JarvisBulldogTeamFacHackGW23

Jarvis Bulldog’s Team FacultyHack@Gateways23

This repository is for Jarvis Bulldog Team of FacultyHack@Gateways23 with SGX3.


Team Member: Widodo Samyono, PhD
Email: wsamyono@jarvis.edu
LinkedIn: https://www.linkedin.com/in/widodosamyono/
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Team Mentor: Je’aime Powell.
Email: jpowell@tacc.utexas.edu
LinkedIn: https://www.linkedin.com/in/jeaimehp/

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Resources

HPC support / accounts for our course (include URL and a brief description)

The team TACC Account information:
Account: wsamyono. Email: wsamyono@jarvis.edu. Institution: Jarvis Christian University (jarvis.edu).
The TACC HPC resources is from the following link: https://portal.tacc.utexas.edu/allocations-overview

Needs: 1) accesing and using the Jupiter Notebook for the team and students for the course in Computational and Mathematical Biology. 2) data storage. 3) other resources: GPU, Jetstream, etc.

List of 3-4 Gateway references (include the URL of the Gateway and a brief description)

List of HPC tools used (include URL of tutorials or training)

The revised course syllabus

Spring2024-MATH3390-CourseSyllabus.pdf

The next step suggestions from the community mentor

The 2-year Course implementation schedule (Spring 2024 - Fall 2025)

Spring 2024, Summer 2024, Spring 2025, Summer 2025

Team’s Poster, which conforms to the template provided

The 2-page blog post (Include specific HPC resources and Gateways usage).Jarvis

Description of your ongoing needs from SGX3.

Jupyter Notebook Code:

The Targeted Course MATH 3390 Computational and Mathematical Biology in Canvas:

https://canvas.instructure.com/courses/7289468

Implementation Schedule

Resource Needs/List

1) Google Colab. The students use it for programming in Python to introduce the students with Python coding without installing Python in their computers. https://colab.research.google.com/
2) Jupyter Notebooks. The students may use TACC and Jetstream 2 Resources for using the Jupyter Notebooks. Texas Advanced Computing Center Jetstream2
3) Anaconda Navigator. The students may experience installing Python in their own computers. The link is this: https://docs.anaconda.com/free/navigator/index.html
4) Python. The students need to learn this popular language to solve problems in biology. This is the link: https://www.python.org/
5) SciPy. The students need to learn algorithms in solving biological problems. This is the link: https://scipy.org/
6) scikit-learn (sklearn). Simple and efficient tools for machine learning. They students may use it in the future. The link is this: https://scikit-learn.org/stable/
7) GitHub. The students need to collaborate in solving biological problems, so they can use it to share codes. The link to our GitHub repository is this: https://github.com/wsamyono/BulldogTeamFacHackGW23