September 18, 2019 By Virginie Grandhaye < 1 min read

An exciting announcement about new Decision Optimization options.

In June, we announced the availability of the Decision Optimization capability in the Watson Machine Learning service.

However, it’s possible that some of you don’t have an enterprise use of CPLEX engines yet, and you want to pay as you go.

We’re excited to announce that starting September 18, 2019, Decision Optimization will also be available in the Standard plan of Watson Machine Learning, giving you pay-as-you-go options.

See below for the details of the Standard Plan description:

The service will be updated in all available regions.

Learn more

For more information, visit the IBM Watson Machine Learning catalog page.

See the documentation for examples on how to integrate Decision Optimization in your applications.

More from Artificial intelligence

AI that’s ready for business starts with data that’s ready for AI

6 min read - By 2026, over 80% of enterprises will deploy AI APIs or generative AI applications. AI models and the data on which they're trained and fine-tuned can elevate applications from generic to impactful, offering tangible value to customers and businesses. For example, the Master’s generative AI-driven golf fan experience uses real-time and historical data to provide insights and commentary for over 20,000 video clips. The quality and quantity of data can make or break AI success, and organizations that effectively harness…

Applying generative AI to revolutionize telco network operations 

5 min read - Generative AI is shaping the future of telecommunications network operations. The potential applications for enhancing network operations include predicting the values of key performance indicators (KPIs), forecasting traffic congestion, enabling the move to prescriptive analytics, providing design advisory services and acting as network operations center (NOC) assistants.   In addition to these capabilities, generative AI can revolutionize drive tests, optimize network resource allocation, automate fault detection, optimize truck rolls and enhance customer experience through personalized services. Operators and suppliers are…

Re-evaluating data management in the generative AI age

4 min read - Generative AI has altered the tech industry by introducing new data risks, such as sensitive data leakage through large language models (LLMs), and driving an increase in requirements from regulatory bodies and governments. To navigate this environment successfully, it is important for organizations to look at the core principles of data management. And ensure that they are using a sound approach to augment large language models with enterprise/non-public data. A good place to start is refreshing the way organizations govern…

IBM Newsletters

Get our newsletters and topic updates that deliver the latest thought leadership and insights on emerging trends.
Subscribe now More newsletters