A search engine should have both high precision and high recall. When you search for a product on an online store, you should expect the top five or 10 results to match what you’re looking for. Read on for the basics of search relevance.
In this article, we take a closer look at how a shortage of AI training data can affect tech innovation.
Your search engine is often the first interaction a user has with your company. There are many factors that go into making that search engine find and rank results from thousands or even millions of pages in a matter of seconds. Discover ten must-know search engine terms and components.
Natural language processing (NLP) is the term used to describe a machine’s ability to interpret and respond to language data. Learn why it is a key AI concept.
There are subtle differences between AI and its related fields: machine learning and deep learning. Let’s take a closer look at these terms.
Discover the difference between CNN and RNN and how they are used in computer vision and natural language processing.
It’s only logical to ask how much training data you need, but it can be a complicated question to answer. Let’s take a look at why.
Sentiment analysis involves classifying the subjective, contextual information within text data. Read our beginner’s guide to learn more.
Take an in-depth look at one particular use case of natural language processing that is founnd in many people’s daily lives: voice assistants.
Looking for an introduction to audio classification? In this article we discuss different types of audio classification and their use in machine learning projects.
Financial services firms are increasingly implementing AI to improve their CX. Learn how they’re using the technology to tackle the latest industry challenges.
Are you getting lots of site visitors, but not a lot of sales? Search relevance and improving the strength of your search engine may be the answer.
Get curated content delivered right to your inbox. No more searching. No more scrolling.