Finnish Architectural Landscape: A Statistical Cross Section

Finnish Architectural Landscape: A Statistical Cross Section

In this article, you can find a statistical cross-section of the Finnish architectural landscape. As the title suggests, this article is not going to look into the architectural qualities of different offices instead it’s going to use financial data and descriptive statistics to sense the architectural market in Finland.

In this article, you can find a statistical cross-section of the Finnish architectural landscape. As the title suggests, this article is not going to look into the architectural qualities of different offices instead it’s going to use financial data and descriptive statistics to sense the architectural market in Finland.

What’s the point of using financial data? The economy as a social science is essentially concerned with how people interact with things of value. Knowing how much people are willing to pay for a particular service quite often (though not always) can give an approximate hint about the value it provides to society. Additionally, Financial information is always meticulously collected and stored for management and taxation purposes. Since every office collects and stores financial data in a similar manner, we have a common metrics to compare otherwise very different organizations. Luckily for us, this information is openly available in Finland. With the use of some basic descriptive statistics, we can now analyze the information in the field and hopefully gain some useful insights. The dataset used for the article can be found below.

Where is Finnish Architecture Produced?

Before we take a deeper look into the financial performance of offices lets first see where the Finnish architectural offices are located. There are around 2615 registered offices across Finland.

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Spatial Distribution of architectural offices in Finland. Image by author

_The map on the left shows the spatial distribution of architectural offices in Finland. Taking into account that Finland’s urbanization level is approximately 85.45%, It is not surprising that the majority of offices are clustered around metropolitan areas. The choropleth map below shows that Uusimaa is clearly the most densely packed region. An interesting observation is that 1.12% of offices are located above the _arctic cycle. Furthermore, there is an architectural office registered above the 69th Latitude very close to the Finnish border with Norway. Finnish respect for personal space illustrated at its best.

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LEFT: Office distribution in Helsinki metropolitan area RIGHT: Office distribution in Finland by administrative regions.

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The graph above shows that Helsinki is the center of architectural production with 377 registered offices. However, if we join the number of offices in the Helsinki metropolitan area (Helsinki, Espoo, and Vantaa) this number will rise to 499 (19.08% of all offices in Finland). Tampere comes second with 103 offices. This does not come as a surprise since Helsinki as the capital of Finland has the highest population. A relatively high population often means higher overall economic activity and a higher rate of investments.

data-analysis architecture finance data-visualization data-science

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