This data was originally featured in the 1/24/2024 newsletter found here: INBOX INSIGHTS: MAKE GOOGLE ANALYTICS 4 WORK FOR YOU, RED TEAMING CUSTOM GPTS, PART 3 RED TEAMING CUSTOM GPTS, PART 3 OF 3 Continuing from last week’s newsletter in which we discussed the people, process, and platforms of red-teaming LLMs, let’s continue this week […]
Category: natural language processing
In-Ear Insights: What is Generative AI?
In this week’s In-Ear Insights, Katie and Chris discuss generative AI, one of the three major branches of artificial intelligence. This includes tools like ChatGPT, Google Bard, and Microsoft Copilot. They start by defining artificial intelligence and the three big categories within it: regression, classification, and generation. Generative AI makes things and allows people to […]
{PODCAST} In-Ear Insights: Advances in AI Natural Language Generation and Marketing Implications
In this week’s In-Ear Insights, Katie and Chris talk about the newest advances in natural language generation and walk through an example of what’s available now for creating content with the assistance of AI. Watch the demonstration, listen to the implications for marketers, and start formulating your AI-based content marketing strategy. Tune in to find […]
Natural Language Processing and Content Marketing: An AMA with Trust Insights and MarketMuse
On June 18, 2020, I sat down with Jeff Coyle and the MarketMuse community to answer questions after our webinar together on Natural Language Processing and its application to content marketing. Let’s see what’s on the minds of the content marketing community. Tatiana asks, “I’ll kick things off with my question – do you have […]
Understanding Employee Sentiment at Scale With Machine Learning
Are you drowning in reviews? If you’re a business that has reviews on sites like TripAdvisor, Yelp, Glassdoor, the answer is yes. You’ve got reviews and people are leaving their opinions – very, very blunt, honest feedback about your business. The bigger your brand is, the more of these you have. Listening to customers and […]
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