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Beijing Institute of Technology
- Beijing
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04:42
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💌A tiny (995KB) but mighty timer in **pure C** ! — almost no memory usage!❤️🔥 Supports clock, countdown, stopwatch, Pomodoro, and fully customizable tray animations (GIFs, CPU/Mem%) 💘 Don't be shy…
An all-in-one enhancement suite for Google Gemini & AI Studio - timeline navigation, folder management, prompt library, and chat export in one powerful extension. / Google Gemini & AI Studio 全能增强插件…
On-device AI across mobile, embedded and edge for PyTorch
A modern GUI client based on Tauri, designed to run in Windows, macOS and Linux for tailored proxy experience
Watch-type EMG gesture prediction using GenENet
Curated collection of papers in machine learning systems
AIInfra(AI 基础设施)指AI系统从底层芯片等硬件,到上层软件栈支持AI大模型训练和推理。
Paper Reading list for Shilling Attack and Defense on Recommender Systems
A List of Recommender Systems and Resources
A curated list of research papers, resources, and advancements on Diffusion Cache and related efficient diffusion model acceleration techniques.
A repository aimed at pruning DeepSeek V3, R1 and R1-zero to a usable size
A CPU+GPU Profiling library that provides access to timeline traces and hardware performance counters.
A simple bash script for switching between installed versions of CUDA.
An industrial extension library of pytorch to accelerate large scale model training
動漫花園 镜像站 | 动画 BT 资源聚合站 | 动画 BT 资源开放接口
[ICLR 2025] MoE++: Accelerating Mixture-of-Experts Methods with Zero-Computation Experts
深澜校园网登录程序 Go 语言版,适用于Windows、Linux、路由器等。提供对 Docker、Go Module、OpenWrt 的支持
🤗 Transformers: the model-definition framework for state-of-the-art machine learning models in text, vision, audio, and multimodal models, for both inference and training.
Prompts for our Grok chat assistant and the `@grok` bot on X.
Curated collection of papers in MoE model inference
Minimal reproduction of DeepSeek R1-Zero
The paper list of the 86-page SCIS cover paper "The Rise and Potential of Large Language Model Based Agents: A Survey" by Zhiheng Xi et al.