Who’s Accountable for AI and its Risks? Why Enterprise CEOs Need to Assign AI Ownership Now
Webinar | Tuesday, April 30th | 1pm ET
Search
Close this search box.

Byline: Monetizing Your Models with Machine Learning Solutions

 

Article: Monetizing your models with machine learning solutions, by Stu Bailey, Contributor, InfoWorld

Over the last year more and more companies have begun to understand the capabilities of artificial intelligence and machine learning and how they impact their ability to run models faster and efficiently to meet market demands.

While integrating machine learning and artificial intelligence products and services in to the overall business process, it is important to give business users the ability to access and run machine learning models on their data anytime.

In this article, we’ll focus on bringing an incremental, agnostic, production-first approach to the design and build of machine learning and AI techniques. These best practices aim to combine open source and commercial tools with existing systems in the enterprise, enabling some core benefits, such as;

  • Building an MLaaS tool that quants, analysts and data scientists want to use with minimal overhead.
  • Creating a sustainable process for maintaining and expanding the machine learning footprint in the enterprise (e.g., onboarding data, new tools, and lab-to-factory process).
  • Generating value from machine learning in a variety of business lines

Implementing machine learning as a service solves a huge problem for companies now.  At the end of the day, it is all about the need to quickly create an analytic product that a business can monetize.

Looking for solutions, such as an MLaaS approach, is a step in the right direction to not only build an efficient model, but also create a successful approach to drive return on the data science investment.

 

You might also enjoy

AI Regulations: What to Know & What to Do Now

Global, federal, and state-level governments are moving quickly to implement AI regulations. While reading this, you may be asking, “If I want to use AI, what do I need to do now to prepare my organization now?”

Get the Latest News in Your Inbox

Further Reading