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Kanal tas-sors @linuxgram · Post #17841 · Fra 19

📰 AI Helped Uncover A "50-80x Improvement" For Linux's IO_uring Linux block maintainer and IO_uring lead developer Jens Axboe recently was debugging some slowdowns in the AHCI/SCSI code with IO_uring usage. When turning to Claude AI to help in sorting through the issue, patches were devised that can deliver up to a "literally yield a 50-80x improvement on the io_uring side for idle systems." The code is on its way to the Linux kernel... 🔗 Source: https://www.phoronix.com/news/AI-50-80x-IO-uring #linux#kernel

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Machinelearning

@ai_machinelearning_big_data · Post #9091 · 27/11/2025 10:16

⚡️Qwen3-VL: выпустили технический отчёт по новой линейке VLM Опубликован tech report по Qwen3-VL - мультимодальным моделям, работающим с изображениями и текстом. Кратко : - Три модели собрали 1M+ загрузок за месяц. - Qwen3-VL-8B - более 2M скачиваний. - Линейка развивает идеи Qwen2.5-VL (2800+ цитирований). Что описано в отчёте: - Архитектура vision–language модели. - Процесс обучения: pretraining + post-training. - Источники данных и методы фильтрации. - Сравнения с другими VLM и ключевые метрики. 🔗 PDF: https://arxiv.org/pdf/2511.21631 🔗Видео: https://www.youtube.com/watch?v=clwFmuJX_wQ @ai_machinelearning_big_data #Qwen#Qwen3#QwenVL#Qwen3VL#LLM#AIModel

AI & Law

@ai_and_law · Post #108 · 10/09/2023 08:33

🌟 AI Sunday Wonders: Meet TinyLlama, the 550MB AI Model Trained on 3 Trillion Tokens Hello, everyone! In the world of AI, smaller models are gaining immense popularity due to their efficiency on edge devices with limited memory and processing power. Enter TinyLlama, a groundbreaking project led by a research assistant at Singapore University of Technology and Design. Despite its tiny 550MB size, TinyLlama is pre-trained on a massive three trillion tokens. This compact model holds great promise for various applications, including real-time machine translation without the need for an internet connection. The project aims to complete the training of this 1.1 billion Llama model in just 90 days, utilizing 16 A100-40G GPUs. You can track its progress and loss metrics in real-time. TinyLlama shares the same architecture and tokenizer as Meta's Llama 2, making it compatible with open-source projects built on Llama. TinyLlama joins the league of smaller language models like Pythia-1b and MPT-1b, offering developers efficient options for creating cutting-edge AI applications. #TinyLlama#AIModel#AIResearch#MachineLearning#AIInnovation#TinyButMighty