Press release

Organizations Bullish on AI Adoption Despite Losing an Average of $406M Each Year Due to Underperforming AI Models

March 20, 2024
Press release

Organizations Bullish on AI Adoption Despite Losing an Average of $406M Each Year Due to Underperforming AI Models

March 20, 2024
Press release

Organizations Bullish on AI Adoption Despite Losing an Average of $406M Each Year Due to Underperforming AI Models

March 20, 2024
Press release

Organizations Bullish on AI Adoption Despite Losing an Average of $406M Each Year Due to Underperforming AI Models

March 20, 2024
Press release

Organizations Bullish on AI Adoption Despite Losing an Average of $406M Each Year Due to Underperforming AI Models

March 20, 2024
Press release

Organizations Bullish on AI Adoption Despite Losing an Average of $406M Each Year Due to Underperforming AI Models

March 20, 2024
Press release

Organizations Bullish on AI Adoption Despite Losing an Average of $406M Each Year Due to Underperforming AI Models

March 20, 2024
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Research by Fivetran and Vanson Bourne highlight the importance of data quality and addressing the AI skills gap

Oakland, Calif., March 20, 2024 – Fivetran, the global leader in data movement, today announced the results of a survey which shows 81% of organizations trust their AI/ML outputs despite admitting to fundamental data inefficiencies. Organizations lose on average 6% of their global annual revenues, or $406 million, based on respondents from organizations with an average global annual revenue of $5.6 billion (USD). This is due to underperforming AI models, which are built using inaccurate or low-quality data, resulting in misinformed business decisions. 

Conducted by independent market research specialist Vanson Bourne, the online survey polled 550 respondents across the U.S., U.K., Ireland, France and Germany from organizations with 500 or more employees. It found that nearly nine in ten organizations are using AI/ML methodologies to build models for autonomous decision-making, and 97% are investing in generative AI in the next 1-2 years. At the same time, organizations express challenges of data inaccuracies and hallucinations, and concerns around data governance and security. U.S. organizations leveraging large language models (LLMs) report data inaccuracies and hallucinations 50% of the time. 

“The rapid uptake of generative AI reflects widespread optimism and confidence within organizations, but under the surface, basic data issues are still prevalent, which are holding organizations back from realizing their full potential,” said Taylor Brown, co-founder and COO at Fivetran. “Organizations need to strengthen their data integration and governance foundations to create more reliable AI outputs and mitigate financial risk.”

Different “AI realities” exist across various job roles 

Approximately one in four (24%) organizations reported that they have reached an advanced stage of AI adoption, where they utilize AI to its full advantage with little to no human intervention. However, there are significant disagreements between respondents who work more closely with the data and those more removed from its technical detail. 

Technical executives – who build and operate AI models – are less convinced of their organizations’ AI maturity, with only 22% describing it as “advanced,” compared to 30% of non-technical workers. When it comes to generative AI, non-technical workers’ high level of confidence is coupled with more trust, too, with 63% fully trusting it, compared to 42% of technical executives.
There is a further dissonance between data experts at various levels of seniority within an organization. While those working in more junior positions see outdated IT infrastructures as the top barrier to building AI models (49%), their more senior colleagues say the problem is primarily employees with the right skills focusing on other projects (51%). It is true that data workers are forced to direct their resources towards manual data processes such as cleaning data and fixing broken data pipelines. In fact, organizations admit that their data scientists spend the majority (67%) of their time preparing data, rather than building AI models.

Bad data practices still prevalent

The root of the wasted data talent potential and underperforming AI programs are the same: inaccessible, unreliable and incorrect data. The magnitude of the issue is shown by the fact that most organizations struggle to access all the data needed to run AI programs (69%) and cleanse the data into a usable format (68%).

New generative AI use cases have introduced further complications, with 42% of respondents experiencing data hallucinations. These can lead to ill-informed decisions, reduce trust in LLMs or the willingness of staff to use the tool, and consume staff time in locating and correcting the data. With 60% of senior management using generative AI – and their responsibility to make strategic decisions – any issues with the quality and trustworthiness of data will be further amplified. 

Data governance a key focus area for AI use

Fears of generative AI use also remain, with “maintaining data governance” and “financial risk due to the sensitivity of data” tying for the top spot of concerns among organizations (37%). Solid data governance foundations will be particularly important for organizations that plan to either build their own generative AI models or use a combination of existing external and internally-developed models. However, as the majority (67%) of respondents plan to deploy new technology to strengthen basic data movement, governance and security functions, there is reason for optimism. 

To download the complete report, please visit Fivetran + Vanson Bourne report: AI in 2024.

To learn more about getting your proprietary data ready for generative AI, read our ebook.

For additional insights from the Fivetran AI survey, please visit the Fivetran blog.

About Fivetran

Fivetran, the global leader in data movement, helps customers use their data to power everything from AI applications and ML models, to predictive analytics and operational workloads. The Fivetran platform reliably and securely centralizes data from hundreds of SaaS applications and databases into any cloud destination — whether deployed on-premises, in the cloud or in a hybrid environment. Thousands of global brands, including Autodesk, Condé Nast, JetBlue and Morgan Stanley, trust Fivetran to move their most valuable data assets to fuel analytics, drive operational efficiencies and power innovation. For more info, visit fivetran.com.

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