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We are super happy to finally announce the projects for the next funding round of ClojuristsTogether ๐ŸŽ‰ We are funding 6 projects with 9000 USD and 5 projects with 2000 USD. The projects and grantees are: USD 9,000 - Matthew Huebert for - Sam Ritchie - Kira McLean for - Christophe Grand and Baptiste Dupuch for - Michiel Borkent for - Arne Brasseur and Gaiwan for USD 2,000 - Chris Badahdah for - Will Acton for Exo (unreleased) - Vlad Protsenko for - Jacob Oโ€™Bryant for - Adam Helins for A big thank you to all our members for the support! We couldnโ€™t fund those projects without you ๐Ÿ’™ ๐Ÿ’š

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New version of released (0.1.14) - This adds bb + fixes cljs support - thanks to @borkdude for the work on bb and other related bits.

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babashka 4
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and github is down... good timing


Thanks to both of you for doing this! I've been happily using a 1 line change quick hack to use interceptor on bb, great to see it in master now babashka

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@U064UGEUQ The currently released version does require bb from master


at least, it's tested with that but might still work with the oldest. Also added compatibility with auspex, which does require master and it's tested with that on CI in interceptor


The core.async integration does need master. @U064UGEUQ what are you using interceptor for?


Good to know, I haven't been using the async stuff yet but may at some point. I've been using the interceptor pattern with / to do stuff with requests/responses. For instance, mocking out the clients during testing, making sure dynamobdb requests include asking for consumption pricing info then recording that info somewhere when we get it in the response


Oh that's good to hear /cc @U0EHU1800 ^

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Carsten Behring13:09:16

Version 0.4.0 of is released! sklearn-clj gives easy access to most Python sklearn estimators from Clojure standalone or as a plugin into Changes in this release are: * fix result of predict to be a probability distribution * fixed serialization of contexts containing sklearn-clj models * allow reverse-mapping of categorical variables of prediction

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