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1millionwomentotech / Toolkitten

Licence: mit
A toolkit for #1millionwomentotech community.

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1 Million Women To Tech (1MWTT)

TOOLKITTEN

A toolkit for #1millionwomentotech community.

How to Contribute

You will need the following

Useful links

Mission

To offer free coding education to 1 million women by 2020.

Roadmap

This is achieved by running two campaigns a year: #SummerOfCode and #WinterOfData.

Summer Of Code is 12 weeks during the summer providing skills in digital literacy.

Winter Of Data is 4 weeks during the holiday season providing skills in digital numeracy.

Questions

For everything relating to #1millionwomentotech please see the Top Secret Handbook, which is at the following top secret location.

Note: this is a live document, and you are welcome to make comments on it to request clarification, make suggestions, improvements, and share ideas and requests. Please remember to always be kind, and fun!

Top Secret Handbook

Note that the project description data, including the texts, logos, images, and/or trademarks, for each open source project belongs to its rightful owner. If you wish to add or remove any projects, please contact us at [email protected].