The end of 2024 is seeing a flurry of announcements and releases that will shape the way organisations use AI tools and tech in 2025. We will look ahead to what that might mean in practice in our final newsletter of the year, a couple of weeks from now.
But first, what do these new developments mean for those of us interested in the practical implementation of AI as part of enterprise transformation, and ultimately the idea of the programmable organisation?
The debate about whether LLMs alone can achieve sufficient progress towards “real” intelligence looks increasingly settled, and hopefully this will encourage smarter innovation than just brute force scaling of compute, where the winner is whoever can create the biggest GPU cluster. The current state of the art still uses LLMs, but it builds on their ‘stochastic parrot’ methods to add more context, reasoning and testing. This may also be an important step on the way towards constructing world models.
“The tech industry is evolving beyond a singular focus on the AI scaling laws or the Transformer. … With the reverse hockey stick of model scaling leveling off into more of an S curve, the best thing we can do is promote open source model technology to continue to accelerate AI research and advancement.”
Google’s rush into AI-enhanced search using LLMs produced patchy results and served as a good demonstration of the need for contextual understanding, rather than just textual pattern matching. The company clearly faces challenges from AI, but even before the rise of ChatGPT, Google’s economic model had significantly degraded the quality of its search results. Nonetheless, Alphabet CEO Sundar Pichai told the NYT Dealbook event to expect better results next year:
“I think you’ll be surprised even early in ’25 the kind of newer things search can do compared to where it is today”
“As AI assistants gain mainstream adoption, the industry has invested heavily in model capabilities, achieving rapid advances in reasoning and quality. Yet even the most sophisticated models are constrained by their isolation from data—trapped behind information silos and legacy systems. Every new data source requires its own custom implementation, making truly connected systems difficult to scale.”
The adoption of this open protocol could have a similar galvanising effect as SOA (service-oriented architecture) protocols had on enabling better, more fluid enterprise IT integration in the early part of this century.
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