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Impara Challenge: Occupancy Heatmap Generator | Visualization and Automation in Architectural Workflows
Python for Architects

bookChallenge: Occupancy Heatmap Generator

You are about to take on a practical challenge that brings together your understanding of architectural data and visualization tools. Imagine you have a floor plan divided into zones, and for each zone, you have an occupancy value representing how many people typically use that area. Your task is to create a function that takes a hardcoded 2D list of these occupancy values and then generates a heatmap to visually represent the occupancy distribution across the zones. This heatmap will help you and other architects quickly identify which areas of the floor plan are more heavily used, supporting decisions about space planning and resource allocation.

To accomplish this, you will use the seaborn and matplotlib libraries, both of which are powerful tools for data visualization in Python. The heatmap you generate should clearly label both the x-axis and y-axis to indicate the grid position of each zone. Additionally, you will include a color bar alongside the heatmap, which acts as a legend to show what occupancy values the colors on the map represent. This makes your visualization not just visually appealing but also informative and actionable.

Compito

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Write a function named plot_occupancy_heatmap that generates a heatmap from a hardcoded 2D list of occupancy values using the seaborn and matplotlib libraries.

  • Use the provided 2D list named occupancy as your data source.
  • Create a heatmap using seaborn.heatmap.
  • Annotate each cell of the heatmap with its occupancy value.
  • Add axis labels: label the x-axis as 'Zone X' and the y-axis as 'Zone Y'.
  • Include a color bar (legend) that shows the occupancy scale.
  • Display the heatmap plot when the function is called.

Soluzione

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Sezione 3. Capitolo 5
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Suggested prompts:

Can you show me an example of the 2D occupancy list you want to use?

How do I customize the labels for the x-axis and y-axis?

Can you explain how to interpret the color bar on the heatmap?

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bookChallenge: Occupancy Heatmap Generator

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You are about to take on a practical challenge that brings together your understanding of architectural data and visualization tools. Imagine you have a floor plan divided into zones, and for each zone, you have an occupancy value representing how many people typically use that area. Your task is to create a function that takes a hardcoded 2D list of these occupancy values and then generates a heatmap to visually represent the occupancy distribution across the zones. This heatmap will help you and other architects quickly identify which areas of the floor plan are more heavily used, supporting decisions about space planning and resource allocation.

To accomplish this, you will use the seaborn and matplotlib libraries, both of which are powerful tools for data visualization in Python. The heatmap you generate should clearly label both the x-axis and y-axis to indicate the grid position of each zone. Additionally, you will include a color bar alongside the heatmap, which acts as a legend to show what occupancy values the colors on the map represent. This makes your visualization not just visually appealing but also informative and actionable.

Compito

Swipe to start coding

Write a function named plot_occupancy_heatmap that generates a heatmap from a hardcoded 2D list of occupancy values using the seaborn and matplotlib libraries.

  • Use the provided 2D list named occupancy as your data source.
  • Create a heatmap using seaborn.heatmap.
  • Annotate each cell of the heatmap with its occupancy value.
  • Add axis labels: label the x-axis as 'Zone X' and the y-axis as 'Zone Y'.
  • Include a color bar (legend) that shows the occupancy scale.
  • Display the heatmap plot when the function is called.

Soluzione

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Tutto è chiaro?

Come possiamo migliorarlo?

Grazie per i tuoi commenti!

Sezione 3. Capitolo 5
single

single

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