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A Git based version of Magic Lantern, for those unwilling or unable to work using Mercurial. The vast majority of branches have been removed, with those thought to be important brought in individually and merged.

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Magic Lantern

Magic Lantern (ML) is a software enhancement that offers increased functionality to the excellent Canon DSLR cameras.

It's an open framework, licensed under GPL, for developing extensions to the official firmware.

Magic Lantern is not a hack, or a modified firmware, it is an independent program that runs alongside Canon's own software. Each time you start your camera, Magic Lantern is loaded from your memory card. Our only modification was to enable the ability to run software from the memory card.

ML is being developed by photo and video enthusiasts, adding functionality such as: HDR images and video, timelapse, motion detection, focus assist tools, manual audio controls much more.

For more details on Magic Lantern please see http://www.magiclantern.fm/

There is a sibling repo for our patched version of Qemu that adds support for emulating camera ROMs. This allows testing without access to a physical camera, and automating tests across a suite of cameras.
https://github.com/reticulatedpines/qemu-eos
https://github.com/reticulatedpines/qemu-eos/tree/qemu-eos-v4.2.1 (current ML team supported branch)

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A Git based version of Magic Lantern, for those unwilling or unable to work using Mercurial. The vast majority of branches have been removed, with those thought to be important brought in individually and merged.

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