Delivering fast and reliable machine learning business solutions
JERSEY CITY, N.J., Feb. 9, 2021 /CNW/ -- ElectrifAi, one of the world's leading companies in practical artificial intelligence (AI) and pre-built machine learning models, today announced it has a new and improved spend analytics and procurement tool called SpendAi.
What makes SpendAi different from other products on the market? SpendAi combines the power of machine learning models to construct a solid foundation of a high-quality comprehensive data set and a highly configurable user experience. ElectrifAi puts its industry leading data cleansing and structuring expertise to practical use in this solution. Our scientists and engineers have applied their unique skill sets to produce the most highly automated and effective data transformation architecture in the market. This bedrock of data then enables a uniquely configurable experience to the end user. The industry has been lacking a flexible tool such as SpendAi. Every company has a different way of looking at procurement and categorizing their vendors and spend. SpendAi is the only tool on the market that gives companies the ability to change the vendor and spend classification on their own.
Why is machine learning important? How does machine learning change spend analytics? ElectrifAi's machine learning drastically reduces unclassified and misclassified spend, giving procurement professionals a much clearer picture of their vendor leverage and dependencies. It also provides far greater insight to maverick and off-contract spend, optimization of discount opportunities along with other features. In short, users have much more visibility into their risks and opportunities. AI is then used to find and prioritize those risks and opportunities. As a result, teams spend less time searching and more time acting on insights. This turns procurement into a strategic business partner for the business.
SpendAi enables companies to look deeply into their data and generates insights that procurement professionals can use right away. Making structural changes on their own is also very simple with this tool and they don't have to pay a professional or wait overnight for results. This again gives people a way to look at procurement strategically, not just reactively or pulled together haphazardly.
Companies can now quickly analyze all their data—including direct and indirect spend materials and services—across every system they use to get insights into how they can reduce costs and improve their cash position, all in one convenient location. The flexibility of SpendAi is very user friendly and enables users to make quick and comprehensive decisions.
Insights provided by the machine learning capabilities of SpendAi allow companies to spot unexpected or disadvantageous spend patterns that warrant further attention. SpendAi gives them a prioritized list of things to look at and consider as either risk or savings opportunities or something that looks amiss.
About ElectrifAi
ElectrifAi is a global leader in business-ready machine-learning models. ElectrifAi's mission is to help organizations change the way they work through machine learning: driving cost reduction as well as profit and performance improvement. Founded in 2004, ElectrifAi boasts seasoned industry leadership, a global team of domain experts, and a proven record of transforming structured and unstructured data at scale. A large library of AI-based products reaches across business functions, data systems, and teams to drive superior results in record time. ElectrifAi has approximately 200 data scientists, software engineers and employees with a proven record of dealing with over 2,000 customer implementations, mostly for Fortune 500 companies. At the heart of ElectrifAi's mission is a commitment to making AI and machine learning more understandable, practical and profitable for businesses and industries across the globe. ElectrifAi is headquartered in Jersey City, with offices located in Shanghai and New Delhi.
SOURCE ElectrifAi
Mark Veverka, [email protected]
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