The AI Briefing is your 5-minute daily intelligence report on AI in the workplace. Designed for busy corporate leaders, we distill the latest news, emerging agentic tools, and strategic insights into a quick, actionable briefing. No fluff, no jargon overload—just the AI knowledge you need to lead confidently in an automated world.
Hello, Tom again, back for another AI briefing.
Today, I just wanted to talk briefly about
how the people feel like they're
going to get behind the curve. AI, everything.
In every organization, in every product, if
it doesn't have some element of AI in
it, then potentially you're missing out.
It's obviously the hype train that's just driving
all the things at the moment.
Now, of course, the knock -on impact of
that is everyone's freaking out about how to
leverage AI in the best possible manner.
Now,
I have worked across all sorts of different
industries in my career.
We've always dealt with data and underpinning every
bit of interesting AI is some interesting data.
An organization shouldn't lose sight of the fact
that this is critical to any type of
AI leverage you want to do, whether it's
just sticking a chatbot on top of it,
or just going back to more traditional machine
learning models that do a specific thing
in a more deterministic way than LLM.
When you're considering about how to
best leverage AI in the
environment you currently work in, also ask yourself the question,
is there anything that I can be doing
with the data that would make it more
efficient, more accurate, more reliable when being
used in an AI context?
Like I said, that's not just LLMs.
That's any type of automated data processing,
data insight, data analytics capture often overlooked.
The basics haven't changed.
I've been doing this job for the last 20 years.
Whilst the technologies have changed,
the way that you do data manipulation, data processing,
and data management as a whole, the concepts
have not changed.
Everyone still needs to put the effort in
to make sure the data is accurate, the
data is well structured, the data is consistent enough.
Even if the LLM comes to the right
conclusion, it's going to take a whole bunch
more tokens, cost, and ownership rights than you're
going to have to deal with if you
don't put that groundwork in in the first place.
Before you do anything, take a step back,
think about what data you have, what you
want to do with it, what the outcomes
and goals are, and how you're going to achieve it.
With that, you'll be in a much better place.
Thanks for watching.
I'll be back soon with another AI briefing.