machine learning

We have to agree with this press release below from ReportThinker. Each year it seems that different trends emerge as the big new thing for the year, even though they've been around for while. In 2015, it was blockchain technology that really took off, even though that has existed as the underlying technology behind bitcoin since it launched. In 2016, interestingly, it was Ethereum that emerged into the mainstream business lexicon and paved the way for the explosion of Initial Coin Offerings that we are seeing this year. In 2017, we agree that it is artificial intelligence and machine learning, and it's splashed all over the business news by the likes of Elon Musk and Mark Zuckerberg. It really begs the question as to what 2018 will bring us.

(Cindy Taylor/Publisher)

Realigning Customer Engagement with Predictive Analytics and Customization

Technology is disrupting the financial services industry. Also termed fintech, tech-enabled products and services in the industry are further enhanced by advanced technologies such as cloud, IoT, analytics, artificial intelligence (AI), and machine language (ML). This research service explores the impact of ML on the financial services industry.

Read the full report: http://www.reportlinker.com/p05057844/Disruption-in-Global-Financial-Services-Machine-Learning-is-Imperative.html

The objectives of the study are to understand the following:

• The evolution of the financial services industry

• ML and its impact on the financial services value chain

• The ML ecosystem and different stakeholders

• ML solutions and their implementation

• Providers and use cases of ML

Shared economy and connected devices have made Big Data ubiquitous, and analytics has improved the outcomes of data analysis. To ensure that all the available data is utilized to come up with insights, an increase in the adoption of ML is expected, which would several processes and increase the ease of data gathering and analysis. Companies are experimenting with and adopting new ML-enabled business models, solutions, and services, and entering new markets. Fraud prevention, robo-advisory services and credit scoring are some of the largest growth opportunities for the application of ML in financial services. As proofs of concept and use cases come to the fore, myriad applications of ML are expected to alter the financial services industry as it is known today.

Different stakeholders in the industry use diverse methods to implement it, including the following:

• Start-ups are introducing innovation into the system by offering financial services that are cost-effective, faster, automated, and take into account consumer behaviour.

• Large tech companies such as Amazon and Apple realize the potential and are already offering payment solutions to consumers.

• IT companies responsible for the vast IT systems in financial institutions are upgrading their offerings with innovative and advanced technologies.

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