Can you please explain the steps in building a KPI...
# ask-stanley-ai
m
Can you please explain the steps in building a KPI meter that compares results from two saved searches?
c
AI generated answer (using internal Slack threads):
****** Disclaimer: This response was generated by an artificial intelligence assistant based on previous conversations from multiple Slack channels, and may contain inaccuracies or mistakes. ****** Building a KPI meter that compares results from two saved searches in NetSuite involves the following steps: 1. Create the Saved Searches: The first step is to create the two saved searches that you want to compare. These searches should be designed to return the specific data you want to compare in your KPI meter. 2. Create the KPI Meter: Navigate to your dashboard and add a new KPI meter. 3. Configure the KPI Meter: In the KPI meter settings, you will need to select the saved searches you created in step 1. You can do this by clicking on the 'Set Up' button and then selecting 'Custom Search' from the drop-down menu. From there, you can select your saved searches. 4. Set the Comparison: In the KPI meter settings, you can also set how the data from the two saved searches should be compared. This could be a simple comparison of the total results returned by each search, or a more complex comparison based on specific fields in the search results. 5. Display the KPI Meter: Once you have configured your KPI meter, you can add it to your dashboard. The KPI meter will then display a visual comparison of the data returned by your two saved searches. Please note that the ability to compare results from two saved searches in a single KPI meter may depend on the specific data being returned by the searches and the capabilities of your NetSuite account.
Slack thread 1: here (available only if the original thread was posted in the last 90 days)
Similarity score: 0.835909069
Slack thread 2: here (available only if the original thread was posted in the last 90 days)
Similarity score: 0.828455746
Slack thread 3: here (available only if the original thread was posted in the last 90 days)
Similarity score: 0.826085329
Please provide your feedback on this answer.