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 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?
Copy link to section
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.
Use this interactive map to learn about the relationships between your tasks, the tools you need, the services that provide the tools, and where you use the tools.
Select any task, tool, service, or workspace
You'll learn what you need, how to get it, and where to use it.
Some tools perform the same tasks but have different features and levels of automation.
Jupyter notebook editor
Prepare data
Visualize data
Build models
Deploy assets
Create a notebook in which you run Python, R, or Scala code to prepare, visualize, and analyze data, or build a model.
AutoAI
Build models
Automatically analyze your tabular data and generate candidate model pipelines customized for your predictive modeling problem.
SPSS Modeler
Prepare data
Visualize data
Build models
Create a visual flow that uses modeling algorithms to prepare data and build and train a model, using a guided approach to machine learning that doesn’t require coding.
Decision Optimization
Build models
Visualize data
Deploy assets
Create and manage scenarios to find the best solution to your optimization problem by comparing different combinations of your model, data, and solutions.
Data Refinery
Prepare data
Visualize data
Create a flow of ordered operations to cleanse and shape data. Visualize data to identify problems and discover insights.
Orchestration Pipelines
Prepare data
Build models
Deploy assets
Automate the model lifecycle, including preparing data, training models, and creating deployments.
RStudio
Prepare data
Build models
Deploy assets
Work with R notebooks and scripts in an integrated development environment.
Federated learning
Build models
Create a federated learning experiment to train a common model on a set of remote data sources. Share training results without sharing data.
Deployments
Deploy assets
Monitor models
Deploy and run your data science and AI solutions in a test or production environment.
Catalogs
Catalog data
Governance
Find and share your data and other assets.
Metadata import
Prepare data
Catalog data
Governance
Import asset metadata from a connection into a project or a catalog.
Metadata enrichment
Prepare data
Catalog data
Governance
Enrich imported asset metadata with business context, data profiling, and quality assessment.
Data quality rules
Prepare data
Governance
Measure and monitor the quality of your data.
Masking flow
Prepare data
Create and run masking flows to prepare copies of data assets that are masked by advanced data protection rules.
Governance
Governance
Create your business vocabulary to enrich assets and rules to protect data.
Data lineage
Governance
Track data movement and usage for transparency and determining data accuracy.
AI factsheet
Governance
Monitor models
Track AI models from request to production.
DataStage flow
Prepare data
Create a flow with a set of connectors and stages to transform and integrate data. Provide enriched and tailored information for your enterprise.
Data virtualization
Prepare data
Create a virtual table to segment or combine data from one or more tables.
OpenScale
Monitor models
Measure outcomes from your AI models and help ensure the fairness, explainability, and compliance of all your models.
Data replication
Prepare data
Replicate data to target systems with low latency, transactional integrity and optimized data capture.
Master data
Prepare data
Consolidate data from the disparate sources that fuel your business and establish a single, trusted, 360-degree view of your customers.
Services you can use
Services add features and tools to the platform.
watsonx.ai Studio
Develop powerful AI solutions with an integrated collaborative studio and industry-standard APIs and SDKs. Formerly known as Watson Studio.
watsonx.ai Runtime
Quickly build, run and manage generative AI and machine learning applications with built-in performance and scalability. Formerly known as Watson Machine Learning.
IBM Knowledge Catalog
Discover, profile, catalog, and share trusted data in your organization.
DataStage
Create ETL and data pipeline services for real-time, micro-batch, and batch data orchestration.
Data Virtualization
View, access, manipulate, and analyze your data without moving it.
Watson OpenScale
Monitor your AI models for bias, fairness, and trust with added transparency on how your AI models make decisions.
Data Replication
Provide efficient change data capture and near real-time data delivery with transactional integrity.
Match360 with Watson
Improve trust in AI pipelines by identifying duplicate records and providing reliable data about your customers, suppliers, or partners.
Manta Data Lineage
Increase data pipeline transparency so you can determine data accuracy throughout your models and systems.
Where you'll work
Collaborative workspaces contain tools for specific tasks.
Project
Where you work with data.
> Projects > View all projects
Catalog
Where you find and share assets.
> Catalogs > View all catalogs
Space
Where you deploy and run assets that are ready for testing or production.
> Deployments
Categories
Where you manage governance artifacts.
> Governance > Categories
Data virtualization
Where you virtualize data.
> Data > Data virtualization
Master data
Where you consolidate data into a 360 degree view.