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Idea: new PyPi classifiers and packaging everything up with pip
as standard way of sharing architectures
#217
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Thank you @SamuelMarks for your idea. It aligns with what we would like to achieve with CM (CK2). |
Hi @SamuelMarks. Thank you for your notes - very interesting and indeed related to our project as mentioned by @arjunsuresh ! We plan to have a prototype of a portable ML pipeline using our new CK2 (CM) framework within a few weeks. Will you be interested to check it out and discuss your ideas at some point? We will be glad to get your feedback! Thanks! |
Great to hear. Sure thing, just @ tag me when ready. PS: At some point I'll finish my own multi-ML meta-framework also (been building it with the aforementioned |
Hi again @SamuelMarks . |
@gfursin Great, I replied to another thing you tagged me in. I'll try and make one of your meetings to discuss further. My Python compiler library—that I'm using to generate my multi-ML meta-framework and contribute strong types to major frameworks including TensorFlow—is about to gain some new features and fixes of old whitespace-related bugs. Watch this space! In terms of the subject of this thread, what do you think about the PyPi centric solution? - Should we start a mailing-list thread or something with them? - Petition Google to ask them for the new classifiers? I think my multi-ML meta-framework needs to finish its Proof-of-Concept phase before proceeding. Unless you have other ideas? |
What is your opinion on this, that I originally posted almost 3 years ago? keras-team/keras#15762
IMHO there are a number of advantages to using existing approaches to finding and installing components of machine-learning models (and ensemble-able models).
Would appreciate your perspective (@bhack referenced your project)
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