ModelOps Can Build AI and ML With Business Results

Share post:

A recent report by MIT Sloan Management Review and SAS called for a relatively new method called “ModelOps,” which is seen as critical to the successful delivery of artificial intelligence (AI) and machine language (ML) to businesses.

ModelOps, which stands for Model Operationalization, is a way to help IT executives bridge the gap between analysis and production teams, making the lifecycle of AI and ML “repeatable and sustainable.”

To get ModelOps to manage AI and ML, IT leaders and professionals must bring together four key elements of the business value equations, including ecosystems, data, platforms, and people.

For more information, read the original story in ZDNet.

SUBSCRIBE NOW

Related articles

Tests unable to distinguish AI from human reviews

AI-generated restaurant reviews can now pass the Turing test, successfully fooling both human readers and automated detectors, according...

Zuckerberg shares his vision with investors and Meta stock tanks

In an era where instant gratification is often the norm, Meta CEO Mark Zuckerberg’s strategic pivot towards long-term,...

AI surpasses human benchmarks in most areas: Stanford report

Stanford University’s Institute for Human-Centered Artificial Intelligence (HAI) has published the seventh annual issue of its AI Index...

Microsoft and OpenAI partner to build a $100 Billion AI supercomputer “Stargate”

In a bold stride towards computational supremacy, Microsoft, in partnership with OpenAI, is reported to be laying the...

Become a member

New, Relevant Tech Stories. Our article selection is done by industry professionals. Our writers summarize them to give you the key takeaways