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Gartner Survey Shows 27 Percent of Finance Departments Expect to Deploy Artificial Intelligence by 2020

Half of Respondents Also Expect to Deploy Predictive Analytics

A majority of finance departments expect to deploy one of several top emerging technologies by 2020, according to a worldwide survey of more than 400 organizations by Gartner, Inc.

“The results show that the number of conversations including this phrase has been growing rapidly, with a compound quarterly growth rate of 15.7 percent.”

“More than a quarter of organizations surveyed expect to deploy some form of artificial intelligence (AI) or machine learning in their finance department by 2020,” said Christopher Iervolino, senior director analyst at Gartner. “Moreover, half the respondents expect to deploy predictive analytics in the same period.”

The other technologies organizations expect to deploy in the same time frame are, in ranked order: mobile support for financial processes, robotic process automation (RPA), integration of external data, and AI or machine learning.

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Mr. Iervolino explained that CFOs and other finance leaders are looking for new ways to reduce costs, improve controls and uncover fresh insights that could drive competitive advantage. The survey showed the ranking of nine common emerging technologies used to pursue these aims (see Figure 1).

“Alongside this survey data, we’ve also conducted an extensive global analysis of social media conversations around the term ‘financial planning and analysis’ when discussed alongside AI, from 2016 through 2018,” said Mr. Iervolino. “The results show that the number of conversations including this phrase has been growing rapidly, with a compound quarterly growth rate of 15.7 percent.”

Despite rapidly growing interest in AI to improve financial planning and analysis (FP&A), only a few organizations are currently using it successfully, whereas the business case and best practices for other technologies such as predictive analytics and RPA are arguably better understood.

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“The lack of working AI deployments is no big surprise, because the technology is not yet built into most FP&A application suites,” said Mr. Iervolino. “There is tremendous potential for transformational improvement, but these capabilities are only just becoming mainstream so the deployment expectations we see in the survey may be unrealistic for many.”

Mr. Iervolino suggested that although most organizations will not be using AI meaningfully in the finance department by 2020, it’s still the right time to assess how the technology could improve FP&A in the future, and to start experimenting. Gartner suggests using the following steps to get started with AI in FP&A.

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Step 1: Examine Current FP&A Processes and Tools

Focus on existing shortcomings that could be improved with a more data-intensive approach, using more operational data and more direct participation from lines of business (LOBs). Then prototype proven vendor capabilities against these shortcomings.

Step 2: Expand Existing Financial Analytics Capabilities in FP&A Solutions

Look for underutilized capabilities the organization already has, such as data discovery, forecasting probability, correlation and exception detection functions. If needed, invest in analytics specialists or training to properly prototype these capabilities against known FP&A pain points.

Step 3: Pursue FP&A AI Opportunities

Once the finance organization has properly evaluated its existing tools, and built the expertise to use them, it will be in a strong position to build a business case to invest in an AI initiative, if the potential is identified. Moreover, it may demonstrate the need for the finance department’s involvement in existing AI initiatives.

“There is a tendency within finance organizations to approach FP&A improvements in a tactical way, characterized by a finance-siloed focus on areas such as workflow control, automating business calculations and consistency,” said Mr. Iervolino. “Leaders should consider that a strategic approach to FP&A will provide significantly more value by supporting key partnerships between finance and LOBs, by providing analytics and decision support, and through integrated financial planning and modeling.”

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