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Category: Office 365

Problems Manually Refreshing Power BI Enabled Workbooks

Office 365 (without Power BI) has supported data refresh for Excel and PowerPivot for some time, and it works well provided that the data source is both in the cloud, and is one of the supported data sources. To refresh a workbook, simply open the workbook in the Excel Web App, open the data menu and select “Refresh All Connections”.

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Up until just recently, this was how it worked with Power BI workbooks as well, with the additional ability of being able to refresh on premises data through the Data Management Gateway. However, with the latest refresh of the Power BI application, and its support of scheduled refresh, this has changed. Now, if you follow this procedure and attempt to manually refresh a Power BI enabled workbook from an on premises data source, you will receive an error.

OnPremise error: We were not able to refresh the data connections. On-premise data ources canonly be refreshed vi scheduled refresh in Power BI for Office 365

The error is pretty self-explanatory, so I won’t try to explain it. Scheduled data refresh hasn’t just been added, it has replaced the old refresh method. That’s all well and good, but what about those use cases where we want to manually refresh data? The good news is that it hasn’t been lost, it’s just been moved. It is, however, well hidden.

To refresh the workbook on demand, you must first open the Power BI application, locate your workbook, and click on its ellipsis to open its context menu.

Schedule Data Refresh

Next, you need to select “Schedule Data Refresh”. Now I know that we don’t want to schedule the refresh, but to update it on demand, so you’ll just need to trust me here. Selecting “Schedule Data Refresh” will open the scheduling interface into either the history tab (if the workbook has already been scheduled) or the settings tab (if it has not). In any event, you’ll need to be in the settings tab.

If the workbook has not already been enabled for scheduled refresh, it will need to be. Once it has, the “save and refresh report” button will be available. If it has already been saved, the button will read “refresh report now”. In either case, clicking on it will start the refresh process immediately.

On-demand refresh is still available, but I have to say that it’s well hidden. The fact that it has moved into the Power BI application means that a Power BI license will be required to refresh it on demand, which seems quite reasonable to me. However, some better visual cues would be a big help. For example, why not add “refresh now” to the context menu in the Power BI application?

In addition, given that the refresh is being initiated manually, some visual cues around the status of the refresh (started, in progress, completed) would help considerably. As it stands, the only status information is available after the refresh completes, on the history tab of “Schedule Data Refresh”.

There has also been another subtle change around how workbooks are displayed in Power BI. When a workbook is opened from the source Office 365 library, the standard Excel Web App interface is displayed, with options for opening in Excel, editing, etc. displayed.

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However, if you first navigate to the Power BI application, and open the workbook by clicking on the thumbnail, it will open in the browser but without the Web App chrome.

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I’m not sure what the reasoning is for this different behaviour, but it’s a change, and something that you should be aware of. UPDATE 14/2/14 – It has been explained to me that the reason for this different behaviour is an effort to reduce screen clutter for those using the Power BI application. It’s a consumption mostly application, so this change makes sense in that context. It’s also possible to add the Excel Web app chrome back in by using a new “action bar” (my name). If you look to the bottom of the worksheet window, you’ll see it, and its three icons.

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The three icons, from left, allow you to submit feedback to Microsoft, to get embed codes for the report (a new feature!) and finally, to restore the standard Web App chrome (for editing etc.)

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Delete a Shared Power Query in Power BI

One of the very compelling new features in Power BI is the ability to share a query. Essentially what happens is that a user will build up a Power Query Query with all of the necessary transformations and filters, and when it is complete, the query itself (not the data) can be published to the data catalogue. To do so, from the query window, hover over your query to see the fly out dialog, click the ellipsis at the bottom, and select “Share”.

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Once shared, if blessed by the data steward, the query is added to the data catalogue, and can be discovered by others simply by searching for it from the Power Query Online Search interface

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You can also see all of the queries that are shared to the organization. To do this, from a Power BI app, first, click on the “Manage Data” link at the top of the browser window.

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Once in the Manage Data section, you can select “my queries”, where you will be presented with a list of all shared queries. You can search for queries, or even analyze your query’s usage patterns.

