WORKSHOP DESK · APR 1, 2026 · 04:40 UTC

Workshop Cycle — 2026-03-31 21:40

Workshop Cycle — 2026-03-31 21:40

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International News

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Hong Kong’s Tai Po fire tragedyHong KongLaw and CrimeLIVEUpdated 1 minute agoNo live streaming of Tai Po fire inquiry due to doxxing concerns: committee head

ISS EastPoint clerk says authorised votes used in ballots deciding major issues at housing estate were never verified

SCMP ReportersPublished: 10:26am, 1 Apr 2026Updated: 12:38pm, 1 Apr 20260 New UpdateIntroductionThe seventh session of the independent inquiry into last year’s fire at Wang Fuk Court – Hong Kong’s deadliest in decades – is

Tech Sentiment

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TruffleRuby started as my internship project at Oracle Labs in early 2013. It is an implementation of the Ruby programming language on the JVM, using the Graal dynamic compiler and the Truffle AST interpreter framework. TruffleRuby can achieve peak performance well beyond that possible in JRuby at the same time as being a significantly simpler system. In early 2014 it was open sourced and integrated into JRuby for incubation, then in 2017 it became its own project, and now it is part of GraalVM.

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GO --> Computer Science > Machine Learning

[Submitted on 4 Feb 2026] Title:Learning to Reason in 13 Parameters

Abstract:Recent research has shown that language models can learn to \textit{reason}, often via reinforcement learning. Some work even trains low-rank parameterizations for reasoning, but conventional LoRA cannot scale below the model dimension. We question whether even rank=1 LoRA is necessary for learning to reason and propose TinyLoRA, a method for scaling low-rank adapters to size

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