In 2014, during an event organized by the University of Reading, a chatbot passed the legendary Turing Test after it convinced 33% of the judges it was actually a 13-year-old boy.
That was nearly a decade ago, and machine learning has only evolved further. In the process, it's become an integral part of the marketing world.
Machine learning is a type of artificial intelligence (AI) that allows software to increase predictive accuracy through complex algorithms fueled by historical data without the need for specific programming.
Like the human brain, it leverages what it already knows to learn new things. Four distinct types of machine learning are relevant to marketing: supervised learning, unsupervised learning, semi-supervised learning, and reinforcement learning.
Today's most sophisticated AI marketing tools use elements from all four approaches but are primarily driven by unsupervised learning.
Today, AI marketing tools can be linked to a business' digital real estate (website, social media, review aggregates, etc.), then methodically document customer interactions and mine them for actionable data.
AI can also identify similarities between various audience members and split them into unique groups to facilitate targeting endeavors. Because of this, marketers can now discover who to target and how, reaching out to prospects with highly personalized ad content that is predicted to resonate.
It's important to understand that computers aren't necessarily taking our marketing jobs and they can certainly help us do them better.
According to the McKinsey Global Institute, machine learning is projected to generate between $1.4 and $2.6 trillion in value over the next three years by solving common marketing and sales problems.
Don't get stuck in the past. Put the power of problem-solving AI and machine learning to work for your company.