Best Practices for Optimum Performance and Scalability of Decision Tables
When you use decision tables for your decision-making process, it's important that you
optimize them for scalability and performance. Scalability refers to the ability of decision
tables to handle large datasets without compromising performance. Performance makes sure that
decision tables operate at their highest efficiency with minimal latency and reduced processing
time.
Required Editions
Available in: Lightning Experience
Available in: Enterprise, Unlimited, and Developer
Editions for clouds that have Business Rules Engine enabled
Optimize your decision tables for scalability to accommodate larger datasets such as large
volumes of rows or columns while maintaining stability. For quicker and efficient querying and
evaluation of your decision tables, optimize them for
performance.
Important Before you follow the best practices for decision
tables, review the default limits for Business Rules Engine components and their usage in
Business Rules Engine Default Limits. To raise any
default limits, contact Salesforce Customer Support.
Before you create decision tables, understand these best practices for the different types of
decision
tables.
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