IBM® Decision
Optimization gives you access to IBM's industry-leading solution
engines for mathematical programming and constraint programming. You can build Decision
Optimization models either with notebooks or
by using the powerful Decision
Optimizationexperiment UI (Beta version). Here you can import,
create, or edit models. To create or edit your models, you can use Python, OPL, or the natural
language expressions that are provided by the intelligent Modeling Assistant (Beta version). You can also deploy models with watsonx.ai Runtime.
To create a Decision
Optimizationexperiment, follow these steps.
Open your project or create an empty project.
Select the Assets
tab.
Select New asset > Solve optimization
problems in the Work with
models section.
If you haven't already associated a watsonx.ai Runtime
service instance with your project, click Add a Machine Learning service. Select a service and click
Associate.
Click New deployment space, enter a name and click
Create (or select an existing space).
Enter a Name for your Decision
Optimizationexperiment and click
Create.
The Decision
Optimizationexperiment UI (Beta version) opens where you can create
and edit models that are formulated with the Modeling Assistant, or in
Python DOcplex, or in OPL.
Alternatively, to open and run Decision
Optimizationnotebooks (without the Decision
Optimizationexperiment UI), follow these steps.
Select the Assets tab.
Select New asset > Work with data and
models in Python or R notebooks in the Work with
models section.
For a step-by-step guide to build, solve and deploy a Decision
Optimization model, by
using the user interface, see the Quick start tutorial with video.
What is Decision
Optimization?
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People frequently use the term optimization to mean making something better.
Although optimization often makes things better, it means a lot more: optimization means finding
the most appropriate solution to a precisely defined situation. It is a sophisticated analytics
technology, also called Prescriptive Analytics, which can explore a huge range of possible
scenarios and suggest the best way to respond to a present or future situation.
The situation is generally a business problem, such as planning, scheduling, pricing,
inventory, or resource management.
Whatever the problem is, resolving it starts with the optimization model, which is the
mathematical formulation of the problem that can be interpreted and solved by an optimization
engine. The optimization model specifies the relationships among the objectives, constraints,
limitations, and choices that are involved in the decisions. But it is the input data that makes
these relationships concrete. An optimization model for production planning, for example, can have
the same form whether you are producing three products or a thousand. The optimization model plus
the input data creates an instance of an optimization problem.
Optimization engines (or solvers) apply mathematical algorithms to find a solution, a set
of decisions that achieves the best values for the objectives and respects the constraints and
limitations imposed. The optimization engine implements specialized algorithms that are developed
and tuned to efficiently solve a large variety of different problems. Decision Optimization uses the
IBM CPLEX® and CP Optimizer engines that have proved powerful
in solving real-world applications.
The solution that emerges from the solver details the recommended values for all
decisions that are represented in the model. Equally important are the metric values that represent
the targets. These values measure the quality of the solution in terms of the business goals.
All of this can be made available to business users with a complementary business application.
Usually, the objective and solution values are summarized in tabular or graphical views that provide
understanding and insight.
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