Hi fellow devs, Recently an increasing about of preprint papers studying COVID-19 with machine leanring techniques have been published, which reminded me of the importance of machine learning techniques.
(1) Updates to ML-Policy [1] Sidenote: Projects such as https://github.com/IliasPap/COVIDNet directly posed questons on me, that are exactly what ML-Policy is trying to solve. (2) Updates to Deep Learning Related Packages Sidenote: Some fellow devs of debian-med and debian-science believe that deep learning software are substantially meaningful as a part of the COVID-19 hackathon ... So ... Updates to ML-Policy -------------------- Just tagged the v0.2 release, but it is still an experimental UNOFFICIAL document. The most significant changes of this document after the last time we discuss about it on this list, is simplification. Detailed Changes: 1. Removed the definition of "Sourceless Model" and "critical tasks". They will make things more complicated. 2. The previous version only discuss about the pre-trained models. In this version we also discuss about the data, and the output of the models. 3. Rewrote the definition of model reproducibility. 4. Introduced a "whitelist" policy for ToxicCandy models. So that we won't kill things like the input methods. 5. Introduced a "Combination" policy in case multiple models are used together. 6. Introduced a "Tainting" policy in case free and non-free stuff are mixed in the same pipeline. The document is longer, actually, compared to the previous version. But the newly introduced ideas follow the convention and common sense to some extent, which should not make them harder to understand. This policy is not complete. Advices are welcome. BTW, as you might have noticed, the ml-policy.git repo has been transferred to deeplearning-team namespace. Updates to Packages ------------------- Status of the debianization of top-2 deep learning frameworks, i.e. tensorflow and pytorch: tensorflow: it is hard to circumvent the only officially supported build system bazel. We have one developer currently working on the bazel packaging. pytorch: Having been greatly motivated by the attitude of pytorch upstream[2] and their quick response to pull requests, I finished packaging the necessary pytorch dependencies in lightning speed and uploaded them to the NEW queue. Currently I'm working on making the upstream build system distro-friendly. Related works are all tracked in[2]. My local builds are very successful. --- [1] https://salsa.debian.org/deeplearning-team/ml-policy/-/blob/master/ML-Policy.pdf [2] https://github.com/pytorch/pytorch/issues/14699 Mo, On behalf of Debian Deep Learning Team