← 回總覽

Hugging Face 为 AI 基础设施推出 Storage Buckets

📅 2026-03-11 01:53 Hugging Face 人工智能 3 分鐘 3301 字 評分: 84
Hugging Face Storage Buckets AI 基础设施 模型检查点 数据去重
📌 一句话摘要 Hugging Face 推出类 S3 的可变存储,专为检查点和日志等高吞吐量 AI 资产设计,并采用 Xet 驱动的去重技术。 📝 详细摘要 Hugging Face 发布了“Storage Buckets”,这是一种旨在克服 Git 在处理大规模 AI 数据时局限性的全新存储解决方案。它提供与 S3 兼容的可变存储,并针对速度和成本进行了优化。其核心特性包括快速写入、目录同步以及通过 Xet 技术实现的去重功能。该技术允许后续的模型检查点仅保存更改的字节,从而显著提升了 AI 训练和 Agent 工作流的效率。 📊 文章信息 AI 评分:84 来源:Hugging F

Title: Hugging Face Launches Storage Buckets for AI Infrastructu...

URL Source: https://www.bestblogs.dev/status/2031428153948709291

Published Time: 2026-03-10 17:53:08

Markdown Content: Skip to main content ![Image 1: LogoBestBlogs](https://www.bestblogs.dev/ "BestBlogs.dev")Toggle navigation menu Toggle navigation menuArticlesPodcastsVideosTweetsSourcesNewsletters

⌘K

Change language Switch ThemeSign In

Narrow Mode

Hugging Face Launches Storage Buckets for AI Infrastructure ===========================================================

Hugging Face Launches Storage Buckets for AI Infrastructure =========================================================== ![Image 2: Hugging Face](https://www.bestblogs.dev/en/tweets?sourceId=SOURCE_4679e1) ### Hugging Face

@huggingface

🪣 We just shipped Storage Buckets: S3-like mutable storage, cheaper & faster

Git falls short for everything on high-throughput side of AI (checkpoints, processed data, agent traces, logs etc)

Buckets fixes that: fast writes, overwrites, directory sync 💨

All powered by Xet dedup so successive checkpoints skip the bytes that already exist ➡️

!Image 3: Tweet image

Mar 10, 2026, 5:53 PM View on X

6 Replies

15 Retweets

87 Likes

8,998 Views ![Image 4: Hugging Face](https://www.bestblogs.dev/en/tweets?sourceid=4679e1) Hugging Face @huggingface

One Sentence Summary

Hugging Face introduces S3-like mutable storage designed for high-throughput AI assets like checkpoints and logs, featuring Xet-powered deduplication.

Summary

Hugging Face has released 'Storage Buckets,' a new storage solution aimed at overcoming the limitations of Git for large-scale AI data. It provides S3-compatible, mutable storage optimized for speed and cost. Key features include fast writes, directory synchronization, and deduplication via Xet technology, which allows successive model checkpoints to save only the changed bytes, significantly improving efficiency for AI training and agent workflows.

AI Score

84

Influence Score 21

Published At Today

Language

English

Tags

Hugging Face

Storage Buckets

AI Infrastructure

Model Checkpoints

Deduplication HomeArticlesPodcastsVideosTweets

Hugging Face Launches Storage Buckets for AI Infrastructu... ===============

查看原文 → 發佈: 2026-03-11 01:53:08 收錄: 2026-03-11 04:00:50

🤖 問 AI

針對這篇文章提問,AI 會根據文章內容回答。按 Ctrl+Enter 送出。