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Brief Announcement - Sasa v0.9.4.3 Bugfix Release

Some minor bugfixes to the new Sasa.Net.Message.ToRaw extension method prompted a minor release of Sasa v0.9.4.3. Nothing else was changed.

I apologize for the excessively long version numbers. The next major Sasa release will be v1.0, and henceforth, point releases will be reserved for bugfixes and other API/backwards-compatible changes. Incompatible changes will increment the major version number,

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