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However, one thing that you cannot do is delete the query. This can’t be done from within the management application, it must be done within the Power Query application itself. To delete a shared query, first, open Excel, click on the Power Query tab, and then click on the Shared button in the ribbon. This will open up your list of shared queries in the data catalogue. Next, hover over the query to be deleted, wait for the query fly out dialog to open, and then click the delete link.

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Reopening the data catalogue in the manage data app will show the query to have been deleted. Pretty straightforward, but also fairly well hidden.

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Power Pivot Updates to Excel 2013 – November 2013

Did you notice the update to Power Pivot in Excel 2013? Did you know that one was available? Neither did I until I heard about it 2 weeks ago. It certainly came without fanfare, and I’ve only finally gotten around to getting it on my system recently (more on that later). The only visible change that I can see is the support for synonyms. You have always been able to rename columns in Power Pivot, but now you can specify alternate names, or synonyms. This is to better support the upcoming natural language query feature called Power Q&A.

You’ll know if you have this update by clicking on the Power Pivot tab, clicking the manage button, and finally selecting the Advanced tab from the Power Pivot window. If you see the synonyms button in the ribbon, then you have the update.

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Working with synonyms is pretty straightforward. I have a table of airline codes loaded, and the table has a “comments” column. I may want to refer to that column as “notes”, or “other information”. To do so,I click the synonyms button in the ribbon. Power Pivot flips to diagram view, and opens up the synonyms editor on the right side of the window. For the “Comments” field, I simply enter my alternate terms separated by commas. And that’s about it.

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Once it is available, Power Q&A will make use of these synonyms when performing natural language queries, but for now, they’re not really used for anything. What I find interesting here though is the way that this update has been delivered. 

As I mentioned above, I was unaware of this update until I heard about it through word of mouth. It was not added through Windows update of WSUS, but it was streamed out to users that are using subscription based Office installs from Office 365. In particular, it was sent to users that installed Office using the new Click-To-Run delivery method. I was using an MSI based Office installation, so I never saw it. In order to get this update, I literally had to uninstall Office, then reinstall it using Click-To-Run. As far as I am aware, this is the only way to receive this update.

I also find it odd that while client side changes to Lync were called out in the “What’s New: November 2013” article on the Office 365 Technology blog, no mention whatsoever was made of this change. It’s almost as though this delivery system is being tested with a low impact feature first. I also find it interesting in that the new “cloud first” deployment approach applies not only to the services themselves, as you might expect, but to the clients that use those services. It makes sense, but may take some getting used to.

I’ve been one of those MSI holdouts. I’m an old dog, and Click-To-Run is a new trick, but I’ll be using it moving forward. There’s really no reason not to.

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Installing Office 365 App : Sorry, there was something wrong with the download

I recently ran into a bit of trouble installing the Nintex Workflow for Office 365 app to our main Office 365 tenant. Every time I tried to add the app from the store, I would receive the above error, or “Sorry, something went wrong with adding the app”.

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With some great help from Nintex support, I was able to sort this out, but when I tried to repeat the process for writing this article, I also received the error:

The app package does not support the culture en-CA specified for installation

Yes, being Canadian has a few disadvantages, but not many. This is one of them. We do have a slightly different English than our cousins to the south.

I tested this on a few other apps and ran into similar problems with them. The problem appears to be a mismatch between the local settings for your tenant, and those explicitly supported by the app. You can work around these problems during installation by selecting en-US as the language. You do this during the app addition process. However, you first need to remove the failed addition.

Hover over the failed app, and click on the ellipsis that appears. Next, click on the ellipsis in the “about” box that pops up, and select remove.

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Once it is remove, again begin the process of adding the app. When you come to the trust screen, click on the “SHOW LANGUAGE OPTIONS” link. From there, select English (United States). My default was English (Canada).

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Once done, and you click the “Trust It” button, your app should install normally. I am told that this is a bug – I’m not sure if it’s on the Office 365 side or the vendor side, but it should get fixed. In the meantime, hopefully this workaround helps someone.

