This course focuses on evaluating alternative spatial models to support evidence-based decision making. You will learn methods for calculating various spatial performance metrics related to the built environment. You will use these performance metrics to carry out comparative analysis of design options. By the end of the course, you will be able to create scripts that automate the process of generating and analysing alternative design options.
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About this courseSkip About this course
This course is the last in our “Spatial Computational Thinking” program. This “Performative Modelling” course focuses on evaluating alternative spatial models to support evidence-based decision making. You will learn methods for calculating various spatial performance metrics related to the built environment that can be used for comparative analysis of design options.
This course will build on the previous two courses that covered procedural and generative modelling. In this course, you will switch modes from generating to evaluating spatial performance. Thus, you will be creating procedures for evaluating alternative spatial models with respect to a set of performance indicators. This will once again require an increase in coding complexity, together with a new set of strategies for managing that complexity.
In this course, you will learn how to create your own reusable and customised function libraries. You will use this powerful technique to create a set of generative and performative functions. The generative functions will be used to generate alternative spatial models. The performative functions will be used to evaluate various performance metrics. You will then combine these functions, evaluating each spatial model against each performance metric.
The modelling exercises and assignments during this course will mainly focus on evaluating alternative spatial models for buildings within the urban environment. A site will be selected, and procedures will be developed for calculating performance metrics using morphological and raytracing analysis methods. The various metrics will then be weighted and aggregated, in order to allow alternative options to be easily compared.
Completing the three courses that make up the “Spatial Computational Thinking” program will provide you with the fundamental knowledge and skills required to tackle a wide variety computational design challenges using digital technologies.
At a glance
- Language: English
- Video Transcript: English
- Associated programs:
- Professional Certificate in Spatial Computational Thinking
What you'll learnSkip What you'll learn
Learning algorithmic thinking:
* How to evaluate spatial models using morphological attributes and performance indicators
* Use abstraction as a way of selectively exposing the parameters that are most relevant to the problem being investigated
* Use encapsulation as a way of managing problem complexity
Learning performative modelling:
* Analysing performance indicators using morphological analysis and raytracing analysis
* Understanding morphological analysis: plot ratio, compacity ratio, passive zone proportion, etc
* Understanding raytracing analysis: sky view factor, sun exposure factor, viewsheds, etc
* Evaluating alternative spatial models based on multiple performance metrics
* Strategies for supporting decision making using weighted performance metrics
* Integrating non-spatial data formats into spatial information modelling workflows
* Strategies for data visualization
* Understanding how to break down large procedures into a set of smaller functions
* Understanding how to document functions to support reuse
Understanding how to create and share libraries of functions that can be reused
About the instructors
Frequently Asked QuestionsSkip Frequently Asked Questions
What software will I need?
* The only software you need is a recent version of any Chromium-based web browser (such as Google Chrome, Microsoft Edge, Opera, or Brave). During the course, we will use a free and open-source software app called Möbius Modeller. Even after completing the course, you will be able to continue using this app for free.
What hardware will I need?
* You do not need any specialized hardware to complete the exercises in the course. A recent mid-range laptop will be sufficient. A laptop with a dedicated graphics card will result in a smoother user experience.
Do I need to know any programming languages before I start?
* No, this course is designed for beginners and we will step you through all the programming required.
Will I be able to write code after completing this program?
* Yes. You will learn procedural programming, using typical imperative programming-language constructs. You will also learn how to create computational procedures for manipulating spatial data in diverse ways.
Will I be able to share the computational models that I create?
* Yes. The models that you create (either during the course or after) can be shared either by exporting the models in other formats or by publishing them on the internet as interactive web pages. Publishing a model is straightforward and is one of the techniques that you will learn.
What is the passing grade for the course?
* An overall average for all assignments of 70% is required to pass the course.
Do I need to achieve 70% on each assignment?
* No, you need an average grade for all assignments of 70%. This means you can do poorly or miss an assignment as long as you do well enough on other assignments to achieve 70% overall.
How will my computational modelling assignments be graded?
* Most of your computational modelling assignments will be graded using an automated online grader. For each assignment, you will be given specific instructions on the model that you need to create. You will upload your answer model, and within a few seconds, you will receive the result, with feedback. If the model you uploaded is not correct, you will have multiple chances to try again. For the last assignment of the course, you will be required to create your own model from scratch. This final assignment will be manually graded.