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Decoding Human-Assisted Advanced Analytics For Different Outcomes

In a thought-provoking article on the SILICON VILLAGE blog, Vipul Valamjee, Engineering Leader at Altimetrik, delves into the role of human intervention in the realm of advanced analytics powered by artificial intelligence (AI). Valamjee highlights that while AI systems have demonstrated their computational superiority, they have yet to eliminate the need for human input at critical junctures. These “critical points” in the development of AI systems are where human reasoning and business logic are indispensable. Valamjee emphasizes that AI models, no matter how advanced, are profoundly influenced by the quality of data they are trained on. Despite the remarkable advancements in AI-driven analytics, the article asserts that human collaboration will remain vital across industries, as AI’s inability to reason and apply logic underscores the enduring need for human intervention. Valamjee suggests that a harmonious partnership between AI and humans will lead to mutual success and growth in the evolving field of artificial intelligence.

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