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Analyzing Data with Power BI from Beginning to End

I’ve been writing a fair bit lately about specific aspects of Power BI, and how they all fit together. I decided to put together a “real world” demonstration of as many aspects of the product as possible, and this article is the result. I don’t dive too deep on any of the specific areas, but hopefully this walkthrough will help give a sense of the power and simplicity of working with this (these?) tool (s).

In this example, we will explore some publicly available data published by the US National Oceanic and Atmospheric Administration (NOAA). To do so, we will first use Power Query to acquire and transform the data. Next, we will utilize Power Pivot to build our model, and then create a Power Pivot and a Power Map to visualize it. Finally, we will publish the data to a Power BI enabled site where it can be consumed by anyone with a browser or a mobile client.

Data Acquisition and Transformation with Power Query

The NOAA keeps a record from about 800 weather stations around the world. The data collected includes daily maximum and minimum temperatures, rainfall, and a host of other measures. All of this data is available through their web/ftp site here. Well it should be. As I write this, the site is offline, as are most other US government websites. Luckily, I have a local copy of all the files. Feel free to contact me for a copy if they’re not back soon. Update – For the interim, I’ve made the files available here.

The way that the data is provided is via a series of text files. Each text file in a folder represents a single weather station, and each row contains all the data for a given measure for a month. The data are not delimited, they are distinguished by their position in the row, with the data for each day in the month being presented as a separate measure. Normally, a tool like SSIS would be required to transform the data into something that could be analyzed, but as you’ll shortly see Power Query is up to the task.

Unfortunately, Power Query cannot work with FTP sources, but it’s a rather simple matter to copy the files from the FTP site to a local drive, and there are tools that can keep the content synchronized for refresh purposes. Note, if anyone from Microsoft is reading this, I believe that FTP and WebDAV folders would be a great supplement to the Folder data source, particularly when it comes to automatic refresh. Once we have the files locally, we can begin the import process. First, we open a new Excel workbook, select the Power Query tab, and then in the “From File” dropdown, we select the new feature “From Folder”.

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Next, we select the folder that contains all of the data files. Power Query returns the data for the files in the folder.

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In our case, the file name does correspond to the ID of the station, but the rest of the file metadata is not that useful to us. However, what is useful is the fact that using Power Query, we can drill into the files. Depending on the requirement, this can be done one of two ways. By clicking on the word “Binary” in the Content column, you will be able to drill into that file, and subsequent operations will be performed on that file. However, if you click on the little drilldown icon at the right of the Content column header, you will drill into all files in the folder. Subsequent operations will be performed on all files in the folder, and refresh operations will pick up any new files.

It should be noted that for this to work, all files in the folder must have the same schema. (In addition to data like this, this feature is particularly useful for parsing and iterating through server log files.) Since we want all station data, this is the operation that we will perform next. What we get back is a column of seemingly randomly structured data.

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Luckily for us, there is a key to the data structure (found in the file readme.txt if you’re following along). The basic key pattern is:

------------------------------
Variable   Columns   Type
------------------------------
ID            1-11   Character
YEAR         12-15   Integer
MONTH        16-17   Integer
ELEMENT      18-21   Character
VALUE1       22-26   Integer
MFLAG1       27-27   Character
QFLAG1       28-28   Character
SFLAG1       29-29   Character
VALUE2       30-34   Integer
MFLAG2       35-35   Character
QFLAG2       36-36   Character
SFLAG2       37-37   Character
  .           .          .
  .           .          .
  .           .          .
VALUE31    262-266   Integer
MFLAG31    267-267   Character
QFLAG31    268-268   Character
SFLAG31    269-269   Character
------------------------------

In plain English, this means that the first 11 characters are the ID (the station ID actually, from which the country can be extracted), the next 4 characters are the year, the next 2 the month, the next 4 the “element” (the measure name). The next 4 “variables” are the value (5 characters), and 3 different flags (one character each, which we are not interested in) for the first day of the month. This pattern of 4 variables is then repeated 30 more times, once for each day of the month. A value of –9999 represents a null value.

We have some parsing to do.

Luckily, Power Query makes this (relatively) easy. Right click on the column header, select split column, and then select number of characters.

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Next, for our first column, we set the number of characters to 11, and we tell it to split once, as far left as possible. We’ll use this option for our remaining splits.

