Transform the Data In PowerBI

nikeshnikesh
8 min read

Hello everybody, hope all doing well. This blog is about Trasforming the data in Powebi. If your are a beginner and curious learner let's get into it. This going to be a approx 20 minute read, So try to be focused for next 20 min. Just 20 min not more than that.

Shape the Initial Data

Power Query Editor in Power BI Desktop allows you to shape (transform) your imported data. You can accomplish actions such as renaming columns or tables, changing text to numbers, removing rows, setting the first row as headers, and much more. It is important to shape your data to ensure that it meets your needs and is suitable for use in reports.

You have loaded raw sales data from two sources into a Power BI model. Some of the data came from a .csv file that was created manually in Microsoft Excel by the Sales team. The other data was loaded through a connection to your organization's Enterprise Resource Planning (ERP) system. Now, when you look at the data in Power BI Desktop, you notice that it's in disarray; some data that you don't need and some data that you do need are in the wrong format.

You need to use Power Query Editor to clean up and shape this data before you can start building reports.

Transform data with query editor

Get started with Power Query Editor

To start shaping your data, open Power Query Editor by selecting the Transform data option on the Home tab of Power BI Desktop.

Open power query editor

In Power Query Editor, the data in your selected query displays in the middle of the screen and, on the left side, the Queries pane lists the available queries (tables).

When you work in Power Query Editor, all steps that you take to shape your data are recorded. Then, each time the query connects to the data source, it automatically applies your steps, so your data is always shaped the way that you specified. Power Query Editor only makes changes to a particular view of your data, so you can feel confident about changes that are being made to your original data source. You can see a list of your steps on the right side of the screen, in the Query Settings pane, along with the query's properties.

The Power Query Editor ribbon contains many buttons you can use to select, view, and shape your data.

To learn more about the available features and functions, see The query ribbon.

Note

In Power Query Editor, the right-click context menus and Transform tab in the ribbon provide many of the same options.

Identify column headers and names

The first step in shaping your initial data is to identify the column headers and names within the data and then evaluate where they are located to ensure that they are in the right place.

In the following screenshot, the source data in the csv file for SalesTarget (sample not provided) had a target categorized by products and a subcategory split by months, both of which are organized into columns.

Original excel data

However, you notice that the data did not import as expected.

Identify column headers and names

Consequently, the data is difficult to read. A problem has occurred with the data in its current state because column headers are in different rows (marked in red), and several columns have undescriptive names, such as Column1, Column2, and so on.

When you have identified where the column headers and names are located, you can make changes to reorganize the data.

Promote headers

When a table is created in Power BI Desktop, Power Query Editor assumes that all data belongs in table rows. However, a data source might have a first row that contains column names, which is what happened in the previous SalesTarget example. To correct this inaccuracy, you need to promote the first table row into column headers.

You can promote headers in two ways: by selecting the Use First Row as Headers option on the Home tab or by selecting the drop-down button next to Column1 and then selecting Use First Row as Headers.

Different options to use first row as headers

The following image illustrates how the Use First Row as Headers feature impacts the data:

Use first row as headers result

Rename columns

The next step in shaping your data is to examine the column headers. You might discover that one or more columns have the wrong headers, a header has a spelling error, or the header naming convention is not consistent or user-friendly.

Refer to the previous screenshot, which shows the impact of the Use First Row as Headers feature. Notice that the column that contains the subcategory Name data now has Month as its column header. This column header is incorrect, so it needs to be renamed.

You can rename column headers in two ways. One approach is to right-click the header, select Rename, edit the name, and then press Enter. Alternatively, you can double-click the column header and overwrite the name with the correct name.

You can also work around this issue by removing (skipping) the first two rows and then renaming the columns to the correct name.

Remove top rows

When shaping your data, you might need to remove some of the top rows, for example, if they are blank or if they contain data that you do not need in your reports.

Continuing with the SalesTarget example, notice that the first row is blank (it has no data) and the second row has data that is no longer required.

Remove top rows

To remove these excess rows, select Remove Rows > Remove Top Rows on the Home tab.

Remove top rows feature

Remove columns

A key step in the data shaping process is to remove unnecessary columns. It is much better to remove columns as early as possible. One way to remove columns would be to limit the column when you get data from data source. For instance, if you are extracting data from a relational database by using SQL, you would want to limit the column that you extract by using a column list in the SELECT statement.

Removing columns at an early stage in the process rather than later is best, especially when you have established relationships between your tables. Removing unnecessary columns will help you to focus on the data that you need and help improve the overall performance of your Power BI Desktop semantic models and reports.

Examine each column and ask yourself if you really need the data that it contains. If you don't plan on using that data in a report, the column adds no value to your semantic model. Therefore, the column should be removed. You can always add the column later, if your requirements change over time.

You can remove columns in two ways. The first method is to select the columns that you want to remove and then, on the Home tab, select Remove Columns.

Remove columns feature

Alternatively, you can select the columns that you want to keep and then, on the Home tab, select Remove Columns > Remove Other Columns.

Remove other columns feature

Unpivot columns

Unpivoting is a useful feature of Power BI. You can use this feature with data from any data source, but you would most often use it when importing data from Excel. The following example shows a sample Excel document with sales data.

Excel data that needs to be unpivoted

Though the data might initially make sense, it would be difficult to create a total of all sales combined from 2018 and 2019. Your goal would then be to use this data in Power BI with three columns: Month, Year, and SalesAmount.

When you import the data into Power Query, it will look like the following image.

Original Power Query data

Next, rename the first column to Month. This column was mislabeled because that header in Excel was labeling the 2018 and 2019 columns. Highlight the 2018 and 2019 columns, select the Transform tab in Power Query, and then select Unpivot.

Unpivot results in Power Query

You can rename the Attribute column to Year and the Value column to SalesAmount.

Unpivoting streamlines the process of creating DAX measures on the data later. By completing this process, you have now created a simpler way of slicing the data with the Year and Month columns.

Pivot columns

If the data that you are shaping is flat (in other words, it has lot of detail but is not organized or grouped in any way), the lack of structure can complicate your ability to identify patterns in the data.

You can use the Pivot Column feature to convert your flat data into a table that contains an aggregate value for each unique value in a column. For example, you might want to use this feature to summarize data by using different math functions such as Count, Minimum, Maximum, Median, Average, or Sum.

In the SalesTarget example, you can pivot the columns to get the quantity of product subcategories in each product category.

On the Transform tab, select Transform > Pivot Columns.

Pivot Column

On the Pivot Column window that displays, select a column from the Values Column list, such as Subcategory name. Expand the advanced options and select an option from the Aggregate Value Function list, such as Count (All), and then select OK.

Aggregate value function

The following image illustrates how the Pivot Column feature changes the way that the data is organized.

pivot column feature changes how data is organized

Power Query Editor records all steps that you take to shape your data, and the list of steps are shown in the Query Settings pane. If you have made all the required changes, select Close & Apply to close Power Query Editor and apply your changes to your semantic model. However, before you select Close & Apply, you can take further steps to clean up and transform your data in Power Query Editor. These additional steps are covered later in next blog.

Hope you guys made till end. If any doubts or any info regarding to powebi ping me. I am available.

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