Social Listening's Endgame: Navigating a Future Beyond Obsolescence
Dominique Lahaix
CEO | Social Data | Social Intelligence | NLP | Artificial Intelligence | LLM
Since eCairn's establishment in 2006, we have been at the forefront of the social listening industry, witnessing its transformation from the beginning of social networks to the current era of advanced analytical tools.
Facebook was born in 2004, Twitter in 2006. Linkedin at the time was primarily serving as a repository of professional profiles. Back in 2006, blogs were the primary platforms for online discourse.
We’ve seen the rise of Radian6 (created in 2006) and its acquisition by Salesforce and the success of a few others. Yet, the path for most has been full of challenges.
It was and still is clearly extremely difficult to create a sustainable business model in a field where the perceived value is limited to a select group of experts within organizations- specifically, the social media marketing specialists.
Traditional Social Listening: A Labor of Insights
Typically, social listening within corporations is done as follows:
When business is good, things are OK. When business is not as good it is the first organization that faces budget constraints.
The results is that nobody is satisfied
We (at eCairn) often joked that we have more clients than users, as our users introduces us to their new employers, each time they lost their job and moved to another company. A CEO of a company that pivoted from social media marketing to CRM told me a while back: “ social marketing and social selling is something that everyone says is a no brainer … but never implement”.
The Generative AI Revolution
I believe generative AI is making applications obsolete.
All applications.
This is even more relevant for applications whose core purpose is the make data actionable.
Why do you need an application when an intelligence agent (think of a young MBA assistant) can synthesize data for you and provide a recommendation?
After all, when using Google Maps, when you’re told to turn left at the curb … you turn left and don’t ask for reports and datapoints justifying that going right would be a bad decision.
Social listening is mainly reading and interpreting data and generating a description/ summary of this data to someone with a particular profile/need.
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This has profond consequences for every player down the chain
For users, the integration of generative AI makes social listening obsolete.
Imagine an enterprise equipped with a conversational agent capable of reading and analyzing social media data in real-time. This AI assistant could be accessible to all managers and employees, enabling them to query specific research questions and receive instant responses.
There are many benefits:
For the social marketing people.
Most of them will lose their jobs. Humans will still be required to align the system to the company’s objectives, fight hallucinations and improve the system overtime. Human will also have to ensure the quality/availability of the data sources and personalize the answers with prompt engineering.
However, this is a challenge for many people in the field as these activities require different skill sets compared to what social marketers have been trained on.
For vendors like eCairn
Most of the companies will die and close door. The only pivot that is available for them is to become a specialized engine generating genuine data i.e
Fortunately for eCairn, generative AI does not (yet?) understand the multi facet and nuance of influence and the subjective nature of tribes and communities.
So the next step for us is to carefully curate data, educate/train the generative AI to fill that gap and become the Influencer/Tribe- GPT.
Advisor (GenAI Startup Scalaix), Product Leader (eBay, LinkedIn) | Founder | Women in Product | AI Product School Instructor
8 个月Dominique I remember our discussions way back during the early days of eCairn … I agree with your perspective. Specially, difficulty in justifying the ROI of social listening and, “everyone thinks it is important but don’t implement”. As for what’s next, I believe, data was and will be the differentiator - while applications will benefit from the LLM / generative AI powered processing, the quality of custom data to create the insights will continue to remain important.