How to Use Parameters in Workflows in Oracle AI Data Platform
Oracle AI Data Platform workflows can use job-level and task-level parameters to control execution, pass values between notebooks, and build reusable data pipelines. See how parameterized tasks support ingestion checks, conditional analysis, and runtime validation in Oracle AI Data Platform at the resources linked below. This tutorial shows how Oracle AI Data Platform uses parameters in notebooks and workflows to create reusable, dynamic data pipelines. It begins with job-level parameters that define catalog, schema, and table names at runtime, then shows how notebooks can retrieve those values, apply defaults when values are missing, and build fully qualified object names without hardcoding. The walkthrough then demonstrates task-level parameters for sharing ingestion status, row counts, and target table details between workflow steps so downstream tasks can respond to earlier results. It also covers data generation, write operations, ingestion validation, and conditional if-else logic that controls whether analysis runs after loading. The workflow review highlights how task results, parameter values, and data previews appear in the graph tab, while the Master Catalog confirms the created objects. By combining parameterized notebooks with workflow control, Oracle AI Data Platform supports flexible automation for analytics and data engineering teams. 00:00 Introduction to Parameters in Workflows 00:37 Job-Level Parameters 01:05 Task-Level Parameters 01:25 Generate and Validate Data 01:54 Reuse Parameters Across Tasks 02:20 Configure Workflow Logic 03:18 Run and Review the Workflow Find training paths for Oracle Analytics and AI from beginner to advanced and expert: https://social.ora.cl/6007B8XvIB Explore self-paced short courses in the Oracle Analytics and AI Learning Hub: https://social.ora.cl/6006B8XvLr See how parameters are used in jobs and tasks: https://social.ora.cl/6003B8Xv03 Learn how to set up a robust and scalable data foundation using Oracle AI Data Platform Workbench in our self-paced Analytics and AI Learning Hub course: https://social.ora.cl/6007B8Xv0f Like what you learned about Oracle AI Data Platform? Subscribe now https://social.ora.cl/60025k87j Join us at Oracle AI World: https://social.ora.cl/60035eVvJ Contact AIDP sales: https://social.ora.cl/6003FLUMT Learn more about Oracle AIDP: https://social.ora.cl/60047h76Q Join the Oracle AIDP Community: https://social.ora.cl/60087h7Bj Follow us here: LinkedIn: https://social.ora.cl/60035eXuF X: https://social.ora.cl/6008abVgG Instagram: https://social.ora.cl/60095eXDN Facebook: https://social.ora.cl/60065enQp

How to Automate Workflows in Oracle AI Data Platform Workbench

Lead the Change: Innovate with AI Built Into Your Database. Everywhere.

How to Set Up Workspaces, Clusters, and Notebooks in Oracle AI Data Platform

Advancing Enterprise Search with Oracle AI Vector Search

100 Percent Live Demo of Oracle AI Database 26ai: Zero Slides, Pure Innovation

How to Use Aliases in Oracle Analytics Cloud

What Is Oracle AI Data Platform?

Fusion Agentic Applications Redefine Enterprise Work

Oracle AI Agent Studio for Fusion Cloud Applications: Demo

How to Train a Machine Learning Model Using Data Flows in Oracle Analytics Cloud

How to Configure IAM and RBAC in Oracle AI Data Platform

Monitor Procurement Spend in Oracle Fusion SCM Analytics

Batch Process Manufacturing Workspace Agentic App in Oracle SCM: Demo

Build AI Agents with Oracle AI Data Platform: Demo

Oracle AI Database 26ai: AI Made Simple for Enterprise

Analyze Order Fulfillment in Oracle Fusion SCM Analytics

Understand Workforce Trends in Oracle Fusion HCM Analytics

Manage Employee Performance Evaluation in Oracle Fusion HCM Analytics

How to Use AI Assistant in Oracle Analytics Mobile App for iOS

