Learning as the subset of Artificial Intelligence. Machine learning became more popular with time because of its efficient work process for data mining and Bayesian analysis. Machine Learning has made it possible for developers to realize their goal of developing smart devices. Machine Learning became more popular with the need for a large volume of data processing and computational processing that is cost-effective, powerful, and affordable data storage. The primary aim is to achieve quick and automatic production of models that can analyze larger and more complex data and deliver accurate results faster, even on a large scale.
Organizations should have a stable model to help them analyze the data better, identify profitable opportunities, and avoid unknown risks. Suppose you wish to create sound Machine Learning systems. In that case, the features like data preparation capabilities, familiarity with the basic and the advanced algorithms, taking care of automation and iterative processes, scalability, and ensemble modeling will help you realize it better. IoT is also advancing more with the help of Machine Learning algorithms. Everyone in this modern world requires Data Science. AIML is seeing drastic growth in its field, and many are choosing it as their career goal. There are many useful applications of Machine Learning.
IT world is developing rapidly and has chosen Machine Learning as their stepping stone. Linear Regression plays a vital role in Machine Learning. It is popular in both Machine Learning and statistics and plays a significant role in developing Machine Learning algorithms. You can model the relationship between the variables because of linear regression. It helps you in ensuring the generalization and allows the model to have the ability to predict the outputs for the given inputs. Generalization is also essential when dealing with the data, and it plays a good role in the performance of the Machine Learning algorithms. Generalization favors achieving the artificial form of intelligence that solely depends on teaching the model in a generalized way where it can act on its own.
Linear Regression is pretty precious when you look at it from the point of view of Machine Learning. It helps you to that particular line that best fits the data points on your plot. This allows you to get your answer to the problem statement that you are dealing with. Machine Learning, as usual, deals with an enormous amount of data, and to get an ideal solution for your problem, Linear Regression comes in handy. It finds the best fit solution for your problem. With the slight adjustment in the plot, you will realize your perfect fit solution. When you map one independent variable to one dependent variable, it is known as Univariate Linear Regression. When you map multiple independent variables(features) with a dependent variable(labels) is known as Multivariate Linear Regression.
The majority of the Machine Learning algorithms come under the supervised learning category. Linear Regression has made it easier for everyone to understand the mathematical formula that allows one to generate predictions. Linear Regression is not only adhered to academic studies but is very useful in achieving various applications in businesses. Linear Regression is very helpful in all the different areas, from biology to predicting the scientific future. It is proving to be essential in every industry and organization as it is helping them in making the right decisions. Linear Regression provides better insights. It deals with the masses of data and allows organizations to get acceptable results. It helps to uncover missing patterns and relationships when done in person. Linear Regression plays a vital role in making Machine Learning and Artificial Intelligence a big success.
To master Machine Learning, you must first be thorough with the basics. Learn Basics of Machine Learning by enrolling in Great Learning Academy’s “Basics of Machine Learning” free course, specifically designed to achieve Machine Learning basics for beginners. Enroll in this free Machine Learning basic course and get a good hold of the Machine Learning concepts. Complete the course and secure the free certification to enhance your career path.