Main repository for the HackBio'2021 Virtual Internship Experience for #Team-Greider ❤️

Overview

Hello 🤟 #Team-Greider

The team of 20 people for HackBio'2021 Virtual Bioinformatics Internship 💝 🖨️

  • 👨‍💻 HackBio: https://thehackbio.com

  • 💬 Ask us about Anything Science! We are your friendly neighborhood science people 🔬

  • Fun fact We are a diverse community from many nations 🤗

  • 📫 How to reach us? [email protected]

Team-Greider

GitHub last commit Contributions welcome Maintenance PRs Welcome License

HackBio

This is the main repository for the Stage_0 task for the HackBio'2021 Virtual Internship Experience for #Team-Greider.
The Main goal of the project is write small scripts in different languages with the output: name, e-mail, slack_username, biostack, . Next step is to make csv file with rows corresponding to the person and columns to the values (as name, e-mail, etc) ysing different scripts. All members of the team will fork the Github Repository and make the neccesary commits for task for Stage_0. This README.md contains all the necessary information to replicate the workflows for this task.

🧬 Getting Started

Requirements

📎 Workflow




🔧 Usage

The main goal of the project is to create a bash script that will clone the repo and produce a csv file with the participants' personal information. For this goal no installation is required, however check if all dependencies are satisfied. Please download the following script csv-populator.sh. Downloading and running the script can be done from a terminal with the following command:

wget https://raw.githubusercontent.com/ssiddhantsharma/team-greider/master/csv-populator.sh && sh csv-populator.sh


⚗️ Languages

  • Python - .py
  • Julia - .jl
  • C++ - .cpp
  • C# - .cs
  • Java - .java
  • C - .c
  • R - .R
  • Ruby - .rb

I am a newbie...

Everyone began from something (: Actually the language in this task doesn't matter, as the script is very simple. You can search smth similar to "write hello world script in language_of_interest ".

A good start is to become more familiar with R or Python. Both of these languages are extremely popular within the bioinformatics community. See templates for "Hello world script" for R and Python.

Unified template for output for #Team-Greider

Desired fields (for this task) can be printed out in many different ways. Therefore I propose a unified template for your script output:

NAME: *Your full name*
E-MAIL: *Your e-mail* 
SLACK USERNAME: @+*username*
BIOSTACK: *Name of biostack you chose*
TWITTER: @+*username*
HAMMING DISTANCE: *distance*

An example:

NAME: Siddhant Sharma
E-MAIL: [email protected]
SLACK USERNAME: @siddhant
BIOSTACK: Medicinal Chemistry and Cheminformatics
TWITTER: @sidd2508
HAMMING DISTANCE: 4

After you get the desired output, please name your file stage_0_slack-username
An example:
stage_0_Siddhant.R

🚀 Contributing

Contributions are what make the open source community such an amazing place to be learn, inspire, and create. Any contributions you make are greatly appreciated 🎉 Working on your first Pull Request? How to Contribute to an Open Source Project on GitHub

Owner
Siddhant Sharma
Comp Chemistry and Origins of Life 📡| Open Source at @twilio| 👨‍🔬 📈
Siddhant Sharma
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