Newsroom

4 Essentials for AI Success

Written by Dave Curtis | 13/11/2024 7:24:42 AM

Dave Curtis, CTO with global fintech RobobAI, shares key elements to look for in AI vendors

Two new reports highlight the need for consistent, high-quality data to build reliable AI systems.

Dave Curtis, Chief Technology Officer at global fintech RobobAI, explains key elements for AI success.

RobobAI is a trailblazer utilizing AI to help businesses manage spend visibility, optimize B2B payments, and reduce supplier risks. Organizations with high volumes of data can realize the greatest benefits from adopting AI; however, the quality of data is critical.

"AI can deliver tremendous benefits but requires a solid data foundation to do so," Curtis says. "Multiple, siloed, legacy systems bursting with disparate, duplicate, and incomplete data make this a challenge. Establishing an appropriate AI foundation is critical for long-term success."

 

According to Curtis, there are four key elements to look for when assessing AI vendors:


    1. The size of the AI engine:  The volume of data that it holds determines the number of possible permutations, or relationships between data points, which impacts the number and quality of insights that can be generated.

    2. The type of data:  Is the AI engine built on the type of data (such as images, web references, or financial data) that can benefit your company?

   3. The maturity of the AI engine:  How long has the model been training and testing? Over time AI improves data accuracy and increases the volume and quality of the relationships built between data points.

   4. The AI team:  Over 80% of companies that embark on AI hit barriers relating to data. Look for a team with experience in data, AI, and your specific industry.

Large organizations that leverage AI to classify spend data gain the ability to manage supplier costs and risks and optimize more valuable suppliers helping ensure their long-term resilience, Curtis says.

"We've been rigorously building and testing our AI models for over seven years," Curtis says. "We have mature AI models and we're offering direct access to these models to give proactive organizations a head starts in surfacing opportunities from their own finance and procurement data quickly."

 

This article originally appeared in NewsRamp. Read the source article here.