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Hello,
Are you getting tired to create unnecessary file outs when all you want to do is to take a look at the code in another image and to see the diffs? Here is what you can do.
* File in the attachment, * Open a FileList, * Select a .image file and choose 'browse in ImageBrowser' from the FileList menu, * Open the menu at the class pane of the ImageBrowser, * Choose 'add classes to list' and type the name of classes yo want to see.
From a help from InterpreterSimulator, the ImageBrowser reads the source pointers stored in the CompiledMethods in the image file, and get the code from its accompanying .change file. (All file operations are done in 'read only mode'. So, don't worry about breaking your image file.)
The convenient functions inherited from FileContentsBrowser, such as 'remove unmodified categories' are there, too.
ImageBrowser works for M17n images as well.
I happened to notice the recent discussion about 'Diff between two change sets'. This ImageBrowser helps you to get diff between two images:-) Hooking up the internal machinary of this one with Bob's Comparison Browser would be interesting, (although I couldn't find an image to test it.)
Let me know any suggestions and comments,
-- Yoshiki
P.S. My email address has changed.
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