The core services for Cloud Pak for Data as a Service provide a range of tools for users with all levels of experience in preparing, analyzing, and modeling data, from beginner to expert. The right tool for you depends on the type of data you
have, the tasks you plan to do, and the amount of automation you want.
To see which tools you use in a project and which services those tools require, open the tools and services map.
To pick the right tool, consider these factors.
The type of data you have
Tabular data in delimited files or relational data in remote data sources
Image files
Textual (unstructured) data in documents
The type of tasks you need to do
Prepare data: cleanse, shape, visualize, organize, and validate data.
Analyze data: identify patterns and relationships in data, and display insights.
Build models: build, train, test, and deploy models to make predictions or optimize decisions.
How much automation you want
Code editor tools: Use to write code in Python or R, all also with Spark.
Graphical builder tools: Use menus and drag-and-drop functionality on a builder to visually program.
Automated builder tools: Use to configure automated tasks that require limited user input.
To use a tool, you must create an asset specific to that tool, or open an existing asset for that tool. To create an asset, click New asset or Import assets and then choose the asset type you want. This table
shows the asset type to choose for each tool.
This video provides a visual method to learn the concepts and tasks in this documentation.
Data Refinery
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Use Data Refinery to prepare and visualize tabular data with a graphical flow editor. You create and then run a Data Refinery flow as a set of ordered operations on data.
Required services
watsonx.ai Studio or IBM Knowledge Catalog
Data format
Tabular: Avro, CSV, JSON, Microsoft Excel (xls and xlsx formats. First sheet only, except for connections and connected data assets.), Parquet, SAS with the "sas7bdat" extension (read only), TSV (read only), or delimited text data
asset
Relational: Tables in relational data sources
Data size
Any
How you can prepare data
Cleanse, shape, organize data with over 60 operations.
Save refined data as a new data set or update the original data.
Profile data to validate it.
Use interactive templates to manipulate data with code operations, functions, and logical operators.
Schedule recurring operations on data.
How you can analyze data
Identify patterns, connections, and relationships within the data in multiple visualization charts.
Get started
To create a Data Refinery flow, click New asset > Prepare and visualize data.
This video provides a visual method to learn the concepts and tasks in this documentation.
Data Replication
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Use Data Replication to integrate and synchronize data. Data Replication provides near-real-time data delivery with low impact to sources.
Required service
Data Replication
Related service
IBM Knowledge Catalog
Data formats
Data Replication works with connections to and from select types of data sources and formats. For more information, see Supported Data Replication connections.
Credentials
Data Replication uses your IBM Cloud credentials to connect to the service.
Get started
To start data replication in a project, click New asset > Replicate data.
This video provides a visual method to learn the concepts and tasks in this documentation.
DataStage
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Use DataStage to prepare and visualize tabular data with a graphical flow editor. You create and then run a DataStage flow as a set of ordered operations on data.
Required service
DataStage
Data format
Tabular: Avro, CSV, JSON, Parquet, TSV (read only), or delimited text files
Relational: Tables in relational data sources
Data size
Any
How you can prepare data
Design a graphical data integration flow that generates Orchestrate code to run on the high performing, DataStage parallel engine.
Perform operations such as: Join, Funnel, Checksum, Merge, Modify, Remove Duplicates, and Sort.
Get started
To create a DataStage flow, click New asset > Transform and integrate data. The DataStage tile is in the Graphical builders section.
Watch a video to see how to build a model with SPSS Modeler
This video provides a visual method to learn the concepts and tasks in this documentation.
Decision Optimization model builder
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Use Decision Optimization to build and run optimization models in the Decision Optimization modeler or in a Jupyter notebook.
Required services
watsonx.ai Studio
Data formats
Tabular: CSV files
Data size
Any
How you can prepare data
Import relevant data into a scenario and edit it.
How you can build models
Build prescriptive decision optimization models.
Create, import and edit models in Python DOcplex, OPL or with natural language expressions.
Create, import and edit models in notebooks.
How you can solve models
Run and solve decision optimization models using CPLEX engines.
Investigate and compare solutions for multiple scenarios.
Create tables, charts and notes to visualize data and solutions for one or more scenarios.
Get started
To create a Decision Optimization model, click New asset > Solve optimization problems, or for notebooks click New asset > Work with data and models in Python or R notebooks.
Watch a video to see how to build an AutoAI experiment
This video provides a visual method to learn the concepts and tasks in this documentation.
Federated Learning
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Use the Federated Learning tool to train a common model using distributed data. The data is never combined or shared, preserving data integrity while providing all participating parties with a model based on the aggregated data.
Required services
watsonx.ai Studio
watsonx.ai Runtime
Data format
Any
Data size
Any size
How you can build models
Choose a training framework.
Configure the common model.
Configure a file for training the common model.
Have remote parties train their data.
Deploy the common model.
Get started
To create an experiment, click New asset > Train models on distributed data.
Use IBM Match 360 with Watson to create master data entities that represent digital twins of your customers. Model and map your data, then run the matching algorithm to create master data entities. Customize and tune your matching algorithm
to meet your organization's requirements.
Required services
IBM Match 360 with Watson IBM Knowledge Catalog
Data size
Up to 1,000,000 records (for the Beta Lite plan)
How you can prepare data
Model and map data from sources across your organization.
Run the customizable matching algorithm to create master data entities.
View and edit master data entities and their associated records.
Get started
To create an IBM Match 360 configuration asset, click New Asset > Consolidate data into 360-degree views.
Watch a video to see an overview of the RStudio IDE
This video provides a visual method to learn the concepts and tasks in this documentation.
Masking flows
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Use the Masking flow tool to prepare masked copies or masked subsets of data from the catalog. Data is de-identified using advanced masking options with data protection rules.
Required service
IBM Knowledge Catalog
Data format
Relational: Tables in relational data sources
Data size
Any size
How you can prepare data, analyze data, or build models
Import data assets from governed catalog to project.
Create masking flow job definitions to specify what data to mask with data protection rules.
Optionally subset data to reduce size of copied data.
Run masking flow jobs to load masked copies to target database connections.
This video provides a visual method to learn the concepts and tasks in this documentation.
Data visualizations
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Use data visualizations to discover insights from your data. By exploring data from different perspectives with visualizations, you can identify patterns, connections, and relationships within that data and quickly understand large amounts of
information.
Data format
Tabular: Avro, CSV, JSON, Parquet, TSV, SAV, Microsoft Excel .xls and .xlsx files, SAS, delimited text files, and connected data. For more information about supported data sources, see Connectors.
Data size
No limit
Get started
To create a visualization, click Data asset in the list of asset types in your project, and select a data asset. Click the Visualization tab, and choose a chart type.
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