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Repo for our deep learning book study group launched in October 2017.
Typically there is some verification process when we merge a pull request into a branch. This is called integration testing. We aren't, however, writing one code base, so integration testing upon merge is a bit weird. There are a few methods, as discussed, how we could go about verifying that the materials published here are reviewed by the group so that we are not committing garbage to the world.
Verification procedure:
Depends on our method chosen below.
Method 1: We commit a file to our fork, then make a pull request from our fork to the master branch.
Method 2: We commit a file to our fork of the dev branch, then make a pull request from our dev branch fork to the dev branch master.
Make an issue to discuss the verification of the commit.
When we decide a file is verified by conversation on the verification issue, we again use a procedure by one of the methods outlined below.
Syntax for verification commit message: Verified verification_issue_id
Method 1: Last commit saying verified.
While the last commit message is not verified, it means that it is in progress or has not been verified by the group. Once the file has been through the verification procedure, we make a final commit on that file saying passed verification with a link to the verification issue.
Method 2: Have a working branch and a verified branch
On the in progress branch we will have all non-verified files, the other verified files. Once a file has been trough the verification procedure, we push the file to the verified branch with a commit message saying that file saying passed verification with a link to the verification issue.
I vote for method 1 with the procedure being:
the prince book exercise 2.5 is still in progress
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