Computational Thinking: Difference between revisions

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Students must be able to demonstrate:
Students must be able to demonstrate:


# an approach to any given problem from a computational thinking point of view.
# an approach to any given problem from a [[computational thinking point of view]].




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Students must be able to apply:
Students must be able to apply:


# computational thinking to non-computer-based activities.
# [[computational thinking]] to non-computer-based activities.




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[[algorithms]] that address a given problem and evaluate whether a given algorithm would solve a given problem.
[[algorithms]] that address a given problem and evaluate whether a given algorithm would solve a given problem.
== References ==
<references />
[[Category:2024 IB DP]]

Revision as of 10:03, 4 December 2022

Computational thinking, problem-solving and programming[1]

Understandings[edit]

Computational thinking (abbreviated to CT) is an analytical process that can be broken down into four elements: Abstraction; Decomposition; Algorithms; and Pattern recognition.

Students must be able to explain (in the context of Computational thinking to analyse a given problem):

  1. Abstraction
  2. Decomposition
  3. Algorithms
  4. Pattern recognition


Computational thinking is essential for the development of computational solutions which may or may not be computer-based.

Students must be able to demonstrate:

  1. an approach to any given problem from a computational thinking point of view.


Computational thinking is a problem-solving process used across multiple disciplines, and not just in computer science.

Students must be able to apply:

  1. computational thinking to non-computer-based activities.


Computational thinking includes algorithmic thinking. Algorithmic thinking is the basis of solving problems through developing algorithms.

Students must be able to construct:

algorithms that address a given problem and evaluate whether a given algorithm would solve a given problem.


References[edit]