Another thing we dabbled with. We had lots and lots of ads in archives. How do you use and reuse them efficiently
How the digital ad industry can guide the ways AI transforms businesses. in Venturebeat.
When Microsoft-funded lab OpenAI launched ChatGPT in February, millions of people realized almost overnight what tech professionals have understood for a long time: Today’s AI tools are advanced enough to transform daily life as well as an incredibly broad range of industries. Microsoft’s Bing leaped from a distant second place in search to a much higher-profile level. Concepts like large language models (LLMs) and natural language processing are now part of mainstream discussion.
However, with the spotlight also comes scrutiny. Regulators around the world are taking note of AI’s risks to user privacy. The Elon Musk-backed Future of Life Institute amassed 1,000 signatures from tech leaders asking for a six-month pause on training AI tools that are more advanced than GPT-4, which powers ChatGPT.
As heady as legal and engineering matters may be, the basic ethical questions are easily digestible. If developers need to take a summer vacation from working on AI advancements, will they shift focus to making sure AI upholds ethical guidelines and user privacy? And at the same time, can we control the potentially disruptive effects AI may have on where ad dollars are spent and how media is monetized?
Google, IBM, Amazon, Baidu, Tencent, and an array of smaller players are working on — or already launching, in Google’s case — similar AI tools. In an emerging market, it’s impossible to predict which products will come to dominate and what the outcomes will look like. This underscores the importance of protecting privacy in AI tools right now — planning for the unknown before it happens.
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As the digital advertising industry eagerly looks to AI applications for targeting, measurement, creative personalization and optimization and more, industry leaders will need to look closely at how the tech is implemented. Specifically, we’ll need to look at the use of personally identifiable information (PII), the potential for accidental or intentional bias or discrimination against underrepresented groups, how data is shared through third-party integrations and worldwide regulatory compliance.
Search vs. AI: The great spend re-allocation?
As far as ad budgets are concerned, it’s easy to imagine how a “search vs. AI” face-off might look. It’s very convenient to have all of the information you’re seeking collected in one place via AI rather than rephrasing search queries and clicking through links to zero in on what you’re really looking for. If we see a generational shift in how users discover information, that is, if young people accept AI as a central part of the digital experience going forward, non-AI search engines are threatened with vanishing relevance. This could have a great impact on the value of search inventory and the ability of publishers to monetize traffic from search.
Search remains the driver of a significant share of traffic to publisher sites, even with the ongoing movement of publishers to foster audience loyalty through subscriptions. And now that advertising is making its way into AI chat — Microsoft, for example, has been testing the placement of ads in Bing chat — publishers are questioning how AI providers may share revenue with the sites from which their tools source information. It’s safe to say publishers will be looking at another set of data black boxes from walled gardens on which they rely for revenue. In order to thrive in this uncertain future, publishers need to lead conversations to make sure stakeholders across the industry understand what we’re rushing into .... '
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