Articles About Machine Learning

Machine Learning Matters

Last Updated on June 7, 2016 It is important to know why machine learning matters so that you know the intrinsic value of the field and of methods and open questions in the field. Like knowing your why, knowing the value of the field can be used as a powerful filter of information and help you focus on those methods that actually deliver on the promise that the field makes. In this post you will learn that machine learning matters […]

Read more

Machine Learning is Fascinating

Last Updated on June 7, 2016 Curiosity is a powerful motivator that you can put to work for you. A need to know more or to understand is a deep-seated human trait that we all have to varying degrees. In this post I want to share with you three aspects of machine learning that drive my curiosity to know more. Like me, you can use those aspects that fascinate you about machine learning as touchstones that you can revisit in order […]

Read more

Machine Learning is Popular Right Now

Last Updated on June 7, 2016 It is important to know what is special right now to make machine learning an attractive field to study. Knowing why it is popular now can act like a guide together with knowledge of the promise that the field makes. It can highlight open questions and methods which are growth areas and why that may be the case. Machine learning is popular now. An example of this popularity has been the response to Stanford’s […]

Read more

Programmers Should Get Into Machine Learning

Last Updated on June 7, 2016 Programmers should get involved in the field of machine learning because they are uniquely skilled to make huge contributions. In this post you will learn that as a programmer it can be easy to overlook the skills you have and overvalue those things you don’t know. You will learn about four opportunities for programmers to start making an impact in the field of machine learning almost immediately. Professional Development Practices The discipline of professional […]

Read more

Where Does Machine Learning Fit In?

Last Updated on August 16, 2020 Machine Learning is a multidisciplinary field and it can be very confusing when you are getting started to differentiate machine learning from the closely related fields of Artificial Intelligence and Data Mining. In this post you will learn about those fields that are related to machine learning. Specifically, you will learn about the boundaries of the field by learning how machine learning builds on fields of mathematics and artificial intelligence and is used within […]

Read more

Data, Learning and Modeling

Last Updated on January 6, 2017 There are key concepts in machine learning that lay the foundation for understanding the field. In this post, you will learn the nomenclature (standard terms) that is used when describing data and datasets. You will also learn the concepts and terms used to describe learning and modeling from data that will provide a valuable intuition for your journey through the field of machine learning. Data Machine learning methods learn from examples. It is important […]

Read more

How to Define Your Machine Learning Problem

Last Updated on June 7, 2016 The first step in any project is defining your problem. You can use the most powerful and shiniest algorithms available, but the results will be meaningless if you are solving the wrong problem. In this post you will learn the process for thinking deeply about your problem before you get started. This is unarguably the most important aspect of applying machine learning. What is the problem?Photo attributed to Eleaf, some rights reserved Problem Definition […]

Read more

How to Prepare Data For Machine Learning

Last Updated on August 16, 2020 Machine learning algorithms learn from data. It is critical that you feed them the right data for the problem you want to solve. Even if you have good data, you need to make sure that it is in a useful scale, format and even that meaningful features are included. In this post you will learn how to prepare data for a machine learning algorithm. This is a big topic and you will cover the […]

Read more

How to Evaluate Machine Learning Algorithms

Last Updated on August 16, 2020 Once you have defined your problem and prepared your data you need to apply machine learning algorithms to the data in order to solve your problem. You can spend a lot of time choosing, running and tuning algorithms. You want to make sure you are using your time effectively to get closer to your goal. In this post you will step through a process to rapidly test algorithms and discover whether or not there […]

Read more

How to Improve Machine Learning Results

Last Updated on August 16, 2020 Having one or two algorithms that perform reasonably well on a problem is a good start, but sometimes you may be incentivised to get the best result you can given the time and resources you have available. In this post, you will review methods you can use to squeeze out extra performance and improve the results you are getting from machine learning algorithms. When tuning algorithms you must have a high confidence in the […]

Read more
1 119 120 121 122 123 226