CMP 414/765 course repository for Spring 2022 semester

Overview

CMP414/765: Artificial Intelligence

Spring2021

This is the GitHub repository for course CMP 414/765: Artificial Intelligence taught at The City University of New York, Lehman College, in Spring 2022. Each week the instructor will upload one notebook that will be used in class.

View A Notebook

Simply click the file name on the list. Jupyter notebooks can be directly viewed on GitHub website.

Edit A Notebook

To edit a notebook from this repository, please click the "Open in Colab" button at the beginning. Students should be able to open the notebook in Google Colaboratory. Google Colab is a free Jupyter notebook environment that runs in the Google Cloud. An edited notebook can be saved to either Google Drive or another GitHub repository. Note that students are not able to save their edited notebooks to this repository.

It is expected that students follows each class by completing their version of the notebook. This includes:

  • Execute existing code cells to show expected results.
  • Complete exercises contained in the notebook.
  • Add new cells following the professor's instructions.

Save An Edited Notebook

To save the edited notebook in Google Drive, please click "File" -> "Save a copy in Drive". Google login is required.

To save the edited notebook in a GitHub repository, please click "File" -> "Save a copy in GitHub". GitHub login is requried.

To save the edited notebook as a PDF file, please click "File" -> "Print". Choose "Print as a PDF" in the pop-up window and click "Save".

For homework submission, a PDF file is required since other formats may not be properly displayed on Blackboard.

Owner
ch00226855
Liang Zhao, Assistant Professor at Department of Computer Science, Lehman College, City University of New York
ch00226855
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