What are some examples of business value creation through AI/Machine Learning?
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how it can intergrate with other tools
I agree with you Anil. It is amazing how this technology can be applied to every aspect of the value chain in your industry. From investment solutions, trade, risk management solutions and most of the transactional payments cycle. How do you see the predictive elements of signalling alerts through data matching analytics and surveillance capabilities in monitoring aberrant behaviour changing workflows in the future? Primarily with chargebacks while trading online?
Excellent insights and perspective, Anil.
It's applying the same thinking as you noted Anil within financial services fraud of finding irregularities in the data, but just applied in the context of ad spending.
I'm certainly not a naysayer but the inconvenient truth is ML/AI are still nascent and emerging technologies with an Achilles heel, the inherent biases in data used to build their models.
Also near equivalent alternatives based on search requests can occasionally provide good alternatives