Return to Glossary

Machine Learning

A subdiscipline of artificial intelligence in which algorithms discover patterns in data to predict, recommend, or categorize outcomes. 

Added Perspectives

Let’s start at the beginning. Machine learning (ML) is a subset of artificial intelligence in which an algorithm discovers patterns in data. These patterns help people or applications predict, classify, or prescribe a future outcome. ML relies on a model, which is essentially an equation that defines the relationship between data inputs and outcomes. ML applies various techniques to create this model, including supervised learning, which studies known prior outcomes, and unsupervised learning, which finds patterns without knowing outcomes beforehand.

- Kevin Petrie in The Machine Learning Lifecycle and MLOps: Building and Operationalizing ML Models - Part I

April 15, 2021 (Blog)

Today, AI is often used as an umbrella term for machine learning, which applies statistical methods and specialized algorithms to large volumes of data so machines can improve their performance (that is, learn). This approach is flexible; it requires no predefined rules, but rather uses training data to learn patterns that exist in real-world applications. For instance, a set of known fraud cases may be used to build a machine-learning model that detects potentially malicious transactions.

- Wayne Eckerson in AI: The New BI - How Algorithms Are Transforming Business Intelligence and Analytics

October 30, 2018 (Report)

Machine learning is an umbrella term for techniques that enable computers to perform tasks without being explicitly programmed for them. This is particularly useful if requirements are not known beforehand or the circumstances constantly change. In the last years, machine learning gained momentum in the context of big data and predictive analytics where machine learning algorithms are used to find prior unknown patterns in large data sets to gain business insights or build mathematical models to predict the future.

- Julian Ereth in How Deep is your Data?

June 5, 2016 (Blog)

Relevant Content

Jul 09, 2019 - DataOps helps data engineers and scientists get machine learning right. Improve results with modular development, flexible execution and rigorous testing.

May 12, 2021 - To build a machine learning model, choose an ML technique and feed data to its algorithm to train it. You make changes until you have an accurate ML model.

Related Terms

Datalere

Unleash The Power Of Your Data

Providing modern, comprehensive data solutions so you can turn data into your most powerful asset and stay ahead of the competition.

Learn how we can help your organization create actionable data strategies and highly tailored solutions.

© Datalere, LLC. All rights reserved

383 N Corona St
Denver, CO 80218