
AI replacing data scientists?
With AutoML and no-code tools rising, are data scientists becoming obsolete? Is 2025 the beginning of the end for DS? What skills to focus on to stay relevant?
Marc Andreessen famously declared, "Software is eating the World," and the truth in that statement has only grown with time. But here's the kicker: software itself is now under threat, because "Data is eating Software." The evolution of technology has reached a fascinating moment.
Back in the day, individuals and organizations ran their own servers. Essentially, it was highly centralized and resource-intensive. Then came the era of Cloud Computing, which transformed computing into a utility, much like electricity. Cloud computing became widely accessible through AWS, Azure, and GCP and quickly commoditized server infrastructure.
This shift enabled unparalleled scalability and flexibility, essentially democratizing access to computing power.
Now, a similar transformation is underway in AI, particularly with the foundational models developed by tech companies like Meta, OpenAI, Google, and others.
Here's where the ambitious vision for the future unfolds. Just as Cloud Computing commoditized servers, data is poised to commoditize foundational AI models. These models are remarkably powerful, but they will too hit an upper limit on how great they can be.
As Data accumulates at an exponential rate, it's becoming clear that Data, not these foundational models, will be the only sustainable moat in any AI application.
The true moat isn't the model itself; it's the data that refines and trains the model. Data will be the key to unlocking the full potential of AI, enabling personalized experiences, hyper-accurate predictions, and previously unimaginable insights.
So, while Marc Andreessen's proclamation about software remains timeless, the torch is passing to "Data is eating Software."
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With AutoML and no-code tools rising, are data scientists becoming obsolete? Is 2025 the beginning of the end for DS? What skills to focus on to stay relevant?
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