I've just got a new M1 mac mini dev machine, and migrated from my old x86 mac using apple's migration assistant.

Doing that also copied over all my conda environments to the new machine (they were all in my home directory)

I installed the latest version of anaconda and anaconda plus all my python code and environments seem to work fine (this includes a bunch of wheel modules, notably numpy/scipy).

I did a bunch of googling for my questions below, but couldn't find any good answers anywhere - so I thought I'd ask SO as this seems like a quite common situation others will run into


  • Does anyone know the status of M1 native versions of python/numpy/scipy etc provided by conda forge?
  • I presume that all the binaries in my environments for python/numpy etc all still the old x86 versions, as they were all in environments in my home directory, and running via emulation. So, how do you go about changing/updating those to a M1 arm native version if/when available?

The answer here is going to evolve over time, so here is the most up-to-date knowledge I have as of 27 Jan 2021.

Installing conda in emulation mode works completely fine. All you need to do is to install it in a Terminal run in emulation mode, or else install it using a Terminal emulator that has not been ported over yet.

Once your conda environments are up and running, everything else looks and feels like it did on x86 Macs.

If you'd like a bit more detail, I blogged about my experience. Hopefully it helps you here.

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  • Thanks - I ended up just going with the emulation route you did, as I didn't want to deal with potential compatibility issues of a non-ananconda miniconda like you ran into. It all works fine for me right now, except I don't see anyway yet to see if python or modules are ARM or x86. – Richard Jan 28 at 4:13
  • My pleasure. To respond to your follow-up point, most Python modules are pure Python, so they will only require the Python interpreter to work, and the backing ARM/x86 architecture won't matter. The only places where it does matter is if there are C extensions that are needed, I think. (JAX, as I mentioned in my blog post, is one example.) – ericmjl Jan 29 at 22:44
  • A lot of the modules I use that are the bottlenecks are compiled ...numpy, scipy etc - so it would be great to get native versions of those - but even better have conda check the arch automatically and install the appropriate ones for you – Richard Jan 30 at 21:40
  • The blog post was extremely useful. As a long-time user of MacPorts, it's going to hurt letting go, but it's time to try mini condo, and I will probably still use MP for things like wget, etc. – John Laudun Feb 4 at 19:31
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    I will be instaling miniconda for my Macbook M1. What is emulation mode? What's wrong if I just followed miniconda website? docs.conda.io/en/latest/miniconda.html – user13985 Feb 6 at 21:39

I got my M1 about 2 weeks ago and managed to install absolutely everything I need natively from conda-forge and pip. The installer you can download here. As of 5Feb Homebrew is also officially supported on osx-arm64.

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