@ClementDelangue: I'm excited about the new @amd Ryzen AI Halo because we need more local hardware for AI builders! There's something fun…
Summary
Clement Delangue, CEO of Hugging Face, expresses excitement about AMD's Ryzen AI Halo, advocating for more local hardware for AI builders and hinting at the possibility of Hugging Face creating its own hardware.
View Cached Full Text
Cached at: 05/22/26, 07:52 AM
I’m excited about the new @amd Ryzen AI Halo because we need more local hardware for AI builders!
There’s something fun and exciting about building on your own machines rather than sending to the cloud! Should we do our own @huggingface hardware for AI builders at some point? https://t.co/aS2N2BDMHm
Similar Articles
AMD ROCm 7.14 "TheRock" tech preview tagged for latest AMD GPU compute stack
AMD has tagged the ROCm 7.14 'TheRock' tech preview, bringing AI training enhancements, performance improvements up to 16% for select AI workloads like Comfy UI, and ongoing Windows support for the open-source GPU compute stack.
@TheAhmadOsman: Been playing with @PrismML's new model that turned Qwen 3.5 27B into a sub-4GB and sub-6GB weights and I am impressed C…
PrismML released a compressed version of Qwen 3.5 27B that fits in sub-4GB and sub-6GB memory, enabling impressive local AI performance.
Qwen3.6:35b UD Q4_K_M 80 tok/s on Nvidia P40
A user shares achieving 80 tok/s on a Qwen3.6 35B model with Q4_K_M quantization and 100k context on a single Nvidia P40 using TheTom's TurboQuant fork of llama.cpp, highlighting various optimizations.
@0x0SojalSec: This tool shrinks 60 million text chunks from 201 GB to just 6 GB without any loss in accuracy run on locally laptop Tu…
A tool compresses 60 million text chunks from 201GB to 6GB for RAG without accuracy loss, enabling powerful local retrieval-augmented generation on a laptop.
New wave of miniboss models you can run on dual DGX Spark
A new wave of large language models including GLM 4.5, Qwen 3.5, MiniMax M2.7, Deepseek V4 Flash, Xiaomi MiMo 2.5, StepFun 3.7 Flash, and Tencent Hy3 can now be run locally on a dual DGX Spark setup with 250GB usable memory at 4-bit quantization, costing approximately $7,000–$8,000.