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<dict>
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<dict>
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<dict>
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</plist>
| # | Change | User | Description | Committed | |
|---|---|---|---|---|---|
| #1 | 20722 | jdputsch | initial branch, prep for -Zapp= support | ||
| //guest/michael_bishop/MacMenu/src/P4Menu/Source/resources/P4 Icon.graffle | |||||
| #1 | 8331 | Matt Attaway |
Adding initial version of MacMenu for Perforce MacMenu is a helpful Perforce client that sits in your toolbar. It allows you to run standard Perforce operations on the document that is open the currently active editor/viewer. |
||