Modeling and Simulation: Difference between revisions
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== Standards == | == Standards == | ||
* | * Define the term computer modelling. | ||
* | * Identify a system that can be modelled. | ||
* | * Identify the variables required to model a given system. | ||
* | * Describe the limitations of computer (mathematical) models. | ||
* | * Outline sensible grouping for collections of data items, including sample data. | ||
* | * Design test-cases to evaluate a model. | ||
* | * Discuss the effectiveness of a test-case in a specified situation. | ||
* | * Discuss the correctness of a model by comparing generated results with data that were observed in the original problem. | ||
* Define the term simulation. | |||
* | * Explain the difference between a model and a simulation. | ||
* | * Describe rules that process data appropriately and that produce results. | ||
* | * Discuss rules and data representations and organization. | ||
* | * Construct simple models that use different forms of data representation and organization. | ||
* Design test-cases to evaluate a simulation program. | |||
* | * Outline the software and hardware required for a simulation. | ||
* Describe changes in rules, formulae and algorithms that would improve the correspondence between results and observed data. | |||
* Construct examples of simulations that involve changes in rules, formulae and algorithms. | |||
* | * Describe changes in data collection that could improve the model or simulation. | ||
* | * Discuss the reliability of a simulation by comparing generated results with data that were observed in the original problem. | ||
* | * Outline the advantages and disadvantages of simulation in a given situation rather than simply observing a real-life situation. | ||
* Discuss advantages and disadvantages of using a simulation for making predictions. | |||
* Define the term visualization. | |||
* | * Identify a two-dimensional use of visualization. | ||
* Outline the memory needs of 2D visualization | |||
* Identify a three-dimensional use of visualization. | |||
* Describe the | * Outline the relationship between the images in memory and the 3D visualization. | ||
* | * Discuss the time and memory considerations of 3D animation in a given scenario. | ||
* | * Outline the use of genetic algorithms. | ||
* Outline the structure of neural networks. | |||
* Compare applications that use neural network modelling. | |||
* Compare different ways in which neural networks can be used to recognize patterns. | |||
* Identify the key structures of natural language. | |||
* | * Discuss the differences between human and machine learning when related to language. | ||
* | * Outline the evolution of modern machine translators. | ||
* | * Describe the role of chatbots to simulate conversation. | ||
* Discuss the latest advances in natural language processing. | |||
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* Outline the | |||
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* Discuss | |||
== References == | == References == |
Revision as of 14:05, 5 June 2017
What is the web? How is the web made? This section delves into core components of the world-wide-web. It is likely you use the web every day. Like everything in computer science, we want you to understand the depth of this topic.
The big ideas[edit]
Standards[edit]
- Define the term computer modelling.
- Identify a system that can be modelled.
- Identify the variables required to model a given system.
- Describe the limitations of computer (mathematical) models.
- Outline sensible grouping for collections of data items, including sample data.
- Design test-cases to evaluate a model.
- Discuss the effectiveness of a test-case in a specified situation.
- Discuss the correctness of a model by comparing generated results with data that were observed in the original problem.
- Define the term simulation.
- Explain the difference between a model and a simulation.
- Describe rules that process data appropriately and that produce results.
- Discuss rules and data representations and organization.
- Construct simple models that use different forms of data representation and organization.
- Design test-cases to evaluate a simulation program.
- Outline the software and hardware required for a simulation.
- Describe changes in rules, formulae and algorithms that would improve the correspondence between results and observed data.
- Construct examples of simulations that involve changes in rules, formulae and algorithms.
- Describe changes in data collection that could improve the model or simulation.
- Discuss the reliability of a simulation by comparing generated results with data that were observed in the original problem.
- Outline the advantages and disadvantages of simulation in a given situation rather than simply observing a real-life situation.
- Discuss advantages and disadvantages of using a simulation for making predictions.
- Define the term visualization.
- Identify a two-dimensional use of visualization.
- Outline the memory needs of 2D visualization
- Identify a three-dimensional use of visualization.
- Outline the relationship between the images in memory and the 3D visualization.
- Discuss the time and memory considerations of 3D animation in a given scenario.
- Outline the use of genetic algorithms.
- Outline the structure of neural networks.
- Compare applications that use neural network modelling.
- Compare different ways in which neural networks can be used to recognize patterns.
- Identify the key structures of natural language.
- Discuss the differences between human and machine learning when related to language.
- Outline the evolution of modern machine translators.
- Describe the role of chatbots to simulate conversation.
- Discuss the latest advances in natural language processing.