@vasuman: The issue with AI has not been the models for quite some time In this article I deconstruct the biggest bottleneck in A…
Summary
This article discusses that the main bottleneck in AI today is not the models themselves but the implementation across organizations, and it explains how to successfully implement AI in an enterprise.
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Cached at: 06/27/26, 10:00 PM
The issue with AI has not been the models for quite some time
In this article I deconstruct the biggest bottleneck in AI today and explain how to implement AI across an organization successfully
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@vasuman: https://x.com/vasuman/status/2070629226664153173
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