https://b-ark.ca/2026/06/07/cannibalism.html #techindustry #AIpanic #investorconcerns #intech #HackerNews #ngated
I keep forgetting how I hook up USB MIDI things and it's all flimsy and computer-like, so I wrote it down.
https://blog.jimmac.eu/2025/usb-midi-m8/
#dirtywave #knot #rk06 #retrokits #usb #midi #dirtywavem8 #novation #launchpad #mk3 #launchpadpro #po16 #intech #grid
We Bought the Whole GPU, So We're Damn Well Going to Use the Whole GPU
https://hazyresearch.stanford.edu/blog/2025-09-28-tp-llama-main
#HackerNews #WeBoughtTheWholeGPU #WholeGPU #Usage #Optimization #GPUs #InTech #HazyResearch
Large language models (LLMs) show remarkable promise for democratizing automated reasoning by generating formal specifications. However, a fundamental tension exists: LLMs are probabilistic, while formal verification demands deterministic guarantees. This paper addresses this epistemological gap by comprehensively investigating failure modes and uncertainty quantification (UQ) in LLM-generated formal artifacts. Our systematic evaluation of five frontier LLMs reveals Satisfiability Modulo Theories (SMT) based autoformalization's domain-specific impact on accuracy (from +34.8% on logical tasks to -44.5% on factual ones), with known UQ techniques like the entropy of token probabilities failing to identify these errors. We introduce a probabilistic context-free grammar (PCFG) framework to model LLM outputs, yielding a refined uncertainty taxonomy. We find uncertainty signals are task-dependent (e.g., grammar entropy for logic, AUROC>0.93). Finally, a lightweight fusion of these signals enables selective verification, drastically reducing errors (14-100%) with minimal abstention, transforming LLM-driven formalization into a reliable engineering discipline.
Added a section and re-recorded for #wb24 week 26 submission.