/9608-42-PRE-O-N-20

My solution to the pre-release material for Computer Science component 9608/42 of the October/November 2020 examination series

Primary LanguageJupyter NotebookMIT LicenseMIT

9608/42/PRE/O/N/20

Last update: Anuj Verma, 00:03 IST 12/10/2020

Disclaimer about all resources here

While all reasonable efforts have been made to ensure full compatibility with the syllabuses (and the author himself uses these for their own practice and study), these are not official resources and have not been endorsed by Cambridge International Assessment Education for any syllabus. Please use them at your own discretion. The author will not be responsible for any syllabus mismatches.

These are the files that constute the solution to the pre-release material for Computer Science component 9608/42 of the October/November 2020 examination series. This is the solution I created and it need not follow from the mark scheme.

Filename Type Purpose
9608_w20_PM_42 .pdf The pre-release material file released by CAIE.
Planning .md This is the markdown text file that this PDF was created from.
Planning .pdf It describes the solution used in answering the pre-release material and houses all material apart from code (such as identifier tables and structured English).
Main Python notebook .ipynb The Jupyter Notebook in which the Python code was originally written.

Binder Open In Colab
Main Python notebook .pdf The PDF version of the Jupyter Notebook (for the viewer whose system doesn't have Jupyter).
Python Programs .py The Python 3.8 file that contains all executable code (for the viewer whose system doesn't have Jupyter).
Assembly code .docx The assembly code done in Word to leverage the tables from the question paper.
TASK_1_1 .png The low-level program as required by TASK 1.1.
TASK_1_3 .png The low-level program as required by TASK 1.3.
TASK_1_5 .png The low-level program as required by TASK 1.5.
TASK_3_2 .png The linked list as required by TASK 3.2.
TASK_3_3 .png The linked list as required by TASK 3.3.

Notebooks Made with Jupyter