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Click on OK, and we will now have 2 columns. We then right click on the leftmost column, and rename it to ID.

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Next, we right click on our rightmost column header and repeat the process (using 4 characters this time), this time renaming it to Year. We then do the same for the month (2 characters) and element (4 characters) columns. Once this is done, we can click the dropdown on the elements column. Since we are only interested in the maximum and minimum daily temperatures, we deselect all, and reselect these two elements. This will limit the amount of data that we will pull into our model.

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At this point, it is also worth noting the steps window on the right hand side of the query editor. This shows all of the transformation steps that have occurred to get us where we “are”. Any of these steps can be deleted, which is very useful if a mistake is made, and all subsequent steps will be affected by it. Clicking on a previous step takes you back to that point in the development of the transformation as well.

Once we have filtered our data, we continue on with the parsing. We then split off the next 5 columns, and rename the column to “1”. The next three columns we don’t need, so we first split them off (3 characters) and then delete the column by right clicking and selecting “Remove”. We then repeat this, renaming the value column to 2. Finally, we continue repeating this process until the value for 31 is complete. This is a tremendously tedious process, but it works rather well. I’ll make another feature request here for anyone in a position to do something about it. In the Power Query editor, it would be nice to be able to select a number of steps and either copy them forward, or be able to repeat them x times. This would save a great deal of time in these situations.

Its also a good idea to give the query an understandable name, so we right click on “Query 1” and rename it to “Temperature Data” .

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As mentioned above, the figure –9999 represents a null value. Well, we know this, but the model won’t. At this point we need to convert these to proper nulls. The way that this is done is to select all of the numbered column headers, right click on them and then choose “Replace Value”. We replace the value –9999 with the word null.

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Now that we have our nulls, our data is good. However, from an analysis perspective, the data is hardly in the best shape. What we need is to is to have each day’s data represented by a row, not a column. Once again, Power Query provides a method for us to accomplish this through the unpivot function. Simply select all of the numbered columns, right click, and choose “Unpivot Columns”.

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Instantly, the numbered rows are transformed into rows, with the column titles in a column named “Attribute”. Simply rename it to “Day”, and we’re ready to import our data. To do so, click “Done” and Power Query will begin the extract, transform, and load process. In this case, it takes quite some time to iterate through all of the files (about 15 minutes) so be patient.

While the data is loading, you will need to make some adjustments to your Query Settings (to the right of your Excel window). Specifically, you’ll want to turn off the “Load to worksheet” option. As I’ve discussed previously this is important to keep the size of the actual worksheet small. in this case, it’s also important as the sheer volume of data exceeds Excel’s ability to store it. When complete, your worksheet should appear as follows.

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You can see that there’s a fair amount of data here, about 31.5 million rows. Did I mention that we’re working with Excel here? We’ve disallowed loading to the worksheet, so at this point, we need to load into the embedded data model. Do that by clicking on the link at the bottom of the Query Settings screen.

There is also some more supporting data that we want to bring into our model. The following files need to be imported:

  • ghcnd-stations.txt – contains metadata for all of the different weather stations
  • ghcnd-countries.txt – contains metadata for all participating countries
  • ghcnd-states – contains metadata for US states and Canadian provinces

The keys to these files are also in the readme.txt file, and we bring in their data using the same procedure that we used above for the actual weather data, with the exception that we use the “From file” data source. Finally, we give each query a logical name.

The beauty of all this is that anytime we wish, we can refresh the data. Any new or changed data will be picked up and added to the model following our transformation.

Model Editing In Power Pivot

Once this is complete, we are ready to edit our model. We do so by selecting the Power Pivot tab, and clicking “Manage” in the ribbon. First, we work on the actual temperature data tab. The temperature values reported are in tenths of a degree Celsius. This doesn’t mean much to most people, we should at least report the data in degrees C. To do this, Click on Add Column, and add the formula [Value]/10. Rename the column to Temperature.

