Finastra Uses Machine Learning for Fat-Finger Detection

The new piece of technology aims to tackle issue of erroneous trades at the source.

Nadeem-Syed
Nadeem Syed, CEO, Finastra.

Named FusionCapital Detect, the algorithm uses machine learning to track clearly erroneous trades before they can go through the entire post-trade process—and halt them before they become a headache for treasury departments and possibly end the careers of clumsy traders.

Finastra, which was formed in mid-2017 through the merger of Misys and D+H, is preparing to sign its first deal for the product, which began through its Fusion Reactor innovation program, Nadeem Syed, the company’s chief

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A tech revolution in an old-school industry: FX

FX is in a state of transition, as asset managers and financial firms explore modernizing their operating processes. But manual processes persist. MillTechFX’s Eric Huttman makes the case for doubling down on new technology and embracing automation to increase operational efficiency in FX.

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