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How Artificial Intelligence Impacts Financial Services

Artificial Intelligence is using structured and unstructured data in financial services to improve the customer experience and engagement, to detect outliers and anomalies, to increase revenues, reduce costs, find predictability in patterns and increase forecasts reliability but it is not so in any other industry? We all know this story, right? So what is really peculiar about AI in financial services?

First of all, FS is an industry full of data. You might expect this data to be concentrated in big financial institutions’ hands, but most of them are actually public and thanks to the new EU payment directive (PSD2) larger datasets are available to smaller players as well. AI can then be easily developed and applied because the barriers to entry are lower with respect to other sectors.

Second, many of the underlying processes can be relatively easier to be automatized while many others can be improved by either brute force computation or speed. And historically is one of the sectors that needed this type of innovation the most, is incredibly competitive and is always looking for some new source of ROI. Bottom line: the marginal impact of AI is greater than in other sectors.

Third, the transfer of wealth across different generations makes the field really fertile for AI. AI needs (a lot of) innovative data and above all feedback to improve, and millennials are not only happy to use AI as well as providing feedback, but apparently even less concerned about privacy and giving away their data.

There are also, of course, a series of specific challenges for AI in financial sector that limit a smooth and rapid implementation: legacy systems that do not talk to each other; data silos; poor data quality control; lack of expertise; lack of management vision; lack of cultural mindset to adopt this technology.


So what is missing now is only having an overview of the AI fintech landscape. There are also plenty of maps and classification of AI fintech startups out there (probably the best ones are the one provided by CB Insights, in particular this and this), so I am not introducing anything new here but rather simply giving you my personal framework:

i) Trading (either algotrading or trading/exchange platforms). Examples include: Euclidean; Quantestein; Renaissance Technologies, Walnut Algorithms; EmmaAI; Aidyia; Binatix; Kimerick Technologies; Pit.ai; Sentient Technologies;Tickermachine; Walnut Algorithm; Clone Algo; Algoriz; Alpaca; Portfolio123; Sigopt;


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ii) Do-It-Yourself Funds (either crowdsource funds or home-trading). Examples include: Sentifi; Numerai; Quantopian; Quantiacs; QuantConnect;Inovance;

iii) Markets Intelligence (information extraction or insights generation). Examples include: Indico Data Solutions; Acuity Trading; Lucena Research; Dataminr; Alphasense; Kensho Technologies; Aylien; I Know First; Alpha Modus; ArtQuant;

iv) Alternative Data (most of the alternative data applications are in capital markets rather than broader financial sector so it makes sense to put it here). Examples include: Cape Analytics; Metabiota; Eagle Alpha;

v) Risk Management (this section is more a residual subcategory because most of the time startups in this group fall within other groups as well). Examples include: Ablemarkets; Financial Network Analysis.

If you want to read the entire article, please check that out on Cyber Tales

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