People who work daily with different documents know very well how much productivity depends on how convenient it is to use editing tools. When you Management Report documents must be saved in a different format or incorporate complex elements, it might be challenging to handle them utilizing conventional text editors. A simple error in formatting may ruin the time you dedicated to join cross in Management Report, and such a basic job should not feel hard.
When you find a multitool like DocHub, such concerns will in no way appear in your work. This powerful web-based editing solution can help you quickly handle documents saved in Management Report. You can easily create, edit, share and convert your documents anywhere you are. All you need to use our interface is a stable internet access and a DocHub profile. You can sign up within a few minutes. Here is how straightforward the process can be.
Having a well-developed modifying solution, you will spend minimal time figuring out how it works. Start being productive the moment you open our editor with a DocHub profile. We will make sure your go-to editing tools are always available whenever you need them.
hi guys welcome back to another episode on power bi in todays video we are going to learn how to create a monthly warranty reporting dashboard using cross join in power bi usually in product based company the management wants to understand what is the warranty obligation for a certain period and plan the budget according to the failure rate of the product with the help of some sample data lets try to understand how it actually works lets move to power bi so here is the file and i have some sample data so i have three tables the first table is warranty information which contains the device information and the warranty start and the end period and the second table we have the failures and in the third table we have a calendar so ill be using this calendar to create a cross join with the variant info and then create a reporting technique out of these two tables and then later join the failure table to see the month on one trend of the failures so let me quickly show you how the data