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HOW DO BRANDS USE AI IN CONTENT CREATION: GOOD, GREAT, UGLY
The second-most common use of AI is writing content for marketing material, right after idea inspiration. 28% of marketers who are using AI, leverage the tool to write materials such as blog posts and emails.
But as a marketer, you need answers to more crucial questions – what ROI does AI bring when used to create blog posts? Can the entire process be automated by AI? Considering the risks associated with using AI for content creation, what pitfalls should one avoid?
The good news is that you don’t need to make your own mistakes while answering these questions, thereby (hopefully) preventing a loss of money or reputation.
We analyzed three case studies on how brands use AI in marketing.
Here are our key takeaways:
Read the case studies for a deeper dive into our findings.
Case Study 1: The Great
The problem
When a US-based mattress brand, Tomorrow Sleep, started creating online content, they realized that long-standing players in the market had already established a strong foothold in organic results. While traditional measurement tools for tracking keywords and ranking were useful, they weren’t enough to drive meaningful and drastic impact.
The approach
Tomorrow Sleep’s marketing agency first identified primary topics and analyzed them with MarketMuse, an AI-powered content strategy platform. AI found related topics to consider and how frequently experts mentioned them when writing on these subjects. The marketing team then drilled down into the top 20 search results for those primary topics, to visualize the gaps and opportunities for content creation. The heatmap displays the topic distribution (how frequently mentioned) across each piece of content.
This strategy provided insights critical to creating new, in-depth content on existing optics that could help establish Tomorrow Sleep as an expert. Tomorrow Sleep also used its AI tool to see where competitors ranked for each topic. This allowed them to identify gaps and opportunities in their content plan.
The result
The learning
Machines (AI) can give you a great starting point to develop a superior content strategy, by processing large volumes of SEO data and identifying opportunities for content creation. In some instances, it can help you weed out mediocrity and poor performers. And while it can provide a game plan, you still require creativity and originality to stand out in the market.
Case Study 2: The Good
The problem
TV 2 Fyn, one of Denmark's regional television stations, wanted to explore if their writers could save time by asking AI to read their articles and create catchy headlines.
The approach
For three weeks the marketing team continuously carried out A/B tests on their website with headlines generated by ChatGPT and humans. They fed ChatGPT both full articles and summaries of articles. If the first suggestions by AI didn't work for the team, they continuously engaged with the chatbot and asked for refinement.
For example, specifying that a certain person or a certain word from the article should be included in the headline. They found that AI was generally responsive to the suggestions, but in some cases, it ran into a wall and stopped developing further on the headlines. In those cases, the human team refined the headline before A/B testing. A total of 46 A/B tests were made during the test period.
The result
The learning
Using ChatGPT can make A/B testing easier. Although ChatGPT's bid on headlines varies greatly, it gives the advantage of a sparring partner with a short response time. Instead of having to spend 15-20 minutes developing ideas with colleagues, you can easily get suggestions based on the content of the article.
However, you cannot count on the AI to deliver perfect headlines every time, so you still need to keep a critical eye on AI suggestions. For the best quality work, provide the AI with as much information on the consumer’s needs and wants. Refine and edit the AI suggestions further based on your unique understanding of the customer.
Case Study 3: The Ugly
The problem
The Editor of CNET, an American media website, said they used AI-generated content as an “experiment” to assist reporters in their work.
The approach
It was a simple method that they tried. CNET used AI to generate entire stories, with reportedly little to no human editorial intervention.
The result
The learning
AI platforms generally source data from existing content on the internet. So, it tends to be less effective in categories with a unique product/service or a need for originality. This showcases the need for human intervention to help stay competitive.
AI can be a great sounding board and an opportunity to overcome writer’s block, but it’s not the end solution.
This article was first published here.
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