We always want to be working with temperature averages. To do so, add a calculated measure named Average Temperature (C) (in the calculation area at the bottom). Its formula should be Average Temperature (C):=AVERAGE([Temperature]). We no longer need the value column or the temperature column for analysis, so we need to hide them from client tools. To do so, select both the Value header and the Temperature header, right click and select “Hide from Client Tools”. Finally, we set the formatting of our calculated measure to be Decimal Number.

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Next, we want to establish a relationship between the data and the country table. We don’t have a column for country, but according to the data key, the first two characters of the country code correspond to the country code. We can therefore add another calculated column with the formula LEFT([ID],2). We then rename the column to Country Code. We only need this column for the relationship, so we can hide this from client tools as well.

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To establish the relationship, change to the diagram view in the ribbon. Drag the Country Code field from the Temperature Data table onto the CountryCode field from the Countries table. While we’re in this view, we can drag the ID field from Temperature Data onto the ID field of the stations data. this will allow us to take advantage of the location of each of the stations. Finally, drag the State column from the Stations table onto the State Code column of the States table. At this point, we can go ahead and hide any unnecessary columns from client tools.

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Our model is ready. At this point, we can move forward with analysis.

Create a Simple Power View Report

We want to create a simple Power View report to display temperature trends over time, Move back to the Excel Workbook and click the Insert tab in the ribbon. Then select the Power View button – this opens up a new Power View design surface. We won’t be needing the Filters window, so we can close that.

Right away, if you look at the Power View Fields window, you will notice that every table is duplicated – one with a “filled in” title bar, and one without. This window is displaying both defined Power Query queries, and the table contained within the model (Power Pivot). The “filled in” one is the one that we want to be working with. Using the other will cause duplicate tables to be created in the model – something that we obviously don’t want. This is due to an issue with the preview for Power Query and should be fixed in the near future.

We’ll be working with “Average Temperatures”  as a measure so from the start, we’ll pick it and “Year” from the Temperature Data table. Year is a number, so Power View will want to total it by default. We don’t want this, so in the Fields selector, select the dropdown for year and select “Do Not Summarize”.

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Next, resize the table on the design surface so that it fills the width of the report. Then, with the table selected, from the Design tab in the ribbon, select “Other Chart” and “Line”

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What we get is a graph of overall average of all recorded temperatures starting around 1840. It might be more interesting to see the maximum and minimum temperatures, so to do that, just select the “Element” field, and Power View will add it to the Legend, showing both values, maximum temperature in blue, minimum in red. It would be nice if we could switch those colours, but unfortunately, all you can do at the moment is to select a different theme, none of which start with red.

Next, it would be nice to be able to see this data by individual reporting country. We can do this by first displaying a chart showing the overall average temperature per country. We click on the design surface outside of the temperature chart, and select the ”Country” field from the Country table, and the “Average Temperature” field from the Temperature Data table. Again,we resize the table to the width of the report, and then select “Column Chart”, “Clustered Column from the Design tab. We then get a scrollable list of countries with their overall average temperatures.

We could sort this by temperature, but since it will service as a picker, alphabetical makes more sense. Being from Canada, I’m naturally interested in our weather patterns, so I click on the Canada data bar (a negative value…shiver). Immediately the report above is filtered by Canadian data.

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It seems that this whole climate change thing isn’t working out as well as I’d hoped….

Finally, we want to give the report a good title, and clean up some formatting. After we do this, we can move on to the next step, creating a Power Map report.

Create a Simple Power Map Report

Creating a Power Map is similar to a Power View. From the Insert tab on the ribbon, select Map, and then “Launch Power Map” from the dropdown.

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At this point a new window will be launched where you can build your Power Map report. What we want to do is to show the relative temperatures for each country using a colour scale from low to high, and to show the average maximums and minimums for each recording station. To start with, for our first layer, we are going to use Country from the Countries table for our Geography data, so we select it. Every country with data will get a small point on the map.

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Clicking next, we then get to select our data for the first layer. The data that we want to map is Average Temperature, So we select it. The resulting column visualization makes the earth look like a pincushion. What we want is to fill in the country boundaries with relative colour values. To do this, we select the  region type for the visualization. This is better, but it fills the regions with shades of blue from light blue to dark blue for the warmest averages. It’s far more typical for red to represent heat, and we can do this by first selecting the settings icon.

