AI’s affect on communities, students, staff - USI | student newspaper
AI’s affect on communities, students, staff USI | student newspaper
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paper![[P] MCGrad: fix calibration of your ML model in subgroups](https://d2xsxph8kpxj0f.cloudfront.net/310419663032563854/konzwo8nGf8Z4uZsMefwMr/default-img-earth-satellite-QfbitDhCB2KjTsjtXRYcf9.webp)
[P] MCGrad: fix calibration of your ML model in subgroups
Hi r/MachineLearning , We’re open-sourcing MCGrad , a Python package for multicalibration–developed and deployed in production at Meta. This work will also be presented at KDD 2026. The Problem: A model can be globally calibrated yet significantly miscalibrated within identifiable subgroups or feature intersections (e.g., "users in region X on mobile devices"). Multicalibration aims to ensure reliability across such subpopulations. The Solution: MCGrad reformulates multicalibration using gradient boosted decision trees. At each step, a lightweight booster learns to predict residual miscalibration of the base model given the features, automatically identifying and correcting miscalibrated regions. The method scales to large datasets, and uses early stopping to preserve predictive performanc
![[D] KDD Review Discussion](https://d2xsxph8kpxj0f.cloudfront.net/310419663032563854/konzwo8nGf8Z4uZsMefwMr/default-img-wave-pattern-4YWNKzoeu65vYpqRKWMiWf.webp)
[D] KDD Review Discussion
KDD 2026 (Feb Cycle) reviews will release today (4-April AoE), This thread is open to discuss about reviews and importantly celebrate successful reviews. Let us all remember that review system is noisy and we all suffer from it and this doesn't define our research impact. Let's all prioritise reviews which enhance our papers. Feel free to discuss your experiences submitted by /u/BomsDrag [link] [comments]

Is Turboquant really a game changer?
I am currently utilizing qwen3.5 and Gemma 4 model. Realized Gemma 4 requires 2x ram for same context length. As far as I understand, what turbo quant gives is quantizing kv cache into about 4 bit and minimize the loses But Q8 still not lose the context that much so isn't kv cache ram for qwen 3.5 q8 and Gemma 4 truboquant is the same? Is turboquant also applicable in qwen's cache architecture? because as far as I know they didn't tested it in qwen3.5 style kv cache in their paper. Just curious, I started to learn local LLM recently submitted by /u/Interesting-Print366 [link] [comments]
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![[D] KDD Review Discussion](https://d2xsxph8kpxj0f.cloudfront.net/310419663032563854/konzwo8nGf8Z4uZsMefwMr/default-img-wave-pattern-4YWNKzoeu65vYpqRKWMiWf.webp)
[D] KDD Review Discussion
KDD 2026 (Feb Cycle) reviews will release today (4-April AoE), This thread is open to discuss about reviews and importantly celebrate successful reviews. Let us all remember that review system is noisy and we all suffer from it and this doesn't define our research impact. Let's all prioritise reviews which enhance our papers. Feel free to discuss your experiences submitted by /u/BomsDrag [link] [comments]

The CEO Building the Most Powerful AI on Earth Just Admitted It Will Destroy Half Your Industry.
January 26, 2026. Dario Amodei published a 20,000-word essay warning that AI will displace 50% of entry-level white-collar jobs in 1–5… Continue reading on Towards AI »

New Rowhammer attack can grant kernel-level control on Nvidia workstation GPUs
A study from researchers at UNC Chapel Hill and Georgia Tech shows that GDDR6-based Rowhammer attacks can grant kernel-level access to Linux systems equipped with GPUs based on Nvidia's Ampere and Ada Lovelace architectures. The vulnerability appears significantly more severe than what was outlined in a paper last year. Read Entire Article


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