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We can then select a colour palette for our data, and red is a more logical color. Now you can spin the globe around to check out your next vacation hotspot. However, we want to get more specific than country, we also want to plot details for each reporting weather station. First, we need to add a layer. To do so, click on the Layers icon and select the add layer icon.

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We then repeat the same steps that we did for the first layer, only instead of selecting country, we select Latitude and Longitude for the geography fields. After clicking Next, we leave the report as a Column type, and select Average Temperature as the height. Next, we select Element as the category option. We want the report to use clustered columns, so we now select that option to the right of the category title.

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Finally, we want TMAX to be red, and TMIN to be blue, so we again click on the settings icon for this layer, and set the colours appropriately.

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From this, it’s easy to see why Canada’s numbers are so low – there are a disproportionate number of stations in the far north! We’re now ready to share our report with Power BI.

Sharing Reports With BI Sites

Sharing your report is almost as simple as saving to a BI Sites enabled Office 365 library. We can either upload it directly, or save it to a SkyDrive Pro enabled folder, which is what I do. At this point, the file is 100 MB. On a side note…. this Excel file, that contains over 30 million rows of data is only 100 MB in size. That’s impressive. After the file appears in the O365 library, we can attempt to open it. However if we do, we’ll get a message saying that the file is to big to open in the browser.

That would be true in a regular Office 365 library, but it isn’t too large for Power BI. The problem is that first, the file needs to be enabled. More information of file size limits and enablement can be found here. To enable the workbook for Power BI, first navigate the the Power BI app, locate your file (it will be showing a small caution symbol), click the ellipsis, and select “Enable”.

Enabling the file will perform a few operations:

  • The model will be extracted from the file and stored elsewhere, drastically reducing the file size
  • A thumbnail is extracted from the file and used in the tile

It should be noted that if the file is uploaded via the Power BI app, the saving and enablement steps will be performed automatically.

Clicking on the file, either here, of within its actual library will now open the file, and we can also interact with the model (in this case by clicking on the data for Bermuda).

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At the top, you’ll notice a warning message. It is letting you know that although this workbook can be viewed in a browser, and interacted with, it cannot be edited in a browser. This is because it is beyond the maximum edit size limit of 30 MB. You may also notice that we are using an HTML5 version of our Power View report. By default, Silverlight is used, but if you click on the new icon on the bottom left of the report, HTML5 will be used. It will also be used if you have a system that does not support Silverlight. This is true anywhere in Office 365, not just in Power BI enabled sites.

Finally, you may also notice that our Power Map report is missing from the equation. This is because for the moment, Power Map is not supported in the browser. A workaround for the time being is to export the Power Map report to an MP4 video file, and store it separately. MP4 files can be rendered in a browser, and on mobile devices.

Viewing In the Power BI Mobile Apps

Speaking of mobile devices the Power BI app for Windows 8 is currently available in the Windows store, with a version for iOS coming shortly. Once installed and run you’ll be shows a couple of sample reports from a demo site. To navigate to your own site, right click anywhere, or swipe up from the bottom, and select “Browse”.

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On the next screen, we can select from our registered sites. If our site has not yet been registered, we can do so by again right-clicking, or swiping up. Then, we can enter the URL of your site. The URL to be entered here is that of the parent site of the library in which your report is stored. Once we load from this site, it will be automatically registered.

The next few screens allow us to navigate down to the file in question. Once the file appears in the list, selecting it (not opening it) gives us the option to save it as a favourite. If we mark a report as a favourite, it will appear on the home screen whenever the app is started.

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Finally, opening it will open the first names object in the file. You can navigate to other named objects by right clicking, or swiping down from the top.

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As you will notice, all names objects in the workbook appear by default. We can control what appears through the Excel publishing options, as outlined here.

As you can see, we have just taken a very large amount of publicly available data, transformed it and analyzed it within Excel, and published it out for everyone in the organization no matter what device they are using. I haven’t even gotten into the Q&A piece – primarily because it’s not available yet for custom data sets. I plan on updating this article when it is.

Power BI is powerful indeed.

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